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arXiv 提交日期: 2026-01-20
📄 Abstract - Toward Efficient Agents: Memory, Tool learning, and Planning

Recent years have witnessed increasing interest in extending large language models into agentic systems. While the effectiveness of agents has continued to improve, efficiency, which is crucial for real-world deployment, has often been overlooked. This paper therefore investigates efficiency from three core components of agents: memory, tool learning, and planning, considering costs such as latency, tokens, steps, etc. Aimed at conducting comprehensive research addressing the efficiency of the agentic system itself, we review a broad range of recent approaches that differ in implementation yet frequently converge on shared high-level principles including but not limited to bounding context via compression and management, designing reinforcement learning rewards to minimize tool invocation, and employing controlled search mechanisms to enhance efficiency, which we discuss in detail. Accordingly, we characterize efficiency in two complementary ways: comparing effectiveness under a fixed cost budget, and comparing cost at a comparable level of effectiveness. This trade-off can also be viewed through the Pareto frontier between effectiveness and cost. From this perspective, we also examine efficiency oriented benchmarks by summarizing evaluation protocols for these components and consolidating commonly reported efficiency metrics from both benchmark and methodological studies. Moreover, we discuss the key challenges and future directions, with the goal of providing promising insights.

顶级标签: agents llm systems
详细标签: agent efficiency memory management tool learning planning evaluation metrics 或 搜索:

迈向高效智能体:记忆、工具学习与规划 / Toward Efficient Agents: Memory, Tool learning, and Planning


1️⃣ 一句话总结

这篇论文系统性地探讨了如何提升基于大语言模型的智能体在实际应用中的运行效率,重点从记忆管理、工具调用和决策规划这三个核心环节入手,分析了当前提升效率的主流方法、评估指标以及未来面临的挑战。

源自 arXiv: 2601.14192