Scientific Machine Learning Using HPC Servers on the Cloud
TimeMonday, 15 November 20218am - 5pm CST
DescriptionA comprehensive overview of building and deploying neural forward and inverse PDE solvers will be presented. We will discuss Physics-Informed Neural Networks (PINNs), which are usually dense networks producing point-wise solutions of PDEs, as well as CNN-based networks for producing full-field solutions of parametric PDEs, along with GAN-based networks that solve both forward and inverse ODEs. We will work through several cloud scalable approaches including those for simulating across parameters, as well as distributed deep-learning to obtain high-fidelity solutions. This hands-on tutorial will provide the theoretical background, computational training and software tools for practitioners to rapidly deploy cloud scalable solutions for their forward and inverse PDE needs. We will provide access to Microsoft Azure HPC clusters, and scripts for attendees to follow all demos at their own pace. We envision this tutorial to be of significant utility for academic and industry practitioners interested in the seamless scale-up of their approaches.
Head of Product and Engineering at Microsoft