AI RESEARCH

The World Won't Stay Still: Programmable Evolution for Agent Benchmarks

arXiv CS.AI

ArXi:2603.05910v1 Announce Type: new LLM-powered agents fulfill user requests by interacting with environments, querying data, and invoking tools in a multi-turn process. Yet, most existing benchmarks assume static environments with fixed schemas and toolsets, neglecting the evolutionary nature of the real world and agents' robustness to environmental changes. In this paper, we study a crucial problem: how to evolve the agent environment in a scalable and controllable way, thereby better evaluating agents' adaptability to real-world dynamics.