Data science teaching materials
-
Updated
Oct 9, 2024 - Jupyter Notebook
Data science teaching materials
A neural network library written from scratch in Rust along with a web-based application for building + training neural networks + visualizing their outputs
🤖 A TypeScript version of karpathy/micrograd — a tiny scalar-valued autograd engine and a neural net on top of it
An Open Convolutional Neural Network Framework in C++ From Scratch
Deep learning library in python from scratch
My first ML sandbox
Unsupervised Deep Learning-based Pansharpening with Jointly-Enhanced Spectral and Spatial Fidelity
Neural Networks Fundamentals with Python – implementing neural networks from scratch
deep learning from scratch. uses numpy/cupy, trains in GPU, follows pytorch API
Lightweight, easy to use, micro neural network framework written in Rust w/ no python dependencies
Let's build Neural Networks from scratch.
Matrix-Vector Library Designed for Neural Network Construction. cuda (gpu) support, openmp (multithreaded cpu) support, partial support of BLAS, expression template based implementation PTX code generation identical to hand written kernels, and support for auto-differentiation
Neural nets for high accuracy multivariable nonlinear regression.
Learn to build neural networks from scratch, simply. No autograd, no deep learning libraries - just numpy.
XOR gate which predicts the output using Neural Network 🔥
Neural Network with VHDL and matlab
This is my first Deep Learning project, which is a MNIST hand-written digits classifier. The model is implemented completely from scratch WITHOUT using any prebuilt optimization like Tensorflow or Pytorch. Tensorflow is imported only to load the MNIST data set. This model also uses 2 hidden layers with Adaptive Moment Optimization (Adam) and Dro…
Pure Python Simple Neural Network (SNN) library
PyTorch implementation of Neural Style Transfer
JABACAT-created machine learning library from scratch.
Add a description, image, and links to the neural-networks-from-scratch topic page so that developers can more easily learn about it.
To associate your repository with the neural-networks-from-scratch topic, visit your repo's landing page and select "manage topics."