Senior Staff Tech Lead, Youtube Shorts Discovery

Google Google · Big Tech · Mountain View, CA +2

Tech lead for AI/ML software engineers focused on YouTube Shorts discovery models, aiming to align recommendations with user interests. This involves building large-scale AI/ML systems using techniques like LLMs, generative retrieval, and long-sequence modeling for personalized retrieval and early-stage ranking. The role requires defining technical strategy, leading high-impact projects, and partnering with cross-functional teams.

What you'd actually do

  1. Define technical strategy for enhancing YouTube Shorts discovery models and systems to accelerate viewer and creator growth while improving user satisfaction.
  2. Provide technical leadership on high-impact projects; design, develop, test, and deploy large-scale recommendation models, novel model architectures, and optimize ML infrastructure to drive the growth of the Shorts ecosystem.
  3. Partner with engineering, product, data-science, and research teams to convert business goals into scalable technical solutions that grow the Shorts ecosystem.
  4. Facilitate alignment and clarity across teams on goals, prioritization, outcomes, and timelines. Mentor and influence to uplevel junior engineers on the team.

Skills

Required

  • software development
  • technical project strategy
  • ML design
  • industry-scale ML infrastructure
  • model deployment
  • model evaluation
  • data processing
  • debugging
  • fine tuning
  • design and architecture
  • testing/launching software products
  • building and deploying recommendation systems models
  • retrieval
  • prediction
  • ranking
  • embedding

Nice to have

  • large-scale recommendation or search systems
  • reinforcement learning
  • sequential decision making
  • ML infrastructure
  • specialization in another ML field

What the JD emphasized

  • large-scale recommendation models
  • novel model architectures
  • optimize ML infrastructure
  • recommendation systems models

Other signals

  • large-scale AI/ML systems
  • multi-task learning
  • foundational models for personalized retrieval
  • early-stage ranking
  • recommendation systems