Home /Research /The Open Motion Planning Library 2.0
OTHER

The Open Motion Planning Library 2.0

Weihang Guo, Theodoros Tyrovouzis, Emiliano Flores, Clayton W. Ramsey, Zachary K. Kingston, Ioan A. Şucan, Mark Moll, Lydia E. Kavraki

Year
2026
Access
Open access

Abstract

The Open Motion Planning Library (OMPL), first released in 2008, has become a cornerstone of the motion planning community, providing implementations of a wide range of state-of-the-art sampling-based algorithms. Over almost two decades of continuous development, we have steadily expanded the library with new planners, state spaces, and problem formulations. These additions range from asymptotically optimal and lazy planners to constrained motion planning and planning with temporal-logic goals. Building on this foundation, we introduce OMPL 2.0, a major evolution of the library that targets real-time motion planning through hardware acceleration and integrates seamlessly with modern AI research workflows. We also reflect on how OMPL and the field of motion planning have grown together over the years, and discuss the library's broader impact on the research community.

Keywords

motion planningsampling-based algorithmshardware accelerationAI integrationopen source

Related papers

Browse all OTHER papers