Artifact python3-skorch_0.12.1-2_all

Metadata
deb_control_files:
- control
- md5sums
- postinst
- prerm
deb_fields:
  Architecture: all
  Depends: python3-torch (>= 1.3.1), python3-numpy, python3-scipy, python3-sklearn,
    python3-tabulate, python3-tqdm, python3.11, python3:any
  Description: "scikit-learn compatible neural network library that wraps PyTorch\n\
    \ The goal of skorch is to make it possible to use PyTorch with sklearn. This\
    \ is\n achieved by providing a wrapper around PyTorch that has an sklearn interface.\n\
    \ In that sense, skorch is the spiritual successor to nolearn, but instead of\n\
    \ using Lasagne and Theano, it uses PyTorch.\n .\n skorch does not re-invent the\
    \ wheel, instead getting as much out of your way as\n possible. If you are familiar\
    \ with sklearn and PyTorch, you don\u2019t have to learn\n any new concepts, and\
    \ the syntax should be well known. (If you\u2019re not familiar\n with those libraries,\
    \ it is worth getting familiarized.)\n .\n Additionally, skorch abstracts away\
    \ the training loop, making a lot of\n boilerplate code obsolete. A simple net.fit(X,\
    \ y) is enough. Out of the box,\n skorch works with many types of data, be it\
    \ PyTorch Tensors, NumPy arrays,\n Python dicts, and so on. However, if you have\
    \ other data, extending skorch is\n easy to allow for that.\n .\n Overall, skorch\
    \ aims at being as flexible as PyTorch while having a clean\n interface as sklearn."
  Homepage: https://github.com/skorch-dev/skorch
  Installed-Size: '796'
  Maintainer: Debian Deep Learning Team <debian-ai@lists.debian.org>
  Package: python3-skorch
  Priority: optional
  Section: science
  Source: skorch
  Version: 0.12.1-2
srcpkg_name: skorch
srcpkg_version: 0.12.1-2

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built-using Source package skorch_0.12.1-2

binary package System - - 5 months, 4 weeks ago 4 months, 4 weeks
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