AI Agents

LLM-in-Sandbox Elicits General Agentic Intelligence

DDaixuan ChengSShaohan HuangYYuxian GuHHuatong SongGGuoxin ChenLLi DongWWayne Xin ZhaoJJi-Rong WenFFuru Wei
arXiv ID
2601.16206
Published
January 22, 2026
Authors
9
Hugging Face Likes
63
Comments
4

Abstract

We introduce LLM-in-Sandbox, enabling LLMs to explore within a code sandbox (i.e., a virtual computer), to elicit general intelligence in non-code domains. We first demonstrate that strong LLMs, without additional training, exhibit generalization capabilities to leverage the code sandbox for non-code tasks. For example, LLMs spontaneously access external resources to acquire new knowledge, leverage the file system to handle long contexts, and execute scripts to satisfy formatting requirements. We further show that these agentic capabilities can be enhanced through LLM-in-Sandbox Reinforcement Learning (LLM-in-Sandbox-RL), which uses only non-agentic data to train models for sandbox exploration. Experiments demonstrate that LLM-in-Sandbox, in both training-free and post-trained settings, achieves robust generalization spanning mathematics, physics, chemistry, biomedicine, long-context understanding, and instruction following. Finally, we analyze LLM-in-Sandbox's efficiency from computational and system perspectives, and open-source it as a Python package to facilitate real-world deployment.

Keywords

LLM-in-Sandboxcode sandboxvirtual computerreinforcement learningnon-agentic datasandbox explorationgeneral intelligencelong-context understandinginstruction following

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