A Case Study on Test Case Construction with Large Language Models: Unveiling Practical Insights and Challenges
December 19, 2023 Β· Declared Dead Β· π Conferencia Iberoamericana de Software Engineering
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Authors
Roberto Francisco de Lima Junior, Luiz Fernando Paes de Barros Presta, Lucca Santos Borborema, Vanderson Nogueira da Silva, Marcio Leal de Melo Dahia, Anderson Carlos Sousa e Santos
arXiv ID
2312.12598
Category
cs.SE: Software Engineering
Cross-listed
cs.AI
Citations
4
Venue
Conferencia Iberoamericana de Software Engineering
Last Checked
4 months ago
Abstract
This paper presents a detailed case study examining the application of Large Language Models (LLMs) in the construction of test cases within the context of software engineering. LLMs, characterized by their advanced natural language processing capabilities, are increasingly garnering attention as tools to automate and enhance various aspects of the software development life cycle. Leveraging a case study methodology, we systematically explore the integration of LLMs in the test case construction process, aiming to shed light on their practical efficacy, challenges encountered, and implications for software quality assurance. The study encompasses the selection of a representative software application, the formulation of test case construction methodologies employing LLMs, and the subsequent evaluation of outcomes. Through a blend of qualitative and quantitative analyses, this study assesses the impact of LLMs on test case comprehensiveness, accuracy, and efficiency. Additionally, delves into challenges such as model interpretability and adaptation to diverse software contexts. The findings from this case study contributes with nuanced insights into the practical utility of LLMs in the domain of test case construction, elucidating their potential benefits and limitations. By addressing real-world scenarios and complexities, this research aims to inform software practitioners and researchers alike about the tangible implications of incorporating LLMs into the software testing landscape, fostering a more comprehensive understanding of their role in optimizing the software development process.
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