Udemy - Python for Machine Learning - The Complete Beginner's Course

seeders: 0 leechers: 0
Added 4 years ago by freecoursewb in Other
Downloaded 3 times.
1337x.to
Udemy - Python for Machine Learning - The Complete Beginner's Course

Torrent Contents Size: 685.3 MB

Udemy - Python for Machine Learning - The Complete Beginner's Course
▼ show more 162 files
1. Conclusion.mp4
MP4
2.8 MB
1. Conclusion.srt
SRT
409.6 B
1. Introduction to classification.mp4
MP4
4.7 MB
1. Introduction to classification.srt
SRT
1.1 KB
1. Introduction to clustering.mp4
MP4
4.3 MB
1. Introduction to clustering.srt
SRT
819.2 B
1. Introduction to decision trees.mp4
MP4
6.5 MB
1. Introduction to decision trees.srt
SRT
1.5 KB
1. Introduction to regression.mp4
MP4
9 MB
1. Introduction to regression.srt
SRT
1.9 KB
1. Introduction.mp4
MP4
7.5 MB
1. Introduction.srt
SRT
1.6 KB
1. Understanding Multiple linear regression.mp4
MP4
6.3 MB
1. Understanding Multiple linear regression.srt
SRT
1.4 KB
1. What is Machine Learning.mp4
MP4
7.5 MB
1. What is Machine Learning.srt
SRT
2.1 KB
10. Data pre-processing.mp4
MP4
10.8 MB
10. Data pre-processing.srt
SRT
2.2 KB
10. Implementation in python Results prediction & Confusion matrix.mp4
MP4
9.7 MB
10. Implementation in python Results prediction & Confusion matrix.srt
SRT
1.4 KB
10. Importing the dataset.mp4
MP4
12.8 MB
10. Importing the dataset.srt
SRT
3.3 KB
11. Sorting the most-rated movies.mp4
MP4
8.9 MB
11. Sorting the most-rated movies.srt
SRT
921.6 B
11. Visualizing the dataset.mp4
MP4
12.4 MB
11. Visualizing the dataset.srt
SRT
2.9 KB
12. Defining the classifier.mp4
MP4
7.7 MB
12. Defining the classifier.srt
SRT
1.6 KB
12. Grabbing the ratings for two movies.mp4
MP4
5.5 MB
12. Grabbing the ratings for two movies.srt
SRT
1.5 KB
13. 3D Visualization of the clusters.mp4
MP4
7.8 MB
13. 3D Visualization of the clusters.srt
SRT
1.6 KB
13. Correlation between the most-rated movies.mp4
MP4
13.3 MB
13. Correlation between the most-rated movies.srt
SRT
2.1 KB
14. 3D Visualization of the predicted values.mp4
MP4
12.8 MB
14. 3D Visualization of the predicted values.srt
SRT
2.8 KB
14. Sorting the data by correlation.mp4
MP4
6.1 MB
14. Sorting the data by correlation.srt
SRT
1.5 KB
15. Filtering out movies.mp4
MP4
4.8 MB
15. Filtering out movies.srt
SRT
716.8 B
15. Number of predicted clusters.mp4
MP4
9.5 MB
15. Number of predicted clusters.srt
SRT
2.1 KB
16. Sorting values.mp4
MP4
6.8 MB
16. Sorting values.srt
SRT
1.1 KB
17. Repeating the process for another movie.mp4
MP4
12.7 MB
17. Repeating the process for another movie.srt
SRT
2.5 KB
18. Quiz Time.html
HTML
204.8 B
2. Applications of Machine Learning.mp4
MP4
6.5 MB
2. Applications of Machine Learning.srt
SRT
1.9 KB
2. Collaborative Filtering in Recommender Systems.mp4
MP4
4.2 MB
2. Collaborative Filtering in Recommender Systems.srt
SRT
716.8 B
2. How Does Linear Regression Work.mp4
MP4
7.7 MB
2. How Does Linear Regression Work.srt
SRT
1.9 KB
2. Implementation in python Exploring the dataset.mp4
MP4
13.3 MB
2. Implementation in python Exploring the dataset.srt
SRT
3.5 KB
2. Implementation steps.mp4
MP4
5.5 MB
2. Implementation steps.srt
SRT
921.6 B
2. K-Nearest Neighbors algorithm.mp4
MP4
6.1 MB
2. K-Nearest Neighbors algorithm.srt
SRT
921.6 B
2. Use cases.mp4
MP4
4.1 MB
2. Use cases.srt
SRT
1 KB
2. What is Entropy.mp4
MP4
5.2 MB
2. What is Entropy.srt
SRT
1.4 KB
3. Content-based Recommender System.mp4
