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RL environments and tools for spacecraft autonomy research, built on Basilisk. Developed by the AVS Lab.

Project description

BSK-RL: Environments for Spacecraft Planning and Scheduling

BSK-RL (Basilisk + Reinforcement Learning) is a Python package for constructing Gymnasium environments for spacecraft tasking problems. It is built on top of Basilisk, a modular and fast spacecraft simulation framework, making the simulation environments high-fidelity and computationally efficient.

Usage

Installation instructions, examples, and documentation can be found on the BSK-RL website.

Acknowledgment

BSK-RL is developed by the Autonomous Vehicle Systems (AVS) Lab at the University of Colorado Boulder.

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