RTNeural
Inferencing Engine
Provides a lightweight neural network inferencing engine for real-time systems
Real-time neural network inferencing
601 stars
24 watching
60 forks
Language: C++
last commit: 8 days ago
Linked from 1 awesome list
Related projects:
Repository | Description | Stars |
---|---|---|
torontodeeplearning/convnet | A high-performance GPU implementation of neural networks using C++ | 506 |
emlearn/emlearn | A machine learning inference engine designed to be portable and efficient for embedded systems with minimal dependencies. | 511 |
netonjm/chipmunksharp | A C# implementation of a 2D physics engine with advanced collision detection and rigid body dynamics. | 80 |
xboot/libonnx | A lightweight onnx inference engine for embedded devices with hardware acceleration support | 583 |
100/cranium | A lightweight, portable C implementation of a feedforward artificial neural network library | 592 |
fengwang/ceras | An open-source C++ library for building and training neural networks | 120 |
ahmedfgad/numpycnn | Builds convolutional neural networks from scratch using NumPy | 572 |
paarthneekhara/rnn_adversarial_reprogramming | Repurposes pre-trained neural networks for new classification tasks through adversarial reprogramming of their inputs. | 6 |
japonophile/synaptic | A Clojure-based library for building and training neural networks | 88 |
kalvar/ios-multi-perceptron-neuralnetwork | An implementation of a multi-layer perceptron neural network with backpropagation for machine learning tasks on iOS. | 24 |
zhenqincn/fedapen | An implementation of cross-silo federated learning with adaptability to statistical heterogeneity | 10 |
hyeongseokson1/cnn_deconvolution | Improves deconvolution performance using a Convolutional Neural Network | 22 |
jedld/brains-jruby | An implementation of a feedforward neural network toolkit for JRuby | 60 |
jordipons/icassp2017 | Designs efficient architectures for modeling temporal features with deep learning networks | 16 |
emited/variationalrecurrentneuralnetwork | A deep learning implementation of a VRNN model for sequential data processing | 283 |