An OS which is all about learning!
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Updated
May 27, 2026 - Rust
An OS which is all about learning!
A from-scratch AlphaFold2 in PyTorch designed to make one of the most important and complex ML architectures readable, hackable, and ablatable.
A from-scratch implementation of a feedforward neural network in C# (.NET 8) without using any machine learning frameworks.
A convolutional neural network (CNN) built from scratch using only NumPy to classify handwritten digits from the MNIST dataset.
Educational, from-scratch implementation of a LLaMA-style LLM using PyTorch to explore Transformer architecture fundamentals.
A decoder-only Transformer built from scratch using CuPy only — no PyTorch, no autograd, no magic. Every forward pass, backward pass, and gradient derived and implemented by hand. Includes full training loop, Adam optimizer, LayerNorm, and causal self-attention on GPU.
From-scratch PyTorch implementations of transformer components, BPE, decoding strategies, manual backprop, and RL.
Implementation of KNN and Gaussian Naive-Bayes algorithms to classify phishing URLs. Built from scratch and compared with scikit-learn versions.
This project demonstrates how to build and train a feedforward neural network from scratch using only NumPy, without any high-level deep learning libraries like TensorFlow or PyTorch. The model is trained on the MNIST digit classification dataset and achieves competitive accuracy.
From-scratch C++17 LiDAR + camera perception — sector RANSAC, LiDAR-inertial SLAM, MOT, probabilistic traversability, CBF safety. 13 engineering deep-dives.
ML algorithms implemented from scratch in Python, with small projects for better understanding.
A minimalist, CUDA-native deep learning library featuring a custom autograd system and a PyTorch-inspired API, built to explore framework internals and GPU-accelerated computing.
MapReduce POC Implementation
"Learn Linear Regression: A Python implementation from scratch with dataset generation and visualization" as it's both informative and engaging.
From-scratch implementation of binary Logistic Regression using NumPy, with vectorized cost computation, gradient calculation, and batch gradient descent optimization.
A curl implementation written in python3.
Manual implementation of backpropagation on a custom computational graph with gradient checking. Benchmarks Vanilla SGD, Momentum, and Adam optimizers from first principles using NumPy.
From-scratch implementation of Linear SVM, RBF SVM (with SMO algorithm), and Logistic Regression for wine quality classification
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