本站已收录 番号和无损神作磁力链接/BT种子 

[GigaCourse.Com] Udemy - Complete Machine Learning & Data Science Bootcamp 2021

种子简介

种子名称: [GigaCourse.Com] Udemy - Complete Machine Learning & Data Science Bootcamp 2021
文件类型: 视频
文件数目: 320个文件
文件大小: 19.22 GB
收录时间: 2022-7-17 12:39
已经下载: 3
资源热度: 129
最近下载: 2024-11-13 16:34

下载BT种子文件

下载Torrent文件(.torrent) 立即下载

磁力链接下载

magnet:?xt=urn:btih:1f1179f19ac62dfb2e705072794433cc2c3df569&dn=[GigaCourse.Com] Udemy - Complete Machine Learning & Data Science Bootcamp 2021 复制链接到迅雷、QQ旋风进行下载,或者使用百度云离线下载。

喜欢这个种子的人也喜欢

种子包含的文件

[GigaCourse.Com] Udemy - Complete Machine Learning & Data Science Bootcamp 2021.torrent
  • 1. Introduction/1. Course Outline.mp477.27MB
  • 1. Introduction/4. Your First Day.mp427.92MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/1. Section Overview.mp410.2MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/10. Finding Patterns 3.mp4137.86MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/11. Preparing Our Data For Machine Learning.mp472.6MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/12. Choosing The Right Models.mp496.43MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/13. Experimenting With Machine Learning Models.mp455.35MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/14. TuningImproving Our Model.mp4102.79MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/15. Tuning Hyperparameters.mp4108.01MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/16. Tuning Hyperparameters 2.mp4104.13MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/17. Tuning Hyperparameters 3.mp463.02MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/19. Evaluating Our Model.mp471.61MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/2. Project Overview.mp434.45MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/20. Evaluating Our Model 2.mp441.54MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/21. Evaluating Our Model 3.mp464.84MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/22. Finding The Most Important Features.mp4127.5MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/23. Reviewing The Project.mp486.15MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/3. Project Environment Setup.mp4100.77MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/4. Optional Windows Project Environment Setup.mp435.84MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/5. Step 1~4 Framework Setup.mp4105.5MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/6. Getting Our Tools Ready.mp479.37MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/7. Exploring Our Data.mp466.89MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/8. Finding Patterns.mp463.35MB
  • 11. Milestone Project 1 Supervised Learning (Classification)/9. Finding Patterns 2.mp499.92MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/1. Section Overview.mp48.96MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/10. Filling Missing Numerical Values.mp4106.34MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/11. Filling Missing Categorical Values.mp466.92MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/12. Fitting A Machine Learning Model.mp455.52MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/13. Splitting Data.mp482.69MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/15. Custom Evaluation Function.mp4103.35MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/16. Reducing Data.mp493.47MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/17. RandomizedSearchCV.mp485.84MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/18. Improving Hyperparameters.mp479.3MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/19. Preproccessing Our