frugally-deep - Header-only library for using Keras models in C++.

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Would you like to build/train a model using Keras/Python? And would you like run the prediction (forward pass) on your model in C++ without linking your application against TensorFlow? Then frugally-deep is exactly for you. Layer types typically used in image recognition/generation are supported, making many popular model architectures possible (see Performance section).

https://github.com/Dobiasd/frugally-deep

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