3.52 GB | 00:07:16 | mp4 | 1920X1080 | 16:9
Genre:eLearning |Language:English
Files Included :
02-course introduction.mp4 (24.37 MB)
03-machine learning in industry.mp4 (25.94 MB)
04-how companies use machine learning.mp4 (31.63 MB)
01-machine learning process.mp4 (22.34 MB)
02-steps in machine learning.mp4 (23.02 MB)
03-types of machine learning.mp4 (37.02 MB)
01-introduction to linear regression.mp4 (32.88 MB)
02-real life examples.mp4 (44.56 MB)
03-calculating ols.mp4 (75.45 MB)
04-equation of ols.mp4 (30.86 MB)
05-assumptions in linear regression.mp4 (41.51 MB)
06-demonstration setting up the model.mp4 (40.62 MB)
07-calculating r square and rmse.mp4 (51.03 MB)
08-residual plot and q q plot.mp4 (17.28 MB)
09-cooks distance.mp4 (40.38 MB)
10-real life examples of logistic regression.mp4 (41.2 MB)
11-what is logistic regression.mp4 (49.63 MB)
12-cost function.mp4 (27.61 MB)
13-assumptions in logistic regression.mp4 (35.82 MB)
14-demonstration of logistic regression transforming data.mp4 (57.32 MB)
15-demonstration of logistic regression developing the model.mp4 (32.73 MB)
01-confusion matrix.mp4 (19.33 MB)
02-example for calculating confusion matrix.mp4 (58.54 MB)
03-conditions for over fitting and under fitting.mp4 (22.1 MB)
04-overfitting and underfitting.mp4 (57.48 MB)
05-performance metrics mse rmse mae mape.mp4 (47.02 MB)
06-r square rmsle and adjusted r square.mp4 (33.11 MB)
07-working of r square.mp4 (42.07 MB)
08-significance of r square.mp4 (52.8 MB)
01-summary for inception of machine learning.mp4 (16 MB)
01-classification in machine learning.mp4 (31.06 MB)
02-what is decision tree.mp4 (63.62 MB)
03-decision tree entropy and information gain.mp4 (53.33 MB)
04-step by step building of decision tree.mp4 (77.84 MB)
05-pruning in decision tree.mp4 (53.45 MB)
06-demonstration importing data.mp4 (46.62 MB)
07-demonstration building decision tree and random forest.mp4 (63.65 MB)
08-demonstration importance of features.mp4 (25.33 MB)
09-demonstration production ready random forest.mp4 (18.78 MB)
10-demonstration hyperparameter tuning.mp4 (31.25 MB)
01-what is svm.mp4 (37.05 MB)
02-terminologies in svm.mp4 (86.16 MB)
03-hinge loss function and other parameters.mp4 (82.78 MB)
04-demonstration of svm exploring the data.mp4 (29.44 MB)
05-demonstration of svm setting up the svm classifier.mp4 (67.99 MB)
06-what is naive bayes.mp4 (18.8 MB)
07-working of naive bayes bayes theorem.mp4 (46.3 MB)
08-example of naive bayes algorithm.mp4 (74.88 MB)
09-demonstration of naive bayes code.mp4 (36.34 MB)
10-working of knn.mp4 (32.92 MB)
11-example of knn algorithm.mp4 (45.24 MB)
12-demonstration of knn setting up the model.mp4 (50.31 MB)
13-demonstration of knn transforming and scaling data.mp4 (46.89 MB)
14-demonstration of knn creating classifier.mp4 (28.13 MB)
01-dimensionality reduction.mp4 (57.45 MB)
02-introduction to pca.mp4 (53.44 MB)
03-applying pca.mp4 (45.33 MB)
04-eigen values and eigen vectors.mp4 (59.38 MB)
05-demonstration initializing pca.mp4 (25.12 MB)
06-demonstration determining optimal number of components through pca.mp4 (36.68 MB)
07-demonstration implementing optimal pca.mp4 (45.11 MB)
08-working of lda.mp4 (55.51 MB)
09-demonstration of lda.mp4 (58.53 MB)
01-summary for machine learning algorithms.mp4 (16.4 MB)
01-what are association rules.mp4 (45.32 MB)
02-apriori algorithm.mp4 (34.39 MB)
03-demonstrating apriori algorithm.mp4 (87.65 MB)
01-what are recommendation engine.mp4 (34.48 MB)
02-cbf.mp4 (33.58 MB)
03-demonstration of recommendation engine preparing data.mp4 (56.71 MB)
04-demonstration testing the model.mp4 (49.46 MB)
01-elements for reinforcement learning.mp4 (26.98 MB)
02-demonstration of boosting explaining the dataset.mp4 (55.03 MB)
03-demonstration of boosting cleaning and transforming dataset.mp4 (56.3 MB)
04-demonstration of boosting factors affecting promotion.mp4 (34.52 MB)
05-demonstration of boosting total score and service affecting promotion.mp4 (48.38 MB)
07-demonstration of boosting department influencing promotion.mp4 (49.06 MB)
09-demonstration of boosting modeling the data.mp4 (42.37 MB)
10-demonstration of boosting building a model.mp4 (73.19 MB)
11-working of k means algorithm.mp4 (32.98 MB)
12-demonstration of k means clustering.mp4 (61.1 MB)
01-summary for association rule mining and recommendation system.mp4 (22.79 MB)
01-course summary for applied machine learning with python.mp4 (19.28 MB)]
Screenshot
https://rapidgator.net/file/d3f515f....Machine.Learning.With.Python.2025..part1.rar
https://rapidgator.net/file/5e10e20....Machine.Learning.With.Python.2025..part2.rar
https://rapidgator.net/file/dc6a4ea....Machine.Learning.With.Python.2025..part3.rar
https://rapidgator.net/file/6e67657....Machine.Learning.With.Python.2025..part4.rar
Feel free to post your Edureka Applied Machine Learning With Python 2025 Free Download, torrent, subtitles, free download, quality, NFO, Dangerous Edureka Applied Machine Learning With Python 2025 Torrent Download, free premium downloads movie, game, mp3 download, crack, serial, keygen.