Result for 295B93B3A7975B3C577D57F50F33A675D35A0877

Query result

Key Value
FileName./usr/lib64/python2.5/site-packages/storm/uri.pyo
FileSize3447
MD58425A3BAF99FA685E18DDDBF23728432
SHA-1295B93B3A7975B3C577D57F50F33A675D35A0877
SHA-256AF3F10681C6A403E860FCB292B92B72AC96936D6CE9E76EBE2B410E14038C8E3
SSDEEP48:now50StGZmn6CrJQi/LVjqZoRSaQ2+0mh1fV9gyZWRFOEiEQu8ZOnZryldkQd:oA0StGwn6g1QuR0uM9gg0FarCnZryl/d
TLSHT11361E0D0B3A6875FC6A5047CA0B4036FDEB2E5775A50BB415278E47C3DC8358CA6B386
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
MD5FA93A2CAB63024B7946E13E51BB9AAC7
PackageArchsparc64
PackageDescriptionStorm is an object-relational mapper (ORM) for Python developed at Canonical. The project has been in development for more than a year for use in Canonical projects such as [WWW] Launchpad, and has recently been released as an open-source product. Highlights: * Clean and lightweight API offers a short learning curve and long-term maintainability. * Storm is developed in a test-driven manner. An untested line of code is considered a bug. * Storm needs no special class constructors, nor imperative base classes. * Storm is well designed (different classes have very clear boundaries, with small and clean public APIs). * Designed from day one to work both with thin relational databases, such as SQLite, and big iron systems like PostgreSQL and MySQL. * Storm is easy to debug, since its code is written with a KISS principle, and thus is easy to understand. * Designed from day one to work both at the low end, with trivial small databases, and the high end, with applications accessing billion row tables and committing to multiple database backends. * It's very easy to write and support backends for Storm (current backends have around 100 lines of code).
PackageMaintainerFedora Project
PackageNamepython-storm
PackageRelease2.fc9
PackageVersion0.13
SHA-113705045D9CE0859CAA3834F251312E1BCFA1087
SHA-256F210AB7FA8FAE379B023822F29B8C2D8440F8E33772E674987CE03D690B0D60D