-
-
-
-
-
-
-
-
1) Introduction to Machine Learning -[2 Hours]
-
2) Exploratory Data Analysis- [4 Hours]
-
3) Data Preprocessing -[2 Hours]
-
4) Model Building and Evaluation Metrics -[2 Hours]
-
5) K-Nearest Neighborhood -[2 Hours]
-
6) Linear Regression -[3 Hours]
-
7) Multiple Regression -[5 Hours]
-
8) Logistic Regression-[3 Hours]
-
9) Naïve Bayes -[2 Hours]
-
10) Decision Trees -[3 Hours]
-
11) Ensemble Techniques -[2 Hours]
-
12) Random Forests- [1 Hours]
-
13) Support Vector Machine -[2 Hours]
-
14) K-Means Clustering -[2 Hours]
-
15) Hierarchical Clustering- [2 Hours]
-
16) Principal Component Analysis -[2 Hours]
-
17) Regularization Techniques -[2 Hours]
-
18) Association Mining -[2 Hours]
-
19) Recommendation Engines -[2 Hours]
-
-
-
-
-
-
-
This content is protected, please login and enroll in the course to view this content!
2) Applications of Text Analytics (4)
2) Applications of Text Analytics (4)
2) Visualizing Time Series -[1 Hours]
2) Visualizing Time Series -[1 Hours]