WISE-Flow: Workflow-Induced Structured Experience for Self-Evolving Conversational Service Agents
By: Yuqing Zhou , Zhuoer Wang , Jie Yuan and more
Potential Business Impact:
Makes AI agents learn from mistakes to improve.
Large language model (LLM)-based agents are widely deployed in user-facing services but remain error-prone in new tasks, tend to repeat the same failure patterns, and show substantial run-to-run variability. Fixing failures via environment-specific training or manual patching is costly and hard to scale. To enable self-evolving agents in user-facing service environments, we propose WISE-Flow, a workflow-centric framework that converts historical service interactions into reusable procedural experience by inducing workflows with prerequisite-augmented action blocks. At deployment, WISE-Flow aligns the agent's execution trajectory to retrieved workflows and performs prerequisite-aware feasibility reasoning to achieve state-grounded next actions. Experiments on ToolSandbox and $Ο^2$-bench show consistent improvement across base models.
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