Founding GPU Kernel Engineer at SF Tensor (F25)
$285K - $315K • 1.25% - 2.00%
Infrastructure for AI labs to focus on research.
San Francisco
Full-time
Will sponsor
Any (new grads ok)
About SF Tensor
About the role
Skills: GPU Programming, CUDA
About SF Tensor
At The San Francisco Tensor Company, we believe the future of AI and high-performance computing depends on rethinking the entire software and infrastructure stack. Today's developers face bottlenecks across hardware, cloud, and code optimization that slow progress before ideas can reach their full potential. Our mission is to remove those barriers and make compute faster, cheaper, and universally portable.
We are building a Kernel Optimizer that automatically transforms code into its most efficient form, combined with Tensor Cloud for adaptive, cross-cloud compute and Emma Lang, a new programming language for high-performance, hardware-aware computation. Together, these technologies reinvent the foundations of AI and HPC.
SF Tensor is proudly backed by Susa Ventures and Y Combinator, as well as a group of angels including Max Mullen and Paul Graham as well as founders and executives of NeuraLink, Notion and AMD. We are partnering with researchers, engineers, and organizations who share our belief that the next breakthroughs in AI require breakthroughs in compute.
About the Role
We're looking for a Founding GPU Kernel Engineer who lives right at the boundary between hardware and software. Someone who thinks in warps, occupancy, and memory hierarchies, and can squeeze every last FLOP out of a GPU.
Your job is to go deeper than anyone else. You'll hand-tune kernels to figure out what's actually possible on the hardware, and then turn that knowledge into compiler optimization passes that help every model we compile.
What You'll Do
Write and hand-optimize GPU kernels for ML workloads (matmuls, attention, normalization, etc.) to set the performance ceilings
Profile at the microarchitectural level: look into SM utilization, warp stalls, memory bank conflicts, register pressure, instruction throughput
Debug performance issues by digging deep into things like clock speeds, thermal throttling, driver behavior, hardware errata
Turn your hand-optimization insights into automated compiler passes (working closely with our compiler team)
Develop performance models that predict how kernels will behave across different GPU architectures
Build tools and methods for systematic kernel optimization
Work with NVIDIA, AMD, and emerging AI accelerators - understand the common parts and what's vendor-specific
What We're Looking For
Deep expertise in GPU architecture
Proven track record of hand-writing kernels that match or beat vendor libraries (cuBLAS, cuDNN, CUTLASS)
Strong skills with low-level profiling tools: Nsight Compute, Nsight Systems, rocprof, or equivalents
Experience reading and reasoning about PTX/SASS or GPU assembly
Solid systems programming in C++ and CUDA (or ROCm/HIP)
Good understanding of how high-level ML operations map to hardware execution
Experience with distributed training systems: collective ops like all-reduce and all-gather, NCCL/RCCL, multi-node communication patterns
Nice to Have
HPC background: experience with large-scale scientific computing, MPI, or work in supercomputing
Background in electrical engineering, computer architecture, or hardware design
Driver development experience (NVIDIA, AMD, or other accelerators)
Experience with MLIR, LLVM, or compiler backends
Deep knowledge of distributed ML training: gradient accumulation, activation checkpointing, pipeline/tensor parallelism, ZeRO-style optimizations
Familiarity with custom accelerators: TPUs, Trainium, Inferentia, or similar
Knowledge of high-speed interconnects: NVLink, NVSwitch, InfiniBand, RoCE
Publications or contributions in GPU optimization, HPC, or ML systems
Experience at NVIDIA, AMD, a national lab, or an AI hardware/infrastructure company
Why Join Us
This role is for someone who wants to know why things are fast or slow on the hardware. You'll have a direct impact on the performance of large-scale AI training, tackling problems that need real depth. If you've ever been annoyed that your hard-won optimization knowledge is stuck in your head and not baked into a compiler, here's your shot to change that.
We believe in the power of in-person collaboration to solve the hardest problems and foster a strong team culture. We offer relocation assistance and look forward to you joining us in our San Francisco office.
The base salary range for this full-time position is $285,000 - $315,000 + bonus + equity + benefits.