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M2rc-Eval: Massively Multilingual Repository-level Code Completion Evaluation

28 October 2024
J. Liu
Ken Deng
Congnan Liu
Jian Yang
Shukai Liu
He Zhu
Peng Zhao
Linzheng Chai
Yanan Wu
Ke Jin
Ge Zhang
Zekun Wang
Guoan Zhang
Bangyu Xiang
Wenbo Su
Bo Zheng
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Abstract

Repository-level code completion has drawn great attention in software engineering, and several benchmark datasets have been introduced. However, existing repository-level code completion benchmarks usually focus on a limited number of languages (<5), which cannot evaluate the general code intelligence abilities across different languages for existing code Large Language Models (LLMs). Besides, the existing benchmarks usually report overall average scores of different languages, where the fine-grained abilities in different completion scenarios are ignored. Therefore, to facilitate the research of code LLMs in multilingual scenarios, we propose a massively multilingual repository-level code completion benchmark covering 18 programming languages (called M2RC-EVAL), and two types of fine-grained annotations (i.e., bucket-level and semantic-level) on different completion scenarios are provided, where we obtain these annotations based on the parsed abstract syntax tree. Moreover, we also curate a massively multilingual instruction corpora M2RC- INSTRUCT dataset to improve the repository-level code completion abilities of existing code LLMs. Comprehensive experimental results demonstrate the effectiveness of our M2RC-EVAL and M2RC-INSTRUCT.

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