Senior Engineer - AI Agents and Systems

NVIDIARedmond, WA
$224,000 - $431,250

About The Position

Artificial intelligence is moving from passive assistance to autonomous, always-on agentic workflows. Our mission is to make this transition flawless, high-performing, and secure for millions of users worldwide, running natively on the GPUs already sitting in their PCs. We are looking for a Senior Software Engineer to build and optimize the local runtimes and agent frameworks that bring autonomous AI to Windows and NVIDIA GeForce RTX GPUs. You will be a hands-on individual contributor responsible for making open-source AI agents (like NemoClaw and OpenClaw) run locally, safely, and efficiently on consumer PCs. By combining high-performance local inference (Nemotron models) with robust privacy routers and sandboxed execution, you will help build the foundation of the desktop AI operating system. This is a deeply technical, code-first role. You will spend your days profiling inference pipelines, squeezing latency and memory out of local models, and hardening agent runtimes.

Requirements

  • 12+ years of relevant professional software engineering experience, with a track record of shipping performance-critical systems.
  • BS, MS, or PhD in Computer Science, Computer Engineering, or a related technical field (or equivalent experience).
  • Hands-on experience with LLM inference pipelines (Ollama, llama.cpp, vLLM), GPU-accelerated computing (CUDA, TensorRT), and running local models on consumer-grade hardware.
  • Practical experience with modern agentic frameworks (e.g., OpenClaw, LangChain, AutoGPT) and a working understanding of how multi-agent systems plan, act, and use tools.
  • Strong understanding of Windows OS internals, process isolation, sandboxing technologies, and system-level security.
  • Proficiency in C++ (performance-critical systems and OS integration), Python (AI and orchestration logic), and TypeScript (agent plugins and tooling).
  • Ability to translate complex technical decisions into clear documentation and collaborate effectively across diverse engineering teams.

Nice To Haves

  • Demonstrated open-source contributions to AI agent platforms or inference/orchestration tools (especially OpenClaw or llama.cpp).
  • Deep knowledge of NVIDIA GeForce RTX architecture and its specific constraints and advantages for edge AI.
  • Experience building virtualization, containerization, or sandboxing tools natively for Windows.
  • Active technical community presence (blogs, talks, whitepapers) at the intersection of AI, security, and local compute.

Responsibilities

  • Optimize performance of local LLMs (Nemotron and others) on GeForce RTX hardware.
  • Profile and optimize inference across Ollama, llama.cpp, and vLLM, minimizing latency and memory footprint using TensorRT and CUDA.
  • Build and optimize agentic harnesses (NemoClaw, OpenClaw) to run natively and reliably on Windows.
  • Implement the orchestration logic that lets multi-agent systems plan, act, and use tools efficiently on constrained consumer hardware.
  • Implement policy-based privacy and security frameworks for autonomous agents, handling filesystem access, secure inference routing, and network egress within thorough sandboxed execution environments.
  • Work close to the metal, integrating agent and inference stacks with NVIDIA's driver and middleware layers to extract maximum performance from RTX GPUs.
  • Partner with internal AI research teams, driver teams, and the open-source OpenClaw community to ensure our consumer hardware is the best possible platform for local agents.
  • Write reliable, production-ready code, contribute to engineering best practices, and raise the technical bar through code review and design input.

Benefits

  • Competitive salaries
  • Generous benefits package
  • Equity
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