Master the skills to identify, build, and scale AI products that drive business impact, innovation, and growth.
Description
A warm welcome to AI Product Management: A Business Masterclass course by Uplatz.
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Course Description
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Artificial Intelligence is transforming every industry, but building successful AI-powered products requires more than just technical knowledge. It demands a unique combination of business strategy, data intuition, and product management skills.
This course is designed to help you become an AI-savvy product leader who can identify opportunities, design user-centric AI solutions, and manage cross-functional teams to deliver real business value.
Through a mix of real-world case studies, practical frameworks, and actionable insights, you will learn how AI product management differs from traditional PM roles, how to align AI initiatives with business goals, and how to navigate the challenges of data, ethics, and scaling AI systems.
By the end of the course, you will have a complete AI Product Management playbook to take your career or business to the next level.
What You’ll Learn
Understand the fundamentals of AI, ML, and Generative AI in simple business terms
Recognize AI opportunities and evaluate business vs. technical feasibility
Define an AI product strategy aligned with organizational goals
Manage the AI product lifecycle from MVP to production and scaling
Collaborate with data scientists, engineers, and business stakeholders
Apply human-centered AI design principles to build trust and adoption
Measure success using the right KPIs: impact, ROI, and customer trust
Explore AI monetization models and pricing strategies
Address ethics, risk, and compliance in AI product management
Gain insights from case studies of leading AI-driven companies (Netflix, Amazon, Tesla, OpenAI)
Who This Course is For
Product managers who want to transition into AI product roles
Business leaders, entrepreneurs, and consultants exploring AI opportunities
Data scientists, engineers, and designers looking to understand the business side of AI
MBA students and professionals pursuing careers at the intersection of AI, business, and technology
Anyone interested in building, scaling, and managing responsible AI products
Why Take This Course?
Learn from real-world AI product success and failure stories
Master frameworks used by top tech companies to evaluate and launch AI initiatives
Build the skillset that top employers look for in AI Product Managers
Prepare yourself for the future of product management in an AI-first world
Requirements
No coding or advanced technical knowledge required
Basic understanding of product management or business concepts is helpful but not mandatory
Curiosity about how AI creates business value is essential
What is AI Product Management?
AI Product Management is the discipline of defining, building, and scaling products powered by artificial intelligence (AI) while balancing business goals, customer needs, data constraints, and ethical considerations.
It is not just traditional product management with AI added in – it focuses on bridging business, technology, and data science to turn AI capabilities into real-world, user-friendly, and valuable products.
AI Product Managers serve as translators between business, data, and technology, ensuring AI products are not only technically sound but also usable, valuable, ethical, and scalable.
How AI Product Management Works
Identifying Opportunities
Spot business problems where AI can create meaningful value.
Evaluate whether the problem has a good AI fit and if AI is feasible.
Defining Product Strategy
Align AI initiatives with organizational goals and priorities.
Decide whether to build in-house, buy existing solutions, or partner.
Data as the Core
Ensure the availability, quality, and governance of data.
Collaborate with data teams to source, clean, and manage data pipelines.
Cross-Functional Collaboration
Work with data scientists, ML engineers, designers, legal, and operations.
Translate technical concepts into business value for stakeholders.
Designing for Users
Apply human-centered AI design principles: transparency, explainability, trust.
Manage user expectations about what AI can and cannot do.
Building and Scaling
Define MVPs for AI products, which often require iterative experimentation.
Manage pilots and then scale to production with monitoring and governance.
Measuring Success
Move beyond accuracy to measure business impact, adoption, ROI, and trust.
Continuously refine based on feedback and model performance.
Ethics and Compliance
Address risks such as bias, fairness, and regulatory compliance.
Position responsible AI as part of the product’s competitive edge.
AI Product Management: A Business Masterclass – Course Curriculum
Module 1 – Foundations of AI for Business
Introduction: Why AI matters in business today
What AI is (and isn’t) – demystifying buzzwords
AI vs. ML vs. Generative AI explained simply
Myths & misconceptions about AI
AI across industries: banking, retail, healthcare, etc.