Data.mp4139.3MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/2. Project Overview.mp432.95MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/20. Making Predictions.mp479.21MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/21. Feature Importance.mp4142.31MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/3. Project Environment Setup.mp4101.27MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/4. Step 1~4 Framework Setup.mp485.7MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/6. Exploring Our Data.mp4137.82MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/7. Exploring Our Data 2.mp452.05MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/8. Feature Engineering.mp4159.15MB
  • 12. Milestone Project 2 Supervised Learning (Time Series Data)/9. Turning Data Into Numbers.mp4146.18MB
  • 13. Data Engineering/1. Data Engineering Introduction.mp413.5MB
  • 13. Data Engineering/11. Hadoop, HDFS and MapReduce.mp410.1MB
  • 13. Data Engineering/12. Apache Spark and Apache Flink.mp45.76MB
  • 13. Data Engineering/13. Kafka and Stream Processing.mp419.25MB
  • 13. Data Engineering/2. What Is Data.mp442.23MB
  • 13. Data Engineering/3. What Is A Data Engineer.mp415.16MB
  • 13. Data Engineering/4. What Is A Data Engineer 2.mp424.23MB
  • 13. Data Engineering/5. What Is A Data Engineer 3.mp424.3MB
  • 13. Data Engineering/6. What Is A Data Engineer 4.mp414.93MB
  • 13. Data Engineering/7. Types Of Databases.mp432.56MB
  • 13. Data Engineering/9. Optional OLTP Databases.mp479.69MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/1. Section Overview.mp412.2MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/10. Optional TensorFlow 2.0 Default Issue.mp428.11MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/11. Using A GPU.mp480.6MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/12. Optional GPU and Google Colab.mp445.89MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/13. Optional Reloading Colab Notebook.mp488.66MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/14. Loading Our Data Labels.mp4114.83MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/15. Preparing The Images.mp4133.9MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/16. Turning Data Labels Into Numbers.mp4107.47MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/17. Creating Our Own Validation Set.mp466.45MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/18. Preprocess Images.mp490.11MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/19. Preprocess Images 2.mp4105.08MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/2. Deep Learning and Unstructured Data.mp4102.04MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/20. Turning Data Into Batches.mp487.78MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/21. Turning Data Into Batches 2.mp4149.39MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/22. Visualizing Our Data.mp4122MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/23. Preparing Our Inputs and Outputs.mp450.08MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/25. Building A Deep Learning Model.mp4121.86MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/26. Building A Deep Learning Model 2.mp4105.91MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/27. Building A Deep Learning Model 3.mp4105.93MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/28. Building A Deep Learning Model 4.mp486.31MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/29. Summarizing Our Model.mp445.45MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/30. Evaluating Our Model.mp479.3MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/31. Preventing