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Predict chessboard FEN layouts from images using TensorFlow
Find chessboard FEN from a screenshot using TensorflowJs
Tesseract Open Source OCR Engine (main repository)
DeepSpeech is an open source embedded (offline, on-device) speech-to-text engine which can run in real time on devices ranging from a Raspberry Pi 4 to high power GPU servers.
A Large Scale Text Summarization Dataset
The rewritten engine, originally for tensorflow. Now all other backends have been ported here.
An Implementation of Raft in .NET for prime-time - along with an eCommerce availability State Machine
exoticorn / stockfish-js
Forked from mcostalba/StockfishUCI chess engine compiled to Javascript
Low-level zero-overhead and the fastest LMDB .NET wrapper with some additional native methods useful for Spreads
A High-Performance Azure EventHubs Sink capable of buffering/batching
A clean implementation based on AlphaZero for any game in any framework + tutorial + Othello/Gobang/TicTacToe/Connect4 and more
My implementation of the Proximal Policy Optisation algorithm using Keras as a backend
OpenAI Baselines: high-quality implementations of reinforcement learning algorithms
PPO implementation for OpenAI gym environment based on Unity ML Agents
ASP.NET MVC 5.x, Web API 2.x, and Web Pages 3.x (not ASP.NET Core)
StarCraft 2 playing agents implemented for the PySC2 API
A starter agent that can solve a number of universe environments.
Python library for serializing any arbitrary object graph into JSON. It can take almost any Python object and turn the object into JSON. Additionally, it can reconstitute the object back into Python.
Minimal Deep Q Learning (DQN & DDQN) implementations in Keras
Helper scripts to install pip, in a Python installation that doesn't have it.
Reinforcement Learning environments based on the 1993 game Doom
Log-based transactional graph engine
A toolkit for developing and comparing reinforcement learning algorithms.