A MNIST-like fashion product database. Benchmark
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Updated
Jul 22, 2020 - Python
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A MNIST-like fashion product database. Benchmark
Collection of generative models in Tensorflow
Lingvo
Collection of generative models in Pytorch version.
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A PyTorch implementation of the NIPS 2017 paper "Dynamic Routing Between Capsules".
Activation Maps (Layers Outputs) and Gradients in Keras.
AoE (AI on Edge,终端智能,边缘计算) 是一个终端侧AI集成运行时环境 (IRE),帮助开发者提升效率。
Early stopping for PyTorch
Android TensorFlow MachineLearning MNIST Example (Building Model with TensorFlow for Android)
PyTorch implementation of NIPS 2017 paper Dynamic Routing Between Capsules
CapsNet (Capsules Net) in Geoffrey E Hinton paper "Dynamic Routing Between Capsules" - State Of the Art
Tensorflow implementation of variational auto-encoder for MNIST
PyTorch Implementation of CycleGAN and SSGAN for Domain Transfer (Minimal)
A free audio dataset of spoken digits. Think MNIST for audio.
Handwritten digits classification from MNIST with TensorFlow on Android; Featuring Tutorial!
TensorFlow2教程 TensorFlow 2.0 Tutorial 入门教程实战案例
Experiments for understanding disentanglement in VAE latent representations
Pytorch implementation of conditional Generative Adversarial Networks (cGAN) and conditional Deep Convolutional Generative Adversarial Networks (cDCGAN) for MNIST dataset
Six snippets of code that made deep learning what it is today.
A curated list of dedicated resources and applications
Tensorflow Implementation of the paper [Neural Discrete Representation Learning](https://arxiv.org/abs/1711.00937) (VQ-VAE).
Simple Implementation of many GAN models with PyTorch.
A scratch implementation of Convolutional Neural Network in Python using only numpy and validated over CIFAR-10 & MNIST Dataset
Minimalist implementation of VQ-VAE in Pytorch
Generative Adversarial Network for MNIST with tensorflow
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Thank you for this fantastic work!
Could it be possible the fit_transform() method returns the KL divergence of the run?
Thx!