Semantic Consensus: Process-Aware Conflict Detection and Resolution for Enterprise Multi-Agent LLM Systems
Vivek Acharya

TL;DR
This paper introduces the Semantic Consensus Framework (SCF), a process-aware middleware that detects and resolves semantic conflicts among enterprise multi-agent LLM systems, significantly improving workflow completion rates.
Contribution
The paper presents a novel, formal framework for conflict detection and resolution in multi-agent LLM systems, addressing a key root cause of failures in enterprise AI automation.
Findings
SCF achieves 100% workflow completion across tested scenarios.
Detects 65.2% of semantic conflicts with 27.9% precision.
Outperforms baseline approaches in enterprise multi-agent settings.
Abstract
Multi-agent large language model (LLM) systems are rapidly emerging as the dominant architecture for enterprise AI automation, yet production deployments exhibit failure rates between 41% and 86.7%, with nearly 79% of failures originating from specification and coordination issues rather than model capability limitations. This paper identifies Semantic Intent Divergence--the phenomenon whereby cooperating LLM agents develop inconsistent interpretations of shared objectives due to siloed context and absent process models--as a primary yet formally unaddressed root cause of multi-agent failure in enterprise settings. We propose the Semantic Consensus Framework (SCF), a process-aware middleware comprising six components: a Process Context Layer for shared operational semantics, a Semantic Intent Graph for formal intent representation, a Conflict Detection Engine for real-time…
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