Other

[ DevCourseWeb com ] Udemy - Data pre-processing for Machine Learning in Python

  • Download torrent
  • Rate this torrent +  |  -

Torrent info

Name:[ DevCourseWeb com ] Udemy - Data pre-processing for Machine Learning in Python

Infohash: C3CAA5F1BEF84CDEF0DCD44E0DC80900FE02A8E6

Total Size: 1.97 GB

Seeds: 1

Leechers: 0

Stream: Watch Full Movies @ LimeMovies

Last Updated: 2025-10-25 21:05:23 (Update Now)

Torrent added: 2022-04-14 22:06:32






Torrent Files List


Get Bonus Downloads Here.url (Size: 1.97 GB) (Files: 123)

 Get Bonus Downloads Here.url

0.18 KB

 ~Get Your Files Here !

  1. Introduction

   1. Introduction to the course.mp4

17.52 MB

   1. Introduction to the course.srt

3.41 KB

   2. Numerical and categorical variables.mp4

11.55 MB

   2. Numerical and categorical variables.srt

2.29 KB

   3. The dataset.html

0.35 KB

   3.1 sample_dataset_bins.csv

8.47 KB

   3.2 sample_dataset.csv

97.06 KB

   4. Required Python packages.html

0.90 KB

   5. Jupyter notebooks.mp4

34.58 MB

   5. Jupyter notebooks.srt

9.40 KB

  10. Oversampling

   1. Introduction to SMOTE.mp4

19.63 MB

   1. Introduction to SMOTE.srt

5.15 KB

   2. How to perform SMOTE.mp4

56.97 MB

   2. How to perform SMOTE.srt

10.11 KB

   2.1 How to do SMOTE.ipynb

8.72 KB

   3. Exercise.mp4

35.50 MB

   3. Exercise.srt

5.58 KB

   3.1 Exercises.ipynb

4.87 KB

  11. General guidelines

   1. Practical suggestions.html

1.40 KB

  2. Data cleaning

   1. Introduction to data cleaning.mp4

9.55 MB

   1. Introduction to data cleaning.srt

2.39 KB

   2. Selecting numerical and categorical variables.mp4

27.60 MB

   2. Selecting numerical and categorical variables.srt

3.97 KB

   2.1 Select numerical and categorical variables.ipynb

4.54 KB

   3. Cleaning the numerical features.mp4

59.12 MB

   3. Cleaning the numerical features.srt

10.50 KB

   3.1 Cleaning the numerical features.ipynb

7.62 KB

   4. Cleaning the categorical features.mp4

16.95 MB

   4. Cleaning the categorical features.srt

3.70 KB

   4.1 Cleaning the categorical features.ipynb

34.25 KB

   5. KNN blank filling.mp4

60.92 MB

   5. KNN blank filling.srt

10.58 KB

   5.1 Cleaning with KNN.ipynb

6.55 KB

   6. ColumnTransformer and make_column_selector.mp4

88.39 MB

   6. ColumnTransformer and make_column_selector.srt

13.17 KB

   6.1 ColumnTransformer.ipynb

6.84 KB

   7. Exercises.mp4

80.74 MB

   7. Exercises.srt

9.41 KB

   7.1 Exercises.ipynb

23.58 KB

  3. Encoding of the categorical features

   1. Introduction to the encoding of categorical variables.mp4

5.40 MB

   1. Introduction to the encoding of categorical variables.srt

1.32 KB

   2. One-hot encoding.mp4

114.68 MB

   2. One-hot encoding.srt

19.77 KB

   2.1 One-hot encoding.ipynb

10.77 KB

   3. Ordinal encoding.mp4

40.04 MB

   3. Ordinal encoding.srt

7.79 KB

   3.1 OrdinalEncoder.ipynb

3.63 KB

   4. Label encoding of the target variable.mp4

10.14 MB

   4. Label encoding of the target variable.srt

2.45 KB

   4.1 LabelEncoder.ipynb

1.58 KB

   5. Exercise.mp4

74.43 MB

   5. Exercise.srt

12.09 KB

   5.1 Exercises.ipynb

4.89 KB

  4. Transformations of the numerical features

   1. Introduction to transformations.mp4

10.85 MB

   1. Introduction to transformations.srt

2.59 KB

   2. Power Transformation.mp4

48.69 MB

   2. Power Transformation.srt

8.67 KB

   2.1 Power Transform.ipynb

43.48 KB

   3. Binning.mp4

60.43 MB

   3. Binning.srt

10.91 KB

   3.1 Binning.ipynb

30.28 KB

