Logo
Voltai

Research Engineer - CUDA Kernel Engineering

Voltai, Palo Alto

Save Job

About Voltai

Voltai is developing world models, and embodied agents to learn, evaluate, plan, experiment, and interact with the physical world. We are starting out with understanding and building hardware; electronics systems and semiconductors where AI can design and create beyond human cognitive limits.

About the Team

Backed by Silicon Valley’s top investors, Stanford University, and CEOs/Presidents of Google, AMD, Broadcom, Marvell, etc. We are a team of previous Stanford professors, SAIL researchers, Olympiad medalists (IPhO, IOI, etc.), CTOs of Synopsys & GlobalFoundries, Head of Sales & CRO of Cadence, former US Secretary of Defense, National Security Advisor, and Senior Foreign‑Policy Advisor to four US presidents.

About the role

You will develop, integrate, and optimize state‑of‑the‑art CUDA kernels to power AI models that accelerate semiconductor design and verification. Your work will enable large‑scale model training, inference, and reinforcement learning systems that reason about circuit layouts, generate and validate RTL, and optimize chip architectures — running efficiently across thousands of GPUs. You’ll build tools, performance benchmarks, and integration layers that push the limits of GPU utilization for compute‑intensive workloads in AI‑driven hardware design. Working closely with researchers and engineers, you’ll help make Voltai the world’s leading AI + semiconductor research organization. You’ll also release your kernels and tooling as contributions to the open‑source AI and HPC ecosystems .

Responsibilities

  • Writing and optimizing CUDA kernels for large‑scale AI workloads (attention, routing, graph‑based operations, physics‑inspired operators, etc.)
  • Profiling and optimizing GPU performance for custom compute or memory‑bound workloads
  • Integrating custom kernels into cutting‑edge training and inference frameworks (e.g., PyTorch, Megatron, vLLM, TorchTitan)
  • Working with the latest NVIDIA hardware and software stacks (Hopper, Blackwell, NVLink, NCCL, Triton)
  • Building GPU‑accelerated primitives for graph reasoning, symbolic computation, or hardware simulation tasks
  • Collaborating with AI researchers and semiconductor experts to translate domain‑specific workloads into high‑performance GPU code

Qualifications

  • Experience with CUDA kernel development and optimization for AI workloads
  • Strong understanding of GPU architecture and performance analysis
  • Familiarity with deep learning frameworks and GPU ecosystems
  • Knowledge of NVIDIA hardware stacks and software libraries
  • Ability to translate complex algorithms into efficient GPU code
  • Experience in collaborating with cross‑disciplinary teams (researchers, engineers)

Seniority Level

Entry level

Employment Type

Full‑time

Job Function

Engineering and Information Technology

Industries

Technology, Information and Internet

Location: Palo Alto, CA

Salary: $160,000.00 – $180,000.00

#J-18808-Ljbffr