QiMeng-MuPa: Mutual-Supervised Learning for Sequential-to-Parallel Code Translation
–Neural Information Processing Systems
The rise of GPU-based high-performance computing (HPC) has driven the widespread adoption of parallel programming models such as CUDA. Yet, the inherent complexity of parallel programming creates a demand for the automated sequential-to-parallel approaches. However, data scarcity poses a significant challenge for machine learning-based sequential-to-parallel code translation. Although recent back-translation methods show promise, they still fail to ensure functional equivalence in the translated code. In this paper, we propose QiMeng-MuPa, a novel Mutual-Supervised Learning framework for Sequential-to-Parallel code translation, to address the functional equivalence issue.
Neural Information Processing Systems
Jun-22-2026, 21:13:03 GMT
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- Asia (0.46)
- Europe (0.45)
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- Research Report
- Experimental Study (1.00)
- New Finding (0.93)
- Research Report
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