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    Harnessing large language models for coding, teaching and inclusion to empower research in ecology and evolution

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    Authors
    Cooper, Natalie
    Clark, Adam T
    Lecomte, Nicolas
    Qiao, Huijie
    Ellison, Aaron M
    Issue date
    2024-02-26
    Submitted date
    2024-03-11
    
    Metadata
    Show full item record
    Abstract
    Abstract - 1.) Large language models (LLMs) are a type of artificial intelligence (AI) that can perform various natural language processing tasks. The adoption of LLMs has become increasingly prominent in scientific writing and analyses because of the availability of free applications such as ChatGPT. This increased use of LLMs not only raises concerns about academic integrity but also presents opportunities for the research community. Here we focus on the opportunities for using LLMs for coding in ecology and evolution. We discuss how LLMs can be used to generate, explain, comment, translate, debug, optimise and test code. We also highlight the importance of writing effective prompts and carefully evaluating the outputs of LLMs. In addition, we draft a possible road map for using such models inclusively and with integrity. 2.) LLMs can accelerate the coding process, especially for unfamiliar tasks, and free up time for higher level tasks and creative thinking while increasing efficiency and creative output. LLMs also enhance inclusion by accommodating individuals without coding skills, with limited access to education in coding, or for whom English is not their primary written or spoken language. However, code generated by LLMs is of variable quality and has issues related to mathematics, logic, non‐reproducibility and intellectual property; it can also include mistakes and approximations, especially in novel methods. 3.) We highlight the benefits of using LLMs to teach and learn coding, and advocate for guiding students in the appropriate use of AI tools for coding. Despite the ability to assign many coding tasks to LLMs, we also reaffirm the continued importance of teaching coding skills for interpreting LLM‐generated code and to develop critical thinking skills. 4.) As editors of MEE, we support—to a limited extent—the transparent, accountable and acknowledged use of LLMs and other AI tools in publications. If LLMs or comparable AI tools (excluding commonly used aids like spell‐checkers, Grammarly and Writefull) are used to produce the work described in a manuscript, there must be a clear statement to that effect in its Methods section, and the corresponding or senior author must take responsibility for any code (or text) generated by the AI platform.
    Citation
    Cooper, N., Clark, A. T., Lecomte, N., Qiao, H., & Ellison, A. M. (2024). Harnessing large language models for coding, teaching and inclusion to empower research in ecology and evolution. Methods in Ecology and Evolution, 15, 1757–1763. https://doi.org/10.1111/2041-210X.14325
    Publisher
    Wiley
    Journal
    Methods in Ecology and Evolution
    URI
    http://hdl.handle.net/10141/623163
    DOI
    10.1111/2041-210x.14325
    Type
    Journal Article
    Item Description
    Copyright © 2024 The Authors. Methods in Ecology and Evolution published by John Wiley & Sons Ltd on behalf of British Ecological Society. The linked file is the published version of the article.
    NHM Repository
    ISSN
    2041-210X
    EISSN
    2041-210X
    ae974a485f413a2113503eed53cd6c53
    10.1111/2041-210x.14325
    Scopus Count
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    Life sciences

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