Skip to main content
Back to jobs

CUDA Kernel Engineer (Remote US)

External
pragmatike logoPragmatike · Cambridge, UK
Full-timeRemote2mo ago
FPGASass
Cover LetterConnect

Prepare for this interview

Elite

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


About the role

Pragmatike is hiring on behalf of a fast-growing AI startup recognized as a Top 10 GenAI company by GTM Capital , founded by MIT CSAIL researchers. We are searching for a CUDA Kernel Engineer who has hands-on experience developing and optimizing NVIDIA CUDA kernels from scratch . You will work on the GPU performance layer powering large-scale, high-throughput AI systems used by Fortune 500 customers. This role is ideal for someone who deeply understands NVIDIA GPU architecture, memory hierarchy, warp-level execution, and profiling workflows not someone coming from generic hardware, FPGA, or non-NVIDIA compute backgrounds. You will directly influence the GPU efficiency, throughput, and scalability of mission-critical AI systems. What Youll Do Design, implement, and optimize custom CUDA kernels for NVIDIA GPUs , with a focus on maximizing occupancy, memory throughput, and warp efficiency. Profile GPU workloads using tools such as N sight Compute, Nsight Systems, nvprof, and CUDA‐MEMCHECK . Analyze and eliminate performance bottlenecks including warp divergence, uncoalesced memory access, register pressure, and PCIe transfer overhead. Improve GPU memory pipelines (global, shared, L2, texture memory) and ensure proper memory coalescing. Collaborate closely with AI systems, model acceleration, and backend distributed systems teams. Contribute to GPU architecture decisions, kernel libraries, and internal performance-engineering best practices. What Were Looking For Proven track record building NVIDIA CUDA kernels from scratchnot just calling existing libraries. Strong ability to optimize kernels (tiling strategies, occupancy tuning, shared memory design, warp scheduling). Deep understanding of CUDA threads, warps, blocks, and grids, GPU memory hierarchy and memory coalescing, as well as warp divergence (how to detect, analyze, and mitigate it) Experience diagnosing PCIe bottlenecks and optimizing host-device transfers (pinned memory, streams, batching, overlap). Familiarity with C++, CUDA runtime APIs, and GPU debugging/profiling tooling. Bonus Points Experience with multi-GPU or distributed GPU systems (NCCL, NVLink, MIG). Background in GPU acceleration for ML frameworks or HPC workloads. Knowledge of model inference optimization (TensorRT, CUDA Graphs, CUTLASS). Exposure to compiler-level optimization or PTX/SASS analysis. Startup experience or comfort working in fast-moving, ambiguous environments. Why This Role Will Pivot Your Career Research pedigree: MIT CSAIL founders recognized for breakthrough AI and systems contributions. Customer impact: Deploy AI solutions powering Fortune 500 clients . Industry momentum: Lab alumni have led high-value acquisitions (MosaicML Databricks, Run:AI Nvidia, W&B CoreWeave). Funding & growth: Oversubscribed seed round, next funding in 2026. Career growth & influence: Lead AI initiatives, optimize pipelines, and directly impact production AI systems at scale . Culture & autonomy: Own critical systems while collaborating with world-class engineers. Aspirational impact: Solve GPU/AI performance challenges few engineers ever face.

Benefits

Competitive salary & equity optionsSign-on bonusHealth, Dental, and Vision401kHealth insuranceDental insuranceVision insurance401(k)Remote work optionsEquity / stock optionsPerformance bonus

Additional Information

Location: Remote US Start date: ASAP Languages: English (required)


Your Match

How well this role fits your profile.

Company Intel

What employees say

Worked at pragmatike? Share your experience

Interested in this role?

Apply on the company's website.

Cover LetterConnect