AdaptEvolve:通过自适应模型选择提升进化式AI智能体的效率 / AdaptEvolve: Improving Efficiency of Evolutionary AI Agents through Adaptive Model Selection
1️⃣ 一句话总结
这篇论文提出了一种名为AdaptEvolve的新方法,它能让进化式AI智能体在执行任务时,根据当前步骤的难度和模型的“自信程度”,自动选择最合适的大语言模型,从而在保持高准确率的同时,大幅降低了计算成本。
Evolutionary agentic systems intensify the trade-off between computational efficiency and reasoning capability by repeatedly invoking large language models (LLMs) during inference. This setting raises a central question: how can an agent dynamically select an LLM that is sufficiently capable for the current generation step while remaining computationally efficient? While model cascades offer a practical mechanism for balancing this trade-off, existing routing strategies typically rely on static heuristics or external controllers and do not explicitly account for model uncertainty. We introduce AdaptEvolve: Adaptive LLM Selection for Multi-LLM Evolutionary Refinement within an evolutionary sequential refinement framework that leverages intrinsic generation confidence to estimate real-time solvability. Empirical results show that confidence-driven selection yields a favourable Pareto frontier, reducing total inference cost by an average of 37.9% across benchmarks while retaining 97.5% of the upper-bound accuracy of static large-model baselines. Our code is available at this https URL.
AdaptEvolve:通过自适应模型选择提升进化式AI智能体的效率 / AdaptEvolve: Improving Efficiency of Evolutionary AI Agents through Adaptive Model Selection
这篇论文提出了一种名为AdaptEvolve的新方法,它能让进化式AI智能体在执行任务时,根据当前步骤的难度和模型的“自信程度”,自动选择最合适的大语言模型,从而在保持高准确率的同时,大幅降低了计算成本。
源自 arXiv: 2602.11931