Senior Systems Software Engineer - Deep Learning Solutions

at Nvidia
USD 224,000-356,500 per year
SENIOR
✅ On-site

Used Tools & Technologies

Machine Learning

Required Skills & Competences

Linux @ 4 Parallel Programming @ 4 Performance Optimization @ 4 CUDA @ 4 GPU @ 4 Deep Learning @ 4 AI @ 4 Robotics @ 4 TensorRT @ 4

Details

NVIDIA is a global leader in physical AI, powering self-driving cars, humanoid robots, intelligent environments, and medical devices. The team builds software platforms to optimize deep learning inference for autonomous vehicles and robotics on edge devices. This role is a hands-on technical specialist focused on operator/kernel-level analysis, kernel trace analysis, and end-to-end inference performance on GPU and SoC platforms.

Responsibilities

  • Address customer and partner optimization challenges by engaging with automotive OEMs and robotics partners to analyze, debug, and improve deep learning models on NVIDIA platforms; deliver solutions, not only recommendations.
  • Own performance benchmarking efforts (MLPerf Edge and other industry benchmarks) including defining methodology, ensuring reproducibility, and turning results into actionable optimization priorities.
  • Evaluate emerging model architectures (transformers, vision-language models, diffusion/flow matching, state space models, vision encoders, multi-camera tokenizers) for compilation feasibility, memory footprint, and latency on target SoCs.
  • Collaborate across compiler, runtime, and hardware teams to connect model-level insights with platform capabilities.
  • Contribute to build reviews and help develop internal roadmap priorities based on real customer workload patterns.
  • Represent NVIDIA externally at conferences, webinars, and partner events to share deep learning optimization expertise and establish guidelines.
  • Deliver TensorRT and compiler-stack solutions for edge: build and deploy inference solutions on Jetson, DRIVE, and GPU+ARM platforms for AV and robotics workloads; develop Proofs of Readiness (PORs) and collaborate on Torch-TRT, MLIR-TRT, and related frameworks.

Requirements

  • Master's degree or equivalent experience in Computer Science, Electrical Engineering, or related field.
  • Over 12 years in the industry, including at least 8 years specializing in deep learning model optimization, inference engineering, or neural network compilation; proficiency at operator/kernel level is required.
  • Over 5 years of validated expertise in embedded/edge software delivering production inference solutions in power-limited, latency-sensitive environments.
  • Comprehensive knowledge of contemporary DL architectures: transformers, attention variants, vision encoders (ViT), multi-modal/vision-language frameworks, diffusion models, and/or state space models.
  • Expert knowledge of GPU architecture fundamentals, CUDA, and low-level performance optimization using heterogeneous computing; experience with TensorRT and compiler IRs or equivalent inference optimization toolchains.
  • Solid understanding of embedded OS internals (QNX/Linux), memory management, C/C++, and embedded/system software concepts.
  • Background in parallel programming (e.g., CUDA, OpenMP) and reasoning about memory hierarchies, data movement, and compute utilization.
  • Demonstrated ability to collaborate directly with external partners and customers in a deep technical role to solve workload and performance issues within production constraints.

Ways to Stand Out

  • Experience with ML compiler frameworks (TVM, MLIR, XLA, Triton) or contributing to inference runtime development.
  • Production deployment experience with autonomous vehicle perception or planning stacks, understanding the full pipeline from sensor input through trajectory output.
  • Familiarity with the Physical AI model landscape: VLM + action expert architectures, end-to-end driving models, or robot foundation models.
  • Contributions to MLPerf benchmarks and large-scale industry performance optimization efforts.
  • Experience with automotive safety standards (ISO 26262, SOTIF) and their implications for inference system development.

Compensation & Other Details

  • Base salary range: 224,000 USD - 356,500 USD (determined based on location, experience, and comparable pay).
  • Eligible for equity and company benefits.
  • Applications accepted at least until March 15, 2026. This posting is for an existing vacancy.
  • NVIDIA uses AI tools in its recruiting processes and is an equal opportunity employer committed to diversity.