A course focused on making intelligent, explainable, and understandable decisions when using analytics and avoiding common pitfalls in data modeling.
- GitHub: Version control and project management
- Cursor AI: AI-assisted coding and development
- Quarto: Dynamic document creation and reporting
- Python: Data analysis and visualization
- DAFT/DOT: Graph visualization and decision modeling
- Random Variables: Understanding uncertainty and variability in data
- DAGs (Directed Acyclic Graphs): Modeling causal relationships and dependencies
- Causal Inference: Moving beyond correlation to understand causation
- Decisions: Framing analytical problems as decision-making processes
- Probability Distributions: Modeling uncertainty and risk in business contexts
- Ergodicity Economics: Understanding time-based vs. ensemble-based thinking
- Data Visualization for Storytelling: Communicating insights through compelling visuals
- Models: Understanding interpretability from transparent to black-box models
