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xmcaMaximum Covariance Analysis in Python
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Fashion MnistA MNIST-like fashion product database. Benchmark 👇
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LingvoLingvo
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mnist testmnist with Tensorflow
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rust-simple-nnSimple neural network implementation in Rust
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chainer-ADDAAdversarial Discriminative Domain Adaptation in Chainer
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Awesome TensorlayerA curated list of dedicated resources and applications
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AdaBound-tensorflowAn optimizer that trains as fast as Adam and as good as SGD in Tensorflow
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DeeplearningDeep Learning From Scratch
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mnist-flaskA Flask web app for handwritten digit recognition using machine learning
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Tsne CudaGPU Accelerated t-SNE for CUDA with Python bindings
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keras gpyoptUsing Bayesian Optimization to optimize hyper parameter in Keras-made neural network model.
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digitrecognition iosDeep Learning with Tensorflow/Keras: Digit recognition based on mnist-dataset and convolutional neural-network on iOS with CoreML
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Gordon cnnA small convolution neural network deep learning framework implemented in c++.
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Tensorflow Mnist Gan DcganTensorflow implementation of Generative Adversarial Networks (GAN) and Deep Convolutional Generative Adversarial Netwokrs for MNIST dataset.
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MultidigitmnistCombine multiple MNIST digits to create datasets with 100/1000 classes for few-shot learning/meta-learning
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