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

Udemy - Python for Machine Learning & Data Science Masterclass (9.2021)

磁力链接/BT种子名称

Udemy - Python for Machine Learning & Data Science Masterclass (9.2021)

磁力链接/BT种子简介

种子哈希:449aaeed336e6979371ad34ec1ebdf3ba98b8dda
文件大小: 11.49G
已经下载:31次
下载速度:极快
收录时间:2025-09-05
最近下载:2025-09-11

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:449AAEED336E6979371AD34EC1EBDF3BA98B8DDA
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 暗网Xvideo 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

争气 老黑逼 热舞 超级种子 神女宫· 蹂躏 小淫妻 brandy 大地 分子 奶水 内射 电影 公交 初中女孩 mrmm-020 高跟美腿 巨 乳 永久 可莉 露脸 口交 事业女 纤纤 御姐风 网友 情侣美女 喜剧 情趣按摩 暴力色情 旅馆 美鲍

文件列表

  • 23 - Hierarchical Clustering/004 Hierarchical Clustering - Coding Part Two - Scikit-Learn.mp4 219.4 MB
  • 05 - Pandas/028 Pandas Project Exercise Solutions.mp4 180.9 MB
  • 13 - Logistic Regression/016 Logistic Regression Project Exercise - Solutions.mp4 169.1 MB
  • 08 - Data Analysis and Visualization Capstone Project Exercise/004 Capstone Project Solutions - Part Three.mp4 144.1 MB
  • 17 - Random Forests/007 Coding Classification with Random Forest Classifier - Part Two.mp4 136.7 MB
  • 19 - Supervised Learning Capstone Project - Cohort Analysis and Tree Based Methods/003 Solution Walkthrough - Supervised Learning Project - Cohort Analysis.mp4 136.5 MB
  • 05 - Pandas/026 Pandas Pivot Tables.mp4 135.4 MB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/007 DBSCAN - Outlier Project Exercise Solutions.mp4 134.1 MB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/007 PCA - Project Exercise Solution.mp4 125.3 MB
  • 11 - Feature Engineering and Data Preparation/005 Dealing with Missing Data _ Part Two - Filling or Dropping data based on Rows.mp4 123.3 MB
  • 16 - Tree Based Methods_ Decision Tree Learning/008 Coding Decision Trees - Part Two -Creating the Model.mp4 121.4 MB
  • 23 - Hierarchical Clustering/003 Hierarchical Clustering - Coding Part One - Data and Visualization.mp4 120.6 MB
  • 19 - Supervised Learning Capstone Project - Cohort Analysis and Tree Based Methods/004 Solution Walkthrough - Supervised Learning Project - Tree Models.mp4 119.8 MB
  • 07 - Seaborn Data Visualizations/002 Scatterplots with Seaborn.mp4 116.7 MB
  • 08 - Data Analysis and Visualization Capstone Project Exercise/002 Capstone Project Solutions - Part One.mp4 116.0 MB
  • 26 - Model Deployment/003 Model Persistence.mp4 115.1 MB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/002 DBSCAN - Theory and Intuition.mp4 114.4 MB
  • 22 - K-Means Clustering/011 K-Means Clustering Exercise Solution - Part Two.mp4 113.5 MB
  • 08 - Data Analysis and Visualization Capstone Project Exercise/003 Capstone Project Solutions - Part Two.mp4 111.3 MB
  • 19 - Supervised Learning Capstone Project - Cohort Analysis and Tree Based Methods/002 Solution Walkthrough - Supervised Learning Project - Data and EDA.mp4 111.3 MB
  • 06 - Matplotlib/011 Matplotlib Exercise Questions - Solutions.mp4 111.0 MB
  • 07 - Seaborn Data Visualizations/014 Seaborn Plot Exercises Solutions.mp4 110.9 MB
  • 11 - Feature Engineering and Data Preparation/006 Dealing with Missing Data _ Part 3 - Fixing data based on Columns.mp4 110.3 MB
  • 13 - Logistic Regression/014 Multi-Class Classification with Logistic Regression - Part Two - Model.mp4 110.2 MB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/005 DBSCAN - Hyperparameter Tuning Methods.mp4 110.2 MB
  • 14 - KNN - K Nearest Neighbors/006 KNN Classification Project Exercise Solutions.mp4 110.1 MB
  • 11 - Feature Engineering and Data Preparation/003 Dealing with Outliers.mp4 108.3 MB
  • 14 - KNN - K Nearest Neighbors/004 KNN Coding with Python - Part Two - Choosing K.mp4 107.9 MB
  • 05 - Pandas/023 Pandas Input and Output - HTML Tables.mp4 107.3 MB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/010 Text Classification Project Exercise Solutions.mp4 105.5 MB
  • 04 - NumPy/002 NumPy Arrays.mp4 104.3 MB
  • 16 - Tree Based Methods_ Decision Tree Learning/007 Coding Decision Trees - Part One - The Data.mp4 103.5 MB
  • 22 - K-Means Clustering/004 K-Means Clustering - Coding Part One.mp4 102.7 MB
  • 05 - Pandas/004 DataFrames - Part One - Creating a DataFrame.mp4 102.2 MB
  • 06 - Matplotlib/006 Matplotlib - Subplots Functionality.mp4 101.3 MB
  • 05 - Pandas/025 Pandas Input and Output - SQL Databases.mp4 100.6 MB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/004 PCA - Manual Implementation in Python.mp4 99.7 MB
  • 10 - Linear Regression/024 L1 Regularization - Lasso Regression - Background and Implementation.mp4 99.2 MB
  • 15 - Support Vector Machines/010 Support Vector Machine Project Solutions.mp4 97.9 MB
  • 05 - Pandas/015 GroupBy Operations - Part Two - MultiIndex.mp4 97.4 MB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/008 Linear Regression Project - Solutions.mp4 95.7 MB
  • 15 - Support Vector Machines/007 SVM with Scikit-Learn and Python - Classification Part Two.mp4 95.0 MB
  • 10 - Linear Regression/023 L2 Regularization - Ridge Regression - Python Implementation.mp4 93.7 MB
  • 07 - Seaborn Data Visualizations/011 Seaborn Grid Plots.mp4 91.2 MB
  • 05 - Pandas/014 GroupBy Operations - Part One.mp4 91.2 MB
  • 10 - Linear Regression/003 Linear Regression - Understanding Ordinary Least Squares.mp4 90.6 MB
  • 05 - Pandas/010 Pandas - Useful Methods - Apply on Multiple Columns.mp4 89.5 MB
  • 17 - Random Forests/009 Coding Regression with Random Forest Regressor - Part Two - Basic Models.mp4 89.1 MB
  • 07 - Seaborn Data Visualizations/008 Categorical Plots - Distributions within Categories - Coding with Seaborn.mp4 88.7 MB
  • 01 - Introduction to Course/003 Anaconda Python and Jupyter Install and Setup.mp4 88.6 MB
  • 05 - Pandas/006 DataFrames - Part Three - Working with Columns.mp4 88.2 MB
  • 10 - Linear Regression/011 Linear Regression - Model Deployment and Coefficient Interpretation.mp4 85.1 MB
  • 22 - K-Means Clustering/005 K-Means Clustering Coding Part Two.mp4 84.8 MB
