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

[FreeAllCourse.Com] Udemy- The Complete Machine Learning Course with Python

磁力链接/BT种子名称

[FreeAllCourse.Com] Udemy- The Complete Machine Learning Course with Python

磁力链接/BT种子简介

种子哈希:be1c9559ddc8efb105665a8d97abca77b961d8c9
文件大小: 6.79G
已经下载:779次
下载速度:极快
收录时间:2021-04-23
最近下载:2025-07-14

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:BE1C9559DDC8EFB105665A8D97ABCA77B961D8C9
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 TikTok成人版 PornHub 草榴社区 哆哔涩漫 呦乐园 萝莉岛

最近搜索

互操 分手后被 她中国人 海盗 2022 辛尤里 百合 性爱甄选 同意 东北 女王 大鸡巴 制服 内射 .de.ville 黄播集 内射 网红 文轩探花 上班跳蛋 【极品美少女】 女模 高颜值甜妹 人妻探花 handmaids tale 红色高跟鞋 一面 撅起 莎妹 二葉エマ 学院派 私拍 学生情侣 玩坏 清水由乃 万万

文件列表

  • 6. Tree/6. Project HR.mp4 186.5 MB
  • 7. Ensemble Machine Learning/2. Bagging.mp4 173.5 MB
  • 12. Appendix A1 Foundations of Deep Learning/4. What is Deep Learning.mp4 163.2 MB
  • 3. Regression/2. EDA.mp4 159.0 MB
  • 11. Deep Learning/3. Motivational Example - Project MNIST.mp4 152.0 MB
  • 11. Deep Learning/1. Estimating Simple Function with Neural Networks.mp4 150.8 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/4. Visualizing CNN.mp4 148.8 MB
  • 3. Regression/15. Data Preprocessing.mp4 142.1 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/11. Training Your CNN 2.mp4 134.8 MB
  • 3. Regression/19. CV Illustration.mp4 133.4 MB
  • 10. Unsupervised Learning Clustering/1. Clustering.mp4 131.8 MB
  • 3. Regression/9. Multiple Regression 1.mp4 131.6 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/10. Training Your CNN 1.mp4 130.9 MB
  • 4. Classification/1. Logistic Regression.mp4 125.4 MB
  • 3. Regression/7. Robust Regression.mp4 124.8 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/16. Feature Extraction.mp4 116.5 MB
  • 3. Regression/12. Polynomial Regression.mp4 116.2 MB
  • 4. Classification/3. Understanding MNIST.mp4 114.3 MB
  • 3. Regression/4. Correlation Analysis and Feature Selection.mp4 110.3 MB
  • 4. Classification/10. Precision Recall Tradeoff.mp4 107.0 MB
  • 3. Regression/8. Evaluate Regression Model Performance.mp4 104.5 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/15. Transfer Learning.mp4 101.7 MB
  • 2. Getting Started with Anaconda/6. Iris Project 4 Visualization.mp4 98.0 MB
  • 3. Regression/10. Multiple Regression 2.mp4 95.6 MB
  • 2. Getting Started with Anaconda/3. Iris Project 1 Working with Error Messages.mp4 94.2 MB
  • 12. Appendix A1 Foundations of Deep Learning/9. Tensor Operations.mp4 93.1 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/9. Pooling, Flatten, Dense.mp4 92.4 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/7. Layer - Filter.mp4 88.5 MB
  • 5. Support Vector Machine (SVM)/2. Linear SVM Classification.mp4 84.9 MB
  • 7. Ensemble Machine Learning/3. Random Forests and Extra-Trees.mp4 84.2 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/13. Model Performance Comparison.mp4 83.6 MB
  • 3. Regression/6. Five Steps Machine Learning Process.mp4 81.0 MB
  • 12. Appendix A1 Foundations of Deep Learning/3. Learning Representations.mp4 81.0 MB
  • 3. Regression/5. Linear Regression with Scikit-Learn.mp4 80.7 MB
  • 11. Deep Learning/5. Natural Language Processing - Binary Classification.mp4 79.7 MB
  • 8. k-Nearest Neighbours (kNN)/2. Project Cancer Detection.mp4 79.4 MB
  • 11. Deep Learning/4. Binary Classification Problem.mp4 75.6 MB
