Swarm Skills: A Portable, Self-Evolving Multi-Agent System Specification for Coordination Engineering
Xinyu Zhang, Zhicheng Dou, Deyang Li, Jianjun Tao, Shuo Cheng, Ruifeng Shi, Fangchao Liu, Enrui Hu, Yangkai Ding, Hongbo Wang, Qi Ye, Xuefeng Jin, Zhangchun Zhao

TL;DR
Swarm Skills introduces a portable, self-evolving multi-agent coordination specification that enables agents to share, improve, and adapt their collaboration strategies autonomously across systems.
Contribution
It extends the Anthropic Skills standard with multi-agent semantics and presents a self-evolution algorithm for continuous improvement without human oversight.
Findings
Enables zero-adapter cross-agent portability through progressive disclosure.
Automates the distillation of successful coordination strategies into new skills.
Demonstrates effectiveness via a qualitative case study with open-source implementation.
Abstract
As artificial intelligence engineering paradigms shift from single-agent Prompt and Context Engineering toward multi-agent \textbf{Coordination Engineering}, the ability to codify and systematically improve how multiple agents collaborate has emerged as a critical bottleneck. While single-agent skills can now be distributed as portable assets, multi-agent coordination protocols remain locked within framework-internal code or static configurations, preventing them from being shared across systems or autonomously improved over time. We propose \textbf{Swarm Skills}, a portable specification that extends the Anthropic Skills standard with multi-agent semantics. Swarm Skills turns multi-agent workflows into first-class, distributable assets that consist of roles, workflows, execution bounds, and a built-in semantic structure for self-evolution. To operationalize the specification's evolving…
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