  • 22 - K-Means Clustering/007 K-Means Color Quantization - Part One.mp4 84.5 MB
  • 05 - Pandas/021 Pandas - Time Methods for Date and Time Data.mp4 84.1 MB
  • 22 - K-Means Clustering/010 K-Means Clustering Exercise Solution - Part One.mp4 83.8 MB
  • 15 - Support Vector Machines/008 SVM with Scikit-Learn and Python - Regression Tasks.mp4 80.0 MB
  • 05 - Pandas/011 Pandas - Useful Methods - Statistical Information and Sorting.mp4 78.0 MB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/005 PCA - SciKit-Learn.mp4 77.7 MB
  • 05 - Pandas/013 Missing Data - Pandas Operations.mp4 77.2 MB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/006 Grid Search.mp4 76.7 MB
  • 05 - Pandas/007 DataFrames - Part Four - Working with Rows.mp4 76.1 MB
  • 10 - Linear Regression/006 Python coding Simple Linear Regression.mp4 73.5 MB
  • 05 - Pandas/008 Pandas - Conditional Filtering.mp4 72.6 MB
  • 26 - Model Deployment/006 Model API - Creating the Script.mp4 70.5 MB
  • 01 - Introduction to Course/33985574-UNZIP-FOR-NOTEBOOKS-FINAL.zip 70.4 MB
  • 01 - Introduction to Course/33985614-UNZIP-FOR-NOTEBOOKS-FINAL.zip 70.4 MB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/003 DBSCAN versus K-Means Clustering.mp4 69.9 MB
  • 10 - Linear Regression/025 L1 and L2 Regularization - Elastic Net.mp4 69.6 MB
  • 22 - K-Means Clustering/008 K-Means Color Quantization - Part Two.mp4 68.2 MB
  • 18 - Boosting Methods/005 AdaBoost Coding Part Two - The Model.mp4 66.2 MB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/005 Feature Extraction from Text - Coding Count Vectorization Manually.mp4 65.9 MB
  • 22 - K-Means Clustering/012 K-Means Clustering Exercise Solution - Part Three.mp4 65.5 MB
  • 13 - Logistic Regression/007 Logistic Regression with Scikit-Learn - Part One - EDA.mp4 65.5 MB
  • 14 - KNN - K Nearest Neighbors/003 KNN Coding with Python - Part One.mp4 64.5 MB
  • 07 - Seaborn Data Visualizations/012 Seaborn - Matrix Plots.mp4 64.5 MB
  • 10 - Linear Regression/008 Linear Regression - Scikit-Learn Train Test Split.mp4 64.4 MB
  • 10 - Linear Regression/022 L2 Regularization - Ridge Regression Theory.mp4 64.3 MB
  • 22 - K-Means Clustering/006 K-Means Clustering Coding Part Three.mp4 62.7 MB
  • 22 - K-Means Clustering/009 K-Means Clustering Exercise Overview.mp4 62.4 MB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/003 Cross Validation - Test _ Validation _ Train Split.mp4 62.3 MB
  • 07 - Seaborn Data Visualizations/004 Distribution Plots - Part Two - Coding with Seaborn.mp4 62.1 MB
  • 11 - Feature Engineering and Data Preparation/007 Dealing with Categorical Data - Encoding Options.mp4 61.7 MB
  • 18 - Boosting Methods/007 Gradient Boosting Coding Walkthrough.mp4 60.7 MB
  • 02 - OPTIONAL_ Python Crash Course/003 Python Crash Course - Part Two.mp4 60.4 MB
  • 13 - Logistic Regression/012 Logistic Regression with Scikit-Learn - Part Three - Performance Evaluation.mp4 59.8 MB
  • 10 - Linear Regression/016 Polynomial Regression - Choosing Degree of Polynomial.mp4 58.4 MB
  • 13 - Logistic Regression/006 Logistic Regression - Theory and Intuition - Best fit with Maximum Likelihood.mp4 57.6 MB
  • 10 - Linear Regression/002 Linear Regression - Algorithm History.mp4 57.5 MB
  • 05 - Pandas/009 Pandas - Useful Methods - Apply on Single Column.mp4 56.3 MB
  • 10 - Linear Regression/009 Linear Regression - Scikit-Learn Performance Evaluation - Regression.mp4 56.0 MB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/006 PCA - Project Exercise Overview.mp4 55.3 MB
  • 15 - Support Vector Machines/005 SVM - Theory and Intuition - Kernel Trick and Mathematics.mp4 55.2 MB
  • 22 - K-Means Clustering/003 K-Means Clustering Theory.mp4 55.0 MB
  • 16 - Tree Based Methods_ Decision Tree Learning/006 Constructing Decision Trees with Gini Impurity - Part Two.mp4 54.9 MB
  • 17 - Random Forests/006 Coding Classification with Random Forest Classifier - Part One.mp4 54.6 MB
  • 23 - Hierarchical Clustering/002 Hierarchical Clustering - Theory and Intuition.mp4 54.6 MB
  • 07 - Seaborn Data Visualizations/006 Categorical Plots - Statistics within Categories - Coding with Seaborn.mp4 54.2 MB
  • 07 - Seaborn Data Visualizations/010 Seaborn - Comparison Plots - Coding with Seaborn.mp4 53.6 MB
  • 17 - Random Forests/011 Coding Regression with Random Forest Regressor - Part Four - Advanced Models.mp4 53.1 MB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/006 Feature Extraction from Text - Coding with Scikit-Learn.mp4 52.8 MB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/006 DBSCAN - Outlier Project Exercise Overview.mp4 52.7 MB
  • 06 - Matplotlib/010 Matplotlib Exercise Questions Overview.mp4 51.4 MB
  • 02 - OPTIONAL_ Python Crash Course/006 Python Crash Course - Exercise Solutions.mp4 51.1 MB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/003 Naive Bayes Algorithm - Part Two - Model Algorithm.mp4 51.0 MB
  • 07 - Seaborn Data Visualizations/013 Seaborn Plot Exercises Overview.mp4 50.2 MB
  • 15 - Support Vector Machines/003 SVM - Theory and Intuition - Hyperplanes and Margins.mp4 50.1 MB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/002 Cross Validation - Test _ Train Split.mp4 49.1 MB
  • 15 - Support Vector Machines/006 SVM with Scikit-Learn and Python - Classification Part One.mp4 48.5 MB
  • 17 - Random Forests/010 Coding Regression with Random Forest Regressor - Part Three - Polynomials.mp4 47.7 MB
  • 05 - Pandas/020 Pandas - Text Methods for String Data.mp4 47.3 MB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/005 Cross Validation - cross_validate.mp4 47.2 MB
  • 07 - Seaborn Data Visualizations/007 Categorical Plots - Distributions within Categories - Understanding Plot Types.mp4 47.1 MB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/004 Cross Validation - cross_val_score.mp4 46.6 MB
  • 06 - Matplotlib/008 Matplotlib Styling - Colors and Styles.mp4 46.4 MB
  • 10 - Linear Regression/010 Linear Regression - Residual Plots.mp4 46.2 MB
