MuerBT磁力搜索 BT种子搜索利器 免费下载BT种子,超5000万条种子数据

[CourseClub.ME] Udacity - Machine Learning Engineer Nanodegree v2.0.0

磁力链接/BT种子名称

[CourseClub.ME] Udacity - Machine Learning Engineer Nanodegree v2.0.0

磁力链接/BT种子简介

种子哈希:c1373ebc1febc567f7e74368e9b86430a45db89a
文件大小: 3.59G
已经下载:542次
下载速度:极快
收录时间:2021-03-06
最近下载:2025-10-06

移花宫入口

移花宫.com邀月.com怜星.com花无缺.comyhgbt.icuyhgbt.top

磁力链接下载

magnet:?xt=urn:btih:C1373EBC1FEBC567F7E74368E9B86430A45DB89A
推荐使用PIKPAK网盘下载资源,10TB超大空间,不限制资源,无限次数离线下载,视频在线观看

下载BT种子文件

磁力链接 迅雷下载 PIKPAK在线播放 世界之窗 91视频 含羞草 欲漫涩 逼哩逼哩 成人快手 51品茶 抖阴破解版 极乐禁地 91短视频 抖音Max TikTok成人版 PornHub 听泉鉴鲍 少女日记 草榴社区 哆哔涩漫 呦乐园 萝莉岛 悠悠禁区 拔萝卜 疯马秀

最近搜索

颜值超 白莉 提子 绿老公 天性 鱼鱼子 重磅 露脸 极品奶子 good banging yana 带女友 自舔奶 【露露】 出来 屌哥 高清内射 仙 fc2-ppv-1888207 技师 挑逗 儿子 操 自然奶 一花 女淫荡 穿内裤 大奶自慰 極品 卡 腿上 让人欲罢不能 母女 4p

