Product Content Engineer

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

This role focuses on defining and implementing content quality standards for AI-powered experiences, specifically within Meta's AI Discovery team. The Product Content Engineer will build frameworks, rubrics, and pipelines to evaluate AI outputs, assess model behavior, and collaborate with cross-functional teams to improve AI content experiences, particularly in search and recommendation systems.

What you'd actually do

  1. Define content quality standards and use them to systematically evaluate how AI models are performing across our products and content experiences
  2. Design golden sets, taxonomies, and guidelines that enable consistent, repeatable content quality assessments
  3. Build repeatable workflows for collecting, annotating, and analyzing AI outputs so evaluations can run efficiently as models evolve
  4. Evaluate successive model releases through structured comparison, documenting what improved, what regressed, and what to prioritize next
  5. Design evaluation frameworks that integrate qualitative and quantitative signals to measure dimensions like user trust, content depth, and topical relevance

Skills

Required

  • 5+ years of experience working collaboratively with product, engineering, design, and user research teams
  • 1+ years working with generative AI products, AI evaluation, prompt engineering, annotation, and/or content labeling and analysis
  • Experience designing and implementing evaluation frameworks, annotation guidelines, or quality rubrics for AI/ML systems
  • Demonstrated data analysis skills, with experience exploring data, identifying patterns, and producing actionable insights
  • Experience building new products or platform/ecosystem products
  • Critical thinking, experience leading data-driven analyses to inform product or content decisions, and experience communicating to executive leadership
  • Proven track record of cross-functional collaboration and delivering results in environments with evolving requirements and competing priorities
  • Background in content strategy, information quality, or trust and safety
  • Experience adhering to and implementing responsible, ethical AI practices (e.g., risk assessment, bias mitigation, quality and accuracy reviews)
  • Familiarity with AI evaluation methods such as human eval, model-as-judge, A/B testing, or red-teaming
  • Experience building dashboards, scripts, or workflows that codify evaluation metrics
  • Demonstrated ongoing AI skill development (e.g., prompt/context engineering, agent orchestration) and staying current with emerging AI technologies
  • Experience with Python, SQL, or other tools for data analysis and evaluation automation
  • Demonstrated ability to integrate AI tools to optimize/redesign workflows and drive measurable impact (e.g., efficiency gains, quality improvements)
  • BA or BS in Computer Science, Data Science, Linguistics, or related field

Nice to have

  • prompt engineering
  • agent orchestration

What the JD emphasized

  • AI evaluation
  • content quality
  • evaluation frameworks
  • responsible, ethical AI practices

Other signals

  • AI evaluation frameworks
  • content quality
  • search and recommendation systems
  • model behavior assessment
  • cross-functional collaboration