  • 18 - Boosting Methods/004 AdaBoost Coding Part One - The Data.mp4 44.3 MB
  • 18 - Boosting Methods/003 AdaBoost Theory and Intuition.mp4 43.5 MB
  • 05 - Pandas/005 DataFrames - Part Two - Basic Properties.mp4 42.2 MB
  • 05 - Pandas/017 Combining DataFrames - Inner Merge.mp4 42.2 MB
  • 10 - Linear Regression/013 Polynomial Regression - Creating Polynomial Features.mp4 42.0 MB
  • 04 - NumPy/003 NumPy Indexing and Selection.mp4 41.6 MB
  • 05 - Pandas/027 Pandas Project Exercise Overview.mp4 41.3 MB
  • 13 - Logistic Regression/013 Multi-Class Classification with Logistic Regression - Part One - Data and EDA.mp4 39.2 MB
  • 05 - Pandas/022 Pandas Input and Output - CSV Files.mp4 39.0 MB
  • 05 - Pandas/016 Combining DataFrames - Concatenation.mp4 38.6 MB
  • 10 - Linear Regression/014 Polynomial Regression - Training and Evaluation.mp4 38.1 MB
  • 10 - Linear Regression/015 Bias Variance Trade-Off.mp4 37.9 MB
  • 11 - Feature Engineering and Data Preparation/002 Introduction to Feature Engineering and Data Preparation.mp4 37.9 MB
  • 04 - NumPy/004 NumPy Operations.mp4 37.8 MB
  • 13 - Logistic Regression/005 Logistic Regression - Theory and Intuition - Linear to Logistic Math.mp4 37.8 MB
  • 01 - Introduction to Course/005 Environment Setup.mp4 37.4 MB
  • 16 - Tree Based Methods_ Decision Tree Learning/002 Decision Tree - History.mp4 37.3 MB
  • 04 - NumPy/006 Numpy Exercises - Solutions.mp4 36.6 MB
  • 06 - Matplotlib/004 Matplotlib - Implementing Figures and Axes.mp4 36.6 MB
  • 15 - Support Vector Machines/009 Support Vector Machine Project Overview.mp4 36.5 MB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/008 Natural Language Processing - Classification of Text - Part Two.mp4 36.5 MB
  • 09 - Machine Learning Concepts Overview/004 Supervised Machine Learning Process.mp4 35.2 MB
  • 26 - Model Deployment/007 Testing the API.mp4 34.8 MB
  • 13 - Logistic Regression/010 Classification Metrics - Precison, Recall, F1-Score.mp4 34.8 MB
  • 10 - Linear Regression/020 Introduction to Cross Validation.mp4 34.6 MB
  • 17 - Random Forests/005 Random Forests - Bootstrapping and Out-of-Bag Error.mp4 34.3 MB
  • 13 - Logistic Regression/008 Logistic Regression with Scikit-Learn - Part Two - Model Training.mp4 34.2 MB
  • 02 - OPTIONAL_ Python Crash Course/004 Python Crash Course - Part Three.mp4 33.6 MB
  • 10 - Linear Regression/007 Overview of Scikit-Learn and Python.mp4 33.0 MB
  • 08 - Data Analysis and Visualization Capstone Project Exercise/001 Capstone Project Overview.mp4 32.6 MB
  • 06 - Matplotlib/002 Matplotlib Basics.mp4 32.6 MB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/009 Text Classification Project Exercise Overview.mp4 32.0 MB
  • 19 - Supervised Learning Capstone Project - Cohort Analysis and Tree Based Methods/001 Introduction to Supervised Learning Capstone Project.mp4 31.3 MB
  • 02 - OPTIONAL_ Python Crash Course/002 Python Crash Course - Part One.mp4 31.2 MB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/002 PCA Theory and Intuition - Part One.mp4 31.2 MB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/004 Feature Extraction from Text - Part One - Theory and Intuition.mp4 30.8 MB
  • 10 - Linear Regression/005 Linear Regression - Gradient Descent.mp4 30.6 MB
  • 05 - Pandas/002 Series - Part One.mp4 30.0 MB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/007 Natural Language Processing - Classification of Text - Part One.mp4 29.6 MB
  • 17 - Random Forests/004 Random Forests - Number of Estimators and Features in Subsets.mp4 28.6 MB
  • 05 - Pandas/012 Missing Data - Overview.mp4 28.6 MB
  • 05 - Pandas/003 Series - Part Two.mp4 27.4 MB
  • 05 - Pandas/024 Pandas Input and Output - Excel Files.mp4 27.1 MB
  • 06 - Matplotlib/009 Advanced Matplotlib Commands (Optional).mp4 26.4 MB
  • 22 - K-Means Clustering/002 Clustering General Overview.mp4 26.1 MB
  • 10 - Linear Regression/019 Feature Scaling.mp4 25.5 MB
  • 13 - Logistic Regression/015 Logistic Regression Exercise Project Overview.mp4 25.5 MB
  • 17 - Random Forests/002 Random Forests - History and Motivation.mp4 25.2 MB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/007 Linear Regression Project Overview.mp4 24.8 MB
  • 14 - KNN - K Nearest Neighbors/002 KNN Classification - Theory and Intuition.mp4 24.7 MB
  • 10 - Linear Regression/017 Polynomial Regression - Model Deployment.mp4 24.4 MB
  • 18 - Boosting Methods/006 Gradient Boosting Theory.mp4 24.1 MB
  • 10 - Linear Regression/012 Polynomial Regression - Theory and Motivation.mp4 23.3 MB
  • 05 - Pandas/019 Combining DataFrames - Outer Merge.mp4 23.3 MB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/002 Naive Bayes Algorithm - Part One - Bayes Theorem.mp4 23.1 MB
  • 18 - Boosting Methods/002 Boosting Methods - Motivation and History.mp4 23.0 MB
  • 13 - Logistic Regression/009 Classification Metrics - Confusion Matrix and Accuracy.mp4 22.8 MB
  • 14 - KNN - K Nearest Neighbors/005 KNN Classification Project Exercise Overview.mp4 22.2 MB
  • 09 - Machine Learning Concepts Overview/002 Why Machine Learning_.mp4 22.1 MB
  • 10 - Linear Regression/021 Regularization Data Setup.mp4 21.1 MB
  • 16 - Tree Based Methods_ Decision Tree Learning/004 Decision Tree - Understanding Gini Impurity.mp4 20.4 MB
  • 11 - Feature Engineering and Data Preparation/004 Dealing with Missing Data _ Part One - Evaluation of Missing Data.mp4 20.0 MB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/003 PCA Theory and Intuition - Part Two.mp4 20.0 MB
  • 26 - Model Deployment/002 Model Deployment Considerations.mp4 19.2 MB
  • 09 - Machine Learning Concepts Overview/003 Types of Machine Learning Algorithms.mp4 19.0 MB
  • 16 - Tree Based Methods_ Decision Tree Learning/005 Constructing Decision Trees with Gini Impurity - Part One.mp4 18.6 MB
  • 26 - Model Deployment/004 Model Deployment as an API - General Overview.mp4 18.3 MB
  • 13 - Logistic Regression/003 Logistic Regression - Theory and Intuition - Part One_ The Logistic Function.mp4 18.2 MB