Case study: Netflix, Uber, or Amazon’s AI use
Module 2 – The Role of an AI Product Manager
Traditional PM vs. AI PM – what’s different
Core responsibilities of an AI PM
Required skills: business + data intuition + ethics
Working with cross-functional teams (DS, Eng, Legal, Ops)
Success metrics for AI product managers
Career path & opportunities in AI product management
Module 3 – Identifying AI Opportunities
How to recognize AI opportunities in your organization
Problem fit vs. AI fit – frameworks for evaluation
Feasibility vs. business value balance
Example: AI features in consumer apps vs. enterprise solutions
Common reasons AI products fail
Mapping customer pain points to AI-driven solutions
Module 4 – AI Product Strategy
What is AI product strategy?
Aligning AI initiatives with business goals
Build vs. Buy vs. Partner decisions
Roadmaps for AI products – how they differ
Competitive advantage through AI adoption
Case study: Amazon, OpenAI, or Tesla
Module 5 – Data as the Core of AI Products
Why data is the fuel of AI
Data quality and data readiness explained simply
Data acquisition strategies – internal vs. external
Privacy, compliance, and governance issues
The cost of poor data: business implications
Case study: biased AI system failures
Module 6 – Designing AI Products for Users
Human-centered AI design principles
Explainability, transparency, and trust in AI
Managing user expectations of AI systems
UI/UX design considerations for AI features
The “black box” problem explained to business leaders
Case study: ChatGPT’s UX evolution
Module 7 – Building and Scaling AI Products
AI product lifecycle explained (non-technical)
MVPs in AI – what’s different?
Collaboration with data scientists & engineers
Agile product management for AI projects
From pilot to production: scaling challenges
Case study: AI chatbot rollout in a bank/retail firm
Module 8 – Measuring Success in AI Products
Why traditional KPIs aren’t enough for AI
Measuring business impact vs. technical performance
Accuracy vs. adoption vs. ROI trade-offs
Customer trust & adoption as success metrics
Monitoring AI in production – continuous learning
Case study: AI in customer service (success & failure stories)
Module 9 – Monetization and Business Models of AI
AI-native vs. AI-enhanced products
Pricing strategies for AI (subscription, API, usage-based)
SaaS + AI business models
Cost of running AI products (compute, infra, talent)
Ecosystem strategies (platforms, partnerships)
Emerging business models with generative AI
Module 10 – Ethics, Risks, and Regulations
Ethical dilemmas in AI product management
Bias, inclusivity, and fairness explained simply
Risk management frameworks for AI
Regulatory landscape: EU AI Act, US/India/China approaches
Responsible AI as a competitive advantage
Case study: AI ethics failures (facial recognition, hiring bias)
Module 11 – The Future of AI Product Management
The evolution of AI product management role
Generative AI and LLMs shaping products
AI + IoT + Edge AI + Autonomous systems
Skills of the future AI PM
Organizational readiness for an AI-first world
Case study: Microsoft Copilot, Tesla Autopilot, etc.
Module 12 – Capstone & Case Studies
Recap: AI PM playbook
Case study 1: Success story (e.g., Spotify personalization)
Case study 2: Failure story (e.g., Microsoft Tay chatbot)
Framework to evaluate your own AI product idea
Reflection prompts & group exercise design
Closing thoughts: AI PM mindset shift for leaders
Total Students | 712 |
---|---|
Duration | 10.5 hours |
Language | English (US) |
Original Price | |
Sale Price | 0 |
Number of lectures | 12 |
Number of quizzes | 1 |
Total Reviews | 0 |
Global Rating | 0 |
Instructor Name | Uplatz Training |
Course Insights (for Students)
Actionable, non-generic pointers before you enroll
Student Satisfaction
78% positive recent sentiment
Momentum
Steady interest
Time & Value
- Est. time: 10.5 hours
- Practical value: 5/10
Roadmap Fit
- Beginner → → Advanced
Key Takeaways for Learners
- Case Study
Course Review Summary
Signals distilled from the latest Udemy reviews
What learners praise
Clear explanations and helpful examples.
Watch-outs
No consistent issues reported.
Difficulty
Best suited for
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