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  5. Scenic4RL: Programmatic Modeling and Generation of Reinforcement Learning Environments

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Preprint
en
2021

Scenic4RL: Programmatic Modeling and Generation of Reinforcement Learning Environments

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en
2021
DOI: 10.48550/arxiv.2106.10365arxiv.org/abs/2106.10365

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Ion Stoica
Ion Stoica

University of California, Berkeley

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Abdus Salam Azad
Edward Kim
Kimin Lee
+4 more

Abstract

The capability of a reinforcement learning (RL) agent heavily depends on the diversity of the learning scenarios generated by the environment. Generation of diverse realistic scenarios is challenging for real-time strategy (RTS) environments. The RTS environments are characterized by intelligent entities/non-RL agents cooperating and competing with the RL agents with large state and action spaces over a long period of time, resulting in an infinite space of feasible, but not necessarily realistic, scenarios involving complex interaction among different RL and non-RL agents. Yet, most of the existing simulators rely on randomly generating the environments based on predefined settings/layouts and offer limited flexibility and control over the environment dynamics for researchers to generate diverse, realistic scenarios as per their demand. To address this issue, for the first time, we formally introduce the benefits of adopting an existing formal scenario specification language, SCENIC, to assist researchers to model and generate diverse scenarios in an RTS environment in a flexible, systematic, and programmatic manner. To showcase the benefits, we interfaced SCENIC to an existing RTS environment Google Research Football(GRF) simulator and introduced a benchmark consisting of 32 realistic scenarios, encoded in SCENIC, to train RL agents and testing their generalization capabilities. We also show how researchers/RL practitioners can incorporate their domain knowledge to expedite the training process by intuitively modeling stochastic programmatic policies with SCENIC.

How to cite this publication

Abdus Salam Azad, Edward Kim, Kimin Lee, Qiancheng Wu, Ion Stoica, Pieter Abbeel, Sanjit A. Seshia (2021). Scenic4RL: Programmatic Modeling and Generation of Reinforcement Learning Environments. , DOI: https://doi.org/10.48550/arxiv.2106.10365.

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Publication Details

Type

Preprint

Year

2021

Authors

7

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.48550/arxiv.2106.10365

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