Detailed Course Outline
Section 1: Machine learning basics
- Classical programming vs. machine learning approach
 - What is a model?
 - Algorithm features, weights, and outputs
 - Machine learning algorithm categories
 - Supervised algorithms
 - Unsupervised algorithms
 - Reinforcement learning
 
Section 2: What is deep learning?
- How does deep learning work?
 - How deep learning is different
 
Section 3: The Machine Learning Pipeline
- Overview
 - Business problem
 - Data collection and integration
 - Data processing and visualization
 - Feature engineering
 - Model training and tuning
 - Model evaluation
 - Model deployment
 
Section 4: What are my next steps?
- Resources to continue learning