Result for 15C1E3772737B14BEBBD36E34022E065917FB153

Query result

Key Value
FileName./usr/lib/python2.7/site-packages/seaborn/apionly.pyo
FileSize425
MD517E9DBED00D64C54DEC501C318D1B0AC
SHA-115C1E3772737B14BEBBD36E34022E065917FB153
SHA-256B24E091D0B4B5ED4D305AEB3DA6CB51BC81FB86076E8363D5EC44F0364D80C43
SSDEEP12:5QliFNLr+a+6dDJHLiisj0+AXmiYfLgq/:5QEFNv+aLDJFmcYUq/
TLSHT194E06112737E45ABCD35A4F1F060152B8AF791BA4715B489107C157F3CCD5690B2550A
hashlookup:parent-total3
hashlookup:trust65

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Parents (Total: 3)

The searched file hash is included in 3 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
MD55495BB90AC684E369C01652E51C7D496
PackageArchnoarch
PackageDescriptionSeaborn is a library for making attractive and informative statistical graphics in Python. It is built on top of matplotlib and tightly integrated with the PyData stack, including support for numpy and pandas data structures and statistical routines from scipy and statsmodels. Some of the features that seaborn offers are: - Several built-in themes that improve on the default matplotlib aesthetics - Tools for choosing color palettes to make beautiful plots that reveal patterns in your data - Functions for visualizing univariate and bivariate distributions or for comparing them between subsets of data - Tools that fit and visualize linear regression models for different kinds of independent and dependent variables - Functions that visualize matrices of data and use clustering algorithms to discover structure in those matrices - A function to plot statistical timeseries data with flexible estimation and representation of uncertainty around the estimate - High-level abstractions for structuring grids of plots that let you easily build complex visualizations
PackageNamepython2-seaborn
PackageReleaselp150.4.2
PackageVersion0.9.0
SHA-1868AF640C0454A1FEB5CAD620840078BAF86C922
SHA-256E6A373CE3BC96E7635F574466475D7F6EC392A00C08D8B3FF0D9ED27AB41ECD4
Key Value
MD5962B8A994AEC73A203CF682A5052B181
PackageArchnoarch
PackageDescriptionSeaborn is a library for making attractive and informative statistical graphics in Python. It is built on top of matplotlib and tightly integrated with the PyData stack, including support for numpy and pandas data structures and statistical routines from scipy and statsmodels. Some of the features that seaborn offers are: - Several built-in themes that improve on the default matplotlib aesthetics - Tools for choosing color palettes to make beautiful plots that reveal patterns in your data - Functions for visualizing univariate and bivariate distributions or for comparing them between subsets of data - Tools that fit and visualize linear regression models for different kinds of independent and dependent variables - Functions that visualize matrices of data and use clustering algorithms to discover structure in those matrices - A function to plot statistical timeseries data with flexible estimation and representation of uncertainty around the estimate - High-level abstractions for structuring grids of plots that let you easily build complex visualizations
PackageNamepython2-seaborn
PackageReleaselp151.4.2
PackageVersion0.9.0
SHA-179C083E1055EBA2C3E8D6B7035A7EF49D9F483AE
SHA-256AA6450BD4EB6D6D8DDA8A9598CAB909C55178E6430E215E9995C01F1D2508397
Key Value
MD55F11F970049CFD82F45D33BB21AA7EFF
PackageArchnoarch
PackageDescriptionSeaborn is a library for making attractive and informative statistical graphics in Python. It is built on top of matplotlib and tightly integrated with the PyData stack, including support for numpy and pandas data structures and statistical routines from scipy and statsmodels. Some of the features that seaborn offers are: - Several built-in themes that improve on the default matplotlib aesthetics - Tools for choosing color palettes to make beautiful plots that reveal patterns in your data - Functions for visualizing univariate and bivariate distributions or for comparing them between subsets of data - Tools that fit and visualize linear regression models for different kinds of independent and dependent variables - Functions that visualize matrices of data and use clustering algorithms to discover structure in those matrices - A function to plot statistical timeseries data with flexible estimation and representation of uncertainty around the estimate - High-level abstractions for structuring grids of plots that let you easily build complex visualizations
PackageNamepython2-seaborn
PackageRelease4.2
PackageVersion0.9.0
SHA-1F609AD8BC22692262E7CE236261FE3A4921ABAA4
SHA-256A9DA346CED1C0802EFC60928198B6E8863BB62F7623587E2229D81A702700E43