Designing Intelligent Enterprise Agents: A Capability-Aligned Multi-Agent Architecture
John deVadoss

TL;DR
This paper introduces CEAD, a reference architecture for enterprise intelligent agents emphasizing design discipline over governance, demonstrating improved success rates in enterprise tasks.
Contribution
Proposes CEAD, a capability-aligned multi-agent architecture using service-oriented principles, and evaluates its effectiveness against other architectures in enterprise tasks.
Findings
CEAD achieves 70.6% safe success rate, outperforming alternatives.
Design quality is more critical than governance for enterprise agent success.
Decomposition without disciplined design leads to complexity and fragility.
Abstract
Enterprise interest in multi-agent systems has shifted from generic software agents to large-language-model (LLM) based intelligent agents that plan, use tools, maintain contextual memory, inspect intermediate results, collaborate with other agents, and sometimes act in systems of record. This paper revises the enterprise architecture thesis around a design-first claim: governance is necessary, but it cannot be the primary organizing abstraction. The primary abstraction must be agent design - capability boundaries, autonomy allocation, interaction protocols, tool and data authority, state and memory design, verification design, and human interaction design. We propose CEAD (Capability-Aligned Enterprise Agent Design), a reference architecture for intelligent agents that uses service-oriented architecture (SOA) as an exemplar for contracts, registries, loose coupling, and policy-aware…
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