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This paper introduces an asymmetric actor-critic framework where a fixed, powerful LLM actor is supervised at runtime by a smaller, fine-tuned open-source critic. The critic monitors the actor's actions and intervenes within the same interaction trajectory, enabling reliable behavior in multi-turn conversations without requiring actor training or retries. Experiments on $\tau$-bench and UserBench demonstrate significant improvements in reliability and task success compared to single-agent baselines, with lightweight critics rivaling larger models in the critic role.
You can get surprisingly reliable multi-turn LLM agents by having a small, open-source critic supervise a powerful, fixed LLM actor *during* the conversation.
Large language models (LLMs) exhibit strong reasoning and conversational abilities, but ensuring reliable behavior in multi-turn interactions remains challenging. In many real-world applications, agents must succeed in one-shot settings where retries are impossible. Existing approaches either rely on reflection or post-hoc evaluation, which require additional attempts, or assume fully trainable models that cannot leverage proprietary LLMs. We propose an asymmetric actor-critic framework for reliable conversational agents. A powerful proprietary LLM acts as the actor, while a smaller open-source critic provides runtime supervision, monitoring the actor's actions and intervening within the same interaction trajectory. Unlike training-based actor-critic methods, our framework supervises a fixed actor operating in open-ended conversational environments. The design leverages a generation-verification asymmetry: while high-quality generation requires large models, effective oversight can often be achieved by smaller ones. We further introduce a data generation pipeline that produces supervision signals for critic fine-tuning without modifying the actor. Experiments on $\tau$-bench and UserBench show that our approach significantly improves reliability and task success over strong single-agent baselines. Moreover, lightweight open-source critics rival or surpass larger proprietary models in the critic role, and critic fine-tuning yields additional gains over several state-of-the-art methods.