  • 10 - Linear Regression/026 Linear Regression Project - Data Overview.mp4 17.8 MB
  • 10 - Linear Regression/004 Linear Regression - Cost Functions.mp4 17.4 MB
  • 05 - Pandas/018 Combining DataFrames - Left and Right Merge.mp4 17.2 MB
  • 06 - Matplotlib/007 Matplotlib Styling - Legends.mp4 17.0 MB
  • 13 - Logistic Regression/011 Classification Metrics - ROC Curves.mp4 16.9 MB
  • 07 - Seaborn Data Visualizations/005 Categorical Plots - Statistics within Categories - Understanding Plot Types.mp4 16.8 MB
  • 15 - Support Vector Machines/002 History of Support Vector Machines.mp4 16.3 MB
  • 10 - Linear Regression/018 Regularization Overview.mp4 16.3 MB
  • 07 - Seaborn Data Visualizations/003 Distribution Plots - Part One - Understanding Plot Types.mp4 15.8 MB
  • 03 - Machine Learning Pathway Overview/001 Machine Learning Pathway.mp4 14.8 MB
  • 13 - Logistic Regression/002 Introduction to Logistic Regression Section.mp4 14.6 MB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/004 DBSCAN - Hyperparameter Theory.mp4 14.5 MB
  • 21 - Unsupervised Learning/001 Unsupervised Learning Overview.mp4 14.4 MB
  • 17 - Random Forests/008 Coding Regression with Random Forest Regressor - Part One - Data.mp4 14.3 MB
  • 09 - Machine Learning Concepts Overview/001 Introduction to Machine Learning Overview Section.mp4 13.8 MB
  • 06 - Matplotlib/005 Matplotlib - Figure Parameters.mp4 13.7 MB
  • 06 - Matplotlib/003 Matplotlib - Understanding the Figure Object.mp4 12.3 MB
  • 07 - Seaborn Data Visualizations/009 Seaborn - Comparison Plots - Understanding the Plot Types.mp4 11.1 MB
  • 15 - Support Vector Machines/004 SVM - Theory and Intuition - Kernel Intuition.mp4 10.3 MB
  • 04 - NumPy/005 NumPy Exercises.mp4 10.1 MB
  • 17 - Random Forests/003 Random Forests - Key Hyperparameters.mp4 8.7 MB
  • 13 - Logistic Regression/004 Logistic Regression - Theory and Intuition - Part Two_ Linear to Logistic.mp4 8.4 MB
  • 16 - Tree Based Methods_ Decision Tree Learning/003 Decision Tree - Terminology.mp4 7.6 MB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/31640132-moviereviews.csv 7.6 MB
  • 01 - Introduction to Course/002 COURSE OVERVIEW LECTURE - PLEASE DO NOT SKIP_.mp4 7.6 MB
  • 19 - Supervised Learning Capstone Project - Cohort Analysis and Tree Based Methods/31389398-17-Supervised-Learning-Capstone-Project.zip 7.4 MB
  • 05 - Pandas/001 Introduction to Pandas.mp4 7.0 MB
  • 06 - Matplotlib/001 Introduction to Matplotlib.mp4 6.9 MB
  • 22 - K-Means Clustering/32407448-20-Kmeans-Clustering.zip 6.1 MB
  • 07 - Seaborn Data Visualizations/001 Introduction to Seaborn.mp4 6.0 MB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/001 Section Overview and Introduction.mp4 5.9 MB
  • 09 - Machine Learning Concepts Overview/005 Companion Book - Introduction to Statistical Learning.mp4 5.4 MB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/001 Introduction to Principal Component Analysis.mp4 5.3 MB
  • 22 - K-Means Clustering/32407452-bank-full.csv 5.2 MB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/001 Introduction to NLP and Naive Bayes Section.mp4 4.4 MB
  • 26 - Model Deployment/001 Model Deployment Section Overview.mp4 4.4 MB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/33912220-23-PCA-Principal-Component-Analysis.zip 4.1 MB
  • 17 - Random Forests/30930956-15-Random-Forests.zip 4.1 MB
  • 14 - KNN - K Nearest Neighbors/001 Introduction to KNN Section.mp4 3.8 MB
  • 22 - K-Means Clustering/001 Introduction to K-Means Clustering Section.mp4 3.7 MB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/33643014-22-DBSCAN.zip 3.7 MB
  • 02 - OPTIONAL_ Python Crash Course/005 Python Crash Course - Exercise Questions.mp4 3.6 MB
  • 04 - NumPy/001 Introduction to NumPy.mp4 3.5 MB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/31640102-airline-tweets.csv 3.4 MB
  • 18 - Boosting Methods/001 Introduction to Boosting Section.mp4 3.1 MB
  • 17 - Random Forests/001 Introduction to Random Forests Section.mp4 3.0 MB
  • 15 - Support Vector Machines/001 Introduction to Support Vector Machines.mp4 2.9 MB
  • 10 - Linear Regression/001 Introduction to Linear Regression Section.mp4 2.7 MB
  • 16 - Tree Based Methods_ Decision Tree Learning/001 Introduction to Tree Based Methods.mp4 2.4 MB
  • 13 - Logistic Regression/29304858-11-Logistic-Regression-Models.zip 2.1 MB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/001 Introduction to DBSCAN Section.mp4 1.9 MB
  • 16 - Tree Based Methods_ Decision Tree Learning/30205020-14-Decision-Trees.zip 1.9 MB
  • 23 - Hierarchical Clustering/001 Introduction to Hierarchical Clustering.mp4 1.8 MB
  • 15 - Support Vector Machines/29902052-13-Support-Vector-Machines.zip 1.6 MB
  • 14 - KNN - K Nearest Neighbors/29434428-12-K-Nearest-Neighbors.zip 1.4 MB
  • 19 - Supervised Learning Capstone Project - Cohort Analysis and Tree Based Methods/31389400-Telco-Customer-Churn.csv 976.5 kB
  • 18 - Boosting Methods/31286608-16-Boosted-Trees.zip 940.0 kB
  • 23 - Hierarchical Clustering/33028500-21-Hierarchical-Clustering.zip 636.5 kB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/33912190-digits.csv 497.2 kB
  • 18 - Boosting Methods/31286610-mushrooms.csv 374.0 kB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/31640094-18-Naive-Bayes-and-NLP.zip 197.1 kB
  • 22 - K-Means Clustering/33555798-palm-trees.jpg 176.9 kB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/33912194-cancer-tumor-data-features.csv 120.8 kB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/33643060-cluster-circles.csv 61.3 kB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/33643082-cluster-moons.csv 60.1 kB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/33643080-cluster-blobs.csv 57.2 kB
  • 17 - Random Forests/30930966-data-banknote-authentication.csv 46.5 kB
  • 23 - Hierarchical Clustering/004 Hierarchical Clustering - Coding Part Two - Scikit-Learn.srt 43.3 kB
  • 11 - Feature Engineering and Data Preparation/003 Dealing with Outliers.srt 42.2 kB