   4. Binarizing.mp4

11.57 MB

   4. Binarizing.srt

2.43 KB

   4.1 Binarizer.ipynb

13.26 KB

   5. Applying an arbitrary transformation.mp4

42.07 MB

   5. Applying an arbitrary transformation.srt

7.10 KB

   5.1 FunctionTransformer.ipynb

11.88 KB

   6. Exercise.mp4

76.73 MB

   6. Exercise.srt

10.03 KB

   6.1 Exercises.ipynb

8.83 KB

   7. About power transformations.html

1.04 KB

  5. Pipelines

   1. Define a transformation pipeline.mp4

38.81 MB

   1. Define a transformation pipeline.srt

9.32 KB

   1.1 Define a transformation pipeline.ipynb

4.19 KB

   2. Pipelines and ColumnTransformer together.mp4

78.63 MB

   2. Pipelines and ColumnTransformer together.srt

11.17 KB

   2.1 Pipelines and ColumnTransformer together .ipynb

5.54 KB

   3. Exercises.mp4

78.74 MB

   3. Exercises.srt

10.61 KB

   3.1 Exercises.ipynb

6.15 KB

  6. Scaling

   1. Introduction to scaling.mp4

19.00 MB

   1. Introduction to scaling.srt

3.11 KB

   2. Normalization, Standardization, Robust scaling.mp4

71.16 MB

   2. Normalization, Standardization, Robust scaling.srt

11.54 KB

   2.1 Scaling techniques.ipynb

14.24 KB

   3. Exercise.mp4

50.60 MB

   3. Exercise.srt

6.55 KB

   3.1 Exercise.ipynb

4.46 KB

  7. Principal Component Analysis

   1. Introduction to PCA.mp4

18.84 MB

   1. Introduction to PCA.srt

3.96 KB

   2. How to perform PCA.mp4

61.84 MB

   2. How to perform PCA.srt

8.58 KB

   2.1 PCA.ipynb

25.29 KB

   3. Exercise.mp4

32.75 MB

   3. Exercise.srt

5.89 KB

   3.1 Exercises.ipynb

11.17 KB

  8. Filter-based feature selection

   1. Introduction to feature selection.mp4

28.62 MB

   1. Introduction to feature selection.srt

7.06 KB

   2. Numerical features, numerical target.mp4

77.91 MB

   2. Numerical features, numerical target.srt

9.41 KB

   2.1 Numerical target numerical feature.ipynb

41.09 KB

   3. Numerical features, categorical target.mp4

52.13 MB

   3. Numerical features, categorical target.srt

5.81 KB

   3.1 Numerical features categorical target.ipynb

12.98 KB

   4. Categorical features, numerical target.mp4

71.13 MB

   4. Categorical features, numerical target.srt

9.18 KB

   4.1 Categorical features numerical target.ipynb

44.45 KB

   5. Categorical features, categorical target.mp4

56.89 MB

   5. Categorical features, categorical target.srt

6.79 KB

   5.1 Categorical features categorical target.ipynb

43.14 KB

   6. Feature importance according to a model.mp4

87.40 MB

   6. Feature importance according to a model.srt

10.75 KB

   6.1 Feature importance according to model.ipynb

26.23 KB

   7. A comment on mutual information.html

1.08 KB

   8. A comment on feature selection with categorical variables.html

0.99 KB

   9. Exercises.mp4

53.78 MB

   9. Exercises.srt

8.43 KB

   9.1 Exercises.ipynb

4.86 KB

  9. A complete pipeline

   1. An example of a complete pipeline.mp4

121.21 MB

   1. An example of a complete pipeline.srt

17.91 KB

   1.1 A complete pipeline.ipynb

11.00 KB

  Bonus Resources.txt

0.38 KB
 

tracker

leech seeds
 

Torrent description

Feel free to post any comments about this torrent, including links to Subtitle, samples, screenshots, or any other relevant information, Watch [ DevCourseWeb com ] Udemy - Data pre-processing for Machine Learning in Python Online Free Full Movies Like 123Movies, Putlockers, Fmovies, Netflix or Download Direct via Magnet Link in Torrent Details.

related torrents

Torrent name

health leech seeds Size
 


comments (0)

Main Menu