Journal
AICHE JOURNAL
Volume 67, Issue 3, Pages -Publisher
WILEY
DOI: 10.1002/aic.17026
Keywords
high-performance computing; machine learning; multiphysics modeling; multiscale modeling
Categories
Funding
- National Institutes of Health [CA227550]
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Research problems in physical, engineering, and biological sciences often require multiscale modeling and high-performance computing. The paradigm shift in MSM implementations, fueled by advances in HPC and the integration of machine learning, promises significant enhancements in problem-solving capabilities. The potential for blending MSM, HPC, and ML presents opportunities for unbound innovation and defines the future of these fields in the 21st century.
Research problems in the domains of physical, engineering, biological sciences often span multiple time and length scales, owing to the complexity of information transfer underlying mechanisms. Multiscale modeling (MSM) and high-performance computing (HPC) have emerged as indispensable tools for tackling such complex problems. We review the foundations, historical developments, and current paradigms in MSM. A paradigm shift in MSM implementations is being fueled by the rapid advances and emerging paradigms in HPC at the dawn of exascale computing. Moreover, amidst the explosion of data science, engineering, and medicine, machine learning (ML) integrated with MSM is poised to enhance the capabilities of standard MSM approaches significantly, particularly in the face of increasing problem complexity. The potential to blend MSM, HPC, and ML presents opportunities for unbound innovation and promises to represent the future of MSM and explainable ML that will likely define the fields in the 21st century.
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