  • 05 - Pandas/028 Pandas Project Exercise Solutions.srt 39.7 kB
  • 19 - Supervised Learning Capstone Project - Cohort Analysis and Tree Based Methods/003 Solution Walkthrough - Supervised Learning Project - Cohort Analysis.srt 39.7 kB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/33643070-cluster-two-blobs-outliers.csv 39.2 kB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/33643072-cluster-two-blobs.csv 39.2 kB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/007 DBSCAN - Outlier Project Exercise Solutions.srt 39.0 kB
  • 11 - Feature Engineering and Data Preparation/006 Dealing with Missing Data _ Part 3 - Fixing data based on Columns.srt 37.6 kB
  • 22 - K-Means Clustering/32407456-CIA-Country-Facts.csv 33.5 kB
  • 16 - Tree Based Methods_ Decision Tree Learning/008 Coding Decision Trees - Part Two -Creating the Model.srt 33.5 kB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/005 DBSCAN - Hyperparameter Tuning Methods.srt 33.4 kB
  • 05 - Pandas/026 Pandas Pivot Tables.srt 33.0 kB
  • 04 - NumPy/002 NumPy Arrays.srt 32.7 kB
  • 05 - Pandas/021 Pandas - Time Methods for Date and Time Data.srt 32.5 kB
  • 11 - Feature Engineering and Data Preparation/005 Dealing with Missing Data _ Part Two - Filling or Dropping data based on Rows.srt 32.2 kB
  • 13 - Logistic Regression/016 Logistic Regression Project Exercise - Solutions_en.vtt 31.6 kB
  • 08 - Data Analysis and Visualization Capstone Project Exercise/004 Capstone Project Solutions - Part Three.srt 31.6 kB
  • 14 - KNN - K Nearest Neighbors/004 KNN Coding with Python - Part Two - Choosing K_en.vtt 31.4 kB
  • 22 - K-Means Clustering/004 K-Means Clustering - Coding Part One.srt 31.1 kB
  • 07 - Seaborn Data Visualizations/002 Scatterplots with Seaborn.srt 30.4 kB
  • 19 - Supervised Learning Capstone Project - Cohort Analysis and Tree Based Methods/002 Solution Walkthrough - Supervised Learning Project - Data and EDA.srt 30.4 kB
  • 05 - Pandas/025 Pandas Input and Output - SQL Databases.srt 30.1 kB
  • 19 - Supervised Learning Capstone Project - Cohort Analysis and Tree Based Methods/004 Solution Walkthrough - Supervised Learning Project - Tree Models_en.vtt 30.1 kB
  • 15 - Support Vector Machines/005 SVM - Theory and Intuition - Kernel Trick and Mathematics.srt 30.0 kB
  • 16 - Tree Based Methods_ Decision Tree Learning/007 Coding Decision Trees - Part One - The Data.srt 30.0 kB
  • 05 - Pandas/004 DataFrames - Part One - Creating a DataFrame.srt 29.7 kB
  • 18 - Boosting Methods/003 AdaBoost Theory and Intuition.srt 29.6 kB
  • 06 - Matplotlib/006 Matplotlib - Subplots Functionality.srt 29.3 kB
  • 07 - Seaborn Data Visualizations/008 Categorical Plots - Distributions within Categories - Coding with Seaborn.srt 28.9 kB
  • 10 - Linear Regression/006 Python coding Simple Linear Regression.srt 28.8 kB
  • 26 - Model Deployment/003 Model Persistence_en.vtt 28.8 kB
  • 17 - Random Forests/007 Coding Classification with Random Forest Classifier - Part Two_en.vtt 28.6 kB
  • 05 - Pandas/013 Missing Data - Pandas Operations.srt 28.1 kB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/005 Feature Extraction from Text - Coding Count Vectorization Manually.srt 27.9 kB
  • 05 - Pandas/008 Pandas - Conditional Filtering.srt 27.8 kB
  • 08 - Data Analysis and Visualization Capstone Project Exercise/002 Capstone Project Solutions - Part One.srt 27.5 kB
  • 18 - Boosting Methods/005 AdaBoost Coding Part Two - The Model.srt 27.2 kB
  • 22 - K-Means Clustering/005 K-Means Clustering Coding Part Two.srt 27.2 kB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/002 DBSCAN - Theory and Intuition.srt 27.1 kB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/003 Naive Bayes Algorithm - Part Two - Model Algorithm.srt 27.0 kB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/004 PCA - Manual Implementation in Python.srt 26.9 kB
  • 15 - Support Vector Machines/008 SVM with Scikit-Learn and Python - Regression Tasks_en.vtt 26.8 kB
  • 26 - Model Deployment/006 Model API - Creating the Script.srt 26.7 kB
  • 05 - Pandas/010 Pandas - Useful Methods - Apply on Multiple Columns.srt 26.6 kB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/007 PCA - Project Exercise Solution.srt 26.3 kB
  • 19 - Supervised Learning Capstone Project - Cohort Analysis and Tree Based Methods/001 Introduction to Supervised Learning Capstone Project.srt 26.3 kB
  • 15 - Support Vector Machines/008 SVM with Scikit-Learn and Python - Regression Tasks.srt 26.3 kB
  • 10 - Linear Regression/011 Linear Regression - Model Deployment and Coefficient Interpretation.srt 26.2 kB
  • 23 - Hierarchical Clustering/003 Hierarchical Clustering - Coding Part One - Data and Visualization.srt 26.0 kB
  • 13 - Logistic Regression/005 Logistic Regression - Theory and Intuition - Linear to Logistic Math.srt 25.4 kB
  • 07 - Seaborn Data Visualizations/004 Distribution Plots - Part Two - Coding with Seaborn.srt 25.4 kB
  • 02 - OPTIONAL_ Python Crash Course/002 Python Crash Course - Part One.srt 25.2 kB
  • 06 - Matplotlib/011 Matplotlib Exercise Questions - Solutions.srt 25.1 kB
  • 11 - Feature Engineering and Data Preparation/002 Introduction to Feature Engineering and Data Preparation.srt 24.7 kB
  • 05 - Pandas/020 Pandas - Text Methods for String Data.srt 24.5 kB
  • 13 - Logistic Regression/014 Multi-Class Classification with Logistic Regression - Part Two - Model.srt 24.4 kB
  • 10 - Linear Regression/008 Linear Regression - Scikit-Learn Train Test Split.srt 24.3 kB
  • 22 - K-Means Clustering/011 K-Means Clustering Exercise Solution - Part Two.srt 24.1 kB
  • 08 - Data Analysis and Visualization Capstone Project Exercise/003 Capstone Project Solutions - Part Two.srt 24.0 kB
  • 13 - Logistic Regression/012 Logistic Regression with Scikit-Learn - Part Three - Performance Evaluation.srt 24.0 kB
  • 05 - Pandas/011 Pandas - Useful Methods - Statistical Information and Sorting.srt 24.0 kB
  • 10 - Linear Regression/009 Linear Regression - Scikit-Learn Performance Evaluation - Regression.srt 23.6 kB
