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

[FreeCourseSite.com] Udemy - Machine Learning in Python with 5 Machine Learning Projects

磁力链接/BT种子名称

[FreeCourseSite.com] Udemy - Machine Learning in Python with 5 Machine Learning Projects

磁力链接/BT种子简介

种子哈希:84e60eca2cc9dcf7be5a2184d78a4b3d7d478c67
文件大小: 20.82G
已经下载:645次
下载速度:极快
收录时间:2022-01-20
最近下载:2025-09-23

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:84E60ECA2CC9DCF7BE5A2184D78A4B3D7D478C67
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

ncyf-020 蔡令 换装合集 対魔忍アサギ 180cm 人到中年 黄色战袍 群套图 alura 蔡 海天盛宴 ruisaotome 电影 mkd s87 超能陆战队 脊椎蛙 blaine jul-295 二选一 年轻就是粉 mylfboss 真飛鳥 turupeta 潮吹 肛 hou 美容院 乳房 女朋友闺蜜 台湾迷奸 濑百

文件列表

  • 12. Tree Based Models/2. Attribute selection method- Gini Index and Entropy.mp4 229.3 MB
  • 11. Introduction to KNN, SVM, Naive Bayes/6. Introduction to Naive Bayes.mp4 183.2 MB
  • 13. Boosting Models/2. Intuition for Adaboost and Gradient Boosting.mp4 160.7 MB
  • 10. Logistic Regression/8. Using ROC-AUC score to analyze the performance of model.mp4 154.8 MB
  • 10. Logistic Regression/6. How to analyze performance of a classification model.mp4 153.3 MB
  • 13. Boosting Models/7. Introudction to Ensembling techniques.mp4 140.5 MB
  • 20. Predicting Health Expense of Customers/8. Applying Linear Regression Model.mp4 134.3 MB
  • 2. Python for Data Analysis/17. Time Complexity.mp4 126.0 MB
  • 2. Python for Data Analysis/21. Insertion and Selection Sort.mp4 125.8 MB
  • 1. Python Fundamentals/4. Built in Data Types and Type Casting.mp4 125.7 MB
  • 18. Time Series Forecasting/8. Handling Missing Values.mp4 122.1 MB
  • 2. Python for Data Analysis/22. Merge Sort.mp4 121.0 MB
  • 17. Recommendation Engines/19. Introduction to SVD.mp4 117.5 MB
  • 2. Python for Data Analysis/19. Binary Search.mp4 114.9 MB
  • 9. Linear Regression/6. Analyzing the performance of Regression models.mp4 114.3 MB
  • 11. Introduction to KNN, SVM, Naive Bayes/1. Introduction to Support Vector machines.mp4 113.4 MB
  • 9. Linear Regression/9. Applying real time prediction on our model.mp4 112.8 MB
  • 9. Linear Regression/7. R2 score and adjuted R2 score intuition.mp4 112.2 MB
  • 10. Logistic Regression/1. Introduction to Logistic Regression.mp4 111.6 MB
  • 5. Data Cleaning/24. Data Cleaning on Naukri Dataset.mp4 111.4 MB
  • 9. Linear Regression/5. Applying Cross Validation.mp4 110.8 MB
  • 11. Introduction to KNN, SVM, Naive Bayes/4. Introduction to K nearest neighbors.mp4 109.4 MB
  • 20. Predicting Health Expense of Customers/2. Understanding the Dataset.mp4 109.1 MB
  • 1. Python Fundamentals/3. Naming Convention for Variables.mp4 107.2 MB
  • 16. Dimensionality Reduction/3. Solving a Real World Problem.mp4 103.6 MB
  • 15. Introduction to Clustering Analysis/9. Using Silhouette Score to analyze the clusters.mp4 101.0 MB
  • 19. Employee Promotion Prediction/2. Understanding the Dataset.mp4 100.5 MB
  • 2. Python for Data Analysis/18. Linear Search.mp4 100.2 MB
  • 20. Predicting Health Expense of Customers/7. Preparing the data for Modelling.mp4 95.3 MB
  • 13. Boosting Models/3. Implementing AdaBoost using sklearn.mp4 95.2 MB
  • 18. Time Series Forecasting/10. Time Series Decomposition.mp4 94.3 MB
  • 20. Predicting Health Expense of Customers/4. Performing Univariate Analysis.mp4 94.1 MB
  • 15. Introduction to Clustering Analysis/12. Introduction to Hierarchal Clustering.mp4 92.8 MB
  • 10. Logistic Regression/2. Implementing Logistic Regression using Sklearn.mp4 91.2 MB
  • 20. Predicting Health Expense of Customers/6. Performing Multivariate Analysis.mp4 90.1 MB
  • 9. Linear Regression/3. Feature Selection using RFECV.mp4 90.1 MB
  • 18. Time Series Forecasting/3. Regression Vs Time Series.mp4 87.0 MB
  • 5. Data Cleaning/6. Imputing Missing Values in a real-time scenario.mp4 86.6 MB
  • 12. Tree Based Models/1. Intuition for decision trees.mp4 86.0 MB
  • 16. Dimensionality Reduction/18. Introduction to t-SNE.mp4 85.2 MB
  • 9. Linear Regression/1. Introduction to Linear Regression.mp4 85.2 MB
  • 17. Recommendation Engines/12. Introduction to Collaborative Filtering.mp4 84.8 MB
  • 3. Python Functions Deep Dive/9. Filter, Map, and Zip Functions.mp4 83.7 MB
  • 5. Data Cleaning/3. When should we delete the Missing values.mp4 83.5 MB
  • 16. Dimensionality Reduction/1. Why High Dimensional Datasets are a Problem.mp4 83.1 MB
  • 18. Time Series Forecasting/14. Metrics for Time series Forecasting.mp4 82.5 MB
  • 1. Python Fundamentals/8. Arithmetic and Assignment Operators.mp4 81.8 MB
  • 19. Employee Promotion Prediction/15. Performance Analysis.mp4 80.9 MB
  • 1. Python Fundamentals/5. Scope of Variables.mp4 80.9 MB
  • 18. Time Series Forecasting/25. Auto Correlation and Partial Correlation.mp4 80.6 MB
  • 17. Recommendation Engines/6. Preprocessing the Data for Content Based Filtering.mp4 80.4 MB
  • 4. Python for Data Science/21. Merging and Concatenating DataFrames.mp4 80.3 MB
  • 2. Python for Data Analysis/20. Bubble Sort.mp4 79.2 MB
  • 2. Python for Data Analysis/8. Introduction to Sets.mp4 79.2 MB
  • 18. Time Series Forecasting/21. Checking for Stationarity using Statistical Methods Part 2.mp4 79.1 MB
  • 21. Determining Whether a Person should be Granted Loan/4. Performing Descriptive Statistics.mp4 79.0 MB
  • 10. Logistic Regression/9. Real time prediction using logistic regression.mp4 78.3 MB
  • 4. Python for Data Science/7. Meta Characters for Regular Expressions.mp4 77.6 MB
  • 5. Data Cleaning/4. Imputing the Missing Values using the Business Logic.mp4 77.5 MB
  • 16. Dimensionality Reduction/16. Introduction to Principal Component Analysis.mp4 77.4 MB
  • 22. Optimizing Agricultural Production/4. Performing Descriptive Statistics.mp4 77.1 MB
  • 9. Linear Regression/2. Implementing Linear Regression using Sklearn.mp4 77.0 MB
  • 2. Python for Data Analysis/24. Quiz Solution.mp4 76.8 MB
  • 18. Time Series Forecasting/17. Holt and Holt Winter Exponential Smoothing.mp4 76.7 MB
  • 7. Feature Engineering/9. Finding the Length, Polarity and Subjectivity.mp4 76.6 MB
  • 17. Recommendation Engines/13. Preprocessing the Data for Collaborative Filtering.mp4 75.9 MB
  • 15. Introduction to Clustering Analysis/8. Implementing K Means on the Mall Dataset.mp4 75.0 MB
  • 20. Predicting Health Expense of Customers/5. Performing Bivariate Analysis.mp4 74.9 MB
  • 16. Dimensionality Reduction/5. Introduction to Correlation using Heatmap.mp4 74.9 MB
  • 14. Imbalanced Machine Learning/5. Applying Logistic Regression using Sklearn.mp4 74.6 MB
  • 18. Time Series Forecasting/7. Getting Time Series data.mp4 74.5 MB
  • 15. Introduction to Clustering Analysis/7. Solving a Real World Problem.mp4 74.5 MB
  • 6. Data Visualizations/3. Multivariate Analysis.mp4 74.3 MB
  • 14. Imbalanced Machine Learning/2. Using Resampling Techniques to Balance the Data.mp4 74.0 MB
  • 20. Predicting Health Expense of Customers/10. Applying Gradient Boosting Model.mp4 73.8 MB
  • 11. Introduction to KNN, SVM, Naive Bayes/2. The kermel trick for support vector machine.mp4 73.8 MB
  • 21. Determining Whether a Person should be Granted Loan/7. Bivariate Data Analysis.mp4 73.6 MB
  • 18. Time Series Forecasting/36. Understanding SARIMA Model.mp4 73.3 MB
  • 11. Introduction to KNN, SVM, Naive Bayes/8. When should we apply SVM, KNN and Naive bayes.mp4 73.2 MB
  • 5. Data Cleaning/9. How Outliers can be harmful for Machine Learning Models.mp4 72.4 MB
  • 4. Python for Data Science/20. Indexing, Selecting, and Filtering Data using Pandas.mp4 72.3 MB
  • 21. Determining Whether a Person should be Granted Loan/2. Setting up the Environment.mp4 71.9 MB
  • 12. Tree Based Models/6. Introduction to Random forest.mp4 71.4 MB
  • 19. Employee Promotion Prediction/12. Data Processing.mp4 70.9 MB
  • 11. Introduction to KNN, SVM, Naive Bayes/3. Implementing support vector machine using sklearn.mp4 70.7 MB
  • 15. Introduction to Clustering Analysis/5. Using the Elbow Method for Choosing the Best Value for K.mp4 70.3 MB
  • 21. Determining Whether a Person should be Granted Loan/5. Data Cleaning.mp4 70.2 MB
  • 13. Boosting Models/4. Implementing Gradient Boosting using sklearn.mp4 70.2 MB
  • 2. Python for Data Analysis/6. Introduction to Dictionaries.mp4 70.1 MB
