FreeCourse Logo
FreeCourse.io
Verified CouponsFree CoursesJobsBlog
Categories
Home/Courses/Product Management for AI & Data Science
Product Management for AI & Data Science
Business100% OFF

Product Management for AI & Data Science

Udemy Instructor
4.2(3.1K students)
Self-paced
All Levels

About this course

“This course contains the use of artificial intelligence”Artificial Intelligence and data science are no longer experimental or optional technologies. Today, AI-powered and data-driven products sit at the core of how organizations compete, make decisions, and scale. As a result, companies are actively seeking Product Managers who understand how to build, manage, and own AI products—not just track timelines or manage backlogs.This course is designed specifically to prepare you for the Product Manager for AI & Data Science role.

It focuses on the product thinking, decision-making, and leadership skills required to take an AI product from idea to production and beyond. Unlike traditional product management courses, this course addresses the realities of working with machine learning systems, data pipelines, Generative AI models, and AI platforms, where outcomes are uncertain and success depends on much more than feature delivery.A core emphasis of the course is helping you clearly differentiate between Product Managers, Product Owners, and Project Managers, and understand where the AI Product Manager fits within modern organizations. You will learn why AI Product Managers are accountable for problem selection, value creation, and risk management, while working closely with data scientists, ML engineers, and platform teams.Throughout the course, you will learn how to identify business problems that are suitable for AI solutions, and how to translate those problems into well-defined AI use cases.

You will understand how AI systems actually work at a conceptual level—covering data collection, model training, inference, feedback loops, and monitoring—without needing to write code or understand complex mathematics. This allows you to communicate confidently with technical teams while staying focused on product outcomes.The course places strong emphasis on data as a product, helping you understand why data quality, labeling, bias, and availability directly impact product success. You will learn how to assess data readiness, identify gaps and risks, and make informed decisions when data is incomplete or imperfect.

These skills are critical for AI Product Managers, as data constraints often shape what is feasible long before a model is built.You will also learn how to define AI-specific product requirements, including functional and non-functional constraints such as accuracy, explainability, latency, cost, scalability, and ethical risk. The course walks through how to write AI-ready PRDs, evaluate trade-offs between model performance and business impact, and align stakeholders around realistic expectations.As the course progresses, you will gain hands-on exposure to launching and operating AI products in production. This includes designing AI MVPs, using human-in-the-loop approaches, setting up monitoring for model drift and data drift, and planning for continuous improvement.

Special attention is given to Generative AI and LLM-based products, where issues like hallucinations, trust, guardrails, and cost control become central product concerns.Responsible and ethical AI is treated as a product responsibility, not just a technical one. You will learn how Product Managers assess bias, fairness, transparency, compliance, and reputational risk, and how these considerations influence product decisions, user experience, and governance processes.By the end of the course, you will bring everything together through a portfolio-ready, end-to-end AI product case study, demonstrating your ability to move from problem discovery to launch metrics and post-launch iteration. The course also prepares you for AI Product Manager interviews, helping you confidently answer case studies, trade-off questions, and stakeholder communication scenarios that hiring managers commonly use.This course is ideal for aspiring Product Managers, career switchers, MBA students, traditional PMs transitioning into AI, and technical professionals who want to move into product leadership roles.

If you want to stop feeling overwhelmed by AI buzzwords and start thinking and acting like a modern AI Product Manager, this course gives you the structure, language, and confidence to do exactly that.

Skills you'll gain

ManagementEnglish

Available Coupons

Loading...

Course Information

Level: All Levels

Suitable for learners at this level

Duration: Self-paced

Total course content

Instructor: Udemy Instructor

Expert course creator

This course includes:

  • 📹Video lectures
  • 📄Downloadable resources
  • 📱Mobile & desktop access
  • 🎓Certificate of completion
  • ♾️Lifetime access
$0$74.99

Save $74.99 today!

