Paper: Qwen-AgentWorld: Language World Models for General Agents
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Problem
Building truly general AI agents – systems that can effectively navigate and act in diverse, real-world environments – remains a significant challenge. A key component missing for these agents is a robust “world model”: the ability to predict how an environment will change based on actions taken within it. Current approaches struggle with accurately simulating agentic environments (where an actor interacts with the world).





