Systems Generalist, Gpt Infrastructure

OpenAI OpenAI · AI Frontier · San Francisco, CA · Scaling

This role focuses on building the infrastructure and automated optimization platform for AI model inference, enabling reliable, efficient, and scalable deployment across diverse hardware. It involves designing control planes, APIs, secure execution environments, and evaluation systems at the intersection of distributed systems, AI inference, compilers, and performance engineering.

What you'd actually do

  1. Design, build, and operate durable APIs and control-plane services for multi-hour or multi-day optimization campaigns, including scheduling, retries, budgets, checkpoints, artifact lineage, and observability.
  2. Build secure partner-side runner and grader software that can compile, execute, verify, and benchmark candidate artifacts on third-party accelerator hardware.
  3. Integrate hardware profiles, ISA and toolchain context, compilers, runtimes, and inference-serving engines into a repeatable optimization workflow.
  4. Turn research prototypes into reliable product surfaces with clear contracts, debuggable failure modes, reproducible outputs, and excellent developer ergonomics.
  5. Develop correctness and performance evaluation systems spanning latency, throughput, memory use, utilization, and cost efficiency.

Skills

Required

  • C++
  • Python
  • Go
  • Rust
  • distributed systems
  • Linux
  • networking
  • storage
  • containers
  • cloud architectures
  • debugging complex systems
  • measurement, profiling, and benchmarks
  • API design
  • job orchestration
  • durable workflows

Nice to have

  • AI infrastructure
  • inference-serving systems
  • large-scale machine learning systems
  • compilers
  • runtimes
  • kernel optimization
  • performance engineering
  • LLVM
  • MLIR
  • Triton
  • CUDA
  • ROCm
  • GPUs
  • accelerators
  • hardware architecture
  • ISA concepts
  • vendor toolchains
  • vLLM
  • SGLang
  • Triton Inference Server
  • developer platforms
  • external APIs
  • remote execution systems
  • secure partner-facing infrastructure
  • strategic cloud, hardware, or infrastructure partners

What the JD emphasized

  • 8+ years of professional software engineering experience building large-scale distributed systems, infrastructure platforms, or cloud services, or equivalent depth of experience.
  • strong programming skills in one or more of C++, Python, Go, or Rust
  • Experience designing and operating highly available backend systems, APIs, job orchestration systems, or durable workflows for production workloads.
  • Strong understanding of distributed systems, Linux, networking, storage, containers, and modern cloud architectures.
  • Experience debugging complex systems and using measurement, profiling, and benchmarks to guide engineering decisions.
  • Proven ability to lead complex technical initiatives as a senior individual contributor and work effectively across organizational boundaries.

Other signals

  • building infrastructure for AI models
  • deploying models reliably, efficiently, and at global scale
  • high-performance inference capacity
  • automated inference optimization platform
  • turning research prototypes into reliable product surfaces