SaLinA: SaLinA - A Flexible and Simple Library for Learning Sequential Agents (including Reinforcement Learning)
salina
is a lightweight library extending PyTorch modules for developping sequential decision models. It can be used for Reinforcement Learning (including model-based with differentiable environments, multi-agent RL, ...), but also in a supervised/unsupervised learning settings (for instance for NLP, Computer Vision, etc..).
- It allows to write very complex sequential models (or policies) in few lines
- It works on multiple CPUs and GPUs
- Just clone the repo
- Principles of the library
- Examples and Algorithms
- Tutorial through multiple A2C implementations
- Reinforcement Learning Benchmark
- Video Tutorials:
- Arxiv Paper
For development, set up pre-commit hooks:
- Run
pip install pre-commit
- or
conda install -c conda-forge pre-commit
- or
brew install pre-commit
- or
- In the top directory of the repo, run
pre-commit install
to set up the git hook scripts - Now
pre-commit
will run automatically ongit commit
! - Currently isort, black and blacken-docs are used, in that order
- salina is the core library
-
- salina.agents is the catalog of agents (the same than
torch.nn
but for agents)
- salina.agents is the catalog of agents (the same than
- salina_examples provide many examples (in different domains)
salina
is making use of pytorch
, hydra
for configuring experiments, and of gym
for reinforcement learning algorithms.
We provide a simple Logger that logs in both tensorboard format, but also as pickle files that can be re-read to make tables and figures. See logger. This logger can be easily replaced by any other logger.
Sequential Decision Making is much more than Reinforcement learning
- Sequential Decision Making is about interactions:
- Interaction with data (e.g attention-models, decision tree, cascade models, active sensing, active learning, recommendation, etc….)
- Interaction with an environment (e.g games, control)
- Interaction with humans (e.g recommender systems, dialog systems, health systems, …)
- Interaction with a model of the world (e.g simulation)
- Interaction between multiple entities (e.g multi-agent RL)
-
A sandbox for developping sequential models at scale.
-
A small (300 hundred lines) 'core' code that defines everything you will use to implement
agents
involved in sequential decision learning systems. -
- It is easy to understand and to use since it keeps the main principles of pytorch, just extending
nn.Module
toAgent
that handle tthe temporal dimension.
- It is easy to understand and to use since it keeps the main principles of pytorch, just extending
A set of agents that can be combined (like pytorch modules) to obtain complex behaviors
- A set of references implementations and examples in different domains Reinforcement learning, Imitation Learning, Computer Vision, ... (more to come..)
- Yet another reinforcement learning framework:
salina
is focused on sequential decision making in general. It can be used for RL (which is our main current use-case), but also for supervised learning, attention models, multi-agent learning, planning, control, cascade models, recommender systems,... - A
library
: salina is just a small layer on top of pytorch that encourages good practices for implementing sequential models. It thus very simple to understand and to use, but very powerful.
Please use this bibtex if you want to cite this repository in your publications:
Link to the paper: SaLinA: Sequential Learning of Agents
@misc{salina,
author = {Ludovic Denoyer, Alfredo de la Fuente, Song Duong, Jean-Baptiste Gaya, Pierre-Alexandre Kamienny, Daniel H. Thompson},
title = {SaLinA: Sequential Learning of Agents},
year = {2021},
publisher = {Arxiv},
howpublished = {\url{https://gitHub.com/facebookresearch/salina}},
}
- Learning a subspace of policies for online adaptation in Reinforcement Learning. Jean-Baptiste Gaya, Laure Soulier, Ludovic Denoyer - Arxiv
salina
is released under the MIT license. See LICENSE for additional details about it.
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