levelupai / waldorf
Waldorf is an efficient, parallel task execution framework written in Python.
☆20Updated last year
Related projects ⓘ
Alternatives and complementary repositories for waldorf
- Playing Wechat Jump Game with End-to-End Convolutional Neural Networks☆180Updated 6 years ago
- Python wrapper for TorchCraft. (In progress)☆71Updated 7 years ago
- ☆47Updated 8 years ago
- ☆18Updated 8 years ago
- Reinforcement Learning and Transfer Learning based StarCraft Micromanagement☆101Updated 7 years ago
- AlphaGo-paper☆54Updated 5 years ago
- Deep reinforcement learning with TensorFlow☆47Updated 7 years ago
- this is my presentaion area .个人演讲稿展示区,主要展示一些平时的个人演讲稿或者心得之类的,☆57Updated 4 years ago
- Parallelizing Stochastic Gradient Descent for Deep Convolutional Neural Network☆45Updated 8 years ago
- 7th in a competition organised by ICT☆24Updated 8 years ago
- Series Algorithms of Deep Reinforcement Learning, such as DQN, DDQN, one-step-DQN, DDPG, etc☆41Updated 8 years ago
- Hybrid Linear UCB bandit learning algorithm L Li(2010) python code☆56Updated 8 years ago
- Monte Carlo Tree Search (MCTS) ,realize using python☆12Updated 8 years ago
- ☆47Updated last year
- LASER-A Scalable Response Prediction Platform For Online Advertising☆47Updated 10 years ago
- Add-on for OpenAI Gym that supports automatic downloading of user environments.☆45Updated 7 years ago
- StarCraft AI bot☆63Updated 5 years ago
- MXNet for CTR☆51Updated 7 years ago
- Online Random Bit Regression with FTRL-Proximal in Python☆75Updated 8 years ago
- Using Asynchronous Deep Reinforcement Learning to play Flappy Bird from pixel input.☆30Updated 7 years ago
- Lightweight, Portable, Flexible Distributed/Mobile Deep Learning with Dynamic, Mutation-aware Dataflow Dep Scheduler; for Python, R, Juli…☆13Updated 7 years ago
- ☆83Updated 5 years ago
- ☆24Updated 3 years ago
- DDPG on OpenAI Gym Pendulum☆19Updated 8 years ago
- A benchmarking framework supporting the experiments in KDD'14 paper "Optimal Real-Time Bidding for Display Advertising"☆103Updated 10 years ago