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Promptr is a CLI tool that applies plain language instructions to the filesystem. Instructions can utilize a liquidjs based templating system. Use cases include refactoring, code generation, and ex…
Pyramids of map tiles in a single file on static storage
Single-file executable tool for working with PMTiles archives
Verbum is a fully flexible text editor based on lexical framework.
Python Audio Analysis Library: Feature Extraction, Classification, Segmentation and Applications
Official Pytorch implementation of "OmniNet: A unified architecture for multi-modal multi-task learning" | Authors: Subhojeet Pramanik, Priyanka Agrawal, Aman Hussain
Reversing Apple's 3D satellite mode
Reproducing Character-Level-Language-Modeling with Deeper Self-Attention in PyTorch
A replica of the AlphaZero methodology for deep reinforcement learning in Python
Petition to open source Flash and Shockwave spec
A TensorFlow Implementation of the Transformer: Attention Is All You Need
Hootenanny conflates multiple maps into a single seamless map.
A TensorFlow implementation of the Differentiable Neural Computer.
Digit recognition with Convolutional Neural Networks in WebGL
aeneas is a Python/C library and a set of tools to automagically synchronize audio and text (aka forced alignment)
TensorFlow CNN for fast style transfer ⚡🖥🎨🖼
Super Resolution for images using deep learning.
Deep Learning papers reading roadmap for anyone who are eager to learn this amazing tech!
Run Keras models in the browser, with GPU support using WebGL
Code for Stanford CS224D: deep learning for natural language understanding
https://www.kaylinpavlik.com/50-years-of-pop-music/
Turn your two-bit doodles into fine artworks with deep neural networks, generate seamless textures from photos, transfer style from one image to another, perform example-based upscaling, but wait..…
Generating faces with deconvolution networks
Models and examples built with TensorFlow
Keras Implementation of Neural Style Transfer from the paper "A Neural Algorithm of Artistic Style" (http://arxiv.org/abs/1508.06576) in Keras 2.0+