Renaissance of Literate Programming in the Era of LLMs: Enhancing LLM-Based Code Generation in Large-Scale Projects
- URL: http://arxiv.org/abs/2502.17441v1
- Date: Wed, 25 Dec 2024 12:02:46 GMT
- Title: Renaissance of Literate Programming in the Era of LLMs: Enhancing LLM-Based Code Generation in Large-Scale Projects
- Authors: Wuyang Zhang, Yansong Li, Zeyu Dong, Yu Wu, Yingyao Zhou, Duolei Wang, Songsirou Xing, Chichun Zhou, Da Shen,
- Abstract summary: Large Language Models (LLMs) have helped programmers increase efficiency through code generation, comprehension, and repair.<n>Their application to large-scale projects remains challenging due to complex interdependencies and the extensive size of moderns.<n>In this study, we introduce the idea of Interoperable LP (ILP), which leverages literate programming principles to enhance the development of both small-scale documents and large-scale projects with LLMs.
- Score: 7.927743991760644
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Large Language Models (LLMs) have helped programmers increase efficiency through code generation, comprehension, and repair. However, their application to large-scale projects remains challenging due to complex interdependencies and the extensive size of modern codebases. Although Knuth's concept of Literate Programming (LP) combines code and natural language to convey logic and intent, its potential for enhancing relationships in large projects has not been fully explored. In this study, we introduce the idea of Interoperable LP (ILP), which leverages literate programming principles to enhance the development of both small-scale documents and large-scale projects with LLMs. We investigate how LLMs perform under ILP-style instructions for both document-oriented tasks and entire projects. Recognizing that many researchers rely on well-structured templates to guide LLMs, we propose a concise prompt engineering method to write LP documents so LLMs can better be involved in code generation. We also examine the capacity of various LLMs to generate Scheme and Python code on the RepoBench benchmark, illustrating the advantages of our approach. Our findings indicate that ILP with LLMs can enhance LLM-based code generation in large-scale project development.
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