Result for 04E6770BDB3BDA2C03C974EF47FA371D1EF4E46A

Query result

Key Value
FileName./usr/lib/python3.6/site-packages/seaborn/__pycache__/miscplot.cpython-36.pyc
FileSize1592
MD5E7F68C2D9977989CE25FFC831C587AA3
SHA-104E6770BDB3BDA2C03C974EF47FA371D1EF4E46A
SHA-256C4B088F026531DD247B98A9E1185005711393FA5FCF563DFC524271DA5D3C34F
SSDEEP48:CC297h4wGOdUscOhqDHBLKVbGr7KPVjsa6v:s97+0edOkoU53
TLSHT1CC3165937F910B6DFF7AF2FA91468530816822A7A7F8E55F3A6817147D851CD0C34E40
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
MD5479D368D927436F36DC8ADB3C5E5C060
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
PackageNamepython3-seaborn
PackageRelease4.2
PackageVersion0.9.0
SHA-17CDD368A02CE9A4467BBC913E8384E37BC4DDF76
SHA-25635C035ADF9848768106E6C3704BF70BA9C0E8874D7AC5817B37AEA5DB1F758A2
Key Value
MD56B1955DC4744C3208947511A86E1B917
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
PackageNamepython3-seaborn
PackageReleaselp151.4.2
PackageVersion0.9.0
SHA-1FAEB623C7B20BB9C4CA51CCFF8476D1CA004324D
SHA-256E199419EFCB620E42038AB1E425021769BE2E6721DF5CB04F084DB865FA0F136
Key Value
MD59C8C6C7086C2D3E83A215E79E893EA99
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
PackageNamepython3-seaborn
PackageReleaselp150.4.2
PackageVersion0.9.0
SHA-18C7E6377C8C2DB01FD2894E3459A7F329E77C487
SHA-2568EF8B6ED3C0B3BCDCBD77085ED4EDB9E8FE10BFC32A66E87C2848F134ACDCC4C