matter
Toolbox for larger-than-memory scientific computing and visualization, providing efficient out-of-core data structures using files or shared memory, for dense and sparse vectors, matrices, and arrays, with applications to nonuniformly sampled signals and images.
README
matter Out-of-core statistical computing and signal processing Toolbox for larger-than-memory scientific computing and visualization, providing efficient out-of-core data structures using files or shared memory, for dense and sparse vectors, matrices, and arrays, with applications to nonuniformly sampled signals and images. Description The Matter package provides flexible data structures for out-of-memory computing on dense and sparse arrays, with specialized features designed specifically for…
- Repository
- github.com/kuwisdelu/matter
Source attribution
- GitHub — github.com/kuwisdelu/matter
- Bioconductor — matter
Related resources
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