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Main Authors: Li, Yuxuan, He, Qijun, Yuan, Mingqi, Chen, Wen-Tse, Schneider, Jeff, Chen, Jiayu
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.22475
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author Li, Yuxuan
He, Qijun
Yuan, Mingqi
Chen, Wen-Tse
Schneider, Jeff
Chen, Jiayu
author_facet Li, Yuxuan
He, Qijun
Yuan, Mingqi
Chen, Wen-Tse
Schneider, Jeff
Chen, Jiayu
contents Continual Reinforcement Learning (CRL) aims to develop lifelong learning agents to continuously acquire knowledge across diverse tasks while mitigating catastrophic forgetting. This requires efficiently managing the stability-plasticity dilemma and leveraging prior experience to rapidly generalize to novel tasks. While various enhancement strategies for both aspects have been proposed, achieving scalable performance by directly applying RL to sequential task streams remains challenging. In this paper, we propose a novel teacher-student framework that decouples CRL into two independent processes: training single-task teacher models through distributed RL and continually distilling them into a central generalist model. This design is motivated by the observation that RL excels at solving single tasks, while policy distillation -- a relatively stable supervised learning process -- is well aligned with large foundation models and multi-task learning. Moreover, a mixture-of-experts (MoE) architecture and a replay-based approach are employed to enhance the plasticity and stability of the continual policy distillation process. Extensive experiments on the Meta-World benchmark demonstrate that our framework enables efficient continual RL, recovering over 85% of teacher performance while constraining task-wise forgetting to within 10%.
format Preprint
id arxiv_https___arxiv_org_abs_2601_22475
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Continual Policy Distillation from Distributed Reinforcement Learning Teachers
Li, Yuxuan
He, Qijun
Yuan, Mingqi
Chen, Wen-Tse
Schneider, Jeff
Chen, Jiayu
Machine Learning
Continual Reinforcement Learning (CRL) aims to develop lifelong learning agents to continuously acquire knowledge across diverse tasks while mitigating catastrophic forgetting. This requires efficiently managing the stability-plasticity dilemma and leveraging prior experience to rapidly generalize to novel tasks. While various enhancement strategies for both aspects have been proposed, achieving scalable performance by directly applying RL to sequential task streams remains challenging. In this paper, we propose a novel teacher-student framework that decouples CRL into two independent processes: training single-task teacher models through distributed RL and continually distilling them into a central generalist model. This design is motivated by the observation that RL excels at solving single tasks, while policy distillation -- a relatively stable supervised learning process -- is well aligned with large foundation models and multi-task learning. Moreover, a mixture-of-experts (MoE) architecture and a replay-based approach are employed to enhance the plasticity and stability of the continual policy distillation process. Extensive experiments on the Meta-World benchmark demonstrate that our framework enables efficient continual RL, recovering over 85% of teacher performance while constraining task-wise forgetting to within 10%.
title Continual Policy Distillation from Distributed Reinforcement Learning Teachers
topic Machine Learning
url https://arxiv.org/abs/2601.22475