(Weeks 3–4 | Lecture 6 Hrs / Lab 18 Hrs / Ext 0 Hrs | 24 Total Contact Hrs | 1.0 Semester
Credit)
Students will:
- Train linear and logistic regression models for classification and regression.
- Apply decision trees and random forest algorithms for real-world problems.
- Perform feature selection and hyperparameter tuning to optimize models.
- Deploy ensemble learning techniques to enhance prediction performance.
Prerequisite: MLDL 101 – Machine Learning Foundations
Tools: Scikit-learn, Pandas, Matplotlib
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