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Course Outline

Foundations of Safe and Fair AI

  • Core concepts: safety, bias, fairness, and transparency
  • Bias categories: dataset, representation, and algorithmic bias
  • Overview of regulatory frameworks (e.g., EU AI Act, GDPR)

Bias in Fine-Tuned Models

  • Understanding how fine-tuning can introduce or exacerbate bias
  • Case studies and analysis of real-world failures
  • Techniques for identifying bias in datasets and model predictions

Techniques for Bias Mitigation

  • Data-level strategies (e.g., rebalancing, augmentation)
  • In-training strategies (e.g., regularization, adversarial debiasing)
  • Post-processing strategies (e.g., output filtering, calibration)

Model Safety and Robustness

  • Detecting unsafe or harmful model outputs
  • Handling adversarial inputs
  • Conducting red teaming and stress testing on fine-tuned models

Auditing and Monitoring AI Systems

  • Bias and fairness evaluation metrics (e.g., demographic parity)
  • Explainability tools and transparency frameworks
  • Best practices for ongoing monitoring and governance

Toolkits and Hands-On Practice

  • Utilizing open-source libraries (e.g., Fairlearn, Transformers, CheckList)
  • Practical session: Detecting and mitigating bias in a fine-tuned model
  • Generating safe outputs through effective prompt design and constraints

Enterprise Use Cases and Compliance Readiness

  • Best practices for integrating safety into LLM workflows
  • Documentation and model cards for compliance purposes
  • Preparing for audits and external reviews

Summary and Next Steps

Requirements

  • A foundational understanding of machine learning models and training processes
  • Practical experience with fine-tuning techniques and Large Language Models (LLMs)
  • Familiarity with Python programming and Natural Language Processing (NLP) concepts

Audience

  • AI compliance teams
  • Machine learning engineers
 14 Hours

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