文件列表

  • Part 02-Module 04-Lesson 02_Deep Q-Learning/07. Experience Replay-wX_-SZG-YMQ.mp4 50.7 MB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/07. M2L3 07 V2-ZBLLGIN1EfU.mp4 45.7 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/19. MLND - Unsupervised Learning - L3 20 Internal Validation Indices MAIN V1 V2-39JruOTptKI.mp4 42.7 MB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/10. DQN Improvements-Zfdbp93A2GU.mp4 41.3 MB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/03. MC Prediction State Values-0q2wSWyuBj8.mp4 35.0 MB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/01. Deep Reinforcement Learning-GPjK124RU5g.mp4 34.8 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/09. MLND - Unsupervised Learning - L3 09 Expectation Maximization Pt 1 V1 MAIN 1 V2-cf-RLKn5ubA.mp4 34.2 MB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/02. Meet Chris-0ccflD9x5WU.mp4 34.1 MB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/02. M2L3 02 V2-ToS8vXGdODE.mp4 34.1 MB
  • Part 01-Module 13-Lesson 01_PCA/31. Eigenfaces Code-LgLYw-G4sLQ.mp4 34.0 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/14. MLND - Unsupervised Learning - L3 15 GMM Examples And Applications MAIN V2 V1-FRoxeLp81Bg.mp4 33.2 MB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/14. Policy Improvement-4_adUEK0IHg.mp4 31.9 MB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/03. TD Prediction TD(0)-CsD6b0csU7o.mp4 31.6 MB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/11. Linear Function Approximation-OJ5wrB7o-pI.mp4 30.1 MB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/05. An Iterative Method-AX-hG3KvwzY.mp4 28.9 MB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/01. 01 Boas-vindas ao programa IntroduçãoMLND V3-A8AnsR6e75I.mp4 28.3 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/13. SVM 11 Polynomial Kernel 3 V1-XmbK8OjbX5U.mp4 28.1 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/10. MLND - Unsupervised Learning - L3 10 Expectation Maximization Pt 2 MAIN V1 V2-B_xXd0mFUm4.mp4 27.6 MB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/06. Deep Q Network-GgtR_d1OB-M.mp4 26.9 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/14. Interview with Art - Part 3-M6PKr3S1rPg.mp4 26.3 MB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/04. MLND - Unsupervised Learning - L2 04 Examining SingleLink Clustering MAIN V1 V2-foLcmCOLDos.mp4 24.5 MB
  • Part 01-Module 11-Lesson 01_Clustering/13. Sklearn-3zHUAXcoZ7c.mp4 24.4 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/17. MLND - Unsupervised Learning - L3 18 External Validation Indices MAIN V1 V2-rXZM5X2-5D0.mp4 24.3 MB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/05. MLND - Unsupervised Learning - L2 05 CompleteLink AverageLink Ward MAIN V1 V2-dWGQVcZ95d0.mp4 23.6 MB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/06. MC Prediction Action Values-08tLtbh0xLs.mp4 23.1 MB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/13. MC Control Policy Improvement-2RKH-BInX7s.mp4 23.1 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/05. Interview with Art - Part 1-ClLYamtaO-Q.mp4 22.8 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/01. MLND SL DT 00 Intro V2-l34ijtQhVNk.mp4 22.7 MB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/03. Discrete vs. Continuous Spaces-uHstLeRzaE8.mp4 22.4 MB
  • Part 01-Module 10-Lesson 04_Naive Bayes/04. SL NB 03 Guess The Person Now V1 V2-pQgO1KF90yU.mp4 22.1 MB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/04. M2L3 04 V1-QicxmyE5vTo.mp4 22.0 MB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/08. Fixed Q Targets-SWpyiEezfp4.mp4 22.0 MB
  • Part 01-Module 13-Lesson 01_PCA/28. PCA in sklearn-SBYdqlLgbGk.mp4 21.9 MB
  • Part 01-Module 13-Lesson 01_PCA/23. PCA for Feature Transformation-8kUPRUEMCA8.mp4 21.8 MB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/01. Introduction-yXErXQulI_o.mp4 21.7 MB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/03. Elevator Pitch-S-nAHPrkQrQ.mp4 21.6 MB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/02. Policies-hc3LrvaC13U.mp4 21.2 MB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/10. Function Approximation-UTGWVY6jEdg.mp4 21.1 MB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/10. MC Control Incremental Mean-E2RITH-2NUE.mp4 21.0 MB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/11. MLND - Unsupervised Learning - L2 08 DBSCAN MAIN V1 V2--dqyFkfnctI.mp4 20.9 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/11. MLND - Unsupervised Learning - L3 11 Visual Example Of EM Progress MAIN V1 V1-9x3d_eVJrJE.mp4 20.7 MB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/03. M2L3 03 V2-TePX-0Bs23E.mp4 19.8 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/07. SVM 06 Margin Error V2-dSac8Gfgbok.mp4 19.7 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/14. SVM 12 RBF Kernel 1 V3-xdkIulxXWfQ.mp4 19.5 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/17. CNNs For Image Classification-l9vg_1YUlzg.mp4 19.0 MB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/03. MLND - Unsupervised Learning - L2 03 V2-pd9Ix3WMP_Q.mp4 19.0 MB
  • Part 01-Module 13-Lesson 01_PCA/17. Composite Features-spVqFnSvlIU.mp4 19.0 MB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/15. MLND - Unsupervised Learning - L2 10 DBSCAN Examples Applications MAIN V1 V2-GhyFsjQ4FkA.mp4 18.6 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/02. Aplicações de CNNs-HrYNL_1SV2Y.mp4 18.6 MB
  • Part 01-Module 13-Lesson 01_PCA/29. When to Use PCA-hJZHcmJBk1o.mp4 18.4 MB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/09. Deep Q-Learning Algorithm-MqTXoCxQ_eY.mp4 18.3 MB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/01. Why Network-exjEm9Paszk.mp4 18.2 MB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/05. Q-Learning-AI5gLgYMSq8.mp4 18.2 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/11. Camadas convolucionais-RnM1D-XI--8.mp4 17.9 MB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/04. Temporal Difference Learning-lpmDi0QeUm8.mp4 17.8 MB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/07. Summary-hvYQ_3LgCYs.mp4 17.7 MB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/05. M2L3 05 V1-eZxxNNIZuwA.mp4 17.5 MB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/10. TD Control Sarsamax-4DxoYuR7aZ4.mp4 17.3 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/01. Introduction-bYeteZQrUcE.mp4 16.8 MB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/23. Value Iteration-XNeQn8N36y8.mp4 16.4 MB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/01. MLND - Unsupervised Learning - L2 01 V2-NHb8w_M8nDY.mp4 16.2 MB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/04. Neural Networks-Mqogpnp1lrU.mp4 15.6 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/11. MinMax Scaler in sklearn-lgoh5R05YM0.mp4 15.6 MB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/17. MDPs, Part 3-UlXHFbla3QI.mp4 15.5 MB
  • Part 01-Module 10-Lesson 04_Naive Bayes/07. SL NB 06 S False Positives V1 V3-Bg6_Tvcv81A.mp4 15.1 MB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/09. Testing-gmxGRJSKEb0.mp4 15.0 MB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/11. Discounted Return-opXGNPwwn7g.mp4 15.0 MB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/20. Truncated Policy Iteration-a-RvCxlPMho.mp4 14.8 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/25. Transfer Learning-LHG5FltaR6I.mp4 14.0 MB
  • Part 01-Module 13-Lesson 01_PCA/20. Maximal Variance and Information Loss-hfmvk8DzTGA.mp4 13.9 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/21. K-means Clustering-pv_i08zjpQw.mp4 13.8 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/10. Interview with Art - Part 2-Vvzl2J5K7-Y.mp4 13.8 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/14. Maximizing Information Gain-3FgJOpKfdY8.mp4 13.8 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/05. SVM 04 Perceptron Algorithm V1-IIlQHBOrD6Q.mp4 13.6 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/26. Transfer Learning in Keras-HsIAznMM1LA.mp4 13.6 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/04. Decision Trees Answer-h8zH47iFhCo.mp4 13.3 MB
  • Part 01-Module 11-Lesson 01_Clustering/02. Unsupervised Learning-Mx9f99bRB3Q.mp4 13.3 MB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/02. Neural Nets as Value Functions-cBi7vLrk8QQ.mp4 13.3 MB
  • Part 01-Module 13-Lesson 01_PCA/25. ReviewDefinition of PCA-oFBGXUUuKyI.mp4 13.2 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/07. Entropy-piLpj1V1HEk.mp4 13.2 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/06. SVM 05 Classification Error V1-nWGVAGXwvGE.mp4 13.2 MB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/05. Discretization-j2eZyUpy--E.mp4 13.2 MB
  • Part 01-Module 13-Lesson 01_PCA/16. Compression While Preserving Information-NjuenhkC-44.mp4 13.1 MB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/18. MC Control Constant-alpha-QFV1nI9Zpoo.mp4 13.1 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/09. MLND SL DT 08 Entropy Formula 2 MAIN V2-6GHg70hrSJw.mp4 12.9 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/12. Quiz on Algorithms Requiring Rescaling-oEhevl5DWpk.mp4 12.7 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/09. Local Connectivity-z9wiDg0w-Dc.mp4 12.6 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/15. MLND - Unsupervised Learning - L3 16 Cluster Analysis Process MAIN V1 V1-aI2wW4fcU1I.mp4 12.3 MB
  • Part 01-Module 13-Lesson 01_PCA/18. Maximal Variance-tfYAGBIR_Ws.mp4 12.1 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/06. Comparing Features with Different Scales-PRL8trOU7Rs.mp4 12.1 MB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/11. Gradient Descent-Math-7sxA5Ap8AWM.mp4 11.8 MB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/07. Tile Coding-BRs7AnTZ_8k.mp4 11.6 MB
  • Part 01-Module 13-Lesson 01_PCA/30. PCA for Facial Recognition-WyoU2otqsd8.mp4 11.3 MB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/05. RL M2L4 05 Advantage Function RENDER V1 V2-vpLmzKqcgfc.mp4 11.2 MB
  • Part 01-Module 11-Lesson 01_Clustering/11. K-Means Clustering Visualization 2-fQXXa-CAoS0.mp4 11.0 MB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/03. Monte Carlo Learning-qOviWYwcvsg.mp4 10.9 MB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/01. RL M2L4 01 Actor Critic Methods RENDER V1 V1-FXhyxJzgt8U.mp4 10.9 MB
  • Part 01-Module 13-Lesson 01_PCA/21. Info Loss and Principal Components-LTPV8lxQeZQ.mp4 10.8 MB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/09. Coarse Coding-Uu1J5KLAfTU.mp4 10.8 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/20. Image Augmentation in Keras-odStujZq3GY.mp4 10.8 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/04. MLND - Unsupervised Learning - L3 04 GMM Clustering In 1D MAIN V1 V1-JkRQIGqkqA4.mp4 10.8 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/05. Naive Bayes Quiz-jsLkVYXmr3E.mp4 10.6 MB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/03. Episodic vs. Continuing Tasks-E1I-BPanSM8.mp4 10.6 MB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/04. RL M2L4 04 The Actor And The Critic V1-bvbE9F7urd4.mp4 10.5 MB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Elevator Pitch-0QtgTG49E9I.mp4 10.5 MB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/10. Cumulative Reward-ysriH65lV9o.mp4 10.4 MB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/14. Summary-MTEBk43oByU.mp4 10.4 MB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/10. L6 6 ICA Applications MAIN V1 V1 V1-th12mTv1B7g.mp4 10.4 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/16. Neural Networks-xFu1_2K2D2U.mp4 10.2 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/23. Conclusion-hJEuaOUu2yA.mp4 10.2 MB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/06. TD Prediction Action Values-1c029-7_9GA.mp4 10.2 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/12. SVM 10 Polynomial Kernel 2 V2-9RfFvZ9DIRg.mp4 10.2 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/02. Introduction-Vnj2VNQROtI.mp4 10.1 MB
  • Part 02-Module 03-Lesson 01_Introduction to RL/04. OpenAI Gym-MktEOWp3QLg.mp4 9.9 MB
  • Part 01-Module 10-Lesson 04_Naive Bayes/10. SL NB 09 Bayesian Learning 3 V1 V4-u-Hj4RsJn1o.mp4 9.8 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/16. SVM 14 RBF Kernel 3 V1-DctkE8kaWPY.mp4 9.7 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/13. Information Gain-k9iZL53PAmw.mp4 9.7 MB
  • Part 01-Module 07-Lesson 01_Model Selection/03. Model-Complexity-Graph Solution 2-5pWHGkNyRhA.mp4 9.7 MB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/01. L6 1 Random Projection MAIN V1 V1 V1-Iat1a8mzI-Y.mp4 9.6 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/15. MLND SL DT 13 Random Forests MAIN V1-n5DhXhcYKcw.mp4 9.6 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/23. Visualizando CNNs-mnqS_EhEZVg.mp4 9.6 MB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/02. Solving Problems - Big And Small-WHcRQMGSbqg.mp4 9.6 MB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/09. MLND - Unsupervised Learning - L2 07 HC Examples Applications MAIN V1 V2-HTahFoQwk2g.mp4 9.6 MB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/12. MC Control Policy Evaluation-3_opwMzpEEI.mp4 9.5 MB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/01. Intro to Deep Q-Learning-o3cmuUDhP3I.mp4 9.5 MB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Pitching to a Recruiter-LxAdWaA-qTQ.mp4 9.4 MB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/12. Kernel Functions-RdkPVYyVOvU.mp4 9.3 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/22. Regularization-PyFNIcsNma0.mp4 9.2 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/18. CNNs in Keras Practical Example-faFvmGDwXX0.mp4 9.1 MB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/02. RL M2L4 02 A Better Score Function V2-_HBJ3l10-OE.mp4 9.1 MB
  • Part 01-Module 10-Lesson 04_Naive Bayes/02. SL NB 01 Guess The Person V1 V1-tAOAjI-7ins.mp4 8.9 MB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/01. Mat HS-9P7UPWFu8w8.mp4 8.9 MB
  • Part 02-Module 03-Lesson 01_Introduction to RL/02. Applications-CV6B84mKRNM.mp4 8.9 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/22. Hierarchical Clustering-1PldDT8AwMA.mp4 8.9 MB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/04. Convolutional Networks-ISHGyvsT0QY.mp4 8.8 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/03. MLND - Unsupervised Learning - L3 3 Gaussian Distribution In 1D MAINv1 V1-uDPFrZwsKKQ.mp4 8.8 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/01. MLND - Unsupervised Learning - L3 01 Gaussian Mixture Model MAINv1 V3-SLdZrt0CvOk.mp4 8.8 MB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/08. Regularization Intro-pECnr-5F3_Q.mp4 8.7 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/26. Conclusion-WhpE_8sTt-0.mp4 8.6 MB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/17. Policy Iteration-gqv7o1kBDc0.mp4 8.5 MB
  • Part 01-Module 11-Lesson 01_Clustering/16. Counterintuitive Clusters-StmEUgT1XSY.mp4 8.5 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/22. Groundbreaking CNN Architectures-ddrB-mhMfkY.mp4 8.5 MB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/08. Goals and Rewards, Part 2-pVIFc72VYH8.mp4 8.4 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/10. Convolutional Layers-h5R_JvdUrUI.mp4 8.4 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/10. Entropy Formula-w73JTBVeyjE.mp4 8.4 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/12. Stride and Padding-0r9o8hprDXQ.mp4 8.4 MB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/05. L6 4 ICA Algorithm V2 V1-xlhd5UWk_-E.mp4 8.3 MB
  • Part 01-Module 13-Lesson 01_PCA/06. PCA for Data Transformation-nDuo5ECT1G4.mp4 8.2 MB
  • Part 02-Module 03-Lesson 01_Introduction to RL/03. The Setting-nh8Gwdu19nc.mp4 8.1 MB
  • Part 01-Module 13-Lesson 01_PCA/15. From Four Features to Two-MEtIAGKweXU.mp4 8.1 MB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/08. M2L3 08 V1-og3W6CXn1F0.mp4 8.0 MB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/07. TD Control Sarsa(0)-LkFkjfsRpXc.mp4 8.0 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/13. Regularization-ndYnUrx8xvs.mp4 7.9 MB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/chess-game.jpg 7.9 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/02. Introduction-tn-CrUTkCUc.mp4 7.9 MB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/06. MLND - Unsupervised Learning - L2 06 Hierarchical Clustering Implementation MAIN V1 V1-tRqKsk5M9Mc.mp4 7.8 MB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/29. Inception Module-SlTm03bEOxA.mp4 7.8 MB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/08. M1 L1 C05 V3 No Slack-OH-fVUpoyZDyGE.mp4 7.8 MB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/03. Logistic Regression - Solution-1iNylA3fJDs.mp4 7.7 MB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/02. The Setting, Revisited-V6Q1uF8a6kA.mp4 7.7 MB
  • Part 01-Module 11-Lesson 01_Clustering/03. Clustering Movies-g8PKffm8IRY.mp4 7.7 MB
  • Part 01-Module 11-Lesson 01_Clustering/17. Counterintuitive Clusters 2-HyjBus7S2gY.mp4 7.6 MB
  • Part 01-Module 10-Lesson 04_Naive Bayes/05. SL NB 04 Bayes Theorem V1 V2-nVbPJmf53AI.mp4 7.6 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/14. Error Functions-jfKShxGAbok.mp4 7.6 MB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/13. Wrap Up-x6JggcDTcys.mp4 7.6 MB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/11. Optimal Policies-2rguYpVyCto.mp4 7.5 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/11. SVM 09 Polynomial Kernel 1 V1-8t2tVDHNBnk.mp4 7.4 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/10. SVM 08 The C Parameter V2-6CxPhVo0hRw.mp4 7.4 MB
  • Part 01-Module 13-Lesson 01_PCA/05. Trickiest Data Dimensionality-mTcuS5jUeUE.mp4 7.4 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/05. MLND - Unsupervised Learning - L3 05 Gaussian Distribution In 2D MAIN V1 V2-Ne-qRjO38qQ.mp4 7.3 MB
  • Part 01-Module 13-Lesson 01_PCA/30. PCA for Facial Recognition-B_JKtLN-i5I.mp4 7.3 MB
  • Part 02-Module 03-Lesson 01_Introduction to RL/05. Resources-_YPqfAnCqtk.mp4 7.3 MB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/09. Generalized Policy Iteration-XRmz4nolEsw.mp4 7.3 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/09. Writing READMEs with Walter-DQEfT2Zq5_o.mp4 7.3 MB
  • Part 01-Module 11-Lesson 01_Clustering/12. K-Means Clustering Visualization 3-WfwX3B4d8_I.mp4 7.3 MB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/07. Goals and Rewards, Part 1-XPnj3Ya3EuM.mp4 7.2 MB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/14. MDPs, Part 2-CUTtQvxKkNw.mp4 7.2 MB
  • Part 01-Module 13-Lesson 01_PCA/19. Advantages of Maximal Variance-jQaYAlZ1fp0.mp4 7.2 MB
  • Part 01-Module 13-Lesson 01_PCA/12. Which Data is Ready for PCA-Su7kIUVPu6w.mp4 7.0 MB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/12. ROC Curve-2Iw5TiGzJI4.mp4 7.0 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/18. ROC Curve-2Iw5TiGzJI4.mp4 7.0 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/01. Chris's T-Shirt Size (Intuition)-oaqjLyiKOIA.mp4 7.0 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/21. CrossEntropy V1-1BnhC6e0TFw.mp4 6.9 MB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/09. Action-Value Functions-KJLaRfOOPGA.mp4 6.9 MB
  • Part 01-Module 07-Lesson 01_Model Selection/01. 04 L Types Of Errors-Twf1qnPZeSY.mp4 6.9 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Backpropagation V2-1SmY3TZTyUk.mp4 6.8 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/19. Kernel Method Answer-dRFd6HaAXys.mp4 6.7 MB
  • Part 01-Module 02-Lesson 01_Nanodegree Career Services/img/feb-26-2019-16-19-56.gif 6.6 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/04. Recommending Apps-nEvW8B1HNq4.mp4 6.6 MB
  • Part 01-Module 13-Lesson 01_PCA/11. Practice Finding New Axes-aZqYc7v8BK4.mp4 6.6 MB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/01. Introduction-ek2PD9RDrWw.mp4 6.5 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/03. How Computers Interpret Images-V4f6p6uRhu8.mp4 6.5 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/12. Logistic Regression Answer-JuAJd9Qvs6U.mp4 6.4 MB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/03. RL M2L4 03 Two Function Approximators V1-37KQEgLaLfw.mp4 6.4 MB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/01. M0 L3 C01 Intro- V3 No Slack-OH-5IlSH-eoPAU.mp4 6.4 MB
  • Part 01-Module 10-Lesson 04_Naive Bayes/08. SL NB 07 Q Bayesian Learning 1 V1 V4-J4BmsKXPnkA.mp4 6.4 MB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/10. 08 F1 Score SC V1-TRzBeL07fSg.mp4 6.3 MB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/04. L6 3 ICA V1 V1-ae94x-1JDzg.mp4 6.3 MB
  • Part 01-Module 07-Lesson 01_Model Selection/05. Learning Curves SC V1-ZNhnNVKl8NM.mp4 6.3 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/06. MLND - Unsupervised Learning - L3 06 GMM In 2D MAIN Sfx V1 V1-GsNWVHmRRG4.mp4 6.3 MB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/08. Optimality-j231aRV74QM.mp4 6.3 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/04. SVM 03 Error Function V1-l-ahImxoi-U.mp4 6.2 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/16. MLND - Unsupervised Learning - L3 17 Cluster Validation MAINv1 V1-N13ML_GUuZQ.mp4 6.1 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/15. Pooling Layers-OkkIZNs7Cyc.mp4 6.1 MB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/01. What Is Deep Learning-INt1nULYPak.mp4 6.1 MB
  • Part 01-Module 13-Lesson 01_PCA/01. Data Dimensionality-gg7SAMMl4kM.mp4 6.0 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/18. Maximum Likelihood 1-1yJx-QtlvNI.mp4 6.0 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. DL 46 Calculating The Gradient 2 V2 (2)-7lidiTGIlN4.mp4 6.0 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/07. When do MLPs (not) work well-deMeuLdZN3Q.mp4 5.8 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/12. Validating The Training-Oxm9ofvov3I.mp4 5.8 MB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/19. 21 L Measuring Performance-byP0DJImOSk.mp4 5.8 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/05. Categorical Cross-Entropy-3sDYifgjFck.mp4 5.7 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/06. Student Admissions-TdgBi6LtOB8.mp4 5.7 MB
  • Part 01-Module 10-Lesson 04_Naive Bayes/06. SL NB 05 Q False Positives V1 V2-ngA6v09eP08.mp4 5.7 MB
  • Part 01-Module 07-Lesson 01_Model Selection/02. Model Complexity Graph-Question-YS5OQCA5cLY.mp4 5.7 MB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/01. Perception Algorithm V2-ebIlG6Pqwas.mp4 5.6 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/15. Discrete vs. Continuous-Rm2KxFaPiJg.mp4 5.6 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/05. DL 41 Feedforward FIX V2-hVCuvMGOfyY.mp4 5.6 MB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/05. State-Value Functions-llakAjwox_8.mp4 5.5 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/06. Model Validation in Keras-002jNXSM6CU.mp4 5.5 MB
  • Part 01-Module 13-Lesson 01_PCA/13. When Does an Axis Dominate-5Uon6hUTl8Y.mp4 5.4 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/06. Absolute Trick-DJWjBAqSkZw.mp4 5.4 MB
  • Part 02-Module 03-Lesson 01_Introduction to RL/01. Introduction-6jSFl5kxIBs.mp4 5.4 MB
  • Part 01-Module 10-Lesson 04_Naive Bayes/11. MLND SL NB Naive Bayes Algorithm-CQBMB9jwcp8.mp4 5.4 MB
  • Part 01-Module 11-Lesson 01_Clustering/08. Match Points (again)-5j6VZr8sHo8.mp4 5.4 MB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/06. DL 06 Perceptron Definition Fix V2-hImSxZyRiOw.mp4 5.4 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/07. DL 06 Perceptron Definition Fix V2-hImSxZyRiOw.mp4 5.4 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/15. SVM 13 RBF Kernel 2 V1-ozl9UWVP0MI.mp4 5.3 MB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/01. Confusion Matrix-Question 1-9GLNjmMUB_4.mp4 5.3 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/24. Confusion Matrix-Question 1-9GLNjmMUB_4.mp4 5.3 MB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/18. Explore the Design Space-FG7M9tWH2nQ.mp4 5.2 MB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/01. M2L3 01 V1-YOSREyp04HA.mp4 5.2 MB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/13. Non-Linear Function Approximation-rITnmpD2mN8.mp4 5.2 MB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/01. Introduction-W2EP3riQSus.mp4 5.2 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/11. Model Complexity Graph-NnS0FJyVcDQ.mp4 5.1 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/23. Error Function-V5kkHldUlVU.mp4 5.1 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/02. Decision Trees Question-1RonLycEJ34.mp4 5.1 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/02. MLND SL DT 01 Recommending Apps 1 MAIN V3-uI_yNrqqKVg.mp4 5.0 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Combinando modelos-Boy3zHVrWB4.mp4 5.0 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/02. 02 Skin Cancer V4-70jGZeiTNgk.mp4 5.0 MB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/04. Another Gridworld Example-n9SbomnLb-U.mp4 4.9 MB
  • Part 01-Module 13-Lesson 01_PCA/07. Center of a New Coordinate System-Kst3mlrqJnQ.mp4 4.9 MB
  • Part 01-Module 11-Lesson 01_Clustering/15. Limitations of K-Means-4Fkfu37el_k.mp4 4.9 MB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/01. 01 Intro-4C4PuJANIdE.mp4 4.9 MB
  • Part 01-Module 11-Lesson 01_Clustering/06. Optimizing Centers (Rubber Bands)-nNR4hjhhGBc.mp4 4.8 MB
  • Part 01-Module 13-Lesson 01_PCA/27. PCA on the Enron Finance Data-w5XWkq_Y-rY.mp4 4.8 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/10. Linear Regression Answer-L5QBqYDNJn0.mp4 4.7 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/04. MLPs For Image Classification-TIFStebu530.mp4 4.6 MB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/06. The Reward Hypothesis-uAqNwgZ49JE.mp4 4.6 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/02. MLND - Unsupervised Learning - L3 2 Gaussian Mixture Model Clustering MAIN V1 V2-Y_methsXoFA.mp4 4.5 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/08. Entropy Formula-iZiSYrOKvpo.mp4 4.5 MB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/13. TD Control Expected Sarsa-kEKupCyU0P0.mp4 4.5 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/08. Gradient Descent-4s4x9h6AN5Y.mp4 4.5 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/20. Cross Entropy 1-iREoPUrpXvE.mp4 4.4 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/14. Dropout-Ty6K6YiGdBs.mp4 4.4 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/03. MLND SL DT 02 Recommending Apps 2 MAIN V3-KSrIYqKZwCA.mp4 4.4 MB
  • Part 01-Module 13-Lesson 01_PCA/03. One-Dimensional, or Two-yhzQ_HJcwn8.mp4 4.4 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/05. MLND SL DT 04 Q Student Admissions V3 MAIN V1-MOa335cQGI4.mp4 4.4 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/22. DL 27 Multi-Class Cross Entropy 2 Fix-keDswcqkees.mp4 4.3 MB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/06. Bellman Equations-UgIaDMvSdUo.mp4 4.3 MB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/02. 02 Intro SC V1-mIgABrjJVBY.mp4 4.3 MB
  • Part 01-Module 11-Lesson 01_Clustering/16. Counterintuitive Clusters-aveIz1JYeAg.mp4 4.3 MB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/18. Normalized Inputs And Initial Weights-WaHQ9-UXIIg.mp4 4.3 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/16. DL 18 Q Softmax V2-RC_A9Tu99y4.mp4 4.2 MB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/01. ML Charity Project-aVodYHcOB8U.mp4 4.2 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/07. Quick Fixes-Lb9e2KemR6I.mp4 4.2 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/02. A Metric for Chris-O0bvLU4l0is.mp4 4.2 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/18. Batch vs Stochastic Gradient Descent-2p58rVgqsgo.mp4 4.1 MB
  • Part 01-Module 13-Lesson 01_PCA/09. Second Principal Component Of New System-PqtW_Ux2_nY.mp4 4.1 MB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/21. 30 L Stochastic Gradient Descent-U9iEGUd9kJ0.mp4 4.1 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/01. Welcome To Linear Regression-zxZkTkM34BY.mp4 4.1 MB
  • Part 01-Module 13-Lesson 01_PCA/15. From Four Features to Two-xJtmPbEfpFo.mp4 4.1 MB
  • Part 01-Module 13-Lesson 01_PCA/10. Practice Finding Centers-PRjmvj6Vubs.mp4 4.1 MB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/13. MDPs, Part 1-NBWbluSbxPg.mp4 4.0 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/11. Minimizing Error Functions-RbT2TXN_6tY.mp4 4.0 MB
  • Part 01-Module 13-Lesson 01_PCA/04. Slightly Less Perfect Data-9O7cJSP4C8w.mp4 4.0 MB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/04. Linear Boundaries-X-uMlsBi07k.mp4 4.0 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/05. Linear Boundaries-X-uMlsBi07k.mp4 4.0 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/18. Maximum Likelihood 2-6nUUeQ9AeUA.mp4 4.0 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/24. Gradient Descent-rhVIF-nigrY.mp4 3.9 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/04. Good GitHub repository-qBi8Q1EJdfQ.mp4 3.9 MB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. 07 Perceptron Algorithm Trick-lif_qPmXvWA.mp4 3.8 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/10. 07 Perceptron Algorithm Trick-lif_qPmXvWA.mp4 3.8 MB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/08. MLND Turning Paramaters-eSv2lPcnRM0.mp4 3.8 MB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/01. Introducing Luis-nto-stLuN6M.mp4 3.8 MB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/12. MLND - Unsupervised Learning - L2 09 DBSCAN Implementation MAIN V1 V1-qEMUzQFylg8.mp4 3.8 MB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/16. 17 L Transition Into Practical Aspects Of Learning-bKqkRFOOKoA.mp4 3.8 MB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/06. MLND SL EM 06 Weighting The Models MAIN V2-unCJ_ifVquU.mp4 3.7 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/13. Error Functions-YfUUunxWIJw.mp4 3.7 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/screen-shot-2016-11-24-at-12.09.24-pm.png 3.7 MB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/screen-shot-2016-11-24-at-12.09.24-pm.png 3.7 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/16. Starring interesting repositories-ZwMY5rAAd7Q.mp4 3.6 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/23. What Is The Neural Network Looking At-qN-rvoxPbBw.mp4 3.6 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/24. Neural Network Regression-aUJCBqBfEnI.mp4 3.6 MB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/02. Logistic Regression - Question-kSs6O3R7JUI.mp4 3.6 MB
  • Part 01-Module 07-Lesson 01_Model Selection/08. Grid Search SC V1-zDw-ZGiHW5I.mp4 3.6 MB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/15. Backpropagation-MZL97-2joxQ.mp4 3.6 MB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/20. 29 L Optimizing A Logistic Classifier-U_7nO1dm2tY.mp4 3.6 MB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/01. MLND SL EM 01 Intro V1 MAIN V2-5v9KqIo6CFE.mp4 3.5 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/07. Feature Scaling Formula Quiz 1-jOxS1eJRsOk.mp4 3.5 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/03. GitHub profile important items-prvPVTjVkwQ.mp4 3.5 MB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/13. Regression-Metrics-906P4BPnl9A.mp4 3.5 MB
  • Part 01-Module 13-Lesson 01_PCA/12. Which Data is Ready for PCA-JSVsHbGUuIE.mp4 3.5 MB
  • Part 01-Module 11-Lesson 01_Clustering/10. K-Means Cluster Visualization-iCTPBcowJRY.mp4 3.5 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Calculating The Gradient 1 -tVuZDbUrzzI.mp4 3.5 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/29. Neural Networks Outro V2-pwA5shUkRVc.mp4 3.5 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/15. Participating in open source projects 2-elZCLxVvJrY.mp4 3.5 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/07. Square Trick-AGZEq-yQgRM.mp4 3.4 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/09. Feature Scaling Formula Quiz 3-bY2fuRkH3iw.mp4 3.4 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/15. SVM Answer-JrUtTwfnsfM.mp4 3.4 MB
  • Part 01-Module 10-Lesson 04_Naive Bayes/01. Naive Bayes Intro V2-vNOiQXghgRY.mp4 3.4 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/28. Gradient Descent Vs Perceptron Algorithm-uL5LuRPivTA.mp4 3.4 MB
  • Part 01-Module 13-Lesson 01_PCA/16. Compression While Preserving Information-_TJeoCTDykE.mp4 3.3 MB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/28. 1x1 Convolutions-Zmzgerm6SjA.mp4 3.3 MB
  • Part 01-Module 13-Lesson 01_PCA/08. Principal Axis of New Coordinate System-i6zv8vyZBk0.mp4 3.3 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Layers-pg99FkXYK0M.mp4 3.3 MB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/14. 16 L Minimizing Cross-Entropy-YrDMXFhvh9E.mp4 3.2 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/17. Kernel Method Quiz-x0JqH6-Dhvw.mp4 3.2 MB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/06. RL M2L4 06 Actor Critic With Advantage RENDER V1 V1-Bwd2OF7hJXQ.mp4 3.2 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/screen-shot-2016-11-24-at-12.09.02-pm.png 3.2 MB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/screen-shot-2016-11-24-at-12.09.02-pm.png 3.2 MB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/02. MLND - Unsupervised Learning - L2 02 V1-Ed6RKuBzKWA.mp4 3.2 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/25. Confusion Matrix-3rpN-YYlfes.mp4 3.2 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/12. Reflect on your commit messages-_0AHmKkfjTo.mp4 3.2 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/19. Quiz - Cross 1--xxrisIvD0E.mp4 3.2 MB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/06. M2L3 06 V1-RMjdQkl6CqE.mp4 3.2 MB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/13. MLND - Unsupervised Learning - L3 13 GMM Implementation MAIN V1 V2-zWrC_2Npy9E.mp4 3.1 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/11. Logistic Regression Question-wQXKdeVHTmc.mp4 3.1 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/10. Training Optimization-UiGKhx9pUYc.mp4 3.1 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/03. SVM 02 Minimizing Distances V1-mNKk2dBsNGA.mp4 3.1 MB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/01. Introduction-X_9l_ZqXXBA.mp4 3.0 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/screen-shot-2016-11-24-at-12.08.11-pm.png 3.0 MB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/screen-shot-2016-11-24-at-12.08.11-pm.png 3.0 MB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/09. Perceptron Algorithm Pseudocode-p8Q3yu9YqYk.mp4 3.0 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/11. Perceptron Algorithm Pseudocode-p8Q3yu9YqYk.mp4 3.0 MB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/07. MLND SL EM 07 Weighting The Models 3 V1 MAIN V1-fecp5nmetws.mp4 3.0 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/05. The Data-2RLbbV7MQNA.mp4 3.0 MB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/14. Multilayer perceptrons-Rs9petvTBLk.mp4 3.0 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/18. Closed Form Solution-G3fRVgLa5gI.mp4 3.0 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/11. Solution Random Vs Preinitialized Thoughts-sOuoRZRKDzs.mp4 3.0 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. 29 Neural Network Architecture 2-FWN3Sw5fFoM.mp4 3.0 MB
  • Part 01-Module 13-Lesson 01_PCA/17. Composite Features-0ZBp8oWySAc.mp4 3.0 MB
  • Part 01-Module 11-Lesson 01_Clustering/14. Some challenges of k-means-e2CdlG5P4WA.mp4 3.0 MB
  • Part 01-Module 11-Lesson 01_Clustering/04. How Many Clusters-R6oIvdBtsZw.mp4 2.9 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/13. Participating in open source projects-OxL-gMTizUA.mp4 2.9 MB
  • Part 01-Module 13-Lesson 01_PCA/22. Neighborhood Composite Feature-adXoa85rnPM.mp4 2.9 MB
  • Part 01-Module 13-Lesson 01_PCA/19. Advantages of Maximal Variance-TbT6a6qaj08.mp4 2.9 MB
  • Part 01-Module 11-Lesson 01_Clustering/05. Match Points with Clusters-wJV1cRjmIYY.mp4 2.9 MB
  • Part 02-Module 03-Lesson 07_Solve OpenAI Gym's Taxi-v2 Task/img/open-agent-monitor-main.gif 2.9 MB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/07. DL 08 AND And OR Perceptrons-Y-ImuxNpS40.mp4 2.9 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/08. DL 08 AND And OR Perceptrons-Y-ImuxNpS40.mp4 2.9 MB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/08. Training Your Logistic Classifier-WQsdr1EJgz8.mp4 2.9 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/21. ROC Curve-fWwe_JlpnlQ.mp4 2.8 MB
  • Part 01-Module 13-Lesson 01_PCA/22. Neighborhood Composite Feature-WxAWorS2SLg.mp4 2.8 MB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/11. 09 Quiz Fbeta Score SC V1-KSswld4_9bY.mp4 2.8 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/16. Higher Dimensions--UvpQV1qmiE.mp4 2.8 MB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/08. MLND SL EM 08 Combining The Models V1 MAIN V1-1GxscvKU2Ic.mp4 2.8 MB
  • Part 01-Module 10-Lesson 04_Naive Bayes/03. SL NB 02 Known And Inferred V1 V2-DrYfZXiDLQI.mp4 2.7 MB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/05. 09 Higher Dimensions-eBHunImDmWw.mp4 2.7 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/06. 09 Higher Dimensions-eBHunImDmWw.mp4 2.7 MB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/11. Dropout RENDER-6DcImJS8uV8.mp4 2.7 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/29. Conclusion-wOiUQDgGD9E.mp4 2.7 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/09. Mean Absolute Error-vLKiY0Ehors.mp4 2.7 MB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/05. Training a Deep Learning Network-CsB7yUtMJyk.mp4 2.7 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/12. Quiz on Algorithms Requiring Rescaling-ntRkOeSZutw.mp4 2.6 MB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/04. MLND SL EM 04 Weighting The Data MAIN V1 V2-O-hh_x0iYW8.mp4 2.6 MB
  • Part 01-Module 13-Lesson 01_PCA/14. Measurable vs. Latent Features Quiz-UeSD19oit_w.mp4 2.6 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/09. Feature Scaling Formula Quiz 3-iY_sO4d23gY.mp4 2.6 MB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/10. Gradient Descent-29PmNG7fuuM.mp4 2.6 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/08. Gradient Descent-BEC0uH1fuGU.mp4 2.6 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/16. Starring interesting repositories-U3FUxkm1MxI.mp4 2.6 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/22. Visualization-aGIGB4Ta3_A.mp4 2.5 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/01. Support Vector Machine V2-LBmM6pZCrI0.mp4 2.5 MB
  • Part 01-Module 13-Lesson 01_PCA/27. PCA on the Enron Finance Data-6ufIq2nrTwg.mp4 2.5 MB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/04. Gridworld Example-XeHBmPFqTsE.mp4 2.5 MB
  • Part 01-Module 13-Lesson 01_PCA/24. Maximum Number of PCs Quiz-q4c5n5W2aUc.mp4 2.5 MB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/03. Accuracy-s6SfhPTNOHA.mp4 2.5 MB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/02. MLND SL EM 02 Bagging V1 MAIN V1-9L_B0Jcio3c.mp4 2.5 MB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/11. Supervised Learning Outro V2-7X2SDqzGrdU.mp4 2.4 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/17. 16 Solution Diagnosing Cancer V3-IJYvt2ssUFk.mp4 2.4 MB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/22. 31 L Momentum And Learning Rate Decay-O3QYdmQjXds.mp4 2.4 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/17. Other Activation Functions-kA-1vUt6cvQ.mp4 2.4 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/20. Recap and Challenge-ecREasTrKu4.mp4 2.4 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/07. Naive Bayes Answer-YKN-fjuZ1VU.mp4 2.4 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/15. Discrete vs Continuous-rdP-RPDFkl0.mp4 2.4 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/08. Quick Fixes #2-It6AEuSDQw0.mp4 2.4 MB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/08. 06 Precision SC V1-q2wVorBfefU.mp4 2.4 MB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/23. 32 L Parameter Hyperspace!-5a3-iIhdguc.mp4 2.3 MB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/07. Answer False Negatives And Positives-KOytJL1lvgg.mp4 2.3 MB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/06. 04 Quiz False Negatives And Positives SC V1-_ytP9zIkziw.mp4 2.3 MB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/03. Statistical Invariance-0Hr5YwUUhr0.mp4 2.3 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/04. Medical Classification-RCOSP60dV7U.mp4 2.3 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/26. Keras Lab-a50un22BsLI.mp4 2.3 MB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/03. MLND SL EM 03 AdaBoost V1 MAIN V1-HD6SRBWKGUE.mp4 2.3 MB
  • Part 01-Module 10-Lesson 03_Decision Trees/12. MLND SL DT 10 Q Information Gain MAIN V1-tVLOLPEtLFw.mp4 2.3 MB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/05. When Accuracy Wont Work-r0-O-gIDXZ0.mp4 2.3 MB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/09. 07 Recall SC V1-0n5wUZiefkQ.mp4 2.3 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/21. Momentum-r-rYz_PEWC8.mp4 2.2 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/01. Non-Linear Data-F7ZiE8PQiSc.mp4 2.2 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/21. Formula For Cross 1-qvr_ego_d6w.mp4 2.2 MB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/02. Exemplo de classificação-Dh625piH7Z0.mp4 2.2 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/03. Exemplo de classificação-Dh625piH7Z0.mp4 2.2 MB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/01. Apresentando Alexis-38ExGpdyvJI.mp4 2.2 MB
  • Part 01-Module 07-Lesson 01_Model Selection/13. MLND Outro-sFvMBncQjr8.mp4 2.1 MB
  • Part 01-Module 13-Lesson 01_PCA/20. Maximal Variance and Information Loss-DX_f02bUHT0.mp4 2.1 MB
  • Part 02-Module 03-Lesson 07_Solve OpenAI Gym's Taxi-v2 Task/img/run-main.gif 2.1 MB
  • Part 01-Module 11-Lesson 01_Clustering/17. Counterintuitive Clusters 2-xSQTzAeeoEc.mp4 2.1 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/25. Gradient Descent Algorithm-snxmBgi_GeU.mp4 2.1 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/16. DL 18 S Softmax-n8S-v_LCTms.mp4 2.0 MB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. Perceptron Algorithm--zhTROHtscQ.mp4 2.0 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/10. Perceptron Algorithm--zhTROHtscQ.mp4 2.0 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Multiclass Classification-uNTtvxwfox0.mp4 2.0 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/19. Quiz Cross Entropy-njq6bYrPqSU.mp4 2.0 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/10. Mean Squared Error-MRyxmZDngI4.mp4 1.9 MB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/01. Intro to CNNs-B61jxZ4rkMs.mp4 1.9 MB
  • Part 01-Module 13-Lesson 01_PCA/07. Center of a New Coordinate System-1ask5zHGQKM.mp4 1.9 MB
  • Part 01-Module 13-Lesson 01_PCA/24. Maximum Number of PCs Quiz-oOUx6NHppdQ.mp4 1.9 MB
  • Part 01-Module 10-Lesson 04_Naive Bayes/09. SL NB 08 S Bayesian Learning 2 V1 V6-3rIYZgCXVXY.mp4 1.9 MB
  • Part 01-Module 11-Lesson 01_Clustering/06. Optimizing Centers (Rubber Bands)-TN1rQMrx65c.mp4 1.9 MB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/09. Linear Regression Question-sf51L0RN6zc.mp4 1.8 MB
  • Part 01-Module 07-Lesson 01_Model Selection/04. KFold Cross Validation V3 V1-9W6o6eWGi-0.mp4 1.8 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/23. Error Functions Around the World-34AAcTECu2A.mp4 1.8 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/16. Quiz - Softmax-NNoezNnAMTY.mp4 1.8 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/05. DL 42 Neural Network Error Function (1)-SC1wEW7TtKs.mp4 1.8 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/09. SVM 07 Error Function V1-A1wbrcSYc1c.mp4 1.8 MB
  • Part 01-Module 13-Lesson 01_PCA/13. When Does an Axis Dominate-4hJlaYRHdpA.mp4 1.8 MB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/img/screen-shot-2018-09-21-at-11.36.43-am.png 1.8 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/17. One-Hot Encoding-AePvjhyvsBo.mp4 1.7 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/skin-disease-classes.png 1.7 MB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/03. 分类问题 2 -46PywnGa_cQ.mp4 1.7 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/04. 分类问题 2 -46PywnGa_cQ.mp4 1.7 MB
  • Part 01-Module 11-Lesson 01_Clustering/05. Match Points with Clusters-lS5DfbsWH34.mp4 1.7 MB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/08. Convolutions Cont.-utOv-BKI_vo.mp4 1.7 MB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/06. Identify fixes for example “bad” profile-ncFtwW5urHk.mp4 1.7 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/10. MinMax Rescaler Coding Quiz-ePXAzoGVviM.mp4 1.7 MB
  • Part 01-Module 11-Lesson 01_Clustering/04. How Many Clusters-8Ygq5dRV0Kk.mp4 1.7 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/10. 10 Quiz Random Vs Preinitiliazed Weights V3-DRC1e4XGl2M.mp4 1.7 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/14. Solution Sensitivty And Specificity-GBZjyeMjKxc.mp4 1.7 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/23. Conclusion-pyeojf0NniQ.mp4 1.6 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/lesions.png 1.6 MB
  • Part 01-Module 03-Lesson 01_Get Help with Your Account/img/screen-shot-2018-11-09-at-7.48.22-pm.png 1.6 MB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/09. Regularization-QcJBhbuCl5g.mp4 1.6 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/01. Introduction-ZCpXvVdIdnY.mp4 1.6 MB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/02. SVM 01 Which Line Is Better V1-NCml_NCvd1I.mp4 1.6 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/03. Survival Rate-QPlp3NeGuSk.mp4 1.6 MB
  • Part 01-Module 13-Lesson 01_PCA/18. Maximal Variance-FpQm_dYA9LM.mp4 1.6 MB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/frozen-lake-6.jpg 1.6 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/23. DL 29 Logistic Regression-Minimizing The Error Function-KayqiYijlzc.mp4 1.6 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/08. Solution Data Challenges-1z3o4niQuNg.mp4 1.6 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/02. DLND REG 01 Quiz Housing Prices V2-8CSBiVKu35Q.mp4 1.6 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/06. 06 Image Challenge V3-Efnoj1KNPHw.mp4 1.5 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/05. Chris's Shirt Size by Our Metric-oWyt6md7P44.mp4 1.5 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Chain Rule-YAhIBOnbt54.mp4 1.5 MB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/03. Let'S Get Started-ySIDqaXLhHw.mp4 1.5 MB
  • Part 01-Module 10-Lesson 04_Naive Bayes/12. MLND SL NB Solution Naive Bayes Algorithm-QDj3xzjuYmo.mp4 1.5 MB
  • Part 01-Module 07-Lesson 01_Model Selection/12. Outro SC V1-YD1grQje9fw.mp4 1.5 MB
  • Part 01-Module 13-Lesson 01_PCA/05. Trickiest Data Dimensionality-vIxDt0bNV9g.mp4 1.5 MB
  • Part 01-Module 13-Lesson 01_PCA/04. Slightly Less Perfect Data-g5yfjKWIKN4.mp4 1.4 MB
  • Part 01-Module 11-Lesson 01_Clustering/07. Moving Centers 2-FY0DXe0lfrI.mp4 1.4 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/12. Non-Linear Regions-B8UrWnHh1Wc.mp4 1.4 MB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/07. Supervised Classification-XTGsutypAPE.mp4 1.4 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/16. Vanishing Gradient-W_JJm_5syFw.mp4 1.4 MB
  • Part 01-Module 13-Lesson 01_PCA/02. Trickier Data Dimensionality-s24-ikl3ZAs.mp4 1.4 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/05. Chris's Shirt Size by Our Metric-e83ZS4VqGZ0.mp4 1.3 MB
  • Part 01-Module 13-Lesson 01_PCA/09. Second Principal Component Of New System-cTjBlM2ATLQ.mp4 1.3 MB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/12. Dropout Pt. 2-8nG8zzJMbZw.mp4 1.3 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/09. Training The Neural Network-HwiI-UXUx-M.mp4 1.3 MB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/arch.png 1.3 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/01. Chris's T-Shirt Size (Intuition)-l6YXxmCNtHk.mp4 1.2 MB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/convolutionalnetworksquiz.png 1.2 MB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/07. Feature-Map-Sizes-Solution-W4xtf8LTz1c.mp4 1.2 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/28. Mini Project Introduction-Rgf3YVFWl-M.mp4 1.2 MB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/03. L6 2 Random Projection Impl MAINv1 V1 V1-5DhvurLgRII.mp4 1.2 MB
