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

[Tutorialsplanet.NET] Udemy - The Data Science Course 2020 Complete Data Science Bootcamp

磁力链接/BT种子名称

[Tutorialsplanet.NET] Udemy - The Data Science Course 2020 Complete Data Science Bootcamp

磁力链接/BT种子简介

种子哈希:fd3652bbc4ffa7bfdb43f55d7f1121ac00b74670
文件大小: 15.31G
已经下载:961次
下载速度:极快
收录时间:2021-03-13
最近下载:2025-08-22

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:FD3652BBC4FFA7BFDB43F55D7F1121AC00B74670
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 她趣 TikTok成人版 PornHub 听泉鉴鲍 草榴社区 哆哔涩漫 呦乐园 萝莉岛

最近搜索

母狗 全网 女肉畜 绝品 很会 到家 とも 里塞 先生约啪 家少妇 欧欧 藤藤 大侠 大神小金 修正 最新】 五人 少妇约 死女人 美妇 华流 自己妹妹 解码 校长 巨乳美女 木 学生 自拍 顶级绿帽3p 高潮 喷水 深海

文件列表

  • 16. Statistics - Practical Example Descriptive Statistics/1. Practical Example Descriptive Statistics.mp4 168.3 MB
  • 12. Probability - Distributions/29. A Practical Example of Probability Distributions.mp4 165.5 MB
  • 11. Probability - Bayesian Inference/22. A Practical Example of Bayesian Inference.mp4 152.2 MB
  • 40. Part 6 Mathematics/16. Why is Linear Algebra Useful.mp4 151.4 MB
  • 5. The Field of Data Science - Popular Data Science Techniques/1. Techniques for Working with Traditional Data.mp4 145.0 MB
  • 10. Probability - Combinatorics/20. A Practical Example of Combinatorics.mp4 140.8 MB
  • 3/1. Applying Traditional Data, Big Data, BI, Traditional Data Science and ML.mp4 133.0 MB
  • 5. The Field of Data Science - Popular Data Science Techniques/15. Types of Machine Learning.mp4 131.2 MB
  • 56. Software Integration/5. Taking a Closer Look at APIs.mp4 121.2 MB
  • 5. The Field of Data Science - Popular Data Science Techniques/10. Techniques for Working with Traditional Methods.mp4 117.1 MB
  • 2/7. Continuing with BI, ML, and AI.mp4 114.3 MB
  • 56. Software Integration/3. What are Data Connectivity, APIs, and Endpoints.mp4 109.1 MB
  • 6. The Field of Data Science - Popular Data Science Tools/1. Necessary Programming Languages and Software Used in Data Science.mp4 108.6 MB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/4. Business Case Preprocessing.mp4 108.4 MB
  • 19. Statistics - Practical Example Inferential Statistics/1. Practical Example Inferential Statistics.mp4 107.7 MB
  • 5. The Field of Data Science - Popular Data Science Techniques/13. Machine Learning (ML) Techniques.mp4 104.2 MB
  • 13. Probability - Probability in Other Fields/1. Probability in Finance.mp4 103.9 MB
  • 35/1. Practical Example Linear Regression (Part 1).mp4 101.8 MB
  • 20. Statistics - Hypothesis Testing/1. Null vs Alternative Hypothesis.mp4 96.5 MB
  • 5. The Field of Data Science - Popular Data Science Techniques/7. Business Intelligence (BI) Techniques.mp4 94.3 MB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/1. Business Case Getting Acquainted with the Dataset.mp4 91.9 MB
  • 36. Advanced Statistical Methods - Logistic Regression/3. Logistic vs Logit Function.mp4 90.7 MB
  • 9. Part 2 Probability/1. The Basic Probability Formula.mp4 90.1 MB
  • 51. Deep Learning - Business Case Example/4. Business Case Preprocessing the Data.mp4 88.4 MB
  • 12. Probability - Distributions/15. Characteristics of Continuous Distributions.mp4 88.2 MB
  • 20. Statistics - Hypothesis Testing/4. Rejection Region and Significance Level.mp4 86.6 MB
  • 2/1. Data Science and Business Buzzwords Why are there so Many.mp4 85.4 MB
  • 4. The Field of Data Science - The Benefits of Each Discipline/1. The Reason Behind These Disciplines.mp4 85.1 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/11. Obtaining Dummies from a Single Feature.mp4 85.1 MB
  • 18/3. Confidence Intervals; Population Variance Known; Z-score.mp4 82.0 MB
  • 13. Probability - Probability in Other Fields/2. Probability in Statistics.mp4 81.0 MB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/6. Creating a Data Provider.mp4 80.1 MB
  • 9. Part 2 Probability/3. Computing Expected Values.mp4 79.4 MB
  • 5. The Field of Data Science - Popular Data Science Techniques/4. Techniques for Working with Big Data.mp4 79.2 MB
  • 22. Part 4 Introduction to Python/3. Why Python.mp4 78.7 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/16. Classifying the Various Reasons for Absence.mp4 78.2 MB
  • 38. Advanced Statistical Methods - K-Means Clustering/13. How is Clustering Useful.mp4 78.1 MB
  • 12. Probability - Distributions/1. Fundamentals of Probability Distributions.mp4 77.0 MB
  • 8. The Field of Data Science - Debunking Common Misconceptions/1. Debunking Common Misconceptions.mp4 76.4 MB
  • 15. Statistics - Descriptive Statistics/1. Types of Data.mp4 76.0 MB
  • 37. Advanced Statistical Methods - Cluster Analysis/2. Some Examples of Clusters.mp4 75.0 MB
  • 12. Probability - Distributions/3. Types of Probability Distributions.mp4 74.5 MB
  • 18/12. Confidence intervals. Two means. Dependent samples.mp4 73.9 MB
  • 21. Statistics - Practical Example Hypothesis Testing/1. Practical Example Hypothesis Testing.mp4 72.9 MB
  • 56. Software Integration/1. What are Data, Servers, Clients, Requests, and Responses.mp4 72.4 MB
  • 12. Probability - Distributions/11. Discrete Distributions The Binomial Distribution.mp4 72.2 MB
  • 2/9. A Breakdown of our Data Science Infographic.mp4 71.0 MB
  • 51. Deep Learning - Business Case Example/1. Business Case Exploring the Dataset and Identifying Predictors.mp4 69.5 MB
  • 2/5. Business Analytics, Data Analytics, and Data Science An Introduction.mp4 67.7 MB
  • 56. Software Integration/9. Software Integration - Explained.mp4 66.8 MB
  • 13. Probability - Probability in Other Fields/3. Probability in Data Science.mp4 66.6 MB
  • 17. Statistics - Inferential Statistics Fundamentals/9. Central Limit Theorem.mp4 65.9 MB
  • 54/9. MNIST Results and Testing.mp4 65.8 MB
  • 1. Part 1 Introduction/2. What Does the Course Cover.mp4 65.3 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/3. Checking the Content of the Data Set.mp4 64.9 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/7. Dropping a Column from a DataFrame in Python.mp4 64.8 MB
  • 9. Part 2 Probability/5. Frequency.mp4 64.7 MB
  • 17. Statistics - Inferential Statistics Fundamentals/2. What is a Distribution.mp4 64.6 MB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/4. Basic NN Example (Part 4).mp4 64.1 MB
  • 56. Software Integration/7. Communication between Software Products through Text Files.mp4 63.3 MB
  • 45/3. Digging into a Deep Net.mp4 62.3 MB
  • 61. Case Study - Analyzing the Predicted Outputs in Tableau/4. Analyzing Reasons vs Probability in Tableau.mp4 62.2 MB
  • 9. Part 2 Probability/7. Events and Their Complements.mp4 62.0 MB
  • 52. Deep Learning - Conclusion/4. An overview of CNNs.mp4 61.7 MB
  • 22. Part 4 Introduction to Python/1. Introduction to Programming.mp4 61.4 MB
  • 14. Part 3 Statistics/1. Population and Sample.mp4 60.9 MB
  • 35/8. Practical Example Linear Regression (Part 5).mp4 60.7 MB
  • 32/1. The Linear Regression Model.mp4 60.2 MB
  • 10. Probability - Combinatorics/11. Solving Combinations.mp4 60.1 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/26. Analyzing the Dates from the Initial Data Set.mp4 60.1 MB
  • 11. Probability - Bayesian Inference/7. Union of Sets.mp4 60.0 MB
  • 18/5. Confidence Interval Clarifications.mp4 59.8 MB
  • 61. Case Study - Analyzing the Predicted Outputs in Tableau/2. Analyzing Age vs Probability in Tableau.mp4 59.3 MB
  • 54/4. MNIST Model Outline.mp4 59.1 MB
  • 38. Advanced Statistical Methods - K-Means Clustering/12. Market Segmentation with Cluster Analysis (Part 2).mp4 58.8 MB
  • 35/6. Practical Example Linear Regression (Part 4).mp4 58.8 MB
  • 20. Statistics - Hypothesis Testing/10. p-value.mp4 58.6 MB
  • 12. Probability - Distributions/13. Discrete Distributions The Poisson Distribution.mp4 58.5 MB
  • 33/18. Dealing with Categorical Data - Dummy Variables.mp4 58.4 MB
  • 42. Deep Learning - Introduction to Neural Networks/21. Optimization Algorithm 1-Parameter Gradient Descent.mp4 58.3 MB
  • 62. Appendix - Additional Python Tools/5. List Comprehensions.mp4 58.2 MB
  • 33/3. Adjusted R-Squared.mp4 57.5 MB
  • 15. Statistics - Descriptive Statistics/3. Levels of Measurement.mp4 57.0 MB
  • 7. The Field of Data Science - Careers in Data Science/1. Finding the Job - What to Expect and What to Look for.mp4 57.0 MB
  • 60. Case Study - Loading the 'absenteeism_module'/3. Deploying the 'absenteeism_module' - Part II.mp4 56.9 MB
  • 20. Statistics - Hypothesis Testing/8. Test for the Mean. Population Variance Known.mp4 56.9 MB
  • 2/3. What is the difference between Analysis and Analytics.mp4 56.2 MB
  • 11. Probability - Bayesian Inference/1. Sets and Events.mp4 56.1 MB
  • 37. Advanced Statistical Methods - Cluster Analysis/1. Introduction to Cluster Analysis.mp4 56.0 MB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/7. Business Case Model Outline.mp4 55.7 MB
  • 59/5. Splitting the Data for Training and Testing.mp4 55.3 MB
  • 59/8. Interpreting the Coefficients for Our Problem.mp4 54.9 MB
  • 57. Case Study - What's Next in the Course/1. Game Plan for this Python, SQL, and Tableau Business Exercise.mp4 54.8 MB
  • 38. Advanced Statistical Methods - K-Means Clustering/2. A Simple Example of Clustering.mp4 54.3 MB
  • 22. Part 4 Introduction to Python/7. Installing Python and Jupyter.mp4 53.5 MB
  • 49. Deep Learning - Preprocessing/3. Standardization.mp4 53.5 MB
  • 15. Statistics - Descriptive Statistics/22. Variance.mp4 53.4 MB
  • 20. Statistics - Hypothesis Testing/14. Test for the Mean. Dependent Samples.mp4 52.8 MB
  • 18/1. What are Confidence Intervals.mp4 52.4 MB
  • 11. Probability - Bayesian Inference/20. Bayes' Law.mp4 52.4 MB
  • 17. Statistics - Inferential Statistics Fundamentals/4. The Normal Distribution.mp4 52.3 MB
  • 51. Deep Learning - Business Case Example/9. Business Case Setting an Early Stopping Mechanism.mp4 52.2 MB
  • 40. Part 6 Mathematics/5. Linear Algebra and Geometry.mp4 52.2 MB
  • 32/13. Decomposition of Variability.mp4 52.1 MB
  • 40. Part 6 Mathematics/15. Dot Product of Matrices.mp4 51.8 MB
  • 34/19. Train - Test Split Explained.mp4 51.6 MB
  • 59/12. Testing the Model We Created.mp4 51.5 MB
  • 1. Part 1 Introduction/1. A Practical Example What You Will Learn in This Course.mp4 51.4 MB
  • 11. Probability - Bayesian Inference/18. The Multiplication Law.mp4 51.4 MB
  • 12. Probability - Distributions/17. Continuous Distributions The Normal Distribution.mp4 50.6 MB
  • 12. Probability - Distributions/19. Continuous Distributions The Standard Normal Distribution.mp4 50.2 MB
  • 17. Statistics - Inferential Statistics Fundamentals/13. Estimators and Estimates.mp4 50.2 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/27. Extracting the Month Value from the Date Column.mp4 50.1 MB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/4. TensorFlow Intro.mp4 50.0 MB
  • 62. Appendix - Additional Python Tools/1. Using the .format() Method.mp4 50.0 MB
  • 11. Probability - Bayesian Inference/3. Ways Sets Can Interact.mp4 49.7 MB
  • 18/10. Margin of Error.mp4 49.5 MB
  • 12. Probability - Distributions/27. Continuous Distributions The Logistic Distribution.mp4 49.3 MB
  • 54/8. MNIST Learning.mp4 49.0 MB
  • 62. Appendix - Additional Python Tools/4. Triple Nested For Loops.mp4 48.9 MB
  • 35/2. Practical Example Linear Regression (Part 2).mp4 48.2 MB
  • 11. Probability - Bayesian Inference/13. The Conditional Probability Formula.mp4 48.1 MB
  • 59/2. Creating the Targets for the Logistic Regression.mp4 48.0 MB
  • 15. Statistics - Descriptive Statistics/24. Standard Deviation and Coefficient of Variation.mp4 47.3 MB
  • 42. Deep Learning - Introduction to Neural Networks/5. Types of Machine Learning.mp4 47.3 MB
  • 52. Deep Learning - Conclusion/6. An Overview of non-NN Approaches.mp4 47.0 MB
  • 32/11. How to Interpret the Regression Table.mp4 46.8 MB
  • 39. Advanced Statistical Methods - Other Types of Clustering/1. Types of Clustering.mp4 46.7 MB
  • 32/8. First Regression in Python.mp4 46.7 MB
  • 59/16. Preparing the Deployment of the Model through a Module.mp4 46.6 MB
  • 22. Part 4 Introduction to Python/5. Why Jupyter.mp4 46.5 MB
  • 38. Advanced Statistical Methods - K-Means Clustering/6. How to Choose the Number of Clusters.mp4 46.3 MB
  • 20. Statistics - Hypothesis Testing/6. Type I Error and Type II Error.mp4 46.1 MB
  • 54/6. Calculating the Accuracy of the Model.mp4 46.0 MB
  • 10. Probability - Combinatorics/9. Solving Variations without Repetition.mp4 45.2 MB
  • 38. Advanced Statistical Methods - K-Means Clustering/11. Market Segmentation with Cluster Analysis (Part 1).mp4 45.1 MB
  • 42. Deep Learning - Introduction to Neural Networks/1. Introduction to Neural Networks.mp4 45.0 MB
  • 5. The Field of Data Science - Popular Data Science Techniques/12. Real Life Examples of Traditional Methods.mp4 44.9 MB
  • 10. Probability - Combinatorics/3. Permutations and How to Use Them.mp4 44.8 MB
  • 33/13. A3 Normality and Homoscedasticity.mp4 44.8 MB
  • 28. Python - Sequences/7. Dictionaries.mp4 43.7 MB
  • 59/6. Fitting the Model and Assessing its Accuracy.mp4 43.7 MB
  • 50. Deep Learning - Classifying on the MNIST Dataset/6. MNIST Preprocess the Data - Shuffle and Batch.mp4 43.5 MB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/8. Business Case Optimization.mp4 43.5 MB
  • 10. Probability - Combinatorics/17. Combinatorics in Real-Life The Lottery.mp4 43.3 MB
  • 59/9. Standardizing only the Numerical Variables (Creating a Custom Scaler).mp4 43.2 MB
  • 32/17. R-Squared.mp4 43.0 MB
  • 50. Deep Learning - Classifying on the MNIST Dataset/10. MNIST Learning.mp4 43.0 MB
  • 57. Case Study - What's Next in the Course/3. Introducing the Data Set.mp4 42.9 MB
  • 61. Case Study - Analyzing the Predicted Outputs in Tableau/6. Analyzing Transportation Expense vs Probability in Tableau.mp4 42.6 MB
  • 32/7. Python Packages Installation.mp4 42.6 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/10. Analyzing the Reasons for Absence.mp4 42.5 MB
  • 59/10. Interpreting the Coefficients of the Logistic Regression.mp4 42.4 MB
  • 10. Probability - Combinatorics/13. Symmetry of Combinations.mp4 42.3 MB
  • 12. Probability - Distributions/25. Continuous Distributions The Exponential Distribution.mp4 42.2 MB
  • 20. Statistics - Hypothesis Testing/12. Test for the Mean. Population Variance Unknown.mp4 42.2 MB
  • 15. Statistics - Descriptive Statistics/14. Cross Tables and Scatter Plots.mp4 41.7 MB
  • 52. Deep Learning - Conclusion/1. Summary on What You've Learned.mp4 41.7 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/31. Working on Education, Children, and Pets.mp4 41.5 MB
  • 59/11. Backward Elimination or How to Simplify Your Model.mp4 41.5 MB
  • 42. Deep Learning - Introduction to Neural Networks/23. Optimization Algorithm n-Parameter Gradient Descent.mp4 41.3 MB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/3. The Importance of Working with a Balanced Dataset.mp4 41.3 MB
  • 57. Case Study - What's Next in the Course/2. The Business Task.mp4 41.1 MB
  • 34/14. Feature Scaling (Standardization).mp4 41.0 MB
  • 59/7. Creating a Summary Table with the Coefficients and Intercept.mp4 40.8 MB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/1. How to Install TensorFlow 2.0.mp4 40.6 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/17. Using .concat() in Python.mp4 40.6 MB
  • 62. Appendix - Additional Python Tools/6. Anonymous (Lambda) Functions.mp4 40.4 MB
  • 10. Probability - Combinatorics/19. A Recap of Combinatorics.mp4 40.4 MB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/7. Basic NN Example with TF Inputs, Outputs, Targets, Weights, Biases.mp4 40.4 MB
  • 36. Advanced Statistical Methods - Logistic Regression/10. Binary Predictors in a Logistic Regression.mp4 40.3 MB
  • 42. Deep Learning - Introduction to Neural Networks/11. The Linear model with Multiple Inputs and Multiple Outputs.mp4 40.2 MB
  • 40. Part 6 Mathematics/13. Transpose of a Matrix.mp4 39.9 MB
  • 28. Python - Sequences/1. Lists.mp4 39.6 MB
  • 38. Advanced Statistical Methods - K-Means Clustering/8. Pros and Cons of K-Means Clustering.mp4 39.5 MB
  • 28. Python - Sequences/3. Using Methods.mp4 39.4 MB
  • 59/13. Saving the Model and Preparing it for Deployment.mp4 39.3 MB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/9. Basic NN Example with TF Model Output.mp4 39.2 MB
  • 42. Deep Learning - Introduction to Neural Networks/19. Common Objective Functions Cross-Entropy Loss.mp4 39.1 MB
  • 15. Statistics - Descriptive Statistics/17. Mean, median and mode.mp4 38.9 MB
  • 5. The Field of Data Science - Popular Data Science Techniques/17. Real Life Examples of Machine Learning (ML).mp4 38.6 MB
  • 15. Statistics - Descriptive Statistics/5. Categorical Variables - Visualization Techniques.mp4 38.4 MB