Enroll Now - Free

Redirects to Udemy • Limited free enrollments

Share this course

https://freecourse.io/courses/product-management-for-ai-data-science

You May Also Like

Explore more courses similar to this one

AI for Problem Solving Excellence
Business
0% OFF

AI for Problem Solving Excellence

Udemy Instructor

Want to use AI (Artificial Intelligence) for Problem Solving Excellence but don’t know what to do and how?Take a look at this course where you willNot only learn about AI for Problem Solving including how AI helps build Excellence in Problem Solving, Case Studies of AI helping build Excellence, Building Blocks of using AI to build Problem Solving Excellence and How to implement these AI Building Blocks for Problem Solving Excellence but also forProblem Identification and Framing, Root Cause Analysis, Creative Idea Generation, Evaluation and Decision-Making, Prototyping and Testing, Implementation and Continuous Improvement and Developing Human Problem-Solving ExcellencePreview many lectures for free to see the content for yourselfGet Udemy’s 30 days Money Back GuaranteeMy exposure to AI for Problem Solving Excellence started with the rise of machine learning in the 2000s when AI started analyzing large datasets to uncover hidden patterns and predict outcomes, improving business, science, and engineering problem-solving. The latest era—Generative AI and advanced NLP models like ChatGPT—has made AI a collaborative partner, capable of brainstorming, simulating solutions, detecting risks, and giving feedback, thus making excellence in problem solving accessible to individuals and organizations at scaleI bring in this course my learnings from this journey and share with you how can you also can successfully use AI for Problem Solving ExcellencePreview for yourself many lectures free. If you like the content, enroll for the course, enjoy and skill yourself to start using AI for Problem Solving Excellence!Please remember that this course comes with Udemy’s 30 days Money Back GuaranteePlease remember to reach out to me for any help in enjoying this course after you enroll

0.0•1.5K•Self-paced
FREE$73.99
Enroll
AI PRODUCT MANAGER Skills for Agile: AI Product Management
Business
0% OFF

