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Kernel Engineer (Internship and Full-time)

External
Tilde Research logoTilde Research · San Francisco
Full-timeOn-site11mo ago
Deep LearningPyTorch
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About the role

As a Kernel Engineer at Tilde, you'll design, implement, and optimize high-performance GPU kernels that are critical to scaling our training and inference workloads. Your work will enable faster iteration cycles, higher throughput, and lower latency. You'll work closely with ML researchers and engineers to co-design models and infrastructure that are deeply performance-aware, and help push the limits of what current hardware can support. What you might work on: Design, develop, and tune custom GPU kernels for core model operations Work with ML engineers to prototype and scale novel model architectures Contribute to system-wide efforts to improve efficiency and throughput, beyond just kernel-level optimizations You're a good fit if you: Have experience in deep learning or related research areas Have demonstrated exceptional capability in working on ML kernels. This can include: Strong open source contributions Thoughtful technical blog posts/work logs Previous experience working on hardware-aligned algorithms Deep familiarity with PyTorch, Triton/TK/TileLang (>1 of), basic familiarity with CUDA, and knowledge of GPU architecture. Communicate clearly and effectively, both verbally and in writing Strong algorithmic thinker Are able to learn quickly

Additional Information

Tilde Research is a moonshot AI lab advancing mechanistic interpretability, new architectures, and pretraining science. We build foundational understanding of models to advance the frontier of intelligence.


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