  • 20. Statistics - Hypothesis Testing/18. Test for the mean. Independent Samples (Part 2).mp4 38.2 MB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/11. Business Case A Comment on the Homework.mp4 38.1 MB
  • 37. Advanced Statistical Methods - Cluster Analysis/3. Difference between Classification and Clustering.mp4 37.9 MB
  • 10. Probability - Combinatorics/5. Simple Operations with Factorials.mp4 37.9 MB
  • 33/11. A2 No Endogeneity.mp4 37.4 MB
  • 18/6. Student's T Distribution.mp4 37.2 MB
  • 45/7. Backpropagation.mp4 36.7 MB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/2. Basic NN Example (Part 2).mp4 36.6 MB
  • 11. Probability - Bayesian Inference/15. The Law of Total Probability.mp4 36.6 MB
  • 34/15. Feature Selection through Standardization of Weights.mp4 36.6 MB
  • 11. Probability - Bayesian Inference/11. Dependence and Independence of Sets.mp4 36.5 MB
  • 34/3. Simple Linear Regression with sklearn.mp4 36.5 MB
  • 36. Advanced Statistical Methods - Logistic Regression/2. A Simple Example in Python.mp4 36.4 MB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/6. Outlining the Model with TensorFlow 2.mp4 36.4 MB
  • 12. Probability - Distributions/9. Discrete Distributions The Bernoulli Distribution.mp4 35.8 MB
  • 10. Probability - Combinatorics/7. Solving Variations with Repetition.mp4 35.7 MB
  • 20. Statistics - Hypothesis Testing/16. Test for the mean. Independent Samples (Part 1).mp4 35.6 MB
  • 40. Part 6 Mathematics/3. Scalars and Vectors.mp4 35.5 MB
  • 30. Python - Advanced Python Tools/1. Object Oriented Programming.mp4 35.2 MB
  • 40. Part 6 Mathematics/1. What is a Matrix.mp4 35.2 MB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/2. TensorFlow Outline and Comparison with Other Libraries.mp4 35.1 MB
  • 10. Probability - Combinatorics/15. Solving Combinations with Separate Sample Spaces.mp4 34.8 MB
  • 36. Advanced Statistical Methods - Logistic Regression/12. Calculating the Accuracy of the Model.mp4 34.5 MB
  • 46. Deep Learning - Overfitting/3. What is Validation.mp4 34.3 MB
  • 40. Part 6 Mathematics/10. Addition and Subtraction of Matrices.mp4 34.2 MB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/8. Basic NN Example with TF Loss Function and Gradient Descent.mp4 34.1 MB
  • 36. Advanced Statistical Methods - Logistic Regression/9. What do the Odds Actually Mean.mp4 33.9 MB
  • 36. Advanced Statistical Methods - Logistic Regression/15. Testing the Model.mp4 33.8 MB
  • 18/8. Confidence Intervals; Population Variance Unknown; T-score.mp4 33.8 MB
  • 34/4. Simple Linear Regression with sklearn - A StatsModels-like Summary Table.mp4 33.6 MB
  • 33/14. A4 No Autocorrelation.mp4 33.1 MB
  • 51. Deep Learning - Business Case Example/8. Business Case Learning and Interpreting the Result.mp4 32.7 MB
  • 41. Part 7 Deep Learning/1. What to Expect from this Part.mp4 32.6 MB
  • 46. Deep Learning - Overfitting/1. What is Overfitting.mp4 32.6 MB
  • 34/8. Calculating the Adjusted R-Squared in sklearn.mp4 32.4 MB
  • 28. Python - Sequences/5. List Slicing.mp4 32.3 MB
  • 22. Part 4 Introduction to Python/9. Prerequisites for Coding in the Jupyter Notebooks.mp4 32.1 MB
  • 36. Advanced Statistical Methods - Logistic Regression/7. Understanding Logistic Regression Tables.mp4 32.0 MB
  • 51. Deep Learning - Business Case Example/3. Business Case Balancing the Dataset.mp4 31.9 MB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/7. Interpreting the Result and Extracting the Weights and Bias.mp4 31.7 MB
  • 38. Advanced Statistical Methods - K-Means Clustering/9. To Standardize or not to Standardize.mp4 31.6 MB
  • 25. Python - Other Python Operators/3. Logical and Identity Operators.mp4 31.5 MB
  • 5. The Field of Data Science - Popular Data Science Techniques/3. Real Life Examples of Traditional Data.mp4 31.4 MB
  • 29. Python - Iterations/8. How to Iterate over Dictionaries.mp4 31.1 MB
  • 39. Advanced Statistical Methods - Other Types of Clustering/3. Heatmaps.mp4 31.1 MB
  • 5. The Field of Data Science - Popular Data Science Techniques/9. Real Life Examples of Business Intelligence (BI).mp4 31.0 MB
  • 45/2. What is a Deep Net.mp4 31.0 MB
  • 34/10. Feature Selection (F-regression).mp4 31.0 MB
  • 50. Deep Learning - Classifying on the MNIST Dataset/12. MNIST Testing the Model.mp4 31.0 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/30. Analyzing Several Straightforward Columns for this Exercise.mp4 30.9 MB
  • 28. Python - Sequences/6. Tuples.mp4 30.9 MB
  • 62. Appendix - Additional Python Tools/3. Introduction to Nested For Loops.mp4 30.9 MB
  • 15. Statistics - Descriptive Statistics/30. Correlation Coefficient.mp4 30.8 MB
  • 48/4. Learning Rate Schedules, or How to Choose the Optimal Learning Rate.mp4 30.5 MB
  • 39. Advanced Statistical Methods - Other Types of Clustering/2. Dendrogram.mp4 30.5 MB
  • 50. Deep Learning - Classifying on the MNIST Dataset/4. MNIST Preprocess the Data - Create a Validation Set and Scale It.mp4 30.5 MB
  • 49. Deep Learning - Preprocessing/5. Binary and One-Hot Encoding.mp4 30.4 MB
  • 18/14. Confidence intervals. Two means. Independent Samples (Part 1).mp4 30.2 MB
  • 33/16. A5 No Multicollinearity.mp4 30.1 MB
  • 42. Deep Learning - Introduction to Neural Networks/3. Training the Model.mp4 30.1 MB
  • 48/1. Stochastic Gradient Descent.mp4 30.1 MB
  • 42. Deep Learning - Introduction to Neural Networks/7. The Linear Model (Linear Algebraic Version).mp4 29.8 MB
  • 29. Python - Iterations/3. While Loops and Incrementing.mp4 29.8 MB
  • 32/15. What is the OLS.mp4 29.7 MB
  • 50. Deep Learning - Classifying on the MNIST Dataset/8. MNIST Outline the Model.mp4 29.6 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/28. Extracting the Day of the Week from the Date Column.mp4 29.3 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/4. Introduction to Terms with Multiple Meanings.mp4 29.2 MB
  • 49. Deep Learning - Preprocessing/1. Preprocessing Introduction.mp4 29.1 MB
  • 29. Python - Iterations/6. Conditional Statements and Loops.mp4 29.1 MB
  • 45/4. Non-Linearities and their Purpose.mp4 29.0 MB
  • 59/1. Exploring the Problem with a Machine Learning Mindset.mp4 28.9 MB
  • 15. Statistics - Descriptive Statistics/27. Covariance.mp4 28.8 MB
  • 38. Advanced Statistical Methods - K-Means Clustering/1. K-Means Clustering.mp4 28.6 MB
  • 34/1. What is sklearn and How is it Different from Other Packages.mp4 28.6 MB
  • 12. Probability - Distributions/21. Continuous Distributions The Students' T Distribution.mp4 28.5 MB
  • 36. Advanced Statistical Methods - Logistic Regression/1. Introduction to Logistic Regression.mp4 28.4 MB
  • 11. Probability - Bayesian Inference/16. The Additive Rule.mp4 28.3 MB
  • 11. Probability - Bayesian Inference/5. Intersection of Sets.mp4 28.3 MB
  • 18/16. Confidence intervals. Two means. Independent Samples (Part 2).mp4 28.1 MB
  • 40. Part 6 Mathematics/7. Arrays in Python - A Convenient Way To Represent Matrices.mp4 28.0 MB
  • 48/6. Adaptive Learning Rate Schedules (AdaGrad and RMSprop ).mp4 27.6 MB
  • 12. Probability - Distributions/23. Continuous Distributions The Chi-Squared Distribution.mp4 27.6 MB
  • 34/16. Predicting with the Standardized Coefficients.mp4 27.2 MB
  • 45/6. Activation Functions Softmax Activation.mp4 27.2 MB
  • 54/5. MNIST Loss and Optimization Algorithm.mp4 27.1 MB
  • 15. Statistics - Descriptive Statistics/8. Numerical Variables - Frequency Distribution Table.mp4 27.1 MB
  • 29. Python - Iterations/4. Lists with the range() Function.mp4 27.1 MB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/9. Business Case Interpretation.mp4 27.0 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/23. Creating Checkpoints while Coding in Jupyter.mp4 26.9 MB
  • 60. Case Study - Loading the 'absenteeism_module'/2. Deploying the 'absenteeism_module' - Part I.mp4 26.7 MB
  • 11. Probability - Bayesian Inference/9. Mutually Exclusive Sets.mp4 26.6 MB
  • 52. Deep Learning - Conclusion/5. An Overview of RNNs.mp4 26.5 MB
  • 46. Deep Learning - Overfitting/4. Training, Validation, and Test Datasets.mp4 26.4 MB
  • 42. Deep Learning - Introduction to Neural Networks/9. The Linear Model with Multiple Inputs.mp4 26.3 MB
  • 45/5. Activation Functions.mp4 26.3 MB
  • 46. Deep Learning - Overfitting/2. Underfitting and Overfitting for Classification.mp4 26.3 MB
  • 26. Python - Conditional Statements/4. The ELIF Statement.mp4 26.3 MB
  • 33/20. Making Predictions with the Linear Regression.mp4 25.9 MB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/3. Basic NN Example (Part 3).mp4 25.6 MB
  • 12. Probability - Distributions/7. Discrete Distributions The Uniform Distribution.mp4 25.6 MB
  • 46. Deep Learning - Overfitting/6. Early Stopping or When to Stop Training.mp4 25.4 MB
  • 23. Python - Variables and Data Types/5. Python Strings.mp4 25.3 MB
  • 40. Part 6 Mathematics/14. Dot Product.mp4 25.2 MB
  • 35/4. Practical Example Linear Regression (Part 3).mp4 24.8 MB
  • 29. Python - Iterations/1. For Loops.mp4 24.7 MB
  • 42. Deep Learning - Introduction to Neural Networks/17. Common Objective Functions L2-norm Loss.mp4 24.4 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/2. Importing the Absenteeism Data in Python.mp4 24.3 MB
  • 36. Advanced Statistical Methods - Logistic Regression/6. An Invaluable Coding Tip.mp4 24.2 MB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/8. Customizing a TensorFlow 2 Model.mp4 24.0 MB
  • 17. Statistics - Inferential Statistics Fundamentals/11. Standard error.mp4 23.9 MB
  • 12. Probability - Distributions/5. Characteristics of Discrete Distributions.mp4 23.8 MB
  • 42. Deep Learning - Introduction to Neural Networks/13. Graphical Representation of Simple Neural Networks.mp4 23.8 MB
  • 54/2. MNIST How to Tackle the MNIST.mp4 23.7 MB
  • 40. Part 6 Mathematics/8. What is a Tensor.mp4 23.6 MB
  • 17. Statistics - Inferential Statistics Fundamentals/6. The Standard Normal Distribution.mp4 23.6 MB
  • 62. Appendix - Additional Python Tools/2. Iterating Over Range Objects.mp4 23.6 MB
  • 48/7. Adam (Adaptive Moment Estimation).mp4 23.4 MB
  • 36. Advanced Statistical Methods - Logistic Regression/14. Underfitting and Overfitting.mp4 23.4 MB
  • 5. The Field of Data Science - Popular Data Science Techniques/6. Real Life Examples of Big Data.mp4 23.1 MB
  • 27. Python - Python Functions/7. Built-in Functions in Python.mp4 23.1 MB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/3. TensorFlow 1 vs TensorFlow 2.mp4 23.1 MB
  • 33/7. OLS Assumptions.mp4 22.9 MB
  • 47. Deep Learning - Initialization/1. What is Initialization.mp4 22.8 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/32. Final Remarks of this Section.mp4 22.7 MB
  • 33/1. Multiple Linear Regression.mp4 22.6 MB
  • 38. Advanced Statistical Methods - K-Means Clustering/4. Clustering Categorical Data.mp4 22.3 MB
  • 46. Deep Learning - Overfitting/5. N-Fold Cross Validation.mp4 21.7 MB
  • 59/4. Standardizing the Data.mp4 21.6 MB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/1. Basic NN Example (Part 1).mp4 21.6 MB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/6. Types of File Formats, supporting Tensors.mp4 21.3 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/6. Using a Statistical Approach towards the Solution to the Exercise.mp4 21.2 MB
  • 52. Deep Learning - Conclusion/2. What's Further out there in terms of Machine Learning.mp4 21.1 MB
  • 34/7. Multiple Linear Regression with sklearn.mp4 21.1 MB
  • 18/18. Confidence intervals. Two means. Independent Samples (Part 3).mp4 20.9 MB
  • 30. Python - Advanced Python Tools/7. Importing Modules in Python.mp4 20.9 MB
  • 45/8. Backpropagation Picture.mp4 20.4 MB
  • 34/2. How are we Going to Approach this Section.mp4 20.4 MB
  • 15. Statistics - Descriptive Statistics/19. Skewness.mp4 20.3 MB
  • 24. Python - Basic Python Syntax/1. Using Arithmetic Operators in Python.mp4 19.8 MB
  • 54/3. MNIST Relevant Packages.mp4 19.8 MB
  • 50. Deep Learning - Classifying on the MNIST Dataset/2. MNIST How to Tackle the MNIST.mp4 19.6 MB
  • 49. Deep Learning - Preprocessing/4. Preprocessing Categorical Data.mp4 19.5 MB
  • 27. Python - Python Functions/2. How to Create a Function with a Parameter.mp4 19.0 MB
  • 30. Python - Advanced Python Tools/5. What is the Standard Library.mp4 18.9 MB
  • 42. Deep Learning - Introduction to Neural Networks/15. What is the Objective Function.mp4 18.8 MB
  • 54/1. MNIST What is the MNIST Dataset.mp4 18.7 MB
  • 51. Deep Learning - Business Case Example/6. Business Case Load the Preprocessed Data.mp4 18.4 MB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/5. Actual Introduction to TensorFlow.mp4 18.3 MB
  • 31. Part 5 Advanced Statistical Methods in Python/1. Introduction to Regression Analysis.mp4 18.2 MB
  • 47. Deep Learning - Initialization/3. State-of-the-Art Method - (Xavier) Glorot Initialization.mp4 18.0 MB
  • 36. Advanced Statistical Methods - Logistic Regression/4. Building a Logistic Regression.mp4 17.9 MB
  • 23. Python - Variables and Data Types/3. Numbers and Boolean Values in Python.mp4 17.9 MB
  • 34/18. Underfitting and Overfitting.mp4 17.8 MB
  • 59/3. Selecting the Inputs for the Logistic Regression.mp4 17.6 MB
  • 48/3. Momentum.mp4 17.2 MB
  • 33/6. Test for Significance of the Model (F-Test).mp4 17.2 MB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/5. Types of File Formats Supporting TensorFlow.mp4 17.2 MB
  • 50. Deep Learning - Classifying on the MNIST Dataset/3. MNIST Importing the Relevant Packages and Loading the Data.mp4 17.1 MB
  • 10. Probability - Combinatorics/1. Fundamentals of Combinatorics.mp4 17.0 MB
  • 27. Python - Python Functions/5. Conditional Statements and Functions.mp4 16.4 MB
  • 17. Statistics - Inferential Statistics Fundamentals/1. Introduction.mp4 16.2 MB
  • 32/3. Correlation vs Regression.mp4 15.5 MB
  • 37. Advanced Statistical Methods - Cluster Analysis/4. Math Prerequisites.mp4 15.3 MB
  • 47. Deep Learning - Initialization/2. Types of Simple Initializations.mp4 15.0 MB
  • 23. Python - Variables and Data Types/1. Variables.mp4 14.8 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/20. Reordering Columns in a Pandas DataFrame in Python.mp4 14.7 MB
  • 50. Deep Learning - Classifying on the MNIST Dataset/9. MNIST Select the Loss and the Optimizer.mp4 14.6 MB
  • 22. Part 4 Introduction to Python/8. Understanding Jupyter's Interface - the Notebook Dashboard.mp4 14.5 MB
  • 15. Statistics - Descriptive Statistics/11. The Histogram.mp4 14.4 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/15. More on Dummy Variables A Statistical Perspective.mp4 14.4 MB
  • 50. Deep Learning - Classifying on the MNIST Dataset/1. MNIST The Dataset.mp4 14.0 MB
  • 54/7. MNIST Batching and Early Stopping.mp4 13.5 MB
  • 33/9. A1 Linearity.mp4 13.2 MB
  • 45/1. What is a Layer.mp4 13.1 MB
  • 34/12. Creating a Summary Table with P-values.mp4 12.9 MB
  • 32/10. Using Seaborn for Graphs.mp4 12.8 MB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/2. Business Case Outlining the Solution.mp4 12.8 MB
  • 49. Deep Learning - Preprocessing/2. Types of Basic Preprocessing.mp4 12.4 MB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/2. How to Install TensorFlow 1.mp4 11.9 MB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/10. Business Case Testing the Model.mp4 11.8 MB
  • 40. Part 6 Mathematics/12. Errors when Adding Matrices.mp4 11.7 MB
  • 27. Python - Python Functions/3. Defining a Function in Python - Part II.mp4 11.7 MB
  • 48/2. Problems with Gradient Descent.mp4 11.6 MB
  • 26. Python - Conditional Statements/3. The ELSE Statement.mp4 11.4 MB
  • 26. Python - Conditional Statements/1. The IF Statement.mp4 11.3 MB
  • 51. Deep Learning - Business Case Example/11. Business Case Testing the Model.mp4 11.3 MB
  • 25. Python - Other Python Operators/1. Comparison Operators.mp4 10.7 MB
  • 38. Advanced Statistical Methods - K-Means Clustering/10. Relationship between Clustering and Regression.mp4 10.4 MB
  • 29. Python - Iterations/7. Conditional Statements, Functions, and Loops.mp4 10.0 MB
  • 48/5. Learning Rate Schedules Visualized.mp4 9.6 MB
  • 26. Python - Conditional Statements/5. A Note on Boolean Values.mp4 9.3 MB
  • 12. Probability - Distributions/29.3 FIFA19 (post).csv 9.1 MB
  • 12. Probability - Distributions/29.4 FIFA19.csv 9.1 MB
  • 30. Python - Advanced Python Tools/3. Modules and Packages.mp4 8.9 MB
  • 27. Python - Python Functions/4. How to Use a Function within a Function.mp4 8.5 MB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/29.3 Absenteeism Exercise - Preprocessing LECTURES.ipynb 8.0 MB
  • 51. Deep Learning - Business Case Example/2. Business Case Outlining the Solution.mp4 7.7 MB
  • 2/7.2 365_DataScience.png 7.3 MB
  • 2/9.1 365_DataScience.png 7.3 MB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/4. A Note on TensorFlow 2 Syntax.mp4 7.1 MB
  • 27. Python - Python Functions/1. Defining a Function in Python.mp4 6.6 MB
