Feedforward Closedloop Learning (FCL)
Project description
The documentation of all functions can be obtained with:
import feedforward_closedloop_learning as fcl help(fcl)
The API is identical to the C++ API: The header files fcl.h, neuron.h and layer.h contain docstrings for all important calls: https://github.com/glasgowneuro/feedforward_closedloop_learning
The detailed documentation can be generated with doxygen.
The best way to get started is to look at the script in tests_py: https://github.com/glasgowneuro/feedforward_closedloop_learning/tree/master/tests_py
A full application using the Python API is our vizdoom agent: https://github.com/glasgowneuro/fcl_demos
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