  • Part 01-Module 11-Lesson 01_Clustering/10. K-Means Cluster Visualization-ZMfwPUrOFsE.mp4 1.2 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/16. 15 Quiz Diagnosing Cancer V3-4UzkwecBJro.mp4 1.2 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/02. Continuous Perceptrons-07-JJ-aGEfM.mp4 1.2 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/03. Non-Linear Models-HWuBKCZsCo8.mp4 1.2 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/04. Fitting A Line-gkdoknEEcaI.mp4 1.2 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/20. Solution ROC Curve-sdUUf6RRmXI.mp4 1.2 MB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/19. 17 Quiz ROC Curve 1 PT2 V1-Xv3v59_CfEU.mp4 1.2 MB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/02. Confusion-Matrix-Solution-ywwSzyU9rYs.mp4 1.2 MB
  • Part 01-Module 11-Lesson 01_Clustering/08. Match Points (again)-9J3IwQFXveI.mp4 1.1 MB
  • Part 01-Module 13-Lesson 01_PCA/03. One-Dimensional, or Two-QsncWsyboFk.mp4 1.1 MB
  • Part 01-Module 12-Lesson 01_Feature Scaling/03. Height + Weight for Cameron--dT9dztM-Lc.mp4 1.1 MB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/07. L6 5 ICA Implementation V1 V1-fZGxYfJmKaE.mp4 1.1 MB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/05. MLND SL EM 05 Weighting The Models MAIN V1-wn6K536dPLc.mp4 1.1 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/12. DL 53 Q Regularization-KxROxcRsHL8.mp4 1.1 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/03. Solution Housing Prices-uhdTulw9-Nc.mp4 1.0 MB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/statevalue.png 1.0 MB
  • Part 01-Module 11-Lesson 01_Clustering/15. Limitations of K-Means-nvLhUSSUhiY.mp4 1.0 MB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/logistic-regression-quiz.png 1.0 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/21. Polynomial Regression-DBhWG-PagEQ.mp4 1.0 MB
  • Part 02-Module 02-Lesson 01_Neural Networks/09. 为何是神经网络-zAkzOZntK6Y.mp4 1.0 MB
  • Part 01-Module 10-Lesson 01_Linear Regression/05. Moving A Line-8EIHFyL2Log.mp4 1.0 MB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/19. Learning Rate-TwJ8aSZoh2U.mp4 949.3 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/nature.png 914.5 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/13. 13 Quiz Sensitivity And Specificty V3-O17MnhWBmKA.mp4 909.9 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/14. DLND REG 13 Absolute Vs Squared Error 3 V1 (1)-bIVGf_dDkrY.mp4 894.1 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/07. 07 Quiz Data Challenges V1-F8yc7BlV93c.mp4 883.2 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/02. A Metric for Chris-Thj7e55iSlA.mp4 874.1 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/15. Local Minima-gF_sW_nY-xw.mp4 839.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/02. Color-Question-BdQccpMwk80.mp4 839.5 kB
  • Part 02-Module 03-Lesson 07_Solve OpenAI Gym's Taxi-v2 Task/img/open-terminal.gif 838.9 kB
  • Part 01-Module 11-Lesson 01_Clustering/07. Moving Centers 2-uC1Xwc7warg.mp4 823.0 kB
  • Part 01-Module 11-Lesson 01_Clustering/09. Handoff to Katie-knrPsGtpyQY.mp4 800.8 kB
  • Part 01-Module 11-Lesson 01_Clustering/img/sebastian-katie-jay.png 798.5 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/img/screen-shot-2018-02-23-at-5.00.25-pm.png 772.4 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/img/student-quiz.png 767.0 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/img/student-quiz.png 767.0 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/10. MinMax Rescaler Coding Quiz-xTEkF0voyoM.mp4 763.2 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/12. 13 L One Hot Encoding-phYsxqlilUk.mp4 750.0 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/img/screen-shot-2017-10-04-at-4.58.58-pm.png 733.2 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/img/6509638772.gif 728.1 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/07. Feature-Map-Sizes-Question-lp1NrLZnCUM.mp4 725.9 kB
  • Part 01-Module 13-Lesson 01_PCA/08. Principal Axis of New Coordinate System-qPr3Uj55eog.mp4 719.4 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/14. DLND REG 12 Absolute Vs Squared Error 2 V1 (1)-7El1OH17Oi4.mp4 709.4 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/14. Absolute Vs Squared Error-csvdjaqt1GM.mp4 676.1 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/img/screen-shot-2018-01-03-at-2.20.30-pm.png 662.9 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/17. Numerical Stability-_SbGcOS-jcQ.mp4 647.1 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/actionvalue.png 643.5 kB
  • Part 01-Module 07-Lesson 01_Model Selection/img/models.png 643.0 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/img/screen-shot-2017-09-24-at-4.28.04-pm.png 637.6 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/go.jpg 629.6 kB
  • Part 02-Module 01-Lesson 01_Welcome to Advanced Machine Learning/img/thumbs-up.jpg 627.2 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/img/and-to-or.png 620.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/img/and-to-or.png 620.7 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/10. Regularization-Quiz-E0eEW6V0_sA.mp4 612.7 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/img/profile-pics.jpg 609.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/13. SVM Question-Fwnjx0s_AIw.mp4 609.8 kB
  • Part 01-Module 13-Lesson 01_PCA/10. Practice Finding Centers-FZVBF1HR4U0.mp4 591.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/cat-3.png 589.7 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/04. Accuracy 2-ueYCLfd_aNQ.mp4 587.6 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/06. Identify fixes for example “bad” profile-AF07y1oAim0.mp4 583.0 kB
  • Part 01-Module 13-Lesson 01_PCA/01. Data Dimensionality-bAZJT4xHiXM.mp4 570.0 kB
  • Part 02-Module 04-Lesson 05_Teach a Quadcopter How to Fly/img/submit-workspace.png 559.8 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/07. Feature Scaling Formula Quiz 1-sPqs7DoBkXQ.mp4 559.2 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/07. DL 09 XOR Perceptron--z9K49fdE3g.mp4 524.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/08. DL 09 XOR Perceptron--z9K49fdE3g.mp4 524.1 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/img/3219238538.gif 524.0 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/img/3204138549.gif 508.6 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/house.png 503.3 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/03. Height + Weight for Cameron-MetxO9LDp-I.mp4 495.5 kB
  • Part 01-Module 13-Lesson 01_PCA/02. Trickier Data Dimensionality--dcNhrSPmoY.mp4 484.4 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/threshold.png 479.5 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/img/3214548558.gif 479.0 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/img/3204388552.gif 474.8 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/img/screen-shot-2017-08-31-at-3.27.10-pm.png 474.2 kB
  • assets/img/udacimak.png 472.1 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/img/3215618544.gif 471.6 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/img/6485174133.gif 469.1 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/img/6499079068.gif 456.6 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/img/6551597473.gif 455.0 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/retriever-patch-shifted.png 453.9 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/screen-shot-2017-11-26-at-9.38.24-am.png 451.5 kB
  • Part 01-Module 13-Lesson 01_PCA/img/2991788616.gif 449.8 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/retriever-patch.png 446.0 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/04. Sarah's Height + Weight-p5p3OLARpmA.mp4 432.7 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/img/regularization-quiz.png 431.0 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/screen-shot-2017-11-26-at-9.55.20-am.png 424.2 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/screen-shot-2017-09-26-at-2.18.38-pm.png 415.6 kB
  • Part 01-Module 11-Lesson 01_Clustering/img/3013998667.gif 414.3 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/18. Images-1GdiN5Wc8LA.mp4 404.9 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/20. Random Restart-idyBBCzXiqg.mp4 404.5 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/img/or-quiz.png 403.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/img/or-quiz.png 403.1 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/img/mat-leonard-circle.png 394.1 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/value-iteration.png 390.4 kB
  • Part 01-Module 03-Lesson 01_Get Help with Your Account/img/screen-shot-2018-11-09-at-7.49.50-pm.png 384.6 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/img/margin-geometry-images.008.jpeg 378.3 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/img/mc-pred-action.png 372.3 kB
  • Part 01-Module 13-Lesson 01_PCA/img/2944258660.gif 363.4 kB
  • Part 01-Module 13-Lesson 01_PCA/11. Practice Finding New Axes-th34aboBOO0.mp4 359.1 kB
  • Part 01-Module 13-Lesson 01_PCA/img/2963418671.gif 356.6 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/img/mc-pred-state.png 356.5 kB
  • Part 01-Module 13-Lesson 01_PCA/img/3075798615.gif 350.3 kB
  • Part 01-Module 13-Lesson 01_PCA/14. Measurable vs. Latent Features Quiz-20QVVrTcp2A.mp4 349.8 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/vlcsnap-2016-11-24-16h01m35s262.png 349.5 kB
  • Part 01-Module 13-Lesson 01_PCA/img/2970968572.gif 345.2 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/img/fbeta.png 345.2 kB
  • Part 01-Module 13-Lesson 01_PCA/img/2985858609.gif 344.6 kB
  • Part 01-Module 02-Lesson 01_Nanodegree Career Services/img/talent-program.png 344.2 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/img/screen-shot-2017-12-17-at-12.49.34-pm.png 340.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/teeth-whiskers-tongue.png 339.9 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/img/2949288751.gif 336.9 kB
  • Part 01-Module 13-Lesson 01_PCA/img/3079068542.gif 335.5 kB
  • Part 01-Module 13-Lesson 01_PCA/img/2966288580.gif 326.5 kB
  • Part 01-Module 13-Lesson 01_PCA/img/2946478670.gif 322.6 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/img/td-prediction.png 318.6 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/confusion-matrix.png 318.4 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/img/atari-network.png 317.4 kB
  • Part 01-Module 13-Lesson 01_PCA/img/2962878580.gif 316.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/img/all-ranks.png 315.9 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/a-b-c-fill-nn.png 312.8 kB
  • Part 01-Module 09-Lesson 01_Predicting Boston Housing Prices/img/step-0.png 309.2 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/img/step-0.png 309.2 kB
  • Part 01-Module 17-Lesson 01_Creating Customer Segments/img/step-0.png 309.2 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/img/trees.png 307.2 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/img/mc-control-glie.png 304.3 kB
  • Part 01-Module 09-Lesson 01_Predicting Boston Housing Prices/img/step1-file-upload.png 297.7 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/img/step1-file-upload.png 297.7 kB
  • Part 01-Module 17-Lesson 01_Creating Customer Segments/img/step1-file-upload.png 297.7 kB
  • Part 01-Module 13-Lesson 01_PCA/img/3094188555.gif 294.2 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/img/sarsa.png 293.7 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/img/layers.png 293.0 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/img/screen-shot-2018-01-06-at-10.44.48-pm.png 292.3 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/04. Sarah's Height + Weight-OdsfV143AMc.mp4 289.2 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/img/margin-geometry-images.005.jpeg 288.1 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/vlcsnap-2016-11-24-15h52m47s438.png 287.0 kB
  • Part 01-Module 13-Lesson 01_PCA/img/2959748717.gif 282.8 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/screen-shot-2018-01-08-at-5.38.03-am.png 282.8 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/img/mc-control-constant-a.png 281.6 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/truncated-iter.png 280.6 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/img/margin-geometry-images.004.jpeg 279.4 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/img/screen-shot-2017-10-04-at-5.01.26-pm.png 278.4 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/img/and-quiz.png 272.2 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/img/and-quiz.png 272.2 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/img/sarsamax.png 270.9 kB
  • Part 01-Module 13-Lesson 01_PCA/img/3090048570.gif 269.3 kB
  • Part 01-Module 13-Lesson 01_PCA/img/3099598537.gif 269.1 kB
  • Part 01-Module 13-Lesson 01_PCA/img/3097488603.gif 268.1 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. DL 10 S Perceptron Algorithm-fATmrG2hQzI.mp4 266.2 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/10. DL 10 S Perceptron Algorithm-fATmrG2hQzI.mp4 266.2 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/policy-eval.png 265.9 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/screen-shot-2017-09-26-at-11.03.16-pm.png 265.9 kB
  • Part 01-Module 13-Lesson 01_PCA/img/3073008570.gif 265.4 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/02-guide-how-transfer-learning-v3-06.png 265.3 kB
  • Part 01-Module 09-Lesson 01_Predicting Boston Housing Prices/img/step-2-file-upload.png 264.5 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/img/step-2-file-upload.png 264.5 kB
  • Part 01-Module 17-Lesson 01_Creating Customer Segments/img/step-2-file-upload.png 264.5 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/img/screen-shot-2018-06-12-at-5.07.10-pm.png 263.6 kB
  • Part 02-Module 01-Lesson 01_Welcome to Advanced Machine Learning/img/screen-shot-2018-06-12-at-5.07.10-pm.png 263.6 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/img/2967238555.gif 263.1 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/02-guide-how-transfer-learning-v3-04.png 261.3 kB
  • Part 01-Module 13-Lesson 01_PCA/img/3059748569.gif 261.0 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/img/expected-sarsa.png 260.5 kB
  • Part 01-Module 13-Lesson 01_PCA/img/3095478574.gif 260.0 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/img/margin-geometry-images.003.jpeg 259.7 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/02-guide-how-transfer-learning-v3-01.png 257.3 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/img/precision-quiz.png 256.8 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/img/matengai-of-kuniga-coast-in-oki-island-shimane-pref600.jpg 252.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/02-guide-how-transfer-learning-v3-10.png 247.6 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/02-guide-how-transfer-learning-v3-08.png 247.4 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/iteration.png 247.2 kB
  • Part 01-Module 03-Lesson 01_Get Help with Your Account/img/screen-shot-2018-11-09-at-7.49.34-pm.png 244.7 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/img/2981618588.gif 240.7 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/02-guide-how-transfer-learning-v3-07.png 238.9 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/perceptron-graphics.001.jpeg 238.2 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/02-guide-how-transfer-learning-v3-05.png 238.1 kB
  • assets/js/katex.min.js 236.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/cat-2.jpeg 236.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/cat-1.jpeg 236.3 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/img/redacted-linkedinresults.png 236.3 kB
  • Part 01-Module 11-Lesson 01_Clustering/img/2956218691.gif 235.0 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/02-guide-how-transfer-learning-v3-03.png 234.4 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/img/recall-quiz.png 233.7 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/02-guide-how-transfer-learning-v3-09.png 233.5 kB
  • Part 01-Module 13-Lesson 01_PCA/img/3065198593.gif 233.4 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/img/margin-geometry-images.001.jpeg 231.0 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/truncated-eval.png 230.6 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/hq-new-plot-perceptron-combine.png 230.3 kB
  • Part 01-Module 18-Lesson 01_Congratulations!/img/beemo.gif 229.1 kB
  • Part 01-Module 02-Lesson 01_Nanodegree Career Services/img/profiles-view.png 228.9 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/dog-1210559-1280.jpg 228.3 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/full-padding-no-strides-transposed.gif 227.1 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/screen-shot-2017-09-26-at-4.22.09-pm.png 224.6 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/02-guide-how-transfer-learning-v3-02.png 224.5 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/img/margin-geometry-images.002.jpeg 220.6 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/img/xor.png 220.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/img/xor.png 220.1 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/img/multi-layer.png 219.5 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/screen-shot-2017-09-21-at-12.20.50-pm.png 215.6 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/img/meme.png 214.1 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/img/meme.png 214.1 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/img/meme.png 214.1 kB
  • Part 01-Module 11-Lesson 01_Clustering/img/meme.png 214.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/img/meme.png 214.1 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/img/exploration-vs.-exploitation.png 209.2 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/screen-shot-2017-09-21-at-12.20.30-pm.png 208.0 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/img/screen-shot-2017-09-21-at-12.20.30-pm.png 208.0 kB
  • Part 01-Module 11-Lesson 01_Clustering/img/3081768538.gif 207.7 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/hq-new-plot-perceptron-combine-v2.png 205.7 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/img/screen-shot-2018-02-23-at-5.11.40-pm.png 205.5 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/batch-stochastic.png 201.6 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/screen-shot-2017-06-13-at-12.58.03-pm.png 201.0 kB
  • Part 01-Module 13-Lesson 01_PCA/img/3083018581.gif 199.8 kB
  • Part 01-Module 11-Lesson 01_Clustering/img/3050028596.gif 196.8 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/img/table.png 196.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/media/monkey-doctor.png 194.5 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/08. Feature Scaling Formula Quiz 2-vmIK4jpUtNo.mp4 193.9 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/08. Feature Scaling Formula Quiz 2-J6RyUyWxrM4.mp4 193.4 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/img/confusion.png 193.4 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/img/curves.png 193.0 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/p2-limit-increase.png 192.7 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/img/screen-shot-2018-01-03-at-2.23.38-pm.png 192.4 kB
  • Part 01-Module 13-Lesson 01_PCA/img/2979238559.gif 191.5 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/img/medical.png 191.0 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/new-confusion-matrix.png 190.6 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/1omsg2-mkguagky1c64uflw.gif 188.4 kB
  • Part 01-Module 11-Lesson 01_Clustering/img/3056738546.gif 188.1 kB
  • Part 02-Module 03-Lesson 07_Solve OpenAI Gym's Taxi-v2 Task/img/new-tab.gif 185.7 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/pup.jpg 185.6 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/mat-headshot.png 184.3 kB
  • index.html 182.0 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/img/2-card-21.png 180.1 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/quiz.jpg 178.4 kB
  • Part 01-Module 11-Lesson 01_Clustering/img/3034378634.gif 177.3 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/img/eeg-ica.png 175.0 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/img/naive-bayes-quiz.png 170.4 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/screen-shot-2016-11-24-at-12.49.43-pm.png 169.6 kB
  • Part 01-Module 11-Lesson 01_Clustering/img/3004978616.gif 168.5 kB
  • Part 01-Module 13-Lesson 01_PCA/img/3059228570.gif 163.7 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/screen-shot-2017-12-17-at-9.41.03-am.png 162.0 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/precision-recall.png 160.5 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/img/3076888537.gif 160.3 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/sensitivity-specificity.png 158.9 kB
  • Part 01-Module 03-Lesson 01_Get Help with Your Account/img/screen-shot-2019-01-14-at-4.05.23-pm.png 158.3 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/screen-shot-2017-09-21-at-3.08.03-pm.png 156.6 kB
  • Part 01-Module 13-Lesson 01_PCA/img/3062928590.gif 156.5 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/img/incremental.png 155.6 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/est-action.png 154.2 kB
  • Part 01-Module 11-Lesson 01_Clustering/img/3040398570.gif 152.3 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/img/email.png 152.1 kB
  • Part 02-Module 04-Lesson 05_Teach a Quadcopter How to Fly/img/parrot-ar-drone.jpg 150.0 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/screen-shot-2017-11-26-at-10.30.15-am.png 148.6 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/img/constant-alpha.png 147.1 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/img/recommending-apps.png 143.9 kB
  • assets/css/bootstrap.min.css 140.9 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/roc-curves.png 140.6 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/minibatch.png 140.0 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/img/spamham.png 138.3 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/screen-shot-2018-07-19-at-5.39.37-pm.png 134.2 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/sample-confusion-matrix.png 133.7 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/p2xlarge-limit-request.png 132.8 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/img/screen-shot-2017-08-09-at-7.09.54-pm.png 132.0 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/img/poker-hand-3-of-a-kind.png 131.7 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/filter-depth.png 130.8 kB
  • assets/js/plyr.polyfilled.min.js 129.2 kB
  • Part 01-Module 11-Lesson 01_Clustering/img/3058428551.gif 127.7 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/improve.png 127.4 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/img/1-14-machine-learning-and-stanley2x.jpg 124.9 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/admissions-data.png 121.2 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/img/decision-trees.png 119.8 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/hq-perceptron.png 118.7 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/backgammonboard.svg.png 115.5 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/img/screen-shot-2018-01-06-at-9.41.01-pm.png 113.4 kB
  • Part 01-Module 03-Lesson 01_Get Help with Your Account/img/screen-shot-2018-11-09-at-7.38.47-pm.png 113.2 kB
  • Part 01-Module 07-Lesson 01_Model Selection/img/learning-curves.png 111.6 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/amazonwebservices-logo.svg.png 109.7 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/img/nn.png 108.5 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/img/accuracy-quiz.png 108.4 kB
  • Part 01-Module 02-Lesson 01_Nanodegree Career Services/img/screen-shot-2019-02-26-at-4.09.24-pm.png 107.4 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/article-2278590-1792e332000005dc-394-634x615.jpg 105.5 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/legend.png 104.5 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/img/kernel-trick.png 101.2 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/img/external-indices-quiz.png 98.8 kB
  • Part 01-Module 07-Lesson 01_Model Selection/img/complexity.png 97.9 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/media/unnamed-project-desc-0.gif 96.8 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/img/xor-quiz.png 96.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/img/xor-quiz.png 96.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/img/summary.png 96.0 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/img/perceptronquiz.png 95.9 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/img/perceptronquiz.png 95.9 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/hq-new-and-or-percep-fixed.png 94.8 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/example-data.png 94.3 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/img/student-data.png 94.1 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/img/regularization-quiz.png 90.0 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/tensorflow.png 87.3 kB
  • assets/js/jquery-3.3.1.min.js 86.9 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/img/screen-shot-2017-10-05-at-3.55.40-pm.png 86.7 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/img/min-samples-split.png 83.1 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/img/gmm-quiz.png 82.6 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/img/polynomial-kernel-2-quiz.png 81.5 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/matrix-mult-3.png 80.9 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/roc.png 80.9 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/img/screen-shot-2017-09-25-at-6.02.37-pm.png 80.7 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/img/gmm-2d-quiz.png 80.3 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/img/linear-boundary.png 77.0 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/img/screen-shot-2017-10-12-at-5.47.45-pm.png 75.4 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/img/enable-gpu.png 75.2 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/gradient-descent.png 73.7 kB
  • assets/css/fonts/KaTeX_AMS-Regular.ttf 71.4 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/and-table.png 70.8 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/just-a-2d-reg.png 70.1 kB
  • assets/css/fonts/KaTeX_Main-Regular.ttf 70.1 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/img/spam.png 69.4 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/img/paper-notes.svg.png 69.0 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/img/screen-shot-2018-01-06-at-9.30.27-pm.png 68.0 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/example-after-bias.png 67.3 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/screen-shot-2016-11-24-at-12.50.54-pm.png 66.2 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/img/screen-shot-2017-09-25-at-5.51.40-pm.png 66.1 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/convolution-schematic.gif 65.2 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/convolution-schematic.gif 65.2 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/img/points.png 64.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/img/points.png 64.7 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/img/dropout-node.jpeg 64.2 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/cross-entropy-diagram.png 64.2 kB
  • assets/css/fonts/KaTeX_Main-Bold.ttf 61.7 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/network-with-labeled-weights.png 60.9 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/img/screen-shot-2017-10-04-at-2.46.11-pm.png 60.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/sigmoids.png 59.6 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/screen-shot-2016-11-24-at-12.49.08-pm.png 58.7 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/img/screen-shot-2017-10-17-at-11.02.44-am.png 57.9 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/img/screen-shot-2018-09-21-at-12.02.03-pm.png 57.5 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/amazon-aws.png 57.3 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/screen-shot-2017-09-21-at-3.25.10-pm.png 56.9 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/derivative-example.png 56.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/notmnist.png 55.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/heirarchy-diagram.jpg 54.9 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/img/points.png 54.7 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/img/screen-shot-2017-09-25-at-9.18.00-pm.png 53.7 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/softmax-input-output.png 53.7 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/screen-shot-2017-09-21-at-3.46.12-pm.png 53.5 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/network-with-labeled-nodes.png 53.2 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/input-times-weights.png 53.1 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/img/screen-shot-2018-01-06-at-8.13.20-pm.png 52.0 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/img/screen-shot-2018-01-06-at-8.13.20-pm.png 52.0 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/img/circle-data.png 51.1 kB
  • Part 01-Module 07-Lesson 01_Model Selection/img/circle-data.png 51.1 kB
  • assets/js/bootstrap.min.js 51.0 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/img/data.png 50.7 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/simple-neuron.png 50.3 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/multilayer-diagram-weights.png 49.7 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/stop.png 48.7 kB
  • Part 02-Module 03-Lesson 07_Solve OpenAI Gym's Taxi-v2 Task/img/screen-shot-2018-04-14-at-3.13.15-pm.png 48.2 kB
  • assets/css/fonts/KaTeX_Main-Italic.ttf 48.0 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/sample-roc-curve.png 47.4 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/layer-1-grid.png 46.8 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/layer-1-grid.png 46.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/img/svm-image.png 46.2 kB
  • assets/js/jquery.mCustomScrollbar.concat.min.js 45.5 kB
  • assets/css/fonts/KaTeX_Main-BoldItalic.ttf 44.8 kB
  • assets/css/jquery.mCustomScrollbar.min.css 42.8 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/img/eggsdata.png 42.8 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/aws-add-sec-group.png 42.7 kB
  • assets/css/fonts/KaTeX_Math-Italic.ttf 41.4 kB
  • assets/css/fonts/KaTeX_AMS-Regular.woff 40.2 kB
  • assets/css/fonts/KaTeX_Math-BoldItalic.ttf 39.7 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/hq-new-xor-table.png 39.5 kB
  • assets/css/fonts/KaTeX_Main-Regular.woff 39.4 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/local-minima.png 39.0 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/maxpool.jpeg 38.0 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/maxpool.jpeg 38.0 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/example-before-bias.png 37.8 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/img/semi-supervised-learning.jpg 37.7 kB
  • Part 02-Module 01-Lesson 01_Welcome to Advanced Machine Learning/img/semi-supervised-learning.jpg 37.7 kB
  • assets/css/fonts/KaTeX_Main-Bold.woff 36.8 kB
  • assets/css/fonts/KaTeX_Typewriter-Regular.ttf 36.3 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/grid-layer-1.png 36.1 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/grid-layer-1.png 36.1 kB
  • assets/css/fonts/KaTeX_Fraktur-Bold.ttf 36.0 kB
  • assets/css/fonts/KaTeX_Fraktur-Regular.ttf 34.7 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/screen-shot-2018-01-08-at-5.37.22-am.png 34.0 kB
  • assets/css/fonts/KaTeX_SansSerif-Bold.ttf 34.0 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/relu.png 33.9 kB
  • Part 01-Module 13-Lesson 01_PCA/media/unnamed-134180-instructor-note-0.gif 33.6 kB
  • assets/css/fonts/KaTeX_AMS-Regular.woff2 33.2 kB
  • assets/css/fonts/KaTeX_Main-Regular.woff2 32.9 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/img/roc-curve.png 32.2 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/img/relu-network.png 31.8 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/session.png 31.6 kB
  • assets/css/fonts/KaTeX_SansSerif-Italic.ttf 31.3 kB
  • assets/css/fonts/KaTeX_Main-Bold.woff2 30.6 kB
  • assets/css/fonts/KaTeX_SansSerif-Regular.ttf 30.2 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/pooling-dims.png 29.9 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/lin-reg-no-outliers.png 29.3 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/conv-dims.png 29.2 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/13. Implementing Gradient Descent.html 28.9 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/sigmoid.png 28.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/06-l-supervised-classification-391-1.jpg 28.3 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/screen-shot-2017-09-20-at-12.02.06-pm.png 28.3 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/24. Quiz Mini-batch.html 28.3 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/lin-reg-w-outliers.png 28.2 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/softmax.png 27.7 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/screen-shot-2017-09-21-at-4.34.08-pm.png 27.5 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/img/gmm-1d-quiz.png 27.4 kB
  • assets/css/fonts/KaTeX_Main-Italic.woff 27.2 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/heaviside-step-graph-2.png 26.9 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/just-a-simple-lin-reg.png 26.6 kB
  • assets/css/fonts/KaTeX_Main-BoldItalic.woff 26.2 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/img/screen-shot-2017-09-25-at-11.35.38-am.png 25.8 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/max-pooling.png 25.8 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/weights-0-1-2.png 25.2 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/screen-shot-2016-11-24-at-12.51.47-pm.png 24.9 kB
  • assets/css/fonts/KaTeX_Script-Regular.ttf 24.9 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/09. Quiz TensorFlow Linear Function.html 24.3 kB
  • assets/css/plyr.css 24.2 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/quadraticlinearregression.png 24.1 kB
  • assets/css/fonts/KaTeX_Math-Italic.woff 23.8 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/16. Implementing Backpropagation.html 23.5 kB
  • assets/css/fonts/KaTeX_Fraktur-Bold.woff 23.4 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/14. Multilayer Perceptrons.html 23.3 kB
  • assets/css/fonts/KaTeX_Math-BoldItalic.woff 23.2 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/launch-instance.png 23.1 kB
  • assets/css/fonts/KaTeX_Main-Italic.woff2 23.1 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/05. Perceptron.html 22.9 kB
  • assets/css/fonts/KaTeX_Fraktur-Regular.woff 22.8 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/screen-shot-2016-11-24-at-10.05.46-pm.png 22.5 kB
  • assets/css/fonts/KaTeX_Main-BoldItalic.woff2 22.2 kB
  • assets/css/katex.min.css 22.1 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/15. Backpropagation.html 21.6 kB
  • Part 01-Module 02-Lesson 01_Nanodegree Career Services/img/screen-shot-2019-02-26-at-4.25.04-pm.png 21.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/img/student-acceptance.png 21.0 kB
  • assets/css/fonts/KaTeX_Typewriter-Regular.woff 20.9 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/mnist-012.png 20.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/29. Mini Project Dermatologist AI.html 20.6 kB
  • assets/css/fonts/KaTeX_Fraktur-Bold.woff2 20.5 kB
  • assets/css/fonts/KaTeX_Math-Italic.woff2 20.4 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/25. Transfer Learning.html 20.1 kB
  • assets/css/fonts/KaTeX_Math-BoldItalic.woff2 20.0 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/08. Perceptrons as Logical Operators.html 20.0 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/30. Convolutional Network in TensorFlow.html 19.9 kB
  • assets/css/fonts/KaTeX_Fraktur-Regular.woff2 19.9 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/img/project-prep-create-your-portfolio-2.png 19.8 kB
  • Part 02-Module 01-Lesson 01_Welcome to Advanced Machine Learning/img/project-prep-create-your-portfolio-2.png 19.8 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/media/unnamed-project-desc-1.gif 19.6 kB
  • assets/css/fonts/KaTeX_Caligraphic-Bold.ttf 19.6 kB
  • Part 01-Module 07-Lesson 01_Model Selection/06. Detecting Overfitting and Underfitting with Learning Curves.html 19.5 kB
  • assets/css/fonts/KaTeX_SansSerif-Bold.woff 19.2 kB
  • assets/css/fonts/KaTeX_Caligraphic-Regular.ttf 19.0 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/07. Keras.html 18.9 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/15. Exploration vs. Exploitation.html 18.6 kB
  • assets/css/fonts/KaTeX_SansSerif-Italic.woff 18.1 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/07. Perceptrons as Logical Operators.html 18.0 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/15. Linear Regression in scikit-learn.html 17.8 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/img/two-layer-network.png 17.6 kB
  • assets/css/fonts/KaTeX_Typewriter-Regular.woff2 17.5 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/img/speaking.png 17.5 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/11. ReLU and Softmax Activation Functions.html 17.5 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/14. Quiz Dimensionality.html 17.5 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/17. Decision Trees in sklearn.html 16.9 kB
  • assets/css/fonts/KaTeX_SansSerif-Regular.woff 16.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/24. Gradient Descent.html 16.8 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/Project Rubric - Improve Your LinkedIn Profile.html 16.7 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/06. Training models in sklearn.html 16.7 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/16. Visualizing CNNs.html 16.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/11. Perceptron Algorithm.html 16.6 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/19. MC Control Constant-alpha, Part 2.html 16.5 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/24. Refresh on Confusion Matrices.html 16.4 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/review-and-launch.png 16.1 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/22. Summary.html 16.1 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/17. SVMs in sklearn.html 16.0 kB
  • assets/css/fonts/KaTeX_SansSerif-Bold.woff2 16.0 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/16. Quiz One-Step Dynamics, Part 2.html 15.9 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/06. Save and Restore TensorFlow Models.html 15.8 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/14. Quiz Epsilon-Greedy Policies.html 15.7 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/06. Filters.html 15.6 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/24. Visualizing CNNs (Part 2).html 15.5 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/19. (Optional) Closed form Solution Math.html 15.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/25. Epochs.html 15.4 kB
  • assets/css/fonts/KaTeX_SansSerif-Italic.woff2 15.2 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/09. Parameters.html 14.9 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/05. Intuition.html 14.9 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/27. Summary.html 14.9 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/08. Pre-Lab Student Admissions in Keras.html 14.8 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/img/dataframe.png 14.7 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/13. Quiz TensorFlow Dropout.html 14.7 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/10. Gradient Descent.html 14.6 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/09. Perceptron Algorithm.html 14.5 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/10. DQN Improvements-Zfdbp93A2GU.pt-BR.vtt 14.5 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/09. The Simplest Neural Network.html 14.5 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/06. An Iterative Method, Part 2.html 14.4 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/17. Multiple Linear Regression.html 14.2 kB
  • Part 02-Module 02-Lesson 07_Deep Learning Project/Project Rubric - Dog Breed Classifier.html 14.2 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/16. Hyperparameters.html 14.1 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/02. Applications of CNNs.html 14.1 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/09. Quiz Goals and Rewards.html 14.0 kB
  • assets/css/fonts/KaTeX_SansSerif-Regular.woff2 14.0 kB
  • assets/css/fonts/KaTeX_Script-Regular.woff 13.9 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/12. Quiz Optimal Policies.html 13.8 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/aws-create-account.png 13.8 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/09. Implementation.html 13.8 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Neural Network Architecture.html 13.7 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/04. Quiz Test Your Intuition.html 13.7 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/07. Quiz State-Value Functions.html 13.7 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/05. Launch an Instance.html 13.6 kB
  • Part 02-Module 08-Lesson 01_Machine Learning Capstone Project/Project Rubric - Capstone Project.html 13.4 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/backprop-network.png 13.4 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/03. Quiz Interpret the Policy.html 13.3 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/16. Softmax.html 13.2 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/img/screen-shot-2017-10-02-at-10.41.44-am.png 13.2 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Backpropagation.html 13.2 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/11. Action Values.html 13.2 kB
  • assets/css/fonts/KaTeX_Size1-Regular.ttf 13.2 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/edit-security-group.png 13.1 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/screen-shot-2016-11-24-at-10.05.37-pm.png 13.1 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/12. Quiz Pole-Balancing.html 13.0 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/19. Summary.html 13.0 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/13. Convolutional Layers in Keras.html 13.0 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/07. Tuning Parameters Manually.html 12.9 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/10. Perceptron Trick.html 12.8 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/27. Pre-Lab IMDB Data in Keras.html 12.7 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/31. TensorFlow Convolution Layer.html 12.7 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/screen-shot-2016-11-24-at-12.51.51-pm.png 12.6 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/04. Deep Neural Network in TensorFlow.html 12.6 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/12. Gradient Descent The Code.html 12.6 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/07. Quiz An Iterative Method.html 12.6 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/17. CNNs For Image Classification-l9vg_1YUlzg.pt-BR.vtt 12.5 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/10. DQN Improvements-Zfdbp93A2GU.en.vtt 12.4 kB
  • assets/css/fonts/KaTeX_Size2-Regular.ttf 12.4 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/18. Finite MDPs.html 12.3 kB
  • assets/css/fonts/KaTeX_Script-Regular.woff2 12.3 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/08. (Optional) Margin Error Calculation.html 12.3 kB
  • Part 01-Module 17-Lesson 01_Creating Customer Segments/Project Rubric - Creating Customer Segments.html 12.2 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/07. Feature Map Sizes.html 12.2 kB
  • assets/css/fonts/KaTeX_Caligraphic-Bold.woff 12.1 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/15. Quiz One-Step Dynamics, Part 1.html 12.1 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/10. Quiz Testing in sklearn.html 12.1 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/18. Refresh on ROC Curves.html 12.1 kB
  • Part 02-Module 03-Lesson 07_Solve OpenAI Gym's Taxi-v2 Task/02. Instructions.html 12.0 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/Project Rubric - Finding Donors for CharityML.html 12.0 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/08. Mini project Training an MLP on MNIST.html 12.0 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/13. Summary.html 11.9 kB
  • assets/css/fonts/KaTeX_Caligraphic-Regular.woff 11.9 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/index.jpg 11.8 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/07. OR NOT Perceptron Quiz.html 11.8 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/16. Max Pooling Layers in Keras.html 11.8 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/08. XOR Perceptron Quiz.html 11.8 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/05. NumPy Arrays.html 11.8 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/04. Neural Networks-Mqogpnp1lrU.ja-JP.vtt 11.7 kB
  • Part 01-Module 13-Lesson 01_PCA/12. Which Data is Ready for PCA.html 11.7 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/19. TensorFlow Max Pooling.html 11.7 kB
  • Part 01-Module 13-Lesson 01_PCA/13. When Does an Axis Dominate.html 11.7 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/11. Gradient Descent-Math-7sxA5Ap8AWM.ja-JP.vtt 11.7 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/15. Categorical Cross-Entropy.html 11.7 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/17. CNNs For Image Classification-l9vg_1YUlzg.en.vtt 11.6 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/13. Quiz TensorFlow Cross Entropy.html 11.6 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/17. CNNs for Image Classification.html 11.6 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/14. Absolute Error vs Squared Error.html 11.6 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/15. More on Sensitivity and Specificity.html 11.6 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/07. Experience Replay-wX_-SZG-YMQ.pt-BR.vtt 11.6 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/26. Check Your Understanding.html 11.6 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/09. Testing your models.html 11.5 kB
  • Part 01-Module 13-Lesson 01_PCA/15. From Four Features to Two.html 11.5 kB
  • Part 02-Module 04-Lesson 05_Teach a Quadcopter How to Fly/06. DDPG Agent.html 11.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/neilsen-pic.png 11.5 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/07. Profile Essentials.html 11.5 kB
  • Part 02-Module 01-Lesson 01_Welcome to Advanced Machine Learning/05. Deadline Policy.html 11.5 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/06. Bellman Equations.html 11.5 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/02. OpenAI Gym FrozenLakeEnv.html 11.4 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/07. Quiz Gaussian Mixtures.html 11.4 kB
  • Part 01-Module 13-Lesson 01_PCA/09. Second Principal Component of New System.html 11.4 kB
  • Part 01-Module 09-Lesson 01_Predicting Boston Housing Prices/Project Rubric - Predicting Boston Housing Prices.html 11.3 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/21. Cross-Entropy 2.html 11.3 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/01. Get Opportunities with LinkedIn.html 11.3 kB
  • Part 01-Module 13-Lesson 01_PCA/22. Neighborhood Composite Feature.html 11.3 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/17. Solution Diagnosing Cancer.html 11.3 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/17. TensorFlow Convolution Layer.html 11.3 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/11. F-beta Score.html 11.3 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/33. TensorFlow Pooling Layer.html 11.3 kB
  • assets/css/fonts/KaTeX_Size4-Regular.ttf 11.3 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/10. Quiz TensorFlow Softmax.html 11.3 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/11. Camadas convolucionais-RnM1D-XI--8.pt-BR.vtt 11.3 kB
  • Part 02-Module 08-Lesson 01_Machine Learning Capstone Project/Project Description - Capstone Project.html 11.3 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/01. Prove Your Skills With GitHub.html 11.2 kB
  • Part 01-Module 13-Lesson 01_PCA/30. PCA for Facial Recognition.html 11.2 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/06. Identify fixes for example “bad” profile.html 11.2 kB
