An API, built to make it easier

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Presentation transcript:

An API, built to make it easier Keras An API, built to make it easier MHD Munzer Alsallakh

What is Keras Keras Why use Keras Keras Vs. TF Playing with Keras

What is Keras Keras is a high-level neural networks API, written in Python and capable of running on top of TensorFlow, CNTK, or Theano. It was developed with a focus on enabling fast experimentation. “Being able to go from idea to result with the least possible delay is key to doing good research.”(keras.io)

Why Keras Rapid prototyping Easily switching between APIs Industry best practices are already built in The default settings are a big help Prebuilt systems GPU acceleration

Keras vs. TF Keras makes it easy to develop a model Keras is a high level programming API Keras works for both simple and complex problems Satan Hides within details

Time for Koding Building a simple model Using ResNet50 prebuilt system Using Keras with tensor board

Photos Credits https://store.waitbutwhy.com/ http://clipart.info/devil-emoji-png-transparent-icon-4689 https://peru.com/epic/epic-mobile/facebook-messenger-no-solo- pacman-este-emoji-tambien-desaparecio-fotos-noticia-458421 https://www.youtube.com/watch?v=BiD5AhFcNW8 https://www.emojibase.com/emojilist/hooray https://tensorflow.org http://deathbattle.wikia.com/wiki/File:Vs.png https://keras.io

धन्यवाद Thank you 谢谢 شُكْرَاً لَكُمْ Terima kasih Merci a vous شکریہ