Publication

Enabling dataspaces using foundation models: Technical, legal and ethical considerations and future trends

Timilsina, Mohan
Buosi, Samuele
Song, Ping
Yang, Yang
Haque, Rafiqul
Curry, Edward
Loading...
Thumbnail Image
Identifiers
https://hdl.handle.net/10379/18227
https://doi.org/10.13025/21123
Publication Date
2024-01-22
Type
conference paper
Downloads
Citation
Timilsina, Mohan, Buosi, Samuele, Song, Ping, Yang, Yang, Haque, Rafiqul, & Curry, Edward. (2023). Enabling dataspaces using foundation models: Technical, legal and ethical considerations and future trends. Paper presented at the IEEE International Conference on Big Data (BigData), Sorrento, Italy, 15-18 December. https://doi.org/10.1109/BigData59044.2023.10386933
Abstract
Foundation Models are pivotal in advancing arti ficial intelligence, driving notable progress across diverse areas. When merged with dataspace, these models enhance our capabil ity to develop algorithms that are powerful, predictive, and honor data sovereignty and quality. This paper highlights the potential benefits of a comprehensive repository of Foundation Models, contextualized within dataspace. Such an archive can streamline research, development, and education by offering a comparative analysis of various models and their applications. While serving as a consistent reference point for model assessment and fostering collaborative learning, the repository does face challenges like un biased evaluations, data privacy, and comprehensive information delivery. The paper also notes the importance of the repository being globally applicable, ethically constructed, and user-friendly. We delve into the nuances of integrating Foundation Models within dataspace, balancing the repository’s strengths against its limitations.
Funder
Publisher
IEEE
Publisher DOI
Rights
Attribution 4.0 International