Power and Performance Architect, Tpu

Google Google · Big Tech · Sunnyvale, CA +1

This role focuses on designing and optimizing the power architecture for next-generation Tensor Processing Units (TPUs) that accelerate AI/ML workloads. The architect will bridge the gap between high-level concepts and silicon execution, focusing on power management features and performance-per-watt for ML applications, and will collaborate with software and data center teams to align silicon capabilities with system-level power constraints.

What you'd actually do

  1. Lead the definition of power architecture for the next generation of TPU SOCs, optimizing for performance-per-watt across machine learning (ML) workloads.
  2. Bridge the architecture-to-execution gap by partnering with SOC implementation, IP providers, and hardware and software validation teams.
  3. Drive the design and integration of power management features, including dynamic voltage and frequency scaling (DVFS), power gating, and thermal mitigation strategies.
  4. Collaborate with the software community and data center teams to provide technology roadmaps that align silicon capabilities with system-level power constraints.
  5. Provide technical leadership and mentorship across multidisciplinary teams to anticipate future data center architectures and define SOC requirements.

Skills

Required

  • Bachelor's degree in Electrical Engineering, Computer Engineering, Computer Science, or a related field, or equivalent practical experience
  • 15 years of experience in the design or definition of computer chips (such as SOC, CPU, GPU, or hardware accelerators)
  • Experience with performance analysis or performance modeling
  • Experience with power analysis, power modeling, or power delivery systems

Nice to have

  • Master's degree or PhD in Electrical Engineering, Computer Engineering or Computer Science, with an emphasis on computer architecture
  • Experience taking silicon power features from architecture definition through to tape-out and post-silicon validation
  • Experience with machine learning (ML) accelerator architecture and workload characterization for power optimization
  • Experience implementing DVFS or AVS, multi-voltage domain designs, and cross-layer power policies
  • Knowledge of system software components (Linux kernel, drivers) and their impact on runtime power/thermal behavior

What the JD emphasized

  • 15 years of experience in the design or definition of computer chips (such as SOC, CPU, GPU, or hardware accelerators)
  • Experience with performance analysis or performance modeling
  • Experience with power analysis, power modeling, or power delivery systems
  • Experience taking silicon power features from architecture definition through to tape-out and post-silicon validation

Other signals

  • AI/ML hardware acceleration
  • TPU technology
  • custom silicon solutions
  • power architecture roadmap
  • performance-per-watt