  • Part 01-Module 13-Lesson 01_PCA/27. PCA on the Enron Finance Data.html 11.2 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/06. AND Perceptron Quiz.html 11.2 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/17. Summary.html 11.2 kB
  • Part 01-Module 13-Lesson 01_PCA/14. Measurable vs. Latent Features Quiz.html 11.2 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/18. Maximum Likelihood.html 11.1 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/22. Regularization-PyFNIcsNma0.en.vtt 11.1 kB
  • Part 01-Module 13-Lesson 01_PCA/17. Composite Features.html 11.1 kB
  • Part 01-Module 13-Lesson 01_PCA/19. Advantages of Maximal Variance.html 11.1 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/11. Gradient Descent-Math-7sxA5Ap8AWM.pt-BR.vtt 11.1 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/24. Implementation.html 11.1 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/11. Gradient Descent-Math-7sxA5Ap8AWM.en.vtt 11.1 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/07. Finetuning.html 11.0 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/15. Discrete vs Continuous.html 11.0 kB
  • Part 01-Module 13-Lesson 01_PCA/07. Center of a New Coordinate System.html 11.0 kB
  • Part 01-Module 13-Lesson 01_PCA/16. Compression While Preserving Information.html 11.0 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/05. Hello, Tensor World!.html 11.0 kB
  • Part 01-Module 13-Lesson 01_PCA/20. Maximal Variance and Information Loss.html 11.0 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/10. DQN Improvements-Zfdbp93A2GU.zh-CN.vtt 11.0 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/11. Solution Convolution Output Shape.html 10.9 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/09. Build and Strengthen Your Network.html 10.9 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/03. Your Workspace.html 10.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/23. Visualizing CNNs (Part 1).html 10.9 kB
  • Part 01-Module 13-Lesson 01_PCA/10. Practice Finding Centers.html 10.9 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/04. Installing TensorFlow.html 10.9 kB
  • Part 01-Module 13-Lesson 01_PCA/05. Trickiest Data Dimensionality.html 10.9 kB
  • Part 02-Module 02-Lesson 06_Deep Learning Assessment/01. Assessment.html 10.9 kB
  • Part 01-Module 13-Lesson 01_PCA/02. Trickier Data Dimensionality.html 10.8 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/02. Recommending Apps 1.html 10.8 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/21. Implementation.html 10.8 kB
  • Part 01-Module 13-Lesson 01_PCA/08. Principal Axis of New Coordinate System.html 10.8 kB
  • Part 01-Module 13-Lesson 01_PCA/04. Slightly Less Perfect Data.html 10.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/14. Error Functions-jfKShxGAbok.ja-JP.vtt 10.8 kB
  • Part 01-Module 13-Lesson 01_PCA/24. Maximum Number of PCs Quiz.html 10.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/02. Skin Cancer.html 10.8 kB
  • Part 01-Module 13-Lesson 01_PCA/03. One-Dimensional, or Two.html 10.8 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/img/smalldf.png 10.8 kB
  • Part 01-Module 13-Lesson 01_PCA/11. Practice Finding New Axes.html 10.8 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/15. Implementation.html 10.7 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. Perceptron Trick.html 10.7 kB
  • Part 01-Module 13-Lesson 01_PCA/01. Data Dimensionality.html 10.7 kB
  • Part 02-Module 04-Lesson 05_Teach a Quadcopter How to Fly/04. DDPG Actor.html 10.7 kB
  • Part 02-Module 04-Lesson 05_Teach a Quadcopter How to Fly/01. Project Intro.html 10.7 kB
  • Part 01-Module 13-Lesson 01_PCA/18. Maximal Variance.html 10.7 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/22. Regularization-PyFNIcsNma0.pt-BR.vtt 10.6 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/04. Loading data into Pandas.html 10.6 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/32. Solution TensorFlow Convolution Layer.html 10.6 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/22. Quiz Pooling Mechanics.html 10.6 kB
  • assets/css/fonts/KaTeX_Caligraphic-Bold.woff2 10.6 kB
  • Part 01-Module 11-Lesson 01_Clustering/05. Match Points with Clusters.html 10.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/19. Maximizing Probabilities.html 10.6 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/14. Quiz Parameter Sharing.html 10.6 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/11. Quiz Incremental Mean.html 10.5 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/13. SVM 11 Polynomial Kernel 3 V1-XmbK8OjbX5U.en.vtt 10.5 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/06. Login to the Instance.html 10.5 kB
  • Part 01-Module 11-Lesson 01_Clustering/08. Match Points (again).html 10.5 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/19. MLND - Unsupervised Learning - L3 20 Internal Validation Indices MAIN V1 V2-39JruOTptKI.en.vtt 10.5 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/13. Quiz Sensitivity and Specificity.html 10.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/23. Logistic Regression.html 10.4 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/04. Neural Networks-Mqogpnp1lrU.en.vtt 10.4 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/08. Bayesian Learning 1.html 10.4 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/16. Neural Networks-xFu1_2K2D2U.en.vtt 10.4 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/10. Quiz Convolution Output Shape.html 10.4 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/04. Implementation.html 10.4 kB
  • assets/css/fonts/KaTeX_Caligraphic-Regular.woff2 10.4 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/20. Image Augmentation in Keras.html 10.4 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/12. Quiz Number of Parameters.html 10.4 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/03. Quiz TensorFlow ReLUs.html 10.4 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/18. CNNs in Keras Practical Example.html 10.3 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/11. Commit messages best practices.html 10.3 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/04. Udacity Support.html 10.3 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/02. OpenAI Gym BlackjackEnv.html 10.3 kB
  • Part 02-Module 01-Lesson 01_Welcome to Advanced Machine Learning/04. Udacity Support.html 10.3 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/14. Log-loss Error Function.html 10.3 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/26. Pre-Lab Gradient Descent.html 10.3 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/11. Camadas convolucionais-RnM1D-XI--8.en.vtt 10.2 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/34. Solution TensorFlow Pooling Layer.html 10.2 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/20. Quiz Pooling Intuition.html 10.1 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/Project Description - Optimize Your GitHub Profile.html 10.1 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/Project Rubric - Optimize Your GitHub Profile.html 10.1 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/02. Color.html 10.1 kB
  • Part 02-Module 04-Lesson 05_Teach a Quadcopter How to Fly/05. DDPG Critic.html 10.1 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/05. Categorical Cross-Entropy.html 10.1 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/12. Implementation.html 10.1 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/05. Feedforward.html 10.0 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/05. Quiz Episodic or Continuing.html 10.0 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/07. Quiz Data Challenges.html 10.0 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/05. Use Your Elevator Pitch on LinkedIn.html 10.0 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/03. How Computers Interpret Images.html 10.0 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/16. Neural Networks-xFu1_2K2D2U.pt-BR.vtt 10.0 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/04. Neural Networks-Mqogpnp1lrU.pt-BR.vtt 10.0 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/17. CNNs For Image Classification-l9vg_1YUlzg.zh-CN.vtt 10.0 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/19. Quiz ROC Curve.html 10.0 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/24. Quiz Pooling Practice.html 9.9 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/10. Quiz Random vs Pre-initialized Weights.html 9.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/26. Transfer Learning in Keras.html 9.9 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/08. Work Experiences Accomplishments.html 9.9 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/27. Useful Resources.html 9.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/16. Neural Networks-xFu1_2K2D2U.zh-CN.vtt 9.9 kB
  • Part 01-Module 16-Lesson 01_Unsupervised Learning Assessment/01. Assessment.html 9.9 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/11. Minimizing Error Functions.html 9.9 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/19. MLND - Unsupervised Learning - L3 20 Internal Validation Indices MAIN V1 V2-39JruOTptKI.pt-BR.vtt 9.9 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/03. Classification Problems 1.html 9.8 kB
  • Part 02-Module 07-Lesson 01_Writing up a Capstone Proposal/Project Description - Capstone Proposal.html 9.8 kB
  • Part 01-Module 07-Lesson 01_Model Selection/07. Solution Detecting Overfitting and Underfitting.html 9.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/07. Perceptrons.html 9.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/22. Multi-Class Cross Entropy.html 9.8 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/08. Convolutions continued.html 9.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/06. Higher Dimensions.html 9.8 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/22. Groundbreaking CNN Architectures.html 9.8 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/26. Quiz Average Pooling.html 9.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/16. Quiz Diagnosing Cancer.html 9.8 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/10. MinMax Rescaler Coding Quiz.html 9.7 kB
  • Part 01-Module 10-Lesson 07_Supervised Learning Assessment/01. Supervised Learning Assessment.html 9.7 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/12. Quiz Information Gain.html 9.7 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/07. Experience Replay-wX_-SZG-YMQ.en.vtt 9.7 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/20. Linear Regression Warnings.html 9.7 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/35. CNNs - Additional Resources.html 9.7 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/07. Implementation.html 9.7 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/21. Solution Pooling Intuition.html 9.7 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/11. Gradient Descent-Math-7sxA5Ap8AWM.zh-CN.vtt 9.7 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/16. Starring interesting repositories.html 9.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/14. Error Functions-jfKShxGAbok.en.vtt 9.7 kB
  • Part 01-Module 13-Lesson 01_PCA/28. PCA in sklearn.html 9.7 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/06. Create Your Profile With SEO In Mind.html 9.7 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/06. Transition to Classification.html 9.6 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/12. One-Hot Encoding.html 9.6 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/23. Solution Pooling Mechanics.html 9.6 kB
  • Part 02-Module 04-Lesson 05_Teach a Quadcopter How to Fly/08. Troubleshooting.html 9.6 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/06. Weighting the Models 2.html 9.6 kB
  • Part 02-Module 07-Lesson 01_Writing up a Capstone Proposal/Project Rubric - Capstone Proposal.html 9.6 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/10. Reaching Out on LinkedIn.html 9.6 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/08. Implementation.html 9.6 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/21. Mini project Image Augmentation in Keras.html 9.5 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/04. Get Access to GPU Instances.html 9.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/12. Regularization.html 9.5 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/09. Local Connectivity-z9wiDg0w-Dc.pt-BR.vtt 9.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/01. Intro To CNNs.html 9.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/18. Explore The Design Space.html 9.5 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/01. L6 1 Random Projection MAIN V1 V1 V1-Iat1a8mzI-Y.pt-BR.vtt 9.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/03. Statistical Invariance.html 9.5 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/11. Multiclass Entropy.html 9.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/15. Solution Parameter Sharing.html 9.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/04. Convolutional Networks.html 9.5 kB
  • Part 01-Module 08-Lesson 01_Model Evaluation and Validation Assessment/01. Model Evaluation and Validation assessment.html 9.5 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/16. Analyzing Performance.html 9.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/29. Inception Module.html 9.4 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/13. Mini-batch Gradient Descent.html 9.4 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/19. Mini project CNNs in Keras.html 9.4 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/28. 1x1 Convolutions.html 9.4 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/12. Quiz on Algorithms Requiring Rescaling.html 9.4 kB
  • Part 01-Module 13-Lesson 01_PCA/21. Info Loss and Principal Components.html 9.4 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/14. GMM Examples Applications.html 9.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/14. Error Functions-jfKShxGAbok.pt-BR.vtt 9.4 kB
  • Part 01-Module 13-Lesson 01_PCA/23. PCA for Feature Transformation.html 9.4 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/11. Convolutional Layers (Part 2).html 9.3 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/13. Solution Number of Parameters.html 9.3 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/01. Confusion Matrix.html 9.3 kB
  • Part 01-Module 13-Lesson 01_PCA/06. PCA for Data Transformation.html 9.3 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/07. M2L3 07 V2-ZBLLGIN1EfU.en.vtt 9.3 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/08. Entropy Formula 1.html 9.3 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/05. Linear Boundaries.html 9.3 kB
  • Part 01-Module 11-Lesson 01_Clustering/06. Optimizing Centers (Rubber Bands).html 9.3 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/17. Quiz Numerical Stability.html 9.3 kB
  • Part 01-Module 13-Lesson 01_PCA/25. ReviewDefinition of PCA.html 9.3 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/02. M2L3 02 V2-ToS8vXGdODE.en.vtt 9.3 kB
  • Part 01-Module 11-Lesson 01_Clustering/07. Moving Centers 2.html 9.3 kB
  • Part 01-Module 13-Lesson 01_PCA/26. Applying PCA to Real Data.html 9.3 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/06. Image Challenges.html 9.3 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/03. MC Prediction State Values-0q2wSWyuBj8.pt-BR.vtt 9.3 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/04. Neural Networks-Mqogpnp1lrU.zh-CN.vtt 9.3 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/19. MLND - Unsupervised Learning - L3 20 Internal Validation Indices MAIN V1 V2-39JruOTptKI.zh-CN.vtt 9.3 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/22. Optimizers in Keras.html 9.2 kB
  • Part 01-Module 11-Lesson 01_Clustering/10. K-Means Cluster Visualization.html 9.2 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/02. Quiz Housing Prices.html 9.2 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/06. Model Validation in Keras.html 9.2 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/04. MLPs for Image Classification.html 9.2 kB
  • Part 01-Module 13-Lesson 01_PCA/29. When to Use PCA.html 9.2 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/02. OpenAI Gym CliffWalkingEnv.html 9.2 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/27. Solution Average Pooling.html 9.2 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/25. Solution Pooling Practice.html 9.2 kB
  • Part 02-Module 05-Lesson 01_Reinforcement Learning Assessment/01. Assessment.html 9.2 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/18. Implementation.html 9.2 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/01. L6 1 Random Projection MAIN V1 V1 V1-Iat1a8mzI-Y.en.vtt 9.2 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/09. Local Connectivity-z9wiDg0w-Dc.en.vtt 9.2 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/img/codecogseqn-60-2.png 9.2 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/02. Resources.html 9.2 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/14. Policy Improvement-4_adUEK0IHg.pt-BR.vtt 9.2 kB
  • Part 01-Module 11-Lesson 01_Clustering/13. Sklearn-3zHUAXcoZ7c.ar.vtt 9.1 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/img/launch.png 9.1 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/10. [Quiz] Hierarchical clustering.html 9.1 kB
  • Part 01-Module 13-Lesson 01_PCA/31. Eigenfaces Code.html 9.1 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/12. Mean vs Total Error.html 9.1 kB
  • Part 02-Module 02-Lesson 07_Deep Learning Project/Project Description - Dog Breed Classifier.html 9.1 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/03. TD Prediction TD(0)-CsD6b0csU7o.en.vtt 9.0 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/04. Implementation.html 9.0 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/06. False Negatives and Positives.html 9.0 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/13. Regularization-ndYnUrx8xvs.pt-BR.vtt 9.0 kB
  • Part 01-Module 11-Lesson 01_Clustering/16. Counterintuitive Clusters.html 9.0 kB
  • Part 02-Module 03-Lesson 07_Solve OpenAI Gym's Taxi-v2 Task/01. Introduction.html 9.0 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/28. Perceptron vs Gradient Descent.html 9.0 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/05. Quiz Student Admissions.html 9.0 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/25. Neural Networks Playground.html 9.0 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/02. Use Your Story to Stand Out.html 9.0 kB
  • Part 02-Module 04-Lesson 05_Teach a Quadcopter How to Fly/Project Rubric - Teach a Quadcopter How to Fly.html 9.0 kB
  • Part 01-Module 11-Lesson 01_Clustering/15. Limitations of K-Means.html 8.9 kB
  • Part 01-Module 17-Lesson 01_Creating Customer Segments/Project Description - Creating Customer Segments.html 8.9 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/11. Solution Random vs Pre-initialized Weight.html 8.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/11. Camadas convolucionais-RnM1D-XI--8.zh-CN.vtt 8.9 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/08. Quick Fixes #2.html 8.9 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/13. SVM 11 Polynomial Kernel 3 V1-XmbK8OjbX5U.zh-CN.vtt 8.9 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/09. Lab Student Admissions in Keras.html 8.9 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/14. Solution Sensitivity and Specificity.html 8.9 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/01. Introduction.html 8.9 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/27. Notebook Gradient Descent.html 8.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/07. When do MLPs (not) work well .html 8.9 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/23. What is the network looking at.html 8.9 kB
  • Part 01-Module 11-Lesson 01_Clustering/17. Counterintuitive Clusters 2.html 8.9 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/16. [Quiz] DBSCAN.html 8.9 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/12. ROC Curve-2Iw5TiGzJI4.en.vtt 8.9 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/18. ROC Curve-2Iw5TiGzJI4.en.vtt 8.9 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/28. Lab IMDB Data in Keras.html 8.9 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/09. Entropy Formula 2.html 8.9 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/17. Other Activation Functions.html 8.8 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/04. Another Gridworld Example.html 8.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/09. Training the Neural Network.html 8.8 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/03. Recommending Apps 2.html 8.8 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/18. Quiz Adjusted Rand Index.html 8.8 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/20. Implementation.html 8.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/28. Mini Project Introduction.html 8.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/20. Cross-Entropy 1.html 8.8 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/05. Chris's Shirt Size by Our Metric.html 8.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/08. Solution Data Challenges.html 8.8 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/13. MDPs, Part 1.html 8.8 kB
  • Part 01-Module 13-Lesson 01_PCA/31. Eigenfaces Code-LgLYw-G4sLQ.ar.vtt 8.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/12. Validating the Training.html 8.8 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/09. Feature Scaling Formula Quiz 3.html 8.8 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/01. Chris's T-Shirt Size (Intuition).html 8.8 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/15. Pooling Layers.html 8.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/03. Survival Probability of Skin Cancer.html 8.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/09. Linear Regression Quiz.html 8.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/04. Medical Classification.html 8.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/20. Solution ROC Curve.html 8.8 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/11. Boost Your Visibility.html 8.8 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/12. Reflect on your commit messages.html 8.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/21. Comparing our Results with Doctors.html 8.7 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/16. Implementation.html 8.7 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/10. Mini Project DP (Parts 0 and 1).html 8.7 kB
  • Part 02-Module 08-Lesson 01_Machine Learning Capstone Project/02. Description.html 8.7 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/19. Internal Validation Indices.html 8.7 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/19. Mini Project DP (Part 4).html 8.7 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Create Your Elevator Pitch.html 8.7 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/16. Practical Aspects of Learning.html 8.7 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/25. Mini Project DP (Part 6).html 8.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/25. Confusion Matrix.html 8.7 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/03. MC Prediction State Values-0q2wSWyuBj8.en.vtt 8.7 kB
  • Part 01-Module 09-Lesson 01_Predicting Boston Housing Prices/Project Description - Predicting Boston Housing Prices.html 8.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/22. Visualization.html 8.7 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/13. Mini Project DP (Part 2).html 8.7 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/01. Introducing Alexis.html 8.7 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/16. Mini Project DP (Part 3).html 8.7 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/03. Program Structure.html 8.7 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/22. Mini Project DP (Part 5).html 8.7 kB
  • Part 01-Module 11-Lesson 01_Clustering/04. How Many Clusters.html 8.7 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/20. Image Augmentation in Keras-odStujZq3GY.pt-BR.vtt 8.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/26. Conclusion.html 8.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/21. CrossEntropy V1-1BnhC6e0TFw.ja-JP.vtt 8.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/25. Logistic Regression Algorithm.html 8.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/01. Intro.html 8.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/05. The data.html 8.7 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/18. Normalized Inputs and Initial Weights .html 8.7 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/20. Optimizing a Logistic Classifier.html 8.7 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/17. External Validation Indices.html 8.6 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/14. Implementation.html 8.6 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/22. Momentum and Learning Rate Decay.html 8.6 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/08. Training Your Logistic Classifier .html 8.6 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/08. Overview of The Expectation Maximization (EM) Algorithm.html 8.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/09. Why Neural Networks.html 8.6 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/02. Continuous Perceptrons.html 8.6 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/02. Solving Problems - Big and Small .html 8.6 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/21. Stochastic Gradient Descent.html 8.6 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/18. Batch vs Stochastic Gradient Descent.html 8.6 kB
  • Part 02-Module 08-Lesson 01_Machine Learning Capstone Project/03. Software and Data Requirements.html 8.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/04. Classification Problems 2.html 8.6 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/03. Non-Linear Models.html 8.6 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/14. Minimizing Cross Entropy.html 8.6 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/23. Error Functions Around the World.html 8.6 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/11. Naive Bayes Algorithm 1.html 8.6 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/21. GMM Cluster Validation Lab.html 8.6 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/19. Measuring Performance .html 8.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/17. One-Hot Encoding.html 8.6 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/11. Logistic Regression Quiz.html 8.6 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/10. Convolutional Layers (Part 1).html 8.6 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/01. Non-linear Data.html 8.6 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/07. Supervised Classification.html 8.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/13. Error Functions.html 8.6 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/07. Feature Scaling Formula Quiz 1.html 8.6 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/08. Feature Scaling Formula Quiz 2.html 8.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/14. Error Functions-jfKShxGAbok.zh-CN.vtt 8.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/01. Announcement.html 8.5 kB
  • Part 02-Module 08-Lesson 01_Machine Learning Capstone Project/05. Example Reports.html 8.5 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/23. Parameter Hyperspace .html 8.5 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/01. What is Deep Learning .html 8.5 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/09. Local Connectivity.html 8.5 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/12. Stride and Padding.html 8.5 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/03. Let's Get Started .html 8.5 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/02. Gaussian Mixture Model (GMM) Clustering.html 8.5 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/04. Sarah's Height + Weight.html 8.5 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/05. Community Guidelines.html 8.5 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/13. Participating in open source projects.html 8.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/10. Training Optimization.html 8.5 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/12. Polynomial Kernel 2.html 8.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/16. Vanishing Gradient.html 8.5 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/09. Expectation Maximization Part 1.html 8.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/11. Early Stopping.html 8.5 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/22. GMM Cluster Validation Lab Solution.html 8.5 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/06. Naive Bayes Quiz.html 8.4 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/03. Gaussian Distribution in One Dimension.html 8.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/12. Non-Linear Regions.html 8.4 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/10. Expectation Maximization Part 2.html 8.4 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/07. Experience Replay-wX_-SZG-YMQ.zh-CN.vtt 8.4 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/02. Logistic Regression Quiz.html 8.4 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/11. Visual Example of EM Progress.html 8.4 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/05. An Iterative Method-AX-hG3KvwzY.pt-BR.vtt 8.4 kB
  • Part 01-Module 07-Lesson 01_Model Selection/09. Grid Search in sklearn.html 8.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/19. Learning Rate Decay.html 8.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/13. Regularization 2.html 8.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/26. Mini Project Intro.html 8.4 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/20. Image Augmentation in Keras-odStujZq3GY.en.vtt 8.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/20. Random Restart.html 8.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/02. Introduction.html 8.4 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/18. Kernel Method Quiz.html 8.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/15. Local Minima.html 8.4 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/13. SVM 11 Polynomial Kernel 3 V1-XmbK8OjbX5U.pt-BR.vtt 8.4 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/05. Gaussian Distribution in 2D.html 8.4 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/04. GMM Clustering in One Dimension.html 8.4 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/15. Cluster Analysis Process.html 8.4 kB
  • Part 02-Module 07-Lesson 01_Writing up a Capstone Proposal/03. Software and Data Requirements.html 8.4 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/03. GitHub profile important items.html 8.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/21. Momentum.html 8.4 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/09. Recall.html 8.4 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/05. Mini Project MC (Parts 0 and 1).html 8.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/14. Dropout.html 8.4 kB
  • assets/css/fonts/KaTeX_Size3-Regular.ttf 8.4 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/09. Writing READMEs with Walter.html 8.4 kB
  • Part 02-Module 01-Lesson 01_Welcome to Advanced Machine Learning/06. Community Guidelines.html 8.4 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/17. Mini Project MC (Part 3).html 8.4 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/13. GMM Implementation.html 8.3 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/03. Height + Weight for Cameron.html 8.3 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/08. Mini Project MC (Part 2).html 8.3 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/16. Cluster Validation.html 8.3 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/13. Solution Information Gain.html 8.3 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/20. Truncated Policy Iteration.html 8.3 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/01. Intro.html 8.3 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/02. Introduction.html 8.3 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/06. Quiz False Positives.html 8.3 kB
  • Part 01-Module 11-Lesson 01_Clustering/01. Introduction.html 8.3 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/12. Expectation Maximization.html 8.3 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/21. Mini Project MC (Part 4).html 8.3 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/05. An Iterative Method, Part 1.html 8.3 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/12. ROC Curve-2Iw5TiGzJI4.pt-BR.vtt 8.3 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/18. ROC Curve-2Iw5TiGzJI4.pt-BR.vtt 8.3 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/03. Decision Trees Quiz.html 8.3 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/02. M2L3 02 V2-ToS8vXGdODE.zh-CN.vtt 8.3 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/02. Which line is better.html 8.3 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/14. Policy Improvement-4_adUEK0IHg.en.vtt 8.3 kB
  • Part 01-Module 07-Lesson 01_Model Selection/05. Learning Curves SC V1-ZNhnNVKl8NM.pt-BR.vtt 8.3 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/06. GMM in 2D.html 8.3 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/20. Silhouette Coefficient .html 8.3 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/14. Support Vector Machines Quiz.html 8.3 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/14. Policy Improvement.html 8.3 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/24. Neural Network Regression.html 8.3 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/13. Regularization-ndYnUrx8xvs.en.vtt 8.3 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/17. Policy Iteration.html 8.3 kB
  • Part 01-Module 04-Lesson 01_NumPy and pandas Assessment/01. Assessment.html 8.3 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/10. Function Approximation.html 8.3 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/17. Next Steps.html 8.3 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/29. Outro.html 8.3 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/11. Discounted Return.html 8.3 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/23. Value Iteration.html 8.3 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/15. Participating in open source projects 2.html 8.2 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/02. A Metric for Chris.html 8.2 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/Project Description - Improve Your LinkedIn Profile.html 8.2 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/21. CrossEntropy V1-1BnhC6e0TFw.en.vtt 8.2 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/09. HC examples and applications.html 8.2 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/08. Precision.html 8.2 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/04. Quiz Space Representations.html 8.2 kB
  • Part 02-Module 04-Lesson 05_Teach a Quadcopter How to Fly/07. Ornstein–Uhlenbeck Noise.html 8.2 kB
  • Part 01-Module 07-Lesson 01_Model Selection/05. Learning Curves SC V1-ZNhnNVKl8NM.en.vtt 8.2 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/12. Up Next.html 8.2 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/11. MinMax Scaler in sklearn-lgoh5R05YM0.ar.vtt 8.2 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/11. Discounted Return-opXGNPwwn7g.pt-BR.vtt 8.2 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/img/codecogseqn-43.gif 8.2 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/13. Building a Spam Classifier.html 8.1 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/01. Introduction.html 8.1 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/05. Interview with Art - Part 1.html 8.1 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/10. 08 F1 Score SC V1-TRzBeL07fSg.en.vtt 8.1 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/14. Interview with Art - Part 3.html 8.1 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/05. MLND - Unsupervised Learning - L2 05 CompleteLink AverageLink Ward MAIN V1 V2-dWGQVcZ95d0.en.vtt 8.1 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/10. Interview with Art - Part 2.html 8.1 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/15. DBSCAN examples applications.html 8.1 kB
  • Part 02-Module 08-Lesson 01_Machine Learning Capstone Project/06. Submitting the Project.html 8.1 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/08. Goals and Rewards, Part 2.html 8.1 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/05. State-Value Functions.html 8.1 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/09. MLND - Unsupervised Learning - L3 09 Expectation Maximization Pt 1 V1 MAIN 1 V2-cf-RLKn5ubA.pt-BR.vtt 8.1 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/Project Description - Finding Donors for CharityML.html 8.1 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/07. M2L3 07 V2-ZBLLGIN1EfU.zh-CN.vtt 8.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/29. Outro.html 8.1 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/01. Overview.html 8.1 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/04. Good GitHub repository.html 8.1 kB
  • Part 01-Module 02-Lesson 01_Nanodegree Career Services/02. Prepare for the Udacity Talent Program.html 8.1 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/10. Regularization Quiz.html 8.1 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/02. Applications.html 8.0 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/02. Random Projection.html 8.0 kB
  • Part 01-Module 07-Lesson 01_Model Selection/02. Model Complexity Graph.html 8.0 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/18. Titanic Survival Model with Decision Trees.html 8.0 kB
  • Part 01-Module 11-Lesson 01_Clustering/11. K-Means Clustering Visualization 2.html 8.0 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/13. MC Control Policy Improvement.html 8.0 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/18. MC Control Constant-alpha, Part 1.html 8.0 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/12. MC Control Policy Evaluation.html 8.0 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/21. CrossEntropy V1-1BnhC6e0TFw.pt-BR.vtt 8.0 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/09. Generalized Policy Iteration.html 8.0 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/11. Implementation.html 8.0 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/11. Linear Function Approximation-OJ5wrB7o-pI.pt-BR.vtt 8.0 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/09. MLND - Unsupervised Learning - L3 09 Expectation Maximization Pt 1 V1 MAIN 1 V2-cf-RLKn5ubA.en.vtt 8.0 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/10. MC Control Incremental Mean.html 8.0 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/10. Entropy Formula 3.html 8.0 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/06. MC Prediction Action Values.html 8.0 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/19. [Solution] Titanic Survival Model.html 8.0 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/03. MC Prediction State Values.html 8.0 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/18. Closed Form Solution.html 8.0 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/08. Iterative Policy Evaluation.html 8.0 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/07. Quick Fixes #1.html 7.9 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/03. Solution Housing Prices.html 7.9 kB
  • Part 02-Module 07-Lesson 01_Writing up a Capstone Proposal/01. Overview.html 7.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/12. Logistic Regression Answer.html 7.9 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/06. ICA.html 7.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/10. Linear Regression Answer.html 7.9 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/05. Weighting the Models 1.html 7.9 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/11. DBSCAN.html 7.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/22. Hierarchical Clustering.html 7.9 kB
  • Part 01-Module 02-Lesson 01_Nanodegree Career Services/01. Access the Career Portal.html 7.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/04. Decision Trees Answer.html 7.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/19. Kernel Method Answer.html 7.9 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/04. OpenAI Gym.html 7.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/02. Decision Trees.html 7.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/20. Recap and Challenge.html 7.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/21. K-means Clustering.html 7.9 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/11. Implementing Deep Q-Learning.html 7.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/07. Naive Bayes Answer.html 7.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/13. Support Vector Machines.html 7.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/15. Support Vector Machines Answer.html 7.8 kB
  • Part 02-Module 01-Lesson 01_Welcome to Advanced Machine Learning/03. Projects You Will Build.html 7.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/08. Gradient Descent.html 7.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/01. What Is Machine Learning.html 7.8 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/08. [Lab Solution] Hierarchical Clustering.html 7.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/17. Kernel Method.html 7.8 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/02. Classification Problems 1.html 7.8 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/05. MLND - Unsupervised Learning - L2 05 CompleteLink AverageLink Ward MAIN V1 V2-dWGQVcZ95d0.pt-BR.vtt 7.8 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/07. [Lab] Hierarchical clustering .html 7.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/16. Neural Networks.html 7.8 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/09. Testing-gmxGRJSKEb0.en-US.vtt 7.8 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/05. Perceptron Algorithm.html 7.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/05. Naive Bayes.html 7.8 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/10. Quiz Action-Value Functions.html 7.8 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/02. Software Requirements.html 7.8 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/06. Perceptrons.html 7.8 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/09. Local Connectivity-z9wiDg0w-Dc.zh-CN.vtt 7.8 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/14. [Lab Solution] DBSCAN.html 7.8 kB
  • Part 01-Module 17-Lesson 01_Creating Customer Segments/01. Overview.html 7.8 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/05. Higher Dimensions.html 7.8 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/06. Solution Student Admissions.html 7.8 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/11. Gradient Descent The Math.html 7.8 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/21. Polynomial Regression.html 7.8 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/06. Hierarchical clustering implementation.html 7.8 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/10. Mean Squared Error.html 7.8 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/03. Accuracy.html 7.8 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/09. Mean Absolute Error.html 7.8 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/04. Fitting a Line Through Data.html 7.8 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/03. Discrete vs. Continuous Spaces-uHstLeRzaE8.pt-BR.vtt 7.8 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/01. Intro.html 7.8 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/16. Higher Dimensions.html 7.8 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/13. [Lab] DBSCAN.html 7.7 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/10. Convolutional Layers-h5R_JvdUrUI.pt-BR.vtt 7.7 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/10. DQN Improvements.html 7.7 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/01. Random Projection.html 7.7 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/08. Gradient Descent.html 7.7 kB
  • Part 01-Module 17-Lesson 01_Creating Customer Segments/02. Software Requirements.html 7.7 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/09. AdaBoost in sklearn.html 7.7 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/04. Examining single-link clustering.html 7.7 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/06. Absolute Trick.html 7.7 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/05. Complete-link, average-link, Ward.html 7.7 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/05. Moving a Line.html 7.7 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/22. Regularization.html 7.7 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/07. Square Trick.html 7.7 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/05. Mini Project TD (Parts 0 and 1).html 7.7 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/05. An Iterative Method-AX-hG3KvwzY.en.vtt 7.7 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Backpropagation V2-1SmY3TZTyUk.ja-JP.vtt 7.7 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/12. Mini Project TD (Part 3).html 7.7 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/15. Mini Project TD (Part 4).html 7.7 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/09. Mini Project TD (Part 2).html 7.7 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/07. More Resources.html 7.7 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/01. Introduction.html 7.7 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/23. Summary.html 7.7 kB
  • Part 02-Module 08-Lesson 01_Machine Learning Capstone Project/01. Overview.html 7.6 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/14. SVM 12 RBF Kernel 1 V3-xdkIulxXWfQ.en.vtt 7.6 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/04. Submitting the project.html 7.6 kB
  • Part 01-Module 13-Lesson 01_PCA/29. When to Use PCA-hJZHcmJBk1o.ar.vtt 7.6 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/09. Action-Value Functions.html 7.6 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/12. DBSCAN implementation.html 7.6 kB
  • Part 02-Module 01-Lesson 01_Welcome to Advanced Machine Learning/02. Program Structure.html 7.6 kB
  • Part 01-Module 17-Lesson 01_Creating Customer Segments/04. Submitting the project.html 7.6 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/15. Random Forests.html 7.6 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/10. F1 Score.html 7.6 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/14. Maximizing Information Gain.html 7.6 kB
  • Part 01-Module 09-Lesson 01_Predicting Boston Housing Prices/03. Submitting the project.html 7.6 kB
  • Part 02-Module 08-Lesson 01_Machine Learning Capstone Project/04. Report Guidelines.html 7.6 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/10. 08 F1 Score SC V1-TRzBeL07fSg.pt-BR.vtt 7.6 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/23. Outro.html 7.6 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/14. Project.html 7.6 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/03. Apply Credits.html 7.6 kB
  • Part 01-Module 11-Lesson 01_Clustering/12. K-Means Clustering Visualization 3.html 7.6 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/04. Guess the Person Now.html 7.5 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/03. Why Use an Elevator Pitch.html 7.5 kB
  • Part 02-Module 07-Lesson 01_Writing up a Capstone Proposal/02. Description.html 7.5 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/03. Episodic vs. Continuing Tasks.html 7.5 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/04. Recommending Apps 3.html 7.5 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/02. Overview of other clustering methods.html 7.5 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/03. Hierarchical clustering single-link.html 7.5 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/01. Intro.html 7.5 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/09. Testing-gmxGRJSKEb0.pt-BR.vtt 7.5 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/03. Starting the project.html 7.5 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/02. Projects You Will Build.html 7.5 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/01. Deep Reinforcement Learning-GPjK124RU5g.pt-BR.vtt 7.5 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/07. Goals and Rewards, Part 1.html 7.5 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/05. M2L3 05 V1-eZxxNNIZuwA.en.vtt 7.5 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/06. TD Prediction Action Values.html 7.5 kB