  • 18. Time Series Forecasting/16. Simple Exponential Smoothing.mp4 69.9 MB
  • 18. Time Series Forecasting/39. Understanding ARIMAX Model.mp4 69.7 MB
  • 12. Tree Based Models/5. Understanding the concept of Bagging.mp4 69.2 MB
  • 1. Python Fundamentals/18. If, elif, and else.mp4 69.1 MB
  • 4. Python for Data Science/18. Reading Datasets using Pandas.mp4 68.9 MB
  • 1. Python Fundamentals/1. Why should you learn Python.mp4 68.9 MB
  • 15. Introduction to Clustering Analysis/2. Types of Clustering.mp4 68.4 MB
  • 21. Determining Whether a Person should be Granted Loan/6. Univariate Data Visualizations.mp4 68.3 MB
  • 13. Boosting Models/6. Implementing XGBoost using sklearn.mp4 68.3 MB
  • 18. Time Series Forecasting/20. Checking for Stationarity Part 1.mp4 68.2 MB
  • 18. Time Series Forecasting/28. The Simple Auto Regressive Model Implementation.mp4 68.1 MB
  • 7. Feature Engineering/26. Quiz Solution.mp4 68.0 MB
  • 16. Dimensionality Reduction/22. Difference between PCA, t-SNE, and LDA.mp4 67.9 MB
  • 18. Time Series Forecasting/9. Handling Outlier Values.mp4 67.6 MB
  • 5. Data Cleaning/1. Causes and Impact of Missing Values.mp4 67.5 MB
  • 14. Imbalanced Machine Learning/11. Implementing Neighbors based Sampling using Imblearn.mp4 67.1 MB
  • 22. Optimizing Agricultural Production/6. Clustering Similar Crops.mp4 66.7 MB
  • 17. Recommendation Engines/15. Interpreting the Results obtained from User Based Filtering.mp4 66.7 MB
  • 17. Recommendation Engines/16. Implementation of Item Based Collaborative Filtering.mp4 66.6 MB
  • 18. Time Series Forecasting/11. Splitting Time Series Data.mp4 66.6 MB
  • 18. Time Series Forecasting/27. The Simple Auto Regressive Model.mp4 66.5 MB
  • 17. Recommendation Engines/8. Introduction to Transactional Encoder.mp4 66.5 MB
  • 5. Data Cleaning/10. Finding out Outliers from the Data.mp4 66.3 MB
  • 3. Python Functions Deep Dive/18. Solving the Fibonacci Problem using Recursion.mp4 65.7 MB
  • 1. Python Fundamentals/9. Comparison, Logical, and Bitwise Operators.mp4 65.4 MB
  • 3. Python Functions Deep Dive/23. Encapsulation.mp4 65.2 MB
  • 17. Recommendation Engines/14. Implementation of User Based Collaborative Filtering.mp4 65.2 MB
  • 17. Recommendation Engines/22. Comparing Content, and Collaborative Based Filtering.mp4 65.0 MB
  • 11. Introduction to KNN, SVM, Naive Bayes/7. Implementing Naive Bayes using sklearn.mp4 65.0 MB
  • 5. Data Cleaning/2. Types of Missing Values.mp4 64.8 MB
  • 20. Predicting Health Expense of Customers/3. Understanding the Problem Statement.mp4 64.8 MB
  • 19. Employee Promotion Prediction/4. Performing Descriptive Statistics.mp4 64.7 MB
  • 8. Data Processing/1. Types of Encoding Techniques.mp4 63.9 MB
  • 5. Data Cleaning/12. Deleting and Capping the Outliers.mp4 63.7 MB
  • 2. Python for Data Analysis/7. Nested Dictionaries.mp4 63.5 MB
  • 7. Feature Engineering/1. Introduction to Feature Engineering.mp4 63.0 MB
  • 18. Time Series Forecasting/42. Implementing SARIMAX Model.mp4 62.9 MB
  • 10. Logistic Regression/10. Industry Relevance of Logistic Regression.mp4 62.8 MB
  • 19. Employee Promotion Prediction/3. Understanding the Problem Statement.mp4 62.7 MB
  • 7. Feature Engineering/5. Binning Numerical Features.mp4 62.2 MB
  • 17. Recommendation Engines/5. Introduction to Content Based Filtering.mp4 61.9 MB
  • 10. Logistic Regression/4. Hyperparameter tuning using Grid search.mp4 61.6 MB
  • 17. Recommendation Engines/7. Filtering Movies Based on Genres.mp4 61.6 MB
  • 7. Feature Engineering/23. Feature Engineering on Marketing Data.mp4 61.4 MB
  • 2. Python for Data Analysis/9. Set Operations.mp4 61.4 MB
  • 17. Recommendation Engines/26. Case Study for Youtube.mp4 61.0 MB
  • 14. Imbalanced Machine Learning/4. Preparing the Data for Predictive Modelling.mp4 60.7 MB
  • 15. Introduction to Clustering Analysis/1. Introduction to Clustering.mp4 60.6 MB
  • 20. Predicting Health Expense of Customers/14. Major Takeaways from the Project.mp4 60.4 MB
  • 4. Python for Data Science/17. Quiz Solution.mp4 60.4 MB
  • 14. Imbalanced Machine Learning/9. Implementing Random Under Sampling using Imblearn.mp4 60.3 MB
  • 9. Linear Regression/4. Data Transformation with Linear Regression.mp4 60.3 MB
  • 14. Imbalanced Machine Learning/10. Implementing Synthetic Sampling using Imblearn.mp4 60.2 MB
  • 16. Dimensionality Reduction/2. Methods to solve the problem of High Dimensionality.mp4 59.9 MB
  • 13. Boosting Models/1. Understading the concept of boosting.mp4 59.9 MB
  • 7. Feature Engineering/20. Feature Engineering on Employee Data.mp4 59.9 MB
  • 20. Predicting Health Expense of Customers/11. Creating Ensembles of Models.mp4 59.8 MB
  • 6. Data Visualizations/1. Univariate Analysis.mp4 59.8 MB
  • 14. Imbalanced Machine Learning/3. Solving a Real World Problem.mp4 59.7 MB
  • 21. Determining Whether a Person should be Granted Loan/9. Applying Resampling.mp4 59.7 MB
  • 7. Feature Engineering/6. Aggregating Features.mp4 59.6 MB
  • 7. Feature Engineering/2. Removing Unnecessary Columns.mp4 59.6 MB
  • 18. Time Series Forecasting/32. Understanding ARMA Model.mp4 59.5 MB
  • 10. Logistic Regression/5. Applying Cross Validation.mp4 59.5 MB
  • 16. Dimensionality Reduction/11. Introduction to Recursive Feature Selection.mp4 59.4 MB
  • 17. Recommendation Engines/3. Types of Recommender Systems.mp4 59.3 MB
  • 17. Recommendation Engines/25. Case Study for Netflix.mp4 59.1 MB
  • 17. Recommendation Engines/9. Recommending Similar Movies to Watch.mp4 59.0 MB
  • 4. Python for Data Science/10. Sets for Regular Expressions.mp4 58.9 MB
  • 5. Data Cleaning/15. Quiz Solution.mp4 58.8 MB
  • 5. Data Cleaning/5. Imputing Missing Values using MeanMedianMode.mp4 58.7 MB
  • 15. Introduction to Clustering Analysis/3. Applications of Clustering.mp4 58.7 MB
  • 18. Time Series Forecasting/34. Understanding ARIMA Model.mp4 58.6 MB
  • 14. Imbalanced Machine Learning/12. Combination of Oversampling and Under sampling.mp4 58.5 MB
  • 17. Recommendation Engines/18. Quiz Solution.mp4 58.3 MB
  • 10. Logistic Regression/7. Using accuracy score to analyze the performance of model.mp4 58.2 MB
  • 16. Dimensionality Reduction/17. Implementing PCA.mp4 58.2 MB
  • 18. Time Series Forecasting/13. Basic Forecasting Techniques.mp4 58.2 MB
  • 3. Python Functions Deep Dive/17. Solving the Factorial Problem using Recursion.mp4 58.1 MB
  • 22. Optimizing Agricultural Production/2. Understanding the Dataset.mp4 57.9 MB
  • 14. Imbalanced Machine Learning/13. Implementing Ensemble Models for Imbalanced Data.mp4 57.5 MB
  • 4. Python for Data Science/24. Quiz Solution.mp4 57.4 MB
  • 3. Python Functions Deep Dive/10. List, set, and Dictionary Comprehensions.mp4 57.2 MB
  • 14. Imbalanced Machine Learning/8. Implementing Random Over Sampling using Imblearn.mp4 57.1 MB
  • 20. Predicting Health Expense of Customers/9. Applying Random Forest Model.mp4 57.0 MB
  • 3. Python Functions Deep Dive/2. Default Parameters in Functions.mp4 56.6 MB
  • 6. Data Visualizations/29. Quiz Solution.mp4 56.4 MB
  • 12. Tree Based Models/7. Understanding the parameters of Random forest.mp4 56.3 MB
  • 14. Imbalanced Machine Learning/1. Why Imbalanced Data needs extra attention.mp4 56.2 MB
  • 12. Tree Based Models/3. Advantages and Issues with Decision trees.mp4 56.0 MB
  • 17. Recommendation Engines/4. Evaluating Recommender Systems.mp4 55.7 MB
  • 3. Python Functions Deep Dive/8. Lambda Functions.mp4 55.7 MB
  • 19. Employee Promotion Prediction/7. Univariate Analysis.mp4 55.7 MB
  • 1. Python Fundamentals/17. Quiz Solution.mp4 55.7 MB
  • 1. Python Fundamentals/19. For and While.mp4 55.6 MB
  • 18. Time Series Forecasting/50. Mean Forecast Error.mp4 55.5 MB
  • 16. Dimensionality Reduction/13. Introduction the Boruta Algorithm.mp4 55.0 MB
  • 21. Determining Whether a Person should be Granted Loan/10. Applying Logistic Regression.mp4 54.9 MB
  • 15. Introduction to Clustering Analysis/15. Introduction to DBSCAN Clustering.mp4 54.9 MB
  • 15. Introduction to Clustering Analysis/14. Implementing Hierarchial Clustering.mp4 54.9 MB
  • 18. Time Series Forecasting/45. Choosing the Right for Model Smaller Datasets.mp4 54.8 MB
