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Writing unit tests is a crucial task in software development, but it is also recognized as a time-consuming and tedious task. As such, numerous test generation approaches have been proposed and investigated. However, most of these test generation tools produce tests that are typically difficult to understand. Recently, Large Language Models (LLMs) have shown promising results in generating source code and supporting software engineering tasks. As such, we investigate the usability of tests generated by GitHub Copilot, a proprietary closed-source code generation tool that uses an LLM. We evaluate GitHub Copilot's test generation abilities both within and without an existing test suite, and we study the impact of different code commenting strategies on test generations.
Haji et al. (Mon,) studied this question.
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