LambdaNet

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LambdaNet is an artificial neural network library written in Haskell that abstracts network creation, training, and use as higher order functions, it provides a framework in which users can: quickly iterate through network designs by using different functional components and experiment by writing small functional components to extend the library

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"Learn other lenguage is a process"

What do you like best?

I like best write Baseball and watch tv Sports.

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I don't like dance. I don't like lie too.

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