  • 18. Time Series Forecasting/5. Components of Time Series.mp4 54.5 MB
  • 1. Python Fundamentals/13. String Formatting.mp4 53.8 MB
  • 7. Feature Engineering/19. Quiz Solution.mp4 53.7 MB
  • 16. Dimensionality Reduction/12. Implementing Recursive Feature Selection.mp4 53.4 MB
  • 4. Python for Data Science/13. Array Creation using Numpy.mp4 53.4 MB
  • 5. Data Cleaning/13. Dealing with Outliers in a real-world scenario.mp4 53.4 MB
  • 5. Data Cleaning/11. Using Winsorization to deal with Outliers.mp4 53.0 MB
  • 19. Employee Promotion Prediction/10. Feature Engineering.mp4 52.9 MB
  • 20. Predicting Health Expense of Customers/1. Setting up the Environment.mp4 52.6 MB
  • 18. Time Series Forecasting/15. Simple Moving Averages.mp4 52.5 MB
  • 15. Introduction to Clustering Analysis/10. Clustering Multiple Dimensions.mp4 52.4 MB
  • 9. Linear Regression/10. Industry relevance of linear regression.mp4 52.3 MB
  • 7. Feature Engineering/24. Feature Engineering on Titanic Data.mp4 52.0 MB
  • 15. Introduction to Clustering Analysis/6. Introduction to K Means Clustering.mp4 51.7 MB
  • 5. Data Cleaning/8. Quiz Solution.mp4 51.5 MB
  • 1. Python Fundamentals/22. Quiz Solution.mp4 51.4 MB
  • 9. Linear Regression/8. MAE, RMSE, R2 and Adjusted R2 in code.mp4 51.4 MB
  • 16. Dimensionality Reduction/20. Introduction to Linear Discriminant Analysis.mp4 51.3 MB
  • 16. Dimensionality Reduction/6. Removing Highly Correlated Columns using Correlation.mp4 51.2 MB
  • 6. Data Visualizations/17. Quiz Solution.mp4 51.2 MB
  • 2. Python for Data Analysis/12. Introduction to Stacks and Queues.mp4 51.1 MB
  • 20. Predicting Health Expense of Customers/13. More things to Try.mp4 51.1 MB
  • 16. Dimensionality Reduction/8. Introduction to Variance Inflation Filtering.mp4 51.0 MB
  • 2. Python for Data Analysis/1. Differences between Lists and Tuples.mp4 51.0 MB
  • 6. Data Visualizations/8. Bar, Line, and Area Charts.mp4 50.9 MB
  • 17. Recommendation Engines/11. Quiz Solution.mp4 50.9 MB
  • 18. Time Series Forecasting/33. Implementing ARMA Model.mp4 50.6 MB
  • 18. Time Series Forecasting/24. Converting Non-Stationary Series into Stationary Implementation.mp4 50.5 MB
  • 18. Time Series Forecasting/23. Converting Non-Stationary Series into Stationary.mp4 50.4 MB
  • 17. Recommendation Engines/24. Quiz Solution.mp4 50.3 MB
  • 12. Tree Based Models/8. Implementing random forest using Sklearn.mp4 50.2 MB
  • 15. Introduction to Clustering Analysis/16. Implementing DBSCAN Clustering.mp4 50.2 MB
  • 16. Dimensionality Reduction/9. Implementing VIF using statsmodel.mp4 50.2 MB
  • 6. Data Visualizations/18. Animation with Bubbleplot.mp4 50.1 MB
  • 3. Python Functions Deep Dive/7. Quiz Solution.mp4 50.0 MB
  • 18. Time Series Forecasting/4. Applications of Time Series.mp4 49.6 MB
  • 6. Data Visualizations/5. Quiz Solution.mp4 49.4 MB
  • 1. Python Fundamentals/7. Quiz Solution.mp4 48.8 MB
  • 22. Optimizing Agricultural Production/1. Setting up the Environment.mp4 48.7 MB
  • 3. Python Functions Deep Dive/24. Polymorphism.mp4 48.5 MB
  • 17. Recommendation Engines/21. Interpreting Results Obtained from SVD.mp4 48.2 MB
  • 21. Determining Whether a Person should be Granted Loan/1. Understanding the Problem Statement.mp4 47.7 MB
  • 18. Time Series Forecasting/2. Types of Forecasting.mp4 47.5 MB
  • 6. Data Visualizations/6. Scatter Plots.mp4 47.4 MB
  • 17. Recommendation Engines/2. What are it's Use Cases.mp4 47.2 MB
  • 6. Data Visualizations/2. Bivariate Analysis.mp4 47.2 MB
  • 7. Feature Engineering/21. Feature Engineering on FIFA Data.mp4 46.9 MB
  • 18. Time Series Forecasting/40. Implementing ARIMAX Model.mp4 46.9 MB
  • 5. Data Cleaning/16. Introduction to reindex, set_index, reset_index, and sort_index Functions.mp4 46.9 MB
  • 19. Employee Promotion Prediction/14. Predictive Modelling.mp4 46.8 MB
  • 2. Python for Data Analysis/2. Operations on Lists.mp4 46.6 MB
  • 8. Data Processing/13. Train, Test and Validation Split.mp4 46.4 MB
  • 21. Determining Whether a Person should be Granted Loan/12. Summary.mp4 46.3 MB
  • 4. Python for Data Science/6. Quiz Solution.mp4 46.2 MB
  • 18. Time Series Forecasting/41. Understanding SARIMAX Model.mp4 46.0 MB
  • 14. Imbalanced Machine Learning/14. Introduction to XG Boost for Imbalanced Data.mp4 45.7 MB
  • 1. Python Fundamentals/14. String Methods.mp4 45.4 MB
  • 16. Dimensionality Reduction/14. Implementing the Boruta Algorithm.mp4 45.3 MB
  • 18. Time Series Forecasting/47. Best Practices while Choosing a Time series Model..mp4 45.1 MB
  • 21. Determining Whether a Person should be Granted Loan/8. Preparing the Data for Modelling.mp4 44.9 MB
  • 3. Python Functions Deep Dive/5. Python Modules.mp4 44.8 MB
  • 14. Imbalanced Machine Learning/6. Applying Random Forest using Sklearn.mp4 44.7 MB
  • 19. Employee Promotion Prediction/6. Outlier Values Treatment.mp4 44.6 MB
  • 19. Employee Promotion Prediction/13. Feature Scaling.mp4 44.3 MB
  • 10. Logistic Regression/3. Feature Selection using RFECV.mp4 44.2 MB
  • 5. Data Cleaning/23. Data Cleaning on Melbourne Housing Dataset.mp4 44.2 MB
  • 19. Employee Promotion Prediction/16. Improvements Possible.mp4 43.9 MB
  • 15. Introduction to Clustering Analysis/13. Introduction to Dendrograms.mp4 43.8 MB
  • 19. Employee Promotion Prediction/1. Setting up the Environment.mp4 43.7 MB
  • 2. Python for Data Analysis/14. Implementing Stacks and Queues using Deque.mp4 43.6 MB
  • 14. Imbalanced Machine Learning/15. Comparing the Results.mp4 43.5 MB
  • 5. Data Cleaning/20. Introduction to Melt, Explode, and Squeeze Functions.mp4 43.4 MB
  • 21. Determining Whether a Person should be Granted Loan/3. Understanding the Dataset.mp4 43.1 MB
  • 13. Boosting Models/5. Getting High level intuition for XGBoost.mp4 43.1 MB
  • 1. Python Fundamentals/15. User Input.mp4 43.0 MB
  • 4. Python for Data Science/9. Special Characters for Regular Expressions.mp4 42.9 MB
  • 1. Python Fundamentals/20. Break and Continue.mp4 42.7 MB
  • 17. Recommendation Engines/20. Implementing SVD using Surprise.mp4 42.6 MB
  • 17. Recommendation Engines/1. Introduction to Recommender systems.mp4 42.5 MB
  • 3. Python Functions Deep Dive/26. Quiz Solution.mp4 42.4 MB
  • 22. Optimizing Agricultural Production/10. Summarizing the Key-Points.mp4 42.4 MB
  • 22. Optimizing Agricultural Production/8. Predictive Modelling.mp4 42.3 MB
  • 3. Python Functions Deep Dive/12. Quiz Solution.mp4 42.2 MB
  • 3. Python Functions Deep Dive/1. Introduction to Functions.mp4 42.2 MB
  • 4. Python for Data Science/15. Built-in Functions in Numpy.mp4 41.9 MB
  • 19. Employee Promotion Prediction/9. Multivariate Analysis.mp4 41.9 MB
  • 6. Data Visualizations/36. Network Charts.mp4 41.7 MB
  • 8. Data Processing/14. Standardization and Normalization.mp4 41.6 MB
  • 3. Python Functions Deep Dive/21. Introduction to Classes and Objects.mp4 41.5 MB
  • 2. Python for Data Analysis/16. Quiz Solution.mp4 41.4 MB
  • 8. Data Processing/9. Square and Cube Root Transformation.mp4 41.3 MB
  • 1. Python Fundamentals/10. Identity and Membership Operators.mp4 41.1 MB
  • 22. Optimizing Agricultural Production/5. Analyzing Agricultural Conditions.mp4 41.1 MB
  • 6. Data Visualizations/32. Funnel Charts.mp4 41.0 MB
  • 19. Employee Promotion Prediction/5. Missing Values Treatment.mp4 40.5 MB
  • 21. Determining Whether a Person should be Granted Loan/11. Applying Gradient Boosting.mp4 40.5 MB
  • 6. Data Visualizations/24. Introduction to Ipywidgets.mp4 40.4 MB
  • 6. Data Visualizations/38. Quiz Solution.mp4 40.4 MB
  • 18. Time Series Forecasting/26. Auto Correlation and Partial Correlation Implementation.mp4 40.3 MB
  • 6. Data Visualizations/10. Statistical Charts.mp4 40.2 MB
  • 5. Data Cleaning/21. Data Cleaning on Big Mart Dataset.mp4 40.2 MB
  • 7. Feature Engineering/3. Decomposing Time and Date Features.mp4 40.2 MB
  • 7. Feature Engineering/4. Decomposing Categorical Features.mp4 40.1 MB
  • 2. Python for Data Analysis/11. Quiz Solution.mp4 40.1 MB
  • 3. Python Functions Deep Dive/16. Quiz Solution.mp4 40.0 MB
  • 18. Time Series Forecasting/37. Implementing SARIMA Model.mp4 40.0 MB
  • 18. Time Series Forecasting/22. Checking for Stationary Implementation.mp4 40.0 MB
