rcnn

Neural network framework

An implementation of neural network components and optimization methods for text analysis, including rationales for neural predictions.

Recurrent & convolutional neural network modules

GitHub

355 stars
23 watching
129 forks
Language: Python
last commit: over 6 years ago

Related projects:

Repository Description Stars
swift-ai/neuralnet A Swift implementation of a fully connected, feed-forward artificial neural network for deep learning and machine learning applications. 211
guanghan/darknet An implementation of a neural network framework for computer vision tasks, supporting both CPU and GPU computation. 243
idsia/brainstorm A neural network framework designed to make working with neural networks fast and flexible. 1,303
taolei87/sru A recurrent neural network implementation optimized for speed and parallelizability 31
antoniodeluca/dn2a A toolkit for building and training dynamic neural networks 463
jimmy-ren/vcnn_double-bladed A GPU-enabled vectorized implementation of CNNs for computer vision tasks 136
alpmestan/hnn A Haskell library providing a basic framework for building neural networks. 112
hshindo/merlin.jl A Julia-based framework for building and training neural networks 144
modern-fortran/neural-fortran A parallel framework for building neural networks in Fortran 406
zhou13/lcnn A neural network framework for wireframe parsing from images 505
irfansharif/cerebrum An implementation of Artificial Neural Networks in Ruby, allowing developers to experiment and train neural networks using the language. 36
synsense/rockpool A Python library for building and deploying signal processing applications with spiking neural networks on various hardware platforms. 52
rocm/mxnet A deep learning framework that enables efficient and flexible distributed/mobile deep learning with dynamic dataflow dependency scheduling 28
codeplea/genann A minimal C library for training and using feedforward artificial neural networks 2,010
molcik/python-neuron A Python library for implementing and training various neural network architectures 40