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Are there any storage optimized Sparse Matrix implementations in C#?

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up vote 4 down vote accepted

There is Math.NET.

It has some Spare Matrix implementations. (link is to the old Math.NET site. There is no longer an online version of the documentation).

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This link it NMath is incorrect. NMath is a math framework from CenterSpace software at www.centerspace.net. – Paul Dec 1 '09 at 15:50
it is correct. This is an open source project. – Amirshk Dec 1 '09 at 20:32
Wanting to sell your product doesn't mean there aren't other solutions out there. My link is for a FREE OPEN SOURCE project, named NMath! – Amirshk Dec 1 '09 at 20:36
Hey Am, why are you yelling? I'm fine with free open source software or private closed source software - we all use both. I'm simply pointing out that your NMath link is wrong. You're linking NMath to the Math.NET open source project, but NMath is a trademark used by the CenterSpace NMath product. The project you are linking to is called Math.NET. – Paul Dec 14 '09 at 4:31

If you are looking for high performance sparse matrix implementation check out NMath from CenterSpace software.

Here's a partial list of functionality cut from here on CenterSpace's website.

  • Full-featured structured sparse matrix classes, including triangular, symmetric, Hermitian, banded, tridiagonal, symmetric banded, and Hermitian banded.
  • Functions for converting between general matrices and structured sparse matrix types.
  • Functions for transposing structured sparse matrices, computing inner products, and calculating matrix norms.
  • Classes for factoring structured sparse matrices, including LU factorization for banded and tridiagonal matrices, Bunch-Kaufman factorization for symmetric and Hermitian matrices, and Cholesky decomposition for symmetric and Hermitian positive definite matrices. Once constructed, matrix factorizations can be used to solve linear systems and compute determinants, inverses, and condition numbers.
  • General sparse vector and matrix classes, and matrix factorizations.
  • Orthogonal decomposition classes for general matrices, including QR decomposition and singular value decomposition (SVD).
  • Advanced least squares factorization classes for general matrices, including Cholesky, QR, and SVD.
  • LU factorization for general matrices, as well as functions for solving linear systems, computing determinants, inverses, and condition numbers.


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Paul, based on your profile it appears you work for CenterSpace. It's fine to post about your own product, but your connection to CenterSpace should be disclosed. – Greg Feb 10 '11 at 5:52

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