  • Part 02-Module 07-Lesson 01_Writing up a Capstone Proposal/04. Proposal Guidelines.html 7.5 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/10. ICA Applications.html 7.5 kB
  • Part 01-Module 11-Lesson 01_Clustering/14. Some challenges of k-means.html 7.5 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/03. Logistic Regression Answer.html 7.5 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/01. K-means considerations.html 7.5 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/03. TD Prediction TD(0)-CsD6b0csU7o.zh-CN.vtt 7.5 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/03. The Setting-nh8Gwdu19nc.pt-BR.vtt 7.5 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/02. The Setting, Revisited.html 7.5 kB
  • Part 01-Module 17-Lesson 01_Creating Customer Segments/03. Starting the project.html 7.5 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/06. The Reward Hypothesis.html 7.5 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/12. ROC Curve-2Iw5TiGzJI4.zh-CN.vtt 7.5 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/18. ROC Curve-2Iw5TiGzJI4.zh-CN.vtt 7.5 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/15. Spam Classifier - Workspace.html 7.5 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/20. Outro.html 7.5 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/04. SL NB 03 Guess The Person Now V1 V2-pQgO1KF90yU.pt-BR.vtt 7.4 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/07. Entropy.html 7.4 kB
  • Part 01-Module 11-Lesson 01_Clustering/02. Unsupervised Learning.html 7.4 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/14. MDPs, Part 2-CUTtQvxKkNw.pt-BR.vtt 7.4 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/10. Bayesian Learning 3.html 7.4 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/10. TD Control Sarsamax.html 7.4 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/13. TD Control Expected Sarsa.html 7.4 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/10. Cumulative Reward.html 7.4 kB
  • Part 01-Module 09-Lesson 01_Predicting Boston Housing Prices/02. Starting the project.html 7.4 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/05. Uploading to Workspace.html 7.4 kB
  • Part 01-Module 11-Lesson 01_Clustering/09. Handoff to Katie.html 7.4 kB
  • Part 01-Module 11-Lesson 01_Clustering/03. Clustering Movies.html 7.4 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/14. MDPs, Part 2.html 7.4 kB
  • Part 02-Module 04-Lesson 05_Teach a Quadcopter How to Fly/03. Replay Buffer.html 7.4 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/10. Convolutional Layers-h5R_JvdUrUI.en.vtt 7.4 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/04. SL NB 03 Guess The Person Now V1 V2-pQgO1KF90yU.en.vtt 7.4 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/01. Deep Reinforcement Learning.html 7.4 kB
  • Part 01-Module 17-Lesson 01_Creating Customer Segments/05. Uploading to Workspace.html 7.4 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/09. Deep Q-Learning Algorithm.html 7.4 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/17. MDPs, Part 3.html 7.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Backpropagation V2-1SmY3TZTyUk.en.vtt 7.4 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/03. MC Prediction State Values-0q2wSWyuBj8.zh-CN.vtt 7.4 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/04. Neural Networks.html 7.4 kB
  • Part 01-Module 09-Lesson 01_Predicting Boston Housing Prices/04. Uploading to Workspace.html 7.4 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/05. MLND - Unsupervised Learning - L2 05 CompleteLink AverageLink Ward MAIN V1 V2-dWGQVcZ95d0.zh-CN.vtt 7.3 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Backpropagation V2-1SmY3TZTyUk.pt-BR.vtt 7.3 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/11. Discounted Return-opXGNPwwn7g.en.vtt 7.3 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/01. Introduction.html 7.3 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/17. Further Reading.html 7.3 kB
  • Part 01-Module 11-Lesson 01_Clustering/13. Sklearn.html 7.3 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/02. Two-Layer Neural Network.html 7.3 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/04. Linear Boundaries.html 7.3 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/03. Minimizing Distances.html 7.3 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/05. L6 4 ICA Algorithm V2 V1-xlhd5UWk_-E.pt-BR.vtt 7.3 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/06. Classification Error.html 7.3 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/11. Polynomial Kernel 1.html 7.3 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/06. Comparing Features with Different Scales.html 7.3 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/13. MC Control Policy Improvement-2RKH-BInX7s.pt-BR.vtt 7.3 kB
  • Part 01-Module 07-Lesson 01_Model Selection/11. [Solution] Grid Search Lab.html 7.3 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/13. Polynomial Kernel 3.html 7.3 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/01. Introducing Luis.html 7.3 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/04. Error Function Intuition.html 7.3 kB
  • Part 02-Module 01-Lesson 01_Welcome to Advanced Machine Learning/01. Welcome to Advanced Machine Learning.html 7.3 kB
  • Part 01-Module 07-Lesson 01_Model Selection/10. Grid Search Lab.html 7.3 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/10. The C Parameter.html 7.2 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/07. Margin Error.html 7.2 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/04. Independent Component Analysis (ICA).html 7.2 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/03. The Setting-nh8Gwdu19nc.en.vtt 7.2 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/09. Error Function.html 7.2 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/05. DL 41 Feedforward FIX V2-hVCuvMGOfyY.ja-JP.vtt 7.2 kB
  • Part 01-Module 13-Lesson 01_PCA/28. PCA in sklearn-SBYdqlLgbGk.ar.vtt 7.2 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/12. TensorFlow Implementation.html 7.2 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/16. RBF Kernel 3.html 7.2 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/01. Intro.html 7.2 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/14. RBF Kernel 1.html 7.2 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/15. RBF Kernel 2.html 7.2 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/06. MC Prediction Action Values-08tLtbh0xLs.pt-BR.vtt 7.2 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/06. Exercise Discretization.html 7.2 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/20. Image Augmentation in Keras-odStujZq3GY.zh-CN.vtt 7.2 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/08. Exercise Tile Coding.html 7.2 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/12. Naive Bayes Algorithm 2.html 7.2 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/index.html 7.2 kB
  • Part 01-Module 07-Lesson 01_Model Selection/05. Learning Curves.html 7.2 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/10. MLND - Unsupervised Learning - L3 10 Expectation Maximization Pt 2 MAIN V1 V2-B_xXd0mFUm4.en.vtt 7.2 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/11. MinMax Scaler in sklearn.html 7.1 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/09. Bayesian Learning 2.html 7.1 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/07. Solution False Positives.html 7.1 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/13. Regularization-ndYnUrx8xvs.zh-CN.vtt 7.1 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/01. Overview.html 7.1 kB
  • Part 01-Module 01-Lesson 03_Introductory Practice Project/03. Project files.html 7.1 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/03. Known and Inferred.html 7.1 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/07. Experience Replay.html 7.1 kB
  • Part 02-Module 07-Lesson 01_Writing up a Capstone Proposal/05. Submitting the Project.html 7.1 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/03. TD Prediction TD(0).html 7.1 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/07. TD Control Sarsa(0).html 7.1 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/05. Training a Deep Learning Network.html 7.1 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/08. Regularization Intro.html 7.1 kB
  • Part 01-Module 07-Lesson 01_Model Selection/08. Grid Search.html 7.1 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/10. MLND - Unsupervised Learning - L3 10 Expectation Maximization Pt 2 MAIN V1 V2-B_xXd0mFUm4.pt-BR.vtt 7.1 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/05. L6 4 ICA Algorithm V2 V1-xlhd5UWk_-E.en.vtt 7.1 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/02. Guess the Person.html 7.1 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/03. Monte Carlo Learning.html 7.1 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/06. Deep Q Network.html 7.1 kB
  • Part 01-Module 09-Lesson 01_Predicting Boston Housing Prices/01. Project Overview.html 7.1 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/05. Bayes Theorem.html 7.1 kB
  • Part 01-Module 01-Lesson 03_Introductory Practice Project/02. Software Requirements.html 7.1 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/11. Linear Function Approximation-OJ5wrB7o-pI.en.vtt 7.1 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/14. Policy Improvement-4_adUEK0IHg.zh-CN.vtt 7.1 kB
  • Part 01-Module 07-Lesson 01_Model Selection/01. 04 L Types Of Errors-Twf1qnPZeSY.en-US.vtt 7.1 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/08. Fixed Q Targets.html 7.0 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/08. [Lab] Independent Component Analysis.html 7.0 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/13. Non-Linear Function Approximation.html 7.0 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/05. Q-Learning.html 7.0 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/03. Discrete vs. Continuous Spaces.html 7.0 kB
  • Part 01-Module 13-Lesson 01_PCA/index.html 7.0 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/09. [Solution] Independent Component Analysis.html 7.0 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/01. Intro.html 7.0 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/07. Precision and Recall.html 7.0 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/11. Linear Function Approximation.html 7.0 kB
  • Part 02-Module 04-Lesson 05_Teach a Quadcopter How to Fly/Project Description - Teach a Quadcopter How to Fly.html 7.0 kB
  • assets/css/fonts/KaTeX_Size1-Regular.woff 7.0 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/19. 21 L Measuring Performance-byP0DJImOSk.ja-JP.vtt 7.0 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/14. MDPs, Part 2-CUTtQvxKkNw.en.vtt 7.0 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/18. Outro.html 7.0 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/12. Dropout Pt. 2.html 6.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/26. Transfer Learning in Keras-HsIAznMM1LA.pt-BR.vtt 6.9 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/09. Regularization.html 6.9 kB
  • Part 01-Module 07-Lesson 01_Model Selection/03. Cross Validation.html 6.9 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/05. DL 41 Feedforward FIX V2-hVCuvMGOfyY.pt-BR.vtt 6.9 kB
  • Part 02-Module 04-Lesson 05_Teach a Quadcopter How to Fly/02. Quadcopter workspace.html 6.9 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/11. Dropout.html 6.9 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/12. Kernel Functions.html 6.9 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/09. Testing-gmxGRJSKEb0.zh-CN.vtt 6.9 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/09. MLND - Unsupervised Learning - L3 09 Expectation Maximization Pt 1 V1 MAIN 1 V2-cf-RLKn5ubA.zh-CN.vtt 6.9 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/02. Neural Nets as Value Functions.html 6.9 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/13. MC Control Policy Improvement-2RKH-BInX7s.en.vtt 6.9 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/05. Discretization.html 6.9 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/16. Outro.html 6.9 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/09. Coarse Coding.html 6.9 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/04. Temporal Difference Learning.html 6.9 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/07. Tile Coding.html 6.9 kB
  • Part 01-Module 07-Lesson 01_Model Selection/01. Types of Errors.html 6.9 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/06. Program Readiness.html 6.9 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/01. Intro to Deep Q-Learning.html 6.9 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/01. Welcome to the Machine Learning Engineer Nanodegree Program.html 6.8 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/04. Accuracy 2.html 6.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/21. CrossEntropy V1-1BnhC6e0TFw.zh-CN.vtt 6.8 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/02. Confusion Matrix 2.html 6.8 kB
  • Part 01-Module 11-Lesson 01_Clustering/13. Sklearn-3zHUAXcoZ7c.en.vtt 6.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/index.html 6.8 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/diagonal-line-2.png 6.8 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/diagonal-line-2.png 6.8 kB
  • Part 01-Module 07-Lesson 01_Model Selection/04. K-Fold Cross Validation.html 6.8 kB
  • Part 03-Module 01-Lesson 01_Software and Tools/01. TensorFlow.html 6.8 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/02. Create an AWS Account.html 6.8 kB
  • Part 01-Module 13-Lesson 01_PCA/31. Eigenfaces Code-LgLYw-G4sLQ.pt-BR.vtt 6.8 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/04. Gridworld Example.html 6.8 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/06. Absolute Trick-DJWjBAqSkZw.en.vtt 6.7 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/11. Optimal Policies.html 6.7 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/11. MLND - Unsupervised Learning - L2 08 DBSCAN MAIN V1 V2--dqyFkfnctI.en.vtt 6.7 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/01. Intro to Deep Neural Networks.html 6.7 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/07. SVM 06 Margin Error V2-dSac8Gfgbok.en.vtt 6.7 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/05. FastICA Algorithm.html 6.7 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/14. Summary.html 6.7 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/03. Discrete vs. Continuous Spaces-uHstLeRzaE8.en.vtt 6.7 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/08. Optimality.html 6.7 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/05. Resources.html 6.7 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/07. SL NB 06 S False Positives V1 V3-Bg6_Tvcv81A.pt-BR.vtt 6.7 kB
  • assets/css/fonts/KaTeX_Size2-Regular.woff 6.7 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/02. Policies.html 6.7 kB
  • Part 01-Module 11-Lesson 02_Clustering Mini-Project/01. Intro.html 6.7 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/25. Transfer Learning-LHG5FltaR6I.pt-BR.vtt 6.7 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/14. MLND - Unsupervised Learning - L3 15 GMM Examples And Applications MAIN V2 V1-FRoxeLp81Bg.en.vtt 6.7 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. DL 46 Calculating The Gradient 2 V2 (2)-7lidiTGIlN4.pt-BR.vtt 6.7 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/01. Introduction.html 6.6 kB
  • Part 01-Module 07-Lesson 01_Model Selection/12. Summary.html 6.6 kB
  • Part 01-Module 07-Lesson 01_Model Selection/13. Outro.html 6.6 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/06. Project Workspace.html 6.6 kB
  • Part 01-Module 03-Lesson 01_Get Help with Your Account/03. Bugcrowd.html 6.6 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/11. MLND SL NB Naive Bayes Algorithm-CQBMB9jwcp8.en.vtt 6.6 kB
  • Part 01-Module 11-Lesson 01_Clustering/13. Sklearn-3zHUAXcoZ7c.pt-BR.vtt 6.6 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/07. SL NB 06 S False Positives V1 V3-Bg6_Tvcv81A.en.vtt 6.6 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/01. Deep Reinforcement Learning-GPjK124RU5g.en.vtt 6.6 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/05. When accuracy won't work.html 6.6 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/12. ROC Curve.html 6.6 kB
  • Part 01-Module 17-Lesson 01_Creating Customer Segments/06. Workspace.html 6.6 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/13. Wrap Up.html 6.6 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/14. MLND - Unsupervised Learning - L3 15 GMM Examples And Applications MAIN V2 V1-FRoxeLp81Bg.pt-BR.vtt 6.6 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/index.html 6.6 kB
  • Part 01-Module 09-Lesson 01_Predicting Boston Housing Prices/05. Project Workspace.html 6.6 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/06. Absolute Trick-DJWjBAqSkZw.pt-BR.vtt 6.6 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/10. Resources.html 6.6 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/03. Classification Problems 2.html 6.6 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/z93yz2vrgdaacqjowbaabie8yaaackcwmaaadshdeaaabpwhgaaia0yqwaaecamayaacbngamaajamjaeaaegtxgaaakqjywaaan 6.6 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/13. Regression Metrics.html 6.6 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/14. SVM 12 RBF Kernel 1 V3-xdkIulxXWfQ.zh-CN.vtt 6.6 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/03. Random Projection in sklearn.html 6.6 kB
  • Part 01-Module 01-Lesson 03_Introductory Practice Project/01. Overview.html 6.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Backpropagation V2-1SmY3TZTyUk.zh-CN.vtt 6.5 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/03. Stats Refresher.html 6.5 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/08. Tuning Parameters Automatically.html 6.5 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/06. Deep Q Network-GgtR_d1OB-M.pt-BR.vtt 6.5 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/08. Goals and Rewards, Part 2-pVIFc72VYH8.pt-BR.vtt 6.5 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/02. Meet Chris-0ccflD9x5WU.ar.vtt 6.5 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/07. Weighting the Models 3.html 6.5 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/07. ICA in sklearn.html 6.5 kB
  • assets/css/fonts/KaTeX_Size4-Regular.woff 6.5 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/08. Combining the Models.html 6.5 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/17. MLND - Unsupervised Learning - L3 18 External Validation Indices MAIN V1 V2-rXZM5X2-5D0.en.vtt 6.4 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/04. Weighting the Data.html 6.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/index.html 6.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/index.html 6.4 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/01. Intro.html 6.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/index.html 6.4 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/03. Logistic Regression - Solution-1iNylA3fJDs.ja-JP.vtt 6.4 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/05. An Iterative Method-AX-hG3KvwzY.zh-CN.vtt 6.4 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/05. M2L3 05 V1-eZxxNNIZuwA.zh-CN.vtt 6.4 kB
  • Part 03-Module 01-Lesson 02_Deep Learning/01. Deep Learning.html 6.4 kB
  • Part 01-Module 13-Lesson 01_PCA/31. Eigenfaces Code-LgLYw-G4sLQ.en.vtt 6.4 kB
  • Part 01-Module 07-Lesson 01_Model Selection/01. 04 L Types Of Errors-Twf1qnPZeSY.pt-BR.vtt 6.4 kB
  • Part 03-Module 01-Lesson 02_Deep Learning/03. Deep Learning What You'll Do.html 6.4 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/11. MLND SL NB Naive Bayes Algorithm-CQBMB9jwcp8.pt-BR.vtt 6.4 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/01. Intro.html 6.4 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/03. AdaBoost.html 6.4 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/06. Actor-Critic with Advantage.html 6.4 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/14. SVM 12 RBF Kernel 1 V3-xdkIulxXWfQ.pt-BR.vtt 6.4 kB
  • Part 01-Module 18-Lesson 01_Congratulations!/01. Congratulations!.html 6.4 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/02. Bagging.html 6.3 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/01. Intro.html 6.3 kB
  • Part 01-Module 03-Lesson 01_Get Help with Your Account/01. FAQ.html 6.3 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. DL 46 Calculating The Gradient 2 V2 (2)-7lidiTGIlN4.ja-JP.vtt 6.3 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/01. Actor-Critic Methods.html 6.3 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/03. Two Function Approximators.html 6.3 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/05. DL 41 Feedforward FIX V2-hVCuvMGOfyY.en.vtt 6.3 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. DL 46 Calculating The Gradient 2 V2 (2)-7lidiTGIlN4.en.vtt 6.3 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/index.html 6.3 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/index.html 6.3 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/05. Advantage Function.html 6.3 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/02. A Better Score Function.html 6.3 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/04. The Actor and The Critic.html 6.3 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/02. Outline.html 6.3 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/04. MLND - Unsupervised Learning - L2 04 Examining SingleLink Clustering MAIN V1 V2-foLcmCOLDos.en.vtt 6.3 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/01. Introduction.html 6.3 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/18. CNNs in Keras Practical Example-faFvmGDwXX0.pt-BR.vtt 6.3 kB
  • Part 01-Module 07-Lesson 01_Model Selection/03. Model-Complexity-Graph Solution 2-5pWHGkNyRhA.en-US.vtt 6.3 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/03. MLND - Unsupervised Learning - L2 03 V2-pd9Ix3WMP_Q.en.vtt 6.3 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/11. MLND - Unsupervised Learning - L2 08 DBSCAN MAIN V1 V2--dqyFkfnctI.zh-CN.vtt 6.3 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/26. Transfer Learning in Keras-HsIAznMM1LA.en.vtt 6.3 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/10. Outro.html 6.2 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/10. Convolutional Layers-h5R_JvdUrUI.zh-CN.vtt 6.2 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/11. MinMax Scaler in sklearn-lgoh5R05YM0.en.vtt 6.2 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/img/screen-shot-2018-05-22-at-12.25.34-pm.png 6.2 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/06. Reference Guide.html 6.2 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/19. 21 L Measuring Performance-byP0DJImOSk.pt-BR.vtt 6.2 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/perceptron-equation-2.gif 6.2 kB
  • Part 02-Module 02-Lesson 07_Deep Learning Project/02. Dog Breed Workspace.html 6.2 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/11. Outro.html 6.2 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/06. Model Validation in Keras-002jNXSM6CU.pt-BR.vtt 6.2 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/06. MC Prediction Action Values-08tLtbh0xLs.en.vtt 6.2 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/04. SL NB 03 Guess The Person Now V1 V2-pQgO1KF90yU.zh-CN.vtt 6.2 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/03. The Setting-nh8Gwdu19nc.zh-CN.vtt 6.2 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/06. Monte Carlo Policy Gradients.html 6.2 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/03. Policy Function Approximation.html 6.2 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/02. Why Policy-Based Methods.html 6.2 kB
  • Part 01-Module 11-Lesson 02_Clustering Mini-Project/02. K-means clustering of movie ratings.html 6.2 kB
  • Part 01-Module 07-Lesson 01_Model Selection/01. 04 L Types Of Errors-Twf1qnPZeSY.zh-CN.vtt 6.2 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/07. Constrained Policy Gradients.html 6.2 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/04. Stochastic Policy Search.html 6.2 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/01. Policy-Based Methods.html 6.2 kB
  • Part 01-Module 01-Lesson 03_Introductory Practice Project/04. Titanic Survival Exploration.html 6.2 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/05. Policy Gradients.html 6.1 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/06. DL 06 Perceptron Definition Fix V2-hImSxZyRiOw.ja-JP.vtt 6.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/07. DL 06 Perceptron Definition Fix V2-hImSxZyRiOw.ja-JP.vtt 6.1 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/25. Transfer Learning-LHG5FltaR6I.en.vtt 6.1 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/10. Cumulative Reward-ysriH65lV9o.pt-BR.vtt 6.1 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/12. Logistic Regression Answer-JuAJd9Qvs6U.pt-BR.vtt 6.1 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/03. Logistic Regression - Solution-1iNylA3fJDs.pt-BR.vtt 6.1 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/03. M2L3 03 V2-TePX-0Bs23E.en.vtt 6.1 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/10. MLND - Unsupervised Learning - L3 10 Expectation Maximization Pt 2 MAIN V1 V2-B_xXd0mFUm4.zh-CN.vtt 6.1 kB
  • Part 02-Module 03-Lesson 07_Solve OpenAI Gym's Taxi-v2 Task/03. Mini Project.html 6.1 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/11. Discounted Return-opXGNPwwn7g.zh-CN.vtt 6.1 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/03. Logistic Regression - Solution-1iNylA3fJDs.en-US.vtt 6.1 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/12. Logistic Regression Answer-JuAJd9Qvs6U.en.vtt 6.1 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/03. How Computers Interpret Images-V4f6p6uRhu8.pt-BR.vtt 6.1 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/08. Fixed Q Targets-SWpyiEezfp4.pt-BR.vtt 6.1 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/index.html 6.1 kB
  • Part 03-Module 01-Lesson 02_Deep Learning/02. What You'll Watch and Learn.html 6.0 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/06. DL 06 Perceptron Definition Fix V2-hImSxZyRiOw.en.vtt 6.0 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/07. DL 06 Perceptron Definition Fix V2-hImSxZyRiOw.en.vtt 6.0 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/index.html 6.0 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/index.html 6.0 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/06. Deep Q Network-GgtR_d1OB-M.en.vtt 6.0 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/08. Recap.html 6.0 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/index.html 6.0 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/10. MC Control Incremental Mean-E2RITH-2NUE.pt-BR.vtt 6.0 kB
  • Part 01-Module 11-Lesson 02_Clustering Mini-Project/03. Solution.html 6.0 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/17. MLND - Unsupervised Learning - L3 18 External Validation Indices MAIN V1 V2-rXZM5X2-5D0.pt-BR.vtt 6.0 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/07. Summary.html 6.0 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Combinando modelos-Boy3zHVrWB4.ja-JP.vtt 6.0 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/05. Q-Learning-AI5gLgYMSq8.pt-BR.vtt 6.0 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/11. Linear Function Approximation-OJ5wrB7o-pI.zh-CN.vtt 5.9 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/19. 21 L Measuring Performance-byP0DJImOSk.en-US.vtt 5.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/15. Pooling Layers-OkkIZNs7Cyc.pt-BR.vtt 5.9 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/11. MLND - Unsupervised Learning - L2 08 DBSCAN MAIN V1 V2--dqyFkfnctI.pt-BR.vtt 5.9 kB
  • Part 01-Module 03-Lesson 01_Get Help with Your Account/02. Support.html 5.9 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/02. The Setting, Revisited-V6Q1uF8a6kA.pt-BR.vtt 5.9 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/perceptron-formula.gif 5.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/img/diagonal-line-1.png 5.9 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/img/diagonal-line-1.png 5.9 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/03. The Setting.html 5.9 kB
  • Part 01-Module 07-Lesson 01_Model Selection/03. Model-Complexity-Graph Solution 2-5pWHGkNyRhA.pt-BR.vtt 5.9 kB
  • Part 02-Module 02-Lesson 07_Deep Learning Project/01. Dog Breed Recognition Project.html 5.9 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/03. Discrete vs. Continuous Spaces-uHstLeRzaE8.zh-CN.vtt 5.9 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/08. Goals and Rewards, Part 2-pVIFc72VYH8.en.vtt 5.9 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/07. SVM 06 Margin Error V2-dSac8Gfgbok.zh-CN.vtt 5.9 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/14. MDPs, Part 2-CUTtQvxKkNw.zh-CN.vtt 5.8 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/01. Confusion Matrix-Question 1-9GLNjmMUB_4.en.vtt 5.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/24. Confusion Matrix-Question 1-9GLNjmMUB_4.en.vtt 5.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/15. Discrete vs. Continuous-Rm2KxFaPiJg.en.vtt 5.8 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/26. Transfer Learning in Keras-HsIAznMM1LA.zh-CN.vtt 5.8 kB
  • assets/css/fonts/KaTeX_Size1-Regular.woff2 5.8 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/04. MLND - Unsupervised Learning - L2 04 Examining SingleLink Clustering MAIN V1 V2-foLcmCOLDos.zh-CN.vtt 5.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/15. Discrete vs. Continuous-Rm2KxFaPiJg.pt-BR.vtt 5.8 kB
  • Part 01-Module 14-Lesson 01_PCA Mini-Project/01. PCA Mini-Project.html 5.8 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/02. Aplicações de CNNs-HrYNL_1SV2Y.pt-BR.vtt 5.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/16. DL 18 Q Softmax V2-RC_A9Tu99y4.ja-JP.vtt 5.8 kB
  • Part 01-Module 13-Lesson 01_PCA/23. PCA for Feature Transformation-8kUPRUEMCA8.ar.vtt 5.8 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/14. MLND - Unsupervised Learning - L3 15 GMM Examples And Applications MAIN V2 V1-FRoxeLp81Bg.zh-CN.vtt 5.8 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/11. MinMax Scaler in sklearn-lgoh5R05YM0.pt-BR.vtt 5.8 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/01. Deep Reinforcement Learning-GPjK124RU5g.zh-CN.vtt 5.8 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/02. Meet Chris-0ccflD9x5WU.ja-JP.vtt 5.7 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/08. Gradient Descent-4s4x9h6AN5Y.en.vtt 5.7 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/07. SVM 06 Margin Error V2-dSac8Gfgbok.pt-BR.vtt 5.7 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/inputs-matrix.png 5.7 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/06. DL 06 Perceptron Definition Fix V2-hImSxZyRiOw.pt-BR.vtt 5.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/07. DL 06 Perceptron Definition Fix V2-hImSxZyRiOw.pt-BR.vtt 5.7 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/02. The Setting, Revisited-V6Q1uF8a6kA.en.vtt 5.7 kB
  • Part 01-Module 11-Lesson 01_Clustering/13. Sklearn-3zHUAXcoZ7c.zh-CN.vtt 5.7 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/index.html 5.7 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/13. MC Control Policy Improvement-2RKH-BInX7s.zh-CN.vtt 5.7 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/index.html 5.7 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/11. MLND SL NB Naive Bayes Algorithm-CQBMB9jwcp8.zh-CN.vtt 5.7 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/index.html 5.7 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/03. How Computers Interpret Images-V4f6p6uRhu8.en.vtt 5.7 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/11. Model Complexity Graph-NnS0FJyVcDQ.pt-BR.vtt 5.7 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/01. Confusion Matrix-Question 1-9GLNjmMUB_4.en-US.vtt 5.6 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/24. Confusion Matrix-Question 1-9GLNjmMUB_4.en-US.vtt 5.6 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/06. Model Validation in Keras-002jNXSM6CU.en.vtt 5.6 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/03. MLND - Unsupervised Learning - L2 03 V2-pd9Ix3WMP_Q.pt-BR.vtt 5.6 kB
  • Part 01-Module 13-Lesson 01_PCA/29. When to Use PCA-hJZHcmJBk1o.pt-BR.vtt 5.6 kB
  • Part 01-Module 13-Lesson 01_PCA/31. Eigenfaces Code-LgLYw-G4sLQ.zh-CN.vtt 5.6 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/02. Policies-hc3LrvaC13U.pt-BR.vtt 5.6 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/index.html 5.6 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/10. MC Control Incremental Mean-E2RITH-2NUE.en.vtt 5.6 kB
  • Part 01-Module 11-Lesson 01_Clustering/index.html 5.6 kB
  • assets/css/fonts/KaTeX_Size2-Regular.woff2 5.6 kB
  • Part 01-Module 13-Lesson 01_PCA/17. Composite Features-spVqFnSvlIU.ar.vtt 5.6 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/08. Fixed Q Targets-SWpyiEezfp4.en.vtt 5.6 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/index.html 5.6 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/04. MLND - Unsupervised Learning - L2 04 Examining SingleLink Clustering MAIN V1 V2-foLcmCOLDos.pt-BR.vtt 5.5 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/07. SL NB 06 S False Positives V1 V3-Bg6_Tvcv81A.zh-CN.vtt 5.5 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/11. MinMax Scaler in sklearn-lgoh5R05YM0.zh-CN.vtt 5.5 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/12. Logistic Regression Answer-JuAJd9Qvs6U.zh-CN.vtt 5.5 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/15. Pooling Layers-OkkIZNs7Cyc.en.vtt 5.5 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/index.html 5.5 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/18. CNNs in Keras Practical Example-faFvmGDwXX0.en.vtt 5.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/15. Discrete vs. Continuous-Rm2KxFaPiJg.ja-JP.vtt 5.5 kB
  • Part 01-Module 13-Lesson 01_PCA/29. When to Use PCA-hJZHcmJBk1o.en.vtt 5.5 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/25. Transfer Learning-LHG5FltaR6I.zh-CN.vtt 5.5 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/02. Aplicações de CNNs-HrYNL_1SV2Y.en.vtt 5.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/16. DL 18 Q Softmax V2-RC_A9Tu99y4.en.vtt 5.5 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/10. Cumulative Reward-ysriH65lV9o.en.vtt 5.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/05. DL 41 Feedforward FIX V2-hVCuvMGOfyY.zh-CN.vtt 5.5 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/09. Deep Q-Learning Algorithm-MqTXoCxQ_eY.pt-BR.vtt 5.5 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/03. MLND - Unsupervised Learning - L2 03 V2-pd9Ix3WMP_Q.zh-CN.vtt 5.5 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/04. M2L3 04 V1-QicxmyE5vTo.en.vtt 5.5 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/17. MLND - Unsupervised Learning - L3 18 External Validation Indices MAIN V1 V2-rXZM5X2-5D0.zh-CN.vtt 5.5 kB
  • Part 01-Module 13-Lesson 01_PCA/28. PCA in sklearn-SBYdqlLgbGk.pt-BR.vtt 5.5 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/index.html 5.5 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/14. Interview with Art - Part 3-M6PKr3S1rPg.ar.vtt 5.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/11. Model Complexity Graph-NnS0FJyVcDQ.en.vtt 5.4 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/09. Action-Value Functions-KJLaRfOOPGA.pt-BR.vtt 5.4 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/19. Kernel Method Answer-dRFd6HaAXys.pt-BR.vtt 5.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Combinando modelos-Boy3zHVrWB4.pt-BR.vtt 5.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Combinando modelos-Boy3zHVrWB4.en.vtt 5.4 kB
  • Part 01-Module 13-Lesson 01_PCA/28. PCA in sklearn-SBYdqlLgbGk.en.vtt 5.4 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/05. Q-Learning-AI5gLgYMSq8.en.vtt 5.4 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/06. Deep Q Network-GgtR_d1OB-M.zh-CN.vtt 5.4 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/05. State-Value Functions-llakAjwox_8.pt-BR.vtt 5.4 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/03. M2L3 03 V2-TePX-0Bs23E.zh-CN.vtt 5.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/19. 21 L Measuring Performance-byP0DJImOSk.zh-CN.vtt 5.4 kB
  • Part 01-Module 07-Lesson 01_Model Selection/03. Model-Complexity-Graph Solution 2-5pWHGkNyRhA.zh-CN.vtt 5.4 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/08. Gradient Descent-4s4x9h6AN5Y.pt-BR.vtt 5.4 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/index.html 5.3 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/index.html 5.3 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/03. Logistic Regression - Solution-1iNylA3fJDs.zh-CN.vtt 5.3 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/23. Error Function-V5kkHldUlVU.pt-BR.vtt 5.3 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/06. MC Prediction Action Values-08tLtbh0xLs.zh-CN.vtt 5.3 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/10. Linear Regression Answer-L5QBqYDNJn0.en.vtt 5.3 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/index.html 5.3 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/01. Why Network-exjEm9Paszk.ar.vtt 5.3 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/03. Elevator Pitch-S-nAHPrkQrQ.ar.vtt 5.3 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/05. Discretization-j2eZyUpy--E.pt-BR.vtt 5.3 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/05. Categorical Cross-Entropy-3sDYifgjFck.pt-BR.vtt 5.2 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/index.html 5.2 kB
  • Part 01-Module 07-Lesson 01_Model Selection/index.html 5.2 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/08. Optimality-j231aRV74QM.pt-BR.vtt 5.2 kB
  • assets/css/fonts/KaTeX_Size4-Regular.woff2 5.2 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/16. DL 18 Q Softmax V2-RC_A9Tu99y4.pt-BR.vtt 5.2 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. DL 46 Calculating The Gradient 2 V2 (2)-7lidiTGIlN4.zh-CN.vtt 5.2 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/index.html 5.2 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/index.html 5.2 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/01. MLND - Unsupervised Learning - L2 01 V2-NHb8w_M8nDY.en.vtt 5.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/20. Cross Entropy 1-iREoPUrpXvE.ja-JP.vtt 5.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/20. Cross Entropy 1-iREoPUrpXvE.pt-BR.vtt 5.1 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/06. DL 06 Perceptron Definition Fix V2-hImSxZyRiOw.zh-CN.vtt 5.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/07. DL 06 Perceptron Definition Fix V2-hImSxZyRiOw.zh-CN.vtt 5.1 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/08. Goals and Rewards, Part 2-pVIFc72VYH8.zh-CN.vtt 5.1 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/04. Convolutional Networks-ISHGyvsT0QY.ja-JP.vtt 5.1 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/01. Confusion Matrix-Question 1-9GLNjmMUB_4.zh-CN.vtt 5.1 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/24. Confusion Matrix-Question 1-9GLNjmMUB_4.zh-CN.vtt 5.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/22. DL 27 Multi-Class Cross Entropy 2 Fix-keDswcqkees.ja-JP.vtt 5.1 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/index.html 5.0 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/03. How Computers Interpret Images-V4f6p6uRhu8.zh-CN.vtt 5.0 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/02. Meet Chris-0ccflD9x5WU.en.vtt 5.0 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/index.html 5.0 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/09. MLND SL DT 08 Entropy Formula 2 MAIN V2-6GHg70hrSJw.en.vtt 5.0 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/23. Error Function-V5kkHldUlVU.en.vtt 5.0 kB
  • Part 02-Module 04-Lesson 05_Teach a Quadcopter How to Fly/index.html 5.0 kB
  • Part 01-Module 11-Lesson 01_Clustering/11. K-Means Clustering Visualization 2-fQXXa-CAoS0.ar.vtt 5.0 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/21. 30 L Stochastic Gradient Descent-U9iEGUd9kJ0.ja-JP.vtt 5.0 kB
  • Part 01-Module 13-Lesson 01_PCA/29. When to Use PCA-hJZHcmJBk1o.zh-CN.vtt 5.0 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/index.html 4.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/05. Categorical Cross-Entropy-3sDYifgjFck.en.vtt 4.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/10. Linear Regression Answer-L5QBqYDNJn0.pt-BR.vtt 4.9 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/20. Cross Entropy 1-iREoPUrpXvE.en.vtt 4.9 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/12. Quiz on Algorithms Requiring Rescaling-oEhevl5DWpk.ar.vtt 4.9 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/02. The Setting, Revisited-V6Q1uF8a6kA.zh-CN.vtt 4.9 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/02. Policies-hc3LrvaC13U.en.vtt 4.9 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/07. Entropy-piLpj1V1HEk.en.vtt 4.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/18. CNNs in Keras Practical Example-faFvmGDwXX0.zh-CN.vtt 4.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/19. Kernel Method Answer-dRFd6HaAXys.en.vtt 4.9 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/08. Fixed Q Targets-SWpyiEezfp4.zh-CN.vtt 4.9 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/index.html 4.9 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/index.html 4.9 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/01. Confusion Matrix-Question 1-9GLNjmMUB_4.pt-BR.vtt 4.9 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/24. Confusion Matrix-Question 1-9GLNjmMUB_4.pt-BR.vtt 4.9 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/index.html 4.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/06. Model Validation in Keras-002jNXSM6CU.zh-CN.vtt 4.9 kB
  • Part 01-Module 17-Lesson 01_Creating Customer Segments/index.html 4.8 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/01. 01 Boas-vindas ao programa IntroduçãoMLND V3-A8AnsR6e75I.pt-BR.vtt 4.8 kB
  • Part 01-Module 09-Lesson 01_Predicting Boston Housing Prices/index.html 4.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/22. DL 27 Multi-Class Cross Entropy 2 Fix-keDswcqkees.en.vtt 4.8 kB
  • Part 02-Module 08-Lesson 01_Machine Learning Capstone Project/index.html 4.8 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/14. Interview with Art - Part 3-M6PKr3S1rPg.ja-JP.vtt 4.8 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/14. Dropout-Ty6K6YiGdBs.en.vtt 4.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/15. Discrete vs. Continuous-Rm2KxFaPiJg.zh-CN.vtt 4.8 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/02. Aplicações de CNNs-HrYNL_1SV2Y.zh-CN.vtt 4.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/10. Linear Regression Answer-L5QBqYDNJn0.zh-CN.vtt 4.8 kB
  • Part 01-Module 13-Lesson 01_PCA/28. PCA in sklearn-SBYdqlLgbGk.zh-CN.vtt 4.8 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/index.html 4.8 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/01. MLND - Unsupervised Learning - L2 01 V2-NHb8w_M8nDY.zh-CN.vtt 4.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/23. Error Function-V5kkHldUlVU.ja-JP.vtt 4.8 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/05. State-Value Functions-llakAjwox_8.en.vtt 4.8 kB
  • assets/css/fonts/KaTeX_Size3-Regular.woff 4.8 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/14. Dropout-Ty6K6YiGdBs.pt-BR.vtt 4.8 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/05. Q-Learning-AI5gLgYMSq8.zh-CN.vtt 4.8 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/09. Action-Value Functions-KJLaRfOOPGA.en.vtt 4.8 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/11. Model Complexity Graph-NnS0FJyVcDQ.zh-CN.vtt 4.8 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/05. SVM 04 Perceptron Algorithm V1-IIlQHBOrD6Q.en.vtt 4.8 kB
  • Part 02-Module 07-Lesson 01_Writing up a Capstone Proposal/index.html 4.8 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Combinando modelos-Boy3zHVrWB4.zh-CN.vtt 4.8 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/18. Batch vs Stochastic Gradient Descent-2p58rVgqsgo.en.vtt 4.8 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/15. Pooling Layers-OkkIZNs7Cyc.zh-CN.vtt 4.7 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/18. Batch vs Stochastic Gradient Descent-2p58rVgqsgo.pt-BR.vtt 4.7 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/04. M2L3 04 V1-QicxmyE5vTo.zh-CN.vtt 4.7 kB
  • Part 01-Module 13-Lesson 01_PCA/25. ReviewDefinition of PCA-oFBGXUUuKyI.ar.vtt 4.7 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/08. Optimality-j231aRV74QM.en.vtt 4.7 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/index.html 4.7 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/index.html 4.7 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/10. Function Approximation-UTGWVY6jEdg.pt-BR.vtt 4.7 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/05. Interview with Art - Part 1-ClLYamtaO-Q.ar.vtt 4.7 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/11. Minimizing Error Functions-RbT2TXN_6tY.pt-BR.vtt 4.7 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/10. TD Control Sarsamax-4DxoYuR7aZ4.en.vtt 4.7 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/05. Discretization-j2eZyUpy--E.en.vtt 4.7 kB
  • Part 02-Module 01-Lesson 01_Welcome to Advanced Machine Learning/index.html 4.7 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/14. Interview with Art - Part 3-M6PKr3S1rPg.pt-BR.vtt 4.7 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/01. MLND - Unsupervised Learning - L2 01 V2-NHb8w_M8nDY.pt-BR.vtt 4.7 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/12. Stride and Padding-0r9o8hprDXQ.pt-BR.vtt 4.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/22. DL 27 Multi-Class Cross Entropy 2 Fix-keDswcqkees.pt-BR.vtt 4.7 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/19. Kernel Method Answer-dRFd6HaAXys.zh-CN.vtt 4.6 kB
  • Part 02-Module 02-Lesson 02_Cloud Computing/index.html 4.6 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/02. Meet Chris-0ccflD9x5WU.es-MX.vtt 4.6 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/10. MC Control Incremental Mean-E2RITH-2NUE.zh-CN.vtt 4.6 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/11. Minimizing Error Functions-RbT2TXN_6tY.en.vtt 4.6 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/15. MLND - Unsupervised Learning - L2 10 DBSCAN Examples Applications MAIN V1 V2-GhyFsjQ4FkA.en.vtt 4.6 kB
  • Part 01-Module 13-Lesson 01_PCA/17. Composite Features-spVqFnSvlIU.pt-BR.vtt 4.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/18. Maximum Likelihood 2-6nUUeQ9AeUA.pt-BR.vtt 4.6 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/09. Deep Q-Learning Algorithm-MqTXoCxQ_eY.en.vtt 4.6 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/23. Value Iteration-XNeQn8N36y8.pt-BR.vtt 4.6 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/02. Meet Chris-0ccflD9x5WU.pt-BR.vtt 4.6 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/04. Temporal Difference Learning-lpmDi0QeUm8.pt-BR.vtt 4.6 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/04. Convolutional Networks-ISHGyvsT0QY.pt-BR.vtt 4.6 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/01. 01 Boas-vindas ao programa IntroduçãoMLND V3-A8AnsR6e75I.en.vtt 4.5 kB
  • Part 02-Module 02-Lesson 07_Deep Learning Project/index.html 4.5 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/09. MLND SL DT 08 Entropy Formula 2 MAIN V2-6GHg70hrSJw.zh-CN.vtt 4.5 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/02. Meet Chris-0ccflD9x5WU.zh-CN.vtt 4.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/18. Maximum Likelihood 2-6nUUeQ9AeUA.en.vtt 4.5 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/12. Stride and Padding-0r9o8hprDXQ.en.vtt 4.5 kB
  • Part 01-Module 13-Lesson 01_PCA/23. PCA for Feature Transformation-8kUPRUEMCA8.pt-BR.vtt 4.5 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/10. Cumulative Reward-ysriH65lV9o.zh-CN.vtt 4.5 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/index.html 4.5 kB
  • Part 01-Module 13-Lesson 01_PCA/17. Composite Features-spVqFnSvlIU.en.vtt 4.5 kB
