LEGO-Compiler: Enhancing Neural Compilation Through Translation Composability
LEGO-Compiler: Enhancing Neural Compilation Through Translation Composability
Large language models (LLMs) have the potential to revolutionize how we design and implement compilers and code translation tools. However, existing LLMs struggle to handle long and complex programs. We introduce LEGO-Compiler, a novel neural compilation system that leverages LLMs to translate high-level languages into assembly code. Our approach centers on three key innovations: LEGO translation, which decomposes the input program into manageable blocks; breaking down the complex compilation process into smaller, simpler verifiable steps by organizing it as a verifiable LLM workflow by external tests; and a feedback mechanism for self-correction. Supported by formal proofs of translation composability, LEGO-Compiler demonstrates high accuracy on multiple datasets, including over 99% on ExeBench and 97.9% on industrial-grade AnsiBench. Additionally, LEGO-Compiler has also acheived near one order-of-magnitude improvement on compilable code size scalability. This work opens new avenues for applying LLMs to system-level tasks, complementing traditional compiler technologies.
Shuoming Zhang、Jiacheng Zhao、Chunwei Xia、Zheng Wang、Yunji Chen、Xiaobing Feng、Huimin Cui
计算技术、计算机技术
Shuoming Zhang,Jiacheng Zhao,Chunwei Xia,Zheng Wang,Yunji Chen,Xiaobing Feng,Huimin Cui.LEGO-Compiler: Enhancing Neural Compilation Through Translation Composability[EB/OL].(2025-05-26)[2025-06-17].https://arxiv.org/abs/2505.20356.点此复制
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