Overfitting.mp436.52MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/32. Training Your Deep Neural Network.mp4166.61MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/33. Evaluating Performance With TensorBoard.mp474.19MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/34. Make And Transform Predictions.mp4154.99MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/35. Transform Predictions To Text.mp4129.87MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/36. Visualizing Model Predictions.mp4119.31MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/37. Visualizing And Evaluate Model Predictions 2.mp4143.79MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/38. Visualizing And Evaluate Model Predictions 3.mp4113.22MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/39. Saving And Loading A Trained Model.mp4126.99MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/4. Setting Up Google Colab.mp474.25MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/40. Training Model On Full Dataset.mp4139.83MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/41. Making Predictions On Test Images.mp4140.84MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/42. Submitting Model to Kaggle.mp4121.34MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/43. Making Predictions On Our Images.mp4119.24MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/5. Google Colab Workspace.mp439.64MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/6. Uploading Project Data.mp451.98MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/7. Setting Up Our Data.mp442.26MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/8. Setting Up Our Data 2.mp420.87MB
  • 14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/9. Importing TensorFlow 2.mp4116.77MB
  • 15. Storytelling + Communication How To Present Your Work/1. Section Overview.mp410.92MB
  • 15. Storytelling + Communication How To Present Your Work/2. Communicating Your Work.mp420.2MB
  • 15. Storytelling + Communication How To Present Your Work/3. Communicating With Managers.mp418.39MB
  • 15. Storytelling + Communication How To Present Your Work/4. Communicating With Co-Workers.mp418.99MB
  • 15. Storytelling + Communication How To Present Your Work/5. Weekend Project Principle.mp423.59MB
  • 15. Storytelling + Communication How To Present Your Work/6. Communicating With Outside World.mp414.53MB
  • 15. Storytelling + Communication How To Present Your Work/7. Storytelling.mp412.02MB
  • 16. Career Advice + Extra Bits/10. CWD Git + Github 2.mp4118.36MB
  • 16. Career Advice + Extra Bits/11. Contributing To Open Source.mp4130.26MB
  • 16. Career Advice + Extra Bits/12. Contributing To Open Source 2.mp4113.05MB
  • 16. Career Advice + Extra Bits/3. What If I Don't Have Enough Experience.mp4160.95MB
  • 16. Career Advice + Extra Bits/6. JTS Learn to Learn.mp411.15MB
  • 16. Career Advice + Extra Bits/7. JTS Start With Why.mp415.44MB
  • 16. Career Advice + Extra Bits/9. CWD Git + Github.mp4176.12MB
  • 17. Learn Python/1. What Is A Programming Language.mp4104.78MB
  • 17. Learn Python/11. Numbers.mp472.72MB
  • 17. Learn Python/12. Math Functions.mp441.82MB
  • 17. Learn Python/13. DEVELOPER FUNDAMENTALS I.mp459.71MB
  • 17. Learn Python/14. Operator Precedence.mp414.42MB
  • 17. Learn Python/16. Optional bin() and complex.mp421.91MB
  • 17. Learn Python/17. Variables.mp493.56MB
  • 17. Learn Python/18. Expressions vs Statements.mp410.98MB
  • 17. Learn Python/19. Augmented Assignment Operator.mp415.32MB
  • 17. Learn Python/2. Python Interpreter.mp478.02MB
  • 17. Learn Python/20. Strings.mp430.99MB
  • 17. Learn Python/21. String Concatenation.mp47.34MB
  • 17. Learn Python/22. Type Conversion.mp419MB
