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author | Ricardo Wurmus <rekado@elephly.net> | 2019-02-15 11:02:41 +0100 |
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committer | Ricardo Wurmus <rekado@elephly.net> | 2019-02-15 11:03:26 +0100 |
commit | 9846ec0beabdc9113a37448178d62324ee4be46d (patch) | |
tree | 02247de51e5881ca3f54a9ea3a818b4990fa9b62 | |
parent | a37bdf4289e9bb533907a6ee5c4c84e68e12c5b1 (diff) | |
download | guix-9846ec0beabdc9113a37448178d62324ee4be46d.tar.gz |
gnu: Add python-pyfit-sne.
* gnu/packages/bioinformatics.scm (python-pyfit-sne): New variable.
-rw-r--r-- | gnu/packages/bioinformatics.scm | 30 |
1 files changed, 30 insertions, 0 deletions
diff --git a/gnu/packages/bioinformatics.scm b/gnu/packages/bioinformatics.scm index d6db02188f..933b8b9adf 100644 --- a/gnu/packages/bioinformatics.scm +++ b/gnu/packages/bioinformatics.scm @@ -14497,3 +14497,33 @@ designed for use with hybrid capture, including both whole-exome and custom target panels, and short-read sequencing platforms such as Illumina and Ion Torrent.") (license license:asl2.0))) + +(define-public python-pyfit-sne + (package + (name "python-pyfit-sne") + (version "1.0.1") + (source + (origin + (method git-fetch) + (uri (git-reference + (url "https://github.com/KlugerLab/pyFIt-SNE.git") + (commit version))) + (file-name (git-file-name name version)) + (sha256 + (base32 "13wh3qkzs56azmmgnxib6xfr29g7xh09sxylzjpni5j0pp0rc5qw")))) + (build-system python-build-system) + (propagated-inputs + `(("python-numpy" ,python-numpy))) + (inputs + `(("fftw" ,fftw))) + (native-inputs + `(("python-cython" ,python-cython))) + (home-page "https://github.com/KlugerLab/pyFIt-SNE") + (synopsis "FFT-accelerated Interpolation-based t-SNE") + (description + "t-Stochastic Neighborhood Embedding (t-SNE) is a highly successful +method for dimensionality reduction and visualization of high dimensional +datasets. A popular implementation of t-SNE uses the Barnes-Hut algorithm to +approximate the gradient at each iteration of gradient descent. This package +is a Cython wrapper for FIt-SNE.") + (license license:bsd-4))) |