ANX: Protocol-First Design for AI Agent Interaction with a Supporting 3EX Decoupled Architecture
Xu Mingze

TL;DR
ANX introduces a protocol-first, modular framework for AI agent interaction that reduces token usage, enhances security, and improves efficiency through innovative architecture and tools.
Contribution
It presents the first design of an agent-native protocol with a decoupled architecture, integrating CLI, Skill, MCP, and markup for flexible, secure, and efficient AI agent interactions.
Findings
ANX reduces token consumption by up to 66.3% compared to GUI automation.
ANX shortens execution time by approximately 58% over MCP-based skills.
Preliminary experiments validate ANX's feasibility and effectiveness.
Abstract
AI agents, autonomous digital actors, need agent-native protocols; existing methods include GUI automation and MCP-based skills, with defects of high token consumption, fragmented interaction, inadequate security, due to lacking a unified top-level framework and key components, each independent module flawed. To address these issues, we present ANX, an open, extensible, verifiable agent-native protocol and top-level framework integrating CLI, Skill, MCP, resolving pain points via protocol innovation, architectural optimization and tool supplementation. Its four core innovations: 1) Agent-native design (ANX Config, Markup, CLI) with high information density, flexibility and strong adaptability to reduce tokens and eliminate inconsistencies; 2) Human-agent interaction combining Skill's flexibility for dual rendering as agent-executable instructions and human-readable UI; 3) MCP-supported…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