  • 3. Python Functions Deep Dive/20. Quiz Solution.mp4 39.9 MB
  • 6. Data Visualizations/9. Facet Grids.mp4 39.8 MB
  • 5. Data Cleaning/18. Introduction to Split and Strip Function.mp4 39.7 MB
  • 4. Python for Data Science/8. Built-in Functions for Regular Expressions.mp4 39.4 MB
  • 8. Data Processing/8. Introduction to Skewness and Normal Distribution.mp4 39.4 MB
  • 4. Python for Data Science/1. Introduction to datetime.mp4 39.3 MB
  • 19. Employee Promotion Prediction/11. Categorical Encoding.mp4 39.3 MB
  • 5. Data Cleaning/22. Data Cleaning on Movie Dataset.mp4 39.1 MB
  • 4. Python for Data Science/22. Lambda, Map, and Apply Functions.mp4 39.0 MB
  • 19. Employee Promotion Prediction/8. Bivariate Analysis.mp4 39.0 MB
  • 2. Python for Data Analysis/5. Quiz Solution.mp4 38.9 MB
  • 16. Dimensionality Reduction/21. Implementing LDA.mp4 38.5 MB
  • 20. Predicting Health Expense of Customers/12. Comparing Performance of these Models.mp4 38.3 MB
  • 2. Python for Data Analysis/13. Implementing Stacks and Queues using Lists.mp4 38.3 MB
  • 4. Python for Data Science/14. Mathematical Operations using Numpy.mp4 38.2 MB
  • 18. Time Series Forecasting/46. Choosing the Right Model for Larger Datasets.mp4 38.1 MB
  • 7. Feature Engineering/10. Finding the Words, Characters, and Punctuation Count.mp4 38.1 MB
  • 3. Python Functions Deep Dive/4. Keyword Arguments.mp4 38.0 MB
  • 7. Feature Engineering/13. Introduction to Assign and Update Functions.mp4 37.9 MB
  • 16. Dimensionality Reduction/19. Implementing t-SNE.mp4 37.9 MB
  • 12. Tree Based Models/4. Implementing Decision tree using Sklearn.mp4 37.5 MB
  • 4. Python for Data Science/19. Plotting Data in Pandas.mp4 37.5 MB
  • 18. Time Series Forecasting/51. Mean Absolute Error.mp4 37.3 MB
  • 22. Optimizing Agricultural Production/3. Understanding the Problem Statement.mp4 37.1 MB
  • 7. Feature Engineering/15. Introduction to nlargest and nsmallest Functions.mp4 37.0 MB
  • 18. Time Series Forecasting/29. Moving Average Model.mp4 37.0 MB
  • 18. Time Series Forecasting/44. How to Choose the Right Model.mp4 36.9 MB
  • 7. Feature Engineering/22. Feature Engineering on Hotel Reviews.mp4 36.8 MB
  • 18. Time Series Forecasting/1. What is a Time Series Data.mp4 36.6 MB
  • 6. Data Visualizations/12. Subplots.mp4 36.5 MB
  • 18. Time Series Forecasting/19. Introduction to Auto Regressive Models.mp4 36.4 MB
  • 3. Python Functions Deep Dive/14. Introduction to Analytical Functions.mp4 36.4 MB
  • 6. Data Visualizations/23. Quiz Solution.mp4 36.3 MB
  • 8. Data Processing/4. OneHot Encoding.mp4 36.3 MB
  • 1. Python Fundamentals/12. Quiz Solution.mp4 35.9 MB
  • 6. Data Visualizations/26. Interactive Bivariate Analysis.mp4 35.5 MB
  • 7. Feature Engineering/7. Introduction to Feature Engineering on Text Data.mp4 35.5 MB
  • 4. Python for Data Science/2. The date and time class.mp4 35.2 MB
  • 8. Data Processing/2. Label Encoding.mp4 35.2 MB
  • 1. Python Fundamentals/2. Installing Python and Jupyter Notebook.mp4 35.1 MB
  • 11. Introduction to KNN, SVM, Naive Bayes/5. Implementing KNN using Sklearn.mp4 34.8 MB
  • 8. Data Processing/5. Binary and BaseN Encoding.mp4 34.8 MB
  • 18. Time Series Forecasting/35. Implementing ARIMA Model.mp4 34.8 MB
  • 6. Data Visualizations/30. Sunburst Charts.mp4 34.8 MB
  • 5. Data Cleaning/17. Introduction to Replace and Droplevel Function.mp4 34.6 MB
  • 4. Python for Data Science/12. Quiz Solution.mp4 34.4 MB
  • 8. Data Processing/11. BoxCox transformation.mp4 34.1 MB
  • 3. Python Functions Deep Dive/22. Inheritance.mp4 34.1 MB
  • 3. Python Functions Deep Dive/3. Positional Arguments.mp4 33.7 MB
  • 6. Data Visualizations/7. Charts with Colorscale.mp4 33.4 MB
  • 18. Time Series Forecasting/49. Why do we Evaluate Performance.mp4 33.3 MB
  • 7. Feature Engineering/11. Counting Nouns and Verbs in the Text.mp4 32.9 MB
  • 7. Feature Engineering/17. Introduction to Cumulative Functions.mp4 32.6 MB
  • 6. Data Visualizations/15. Maps.mp4 32.2 MB
  • 3. Python Functions Deep Dive/13. Introduction to Aggregate Functions.mp4 32.1 MB
  • 6. Data Visualizations/21. Animation with Choropleth Maps.mp4 32.1 MB
  • 7. Feature Engineering/8. Reading and Summarizing the Text.mp4 32.0 MB
  • 7. Feature Engineering/14. Introduction to at_time and between_time Functions.mp4 31.7 MB
  • 6. Data Visualizations/25. Interactive Univariate Analysis.mp4 31.3 MB
  • 18. Time Series Forecasting/52. Mean Absolute Percentage Error.mp4 31.2 MB
  • 6. Data Visualizations/14. Waffle Charts.mp4 30.8 MB
  • 18. Time Series Forecasting/53. Root Mean Squared Error.mp4 30.8 MB
  • 6. Data Visualizations/11. Polar Charts.mp4 30.7 MB
  • 6. Data Visualizations/27. Interactive Multivariate Analysis.mp4 30.6 MB
  • 8. Data Processing/3. Feature Mapping for Ordinal Variables.mp4 30.4 MB
  • 19. Employee Promotion Prediction/17. Major Takeaways from the Project.mp4 30.4 MB
  • 7. Feature Engineering/16. Introduction to Expanding Function.mp4 29.8 MB
  • 8. Data Processing/10. Log transformation.mp4 29.4 MB
  • 22. Optimizing Agricultural Production/7. Visualizing the Hidden Patterns.mp4 29.1 MB
  • 22. Optimizing Agricultural Production/9. Real Time Predictions.mp4 29.0 MB
  • 2. Python for Data Analysis/3. Operations on Tuples.mp4 28.8 MB
  • 6. Data Visualizations/19. Animation with Facets.mp4 28.0 MB
  • 5. Data Cleaning/19. Introduction to Stack, and Unstack Functions.mp4 26.6 MB
  • 6. Data Visualizations/33. Gantt Charts.mp4 26.3 MB
  • 6. Data Visualizations/13. 3D Charts.mp4 25.8 MB
  • 7. Feature Engineering/12. Counting Adjectives, Adverb, and Pronouns.mp4 24.9 MB
  • 18. Time Series Forecasting/30. Moving Average Model Implementation.mp4 24.4 MB
  • 6. Data Visualizations/31. Parallel Co-ordinate Charts.mp4 24.1 MB
  • 8. Data Processing/6. Mean and Frequency Encoding.mp4 23.9 MB
  • 6. Data Visualizations/20. Animation with Scatter Maps.mp4 23.8 MB
  • 4. Python for Data Science/3. The datetime class.mp4 23.7 MB
  • 6. Data Visualizations/35. Tree Maps.mp4 22.5 MB
  • 6. Data Visualizations/34. Ternary Charts.mp4 21.4 MB
  • 4. Python for Data Science/4. The timedelta class.mp4 20.3 MB
  • 12. Tree Based Models/2. Attribute selection method- Gini Index and Entropy.srt 13.6 kB
  • 5. Data Cleaning/24. Data Cleaning on Naukri Dataset.srt 13.2 kB
  • 9. Linear Regression/2. Implementing Linear Regression using Sklearn.srt 10.9 kB
  • 11. Introduction to KNN, SVM, Naive Bayes/6. Introduction to Naive Bayes.srt 10.7 kB
  • 9. Linear Regression/9. Applying real time prediction on our model.srt 9.9 kB
  • 10. Logistic Regression/8. Using ROC-AUC score to analyze the performance of model.srt 9.7 kB
  • 18. Time Series Forecasting/8. Handling Missing Values.srt 9.6 kB
  • 13. Boosting Models/3. Implementing AdaBoost using sklearn.srt 9.6 kB
  • 10. Logistic Regression/2. Implementing Logistic Regression using Sklearn.srt 9.4 kB
  • 10. Logistic Regression/6. How to analyze performance of a classification model.srt 8.9 kB
  • 13. Boosting Models/2. Intuition for Adaboost and Gradient Boosting.srt 8.8 kB
  • 16. Dimensionality Reduction/3. Solving a Real World Problem.srt 8.6 kB
  • 20. Predicting Health Expense of Customers/8. Applying Linear Regression Model.srt 8.3 kB
  • 1. Python Fundamentals/8. Arithmetic and Assignment Operators.srt 8.2 kB
  • 5. Data Cleaning/10. Finding out Outliers from the Data.srt 8.2 kB
  • 13. Boosting Models/7. Introudction to Ensembling techniques.srt 8.0 kB
  • 18. Time Series Forecasting/10. Time Series Decomposition.srt 7.8 kB
  • 2. Python for Data Analysis/24. Quiz Solution.srt 7.7 kB
  • 1. Python Fundamentals/9. Comparison, Logical, and Bitwise Operators.srt 7.6 kB
  • 11. Introduction to KNN, SVM, Naive Bayes/3. Implementing support vector machine using sklearn.srt 7.6 kB
  • 2. Python for Data Analysis/21. Insertion and Selection Sort.srt 7.4 kB
  • 20. Predicting Health Expense of Customers/7. Preparing the data for Modelling.srt 7.2 kB
  • 10. Logistic Regression/9. Real time prediction using logistic regression.srt 7.2 kB
  • 20. Predicting Health Expense of Customers/6. Performing Multivariate Analysis.srt 7.1 kB
