Ai/ml Platform Engineer

AMD AMD · Semiconductors · Santa Clara, CA · Engineering

AI/ML Platform Engineer at AMD focused on building the infrastructure layer for AI-for-engineering workflows. This role involves creating scalable, reliable, and reproducible systems for large-scale agent execution, distributed training and inference, experiment tracking, and GPU cluster utilization. The engineer will operationalize frameworks, build shared services, and improve developer experience for researchers and engineers working with AI and hardware/software tooling.

What you'd actually do

  1. Build and operate the shared AI platform for agentic engineering workflows, including job submission, scheduling, orchestration, retries, logging, artifact storage, and experiment tracking.
  2. Develop reliable infrastructure for distributed training, distributed inference, batch evaluation, and large-scale agent rollout across GPU clusters.
  3. Build platform services for benchmark execution, correctness checking, profiling, regression tracking, and reproducible evaluation.
  4. Maintain artifact systems for generated kernels, RTL edits, traces, logs, profiler outputs, benchmark results, simulator outputs, and formal verification artifacts.
  5. Support scalable integrations with compilers, ROCm/HIP tooling, profilers, simulators, EDA tools, vLLM, SGLang, and internal engineering systems.

Skills

Required

  • Python
  • C++
  • Go
  • Rust
  • distributed systems
  • ML workloads
  • GPU infrastructure
  • experiment management
  • production reliability
  • Kubernetes
  • Ray
  • Slurm
  • workflow engines
  • containerization
  • CI/CD
  • data pipelines
  • large-scale compute orchestration
  • debugging skills

Nice to have

  • ROCm/HIP
  • CUDA
  • profiling
  • kernel benchmarking
  • model serving
  • distributed training/inference
  • vLLM
  • SGLang
  • Triton
  • PyTorch
  • JAX
  • MLflow
  • Weights & Biases

What the JD emphasized

  • production engineering use
  • production reliability
  • production-quality APIs
  • production infrastructure

Other signals

  • AI for engineering workflows
  • large-scale agent execution
  • distributed training and inference
  • ML platforms
  • GPU infrastructure