RLDS
RLDS stands for Reinforcement Learning Datasets and it is an ecosystem of tools to store, retrieve and manipulate episodic data in the context of Sequential Decision Making including Reinforcement Learning (RL), Learning for Demonstrations, Offline RL or Imitation Learning.
This repository includes a library for manipulating RLDS compliant datasets. For other parts of the pipeline please refer to:
- EnvLogger to create synthetic datasets
- RLDS Creator to create datasets where a human interacts with an environment.
- TFDS for existing RL datasets.
QuickStart & Colabs
See how to use RLDS in this tutorial.
You can find more examples in the following colabs:
Dataset Format
The dataset is retrieved as a tf.data.Dataset
of Episodes where each episode contains a tf.data.Dataset
of steps.
-
Episode: dictionary that contains a
tf.data.Dataset
of Steps, and metadata. -
Step: dictionary that contains:
observation
: current observationaction
: action taken in the current observationreward
: return after appyling the action to the current observationis_terminal
: if this is a terminal stepis_first
: if this is the first step of an episode that contains the initial state.is_last
: if this is the last step of an episode, that contains the last observation. When true,action
,reward
anddiscount
, and other cutom fields subsequent to the observation are considered invalid.discount
: discount factor at this step.- extra metadata
When
is_terminal = True
, theobservation
corresponds to a final state, soreward
,discount
andaction
are meaningless. Depending on the environment, the finalobservation
may also be meaningless.If an episode ends in a step where
is_terminal = False
, it means that this episode has been truncated. In this case, depending on the environment, the action, reward and discount might be empty as well.
How to create a dataset
Although you can read datasets with the RLDS format even if they were not created with our tools (for example, by adding them to TFDS), we recommend the use of EnvLogger and RLDS Creator as they ensure that the data is stored in a lossless fashion and compatible with RLDS.
Synthetic datasets
Envlogger provides a dm_env Environment
class wrapper that records interactions between a real environment and an agent.
env = envloger.EnvironmentLogger(
environment,
data_directory=`/tmp/mydataset`)
Besides, two callbacks can be passed to the EnviromentLogger
constructor to store per-step metadata and per-episode metadata. See the EnvLogger documentation for more details.
Note that per-session metadata can be stored but is currently ignored when loading the dataset.
Note that the Envlogger follows the dm_env convention. So considering:
o_i
: observation at stepi
a_i
: action applied too_i
r_i
: reward obtained when applyinga_i
ino_i
d_i
: discount for rewardr_i
m_i
: metadata for stepi
Data is generated and stored as:
(o_0, _, _, _, m_0) → (o_1, a_0, r_0, d_0, m_1) → (o_2, a_1, r_1, d_1, m_2) ⇢ ...
But loaded with RLDS as:
(o_0,a_0, r_0, d_0, m_0) → (o_1, a_1, r_1, d_1, m_1) → (o_2, a_2, r_2, d_2, m_2) ⇢ ...
Human datasets
If you want to collect data generated by a human interacting with an environment, check the RLDS Creator.
How to load a dataset
RL datasets can be loaded with TFDS and they are retrieved with the canonical RLDS dataset format.
See this section for instructions on how to add an RLDS dataset to TFDS.
Load with TFDS
Datasets in the TFDS catalog
These datasets can be loaded directly with:
tfds.load('dataset_name').as_dataset()['train']
This is how we load the datasets in the tutorial.
See the full documentation and the catalog in the [TFDS] site.
Datasets in your own repository
Datasets can be implemented with TFDS both inside and outside of the TFDS repository. See examples here.
How to add your dataset to TFDS
Adding a dataset to TFDS involves two steps:
-
Implement a python class that provides a dataset builder with the specs of the data (e.g., what is the shape of the observations, actions, etc.) and how to read your dataset files.
-
Run a
download_and_prepare
pipeline that converts the data to the TFDS intermediate format.
You can add your dataset directly to TFDS following the instructions at https://www.tensorflow.org/datasets.
- If your data has been generated with Envlogger or the RLDS Creator, you can just use the rlds helpers in TFDS (see here an example).
- Otherwise, make sure your
generate_examples
implementation provides the same structure and keys as RLDS loaders if you want your dataset to be compatible with RLDS pipelines (example).
Note that you can follow the same steps to add the data to your own repository (see more details in the TFDS documentation).
Performance best practices
As RLDS exposes RL datasets in a form of Tensorflow's tf.data, many Tensorflow's performance hints apply to RLDS as well. It is important to note, however, that RLDS datasets are very specific and not all general speed-up methods work out of the box. advices on improving performance might not result in expected outcome. To get a better understanding on how to use RLDS datasets effectively we recommend going through this colab.
Citation
If you use RLDS, please cite the RLDS paper as
@misc{ramos2021rlds,
title={RLDS: an Ecosystem to Generate, Share and Use Datasets in Reinforcement Learning},
author={Sabela Ramos and Sertan Girgin and Léonard Hussenot and Damien Vincent and Hanna Yakubovich and Daniel Toyama and Anita Gergely and Piotr Stanczyk and Raphael Marinier and Jeremiah Harmsen and Olivier Pietquin and Nikola Momchev},
year={2021},
eprint={2111.02767},
archivePrefix={arXiv},
primaryClass={cs.LG}
}
Acknowledgements
We greatly appreciate all the support from the TF-Agents team in setting up building and testing for EnvLogger.
Disclaimer
This is not an officially supported Google product.