Skip to content

A Production-ready Reinforcement Learning AI Agent Library brought by the Applied Reinforcement Learning team at Meta.

License

Notifications You must be signed in to change notification settings

IDproIT/Pearl

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

14 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

alt

Pearl - A Production-ready Reinforcement Learning AI Agent Library

Proudly brought by Applied Reinforcement Learning @ Meta

License: MIT Support Ukraine

More details of the library at our official website.

The Pearl paper is available at Arxiv.

Overview

Pearl is a new production-ready Reinforcement Learning AI agent library open-sourced by the Applied Reinforcement Learning team at Meta. Furthering our efforts on open AI innovation, Pearl enables researchers and practitioners to develop Reinforcement Learning AI agents. These AI agents prioritize cumulative long-term feedback over immediate feedback and can adapt to environments with limited observability, sparse feedback, and high stochasticity. We hope that Pearl offers the community a means to build state-of-the-art Reinforcement Learning AI agents that can adapt to a wide range of complex production environments.

Getting Started

Installation

To install Pearl, you can simply clone this repo and pip install

git clone https://github.com/facebookresearch/Pearl.git
cd Pearl
pip install -e .

Quick Start

NeurIPS EXPO Tutorial Colab: Link

To kick off a Pearl agent with a classic reinforcement learning environment, here's a quick example.

from pearl.pearl_agent import PearlAgent
from pearl.action_representation_modules.one_hot_action_representation_module import (
    OneHotActionTensorRepresentationModule,
)
from pearl.policy_learners.sequential_decision_making.deep_q_learning import (
    DeepQLearning,
)
from pearl.replay_buffers.sequential_decision_making.fifo_off_policy_replay_buffer import (
    FIFOOffPolicyReplayBuffer,
)
from pearl.utils.instantiations.environments.gym_environment import GymEnvironment

env = GymEnvironment("CartPole-v1")

num_actions = env.action_space.n
agent = PearlAgent(
    policy_learner=DeepQLearning(
        state_dim=env.observation_space.shape[0],
        action_space=env.action_space,
        hidden_dims=[64, 64],
        training_rounds=20,
        action_representation_module=OneHotActionTensorRepresentationModule(
            max_number_actions=num_actions
        ),
    ),
    replay_buffer=FIFOOffPolicyReplayBuffer(10_000),
)

observation, action_space = env.reset()
agent.reset(observation, action_space)
done = False
while not done:
    action = agent.act(exploit=False)
    action_result = env.step(action)
    agent.observe(action_result)
    agent.learn()
    done = action_result.done

More detailed tutorial will be presented at NeurIPS 2023 EXPO presentation (12/10/2023, 4 pm to 6 pm). Users can replace the environment with any real-world problems.

Design and Features

alt Pearl was built with a modular design so that industry practitioners or academic researchers can select any subset and flexibly combine features below to construct a Pearl agent customized for their specific use cases. Pearl offers a diverse set of unique features for production environments, including dynamic action spaces, offline learning, intelligent neural exploration, safe decision making, history summarization, and data augmentation.

You can find many Pearl agent candidates with mix-and-match set of reinforcement learning features in utils/scripts/benchmark_config.py

Adoption in Real-world Applications

Pearl is in progress supporting real-world applications, including recommender systems, auction bidding systems and creative selection. Each of them requires a subset of features offered by Pearl. To visualize the subset of features used by each of the applications above, see the table below.

Pearl Features Recommender Systems Auction Bidding Creative Selection
Policy Learning
Intelligent Exploration
Safety
History Summarization
Replay Buffer
Contextual Bandit
Offline RL
Dynamic Action Space
Large-scale Neural Network

Comparison to Other Libraries

Pearl Features Pearl ReAgent (Superseded by Pearl) RLLib SB3 Tianshou Dopamine
Agent Modularity
Dynamic Action Space
Offline RL
Intelligent Exploration ⚪ (limited support)
Contextual Bandit ⚪ (only linear support)
Safe Decision Making
History Summarization ⚪ (requires modifying environment state)
Data Augmented Replay Buffer

Cite Us

@misc{pearl2023paper,
    title = {Pearl: A Production-ready Reinforcement Learning AI Agent Library},
    author = {Zheqing Zhu, Rodrigo de Salvo Braz, Jalaj Bhandari, Daniel Jiang, Yi Wan, Yonathan Efroni, Ruiyang Xu, Liyuan Wang, Hongbo Guo, Alex Nikulkov, Dmytro Korenkevych, Urun Dogan, Frank Cheng, Zheng Wu, Wanqiao Xu},
    year = 2023,
    eprint = {arXiv:2310.07786}
}

License

Pearl is MIT licensed, as found in the LICENSE file.

About

A Production-ready Reinforcement Learning AI Agent Library brought by the Applied Reinforcement Learning team at Meta.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%