  • 10 - Linear Regression/023 L2 Regularization - Ridge Regression - Python Implementation_en.vtt 23.5 kB
  • 13 - Logistic Regression/006 Logistic Regression - Theory and Intuition - Best fit with Maximum Likelihood.srt 23.5 kB
  • 10 - Linear Regression/025 L1 and L2 Regularization - Elastic Net_en.vtt 23.2 kB
  • 10 - Linear Regression/003 Linear Regression - Understanding Ordinary Least Squares.srt 23.1 kB
  • 15 - Support Vector Machines/010 Support Vector Machine Project Solutions_en.vtt 23.0 kB
  • 07 - Seaborn Data Visualizations/014 Seaborn Plot Exercises Solutions.srt 22.9 kB
  • 05 - Pandas/023 Pandas Input and Output - HTML Tables.srt 22.9 kB
  • 13 - Logistic Regression/007 Logistic Regression with Scikit-Learn - Part One - EDA.srt 22.4 kB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/003 Cross Validation - Test _ Validation _ Train Split.srt 22.2 kB
  • 01 - Introduction to Course/003 Anaconda Python and Jupyter Install and Setup.srt 22.1 kB
  • 05 - Pandas/014 GroupBy Operations - Part One.srt 21.9 kB
  • 22 - K-Means Clustering/006 K-Means Clustering Coding Part Three.srt 21.9 kB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/010 Text Classification Project Exercise Solutions_en.vtt 21.8 kB
  • 22 - K-Means Clustering/008 K-Means Color Quantization - Part Two.srt 21.8 kB
  • 22 - K-Means Clustering/010 K-Means Clustering Exercise Solution - Part One.srt 21.6 kB
  • 07 - Seaborn Data Visualizations/012 Seaborn - Matrix Plots.srt 21.6 kB
  • 05 - Pandas/007 DataFrames - Part Four - Working with Rows.srt 21.6 kB
  • 06 - Matplotlib/008 Matplotlib Styling - Colors and Styles.srt 21.6 kB
  • 15 - Support Vector Machines/007 SVM with Scikit-Learn and Python - Classification Part Two_en.vtt 21.5 kB
  • 06 - Matplotlib/004 Matplotlib - Implementing Figures and Axes.srt 21.5 kB
  • 05 - Pandas/015 GroupBy Operations - Part Two - MultiIndex.srt 21.4 kB
  • 23 - Hierarchical Clustering/33028506-cluster-mpg.csv 21.3 kB
  • 15 - Support Vector Machines/007 SVM with Scikit-Learn and Python - Classification Part Two.srt 21.2 kB
  • 10 - Linear Regression/022 L2 Regularization - Ridge Regression Theory.srt 21.2 kB
  • 05 - Pandas/006 DataFrames - Part Three - Working with Columns.srt 21.1 kB
  • 08 - Data Analysis and Visualization Capstone Project Exercise/001 Capstone Project Overview.srt 21.1 kB
  • 07 - Seaborn Data Visualizations/011 Seaborn Grid Plots.srt 21.0 kB
  • 17 - Random Forests/009 Coding Regression with Random Forest Regressor - Part Two - Basic Models.srt 20.9 kB
  • 22 - K-Means Clustering/007 K-Means Color Quantization - Part One.srt 20.9 kB
  • 05 - Pandas/009 Pandas - Useful Methods - Apply on Single Column.srt 20.7 kB
  • 10 - Linear Regression/010 Linear Regression - Residual Plots.srt 20.7 kB
  • 07 - Seaborn Data Visualizations/007 Categorical Plots - Distributions within Categories - Understanding Plot Types.srt 20.6 kB
  • 11 - Feature Engineering and Data Preparation/007 Dealing with Categorical Data - Encoding Options.srt 20.6 kB
  • 17 - Random Forests/007 Coding Classification with Random Forest Classifier - Part Two.srt 20.5 kB
  • 10 - Linear Regression/016 Polynomial Regression - Choosing Degree of Polynomial.srt 20.4 kB
  • 10 - Linear Regression/020 Introduction to Cross Validation.srt 20.3 kB
  • 09 - Machine Learning Concepts Overview/004 Supervised Machine Learning Process.srt 20.2 kB
  • 06 - Matplotlib/002 Matplotlib Basics.srt 20.1 kB
  • 10 - Linear Regression/024 L1 Regularization - Lasso Regression - Background and Implementation_en.vtt 20.1 kB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/010 Text Classification Project Exercise Solutions.srt 19.9 kB
  • 14 - KNN - K Nearest Neighbors/003 KNN Coding with Python - Part One_en.vtt 19.8 kB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/006 Grid Search.srt 19.7 kB
  • 15 - Support Vector Machines/003 SVM - Theory and Intuition - Hyperplanes and Margins.srt 19.0 kB
  • 14 - KNN - K Nearest Neighbors/006 KNN Classification Project Exercise Solutions_en.vtt 19.0 kB
  • 05 - Pandas/017 Combining DataFrames - Inner Merge.srt 19.0 kB
  • 05 - Pandas/012 Missing Data - Overview.srt 18.8 kB
  • 02 - OPTIONAL_ Python Crash Course/003 Python Crash Course - Part Two.srt 18.5 kB
  • 17 - Random Forests/005 Random Forests - Bootstrapping and Out-of-Bag Error.srt 18.4 kB
  • 18 - Boosting Methods/007 Gradient Boosting Coding Walkthrough_en.vtt 17.9 kB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/002 Cross Validation - Test _ Train Split.srt 17.9 kB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/003 DBSCAN versus K-Means Clustering.srt 17.8 kB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/005 PCA - SciKit-Learn.srt 17.7 kB
  • 23 - Hierarchical Clustering/002 Hierarchical Clustering - Theory and Intuition.srt 17.7 kB
  • 22 - K-Means Clustering/003 K-Means Clustering Theory.srt 17.7 kB
  • 17 - Random Forests/002 Random Forests - History and Motivation.srt 17.6 kB
  • 11 - Feature Engineering and Data Preparation/004 Dealing with Missing Data _ Part One - Evaluation of Missing Data.srt 17.4 kB
  • 10 - Linear Regression/025 L1 and L2 Regularization - Elastic Net.srt 17.4 kB
  • 14 - KNN - K Nearest Neighbors/002 KNN Classification - Theory and Intuition.srt 17.3 kB
  • 10 - Linear Regression/005 Linear Regression - Gradient Descent.srt 17.1 kB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/006 Feature Extraction from Text - Coding with Scikit-Learn.srt 17.1 kB
  • 18 - Boosting Methods/004 AdaBoost Coding Part One - The Data.srt 17.1 kB
  • 05 - Pandas/022 Pandas Input and Output - CSV Files.srt 17.0 kB
  • 02 - OPTIONAL_ Python Crash Course/004 Python Crash Course - Part Three.srt 17.0 kB
  • 22 - K-Means Clustering/002 Clustering General Overview.srt 16.9 kB
  • 16 - Tree Based Methods_ Decision Tree Learning/006 Constructing Decision Trees with Gini Impurity - Part Two.srt 16.8 kB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/007 Natural Language Processing - Classification of Text - Part One.srt 16.8 kB
