4.6 Review

Physics-AI symbiosis

Journal

Publisher

IOP Publishing Ltd
DOI: 10.1088/2632-2153/ac9215

Keywords

physics-ML; machine learning; artificial intelligence

Funding

  1. Office of Naval Research (ONR) Multi-disciplinary University Research Initiatives (MURI) program on Optical Computing Award [N00014-14-1-0505]
  2. Army Young Investigator Award
  3. NSF [CMMI-2053971]
  4. ARL under the cooperative A2I2 program [W911NF-20-2-0158]

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Physics has been successful in explaining nature using low-dimensional deterministic models, while artificial intelligence (AI) has achieved astonishing performance in domains like image classification and speech recognition through data-driven computational frameworks. However, AI's inconsistent predictions and computational complexity conflict with Moore's Law. This paper discusses how a symbiosis of physics and AI can overcome these challenges.
The phenomenal success of physics in explaining nature and engineering machines is predicated on low dimensional deterministic models that accurately describe a wide range of natural phenomena. Physics provides computational rules that govern physical systems and the interactions of the constituents therein. Led by deep neural networks, artificial intelligence (AI) has introduced an alternate data-driven computational framework, with astonishing performance in domains that do not lend themselves to deterministic models such as image classification and speech recognition. These gains, however, come at the expense of predictions that are inconsistent with the physical world as well as computational complexity, with the latter placing AI on a collision course with the expected end of the semiconductor scaling known as Moore's Law. This paper argues how an emerging symbiosis of physics and AI can overcome such formidable challenges, thereby not only extending AI's spectacular rise but also transforming the direction of engineering and physical science.

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