A Fast Monotone Rotating Shallow Water model

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Deep Learning pyRSW
Overview

pyRSW

A Fast Monotone Rotating Shallow Water model

How fast? As fast as a sustained 2 Gflop/s per core on a 2.5 GHz cpu (or 2048 Gflop/s with 1024 cores).

Bored with Fortran ? this code is for you, it is pure Python.

Monotone? Because what is the point of invoking an adhoc dissipation or a sofisticated sgs theory when a good numerics can do both?

If you liked Fluid2d and Nyles, you'll love pyRSW.

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Owner
Guillaume Roullet
Professor in Physical Oceanography with Computational Fluid Dynamics expertise
Guillaume Roullet
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