  • 17. Learn Python/23. Escape Sequences.mp423.16MB
  • 17. Learn Python/24. Formatted Strings.mp449.26MB
  • 17. Learn Python/25. String Indexes.mp449.16MB
  • 17. Learn Python/26. Immutability.mp420.81MB
  • 17. Learn Python/27. Built-In Functions + Methods.mp469.4MB
  • 17. Learn Python/28. Booleans.mp416.56MB
  • 17. Learn Python/29. Exercise Type Conversion.mp450.34MB
  • 17. Learn Python/3. How To Run Python Code.mp452.86MB
  • 17. Learn Python/30. DEVELOPER FUNDAMENTALS II.mp429.26MB
  • 17. Learn Python/31. Exercise Password Checker.mp451.09MB
  • 17. Learn Python/32. Lists.mp421.97MB
  • 17. Learn Python/33. List Slicing.mp449.87MB
  • 17. Learn Python/34. Matrix.mp419.16MB
  • 17. Learn Python/35. List Methods.mp461.76MB
  • 17. Learn Python/36. List Methods 2.mp427.41MB
  • 17. Learn Python/37. List Methods 3.mp427.67MB
  • 17. Learn Python/38. Common List Patterns.mp440.47MB
  • 17. Learn Python/39. List Unpacking.mp413.87MB
  • 17. Learn Python/4. Our First Python Program.mp447.21MB
  • 17. Learn Python/40. None.mp47.93MB
  • 17. Learn Python/41. Dictionaries.mp432.71MB
  • 17. Learn Python/42. DEVELOPER FUNDAMENTALS III.mp426.64MB
  • 17. Learn Python/43. Dictionary Keys.mp420.37MB
  • 17. Learn Python/44. Dictionary Methods.mp427.17MB
  • 17. Learn Python/45. Dictionary Methods 2.mp442.39MB
  • 17. Learn Python/46. Tuples.mp425.66MB
  • 17. Learn Python/47. Tuples 2.mp417MB
  • 17. Learn Python/48. Sets.mp436.99MB
  • 17. Learn Python/49. Sets 2.mp464.27MB
  • 17. Learn Python/5. Latest Version Of Python.mp410.71MB
  • 17. Learn Python/6. Python 2 vs Python 3.mp469.49MB
  • 17. Learn Python/7. Exercise How Does Python Work.mp425.96MB
  • 17. Learn Python/8. Learning Python.mp438.53MB
  • 17. Learn Python/9. Python Data Types.mp428.86MB
  • 18. Learn Python Part 2/1. Breaking The Flow.mp420.34MB
  • 18. Learn Python Part 2/10. For Loops.mp434.31MB
  • 18. Learn Python Part 2/11. Iterables.mp443.2MB
  • 18. Learn Python Part 2/12. Exercise Tricky Counter.mp416.39MB
  • 18. Learn Python Part 2/13. range().mp428.32MB
  • 18. Learn Python Part 2/14. enumerate().mp424.81MB
  • 18. Learn Python Part 2/15. While Loops.mp428.33MB
  • 18. Learn Python Part 2/16. While Loops 2.mp425.94MB
  • 18. Learn Python Part 2/17. break, continue, pass.mp422.22MB
  • 18. Learn Python Part 2/18. Our First GUI.mp449.64MB
  • 18. Learn Python Part 2/19. DEVELOPER FUNDAMENTALS IV.mp450.23MB
  • 18. Learn Python Part 2/2. Conditional Logic.mp474.59MB
  • 18. Learn Python Part 2/20. Exercise Find Duplicates.mp420.25MB
  • 18. Learn Python Part 2/21. Functions.mp448.6MB
  • 18. Learn Python Part 2/22. Parameters and Arguments.mp423.15MB
  • 18. Learn Python Part 2/23. Default Parameters and Keyword Arguments.mp438.14MB
  • 18. Learn Python Part 2/24. return.mp463.05MB
  • 18. Learn Python Part 2/26. Methods vs Functions.mp430.69MB
  • 18. Learn Python Part 2/27. Docstrings.mp417.34MB
  • 18. Learn Python Part 2/28. Clean Code.mp419.66MB
  • 18. Learn Python Part 2/29. args and kwargs.mp443.02MB
  • 18. Learn Python Part 2/3. Indentation In Python.mp428.03MB
  • 18. Learn Python Part 2/30. Exercise Functions.mp421.86MB
  • 18. Learn Python Part 2/31. Scope.mp420.15MB
  • 18. Learn Python Part 2/32. Scope Rules.mp437.68MB
  • 18. Learn Python Part 2/33. global Keyword.mp436.5MB
  • 18. Learn Python Part 2/34. nonlocal Keyword.mp418.26MB
  • 18. Learn Python Part 2/35. Why Do We Need Scope.mp419.18MB
  • 18. Learn Python Part 2/36. Pure Functions.mp467.37MB
  • 18. Learn Python Part 2/37. map().mp438.38MB
  • 18. Learn Python Part 2/38. filter().mp423.55MB
  • 18. Learn Python Part 2/39. zip().mp421.28MB
