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deeplearningturkiye / Pratik Derin Ogrenme Uygulamalari

Çeşitli kütüphaneler kullanılarak Türkçe kod açıklamalarıyla TEMEL SEVİYEDE pratik derin öğrenme uygulamaları.

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Çeşitli kütüphaneler kullanılarak Türkçe kod açıklamalarıyla pratik derin öğrenme uygulamaları.

Çalışma, Deep Learning Türkiye topluluğu tarafından desteklenmektedir.

Nasıl Katkıda Bulunabilirim?

Orjinal derin öğrenme örnek kodlarını alıp repomuza Türkçe açıklamalar ile eklenmesine destek vermek isteyenler bu linkten nasıl katkıda bulunabileceklerini öğrenebilirler.

MNIST (Modified National Institute of Standards and Technology) Veriseti

Keras

Jupyter Notebook Örnekleri

PyTorch

CIFAR10 (Canadian Institute for Advanced Research) Veriseti

Keras

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