222464 / ERLLinks
ERL - Evolved Reinforcement Learner
☆42Updated 10 years ago
Alternatives and similar repositories for ERL
Users that are interested in ERL are comparing it to the libraries listed below
Sorting:
- Neocortex-like reinforcement learning that runs on the GPU or CPU (OpenCL)☆69Updated 9 years ago
- A large collection of mostly reinforcement learning agents.☆84Updated 10 years ago
- ☆183Updated 10 years ago
- A continuous implementation of hierarchical temporal memory on the GPU☆39Updated 10 years ago
- Defines a Python client API to allow OpenCog experiments to be written as short Python scripts.☆21Updated 11 years ago
- An implementation of a generalized version of the Long Short-Term Memory neural network architecture and algorithm, one of the most power…☆137Updated 7 years ago
- The online textbook Probabilistic Models of Cognition☆169Updated 8 years ago
- An implementation of the MANIC cognitive architecture.☆39Updated 8 years ago
- NuPIC Studio is a powerful all-in-one tool that allows users create a HTM neural network from scratch, train it, collect statistics, an…☆96Updated 5 years ago
- Python bindings to HTFE☆33Updated 10 years ago
- ☆150Updated 9 years ago
- example of using LSTM Networks to generate Monet - like paintings☆83Updated 10 years ago
- A Goal-Oriented Approach to Knowledge Discovery in Multi-Agent Systems☆45Updated 8 years ago
- ☆171Updated 9 years ago
- Deep learning for hackers: a hands-on approach to machine learning and deep learning.☆67Updated 10 years ago
- Common interface for Theano, CGT, and TensorFlow☆238Updated 9 years ago
- Neural Turing Machine☆32Updated 8 years ago
- A variant of HTM where spatial and temporal pooling are accomplished with the same mechanism☆13Updated 10 years ago
- Introduction tutorials to deep learning with Theano and OpenDeep☆51Updated 10 years ago
- Multi-GPU reinforcement learning using Deep Q-Network in TensorFlow for OpenAI Gym☆183Updated 9 years ago
- Speed up your Neural Network with Theano and the GPU☆62Updated 10 years ago
- Links to ICML 2015 papers available on arxiv