N2D2

NN simulator

A CAD framework for designing and simulating Deep Neural Networks on embedded platforms

N2D2 is an open source CAD framework for Deep Neural Network simulation and full DNN-based applications building.

GitHub

147 stars
15 watching
35 forks
Language: C
last commit: 5 months ago
Linked from 1 awesome list

artificial-intelligencedeep-learningdeep-learning-librarydeep-neural-networksmachine-learningneural-networkspike-inference

Backlinks from these awesome lists:

Related projects:

Repository Description Stars
antoniodeluca/dn2a A toolkit for building and training dynamic neural networks 463
brian-team/brian2 A simulator for spiking neural networks written in Python 943
codeplea/genann A minimal C library for training and using feedforward artificial neural networks 2,010
nardo/tnl2 A high-level networking API for real-time simulations with remote procedure call and object state replication primitives 25
cedergrouphub/chgnet A neural network potential for atomistic modeling 252
jimmy-ren/vcnn_double-bladed A GPU-enabled vectorized implementation of CNNs for computer vision tasks 136
fengwang/ceras An open-source C++ library for building and training neural networks 120
guanghan/darknet An implementation of a neural network framework for computer vision tasks, supporting both CPU and GPU computation. 243
catalystneuro/ndx-simulation-output An extension for large-scale simulation data in neurophysiology research 4
aspurdy/dbn A MATLAB implementation of a deep belief network used for generative learning and visualization of the neural network simulation process. 48
torontodeeplearning/convnet A high-performance GPU implementation of neural networks using C++ 506
ahmedfgad/numpyann An implementation of artificial neural networks using NumPy 98
nngen/nngen Generates hardware-specific accelerator designs for neural networks 339
davidepatti/noxim A software tool for simulating and analyzing Network-on-Chip architectures in computer networks 239
taolei87/rcnn An implementation of neural network components and optimization methods for text analysis, including rationales for neural predictions. 355