-
-
-
-
-
-
-
-
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!
1) Operators and built-in Functions -[1 Hours]
1) Operators and built-in Functions -[1 Hours]