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hamiltonian-nn
Code for our paper "Hamiltonian Neural Networks"scribe
Realistic Handwriting with Tensorflowbaby-a3c
A high-performance Atari A3C agent in 180 lines of PyTorchcrypto-rnn
Learning the Enigma with Recurrent Neural Networksvisualize_atari
Code for our paper "Visualizing and Understanding Atari Agents" (https://goo.gl/AMAoSc)mnist1d
A 1D analogue of the MNIST dataset for measuring spatial biases and answering Science of Deep Learning questions.pythonic_ocr
A convolutional neural network implemented in pure numpy.excitationbp
Visualizing how deep networks make decisionsdnc
Differentiable Neural Computer in TensorFlowoptimize_wing
We simulate a wind tunnel, place a rectangular occlusion in it, and then use gradient descent to turn the occlusion into a wing.psi0nn
A neural network quantum ground state solverncf
Nature's Cost Function (NCF). Finding paths of least action with gradient descent.greydanus.github.io
My academic blogstructural_optimization
Coding structural optimization, from scratch, in 200 lines of Pythonstereograms
Code for playing with random dot stereograms.mr_london
A LSTM recurrent neural network implemented in pure numpymnist-gan
Generative Adversarial Networks for the MNIST datasetrlzoo
A central location for my reinforcement learning experimentssubspace-nn
Optimizing neural networks in subspacesnp_nets
Neural network experiments written purely in numpyfractal_tree
A numerical model of fractal dynamicsstudying_growth
Studying Cell Growth with Neural Cellular Automatapiecewise_node
Temporal abstraction for autoregressive samplingregularization
I use a one-layer neural network trained on the MNIST dataset to give an intuition for how common regularization techniques affect learning.compton
Exploring the quantum nature of light with compton scatteringfriendly_qlearning
Exploring social behavior with qLearning agentsdeep_thesaurus
Use a pretrained NLP model to rank thesaurus suggestionsartiste
The idea here was to teach an RNN to draw, pixel by pixel, over a template image using DDPGbaselines
Simple MNIST baselines for 1) numpy backprop 2) dense nns 3) cnns 3) seq2seqbilliards
A simple RL environment for studying planning.Love Open Source and this site? Check out how you can help us