Aim
AI Ethics and Policy Development teaches how to design responsible AI policies for real organizations. Learn risk analysis, governance, privacy, fairness, transparency, and compliance-ready documentation.
Program Objectives
- Ethics Basics: fairness, accountability, transparency, privacy, safety.
- Risk Thinking: harms, misuse, bias, security, model failure.
- Policy Writing: scope, roles, rules, approvals, exceptions.
- Governance: AI lifecycle controls, documentation, audits.
- Data & Privacy: consent, minimization, retention, access control.
- Evaluation: testing, red-teaming basics, monitoring and drift.
- Procurement: vendor checks and third-party risk (intro).
- Capstone: write an AI policy pack for a use case.
Program Structure
Module 1: Ethics in AI (What Matters)
- Common harms: discrimination, surveillance, misinformation, unsafe automation.
- Stakeholders: users, affected groups, operators, regulators.
- High-risk vs low-risk AI and when to avoid automation.
- Ethics workflow: identify risk → controls → evidence → review.
Module 2: Policy Foundations
- Policy vs standards vs SOPs vs guidelines.
- Define scope: systems covered, data types, model types, vendors.
- Roles: owner, approver, reviewer, legal, security, product.
- Decision rules: approvals, exceptions, escalation.
Module 3: Data Governance, Privacy, and Consent
- Data mapping: sources, sensitivity, access, retention.
- Privacy controls: minimization, purpose limits, anonymization (intro).
- Consent and notice basics; handling sensitive data.
- Security basics: access, logging, incident response (overview).
Module 4: Fairness, Bias, and Human Impact
- Bias types: data, measurement, selection, labeling.
- Fairness checks: group metrics, error breakdowns.
- Human-in-the-loop: when required and how to design it.
- Impact assessment: who is affected and how.
Module 5: Transparency and Explainability
- What to disclose: purpose, limits, confidence, sources.
- Explainability levels: simple models vs black-box models (overview).
- Documentation: model cards, datasheets, change logs.
- Communication: user-facing AI notices and disclaimers.
Module 6: Safety, Misuse, and Security
- Threats: prompt injection, data leakage, jailbreaks (intro), model abuse.
- Content risks: hallucinations, toxic outputs, sensitive info exposure.
- Controls: access limits, filtering, rate limits, review workflows.
- Red-teaming basics and incident playbooks.
Module 7: Compliance and Audit Readiness
- Compliance mindset: evidence, traceability, accountability.
- Lifecycle gates: design → build → test → deploy → monitor.
- Monitoring: drift, performance, complaints, harm signals.
- Audit pack: approvals, tests, risk register, logs.
Module 8: Policy Pack Building (Templates)
- AI Use Policy: allowed uses, restricted uses, prohibited uses.
- Risk Assessment: severity/likelihood, mitigations, owners.
- Model Governance: testing checklist, release checklist, monitoring plan.
- Vendor Policy (intro): due diligence questions and contract clauses (overview).
Final Project
- Choose a use case: HR screening, customer support bot, fraud, healthcare analytics (non-clinical), education.
- Deliverables: AI policy + risk assessment + governance checklist + transparency notice.
- Optional: short presentation for leadership review.
Participant Eligibility
- Policy, legal, compliance, security, product, and AI/ML teams
- Students and professionals interested in responsible AI
- No coding required
Program Outcomes
- Identify AI risks and define practical controls.
- Write clear AI policies and governance checklists.
- Design documentation for audits and compliance.
- Deliver a full AI policy pack as a portfolio artifact.
Program Deliverables
- e-LMS Access: lessons, case studies, templates.
- Policy Toolkit: AI use policy template, risk register, model card template, review checklist.
- Capstone Support: feedback and review.
- Assessment: certification after capstone submission.
- e-Certification and e-Marksheet: digital credentials on completion.
Future Career Prospects
- Responsible AI / Governance Associate
- AI Risk & Compliance Analyst
- Policy Analyst (AI/Tech)
- Trust & Safety Associate
Job Opportunities
- Tech/IT: AI governance, trust & safety, compliance.
- Finance: model risk management and fairness checks.
- Healthcare/Pharma: analytics governance (non-clinical), documentation.
- Government/NGOs: AI policy programs and standards work.