  • 27. Python - Python Functions/6. Functions Containing a Few Arguments.mp4 6.3 MB
  • 24. Python - Basic Python Syntax/3. The Double Equality Sign.mp4 6.3 MB
  • 24. Python - Basic Python Syntax/10. Indexing Elements.mp4 6.2 MB
  • 24. Python - Basic Python Syntax/12. Structuring with Indentation.mp4 5.7 MB
  • 32/5. Geometrical Representation of the Linear Regression Model.mp4 5.4 MB
  • 24. Python - Basic Python Syntax/7. Add Comments.mp4 4.9 MB
  • 24. Python - Basic Python Syntax/5. How to Reassign Values.mp4 4.2 MB
  • 24. Python - Basic Python Syntax/9. Understanding Line Continuation.mp4 2.5 MB
  • 23. Python - Variables and Data Types/1.1 Python Introduction - Course Notes.pdf 2.1 MB
  • 19. Statistics - Practical Example Inferential Statistics/2.2 3.17.Practical-example.Confidence-intervals-exercise-solution.xlsx 1.9 MB
  • 19. Statistics - Practical Example Inferential Statistics/1.1 3.17. Practical example. Confidence intervals_lesson.xlsx 1.8 MB
  • 19. Statistics - Practical Example Inferential Statistics/2.1 3.17.Practical-example.Confidence-intervals-exercise.xlsx 1.8 MB
  • 20. Statistics - Hypothesis Testing/10.1 Online p-value calculator.pdf 1.2 MB
  • 45/1.1 Course Notes - Section 6.pdf 958.9 kB
  • 45/2.1 Course Notes - Section 6.pdf 958.9 kB
  • 11. Probability - Bayesian Inference/22.2 CDS_2017-2018 Hamilton.pdf 865.6 kB
  • 35/8.3 sklearn - Linear Regression - Practical Example (Part 5)_with_comments.ipynb 728.1 kB
  • 51. Deep Learning - Business Case Example/1.1 Audiobooks_data.csv 727.8 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/1.1 Audiobooks_data.csv 727.8 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/11.1 Audiobooks_data.csv 727.8 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/12.1 Audiobooks_data.csv 727.8 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/3.1 Audiobooks-data.csv 727.8 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/4.3 Audiobooks_data.csv 727.8 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/5.3 Audiobooks_data.csv 727.8 kB
  • 35/8.1 sklearn - Linear Regression - Practical Example (Part 5).ipynb 715.1 kB
  • 20. Statistics - Hypothesis Testing/1.1 Course notes_hypothesis_testing.pdf 672.2 kB
  • 20. Statistics - Hypothesis Testing/4.1 Course notes_hypothesis_testing.pdf 672.2 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/1.1 Shortcuts-for-Jupyter.pdf 634.0 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/1.1 Shortcuts-for-Jupyter.pdf 634.0 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/5.1 Shortcuts-for-Jupyter.pdf 634.0 kB
  • 42. Deep Learning - Introduction to Neural Networks/3.1 Course Notes - Section 2.pdf 602.2 kB
  • 42. Deep Learning - Introduction to Neural Networks/1.1 Course Notes - Section 2.pdf 592.0 kB
  • 14. Part 3 Statistics/1.1 Course notes_descriptive_statistics.pdf 493.8 kB
  • 15. Statistics - Descriptive Statistics/1.1 Course notes_descriptive_statistics.pdf 493.8 kB
  • 12. Probability - Distributions/1.1 Course Notes - Probability Distributions.pdf 475.1 kB
  • 35/6.3 sklearn - Linear Regression - Practical Example (Part 4)_with_comments.ipynb 417.4 kB
  • 35/6.1 sklearn - Linear Regression - Practical Example (Part 4).ipynb 406.8 kB
  • 11. Probability - Bayesian Inference/1.1 Course Notes - Bayesian Inference.pdf 395.3 kB
  • 17. Statistics - Inferential Statistics Fundamentals/1.1 Course notes_inferential statistics.pdf 391.5 kB
  • 17. Statistics - Inferential Statistics Fundamentals/2.1 Course notes_inferential statistics.pdf 391.5 kB
  • 9. Part 2 Probability/1.1 Course Notes - Basic Probability.pdf 380.0 kB
  • 35/5.1 sklearn - Dummies and VIF - Exercise Solution.ipynb 379.1 kB
  • 35/4.2 sklearn - Linear Regression - Practical Example (Part 3)_with_comments.ipynb 359.9 kB
  • 35/5.3 sklearn - Dummies and VIF - Exercise.ipynb 352.9 kB
  • 12. Probability - Distributions/15.1 Solving Integrals.pdf 352.1 kB
  • 35/4.1 sklearn - Linear Regression - Practical Example (Part 3).ipynb 351.8 kB
  • 35/2.1 sklearn - Linear Regression - Practical Example (Part 2)_with_comments.ipynb 343.7 kB
  • 36. Advanced Statistical Methods - Logistic Regression/1.1 Course_Notes_Logistic_Regression.pdf 343.2 kB
  • 36. Advanced Statistical Methods - Logistic Regression/2.4 Course_Notes_Logistic_Regression.pdf 343.2 kB
  • 35/2.2 sklearn - Linear Regression - Practical Example (Part 2).ipynb 336.6 kB
  • 2/5.1 365_DataScience_Diagram.pdf 330.8 kB
  • 2/7.1 365_DataScience_Diagram.pdf 330.8 kB
  • 13. Probability - Probability in Other Fields/3.1 Probability Cheat Sheet.pdf 328.0 kB
  • 31. Part 5 Advanced Statistical Methods in Python/1.1 Course notes_regression_analysis.pdf 319.7 kB
  • 32/1.1 Course notes_regression_analysis.pdf 319.7 kB
  • 1. Part 1 Introduction/3.2 FAQ_The_Data_Science_Course.pdf 313.4 kB
  • 15. Statistics - Descriptive Statistics/13.1 Statistics - PDF with Excel Solutions that don't visualize properly.pdf 296.1 kB
  • 15. Statistics - Descriptive Statistics/7.2 Statistics - PDF with Excel Solutions that don't visualize properly.pdf 296.1 kB
  • 10. Probability - Combinatorics/20.2 Additional Exercises Combinatorics Solutions.pdf 251.6 kB
  • 35/5.2 1.04. Real-life example.csv 235.3 kB
  • 10. Probability - Combinatorics/1.1 Course Notes - Combinatorics.pdf 231.5 kB
  • 35/1.3 1.04. Real-life example.csv 225.1 kB
  • 35/2.3 1.04. Real-life example.csv 225.1 kB
  • 35/6.2 1.04. Real-life example.csv 225.1 kB
  • 35/8.2 1.04. Real-life example.csv 225.1 kB
  • 37. Advanced Statistical Methods - Cluster Analysis/1.1 Course_Notes_Cluster_Analysis.pdf 213.7 kB
  • 37. Advanced Statistical Methods - Cluster Analysis/2.1 Course_Notes_Cluster_Analysis.pdf 213.7 kB
  • 10. Probability - Combinatorics/11.1 Combinations With Repetition.pdf 212.4 kB
  • 13. Probability - Probability in Other Fields/1.2 Probability in Finance Solutions.pdf 188.9 kB
  • 45/9.1 Backpropagation-a-peek-into-the-Mathematics-of-Optimization.pdf 186.8 kB
  • 35/1.1 sklearn - Linear Regression - Practical Example (Part 1)_with_comments.ipynb 175.5 kB
  • 35/1.2 sklearn - Linear Regression - Practical Example (Part 1).ipynb 170.9 kB
  • 16. Statistics - Practical Example Descriptive Statistics/1.1 2.13. Practical example. Descriptive statistics_lesson.xlsx 150.0 kB
  • 16. Statistics - Practical Example Descriptive Statistics/2.1 2.13.Practical-example.Descriptive-statistics-exercise-solution.xlsx 149.9 kB
  • 12. Probability - Distributions/13.1 Poisson - Expected Value and Variance.pdf 149.5 kB
  • 12. Probability - Distributions/17.1 Normal Distribution - Exp and Var.pdf 147.5 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/1.1 data_preprocessing_homework.pdf 137.7 kB
  • 16. Statistics - Practical Example Descriptive Statistics/2.2 2.13.Practical-example.Descriptive-statistics-exercise.xlsx 123.2 kB
  • 36. Advanced Statistical Methods - Logistic Regression/16.4 Testing the Model - Solution.ipynb 113.8 kB
  • 13. Probability - Probability in Other Fields/1.1 Probability in Finance Homework.pdf 113.3 kB
  • 10. Probability - Combinatorics/20.1 Additional Exercises Combinatorics.pdf 109.1 kB
  • 10. Probability - Combinatorics/13.1 Symmetry Explained.pdf 97.3 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/9.5 TensorFlow_Minimal_Example_Exercise_3_Solution.ipynb 86.5 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/5.8 Minimal_example_Exercise_3.d. Solution.ipynb 86.2 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/9.1 TensorFlow_Minimal_Example_Exercise_2_1_Solution.ipynb 85.7 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/9.3 TensorFlow_Minimal_example_All_exercises.ipynb 85.6 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/8.2 TensorFlow_Minimal_example_complete_with_comments.ipynb 84.3 kB
  • 36. Advanced Statistical Methods - Logistic Regression/13.2 Calculating the Accuracy of the Model - Solution.ipynb 83.2 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/9.2 TensorFlow_Minimal_Example_Exercise_2_2_Solution.ipynb 79.4 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/8.1 TensorFlow_Minimal_example_complete.ipynb 78.7 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/7.1 TensorFlow_Minimal_example_Part3.ipynb 78.4 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/5.11 Minimal_example_Exercise_3.c. Solution.ipynb 71.8 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/5.2 Minimal_example_Exercise_1_Solution.ipynb 70.7 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/5.3 Minimal_example_Exercise_5_Solution.ipynb 70.5 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/5.6 Minimal_example_Exercise_3.a. Solution.ipynb 69.5 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/5.4 Minimal_example_Exercise_3.b. Solution.ipynb 69.3 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/5.5 Minimal_example_Exercise_4_Solution.ipynb 68.1 kB
  • 60. Case Study - Loading the 'absenteeism_module'/1.4 Absenteeism Exercise - Integration.ipynb 63.8 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/5.1 Minimal_example_Exercise_6_Solution.ipynb 63.2 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/5.9 Minimal_example_Exercise_6.ipynb 63.2 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/5.7 Minimal_example_Exercise_2_Solution.ipynb 62.9 kB
  • 21. Statistics - Practical Example Hypothesis Testing/1.1 4.10.Hypothesis-testing-section-practical-example.xlsx 53.1 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/10.5 TensorFlow_Minimal_Example_Exercise_2_3_Solution.ipynb 51.2 kB
  • 21. Statistics - Practical Example Hypothesis Testing/2.1 4.10.Hypothesis-testing-section-practical-example-exercise-solution.xlsx 45.3 kB
  • 21. Statistics - Practical Example Hypothesis Testing/2.2 4.10.+Hypothesis+testing+section_practical+example_exercise.xlsx 44.7 kB
  • 42. Deep Learning - Introduction to Neural Networks/21.1 GD-function-example.xlsx 43.4 kB
  • 15. Statistics - Descriptive Statistics/7.3 2.3. Categorical variables. Visualization techniques_exercise_solution.xlsx 42.1 kB
  • 15. Statistics - Descriptive Statistics/16.1 2.6. Cross table and scatter plot_exercise_solution.xlsx 41.4 kB
  • 15. Statistics - Descriptive Statistics/19.1 2.8. Skewness_lesson.xlsx 35.5 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/1.2 Absenteeism_data.csv 32.8 kB
  • 15. Statistics - Descriptive Statistics/5.1 2.3.Categorical-variables.Visualization-techniques-lesson.xlsx 31.5 kB
  • 11. Probability - Bayesian Inference/22.3 Bayesian Homework - Solutions.pdf 31.1 kB
  • 34/16.2 sklearn - Making Predictions with the Standardized Coefficients.ipynb 30.5 kB
  • 15. Statistics - Descriptive Statistics/29.1 2.11. Covariance_exercise_solution.xlsx 30.2 kB
  • 15. Statistics - Descriptive Statistics/32.2 2.12. Correlation_exercise_solution.xlsx 30.2 kB
  • 15. Statistics - Descriptive Statistics/32.1 2.12. Correlation_exercise.xlsx 30.0 kB
  • 59/1.1 Absenteeism_preprocessed.csv 29.8 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/1.3 df_preprocessed.csv 29.8 kB
  • 34/4.3 sklearn - Simple Linear Regression_with_comments.ipynb 29.0 kB
  • 34/6.1 sklearn - Simple Linear Regression_with_comments.ipynb 29.0 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/9.4 TensorFlow_Minimal_example_Exercise_1_Solution.ipynb 28.6 kB
  • 11. Probability - Bayesian Inference/22.1 Bayesian Homework .pdf 27.9 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/10.2 TensorFlow_Minimal_Example_Exercise_4_Solution.ipynb 27.6 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/10.7 TensorFlow_Minimal_Example_Exercise_3_Solution.ipynb 27.4 kB
  • 15. Statistics - Descriptive Statistics/14.1 2.6. Cross table and scatter plot.xlsx 26.7 kB
  • 34/4.2 sklearn - Simple Linear Regression.ipynb 26.7 kB
  • 34/6.2 sklearn - Simple Linear Regression.ipynb 26.7 kB
  • 18/3.1 3.9.The-z-table.xlsx 26.2 kB
  • 18/4.3 3.9.The-z-table.xlsx 26.2 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/10.3 TensorFlow_Minimal_Example_Exercise_2_1_Solution.ipynb 26.2 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/10.8 TensorFlow_Minimal_Example_Exercise_2_2_Solution.ipynb 26.1 kB
  • 62. Appendix - Additional Python Tools/1.2 Additional-Python-Tools-Solutions.ipynb 26.1 kB
  • 62. Appendix - Additional Python Tools/6.3 Additional-Python-Tools-Solutions.ipynb 26.1 kB
  • 15. Statistics - Descriptive Statistics/27.1 2.11. Covariance_lesson.xlsx 25.5 kB
  • 17. Statistics - Inferential Statistics Fundamentals/8.2 3.4.Standard-normal-distribution-exercise-solution.xlsx 24.6 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/10.6 TensorFlow_Minimal_Example_Exercise_1_Solution.ipynb 24.2 kB
  • 34/16.3 sklearn - Making Predictions with the Standardized Coefficients_with_comments.ipynb 22.6 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/10.1 TensorFlow_Minimal_Example_Exercise_2_4_Solution.ipynb 22.3 kB
  • 1. Part 1 Introduction/3. Download All Resources and Important FAQ.html 21.9 kB
  • 16. Statistics - Practical Example Descriptive Statistics/1. Practical Example Descriptive Statistics.srt 21.3 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/11.3 8. TensorFlow_MNIST_Learning_rate_Part_1_Solution.ipynb 21.1 kB
  • 14. Part 3 Statistics/1.2 Statistics Glossary.xlsx 20.8 kB
  • 15. Statistics - Descriptive Statistics/29.2 2.11. Covariance_exercise.xlsx 20.7 kB
  • 12. Probability - Distributions/29.6 Daily Views (post).xlsx 20.7 kB
  • 15. Statistics - Descriptive Statistics/1.2 Glossary.xlsx 20.4 kB
  • 12. Probability - Distributions/29. A Practical Example of Probability Distributions.srt 20.4 kB
  • 15. Statistics - Descriptive Statistics/21.1 2.8. Skewness_exercise_solution.xlsx 20.2 kB
  • 51. Deep Learning - Business Case Example/8.1 TensorFlow_Audiobooks_Machine_Learning_Part2_with_comments.ipynb 20.2 kB
  • 36. Advanced Statistical Methods - Logistic Regression/11.3 Bank_data.csv 20.0 kB
  • 36. Advanced Statistical Methods - Logistic Regression/13.1 Bank_data.csv 20.0 kB
  • 36. Advanced Statistical Methods - Logistic Regression/16.1 Bank_data.csv 20.0 kB
  • 36. Advanced Statistical Methods - Logistic Regression/8.3 Bank_data.csv 20.0 kB
  • 17. Statistics - Inferential Statistics Fundamentals/2.2 3.2. What is a distribution_lesson.xlsx 19.9 kB
  • 11. Probability - Bayesian Inference/22. A Practical Example of Bayesian Inference.srt 19.8 kB
  • 15. Statistics - Descriptive Statistics/11.1 2.5. The Histogram_lesson.xlsx 19.1 kB
  • 33/19.1 Multiple Linear Regression with Dummies Exercise Solution.ipynb 18.4 kB
  • 39. Advanced Statistical Methods - Other Types of Clustering/3.1 Heatmaps_with_comments.ipynb 18.1 kB
  • 54/11.3 TensorFlow_MNIST_around_98_percent_accuracy.ipynb 18.1 kB
  • 15. Statistics - Descriptive Statistics/13.2 2.5.The-Histogram-exercise-solution.xlsx 17.5 kB
  • 54/11.5 3. TensorFlow_MNIST_Width_and_Depth_Solution.ipynb 17.2 kB
  • 34/15.3 SKLEAR~1.IPY 17.2 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/11.11 TensorFlow_MNIST_All_Exercises.ipynb 17.1 kB
  • 34/12.1 sklearn - Multiple Linear Regression Summary Table_with_comments.ipynb 17.0 kB
  • 34/17.3 sklearn - Feature Scaling Exercise Solution.ipynb 16.7 kB
  • 15. Statistics - Descriptive Statistics/16.2 2.6. Cross table and scatter plot_exercise.xlsx 16.7 kB
  • 18/8.2 3.11. The t-table.xlsx 16.2 kB
  • 18/9.2 3.11.The-t-table.xlsx 16.2 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/11.10 9. TensorFlow_MNIST_Learning_rate_Part_2_Solution.ipynb 16.2 kB
  • 12. Probability - Distributions/29.5 Customers_Membership (post).xlsx 16.0 kB
  • 15. Statistics - Descriptive Statistics/13.3 2.5.The-Histogram-exercise.xlsx 15.9 kB
  • 54/10.1 TensorFlow_MNIST_Exercises_All.ipynb 15.8 kB
  • 34/13.1 sklearn - Multiple Linear Regression Exercise Solution.ipynb 15.8 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/11.4 2. TensorFlow_MNIST_Depth_Solution.ipynb 15.7 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/11.1 3. TensorFlow_MNIST_Width_and_Depth_Solution.ipynb 15.7 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/15.2 Species Segmentation with Cluster Analysis Part 2 - Solution.ipynb 15.7 kB
  • 15. Statistics - Descriptive Statistics/7.1 2.3. Categorical variables. Visualization techniques_exercise.xlsx 15.6 kB
  • 54/11.8 9. TensorFlow_MNIST_Learning_rate_Part_2_Solution.ipynb 15.6 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/11.6 7. TensorFlow_MNIST_Batch_size_Part_2_Solution.ipynb 15.5 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/11.7 6. TensorFlow_MNIST_Batch_size_Part_1_Solution.ipynb 15.5 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/11.2 4. TensorFlow_MNIST_Activation_functions_Part_1_Solution.ipynb 15.5 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/11.8 TensorFlow_MNIST_around_98_percent_accuracy.ipynb 15.4 kB
  • 34/15.2 sklearn - Feature Selection through Feature Scaling (Standardization) - Part 2.ipynb 15.3 kB
