Skip to main content
Back to jobs

Director, System Software Engineering - Metropolis Accelerated and Inferencing Software

External
NVIDIA logoNvidia · Santa Clara, CA
Full-timeRemote4d ago
GoExpressComputer Vision
Cover LetterConnect

Prepare for this interview

Elite

AI-generated questions, company research, and talking points tailored to this role


Responsibilities

  • Global Team Leadership & Scaling: Direct, mentor, and strategically grow a decentralized, world-class engineering and data team across Europe, Asia, and the US, with a focus on next-generation deep learning challenges.
  • Inference Strategy & Architecture: Own NVIDIA's end-to-end Vision AI Acceleration strategy, driving TensorRT, vLLM, and accelerated frameworks to deliver low-latency performance improvements across Edge and Enterprise devices.
  • Partner Collaboration & Go-to-Market: Architect highly optimized deep learning pipelines for major Metropolis OEMs and partners, define Proofs of Readiness (PORs), finalize SOWs, and provide technical debugging and education when needed.
  • Serve as the multi-functional leader for deep learning. Develop upcoming SoC/GPU hardware using customer insights and represent NVIDIA's vision globally.
  • Performance Benchmarking: Drive continuous optimization efforts to secure industry-leading results on benchmarks like MLPerf across diverse platforms.
  • What We Need to See:
  • Deep Expertise & Pedigree: A Bachelor's or Master's in CS/EE (or equivalent experience) backed by 15+ years in engineering, including 10+ years in deep learning research/practice, 7+ years in leadership, and 10+ years delivering production-grade embedded software in complex environments.
  • Low-Level Hardware Intuition: A strong understanding of CPU, GPU, and dedicated deep learning architectures, with a track record of extracting maximum performance through heterogeneous computing and low-level optimizations (kernels, memory, latency).
  • Modern AI Fluency: Hands-on experience building large-scale data pipelines and deploying LLMs, VLMs, or multimodal AI systems for perception, data triage, or automated labeling.
  • Operational Excellence: Strong communication and clear project planning skills needed to guide multi-functional technical initiatives with outstanding precision.
  • Ways to Stand Out from the Crowd:
  • Advanced Foundations: A PhD concentrating on Spatial Computing & Awareness, Sim-to-Real Transfer, or Human-to-Physical AI Interaction, or equivalent experience.
  • Domain Authority: Recognized technical thought leadership in deploying GenAI, Computer Vision, and Physical AI solutions within Smart Spaces, with a deep understanding of hardware and sensing constraints.
  • Global Footprint: Active experience leading and unifying highly technical engineering teams across multiple continents and time zones.
  • Your base salary will be determined based on your location, experience, and the pay of employees in similar positions. The base salary range is 320,000 USD - 488,750 USD. You will also be eligible for equity and benefits .
  • Applications for this job will be accepted at least until June 14, 2026. This posting is for an existing vacancy.
  • NVIDIA uses AI tools in its recruiting processes.

Additional Information

Within NVIDIA's Edge AI, Metropolis, and Blueprints (EMB), this team powers NVIDIA's Vision AI strategy from model onboarding to production deployment. We transform foundation models into real-time, GPU-accelerated video intelligence systems using Deep Stream and VSS. Our focus includes scaling multimodal reasoning and enabling agentic development workflows. We connect production data with model improvement. This work positions NVIDIA as the default platform for Physical AI. The Metropolis team within EMB is looking for a Director of Systems Software Engineering who combines visionary leadership with deep technical execution. This high-impact, hybrid role is designed for a leader who not only manages remotely but also models code, masters low-latency inference, and understands modern architectures such as transformers, diffusion models, and VLMs. If you are an industry expert who thrives on tuning NVIDIA GPUs/SoCs and translating accelerated computing pipelines into measurable, real-world Enterprise and Edge solutions, let's talk.


Your Match

How well this role fits your profile.

Company Intel

What employees say

Worked at NVIDIA? Share your experience

Interested in this role?

Apply on the company's website.

Cover LetterConnect