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Deep Learning Kernel Software Performance Architect

On-site
NVIDIAShanghai, CN / CN5 hours agoWebsite
FreshRecently launched
Full-time

Compensation

Salary undisclosed
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Description

NVIDIA is seeking Software Performance Architects to optimize GPU kernel performance for state-of-the-art data-center platforms. We build automated, data-driven workflows to detect, explain, and prevent performance regressions across key deep learning workloads, partnering closely with kernel developers, compiler teams, infrastructure, and architecture/performance groups.

What you'll be doing:

  • Performance analysis, optimization and debugging

    • Build performance narratives using structured methodology: baselines, projections, controlled comparisons, and regression attribution.

    • With the methodologies, analyze performance of GPU-accelerated kernels and key deep learning building blocks, identify gaps with baselines or projections, then optimize the kernels' performance to fill the gaps.

    • Debug performance issues end-to-end: reproduce, isolate root causes, propose fixes or mitigation paths, and drive closure with the owning teams.

  •  Automation + regression infrastructure (Python-heavy)

    • Develop and maintain Python-based automation for performance testing and analysis—using modern AI-assisted developer tools (e.g., Cursor/Claude Code/Copilot) to accelerate scripting while keeping code maintainable and reviewable.

    • Design and operate performance test workflows: coverage definition, test/workload generation, automated large-scale execution (CI/nightly/on-demand), rerun rules, and reproducibility standards.

  •  Cross-team collaboration and operating model

    • Work with kernel developers and the compiler teams to ensure performance checks are practical, scalable, and aligned to release needs.

    • Work with chip architecture and modeling teams to solidify the performance methodology across chip architecture generations and common Deep Learning operators such as GEMM, Attention, MoE.

    • Partner with SWQA and infrastructure teams for execution at scale and reliable pipelines/dashboards.

  • Following general software engineering best practices including support for regression testing and CI/CD flows

What we need to see:

  • Masters or PhD degree or equivalent experience in Computer Science, Computer Engineering, Applied Math, or related field

  • Strong programming ability in Python plus C/C++ with 2+ working experience (performance-oriented code reading/debugging)

  • Solid fundamentals in computer architecture, parallel programming and performance reasoning (latency/throughput, memory hierarchy, parallelism) to be able to identify bottlenecks, optimize resource utilization, and improve throughput

  • Experience with performance analysis workflows: profiling, measurement methodology, reproducibility, and regression triage.

  • Comfortable working across teams and driving issues to decision/closure with clear communication

Ways to stand out from the crowd:

  • Experience with high-performance kernels or math libraries (e.g., GEMM/attention, CUTLASS-like concepts)

  • GPU programming/perf experience (CUDA or equivalent parallel programming)

  • Strong ML/DL workload understanding (training/inference shapes, precision modes, perf bottlenecks)

  • Familiarity with simulators/analytical modeling or performance characterization methodology

Stack

PythonC++GPUCI/CDMachine LearningCUDADeep Learning
Posted
Jul 9, 2026
Last seen
Jul 9, 2026
First seen
Jul 8, 2026

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