LLM Engineer, Agentic Researcher Platform

NVIDIA NVIDIA · Semiconductors · Ho Chi Minh City, Vietnam +1

NVIDIA is seeking a Machine Learning Engineer to build the core of an autonomous, agentic platform that optimizes machine-learning models end-to-end, including architecture, hyperparameters, and CUDA/Triton code. The role involves leveraging AI-native and agentic workflows, establishing benchmarking frameworks, and considering reproducibility, AI safety, and compute-cost governance. Experience with LLM-agent systems and production ML pipelines is required.

What you'd actually do

  1. Develop and advance a self-governing, agentic platform that optimizes AI models end-to-end — architecture, hyperparameters, and the GPU code they compile to.
  2. Leverage AI-native and agentic workflows to accelerate research, experimentation, evaluation, and deployment of AI systems.
  3. Establish and drive benchmarking frameworks that measure accuracy, latency, memory footprint, throughput, and cost — including head-to-head comparisons that prove the agent beats existing automated search.
  4. Design and deploy with strong consideration for reproducibility, AI safety, sandboxing, and compute-cost governance.
  5. Lead technical initiatives, mentor engineers, and foster a One Team culture through close collaboration across research, engineering, and product teams.

Skills

Required

  • Python
  • PyTorch
  • TensorFlow
  • automated experimentation
  • hyperparameter optimization
  • AutoML
  • NAS
  • LLM-agent systems
  • reasoning
  • tool use
  • multi-step orchestration
  • production ML pipelines
  • MLOps infrastructure
  • technical leadership
  • mentoring

Nice to have

  • NVIDIA AI technologies
  • NeMo
  • TAO
  • Triton
  • CUDA
  • NIM
  • Nemotron
  • agentic AI systems
  • code generation
  • evolutionary and quality-diversity search
  • MAP-Elites
  • Bayesian optimization
  • multi-fidelity methods
  • Hyperband
  • ASHA
  • GPU performance work
  • torch.compile
  • operator fusion
  • quantization
  • AI-RAN
  • benchmarking AI systems
  • publications
  • reproductions

What the JD emphasized

  • 3+ years of experience building and deploying ML, LLM, or model-optimization systems
  • Experience building LLM-agent systems (reasoning, tool use, multi-step orchestration) and/or production ML pipelines and MLOps infrastructure
  • Proven technical leadership and mentoring experience

Other signals

  • building an autonomous, agentic platform that optimizes machine-learning models end-to-end
  • develop and advance a self-governing, agentic platform that optimizes AI models end-to-end
  • leverage AI-native and agentic workflows to accelerate research, experimentation, evaluation, and deployment of AI systems
  • establish and drive benchmarking frameworks that measure accuracy, latency, memory footprint, throughput, and cost
  • experience building LLM-agent systems (reasoning, tool use, multi-step orchestration) and/or production ML pipelines and MLOps infrastructure