Beyond Code Generation: An Observational Study of ChatGPT Usage in Software Engineering Practice
Artikel i vetenskaplig tidskrift, 2024

Large Language Models (LLMs) are frequently discussed in academia and the general public as support tools for virtually any use case that relies on the production of text, including software engineering. Currently, there is much debate, but little empirical evidence, regarding the practical usefulness of LLM-based tools such as ChatGPT for engineers in industry. We conduct an observational study of 24 professional software engineers who have been using ChatGPT over a period of one week in their jobs, and qualitatively analyse their dialogues with the chatbot as well as their overall experience (as captured by an exit survey). We find that rather than expecting ChatGPT to generate ready-to-use software artifacts (e.g., code), practitioners more often use ChatGPT to receive guidance on how to solve their tasks or learn about a topic in more abstract terms. We also propose a theoretical framework for how the (i) purpose of the interaction, (ii) internal factors (e.g., the user's personality), and (iii) external factors (e.g., company policy) together shape the experience (in terms of perceived usefulness and trust). We envision that our framework can be used by future research to further the academic discussion on LLM usage by software engineering practitioners, and to serve as a reference point for the design of future empirical LLM research in this domain.

Large Language Models (LLMs)

Software Development Bots

Chatbots

Författare

Ranim Khojah

Software Engineering 2

Mazen Mohamad

Software Engineering 2

Philipp Leitner

Software Engineering 2

Francisco Gomes

Software Engineering 1

Proceedings of the ACM on Software Engineering

2994-970X (ISSN) 2994-970X (eISSN)

Vol. 1 FSE 1819-1840 81

Ämneskategorier

Programvaruteknik

DOI

10.1145/3660788

Relaterade dataset

Package for An Observational Study of ChatGPT Usage in Software Engineering Practice [dataset]

DOI: 10.5281/zenodo.8383359 URI: https://zenodo.org/records/8383359

Mer information

Skapat

2024-12-17