Result for 410F27A7892DE5BB5BE0D7F4C8C7E6EB00BFB412

Query result

Key Value
FileNamesnap-hashlookup-import/lib/python3.8/site-packages/seaborn/_decorators.py
FileSize2126
MD538F8BA205EBA61E44FBC748C8F7E23D6
SHA-1410F27A7892DE5BB5BE0D7F4C8C7E6EB00BFB412
SHA-256706C71B4036F748CC2F865C0AE447B8F7EB427B305A47A545599012D0B60E000
SHA-512F6A4179D5152C189F3CFB603FCEF438B39D8228666ABB8DFAB5EA67C750823FED6CD4D94E2DDC835EFD7E50BD8170C08EC0AAE37BFCF1E756C68007528AE6002
SSDEEP48:WP/eNj2SKWS+Ey9laIUKVTFNWAFiodqQyLngpuenBDa+c:ZBKW9lFUKPNHDqQ2jevc
TLSHT14841DF0BD8A16FD24D43F27C185A90A6A37C185771805024BC9CD7AD6F2BC3643BAEAD
insert-timestamp1659216979.0044506
mimetypetext/x-python
sourcesnap:YZQF6inA19lP49wUDLLuvVPpGqqJMAY2_34
tar:gnameroot
tar:unameroot
hashlookup:parent-total42
hashlookup:trust100

Network graph view

Parents (Total: 42)

The searched file hash is included in 42 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
FileNamehttps://ftp.lysator.liu.se/pub/OpenBSD/6.9/packages//sparc64//py3-seaborn-0.11.1.tgz
MD540661AE586D4CE5EF73A08AB3F40EB8F
SHA-1088673F9592B271673557080000D8EAAF2E0D33A
SHA-256CCF627C7E17DF4A09F251D870A6B8A12EAC59A44CE859AEB492E91A806E1342F
SSDEEP12288:Ua/G7aFVRQvBQjwe5GVClSXT7j7KC8Qd5fx21jrpAnyy9Xox+UF:Ua/G7u8msmGVClS3BtxyY9a5F
TLSHT1A7D423746CF4F258E13770AB9D373EC6A1004ECBEDE529050DDAE0E493AAC42419DADE
Key Value
FileNamehttps://ftp.lysator.liu.se/pub/OpenBSD/6.8/packages//amd64//py3-seaborn-0.11.0.tgz
MD5323FFB3E1338C94D0884C9D7BC1DD6FB
SHA-10B28BAC12EAE21DF40501A93384391BC50355219
SHA-256EB025FDC4FACE5AD42D3288417C0377FF193A7E2E93AB8522FCA2F7D4B7265BA
SSDEEP12288:pA6Z3L6/No6sqrOlSjktarQsGiA9NwUt7OI8VGpXqTifniylx:Oe6rOlSAtarQLoUt7DpXcfwx
TLSHT1C9D423F4D44A4F099B781E9F3971F03DD92AD5AA1A633C9208FD7325C93A05DED4A883
Key Value
FileNamehttps://ftp.lysator.liu.se/pub/OpenBSD/6.9/packages//mips64el//py3-seaborn-0.11.1.tgz
MD5FED05D66B1ED6E11514F83414F7BAC66
SHA-10C1D50B7A919F6E4367079B6493FC5F4EEB998C7
SHA-2563657339E039A0DB635130226CF94FEC61945976772820D448908F9AB67A01D6C
SSDEEP12288:QIeiG7aFVRQvBQjwe5GVClSXT7j7KC8Qd5fx21jrpAnyy9Xox+UF:QViG7u8msmGVClS3BtxyY9a5F
TLSHT16CD423346DE4F248F13B74EB9D273DC6A1004ECBEDA429060DEAE0E597AAC4142DD9DD
Key Value
FileNamehttps://ftp.lysator.liu.se/pub/OpenBSD/6.8/packages//mips64//py3-seaborn-0.11.0.tgz
MD552A5D8B2BB1A7C360C3998C798EC3783
SHA-1191D721F56F1BD5289027C0E7DD8866F4370DFB5
SHA-2561C212DA993A6297DF395DA93E8205BD396756D3C248D201F1E388382393AF775
SSDEEP12288:ZqZ3L6/No6sqrOlSjktarQsGiA9NwUt7OI8VGpXqTifniylx:Xe6rOlSAtarQLoUt7DpXcfwx
TLSHT1E4D423B4D44A8F05ABB81E9F39B1F03CD826D5AB19633C9205FD7329C93B09DAD45893
Key Value
MD539631835CFDCB031BB630C9D65F6E1C8
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
PackageNamepython39-seaborn
PackageRelease33.27
PackageVersion0.11.1
SHA-121CFAFDBF856872DE3B0125CE48B905A6AF1C721
SHA-256A3D1BC25D0AECC0E69551F121AAC869E0B2A1E0A860494F5BB531A44577AF12D
Key Value
FileSize205760
MD5E1895E1BE0C3319D32D0C131AA9EB6F0
PackageDescriptionstatistical visualization library for Python3 Seaborn 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 - 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 . This is the Python 3 version of the package.
PackageMaintainerUbuntu Developers <ubuntu-devel-discuss@lists.ubuntu.com>
PackageNamepython3-seaborn
PackageSectionpython
PackageVersion0.11.1-1
SHA-122A01F183EA134F7F7E9A89D595BF125390F1C1B
SHA-256FFFC71E019C2B68D90E40C818E6CCEA1BE365A50F1C592C782AACAEE8FA3D7B3
Key Value
MD5A0B9D0D4E3E26497C60372D820528C7A
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
PackageNamepython310-seaborn
PackageRelease33.1
PackageVersion0.11.2
SHA-131A1CC3990A233566AC968A9672951243BF7C248
SHA-256F978A313AA70BF578EF7303541CFE4D9FC1F7A8E7F203F4FEBD1E39417E9A3CB
Key Value
MD5BD9B092F464C2E40B0EE8520886F43EB
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
PackageNamepython39-seaborn
PackageRelease33.1
PackageVersion0.11.2
SHA-14C5453CDDBBD6A3E927152F8F141906090F3D9F4
SHA-256A10F0D4A26BF931A985B2B511974206414495169B88C00C492C46B68EBE6343C
Key Value
MD504C6ECE00B60038E0397C1F11455D8E6
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
PackageNamepython38-seaborn
PackageRelease2.1
PackageVersion0.11.1
SHA-15532D2D71D2F3B58D63AE14EB963B453D9E52E16
SHA-256354084ED4309FF74DABDA5C5F2A43365DFBCC366D9C0E6C4A408A6CDE91429C9
Key Value
MD58C0E9C24728389B0D0E7D97EFA8D32C6
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
PackageNamepython310-seaborn
PackageRelease33.1
PackageVersion0.11.2
SHA-15A25E1F9614CDD6489D8E355CFC535120BF173C4
SHA-2560CC2DA4A133F1FDF364ADAE04D702C04A141287FEDD94BE103C2EF5223646EDA