Capsule Network implementation in Tensorflow
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Updated
Oct 15, 2019 - Python
Capsule Network implementation in Tensorflow
A Neural Network implemented from scratch as per http://neuralnetworksanddeeplearning.com/ in Rust. This is then trained on MNIST. This is also used in Rust-NN-Web project to compile to WASM and recognize digits.
Java read Tensorflow model created at Deep MNIST for Experts
Child repository of Deep-learning-with-PyTorch-and-GCP
"THE MNIST DATABASE of handwritten digits" DataReader http://yann.lecun.com/exdb/mnist/
Convert data in IDX format in MNIST Dataset to Numpy Array using Python
Quantum MNIST using amplitude encoding instead of dimensionality reduction.
Improved implementation of Tariq Rashid's "Make Your Own Neural Network"
MNIST handwritten digit classification using PyTorch
Implementation of the original VAT (Virtual Adversarial Training) paper in Keras.
Problems Identification: This project involves the implementation of efficient and effective KNN classifiers on MNIST data set. The MNIST data comprises of digital images of several digits ranging from 0 to 9. Each image is 28 x 28 pixels. Thus, the data set has 10 levels of classes.
This is a Java implementation of a simple 3-layer neural network that interprets handwritten digits.
This repository contains the implementation and visualization of some autoencoders for latent space pattern-learning
Child repository of Deep-learning-with-PyTorch-and-GCP
Assignment submissions for CSCI 5622 at CU Boulder
UIUC IRisk Lab: Neural Network from Scratch
An american sign language recognition task using CNN and machine learning algorithms
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