  • 15. Introduction to Clustering Analysis/9. Using Silhouette Score to analyze the clusters.srt 7.1 kB
  • 10. Logistic Regression/1. Introduction to Logistic Regression.srt 7.0 kB
  • 9. Linear Regression/4. Data Transformation with Linear Regression.srt 7.0 kB
  • 5. Data Cleaning/6. Imputing Missing Values in a real-time scenario.srt 6.9 kB
  • 3. Python Functions Deep Dive/9. Filter, Map, and Zip Functions.srt 6.9 kB
  • 20. Predicting Health Expense of Customers/2. Understanding the Dataset.srt 6.8 kB
  • 17. Recommendation Engines/6. Preprocessing the Data for Content Based Filtering.srt 6.8 kB
  • 20. Predicting Health Expense of Customers/4. Performing Univariate Analysis.srt 6.8 kB
  • 18. Time Series Forecasting/28. The Simple Auto Regressive Model Implementation.srt 6.7 kB
  • 1. Python Fundamentals/4. Built in Data Types and Type Casting.srt 6.7 kB
  • 18. Time Series Forecasting/7. Getting Time Series data.srt 6.6 kB
  • 19. Employee Promotion Prediction/2. Understanding the Dataset.srt 6.5 kB
  • 7. Feature Engineering/23. Feature Engineering on Marketing Data.srt 6.5 kB
  • 2. Python for Data Analysis/17. Time Complexity.srt 6.4 kB
  • 22. Optimizing Agricultural Production/4. Performing Descriptive Statistics.srt 6.4 kB
  • 9. Linear Regression/3. Feature Selection using RFECV.srt 6.4 kB
  • 15. Introduction to Clustering Analysis/8. Implementing K Means on the Mall Dataset.srt 6.4 kB
  • 2. Python for Data Analysis/22. Merge Sort.srt 6.4 kB
  • 18. Time Series Forecasting/17. Holt and Holt Winter Exponential Smoothing.srt 6.3 kB
  • 1. Python Fundamentals/3. Naming Convention for Variables.srt 6.2 kB
  • 7. Feature Engineering/20. Feature Engineering on Employee Data.srt 6.2 kB
  • 21. Determining Whether a Person should be Granted Loan/4. Performing Descriptive Statistics.srt 6.2 kB
  • 17. Recommendation Engines/19. Introduction to SVD.srt 6.1 kB
  • 1. Python Fundamentals/14. String Methods.srt 6.1 kB
  • 9. Linear Regression/7. R2 score and adjuted R2 score intuition.srt 6.0 kB
  • 17. Recommendation Engines/7. Filtering Movies Based on Genres.srt 6.0 kB
  • 7. Feature Engineering/9. Finding the Length, Polarity and Subjectivity.srt 5.9 kB
  • 11. Introduction to KNN, SVM, Naive Bayes/1. Introduction to Support Vector machines.srt 5.9 kB
  • 17. Recommendation Engines/13. Preprocessing the Data for Collaborative Filtering.srt 5.8 kB
  • 2. Python for Data Analysis/19. Binary Search.srt 5.7 kB
  • 17. Recommendation Engines/15. Interpreting the Results obtained from User Based Filtering.srt 5.7 kB
  • 6. Data Visualizations/3. Multivariate Analysis.srt 5.6 kB
  • 9. Linear Regression/8. MAE, RMSE, R2 and Adjusted R2 in code.srt 5.6 kB
  • 20. Predicting Health Expense of Customers/5. Performing Bivariate Analysis.srt 5.6 kB
  • 17. Recommendation Engines/21. Interpreting Results Obtained from SVD.srt 5.5 kB
  • 16. Dimensionality Reduction/5. Introduction to Correlation using Heatmap.srt 5.5 kB
  • 11. Introduction to KNN, SVM, Naive Bayes/4. Introduction to K nearest neighbors.srt 5.5 kB
  • 1. Python Fundamentals/7. Quiz Solution.srt 5.4 kB
  • 1. Python Fundamentals/19. For and While.srt 5.4 kB
  • 7. Feature Engineering/24. Feature Engineering on Titanic Data.srt 5.4 kB
  • 9. Linear Regression/5. Applying Cross Validation.srt 5.4 kB
  • 2. Python for Data Analysis/11. Quiz Solution.srt 5.3 kB
  • 19. Employee Promotion Prediction/15. Performance Analysis.srt 5.2 kB
  • 4. Python for Data Science/7. Meta Characters for Regular Expressions.srt 5.2 kB
  • 14. Imbalanced Machine Learning/5. Applying Logistic Regression using Sklearn.srt 5.2 kB
  • 10. Logistic Regression/4. Hyperparameter tuning using Grid search.srt 5.1 kB
  • 19. Employee Promotion Prediction/12. Data Processing.srt 5.1 kB
  • 9. Linear Regression/6. Analyzing the performance of Regression models.srt 5.1 kB
  • 4. Python for Data Science/21. Merging and Concatenating DataFrames.srt 5.1 kB
  • 15. Introduction to Clustering Analysis/7. Solving a Real World Problem.srt 5.1 kB
  • 21. Determining Whether a Person should be Granted Loan/5. Data Cleaning.srt 5.0 kB
  • 3. Python Functions Deep Dive/7. Quiz Solution.srt 5.0 kB
  • 19. Employee Promotion Prediction/7. Univariate Analysis.srt 5.0 kB
  • 6. Data Visualizations/8. Bar, Line, and Area Charts.srt 5.0 kB
  • 6. Data Visualizations/10. Statistical Charts.srt 5.0 kB
  • 5. Data Cleaning/8. Quiz Solution.srt 4.9 kB
  • 18. Time Series Forecasting/14. Metrics for Time series Forecasting.srt 4.9 kB
  • 1. Python Fundamentals/13. String Formatting.srt 4.9 kB
  • 14. Imbalanced Machine Learning/4. Preparing the Data for Predictive Modelling.srt 4.9 kB
  • 13. Boosting Models/4. Implementing Gradient Boosting using sklearn.srt 4.9 kB
  • 17. Recommendation Engines/12. Introduction to Collaborative Filtering.srt 4.9 kB
  • 15. Introduction to Clustering Analysis/12. Introduction to Hierarchal Clustering.srt 4.9 kB
  • 21. Determining Whether a Person should be Granted Loan/7. Bivariate Data Analysis.srt 4.9 kB
  • 6. Data Visualizations/1. Univariate Analysis.srt 4.9 kB
  • 21. Determining Whether a Person should be Granted Loan/2. Setting up the Environment.srt 4.8 kB
  • 9. Linear Regression/1. Introduction to Linear Regression.srt 4.8 kB
  • 13. Boosting Models/6. Implementing XGBoost using sklearn.srt 4.8 kB
  • 2. Python for Data Analysis/9. Set Operations.srt 4.8 kB
  • 20. Predicting Health Expense of Customers/10. Applying Gradient Boosting Model.srt 4.8 kB
  • 10. Logistic Regression/7. Using accuracy score to analyze the performance of model.srt 4.8 kB
  • 2. Python for Data Analysis/6. Introduction to Dictionaries.srt 4.7 kB
  • 17. Recommendation Engines/14. Implementation of User Based Collaborative Filtering.srt 4.7 kB
  • 2. Python for Data Analysis/18. Linear Search.srt 4.7 kB
  • 5. Data Cleaning/16. Introduction to reindex, set_index, reset_index, and sort_index Functions.srt 4.7 kB
  • 18. Time Series Forecasting/13. Basic Forecasting Techniques.srt 4.7 kB
  • 12. Tree Based Models/1. Intuition for decision trees.srt 4.7 kB
  • 14. Imbalanced Machine Learning/11. Implementing Neighbors based Sampling using Imblearn.srt 4.7 kB
  • 17. Recommendation Engines/18. Quiz Solution.srt 4.7 kB
  • 18. Time Series Forecasting/3. Regression Vs Time Series.srt 4.6 kB
  • 20. Predicting Health Expense of Customers/11. Creating Ensembles of Models.srt 4.6 kB
  • 7. Feature Engineering/26. Quiz Solution.srt 4.6 kB
  • 7. Feature Engineering/5. Binning Numerical Features.srt 4.6 kB
  • 18. Time Series Forecasting/9. Handling Outlier Values.srt 4.6 kB
  • 2. Python for Data Analysis/8. Introduction to Sets.srt 4.6 kB
  • 4. Python for Data Science/20. Indexing, Selecting, and Filtering Data using Pandas.srt 4.6 kB
  • 16. Dimensionality Reduction/14. Implementing the Boruta Algorithm.srt 4.6 kB
  • 16. Dimensionality Reduction/18. Introduction to t-SNE.srt 4.6 kB
  • 4. Python for Data Science/24. Quiz Solution.srt 4.6 kB
  • 20. Predicting Health Expense of Customers/9. Applying Random Forest Model.srt 4.6 kB
  • 3. Python Functions Deep Dive/2. Default Parameters in Functions.srt 4.6 kB
  • 17. Recommendation Engines/16. Implementation of Item Based Collaborative Filtering.srt 4.5 kB
  • 6. Data Visualizations/29. Quiz Solution.srt 4.5 kB
  • 19. Employee Promotion Prediction/4. Performing Descriptive Statistics.srt 4.5 kB
  • 5. Data Cleaning/15. Quiz Solution.srt 4.5 kB
  • 17. Recommendation Engines/11. Quiz Solution.srt 4.5 kB
  • 4. Python for Data Science/17. Quiz Solution.srt 4.5 kB
  • 7. Feature Engineering/21. Feature Engineering on FIFA Data.srt 4.5 kB
  • 1. Python Fundamentals/17. Quiz Solution.srt 4.5 kB
  • 12. Tree Based Models/8. Implementing random forest using Sklearn.srt 4.5 kB
  • 21. Determining Whether a Person should be Granted Loan/6. Univariate Data Visualizations.srt 4.4 kB
  • 16. Dimensionality Reduction/1. Why High Dimensional Datasets are a Problem.srt 4.4 kB
  • 7. Feature Engineering/2. Removing Unnecessary Columns.srt 4.4 kB
  • 16. Dimensionality Reduction/17. Implementing PCA.srt 4.4 kB
  • 6. Data Visualizations/6. Scatter Plots.srt 4.4 kB
  • 18. Time Series Forecasting/21. Checking for Stationarity using Statistical Methods Part 2.srt 4.4 kB