  • 5. Support Vector Machine (SVM)/4. Radial Basis Function.mp4 73.5 MB
  • 12. Appendix A1 Foundations of Deep Learning/13. Over and Under Fitting.mp4 73.5 MB
  • 3. Regression/16. Variance-Bias Trade Off.mp4 72.0 MB
  • 6. Tree/7. Project HR with Google Colab.mp4 69.8 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/3. Motivational Example.mp4 69.4 MB
  • 2. Getting Started with Anaconda/4. Iris Project 2 Reading CSV Data into Memory.mp4 67.7 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/1. Outline.mp4 66.8 MB
  • 8. k-Nearest Neighbours (kNN)/1. kNN Introduction.mp4 66.0 MB
  • 3. Regression/13. Dealing with Non-linear Relationships.mp4 65.7 MB
  • 5. Support Vector Machine (SVM)/5. Support Vector Regression.mp4 62.6 MB
  • 7. Ensemble Machine Learning/8. Project HR - Human Resources Analytics.mp4 62.1 MB
  • 10. Unsupervised Learning Clustering/2. k_Means Clustering.mp4 60.5 MB
  • 4. Classification/4. SGD.mp4 60.1 MB
  • 3. Regression/17. Learning Curve.mp4 59.1 MB
  • 2. Getting Started with Anaconda/5. Iris Project 3 Loading data from Seaborn.mp4 58.6 MB
  • 12. Appendix A1 Foundations of Deep Learning/10. Gradient Based Optimization.mp4 57.6 MB
  • 6. Tree/3. Visualizing Boundary.mp4 57.4 MB
  • 4. Classification/6. Confusion Matrix.mp4 57.4 MB
  • 1. Introduction/1. What Does the Course Cover.mp4 57.0 MB
  • 4. Classification/12. ROC.mp4 54.8 MB
  • 4. Classification/5. Performance Measure and Stratified k-Fold.mp4 54.0 MB
  • 6. Tree/2. Training and Visualizing a Decision Tree.mp4 53.9 MB
  • 2. Getting Started with Anaconda/2. Hello World.mp4 53.7 MB
  • 7. Ensemble Machine Learning/4. AdaBoost.mp4 52.3 MB
  • 8. k-Nearest Neighbours (kNN)/4. Project Cancer Detection Part 1.mp4 51.8 MB
  • 9. Unsupervised Learning Dimensionality Reduction/2. PCA Introduction.mp4 51.4 MB
  • 3. Regression/1. Scikit-Learn.mp4 50.8 MB
  • 3. Regression/18. Cross Validation.mp4 50.4 MB
  • 9. Unsupervised Learning Dimensionality Reduction/3. Project Wine.mp4 50.2 MB
  • 7. Ensemble Machine Learning/9. Ensemble of Ensembles Part 1.mp4 48.7 MB
  • 3. Regression/11. Regularized Regression.mp4 46.5 MB
  • 6. Tree/1. Introduction to Decision Tree.mp4 46.0 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/2. Neural Network Revision.mp4 45.9 MB
  • 4. Classification/2. Introduction to Classification.mp4 44.2 MB
  • 12. Appendix A1 Foundations of Deep Learning/5. Learning Neural Networks.mp4 42.6 MB
  • 6. Tree/4. Tree Regression, Regularization and Over Fitting.mp4 42.0 MB
  • 2. Getting Started with Anaconda/1. Installing Applications and Creating Environment.mp4 40.3 MB
  • 5. Support Vector Machine (SVM)/1. Support Vector Machine (SVM) Concepts.mp4 39.7 MB
  • 7. Ensemble Machine Learning/10. Ensemble of ensembles Part 2.mp4 39.7 MB
  • 12. Appendix A1 Foundations of Deep Learning/12. Categories of Machine Learning.mp4 39.3 MB
  • 7. Ensemble Machine Learning/1. Ensemble Learning Methods Introduction.mp4 39.0 MB
  • 9. Unsupervised Learning Dimensionality Reduction/4. Kernel PCA.mp4 38.4 MB
  • 3. Regression/14. Feature Importance.mp4 38.0 MB
  • 6. Tree/5. End to End Modeling.mp4 37.3 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/17. State of the Art Tools.mp4 37.1 MB
  • 7. Ensemble Machine Learning/7. XGBoost.mp4 36.8 MB
  • 5. Support Vector Machine (SVM)/3. Polynomial Kernel.mp4 36.7 MB
