deeplearn-rs

2.5
(1)

deeplearn-rs is a deep learning in rust that can be used to build trainable matrix compptation graphs that are configurable at runtime.

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deeplearn-rs review by G2 User in Public Relations and Communications
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"Easy to use"

What do you like best?

How quick and easy it is to learn and use.

What do you dislike?

I just dislike how long it takes to startup.

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

There’s great benefits to using the system.

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