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neural prototyping framework

Project description

[protoNN logo]

A framework for code-agnostic, interactive prototyping of DNNs.

build status from Travis CI pypi version


  • Transparent and elastic scheduling of DNN training jobs on modern HPC systems.
  • Monitoring and visualizing model parameters and computational performance statistics.
  • Perform semi-automatic hyperparameter tuning/optimization and architecture search using evolutionary algorithms.
  • A user-defined interactive interface to drive the framework/ design process, not bound to any particular framework.
  • Scaling the functionality and performance of the model as the resources increase.

How do I get set up?

  • pip3 install protonn for latest stable release
  • pip3 install git+ for recent development version
  • Python 3.6 or later is required


Aleksandr Drozd

Mohamed Wahib

Mateusz Bysiek

Maxim Shpakovich

For licensing information, please see LICENSE

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