AI Lifecycle: The course begins with a refresher on core concepts in AI and more specifically Machine Learning (ML), as well as the ML development lifecycle. We will focus on the critical stages of data preprocessing, including cleaning, transforming, and formatting data, followed by an overview of model development—how AI models are designed, trained, and evaluated.
ML Applications Walkthrough: We will guide participants through diverse practical Machine Learning applications, including:
- Classification models, e.g. with Fraud Detection
- Regression Models, e.g. with Real Estate Price Prediction
- GenAI Large Language Models, e.g. talk-to-your-data application
- Clustering, e.g. with Customer Segmentation
Hands On Experimentation: Working in groups or individually, participants will explore, modify, and customize pre-built AI models, with their own data or use cases.
Reflection and Discussion: We will conclude by reflecting on the day's experimentation and outcomes, as well as addressing the limitations, risks, and challenges associated with AI development.