A multi-agent reinforcement learning environment
WARNING: This is a fork meant as an archive of the code used in our publications. Development is still active in the original repository. Please redirect any issues, PRs, or questions there.
Caution
The RWARE environment was updated to support the new Gymnasium interface in replacement of the deprecated gym=0.21
dependency (many thanks @LukasSchaefer). For backwards compatibility, please see Gymnasium compatibility documentation or use version v1.0.3 of the repository. The main changes to the interface are as follows:
obss = env.reset()
-->obss, info = env.reset()
obss, rewards, dones, info = env.step(actions)
-->obss, rewards, done, truncated, info = env.step(actions)
done
is given as single boolean value instead of onebool
value per agent- You can give the reset function a particular seed with
obss, info = env.reset(seed=42)
to initialise a particular episode.
The multi-robot warehouse (RWARE) environment simulates a warehouse with robots moving and delivering requested goods. The simulator is inspired by real-world applications, in which robots pick-up shelves and deliver them to a workstation. Humans access the content of a shelf, and then robots can return them to empty shelf locations.
The environment is configurable: it allows for different sizes (difficulty), number of agents, communication capabilities, and reward settings (cooperative/individual). Of course, the parameters used in each experiment must be clearly reported to allow for fair comparisons between algorithms.
Below is an illustration of a small (10x20) warehouse with four trained agents. Agents have been trained with the SEAC algorithm [2]. This visualisation can be achieved using the env.render()
function as described later.
In this simulation, robots have the following discrete action space:
A={ Turn Left, Turn Right, Forward, Load/Unload Shelf }
The first three actions allow each robot only to rotate and move forward. Loading/Unloading only works when an agent is beneath a shelf on one of the predesignated locations.
The observation of an agent is partially observable and consists of a 3x3 (configurable) square centred on the agent. Inside this limited grid, all entities are observable:
- The location, the rotation and whether the agent is carrying a shelf.
- The location and rotation of other robots.
- Shelves and whether they are currently in the request queue.
The dynamics of the environment are also of particular interest. Like a real, 3-dimensional warehouse, the robots can move beneath the shelves. Of course, when the robots are loaded, they must use the corridors, avoiding any standing shelves.
Any collisions are resolved in a way that allows for maximum mobility. When two or more agents attempt to move to the same location, we prioritise the one that also blocks others. Otherwise, the selection is done arbitrarily. The visuals below demonstrate the resolution of various collisions.
Example 1 | Example 2 | Example 3 |
---|---|---|
At each time a set number of shelves R is requested. When a requested shelf is brought to a goal location, another shelf is uniformly sampled and added to the current requests. Agents are rewarded for successfully delivering a requested shelf to a goal location, with a reward of 1. A significant challenge in these environments is for agents to deliver requested shelves but also finding an empty location to return the previously delivered shelf. Having multiple steps between deliveries leads a very sparse reward signal.
The multi-robot warehouse task is parameterised by:
- The size of the warehouse which is preset to either tiny (10x11), small (10x20), medium (16x20), or large (16x29).
- The number of agents N.
- The number of requested shelves R. By default R=N, but easy and hard variations of the environment use R = 2N and R = N/2, respectively.
Note that R directly affects the difficulty of the environment. A small R, especially on a larger grid, dramatically affects the sparsity of the reward and thus exploration: randomly bringing the correct shelf becomes increasingly improbable.
While RWARE allows fine tuning of multiple parameters when using the Warehouse class, it also registers multiple default environments with Gymnasium for simplicity.
The registered names look like rware-tiny-2ag-v1
and might cryptic in the beginning, but it is not actually complicated. Every name always starts with rware. Next, the map size is appended as -tiny, -small, -medium, or -large. The number of robots in the map is selected as Xag with X being a number larger than one (e.g. -4ag for 4 agents). A difficulty modifier is optionally appended in the form of -easy or -hard, making requested shelves twice or half the number of agents (see section Rewards). Finally -v2 is the version as required for Gymnasium. In the time of writing all environments are v1, but we will increase it during changes or bugfixes.
A few examples:
import gymnasium as gym
import rware
env = gym.make("rware-tiny-2ag-v2")
env = gym.make("rware-small-4ag-v2")
env = gym.make("rware-medium-6ag-hard-v2")
Of course, more settings are available, but have to be changed during environment creation. For example:
import gymnasium as gym
import rware
env = gym.make("rware-tiny-2ag-v2", sensor_range=3, request_queue_size=6)
You can design a custom warehouse layout with the following:
import gymnasium as gym
import rware
layout = """
.......