  • 10 - Linear Regression/013 Polynomial Regression - Creating Polynomial Features.srt 16.8 kB
  • 15 - Support Vector Machines/006 SVM with Scikit-Learn and Python - Classification Part One.srt 16.8 kB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/003 PCA Theory and Intuition - Part Two.srt 16.8 kB
  • 04 - NumPy/003 NumPy Indexing and Selection.srt 16.6 kB
  • 17 - Random Forests/004 Random Forests - Number of Estimators and Features in Subsets.srt 16.6 kB
  • 18 - Boosting Methods/006 Gradient Boosting Theory.srt 16.5 kB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/004 Feature Extraction from Text - Part One - Theory and Intuition.srt 16.4 kB
  • 10 - Linear Regression/015 Bias Variance Trade-Off.srt 16.3 kB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/008 Linear Regression Project - Solutions_en.vtt 16.3 kB
  • 03 - Machine Learning Pathway Overview/001 Machine Learning Pathway.srt 16.2 kB
  • 17 - Random Forests/006 Coding Classification with Random Forest Classifier - Part One_en.vtt 16.2 kB
  • 07 - Seaborn Data Visualizations/010 Seaborn - Comparison Plots - Coding with Seaborn.srt 16.1 kB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/002 PCA Theory and Intuition - Part One.srt 16.0 kB
  • 17 - Random Forests/011 Coding Regression with Random Forest Regressor - Part Four - Advanced Models.srt 15.8 kB
  • 05 - Pandas/003 Series - Part Two.srt 15.7 kB
  • 17 - Random Forests/010 Coding Regression with Random Forest Regressor - Part Three - Polynomials.srt 15.7 kB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/008 Natural Language Processing - Classification of Text - Part Two.srt 15.7 kB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/004 Cross Validation - cross_val_score_en.vtt 15.6 kB
  • 05 - Pandas/016 Combining DataFrames - Concatenation.srt 15.4 kB
  • 07 - Seaborn Data Visualizations/003 Distribution Plots - Part One - Understanding Plot Types.srt 15.4 kB
  • 10 - Linear Regression/019 Feature Scaling.srt 15.2 kB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/33643066-wholesome-customers-data.csv 15.0 kB
  • 09 - Machine Learning Concepts Overview/002 Why Machine Learning_.srt 15.0 kB
  • 07 - Seaborn Data Visualizations/006 Categorical Plots - Statistics within Categories - Coding with Seaborn.srt 15.0 kB
  • 05 - Pandas/019 Combining DataFrames - Outer Merge.srt 14.9 kB
  • 01 - Introduction to Course/005 Environment Setup.srt 14.8 kB
  • 13 - Logistic Regression/016 Logistic Regression Project Exercise - Solutions.srt 14.7 kB
  • 10 - Linear Regression/014 Polynomial Regression - Training and Evaluation.srt 14.5 kB
  • 13 - Logistic Regression/009 Classification Metrics - Confusion Matrix and Accuracy.srt 14.3 kB
  • 02 - OPTIONAL_ Python Crash Course/006 Python Crash Course - Exercise Solutions.srt 13.8 kB
  • 22 - K-Means Clustering/009 K-Means Clustering Exercise Overview.srt 13.8 kB
  • 05 - Pandas/002 Series - Part One.srt 13.7 kB
  • 05 - Pandas/005 DataFrames - Part Two - Basic Properties.srt 13.6 kB
  • 16 - Tree Based Methods_ Decision Tree Learning/002 Decision Tree - History.srt 13.5 kB
  • 10 - Linear Regression/002 Linear Regression - Algorithm History.srt 13.4 kB
  • 21 - Unsupervised Learning/001 Unsupervised Learning Overview.srt 13.2 kB
  • 15 - Support Vector Machines/010 Support Vector Machine Project Solutions.srt 13.1 kB
  • 10 - Linear Regression/021 Regularization Data Setup.srt 12.7 kB
  • 26 - Model Deployment/007 Testing the API.srt 12.5 kB
  • 22 - K-Means Clustering/012 K-Means Clustering Exercise Solution - Part Three.srt 12.4 kB
  • 04 - NumPy/004 NumPy Operations.srt 12.3 kB
  • 13 - Logistic Regression/013 Multi-Class Classification with Logistic Regression - Part One - Data and EDA.srt 12.3 kB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/006 PCA - Project Exercise Overview.srt 12.2 kB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/002 Naive Bayes Algorithm - Part One - Bayes Theorem.srt 12.1 kB
  • 09 - Machine Learning Concepts Overview/003 Types of Machine Learning Algorithms.srt 11.9 kB
  • 26 - Model Deployment/004 Model Deployment as an API - General Overview.srt 11.9 kB
  • 06 - Matplotlib/003 Matplotlib - Understanding the Figure Object.srt 11.8 kB
  • 16 - Tree Based Methods_ Decision Tree Learning/005 Constructing Decision Trees with Gini Impurity - Part One.srt 11.8 kB
  • 10 - Linear Regression/004 Linear Regression - Cost Functions.srt 11.7 kB
  • 07 - Seaborn Data Visualizations/013 Seaborn Plot Exercises Overview.srt 11.5 kB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/005 Cross Validation - cross_validate.srt 11.5 kB
  • 10 - Linear Regression/012 Polynomial Regression - Theory and Motivation.srt 11.5 kB
  • 16 - Tree Based Methods_ Decision Tree Learning/004 Decision Tree - Understanding Gini Impurity.srt 11.4 kB
  • 13 - Logistic Regression/011 Classification Metrics - ROC Curves.srt 11.3 kB
  • 14 - KNN - K Nearest Neighbors/003 KNN Coding with Python - Part One.srt 11.3 kB
  • 10 - Linear Regression/007 Overview of Scikit-Learn and Python_en.vtt 11.2 kB
  • 10 - Linear Regression/023 L2 Regularization - Ridge Regression - Python Implementation.srt 11.2 kB
  • 05 - Pandas/024 Pandas Input and Output - Excel Files.srt 11.1 kB
  • 04 - NumPy/006 Numpy Exercises - Solutions.srt 11.1 kB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/004 DBSCAN - Hyperparameter Theory.srt 11.0 kB
  • 26 - Model Deployment/002 Model Deployment Considerations.srt 10.8 kB
  • 06 - Matplotlib/007 Matplotlib Styling - Legends.srt 10.6 kB
  • 10 - Linear Regression/018 Regularization Overview.srt 10.6 kB
  • 10 - Linear Regression/007 Overview of Scikit-Learn and Python.srt 10.4 kB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/006 DBSCAN - Outlier Project Exercise Overview.srt 10.2 kB
  • 17 - Random Forests/006 Coding Classification with Random Forest Classifier - Part One.srt 10.2 kB
