EvoMAS: Learning Execution-Time Workflows for Multi-Agent Systems
Chengdong Xu, Kaiqiang Ke, Ziheng Liu, Jiaqi Wei, Zibo Shao, Weile Guo, Chao Yu

TL;DR
EvoMAS introduces a dynamic framework for constructing multi-agent workflows during task execution, enabling adaptation to evolving subgoals and information needs in complex, long-horizon tasks.
Contribution
It formulates workflow construction as a sequential decision problem and trains a learned adapter for stage-specific agent coordination, improving over static methods.
Findings
EvoMAS outperforms single-agent and static multi-agent baselines.
Explicit task-state construction enhances workflow adaptation.
Process reward is especially beneficial under sparse success signals.
Abstract
Large language model (LLM)-based multi-agent systems have shown strong potential on complex tasks through agent specialization, tool use, and collaborative reasoning. However, most automated multi-agent system design methods still follow a one-shot paradigm: a workflow is optimized or selected before execution and then reused unchanged throughout the task. This static coordination strategy is ill-suited for long-horizon tasks whose subgoals, intermediate evidence, and information needs evolve over multiple execution stages. We propose EvoMAS, a framework for execution-time multi-agent workflow construction. EvoMAS formulates workflow construction as a meta-level sequential decision problem along a single task trajectory. At each stage, it constructs an explicit task state through a Planner-Evaluator-Updater pipeline and uses a learned Workflow Adapter to instantiate a stage-specific…
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