AoE (AI on Edge,终端智能,边缘计算) 是一个终端侧AI集成运行时环境 (IRE),帮助开发者提升效率。
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Updated
Apr 12, 2023 - C++
AoE (AI on Edge,终端智能,边缘计算) 是一个终端侧AI集成运行时环境 (IRE),帮助开发者提升效率。
Convolutional Neural Network with CUDA (MNIST 99.23%)
ADAS is short for Adaptive Step Size, it's an optimizer that unlike other optimizers that just normalize the derivative, it fine-tunes the step size, truly making step size scheduling obsolete, achieving state-of-the-art training performance
A resource-conscious neural network implementation for MCUs
A C++ implementation to create, visualize and train Convolutional Neural Networks
C++ implementation of KDTree & kNN classification on MNIST
Deep Neural Network from scratch in C++ for learning purposes
C++ demo of deep neural networks (MLP, CNN)
Implementing CNN for Digit Recognition (MNIST and SVHN dataset) using PyTorch C++ API
A simple yet powerful C++17 implementation of deep neural networks from scratch. High efficient and vectorised implementation using OpenMp.
MNIST accelerator using binary qunatization on Xilinx pynq-z2
Collection of Machine Learning Algorithms
A node based deep neural network library on top of CuDNN
A CUDA project that implements optimizations of neural network operations on the GPU.
Mnist digits multi perceptron neural-network training from scratch with c++ and opencv matrix. (nn with c++)
Spiking Neural Network implementation in pure C++ with minimal dependencies
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