  • Part 01-Module 11-Lesson 01_Clustering/02. Unsupervised Learning-Mx9f99bRB3Q.ar.vtt 4.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/04. Convolutional Networks-ISHGyvsT0QY.en.vtt 4.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/18. Maximum Likelihood 2-6nUUeQ9AeUA.ja-JP.vtt 4.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/16. DL 18 Q Softmax V2-RC_A9Tu99y4.zh-CN.vtt 4.5 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/15. MLND - Unsupervised Learning - L3 16 Cluster Analysis Process MAIN V1 V1-aI2wW4fcU1I.pt-BR.vtt 4.5 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/01. MLND SL DT 00 Intro V2-l34ijtQhVNk.en.vtt 4.5 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/15. MLND - Unsupervised Learning - L2 10 DBSCAN Examples Applications MAIN V1 V2-GhyFsjQ4FkA.pt-BR.vtt 4.5 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/06. Comparing Features with Different Scales-PRL8trOU7Rs.ar.vtt 4.5 kB
  • Part 01-Module 01-Lesson 03_Introductory Practice Project/index.html 4.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/28. Gradient Descent Vs Perceptron Algorithm-uL5LuRPivTA.ja-JP.vtt 4.5 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/03. Elevator Pitch-S-nAHPrkQrQ.ja-JP.vtt 4.5 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/01. Why Network-exjEm9Paszk.ja-JP.vtt 4.4 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/07. Entropy-piLpj1V1HEk.zh-CN.vtt 4.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/18. Normalized Inputs And Initial Weights-WaHQ9-UXIIg.ja-JP.vtt 4.4 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/13. MDPs, Part 1-NBWbluSbxPg.pt-BR.vtt 4.4 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/05. Interview with Art - Part 1-ClLYamtaO-Q.ja-JP.vtt 4.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/18. Normalized Inputs And Initial Weights-WaHQ9-UXIIg.pt-BR.vtt 4.4 kB
  • Part 03-Module 01-Lesson 02_Deep Learning/index.html 4.4 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/img/screen-shot-2018-05-22-at-12.27.55-pm.png 4.4 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/05. RL M2L4 05 Advantage Function RENDER V1 V2-vpLmzKqcgfc.pt-BR.vtt 4.4 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/15. MLND - Unsupervised Learning - L3 16 Cluster Analysis Process MAIN V1 V1-aI2wW4fcU1I.en.vtt 4.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/28. Gradient Descent Vs Perceptron Algorithm-uL5LuRPivTA.en.vtt 4.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/softmax-math.png 4.4 kB
  • Part 02-Module 03-Lesson 07_Solve OpenAI Gym's Taxi-v2 Task/index.html 4.4 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/01. MLND SL DT 00 Intro V2-l34ijtQhVNk.zh-CN.vtt 4.4 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/22. Groundbreaking CNN Architectures-ddrB-mhMfkY.pt-BR.vtt 4.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/18. Normalized Inputs And Initial Weights-WaHQ9-UXIIg.en.vtt 4.4 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/01. MLND SL DT 00 Intro V2-l34ijtQhVNk.pt-BR.vtt 4.4 kB
  • Part 01-Module 11-Lesson 02_Clustering Mini-Project/index.html 4.4 kB
  • Part 01-Module 02-Lesson 01_Nanodegree Career Services/index.html 4.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/28. Gradient Descent Vs Perceptron Algorithm-uL5LuRPivTA.pt-BR.vtt 4.3 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/05. Categorical Cross-Entropy-3sDYifgjFck.zh-CN.vtt 4.3 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/13. Regression-Metrics-906P4BPnl9A.en-US.vtt 4.3 kB
  • Part 01-Module 08-Lesson 01_Model Evaluation and Validation Assessment/index.html 4.3 kB
  • Part 01-Module 03-Lesson 01_Get Help with Your Account/index.html 4.3 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/11. Optimal Policies-2rguYpVyCto.pt-BR.vtt 4.3 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. 07 Perceptron Algorithm Trick-lif_qPmXvWA.ja-JP.vtt 4.3 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/10. 07 Perceptron Algorithm Trick-lif_qPmXvWA.ja-JP.vtt 4.3 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/img/maze.png 4.3 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/07. Tile Coding-BRs7AnTZ_8k.pt-BR.vtt 4.3 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/img/screen-shot-2018-05-22-at-12.27.22-pm.png 4.3 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/07. Entropy-piLpj1V1HEk.pt-BR.vtt 4.3 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/23. Value Iteration-XNeQn8N36y8.en.vtt 4.3 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. 07 Perceptron Algorithm Trick-lif_qPmXvWA.pt-BR.vtt 4.3 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/10. 07 Perceptron Algorithm Trick-lif_qPmXvWA.pt-BR.vtt 4.3 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/10. L6 6 ICA Applications MAIN V1 V1 V1-th12mTv1B7g.en.vtt 4.3 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/12. SVM 10 Polynomial Kernel 2 V2-9RfFvZ9DIRg.en.vtt 4.3 kB
  • Part 01-Module 10-Lesson 07_Supervised Learning Assessment/index.html 4.3 kB
  • Part 01-Module 07-Lesson 01_Model Selection/08. Grid Search SC V1-zDw-ZGiHW5I.pt-BR.vtt 4.3 kB
  • Part 01-Module 13-Lesson 01_PCA/23. PCA for Feature Transformation-8kUPRUEMCA8.en.vtt 4.2 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/23. Error Function-V5kkHldUlVU.zh-CN.vtt 4.2 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/18. Explore the Design Space-FG7M9tWH2nQ.ja-JP.vtt 4.2 kB
  • Part 02-Module 05-Lesson 01_Reinforcement Learning Assessment/index.html 4.2 kB
  • Part 01-Module 16-Lesson 01_Unsupervised Learning Assessment/index.html 4.2 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/04. Temporal Difference Learning-lpmDi0QeUm8.en.vtt 4.2 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. 07 Perceptron Algorithm Trick-lif_qPmXvWA.en.vtt 4.2 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/10. 07 Perceptron Algorithm Trick-lif_qPmXvWA.en.vtt 4.2 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/21. 30 L Stochastic Gradient Descent-U9iEGUd9kJ0.en.vtt 4.2 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/10. Function Approximation-UTGWVY6jEdg.en.vtt 4.2 kB
  • Part 01-Module 04-Lesson 01_NumPy and pandas Assessment/index.html 4.2 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/20. Cross Entropy 1-iREoPUrpXvE.zh-CN.vtt 4.2 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/18. Batch vs Stochastic Gradient Descent-2p58rVgqsgo.zh-CN.vtt 4.2 kB
  • Part 02-Module 02-Lesson 06_Deep Learning Assessment/index.html 4.2 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/14. Interview with Art - Part 3-M6PKr3S1rPg.en.vtt 4.2 kB
  • Part 01-Module 14-Lesson 01_PCA Mini-Project/index.html 4.2 kB
  • Part 01-Module 18-Lesson 01_Congratulations!/index.html 4.2 kB
  • Part 03-Module 01-Lesson 01_Software and Tools/index.html 4.2 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/10. L6 6 ICA Applications MAIN V1 V1 V1-th12mTv1B7g.pt-BR.vtt 4.2 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/05. Discretization-j2eZyUpy--E.zh-CN.vtt 4.2 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/04. MLPs For Image Classification-TIFStebu530.pt-BR.vtt 4.2 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/14. Dropout-Ty6K6YiGdBs.zh-CN.vtt 4.2 kB
  • Part 01-Module 07-Lesson 01_Model Selection/08. Grid Search SC V1-zDw-ZGiHW5I.en.vtt 4.2 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/18. MC Control Constant-alpha-QFV1nI9Zpoo.pt-BR.vtt 4.1 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/06. MLND SL EM 06 Weighting The Models MAIN V2-unCJ_ifVquU.pt-BR.vtt 4.1 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/02. Policies-hc3LrvaC13U.zh-CN.vtt 4.1 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/11. 09 Quiz Fbeta Score SC V1-KSswld4_9bY.en.vtt 4.1 kB
  • assets/css/styles.css 4.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/22. DL 27 Multi-Class Cross Entropy 2 Fix-keDswcqkees.zh-CN.vtt 4.1 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/05. Interview with Art - Part 1-ClLYamtaO-Q.pt-BR.vtt 4.1 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/14. Maximizing Information Gain-3FgJOpKfdY8.en.vtt 4.1 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/13. MDPs, Part 1-NBWbluSbxPg.en.vtt 4.1 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/05. SVM 04 Perceptron Algorithm V1-IIlQHBOrD6Q.pt-BR.vtt 4.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/24. Gradient Descent-rhVIF-nigrY.pt-BR.vtt 4.1 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/15. MLND - Unsupervised Learning - L2 10 DBSCAN Examples Applications MAIN V1 V2-GhyFsjQ4FkA.zh-CN.vtt 4.1 kB
  • Part 01-Module 11-Lesson 01_Clustering/03. Clustering Movies-g8PKffm8IRY.ar.vtt 4.1 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/18. MC Control Constant-alpha-QFV1nI9Zpoo.en.vtt 4.0 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/09. Action-Value Functions-KJLaRfOOPGA.zh-CN.vtt 4.0 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/22. Groundbreaking CNN Architectures-ddrB-mhMfkY.en.vtt 4.0 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/04. L6 3 ICA V1 V1-ae94x-1JDzg.en.vtt 4.0 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/03. GitHub profile important items-prvPVTjVkwQ.ar.vtt 4.0 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/13. Regression-Metrics-906P4BPnl9A.pt-BR.vtt 4.0 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/02. Neural Nets as Value Functions-cBi7vLrk8QQ.pt-BR.vtt 4.0 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/21. 30 L Stochastic Gradient Descent-U9iEGUd9kJ0.pt-BR.vtt 4.0 kB
  • Part 01-Module 01-Lesson 01_Welcome to Machine Learning/01. 01 Boas-vindas ao programa IntroduçãoMLND V3-A8AnsR6e75I.zh-CN.vtt 4.0 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/11. Optimal Policies-2rguYpVyCto.en.vtt 4.0 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/07. Square Trick-AGZEq-yQgRM.en.vtt 4.0 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/05. RL M2L4 05 Advantage Function RENDER V1 V2-vpLmzKqcgfc.en.vtt 4.0 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/09. MLND SL DT 08 Entropy Formula 2 MAIN V2-6GHg70hrSJw.pt-BR.vtt 4.0 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/01. MLND SL EM 01 Intro V1 MAIN V2-5v9KqIo6CFE.pt-BR.vtt 4.0 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/21. 30 L Stochastic Gradient Descent-U9iEGUd9kJ0.zh-CN.vtt 4.0 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/09. Perceptron Algorithm Pseudocode-p8Q3yu9YqYk.ja-JP.vtt 4.0 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/11. Perceptron Algorithm Pseudocode-p8Q3yu9YqYk.ja-JP.vtt 4.0 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/23. Visualizando CNNs-mnqS_EhEZVg.en.vtt 4.0 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/01. MLND SL EM 01 Intro V1 MAIN V2-5v9KqIo6CFE.en.vtt 4.0 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/05. State-Value Functions-llakAjwox_8.zh-CN.vtt 4.0 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/06. Bellman Equations-UgIaDMvSdUo.pt-BR.vtt 4.0 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/04. Linear Boundaries-X-uMlsBi07k.en.vtt 3.9 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/05. Linear Boundaries-X-uMlsBi07k.en.vtt 3.9 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/24. Gradient Descent-rhVIF-nigrY.en.vtt 3.9 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/12. Quiz on Algorithms Requiring Rescaling-oEhevl5DWpk.en.vtt 3.9 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/24. Gradient Descent-rhVIF-nigrY.ja-JP.vtt 3.9 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/08. Optimality-j231aRV74QM.zh-CN.vtt 3.9 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/09. Deep Q-Learning Algorithm-MqTXoCxQ_eY.zh-CN.vtt 3.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/07. When do MLPs (not) work well-deMeuLdZN3Q.pt-BR.vtt 3.9 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/10. TD Control Sarsamax-4DxoYuR7aZ4.zh-CN.vtt 3.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/23. Visualizando CNNs-mnqS_EhEZVg.pt-BR.vtt 3.9 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/m.gif 3.9 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/12. Quiz on Algorithms Requiring Rescaling-oEhevl5DWpk.pt-BR.vtt 3.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/04. MLPs For Image Classification-TIFStebu530.en.vtt 3.9 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/05. Interview with Art - Part 1-ClLYamtaO-Q.en.vtt 3.9 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/04. Convolutional Networks-ISHGyvsT0QY.zh-CN.vtt 3.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/21. K-means Clustering-pv_i08zjpQw.en.vtt 3.9 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/04. Linear Boundaries-X-uMlsBi07k.ja-JP.vtt 3.9 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/05. Linear Boundaries-X-uMlsBi07k.ja-JP.vtt 3.9 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/04. L6 3 ICA V1 V1-ae94x-1JDzg.pt-BR.vtt 3.9 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/05. SVM 04 Perceptron Algorithm V1-IIlQHBOrD6Q.zh-CN.vtt 3.9 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/07. Square Trick-AGZEq-yQgRM.pt-BR.vtt 3.9 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/06. Bellman Equations-UgIaDMvSdUo.en.vtt 3.9 kB
  • assets/css/fonts/KaTeX_Size3-Regular.woff2 3.9 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/07. Tile Coding-BRs7AnTZ_8k.en.vtt 3.9 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/12. Stride and Padding-0r9o8hprDXQ.zh-CN.vtt 3.8 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/20. Truncated Policy Iteration-a-RvCxlPMho.pt-BR.vtt 3.8 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/02. Neural Nets as Value Functions-cBi7vLrk8QQ.en.vtt 3.8 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/11. 09 Quiz Fbeta Score SC V1-KSswld4_9bY.pt-BR.vtt 3.8 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/06. MLND SL EM 06 Weighting The Models MAIN V2-unCJ_ifVquU.en.vtt 3.8 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/15. MLND - Unsupervised Learning - L3 16 Cluster Analysis Process MAIN V1 V1-aI2wW4fcU1I.zh-CN.vtt 3.8 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/12. SVM 10 Polynomial Kernel 2 V2-9RfFvZ9DIRg.zh-CN.vtt 3.8 kB
  • Part 01-Module 13-Lesson 01_PCA/20. Maximal Variance and Information Loss-hfmvk8DzTGA.ar.vtt 3.8 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Layers-pg99FkXYK0M.ja-JP.vtt 3.8 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/14. Maximizing Information Gain-3FgJOpKfdY8.zh-CN.vtt 3.8 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/06. The Reward Hypothesis-uAqNwgZ49JE.pt-BR.vtt 3.8 kB
  • Part 01-Module 13-Lesson 01_PCA/16. Compression While Preserving Information-NjuenhkC-44.ar.vtt 3.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/18. Maximum Likelihood 2-6nUUeQ9AeUA.zh-CN.vtt 3.8 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/14. Interview with Art - Part 3-M6PKr3S1rPg.zh-CN.vtt 3.8 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/04. Linear Boundaries-X-uMlsBi07k.pt-BR.vtt 3.8 kB
  • Part 01-Module 11-Lesson 01_Clustering/12. K-Means Clustering Visualization 3-WfwX3B4d8_I.ar.vtt 3.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/05. Linear Boundaries-X-uMlsBi07k.pt-BR.vtt 3.8 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/10. Function Approximation-UTGWVY6jEdg.zh-CN.vtt 3.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/26. Conclusion-WhpE_8sTt-0.en.vtt 3.7 kB
  • Part 01-Module 13-Lesson 01_PCA/17. Composite Features-spVqFnSvlIU.zh-CN.vtt 3.7 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/18. Explore the Design Space-FG7M9tWH2nQ.pt-BR.vtt 3.7 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/13. Regression-Metrics-906P4BPnl9A.zh-CN.vtt 3.7 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/07. When do MLPs (not) work well-deMeuLdZN3Q.en.vtt 3.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/28. Gradient Descent Vs Perceptron Algorithm-uL5LuRPivTA.zh-CN.vtt 3.7 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/07. Goals and Rewards, Part 1-XPnj3Ya3EuM.pt-BR.vtt 3.7 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/04. Temporal Difference Learning-lpmDi0QeUm8.zh-CN.vtt 3.7 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/06. SVM 05 Classification Error V1-nWGVAGXwvGE.en.vtt 3.7 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/21. K-means Clustering-pv_i08zjpQw.zh-CN.vtt 3.7 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/18. Normalized Inputs And Initial Weights-WaHQ9-UXIIg.zh-CN.vtt 3.6 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/03. Elevator Pitch-S-nAHPrkQrQ.es-MX.vtt 3.6 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/24. Neural Network Regression-aUJCBqBfEnI.pt-BR.vtt 3.6 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/18. Closed Form Solution-G3fRVgLa5gI.en.vtt 3.6 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/16. SVM 14 RBF Kernel 3 V1-DctkE8kaWPY.en.vtt 3.6 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/03. Elevator Pitch-S-nAHPrkQrQ.en.vtt 3.6 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. 07 Perceptron Algorithm Trick-lif_qPmXvWA.zh-CN.vtt 3.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/10. 07 Perceptron Algorithm Trick-lif_qPmXvWA.zh-CN.vtt 3.6 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Calculating The Gradient 1 -tVuZDbUrzzI.ja-JP.vtt 3.6 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/22. Groundbreaking CNN Architectures-ddrB-mhMfkY.zh-CN.vtt 3.6 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/09. Mean Absolute Error-vLKiY0Ehors.en.vtt 3.6 kB
  • Part 01-Module 13-Lesson 01_PCA/23. PCA for Feature Transformation-8kUPRUEMCA8.zh-CN.vtt 3.6 kB
  • Part 01-Module 11-Lesson 01_Clustering/11. K-Means Clustering Visualization 2-fQXXa-CAoS0.en.vtt 3.6 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/03. Elevator Pitch-S-nAHPrkQrQ.pt-BR.vtt 3.6 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/07. MLND SL EM 07 Weighting The Models 3 V1 MAIN V1-fecp5nmetws.pt-BR.vtt 3.6 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/21. K-means Clustering-pv_i08zjpQw.pt-BR.vtt 3.5 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/09. Perceptron Algorithm Pseudocode-p8Q3yu9YqYk.en.vtt 3.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/11. Perceptron Algorithm Pseudocode-p8Q3yu9YqYk.en.vtt 3.5 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/06. The Reward Hypothesis-uAqNwgZ49JE.en.vtt 3.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Calculating The Gradient 1 -tVuZDbUrzzI.pt-BR.vtt 3.5 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/02. Applications-CV6B84mKRNM.pt-BR.vtt 3.5 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/23. Value Iteration-XNeQn8N36y8.zh-CN.vtt 3.5 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/04. MLPs For Image Classification-TIFStebu530.zh-CN.vtt 3.5 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/09. Coarse Coding-Uu1J5KLAfTU.pt-BR.vtt 3.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Calculating The Gradient 1 -tVuZDbUrzzI.en.vtt 3.5 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/07. MLND SL EM 07 Weighting The Models 3 V1 MAIN V1-fecp5nmetws.en.vtt 3.5 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/03. Elevator Pitch-S-nAHPrkQrQ.zh-CN.vtt 3.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Layers-pg99FkXYK0M.en.vtt 3.5 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/01. Why Network-exjEm9Paszk.en.vtt 3.5 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/02. SL NB 01 Guess The Person V1 V1-tAOAjI-7ins.en.vtt 3.5 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/05. Interview with Art - Part 1-ClLYamtaO-Q.zh-CN.vtt 3.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/18. Explore the Design Space-FG7M9tWH2nQ.en.vtt 3.5 kB
  • Part 01-Module 11-Lesson 01_Clustering/11. K-Means Clustering Visualization 2-fQXXa-CAoS0.pt-BR.vtt 3.5 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/18. Closed Form Solution-G3fRVgLa5gI.pt-BR.vtt 3.5 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/20. Truncated Policy Iteration-a-RvCxlPMho.en.vtt 3.5 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/13. MDPs, Part 1-NBWbluSbxPg.zh-CN.vtt 3.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. 29 Neural Network Architecture 2-FWN3Sw5fFoM.ja-JP.vtt 3.5 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/17. MDPs, Part 3-UlXHFbla3QI.pt-BR.vtt 3.5 kB
  • Part 01-Module 13-Lesson 01_PCA/25. ReviewDefinition of PCA-oFBGXUUuKyI.pt-BR.vtt 3.5 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/04. Linear Boundaries-X-uMlsBi07k.zh-CN.vtt 3.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/05. Linear Boundaries-X-uMlsBi07k.zh-CN.vtt 3.4 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/04. MLND - Unsupervised Learning - L3 04 GMM Clustering In 1D MAIN V1 V1-JkRQIGqkqA4.pt-BR.vtt 3.4 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/13. Information Gain-k9iZL53PAmw.en.vtt 3.4 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/07. Tile Coding-BRs7AnTZ_8k.zh-CN.vtt 3.4 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/14. Maximizing Information Gain-3FgJOpKfdY8.pt-BR.vtt 3.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. 29 Neural Network Architecture 2-FWN3Sw5fFoM.pt-BR.vtt 3.4 kB
  • Part 01-Module 13-Lesson 01_PCA/18. Maximal Variance-tfYAGBIR_Ws.ar.vtt 3.4 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/23. Visualizando CNNs-mnqS_EhEZVg.zh-CN.vtt 3.4 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/07. DL 08 AND And OR Perceptrons-Y-ImuxNpS40.en.vtt 3.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/08. DL 08 AND And OR Perceptrons-Y-ImuxNpS40.en.vtt 3.4 kB
  • Part 01-Module 07-Lesson 01_Model Selection/02. Model Complexity Graph-Question-YS5OQCA5cLY.en-US.vtt 3.4 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/11. Optimal Policies-2rguYpVyCto.zh-CN.vtt 3.4 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/09. Mean Absolute Error-vLKiY0Ehors.pt-BR.vtt 3.4 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/05. RL M2L4 05 Advantage Function RENDER V1 V2-vpLmzKqcgfc.zh-CN.vtt 3.4 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/heaviside-step-function-2.gif 3.4 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/12. SVM 10 Polynomial Kernel 2 V2-9RfFvZ9DIRg.pt-BR.vtt 3.4 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/01. Why Network-exjEm9Paszk.zh-CN.vtt 3.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Layers-pg99FkXYK0M.pt-BR.vtt 3.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/14. 16 L Minimizing Cross-Entropy-YrDMXFhvh9E.ja-JP.vtt 3.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/02. Introduction-tn-CrUTkCUc.en.vtt 3.4 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/03. GitHub profile important items-prvPVTjVkwQ.ja-JP.vtt 3.4 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/26. Conclusion-WhpE_8sTt-0.pt-BR.vtt 3.4 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/09. Perceptron Algorithm Pseudocode-p8Q3yu9YqYk.pt-BR.vtt 3.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/11. Perceptron Algorithm Pseudocode-p8Q3yu9YqYk.pt-BR.vtt 3.4 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/26. Conclusion-WhpE_8sTt-0.zh-CN.vtt 3.3 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/07. Goals and Rewards, Part 1-XPnj3Ya3EuM.en.vtt 3.3 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/02. SL NB 01 Guess The Person V1 V1-tAOAjI-7ins.pt-BR.vtt 3.3 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/18. MC Control Constant-alpha-QFV1nI9Zpoo.zh-CN.vtt 3.3 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/02. Applications-CV6B84mKRNM.en.vtt 3.3 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/02. Neural Nets as Value Functions-cBi7vLrk8QQ.zh-CN.vtt 3.3 kB
  • Part 01-Module 11-Lesson 01_Clustering/02. Unsupervised Learning-Mx9f99bRB3Q.en.vtt 3.3 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/10. SL NB 09 Bayesian Learning 3 V1 V4-u-Hj4RsJn1o.en.vtt 3.3 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/mse.png 3.3 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/01. Why Network-exjEm9Paszk.es-MX.vtt 3.3 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/01. Why Network-exjEm9Paszk.pt-BR.vtt 3.3 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/02. MLND SL EM 02 Bagging V1 MAIN V1-9L_B0Jcio3c.en.vtt 3.3 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/11. MLND - Unsupervised Learning - L3 11 Visual Example Of EM Progress MAIN V1 V1-9x3d_eVJrJE.en.vtt 3.3 kB
  • Part 01-Module 13-Lesson 01_PCA/25. ReviewDefinition of PCA-oFBGXUUuKyI.en.vtt 3.3 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/12. Kernel Functions-RdkPVYyVOvU.pt-BR.vtt 3.2 kB
  • Part 01-Module 11-Lesson 01_Clustering/02. Unsupervised Learning-Mx9f99bRB3Q.pt-BR.vtt 3.2 kB
  • Part 01-Module 13-Lesson 01_PCA/30. PCA for Facial Recognition-WyoU2otqsd8.ar.vtt 3.2 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/03. GitHub profile important items-prvPVTjVkwQ.pt-BR.vtt 3.2 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/03. Monte Carlo Learning-qOviWYwcvsg.pt-BR.vtt 3.2 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/12. Quiz on Algorithms Requiring Rescaling-oEhevl5DWpk.zh-CN.vtt 3.2 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/06. Comparing Features with Different Scales-PRL8trOU7Rs.pt-BR.vtt 3.2 kB
  • Part 01-Module 07-Lesson 01_Model Selection/02. Model Complexity Graph-Question-YS5OQCA5cLY.pt-BR.vtt 3.2 kB
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/07. When do MLPs (not) work well-deMeuLdZN3Q.zh-CN.vtt 3.2 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/02. MLND SL EM 02 Bagging V1 MAIN V1-9L_B0Jcio3c.pt-BR.vtt 3.2 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/02. RL M2L4 02 A Better Score Function V2-_HBJ3l10-OE.pt-BR.vtt 3.2 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/02. Introduction-tn-CrUTkCUc.pt-BR.vtt 3.2 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/11. Dropout RENDER-6DcImJS8uV8.ja-JP.vtt 3.2 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/04. MLND - Unsupervised Learning - L3 04 GMM Clustering In 1D MAIN V1 V1-JkRQIGqkqA4.en.vtt 3.1 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/09. Coarse Coding-Uu1J5KLAfTU.en.vtt 3.1 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/14. 16 L Minimizing Cross-Entropy-YrDMXFhvh9E.pt-BR.vtt 3.1 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/15. SVM Answer-JrUtTwfnsfM.en.vtt 3.1 kB
  • Part 01-Module 13-Lesson 01_PCA/21. Info Loss and Principal Components-LTPV8lxQeZQ.ar.vtt 3.1 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/09. 07 Recall SC V1-0n5wUZiefkQ.en.vtt 3.1 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Layers-pg99FkXYK0M.zh-CN.vtt 3.1 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/06. Comparing Features with Different Scales-PRL8trOU7Rs.en.vtt 3.1 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/21. ROC Curve-fWwe_JlpnlQ.en.vtt 3.1 kB
  • Part 01-Module 11-Lesson 01_Clustering/11. K-Means Clustering Visualization 2-fQXXa-CAoS0.zh-CN.vtt 3.1 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/03. Episodic vs. Continuing Tasks-E1I-BPanSM8.pt-BR.vtt 3.1 kB
  • Part 01-Module 07-Lesson 01_Model Selection/02. Model Complexity Graph-Question-YS5OQCA5cLY.zh-CN.vtt 3.1 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/04. RL M2L4 04 The Actor And The Critic V1-bvbE9F7urd4.pt-BR.vtt 3.1 kB
  • Part 01-Module 13-Lesson 01_PCA/16. Compression While Preserving Information-NjuenhkC-44.pt-BR.vtt 3.1 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/06. SVM 05 Classification Error V1-nWGVAGXwvGE.pt-BR.vtt 3.1 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/01. Chris's T-Shirt Size (Intuition)-oaqjLyiKOIA.ar.vtt 3.1 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. 29 Neural Network Architecture 2-FWN3Sw5fFoM.en.vtt 3.1 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/05. 09 Higher Dimensions-eBHunImDmWw.ja-JP.vtt 3.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/06. 09 Higher Dimensions-eBHunImDmWw.ja-JP.vtt 3.1 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/06. The Reward Hypothesis-uAqNwgZ49JE.zh-CN.vtt 3.1 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/14. 16 L Minimizing Cross-Entropy-YrDMXFhvh9E.en-US.vtt 3.1 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/02. SL NB 01 Guess The Person V1 V1-tAOAjI-7ins.zh-CN.vtt 3.1 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/10. SL NB 09 Bayesian Learning 3 V1 V4-u-Hj4RsJn1o.pt-BR.vtt 3.1 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/06. Bellman Equations-UgIaDMvSdUo.zh-CN.vtt 3.1 kB
  • Part 01-Module 13-Lesson 01_PCA/11. Practice Finding New Axes-aZqYc7v8BK4.ar.vtt 3.1 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/16. SVM 14 RBF Kernel 3 V1-DctkE8kaWPY.zh-CN.vtt 3.1 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/11. SVM 09 Polynomial Kernel 1 V1-8t2tVDHNBnk.en.vtt 3.1 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/02. Solving Problems - Big And Small-WHcRQMGSbqg.ja-JP.vtt 3.1 kB
  • Part 01-Module 13-Lesson 01_PCA/16. Compression While Preserving Information-NjuenhkC-44.en.vtt 3.1 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/03. MLND SL EM 03 AdaBoost V1 MAIN V1-HD6SRBWKGUE.en.vtt 3.0 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/04. MLND SL EM 04 Weighting The Data MAIN V1 V2-O-hh_x0iYW8.pt-BR.vtt 3.0 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/17. MDPs, Part 3-UlXHFbla3QI.en.vtt 3.0 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/03. MLND SL EM 03 AdaBoost V1 MAIN V1-HD6SRBWKGUE.pt-BR.vtt 3.0 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/11. MLND - Unsupervised Learning - L3 11 Visual Example Of EM Progress MAIN V1 V1-9x3d_eVJrJE.pt-BR.vtt 3.0 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/05. 09 Higher Dimensions-eBHunImDmWw.en.vtt 3.0 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/06. 09 Higher Dimensions-eBHunImDmWw.en.vtt 3.0 kB
  • Part 01-Module 13-Lesson 01_PCA/20. Maximal Variance and Information Loss-hfmvk8DzTGA.pt-BR.vtt 3.0 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/12. Kernel Functions-RdkPVYyVOvU.en.vtt 3.0 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/16. Higher Dimensions--UvpQV1qmiE.en.vtt 3.0 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/10. Entropy Formula-w73JTBVeyjE.en.vtt 3.0 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/backprop-error.gif 3.0 kB
  • Part 01-Module 11-Lesson 01_Clustering/16. Counterintuitive Clusters-StmEUgT1XSY.ar.vtt 3.0 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/03. GitHub profile important items-prvPVTjVkwQ.en.vtt 3.0 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/18. Explore the Design Space-FG7M9tWH2nQ.zh-CN.vtt 3.0 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/02. Applications-CV6B84mKRNM.zh-CN.vtt 3.0 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/06. SVM 05 Classification Error V1-nWGVAGXwvGE.zh-CN.vtt 3.0 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/01. Introduction-yXErXQulI_o.en.vtt 3.0 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Calculating The Gradient 1 -tVuZDbUrzzI.zh-CN.vtt 3.0 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/17. Kernel Method Quiz-x0JqH6-Dhvw.en.vtt 3.0 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/13. Information Gain-k9iZL53PAmw.zh-CN.vtt 3.0 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/20. Truncated Policy Iteration-a-RvCxlPMho.zh-CN.vtt 3.0 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. Perceptron Algorithm--zhTROHtscQ.ja-JP.vtt 3.0 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/10. Perceptron Algorithm--zhTROHtscQ.ja-JP.vtt 3.0 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/06. 04 Quiz False Negatives And Positives SC V1-_ytP9zIkziw.en.vtt 3.0 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/15. SVM Answer-JrUtTwfnsfM.zh-CN.vtt 2.9 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/11. MLND - Unsupervised Learning - L3 11 Visual Example Of EM Progress MAIN V1 V1-9x3d_eVJrJE.zh-CN.vtt 2.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/15. SVM Answer-JrUtTwfnsfM.pt-BR.vtt 2.9 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/14. 16 L Minimizing Cross-Entropy-YrDMXFhvh9E.zh-CN.vtt 2.9 kB
  • Part 01-Module 13-Lesson 01_PCA/20. Maximal Variance and Information Loss-hfmvk8DzTGA.en.vtt 2.9 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/03. Monte Carlo Learning-qOviWYwcvsg.en.vtt 2.9 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/07. Answer False Negatives And Positives-KOytJL1lvgg.pt-BR.vtt 2.9 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/02. Introduction-tn-CrUTkCUc.zh-CN.vtt 2.9 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/weight-label-reference.gif 2.9 kB
  • Part 01-Module 11-Lesson 01_Clustering/03. Clustering Movies-g8PKffm8IRY.pt-BR.vtt 2.9 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/07. Answer False Negatives And Positives-KOytJL1lvgg.en.vtt 2.9 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/03. Episodic vs. Continuing Tasks-E1I-BPanSM8.en.vtt 2.9 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/10. Interview with Art - Part 2-Vvzl2J5K7-Y.ar.vtt 2.9 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/04. Gridworld Example-XeHBmPFqTsE.pt-BR.vtt 2.9 kB
  • Part 01-Module 13-Lesson 01_PCA/18. Maximal Variance-tfYAGBIR_Ws.pt-BR.vtt 2.9 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/07. Goals and Rewards, Part 1-XPnj3Ya3EuM.zh-CN.vtt 2.9 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/05. When Accuracy Wont Work-r0-O-gIDXZ0.en.vtt 2.9 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/13. Information Gain-k9iZL53PAmw.pt-BR.vtt 2.9 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/10. SVM 08 The C Parameter V2-6CxPhVo0hRw.en.vtt 2.9 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/11. SVM 09 Polynomial Kernel 1 V1-8t2tVDHNBnk.zh-CN.vtt 2.9 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/hidden-errors.gif 2.9 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/04. MLND - Unsupervised Learning - L3 04 GMM Clustering In 1D MAIN V1 V1-JkRQIGqkqA4.zh-CN.vtt 2.9 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/05. When Accuracy Wont Work-r0-O-gIDXZ0.pt-BR.vtt 2.9 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/09. 07 Recall SC V1-0n5wUZiefkQ.pt-BR.vtt 2.9 kB
  • Part 01-Module 11-Lesson 01_Clustering/03. Clustering Movies-g8PKffm8IRY.en.vtt 2.9 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/07. Summary-hvYQ_3LgCYs.pt-BR.vtt 2.9 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/02. Exemplo de classificação-Dh625piH7Z0.ja-JP.vtt 2.9 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/03. Exemplo de classificação-Dh625piH7Z0.ja-JP.vtt 2.9 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/16. Higher Dimensions--UvpQV1qmiE.pt-BR.vtt 2.8 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/04. Recommending Apps-nEvW8B1HNq4.en.vtt 2.8 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/05. SL NB 04 Bayes Theorem V1 V2-nVbPJmf53AI.pt-BR.vtt 2.8 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. 29 Neural Network Architecture 2-FWN3Sw5fFoM.zh-CN.vtt 2.8 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/16. SVM 14 RBF Kernel 3 V1-DctkE8kaWPY.pt-BR.vtt 2.8 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/10. SL NB 09 Bayesian Learning 3 V1 V4-u-Hj4RsJn1o.zh-CN.vtt 2.8 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/09. Coarse Coding-Uu1J5KLAfTU.zh-CN.vtt 2.8 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/04. MLND SL EM 04 Weighting The Data MAIN V1 V2-O-hh_x0iYW8.en.vtt 2.8 kB
  • Part 01-Module 13-Lesson 01_PCA/25. ReviewDefinition of PCA-oFBGXUUuKyI.zh-CN.vtt 2.8 kB
  • Part 01-Module 13-Lesson 01_PCA/19. Advantages of Maximal Variance-jQaYAlZ1fp0.ar.vtt 2.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/17. Kernel Method Quiz-x0JqH6-Dhvw.zh-CN.vtt 2.8 kB
  • Part 01-Module 13-Lesson 01_PCA/18. Maximal Variance-tfYAGBIR_Ws.en.vtt 2.8 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/04. RL M2L4 04 The Actor And The Critic V1-bvbE9F7urd4.en.vtt 2.8 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/04. SVM 03 Error Function V1-l-ahImxoi-U.en.vtt 2.8 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/03. Statistical Invariance-0Hr5YwUUhr0.ja-JP.vtt 2.8 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/02. Exemplo de classificação-Dh625piH7Z0.en.vtt 2.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/03. Exemplo de classificação-Dh625piH7Z0.en.vtt 2.8 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/22. 31 L Momentum And Learning Rate Decay-O3QYdmQjXds.ja-JP.vtt 2.8 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/21. Momentum-r-rYz_PEWC8.pt-BR.vtt 2.8 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/08. 06 Precision SC V1-q2wVorBfefU.en.vtt 2.8 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/06. TD Prediction Action Values-1c029-7_9GA.en.vtt 2.7 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/17. Other Activation Functions-kA-1vUt6cvQ.en.vtt 2.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/25. Gradient Descent Algorithm-snxmBgi_GeU.ja-JP.vtt 2.7 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/11. Dropout RENDER-6DcImJS8uV8.pt-BR.vtt 2.7 kB
  • Part 01-Module 11-Lesson 01_Clustering/02. Unsupervised Learning-Mx9f99bRB3Q.zh-CN.vtt 2.7 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/06. 04 Quiz False Negatives And Positives SC V1-_ytP9zIkziw.pt-BR.vtt 2.7 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/15. Backpropagation-MZL97-2joxQ.ja-JP.vtt 2.7 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/17. Kernel Method Quiz-x0JqH6-Dhvw.pt-BR.vtt 2.7 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/04. Decision Trees Answer-h8zH47iFhCo.pt-BR.vtt 2.7 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/05. SL NB 04 Bayes Theorem V1 V2-nVbPJmf53AI.en.vtt 2.7 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/05. 09 Higher Dimensions-eBHunImDmWw.pt-BR.vtt 2.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/06. 09 Higher Dimensions-eBHunImDmWw.pt-BR.vtt 2.7 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/11. SVM 09 Polynomial Kernel 1 V1-8t2tVDHNBnk.pt-BR.vtt 2.7 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/15. MLND SL DT 13 Random Forests MAIN V1-n5DhXhcYKcw.en.vtt 2.7 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/03. GitHub profile important items-prvPVTjVkwQ.zh-CN.vtt 2.7 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/04. Decision Trees Answer-h8zH47iFhCo.en.vtt 2.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/12. Validating The Training-Oxm9ofvov3I.en.vtt 2.7 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/08. 06 Precision SC V1-q2wVorBfefU.pt-BR.vtt 2.7 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/02. RL M2L4 02 A Better Score Function V2-_HBJ3l10-OE.en.vtt 2.7 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. Perceptron Algorithm--zhTROHtscQ.en.vtt 2.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/10. Perceptron Algorithm--zhTROHtscQ.en.vtt 2.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/25. Gradient Descent Algorithm-snxmBgi_GeU.pt-BR.vtt 2.7 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/11. Dropout RENDER-6DcImJS8uV8.en-US.vtt 2.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/21. ROC Curve-fWwe_JlpnlQ.pt-BR.vtt 2.7 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/23. 32 L Parameter Hyperspace!-5a3-iIhdguc.ja-JP.vtt 2.7 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/08. Training Your Logistic Classifier-WQsdr1EJgz8.ja-JP.vtt 2.7 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/10. Entropy Formula-w73JTBVeyjE.pt-BR.vtt 2.7 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/07. Quick Fixes-Lb9e2KemR6I.ar.vtt 2.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/16. DL 18 S Softmax-n8S-v_LCTms.en.vtt 2.7 kB
  • Part 01-Module 11-Lesson 01_Clustering/12. K-Means Clustering Visualization 3-WfwX3B4d8_I.en.vtt 2.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/21. ROC Curve-fWwe_JlpnlQ.zh-CN.vtt 2.6 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/04. Recommending Apps-nEvW8B1HNq4.zh-CN.vtt 2.6 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/09. Generalized Policy Iteration-XRmz4nolEsw.pt-BR.vtt 2.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/16. DL 18 S Softmax-n8S-v_LCTms.ja-JP.vtt 2.6 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/04. Good GitHub repository-qBi8Q1EJdfQ.ar.vtt 2.6 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/04. Gridworld Example-XeHBmPFqTsE.en.vtt 2.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/17. One-Hot Encoding-AePvjhyvsBo.ja-JP.vtt 2.6 kB
  • Part 01-Module 11-Lesson 01_Clustering/12. K-Means Clustering Visualization 3-WfwX3B4d8_I.pt-BR.vtt 2.6 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/06. Comparing Features with Different Scales-PRL8trOU7Rs.zh-CN.vtt 2.6 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/17. Other Activation Functions-kA-1vUt6cvQ.pt-BR.vtt 2.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/25. Gradient Descent Algorithm-snxmBgi_GeU.en.vtt 2.6 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/10. Entropy Formula-w73JTBVeyjE.zh-CN.vtt 2.6 kB
  • Part 01-Module 11-Lesson 01_Clustering/03. Clustering Movies-g8PKffm8IRY.zh-CN.vtt 2.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/16. DL 18 S Softmax-n8S-v_LCTms.pt-BR.vtt 2.6 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/10. Interview with Art - Part 2-Vvzl2J5K7-Y.ja-JP.vtt 2.6 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/02. Exemplo de classificação-Dh625piH7Z0.pt-BR.vtt 2.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/03. Exemplo de classificação-Dh625piH7Z0.pt-BR.vtt 2.6 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/23. 32 L Parameter Hyperspace!-5a3-iIhdguc.pt-BR.vtt 2.6 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/04. Recommending Apps-nEvW8B1HNq4.pt-BR.vtt 2.6 kB
  • Part 01-Module 13-Lesson 01_PCA/16. Compression While Preserving Information-NjuenhkC-44.zh-CN.vtt 2.6 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/12. MC Control Policy Evaluation-3_opwMzpEEI.pt-BR.vtt 2.6 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/04. Decision Trees Answer-h8zH47iFhCo.zh-CN.vtt 2.6 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/08. MLND SL EM 08 Combining The Models V1 MAIN V1-1GxscvKU2Ic.en.vtt 2.6 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/03. Monte Carlo Learning-qOviWYwcvsg.zh-CN.vtt 2.6 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/15. MLND SL DT 13 Random Forests MAIN V1-n5DhXhcYKcw.pt-BR.vtt 2.6 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/06. Student Admissions-TdgBi6LtOB8.en.vtt 2.6 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/15. MLND SL DT 13 Random Forests MAIN V1-n5DhXhcYKcw.zh-CN.vtt 2.6 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/21. Momentum-r-rYz_PEWC8.en.vtt 2.6 kB
  • Part 01-Module 13-Lesson 01_PCA/30. PCA for Facial Recognition-WyoU2otqsd8.pt-BR.vtt 2.6 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/12. Kernel Functions-RdkPVYyVOvU.zh-CN.vtt 2.6 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/10. Mean Squared Error-MRyxmZDngI4.en.vtt 2.5 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/04. OpenAI Gym-MktEOWp3QLg.pt-BR.vtt 2.5 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/03. MLND - Unsupervised Learning - L3 3 Gaussian Distribution In 1D MAINv1 V1-uDPFrZwsKKQ.en.vtt 2.5 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/01. Introduction-bYeteZQrUcE.pt-BR.vtt 2.5 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/07. DL 08 AND And OR Perceptrons-Y-ImuxNpS40.zh-CN.vtt 2.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/08. DL 08 AND And OR Perceptrons-Y-ImuxNpS40.zh-CN.vtt 2.5 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/01. Introduction-yXErXQulI_o.zh-CN.vtt 2.5 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/02. Solving Problems - Big And Small-WHcRQMGSbqg.en.vtt 2.5 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/10. SVM 08 The C Parameter V2-6CxPhVo0hRw.pt-BR.vtt 2.5 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/03. Episodic vs. Continuing Tasks-E1I-BPanSM8.zh-CN.vtt 2.5 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/08. Training Your Logistic Classifier-WQsdr1EJgz8.en.vtt 2.5 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/10. SVM 08 The C Parameter V2-6CxPhVo0hRw.zh-CN.vtt 2.5 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Elevator Pitch-0QtgTG49E9I.ja-JP.vtt 2.5 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/01. Introduction-6jSFl5kxIBs.pt-BR.vtt 2.5 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/05. Training a Deep Learning Network-CsB7yUtMJyk.ja-JP.vtt 2.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/19. Quiz Cross Entropy-njq6bYrPqSU.ja-JP.vtt 2.5 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/08. MLND SL EM 08 Combining The Models V1 MAIN V1-1GxscvKU2Ic.pt-BR.vtt 2.5 kB
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/17. MDPs, Part 3-UlXHFbla3QI.zh-CN.vtt 2.5 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/15. Backpropagation-MZL97-2joxQ.en-US.vtt 2.5 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. Perceptron Algorithm--zhTROHtscQ.pt-BR.vtt 2.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/10. Perceptron Algorithm--zhTROHtscQ.pt-BR.vtt 2.5 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/01. MLND - Unsupervised Learning - L3 01 Gaussian Mixture Model MAINv1 V3-SLdZrt0CvOk.pt-BR.vtt 2.5 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/01. Chris's T-Shirt Size (Intuition)-oaqjLyiKOIA.pt-BR.vtt 2.5 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/08. Training Your Logistic Classifier-WQsdr1EJgz8.pt-BR.vtt 2.5 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/01. Introduction-6jSFl5kxIBs.en.vtt 2.5 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/04. RL M2L4 04 The Actor And The Critic V1-bvbE9F7urd4.zh-CN.vtt 2.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/03. Statistical Invariance-0Hr5YwUUhr0.en.vtt 2.5 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/15. Backpropagation-MZL97-2joxQ.pt-BR.vtt 2.5 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/10. Interview with Art - Part 2-Vvzl2J5K7-Y.pt-BR.vtt 2.5 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/22. 31 L Momentum And Learning Rate Decay-O3QYdmQjXds.pt-BR.vtt 2.5 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/05. Resources-_YPqfAnCqtk.pt-BR.vtt 2.4 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/08. SL NB 07 Q Bayesian Learning 1 V1 V4-J4BmsKXPnkA.en.vtt 2.4 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/05. 09 Higher Dimensions-eBHunImDmWw.zh-CN.vtt 2.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/06. 09 Higher Dimensions-eBHunImDmWw.zh-CN.vtt 2.4 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/17. Policy Iteration-gqv7o1kBDc0.pt-BR.vtt 2.4 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/04. SVM 03 Error Function V1-l-ahImxoi-U.pt-BR.vtt 2.4 kB
  • Part 01-Module 13-Lesson 01_PCA/20. Maximal Variance and Information Loss-hfmvk8DzTGA.zh-CN.vtt 2.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/02. Solving Problems - Big And Small-WHcRQMGSbqg.pt-BR.vtt 2.4 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/01. Introduction-bYeteZQrUcE.en.vtt 2.4 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/02. Exemplo de classificação-Dh625piH7Z0.zh-CN.vtt 2.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/03. Exemplo de classificação-Dh625piH7Z0.zh-CN.vtt 2.4 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Pitching to a Recruiter-LxAdWaA-qTQ.ja-JP.vtt 2.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/22. 31 L Momentum And Learning Rate Decay-O3QYdmQjXds.en.vtt 2.4 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. Perceptron Algorithm--zhTROHtscQ.zh-CN.vtt 2.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/10. Perceptron Algorithm--zhTROHtscQ.zh-CN.vtt 2.4 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/02. Logistic Regression - Question-kSs6O3R7JUI.ja-JP.vtt 2.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/17. Other Activation Functions-kA-1vUt6cvQ.zh-CN.vtt 2.4 kB
  • Part 01-Module 13-Lesson 01_PCA/30. PCA for Facial Recognition-WyoU2otqsd8.en.vtt 2.4 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/06. Student Admissions-TdgBi6LtOB8.zh-CN.vtt 2.4 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/02. RL M2L4 02 A Better Score Function V2-_HBJ3l10-OE.zh-CN.vtt 2.4 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/04. SVM 03 Error Function V1-l-ahImxoi-U.zh-CN.vtt 2.4 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/07. Summary-hvYQ_3LgCYs.en.vtt 2.4 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/11. Dropout RENDER-6DcImJS8uV8.zh-CN.vtt 2.4 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/03. MLND - Unsupervised Learning - L3 3 Gaussian Distribution In 1D MAINv1 V1-uDPFrZwsKKQ.pt-BR.vtt 2.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/05. DL 42 Neural Network Error Function (1)-SC1wEW7TtKs.ja-JP.vtt 2.4 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/06. Student Admissions-TdgBi6LtOB8.pt-BR.vtt 2.4 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/12. Validating The Training-Oxm9ofvov3I.zh-CN.vtt 2.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/16. DL 18 S Softmax-n8S-v_LCTms.zh-CN.vtt 2.4 kB
