Result for 05FFA9A8292CF5B627466F794CC2335A8ECA984F

Query result

Key Value
FileName./usr/share/doc/python-h5py-doc/api/html/_sources/h5s.rst.txt
FileSize940
MD5235E55BA63C05D39E55EEC5BA72F1E74
SHA-105FFA9A8292CF5B627466F794CC2335A8ECA984F
SHA-256625E8F83812B1682D20C4321208578EB86BE2E40DFC0DA97A1D8E8FDF731695C
SSDEEP24:p8g+JlSfUT+1zFcUanpHxZhH4881zYgtEyPy6gyt:pYSPCuzL3
TLSHT14311C0EC7D40AC16D076C0E6D1920148D9D3F02DD315556D28AB53DC5931FFAB9AFE09
hashlookup:parent-total1
hashlookup:trust55

Network graph view

Parents (Total: 1)

The searched file hash is included in 1 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
FileSize165690
MD5839FF78FF0F2F00CE78312D85885ADBC
PackageDescriptiondocumentation for h5py HDF5 for Python (h5py) is a general-purpose Python interface to the Hierarchical Data Format library, version 5. HDF5 is a versatile, mature scientific software library designed for the fast, flexible storage of enormous amounts of data. . From a Python programmer's perspective, HDF5 provides a robust way to store data, organized by name in a tree-like fashion. You can create datasets (arrays on disk) hundreds of gigabytes in size, and perform random-access I/O on desired sections. Datasets are organized in a filesystem-like hierarchy using containers called "groups", and accessed using the tradional POSIX /path/to/resource syntax. . H5py provides a simple, robust read/write interface to HDF5 data from Python. Existing Python and Numpy concepts are used for the interface; for example, datasets on disk are represented by a proxy class that supports slicing, and has dtype and shape attributes. HDF5 groups are presented using a dictionary metaphor, indexed by name. . This package provides the documentation.
PackageMaintainerUbuntu Developers <ubuntu-devel-discuss@lists.ubuntu.com>
PackageNamepython-h5py-doc
PackageSectiondoc
PackageVersion2.7.1-2
SHA-1FBF512DCC2B7672E6767A44099B15B23A283AB7F
SHA-2568FD1016A9C2877F30FB42E84E9880AF93DD4AC345F44AC7F493C68BD31549248