Scalable Artificial Intelligence for Science: Perspectives, Methods and Exemplars
- URL: http://arxiv.org/abs/2406.17812v1
- Date: Mon, 24 Jun 2024 20:29:29 GMT
- Title: Scalable Artificial Intelligence for Science: Perspectives, Methods and Exemplars
- Authors: Wesley Brewer, Aditya Kashi, Sajal Dash, Aristeidis Tsaris, Junqi Yin, Mallikarjun Shankar, Feiyi Wang,
- Abstract summary: We propose that scaling up artificial intelligence on high-performance computing platforms is essential to address complex problems.
This perspective focuses on scientific use cases like cognitive simulations, large language models for scientific inquiry, medical image analysis, and physics-informed approaches.
- Score: 0.15705429611931054
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In a post-ChatGPT world, this paper explores the potential of leveraging scalable artificial intelligence for scientific discovery. We propose that scaling up artificial intelligence on high-performance computing platforms is essential to address such complex problems. This perspective focuses on scientific use cases like cognitive simulations, large language models for scientific inquiry, medical image analysis, and physics-informed approaches. The study outlines the methodologies needed to address such challenges at scale on supercomputers or the cloud and provides exemplars of such approaches applied to solve a variety of scientific problems.
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