Machine Learning Hardware Architect, Tpu

Google Google · Big Tech · Sunnyvale, CA +1

This role focuses on architecting and developing next-generation TPU (Tensor Processing Unit) hardware for AI/ML workloads. The individual will influence the evolution of high-performance intelligence for computing infrastructure, focusing on custom silicon solutions for large-scale AI applications, driving performance, scalability, and power efficiency.

What you'd actually do

  1. Develop architectural specifications for next-generation high-performance computing systems.
  2. Collaborate with software and systems teams to define requirements for AI workloads.
  3. Perform architecture studies and drive performance, scalability, and power efficiency projections.
  4. Influence technical roadmaps and provide strategic leadership for hardware-software platforms.
  5. Drive cross-functional technical alignment across multiple engineering teams to ensure system-level integration.

Skills

Required

  • computer architecture
  • hardware engineering
  • performance modeling
  • performance analysis
  • hardware-software codesign
  • architecture and technical direction for hardware or system-level projects

Nice to have

  • Master's degree or PhD in Electrical Engineering, Computer Engineering or Computer Science, with an emphasis on computer architecture.
  • architecture of high-performance AI accelerators
  • system-level integration
  • deploying complex AI models on sophisticated hardware platforms
  • driving strategic technical initiatives
  • mentoring executive technical staff

What the JD emphasized

  • AI/ML hardware acceleration
  • TPU architecture
  • AI workloads
  • deploy complex AI models on sophisticated hardware platforms

Other signals

  • TPU development
  • AI/ML hardware acceleration
  • high-performance computing systems
  • large-scale AI models