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Author (up) Escapil-Inchauspe, P.; Ruz, G.A. doi  openurl
  Title h-Analysis and data-parallel physics-informed neural networks Type
  Year 2023 Publication Scientific Reports Abbreviated Journal Sci. Rep.  
  Volume 13 Issue 1 Pages 17562  
  Keywords DEEP LEARNING FRAMEWORK; XPINNS  
  Abstract We explore the data-parallel acceleration of physics-informed machine learning (PIML) schemes, with a focus on physics-informed neural networks (PINNs) for multiple graphics processing units (GPUs) architectures. In order to develop scale-robust and high-throughput PIML models for sophisticated applications which may require a large number of training points (e.g., involving complex and high-dimensional domains, non-linear operators or multi-physics), we detail a novel protocol based on h-analysis and data-parallel acceleration through the Horovod training framework. The protocol is backed by new convergence bounds for the generalization error and the train-test gap. We show that the acceleration is straightforward to implement, does not compromise training, and proves to be highly efficient and controllable, paving the way towards generic scale-robust PIML. Extensive numerical experiments with increasing complexity illustrate its robustness and consistency, offering a wide range of possibilities for real-world simulations.  
  Address  
  Corporate Author Thesis  
  Publisher Place of Publication Editor Data Observatory  
  Language Summary Language Original Title  
  Series Editor Series Title Abbreviated Series Title  
  Series Volume Series Issue Edition  
  ISSN 2045-2322 ISBN Medium  
  Area Expedition Conference  
  Notes WOS:001125353500002 Approved  
  Call Number UAI @ alexi.delcanto @ Serial 1935  
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