Result for 0035AB2CC45B2DE3654CB91B88635813B49BDFFC

Query result

Key Value
FileName./usr/share/doc/shogun/html/RescaleFeatures_8h_source.html
FileSize21089
MD576D56A405B723FEAED3F29A3D92B9671
SHA-10035AB2CC45B2DE3654CB91B88635813B49BDFFC
SHA-256D679AD85BCAED32327BAB2B41D54DBB593149C9661212D59A22D99E6F4989DD8
SSDEEP384:HmH9Ccy9TDCXLFxtsKvsudLKjtJm7LN74CB3Kpy:HmH9Ccy9/CXLFxtsKvrdLKjtJmN4CZKg
TLSHT10592FD3D96C30C37819791E67AF4676D38E79BEAC7470908BAFC67641BC2EC0B896405
hashlookup:parent-total1
hashlookup:trust55

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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
MD50C4979D4F74741B3776FB2EE58BBDD8F
PackageArchaarch64
PackageDescriptionThis package contains very detailed documentation, and some great examples for shogun. If you need the Chinese API-docs, you would want to install shogun-doc-cn, too. The Shogun Machine learning toolbox provides a wide range of unified and efficient Machine Learning (ML) methods. The toolbox seamlessly allows to easily combine multiple data representations, algorithm classes, and general purpose tools. This enables both rapid prototyping of data pipelines and extensibility in terms of new algorithms. We combine modern software architecture in C++ with both efficient low-level computing back-ends and cutting edge algorithm implementations to solve large-scale Machine Learning problems (yet) on single machines. One of Shogun's most exciting features is that you can use the toolbox through a unified interface from C++, Python(3), Octave, R, Java, Lua, etc. This not just means that we are independent of trends in computing languages, but it also lets you use Shogun as a vehicle to expose your algorithm to multiple communities. We use SWIG to enable bidirectional communication between C++ and target languages. Shogun runs under Linux/Unix, MacOS, Windows. Originally focusing on large-scale kernel methods and bioinformatics (for a list of scientific papers mentioning Shogun, see here), the toolbox saw massive extensions to other fields in recent years. It now offers features that span the whole space of Machine Learning methods, including many classical methods in classification, regression, dimensionality reduction, clustering, but also more advanced algorithm classes such as metric, multi-task, structured output, and online learning, as well as feature hashing, ensemble methods, and optimization, just to name a few. Shogun in addition contains a number of exclusive state-of-the art algorithms such as a wealth of efficient SVM implementations, Multiple Kernel Learning, kernel hypothesis testing, Krylov methods, etc. All algorithms are supported by a collection of general purpose methods for evaluation, parameter tuning, preprocessing, serialization & I/O, etc; the resulting combinatorial possibilities are huge. The wealth of ML open-source software allows us to offer bindings to other sophisticated libraries including: LibSVM, LibLinear, LibOCAS, libqp, VowpalWabbit, Tapkee, SLEP, GPML and more. Shogun got initiated in 1999 by Soeren Sonnenburg and Gunnar Raetsch (that's where the name ShoGun originates from). It is now developed by a larger team of authors, and would not have been possible without the patches and bug reports by various people. See contributions for a detailed list. Statistics on Shogun's development activity can be found on ohloh.
PackageMaintainerFedora Project
PackageNameshogun-doc
PackageRelease2.fc24
PackageVersion4.1.0
SHA-1B19E3540BFB0874DF32A5AF8145E401CA499F7AF
SHA-256BB0495BEE2B8B9D8D92927920A7DA9B39A42F49760BB1472EBA3C68C16C00E0F