Senior Deep Learning Tools Engineer 11 CUDA Tile

at Nvidia
USD 152,000-241,500 per year
SENIOR
✅ On-site

Used Tools & Technologies

Not specified

Required Skills & Competences

Python @ 7 CI/CD @ 4 TensorFlow @ 4 Mathematics @ 4 Data Analysis @ 4 Reporting @ 4 PyTorch @ 4 CUDA @ 4 GPU @ 4 Deep Learning @ 4 AI @ 4 Profiling @ 4 TensorRT @ 4 HPC @ 4 Performance Analysis @ 4 LLVM @ 4 JAX @ 4

Details

NVIDIA is building advanced compiler technologies to accelerate AI workloads. This role focuses on performance validation, analysis, and tracking at the intersection of deep learning compilers, GPU systems, and automation infrastructure. You will collaborate with compiler developers, infrastructure providers, and hardware teams to build systems that track, analyze, and improve performance across AI workloads.

Responsibilities

  • Design and develop performance testing frameworks for deep learning compilers and workloads
  • Build and maintain automated pipelines (CI/CD) to continuously track performance across models, hardware, and compiler changes
  • Implement benchmarking systems to measure latency, throughput, and efficiency of AI and HPC workloads
  • Analyze performance trends over time and identify regressions, bottlenecks, and optimization opportunities
  • Partner with compiler and architecture teams to debug and resolve performance issues
  • Develop tools and dashboards for performance visualization, reporting, and insights
  • Enable scalable testing across diverse GPU systems and environments
  • Improve infrastructure to ensure reliable, reproducible, and high-signal performance data

Requirements

  • BS, MS, or PhD (or equivalent experience) in Computer Science, Computer Engineering, Electrical Engineering, Mathematics, or related field
  • 5+ years of software engineering experience, including performance engineering, benchmarking, or systems optimization
  • Strong programming skills in Python (C++ is a plus)
  • Experience with CI/CD systems and automation frameworks
  • Familiarity with hardware-aware performance analysis (GPUs, accelerators, or similar systems)
  • Experience working with deep learning frameworks such as PyTorch, TensorFlow, JAX, or TensorRT
  • Background in data analysis, profiling, and regression tracking
  • Ability to debug complex system-level issues across software and hardware layers

Ways to Stand Out

  • Experience with GPU performance analysis and optimization
  • Understanding of compiler internals (LLVM, MLIR, CUDA compilation flow)
  • Experience building performance dashboards and large-scale telemetry systems
  • Familiarity with hardware/software co-design or low-level performance tuning
  • Experience with distributed testing infrastructure or large-scale benchmarking systems

Compensation & Additional Information

  • Base salary range: 152,000 USD - 241,500 USD
  • Eligible for equity and benefits
  • Applications accepted at least until May 10, 2026
  • NVIDIA uses AI tools in its recruiting processes and is an equal opportunity employer