BrainCore is a neural network framework written in Swift that uses Metal which makes it fast.

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BrainCore review by G2 User
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"Lightning-fast framework for neural network development on Apple products"

What do you like best?

BrainCore is an excellent framework for predicting using neural networks when a high performance is required. Compared to most other tools, it is incredibly fast, even beating some commercial alternatives that I've tested. That it is available for free makes it even more impressive.

What do you dislike?

BrainCore currently only supports predicting using an already trained neural network. Bringing the same performance to network training would be a huge step forward and very appreciated.

Recommendations to others considering the product:

Not all apps require the performance of BrainCore, and using the same framework for training and predicting can be convenient, so make sure you evaluate different tools before picking one.

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

I've decided to use BrainCore for neural network prediction in one of our macOS Apps after comparing it to several alternative frameworks. I've saved a lot of implementation time and achieve great performance using the framework.

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BrainCore review by Jakiem P.
Jakiem P.
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"Great service"

What do you like best?

It's very great experience I've had it's non invasive and successful with young adults.

What do you dislike?

It's not very long term in my opinion but is very successful.

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

I've come to realize that going this alternative route is safer and more beneficiary to our young adults somewhat of a breakthrough of sorts.

What Artificial Neural Network solution do you use?

Thanks for letting us know!

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