Implementation of Alphafold 3 in Pytorch
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Updated
Jul 7, 2024 - Python
Deep learning is an AI function and a subset of machine learning, used for processing large amounts of complex data. Deep learning can automatically create algorithms based on data patterns.
Implementation of Alphafold 3 in Pytorch
🛠️An easy to use tool for Data Preprocessing specially for Text Preprocessing
Deep neural network models implemented from scratch in PyTorch for time series forecasting
This repository implements a Convolutional Neural Network (CNN) for classifying and predicting biomaterial attachment levels. It supports both regression and classification tasks, enabling precise analysis of biomaterial interactions.
Virtual 3D clones of hands tracked by webcam.
CKA (Centered Kernel Alignment) implemented in PyTorch
WebApps in pure Python. No JavaScript, HTML and CSS needed
"Plant Disease Identification for Improved Agriculture" presents a curated selection of CNN models, including AlexNet, DenseNet121, and EfficientNetB0, achieving up to 99.94% accuracy in detecting plant diseases through image analysis. This repository demonstrates the power of deep learning combined with ensemble techniques to enhance precision.
A collection of scripts to download data, train and evaluate an image classifier on Open Images using TensorFlow
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Tensors and Dynamic neural networks in Python with strong GPU acceleration
Desktop app for automatically translating comics - BDs, Manga, Manhwa, Fumetti and more in a variety of formats (Image, Pdf, Epub, cbr, cbz, etc) and in multiple languages.
Interactive chatbot for nishauri
Deep Learning for humans
Pytorch implementation of preconditioned stochastic gradient descent (affine group preconditioner, low-rank approximation preconditioner and more)
Laplace approximations for Deep Learning.
Ray is a unified framework for scaling AI and Python applications. Ray consists of a core distributed runtime and a set of AI Libraries for accelerating ML workloads.
Parallel Reverse Mode Automatic Differentiation in C# for Custom Neural Network Development
image stitching using superglue