BiocSingular

Software
Maintenance light8updated 6 months ago
R

Implements exact and approximate methods for singular value decomposition and principal components analysis, in a framework that allows them to be easily switched within Bioconductor packages or workflows. Where possible, parallelization is achieved using the BiocParallel framework.

README

Singular value decomposition for Bioconductor |Build|Status| |-----|----| | Bioc-release | | | Bioc-devel | | This package provides a consistent class interface for singular value decompositions and principal components analysis for use throughout the Bioconductor ecosystem. Check out the user guide on the Bioconductor landing page for more details.

Source attribution

  • GitHubgithub.com/ltla/biocsingular
  • BioconductorBiocSingular

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