Kevin: Multi-Turn RL for Generating CUDA Kernels
Baronio, Carlo, Marsella, Pietro, Pan, Ben, Guo, Simon, Alberti, Silas
–arXiv.org Artificial Intelligence
Writing GPU kernels is a challenging task and critical for AI systems' efficiency. It is also highly iterative: domain experts write code and improve performance through execution feedback. Moreover, it presents verifiable rewards like correctness and speedup, making it a natural environment to apply Reinforcement Learning (RL). To explicitly incorporate the iterative nature of this process into training, we develop a flexible multi-turn RL recipe that addresses unique challenges encountered in real-world settings, such as learning from long trajectories and effective reward attribution across turns. We present Kevin - K(ernel D)evin, the first model trained with multi-turn RL for CUDA kernel generation and optimization. In our evaluation setup, Kevin shows significant gains over its base model (QwQ-32B), improving correctness of generated kernels (in pure CUDA) from 56% to 82% and mean speedup from 0.53x to 1.10x of baseline (PyTorch Eager), and surpassing frontier models like o4-mini (0.78x). Finally, we study its behavior across test-time scaling axes: we found scaling serial refinement more beneficial than parallel sampling. In particular, when given more refinement turns, Kevin shows a higher rate of improvement.
arXiv.org Artificial Intelligence
Jul-17-2025
- Country:
- Asia > Middle East
- Iraq > Basra Governorate
- Basra (0.04)
- Jordan (0.04)
- Iraq > Basra Governorate
- North America > United States
- California > Santa Clara County > Palo Alto (0.04)
- Asia > Middle East
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- Research Report (0.40)
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