Towards Objective-Tailored Genetic Improvement Through Large Language Models

Sungmin Kang, S. Yoo
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引用次数: 3

Abstract

While Genetic Improvement (GI) is a useful paradigm to improve functional and nonfunctional aspects of software, existing techniques tended to use the same set of mutation operators for differing objectives, due to the difficulty of writing custom mutation operators. In this work, we suggest that Large Language Models (LLMs) can be used to generate objective-tailored mutants, expanding the possibilities of software optimizations that GI can perform. We further argue that LLMs and the GI process can benefit from the strengths of one another, and present a simple example demonstrating that LLMs can both improve the effectiveness of the GI optimization process, while also benefiting from the evaluation steps of GI. As a result, we believe that the combination of LLMs and GI has the capability to significantly aid developers in optimizing their software.
通过大型语言模型实现目标定制的遗传改进
虽然遗传改进(GI)是一个有用的范例,用于改进软件的功能和非功能方面,但由于编写自定义突变操作符的困难,现有技术倾向于为不同的目标使用相同的一组突变操作符。在这项工作中,我们建议使用大型语言模型(llm)来生成目标定制的突变体,扩展GI可以执行的软件优化的可能性。我们进一步论证了llm和GI过程可以从彼此的优势中受益,并给出了一个简单的例子,证明llm既可以提高GI优化过程的有效性,也可以从GI的评估步骤中受益。因此,我们相信llm和GI的结合能够极大地帮助开发人员优化他们的软件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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