Auto-Keras: Tuning-free deep learning from R

Sometimes in deep learning, architecture design and hyperparameter tuning pose substantial challenges. Using Auto-Keras, none of these is needed: We start a search procedure and extract the best-performing model. This post presents Auto-Keras in action on the well-known MNIST dataset.

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CycleGAN: Unpaired Image-to-Image Translation (Part 3)

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The post CycleGAN: Unpaired Image-to-Image Translation (Part 3) appeared first on PyImageSearch.

Technology Roundtable

Technology Roundtable is an opportunity for technology architects in the technology industry to learn, innovate and collaborate with their peers. Roundtable members work together on industry priorities and general topics of interest and concern related to open source technology initiatives.