  • 9. Unsupervised Learning Dimensionality Reduction/6. LDA vs PCA.mp4 35.8 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/8. Activation Function.mp4 33.9 MB
  • 9. Unsupervised Learning Dimensionality Reduction/1. Dimensionality Reduction Concept.mp4 32.9 MB
  • 9. Unsupervised Learning Dimensionality Reduction/7. Project Abalone.mp4 32.2 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/5. Understanding CNN.mp4 31.5 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/6. Layer - Input.mp4 30.5 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/14. Data Augmentation.mp4 29.9 MB
  • 12. Appendix A1 Foundations of Deep Learning/14. Machine Learning Workflow.mp4 28.8 MB
  • 4. Classification/7. Precision.mp4 24.7 MB
  • 3. Regression/3. Correlation Analysis and Feature Selection.mp4 23.7 MB
  • 11. Deep Learning/2. Neural Network Architecture.mp4 23.5 MB
  • 7. Ensemble Machine Learning/6. XGBoost Installation.mp4 23.3 MB
  • 7. Ensemble Machine Learning/5. Gradient Boosting Machine.mp4 23.0 MB
  • 9. Unsupervised Learning Dimensionality Reduction/5. Kernel PCA Demo.mp4 22.5 MB
  • 4. Classification/11. Altering the Precision Recall Tradeoff.mp4 21.9 MB
  • 12. Appendix A1 Foundations of Deep Learning/2. Differences between Classical Programming and Machine Learning.mp4 21.9 MB
  • 4. Classification/8. Recall.mp4 20.6 MB
  • 12. Appendix A1 Foundations of Deep Learning/11. Getting Started with Neural Network and Deep Learning Libraries.mp4 19.6 MB
  • 12. Appendix A1 Foundations of Deep Learning/8. Tensors.mp4 17.7 MB
  • 12. Appendix A1 Foundations of Deep Learning/7. Building Block Introduction.mp4 14.8 MB
  • 12. Appendix A1 Foundations of Deep Learning/1. Introduction to Neural Networks.mp4 14.4 MB
  • 4. Classification/9. f1.mp4 12.7 MB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/12. Loading Previously Trained Model.mp4 11.8 MB
  • 12. Appendix A1 Foundations of Deep Learning/6. Why Now.mp4 9.5 MB
  • 3. Regression/3.1 0305.zip.zip 2.2 MB
  • 8. k-Nearest Neighbours (kNN)/4.1 0805.zip.zip 41.7 kB
  • 6. Tree/6. Project HR.vtt 28.8 kB
  • 3. Regression/15. Data Preprocessing.vtt 26.1 kB
  • 11. Deep Learning/1. Estimating Simple Function with Neural Networks.vtt 24.9 kB
  • 11. Deep Learning/3. Motivational Example - Project MNIST.vtt 24.1 kB
  • 4. Classification/1. Logistic Regression.vtt 24.0 kB
  • 12. Appendix A1 Foundations of Deep Learning/4. What is Deep Learning.vtt 23.6 kB
  • 3. Regression/9. Multiple Regression 1.vtt 23.0 kB
  • 3. Regression/2. EDA.vtt 23.0 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/11. Training Your CNN 2.vtt 22.9 kB
  • 8. k-Nearest Neighbours (kNN)/4. Project Cancer Detection Part 1.vtt 22.6 kB
  • 7. Ensemble Machine Learning/2. Bagging.vtt 21.6 kB
  • 4. Classification/10. Precision Recall Tradeoff.vtt 21.3 kB
  • 3. Regression/7. Robust Regression.vtt 20.6 kB
  • 3. Regression/19. CV Illustration.vtt 20.3 kB
  • 3. Regression/12. Polynomial Regression.vtt 20.2 kB
  • 12. Appendix A1 Foundations of Deep Learning/9. Tensor Operations.vtt 19.3 kB
  • 10. Unsupervised Learning Clustering/1. Clustering.vtt 19.2 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/7. Layer - Filter.vtt 18.9 kB
  • 3. Regression/8. Evaluate Regression Model Performance.vtt 18.3 kB
  • 12. Appendix A1 Foundations of Deep Learning/13. Over and Under Fitting.vtt 17.1 kB