AI PRODUCT MANAGER Skills for Agile: AI Product Management

Udemy Instructor

This course contains the use of artificial intelligenceDo you want to become a stronger Product Manager or Product Owner using AI?Are you a Product Manager or Product Owner who wants to use AI tools like ChatGPT to manage your product backlog, roadmap, sprint planning and Agile workflows more effectively?This course is built specifically for that.This is not a course about managing AI products.This is a course about using AI to become a more effective Product Manager in Agile environments.You will learn how to use AI tools to:Conduct product market researchAnalyse user reviews and customer feedbackGenerate product vision and strategyBuild and order a product backlogPlan sprintsImprove Agile meetingsManage workflows in Jira and ConfluenceAnd you will see it done step-by-step in a real-world scenario.Learn Through a Real Product ScenarioThroughout the course, you will act as the Product Manager for an international Sports App.Using this practical scenario, you will:Use ChatGPT to analyse market data and user reviewsGenerate product strategy and roadmap clustersCreate a structured product backlogExport backlog items into JiraUse Confluence for documentationImprove sprint planning and meeting workflowsThe demonstrations use ChatGPT, Jira and Confluence.However, the frameworks and prompt structures taught in this course work equally well with tools such as Claude, Gemini, or other AI assistants.You are learning transferable AI Product Management skills — not tool dependency.What Makes This Course Different?Most courses teach:Theory-heavy product managementOr abstract AI conceptsOr how to manage AI engineering teamsThis course focuses on something far more practical:How to use AI as your Product Management co-pilot.You’ll learn how to:Structure better prompts for backlog refinementUse AI to detect ambiguities and gaps in requirementsGenerate acceptance criteriaPrioritise product backlog itemsOrganise stories into sprintsImprove Agile ceremonies using AI transcription and summariesThis is hands-on, applied AI for Agile Product Managers.Who Is This Course For?Product ManagersProduct OwnersAgile PractitionersScrum Masters transitioning into Product rolesSaaS professionalsConsultants supporting product teamsAnyone who wants to integrate AI into their product workflowsIf you want to improve how you manage products using AI — this is for you.InstructorPaul Ashun — Product & AI Strategy ConsultantPaul has extensive experience in:Agile Product ManagementProduct strategy & roadmap developmentAI tooling integration (ChatGPT, Jira, Confluence)Market research and user insight analysisSaaS and digital product environmentsConsulting organisations on adopting AI for product workflowsThrough Pashun Consulting, Paul works with professionals and teams to integrate AI into practical product management processes — not just experimentation, but structured execution.This course brings that experience into a practical, step-by-step format.Course StructureThe course follows a logical Agile product lifecycle:1. Introduction to AI in Product ManagementUnderstanding how AI fits into the Product Manager and Product Owner role.2. AI Market ResearchCapturing and analysing user comments, reviews and competitor insights.3. AI Product Vision, Strategy & RoadmapTurning insights into structured product direction.4. AI Product Backlog ManagementCreating personas, user stories, release goals and backlog ordering.5. Jira AI Backlog ManagementImporting and managing AI-generated backlog items inside Jira.6. AI Sprint PlanningOrganising stories and selecting sprint goals strategically.7. AI Meetings & Sprint LifecycleUsing AI transcription and action tracking to improve Agile ceremonies.Everything is demonstrated through the Sports App scenario so you see practical implementation — not theory.Why AI Skills Matter for Product ManagersProduct management is evolving rapidly.Companies are looking for Product Managers and Product Owners who can:Work efficiently with AI toolsReduce time spent on manual backlog workImprove clarity of requirementsMake data-driven decisions fasterIncrease sprint effectivenessAI will not replace Product Managers.But Product Managers who use AI effectively will outperform those who don’t.Career BenefitsProduct Management remains one of the highest-impact and highest-growth roles in tech.By combining:Agile Product Management skillsAI workflow integrationPractical tooling knowledge (ChatGPT, Jira, Confluence)You significantly increase your value in SaaS, fintech, digital platforms and product-led organisations to obtain  your product manager job. Apart from product manager jobs you can use these skills to manage products within your own business as an entrepreneur,This Is Practical AI Product ManagementYou will not just learn concepts.You will see:PromptsOutputsBacklogsRoadmapsSprint boardsDocumentation workflowsAll in action.If you want to become a more efficient, AI-empowered Product Manager in Agile teams — this course is for you.Let’s get started.

4.0•375•Self-paced
FREE$82.99
Enroll
PECB Certified Lead AI Risk Manager Exam 2026:Practice Tests
Business
0% OFF

