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I'm working with quite large rotation matrices, which have the inherent property to have a large number of zeros. In order to reduce memory use and possibly reduce computation cost when multiplying these rotation matrices with other matrices/vectors, I would like to use a sparse matrix data structure. I have found documentation on the SciPy sparse matrices, but I don't quite understand how these work and what the differences are. (SciPy docs)

What would be the best sparse data structure to use for rotation matrices in Python?

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If you already have the rotation matrix as a dense array you can simply do

m = csr_matrix(dense_rot_matrix)

One of the two types csr_matrix or csc_matrix should be used.

A better option would be to populate already the sparse matrix which can be easily accomplished using the coo_matrix type, which has efficient methods to convert to csr_matrix or csc_matrix. I've been using Cython to create sparse matrices in this way very efficiently.

  • Thanks! :) One more question though; if I use either csr_matrix or csc_matrix, how should I multiply these by a vector (that is just a normal array) ? From what I see so far this cannot be done immediately right? EDIT: never mind, mistake in my code, my bad. Thanks again! – danielvdende Mar 7 '15 at 11:56
  • @danielvdende right, you can multiply simply by m*a_ndarray_object or using m.dot(a_ndarray_object) – Saullo G. P. Castro Mar 7 '15 at 12:07

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