English

Reducing Latency of LLM Search Agent via Speculation-based Algorithm-System Co-Design

Artificial Intelligence 2025-11-26 v1 Machine Learning Performance

Abstract

LLM-based search agents achieve strong performance but suffer from severe latency, as each step requires serialized LLM reasoning followed by action of tool execution. We revisit this bottleneck through the lens of speculation. While traditional predict-verify speculation paradigm can break serial execution, its benefit remains limited, as it retains the full original workload and adds extra inference overhead. We observe that early agent steps often involve simple evidence-gathering, where correct actions can often be predicted without full reasoning. Building on these observations, we present SPAgent, an algorithm-system co-design framework that expands the role of speculation in search agents to reduce latency. Algorithmically, SPAgent introduces a two-phase adaptive speculation mechanism that selectively omits verification when safe. System-wise, a two-level scheduler regulates speculative requests based on engine load to ensure speculation remains beneficial. We implement SPAgent in real-world systems. Across extensive experimental settings, SPAgent achieves up to 1.65×1.65\times end-to-end speedup while maintaining same or even achieving higher accuracy, enabling practical deployment of multi-step search agents.

Keywords

Cite

@article{arxiv.2511.20048,
  title  = {Reducing Latency of LLM Search Agent via Speculation-based Algorithm-System Co-Design},
  author = {Zixiao Huang and Wen Zeng and Tianyu Fu and Tengxuan Liu and Yizhou Sun and Ke Hong and Xinhao Yang and Chengchun Liu and Yan Li and Quanlu Zhang and Guohao Dai and Zhenhua Zhu and Yu Wang},
  journal= {arXiv preprint arXiv:2511.20048},
  year   = {2025}
}
R2 v1 2026-07-01T07:53:47.018Z