TL;DR
AgentMaster introduces a novel multi-agent framework utilizing A2A and MCP protocols, enabling dynamic, multimodal information retrieval and analysis through natural language interaction, with validated high-performance results.
Contribution
This work presents the first integration of A2A and MCP protocols within a single MAS framework, enhancing coordination and multimodal task handling.
Findings
High BERTScore F1 (96.3%) in evaluations
Strong G-Eval score (87.1%) indicating effective reasoning
Robust automated inter-agent coordination demonstrated
Abstract
The rise of Multi-Agent Systems (MAS) in Artificial Intelligence (AI), especially integrated with Large Language Models (LLMs), has greatly facilitated the resolution of complex tasks. However, current systems are still facing challenges of inter-agent communication, coordination, and interaction with heterogeneous tools and resources. Most recently, the Model Context Protocol (MCP) by Anthropic and Agent-to-Agent (A2A) communication protocol by Google have been introduced, and to the best of our knowledge, very few applications exist where both protocols are employed within a single MAS framework. We present a pilot study of AgentMaster, a novel modular multi-protocol MAS framework with self-implemented A2A and MCP, enabling dynamic coordination, flexible communication, and rapid development with faster iteration. Through a unified conversational interface, the system supports natural…
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