Unit Test Generation using Generative AI : A Comparative Performance Analysis of Autogeneration Tools
December 17, 2023 Β· Declared Dead Β· π 2024 IEEE/ACM International Workshop on Large Language Models for Code (LLM4Code)
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Authors
Shreya Bhatia, Tarushi Gandhi, Dhruv Kumar, Pankaj Jalote
arXiv ID
2312.10622
Category
cs.SE: Software Engineering
Cross-listed
cs.AI
Citations
55
Venue
2024 IEEE/ACM International Workshop on Large Language Models for Code (LLM4Code)
Last Checked
3 months ago
Abstract
Generating unit tests is a crucial task in software development, demanding substantial time and effort from programmers. The advent of Large Language Models (LLMs) introduces a novel avenue for unit test script generation. This research aims to experimentally investigate the effectiveness of LLMs, specifically exemplified by ChatGPT, for generating unit test scripts for Python programs, and how the generated test cases compare with those generated by an existing unit test generator (Pynguin). For experiments, we consider three types of code units: 1) Procedural scripts, 2) Function-based modular code, and 3) Class-based code. The generated test cases are evaluated based on criteria such as coverage, correctness, and readability. Our results show that ChatGPT's performance is comparable with Pynguin in terms of coverage, though for some cases its performance is superior to Pynguin. We also find that about a third of assertions generated by ChatGPT for some categories were incorrect. Our results also show that there is minimal overlap in missed statements between ChatGPT and Pynguin, thus, suggesting that a combination of both tools may enhance unit test generation performance. Finally, in our experiments, prompt engineering improved ChatGPT's performance, achieving a much higher coverage.
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