ML Accelerator Performance Validation Engineer, Post Silicon Validation

Amazon Amazon · Big Tech · Austin, TX · Software Development

This role focuses on validating the performance of custom ML training chips for AWS, ensuring they meet latency, throughput, and efficiency targets at cloud scale. The engineer will design and execute performance benchmarks, profile ML workloads on silicon, identify bottlenecks, and build automated dashboards to track performance and readiness for production deployment.

What you'd actually do

  1. Design and execute performance benchmarks spanning micro-architectures to full model training
  2. Measure and analyze compute throughput, memory bandwidth, interconnect latency, and more
  3. Profile real ML workloads (transformer models, LLMs, vision models) on silicon
  4. Identify performance bottlenecks and work with architecture teams on optimization
  5. Build automated performance regression dashboards and tracking infrastructure

Skills

Required

  • 3+ years of non-internship professional software development experience
  • 2+ years of non-internship design or architecture (design patterns, reliability and scaling) of new and existing systems experience
  • Experience with Machine Learning and Large Language Model fundamentals, including architecture, training/inference lifecycles, and optimization of model execution, or experience working with PyTorch or JAX software
  • Bachelor's degree in computer science, engineering, mathematics or equivalent, or experience in Java, C++, Python, or a related language
  • 3+ years of experience with hardware performance counters and profiling tools for analyzing and optimizing system and application performance
  • Strong understanding of computer architecture fundamentals including memory hierarchies (caches, DRAM, HBM), compute pipelines, and interconnect topologies
  • Experience applying statistical methods, regression analysis, and data visualization techniques to interpret performance data and drive optimization decisions

Nice to have

  • 3+ years of full software development life cycle, including coding standards, code reviews, source control management, build processes, testing, and operations experience
  • Experience with CUDA kernels or ML/low-level kernels, or experience in developing and deploying LLMs in production on GPUs, Neuron, TPU or other AI acceleration hardware
  • Knowledge of collective communications (AllReduce, AllGather) and scaling
  • Experience with HBM, PCIe, and/or DMA bandwidth characterization

What the JD emphasized

  • ML training chips
  • performance
  • cloud scale
  • ML workloads
  • silicon
  • performance regression

Other signals

  • ML accelerators
  • performance validation
  • ML workloads
  • cloud scale