Scaling Small Agents Through Strategy Auctions
Lisa Alazraki, William F. Shen, Yoram Bachrach, Akhil Mathur

TL;DR
This paper introduces Strategy Auctions for Workload Efficiency (SALE), a marketplace-inspired framework that enables small language agents to better handle complex tasks through strategic bidding and self-improvement, reducing reliance on large models.
Contribution
The paper presents SALE, a novel agent framework that improves small agents' performance on complex tasks via strategic bidding and shared auction memory, reducing large model dependence.
Findings
SALE reduces reliance on the largest agent by 53%
SALE lowers overall cost by 35%
SALE improves pass@1 performance with negligible overhead
Abstract
Small language models are increasingly viewed as a promising, cost-effective approach to agentic AI, with proponents claiming they are sufficiently capable for agentic workflows. However, while smaller agents can closely match larger ones on simple tasks, it remains unclear how their performance scales with task complexity, when large models become necessary, and how to better leverage small agents for long-horizon workloads. In this work, we empirically show that small agents' performance fails to scale with task complexity on deep search and coding tasks, and we introduce Strategy Auctions for Workload Efficiency (SALE), an agent framework inspired by freelancer marketplaces. In SALE, agents bid with short strategic plans, which are scored by a systematic cost-value mechanism and refined via a shared auction memory, enabling per-task routing and continual self-improvement without…
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Taxonomy
TopicsMulti-Agent Systems and Negotiation · Mobile Crowdsensing and Crowdsourcing · Big Data and Digital Economy