  • 18. Learn Python Part 2/4. Truthy vs Falsey.mp442.83MB
  • 18. Learn Python Part 2/40. reduce().mp452.28MB
  • 18. Learn Python Part 2/41. List Comprehensions.mp453.35MB
  • 18. Learn Python Part 2/42. Set Comprehensions.mp435.37MB
  • 18. Learn Python Part 2/43. Exercise Comprehensions.mp421.97MB
  • 18. Learn Python Part 2/45. Modules in Python.mp482.19MB
  • 18. Learn Python Part 2/47. Optional PyCharm.mp453.06MB
  • 18. Learn Python Part 2/48. Packages in Python.mp472.43MB
  • 18. Learn Python Part 2/49. Different Ways To Import.mp447.96MB
  • 18. Learn Python Part 2/5. Ternary Operator.mp419.7MB
  • 18. Learn Python Part 2/6. Short Circuiting.mp419.4MB
  • 18. Learn Python Part 2/7. Logical Operators.mp428.34MB
  • 18. Learn Python Part 2/8. Exercise Logical Operators.mp446.62MB
  • 18. Learn Python Part 2/9. is vs ==.mp433.58MB
  • 2. Machine Learning 101/1. What Is Machine Learning.mp428.33MB
  • 2. Machine Learning 101/2. AIMachine LearningData Science.mp419.68MB
  • 2. Machine Learning 101/3. Exercise Machine Learning Playground.mp442.6MB
  • 2. Machine Learning 101/4. How Did We Get Here.mp430.51MB
  • 2. Machine Learning 101/5. Exercise YouTube Recommendation Engine.mp419.43MB
  • 2. Machine Learning 101/6. Types of Machine Learning.mp422.76MB
  • 2. Machine Learning 101/8. What Is Machine Learning Round 2.mp425.52MB
  • 2. Machine Learning 101/9. Section Review.mp45.56MB
  • 20. Where To Go From Here/2. Thank You.mp411.12MB
  • 3. Machine Learning and Data Science Framework/1. Section Overview.mp413.36MB
  • 3. Machine Learning and Data Science Framework/10. Modelling - Tuning.mp415.98MB
  • 3. Machine Learning and Data Science Framework/11. Modelling - Comparison.mp444.88MB
  • 3. Machine Learning and Data Science Framework/13. Experimentation.mp421.33MB
  • 3. Machine Learning and Data Science Framework/14. Tools We Will Use.mp427.34MB
  • 3. Machine Learning and Data Science Framework/2. Introducing Our Framework.mp411.39MB
  • 3. Machine Learning and Data Science Framework/3. 6 Step Machine Learning Framework.mp423.46MB
  • 3. Machine Learning and Data Science Framework/4. Types of Machine Learning Problems.mp460.51MB
  • 3. Machine Learning and Data Science Framework/5. Types of Data.mp429.33MB
  • 3. Machine Learning and Data Science Framework/6. Types of Evaluation.mp417.75MB
  • 3. Machine Learning and Data Science Framework/7. Features In Data.mp436.79MB
  • 3. Machine Learning and Data Science Framework/8. Modelling - Splitting Data.mp427.52MB
  • 3. Machine Learning and Data Science Framework/9. Modelling - Picking the Model.mp423.24MB
  • 4. The 2 Paths/1. The 2 Paths.mp49.76MB
  • 5. Data Science Environment Setup/1. Section Overview.mp46.03MB
  • 5. Data Science Environment Setup/11. Jupyter Notebook Walkthrough.mp467.36MB
  • 5. Data Science Environment Setup/12. Jupyter Notebook Walkthrough 2.mp4103.91MB
  • 5. Data Science Environment Setup/13. Jupyter Notebook Walkthrough 3.mp471.43MB
  • 5. Data Science Environment Setup/2. Introducing Our Tools.mp419.29MB
  • 5. Data Science Environment Setup/3. What is Conda.mp412.49MB
  • 5. Data Science Environment Setup/4. Conda Environments.mp430.56MB
  • 5. Data Science Environment Setup/5. Mac Environment Setup.mp4144.4MB
  • 5. Data Science Environment Setup/6. Mac Environment Setup 2.mp4125.46MB
  • 5. Data Science Environment Setup/7. Windows Environment Setup.mp447.92MB
  • 5. Data Science Environment Setup/8. Windows Environment Setup 2.mp4227.61MB
  • 6. Pandas Data Analysis/1. Section Overview.mp410.88MB
  • 6. Pandas Data Analysis/10. Manipulating Data 2.mp486.54MB
  • 6. Pandas Data Analysis/11. Manipulating Data 3.mp491.03MB