  • Part 01-Module 13-Lesson 01_PCA/30. PCA for Facial Recognition-B_JKtLN-i5I.ar.vtt 2.4 kB
  • Part 01-Module 13-Lesson 01_PCA/15. From Four Features to Two-MEtIAGKweXU.ar.vtt 2.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/23. 32 L Parameter Hyperspace!-5a3-iIhdguc.en.vtt 2.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/19. Quiz Cross Entropy-njq6bYrPqSU.en.vtt 2.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Multiclass Classification-uNTtvxwfox0.ja-JP.vtt 2.3 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/02. Logistic Regression - Question-kSs6O3R7JUI.en-US.vtt 2.3 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/11. Logistic Regression Question-wQXKdeVHTmc.en.vtt 2.3 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/09. Generalized Policy Iteration-XRmz4nolEsw.en.vtt 2.3 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/19. Quiz Cross Entropy-njq6bYrPqSU.pt-BR.vtt 2.3 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/01. Chris's T-Shirt Size (Intuition)-oaqjLyiKOIA.en.vtt 2.3 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/01. MLND - Unsupervised Learning - L3 01 Gaussian Mixture Model MAINv1 V3-SLdZrt0CvOk.en.vtt 2.3 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/16. MLND - Unsupervised Learning - L3 17 Cluster Validation MAINv1 V1-N13ML_GUuZQ.pt-BR.vtt 2.3 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/12. Validating The Training-Oxm9ofvov3I.pt-BR.vtt 2.3 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Elevator Pitch-0QtgTG49E9I.ar.vtt 2.3 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/02. Introduction-Vnj2VNQROtI.ar.vtt 2.3 kB
  • Part 01-Module 11-Lesson 01_Clustering/12. K-Means Clustering Visualization 3-WfwX3B4d8_I.zh-CN.vtt 2.3 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/codecogseqn-2.png 2.3 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/10. Mean Squared Error-MRyxmZDngI4.pt-BR.vtt 2.3 kB
  • Part 01-Module 13-Lesson 01_PCA/21. Info Loss and Principal Components-LTPV8lxQeZQ.pt-BR.vtt 2.3 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/05. SL NB 04 Bayes Theorem V1 V2-nVbPJmf53AI.zh-CN.vtt 2.3 kB
  • Part 01-Module 13-Lesson 01_PCA/18. Maximal Variance-tfYAGBIR_Ws.zh-CN.vtt 2.3 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/03. Statistical Invariance-0Hr5YwUUhr0.pt-BR.vtt 2.3 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/17. One-Hot Encoding-AePvjhyvsBo.en.vtt 2.3 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/02. Solving Problems - Big And Small-WHcRQMGSbqg.zh-CN.vtt 2.3 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/08. SL NB 07 Q Bayesian Learning 1 V1 V4-J4BmsKXPnkA.pt-BR.vtt 2.3 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/06. TD Prediction Action Values-1c029-7_9GA.zh-CN.vtt 2.3 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/12. MC Control Policy Evaluation-3_opwMzpEEI.en.vtt 2.3 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/25. Gradient Descent Algorithm-snxmBgi_GeU.zh-CN.vtt 2.3 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/21. Momentum-r-rYz_PEWC8.zh-CN.vtt 2.3 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/04. OpenAI Gym-MktEOWp3QLg.en.vtt 2.3 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/07. TD Control Sarsa(0)-LkFkjfsRpXc.en.vtt 2.3 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/08. SL NB 07 Q Bayesian Learning 1 V1 V4-J4BmsKXPnkA.zh-CN.vtt 2.3 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/04. Good GitHub repository-qBi8Q1EJdfQ.ja-JP.vtt 2.3 kB
  • Part 01-Module 13-Lesson 01_PCA/21. Info Loss and Principal Components-LTPV8lxQeZQ.en.vtt 2.3 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/backprop-general.gif 2.3 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/22. Hierarchical Clustering-1PldDT8AwMA.en.vtt 2.2 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Pitching to a Recruiter-LxAdWaA-qTQ.ar.vtt 2.2 kB
  • Part 01-Module 11-Lesson 01_Clustering/16. Counterintuitive Clusters-StmEUgT1XSY.pt-BR.vtt 2.2 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/07. Quick Fixes-Lb9e2KemR6I.ja-JP.vtt 2.2 kB
  • Part 01-Module 11-Lesson 01_Clustering/16. Counterintuitive Clusters-StmEUgT1XSY.en.vtt 2.2 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/23. What Is The Neural Network Looking At-qN-rvoxPbBw.en.vtt 2.2 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/04. Another Gridworld Example-n9SbomnLb-U.pt-BR.vtt 2.2 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/15. Participating in open source projects 2-elZCLxVvJrY.ar.vtt 2.2 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/10. Interview with Art - Part 2-Vvzl2J5K7-Y.en.vtt 2.2 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/23. 32 L Parameter Hyperspace!-5a3-iIhdguc.zh-CN.vtt 2.2 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/15. Backpropagation-MZL97-2joxQ.zh-CN.vtt 2.2 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/22. Hierarchical Clustering-1PldDT8AwMA.zh-CN.vtt 2.2 kB
  • Part 01-Module 13-Lesson 01_PCA/06. PCA for Data Transformation-nDuo5ECT1G4.ar.vtt 2.2 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/16. MLND - Unsupervised Learning - L3 17 Cluster Validation MAINv1 V1-N13ML_GUuZQ.en.vtt 2.2 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/05. DL 42 Neural Network Error Function (1)-SC1wEW7TtKs.pt-BR.vtt 2.2 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/08. Training Your Logistic Classifier-WQsdr1EJgz8.zh-CN.vtt 2.2 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Multiclass Classification-uNTtvxwfox0.pt-BR.vtt 2.2 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/03. Statistical Invariance-0Hr5YwUUhr0.zh-CN.vtt 2.2 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/01. Introduction-6jSFl5kxIBs.zh-CN.vtt 2.2 kB
  • Part 01-Module 11-Lesson 01_Clustering/06. Optimizing Centers (Rubber Bands)-nNR4hjhhGBc.ar.vtt 2.2 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/03. MLND - Unsupervised Learning - L3 3 Gaussian Distribution In 1D MAINv1 V1-uDPFrZwsKKQ.zh-CN.vtt 2.1 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/22. 31 L Momentum And Learning Rate Decay-O3QYdmQjXds.zh-CN.vtt 2.1 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/07. Summary-hvYQ_3LgCYs.zh-CN.vtt 2.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/img/codecogseqn-49.gif 2.1 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/img/sigmoid-derivative.gif 2.1 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/03. Accuracy-s6SfhPTNOHA.en-US.vtt 2.1 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/17. Policy Iteration-gqv7o1kBDc0.en.vtt 2.1 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Multiclass Classification-uNTtvxwfox0.en.vtt 2.1 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/05. Resources-_YPqfAnCqtk.en.vtt 2.1 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/10. Interview with Art - Part 2-Vvzl2J5K7-Y.zh-CN.vtt 2.1 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/codecogseqn-61.gif 2.1 kB
  • Part 01-Module 07-Lesson 01_Model Selection/04. KFold Cross Validation V3 V1-9W6o6eWGi-0.pt-BR.vtt 2.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/19. Quiz Cross Entropy-njq6bYrPqSU.zh-CN.vtt 2.1 kB
  • Part 01-Module 13-Lesson 01_PCA/11. Practice Finding New Axes-aZqYc7v8BK4.en.vtt 2.1 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/04. Good GitHub repository-qBi8Q1EJdfQ.pt-BR.vtt 2.1 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/05. Training a Deep Learning Network-CsB7yUtMJyk.en.vtt 2.1 kB
  • Part 01-Module 11-Lesson 01_Clustering/10. K-Means Cluster Visualization-iCTPBcowJRY.ar.vtt 2.1 kB
  • Part 01-Module 13-Lesson 01_PCA/19. Advantages of Maximal Variance-jQaYAlZ1fp0.en.vtt 2.1 kB
  • Part 01-Module 13-Lesson 01_PCA/27. PCA on the Enron Finance Data-w5XWkq_Y-rY.ar.vtt 2.1 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Elevator Pitch-0QtgTG49E9I.en.vtt 2.1 kB
  • Part 02-Module 03-Lesson 03_The RL Framework The Solution/04. Gridworld Example-XeHBmPFqTsE.zh-CN.vtt 2.1 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/07. Quick Fixes-Lb9e2KemR6I.pt-BR.vtt 2.1 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/05. Training a Deep Learning Network-CsB7yUtMJyk.pt-BR.vtt 2.1 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/04. Another Gridworld Example-n9SbomnLb-U.en.vtt 2.1 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/22. Hierarchical Clustering-1PldDT8AwMA.pt-BR.vtt 2.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/17. One-Hot Encoding-AePvjhyvsBo.pt-BR.vtt 2.1 kB
  • Part 01-Module 13-Lesson 01_PCA/11. Practice Finding New Axes-aZqYc7v8BK4.pt-BR.vtt 2.1 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/05. MLND - Unsupervised Learning - L3 05 Gaussian Distribution In 2D MAIN V1 V2-Ne-qRjO38qQ.pt-BR.vtt 2.1 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/17. One-Hot Encoding-AePvjhyvsBo.zh-CN.vtt 2.1 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/01. MLND - Unsupervised Learning - L3 01 Gaussian Mixture Model MAINv1 V3-SLdZrt0CvOk.zh-CN.vtt 2.1 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/f1.gif 2.1 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/04. OpenAI Gym-MktEOWp3QLg.zh-CN.vtt 2.1 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/01. Introduction-bYeteZQrUcE.zh-CN.vtt 2.1 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/11. Logistic Regression Question-wQXKdeVHTmc.pt-BR.vtt 2.1 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/02. Logistic Regression - Question-kSs6O3R7JUI.pt-BR.vtt 2.1 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Elevator Pitch-0QtgTG49E9I.es-MX.vtt 2.0 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Elevator Pitch-0QtgTG49E9I.zh-CN.vtt 2.0 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/09. MLND - Unsupervised Learning - L2 07 HC Examples Applications MAIN V1 V2-HTahFoQwk2g.pt-BR.vtt 2.0 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/09. MLND - Unsupervised Learning - L2 07 HC Examples Applications MAIN V1 V2-HTahFoQwk2g.en.vtt 2.0 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/02. Introduction-Vnj2VNQROtI.ja-JP.vtt 2.0 kB
  • Part 01-Module 13-Lesson 01_PCA/19. Advantages of Maximal Variance-jQaYAlZ1fp0.pt-BR.vtt 2.0 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/05. The Data-2RLbbV7MQNA.en.vtt 2.0 kB
  • Part 01-Module 13-Lesson 01_PCA/21. Info Loss and Principal Components-LTPV8lxQeZQ.zh-CN.vtt 2.0 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/05. DL 42 Neural Network Error Function (1)-SC1wEW7TtKs.en.vtt 2.0 kB
  • Part 01-Module 07-Lesson 01_Model Selection/04. KFold Cross Validation V3 V1-9W6o6eWGi-0.en.vtt 2.0 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/01. Chris's T-Shirt Size (Intuition)-oaqjLyiKOIA.zh-CN.vtt 2.0 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/06. Identify fixes for example “bad” profile-ncFtwW5urHk.ar.vtt 2.0 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/06. SL NB 05 Q False Positives V1 V2-ngA6v09eP08.pt-BR.vtt 2.0 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Elevator Pitch-0QtgTG49E9I.pt-BR.vtt 2.0 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Pitching to a Recruiter-LxAdWaA-qTQ.en.vtt 2.0 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/03. RL M2L4 03 Two Function Approximators V1-37KQEgLaLfw.pt-BR.vtt 2.0 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/06. SL NB 05 Q False Positives V1 V2-ngA6v09eP08.en.vtt 2.0 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/09. Feature Scaling Formula Quiz 3-bY2fuRkH3iw.ar.vtt 2.0 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/04. Good GitHub repository-qBi8Q1EJdfQ.en.vtt 2.0 kB
  • Part 01-Module 13-Lesson 01_PCA/30. PCA for Facial Recognition-WyoU2otqsd8.zh-CN.vtt 2.0 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/05. MLND - Unsupervised Learning - L3 05 Gaussian Distribution In 2D MAIN V1 V2-Ne-qRjO38qQ.en.vtt 2.0 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/04. Good GitHub repository-qBi8Q1EJdfQ.zh-CN.vtt 2.0 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/14. Multilayer perceptrons-Rs9petvTBLk.ja-JP.vtt 2.0 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/18. Maximum Likelihood 1-1yJx-QtlvNI.ja-JP.vtt 2.0 kB
  • Part 01-Module 11-Lesson 01_Clustering/16. Counterintuitive Clusters-StmEUgT1XSY.zh-CN.vtt 1.9 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/05. Training a Deep Learning Network-CsB7yUtMJyk.zh-CN.vtt 1.9 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/28. 1x1 Convolutions-Zmzgerm6SjA.pt-BR.vtt 1.9 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/07. Quick Fixes-Lb9e2KemR6I.en.vtt 1.9 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/28. 1x1 Convolutions-Zmzgerm6SjA.ja-JP.vtt 1.9 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/f2.gif 1.9 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/07. TD Control Sarsa(0)-LkFkjfsRpXc.zh-CN.vtt 1.9 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/14. Summary-MTEBk43oByU.pt-BR.vtt 1.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/23. Conclusion-hJEuaOUu2yA.pt-BR.vtt 1.9 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/03. Accuracy-s6SfhPTNOHA.pt-BR.vtt 1.9 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/07. Quick Fixes-Lb9e2KemR6I.zh-CN.vtt 1.9 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/01. What Is Deep Learning-INt1nULYPak.ja-JP.vtt 1.9 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/23. What Is The Neural Network Looking At-qN-rvoxPbBw.zh-CN.vtt 1.9 kB
  • Part 01-Module 13-Lesson 01_PCA/15. From Four Features to Two-MEtIAGKweXU.en.vtt 1.9 kB
  • Part 01-Module 11-Lesson 01_Clustering/17. Counterintuitive Clusters 2-HyjBus7S2gY.ar.vtt 1.9 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/02. 02 Skin Cancer V4-70jGZeiTNgk.en.vtt 1.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/11. Logistic Regression Question-wQXKdeVHTmc.zh-CN.vtt 1.9 kB
  • Part 01-Module 13-Lesson 01_PCA/15. From Four Features to Two-MEtIAGKweXU.pt-BR.vtt 1.9 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/22. Visualization-aGIGB4Ta3_A.en.vtt 1.9 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/09. Regularization-QcJBhbuCl5g.ja-JP.vtt 1.9 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/09. Generalized Policy Iteration-XRmz4nolEsw.zh-CN.vtt 1.9 kB
  • Part 01-Module 13-Lesson 01_PCA/11. Practice Finding New Axes-aZqYc7v8BK4.zh-CN.vtt 1.9 kB
  • Part 02-Module 03-Lesson 01_Introduction to RL/05. Resources-_YPqfAnCqtk.zh-CN.vtt 1.9 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/23. Conclusion-hJEuaOUu2yA.en.vtt 1.9 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/02. Logistic Regression - Question-kSs6O3R7JUI.zh-CN.vtt 1.9 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/04. Multiclass Classification-uNTtvxwfox0.zh-CN.vtt 1.9 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/12. MC Control Policy Evaluation-3_opwMzpEEI.zh-CN.vtt 1.9 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/15. Participating in open source projects 2-elZCLxVvJrY.ja-JP.vtt 1.9 kB
  • Part 01-Module 13-Lesson 01_PCA/12. Which Data is Ready for PCA-Su7kIUVPu6w.ar.vtt 1.9 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/05. MLND SL DT 04 Q Student Admissions V3 MAIN V1-MOa335cQGI4.en.vtt 1.8 kB
  • Part 01-Module 13-Lesson 01_PCA/19. Advantages of Maximal Variance-jQaYAlZ1fp0.zh-CN.vtt 1.8 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/13. Non-Linear Function Approximation-rITnmpD2mN8.pt-BR.vtt 1.8 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/08. Regularization Intro-pECnr-5F3_Q.ja-JP.vtt 1.8 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/08. Entropy Formula-iZiSYrOKvpo.en.vtt 1.8 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/03. 分类问题 2 -46PywnGa_cQ.ja-JP.vtt 1.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/04. 分类问题 2 -46PywnGa_cQ.ja-JP.vtt 1.8 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/02. Introduction-Vnj2VNQROtI.pt-BR.vtt 1.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/22. Visualization-aGIGB4Ta3_A.pt-BR.vtt 1.8 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/01. RL M2L4 01 Actor Critic Methods RENDER V1 V1-FXhyxJzgt8U.pt-BR.vtt 1.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/05. Naive Bayes Quiz-jsLkVYXmr3E.en.vtt 1.8 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/08. Entropy Formula-iZiSYrOKvpo.zh-CN.vtt 1.8 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/29. Inception Module-SlTm03bEOxA.ja-JP.vtt 1.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/12. Non-Linear Regions-B8UrWnHh1Wc.en.vtt 1.8 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/16. MLND - Unsupervised Learning - L3 17 Cluster Validation MAINv1 V1-N13ML_GUuZQ.zh-CN.vtt 1.8 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/03. 分类问题 2 -46PywnGa_cQ.en.vtt 1.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/04. 分类问题 2 -46PywnGa_cQ.en.vtt 1.8 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/06. MLND - Unsupervised Learning - L2 06 Hierarchical Clustering Implementation MAIN V1 V1-tRqKsk5M9Mc.en.vtt 1.8 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/17. Policy Iteration-gqv7o1kBDc0.zh-CN.vtt 1.8 kB
  • Part 01-Module 13-Lesson 01_PCA/05. Trickiest Data Dimensionality-mTcuS5jUeUE.ar.vtt 1.8 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/hidden-layer-weights.gif 1.8 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Pitching to a Recruiter-LxAdWaA-qTQ.zh-CN.vtt 1.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/05. Naive Bayes Quiz-jsLkVYXmr3E.pt-BR.vtt 1.8 kB
  • Part 01-Module 13-Lesson 01_PCA/30. PCA for Facial Recognition-B_JKtLN-i5I.pt-BR.vtt 1.8 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/23. Conclusion-hJEuaOUu2yA.zh-CN.vtt 1.8 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/12. MLND SL NB Solution Naive Bayes Algorithm-QDj3xzjuYmo.en.vtt 1.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/02. 02 Skin Cancer V4-70jGZeiTNgk.pt-BR.vtt 1.8 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Chain Rule-YAhIBOnbt54.pt-BR.vtt 1.8 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/12. Quiz on Algorithms Requiring Rescaling-ntRkOeSZutw.ar.vtt 1.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/23. What Is The Neural Network Looking At-qN-rvoxPbBw.pt-BR.vtt 1.8 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/03. Accuracy-s6SfhPTNOHA.en.vtt 1.8 kB
  • Part 01-Module 13-Lesson 01_PCA/30. PCA for Facial Recognition-B_JKtLN-i5I.en.vtt 1.8 kB
  • Part 01-Module 07-Lesson 01_Model Selection/12. Outro SC V1-YD1grQje9fw.pt-BR.vtt 1.8 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/05. The Data-2RLbbV7MQNA.pt-BR.vtt 1.8 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/23. DL 29 Logistic Regression-Minimizing The Error Function-KayqiYijlzc.ja-JP.vtt 1.8 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/14. Multilayer perceptrons-Rs9petvTBLk.pt-BR.vtt 1.7 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/12. MLND SL NB Solution Naive Bayes Algorithm-QDj3xzjuYmo.pt-BR.vtt 1.7 kB
  • Part 01-Module 13-Lesson 01_PCA/09. Second Principal Component Of New System-PqtW_Ux2_nY.ar.vtt 1.7 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/15. Participating in open source projects 2-elZCLxVvJrY.pt-BR.vtt 1.7 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/07. Naive Bayes Answer-YKN-fjuZ1VU.en.vtt 1.7 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/08. Entropy Formula-iZiSYrOKvpo.pt-BR.vtt 1.7 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/05. DL 42 Neural Network Error Function (1)-SC1wEW7TtKs.zh-CN.vtt 1.7 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/28. 1x1 Convolutions-Zmzgerm6SjA.en.vtt 1.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/02. 02 Skin Cancer V4-70jGZeiTNgk.zh-CN.vtt 1.7 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/02. MLND SL DT 01 Recommending Apps 1 MAIN V3-uI_yNrqqKVg.pt-BR.vtt 1.7 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/03. RL M2L4 03 Two Function Approximators V1-37KQEgLaLfw.en.vtt 1.7 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/img/backprop-weight-update.gif 1.7 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/01. Intro to Deep Q-Learning-o3cmuUDhP3I.pt-BR.vtt 1.7 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/06. SL NB 05 Q False Positives V1 V2-ngA6v09eP08.zh-CN.vtt 1.7 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/07. Naive Bayes Answer-YKN-fjuZ1VU.pt-BR.vtt 1.7 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/05. MLND - Unsupervised Learning - L3 05 Gaussian Distribution In 2D MAIN V1 V2-Ne-qRjO38qQ.zh-CN.vtt 1.7 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/05. Naive Bayes Quiz-jsLkVYXmr3E.zh-CN.vtt 1.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/25. Confusion Matrix-3rpN-YYlfes.en.vtt 1.7 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/02. MLND SL DT 01 Recommending Apps 1 MAIN V3-uI_yNrqqKVg.en.vtt 1.7 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/05. MLND SL DT 04 Q Student Admissions V3 MAIN V1-MOa335cQGI4.zh-CN.vtt 1.7 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/14. Multilayer perceptrons-Rs9petvTBLk.en-US.vtt 1.7 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Chain Rule-YAhIBOnbt54.en.vtt 1.7 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/04. Another Gridworld Example-n9SbomnLb-U.zh-CN.vtt 1.7 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/03. 分类问题 2 -46PywnGa_cQ.zh-CN.vtt 1.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/04. 分类问题 2 -46PywnGa_cQ.zh-CN.vtt 1.7 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Chain Rule-YAhIBOnbt54.ja-JP.vtt 1.7 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/10. Gradient Descent-29PmNG7fuuM.ja-JP.vtt 1.7 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/05. The Data-2RLbbV7MQNA.zh-CN.vtt 1.7 kB
  • Part 01-Module 07-Lesson 01_Model Selection/12. Outro SC V1-YD1grQje9fw.en.vtt 1.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/18. Maximum Likelihood 1-1yJx-QtlvNI.en.vtt 1.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/09. 为何是神经网络-zAkzOZntK6Y.ja-JP.vtt 1.7 kB
  • Part 01-Module 11-Lesson 01_Clustering/06. Optimizing Centers (Rubber Bands)-nNR4hjhhGBc.en.vtt 1.7 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/09. MLND - Unsupervised Learning - L2 07 HC Examples Applications MAIN V1 V2-HTahFoQwk2g.zh-CN.vtt 1.7 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/07. Feature Scaling Formula Quiz 1-jOxS1eJRsOk.ar.vtt 1.7 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/03. Accuracy-s6SfhPTNOHA.zh-CN.vtt 1.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/23. DL 29 Logistic Regression-Minimizing The Error Function-KayqiYijlzc.en.vtt 1.7 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/02. Introduction-Vnj2VNQROtI.zh-CN.vtt 1.7 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/18. Maximum Likelihood 1-1yJx-QtlvNI.pt-BR.vtt 1.7 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/14. Summary-MTEBk43oByU.en.vtt 1.7 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/06. Identify fixes for example “bad” profile-ncFtwW5urHk.ja-JP.vtt 1.7 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/08. Gradient Descent-BEC0uH1fuGU.en.vtt 1.6 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/10. Gradient Descent-29PmNG7fuuM.en.vtt 1.6 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/03. 分类问题 2 -46PywnGa_cQ.pt-BR.vtt 1.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/04. 分类问题 2 -46PywnGa_cQ.pt-BR.vtt 1.6 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/f6.gif 1.6 kB
  • Part 01-Module 11-Lesson 01_Clustering/08. Match Points (again)-5j6VZr8sHo8.ar.vtt 1.6 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/06. MLND - Unsupervised Learning - L3 06 GMM In 2D MAIN Sfx V1 V1-GsNWVHmRRG4.pt-BR.vtt 1.6 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/05. MLND SL DT 04 Q Student Admissions V3 MAIN V1-MOa335cQGI4.pt-BR.vtt 1.6 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/03. Let'S Get Started-ySIDqaXLhHw.ja-JP.vtt 1.6 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/09. SL NB 08 S Bayesian Learning 2 V1 V6-3rIYZgCXVXY.pt-BR.vtt 1.6 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/09. SL NB 08 S Bayesian Learning 2 V1 V6-3rIYZgCXVXY.en.vtt 1.6 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/01. What Is Deep Learning-INt1nULYPak.en.vtt 1.6 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/29. Inception Module-SlTm03bEOxA.en.vtt 1.6 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/02. Introduction-Vnj2VNQROtI.en.vtt 1.6 kB
  • Part 01-Module 13-Lesson 01_PCA/01. Data Dimensionality-gg7SAMMl4kM.ar.vtt 1.6 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/29. Inception Module-SlTm03bEOxA.pt-BR.vtt 1.6 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/03. MLND SL DT 02 Recommending Apps 2 MAIN V3-KSrIYqKZwCA.en.vtt 1.6 kB
  • Part 01-Module 11-Lesson 01_Clustering/06. Optimizing Centers (Rubber Bands)-nNR4hjhhGBc.pt-BR.vtt 1.6 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/12. Non-Linear Regions-B8UrWnHh1Wc.zh-CN.vtt 1.6 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/16. Vanishing Gradient-W_JJm_5syFw.pt-BR.vtt 1.6 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/13. Non-Linear Function Approximation-rITnmpD2mN8.en.vtt 1.6 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/07. Naive Bayes Answer-YKN-fjuZ1VU.zh-CN.vtt 1.6 kB
  • Part 01-Module 11-Lesson 01_Clustering/10. K-Means Cluster Visualization-iCTPBcowJRY.en.vtt 1.6 kB
  • Part 01-Module 13-Lesson 01_PCA/06. PCA for Data Transformation-nDuo5ECT1G4.en.vtt 1.6 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/01. Mat HS-9P7UPWFu8w8.en-US.vtt 1.6 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/25. Confusion Matrix-3rpN-YYlfes.pt-BR.vtt 1.6 kB
  • Part 01-Module 13-Lesson 01_PCA/06. PCA for Data Transformation-nDuo5ECT1G4.pt-BR.vtt 1.6 kB
  • Part 01-Module 11-Lesson 01_Clustering/17. Counterintuitive Clusters 2-HyjBus7S2gY.pt-BR.vtt 1.6 kB
  • Part 01-Module 13-Lesson 01_PCA/27. PCA on the Enron Finance Data-w5XWkq_Y-rY.pt-BR.vtt 1.6 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/01. RL M2L4 01 Actor Critic Methods RENDER V1 V1-FXhyxJzgt8U.en.vtt 1.6 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/02. MLND SL DT 01 Recommending Apps 1 MAIN V3-uI_yNrqqKVg.zh-CN.vtt 1.6 kB
  • Part 01-Module 13-Lesson 01_PCA/30. PCA for Facial Recognition-B_JKtLN-i5I.zh-CN.vtt 1.6 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/08. Gradient Descent-BEC0uH1fuGU.pt-BR.vtt 1.6 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/10. Gradient Descent-29PmNG7fuuM.pt-BR.vtt 1.6 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/02. DLND REG 01 Quiz Housing Prices V2-8CSBiVKu35Q.ja-JP.vtt 1.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/12. Non-Linear Regions-B8UrWnHh1Wc.pt-BR.vtt 1.5 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/09. Writing READMEs with Walter-DQEfT2Zq5_o.ar.vtt 1.5 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/09. Regularization-QcJBhbuCl5g.pt-BR.vtt 1.5 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/12. MLND SL NB Solution Naive Bayes Algorithm-QDj3xzjuYmo.zh-CN.vtt 1.5 kB
  • Part 01-Module 13-Lesson 01_PCA/27. PCA on the Enron Finance Data-w5XWkq_Y-rY.en-US.vtt 1.5 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/09. Linear Regression Question-sf51L0RN6zc.en.vtt 1.5 kB
  • Part 01-Module 13-Lesson 01_PCA/27. PCA on the Enron Finance Data-w5XWkq_Y-rY.en.vtt 1.5 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/09. Linear Regression Question-sf51L0RN6zc.pt-BR.vtt 1.5 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/13. Wrap Up-x6JggcDTcys.pt-BR.vtt 1.5 kB
  • Part 01-Module 13-Lesson 01_PCA/05. Trickiest Data Dimensionality-mTcuS5jUeUE.pt-BR.vtt 1.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/28. 1x1 Convolutions-Zmzgerm6SjA.zh-CN.vtt 1.5 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/22. Visualization-aGIGB4Ta3_A.zh-CN.vtt 1.5 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/20. Recap and Challenge-ecREasTrKu4.en.vtt 1.5 kB
  • Part 01-Module 11-Lesson 01_Clustering/17. Counterintuitive Clusters 2-HyjBus7S2gY.en.vtt 1.5 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/09. Writing READMEs with Walter-DQEfT2Zq5_o.ja-JP.vtt 1.5 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/09. Linear Regression Question-sf51L0RN6zc.zh-CN.vtt 1.5 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/06. Identify fixes for example “bad” profile-ncFtwW5urHk.pt-BR.vtt 1.5 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/17. 16 Solution Diagnosing Cancer V3-IJYvt2ssUFk.en.vtt 1.5 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/09. Regularization-QcJBhbuCl5g.en.vtt 1.5 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/20. Recap and Challenge-ecREasTrKu4.pt-BR.vtt 1.5 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/09. Feature Scaling Formula Quiz 3-bY2fuRkH3iw.pt-BR.vtt 1.5 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/15. Participating in open source projects 2-elZCLxVvJrY.en.vtt 1.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/23. DL 29 Logistic Regression-Minimizing The Error Function-KayqiYijlzc.zh-CN.vtt 1.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/16. Vanishing Gradient-W_JJm_5syFw.en.vtt 1.5 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/02. DLND REG 01 Quiz Housing Prices V2-8CSBiVKu35Q.pt-BR.vtt 1.5 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/03. MLND SL DT 02 Recommending Apps 2 MAIN V3-KSrIYqKZwCA.pt-BR.vtt 1.5 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/03. RL M2L4 03 Two Function Approximators V1-37KQEgLaLfw.zh-CN.vtt 1.5 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/02. 02 Intro SC V1-mIgABrjJVBY.en.vtt 1.5 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/08. Regularization Intro-pECnr-5F3_Q.en-US.vtt 1.5 kB
  • Part 01-Module 11-Lesson 01_Clustering/10. K-Means Cluster Visualization-iCTPBcowJRY.pt-BR.vtt 1.5 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/12. Dropout Pt. 2-8nG8zzJMbZw.ja-JP.vtt 1.5 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/01. Intro to Deep Q-Learning-o3cmuUDhP3I.en.vtt 1.5 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/08. Regularization Intro-pECnr-5F3_Q.en.vtt 1.5 kB
  • Part 01-Module 13-Lesson 01_PCA/15. From Four Features to Two-MEtIAGKweXU.zh-CN.vtt 1.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/18. Maximum Likelihood 1-1yJx-QtlvNI.zh-CN.vtt 1.5 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Pitching to a Recruiter-LxAdWaA-qTQ.es-MX.vtt 1.5 kB
  • Part 01-Module 11-Lesson 01_Clustering/06. Optimizing Centers (Rubber Bands)-nNR4hjhhGBc.zh-CN.vtt 1.5 kB
  • Part 01-Module 13-Lesson 01_PCA/05. Trickiest Data Dimensionality-mTcuS5jUeUE.en.vtt 1.5 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/23. DL 29 Logistic Regression-Minimizing The Error Function-KayqiYijlzc.pt-BR.vtt 1.5 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/01. What Is Deep Learning-INt1nULYPak.zh-CN.vtt 1.5 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/29. Inception Module-SlTm03bEOxA.zh-CN.vtt 1.5 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/04. Fitting A Line-gkdoknEEcaI.pt-BR.vtt 1.5 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/06. MLND - Unsupervised Learning - L3 06 GMM In 2D MAIN Sfx V1 V1-GsNWVHmRRG4.en.vtt 1.5 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/09. Feature Scaling Formula Quiz 3-bY2fuRkH3iw.en.vtt 1.5 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/06. Chain Rule-YAhIBOnbt54.zh-CN.vtt 1.5 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/04. Fitting A Line-gkdoknEEcaI.en.vtt 1.4 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/25. Confusion Matrix-3rpN-YYlfes.zh-CN.vtt 1.4 kB
  • Part 01-Module 10-Lesson 03_Decision Trees/03. MLND SL DT 02 Recommending Apps 2 MAIN V3-KSrIYqKZwCA.zh-CN.vtt 1.4 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/10. Gradient Descent-29PmNG7fuuM.zh-CN.vtt 1.4 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/y.gif 1.4 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/08. Gradient Descent-BEC0uH1fuGU.zh-CN.vtt 1.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/03. Non-Linear Models-HWuBKCZsCo8.ja-JP.vtt 1.4 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/01. Mat HS-9P7UPWFu8w8.zh-CN.vtt 1.4 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/03. SVM 02 Minimizing Distances V1-mNKk2dBsNGA.en.vtt 1.4 kB
  • Part 02-Module 06-Lesson 02_Take 30 Min to Improve your LinkedIn/04. Pitching to a Recruiter-LxAdWaA-qTQ.pt-BR.vtt 1.4 kB
  • Part 01-Module 05-Lesson 01_Training and Testing Models/02. 02 Intro SC V1-mIgABrjJVBY.pt-BR.vtt 1.4 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/06. Identify fixes for example “bad” profile-ncFtwW5urHk.en.vtt 1.4 kB
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/14. Multilayer perceptrons-Rs9petvTBLk.zh-CN.vtt 1.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/03. Non-Linear Models-HWuBKCZsCo8.pt-BR.vtt 1.4 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/12. Quiz on Algorithms Requiring Rescaling-ntRkOeSZutw.pt-BR.vtt 1.4 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/09. 为何是神经网络-zAkzOZntK6Y.en.vtt 1.4 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/20. Recap and Challenge-ecREasTrKu4.zh-CN.vtt 1.4 kB
  • Part 01-Module 11-Lesson 01_Clustering/17. Counterintuitive Clusters 2-HyjBus7S2gY.zh-CN.vtt 1.4 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/14. Summary-MTEBk43oByU.zh-CN.vtt 1.4 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/01. ML Charity Project-aVodYHcOB8U.pt-BR.vtt 1.4 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/04. Medical Classification-RCOSP60dV7U.en.vtt 1.4 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/02. DLND REG 01 Quiz Housing Prices V2-8CSBiVKu35Q.en.vtt 1.4 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/01. RL M2L4 01 Actor Critic Methods RENDER V1 V1-FXhyxJzgt8U.zh-CN.vtt 1.4 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/08. M2L3 08 V1-og3W6CXn1F0.en.vtt 1.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/01. What Is Deep Learning-INt1nULYPak.pt-BR.vtt 1.4 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/03. Let'S Get Started-ySIDqaXLhHw.pt-BR.vtt 1.4 kB
  • Part 01-Module 11-Lesson 01_Clustering/16. Counterintuitive Clusters-aveIz1JYeAg.ar.vtt 1.4 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/09. SL NB 08 S Bayesian Learning 2 V1 V6-3rIYZgCXVXY.zh-CN.vtt 1.4 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/09. Writing READMEs with Walter-DQEfT2Zq5_o.en.vtt 1.4 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/17. 16 Solution Diagnosing Cancer V3-IJYvt2ssUFk.pt-BR.vtt 1.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/02. Continuous Perceptrons-07-JJ-aGEfM.en.vtt 1.4 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/02. Continuous Perceptrons-07-JJ-aGEfM.ja-JP.vtt 1.4 kB
  • Part 01-Module 10-Lesson 08_Supervised Learning Project/01. ML Charity Project-aVodYHcOB8U.en.vtt 1.4 kB
  • Part 01-Module 13-Lesson 01_PCA/07. Center of a New Coordinate System-Kst3mlrqJnQ.ar.vtt 1.4 kB
  • Part 01-Module 11-Lesson 01_Clustering/10. K-Means Cluster Visualization-iCTPBcowJRY.zh-CN.vtt 1.4 kB
  • Part 01-Module 13-Lesson 01_PCA/15. From Four Features to Two-xJtmPbEfpFo.ar.vtt 1.3 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/08. Regularization Intro-pECnr-5F3_Q.zh-CN.vtt 1.3 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/12. Quiz on Algorithms Requiring Rescaling-ntRkOeSZutw.en.vtt 1.3 kB
  • Part 01-Module 11-Lesson 01_Clustering/15. Limitations of K-Means-4Fkfu37el_k.ar.vtt 1.3 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/codecogseqn-62.gif 1.3 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/02. Continuous Perceptrons-07-JJ-aGEfM.pt-BR.vtt 1.3 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/06. Identify fixes for example “bad” profile-ncFtwW5urHk.zh-CN.vtt 1.3 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/03. L6 2 Random Projection Impl MAINv1 V1 V1-5DhvurLgRII.pt-BR.vtt 1.3 kB
  • Part 02-Module 04-Lesson 01_RL in Continuous Spaces/13. Non-Linear Function Approximation-rITnmpD2mN8.zh-CN.vtt 1.3 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/08. Regularization Intro-pECnr-5F3_Q.pt-BR.vtt 1.3 kB
  • Part 01-Module 13-Lesson 01_PCA/12. Which Data is Ready for PCA-Su7kIUVPu6w.pt-BR.vtt 1.3 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/03. Non-Linear Models-HWuBKCZsCo8.en.vtt 1.3 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/15. Participating in open source projects 2-elZCLxVvJrY.zh-CN.vtt 1.3 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/21. Polynomial Regression-DBhWG-PagEQ.en.vtt 1.3 kB
  • Part 01-Module 13-Lesson 01_PCA/06. PCA for Data Transformation-nDuo5ECT1G4.zh-CN.vtt 1.3 kB
  • Part 01-Module 11-Lesson 01_Clustering/08. Match Points (again)-5j6VZr8sHo8.pt-BR.vtt 1.3 kB
  • Part 01-Module 13-Lesson 01_PCA/01. Data Dimensionality-gg7SAMMl4kM.pt-BR.vtt 1.3 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/07. Supervised Classification-XTGsutypAPE.ja-JP.vtt 1.3 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/09. Regularization-QcJBhbuCl5g.zh-CN.vtt 1.3 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/15. SVM 13 RBF Kernel 2 V1-ozl9UWVP0MI.en.vtt 1.3 kB
  • Part 01-Module 13-Lesson 01_PCA/12. Which Data is Ready for PCA-Su7kIUVPu6w.en.vtt 1.3 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/09. 为何是神经网络-zAkzOZntK6Y.pt-BR.vtt 1.3 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/01. Intro to Deep Q-Learning-o3cmuUDhP3I.zh-CN.vtt 1.3 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/03. Let'S Get Started-ySIDqaXLhHw.en.vtt 1.3 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/05. MLND SL EM 05 Weighting The Models MAIN V1-wn6K536dPLc.en.vtt 1.3 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/19. Learning Rate-TwJ8aSZoh2U.pt-BR.vtt 1.3 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/02. DLND REG 01 Quiz Housing Prices V2-8CSBiVKu35Q.zh-CN.vtt 1.3 kB
  • Part 01-Module 13-Lesson 01_PCA/03. One-Dimensional, or Two-yhzQ_HJcwn8.ar.vtt 1.3 kB
  • Part 01-Module 13-Lesson 01_PCA/09. Second Principal Component Of New System-PqtW_Ux2_nY.pt-BR.vtt 1.3 kB
  • Part 01-Module 13-Lesson 01_PCA/27. PCA on the Enron Finance Data-w5XWkq_Y-rY.zh-CN.vtt 1.3 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/17. 16 Solution Diagnosing Cancer V3-IJYvt2ssUFk.zh-CN.vtt 1.3 kB
  • Part 01-Module 13-Lesson 01_PCA/09. Second Principal Component Of New System-PqtW_Ux2_nY.en.vtt 1.3 kB
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/08. M2L3 08 V1-og3W6CXn1F0.zh-CN.vtt 1.3 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/16. Vanishing Gradient-W_JJm_5syFw.zh-CN.vtt 1.3 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/03. SL NB 02 Known And Inferred V1 V2-DrYfZXiDLQI.en.vtt 1.3 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/12. Dropout Pt. 2-8nG8zzJMbZw.en-US.vtt 1.3 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/img/linear-equation.gif 1.3 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/09. Writing READMEs with Walter-DQEfT2Zq5_o.pt-BR.vtt 1.3 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/13. TD Control Expected Sarsa-kEKupCyU0P0.en.vtt 1.3 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/13. Wrap Up-x6JggcDTcys.en.vtt 1.3 kB
  • Part 01-Module 11-Lesson 01_Clustering/08. Match Points (again)-5j6VZr8sHo8.en.vtt 1.3 kB
  • Part 01-Module 13-Lesson 01_PCA/13. When Does an Axis Dominate-5Uon6hUTl8Y.ar.vtt 1.2 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/03. SL NB 02 Known And Inferred V1 V2-DrYfZXiDLQI.pt-BR.vtt 1.2 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/01. Welcome To Linear Regression-zxZkTkM34BY.pt-BR.vtt 1.2 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/06. MLND - Unsupervised Learning - L3 06 GMM In 2D MAIN Sfx V1 V1-GsNWVHmRRG4.zh-CN.vtt 1.2 kB
  • Part 01-Module 13-Lesson 01_PCA/05. Trickiest Data Dimensionality-mTcuS5jUeUE.zh-CN.vtt 1.2 kB
  • Part 01-Module 13-Lesson 01_PCA/01. Data Dimensionality-gg7SAMMl4kM.en.vtt 1.2 kB
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/03. L6 2 Random Projection Impl MAINv1 V1 V1-5DhvurLgRII.en.vtt 1.2 kB
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/02. MLND - Unsupervised Learning - L3 2 Gaussian Mixture Model Clustering MAIN V1 V2-Y_methsXoFA.en.vtt 1.2 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/03. Let'S Get Started-ySIDqaXLhHw.zh-CN.vtt 1.2 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/07. Feature Scaling Formula Quiz 1-jOxS1eJRsOk.pt-BR.vtt 1.2 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/03. Survival Rate-QPlp3NeGuSk.en.vtt 1.2 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/09. 为何是神经网络-zAkzOZntK6Y.zh-CN.vtt 1.2 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/21. Polynomial Regression-DBhWG-PagEQ.pt-BR.vtt 1.2 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/06. RL M2L4 06 Actor Critic With Advantage RENDER V1 V1-Bwd2OF7hJXQ.pt-BR.vtt 1.2 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/e.gif 1.2 kB
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/09. Writing READMEs with Walter-DQEfT2Zq5_o.zh-CN.vtt 1.2 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/02. MLND - Unsupervised Learning - L2 02 V1-Ed6RKuBzKWA.pt-BR.vtt 1.2 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/07. Feature Scaling Formula Quiz 1-jOxS1eJRsOk.en.vtt 1.2 kB
  • Part 01-Module 13-Lesson 01_PCA/16. Compression While Preserving Information-_TJeoCTDykE.ar.vtt 1.2 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/04. Medical Classification-RCOSP60dV7U.pt-BR.vtt 1.2 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/04. Medical Classification-RCOSP60dV7U.zh-CN.vtt 1.2 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/02. MLND - Unsupervised Learning - L2 02 V1-Ed6RKuBzKWA.en.vtt 1.2 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/23. Error Functions Around the World-34AAcTECu2A.en.vtt 1.2 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/05. Moving A Line-8EIHFyL2Log.en.vtt 1.2 kB
  • Part 01-Module 10-Lesson 06_Ensemble Methods/05. MLND SL EM 05 Weighting The Models MAIN V1-wn6K536dPLc.pt-BR.vtt 1.2 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/12. DL 53 Q Regularization-KxROxcRsHL8.pt-BR.vtt 1.2 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/01. Welcome To Linear Regression-zxZkTkM34BY.en.vtt 1.2 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/02. Continuous Perceptrons-07-JJ-aGEfM.zh-CN.vtt 1.2 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/12. DL 53 Q Regularization-KxROxcRsHL8.en.vtt 1.2 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/02. Decision Trees Question-1RonLycEJ34.en.vtt 1.2 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/03. SVM 02 Minimizing Distances V1-mNKk2dBsNGA.zh-CN.vtt 1.2 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/09. Feature Scaling Formula Quiz 3-bY2fuRkH3iw.zh-CN.vtt 1.2 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/07. Supervised Classification-XTGsutypAPE.pt-BR.vtt 1.2 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/07. Feature-Map-Sizes-Solution-W4xtf8LTz1c.ja-JP.vtt 1.2 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/15. Local Minima-gF_sW_nY-xw.en.vtt 1.2 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/11. Solution Random Vs Preinitialized Thoughts-sOuoRZRKDzs.en.vtt 1.2 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/f4.gif 1.2 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/15. SVM 13 RBF Kernel 2 V1-ozl9UWVP0MI.pt-BR.vtt 1.2 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/08. Convolutions Cont.-utOv-BKI_vo.ja-JP.vtt 1.2 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/15. SVM 13 RBF Kernel 2 V1-ozl9UWVP0MI.zh-CN.vtt 1.2 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/23. Error Functions Around the World-34AAcTECu2A.zh-CN.vtt 1.2 kB
  • Part 01-Module 10-Lesson 04_Naive Bayes/03. SL NB 02 Known And Inferred V1 V2-DrYfZXiDLQI.zh-CN.vtt 1.1 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/03. Non-Linear Models-HWuBKCZsCo8.zh-CN.vtt 1.1 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/19. Learning Rate-TwJ8aSZoh2U.en.vtt 1.1 kB
  • Part 01-Module 13-Lesson 01_PCA/12. Which Data is Ready for PCA-Su7kIUVPu6w.zh-CN.vtt 1.1 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/07. Supervised Classification-XTGsutypAPE.en.vtt 1.1 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/09. Training The Neural Network-HwiI-UXUx-M.en.vtt 1.1 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/10. MinMax Rescaler Coding Quiz-ePXAzoGVviM.ar.vtt 1.1 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/12. Quiz on Algorithms Requiring Rescaling-ntRkOeSZutw.zh-CN.vtt 1.1 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/02. Confusion-Matrix-Solution-ywwSzyU9rYs.en-US.vtt 1.1 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/12. Dropout Pt. 2-8nG8zzJMbZw.zh-CN.vtt 1.1 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/02. Decision Trees Question-1RonLycEJ34.pt-BR.vtt 1.1 kB
  • Part 02-Module 04-Lesson 02_Deep Q-Learning/13. Wrap Up-x6JggcDTcys.zh-CN.vtt 1.1 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/01. Introduction-ek2PD9RDrWw.pt-BR.vtt 1.1 kB
  • Part 01-Module 10-Lesson 05_Support Vector Machines/03. SVM 02 Minimizing Distances V1-mNKk2dBsNGA.pt-BR.vtt 1.1 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/23. Error Functions Around the World-34AAcTECu2A.pt-BR.vtt 1.1 kB
  • Part 01-Module 13-Lesson 01_PCA/09. Second Principal Component Of New System-PqtW_Ux2_nY.zh-CN.vtt 1.1 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/03. Survival Rate-QPlp3NeGuSk.pt-BR.vtt 1.1 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/06. 06 Image Challenge V3-Efnoj1KNPHw.en.vtt 1.1 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/07. Feature-Map-Sizes-Solution-W4xtf8LTz1c.pt-BR.vtt 1.1 kB
  • Part 01-Module 01-Lesson 02_What is Machine Learning/02. Decision Trees Question-1RonLycEJ34.zh-CN.vtt 1.1 kB
  • Part 01-Module 13-Lesson 01_PCA/01. Data Dimensionality-gg7SAMMl4kM.zh-CN.vtt 1.1 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/05. Moving A Line-8EIHFyL2Log.pt-BR.vtt 1.1 kB
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/02. Confusion-Matrix-Solution-ywwSzyU9rYs.en.vtt 1.1 kB
  • Part 01-Module 11-Lesson 01_Clustering/05. Match Points with Clusters-lS5DfbsWH34.ar.vtt 1.1 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/15. Local Minima-gF_sW_nY-xw.pt-BR.vtt 1.1 kB
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/12. Dropout Pt. 2-8nG8zzJMbZw.pt-BR.vtt 1.1 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/07. Feature-Map-Sizes-Solution-W4xtf8LTz1c.en.vtt 1.1 kB
  • Part 02-Module 03-Lesson 04_Dynamic Programming/01. Introduction-ek2PD9RDrWw.en.vtt 1.1 kB
  • Part 01-Module 13-Lesson 01_PCA/22. Neighborhood Composite Feature-WxAWorS2SLg.ar.vtt 1.1 kB
  • Part 01-Module 12-Lesson 01_Feature Scaling/07. Feature Scaling Formula Quiz 1-jOxS1eJRsOk.zh-CN.vtt 1.1 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/03. Solution Housing Prices-uhdTulw9-Nc.ja-JP.vtt 1.1 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/img/gif-1.gif 1.1 kB
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/08. Convolutions Cont.-utOv-BKI_vo.en.vtt 1.1 kB
  • Part 01-Module 13-Lesson 01_PCA/15. From Four Features to Two-xJtmPbEfpFo.en.vtt 1.0 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/29. Conclusion-wOiUQDgGD9E.pt-BR.vtt 1.0 kB
  • Part 02-Module 03-Lesson 06_Temporal-Difference Methods/13. TD Control Expected Sarsa-kEKupCyU0P0.zh-CN.vtt 1.0 kB
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/11. Solution Random Vs Preinitialized Thoughts-sOuoRZRKDzs.pt-BR.vtt 1.0 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/12. DL 53 Q Regularization-KxROxcRsHL8.zh-CN.vtt 1.0 kB
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/01. Introduction-W2EP3riQSus.pt-BR.vtt 1.0 kB
  • Part 01-Module 11-Lesson 01_Clustering/16. Counterintuitive Clusters-aveIz1JYeAg.pt-BR.vtt 1.0 kB
  • Part 01-Module 11-Lesson 01_Clustering/08. Match Points (again)-5j6VZr8sHo8.zh-CN.vtt 1.0 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/15. Local Minima-gF_sW_nY-xw.zh-CN.vtt 1.0 kB
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/01. Perception Algorithm V2-ebIlG6Pqwas.en.vtt 1.0 kB
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/06. RL M2L4 06 Actor Critic With Advantage RENDER V1 V1-Bwd2OF7hJXQ.en.vtt 1.0 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/07. Supervised Classification-XTGsutypAPE.zh-CN.vtt 1.0 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/03. Solution Housing Prices-uhdTulw9-Nc.pt-BR.vtt 1.0 kB
