Introduction to Physics-Informed Machine Learning With NVIDIA Modulus

Introduction to Physics-Informed Machine Learning With NVIDIA Modulus

NVIDIA NIC-NVI-IPIM

USD 30,00
excl. VAT

High-fidelity simulations in science and engineering are computationally expensive and time-prohibitive for quick iterative use cases, from design analysis to optimization. NVIDIA Modulus, the physics machine learning platform, turbocharges such use cases by building physics-based deep learning models that are 100,000x faster than traditional methods and offer high-fidelity simulation results.

Upon completion, you will have an understanding of the various building blocks of Modulus and the basics of physics-informed deep learning. You’ll also have an understanding of how the modulus framework integrates with the overall Omniverse Platform.

Course Prerequisites

  • Familiarity with the Python programming language
  • An understanding of partial differential equations and their use in physics.
  • Familiarity with machine learning concepts like training and inference.

What you will learn

Upon completion, you’ll understand the various building blocks of Modulus and the basics of physics-informed deep learning. You’ll also understand how the Modulus framework integrates with the overall Omniverse platform.

Additional information

The minimum order quantity for NVIDIA self-paced courses is 10.
When adding a course to the shopping cart, a quantity of 10 is automatically added. It may also take 2-3 working days for your course access to be activated. You will receive an email from us with all the necessary information.
Escribe tu propia revisión

Sólo usuarios registrados pueden escribir revisiones. Por favor inicie sesión o cree una cuenta