  • 6. Pandas Data Analysis/13. How To Download The Course Assignments.mp466.79MB
  • 6. Pandas Data Analysis/3. Pandas Introduction.mp427.45MB
  • 6. Pandas Data Analysis/4. Series, Data Frames and CSVs.mp495.37MB
  • 6. Pandas Data Analysis/6. Describing Data with Pandas.mp475.57MB
  • 6. Pandas Data Analysis/7. Selecting and Viewing Data with Pandas.mp472.35MB
  • 6. Pandas Data Analysis/8. Selecting and Viewing Data with Pandas Part 2.mp4106.51MB
  • 6. Pandas Data Analysis/9. Manipulating Data.mp4105MB
  • 7. NumPy/1. Section Overview.mp413.33MB
  • 7. NumPy/10. Standard Deviation and Variance.mp451.17MB
  • 7. NumPy/11. Reshape and Transpose.mp453.53MB
  • 7. NumPy/12. Dot Product vs Element Wise.mp483.94MB
  • 7. NumPy/13. Exercise Nut Butter Store Sales.mp491.33MB
  • 7. NumPy/14. Comparison Operators.mp426.38MB
  • 7. NumPy/15. Sorting Arrays.mp432.83MB
  • 7. NumPy/16. Turn Images Into NumPy Arrays.mp485.92MB
  • 7. NumPy/2. NumPy Introduction.mp426.85MB
  • 7. NumPy/4. NumPy DataTypes and Attributes.mp479MB
  • 7. NumPy/5. Creating NumPy Arrays.mp466.77MB
  • 7. NumPy/6. NumPy Random Seed.mp451.92MB
  • 7. NumPy/7. Viewing Arrays and Matrices.mp470.64MB
  • 7. NumPy/8. Manipulating Arrays.mp480.66MB
  • 7. NumPy/9. Manipulating Arrays 2.mp467.9MB
  • 8. Matplotlib Plotting and Data Visualization/1. Section Overview.mp48.61MB
  • 8. Matplotlib Plotting and Data Visualization/11. Plotting From Pandas DataFrames 2.mp498.8MB
  • 8. Matplotlib Plotting and Data Visualization/12. Plotting from Pandas DataFrames 3.mp474.72MB
  • 8. Matplotlib Plotting and Data Visualization/13. Plotting from Pandas DataFrames 4.mp449MB
  • 8. Matplotlib Plotting and Data Visualization/14. Plotting from Pandas DataFrames 5.mp456.97MB
  • 8. Matplotlib Plotting and Data Visualization/15. Plotting from Pandas DataFrames 6.mp482.05MB
  • 8. Matplotlib Plotting and Data Visualization/16. Plotting from Pandas DataFrames 7.mp4119.75MB
  • 8. Matplotlib Plotting and Data Visualization/17. Customizing Your Plots.mp492.22MB
  • 8. Matplotlib Plotting and Data Visualization/18. Customizing Your Plots 2.mp4123.61MB
  • 8. Matplotlib Plotting and Data Visualization/19. Saving And Sharing Your Plots.mp449.52MB
  • 8. Matplotlib Plotting and Data Visualization/2. Matplotlib Introduction.mp431.52MB
  • 8. Matplotlib Plotting and Data Visualization/3. Importing And Using Matplotlib.mp486.46MB
  • 8. Matplotlib Plotting and Data Visualization/4. Anatomy Of A Matplotlib Figure.mp482.15MB
  • 8. Matplotlib Plotting and Data Visualization/5. Scatter Plot And Bar Plot.mp467.04MB
  • 8. Matplotlib Plotting and Data Visualization/6. Histograms And Subplots.mp469.76MB
  • 8. Matplotlib Plotting and Data Visualization/7. Subplots Option 2.mp438.09MB
  • 8. Matplotlib Plotting and Data Visualization/8. Quick Tip Data Visualizations.mp412.26MB
  • 8. Matplotlib Plotting and Data Visualization/9. Plotting From Pandas DataFrames.mp460.35MB
  • 9. Scikit-learn Creating Machine Learning Models/1. Section Overview.mp412.46MB
  • 9. Scikit-learn Creating Machine Learning Models/10. Quick Tip Clean, Transform, Reduce.mp416.54MB
  • 9. Scikit-learn Creating Machine Learning Models/11. Getting Your Data Ready Convert Data To Numbers.mp4135.03MB
  • 9. Scikit-learn Creating Machine Learning Models/12. Getting Your Data Ready Handling Missing Values With Pandas.mp4104.84MB
  • 9. Scikit-learn Creating Machine Learning Models/15. Getting Your Data Ready Handling Missing Values With Scikit-learn.mp4136.9MB
  • 9. Scikit-learn Creating Machine Learning Models/16. Choosing The Right Model For Your Data.mp4143.26MB
  • 9. Scikit-learn Creating Machine Learning Models/17. Choosing The Right Model For Your Data 2 (Regression).mp486.92MB
