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Library for high-dimensional PDEs using sparse grids and discontinuous Galerkin method

Project description

The ASGarD project has the goal of building a solver specifically targeting high-dimensional PDEs where the "curse-of-dimensionality" has previously precluded useful continuum / Eularian (grid or mesh based as opposed to Monte-Carlo sampling) simulation. Our approach is based on a Discontinuous-Galerkin finite-element solver build atop an adaptive hierarchical sparse-grid (note this is different from the "combination technique" when applied to sparse-grids).

To cite the ASGarD code in your work, please use:

Papers using ASGarD:

Documentation of usage: https://project-asgard.github.io/asgard/

The developer documentation contains information about how to contribute to the ASGarD project.

Quick Install

ASGarD supports --user and venv install only.

user install: python3 -m pip install ornl-asgard==0.7.0a9 --user

venv install: python3 -m pip install ornl-asgard==0.7.0a9

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