Darknet

5.0
(1)

Darknet is an open source neural network framework written in C and CUDA that supports CPU and GPU computation.

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Darknet review by Alexander L.
Alexander L.
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"Wanna some hidden stuff - go darknet"

What do you like best?

You could do almost anything ablslutely anonymously. buy some stuff, sell some stuff.

What do you dislike?

It is a storage of hidden gems. Sometimes these gems are not the things you wanna see.

What problems are you solving with the product? What benefits have you realized?

Cant find something on regular internet - try to find it in darknet. Thahs the benefit

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