Result for 03562090E8A7594864BDFF5C0479360E5E556A05

Query result

Key Value
FileName./usr/share/doc/keras-doc/examples/cifar10_cnn.py
FileSize4119
MD550E7FAB9F3BC3DDCF28E7111F0688E10
SHA-103562090E8A7594864BDFF5C0479360E5E556A05
SHA-256C9B03F3C3210D6AF30E773C142B7BFB3A9FC0E7F1E82C8FB529FF0CF8D88CA94
SSDEEP96:TCZN+8Qpgk3GF6QyWqogJdJqCIrv/MWQfAokCovlieFARJE:TO+8YJ02Xkk0o9CliX3E
TLSHT17F8174F354732A2E621B70F6F3CD559233E993478E263560FB3C4110EB8B8292736266
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
FileSize942032
MD59EE8D4352481D1DAC8F8C26E165B1DA1
PackageDescriptionCPU/GPU math expression compiler for Python (docs) Keras is a Python library for machine learning based on deep (multi- layered) artificial neural networks (DNN), which follows a minimalistic and modular design with a focus on fast experimentation. . Features of DNNs like neural layers, cost functions, optimizers, initialization schemes, activation functions and regularization schemes are available in Keras a standalone modules which can be plugged together as wanted to create sequence models or more complex architectures. Keras supports convolutions neural networks (CNN, used for image recognition resp. classification) and recurrent neural networks (RNN, suitable for sequence analysis like in natural language processing). . It runs as an abstraction layer on the top of Theano (math expression compiler) by default, which makes it possible to accelerate the computations by using (GP)GPU devices. Alternatively, Keras could run on Google's TensorFlow (not yet available in Debian, but coming up). . This package contains the documentation for Keras.
PackageMaintainerUbuntu Developers <ubuntu-devel-discuss@lists.ubuntu.com>
PackageNamekeras-doc
PackageSectiondoc
PackageVersion2.1.1-1
SHA-1D1759E97E0267A861FA9A6EB5568E23251D070B1
SHA-256EF91FD03A896D2F8D5E0C260E64F27DEA9395684BD6FDCAD82E0CB480C84E03E