  • 05 - Pandas/027 Pandas Project Exercise Overview.srt 9.8 kB
  • 13 - Logistic Regression/008 Logistic Regression with Scikit-Learn - Part Two - Model Training.srt 9.8 kB
  • 06 - Matplotlib/010 Matplotlib Exercise Questions Overview.srt 9.6 kB
  • 05 - Pandas/018 Combining DataFrames - Left and Right Merge.srt 9.3 kB
  • 18 - Boosting Methods/002 Boosting Methods - Motivation and History.srt 9.2 kB
  • 18 - Boosting Methods/007 Gradient Boosting Coding Walkthrough.srt 9.1 kB
  • 07 - Seaborn Data Visualizations/005 Categorical Plots - Statistics within Categories - Understanding Plot Types.srt 9.0 kB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/008 Linear Regression Project - Solutions.srt 9.0 kB
  • 07 - Seaborn Data Visualizations/009 Seaborn - Comparison Plots - Understanding the Plot Types.srt 8.9 kB
  • 14 - KNN - K Nearest Neighbors/006 KNN Classification Project Exercise Solutions.srt 8.8 kB
  • 09 - Machine Learning Concepts Overview/001 Introduction to Machine Learning Overview Section.srt 8.8 kB
  • 13 - Logistic Regression/002 Introduction to Logistic Regression Section.srt 8.6 kB
  • 10 - Linear Regression/017 Polynomial Regression - Model Deployment.srt 8.6 kB
  • 13 - Logistic Regression/010 Classification Metrics - Precison, Recall, F1-Score.srt 8.5 kB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/004 Cross Validation - cross_val_score.srt 8.3 kB
  • 13 - Logistic Regression/003 Logistic Regression - Theory and Intuition - Part One_ The Logistic Function.srt 8.3 kB
  • 22 - K-Means Clustering/32407460-country-iso-codes.csv 8.1 kB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/009 Text Classification Project Exercise Overview.srt 8.0 kB
  • 10 - Linear Regression/026 Linear Regression Project - Data Overview.srt 7.9 kB
  • 06 - Matplotlib/005 Matplotlib - Figure Parameters.srt 7.8 kB
  • 13 - Logistic Regression/004 Logistic Regression - Theory and Intuition - Part Two_ Linear to Logistic.srt 7.4 kB
  • 05 - Pandas/001 Introduction to Pandas.srt 7.4 kB
  • 01 - Introduction to Course/002 COURSE OVERVIEW LECTURE - PLEASE DO NOT SKIP_.srt 7.3 kB
  • 15 - Support Vector Machines/004 SVM - Theory and Intuition - Kernel Intuition.srt 7.3 kB
  • 15 - Support Vector Machines/009 Support Vector Machine Project Overview.srt 7.0 kB
  • 17 - Random Forests/008 Coding Regression with Random Forest Regressor - Part One - Data.srt 7.0 kB
  • 06 - Matplotlib/001 Introduction to Matplotlib.srt 6.9 kB
  • 15 - Support Vector Machines/002 History of Support Vector Machines.srt 6.7 kB
  • 07 - Seaborn Data Visualizations/001 Introduction to Seaborn.srt 6.7 kB
  • 06 - Matplotlib/009 Advanced Matplotlib Commands (Optional).srt 6.7 kB
  • 13 - Logistic Regression/015 Logistic Regression Exercise Project Overview.srt 6.6 kB
  • 16 - Tree Based Methods_ Decision Tree Learning/003 Decision Tree - Terminology.srt 6.6 kB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/007 Linear Regression Project Overview.srt 6.0 kB
  • 10 - Linear Regression/024 L1 Regularization - Lasso Regression - Background and Implementation.srt 5.5 kB
  • 14 - KNN - K Nearest Neighbors/005 KNN Classification Project Exercise Overview.srt 5.4 kB
  • 12 - Cross Validation , Grid Search, and the Linear Regression Project/001 Section Overview and Introduction.srt 5.2 kB
  • 09 - Machine Learning Concepts Overview/005 Companion Book - Introduction to Statistical Learning.srt 4.8 kB
  • 17 - Random Forests/003 Random Forests - Key Hyperparameters.srt 4.6 kB
  • 19 - Supervised Learning Capstone Project - Cohort Analysis and Tree Based Methods/004 Solution Walkthrough - Supervised Learning Project - Tree Models.srt 4.3 kB
  • 25 - PCA - Principal Component Analysis and Manifold Learning/001 Introduction to Principal Component Analysis.srt 4.1 kB
  • 14 - KNN - K Nearest Neighbors/004 KNN Coding with Python - Part Two - Choosing K.srt 4.0 kB
  • 20 - Naive Bayes Classification and Natural Language Processing (Supervised Learning)/001 Introduction to NLP and Naive Bayes Section.srt 3.8 kB
  • 14 - KNN - K Nearest Neighbors/001 Introduction to KNN Section.srt 3.7 kB
  • 22 - K-Means Clustering/001 Introduction to K-Means Clustering Section.srt 3.6 kB
  • 26 - Model Deployment/001 Model Deployment Section Overview.srt 3.6 kB
  • 26 - Model Deployment/003 Model Persistence.srt 3.1 kB
  • 04 - NumPy/001 Introduction to NumPy.srt 3.1 kB
  • 17 - Random Forests/001 Introduction to Random Forests Section.srt 2.9 kB
  • 10 - Linear Regression/001 Introduction to Linear Regression Section.srt 2.7 kB
  • 18 - Boosting Methods/001 Introduction to Boosting Section.srt 2.7 kB
  • 02 - OPTIONAL_ Python Crash Course/005 Python Crash Course - Exercise Questions.srt 2.6 kB
  • 15 - Support Vector Machines/001 Introduction to Support Vector Machines.srt 2.4 kB
  • 16 - Tree Based Methods_ Decision Tree Learning/001 Introduction to Tree Based Methods.srt 2.3 kB
  • 04 - NumPy/005 NumPy Exercises.srt 2.1 kB
  • 01 - Introduction to Course/001 Welcome to the Course_.html 1.7 kB
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/001 Introduction to DBSCAN Section.srt 1.4 kB
  • 23 - Hierarchical Clustering/001 Introduction to Hierarchical Clustering.srt 1.2 kB
  • 11 - Feature Engineering and Data Preparation/001 A note from Jose on Feature Engineering and Data Preparation.html 990 Bytes
  • 01 - Introduction to Course/004 Note on Environment Setup - Please read me_.html 857 Bytes
  • 13 - Logistic Regression/001 Early Bird Note on Downloading .zip for Logistic Regression Notes.html 523 Bytes
  • 02 - OPTIONAL_ Python Crash Course/001 OPTIONAL_ Python Crash Course.html 472 Bytes
  • 26 - Model Deployment/005 Note on Upcoming Video.html 249 Bytes
  • 01 - Introduction to Course/28813464-requirements.txt 221 Bytes
  • 01 - Introduction to Course/external-assets-links.txt 132 Bytes
  • 24 - DBSCAN - Density-based spatial clustering of applications with noise/external-assets-links.txt 103 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!