kingers Posted June 6 Report Share Posted June 6 3.77 GB | 17min 11s | mp4 | 1280X720 | 16:9Genre:eLearning |Language:EnglishFiles Included :FileName :1 -Introduction to the Course.mp4 | Size: (10.54 MB)FileName :2 -What is Machine Learning with Example.mp4 | Size: (90.48 MB)FileName :3 -Tom M Mitchell Definition of Machine Learning.mp4 | Size: (23.54 MB)FileName :4 -Types of Machine Learning and List of most ML algorithms.mp4 | Size: (55.64 MB)FileName :1 -Hold Out Cross Validation Technique.mp4 | Size: (23.34 MB)FileName :10 -Parameters and Hyper-Parameters of the ML Algorithms.mp4 | Size: (49.88 MB)FileName :11 -GridSearchCV - Hyper-Parameter Tuning Method.mp4 | Size: (44.85 MB)FileName :2 -K-Fold Cross Validation Technique.mp4 | Size: (26.39 MB)FileName :3 -Stratified K-Fold Cross Validation Technique.mp4 | Size: (66.16 MB)FileName :4 -Leave P-Out Cross Validation Technique.mp4 | Size: (31.76 MB)FileName :5 -Leave One Out Cross Validation.mp4 | Size: (10.4 MB)FileName :6 -Imbalanced Dataset.mp4 | Size: (26.31 MB)FileName :7 -OverSampling and UnderSampling.mp4 | Size: (25.42 MB)FileName :8 -Synthetic Minority Oversampling Technique (SMOTE).mp4 | Size: (18.58 MB)FileName :9 -Use case using the SMOTE.mp4 | Size: (37.39 MB)FileName :1 -Introduction to Correlation and Regression.mp4 | Size: (57.32 MB)FileName :2 -Regression Algorithm Assumptions.mp4 | Size: (52.3 MB)FileName :3 -Simple and Multi Linear Regression (SLR) Algorithm.mp4 | Size: (86.39 MB)FileName :4 -Hypothesis Testing to evaluate the significance of regression line.mp4 | Size: (41.76 MB)FileName :5 -R-Square Performance Measure.mp4 | Size: (45.76 MB)FileName :6 -Simple Linear Regression Implementation using sklearn library.mp4 | Size: (18.17 MB)FileName :7 -Introduction to Use Case.mp4 | Size: (19.52 MB)FileName :8 -Use case discussion.mp4 | Size: (73.86 MB)FileName :1 -What is classification and regression.mp4 | Size: (19.59 MB)FileName :10 -Maximum Likelihood Estimation (MLE).mp4 | Size: (77.56 MB)FileName :11 -Solving Logistic Regression Example with MLE.mp4 | Size: (23.24 MB)FileName :2 -What is Logistic Regression, How it is different from linear regression and how.mp4 | Size: (47.02 MB)FileName :3 -Logistic Regression Explanation with Example.mp4 | Size: (47.16 MB)FileName :4 -Linear VS Logistic Regression.mp4 | Size: (47.26 MB)FileName :5 -Confusion Matrix.mp4 | Size: (60.91 MB)FileName :6 -Performance Metrics in Classification.mp4 | Size: (44.89 MB)FileName :7 -Difference between Probability and Odds.mp4 | Size: (71.53 MB)FileName :8 -Logistic Regression Derivation.mp4 | Size: (21.11 MB)FileName :9 -Difference between Probability and Likelihood.mp4 | Size: (32.55 MB)FileName :1 -Agenda.mp4 | Size: (6.94 MB)FileName :2 -What is DT, its intuition and Terminologies.mp4 | Size: (98.56 MB)FileName :3 -Impurity Measures - Entropy, Gini Index and Classification Error.mp4 | Size: (125.26 MB)FileName :4 -Decision Tree Algorithms and Lets learn ID3 DT.mp4 | Size: (129.45 MB)FileName :5 -CART Decision Tree Algorithm - wrt Classification.mp4 | Size: (47.69 MB)FileName :6 -CART Decision Tree Algorithm - wrt Regression.mp4 | Size: (37.37 MB)FileName :7 -Use case on Decision Tree - Prediction of Wine Quality.mp4 | Size: (81.15 MB)FileName :1 -Parametric and Non-Parametric ML Algorithms.mp4 | Size: (51.29 MB)FileName :2 -Distance Measures.mp4 | Size: (50.84 MB)FileName :3 -Introduction to KNN Algorithm.mp4 | Size: (70.03 MB)FileName :4 -How KNN Algorithm works.mp4 | Size: (18.5 MB)FileName :5 -How to find optimum K Value in KNN.mp4 | Size: (32.11 MB)FileName :6 -Use case explaining KNN implementation.mp4 | Size: (24.68 MB)FileName :7 -Example - How to find an optimum k value for KNN.mp4 | Size: (26.77 MB)FileName :1 -Partition Theorem.mp4 | Size: (26.37 MB)FileName :2 -Naïve Bayes Algorithm Pre-requisites.mp4 | Size: (53.29 MB)FileName :3 -Bayes Theorem With Example.mp4 | Size: (59.21 MB)FileName :4 -Bayes Theorem Formal Defination.mp4 | Size: (12.94 MB)FileName :5 -Naïve Bayes Classifier with example.mp4 | Size: (66.11 MB)FileName :1 -Recap of our learning.mp4 | Size: (11.59 MB)FileName :10 -Elbow Method.mp4 | Size: (23.42 MB)FileName :11 -Performance Metrics in Clustering.mp4 | Size: (23.66 MB)FileName :12 -Silhouette Score Example.mp4 | Size: (25.36 MB)FileName :13 -Use case using Silhouette score.mp4 | Size: (28.39 MB)FileName :2 -Agenda.mp4 | Size: (6.78 MB)FileName :3 -Distance Measures.mp4 | Size: (49.59 MB)FileName :4 -Distance Measures Use cases.mp4 | Size: (73.96 MB)FileName :5 -Use of Distance Measures in Machine Learning.mp4 | Size: (23.79 MB)FileName :6 -KMeans Clustering Algorithm.mp4 | Size: (26.72 MB)FileName :7 -Example - Clustering the data using KMeans Clustering Algorithm.mp4 | Size: (22.36 MB)FileName :8 -KMeans Cost Function.mp4 | Size: (10.94 MB)FileName :9 -KMeans Use cases.mp4 | Size: (38.34 MB)FileName :1 -tSNE Introduction.mp4 | Size: (63.05 MB)FileName :2 -tSNE Algorithm Steps.mp4 | Size: (14.28 MB)FileName :3 -tSNE use case.mp4 | Size: (22.95 MB)FileName :4 -tSNE Using the MINIST Dataset.mp4 | Size: (42.37 MB)FileName :1 -Introduction.mp4 | Size: (18.61 MB)FileName :10 -Random Forest.mp4 | Size: (62.95 MB)FileName :11 -Hyperparameters to tune Random Forest.mp4 | Size: (53.63 MB)FileName :12 -Stacking Ensemble Learning.mp4 | Size: (77.13 MB)FileName :13 -Use case On Stacking.mp4 | Size: (41.3 MB)FileName :14 -Boosting.mp4 | Size: (83.99 MB)FileName :15 -Boosting Algorithm Steps.mp4 | Size: (45.47 MB)FileName :16 -AdaBoosting Ensemble Learning Model.mp4 | Size: (39.5 MB)FileName :17 -AdaBoosting Ensemble Learning - Example.mp4 | Size: (47.89 MB)FileName :18 -Bagging and Boosting Comparison.mp4 | Size: (23.66 MB)FileName :19 -Gradient Boosting Algorithm.mp4 | Size: (36.29 MB)FileName :2 -What is Ensemble and Model Error.mp4 | Size: (48.78 MB)FileName :20 -Gradient Boosting Example.mp4 | Size: (23.93 MB)FileName :21 -XGBoost Ensemble Learning Method.mp4 | Size: (22.47 MB)FileName :3 -Bias and Variance Tradeoff.mp4 | Size: (60.36 MB)FileName :4 -Simple Ensemble Modeling Methods - Voting, Averaging and Weighted Averaging.mp4 | Size: (63.34 MB)FileName :5 -Random Sampling with Replacement.mp4 | Size: (36.48 MB)FileName :6 -Use case 1 - Random Sampling with Replacement using customer feedback data.mp4 | Size: (18.74 MB)FileName :7 -Use case 2 - Understanding the 63 21% Rule in Sampling with Replacement.mp4 | Size: (40.7 MB)FileName :8 -Bagging.mp4 | Size: (16.69 MB)FileName :9 -Vanilla Bagging Algorithm.mp4 | Size: (44 MB)]ScreenshotRapidGatorhttps://rapidgator.net/file/8db3df78b677dae5ee21e9f2e25a45c1/Mastering.Machine.Learning.Algorithms.part1.rarhttps://rapidgator.net/file/055829e7a2487bad6aba3cba2cdf572a/Mastering.Machine.Learning.Algorithms.part2.rarhttps://rapidgator.net/file/3cecc757fee9726353b078b8e42eca53/Mastering.Machine.Learning.Algorithms.part3.rarhttps://rapidgator.net/file/cb020856e95f24286e8119600fb02063/Mastering.Machine.Learning.Algorithms.part4.rarNitroFlarehttps://nitroflare.com/view/0730FD7736208F9/Mastering.Machine.Learning.Algorithms.part1.rarhttps://nitroflare.com/view/A2271B76E14B857/Mastering.Machine.Learning.Algorithms.part2.rarhttps://nitroflare.com/view/AA6E59AF05E8925/Mastering.Machine.Learning.Algorithms.part3.rarhttps://nitroflare.com/view/87060F80B211871/Mastering.Machine.Learning.Algorithms.part4.rar Link to comment Share on other sites More sharing options...
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