Generative AI for Product Managers Specialization Course Syllabus

Full curriculum breakdown — modules, lessons, estimated time, and outcomes.

Master the end-to-end lifecycle of building and scaling generative AI products as a product manager. This specialization equips PMs with practical frameworks, vendor-neutral insights, and real-world templates to lead AI initiatives from strategy to deployment. With approximately 13 weeks of content, learners invest 3–5 hours per week through hands-on projects, case studies, and AI co-creation exercises—culminating in a go-to-market capstone. Lifetime access ensures ongoing relevance in this fast-evolving domain.

Module 1: GenAI Foundations for PMs

Estimated time: 16 hours

  • Transformer architecture basics for non-technical PMs
  • Understanding cost vs. performance tradeoffs in LLMs
  • Vendor selection criteria: OpenAI, Anthropic, and open-source models
  • Case Study: Notion AI implementation and lessons learned

Module 2: GenAI Product Design

Estimated time: 20 hours

  • User story generation using AI tools
  • Prototyping UI concepts with Midjourney and DALL-E
  • Conversational UI best practices for chatbots and agents
  • Hands-on: Build a feature specification using ChatGPT

Module 3: Prompt Engineering for Product Requirements

Estimated time: 12 hours

  • Writing effective prompts for user scenarios
  • Iterating on prompt outputs with AI pair programming
  • Validating prompts against product goals
  • Template: Prompt requirement documentation (PRD) section

Module 4: LLM Integration Patterns

Estimated time: 14 hours

  • API-based integration strategies for GenAI features
  • Fine-tuning vs. retrieval-augmented generation (RAG)
  • Security and latency considerations in deployment
  • Architecture patterns for scalable AI products

Module 5: Scaling GenAI Products

Estimated time: 16 hours

  • Monitoring for model drift and performance decay
  • Designing feedback loops for continuous improvement
  • Compliance and regulatory checklists (GDPR, AI Act)
  • Ethical AI implementation frameworks and risk assessment

Module 6: Final Project

Estimated time: 20 hours

  • Develop a comprehensive go-to-market strategy for a GenAI product
  • Create an ethical review checklist and risk mitigation plan
  • Deliver a final presentation with AI-coconstructed prototypes and specs

Prerequisites

  • Familiarity with basic product management principles
  • Experience writing user stories or PRDs preferred
  • Basic understanding of software development lifecycle

What You'll Be Able to Do After

  • Develop a GenAI product strategy aligned with business goals
  • Apply prompt engineering techniques to define product requirements
  • Design and prototype AI-powered features using generative tools
  • Implement ethical and compliant GenAI solutions using structured frameworks
  • Lead scaling efforts for GenAI products with monitoring and feedback systems
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