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simmediummobile-manipulationmetric · varies

Learning Stack-of-Tasks Management for Redundant Robots

Description

This paper presents a novel framework for automatically learning complete Stack-of-Tasks (SoT) controllers for redundant robotic systems, including task priorities, activation logic, and control parameters. Unlike classical SoT pipelines-where task hierarchies are manually defined and tuned-our approach optimizes the full SoT structure directly from a user-specified cost function encoding intuitive preferences such as safety, precision, manipulability, or execution speed. The method combines Gen

Source

http://arxiv.org/abs/2508.10780v2