The full poster is here.
Sources are available online as part of the open-source package FMR. They can be downloaded for free at the following address https://gforge.inria.fr/projects/fmr Dependencies FMR relies on
ScalFMM [1] for performing fast multipole matrix multiplication in parallel (in shared and distributed memory) MKL for dense linear algebra and FFT Scotch or CClusteringLib for partitionning Features The package provides: routines for generating Gaussian Random Fields based on
standard LRA: Cholesky Decomposition, SVD or FFT for regular grids.
- randomized LRA: RandSVD and Nystrom method with uniform or leverage score-based sampling.
- a variety of correlation kernels: Mat´ern, Spherical model, Oseen-Gauss.
- a Python interface for MDS using Randomized SVD or Nystrom
- a Matlab interface for Ensemble Kalman Filtering
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