Predicting ultrafast nonlinear dynamics in fibre optics with a recurrent neural network
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Alessandro Foi | Cyril Billet | John M. Dudley | Lauri Salmela | Nikolaos Tsipinakis | Goery Genty | A. Foi | J. Dudley | G. Genty | C. Billet | L. Salmela | Nikolaos Tsipinakis
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