  • 9. Scikit-learn Creating Machine Learning Models/19. Quick Tip How ML Algorithms Work.mp411.06MB
  • 9. Scikit-learn Creating Machine Learning Models/2. Scikit-learn Introduction.mp440.64MB
  • 9. Scikit-learn Creating Machine Learning Models/20. Choosing The Right Model For Your Data 3 (Classification).mp4118.84MB
  • 9. Scikit-learn Creating Machine Learning Models/21. Fitting A Model To The Data.mp456.57MB
  • 9. Scikit-learn Creating Machine Learning Models/22. Making Predictions With Our Model.mp466.51MB
  • 9. Scikit-learn Creating Machine Learning Models/23. predict() vs predict_proba().mp454.33MB
  • 9. Scikit-learn Creating Machine Learning Models/24. Making Predictions With Our Model (Regression).mp444.92MB
  • 9. Scikit-learn Creating Machine Learning Models/25. Evaluating A Machine Learning Model (Score).mp487.14MB
  • 9. Scikit-learn Creating Machine Learning Models/26. Evaluating A Machine Learning Model 2 (Cross Validation).mp495.98MB
  • 9. Scikit-learn Creating Machine Learning Models/27. Evaluating A Classification Model 1 (Accuracy).mp431.42MB
  • 9. Scikit-learn Creating Machine Learning Models/28. Evaluating A Classification Model 2 (ROC Curve).mp466.04MB
  • 9. Scikit-learn Creating Machine Learning Models/29. Evaluating A Classification Model 3 (ROC Curve).mp450.62MB
  • 9. Scikit-learn Creating Machine Learning Models/31. Evaluating A Classification Model 4 (Confusion Matrix).mp477.73MB
  • 9. Scikit-learn Creating Machine Learning Models/32. Evaluating A Classification Model 5 (Confusion Matrix).mp463.78MB
  • 9. Scikit-learn Creating Machine Learning Models/33. Evaluating A Classification Model 6 (Classification Report).mp487.25MB
  • 9. Scikit-learn Creating Machine Learning Models/34. Evaluating A Regression Model 1 (R2 Score).mp470.4MB
  • 9. Scikit-learn Creating Machine Learning Models/35. Evaluating A Regression Model 2 (MAE).mp428.52MB
  • 9. Scikit-learn Creating Machine Learning Models/36. Evaluating A Regression Model 3 (MSE).mp454.91MB
  • 9. Scikit-learn Creating Machine Learning Models/38. Evaluating A Model With Cross Validation and Scoring Parameter.mp491.5MB
  • 9. Scikit-learn Creating Machine Learning Models/39. Evaluating A Model With Scikit-learn Functions.mp494.83MB
  • 9. Scikit-learn Creating Machine Learning Models/4. Refresher What Is Machine Learning.mp488.28MB
  • 9. Scikit-learn Creating Machine Learning Models/40. Improving A Machine Learning Model.mp490.94MB
  • 9. Scikit-learn Creating Machine Learning Models/41. Tuning Hyperparameters.mp4175.75MB
  • 9. Scikit-learn Creating Machine Learning Models/42. Tuning Hyperparameters 2.mp4116.78MB
  • 9. Scikit-learn Creating Machine Learning Models/43. Tuning Hyperparameters 3.mp4121.79MB
  • 9. Scikit-learn Creating Machine Learning Models/45. Quick Tip Correlation Analysis.mp416.93MB
  • 9. Scikit-learn Creating Machine Learning Models/46. Saving And Loading A Model.mp452.61MB
  • 9. Scikit-learn Creating Machine Learning Models/47. Saving And Loading A Model 2.mp456.77MB
  • 9. Scikit-learn Creating Machine Learning Models/48. Putting It All Together.mp4150.57MB
  • 9. Scikit-learn Creating Machine Learning Models/49. Putting It All Together 2.mp4116.85MB
  • 9. Scikit-learn Creating Machine Learning Models/6. Scikit-learn Cheatsheet.mp475.14MB
  • 9. Scikit-learn Creating Machine Learning Models/7. Typical scikit-learn Workflow.mp4190.19MB
  • 9. Scikit-learn Creating Machine Learning Models/8. Optional Debugging Warnings In Jupyter.mp4176.14MB
  • 9. Scikit-learn Creating Machine Learning Models/9. Getting Your Data Ready Splitting Your Data.mp463.67MB