Senior Manager, Content Promotion & Distribution Data Engineering

Netflix Netflix · Big Tech · Los Angeles, CA +2 · Data & Insights

Senior Manager to lead a Data Engineering team focused on building and operating multi-modal data foundations (text, metadata, image, video, audio) for ML and GenAI model development and evaluation within Netflix's Content Promotion & Distribution ecosystem. The role involves managing a heterogeneous team of Data, Software, and ML Engineers, partnering with cross-functional leaders, and providing technical vision for data products supporting analytics, experimentation, and ML at scale.

What you'd actually do

  1. Hire, lead, and develop a stunning team of Data and ML Engineers across a heterogeneous skill set (data, software, and ML engineering).
  2. Own the end-to-end data foundations for Content Promotion & Distribution, spanning: Traditional data engineering craft: batch/streaming pipelines, data modeling, data warehousing, data quality, and reliability for analytics and experimentation. Multi‑modal, ML‑ready data: media, text, and rich metadata pipelines that prepare data for training and serving ML and GenAI models.
  3. Partner with cross-functional leaders across Content Promotion & Distribution DSE, AI ML Platform, Content Engineering, Studio Algo, and Marketing to ideate, prioritize, and execute on high-impact data products and tools.
  4. Steer deeply impactful work on foundational data and media products that support Netflix’s Content Promotion & Distribution, spanning agentic solutions, multimodal media understanding, and generation.
  5. Provide technical vision and strategy for how we model, store, transform, and serve both structured and multi‑modal data to power analytics, experimentation, and ML at scale.

Skills

Required

  • Leading data engineering teams
  • Managing managers and heterogeneous teams
  • Data engineering (ETL/ELT, modeling, warehousing, data quality)
  • ML-focused data engineering (feature pipelines, data preparation for training/serving)
  • Multi-modal data handling (media, text, metadata)
  • Stakeholder management and communication
  • Technical vision and strategy

Nice to have

  • Experience in marketing/promotion, content/media domains
  • Experience with experimentation and ML/AI-driven products
  • Experience with agentic solutions
  • Experience with GenAI/ML use cases (synthetic voice, machine translation)

What the JD emphasized

  • leading data engineering teams for 7+ years, including managing managers and larger, heterogeneous teams
  • leading innovative, influential data engineering work in complex business domains, ideally involving multimodal media data marketing/promotion, content/media, experimentation, and or ML/AI-driven products
  • comfortable owning the technical quality of both: Analytics-focused data engineering (ETL/ELT, modeling, warehousing, data quality), and ML-focused data engineering (feature pipelines, media and multi‑modal data preparation, training/serving data sets)

Other signals

  • multi-modal data foundations
  • ML and GenAI model development and evaluation
  • ML-ready data
  • emerging GenAI/ML use cases
  • ML/GenAI research and productionization