  • 54/11.1 2. TensorFlow_MNIST_Depth_Solution.ipynb 15.2 kB
  • 35/1. Practical Example Linear Regression (Part 1).srt 15.2 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/11.9 1. TensorFlow_MNIST_Width_Solution.ipynb 15.2 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/11.5 5. TensorFlow_MNIST_Activation_functions_Part_2_Solution.ipynb 15.1 kB
  • 20. Statistics - Hypothesis Testing/12.1 4.6.Test-for-the-mean.Population-variance-unknown-lesson.xlsx 14.9 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/12.2 TensorFlow_MNIST_complete_with_comments.ipynb 14.9 kB
  • 20. Statistics - Hypothesis Testing/15.2 4.7. Test for the mean. Dependent samples_exercise_solution.xlsx 14.7 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/11.3 TensorFlow_Audiobooks_Machine_learning_Homework.ipynb 14.7 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/12.3 TensorFlow_Audiobooks_Machine_learning_Homework.ipynb 14.7 kB
  • 54/11.9 4. TensorFlow_MNIST_Activation_functions_Part_1_Solution.ipynb 14.7 kB
  • 54/11.2 6. TensorFlow_MNIST_Batch_size_Part_1_Solution.ipynb 14.6 kB
  • 18/13.2 3.13. Confidence intervals. Two means. Dependent samples_exercise_solution.xlsx 14.6 kB
  • 54/11.6 7. TensorFlow_MNIST_Batch_size_Part_2_Solution.ipynb 14.5 kB
  • 54/11.10 8. TensorFlow_MNIST_Learning_rate_Part_1_Solution.ipynb 14.4 kB
  • 54/11.11 1. TensorFlow_MNIST_Width_Solution.ipynb 14.3 kB
  • 54/11.4 0. TensorFlow_MNIST_take_note_of_time_Solution.ipynb 14.3 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/10.4 TensorFlow_Minimal_Example_All_Exercises.ipynb 14.3 kB
  • 10. Probability - Combinatorics/20. A Practical Example of Combinatorics.srt 14.3 kB
  • 54/11.7 5. TensorFlow_MNIST_Activation_functions_Part_2_Solution.ipynb 14.3 kB
  • 18/13.1 3.13. Confidence intervals. Two means. Dependent samples_exercise.xlsx 14.1 kB
  • 34/12.3 sklearn - Multiple Linear Regression Summary Table.ipynb 14.0 kB
  • 19. Statistics - Practical Example Inferential Statistics/1. Practical Example Inferential Statistics.srt 14.0 kB
  • 62. Appendix - Additional Python Tools/1.3 Additional-Python-Tools-Lectures.ipynb 13.8 kB
  • 62. Appendix - Additional Python Tools/6.1 Additional-Python-Tools-Lectures.ipynb 13.8 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/4. Business Case Preprocessing.srt 13.8 kB
  • 33/5.2 Multiple Linear Regression Exercise Solution.ipynb 13.7 kB
  • 15. Statistics - Descriptive Statistics/10.1 2.4.Numerical-variables.Frequency-distribution-table-exercise-solution.xlsx 13.5 kB
  • 54/9.1 12.9. TensorFlow_MNIST_with_comments.ipynb 13.3 kB
  • 34/10.3 sklearn - Feature Selection with F-regression_with_comments.ipynb 13.3 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/5.10 Minimal_example_All_Exercises.ipynb 13.2 kB
  • 34/14.2 SKLEAR~1.IPY 13.2 kB
  • 20. Statistics - Hypothesis Testing/15.1 4.7. Test for the mean. Dependent samples_exercise.xlsx 13.1 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/8.2 TensorFlow_Audiobooks_optimizing_the_algorithm_with_comments.ipynb 13.0 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/9.1 TensorFlow_Audiobooks_optimizing_the_algorithm_with_comments.ipynb 13.0 kB
  • 34/11.1 sklearn - How to properly include p-values.ipynb 13.0 kB
  • 20. Statistics - Hypothesis Testing/13.1 4.6.Test-for-the-mean.Population-variance-unknown-exercise-solution.xlsx 12.9 kB
  • 15. Statistics - Descriptive Statistics/26.2 2.10.Standard-deviation-and-coefficient-of-variation-exercise-solution.xlsx 12.9 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/10.1 TensorFlow_MNIST_Part6_with_comments.ipynb 12.8 kB
  • 62. Appendix - Additional Python Tools/5. List Comprehensions.srt 12.6 kB
  • 62. Appendix - Additional Python Tools/1. Using the .format() Method.srt 12.6 kB
  • 51. Deep Learning - Business Case Example/4. Business Case Preprocessing the Data.srt 12.6 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/9.1 5.6. TensorFlow_Minimal_example_complete.ipynb 12.4 kB
  • 17. Statistics - Inferential Statistics Fundamentals/8.1 3.4.Standard-normal-distribution-exercise.xlsx 12.3 kB
  • 51. Deep Learning - Business Case Example/11.1 TensorFlow_Audiobooks_Machine_Learning_with_comments.ipynb 12.2 kB
  • 51. Deep Learning - Business Case Example/12.1 TensorFlow_Audiobooks_Machine_Learning_with_comments.ipynb 12.2 kB
  • 2/7. Continuing with BI, ML, and AI.srt 12.2 kB
  • 40. Part 6 Mathematics/16. Why is Linear Algebra Useful.srt 12.1 kB
  • 34/14.3 sklearn - Feature Selection through Feature Scaling (Standardization) - Part 1.ipynb 12.0 kB
  • 36. Advanced Statistical Methods - Logistic Regression/12.2 Accuracy_with_comments.ipynb 12.0 kB
  • 15. Statistics - Descriptive Statistics/26.1 2.10.Standard-deviation-and-coefficient-of-variation-exercise.xlsx 11.9 kB
  • 54/8.1 12.8. TensorFlow_MNIST_with_comments_Part_6.ipynb 11.8 kB
  • 35/6. Practical Example Linear Regression (Part 4).srt 11.8 kB
  • 15. Statistics - Descriptive Statistics/8.1 2.4. Numerical variables. Frequency distribution table_lesson.xlsx 11.7 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/4.1 Minimal_example_Part_4_Complete.ipynb 11.7 kB
  • 20. Statistics - Hypothesis Testing/20.2 4.9.Test-for-the-mean.Independent-samples-Part-2-exercise-2-solution.xlsx 11.7 kB
  • 62. Appendix - Additional Python Tools/1.1 Additional-Python-Tools-Exercises.ipynb 11.6 kB
  • 62. Appendix - Additional Python Tools/6.2 Additional-Python-Tools-Exercises.ipynb 11.6 kB
  • 15. Statistics - Descriptive Statistics/18.1 2.7. Mean, median and mode_exercise_solution.xlsx 11.6 kB
  • 20. Statistics - Hypothesis Testing/13.2 4.6.Test-for-the-mean.Population-variance-unknown-exercise.xlsx 11.6 kB
  • 20. Statistics - Hypothesis Testing/17.1 4.8.Test-for-the-mean.Independent-samples-Part-1-exercise-solution.xlsx 11.5 kB
  • 20. Statistics - Hypothesis Testing/9.1 4.4. Test for the mean. Population variance known_exercise_solution.xlsx 11.5 kB
  • 18/3.2 3.9. Population variance known, z-score_lesson.xlsx 11.5 kB
  • 51. Deep Learning - Business Case Example/4.1 TensorFlow_Audiobooks_Preprocessing_with_comments.ipynb 11.5 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/11.2 TensorFlow_Audiobooks_Preprocessing_with_comments.ipynb 11.5 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/12.2 TensorFlow_Audiobooks_Preprocessing_with_comments.ipynb 11.5 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/4.2 TensorFlow_Audiobooks_Preprocessing_with_comments.ipynb 11.5 kB
  • 18/4.1 3.9. Population variance known, z-score_exercise_solution.xlsx 11.4 kB
  • 18/9.3 3.11. Population variance unknown, t-score_exercise_solution.xlsx 11.4 kB
  • 15. Statistics - Descriptive Statistics/23.2 2.9. Variance_exercise_solution.xlsx 11.3 kB
  • 20. Statistics - Hypothesis Testing/9.2 4.4. Test for the mean. Population variance known_exercise.xlsx 11.3 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/9.1 TensorFlow_MNIST_Part5_with_comments.ipynb 11.2 kB
  • 5. The Field of Data Science - Popular Data Science Techniques/10. Techniques for Working with Traditional Methods.srt 11.2 kB
  • 15. Statistics - Descriptive Statistics/24.1 2.10. Standard deviation and coefficient of variation_lesson.xlsx 11.2 kB
  • 20. Statistics - Hypothesis Testing/8.1 4.4. Test for the mean. Population variance known_lesson.xlsx 11.2 kB
  • 24. Python - Basic Python Syntax/12.1 Structure Your Code with Indentation - Lecture_Py3.ipynb 11.2 kB
  • 15. Statistics - Descriptive Statistics/18.2 2.7. Mean, median and mode_exercise.xlsx 11.1 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/4. Basic NN Example (Part 4).srt 11.1 kB
  • 18/4.2 3.9. Population variance known, z-score_exercise.xlsx 11.1 kB
  • 15. Statistics - Descriptive Statistics/23.1 2.9. Variance_exercise.xlsx 11.1 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/1. Business Case Getting Acquainted with the Dataset.srt 11.0 kB
  • 18/8.1 3.11. Population variance unknown, t-score_lesson.xlsx 11.0 kB
  • 20. Statistics - Hypothesis Testing/17.2 4.8.Test-for-the-mean.Independent-samples-Part-1-exercise.xlsx 11.0 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/15.4 Species Segmentation with Cluster Analysis Part 2 - Exercise.ipynb 11.0 kB
  • 51. Deep Learning - Business Case Example/1. Business Case Exploring the Dataset and Identifying Predictors.srt 10.9 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/8.1 TensorFlow_Audiobooks_optimizing_the_algorithm.ipynb 10.9 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/9.2 TensorFlow_Audiobooks_optimizing_the_algorithm.ipynb 10.9 kB
  • 2/5. Business Analytics, Data Analytics, and Data Science An Introduction.srt 10.9 kB
  • 5. The Field of Data Science - Popular Data Science Techniques/1. Techniques for Working with Traditional Data.srt 10.9 kB
  • 18/9.1 3.11. Population variance unknown, t-score_exercise.xlsx 10.9 kB
  • 35/8. Practical Example Linear Regression (Part 5).srt 10.8 kB
  • 20. Statistics - Hypothesis Testing/20.1 4.9.Test-for-the-mean.Independent-samples-Part-2-exercise-2.xlsx 10.8 kB
  • 5. The Field of Data Science - Popular Data Science Techniques/15. Types of Machine Learning.srt 10.8 kB
  • 15. Statistics - Descriptive Statistics/17.1 2.7. Mean, median and mode_lesson.xlsx 10.7 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/8.1 TensorFlow_MNIST_Part4_with_comments.ipynb 10.7 kB
  • 18/12.1 3.13. Confidence intervals. Two means. Dependent samples_lesson.xlsx 10.7 kB
  • 34/10.1 sklearn - Feature Selection with F-regression.ipynb 10.7 kB
  • 34/8.1 sklearn - Multiple Linear Regression and Adjusted R-squared_with_comments.ipynb 10.7 kB
  • 56. Software Integration/5. Taking a Closer Look at APIs.srt 10.6 kB
  • 17. Statistics - Inferential Statistics Fundamentals/6.1 3.4. Standard normal distribution_lesson.xlsx 10.6 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/7.1 TensorFlow_Audiobooks_Outlining_the_model_with_comments.ipynb 10.6 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/5.1 Categorical.csv 10.6 kB
  • 34/9.2 sklearn - Multiple Linear Regression and Adjusted R-squared - Exercise Solution.ipynb 10.6 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/11. Obtaining Dummies from a Single Feature.srt 10.4 kB
  • 54/8. MNIST Learning.srt 10.4 kB
  • 18/15.1 3.14. Confidence intervals. Two means. Independent samples (Part 1)_exercise_solution.xlsx 10.4 kB
  • 15. Statistics - Descriptive Statistics/22.1 2.9. Variance_lesson.xlsx 10.3 kB
  • 51. Deep Learning - Business Case Example/9.1 TensorFlow_Audiobooks_Machine_Learning_Part3_with_comments.ipynb 10.3 kB
  • 51. Deep Learning - Business Case Example/5.1 TensorFlow_Audiobooks_Preprocessing_Exercise_Solution.ipynb 10.3 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/5.2 TensorFlow_Audiobooks_Preprocessing_Exercise_Solution.ipynb 10.3 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/16. Classifying the Various Reasons for Absence.srt 10.3 kB
  • 61. Case Study - Analyzing the Predicted Outputs in Tableau/2. Analyzing Age vs Probability in Tableau.srt 10.3 kB
  • 62. Appendix - Additional Python Tools/6. Anonymous (Lambda) Functions.srt 10.1 kB
  • 34/9.3 sklearn - Multiple Linear Regression and Adjusted R-squared - Exercise.ipynb 10.1 kB
  • 13. Probability - Probability in Other Fields/1. Probability in Finance.srt 10.1 kB
  • 18/14.1 3.14. Confidence intervals. Two means. Independent samples (Part 1)_lesson.xlsx 10.1 kB
  • 28. Python - Sequences/1. Lists.srt 10.1 kB
  • 18/15.2 3.14. Confidence intervals. Two means. Independent samples (Part 1)_exercise.xlsx 10.1 kB
  • 18/3. Confidence Intervals; Population Variance Known; Z-score.srt 10.0 kB
  • 18/17.2 3.15. Confidence intervals. Two means. Independent samples (Part 2)_exercise_solution.xlsx 10.0 kB
  • 20. Statistics - Hypothesis Testing/14.1 4.7. Test for the mean. Dependent samples_lesson.xlsx 10.0 kB
  • 12. Probability - Distributions/29.1 Customers_Membership.xlsx 9.9 kB
  • 20. Statistics - Hypothesis Testing/16.1 4.8. Test for the mean. Independent samples (Part 1)_lesson.xlsx 9.9 kB
  • 34/19. Train - Test Split Explained.srt 9.8 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/2. A Simple Example of Clustering.srt 9.8 kB
  • 61. Case Study - Analyzing the Predicted Outputs in Tableau/4. Analyzing Reasons vs Probability in Tableau.srt 9.8 kB
  • 12. Probability - Distributions/29.2 Daily Views.xlsx 9.8 kB
  • 18/16.1 3.15. Confidence intervals. Two means. Independent samples (Part 2)_lesson.xlsx 9.7 kB
  • 40. Part 6 Mathematics/15. Dot Product of Matrices.srt 9.7 kB
  • 15. Statistics - Descriptive Statistics/21.2 2.8. Skewness_exercise.xlsx 9.7 kB
  • 33/20.2 Making predictions_with_comments.ipynb 9.6 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/7.2 TensorFlow_Audiobooks_Outlining_the_model.ipynb 9.6 kB
  • 12. Probability - Distributions/3. Types of Probability Distributions.srt 9.5 kB
  • 20. Statistics - Hypothesis Testing/18.1 4.9. Test for the mean. Independent samples (Part 2)_lesson.xlsx 9.5 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/6. MNIST Preprocess the Data - Shuffle and Batch.srt 9.5 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/12. Market Segmentation with Cluster Analysis (Part 2).srt 9.4 kB
  • 18/17.1 3.15. Confidence intervals. Two means. Independent samples (Part 2)_exercise.xlsx 9.4 kB
  • 34/8.2 sklearn - Multiple Linear Regression and Adjusted R-squared.ipynb 9.3 kB
  • 54/4. MNIST Model Outline.srt 9.3 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/6.1 TensorFlow_Minimal_example_Part2.ipynb 9.3 kB
  • 34/19.1 sklearn - Train Test Split_with_comments.ipynb 9.3 kB
  • 3/1. Applying Traditional Data, Big Data, BI, Traditional Data Science and ML.srt 9.2 kB
  • 9. Part 2 Probability/1. The Basic Probability Formula.srt 9.1 kB
  • 22. Part 4 Introduction to Python/7. Installing Python and Jupyter.srt 9.1 kB
  • 5. The Field of Data Science - Popular Data Science Techniques/13. Machine Learning (ML) Techniques.srt 8.9 kB
  • 20. Statistics - Hypothesis Testing/4. Rejection Region and Significance Level.srt 8.9 kB
  • 12. Probability - Distributions/15. Characteristics of Continuous Distributions.srt 8.9 kB
  • 34/7.2 sklearn - Multiple Linear Regression_with_comments.ipynb 8.9 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/8.1 5.5. TensorFlow_Minimal_example_Part_3.ipynb 8.9 kB
  • 5. The Field of Data Science - Popular Data Science Techniques/7. Business Intelligence (BI) Techniques.srt 8.8 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/7.1 TensorFlow_MNIST_Part3_with_comments.ipynb 8.8 kB
  • 51. Deep Learning - Business Case Example/5.2 TensorFlow_Audiobooks_Preprocessing_Exercise.ipynb 8.8 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/5.1 TensorFlow_Audiobooks_Preprocessing_Exercise.ipynb 8.8 kB
  • 56. Software Integration/3. What are Data Connectivity, APIs, and Endpoints.srt 8.7 kB
  • 54/7.1 12.7. TensorFlow_MNIST_with_comments_Part_5.ipynb 8.7 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/32.1 Absenteeism Exercise - Preprocessing - df_preprocessed.ipynb 8.7 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/7.2 How to Choose the Number of Clusters - Solution.ipynb 8.7 kB
  • 21. Statistics - Practical Example Hypothesis Testing/1. Practical Example Hypothesis Testing.srt 8.7 kB
  • 42. Deep Learning - Introduction to Neural Networks/21. Optimization Algorithm 1-Parameter Gradient Descent.srt 8.7 kB
  • 13. Probability - Probability in Other Fields/2. Probability in Statistics.srt 8.6 kB
  • 28. Python - Sequences/7. Dictionaries.srt 8.6 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/26. Analyzing the Dates from the Initial Data Set.srt 8.6 kB
  • 59/2. Creating the Targets for the Logistic Regression.srt 8.6 kB
  • 28. Python - Sequences/3. Using Methods.srt 8.6 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/29.1 Absenteeism Exercise - Removing the Date Column - SOLUTION.ipynb 8.5 kB
  • 12. Probability - Distributions/11. Discrete Distributions The Binomial Distribution.srt 8.5 kB
  • 62. Appendix - Additional Python Tools/3. Introduction to Nested For Loops.srt 8.5 kB
  • 36. Advanced Statistical Methods - Logistic Regression/16.3 Bank_data_testing.csv 8.5 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/3.3 Countries-exercise.csv 8.5 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/7.3 Countries_exercise.csv 8.5 kB
  • 54/9. MNIST Results and Testing.srt 8.4 kB
  • 33/18. Dealing with Categorical Data - Dummy Variables.srt 8.3 kB
  • 20. Statistics - Hypothesis Testing/8. Test for the Mean. Population Variance Known.srt 8.3 kB
  • 59/5. Splitting the Data for Training and Testing.srt 8.3 kB
  • 18/12. Confidence intervals. Two means. Dependent samples.srt 8.2 kB
  • 35/2. Practical Example Linear Regression (Part 2).srt 8.2 kB
