Responsible AI & AI Ethics for Generative AI Practitioners

Designing Ethical, Fair, Transparent, and Accountable AI Systems in the Era of Generative AI

Duration

1 Day

Level

Basic to Intermediate Level

Design and Tailor this course

As per your team needs

Overview

This 1-day intensive program provides a foundational-to-intermediate understanding of Responsible AI principles and AI Ethics, specifically tailored for Generative AI practitioners and product leaders. The session covers ethical frameworks, bias mitigation, fairness, transparency, explainability, governance models, regulatory considerations, and practical implementation strategies for GenAI systems.

Participants will gain both conceptual clarity and practical tools to design, deploy, and govern AI systems responsibly — minimizing risk while maximizing trust and long-term business value.

Audience

  • Generative AI Practitioners
  • GenAI Product Managers
  • AI Engineers
  • Data Scientists
  • Responsible AI Leads
  • AI Governance Stakeholders

Prerequisites

  • Basic understanding of AI/ML concepts
  • Exposure to Generative AI systems
  • No formal prerequisites required

Curriculum

Introduction to Responsible AI & AI Ethics

  • What is Responsible AI?

  • Ethics vs compliance vs governance

  • Why Responsible AI matters in Generative AI

  • Risks unique to GenAI (hallucination, deepfakes, misinformation)

  • Global trends in AI regulation

  • Business risks of unethical AI

Core Principles of Responsible AI

  • Fairness and bias mitigation

  • Transparency and explainability

  • Accountability and governance

  • Privacy and data protection

  • Safety and robustness

  • Human oversight and human-in-the-loop systems

Bias, Fairness & Risk in Generative AI

  • Sources of bias in foundation models

  • Dataset bias vs algorithmic bias

  • Harmful content generation

  • Prompt injection and adversarial attacks

  • Hallucinations and misinformation risks

  • Fairness evaluation techniques

Responsible AI Implementation Frameworks

  • Risk assessment frameworks

  • Model cards and documentation

  • AI impact assessments

  • Ethical review boards

  • Governance lifecycle for AI systems

  • Monitoring and post-deployment auditing

Privacy, Security & Compliance

  • Data minimization principles

  • PII handling in GenAI systems

  • Secure model deployment practices

  • Data retention policies

  • Regulatory overview (GDPR and emerging AI regulations)

  • Enterprise compliance considerations

Operationalizing Responsible AI in GenAI Projects

  • Embedding ethics into product lifecycle

  • Responsible prompt engineering

  • Guardrails and content filtering

  • Human-in-the-loop review workflows

  • Incident response for AI failures

  • Organizational AI governance models

Case Studies & Practical Scenarios

  • Real-world AI ethical failures

  • Risk analysis exercise

  • Designing guardrails for a GenAI chatbot

  • Evaluating fairness in content generation

  • Executive-level risk mitigation strategy discussion

Upon completion, participants will be able to:

  • Identify ethical risks in Generative AI systems

  • Apply Responsible AI principles during design and deployment

  • Conduct AI risk assessments and fairness evaluations

  • Implement governance and documentation practices

  • Reduce legal, reputational, and compliance risks

  • Build trustworthy AI systems aligned with organizational values

Duration

1 Day

Level

Basic to Intermediate Level

Design and Tailor this course

As per your team needs

Let’s Build Your Growth Ecosystem.

Get in touch