2024
DOI: 10.3390/a17070287
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Enhancing Program Synthesis with Large Language Models Using Many-Objective Grammar-Guided Genetic Programming

Ning Tao,
Anthony Ventresque,
Vivek Nallur
et al.

Abstract: The ability to automatically generate code, i.e., program synthesis, is one of the most important applications of artificial intelligence (AI). Currently, two AI techniques are leading the way: large language models (LLMs) and genetic programming (GP) methods—each with its strengths and weaknesses. While LLMs have shown success in program synthesis from a task description, they often struggle to generate the correct code due to ambiguity in task specifications, complex programming syntax, and lack of reliabili… Show more

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