...x...
..x.x..
.x...x.
..x.x..
...x...
.g...g.
"""
env = gym.make("rware:rware-tiny-2ag-v2", layout=layout)
This will transform "X"s to shelves and "G"s to goal locations with a result like the one below:
A detailed explanation of all parameters can be found here
Assuming you have Python3 (preferably on a virtual environment: venv or Anaconda) installed, you can use PyPI:
pip install rware
If you prefer to have the code available and be able to edit it, you can use Git to download and install it:
git clone [email protected]:uoe-agents/robotic-warehouse.git
cd robotic-warehouse
pip install -e .
RWARE was designed to be compatible with Open AI's Gym framework.
Creating the environment is done exactly as one would create a Gym environment:
import gymnasium as gym
import rware
env = gym.make("rware-tiny-2ag-v2")
You can even bypass the import
statement with Gym, and directly use:
import gymnasium as gym
env = gym.make("rware:rware-tiny-2ag-v2")
The rware:
in the beginning of the environment name tells Gym to import the respective package.
The number of agents, the observation space, and the action space are accessed using:
env.n_agents # 2
env.action_space # Tuple(Discrete(5), Discrete(5))
env.observation_space # Tuple(Box(XX,), Box(XX,))
The returned spaces are from the Gym library (gym.spaces
) Each element of the tuple corresponds to an agent, meaning that len(env.action_space) == env.n_agents
and len(env.observation_space) == env.n_agents
are always true.
The reset and step functions again are identical to Gym:
obs = env.reset() # a tuple of observations
actions = env.action_space.sample() # the action space can be sampled
print(actions) # (1, 0)
n_obs, reward, done, info = env.step(actions)
print(done) # False
print(reward) # [0.0, 0.0]
which leaves as to the only difference with Gym: the rewards and the done flag are lists, and each element corresponds to the respective agent.
Finally, the environment can be rendered for debugging purposes:
env.render()
and should be closed before terminating:
env.close()
We also provide a simple script that allows you to play the environment as a human. This is useful for debugging and understanding the environment dynamics. To play the environment, run the following command:
python human_play.py --env <env_name>
where <env_name>
is the name of the environment you want to play. For example, to play the tiny environment with 2 agents, run:
python human_play.py --env rware-tiny-2ag-v2
Within the script, you can control a single agent at the time using the following keys:
- Up Arrow keys: move current agent forward
- Left/ Right Arrow keys: rotate current agent left/ right
- P/ L: pickup/ drop shelf
- SPACE: do nothing
- TAB: change the current agent (rotates through all agents)
- R: reset the environment and start a new episode
- H: show help
- D: display agent info (at every time step)
- ESC: exit
If you use this environment, consider citing
- A comperative evaluation of MARL algorithms that includes this environment
@inproceedings{papoudakis2021benchmarking,
title={Benchmarking Multi-Agent Deep Reinforcement Learning Algorithms in Cooperative Tasks},
author={Georgios Papoudakis and Filippos Christianos and Lukas Schäfer and Stefano V. Albrecht},
booktitle = {Proceedings of the Neural Information Processing Systems Track on Datasets and Benchmarks (NeurIPS)},
year={2021},
url = {http://arxiv.org/abs/2006.07869},
openreview = {https://openreview.net/forum?id=cIrPX-Sn5n},
code = {https://github.com/uoe-agents/epymarl},
}
- A method that achieves state-of-the-art performance in the robotic warehouse task
@inproceedings{christianos2020shared,
author = {Christianos, Filippos and Sch\"{a}fer, Lukas and Albrecht, Stefano},
booktitle = {Advances in Neural Information Processing Systems},
editor = {H. Larochelle and M. Ranzato and R. Hadsell and M. F. Balcan and H. Lin},
pages = {10707--10717},
publisher = {Curran Associates, Inc.},
title = {Shared Experience Actor-Critic for Multi-Agent Reinforcement Learning},
url = {https://proceedings.neurips.cc/paper/2020/file/7967cc8e3ab559e68cc944c44b1cf3e8-Paper.pdf},
volume = {33},
year = {2020}
}