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AI Ethics and Policy Development Course

USD $59.00 USD $249.00Price range: USD $59.00 through USD $249.00

Course Overview

This self-paced course explores the ethical dimensions of AI, focusing on critical issues like privacy, bias, accountability, and policy development. Participants will learn how to create and implement ethical frameworks and policies that guide the responsible use of AI technologies across various sectors.

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.
Variation

E-Lms, Video + E-LMS, Live Lectures + Video + E-Lms

Certificate Image

What You’ll Gain

  • Full access to e-LMS
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate

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Feedbacks

In Silico Molecular Modeling and Docking in Drug Development

You explained everything very well. The Q&A sessions were very useful, sir. Thank you.


Mohamed Rafiullah : 05/11/2025 at 10:59 am

Very nice interaction, but need to clear all the doubts in all the sessions and each session should More be equally valuable for all as the 2nd day session was most informative while 1st day and 3rd day were more or less like casual.
Shuvam Sar : 10/12/2024 at 5:49 pm

In Silico Molecular Modeling and Docking in Drug Development

nice to join this course with you


Alaa Alameen : 11/11/2025 at 12:47 pm

Scientific Paper Writing: Tools and AI for Efficient and Effective Research Communication

Excellent delivery of course material. Although, we would have benefited from more time to practice More with the plethora of presented resources.
Kevin Muwonge : 04/02/2024 at 10:08 pm

Artificial Intelligence for Cancer Drug Delivery

delt with all the topics associated with the subject matter


RAVIKANT SHEKHAR : 02/07/2024 at 11:01 pm

Carbon Nanotubes and Micro Needles : Novel Approach for Drug Delivery Systems

Mentor is highly knowledgeable well equipped with all skills and very good information


LAXMI K : 11/19/2024 at 1:08 pm

NanoBioTech Workshop: Integrating Biosensors and Nanotechnology for Advanced Diagnostics

He was kind and humble to answer all the questions.


Rajkumar Rengaraj : 02/14/2024 at 7:44 pm

This was a good workshop some of the recommended apps are not compatible with MAC based computers. More would recommend to update the recommendations.
Shahid Karim : 10/09/2024 at 3:14 pm