  • 62. Appendix - Additional Python Tools/4. Triple Nested For Loops.srt 8.2 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/27. Extracting the Month Value from the Date Column.srt 8.2 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/10. MNIST Learning.srt 8.1 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/9. Basic NN Example with TF Model Output.srt 8.1 kB
  • 29. Python - Iterations/8. How to Iterate over Dictionaries.srt 8.1 kB
  • 32/8. First Regression in Python.srt 8.1 kB
  • 54/6.1 12.6. TensorFlow_MNIST_with_comments_Part_4.ipynb 8.1 kB
  • 59/8. Interpreting the Coefficients for Our Problem.srt 8.1 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/6. Outlining the Model with TensorFlow 2.srt 8.0 kB
  • 51. Deep Learning - Business Case Example/9. Business Case Setting an Early Stopping Mechanism.srt 8.0 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/7. Dropping a Column from a DataFrame in Python.srt 8.0 kB
  • 22. Part 4 Introduction to Python/9. Prerequisites for Coding in the Jupyter Notebooks.srt 8.0 kB
  • 34/7.3 sklearn - Multiple Linear Regression.ipynb 8.0 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/6. Creating a Data Provider.srt 7.9 kB
  • 34/14. Feature Scaling (Standardization).srt 7.9 kB
  • 29. Python - Iterations/4. Lists with the range() Function.srt 7.8 kB
  • 36. Advanced Statistical Methods - Logistic Regression/15.3 Testing the model_with_comments.ipynb 7.7 kB
  • 23. Python - Variables and Data Types/5.3 Strings - Lecture_Py3.ipynb 7.7 kB
  • 12. Probability - Distributions/1. Fundamentals of Probability Distributions.srt 7.7 kB
  • 15. Statistics - Descriptive Statistics/22. Variance.srt 7.7 kB
  • 60. Case Study - Loading the 'absenteeism_module'/3. Deploying the 'absenteeism_module' - Part II.srt 7.7 kB
  • 33/3. Adjusted R-Squared.srt 7.7 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/11. Market Segmentation with Cluster Analysis (Part 1).srt 7.7 kB
  • 42. Deep Learning - Introduction to Neural Networks/23. Optimization Algorithm n-Parameter Gradient Descent.srt 7.7 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/6.2 Selecting the number of clusters_with_comments.ipynb 7.7 kB
  • 29. Python - Iterations/6. Conditional Statements and Loops.srt 7.6 kB
  • 59/6. Fitting the Model and Assessing its Accuracy.srt 7.6 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/6. How to Choose the Number of Clusters.srt 7.5 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/7. Basic NN Example with TF Inputs, Outputs, Targets, Weights, Biases.srt 7.5 kB
  • 39. Advanced Statistical Methods - Other Types of Clustering/2. Dendrogram.srt 7.5 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/14.2 Species Segmentation with Cluster Analysis Part 1- Solution.ipynb 7.5 kB
  • 34/3. Simple Linear Regression with sklearn.srt 7.5 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/29.2 Absenteeism Exercise - Preprocessing - ChP - df_date_reason_mod.ipynb 7.5 kB
  • 54/5.1 12.5. TensorFlow_MNIST_with_comments_Part_3.ipynb 7.5 kB
  • 6. The Field of Data Science - Popular Data Science Tools/1. Necessary Programming Languages and Software Used in Data Science.srt 7.5 kB
  • 34/15. Feature Selection through Standardization of Weights.srt 7.4 kB
  • 59/10. Interpreting the Coefficients of the Logistic Regression.srt 7.4 kB
  • 34/19.2 sklearn - Train Test Split.ipynb 7.4 kB
  • 61. Case Study - Analyzing the Predicted Outputs in Tableau/6. Analyzing Transportation Expense vs Probability in Tableau.srt 7.4 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/8. MNIST Outline the Model.srt 7.4 kB
  • 11. Probability - Bayesian Inference/20. Bayes' Law.srt 7.4 kB
  • 23. Python - Variables and Data Types/5. Python Strings.srt 7.3 kB
  • 33/18.3 Dummy variables_with_comments.ipynb 7.3 kB
  • 32/1. The Linear Regression Model.srt 7.2 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/3. Checking the Content of the Data Set.srt 7.2 kB
  • 20. Statistics - Hypothesis Testing/1. Null vs Alternative Hypothesis.srt 7.1 kB
  • 22. Part 4 Introduction to Python/3. Why Python.srt 7.1 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/7. Business Case Model Outline.srt 7.1 kB
  • 28. Python - Sequences/6. Tuples.srt 7.1 kB
  • 22. Part 4 Introduction to Python/1. Introduction to Programming.srt 7.1 kB
  • 46. Deep Learning - Overfitting/6. Early Stopping or When to Stop Training.srt 7.0 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/12.2 Market segmentation example_Part2_with_comments.ipynb 7.0 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/3.1 Minimal_example_Part_3.ipynb 7.0 kB
  • 36. Advanced Statistical Methods - Logistic Regression/16.2 Testing the Model - Exercise..ipynb 7.0 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/2. Basic NN Example (Part 2).srt 7.0 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/12.1 TensorFlow_MNIST_complete.ipynb 6.9 kB
  • 9. Part 2 Probability/7. Events and Their Complements.srt 6.9 kB
  • 56. Software Integration/9. Software Integration - Explained.srt 6.9 kB
  • 45/3. Digging into a Deep Net.srt 6.9 kB
  • 34/4. Simple Linear Regression with sklearn - A StatsModels-like Summary Table.srt 6.9 kB
  • 15. Statistics - Descriptive Statistics/14. Cross Tables and Scatter Plots.srt 6.8 kB
  • 9. Part 2 Probability/3. Computing Expected Values.srt 6.8 kB
  • 33/13. A3 Normality and Homoscedasticity.srt 6.8 kB
  • 34/10. Feature Selection (F-regression).srt 6.8 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/1. K-Means Clustering.srt 6.8 kB
  • 13. Probability - Probability in Other Fields/3. Probability in Data Science.srt 6.8 kB
  • 2/1. Data Science and Business Buzzwords Why are there so Many.srt 6.8 kB
  • 59/7. Creating a Summary Table with the Coefficients and Intercept.srt 6.8 kB
  • 60. Case Study - Loading the 'absenteeism_module'/1.5 absenteeism_module.py 6.8 kB
  • 26. Python - Conditional Statements/4. The ELIF Statement.srt 6.8 kB
  • 15. Statistics - Descriptive Statistics/24. Standard Deviation and Coefficient of Variation.srt 6.8 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/8. Business Case Optimization.srt 6.8 kB
  • 29. Python - Iterations/1. For Loops.srt 6.7 kB
  • 32/17. R-Squared.srt 6.7 kB
  • 12. Probability - Distributions/13. Discrete Distributions The Poisson Distribution.srt 6.7 kB
  • 36. Advanced Statistical Methods - Logistic Regression/15. Testing the Model.srt 6.7 kB
  • 4. The Field of Data Science - The Benefits of Each Discipline/1. The Reason Behind These Disciplines.srt 6.7 kB
  • 59/12. Testing the Model We Created.srt 6.7 kB
  • 52. Deep Learning - Conclusion/4. An overview of CNNs.srt 6.6 kB
  • 9. Part 2 Probability/5. Frequency.srt 6.6 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/13. How is Clustering Useful.srt 6.5 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/5.1 TensorFlow_MNIST_Part2_with_comments.ipynb 6.5 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/1. How to Install TensorFlow 2.0.srt 6.5 kB
  • 1. Part 1 Introduction/1. A Practical Example What You Will Learn in This Course.srt 6.5 kB
  • 39. Advanced Statistical Methods - Other Types of Clustering/3. Heatmaps.srt 6.5 kB
  • 32/11. How to Interpret the Regression Table.srt 6.5 kB
  • 15. Statistics - Descriptive Statistics/5. Categorical Variables - Visualization Techniques.srt 6.5 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/4. MNIST Preprocess the Data - Create a Validation Set and Scale It.srt 6.4 kB
  • 34/8. Calculating the Adjusted R-Squared in sklearn.srt 6.4 kB
  • 51. Deep Learning - Business Case Example/8. Business Case Learning and Interpreting the Result.srt 6.4 kB
  • 20. Statistics - Hypothesis Testing/14. Test for the Mean. Dependent Samples.srt 6.4 kB
  • 37. Advanced Statistical Methods - Cluster Analysis/2. Some Examples of Clusters.srt 6.4 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/7. Interpreting the Result and Extracting the Weights and Bias.srt 6.4 kB
  • 36. Advanced Statistical Methods - Logistic Regression/5.3 Example_bank_data.csv 6.4 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/7.1 5.4. TensorFlow_Minimal_example_Part_2.ipynb 6.3 kB
  • 28. Python - Sequences/7.3 Dictionaries - Solution_Py3.ipynb 6.3 kB
  • 18/10. Margin of Error.srt 6.3 kB
  • 40. Part 6 Mathematics/7. Arrays in Python - A Convenient Way To Represent Matrices.srt 6.3 kB
  • 54/4.1 12.4. TensorFlow_MNIST_with_comments_Part_2.ipynb 6.2 kB
  • 30. Python - Advanced Python Tools/1. Object Oriented Programming.srt 6.2 kB
  • 18/14. Confidence intervals. Two means. Independent Samples (Part 1).srt 6.2 kB
  • 34/17.2 sklearn - Feature Scaling Exercise.ipynb 6.2 kB
  • 34/3.2 sklearn - Simple Linear Regression_with_comments.ipynb 6.2 kB
  • 62. Appendix - Additional Python Tools/2. Iterating Over Range Objects.srt 6.2 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/12. MNIST Testing the Model.srt 6.2 kB
  • 49. Deep Learning - Preprocessing/3. Standardization.srt 6.1 kB
  • 15. Statistics - Descriptive Statistics/1. Types of Data.srt 6.1 kB
  • 48/4. Learning Rate Schedules, or How to Choose the Optimal Learning Rate.srt 6.1 kB
  • 56. Software Integration/1. What are Data, Servers, Clients, Requests, and Responses.srt 6.1 kB
  • 29. Python - Iterations/3. While Loops and Incrementing.srt 6.0 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/11.3 Market segmentation example_with_comments.ipynb 6.0 kB
  • 42. Deep Learning - Introduction to Neural Networks/1. Introduction to Neural Networks.srt 6.0 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/9. To Standardize or not to Standardize.srt 6.0 kB
  • 25. Python - Other Python Operators/3.1 Logical and Identity Operators - Lecture_Py3.ipynb 6.0 kB
  • 25. Python - Other Python Operators/3.2 Logical and Identity Operators - Lecture_Py3.ipynb 6.0 kB
  • 17. Statistics - Inferential Statistics Fundamentals/2. What is a Distribution.srt 6.0 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/10. Analyzing the Reasons for Absence.srt 6.0 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/2.2 Country clusters_with_comments.ipynb 5.9 kB
  • 36. Advanced Statistical Methods - Logistic Regression/2. A Simple Example in Python.srt 5.9 kB
  • 33/20.1 Making predictions.ipynb 5.9 kB
  • 36. Advanced Statistical Methods - Logistic Regression/15.2 Testing the model.ipynb 5.9 kB
  • 25. Python - Other Python Operators/3. Logical and Identity Operators.srt 5.9 kB
  • 20. Statistics - Hypothesis Testing/12. Test for the Mean. Population Variance Unknown.srt 5.9 kB
  • 15. Statistics - Descriptive Statistics/17. Mean, median and mode.srt 5.9 kB
  • 18/8. Confidence Intervals; Population Variance Unknown; T-score.srt 5.8 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/31. Working on Education, Children, and Pets.srt 5.8 kB
  • 5. The Field of Data Science - Popular Data Science Techniques/4. Techniques for Working with Big Data.srt 5.8 kB
  • 34/13.2 sklearn - Multiple Linear Regression Exercise.ipynb 5.8 kB
  • 20. Statistics - Hypothesis Testing/6. Type I Error and Type II Error.srt 5.8 kB
  • 17. Statistics - Inferential Statistics Fundamentals/9. Central Limit Theorem.srt 5.8 kB
  • 32/7. Python Packages Installation.srt 5.8 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/4.1 Categorical data_with_comments.ipynb 5.8 kB
  • 59/16. Preparing the Deployment of the Model through a Module.srt 5.8 kB
  • 10. Probability - Combinatorics/11. Solving Combinations.srt 5.7 kB
  • 34/16. Predicting with the Standardized Coefficients.srt 5.7 kB
  • 46. Deep Learning - Overfitting/1. What is Overfitting.srt 5.7 kB
  • 51. Deep Learning - Business Case Example/4.2 TensorFlow_Audiobooks_Preprocessing.ipynb 5.7 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/4.1 TensorFlow_Audiobooks_Preprocessing.ipynb 5.7 kB
  • 59/13. Saving the Model and Preparing it for Deployment.srt 5.7 kB
  • 36. Advanced Statistical Methods - Logistic Regression/7. Understanding Logistic Regression Tables.srt 5.7 kB
  • 28. Python - Sequences/5. List Slicing.srt 5.7 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/7.1 How to Choose the Number of Clusters - Exercise.ipynb 5.7 kB
  • 11. Probability - Bayesian Inference/7. Union of Sets.srt 5.7 kB
  • 27. Python - Python Functions/7.3 Notable Built-In Functions in Python - Solution_Py3.ipynb 5.7 kB
  • 20. Statistics - Hypothesis Testing/16. Test for the mean. Independent Samples (Part 1).srt 5.6 kB
  • 56. Software Integration/7. Communication between Software Products through Text Files.srt 5.6 kB
  • 14. Part 3 Statistics/1. Population and Sample.srt 5.6 kB
  • 42. Deep Learning - Introduction to Neural Networks/11. The Linear model with Multiple Inputs and Multiple Outputs.srt 5.6 kB
  • 57. Case Study - What's Next in the Course/1. Game Plan for this Python, SQL, and Tableau Business Exercise.srt 5.6 kB
  • 23. Python - Variables and Data Types/5.1 Strings - Solution_Py3.ipynb 5.6 kB
  • 36. Advanced Statistical Methods - Logistic Regression/10. Binary Predictors in a Logistic Regression.srt 5.5 kB
  • 18/5. Confidence Interval Clarifications.srt 5.5 kB
  • 36. Advanced Statistical Methods - Logistic Regression/13.3 Calculating the Accuracy of the Model - Exercise.ipynb 5.5 kB
  • 40. Part 6 Mathematics/13. Transpose of a Matrix.srt 5.5 kB
  • 36. Advanced Statistical Methods - Logistic Regression/2.3 Admittance_with_comments.ipynb 5.4 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/11. Business Case A Comment on the Homework.srt 5.4 kB
  • 8. The Field of Data Science - Debunking Common Misconceptions/1. Debunking Common Misconceptions.srt 5.4 kB
  • 12. Probability - Distributions/19. Continuous Distributions The Standard Normal Distribution.srt 5.4 kB
  • 42. Deep Learning - Introduction to Neural Networks/19. Common Objective Functions Cross-Entropy Loss.srt 5.4 kB
  • 45/5. Activation Functions.srt 5.4 kB
  • 33/11. A2 No Endogeneity.srt 5.4 kB
  • 59/11. Backward Elimination or How to Simplify Your Model.srt 5.4 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/2. TensorFlow Outline and Comparison with Other Libraries.srt 5.4 kB
  • 42. Deep Learning - Introduction to Neural Networks/5. Types of Machine Learning.srt 5.4 kB
  • 52. Deep Learning - Conclusion/1. Summary on What You've Learned.srt 5.3 kB
  • 48/6. Adaptive Learning Rate Schedules (AdaGrad and RMSprop ).srt 5.3 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/4. TensorFlow Intro.srt 5.3 kB
  • 54/6. Calculating the Accuracy of the Model.srt 5.3 kB
  • 20. Statistics - Hypothesis Testing/18. Test for the mean. Independent Samples (Part 2).srt 5.3 kB
  • 52. Deep Learning - Conclusion/6. An Overview of non-NN Approaches.srt 5.2 kB
  • 2/9. A Breakdown of our Data Science Infographic.srt 5.2 kB
  • 1. Part 1 Introduction/2. What Does the Course Cover.srt 5.2 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/17. Using .concat() in Python.srt 5.2 kB
  • 2/3. What is the difference between Analysis and Analytics.srt 5.2 kB
  • 11. Probability - Bayesian Inference/1. Sets and Events.srt 5.2 kB
  • 20. Statistics - Hypothesis Testing/10. p-value.srt 5.2 kB
  • 59/9. Standardizing only the Numerical Variables (Creating a Custom Scaler).srt 5.1 kB
  • 28. Python - Sequences/5.3 List Slicing - Lecture_Py3.ipynb 5.1 kB
  • 12. Probability - Distributions/27. Continuous Distributions The Logistic Distribution.srt 5.1 kB
  • 36. Advanced Statistical Methods - Logistic Regression/14. Underfitting and Overfitting.srt 5.1 kB
  • 11. Probability - Bayesian Inference/13. The Conditional Probability Formula.srt 5.1 kB
  • 15. Statistics - Descriptive Statistics/27. Covariance.srt 5.0 kB
  • 34/3.1 sklearn - Simple Linear Regression.ipynb 5.0 kB
  • 33/14. A4 No Autocorrelation.srt 5.0 kB
  • 17. Statistics - Inferential Statistics Fundamentals/4. The Normal Distribution.srt 5.0 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/5.3 Clustering Categorical Data - Solution.ipynb 5.0 kB
  • 46. Deep Learning - Overfitting/3. What is Validation.srt 5.0 kB
  • 36. Advanced Statistical Methods - Logistic Regression/3. Logistic vs Logit Function.srt 5.0 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/8. Basic NN Example with TF Loss Function and Gradient Descent.srt 4.9 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/23.1 Absenteeism Exercise - Preprocessing - df_reason_mod.ipynb 4.9 kB
  • 30. Python - Advanced Python Tools/7. Importing Modules in Python.srt 4.9 kB
  • 48/1. Stochastic Gradient Descent.srt 4.9 kB
  • 49. Deep Learning - Preprocessing/5. Binary and One-Hot Encoding.srt 4.9 kB
  • 37. Advanced Statistical Methods - Cluster Analysis/1. Introduction to Cluster Analysis.srt 4.9 kB
  • 36. Advanced Statistical Methods - Logistic Regression/8.2 Understanding Logistic Regression Tables - Solution.ipynb 4.9 kB
