Table of Contents
- Risks and Attacks on ML Models
- The Emergence of Risk-Averse Methodologies and Frameworks
- Regulations and Policies Surrounding Trustworthy AI
- Privacy Management in Big Data and Model Design Pipelines
- ML Pipeline, Model Evaluation and Handling Uncertainty
- Hyperparameter Tuning, MLOPS, and AutoML
- Fairness Notions and Fain Data Generation
- Fairness in Model Optimization
- Model Explainability
- Ethics and Model Governance
- The Ethics of Model Adaptability
- Building Sustainable, Enterprise-Grade AI Platforms
- Sustainable Model Life Cycle Management, Feature Stores, and Model Calibration
- Industry-Wide Use-cases

