Engineering Manager - ML Platform and Infrastructure

Applied Intuition Applied Intuition · Robotics · Sunnyvale, CA · Engineering Leadership

Engineering Manager for ML Platform and Infrastructure at Applied Intuition, focusing on building and scaling the infrastructure for Physical AI. The role involves managing a team to own training & inference orchestration, GPU cluster architecture, and performance optimization for large-scale ML workloads.

What you'd actually do

  1. Grow and manage a team of world-class infrastructure and systems engineers with the goal of delivering a best-in-class ML platform for Physical AI
  2. Own the design and evolution of frameworks for orchestrating distributed training and inference jobs across thousands of GPUs
  3. Drive the buildout and scaling of our GPU cluster infrastructure, making critical decisions on architecture, scheduling, networking, and resource management
  4. Lead efforts to optimize training and inference performance — including throughput, fault tolerance, GPU utilization, and cost efficiency at scale
  5. Set team goals and roadmap in alignment with research milestones, model development timelines, and production deployment requirements

Skills

Required

  • engineering management
  • leading infrastructure or platform teams
  • distributed systems
  • GPU computing
  • large-scale ML infrastructure
  • building or operating large GPU clusters
  • distributed training frameworks
  • job orchestration at scale
  • GPU cluster management
  • high-performance networking
  • resource scheduling

Nice to have

  • training optimization techniques
  • inference optimization
  • Physical AI domains
  • autonomous driving
  • robotics
  • simulation
  • open-source ML infrastructure projects

What the JD emphasized

  • 3+ years of engineering management experience, ideally leading infrastructure or platform teams
  • Deep experience with distributed systems, GPU computing, or large-scale ML infrastructure
  • Direct experience building or operating large GPU clusters (1,000+ GPUs)
  • Track record of building and operating systems that run reliably at massive scale

Other signals

  • leading a team
  • ML platform
  • Physical AI
  • large-scale training and inference
  • thousands of GPUs