A NOVEL INTELLIGENT ENVIRONMENT DEDICATED TO ANN FAST PROTOTYPING

This article contains a brief description of how the proposed ANN design system works, as well as a brief presentation of the employed methodology in the implementation of neural networks. Finally, the results obtained from the prototyping of some GSN neural network circuits within the FLECHA matrix.

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