  • 36. Advanced Statistical Methods - Logistic Regression/9. What do the Odds Actually Mean.srt 4.9 kB
  • 12. Probability - Distributions/17. Continuous Distributions The Normal Distribution.srt 4.9 kB
  • 60. Case Study - Loading the 'absenteeism_module'/2. Deploying the 'absenteeism_module' - Part I.srt 4.9 kB
  • 15. Statistics - Descriptive Statistics/30. Correlation Coefficient.srt 4.8 kB
  • 51. Deep Learning - Business Case Example/6. Business Case Load the Preprocessed Data.srt 4.8 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/12.1 Market segmentation example_Part2.ipynb 4.8 kB
  • 39. Advanced Statistical Methods - Other Types of Clustering/1. Types of Clustering.srt 4.8 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/3.1 A Simple Example of Clustering - Solution.ipynb 4.8 kB
  • 22. Part 4 Introduction to Python/5. Why Jupyter.srt 4.7 kB
  • 41. Part 7 Deep Learning/1. What to Expect from this Part.srt 4.7 kB
  • 11. Probability - Bayesian Inference/18. The Multiplication Law.srt 4.7 kB
  • 33/16. A5 No Multicollinearity.srt 4.7 kB
  • 33/18.2 Dummy Variables.ipynb 4.7 kB
  • 51. Deep Learning - Business Case Example/7.1 TensorFlow_Audiobooks_Machine_Learning_Part1_with_comments.ipynb 4.7 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/8. Pros and Cons of K-Means Clustering.srt 4.7 kB
  • 28. Python - Sequences/6.2 Tuples - Solution_Py3.ipynb 4.7 kB
  • 59/1. Exploring the Problem with a Machine Learning Mindset.srt 4.7 kB
  • 40. Part 6 Mathematics/7.1 Scalars, Vectors, and Matrices.ipynb 4.7 kB
  • 15. Statistics - Descriptive Statistics/3. Levels of Measurement.srt 4.7 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/6.1 Selecting the number of clusters.ipynb 4.6 kB
  • 23. Python - Variables and Data Types/1. Variables.srt 4.6 kB
  • 10. Probability - Combinatorics/9. Solving Variations without Repetition.srt 4.6 kB
  • 27. Python - Python Functions/7.2 Notable Built-In Functions in Python - Lecture_Py3.ipynb 4.6 kB
  • 36. Advanced Statistical Methods - Logistic Regression/11.1 Binary Predictors in a Logistic Regression - Solution.ipynb 4.6 kB
  • 18/16. Confidence intervals. Two means. Independent Samples (Part 2).srt 4.6 kB
  • 51. Deep Learning - Business Case Example/3. Business Case Balancing the Dataset.srt 4.6 kB
  • 7. The Field of Data Science - Careers in Data Science/1. Finding the Job - What to Expect and What to Look for.srt 4.6 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/3. The Importance of Working with a Balanced Dataset.srt 4.6 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/28. Extracting the Day of the Week from the Date Column.srt 4.6 kB
  • 45/7. Backpropagation.srt 4.6 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/1. Basic NN Example (Part 1).srt 4.6 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/14.3 Species Segmentation with Cluster Analysis Part 1- Exercise.ipynb 4.6 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/3. Basic NN Example (Part 3).srt 4.6 kB
  • 45/6. Activation Functions Softmax Activation.srt 4.6 kB
  • 33/20. Making Predictions with the Linear Regression.srt 4.6 kB
  • 36. Advanced Statistical Methods - Logistic Regression/5.1 Building a Logistic Regression - Solution.ipynb 4.5 kB
  • 11. Probability - Bayesian Inference/3. Ways Sets Can Interact.srt 4.5 kB
  • 28. Python - Sequences/3.3 Help Yourself with Methods - Lecture_Py3.ipynb 4.5 kB
  • 15. Statistics - Descriptive Statistics/8. Numerical Variables - Frequency Distribution Table.srt 4.5 kB
  • 28. Python - Sequences/7.2 Dictionaries - Lecture_Py3.ipynb 4.5 kB
  • 40. Part 6 Mathematics/1. What is a Matrix.srt 4.4 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/30. Analyzing Several Straightforward Columns for this Exercise.srt 4.4 kB
  • 10. Probability - Combinatorics/13. Symmetry of Combinations.srt 4.4 kB
  • 27. Python - Python Functions/2. How to Create a Function with a Parameter.srt 4.4 kB
  • 42. Deep Learning - Introduction to Neural Networks/3. Training the Model.srt 4.4 kB
  • 40. Part 6 Mathematics/14. Dot Product.srt 4.4 kB
  • 28. Python - Sequences/5.1 List Slicing - Solution_Py3.ipynb 4.4 kB
  • 24. Python - Basic Python Syntax/1.2 Arithmetic Operators - Solution_Py3.ipynb 4.3 kB
  • 27. Python - Python Functions/7. Built-in Functions in Python.srt 4.3 kB
  • 59/4. Standardizing the Data.srt 4.3 kB
  • 46. Deep Learning - Overfitting/5. N-Fold Cross Validation.srt 4.3 kB
  • 34/7. Multiple Linear Regression with sklearn.srt 4.3 kB
  • 32/13. Decomposition of Variability.srt 4.3 kB
  • 10. Probability - Combinatorics/17. Combinatorics in Real-Life The Lottery.srt 4.2 kB
  • 57. Case Study - What's Next in the Course/3. Introducing the Data Set.srt 4.2 kB
  • 12. Probability - Distributions/25. Continuous Distributions The Exponential Distribution.srt 4.2 kB
  • 18/6. Student's T Distribution.srt 4.2 kB
  • 36. Advanced Statistical Methods - Logistic Regression/12. Calculating the Accuracy of the Model.srt 4.2 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/32.2 Absenteeism Exercise - EXERCISES and SOLUTIONS.ipynb 4.2 kB
  • 35/4. Practical Example Linear Regression (Part 3).srt 4.2 kB
  • 24. Python - Basic Python Syntax/1. Using Arithmetic Operators in Python.srt 4.2 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/8. Customizing a TensorFlow 2 Model.srt 4.2 kB
  • 36. Advanced Statistical Methods - Logistic Regression/4.3 Admittance regression tables_fixed_error.ipynb 4.2 kB
  • 40. Part 6 Mathematics/5. Linear Algebra and Geometry.srt 4.2 kB
  • 10. Probability - Combinatorics/3. Permutations and How to Use Them.srt 4.2 kB
  • 32/8.2 Simple linear regression_with_comments.ipynb 4.2 kB
  • 37. Advanced Statistical Methods - Cluster Analysis/4. Math Prerequisites.srt 4.2 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/4. Introduction to Terms with Multiple Meanings.srt 4.2 kB
  • 40. Part 6 Mathematics/10. Addition and Subtraction of Matrices.srt 4.1 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/2. Importing the Absenteeism Data in Python.srt 4.1 kB
  • 45/8. Backpropagation Picture.srt 4.1 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/3.1 TensorFlow_MNIST_Part1_with_comments.ipynb 4.1 kB
  • 17. Statistics - Inferential Statistics Fundamentals/6. The Standard Normal Distribution.srt 4.0 kB
  • 54/3.1 12.3. TensorFlow_MNIST_with_comments_Part_1.ipynb 4.0 kB
  • 45/4. Non-Linearities and their Purpose.srt 4.0 kB
  • 42. Deep Learning - Introduction to Neural Networks/7. The Linear Model (Linear Algebraic Version).srt 4.0 kB
  • 49. Deep Learning - Preprocessing/1. Preprocessing Introduction.srt 4.0 kB
  • 12. Probability - Distributions/9. Discrete Distributions The Bernoulli Distribution.srt 3.9 kB
  • 32/15. What is the OLS.srt 3.9 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/11.2 Market segmentation example.ipynb 3.9 kB
  • 32/8.1 Simple linear regression.ipynb 3.9 kB
  • 23. Python - Variables and Data Types/1.2 Variables - Solution_Py3.ipynb 3.9 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/5.2 Clustering Categorical Data - Exercise.ipynb 3.9 kB
  • 40. Part 6 Mathematics/3. Scalars and Vectors.srt 3.9 kB
  • 57. Case Study - What's Next in the Course/2. The Business Task.srt 3.8 kB
  • 10. Probability - Combinatorics/15. Solving Combinations with Separate Sample Spaces.srt 3.8 kB
  • 22. Part 4 Introduction to Python/8. Understanding Jupyter's Interface - the Notebook Dashboard.srt 3.8 kB
  • 10. Probability - Combinatorics/19. A Recap of Combinatorics.srt 3.8 kB
  • 17. Statistics - Inferential Statistics Fundamentals/13. Estimators and Estimates.srt 3.8 kB
  • 47. Deep Learning - Initialization/3. State-of-the-Art Method - (Xavier) Glorot Initialization.srt 3.8 kB
  • 52. Deep Learning - Conclusion/5. An Overview of RNNs.srt 3.8 kB
  • 23. Python - Variables and Data Types/3. Numbers and Boolean Values in Python.srt 3.8 kB
  • 47. Deep Learning - Initialization/2. Types of Simple Initializations.srt 3.8 kB
  • 27. Python - Python Functions/7.1 Notable Built-In Functions in Python - Exercise_Py3.ipynb 3.7 kB
  • 59/3. Selecting the Inputs for the Logistic Regression.srt 3.7 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/2.1 Minimal_example_Part_2.ipynb 3.7 kB
  • 15. Statistics - Descriptive Statistics/19. Skewness.srt 3.7 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/23. Creating Checkpoints while Coding in Jupyter.srt 3.7 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/3. TensorFlow 1 vs TensorFlow 2.srt 3.7 kB
  • 36. Advanced Statistical Methods - Logistic Regression/12.1 Accuracy.ipynb 3.7 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/15.3 iris_with_answers.csv 3.7 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/3.2 A Simple Example of Clustering - Exercise.ipynb 3.7 kB
  • 54/2. MNIST How to Tackle the MNIST.srt 3.7 kB
  • 23. Python - Variables and Data Types/1.3 Variables - Lecture_Py3.ipynb 3.7 kB
  • 40. Part 6 Mathematics/8. What is a Tensor.srt 3.7 kB
  • 40. Part 6 Mathematics/15.1 Dot product (Part 2).ipynb 3.7 kB
  • 46. Deep Learning - Overfitting/4. Training, Validation, and Test Datasets.srt 3.7 kB
  • 5. The Field of Data Science - Popular Data Science Techniques/12. Real Life Examples of Traditional Methods.srt 3.7 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/1. MNIST The Dataset.srt 3.7 kB
  • 32/9.2 Simple Linear Regression Exercise Solution.ipynb 3.7 kB
  • 30. Python - Advanced Python Tools/5. What is the Standard Library.srt 3.6 kB
  • 36. Advanced Statistical Methods - Logistic Regression/2.2 Admittance.ipynb 3.6 kB
  • 54/5. MNIST Loss and Optimization Algorithm.srt 3.6 kB
  • 26. Python - Conditional Statements/1. The IF Statement.srt 3.6 kB
  • 24. Python - Basic Python Syntax/1.1 Arithmetic Operators - Lecture_Py3.ipynb 3.6 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/2. MNIST How to Tackle the MNIST.srt 3.6 kB
  • 27. Python - Python Functions/5. Conditional Statements and Functions.srt 3.6 kB
  • 47. Deep Learning - Initialization/1. What is Initialization.srt 3.6 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/5. Types of File Formats Supporting TensorFlow.srt 3.6 kB
  • 11. Probability - Bayesian Inference/15. The Law of Total Probability.srt 3.6 kB
  • 54/1. MNIST What is the MNIST Dataset.srt 3.6 kB
  • 10. Probability - Combinatorics/7. Solving Variations with Repetition.srt 3.6 kB
  • 11. Probability - Bayesian Inference/11. Dependence and Independence of Sets.srt 3.5 kB
  • 34/18. Underfitting and Overfitting.srt 3.5 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/6. Types of File Formats, supporting Tensors.srt 3.5 kB
  • 48/3. Momentum.srt 3.5 kB
  • 25. Python - Other Python Operators/3.3 Logical and Identity Operators - Solution_Py3.ipynb 3.5 kB
  • 34/1. What is sklearn and How is it Different from Other Packages.srt 3.5 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/2. How to Install TensorFlow 1.srt 3.5 kB
  • 33/19.3 real_estate_price_size_year_view.csv 3.5 kB
  • 23. Python - Variables and Data Types/3.2 Numbers and Boolean Values - Lecture_Py3.ipynb 3.4 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/6.1 5.3. TensorFlow_Minimal_example_Part_1.ipynb 3.4 kB
  • 33/1. Multiple Linear Regression.srt 3.4 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/4.2 Categorical data.ipynb 3.4 kB
  • 48/7. Adam (Adaptive Moment Estimation).srt 3.4 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/2.1 Country clusters.ipynb 3.4 kB
  • 27. Python - Python Functions/3.3 Another Way to Define a Function - Lecture_Py3.ipynb 3.4 kB
  • 36. Advanced Statistical Methods - Logistic Regression/4. Building a Logistic Regression.srt 3.4 kB
  • 37. Advanced Statistical Methods - Cluster Analysis/3. Difference between Classification and Clustering.srt 3.4 kB
  • 10. Probability - Combinatorics/5. Simple Operations with Factorials.srt 3.3 kB
  • 18/1. What are Confidence Intervals.srt 3.3 kB
  • 26. Python - Conditional Statements/4.2 Else If, for Brief - Elif - Lecture_Py3.ipynb 3.3 kB
  • 45/2. What is a Deep Net.srt 3.3 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/4. Clustering Categorical Data.srt 3.3 kB
  • 23. Python - Variables and Data Types/3.1 Numbers and Boolean Values - Solution_Py3.ipynb 3.3 kB
  • 40. Part 6 Mathematics/10.1 Adding and subtracting matrices.ipynb 3.3 kB
  • 36. Advanced Statistical Methods - Logistic Regression/6. An Invaluable Coding Tip.srt 3.3 kB
  • 28. Python - Sequences/1.2 Lists - Solution_Py3.ipynb 3.3 kB
  • 40. Part 6 Mathematics/12.1 Errors when adding scalars, vectors, and matrices in Python.ipynb 3.2 kB
  • 36. Advanced Statistical Methods - Logistic Regression/8.1 Understanding Logistic Regression Tables - Exercise.ipynb 3.2 kB
  • 26. Python - Conditional Statements/3. The ELSE Statement.srt 3.2 kB
  • 42. Deep Learning - Introduction to Neural Networks/9. The Linear Model with Multiple Inputs.srt 3.2 kB
  • 24. Python - Basic Python Syntax/5.3 Reassign Values - Lecture_Py3.ipynb 3.2 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/3. MNIST Importing the Relevant Packages and Loading the Data.srt 3.1 kB
  • 33/7. OLS Assumptions.srt 3.1 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/9. MNIST Select the Loss and the Optimizer.srt 3.1 kB
  • 33/19.2 Multiple Linear Regression with Dummies Exercise.ipynb 3.1 kB
  • 34/12. Creating a Summary Table with P-values.srt 3.1 kB
  • 15. Statistics - Descriptive Statistics/11. The Histogram.srt 3.1 kB
  • 29. Python - Iterations/6.2 Use Conditional Statements and Loops Together - Solution_Py3.ipynb 3.0 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/9. Business Case Interpretation.srt 3.0 kB
  • 28. Python - Sequences/7.1 Dictionaries - Exercise_Py3.ipynb 3.0 kB
  • 34/2. How are we Going to Approach this Section.srt 3.0 kB
  • 54/7. MNIST Batching and Early Stopping.srt 3.0 kB
  • 36. Advanced Statistical Methods - Logistic Regression/5.2 Building a Logistic Regression - Exercise.ipynb 3.0 kB
  • 26. Python - Conditional Statements/5. A Note on Boolean Values.srt 3.0 kB
  • 28. Python - Sequences/6.3 Tuples - Lecture_Py3.ipynb 3.0 kB
  • 5. The Field of Data Science - Popular Data Science Techniques/17. Real Life Examples of Machine Learning (ML).srt 3.0 kB
  • 40. Part 6 Mathematics/13.1 Tranpose of a matrix.ipynb 3.0 kB
  • 27. Python - Python Functions/3. Defining a Function in Python - Part II.srt 2.9 kB
  • 29. Python - Iterations/8.1 Iterating over Dictionaries - Solution_Py3.ipynb 2.9 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/5. What's Regression Analysis - a Quick Refresher.html 2.9 kB
  • 48/2. Problems with Gradient Descent.srt 2.9 kB
  • 28. Python - Sequences/3.2 Help Yourself with Methods - Solution_Py3.ipynb 2.9 kB
  • 33/3.3 Multiple linear regression and Adjusted R-squared_with_comments.ipynb 2.9 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/6. Using a Statistical Approach towards the Solution to the Exercise.srt 2.9 kB
  • 12. Probability - Distributions/21. Continuous Distributions The Students' T Distribution.srt 2.9 kB
  • 28. Python - Sequences/5.2 List Slicing - Exercise_Py3.ipynb 2.9 kB
  • 32/9.1 Simple Linear Regression Exercise.ipynb 2.8 kB
  • 42. Deep Learning - Introduction to Neural Networks/17. Common Objective Functions L2-norm Loss.srt 2.8 kB
  • 49. Deep Learning - Preprocessing/4. Preprocessing Categorical Data.srt 2.8 kB
  • 12. Probability - Distributions/23. Continuous Distributions The Chi-Squared Distribution.srt 2.8 kB
  • 11. Probability - Bayesian Inference/16. The Additive Rule.srt 2.8 kB
  • 12. Probability - Distributions/7. Discrete Distributions The Uniform Distribution.srt 2.8 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/10. Business Case Testing the Model.srt 2.8 kB
  • 28. Python - Sequences/1.1 Lists - Lecture_Py3.ipynb 2.8 kB
  • 42. Deep Learning - Introduction to Neural Networks/13. Graphical Representation of Simple Neural Networks.srt 2.8 kB
  • 46. Deep Learning - Overfitting/2. Underfitting and Overfitting for Classification.srt 2.7 kB
  • 24. Python - Basic Python Syntax/1.3 Arithmetic Operators - Exercise_Py3.ipynb 2.7 kB
  • 23. Python - Variables and Data Types/5.2 Strings - Exercise_Py3.ipynb 2.7 kB
  • 40. Part 6 Mathematics/12. Errors when Adding Matrices.srt 2.6 kB
  • 36. Advanced Statistical Methods - Logistic Regression/10.1 2.02. Binary predictors.csv 2.6 kB
  • 33/6. Test for Significance of the Model (F-Test).srt 2.6 kB
  • 52. Deep Learning - Conclusion/2. What's Further out there in terms of Machine Learning.srt 2.6 kB
  • 36. Advanced Statistical Methods - Logistic Regression/11.2 Binary Predictors in a Logistic Regression - Exercise.ipynb 2.6 kB
  • 63. Bonus Lecture/1. Bonus Lecture Next Steps.html 2.6 kB
  • 25. Python - Other Python Operators/1.2 Comparison Operators - Lecture_Py3.ipynb 2.6 kB
