Adriana Alvarado Garcia, Marisol Wong-Villacres, et al.
CHI 2023
Data is one of the foundational aspects of making Artificial Intelligence (AI) work as intended. As large language models (LLMs) become the epicenter of AI, it is crucial to understand better how the datasets that maintain such models are created. The emergent nature of LLMs makes it critical to understand the challenges practitioners developing Gen AI technologies face to design alternatives for better responding to Gen AI's ethical issues. In this paper, we provide such understanding by reporting on 25 interviews with practitioners who handle data in three distinct development stages of different LLMs. Our contributions are (1) empirical evidence of how uncertainty, data practices, and reliance mechanisms change across LLMs' development cycle; (2) how the unique qualities of LLMs impact data practices and their implications for the future of Gen AI technologies; and (3) provide three opportunities for HCI researchers interested in supporting practitioners developing Gen AI technologies.
Adriana Alvarado Garcia, Marisol Wong-Villacres, et al.
CHI 2023
Michael Muller, Katie Seaborn
Aarhus Conference 2025
Heloisa Candello, Cosmin Munteanu, et al.
CHI EA 2020
Claudio Santos Pinhanez
NAACL 2024