  • Part 01-Module 10-Lesson 01_Linear Regression/14. DLND REG 13 Absolute Vs Squared Error 3 V1 (1)-bIVGf_dDkrY.en.vtt 1.0 kB
  • Part 01-Module 13-Lesson 01_PCA/15. From Four Features to Two-xJtmPbEfpFo.pt-BR.vtt 1.0 kB
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/19. Learning Rate-TwJ8aSZoh2U.zh-CN.vtt 1.0 kB
  • Part 01-Module 13-Lesson 01_PCA/10. Practice Finding Centers-PRjmvj6Vubs.ar.vtt 1.0 kB
  • Part 01-Module 13-Lesson 01_PCA/04. Slightly Less Perfect Data-9O7cJSP4C8w.ar.vtt 1.0 kB
  • Part 01-Module 13-Lesson 01_PCA/08. Principal Axis of New Coordinate System-i6zv8vyZBk0.ar.vtt 1.0 kB
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/02. MLND - Unsupervised Learning - L2 02 V1-Ed6RKuBzKWA.zh-CN.vtt 1.0 kB
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/20. 29 L Optimizing A Logistic Classifier-U_7nO1dm2tY.ja-JP.vtt 1.0 kB
  • Part 02-Module 02-Lesson 01_Neural Networks/19. Quiz - Cross 1--xxrisIvD0E.ja-JP.vtt 1.0 kB
  • Part 01-Module 11-Lesson 01_Clustering/04. How Many Clusters-R6oIvdBtsZw.ar.vtt 999 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/03. Survival Rate-QPlp3NeGuSk.zh-CN.vtt 996 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/09. Training The Neural Network-HwiI-UXUx-M.zh-CN.vtt 995 Bytes
  • Part 01-Module 05-Lesson 01_Training and Testing Models/01. 01 Intro-4C4PuJANIdE.en.vtt 994 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/16. Counterintuitive Clusters-aveIz1JYeAg.en.vtt 991 Bytes
  • Part 01-Module 13-Lesson 01_PCA/13. When Does an Axis Dominate-5Uon6hUTl8Y.en.vtt 984 Bytes
  • Part 01-Module 10-Lesson 01_Linear Regression/14. DLND REG 12 Absolute Vs Squared Error 2 V1 (1)-7El1OH17Oi4.en.vtt 983 Bytes
  • Part 01-Module 13-Lesson 01_PCA/13. When Does an Axis Dominate-5Uon6hUTl8Y.pt-BR.vtt 977 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/09. Training The Neural Network-HwiI-UXUx-M.pt-BR.vtt 977 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/02. A Metric for Chris-O0bvLU4l0is.ar.vtt 976 Bytes
  • Part 01-Module 10-Lesson 01_Linear Regression/14. DLND REG 13 Absolute Vs Squared Error 3 V1 (1)-bIVGf_dDkrY.pt-BR.vtt 970 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/07. Feature-Map-Sizes-Solution-W4xtf8LTz1c.zh-CN.vtt 966 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/11. Solution Random Vs Preinitialized Thoughts-sOuoRZRKDzs.zh-CN.vtt 965 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/08. Convolutions Cont.-utOv-BKI_vo.pt-BR.vtt 965 Bytes
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/02. Confusion-Matrix-Solution-ywwSzyU9rYs.zh-CN.vtt 956 Bytes
  • Part 01-Module 10-Lesson 01_Linear Regression/14. DLND REG 12 Absolute Vs Squared Error 2 V1 (1)-7El1OH17Oi4.pt-BR.vtt 956 Bytes
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/07. L6 5 ICA Implementation V1 V1-fZGxYfJmKaE.pt-BR.vtt 955 Bytes
  • Part 01-Module 13-Lesson 01_PCA/07. Center of a New Coordinate System-Kst3mlrqJnQ.pt-BR.vtt 954 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/19. Quiz - Cross 1--xxrisIvD0E.pt-BR.vtt 947 Bytes
  • Part 01-Module 05-Lesson 01_Training and Testing Models/01. 01 Intro-4C4PuJANIdE.pt-BR.vtt 945 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/08. Convolutions Cont.-utOv-BKI_vo.zh-CN.vtt 944 Bytes
  • Part 01-Module 13-Lesson 01_PCA/07. Center of a New Coordinate System-Kst3mlrqJnQ.en.vtt 943 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/20. Solution ROC Curve-sdUUf6RRmXI.en.vtt 943 Bytes
  • Part 01-Module 10-Lesson 01_Linear Regression/03. Solution Housing Prices-uhdTulw9-Nc.en.vtt 939 Bytes
  • Part 01-Module 13-Lesson 01_PCA/19. Advantages of Maximal Variance-TbT6a6qaj08.ar.vtt 938 Bytes
  • Part 01-Module 15-Lesson 01_Random Projection and ICA/07. L6 5 ICA Implementation V1 V1-fZGxYfJmKaE.en.vtt 938 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/06. 06 Image Challenge V3-Efnoj1KNPHw.pt-BR.vtt 937 Bytes
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/01. Introduction-W2EP3riQSus.en.vtt 937 Bytes
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/01. Perception Algorithm V2-ebIlG6Pqwas.pt-BR.vtt 928 Bytes
  • Part 01-Module 13-Lesson 01_PCA/03. One-Dimensional, or Two-yhzQ_HJcwn8.pt-BR.vtt 928 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/16. Counterintuitive Clusters-aveIz1JYeAg.zh-CN.vtt 924 Bytes
  • Part 01-Module 05-Lesson 01_Training and Testing Models/01. 01 Intro-4C4PuJANIdE.zh-CN.vtt 922 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/06. 06 Image Challenge V3-Efnoj1KNPHw.zh-CN.vtt 920 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/img/codecogseqn-58.gif 919 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/19. Quiz - Cross 1--xxrisIvD0E.en.vtt 918 Bytes
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/01. Perception Algorithm V2-ebIlG6Pqwas.zh-CN.vtt 916 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/13. Error Functions-YfUUunxWIJw.ja-JP.vtt 910 Bytes
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/06. M2L3 06 V1-RMjdQkl6CqE.en.vtt 910 Bytes
  • Part 01-Module 13-Lesson 01_PCA/16. Compression While Preserving Information-_TJeoCTDykE.en.vtt 896 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/02. A Metric for Chris-O0bvLU4l0is.pt-BR.vtt 893 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/16. 17 L Transition Into Practical Aspects Of Learning-bKqkRFOOKoA.ja-JP.vtt 893 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/10. MinMax Rescaler Coding Quiz-ePXAzoGVviM.pt-BR.vtt 891 Bytes
  • Part 02-Module 04-Lesson 04_Actor-Critic Methods/06. RL M2L4 06 Actor Critic With Advantage RENDER V1 V1-Bwd2OF7hJXQ.zh-CN.vtt 891 Bytes
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/02. Confusion-Matrix-Solution-ywwSzyU9rYs.pt-BR.vtt 889 Bytes
  • Part 02-Module 03-Lesson 04_Dynamic Programming/01. Introduction-ek2PD9RDrWw.zh-CN.vtt 883 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/02. Color-Question-BdQccpMwk80.ja-JP.vtt 883 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/14. Some challenges of k-means-e2CdlG5P4WA.ar.vtt 882 Bytes
  • Part 01-Module 13-Lesson 01_PCA/22. Neighborhood Composite Feature-WxAWorS2SLg.pt-BR.vtt 880 Bytes
  • Part 01-Module 13-Lesson 01_PCA/03. One-Dimensional, or Two-yhzQ_HJcwn8.en.vtt 879 Bytes
  • Part 01-Module 13-Lesson 01_PCA/13. When Does an Axis Dominate-5Uon6hUTl8Y.zh-CN.vtt 879 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/10. Training Optimization-UiGKhx9pUYc.pt-BR.vtt 874 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/01. Introduction-ZCpXvVdIdnY.en.vtt 874 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/08. Solution Data Challenges-1z3o4niQuNg.en.vtt 867 Bytes
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/01. Introduction-X_9l_ZqXXBA.pt-BR.vtt 866 Bytes
  • Part 01-Module 13-Lesson 01_PCA/22. Neighborhood Composite Feature-adXoa85rnPM.ar.vtt 865 Bytes
  • Part 01-Module 05-Lesson 01_Training and Testing Models/08. MLND Turning Paramaters-eSv2lPcnRM0.en.vtt 857 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/01. Introduction-ZCpXvVdIdnY.pt-BR.vtt 857 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/15. Limitations of K-Means-4Fkfu37el_k.pt-BR.vtt 856 Bytes
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/01. M2L3 01 V1-YOSREyp04HA.en.vtt 856 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/15. Limitations of K-Means-4Fkfu37el_k.en.vtt 855 Bytes
  • Part 01-Module 13-Lesson 01_PCA/10. Practice Finding Centers-PRjmvj6Vubs.pt-BR.vtt 853 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/10. 10 Quiz Random Vs Preinitiliazed Weights V3-DRC1e4XGl2M.en.vtt 853 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/14. Solution Sensitivty And Specificity-GBZjyeMjKxc.en.vtt 850 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/20. 29 L Optimizing A Logistic Classifier-U_7nO1dm2tY.en-US.vtt 845 Bytes
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/12. MLND - Unsupervised Learning - L2 09 DBSCAN Implementation MAIN V1 V1-qEMUzQFylg8.en.vtt 842 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/09. Feature Scaling Formula Quiz 3-iY_sO4d23gY.ar.vtt 842 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/17. Counterintuitive Clusters 2-xSQTzAeeoEc.ar.vtt 841 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/10. Training Optimization-UiGKhx9pUYc.zh-CN.vtt 840 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/06. Optimizing Centers (Rubber Bands)-TN1rQMrx65c.ar.vtt 836 Bytes
  • Part 01-Module 10-Lesson 01_Linear Regression/14. Absolute Vs Squared Error-csvdjaqt1GM.en.vtt 831 Bytes
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/01. Introduction-X_9l_ZqXXBA.en.vtt 830 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/20. Solution ROC Curve-sdUUf6RRmXI.zh-CN.vtt 829 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/10. MinMax Rescaler Coding Quiz-ePXAzoGVviM.en.vtt 828 Bytes
  • Part 01-Module 13-Lesson 01_PCA/16. Compression While Preserving Information-_TJeoCTDykE.pt-BR.vtt 826 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/10. Training Optimization-UiGKhx9pUYc.en.vtt 824 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/17. Numerical Stability-_SbGcOS-jcQ.pt-BR.vtt 823 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/01. Introduction-ZCpXvVdIdnY.zh-CN.vtt 822 Bytes
  • Part 02-Module 03-Lesson 05_Monte Carlo Methods/01. Introduction-W2EP3riQSus.zh-CN.vtt 822 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/02. A Metric for Chris-O0bvLU4l0is.en.vtt 820 Bytes
  • Part 01-Module 13-Lesson 01_PCA/14. Measurable vs. Latent Features Quiz-UeSD19oit_w.ar.vtt 820 Bytes
  • Part 01-Module 13-Lesson 01_PCA/16. Compression While Preserving Information-_TJeoCTDykE.zh-CN.vtt 814 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/19. Quiz - Cross 1--xxrisIvD0E.zh-CN.vtt 813 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/15. Limitations of K-Means-4Fkfu37el_k.zh-CN.vtt 812 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/16. Starring interesting repositories-ZwMY5rAAd7Q.ar.vtt 812 Bytes
  • Part 01-Module 13-Lesson 01_PCA/03. One-Dimensional, or Two-yhzQ_HJcwn8.zh-CN.vtt 810 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/08. Solution Data Challenges-1z3o4niQuNg.zh-CN.vtt 810 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/17. Numerical Stability-_SbGcOS-jcQ.ja-JP.vtt 810 Bytes
  • Part 01-Module 13-Lesson 01_PCA/07. Center of a New Coordinate System-Kst3mlrqJnQ.zh-CN.vtt 806 Bytes
  • Part 01-Module 13-Lesson 01_PCA/10. Practice Finding Centers-PRjmvj6Vubs.en.vtt 804 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/13. Error Functions-YfUUunxWIJw.pt-BR.vtt 804 Bytes
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/06. M2L3 06 V1-RMjdQkl6CqE.zh-CN.vtt 804 Bytes
  • Part 01-Module 13-Lesson 01_PCA/15. From Four Features to Two-xJtmPbEfpFo.zh-CN.vtt 801 Bytes
  • Part 01-Module 13-Lesson 01_PCA/22. Neighborhood Composite Feature-WxAWorS2SLg.en.vtt 797 Bytes
  • Part 01-Module 10-Lesson 01_Linear Regression/14. Absolute Vs Squared Error-csvdjaqt1GM.pt-BR.vtt 793 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/16. 17 L Transition Into Practical Aspects Of Learning-bKqkRFOOKoA.en-US.vtt 793 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/19. 17 Quiz ROC Curve 1 PT2 V1-Xv3v59_CfEU.en.vtt 791 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/13. Error Functions-YfUUunxWIJw.en.vtt 790 Bytes
  • Part 02-Module 04-Lesson 03_Policy-Based Methods/01. M2L3 01 V1-YOSREyp04HA.zh-CN.vtt 787 Bytes
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/12. MLND - Unsupervised Learning - L2 09 DBSCAN Implementation MAIN V1 V1-qEMUzQFylg8.pt-BR.vtt 786 Bytes
  • Part 01-Module 13-Lesson 01_PCA/17. Composite Features-0ZBp8oWySAc.ar.vtt 784 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/05. Match Points with Clusters-lS5DfbsWH34.pt-BR.vtt 781 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/16. Starring interesting repositories-ZwMY5rAAd7Q.ja-JP.vtt 777 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/20. 29 L Optimizing A Logistic Classifier-U_7nO1dm2tY.zh-CN.vtt 777 Bytes
  • Part 01-Module 13-Lesson 01_PCA/08. Principal Axis of New Coordinate System-i6zv8vyZBk0.en.vtt 775 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/04. How Many Clusters-R6oIvdBtsZw.pt-BR.vtt 773 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/05. Match Points with Clusters-lS5DfbsWH34.en.vtt 772 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/14. Solution Sensitivty And Specificity-GBZjyeMjKxc.pt-BR.vtt 772 Bytes
  • Part 01-Module 10-Lesson 03_Decision Trees/12. MLND SL DT 10 Q Information Gain MAIN V1-tVLOLPEtLFw.en.vtt 771 Bytes
  • Part 01-Module 11-Lesson 03_Hierarchical and Density-based Clustering/12. MLND - Unsupervised Learning - L2 09 DBSCAN Implementation MAIN V1 V1-qEMUzQFylg8.zh-CN.vtt 769 Bytes
  • Part 01-Module 13-Lesson 01_PCA/12. Which Data is Ready for PCA-JSVsHbGUuIE.ar.vtt 769 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/20. 29 L Optimizing A Logistic Classifier-U_7nO1dm2tY.pt-BR.vtt 769 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/04. How Many Clusters-R6oIvdBtsZw.en.vtt 768 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/13. Participating in open source projects-OxL-gMTizUA.ar.vtt 768 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/14. Solution Sensitivty And Specificity-GBZjyeMjKxc.zh-CN.vtt 766 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/12. 13 L One Hot Encoding-phYsxqlilUk.ja-JP.vtt 765 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/17. Numerical Stability-_SbGcOS-jcQ.en-US.vtt 764 Bytes
  • Part 01-Module 05-Lesson 01_Training and Testing Models/08. MLND Turning Paramaters-eSv2lPcnRM0.zh-CN.vtt 756 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/29. Neural Networks Outro V2-pwA5shUkRVc.pt-BR.vtt 755 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/10. 10 Quiz Random Vs Preinitiliazed Weights V3-DRC1e4XGl2M.pt-BR.vtt 754 Bytes
  • Part 01-Module 13-Lesson 01_PCA/04. Slightly Less Perfect Data-9O7cJSP4C8w.en.vtt 747 Bytes
  • Part 01-Module 13-Lesson 01_PCA/14. Measurable vs. Latent Features Quiz-20QVVrTcp2A.ar.vtt 745 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/04. How Many Clusters-R6oIvdBtsZw.zh-CN.vtt 744 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/13. Error Functions-YfUUunxWIJw.zh-CN.vtt 739 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/02. Color-Question-BdQccpMwk80.en.vtt 739 Bytes
  • Part 01-Module 13-Lesson 01_PCA/04. Slightly Less Perfect Data-9O7cJSP4C8w.pt-BR.vtt 737 Bytes
  • Part 01-Module 13-Lesson 01_PCA/08. Principal Axis of New Coordinate System-i6zv8vyZBk0.pt-BR.vtt 736 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/10. 10 Quiz Random Vs Preinitiliazed Weights V3-DRC1e4XGl2M.zh-CN.vtt 734 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/02. A Metric for Chris-O0bvLU4l0is.zh-CN.vtt 733 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/08. Solution Data Challenges-1z3o4niQuNg.pt-BR.vtt 730 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/19. 17 Quiz ROC Curve 1 PT2 V1-Xv3v59_CfEU.zh-CN.vtt 729 Bytes
  • Part 01-Module 05-Lesson 01_Training and Testing Models/08. MLND Turning Paramaters-eSv2lPcnRM0.pt-BR.vtt 727 Bytes
  • Part 01-Module 10-Lesson 03_Decision Trees/12. MLND SL DT 10 Q Information Gain MAIN V1-tVLOLPEtLFw.zh-CN.vtt 727 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/29. Conclusion-wOiUQDgGD9E.en.vtt 725 Bytes
  • Part 01-Module 10-Lesson 03_Decision Trees/12. MLND SL DT 10 Q Information Gain MAIN V1-tVLOLPEtLFw.pt-BR.vtt 723 Bytes
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/04. Accuracy 2-ueYCLfd_aNQ.en-US.vtt 720 Bytes
  • Part 01-Module 13-Lesson 01_PCA/22. Neighborhood Composite Feature-WxAWorS2SLg.zh-CN.vtt 720 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/21. Formula For Cross 1-qvr_ego_d6w.pt-BR.vtt 719 Bytes
  • Part 02-Module 03-Lesson 02_The RL Framework The Problem/01. Introduction-X_9l_ZqXXBA.zh-CN.vtt 718 Bytes
  • Part 01-Module 10-Lesson 04_Naive Bayes/01. Naive Bayes Intro V2-vNOiQXghgRY.en.vtt 716 Bytes
  • Part 01-Module 13-Lesson 01_PCA/14. Measurable vs. Latent Features Quiz-UeSD19oit_w.pt-BR.vtt 716 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/01. Non-Linear Data-F7ZiE8PQiSc.ja-JP.vtt 712 Bytes
  • Part 01-Module 13-Lesson 01_PCA/09. Second Principal Component Of New System-cTjBlM2ATLQ.ar.vtt 711 Bytes
  • Part 01-Module 13-Lesson 01_PCA/19. Advantages of Maximal Variance-TbT6a6qaj08.pt-BR.vtt 707 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/12. 13 L One Hot Encoding-phYsxqlilUk.en.vtt 707 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/16. 17 L Transition Into Practical Aspects Of Learning-bKqkRFOOKoA.pt-BR.vtt 707 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/16. Starring interesting repositories-ZwMY5rAAd7Q.pt-BR.vtt 705 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/16. 17 L Transition Into Practical Aspects Of Learning-bKqkRFOOKoA.zh-CN.vtt 704 Bytes
  • Part 01-Module 13-Lesson 01_PCA/14. Measurable vs. Latent Features Quiz-UeSD19oit_w.en.vtt 702 Bytes
  • Part 01-Module 10-Lesson 05_Support Vector Machines/02. SVM 01 Which Line Is Better V1-NCml_NCvd1I.en.vtt 701 Bytes
  • Part 01-Module 13-Lesson 01_PCA/10. Practice Finding Centers-PRjmvj6Vubs.zh-CN.vtt 701 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/21. Formula For Cross 1-qvr_ego_d6w.ja-JP.vtt 698 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/05. Chris's Shirt Size by Our Metric-oWyt6md7P44.ar.vtt 697 Bytes
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/13. MLND - Unsupervised Learning - L3 13 GMM Implementation MAIN V1 V2-zWrC_2Npy9E.pt-BR.vtt 694 Bytes
  • Part 01-Module 13-Lesson 01_PCA/27. PCA on the Enron Finance Data-6ufIq2nrTwg.ar.vtt 694 Bytes
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/01. Apresentando Alexis-38ExGpdyvJI.en.vtt 694 Bytes
  • Part 01-Module 10-Lesson 04_Naive Bayes/01. Naive Bayes Intro V2-vNOiQXghgRY.pt-BR.vtt 690 Bytes
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/04. Accuracy 2-ueYCLfd_aNQ.en.vtt 688 Bytes
  • Part 01-Module 13-Lesson 01_PCA/22. Neighborhood Composite Feature-adXoa85rnPM.pt-BR.vtt 688 Bytes
  • Part 01-Module 13-Lesson 01_PCA/19. Advantages of Maximal Variance-TbT6a6qaj08.en.vtt 685 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/09. Feature Scaling Formula Quiz 3-iY_sO4d23gY.pt-BR.vtt 683 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/02. Color-Question-BdQccpMwk80.pt-BR.vtt 683 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/05. Match Points with Clusters-wJV1cRjmIYY.ar.vtt 682 Bytes
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/10. Regularization-Quiz-E0eEW6V0_sA.ja-JP.vtt 681 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/05. Match Points with Clusters-lS5DfbsWH34.zh-CN.vtt 680 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/19. 17 Quiz ROC Curve 1 PT2 V1-Xv3v59_CfEU.pt-BR.vtt 678 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/12. Reflect on your commit messages-_0AHmKkfjTo.ar.vtt 678 Bytes
  • Part 01-Module 13-Lesson 01_PCA/04. Slightly Less Perfect Data-9O7cJSP4C8w.zh-CN.vtt 677 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/17. Counterintuitive Clusters 2-xSQTzAeeoEc.pt-BR.vtt 672 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/05. Match Points with Clusters-wJV1cRjmIYY.pt-BR.vtt 671 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/17. Numerical Stability-_SbGcOS-jcQ.zh-CN.vtt 669 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/10. MinMax Rescaler Coding Quiz-ePXAzoGVviM.zh-CN.vtt 668 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/17. Counterintuitive Clusters 2-xSQTzAeeoEc.en.vtt 665 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/07. Feature-Map-Sizes-Question-lp1NrLZnCUM.ja-JP.vtt 664 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/07. Feature-Map-Sizes-Question-lp1NrLZnCUM.pt-BR.vtt 663 Bytes
  • Part 01-Module 13-Lesson 01_PCA/08. Principal Axis of New Coordinate System-i6zv8vyZBk0.zh-CN.vtt 662 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/12. 13 L One Hot Encoding-phYsxqlilUk.pt-BR.vtt 657 Bytes
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/04. Accuracy 2-ueYCLfd_aNQ.pt.vtt 656 Bytes
  • Part 01-Module 13-Lesson 01_PCA/12. Which Data is Ready for PCA-JSVsHbGUuIE.pt-BR.vtt 655 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/29. Conclusion-wOiUQDgGD9E.zh-CN.vtt 655 Bytes
  • Part 01-Module 13-Lesson 01_PCA/22. Neighborhood Composite Feature-adXoa85rnPM.en.vtt 644 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/20. Solution ROC Curve-sdUUf6RRmXI.pt-BR.vtt 643 Bytes
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/10. Regularization-Quiz-E0eEW6V0_sA.pt-BR.vtt 643 Bytes
  • Part 01-Module 10-Lesson 05_Support Vector Machines/02. SVM 01 Which Line Is Better V1-NCml_NCvd1I.pt-BR.vtt 638 Bytes
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/10. Regularization-Quiz-E0eEW6V0_sA.en-US.vtt 638 Bytes
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/13. MLND - Unsupervised Learning - L3 13 GMM Implementation MAIN V1 V2-zWrC_2Npy9E.en.vtt 635 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/16. Starring interesting repositories-ZwMY5rAAd7Q.en.vtt 634 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/17. Counterintuitive Clusters 2-xSQTzAeeoEc.zh-CN.vtt 633 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/01. Non-Linear Data-F7ZiE8PQiSc.en.vtt 633 Bytes
  • Part 01-Module 10-Lesson 04_Naive Bayes/01. Naive Bayes Intro V2-vNOiQXghgRY.zh-CN.vtt 631 Bytes
  • Part 03-Module 02-Lesson 01_Intro to TensorFlow/12. 13 L One Hot Encoding-phYsxqlilUk.zh-CN.vtt 629 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/10. MinMax Rescaler Coding Quiz-xTEkF0voyoM.ar.vtt 624 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/01. Non-Linear Data-F7ZiE8PQiSc.zh-CN.vtt 624 Bytes
  • Part 01-Module 13-Lesson 01_PCA/12. Which Data is Ready for PCA-JSVsHbGUuIE.en.vtt 622 Bytes
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/04. Accuracy 2-ueYCLfd_aNQ.pt-BR.vtt 618 Bytes
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/01. Apresentando Alexis-38ExGpdyvJI.zh-CN.vtt 615 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/05. Match Points with Clusters-wJV1cRjmIYY.en.vtt 613 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/02. Color-Question-BdQccpMwk80.zh-CN.vtt 612 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/12. Reflect on your commit messages-_0AHmKkfjTo.ja-JP.vtt 610 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/08. Quick Fixes #2-It6AEuSDQw0.ar.vtt 608 Bytes
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/01. Introducing Luis-nto-stLuN6M.en-US.vtt 608 Bytes
  • Part 01-Module 01-Lesson 02_What is Machine Learning/13. SVM Question-Fwnjx0s_AIw.en.vtt 607 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/21. Formula For Cross 1-qvr_ego_d6w.en.vtt 607 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/06. Optimizing Centers (Rubber Bands)-TN1rQMrx65c.pt-BR.vtt 606 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/14. Some challenges of k-means-e2CdlG5P4WA.en.vtt 601 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/09. Feature Scaling Formula Quiz 3-iY_sO4d23gY.en.vtt 600 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/01. Non-Linear Data-F7ZiE8PQiSc.pt-BR.vtt 600 Bytes
  • Part 01-Module 13-Lesson 01_PCA/14. Measurable vs. Latent Features Quiz-20QVVrTcp2A.pt-BR.vtt 599 Bytes
  • Part 02-Module 02-Lesson 04_Convolutional Neural Networks/01. Apresentando Alexis-38ExGpdyvJI.pt-BR.vtt 599 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/13. Participating in open source projects-OxL-gMTizUA.ja-JP.vtt 599 Bytes
  • Part 01-Module 13-Lesson 01_PCA/13. When Does an Axis Dominate-4hJlaYRHdpA.ar.vtt 597 Bytes
  • Part 01-Module 13-Lesson 01_PCA/17. Composite Features-0ZBp8oWySAc.en.vtt 596 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/06. Optimizing Centers (Rubber Bands)-TN1rQMrx65c.en.vtt 595 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/07. Feature-Map-Sizes-Question-lp1NrLZnCUM.en.vtt 594 Bytes
  • Part 01-Module 13-Lesson 01_PCA/14. Measurable vs. Latent Features Quiz-UeSD19oit_w.zh-CN.vtt 593 Bytes
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/01. Introducing Luis-nto-stLuN6M.pt-BR.vtt 592 Bytes
  • Part 01-Module 01-Lesson 02_What is Machine Learning/13. SVM Question-Fwnjx0s_AIw.zh-CN.vtt 590 Bytes
  • Part 01-Module 10-Lesson 01_Linear Regression/23. Conclusion-pyeojf0NniQ.pt-BR.vtt 590 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/05. Match Points with Clusters-wJV1cRjmIYY.zh-CN.vtt 589 Bytes
  • Part 01-Module 10-Lesson 05_Support Vector Machines/02. SVM 01 Which Line Is Better V1-NCml_NCvd1I.zh-CN.vtt 588 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/26. Keras Lab-a50un22BsLI.en.vtt 586 Bytes
  • Part 01-Module 13-Lesson 01_PCA/19. Advantages of Maximal Variance-TbT6a6qaj08.zh-CN.vtt 584 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/15. Discrete vs Continuous-rdP-RPDFkl0.pt-BR.vtt 584 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/10. K-Means Cluster Visualization-ZMfwPUrOFsE.ar.vtt 583 Bytes
  • Part 01-Module 13-Lesson 01_PCA/22. Neighborhood Composite Feature-adXoa85rnPM.zh-CN.vtt 580 Bytes
  • Part 01-Module 13-Lesson 01_PCA/27. PCA on the Enron Finance Data-6ufIq2nrTwg.en.vtt 579 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/26. Keras Lab-a50un22BsLI.pt-BR.vtt 574 Bytes
  • Part 01-Module 13-Lesson 01_PCA/14. Measurable vs. Latent Features Quiz-20QVVrTcp2A.en.vtt 573 Bytes
  • Part 01-Module 13-Lesson 01_PCA/27. PCA on the Enron Finance Data-6ufIq2nrTwg.pt-BR.vtt 573 Bytes
  • Part 01-Module 13-Lesson 01_PCA/20. Maximal Variance and Information Loss-DX_f02bUHT0.ar.vtt 570 Bytes
  • Part 01-Module 11-Lesson 04_Gaussian Mixture Models and Cluster Validation/13. MLND - Unsupervised Learning - L3 13 GMM Implementation MAIN V1 V2-zWrC_2Npy9E.zh-CN.vtt 561 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/05. Chris's Shirt Size by Our Metric-e83ZS4VqGZ0.ar.vtt 561 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/15. Discrete vs Continuous-rdP-RPDFkl0.ja-JP.vtt 561 Bytes
  • Part 01-Module 13-Lesson 01_PCA/12. Which Data is Ready for PCA-JSVsHbGUuIE.zh-CN.vtt 560 Bytes
  • Part 01-Module 13-Lesson 01_PCA/24. Maximum Number of PCs Quiz-q4c5n5W2aUc.ar.vtt 559 Bytes
  • Part 01-Module 10-Lesson 01_Linear Regression/23. Conclusion-pyeojf0NniQ.en.vtt 558 Bytes
  • Part 03-Module 04-Lesson 01_Deep Neural Networks/10. Regularization-Quiz-E0eEW6V0_sA.zh-CN.vtt 557 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/16. Starring interesting repositories-ZwMY5rAAd7Q.zh-CN.vtt 556 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/07. Feature-Map-Sizes-Question-lp1NrLZnCUM.zh-CN.vtt 555 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/15. Discrete vs Continuous-rdP-RPDFkl0.en.vtt 551 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/16. Quiz - Softmax-NNoezNnAMTY.ja-JP.vtt 551 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/13. Participating in open source projects-OxL-gMTizUA.pt-BR.vtt 551 Bytes
  • Part 01-Module 13-Lesson 01_PCA/17. Composite Features-0ZBp8oWySAc.pt-BR.vtt 549 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/16. Quiz - Softmax-NNoezNnAMTY.zh-CN.vtt 548 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/21. Formula For Cross 1-qvr_ego_d6w.zh-CN.vtt 545 Bytes
  • Part 01-Module 10-Lesson 05_Support Vector Machines/01. Support Vector Machine V2-LBmM6pZCrI0.pt-BR.vtt 543 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/16. Starring interesting repositories-U3FUxkm1MxI.ar.vtt 542 Bytes
  • Part 01-Module 10-Lesson 06_Ensemble Methods/11. Supervised Learning Outro V2-7X2SDqzGrdU.en.vtt 540 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/14. Some challenges of k-means-e2CdlG5P4WA.pt-BR.vtt 540 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/26. Keras Lab-a50un22BsLI.zh-CN.vtt 540 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/28. Mini Project Introduction-Rgf3YVFWl-M.pt-BR.vtt 538 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/12. Reflect on your commit messages-_0AHmKkfjTo.pt-BR.vtt 538 Bytes
  • Part 03-Module 03-Lesson 01_Intro to Neural Networks/01. Introducing Luis-nto-stLuN6M.zh-CN.vtt 535 Bytes
  • Part 01-Module 07-Lesson 01_Model Selection/13. MLND Outro-sFvMBncQjr8.pt-BR.vtt 533 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/14. Some challenges of k-means-e2CdlG5P4WA.zh-CN.vtt 530 Bytes
  • Part 01-Module 06-Lesson 01_Evaluation Metrics/04. Accuracy 2-ueYCLfd_aNQ.zh-CN.vtt 528 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/07. 07 Quiz Data Challenges V1-F8yc7BlV93c.en.vtt 526 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/04. How Many Clusters-8Ygq5dRV0Kk.ar.vtt 521 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/05. Chris's Shirt Size by Our Metric-oWyt6md7P44.pt-BR.vtt 518 Bytes
  • Part 01-Module 10-Lesson 05_Support Vector Machines/09. SVM 07 Error Function V1-A1wbrcSYc1c.en.vtt 517 Bytes
  • Part 01-Module 07-Lesson 01_Model Selection/13. MLND Outro-sFvMBncQjr8.en.vtt 514 Bytes
  • Part 01-Module 10-Lesson 05_Support Vector Machines/01. Support Vector Machine V2-LBmM6pZCrI0.en.vtt 514 Bytes
  • Part 01-Module 01-Lesson 02_What is Machine Learning/13. SVM Question-Fwnjx0s_AIw.pt-BR.vtt 512 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/01. Chris's T-Shirt Size (Intuition)-l6YXxmCNtHk.ar.vtt 512 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/08. Match Points (again)-9J3IwQFXveI.ar.vtt 510 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/28. Mini Project Introduction-Rgf3YVFWl-M.en.vtt 510 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/16. 15 Quiz Diagnosing Cancer V3-4UzkwecBJro.en.vtt 508 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/09. Feature Scaling Formula Quiz 3-iY_sO4d23gY.zh-CN.vtt 507 Bytes
  • Part 01-Module 13-Lesson 01_PCA/09. Second Principal Component Of New System-cTjBlM2ATLQ.pt-BR.vtt 507 Bytes
  • Part 01-Module 13-Lesson 01_PCA/02. Trickier Data Dimensionality-s24-ikl3ZAs.ar.vtt 505 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/13. 13 Quiz Sensitivity And Specificty V3-O17MnhWBmKA.en.vtt 505 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/16. Quiz - Softmax-NNoezNnAMTY.pt-BR.vtt 501 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/12. Reflect on your commit messages-_0AHmKkfjTo.en.vtt 501 Bytes
  • Part 01-Module 13-Lesson 01_PCA/14. Measurable vs. Latent Features Quiz-20QVVrTcp2A.zh-CN.vtt 499 Bytes
  • Part 01-Module 13-Lesson 01_PCA/17. Composite Features-0ZBp8oWySAc.zh-CN.vtt 498 Bytes
  • Part 01-Module 13-Lesson 01_PCA/24. Maximum Number of PCs Quiz-q4c5n5W2aUc.pt-BR.vtt 497 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/16. Quiz - Softmax-NNoezNnAMTY.en.vtt 495 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/16. Starring interesting repositories-U3FUxkm1MxI.ja-JP.vtt 492 Bytes
  • Part 01-Module 13-Lesson 01_PCA/18. Maximal Variance-FpQm_dYA9LM.ar.vtt 490 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/06. Identify fixes for example “bad” profile-AF07y1oAim0.ar.vtt 490 Bytes
  • Part 01-Module 13-Lesson 01_PCA/09. Second Principal Component Of New System-cTjBlM2ATLQ.en.vtt 489 Bytes
  • Part 01-Module 10-Lesson 06_Ensemble Methods/11. Supervised Learning Outro V2-7X2SDqzGrdU.zh-CN.vtt 488 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/06. Optimizing Centers (Rubber Bands)-TN1rQMrx65c.zh-CN.vtt 488 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/13. 13 Quiz Sensitivity And Specificty V3-O17MnhWBmKA.zh-CN.vtt 487 Bytes
  • Part 01-Module 13-Lesson 01_PCA/27. PCA on the Enron Finance Data-6ufIq2nrTwg.zh-CN.vtt 485 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/08. Quick Fixes #2-It6AEuSDQw0.ja-JP.vtt 484 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/05. Chris's Shirt Size by Our Metric-oWyt6md7P44.en.vtt 483 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/07. 07 Quiz Data Challenges V1-F8yc7BlV93c.pt-BR.vtt 482 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/15. Discrete vs Continuous-rdP-RPDFkl0.zh-CN.vtt 481 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/07. Moving Centers 2-FY0DXe0lfrI.ar.vtt 479 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/20. Random Restart-idyBBCzXiqg.pt-BR.vtt 478 Bytes
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. DL 10 S Perceptron Algorithm-fATmrG2hQzI.ja-JP.vtt 477 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/10. DL 10 S Perceptron Algorithm-fATmrG2hQzI.ja-JP.vtt 477 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/13. Participating in open source projects-OxL-gMTizUA.en.vtt 476 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/28. Mini Project Introduction-Rgf3YVFWl-M.zh-CN.vtt 475 Bytes
  • Part 01-Module 13-Lesson 01_PCA/13. When Does an Axis Dominate-4hJlaYRHdpA.pt-BR.vtt 474 Bytes
  • Part 01-Module 13-Lesson 01_PCA/24. Maximum Number of PCs Quiz-q4c5n5W2aUc.en.vtt 473 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/06. Identify fixes for example “bad” profile-AF07y1oAim0.ja-JP.vtt 473 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/12. Reflect on your commit messages-_0AHmKkfjTo.zh-CN.vtt 473 Bytes
  • Part 01-Module 13-Lesson 01_PCA/13. When Does an Axis Dominate-4hJlaYRHdpA.en.vtt 472 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/16. 15 Quiz Diagnosing Cancer V3-4UzkwecBJro.pt-BR.vtt 472 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/07. 07 Quiz Data Challenges V1-F8yc7BlV93c.zh-CN.vtt 468 Bytes
  • Part 01-Module 10-Lesson 05_Support Vector Machines/09. SVM 07 Error Function V1-A1wbrcSYc1c.zh-CN.vtt 467 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/20. Random Restart-idyBBCzXiqg.en.vtt 466 Bytes
  • Part 01-Module 10-Lesson 05_Support Vector Machines/09. SVM 07 Error Function V1-A1wbrcSYc1c.pt-BR.vtt 465 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/16. Starring interesting repositories-U3FUxkm1MxI.pt-BR.vtt 460 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/04. How Many Clusters-8Ygq5dRV0Kk.en.vtt 458 Bytes
  • Part 01-Module 13-Lesson 01_PCA/20. Maximal Variance and Information Loss-DX_f02bUHT0.en.vtt 457 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/06. Identify fixes for example “bad” profile-AF07y1oAim0.pt-BR.vtt 457 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/16. 15 Quiz Diagnosing Cancer V3-4UzkwecBJro.zh-CN.vtt 456 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/10. K-Means Cluster Visualization-ZMfwPUrOFsE.pt-BR.vtt 454 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/10. MinMax Rescaler Coding Quiz-xTEkF0voyoM.pt-BR.vtt 454 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/08. Quick Fixes #2-It6AEuSDQw0.pt-BR.vtt 453 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/10. K-Means Cluster Visualization-ZMfwPUrOFsE.en.vtt 451 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/07. Moving Centers 2-uC1Xwc7warg.ar.vtt 444 Bytes
  • Part 01-Module 13-Lesson 01_PCA/09. Second Principal Component Of New System-cTjBlM2ATLQ.zh-CN.vtt 440 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/04. How Many Clusters-8Ygq5dRV0Kk.pt-BR.vtt 439 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/13. Participating in open source projects-OxL-gMTizUA.zh-CN.vtt 438 Bytes
  • Part 01-Module 07-Lesson 01_Model Selection/13. MLND Outro-sFvMBncQjr8.zh-CN.vtt 437 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/08. Quick Fixes #2-It6AEuSDQw0.en.vtt 435 Bytes
  • Part 01-Module 10-Lesson 05_Support Vector Machines/01. Support Vector Machine V2-LBmM6pZCrI0.zh-CN.vtt 432 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/05. Chris's Shirt Size by Our Metric-e83ZS4VqGZ0.pt-BR.vtt 426 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/05. Chris's Shirt Size by Our Metric-oWyt6md7P44.zh-CN.vtt 425 Bytes
  • Part 01-Module 13-Lesson 01_PCA/04. Slightly Less Perfect Data-g5yfjKWIKN4.ar.vtt 425 Bytes
  • Part 01-Module 13-Lesson 01_PCA/05. Trickiest Data Dimensionality-vIxDt0bNV9g.ar.vtt 425 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/10. K-Means Cluster Visualization-ZMfwPUrOFsE.zh-CN.vtt 424 Bytes
  • Part 01-Module 13-Lesson 01_PCA/20. Maximal Variance and Information Loss-DX_f02bUHT0.pt-BR.vtt 423 Bytes
  • Part 01-Module 13-Lesson 01_PCA/24. Maximum Number of PCs Quiz-q4c5n5W2aUc.zh-CN.vtt 422 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/01. Chris's T-Shirt Size (Intuition)-l6YXxmCNtHk.pt-BR.vtt 421 Bytes
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. DL 10 S Perceptron Algorithm-fATmrG2hQzI.en.vtt 420 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/10. DL 10 S Perceptron Algorithm-fATmrG2hQzI.en.vtt 420 Bytes
  • Part 02-Module 02-Lesson 05_Deep Learning for Cancer Detection with Sebastian Thrun/13. 13 Quiz Sensitivity And Specificty V3-O17MnhWBmKA.pt-BR.vtt 420 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/01. Chris's T-Shirt Size (Intuition)-l6YXxmCNtHk.en.vtt 419 Bytes
  • Part 02-Module 02-Lesson 03_Deep Neural Networks/20. Random Restart-idyBBCzXiqg.zh-CN.vtt 419 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/16. Starring interesting repositories-U3FUxkm1MxI.en.vtt 419 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/10. MinMax Rescaler Coding Quiz-xTEkF0voyoM.en.vtt 418 Bytes
  • Part 01-Module 13-Lesson 01_PCA/02. Trickier Data Dimensionality-s24-ikl3ZAs.pt-BR.vtt 410 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/08. Quick Fixes #2-It6AEuSDQw0.zh-CN.vtt 410 Bytes
  • Part 01-Module 13-Lesson 01_PCA/13. When Does an Axis Dominate-4hJlaYRHdpA.zh-CN.vtt 408 Bytes
  • Part 01-Module 13-Lesson 01_PCA/18. Maximal Variance-FpQm_dYA9LM.en.vtt 406 Bytes
  • Part 01-Module 13-Lesson 01_PCA/18. Maximal Variance-FpQm_dYA9LM.pt-BR.vtt 402 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/05. Chris's Shirt Size by Our Metric-e83ZS4VqGZ0.en.vtt 399 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/10. MinMax Rescaler Coding Quiz-xTEkF0voyoM.zh-CN.vtt 396 Bytes
  • Part 01-Module 13-Lesson 01_PCA/02. Trickier Data Dimensionality-s24-ikl3ZAs.en.vtt 395 Bytes
  • Part 01-Module 13-Lesson 01_PCA/07. Center of a New Coordinate System-1ask5zHGQKM.ar.vtt 393 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/16. Starring interesting repositories-U3FUxkm1MxI.zh-CN.vtt 392 Bytes
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. DL 10 S Perceptron Algorithm-fATmrG2hQzI.zh-CN.vtt 390 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/10. DL 10 S Perceptron Algorithm-fATmrG2hQzI.zh-CN.vtt 390 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/01. Intro to CNNs-B61jxZ4rkMs.ja-JP.vtt 386 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/04. How Many Clusters-8Ygq5dRV0Kk.zh-CN.vtt 385 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/15. Limitations of K-Means-nvLhUSSUhiY.ar.vtt 385 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/06. Identify fixes for example “bad” profile-AF07y1oAim0.en.vtt 371 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/07. Moving Centers 2-FY0DXe0lfrI.pt-BR.vtt 370 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/08. Match Points (again)-9J3IwQFXveI.pt-BR.vtt 369 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/05. Chris's Shirt Size by Our Metric-e83ZS4VqGZ0.zh-CN.vtt 369 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/07. Moving Centers 2-FY0DXe0lfrI.en.vtt 368 Bytes
  • Part 01-Module 10-Lesson 02_Perceptron Algorithm/08. DL 10 S Perceptron Algorithm-fATmrG2hQzI.pt-BR.vtt 364 Bytes
  • Part 02-Module 02-Lesson 01_Neural Networks/10. DL 10 S Perceptron Algorithm-fATmrG2hQzI.pt-BR.vtt 364 Bytes
  • Part 01-Module 13-Lesson 01_PCA/05. Trickiest Data Dimensionality-vIxDt0bNV9g.pt-BR.vtt 362 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/07. Moving Centers 2-FY0DXe0lfrI.zh-CN.vtt 361 Bytes
  • Part 01-Module 13-Lesson 01_PCA/02. Trickier Data Dimensionality-s24-ikl3ZAs.zh-CN.vtt 361 Bytes
  • Part 01-Module 13-Lesson 01_PCA/03. One-Dimensional, or Two-QsncWsyboFk.ar.vtt 360 Bytes
  • Part 01-Module 13-Lesson 01_PCA/24. Maximum Number of PCs Quiz-oOUx6NHppdQ.ar.vtt 359 Bytes
  • Part 01-Module 13-Lesson 01_PCA/01. Data Dimensionality-bAZJT4xHiXM.ar.vtt 357 Bytes
  • Part 02-Module 06-Lesson 01_Optimize Your GitHub Profile/06. Identify fixes for example “bad” profile-AF07y1oAim0.zh-CN.vtt 357 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/08. Match Points (again)-9J3IwQFXveI.en.vtt 355 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/08. Match Points (again)-9J3IwQFXveI.zh-CN.vtt 355 Bytes
  • Part 01-Module 13-Lesson 01_PCA/20. Maximal Variance and Information Loss-DX_f02bUHT0.zh-CN.vtt 342 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/01. Chris's T-Shirt Size (Intuition)-l6YXxmCNtHk.zh-CN.vtt 335 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/07. Moving Centers 2-uC1Xwc7warg.zh-CN.vtt 332 Bytes
  • Part 01-Module 13-Lesson 01_PCA/04. Slightly Less Perfect Data-g5yfjKWIKN4.pt-BR.vtt 331 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/07. Moving Centers 2-uC1Xwc7warg.pt-BR.vtt 326 Bytes
  • Part 01-Module 13-Lesson 01_PCA/24. Maximum Number of PCs Quiz-oOUx6NHppdQ.pt-BR.vtt 326 Bytes
  • Part 01-Module 13-Lesson 01_PCA/04. Slightly Less Perfect Data-g5yfjKWIKN4.en.vtt 325 Bytes
  • Part 01-Module 13-Lesson 01_PCA/05. Trickiest Data Dimensionality-vIxDt0bNV9g.en.vtt 325 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/01. Intro to CNNs-B61jxZ4rkMs.pt-BR.vtt 324 Bytes
  • Part 01-Module 13-Lesson 01_PCA/24. Maximum Number of PCs Quiz-oOUx6NHppdQ.en.vtt 320 Bytes
  • Part 01-Module 13-Lesson 01_PCA/04. Slightly Less Perfect Data-g5yfjKWIKN4.zh-CN.vtt 316 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/15. Limitations of K-Means-nvLhUSSUhiY.en.vtt 315 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/07. Moving Centers 2-uC1Xwc7warg.en.vtt 312 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/01. Intro to CNNs-B61jxZ4rkMs.en-US.vtt 309 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/15. Limitations of K-Means-nvLhUSSUhiY.pt-BR.vtt 306 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/08. Feature Scaling Formula Quiz 2-J6RyUyWxrM4.ar.vtt 306 Bytes
  • Part 01-Module 13-Lesson 01_PCA/05. Trickiest Data Dimensionality-vIxDt0bNV9g.zh-CN.vtt 305 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/01. Intro to CNNs-B61jxZ4rkMs.en.vtt 303 Bytes
  • Part 01-Module 13-Lesson 01_PCA/01. Data Dimensionality-bAZJT4xHiXM.pt-BR.vtt 302 Bytes
  • Part 01-Module 13-Lesson 01_PCA/08. Principal Axis of New Coordinate System-qPr3Uj55eog.ar.vtt 301 Bytes
  • Part 03-Module 05-Lesson 01_Convolutional Neural Networks/01. Intro to CNNs-B61jxZ4rkMs.zh-CN.vtt 301 Bytes
  • Part 01-Module 13-Lesson 01_PCA/18. Maximal Variance-FpQm_dYA9LM.zh-CN.vtt 299 Bytes
  • Part 01-Module 13-Lesson 01_PCA/07. Center of a New Coordinate System-1ask5zHGQKM.en.vtt 298 Bytes
  • Part 01-Module 13-Lesson 01_PCA/03. One-Dimensional, or Two-QsncWsyboFk.en.vtt 292 Bytes
  • Part 01-Module 13-Lesson 01_PCA/03. One-Dimensional, or Two-QsncWsyboFk.pt-BR.vtt 292 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/07. Feature Scaling Formula Quiz 1-sPqs7DoBkXQ.ar.vtt 284 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/03. Height + Weight for Cameron-MetxO9LDp-I.ar.vtt 282 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/15. Limitations of K-Means-nvLhUSSUhiY.zh-CN.vtt 277 Bytes
  • Part 01-Module 13-Lesson 01_PCA/03. One-Dimensional, or Two-QsncWsyboFk.zh-CN.vtt 277 Bytes
  • Part 01-Module 13-Lesson 01_PCA/01. Data Dimensionality-bAZJT4xHiXM.en.vtt 273 Bytes
  • Part 01-Module 13-Lesson 01_PCA/07. Center of a New Coordinate System-1ask5zHGQKM.pt-BR.vtt 271 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/09. Handoff to Katie-knrPsGtpyQY.ar.vtt 258 Bytes
  • Part 01-Module 13-Lesson 01_PCA/07. Center of a New Coordinate System-1ask5zHGQKM.zh-CN.vtt 245 Bytes
  • Part 01-Module 13-Lesson 01_PCA/24. Maximum Number of PCs Quiz-oOUx6NHppdQ.zh-CN.vtt 243 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/08. Feature Scaling Formula Quiz 2-J6RyUyWxrM4.pt-BR.vtt 233 Bytes
  • Part 01-Module 13-Lesson 01_PCA/01. Data Dimensionality-bAZJT4xHiXM.zh-CN.vtt 232 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/03. Height + Weight for Cameron-MetxO9LDp-I.pt-BR.vtt 230 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/08. Feature Scaling Formula Quiz 2-J6RyUyWxrM4.en.vtt 229 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/02. A Metric for Chris-Thj7e55iSlA.ar.vtt 226 Bytes
  • Part 01-Module 13-Lesson 01_PCA/08. Principal Axis of New Coordinate System-qPr3Uj55eog.pt-BR.vtt 226 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/03. Height + Weight for Cameron-MetxO9LDp-I.zh-CN.vtt 222 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/03. Height + Weight for Cameron-MetxO9LDp-I.en.vtt 214 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/07. Feature Scaling Formula Quiz 1-sPqs7DoBkXQ.en.vtt 208 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/09. Handoff to Katie-knrPsGtpyQY.en.vtt 207 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/09. Handoff to Katie-knrPsGtpyQY.zh-CN.vtt 206 Bytes
  • Part 01-Module 13-Lesson 01_PCA/08. Principal Axis of New Coordinate System-qPr3Uj55eog.en.vtt 205 Bytes
  • Part 01-Module 11-Lesson 01_Clustering/09. Handoff to Katie-knrPsGtpyQY.pt-BR.vtt 204 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/04. Sarah's Height + Weight-OdsfV143AMc.ar.vtt 204 Bytes
  • Part 01-Module 13-Lesson 01_PCA/11. Practice Finding New Axes-th34aboBOO0.ar.vtt 203 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/07. Feature Scaling Formula Quiz 1-sPqs7DoBkXQ.pt-BR.vtt 186 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/04. Sarah's Height + Weight-OdsfV143AMc.pt-BR.vtt 180 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/03. Height + Weight for Cameron--dT9dztM-Lc.ar.vtt 171 Bytes
  • Part 01-Module 13-Lesson 01_PCA/02. Trickier Data Dimensionality--dcNhrSPmoY.pt-BR.vtt 171 Bytes
  • Part 01-Module 13-Lesson 01_PCA/02. Trickier Data Dimensionality--dcNhrSPmoY.ar.vtt 168 Bytes
  • Part 01-Module 13-Lesson 01_PCA/08. Principal Axis of New Coordinate System-qPr3Uj55eog.zh-CN.vtt 167 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/04. Sarah's Height + Weight-OdsfV143AMc.zh-CN.vtt 166 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/07. Feature Scaling Formula Quiz 1-sPqs7DoBkXQ.zh-CN.vtt 166 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/08. Feature Scaling Formula Quiz 2-J6RyUyWxrM4.zh-CN.vtt 165 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/03. Height + Weight for Cameron--dT9dztM-Lc.pt-BR.vtt 164 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/04. Sarah's Height + Weight-OdsfV143AMc.en.vtt 164 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/02. A Metric for Chris-Thj7e55iSlA.pt-BR.vtt 143 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/03. Height + Weight for Cameron--dT9dztM-Lc.en.vtt 141 Bytes
  • Part 01-Module 13-Lesson 01_PCA/11. Practice Finding New Axes-th34aboBOO0.pt-BR.vtt 141 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/02. A Metric for Chris-Thj7e55iSlA.en.vtt 140 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/08. Feature Scaling Formula Quiz 2-vmIK4jpUtNo.ar.vtt 140 Bytes
  • Part 01-Module 13-Lesson 01_PCA/11. Practice Finding New Axes-th34aboBOO0.en.vtt 139 Bytes
  • Part 01-Module 13-Lesson 01_PCA/02. Trickier Data Dimensionality--dcNhrSPmoY.en.vtt 138 Bytes
  • [FCS Forum].url 133 Bytes
  • [FreeCourseSite.com].url 127 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/08. Feature Scaling Formula Quiz 2-vmIK4jpUtNo.zh-CN.vtt 125 Bytes
  • Part 01-Module 13-Lesson 01_PCA/02. Trickier Data Dimensionality--dcNhrSPmoY.zh-CN.vtt 125 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/08. Feature Scaling Formula Quiz 2-vmIK4jpUtNo.pt-BR.vtt 124 Bytes
  • Part 01-Module 13-Lesson 01_PCA/10. Practice Finding Centers-FZVBF1HR4U0.ar.vtt 122 Bytes
  • [CourseClub.ME].url 122 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/04. Sarah's Height + Weight-p5p3OLARpmA.ar.vtt 118 Bytes
  • Part 01-Module 13-Lesson 01_PCA/10. Practice Finding Centers-FZVBF1HR4U0.zh-CN.vtt 113 Bytes
  • Part 01-Module 13-Lesson 01_PCA/10. Practice Finding Centers-FZVBF1HR4U0.en.vtt 109 Bytes
  • Part 01-Module 13-Lesson 01_PCA/10. Practice Finding Centers-FZVBF1HR4U0.pt-BR.vtt 109 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/08. Feature Scaling Formula Quiz 2-vmIK4jpUtNo.en.vtt 108 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/04. Sarah's Height + Weight-p5p3OLARpmA.zh-CN.vtt 107 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/04. Sarah's Height + Weight-p5p3OLARpmA.pt-BR.vtt 105 Bytes
  • Part 01-Module 12-Lesson 01_Feature Scaling/04. Sarah's Height + Weight-p5p3OLARpmA.en.vtt 104 Bytes

随机展示

相关说明

本站不存储任何资源内容,只收集BT种子元数据(例如文件名和文件大小)和磁力链接(BT种子标识符),并提供查询服务,是一个完全合法的搜索引擎系统。 网站不提供种子下载服务,用户可以通过第三方链接或磁力链接获取到相关的种子资源。本站也不对BT种子真实性及合法性负责,请用户注意甄别!