PECB Certified Lead AI Risk Manager Exam 2026:Practice Tests

Udemy Instructor

Welcome to the ultimate preparation resource for the PECB Certified Lead AI Risk Manager exam 2026. If you want to clear your professional certification on the very first try, you have come to the right place. Studying textbooks and reading long framework papers is a great start, but it is rarely enough to pass a high-level corporate exam. To truly feel ready, you need to test your knowledge against realistic mock exams that challenge your understanding of real-world risk scenarios. This course provides exactly that: high-quality practice tests built to match the difficulty, style, and structure of the actual test questions you will face on exam day.Artificial intelligence technologies are growing faster than ever before. Companies everywhere are racing to deploy automated tools to speed up their work and cut operational costs. However, these tools bring massive new liabilities. Organizations now face major threats from data privacy breaches, algorithmic discrimination, model drift, and complex cyberattacks like prompt injections. Because of these dangers, international governments are passing strict new laws. The landscape has changed, and companies desperately need certified leaders who can spot these dangers and fix them before they cause financial or legal ruin. Becoming a certified manager proves to employers that you have the skills to guide their automation journey safely.This test preparation course is built to give you the exact practice you need for the updated 2026 exam objectives. We cover everything from foundational artificial intelligence concepts to highly complex compliance architectures. You will answer questions regarding voluntary engineering frameworks like the NIST AI RMF, as well as strict, binding regional laws like the European Union AI Act. You will also tackle problems based on international certifiable standards like ISO/IEC 42001 and universal vocabularies like ISO Guide 73. We do not just give you simple true-or-false questions. Instead, our mock exams put you in the shoes of a corporate leader who must make tough architecture and treatment choices under tight budgets and strict performance limits.Every single practice question in this course comes with a clear and detailed answer explanation. We do not just tell you which option is right and leave you to figure out the rest. We break down the exact logical reasons why the correct choice is superior to the others. We also highlight common exam traps and clarify easily confused concepts, such as the exact difference between data poisoning and evasion attacks, or when to use a KPI versus a forward-looking KRI. This means that every test you take acts as a powerful learning session that builds your confidence and seals your gaps in knowledge.Preparing for a professional certification requires a smart exam preparation strategy. Walking into the testing center after only reading guides leaves too much to chance. By practicing with our realistic test questions, you learn how to manage your time effectively and analyze complex business scenarios quickly. You will learn to recognize keyword clues, evaluate difficult architectural tradeoffs, and make defensible risk treatment decisions under pressure. Whether you are aiming to land a new corporate role or protect your current organization from compliance penalties, these practice tests will help you achieve your goals and master the 2026 exam objectives.What You’ll LearnHow to distinguish between voluntary security frameworks and binding regional laws accurately.Methods to implement a certifiable Artificial Intelligence Management System using international standards.Techniques to translate broad executive risk appetite into precise operational tolerance metrics.How to build and maintain a central enterprise inventory to eliminate unmanaged shadow software.Skills to analyze and structure diverse algorithmic threats using the MIT AI Risk Repository.How to recognize and mitigate adversarial attacks including pre-deployment data poisoning and live evasion.Strategies to evaluate complex tradeoffs between algorithmic fairness, utility, and system latency.How to select the best risk treatment option between avoidance, reduction, transfer, and acceptance.Methods to track system accuracy degradation caused by predictive concept drift and data drift.How to implement the Plan-Do-Check-Act cycle to drive continual performance improvement over time.Skills to separate historical performance indicators from forward-looking early-warning indicators.How to design clear corporate accountability structures using a standardized RACI matrix.Course FeaturesMultiple complete mock exams designed to match the difficulty of the real testing environment.Hundreds of realistic test questions focusing on deep reasoning and real-world corporate decision-making.Detailed answer explanations for every single question to help you learn from your mistakes rapidly.Fully updated content reflecting the absolute latest 2026 certification exam objectives and regulatory timelines.Flexible, self-paced learning that allows you to practice anytime, anywhere, on any device.Comprehensive certification preparation covering all five major corporate competency domains.Expertly crafted scenario questions that test multi-requirement business constraints and technical tradeoffs.Course StructureSection 1: AI Risk Principles, Concepts, and RegulationsThis section tests your foundational knowledge of artificial intelligence terminology, distinguishing between voluntary frameworks like the NIST AI RMF and binding laws such as the EU AI Act. You will evaluate fundamental concepts including machine learning, the seven characteristics of trustworthy AI, and the legal obligations tied to specific regulatory risk tiers.Section 2: AI Risk Management Program and GovernanceThis section focuses on establishing the structural oversight required to manage automated systems effectively. You will answer questions on setting internal and external context, translating broad enterprise risk appetite into specific operational tolerances, maintaining centralized AI inventories, and designing clear RACI accountability matrices integrated with existing Enterprise Risk Management.Section 3: AI Risk Identification and AnalysisThis section challenges your ability to discover and analyze specific algorithmic vulnerabilities using structured tools like the MIT AI Risk Repository's causal and domain taxonomies. Topics include distinguishing between inherent and residual exposure, calculating composite risk levels, and identifying distinct threat vectors such as pre-deployment data poisoning, post-deployment evasion, prompt injections, and various forms of algorithmic bias.Section 4: AI Risk Evaluation, Treatment, and MonitoringThis section covers the strategic execution of targeted mitigation controls once a vulnerability has been analyzed. You will evaluate scenarios requiring you to choose between risk avoidance, reduction, transfer, or acceptance based on established corporate criteria. Additionally, it tests your understanding of the NIST MANAGE function for incident response and the continuous monitoring needed to detect predictive concept drift.Section 5: Organizational Learning and Performance ImprovementThis section evaluates your ability to build a continuous safety culture and adapt to emerging threats over time. Questions focus on implementing the Plan-Do-Check-Act (PDCA) cycle, distinguishing between Key Performance Indicators (KPIs) and forward-looking Key Risk Indicators (KRIs), fostering two-way external stakeholder consultation, and developing role-specific compliance competence across the enterprise.Section 6: Comprehensive Scenario Application and Cross-Domain GovernanceThis final section synthesizes knowledge from all previous domains by presenting complex, multi-requirement enterprise scenarios that mimic real-world executive decision-making. You will evaluate complex tradeoffs—such as balancing rigorous privacy enhancements against operational latency—while simultaneously applying international standards like ISO/IEC 42001 and ISO Guide 73 to ensure holistic, certifiable organizational compliance.Who This Course Is ForRisk management professionals who want to pivot into the fast-growing field of automated systems oversight.Compliance officers and legal advisors needing to master upcoming regional laws and international standards.Data scientists and machine learning engineers looking to build safer, more reliable predictive models.Information security analysts aiming to defend enterprise infrastructure against novel adversarial threats.Corporate executives and project managers overseeing large-scale automation and digital upgrades.IT auditors responsible for verifying corporate governance compliance across disparate business units.Candidates actively preparing to take the official exam to earn their professional certification.RequirementsA basic understanding of general corporate risk management steps and enterprise definitions.Familiarity with foundational artificial intelligence terms and how machine learning utilizes data.Access to an internet-connected device to take the online practice tests and read the answer explanations.A strong desire to study hard, practice realistic scenarios, and pass your certification exam.Why Take This CourseEarning your professional certification is one of the smartest career moves you can make. As corporate dependence on automation grows, the market demand for qualified leaders who understand algorithmic vulnerabilities is skyrocketing. This course bridges the gap between theoretical reading and practical exam success. By training with realistic mock exams, you eliminate surprises and ensure you possess the practical decision-making skills needed to manage enterprise threats effectively. Investing in this preparation gives you the tools, insights, and confidence required to master the testing material and stand out in the corporate marketplace.Exam Preparation StrategyThe best way to prepare for a high-level manager exam is through active recall and continuous testing. Reading frameworks over and over can give you a false sense of security. Taking practice tests forces your brain to analyze scenarios, evaluate tradeoffs, and apply knowledge under constraints. We recommend taking a mock exam to find your weak spots first. Next, study the detailed answer explanations carefully to understand the underlying principles. Repeat this process to track your improvement, sharpen your time management, and build the critical thinking endurance needed to pass the official examination easily.Career BenefitsHolding a leading certification in this space completely transforms your professional trajectory. It instantly validates your expertise to top-tier recruiters, headhunters, and executive boards. This qualification opens doors to high-paying leadership roles, such as Chief Risk Officer, AI Compliance Director, or Senior Enterprise Risk Manager. Beyond career advancement, this knowledge allows you to protect your employer from catastrophic regulatory penalties, costly cyber incidents, and severe brand damage. You become an indispensable corporate asset capable of safely guiding your enterprise through the future of digital innovation.DisclaimerThis course provides independent practice tests and test preparation materials designed to help students study for their certification. This course is an independent educational resource and is not officially affiliated with, endorsed by, or partnered with PECB or any external standardization bodies. Rest assured, these aren't leaks. They are custom-developed practice questions, specifically engineered using advanced research tools to match the 2026 exam standards.

0.0•7•Self-paced
FREE$81.99
Enroll
FreeCourse LogoFreeCourse

Freecourse.io brings you high-quality online courses with free certificates to help you upskill, boost your career, and achieve your goals anytime, anywhere.

Resources

  • Courses
  • Jobs
  • Categories
  • Features

Company

  • About
  • Blog
  • Contact

Legal

  • Privacy
  • Terms
  • Cookies
  • Licenses

© 2026 FreeCourse. All rights reserved.