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/2. Business Case Outlining the Solution.srt 2.6 kB
  • 11. Probability - Bayesian Inference/9. Mutually Exclusive Sets.srt 2.6 kB
  • 36. Advanced Statistical Methods - Logistic Regression/4.1 Admittance regression_summary_error.ipynb 2.5 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/1. What to Expect from the Following Sections.html 2.5 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/32. Final Remarks of this Section.srt 2.5 kB
  • 11. Probability - Bayesian Inference/5. Intersection of Sets.srt 2.5 kB
  • 25. Python - Other Python Operators/1. Comparison Operators.srt 2.5 kB
  • 12. Probability - Distributions/5. Characteristics of Discrete Distributions.srt 2.5 kB
  • 33/5.3 Multiple Linear Regression Exercise.ipynb 2.5 kB
  • 27. Python - Python Functions/1. Defining a Function in Python.srt 2.5 kB
  • 36. Advanced Statistical Methods - Logistic Regression/10.2 Binary predictors.ipynb 2.5 kB
  • 29. Python - Iterations/7. Conditional Statements, Functions, and Loops.srt 2.5 kB
  • 25. Python - Other Python Operators/1.3 Comparison Operators - Solution_Py3.ipynb 2.5 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/14.1 iris_dataset.csv 2.5 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/15.1 iris_dataset.csv 2.5 kB
  • 26. Python - Conditional Statements/4.1 Else If, for Brief - Elif - Solution_Py3.ipynb 2.5 kB
  • 45/1. What is a Layer.srt 2.4 kB
  • 33/9. A1 Linearity.srt 2.4 kB
  • 33/5.1 real_estate_price_size_year.csv 2.4 kB
  • 34/13.3 real_estate_price_size_year.csv 2.4 kB
  • 34/17.1 real_estate_price_size_year.csv 2.4 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/14. Dropping a Dummy Variable from the Data Set.html 2.4 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/3. A Note on Installing Packages in Anaconda.html 2.4 kB
  • 20. Statistics - Hypothesis Testing/2. Further Reading on Null and Alternative Hypothesis.html 2.3 kB
  • 23. Python - Variables and Data Types/3.3 Numbers and Boolean Values - Exercise_Py3.ipynb 2.3 kB
  • 29. Python - Iterations/4.3 Create Lists with the range() Function - Solution_Py3.ipynb 2.3 kB
  • 5. The Field of Data Science - Popular Data Science Techniques/3. Real Life Examples of Traditional Data.srt 2.3 kB
  • 23. Python - Variables and Data Types/1.4 Variables - Exercise_Py3.ipynb 2.3 kB
  • 31. Part 5 Advanced Statistical Methods in Python/1. Introduction to Regression Analysis.srt 2.3 kB
  • 26. Python - Conditional Statements/1.1 Introduction to the If Statement - Solution_Py3.ipynb 2.2 kB
  • 54/11. MNIST Solutions.html 2.2 kB
  • 29. Python - Iterations/8.2 Iterating over Dictionaries - Exercise_Py3.ipynb 2.2 kB
  • 38. Advanced Statistical Methods - K-Means Clustering/10. Relationship between Clustering and Regression.srt 2.2 kB
  • 24. Python - Basic Python Syntax/12. Structuring with Indentation.srt 2.2 kB
  • 24. Python - Basic Python Syntax/10.3 Indexing Elements - Solution_Py3.ipynb 2.2 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/5. Actual Introduction to TensorFlow.srt 2.2 kB
  • 48/5. Learning Rate Schedules Visualized.srt 2.2 kB
  • 33/3.2 Multiple linear regression and Adjusted R-squared_.ipynb 2.2 kB
  • 59/14. ARTICLE - A Note on 'pickling'.html 2.2 kB
  • 28. Python - Sequences/1.3 Lists - Exercise_Py3.ipynb 2.2 kB
  • 40. Part 6 Mathematics/14.1 Dot product.ipynb 2.2 kB
  • 5. The Field of Data Science - Popular Data Science Techniques/9. Real Life Examples of Business Intelligence (BI).srt 2.2 kB
  • 54/10. MNIST Exercises.html 2.2 kB
  • 24. Python - Basic Python Syntax/5.2 Reassign Values - Solution_Py3.ipynb 2.2 kB
  • 42. Deep Learning - Introduction to Neural Networks/15. What is the Objective Function.srt 2.2 kB
  • 54/3. MNIST Relevant Packages.srt 2.2 kB
  • 61. Case Study - Analyzing the Predicted Outputs in Tableau/1.1 Absenteeism_predictions.csv 2.2 kB
  • 61. Case Study - Analyzing the Predicted Outputs in Tableau/2.1 Absenteeism_predictions.csv 2.2 kB
  • 29. Python - Iterations/6.1 Use Conditional Statements and Loops Together - Exercise_Py3.ipynb 2.1 kB
  • 32/3. Correlation vs Regression.srt 2.1 kB
  • 36. Advanced Statistical Methods - Logistic Regression/4.2 Admittance regression.ipynb 2.1 kB
  • 40. Part 6 Mathematics/8.1 Tensors.ipynb 2.1 kB
  • 28. Python - Sequences/6.1 Tuples - Exercise_Py3.ipynb 2.1 kB
  • 51. Deep Learning - Business Case Example/11. Business Case Testing the Model.srt 2.1 kB
  • 27. Python - Python Functions/4. How to Use a Function within a Function.srt 2.1 kB
  • 17. Statistics - Inferential Statistics Fundamentals/11. Standard error.srt 2.1 kB
  • 51. Deep Learning - Business Case Example/2. Business Case Outlining the Solution.srt 2.0 kB
  • 27. Python - Python Functions/3.1 Another Way to Define a Function - Solution_Py3.ipynb 2.0 kB
  • 50. Deep Learning - Classifying on the MNIST Dataset/11. MNIST - Exercises.html 2.0 kB
  • 18/18. Confidence intervals. Two means. Independent Samples (Part 3).srt 2.0 kB
  • 29. Python - Iterations/6.3 Use Conditional Statements and Loops Together - Lecture_Py3.ipynb 2.0 kB
  • 28. Python - Sequences/3.1 Help Yourself with Methods - Exercise_Py3.ipynb 2.0 kB
  • 29. Python - Iterations/7.3 All In - Solution_Py3.ipynb 1.9 kB
  • 5. The Field of Data Science - Popular Data Science Techniques/6. Real Life Examples of Big Data.srt 1.9 kB
  • 60. Case Study - Loading the 'absenteeism_module'/1.1 Absenteeism_new_data.csv 1.9 kB
  • 60. Case Study - Loading the 'absenteeism_module'/1.3 scaler.original 1.9 kB
  • 32/9.3 real_estate_price_size.csv 1.9 kB
  • 24. Python - Basic Python Syntax/3. The Double Equality Sign.srt 1.9 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/20. Reordering Columns in a Pandas DataFrame in Python.srt 1.9 kB
  • 39. Advanced Statistical Methods - Other Types of Clustering/3.2 Heatmaps.ipynb 1.9 kB
  • 29. Python - Iterations/1.2 For Loops - Solution_Py3.ipynb 1.8 kB
  • 24. Python - Basic Python Syntax/7. Add Comments.srt 1.8 kB
  • 27. Python - Python Functions/2.1 Creating a Function with a Parameter - Solution_Py3.ipynb 1.8 kB
  • 26. Python - Conditional Statements/3.1 Add an Else Statement - Lecture_Py3.ipynb 1.8 kB
  • 26. Python - Conditional Statements/4.3 Else If, for Brief - Elif - Exercise_Py3.ipynb 1.8 kB
  • 29. Python - Iterations/3.3 While Loops and Incrementing - Solution_Py3.ipynb 1.8 kB
  • 27. Python - Python Functions/6.1 Creating Functions Containing a Few Arguments - Lecture_Py3.ipynb 1.8 kB
  • 24. Python - Basic Python Syntax/10. Indexing Elements.srt 1.7 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/15. More on Dummy Variables A Statistical Perspective.srt 1.7 kB
  • 24. Python - Basic Python Syntax/5.1 Reassign Values - Exercise_Py3.ipynb 1.7 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/5. Basic NN Example Exercises.html 1.7 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/5.1 TensorFlow_Minimal_example_Part1.ipynb 1.7 kB
  • 27. Python - Python Functions/5.3 Combining Conditional Statements and Functions - Solution_Py3.ipynb 1.7 kB
  • 32/5. Geometrical Representation of the Linear Regression Model.srt 1.7 kB
  • 49. Deep Learning - Preprocessing/2. Types of Basic Preprocessing.srt 1.7 kB
  • 17. Statistics - Inferential Statistics Fundamentals/1. Introduction.srt 1.7 kB
  • 29. Python - Iterations/7.1 All In - Lecture_Py3.ipynb 1.7 kB
  • 36. Advanced Statistical Methods - Logistic Regression/1. Introduction to Logistic Regression.srt 1.6 kB
  • 25. Python - Other Python Operators/1.1 Comparison Operators - Exercise_Py3.ipynb 1.6 kB
  • 27. Python - Python Functions/4.2 0.6.4 Using a Function in another Function - Solution_Py3.ipynb 1.6 kB
  • 27. Python - Python Functions/2.2 Creating a Function with a Parameter - Lecture_Py3.ipynb 1.6 kB
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/10. Basic NN Example with TF Exercises.html 1.6 kB
  • 36. Advanced Statistical Methods - Logistic Regression/2.1 2.01. Admittance.csv 1.6 kB
  • 26. Python - Conditional Statements/1.2 Introduction to the If Statement - Exercise_Py3.ipynb 1.6 kB
  • 24. Python - Basic Python Syntax/9.3 Line Continuation - Solution_Py3.ipynb 1.5 kB
  • 24. Python - Basic Python Syntax/12.3 Structure Your Code with Indentation - Solution_Py3.ipynb 1.5 kB
  • 32/10. Using Seaborn for Graphs.srt 1.5 kB
  • 29. Python - Iterations/4.2 Create Lists with the range() Function - Exercise_Py3.ipynb 1.5 kB
  • 24. Python - Basic Python Syntax/3.2 The Double Equality Sign - Lecture_Py3.ipynb 1.5 kB
  • 26. Python - Conditional Statements/3.2 Add an Else Statement - Solution_Py3.ipynb 1.4 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/4. A Note on TensorFlow 2 Syntax.srt 1.4 kB
  • 24. Python - Basic Python Syntax/10.1 Indexing Elements - Exercise_Py3.ipynb 1.4 kB
  • 29. Python - Iterations/4.1 Create Lists with the range() Function - Lecture_Py3.ipynb 1.4 kB
  • 27. Python - Python Functions/6. Functions Containing a Few Arguments.srt 1.4 kB
  • 32/9. First Regression in Python Exercise.html 1.4 kB
  • 24. Python - Basic Python Syntax/10.2 Indexing Elements - Lecture_Py3.ipynb 1.3 kB
  • 10. Probability - Combinatorics/1. Fundamentals of Combinatorics.srt 1.3 kB
  • 29. Python - Iterations/7.2 All In - Exercise_Py3.ipynb 1.3 kB
  • 24. Python - Basic Python Syntax/5. How to Reassign Values.srt 1.3 kB
  • 44. Deep Learning - TensorFlow 2.0 Introduction/9. Basic NN with TensorFlow Exercises.html 1.3 kB
  • 27. Python - Python Functions/5.1 Combining Conditional Statements and Functions - Lecture_Py3.ipynb 1.3 kB
  • 29. Python - Iterations/1.3 For Loops - Exercise_Py3.ipynb 1.3 kB
  • 29. Python - Iterations/1.1 For Loops - Lecture_Py3.ipynb 1.3 kB
  • 30. Python - Advanced Python Tools/3. Modules and Packages.srt 1.3 kB
  • 27. Python - Python Functions/3.2 Another Way to Define a Function - Exercise_Py3.ipynb 1.3 kB
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/29. EXERCISE - Removing the Date Column.html 1.2 kB
  • 33/18.1 1.03. Dummies.csv 1.2 kB
  • 43. Deep Learning - How to Build a Neural Network from Scratch with NumPy/1.2 Minimal_example_Part_1.ipynb 1.2 kB
  • 27. Python - Python Functions/2.3 Creating a Function with a Parameter - Exercise_Py3.ipynb 1.2 kB
  • 26. Python - Conditional Statements/1.3 Introduction to the If Statement - Lecture_Py3.ipynb 1.2 kB
  • 24. Python - Basic Python Syntax/3.3 The Double Equality Sign - Solution_Py3.ipynb 1.2 kB
  • 24. Python - Basic Python Syntax/9.2 Line Continuation - Exercise_Py3.ipynb 1.2 kB
  • 24. Python - Basic Python Syntax/9. Understanding Line Continuation.srt 1.2 kB
  • 29. Python - Iterations/3.2 While Loops and Incrementing - Exercise_Py3.ipynb 1.1 kB
  • 33/3.1 1.02. Multiple linear regression.csv 1.1 kB
  • 29. Python - Iterations/3.1 While Loops and Incrementing - Lecture_Py3.ipynb 1.1 kB
  • 29. Python - Iterations/8.3 Iterating over Dictionaries - Lecture_Py3.ipynb 1.1 kB
  • 34/10.2 1.02. Multiple linear regression.csv 1.1 kB
  • 34/11.2 1.02. Multiple linear regression.csv 1.1 kB
  • 34/12.2 1.02. Multiple linear regression.csv 1.1 kB
  • 34/14.1 1.02. Multiple linear regression.csv 1.1 kB
  • 34/15.1 1.02. Multiple linear regression.csv 1.1 kB
  • 34/16.1 1.02. Multiple linear regression.csv 1.1 kB
  • 34/7.1 1.02. Multiple linear regression.csv 1.1 kB
  • 34/8.3 1.02. Multiple linear regression.csv 1.1 kB
  • 34/9.1 1.02. Multiple linear regression.csv 1.1 kB
  • 27. Python - Python Functions/5.2 Combining Conditional Statements and Functions - Exercise_Py3.ipynb 1.1 kB
  • 52. Deep Learning - Conclusion/3. DeepMind and Deep Learning.html 1.1 kB
  • 27. Python - Python Functions/4.3 0.6.4 Using a Function in another Function - Exercise_Py3.ipynb 1.1 kB
  • 24. Python - Basic Python Syntax/7.1 Add Comments - Lecture_Py3.ipynb 1.1 kB
  • 26. Python - Conditional Statements/3.3 Add an Else Statement - Exercise_Py3.ipynb 1.0 kB
  • 60. Case Study - Loading the 'absenteeism_module'/1.2 model.original 1.0 kB
  • 27. Python - Python Functions/4.1 0.6.4 Using a Function in another Function - Lecture_Py3.ipynb 1.0 kB
  • 60. Case Study - Loading the 'absenteeism_module'/4. Exporting the Obtained Data Set as a .csv.html 998 Bytes
  • 60. Case Study - Loading the 'absenteeism_module'/4.1 Absenteeism Exercise - Deploying the 'absenteeism_module'.ipynb 973 Bytes
  • 24. Python - Basic Python Syntax/12.2 Structure Your Code with Indentation - Exercise_Py3.ipynb 956 Bytes
  • 32/8.3 1.01. Simple linear regression.csv 922 Bytes
  • 34/3.3 1.01. Simple linear regression.csv 922 Bytes
  • 34/4.1 1.01. Simple linear regression.csv 922 Bytes
  • 34/6.3 1.01. Simple linear regression.csv 922 Bytes
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/33. A Note on Exporting Your Data as a .csv File.html 883 Bytes
  • 27. Python - Python Functions/1.1 Defining a Function in Python - Lecture_Py3.ipynb 868 Bytes
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/8. EXERCISE - Dropping a Column from a DataFrame in Python.html 866 Bytes
  • 35/3. A Note on Multicollinearity.html 849 Bytes
  • 24. Python - Basic Python Syntax/3.1 The Double Equality Sign - Exercise_Py3.ipynb 838 Bytes
  • 26. Python - Conditional Statements/5.1 A Note on Boolean Values - Lecture_Py3.ipynb 791 Bytes
  • 24. Python - Basic Python Syntax/9.1 Line Continuation - Lecture_Py3.ipynb 779 Bytes
  • 34/5. A Note on Normalization.html 733 Bytes
  • 35/7. Dummy Variables - Exercise.html 713 Bytes
  • 53. Appendix Deep Learning - TensorFlow 1 Introduction/1. READ ME!!!!.html 564 Bytes
  • 61. Case Study - Analyzing the Predicted Outputs in Tableau/5. EXERCISE - Transportation Expense vs Probability.html 553 Bytes
  • 45/9. Backpropagation - A Peek into the Mathematics of Optimization.html 539 Bytes
  • 15. Statistics - Descriptive Statistics/23. Variance Exercise.html 522 Bytes
  • 60. Case Study - Loading the 'absenteeism_module'/1. Are You Sure You're All Set.html 519 Bytes
  • 35/9. Linear Regression - Exercise.html 503 Bytes
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/22. SOLUTION - Reordering Columns in a Pandas DataFrame in Python.html 471 Bytes
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/12. Business Case Final Exercise.html 439 Bytes
  • 51. Deep Learning - Business Case Example/12. Business Case Final Exercise.html 433 Bytes
  • 61. Case Study - Analyzing the Predicted Outputs in Tableau/3. EXERCISE - Reasons vs Probability.html 397 Bytes
  • 61. Case Study - Analyzing the Predicted Outputs in Tableau/1. EXERCISE - Age vs Probability.html 385 Bytes
  • 55. Appendix Deep Learning - TensorFlow 1 Business Case/5. Business Case Preprocessing Exercise.html 383 Bytes
  • 34/11. A Note on Calculation of P-values with sklearn.html 372 Bytes
  • 51. Deep Learning - Business Case Example/5. Business Case Preprocessing the Data - Exercise.html 370 Bytes
  • 36. Advanced Statistical Methods - Logistic Regression/15.1 2.03. Test dataset.csv 322 Bytes
  • 59/15. EXERCISE - Saving the Model (and Scaler).html 284 Bytes
  • 38. Advanced Statistical Methods - K-Means Clustering/11.1 3.12. Example.csv 283 Bytes
  • 39. Advanced Statistical Methods - Other Types of Clustering/3.3 Country clusters standardized.csv 244 Bytes
  • 59/11.1 Logistic Regression prior to Backward Elimination.html 226 Bytes
  • 59/9.1 Logistic Regression prior to Custom Scaler.html 219 Bytes
  • 59/15.1 Logistic Regression with Comments.html 210 Bytes
  • 38. Advanced Statistical Methods - K-Means Clustering/2.3 3.01. Country clusters.csv 200 Bytes
  • 59/15.2 Logistic Regression.html 196 Bytes
  • 51. Deep Learning - Business Case Example/10. Setting an Early Stopping Mechanism - Exercise.html 192 Bytes
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/18. EXERCISE - Using .concat() in Python.html 189 Bytes
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/21. EXERCISE - Reordering Columns in a Pandas DataFrame in Python.html 167 Bytes
  • 10. Probability - Combinatorics/10. Solving Variations without Repetition.html 165 Bytes
  • 10. Probability - Combinatorics/12. Solving Combinations.html 165 Bytes
  • 10. Probability - Combinatorics/14. Symmetry of Combinations.html 165 Bytes
  • 10. Probability - Combinatorics/16. Solving Combinations with Separate Sample Spaces.html 165 Bytes
  • 10. Probability - Combinatorics/18. Combinatorics in Real-Life The Lottery.html 165 Bytes
  • 10. Probability - Combinatorics/2. Fundamentals of Combinatorics.html 165 Bytes
  • 10. Probability - Combinatorics/4. Permutations and How to Use Them.html 165 Bytes
  • 10. Probability - Combinatorics/6. Simple Operations with Factorials.html 165 Bytes
  • 10. Probability - Combinatorics/8. Solving Variations with Repetition.html 165 Bytes
  • 11. Probability - Bayesian Inference/10. Mutually Exclusive Sets.html 165 Bytes
  • 11. Probability - Bayesian Inference/12. Dependence and Independence of Sets.html 165 Bytes