  • 2. Python for Data Analysis/2. Operations on Lists.srt 4.4 kB
  • 1. Python Fundamentals/22. Quiz Solution.srt 4.4 kB
  • 12. Tree Based Models/7. Understanding the parameters of Random forest.srt 4.4 kB
  • 14. Imbalanced Machine Learning/2. Using Resampling Techniques to Balance the Data.srt 4.4 kB
  • 16. Dimensionality Reduction/12. Implementing Recursive Feature Selection.srt 4.3 kB
  • 14. Imbalanced Machine Learning/8. Implementing Random Over Sampling using Imblearn.srt 4.3 kB
  • 5. Data Cleaning/3. When should we delete the Missing values.srt 4.3 kB
  • 6. Data Visualizations/17. Quiz Solution.srt 4.3 kB
  • 14. Imbalanced Machine Learning/3. Solving a Real World Problem.srt 4.3 kB
  • 8. Data Processing/1. Types of Encoding Techniques.srt 4.2 kB
  • 16. Dimensionality Reduction/16. Introduction to Principal Component Analysis.srt 4.2 kB
  • 22. Optimizing Agricultural Production/6. Clustering Similar Crops.srt 4.2 kB
  • 6. Data Visualizations/38. Quiz Solution.srt 4.2 kB
  • 7. Feature Engineering/10. Finding the Words, Characters, and Punctuation Count.srt 4.2 kB
  • 1. Python Fundamentals/5. Scope of Variables.srt 4.2 kB
  • 2. Python for Data Analysis/7. Nested Dictionaries.srt 4.2 kB
  • 18. Time Series Forecasting/25. Auto Correlation and Partial Correlation.srt 4.2 kB
  • 18. Time Series Forecasting/11. Splitting Time Series Data.srt 4.2 kB
  • 3. Python Functions Deep Dive/10. List, set, and Dictionary Comprehensions.srt 4.2 kB
  • 6. Data Visualizations/5. Quiz Solution.srt 4.1 kB
  • 14. Imbalanced Machine Learning/10. Implementing Synthetic Sampling using Imblearn.srt 4.1 kB
  • 18. Time Series Forecasting/16. Simple Exponential Smoothing.srt 4.1 kB
  • 15. Introduction to Clustering Analysis/10. Clustering Multiple Dimensions.srt 4.1 kB
  • 1. Python Fundamentals/12. Quiz Solution.srt 4.1 kB
  • 14. Imbalanced Machine Learning/9. Implementing Random Under Sampling using Imblearn.srt 4.1 kB
  • 17. Recommendation Engines/9. Recommending Similar Movies to Watch.srt 4.1 kB
  • 11. Introduction to KNN, SVM, Naive Bayes/8. When should we apply SVM, KNN and Naive bayes.srt 4.1 kB
  • 3. Python Functions Deep Dive/20. Quiz Solution.srt 4.1 kB
  • 3. Python Functions Deep Dive/12. Quiz Solution.srt 4.1 kB
  • 12. Tree Based Models/6. Introduction to Random forest.srt 4.1 kB
  • 5. Data Cleaning/21. Data Cleaning on Big Mart Dataset.srt 4.1 kB
  • 16. Dimensionality Reduction/6. Removing Highly Correlated Columns using Correlation.srt 4.1 kB
  • 5. Data Cleaning/20. Introduction to Melt, Explode, and Squeeze Functions.srt 4.0 kB
  • 19. Employee Promotion Prediction/6. Outlier Values Treatment.srt 4.0 kB
  • 2. Python for Data Analysis/20. Bubble Sort.srt 4.0 kB
  • 5. Data Cleaning/18. Introduction to Split and Strip Function.srt 4.0 kB
  • 15. Introduction to Clustering Analysis/13. Introduction to Dendrograms.srt 4.0 kB
  • 7. Feature Engineering/6. Aggregating Features.srt 4.0 kB
  • 5. Data Cleaning/9. How Outliers can be harmful for Machine Learning Models.srt 4.0 kB
  • 7. Feature Engineering/19. Quiz Solution.srt 4.0 kB
  • 3. Python Functions Deep Dive/23. Encapsulation.srt 4.0 kB
  • 5. Data Cleaning/23. Data Cleaning on Melbourne Housing Dataset.srt 4.0 kB
  • 15. Introduction to Clustering Analysis/2. Types of Clustering.srt 4.0 kB
  • 18. Time Series Forecasting/24. Converting Non-Stationary Series into Stationary Implementation.srt 4.0 kB
  • 4. Python for Data Science/6. Quiz Solution.srt 3.9 kB
  • 5. Data Cleaning/13. Dealing with Outliers in a real-world scenario.srt 3.9 kB
  • 4. Python for Data Science/10. Sets for Regular Expressions.srt 3.9 kB
  • 5. Data Cleaning/4. Imputing the Missing Values using the Business Logic.srt 3.9 kB
  • 2. Python for Data Analysis/16. Quiz Solution.srt 3.9 kB
  • 17. Recommendation Engines/20. Implementing SVD using Surprise.srt 3.9 kB
  • 10. Logistic Regression/5. Applying Cross Validation.srt 3.9 kB
  • 18. Time Series Forecasting/36. Understanding SARIMA Model.srt 3.9 kB
  • 15. Introduction to Clustering Analysis/6. Introduction to K Means Clustering.srt 3.9 kB
  • 11. Introduction to KNN, SVM, Naive Bayes/2. The kermel trick for support vector machine.srt 3.9 kB
  • 3. Python Functions Deep Dive/14. Introduction to Analytical Functions.srt 3.9 kB
  • 1. Python Fundamentals/18. If, elif, and else.srt 3.8 kB
  • 3. Python Functions Deep Dive/21. Introduction to Classes and Objects.srt 3.8 kB
  • 18. Time Series Forecasting/15. Simple Moving Averages.srt 3.8 kB
  • 14. Imbalanced Machine Learning/13. Implementing Ensemble Models for Imbalanced Data.srt 3.8 kB
  • 17. Recommendation Engines/22. Comparing Content, and Collaborative Based Filtering.srt 3.8 kB
  • 4. Python for Data Science/18. Reading Datasets using Pandas.srt 3.8 kB
  • 18. Time Series Forecasting/50. Mean Forecast Error.srt 3.8 kB
  • 17. Recommendation Engines/5. Introduction to Content Based Filtering.srt 3.7 kB
  • 19. Employee Promotion Prediction/1. Setting up the Environment.srt 3.7 kB
  • 15. Introduction to Clustering Analysis/5. Using the Elbow Method for Choosing the Best Value for K.srt 3.7 kB
  • 2. Python for Data Analysis/5. Quiz Solution.srt 3.7 kB
  • 18. Time Series Forecasting/23. Converting Non-Stationary Series into Stationary.srt 3.7 kB
  • 5. Data Cleaning/1. Causes and Impact of Missing Values.srt 3.7 kB
  • 15. Introduction to Clustering Analysis/14. Implementing Hierarchial Clustering.srt 3.7 kB
  • 15. Introduction to Clustering Analysis/15. Introduction to DBSCAN Clustering.srt 3.7 kB
  • 6. Data Visualizations/2. Bivariate Analysis.srt 3.7 kB
  • 12. Tree Based Models/4. Implementing Decision tree using Sklearn.srt 3.7 kB
  • 12. Tree Based Models/5. Understanding the concept of Bagging.srt 3.7 kB
  • 14. Imbalanced Machine Learning/12. Combination of Oversampling and Under sampling.srt 3.7 kB
  • 17. Recommendation Engines/24. Quiz Solution.srt 3.7 kB
  • 20. Predicting Health Expense of Customers/1. Setting up the Environment.srt 3.7 kB
  • 8. Data Processing/13. Train, Test and Validation Split.srt 3.7 kB
  • 15. Introduction to Clustering Analysis/16. Implementing DBSCAN Clustering.srt 3.7 kB
  • 16. Dimensionality Reduction/9. Implementing VIF using statsmodel.srt 3.7 kB
  • 18. Time Series Forecasting/26. Auto Correlation and Partial Correlation Implementation.srt 3.7 kB
  • 21. Determining Whether a Person should be Granted Loan/9. Applying Resampling.srt 3.6 kB
  • 6. Data Visualizations/24. Introduction to Ipywidgets.srt 3.6 kB
  • 7. Feature Engineering/15. Introduction to nlargest and nsmallest Functions.srt 3.6 kB
  • 18. Time Series Forecasting/42. Implementing SARIMAX Model.srt 3.6 kB
  • 14. Imbalanced Machine Learning/14. Introduction to XG Boost for Imbalanced Data.srt 3.6 kB
  • 3. Python Functions Deep Dive/26. Quiz Solution.srt 3.6 kB
  • 6. Data Visualizations/26. Interactive Bivariate Analysis.srt 3.6 kB
  • 18. Time Series Forecasting/39. Understanding ARIMAX Model.srt 3.6 kB
  • 7. Feature Engineering/1. Introduction to Feature Engineering.srt 3.6 kB
  • 20. Predicting Health Expense of Customers/3. Understanding the Problem Statement.srt 3.5 kB
  • 21. Determining Whether a Person should be Granted Loan/1. Understanding the Problem Statement.srt 3.5 kB
  • 11. Introduction to KNN, SVM, Naive Bayes/7. Implementing Naive Bayes using sklearn.srt 3.5 kB
  • 2. Python for Data Analysis/1. Differences between Lists and Tuples.srt 3.5 kB
  • 17. Recommendation Engines/3. Types of Recommender Systems.srt 3.5 kB
  • 19. Employee Promotion Prediction/3. Understanding the Problem Statement.srt 3.5 kB
  • 8. Data Processing/5. Binary and BaseN Encoding.srt 3.5 kB
  • 5. Data Cleaning/12. Deleting and Capping the Outliers.srt 3.5 kB
  • 6. Data Visualizations/23. Quiz Solution.srt 3.4 kB
  • 16. Dimensionality Reduction/22. Difference between PCA, t-SNE, and LDA.srt 3.4 kB
  • 10. Logistic Regression/10. Industry Relevance of Logistic Regression.srt 3.4 kB
  • 18. Time Series Forecasting/40. Implementing ARIMAX Model.srt 3.4 kB
  • 16. Dimensionality Reduction/2. Methods to solve the problem of High Dimensionality.srt 3.4 kB
  • 4. Python for Data Science/12. Quiz Solution.srt 3.4 kB