MP4
4.9 MB
3. Content-based Recommender System.srt
SRT
716.8 B
3. Example of KNN.mp4
MP4
3.5 MB
3. Example of KNN.srt
SRT
409.6 B
3. Exploring the dataset.mp4
MP4
6 MB
3. Exploring the dataset.srt
SRT
1.3 KB
3. Implementation in python Encoding Categorical Data.mp4
MP4
28.9 MB
3. Implementation in python Encoding Categorical Data.srt
SRT
5.6 KB
3. Implementation in python Importing libraries & datasets.mp4
MP4
6.8 MB
3. Implementation in python Importing libraries & datasets.srt
SRT
1.8 KB
3. K-Means Clustering Algorithm.mp4
MP4
6.6 MB
3. K-Means Clustering Algorithm.srt
SRT
1.5 KB
3. Line representation.mp4
MP4
5.5 MB
3. Line representation.srt
SRT
819.2 B
3. Machine learning Methods.mp4
MP4
3.7 MB
3. Machine learning Methods.srt
SRT
409.6 B
4. Decision tree structure.mp4
MP4
6.4 MB
4. Decision tree structure.srt
SRT
1.3 KB
4. Elbow method.mp4
MP4
7 MB
4. Elbow method.srt
SRT
1.7 KB
4. Implementation in python Importing libraries & datasets.mp4
MP4
10.3 MB
4. Implementation in python Importing libraries & datasets.srt
SRT
3.1 KB
4. Implementation in python Splitting data into Train and Test Sets.mp4
MP4
7.2 MB
4. Implementation in python Splitting data into Train and Test Sets.srt
SRT
1.6 KB
4. K-Nearest Neighbours (KNN) using python.mp4
MP4
6.1 MB
4. K-Nearest Neighbours (KNN) using python.srt
SRT
1.2 KB
4. What is Supervised learning.mp4
MP4
6.2 MB
4. What is Supervised learning.srt
SRT
1.3 KB
5. Implementation in python Distribution of the data.mp4
MP4
9.5 MB
5. Implementation in python Distribution of the data.srt
SRT
2.2 KB
5. Implementation in python Importing libraries & datasets.mp4
MP4
4.6 MB
5. Implementation in python Importing libraries & datasets.srt
SRT
819.2 B
5. Implementation in python Importing required libraries.mp4
MP4
5.1 MB
5. Implementation in python Importing required libraries.srt
SRT
409.6 B
5. Implementation in python Pre-processing.mp4
MP4
13.2 MB
5. Implementation in python Pre-processing.srt
SRT
1.9 KB
5. Implementation in python Training the model on the Training set.mp4
MP4
8.6 MB
5. Implementation in python Training the model on the Training set.srt
SRT
1 KB
5. Merging datasets into one dataframe.mp4
MP4
4.2 MB
5. Merging datasets into one dataframe.srt
SRT
614.4 B
5. Steps of the Elbow method.mp4
MP4
5.8 MB
5. Steps of the Elbow method.srt
SRT
1.1 KB
5. What is Unsupervised learning.mp4
MP4
6 MB
5. What is Unsupervised learning.srt
SRT
1 KB
6. Implementation in python Creating a linear regression object.mp4
MP4
13.2 MB
6. Implementation in python Creating a linear regression object.srt
SRT
2.8 KB
6. Implementation in python Encoding Categorical Data.mp4
MP4
17 MB
6. Implementation in python Encoding Categorical Data.srt
SRT
3.4 KB
6. Implementation in python Importing the dataset.mp4
MP4
9.3 MB
6. Implementation in python Importing the dataset.srt
SRT
1.3 KB
6. Implementation in python Predicting the Test Set results.mp4
MP4
17.8 MB
6. Implementation in python Predicting the Test Set results.srt
SRT
2.8 KB
6. Implementation in python Training the model.mp4
MP4
7.8 MB
6. Implementation in python Training the model.srt
SRT
1.2 KB
6. Implementation in python.mp4
MP4
19 MB
6. Implementation in python.srt
SRT
3.7 KB
6. Sorting by title and rating.mp4
MP4
19.3 MB
6. Sorting by title and rating.srt
SRT
5.7 KB
6. Supervised learning vs Unsupervised learning.mp4
MP4
14.3 MB
6. Supervised learning vs Unsupervised learning.srt