  • 4. Classification/3. Understanding MNIST.vtt 16.8 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/4. Visualizing CNN.vtt 15.7 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/10. Training Your CNN 1.vtt 15.6 kB
  • 3. Regression/5. Linear Regression with Scikit-Learn.vtt 15.3 kB
  • 2. Getting Started with Anaconda/3. Iris Project 1 Working with Error Messages.vtt 14.8 kB
  • 3. Regression/4. Correlation Analysis and Feature Selection.vtt 14.3 kB
  • 3. Regression/10. Multiple Regression 2.vtt 14.1 kB
  • 3. Regression/16. Variance-Bias Trade Off.vtt 14.0 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/16. Feature Extraction.vtt 13.2 kB
  • 12. Appendix A1 Foundations of Deep Learning/10. Gradient Based Optimization.vtt 12.9 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/9. Pooling, Flatten, Dense.vtt 12.8 kB
  • 2. Getting Started with Anaconda/2. Hello World.vtt 12.8 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/15. Transfer Learning.vtt 12.4 kB
  • 5. Support Vector Machine (SVM)/2. Linear SVM Classification.vtt 12.4 kB
  • 11. Deep Learning/5. Natural Language Processing - Binary Classification.vtt 12.0 kB
  • 2. Getting Started with Anaconda/6. Iris Project 4 Visualization.vtt 11.8 kB
  • 12. Appendix A1 Foundations of Deep Learning/3. Learning Representations.vtt 11.8 kB
  • 11. Deep Learning/4. Binary Classification Problem.vtt 11.7 kB
  • 6. Tree/7. Project HR with Google Colab.vtt 11.7 kB
  • 12. Appendix A1 Foundations of Deep Learning/5. Learning Neural Networks.vtt 11.7 kB
  • 12. Appendix A1 Foundations of Deep Learning/12. Categories of Machine Learning.vtt 11.5 kB
  • 7. Ensemble Machine Learning/3. Random Forests and Extra-Trees.vtt 11.3 kB
  • 4. Classification/6. Confusion Matrix.vtt 11.3 kB
  • 8. k-Nearest Neighbours (kNN)/1. kNN Introduction.vtt 11.3 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/13. Model Performance Comparison.vtt 10.9 kB
  • 4. Classification/4. SGD.vtt 10.8 kB
  • 3. Regression/13. Dealing with Non-linear Relationships.vtt 10.5 kB
  • 3. Regression/17. Learning Curve.vtt 10.5 kB
  • 2. Getting Started with Anaconda/4. Iris Project 2 Reading CSV Data into Memory.vtt 10.3 kB
  • 10. Unsupervised Learning Clustering/2. k_Means Clustering.vtt 10.2 kB
  • 8. k-Nearest Neighbours (kNN)/2. Project Cancer Detection.vtt 10.2 kB
  • 3. Regression/1. Scikit-Learn.vtt 10.2 kB
  • 2. Getting Started with Anaconda/5. Iris Project 3 Loading data from Seaborn.vtt 10.2 kB
  • 3. Regression/3. Correlation Analysis and Feature Selection.vtt 10.0 kB
  • 3. Regression/18. Cross Validation.vtt 9.9 kB
  • 7. Ensemble Machine Learning/8. Project HR - Human Resources Analytics.vtt 9.7 kB
  • 5. Support Vector Machine (SVM)/5. Support Vector Regression.vtt 9.5 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/2. Neural Network Revision.vtt 9.4 kB
  • 3. Regression/6. Five Steps Machine Learning Process.vtt 9.4 kB
  • 6. Tree/3. Visualizing Boundary.vtt 9.0 kB
  • 5. Support Vector Machine (SVM)/4. Radial Basis Function.vtt 9.0 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/3. Motivational Example.vtt 8.9 kB
  • 9. Unsupervised Learning Dimensionality Reduction/2. PCA Introduction.vtt 8.4 kB
  • 4. Classification/5. Performance Measure and Stratified k-Fold.vtt 8.3 kB
  • 5. Support Vector Machine (SVM)/1. Support Vector Machine (SVM) Concepts.vtt 8.2 kB
  • 6. Tree/1. Introduction to Decision Tree.vtt 8.1 kB
  • 7. Ensemble Machine Learning/4. AdaBoost.vtt 8.1 kB
  • 3. Regression/11. Regularized Regression.vtt 8.0 kB
  • 4. Classification/12. ROC.vtt 7.8 kB
  • 7. Ensemble Machine Learning/9. Ensemble of Ensembles Part 1.vtt 7.5 kB
  • 11. Deep Learning/2. Neural Network Architecture.vtt 7.4 kB
  • 6. Tree/2. Training and Visualizing a Decision Tree.vtt 7.2 kB
  • 9. Unsupervised Learning Dimensionality Reduction/3. Project Wine.vtt 7.2 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/8. Activation Function.vtt 7.0 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/5. Understanding CNN.vtt 6.9 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/6. Layer - Input.vtt 6.4 kB
  • 9. Unsupervised Learning Dimensionality Reduction/4. Kernel PCA.vtt 6.2 kB
  • 2. Getting Started with Anaconda/1. Installing Applications and Creating Environment.vtt 6.1 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/17. State of the Art Tools.vtt 6.1 kB
  • 9. Unsupervised Learning Dimensionality Reduction/6. LDA vs PCA.vtt 6.0 kB
  • 4. Classification/2. Introduction to Classification.vtt 5.9 kB
  • 7. Ensemble Machine Learning/10. Ensemble of ensembles Part 2.vtt 5.8 kB
  • 7. Ensemble Machine Learning/1. Ensemble Learning Methods Introduction.vtt 5.7 kB
  • 5. Support Vector Machine (SVM)/3. Polynomial Kernel.vtt 5.6 kB
  • 3. Regression/14. Feature Importance.vtt 5.5 kB
  • 6. Tree/5. End to End Modeling.vtt 5.5 kB
  • 12. Appendix A1 Foundations of Deep Learning/14. Machine Learning Workflow.vtt 5.4 kB
  • 6. Tree/4. Tree Regression, Regularization and Over Fitting.vtt 5.4 kB
  • 9. Unsupervised Learning Dimensionality Reduction/1. Dimensionality Reduction Concept.vtt 5.4 kB
  • 12. Appendix A1 Foundations of Deep Learning/11. Getting Started with Neural Network and Deep Learning Libraries.vtt 5.2 kB
  • 7. Ensemble Machine Learning/7. XGBoost.vtt 5.2 kB
  • 12. Appendix A1 Foundations of Deep Learning/7. Building Block Introduction.vtt 5.2 kB
  • 12. Appendix A1 Foundations of Deep Learning/2. Differences between Classical Programming and Machine Learning.vtt 5.0 kB
  • 12. Appendix A1 Foundations of Deep Learning/8. Tensors.vtt 4.4 kB
  • 9. Unsupervised Learning Dimensionality Reduction/7. Project Abalone.vtt 4.4 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/1. Outline.vtt 4.2 kB
  • 4. Classification/7. Precision.vtt 4.2 kB
  • 4. Classification/8. Recall.vtt 3.7 kB
  • 9. Unsupervised Learning Dimensionality Reduction/5. Kernel PCA Demo.vtt 3.7 kB
  • 7. Ensemble Machine Learning/5. Gradient Boosting Machine.vtt 3.7 kB
  • 4. Classification/11. Altering the Precision Recall Tradeoff.vtt 3.6 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/14. Data Augmentation.vtt 3.4 kB
  • 12. Appendix A1 Foundations of Deep Learning/6. Why Now.vtt 3.1 kB
  • 1. Introduction/1. What Does the Course Cover.vtt 3.0 kB
  • 7. Ensemble Machine Learning/6. XGBoost Installation.vtt 2.9 kB
  • 12. Appendix A1 Foundations of Deep Learning/1. Introduction to Neural Networks.vtt 2.6 kB
  • 4. Classification/9. f1.vtt 2.3 kB
  • 1. Introduction/2. How to Succeed in This Course.html 2.3 kB
  • 1. Introduction/3. Project Files and Resources.html 1.8 kB
  • 13. Computer Vision and Convolutional Neural Network (CNN)/12. Loading Previously Trained Model.vtt 1.6 kB
  • 8. k-Nearest Neighbours (kNN)/3. Addition Materials.html 335 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!