Product Manager, Central Product

Meta Meta · Big Tech · Menlo Park, CA +2

Product Manager responsible for leading AI-native product development, defining product strategy, prioritizing problems, and driving progress with cross-functional teams. This role involves critically evaluating AI's role in user problems, translating AI capabilities into product visions, developing AI-native strategies (including evals and data), leveraging AI for opportunity identification, and using AI-enabled tools for product building and workflow optimization. The role emphasizes rapid experimentation, scaling AI best practices, and staying current with AI technologies.

What you'd actually do

  1. Responsible for leading a product area; defining success metrics, prioritizing product problems and identifying the best strategies for the product, aligned with the organizational goals.
  2. Critically evaluate when AI is (and isn't) the right solution for user problems, with clear articulation of tradeoffs and risks.
  3. Translate AI capabilities into compelling product visions grounded in real user value.
  4. Develop AI-native strategies including evals strategy and data strategy that enable iteration and measurable quality improvements.
  5. Define and run evaluations (evals) to interpret model outputs and adjust execution based on learnings—treating evaluation as a first-class product practice.

Skills

Required

  • 5+ years of relevant industry experience with at least 2 years in Product Management
  • Experience working with a cross-functional product team on a significant product area
  • Crafting product vision and strategy
  • Defining product requirements
  • Coordinating resources from other groups (marketing, legal, etc.)
  • Driving the team to achieve key milestones and goals
  • Experience managing a product through multiple product life cycle phases
  • Proven experience to drive a material change in the performance of a product and the effectiveness of the team that delivers that product
  • Demonstrated experience to analyze large scale, complex data sets and making effective decisions based on data
  • Experience using AI-enabled tools to build product, prototypes, or other tangible product artifacts
  • Demonstrated ability to develop AI-native strategies including evals and data strategies
  • Experience integrating a diverse set of requirements from a broad set of users as well as context into a single coherent product strategy
  • Experience leading and motivating a product team and collaborating with partner teams
  • Demonstrated experience in communication, bringing extreme clarity to complex and technical messages at the appropriate level for the audience
  • Demonstrated ability to integrate AI tools to optimize/redesign workflows and drive measurable impact (e.g., efficiency gains, quality improvements)
  • Experience adhering to and implementing responsible, ethical AI practices (e.g., risk assessment, bias mitigation, quality and accuracy reviews)
  • Demonstrated ongoing AI skill development (e.g., prompt/context engineering, agent orchestration) and staying current with emerging AI technologies

Nice to have

  • STEM subject ideal but not essential (Computer Science, Engineering, Information Systems, Analytics, Mathematics, Physics, Applied Sciences)

What the JD emphasized

  • AI-native product development practices
  • AI is (and isn't) the right solution
  • AI capabilities
  • AI-native strategies
  • evals strategy
  • data strategy
  • AI for identifying opportunities
  • AI-powered product development
  • responsible AI use
  • AI-native practices
  • AI automation
  • AI-enabled tools
  • state-of-the-art learnings
  • evaluations (evals)
  • evaluation as a first-class product practice
  • AI-enabled tools to build product
  • AI-native strategies
  • evals and data strategies
  • AI tools to optimize/redesign workflows
  • responsible, ethical AI practices
  • AI skill development
  • agent orchestration

Other signals

  • AI-native product development practices
  • Translate AI capabilities into compelling product visions
  • Develop AI-native strategies including evals strategy and data strategy
  • Leverage AI for identifying opportunities
  • Use AI-enabled tools to build products—prototyping, validating, or shipping tangible artifacts independently
  • Define and run evaluations (evals) to interpret model outputs and adjust execution based on learnings—treating evaluation as a first-class product practice
  • Demonstrated ongoing AI skill development (e.g., prompt/context engineering, agent orchestration) and staying current with emerging AI technologies