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A Static Evaluation of Code Completion by Large Language Models

Authors :
Ding, Hantian
Kumar, Varun
Tian, Yuchen
Wang, Zijian
Kwiatkowski, Rob
Li, Xiaopeng
Ramanathan, Murali Krishna
Ray, Baishakhi
Bhatia, Parminder
Sengupta, Sudipta
Roth, Dan
Xiang, Bing
Publication Year :
2023

Abstract

Large language models trained on code have shown great potential to increase productivity of software developers. Several execution-based benchmarks have been proposed to evaluate functional correctness of model-generated code on simple programming problems. Nevertheless, it is expensive to perform the same evaluation on complex real-world projects considering the execution cost. On the contrary, static analysis tools such as linters, which can detect errors without running the program, haven't been well explored for evaluating code generation models. In this work, we propose a static evaluation framework to quantify static errors in Python code completions, by leveraging Abstract Syntax Trees. Compared with execution-based evaluation, our method is not only more efficient, but also applicable to code in the wild. For experiments, we collect code context from open source repos to generate one million function bodies using public models. Our static analysis reveals that Undefined Name and Unused Variable are the most common errors among others made by language models. Through extensive studies, we also show the impact of sampling temperature, model size, and context on static errors in code completions.<br />Comment: Accepted by ACL 2023 industry track

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.03203
Document Type :
Working Paper