  • 1. Python Fundamentals/1. Why should you learn Python.srt 3.4 kB
  • 19. Employee Promotion Prediction/11. Categorical Encoding.srt 3.4 kB
  • 21. Determining Whether a Person should be Granted Loan/10. Applying Logistic Regression.srt 3.4 kB
  • 5. Data Cleaning/2. Types of Missing Values.srt 3.4 kB
  • 3. Python Functions Deep Dive/16. Quiz Solution.srt 3.4 kB
  • 15. Introduction to Clustering Analysis/3. Applications of Clustering.srt 3.4 kB
  • 19. Employee Promotion Prediction/10. Feature Engineering.srt 3.4 kB
  • 18. Time Series Forecasting/20. Checking for Stationarity Part 1.srt 3.4 kB
  • 8. Data Processing/9. Square and Cube Root Transformation.srt 3.3 kB
  • 7. Feature Engineering/22. Feature Engineering on Hotel Reviews.srt 3.3 kB
  • 7. Feature Engineering/13. Introduction to Assign and Update Functions.srt 3.3 kB
  • 19. Employee Promotion Prediction/8. Bivariate Analysis.srt 3.3 kB
  • 18. Time Series Forecasting/27. The Simple Auto Regressive Model.srt 3.3 kB
  • 4. Python for Data Science/13. Array Creation using Numpy.srt 3.3 kB
  • 20. Predicting Health Expense of Customers/14. Major Takeaways from the Project.srt 3.3 kB
  • 17. Recommendation Engines/8. Introduction to Transactional Encoder.srt 3.3 kB
  • 22. Optimizing Agricultural Production/8. Predictive Modelling.srt 3.3 kB
  • 14. Imbalanced Machine Learning/1. Why Imbalanced Data needs extra attention.srt 3.3 kB
  • 22. Optimizing Agricultural Production/2. Understanding the Dataset.srt 3.3 kB
  • 7. Feature Engineering/17. Introduction to Cumulative Functions.srt 3.2 kB
  • 22. Optimizing Agricultural Production/1. Setting up the Environment.srt 3.2 kB
  • 15. Introduction to Clustering Analysis/1. Introduction to Clustering.srt 3.2 kB
  • 18. Time Series Forecasting/22. Checking for Stationary Implementation.srt 3.2 kB
  • 14. Imbalanced Machine Learning/6. Applying Random Forest using Sklearn.srt 3.2 kB
  • 16. Dimensionality Reduction/11. Introduction to Recursive Feature Selection.srt 3.2 kB
  • 5. Data Cleaning/22. Data Cleaning on Movie Dataset.srt 3.2 kB
  • 6. Data Visualizations/32. Funnel Charts.srt 3.2 kB
  • 3. Python Functions Deep Dive/17. Solving the Factorial Problem using Recursion.srt 3.2 kB
  • 3. Python Functions Deep Dive/18. Solving the Fibonacci Problem using Recursion.srt 3.2 kB
  • 7. Feature Engineering/8. Reading and Summarizing the Text.srt 3.2 kB
  • 18. Time Series Forecasting/33. Implementing ARMA Model.srt 3.2 kB
  • 18. Time Series Forecasting/34. Understanding ARIMA Model.srt 3.1 kB
  • 13. Boosting Models/1. Understading the concept of boosting.srt 3.1 kB
  • 21. Determining Whether a Person should be Granted Loan/8. Preparing the Data for Modelling.srt 3.1 kB
  • 19. Employee Promotion Prediction/14. Predictive Modelling.srt 3.1 kB
  • 10. Logistic Regression/3. Feature Selection using RFECV.srt 3.1 kB
  • 17. Recommendation Engines/26. Case Study for Youtube.srt 3.1 kB
  • 17. Recommendation Engines/4. Evaluating Recommender Systems.srt 3.1 kB
  • 8. Data Processing/4. OneHot Encoding.srt 3.0 kB
  • 17. Recommendation Engines/25. Case Study for Netflix.srt 3.0 kB
  • 4. Python for Data Science/2. The date and time class.srt 3.0 kB
  • 16. Dimensionality Reduction/13. Introduction the Boruta Algorithm.srt 3.0 kB
  • 18. Time Series Forecasting/5. Components of Time Series.srt 3.0 kB
  • 12. Tree Based Models/3. Advantages and Issues with Decision trees.srt 3.0 kB
  • 7. Feature Engineering/14. Introduction to at_time and between_time Functions.srt 3.0 kB
  • 18. Time Series Forecasting/45. Choosing the Right for Model Smaller Datasets.srt 3.0 kB
  • 3. Python Functions Deep Dive/5. Python Modules.srt 3.0 kB
  • 21. Determining Whether a Person should be Granted Loan/11. Applying Gradient Boosting.srt 3.0 kB
  • 18. Time Series Forecasting/32. Understanding ARMA Model.srt 3.0 kB
  • 8. Data Processing/2. Label Encoding.srt 3.0 kB
  • 5. Data Cleaning/5. Imputing Missing Values using MeanMedianMode.srt 3.0 kB
  • 22. Optimizing Agricultural Production/5. Analyzing Agricultural Conditions.srt 3.0 kB
  • 20. Predicting Health Expense of Customers/12. Comparing Performance of these Models.srt 3.0 kB
  • 1. Python Fundamentals/15. User Input.srt 2.9 kB
  • 6. Data Visualizations/12. Subplots.srt 2.9 kB
  • 1. Python Fundamentals/20. Break and Continue.srt 2.9 kB
  • 5. Data Cleaning/11. Using Winsorization to deal with Outliers.srt 2.9 kB
  • 1. Python Fundamentals/10. Identity and Membership Operators.srt 2.9 kB
  • 3. Python Functions Deep Dive/8. Lambda Functions.srt 2.9 kB
  • 3. Python Functions Deep Dive/4. Keyword Arguments.srt 2.9 kB
  • 8. Data Processing/8. Introduction to Skewness and Normal Distribution.srt 2.9 kB
  • 6. Data Visualizations/18. Animation with Bubbleplot.srt 2.9 kB
  • 2. Python for Data Analysis/13. Implementing Stacks and Queues using Lists.srt 2.8 kB
  • 4. Python for Data Science/15. Built-in Functions in Numpy.srt 2.8 kB
  • 4. Python for Data Science/9. Special Characters for Regular Expressions.srt 2.8 kB
  • 20. Predicting Health Expense of Customers/13. More things to Try.srt 2.8 kB
  • 9. Linear Regression/10. Industry relevance of linear regression.srt 2.8 kB
  • 7. Feature Engineering/4. Decomposing Categorical Features.srt 2.8 kB
  • 16. Dimensionality Reduction/21. Implementing LDA.srt 2.8 kB
  • 16. Dimensionality Reduction/20. Introduction to Linear Discriminant Analysis.srt 2.8 kB
  • 19. Employee Promotion Prediction/9. Multivariate Analysis.srt 2.7 kB
  • 6. Data Visualizations/9. Facet Grids.srt 2.7 kB
  • 2. Python for Data Analysis/14. Implementing Stacks and Queues using Deque.srt 2.7 kB
  • 19. Employee Promotion Prediction/5. Missing Values Treatment.srt 2.7 kB
  • 3. Python Functions Deep Dive/24. Polymorphism.srt 2.7 kB
  • 6. Data Visualizations/11. Polar Charts.srt 2.7 kB
  • 18. Time Series Forecasting/37. Implementing SARIMA Model.srt 2.7 kB
  • 6. Data Visualizations/25. Interactive Univariate Analysis.srt 2.7 kB
  • 7. Feature Engineering/11. Counting Nouns and Verbs in the Text.srt 2.7 kB
  • 6. Data Visualizations/36. Network Charts.srt 2.7 kB
  • 18. Time Series Forecasting/2. Types of Forecasting.srt 2.7 kB
  • 3. Python Functions Deep Dive/22. Inheritance.srt 2.7 kB
  • 6. Data Visualizations/15. Maps.srt 2.6 kB
  • 4. Python for Data Science/8. Built-in Functions for Regular Expressions.srt 2.6 kB
  • 22. Optimizing Agricultural Production/7. Visualizing the Hidden Patterns.srt 2.6 kB
  • 4. Python for Data Science/14. Mathematical Operations using Numpy.srt 2.6 kB
  • 3. Python Functions Deep Dive/13. Introduction to Aggregate Functions.srt 2.6 kB
  • 18. Time Series Forecasting/4. Applications of Time Series.srt 2.6 kB
  • 6. Data Visualizations/30. Sunburst Charts.srt 2.6 kB
  • 5. Data Cleaning/17. Introduction to Replace and Droplevel Function.srt 2.6 kB
  • 8. Data Processing/10. Log transformation.srt 2.6 kB
  • 3. Python Functions Deep Dive/1. Introduction to Functions.srt 2.6 kB
  • 18. Time Series Forecasting/51. Mean Absolute Error.srt 2.5 kB
  • 6. Data Visualizations/33. Gantt Charts.srt 2.5 kB
  • 19. Employee Promotion Prediction/16. Improvements Possible.srt 2.5 kB
  • 1. Python Fundamentals/2. Installing Python and Jupyter Notebook.srt 2.5 kB
  • 8. Data Processing/14. Standardization and Normalization.srt 2.5 kB
  • 19. Employee Promotion Prediction/13. Feature Scaling.srt 2.5 kB
  • 21. Determining Whether a Person should be Granted Loan/12. Summary.srt 2.5 kB
  • 17. Recommendation Engines/2. What are it's Use Cases.srt 2.5 kB
  • 18. Time Series Forecasting/47. Best Practices while Choosing a Time series Model..srt 2.5 kB
  • 6. Data Visualizations/7. Charts with Colorscale.srt 2.5 kB
  • 8. Data Processing/11. BoxCox transformation.srt 2.5 kB
  • 7. Feature Engineering/3. Decomposing Time and Date Features.srt 2.4 kB
  • 4. Python for Data Science/19. Plotting Data in Pandas.srt 2.4 kB
  • 7. Feature Engineering/16. Introduction to Expanding Function.srt 2.4 kB
  • 16. Dimensionality Reduction/19. Implementing t-SNE.srt 2.4 kB
  • 16. Dimensionality Reduction/8. Introduction to Variance Inflation Filtering.srt 2.4 kB
  • 2. Python for Data Analysis/3. Operations on Tuples.srt 2.3 kB
