1. Introduction to ML course:

2. Exploratory Data Analysis:

Focus on pre-processing, missing values, working with outliers, demo on EDA

3. Logistic Regression:

4. Decision Trees

5. Dimension Reduction Techniques

Principal component analysis (PCA)

6. Ensemble Methods:

7. Capstone Project.

Students will be presented with a real-time industry scenario and accompanying datasets. Your task will be to develop a comprehensive solution, adhering to professional standards in architecture design, data pipelines, coding best practices, and culminating in a demonstrable project for evaluation.

8. Mock Interviews.

You'll be interviewed by experienced Machine Learning practitioners.

9. Brainstorming session with AI Leaders

Strategic Dialogue with AI Visionaries.

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