Technical Lead, Youtube Posts Discovery, Machine Learning and Recommendation

Google Google · Big Tech · San Bruno, CA +1

Technical Lead for YouTube Posts Discovery team, responsible for growing the Posts ecosystem through AI/ML recommendation systems. The role involves defining technical strategy, leading a team of engineers, designing, developing, and deploying large-scale recommendation models, and optimizing ML infrastructure. Focus is on recommending posts aligned with user interests across various YouTube surfaces.

What you'd actually do

  1. Define technical strategy and solutions for enhancing YouTube Posts discovery models and systems to accelerate viewer and creator growth while improving user satisfaction.
  2. Provide technical leadership on high-impact projects. Manage project priorities, deadlines, and deliverables. Design, develop, test, and deploy large-scale recommendation models, novel model architectures, and optimize ML infrastructure to drive the growth of the Posts ecosystem.
  3. Partner with engineering, product, data-science to convert business goals into scalable technical solutions that grow the Posts ecosystem.
  4. Facilitate alignment and clarity across teams on goals, outcomes, and timelines. Influence and coach engineers on the team.
  5. Lead and mentor a team of engineers.

Skills

Required

  • software development
  • technical leadership
  • building and deploying recommendation systems models (retrieval, prediction, ranking, embedding) in production
  • building architecture in different modeling domains

Nice to have

  • Master’s degree or PhD in Engineering, Computer Science, or a related technical field
  • large-scale recommendation or search systems
  • reinforcement learning (e.g., sequential decision making)
  • ML infrastructure
  • specialization in another ML field
  • people management
  • applying machine learning to improve user recommendations through fast experimentation and metric-driven iterations

What the JD emphasized

  • large-scale recommendation systems
  • recommendation systems models

Other signals

  • recommendation systems
  • large-scale AI/ML systems
  • multi-task learning
  • user interest modeling
  • content discovery