  • 22. Optimizing Agricultural Production/10. Summarizing the Key-Points.srt 2.3 kB
  • 18. Time Series Forecasting/35. Implementing ARIMA Model.srt 2.3 kB
  • 18. Time Series Forecasting/41. Understanding SARIMAX Model.srt 2.3 kB
  • 2. Python for Data Analysis/12. Introduction to Stacks and Queues.srt 2.3 kB
  • 4. Python for Data Science/22. Lambda, Map, and Apply Functions.srt 2.3 kB
  • 8. Data Processing/3. Feature Mapping for Ordinal Variables.srt 2.3 kB
  • 21. Determining Whether a Person should be Granted Loan/3. Understanding the Dataset.srt 2.3 kB
  • 3. Python Functions Deep Dive/3. Positional Arguments.srt 2.3 kB
  • 17. Recommendation Engines/1. Introduction to Recommender systems.srt 2.2 kB
  • 8. Data Processing/6. Mean and Frequency Encoding.srt 2.2 kB
  • 6. Data Visualizations/27. Interactive Multivariate Analysis.srt 2.2 kB
  • 14. Imbalanced Machine Learning/15. Comparing the Results.srt 2.2 kB
  • 22. Optimizing Agricultural Production/9. Real Time Predictions.srt 2.2 kB
  • 5. Data Cleaning/19. Introduction to Stack, and Unstack Functions.srt 2.1 kB
  • 7. Feature Engineering/12. Counting Adjectives, Adverb, and Pronouns.srt 2.1 kB
  • 13. Boosting Models/5. Getting High level intuition for XGBoost.srt 2.1 kB
  • 11. Introduction to KNN, SVM, Naive Bayes/5. Implementing KNN using Sklearn.srt 2.1 kB
  • 18. Time Series Forecasting/29. Moving Average Model.srt 2.0 kB
  • 18. Time Series Forecasting/52. Mean Absolute Percentage Error.srt 2.0 kB
  • 18. Time Series Forecasting/53. Root Mean Squared Error.srt 2.0 kB
  • 6. Data Visualizations/21. Animation with Choropleth Maps.srt 2.0 kB
  • 18. Time Series Forecasting/19. Introduction to Auto Regressive Models.srt 2.0 kB
  • 18. Time Series Forecasting/1. What is a Time Series Data.srt 2.0 kB
  • 6. Data Visualizations/13. 3D Charts.srt 2.0 kB
  • 6. Data Visualizations/14. Waffle Charts.srt 2.0 kB
  • 4. Python for Data Science/1. Introduction to datetime.srt 1.9 kB
  • 22. Optimizing Agricultural Production/3. Understanding the Problem Statement.srt 1.9 kB
  • 18. Time Series Forecasting/46. Choosing the Right Model for Larger Datasets.srt 1.9 kB
  • 18. Time Series Forecasting/30. Moving Average Model Implementation.srt 1.9 kB
  • 6. Data Visualizations/35. Tree Maps.srt 1.8 kB
  • 18. Time Series Forecasting/44. How to Choose the Right Model.srt 1.8 kB
  • 6. Data Visualizations/19. Animation with Facets.srt 1.8 kB
  • 6. Data Visualizations/34. Ternary Charts.srt 1.8 kB
  • 7. Feature Engineering/7. Introduction to Feature Engineering on Text Data.srt 1.8 kB
  • 18. Time Series Forecasting/49. Why do we Evaluate Performance.srt 1.8 kB
  • 6. Data Visualizations/31. Parallel Co-ordinate Charts.srt 1.7 kB
  • 6. Data Visualizations/20. Animation with Scatter Maps.srt 1.6 kB
  • 19. Employee Promotion Prediction/17. Major Takeaways from the Project.srt 1.6 kB
  • 4. Python for Data Science/3. The datetime class.srt 1.5 kB
  • 4. Python for Data Science/4. The timedelta class.srt 1.2 kB
  • 1. Python Fundamentals/11. Quiz on Operators.html 147 Bytes
  • 1. Python Fundamentals/16. Quiz on Strings.html 147 Bytes
  • 1. Python Fundamentals/21. Quiz on Loops and Conditionals.html 147 Bytes
  • 1. Python Fundamentals/6. Quiz on Variables and Data Types.html 147 Bytes
  • 10. Logistic Regression/11. Quiz on Modelling with Logistic Regression.html 147 Bytes
  • 11. Introduction to KNN, SVM, Naive Bayes/9. Quiz on Other classification models.html 147 Bytes
  • 12. Tree Based Models/9. Quiz on Tree based models.html 147 Bytes
  • 13. Boosting Models/8. Quiz on Boosting Models.html 147 Bytes
  • 14. Imbalanced Machine Learning/16. Quiz on Handling Imbalanced Datasets.html 147 Bytes
  • 14. Imbalanced Machine Learning/7. Quiz on Introduction to Imbalanced Machine Learning.html 147 Bytes
  • 15. Introduction to Clustering Analysis/11. Quiz on K Means Clustering.html 147 Bytes
  • 15. Introduction to Clustering Analysis/17. Quiz on Advanced Clustering Techniques.html 147 Bytes
  • 15. Introduction to Clustering Analysis/4. Quiz on Introduction to Clustering.html 147 Bytes
  • 16. Dimensionality Reduction/10. Quiz on Variance Filtering.html 147 Bytes
  • 16. Dimensionality Reduction/15. Quiz on Feature Selection.html 147 Bytes
  • 16. Dimensionality Reduction/23. Quiz on Machine Learning.html 147 Bytes
  • 16. Dimensionality Reduction/4. Quiz on Introduction.html 147 Bytes
  • 16. Dimensionality Reduction/7. Quiz on Correlation Filtering.html 147 Bytes
  • 17. Recommendation Engines/10. Quiz on Content Based Filtering.html 147 Bytes
  • 17. Recommendation Engines/17. Quiz on Collaborative Based Filtering.html 147 Bytes
  • 17. Recommendation Engines/23. Quiz on Singular Value Decomposition.html 147 Bytes
  • 18. Time Series Forecasting/12. Quiz on Time Series Analysis.html 147 Bytes
  • 18. Time Series Forecasting/18. Quiz on Smoothing Techniques.html 147 Bytes
  • 18. Time Series Forecasting/31. Quiz on AR Models.html 147 Bytes
  • 18. Time Series Forecasting/38. Quiz on Advanced AR Models.html 147 Bytes
  • 18. Time Series Forecasting/43. Quiz on ARIMAX and SARIMAX Models.html 147 Bytes
  • 18. Time Series Forecasting/48. Quiz on Choosing the Right Model.html 147 Bytes
  • 18. Time Series Forecasting/54. Quiz on Why do we Evaluate Performance.html 147 Bytes
  • 18. Time Series Forecasting/6. Quiz on Introduction to Time Series.html 147 Bytes
  • 19. Employee Promotion Prediction/18. Quiz on Employee Promotion Prediction.html 147 Bytes
  • 2. Python for Data Analysis/10. Quiz on Sets and Dictionaries.html 147 Bytes
  • 2. Python for Data Analysis/15. Quiz on Stacks and Queues.html 147 Bytes
  • 2. Python for Data Analysis/23. Quiz on Searching, Sorting, and Time Complexity.html 147 Bytes
  • 2. Python for Data Analysis/4. Quiz on Lists and Tuples.html 147 Bytes
  • 20. Predicting Health Expense of Customers/15. Quiz on Predicting Health Expense of Customers.html 147 Bytes
  • 21. Determining Whether a Person should be Granted Loan/13. Quiz on Determining Whether a Person should be Granted Loan.html 147 Bytes
  • 22. Optimizing Agricultural Production/11. Quiz on Optimizing Agricultural Production.html 147 Bytes
  • 3. Python Functions Deep Dive/11. Quiz on Anonymous Functions.html 147 Bytes
  • 3. Python Functions Deep Dive/15. Quiz on In Built Functions.html 147 Bytes
  • 3. Python Functions Deep Dive/19. Quiz on Recursions.html 147 Bytes
  • 3. Python Functions Deep Dive/25. Quiz on Classes and Objects.html 147 Bytes
  • 3. Python Functions Deep Dive/6. Quiz on Introduction to Functions.html 147 Bytes
  • 4. Python for Data Science/11. Quiz on Regular Expressions.html 147 Bytes
  • 4. Python for Data Science/16. Quiz on Introduction to Numpy.html 147 Bytes
  • 4. Python for Data Science/23. Quiz on Introduction to Pandas.html 147 Bytes
  • 4. Python for Data Science/5. Quiz on Dates and Times.html 147 Bytes
  • 5. Data Cleaning/14. Quiz on Outliers Treatment.html 147 Bytes
  • 5. Data Cleaning/7. Quiz on Missing Values Imputation.html 147 Bytes
  • 6. Data Visualizations/16. Quiz on Advanced Visualizations.html 147 Bytes
  • 6. Data Visualizations/22. Quiz on Animated Visualizations.html 147 Bytes
  • 6. Data Visualizations/28. Quiz on Interactive Visualizations.html 147 Bytes
  • 6. Data Visualizations/37. Quiz on Miscellaneous Charts.html 147 Bytes
  • 6. Data Visualizations/4. Quiz on Basics of Visualization.html 147 Bytes
  • 7. Feature Engineering/18. Quiz on Feature Engineering Functions.html 147 Bytes
  • 7. Feature Engineering/25. Quiz on Feature Engineering on Real World Datasets.html 147 Bytes
  • 8. Data Processing/12. Quiz on Data Transformation.html 147 Bytes
  • 8. Data Processing/15. Quiz on Data Splitting and Feature Scaling.html 147 Bytes
  • 8. Data Processing/7. Quiz on Dealing with Categorical data.html 147 Bytes
  • 9. Linear Regression/11. Quiz on Modelling with Linear Regression.html 147 Bytes
  • 0. Websites you may like/[FCS Forum].url 133 Bytes
  • 0. Websites you may like/[FreeCourseSite.com].url 127 Bytes
  • 0. Websites you may like/[CourseClub.ME].url 122 Bytes
  • 0. Websites you may like/[GigaCourse.Com].url 49 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!