Senior Staff Data Scientist - Consumer Relevance

Reddit Reddit · Consumer · United States · Remote · Consumer Data Science

Senior Staff Data Scientist focused on consumer relevance at Reddit. This role is the technical authority on relevance metrics and evaluation methodology for feeds, search results, and recommendations. Responsibilities include developing metrics frameworks, designing and analyzing experiments, identifying opportunities for improved measurement, and influencing product strategy. Requires deep expertise in recommendation systems, ranking, causal inference, and experimentation, with a strong quantitative background and experience mentoring others.

What you'd actually do

  1. Serve as the technical authority on relevance metrics and evaluation methodology across Consumer, setting standards for how we measure the quality of feeds, search results, and recommendations in a complex, community-driven environment
  2. Develop metrics frameworks and offline evaluation approaches for ranking and recommendation systems, including proxy metrics that reliably predict long-term outcomes like retention, community health, and user satisfaction
  3. Design and analyze experiments for relevance features, accounting for challenges unique to networked platforms such as spillover effects between communities, interference between contributors and consumers, and long-run impacts of ranking changes on content supply
  4. Identify opportunities where improved measurement and analysis can unlock product insights that were previously unmeasurable or ambiguous, particularly around content quality, search intent understanding, and personalization effectiveness
  5. Partner deeply with ML engineers and product teams to translate model performance metrics into user-facing impact

Skills

Required

  • Ph.D. in Statistics, Computer Science, Information Retrieval, Economics, or a related quantitative field with a strong focus on recommendation systems, ranking, causal inference, or evaluation methodology; or M.S. with equivalent depth of expertise
  • 12+ years of industry experience in applied science, data science, or relevance/ranking-focused roles (for M.S. holders)
  • 8+ years of industry experience in applied science, data science, or relevance/ranking-focused roles (for Ph.D. holders)
  • Deep expertise in metrics design and evaluation for ranking and recommendation systems, including offline metrics and counterfactual evaluation
  • Strong understanding of causal inference and experimentation methodology, including practical experience with challenges relevant to ranking systems such as novelty effects, position bias, long-run effect estimation, and ecosystem-level impacts
  • Experience defining and validating quality metrics for content ranking, search, or recommendations at scale
  • Strong theoretical grounding in experimental design, including power analysis, variance reduction techniques, and sequential testing as applied to relevance experiments
  • Expert knowledge of SQL
  • Proficiency in R and/or Python for statistical computing
  • Demonstrated ability to influence product and organizational strategy through data-driven insights about content quality and user experience
  • Excellent communication skills with the ability to explain nuanced statistical and ML concepts and tradeoffs to both technical and non-technical senior stakeholders
  • Experience mentoring data scientists and building organizational capability in relevance evaluation and experimentation

What the JD emphasized

  • relevance measurement and evaluation
  • ranking, recommendation, and retrieval challenges
  • content quality, search intent understanding, and personalization effectiveness
  • user-facing impact
  • experimentation best practices for ranking systems

Other signals

  • relevance measurement and evaluation
  • ranking, recommendation, and retrieval challenges
  • content quality, search intent understanding, and personalization effectiveness
  • user-facing impact
  • experimentation best practices for ranking systems