AIOct 5, 2025

AgentRL: Scaling Agentic Reinforcement Learning with a Multi-Turn, Multi-Task Framework

arXiv:2510.04206v131 citationsh-index: 36Has Code
Originality Highly original
AI Analysis

This work addresses the problem of scalable and stable agentic reinforcement learning for AI researchers and developers, representing an incremental advancement with novel methods for known bottlenecks.

The paper tackles the challenge of scaling reinforcement learning for large language model agents in multi-turn, multi-task settings by introducing the AgentRL framework, which includes infrastructure improvements and algorithmic innovations, resulting in significant performance gains over models like GPT-5 and matching task-specific models in multi-task training.

Recent advances in large language models (LLMs) have sparked growing interest in building generalist agents that can learn through online interactions. However, applying reinforcement learning (RL) to train LLM agents in multi-turn, multi-task settings remains challenging due to lack of scalable infrastructure and stable training algorithms. In this work, we present the AgentRL framework for scalable multi-turn, multi-task agentic RL training. On the infrastructure side, AgentRL features a fully-asynchronous generation-training pipeline for efficient multi-turn RL. To support heterogeneous environment development in multi-task RL, we design a unified function-call based API interface, containerized environment development, and a centralized controller. On the algorithm side, we propose cross-policy sampling to encourage model exploration in multi-turn settings and task advantage normalization to stabilize multi-task training. Experiments show that AgentRL, trained on open LLMs across five agentic tasks, significantly outperforms GPT-5, Clause-Sonnet-4, DeepSeek-R1, and other open-source LLM agents. Multi-task training with AgentRL matches the best results among all task-specific models. AgentRL is open-sourced at https://github.com/THUDM/AgentRL. The algorithm and framework are adopted in building \textsc{\href{https://autoglm.zhipuai.cn}{AutoGLM}}.

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