Use of discrete dynamical systems within recurrent neural networks
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Python library to build and use discrete dynamical systems within recurrent neural networks. This library is a user-friendly tool made to use discrete dynamical systems such as Binary ECA, 3 states ECA and CML as a reservoir. Each type of reservoir has its hyper-parameters to enhance the reservoir performance.
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