ohmnet

Feature learning algo

An algorithm for learning feature representations in multi-layer networks

OhmNet: Representation learning in multi-layer graphs

GitHub

79 stars
8 watching
33 forks
Language: Python
last commit: over 4 years ago
Linked from 1 awesome list

bioinformaticsdeep-learningfeature-learninggenomicsmulti-layerneural-embeddings

Backlinks from these awesome lists:

Related projects:

Repository Description Stars
mims-harvard/decagon An open-source software project implementing a graph convolutional neural network algorithm to predict side effects of drug combinations in pharmacology. 449
deepmimo/deepmimo-matlab Provides MATLAB code and dataset for training machine learning models in millimeter wave and massive MIMO systems 156
trekhleb/machine-learning-octave A repository providing MatLab/Octave examples and explanations of popular machine learning algorithms 852
mhlee0903/multi_channels_pinn Investigating neural networks for drug discovery using multiple chemical descriptors. 3
sahith02/machine-learning-algorithms A comprehensive resource for machine learning and deep learning algorithms 292
okerew/okrolearn A Python machine learning library providing efficient array operations and neural network functionality 3
jczic/micromlp A lightweight implementation of a multilayer perceptron neural network for use in embedded systems and microcontrollers 183
lasseufpa/5gm-data Datasets and code for machine learning in 5G mmWave MIMO systems involving mobility 85
mizor/machine-learning-ruby A Ruby implementation of common machine learning algorithms and techniques 13
aunum/goro A high-level machine learning library built on Gorgonia for Go that aims to provide an easy-to-use interface for building and training neural networks. 372
mitmath/18337 A course project on parallel computing and scientific machine learning using Julia programming language 225
microsoft/archai Automates the search for optimal neural network configurations in deep learning applications 467
locuslab/optnet A PyTorch module that adds differentiable optimization as a layer to neural networks 513
mikeizbicki/hlearn Developing a high-performance machine learning library that balances speed and flexibility in Haskell 1,622
mop/bier This project implements a deep metric learning framework using an adversarial auxiliary loss to improve robustness. 39