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Starts 6 June 2025 01:25

Ends 6 June 2025

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Navigating the Nuances of AI and ML Product Management

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.
Data Con LA via YouTube

Data Con LA

2463 Courses


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

Subjects

Data Science