Leveraging Foundation Models for Scientific Research Productivity

Authors

  • Ross Gruetzemacher

DOI:

https://doi.org/10.34257/GJCSTDVOL23IS3PG31

Keywords:

Abstract

he objective of this work was to elucidate paths for expediting and enhancing scientific research productivity from the emerging AI paradigm of foundation models e g ChatGPT Faster scientific progress can benefit mankind by speeding up progress toward solutions to shared human problems like cancer aging climate change or water scarcity Challenges to foundation model adoption in science threaten to slow progress in such research areas This study attempted to survey decision support systems and expert system literature to provide insights regarding these challenges We first reviewed extant literature on these topics to try to identify adoption patterns that would be useful for this purpose However this attempt using a bibliometric approach and a very high level traditional literature review was unsuccessful due to the overly broad scope of the study We then surveyed the existing scientific software domain finding there to be a huge breadth in what constitutes scientific software However we do glean some lessons from previous patterns of adoption of scientific software by simply looking at historical examples e g the electronic spreadsheet

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How to Cite

Ross Gruetzemacher. (2023). Leveraging Foundation Models for Scientific Research Productivity. Global Journal of Computer Science and Technology, 23(D3), 31–46. https://doi.org/10.34257/GJCSTDVOL23IS3PG31

Leveraging Foundation Models for Scientific Research Productivity

Published

2023-12-08