The Orchestration of Multi-Agent Systems: Architectures, Protocols, and Enterprise Adoption
- URL: http://arxiv.org/abs/2601.13671v1
- Date: Tue, 20 Jan 2026 07:13:53 GMT
- Title: The Orchestration of Multi-Agent Systems: Architectures, Protocols, and Enterprise Adoption
- Authors: Apoorva Adimulam, Rajesh Gupta, Sumit Kumar,
- Abstract summary: This paper consolidates and formalizes the technical composition of orchestrated multi-agent systems.<n>It presents a unified architectural framework that integrates planning, policy enforcement, state management, and quality operations into a coherent orchestration layer.
- Score: 4.694869957637663
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Orchestrated multi-agent systems represent the next stage in the evolution of artificial intelligence, where autonomous agents collaborate through structured coordination and communication to achieve complex, shared objectives. This paper consolidates and formalizes the technical composition of such systems, presenting a unified architectural framework that integrates planning, policy enforcement, state management, and quality operations into a coherent orchestration layer. Another primary contribution of this work is the in-depth technical delineation of two complementary communication protocols - the Model Context Protocol, which standardizes how agents access external tools and contextual data, and the Agent2Agent protocol, which governs peer coordination, negotiation, and delegation. Together, these protocols establish an interoperable communication substrate that enables scalable, auditable, and policy-compliant reasoning across distributed agent collectives. Beyond protocol design, the paper details how orchestration logic, governance frameworks, and observability mechanisms collectively sustain system coherence, transparency, and accountability. By synthesizing these elements into a cohesive technical blueprint, this paper provides comprehensive treatments of orchestrated multi-agent systems - bridging conceptual architectures with implementation-ready design principles for enterprise-scale AI ecosystems.
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