SRT
4.4 KB
7. Course Materials.html
HTML
102.4 B
7. Evaluating the performance of the regression model.mp4
MP4
6 MB
7. Evaluating the performance of the regression model.srt
SRT
1.3 KB
7. Hierarchical clustering.mp4
MP4
7.4 MB
7. Hierarchical clustering.srt
SRT
1.3 KB
7. Histogram showing number of ratings.mp4
MP4
5.7 MB
7. Histogram showing number of ratings.srt
SRT
819.2 B
7. Implementation in python Results prediction & Confusion matrix.mp4
MP4
13.5 MB
7. Implementation in python Results prediction & Confusion matrix.srt
SRT
2.5 KB
7. Implementation in python Splitting data into Train and Test Sets.mp4
MP4
4.9 MB
7. Implementation in python Splitting data into Train and Test Sets.srt
SRT
921.6 B
7.1 50_Startups.csv
CSV
2.4 KB
7.10 Movie_Id_Titles.original
ORIGINAL
49.8 KB
7.11 MultipleLinearRegression.ipynb
IPYNB
8.5 KB
7.12 Recommender Systems with Python.ipynb
IPYNB
122.4 KB
7.13 salaries.csv
CSV
614.4 B
7.14 u.data
DATA
2 MB
7.15 user data.csv
CSV
10.7 KB
7.2 Decision_tree.ipynb
IPYNB
14.3 KB
7.3 homeprices.csv
CSV
102.4 B
7.4 K-means algorithm numpy&pandas clustering.ipynb
IPYNB
102.3 KB
7.5 KNN_Binary_Classification.ipynb
IPYNB
25.2 KB
7.6 linear_regression_houseprice.ipynb
IPYNB
16.3 KB
7.7 logistic_regression_Binary_Classification.ipynb
IPYNB
2.7 KB
7.8 mall customers data.csv
CSV
4.3 KB
7.9 mallCustomerData.txt
TXT
3.9 KB
8. Density-based clustering.mp4
MP4
7.8 MB
8. Density-based clustering.srt
SRT
1.7 KB
8. Frequency distribution.mp4
MP4
6.1 MB
8. Frequency distribution.srt
SRT
1.3 KB
8. Implementation in python Feature Scaling.mp4
MP4
5.7 MB
8. Implementation in python Feature Scaling.srt
SRT
307.2 B
8. Implementation in python Results prediction & Accuracy.mp4
MP4
10.4 MB
8. Implementation in python Results prediction & Accuracy.srt
SRT
2.7 KB
8. Logistic Regression vs Linear Regression.mp4
MP4
10.8 MB
8. Logistic Regression vs Linear Regression.srt
SRT
2.9 KB
8. Root Mean Squared Error in Python.mp4
MP4
11.8 MB
8. Root Mean Squared Error in Python.srt
SRT
2.2 KB
9. Implementation in python Importing the KNN classifier.mp4
MP4
12.5 MB
9. Implementation in python Importing the KNN classifier.srt
SRT
2 KB
9. Implementation of k-means clustering in python.mp4
MP4
3.9 MB
9. Implementation of k-means clustering in python.srt
SRT
819.2 B
9. Jointplot of the ratings and number of ratings.mp4
MP4
7.3 MB
9. Jointplot of the ratings and number of ratings.srt
SRT
1.3 KB
Bonus Resources.txt
TXT
409.6 B
Get Bonus Downloads Here.url
URL
204.8 B

Description

Related Torrents

Location

Trackers

Tracker name
udp://tracker.torrent.eu.org:451/announce
udp://tracker.tiny-vps.com:6969/announce
http://tracker.foreverpirates.co:80/announce
udp://tracker.cyberia.is:6969/announce
udp://exodus.desync.com:6969/announce
udp://explodie.org:6969/announce
udp://tracker.opentrackr.org:1337/announce
udp://9.rarbg.to:2780/announce
udp://tracker.internetwarriors.net:1337/announce
udp://ipv4.tracker.harry.lu:80/announce
udp://open.stealth.si:80/announce
udp://9.rarbg.to:2900/announce
udp://9.rarbg.me:2720/announce
udp://opentor.org:2710/announce
udp://tracker.opentrackr.org:1337/announce
http://tracker.openbittorrent.com:80/announce
udp://opentracker.i2p.rocks:6969/announce
udp://tracker.internetwarriors.net:1337/announce
udp://tracker.leechers-paradise.org:6969/announce
udp://coppersurfer.tk:6969/announce
udp://tracker.zer0day.to:1337/announce
Torrent hash: