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Starts 6 June 2025 01:25
Ends 6 June 2025
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56 minutes
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Overview
Discover the unique challenges and strategies of AI/ML product management, from data handling to ethical considerations, cross-functional collaboration, and user-centric design principles.
Syllabus
- Introduction to AI/ML Product Management
- Understanding AI/ML Technologies
- Data Handling and Management
- Defining AI/ML Product Strategy
- User-Centric Design in AI/ML
- Cross-Functional Collaboration
- Ethical and Legal Considerations
- Deployment and Monitoring of AI/ML Products
- Challenges in AI/ML Product Management
- Future Trends in AI/ML
- Conclusion and Course Review
Overview of AI and ML technologies
Role of a Product Manager in AI/ML projects
Basics of Machine Learning and Artificial Intelligence
Key algorithms and their applications
AI/ML lifecycle and development process
Data collection, cleaning, and preprocessing
Importance of data quality and data bias
Privacy and security considerations in data management
Identifying business problems and opportunities
Setting product goals and success metrics
Market research and competitive analysis for AI/ML products
Human-centered design principles
Designing intuitive and accessible AI interfaces
Handling user feedback and improving products
Working with data scientists and engineers
Collaboration with legal, ethical, and compliance teams
Bridging gaps between technical and non-technical stakeholders
Understanding AI ethics and fairness
Legal regulations affecting AI and data usage
Strategies for building ethical AI products
Scaling AI/ML solutions effectively
Continuous monitoring and performance evaluation
Managing AI/ML model updates and iterations
Balancing innovation with risk management
Overcoming organizational and technical hurdles
Learning from case studies and industry examples
Emerging technologies and opportunities
Preparing for advancements in AI/ML capabilities
Strategic planning for long-term success
Recap of key concepts and learnings
Final project or assessment
Resources for continued learning and growth in AI/ML product management
Subjects
Data Science