NVIDIA

AI computing

SeniorSoftwareEngineer-DeepLearningCompilerCIInfrastructure

$140–224k Santa Clara, California, United States FULL TIME Remote Friendly
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Senior candidates.

The Brief

“Senior Software Engineer - Deep Learning Compiler CI Infrastructure at NVIDIA. Skills: Deep Learning Compiler CI Infrastructure, CI/CD, Python, AI/LLM-based systems. own and evolve the CI/CD infrastructure that powers the development lifecycle of NVIDIA's deep learning compiler stacks. designing and operating scalable CI systems that orchestrate ML workloads across diverse GPU and accelerator environments”

What You'll Achieve.

deliver reliable correctness and performance signals; reduce manual CI operations; speed up failure triage; improve developer efficiency; measurable impact on developer productivity, signal quality, or operational efficiency

Industry & Context.

AI computing
Problems you'll solve

reducing flakes; improving reproducibility; strengthening diagnostics; making correctness and performance failures easier to understand and act on; speed up failure triage

What They're Looking For.

Must Have

5+ years of experience designing, scaling, and operating CI/CD, build/release, or developer infrastructure for complex software systems, Proven experience building CI platforms end-to-end using systems such as GitLab CI, GitHub Actions, Jenkins, or similar tools, including pipeline orchestration, compute/runner management, artifact and package systems, and observability, with emphasis on reliability, reproducibility, and debuggability, software engineering skills (Python required), with the ability to design, implement, and debug distributed systems end-to-end, Proven track record of designing, building, and deploying AI/LLM-based systems in real engineering workflows, demonstrating skill in evaluating trade-offs, failure modes, maintainability, and measurable impact on developer productivity, signal quality, or operational efficiency

Nice to Have

Experience crafting and shipping sophisticated AI/agent-based systems that improve continuous integration or developer efficiency. These systems include intelligent test selection, automated triage and routing, regression localization, autonomous remediation, and developer-assist workflows, Experience operating CI for DL/GPU software environments, including multi-GPU / multi-node workloads on Slurm, Kubernetes, or cloud platforms, Familiarity with compiler IRs and infrastructure such as LLVM/MLIR, XLA/HLO, Triton IR, cuTile, or TileIR, especially in the context of testing, debugging, and validating compiler-driven workloads

What You'll Do.

own and evolve the CI/CD infrastructure that powers the development lifecycle of NVIDIA's deep learning compiler stacks

designing and operating scalable CI systems that orchestrate ML workloads across diverse GPU and accelerator environments

deliver reliable correctness and performance signals

serve as a primary technical point of contact for CI health

new project onboarding

and new architecture bring-up

and improve CI infrastructure that supports development

and release of NVIDIA’s deep learning compiler stacks across GPU and accelerator environments

Improve CI reliability and signal quality by reducing flakes

improving reproducibility

strengthening diagnostics

and making correctness and performance failures easier to understand and act on

and agent-based workflows to reduce manual CI operations

speed up failure triage

and improve developer efficiency

Build reusable and self-service CI platforms that support multiple products

and software configurations

How You'll Work.

Team & Collaboration

work closely with deep learning compiler engineers; partnering closely with compiler, infrastructure, and release teams

Full Job Description

NVIDIA's invention of the GPU 1999 sparked the growth of the PC gaming market, redefined modern computer graphics, and revolutionized parallel computing. More recently, GPU deep learning ignited modern AI — the next era of computing — with the GPU acting as the brain of computers, robots, and self-driving cars that can perceive and understand the world. Today, we are increasingly known as “the AI computing company”. In this role you will work closely with deep learning compiler engineers to own and evolve the CI/CD infrastructure that powers the development lifecycle of NVIDIA's deep learning compiler stacks. Responsibilities include designing and operating scalable CI systems that orchestrate ML workloads across diverse GPU and accelerator environments, deliver reliable correctness and performance signals, and serve as a primary technical point of contact for CI health, new project onboarding, and new architecture bring-up. **What you 'll be doing:** * Build, maintain, and improve CI infrastructure that supports development, verification, and release of NVIDIA’s deep learning compiler stacks across GPU and accelerator environments * Improve CI reliability and signal quality by reducing flakes, improving reproducibility, strengthening diagnostics, and making correctness and performance failures easier to understand and act on * Apply automation, AI, and agent-based workflows to reduce manual CI operations, speed up failure triage, and improve developer efficiency * Build reusable and self-service CI platforms that support multiple products, projects, model suites, hardware targets, and software configurations while partnering closely with compiler, infrastructure, and release teams **What we need to see:** * BS, MS, or PhD (or equivalent experience) in Computer Science, Computer/Electrical Engineering, Mathematics, or a related field * 5+ years of experience designing, scaling, and operating CI/CD, build/release, or developer infrastructure for complex software syst

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