  • 11. Probability - Bayesian Inference/14. The Conditional Probability Formula.html 165 Bytes
  • 11. Probability - Bayesian Inference/17. The Additive Rule.html 165 Bytes
  • 11. Probability - Bayesian Inference/19. The Multiplication Law.html 165 Bytes
  • 11. Probability - Bayesian Inference/2. Sets and Events.html 165 Bytes
  • 11. Probability - Bayesian Inference/21. Bayes' Law.html 165 Bytes
  • 11. Probability - Bayesian Inference/4. Ways Sets Can Interact.html 165 Bytes
  • 11. Probability - Bayesian Inference/6. Intersection of Sets.html 165 Bytes
  • 11. Probability - Bayesian Inference/8. Union of Sets.html 165 Bytes
  • 12. Probability - Distributions/10. Discrete Distributions The Bernoulli Distribution.html 165 Bytes
  • 12. Probability - Distributions/12. Discrete Distributions The Binomial Distribution.html 165 Bytes
  • 12. Probability - Distributions/14. Discrete Distributions The Poisson Distribution.html 165 Bytes
  • 12. Probability - Distributions/16. Characteristics of Continuous Distributions.html 165 Bytes
  • 12. Probability - Distributions/18. Continuous Distributions The Normal Distribution.html 165 Bytes
  • 12. Probability - Distributions/2. Fundamentals of Probability Distributions.html 165 Bytes
  • 12. Probability - Distributions/20. Continuous Distributions The Standard Normal Distribution.html 165 Bytes
  • 12. Probability - Distributions/22. Continuous Distributions The Students' T Distribution.html 165 Bytes
  • 12. Probability - Distributions/24. Continuous Distributions The Chi-Squared Distribution.html 165 Bytes
  • 12. Probability - Distributions/26. Continuous Distributions The Exponential Distribution.html 165 Bytes
  • 12. Probability - Distributions/28. Continuous Distributions The Logistic Distribution.html 165 Bytes
  • 12. Probability - Distributions/4. Types of Probability Distributions.html 165 Bytes
  • 12. Probability - Distributions/6. Characteristics of Discrete Distributions.html 165 Bytes
  • 12. Probability - Distributions/8. Discrete Distributions The Uniform Distribution.html 165 Bytes
  • 14. Part 3 Statistics/2. Population and Sample.html 165 Bytes
  • 15. Statistics - Descriptive Statistics/12. The Histogram.html 165 Bytes
  • 15. Statistics - Descriptive Statistics/15. Cross Tables and Scatter Plots.html 165 Bytes
  • 15. Statistics - Descriptive Statistics/2. Types of Data.html 165 Bytes
  • 15. Statistics - Descriptive Statistics/20. Skewness.html 165 Bytes
  • 15. Statistics - Descriptive Statistics/25. Standard Deviation.html 165 Bytes
  • 15. Statistics - Descriptive Statistics/28. Covariance.html 165 Bytes
  • 15. Statistics - Descriptive Statistics/31. Correlation.html 165 Bytes
  • 15. Statistics - Descriptive Statistics/4. Levels of Measurement.html 165 Bytes
  • 15. Statistics - Descriptive Statistics/6. Categorical Variables - Visualization Techniques.html 165 Bytes
  • 15. Statistics - Descriptive Statistics/9. Numerical Variables - Frequency Distribution Table.html 165 Bytes
  • 17. Statistics - Inferential Statistics Fundamentals/10. Central Limit Theorem.html 165 Bytes
  • 17. Statistics - Inferential Statistics Fundamentals/12. Standard Error.html 165 Bytes
  • 17. Statistics - Inferential Statistics Fundamentals/14. Estimators and Estimates.html 165 Bytes
  • 17. Statistics - Inferential Statistics Fundamentals/3. What is a Distribution.html 165 Bytes
  • 17. Statistics - Inferential Statistics Fundamentals/5. The Normal Distribution.html 165 Bytes
  • 17. Statistics - Inferential Statistics Fundamentals/7. The Standard Normal Distribution.html 165 Bytes
  • 18/11. Margin of Error.html 165 Bytes
  • 18/2. What are Confidence Intervals.html 165 Bytes
  • 18/7. Student's T Distribution.html 165 Bytes
  • 2/10. A Breakdown of our Data Science Infographic.html 165 Bytes
  • 2/2. Data Science and Business Buzzwords Why are there so Many.html 165 Bytes
  • 2/4. What is the difference between Analysis and Analytics.html 165 Bytes
  • 2/6. Business Analytics, Data Analytics, and Data Science An Introduction.html 165 Bytes
  • 2/8. Continuing with BI, ML, and AI.html 165 Bytes
  • 20. Statistics - Hypothesis Testing/11. p-value.html 165 Bytes
  • 20. Statistics - Hypothesis Testing/19. Test for the mean. Independent Samples (Part 2).html 165 Bytes
  • 20. Statistics - Hypothesis Testing/3. Null vs Alternative Hypothesis.html 165 Bytes
  • 20. Statistics - Hypothesis Testing/5. Rejection Region and Significance Level.html 165 Bytes
  • 20. Statistics - Hypothesis Testing/7. Type I Error and Type II Error.html 165 Bytes
  • 22. Part 4 Introduction to Python/10. Jupyter's Interface.html 165 Bytes
  • 22. Part 4 Introduction to Python/2. Introduction to Programming.html 165 Bytes
  • 22. Part 4 Introduction to Python/4. Why Python.html 165 Bytes
  • 22. Part 4 Introduction to Python/6. Why Jupyter.html 165 Bytes
  • 23. Python - Variables and Data Types/2. Variables.html 165 Bytes
  • 23. Python - Variables and Data Types/4. Numbers and Boolean Values in Python.html 165 Bytes
  • 23. Python - Variables and Data Types/6. Python Strings.html 165 Bytes
  • 24. Python - Basic Python Syntax/11. Indexing Elements.html 165 Bytes
  • 24. Python - Basic Python Syntax/13. Structuring with Indentation.html 165 Bytes
  • 24. Python - Basic Python Syntax/2. Using Arithmetic Operators in Python.html 165 Bytes
  • 24. Python - Basic Python Syntax/4. The Double Equality Sign.html 165 Bytes
  • 24. Python - Basic Python Syntax/6. How to Reassign Values.html 165 Bytes
  • 24. Python - Basic Python Syntax/8. Add Comments.html 165 Bytes
  • 25. Python - Other Python Operators/2. Comparison Operators.html 165 Bytes
  • 25. Python - Other Python Operators/4. Logical and Identity Operators.html 165 Bytes
  • 26. Python - Conditional Statements/2. The IF Statement.html 165 Bytes
  • 26. Python - Conditional Statements/6. A Note on Boolean Values.html 165 Bytes
  • 27. Python - Python Functions/8. Python Functions.html 165 Bytes
  • 28. Python - Sequences/2. Lists.html 165 Bytes
  • 28. Python - Sequences/4. Using Methods.html 165 Bytes
  • 28. Python - Sequences/8. Dictionaries.html 165 Bytes
  • 29. Python - Iterations/2. For Loops.html 165 Bytes
  • 29. Python - Iterations/5. Lists with the range() Function.html 165 Bytes
  • 3/2. Applying Traditional Data, Big Data, BI, Traditional Data Science and ML.html 165 Bytes
  • 30. Python - Advanced Python Tools/2. Object Oriented Programming.html 165 Bytes
  • 30. Python - Advanced Python Tools/4. Modules and Packages.html 165 Bytes
  • 30. Python - Advanced Python Tools/6. What is the Standard Library.html 165 Bytes
  • 30. Python - Advanced Python Tools/8. Importing Modules in Python.html 165 Bytes
  • 31. Part 5 Advanced Statistical Methods in Python/2. Introduction to Regression Analysis.html 165 Bytes
  • 32/12. How to Interpret the Regression Table.html 165 Bytes
  • 32/14. Decomposition of Variability.html 165 Bytes
  • 32/16. What is the OLS.html 165 Bytes
  • 32/18. R-Squared.html 165 Bytes
  • 32/2. The Linear Regression Model.html 165 Bytes
  • 32/4. Correlation vs Regression.html 165 Bytes
  • 32/6. Geometrical Representation of the Linear Regression Model.html 165 Bytes
  • 33/10. A1 Linearity.html 165 Bytes
  • 33/12. A2 No Endogeneity.html 165 Bytes
  • 33/15. A4 No autocorrelation.html 165 Bytes
  • 33/17. A5 No Multicollinearity.html 165 Bytes
  • 33/2. Multiple Linear Regression.html 165 Bytes
  • 33/4. Adjusted R-Squared.html 165 Bytes
  • 33/8. OLS Assumptions.html 165 Bytes
  • 4. The Field of Data Science - The Benefits of Each Discipline/2. The Reason Behind These Disciplines.html 165 Bytes
  • 40. Part 6 Mathematics/11. Addition and Subtraction of Matrices.html 165 Bytes
  • 40. Part 6 Mathematics/2. What is a Matrix.html 165 Bytes
  • 40. Part 6 Mathematics/4. Scalars and Vectors.html 165 Bytes
  • 40. Part 6 Mathematics/6. Linear Algebra and Geometry.html 165 Bytes
  • 40. Part 6 Mathematics/9. What is a Tensor.html 165 Bytes
  • 42. Deep Learning - Introduction to Neural Networks/10. The Linear Model with Multiple Inputs.html 165 Bytes
  • 42. Deep Learning - Introduction to Neural Networks/12. The Linear model with Multiple Inputs and Multiple Outputs.html 165 Bytes
  • 42. Deep Learning - Introduction to Neural Networks/14. Graphical Representation of Simple Neural Networks.html 165 Bytes
  • 42. Deep Learning - Introduction to Neural Networks/16. What is the Objective Function.html 165 Bytes
  • 42. Deep Learning - Introduction to Neural Networks/18. Common Objective Functions L2-norm Loss.html 165 Bytes
  • 42. Deep Learning - Introduction to Neural Networks/2. Introduction to Neural Networks.html 165 Bytes
  • 42. Deep Learning - Introduction to Neural Networks/20. Common Objective Functions Cross-Entropy Loss.html 165 Bytes
  • 42. Deep Learning - Introduction to Neural Networks/22. Optimization Algorithm 1-Parameter Gradient Descent.html 165 Bytes
  • 42. Deep Learning - Introduction to Neural Networks/24. Optimization Algorithm n-Parameter Gradient Descent.html 165 Bytes
  • 42. Deep Learning - Introduction to Neural Networks/4. Training the Model.html 165 Bytes
  • 42. Deep Learning - Introduction to Neural Networks/6. Types of Machine Learning.html 165 Bytes
  • 42. Deep Learning - Introduction to Neural Networks/8. The Linear Model.html 165 Bytes
  • 5. The Field of Data Science - Popular Data Science Techniques/11. Techniques for Working with Traditional Methods.html 165 Bytes
  • 5. The Field of Data Science - Popular Data Science Techniques/14. Machine Learning (ML) Techniques.html 165 Bytes
  • 5. The Field of Data Science - Popular Data Science Techniques/16. Types of Machine Learning.html 165 Bytes
  • 5. The Field of Data Science - Popular Data Science Techniques/18. Real Life Examples of Machine Learning (ML).html 165 Bytes
  • 5. The Field of Data Science - Popular Data Science Techniques/2. Techniques for Working with Traditional Data.html 165 Bytes
  • 5. The Field of Data Science - Popular Data Science Techniques/5. Techniques for Working with Big Data.html 165 Bytes
  • 5. The Field of Data Science - Popular Data Science Techniques/8. Business Intelligence (BI) Techniques.html 165 Bytes
  • 56. Software Integration/10. Software Integration - Explained.html 165 Bytes
  • 56. Software Integration/2. What are Data, Servers, Clients, Requests, and Responses.html 165 Bytes
  • 56. Software Integration/4. What are Data Connectivity, APIs, and Endpoints.html 165 Bytes
  • 56. Software Integration/6. Taking a Closer Look at APIs.html 165 Bytes
  • 56. Software Integration/8. Communication between Software Products through Text Files.html 165 Bytes
  • 57. Case Study - What's Next in the Course/4. Introducing the Data Set.html 165 Bytes
  • 6. The Field of Data Science - Popular Data Science Tools/2. Necessary Programming Languages and Software Used in Data Science.html 165 Bytes
  • 7. The Field of Data Science - Careers in Data Science/2. Finding the Job - What to Expect and What to Look for.html 165 Bytes
  • 8. The Field of Data Science - Debunking Common Misconceptions/2. Debunking Common Misconceptions.html 165 Bytes
  • 9. Part 2 Probability/2. The Basic Probability Formula.html 165 Bytes
  • 9. Part 2 Probability/4. Computing Expected Values.html 165 Bytes
  • 9. Part 2 Probability/6. Frequency.html 165 Bytes
  • 9. Part 2 Probability/8. Events and Their Complements.html 165 Bytes
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/19. SOLUTION - Using .concat() in Python.html 142 Bytes
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/24. EXERCISE - Creating Checkpoints while Coding in Jupyter.html 137 Bytes
  • 1. Part 1 Introduction/3.1 Download all resources.html 134 Bytes
  • 35/4.3 sklearn - Linear Regression - Practical Example (Part 3).html 134 Bytes
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/12. EXERCISE - Obtaining Dummies from a Single Feature.html 129 Bytes
  • [Tutorialsplanet.NET].url 128 Bytes
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/25. SOLUTION - Creating Checkpoints while Coding in Jupyter.html 117 Bytes
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/13. SOLUTION - Obtaining Dummies from a Single Feature.html 116 Bytes
  • 58. Case Study - Preprocessing the 'Absenteeism_data'/9. SOLUTION - Dropping a Column from a DataFrame in Python.html 113 Bytes
  • 36. Advanced Statistical Methods - Logistic Regression/11. Binary Predictors in a Logistic Regression - Exercise.html 87 Bytes
  • 36. Advanced Statistical Methods - Logistic Regression/13. Calculating the Accuracy of the Model.html 87 Bytes
  • 36. Advanced Statistical Methods - Logistic Regression/16. Testing the Model - Exercise.html 87 Bytes
  • 36. Advanced Statistical Methods - Logistic Regression/5. Building a Logistic Regression - Exercise.html 87 Bytes
  • 36. Advanced Statistical Methods - Logistic Regression/8. Understanding Logistic Regression Tables - Exercise.html 87 Bytes
  • 38. Advanced Statistical Methods - K-Means Clustering/14. EXERCISE Species Segmentation with Cluster Analysis (Part 1).html 87 Bytes
  • 38. Advanced Statistical Methods - K-Means Clustering/15. EXERCISE Species Segmentation with Cluster Analysis (Part 2).html 87 Bytes
  • 38. Advanced Statistical Methods - K-Means Clustering/3. A Simple Example of Clustering - Exercise.html 87 Bytes
  • 38. Advanced Statistical Methods - K-Means Clustering/5. Clustering Categorical Data - Exercise.html 87 Bytes
  • 38. Advanced Statistical Methods - K-Means Clustering/7. How to Choose the Number of Clusters - Exercise.html 87 Bytes
  • 15. Statistics - Descriptive Statistics/10. Numerical Variables Exercise.html 81 Bytes
  • 15. Statistics - Descriptive Statistics/13. Histogram Exercise.html 81 Bytes
  • 15. Statistics - Descriptive Statistics/16. Cross Tables and Scatter Plots Exercise.html 81 Bytes
  • 15. Statistics - Descriptive Statistics/18. Mean, Median and Mode Exercise.html 81 Bytes
  • 15. Statistics - Descriptive Statistics/21. Skewness Exercise.html 81 Bytes
  • 15. Statistics - Descriptive Statistics/26. Standard Deviation and Coefficient of Variation Exercise.html 81 Bytes
  • 15. Statistics - Descriptive Statistics/29. Covariance Exercise.html 81 Bytes
  • 15. Statistics - Descriptive Statistics/32. Correlation Coefficient Exercise.html 81 Bytes
  • 15. Statistics - Descriptive Statistics/7. Categorical Variables Exercise.html 81 Bytes
  • 16. Statistics - Practical Example Descriptive Statistics/2. Practical Example Descriptive Statistics Exercise.html 81 Bytes
  • 17. Statistics - Inferential Statistics Fundamentals/8. The Standard Normal Distribution Exercise.html 81 Bytes
  • 18/13. Confidence intervals. Two means. Dependent samples Exercise.html 81 Bytes
  • 18/15. Confidence intervals. Two means. Independent Samples (Part 1). Exercise.html 81 Bytes
  • 18/17. Confidence intervals. Two means. Independent Samples (Part 2). Exercise.html 81 Bytes
  • 18/4. Confidence Intervals; Population Variance Known; Z-score; Exercise.html 81 Bytes
  • 18/9. Confidence Intervals; Population Variance Unknown; T-score; Exercise.html 81 Bytes
  • 19. Statistics - Practical Example Inferential Statistics/2. Practical Example Inferential Statistics Exercise.html 81 Bytes
  • 20. Statistics - Hypothesis Testing/13. Test for the Mean. Population Variance Unknown Exercise.html 81 Bytes
  • 20. Statistics - Hypothesis Testing/15. Test for the Mean. Dependent Samples Exercise.html 81 Bytes
  • 20. Statistics - Hypothesis Testing/17. Test for the mean. Independent Samples (Part 1). Exercise.html 81 Bytes
  • 20. Statistics - Hypothesis Testing/20. Test for the mean. Independent Samples (Part 2). Exercise.html 81 Bytes
  • 20. Statistics - Hypothesis Testing/9. Test for the Mean. Population Variance Known Exercise.html 81 Bytes
  • 21. Statistics - Practical Example Hypothesis Testing/2. Practical Example Hypothesis Testing Exercise.html 81 Bytes
  • 50. Deep Learning - Classifying on the MNIST Dataset/5. MNIST Preprocess the Data - Scale the Test Data - Exercise.html 79 Bytes
  • 50. Deep Learning - Classifying on the MNIST Dataset/7. MNIST Preprocess the Data - Shuffle and Batch - Exercise.html 79 Bytes
  • 51. Deep Learning - Business Case Example/7. Business Case Load the Preprocessed Data - Exercise.html 79 Bytes
  • 33/19. Dealing with Categorical Data - Dummy Variables.html 76 Bytes
  • 33/5. Multiple Linear Regression Exercise.html 76 Bytes
  • 34/13. Multiple Linear Regression - Exercise.html 76 Bytes
  • 34/17. Feature Scaling (Standardization) - Exercise.html 76 Bytes
  • 34/6. Simple Linear Regression with sklearn - Exercise.html 76 Bytes
  • 34/9. Calculating the Adjusted R-Squared in sklearn - Exercise.html 76 Bytes
  • 35/5. Dummies and Variance Inflation Factor - Exercise.html 76 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!