MeloTune implements learned per-listener Personal Arousal Functions and mesh memory protocols on mobile devices to predict affective trajectories and enable peer-coupled proactive music selection, reporting 96.6% pattern accuracy in deployment.
Scaling Multi-agent Systems: A Smart Middleware for Improving Agent Interactions
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abstract
As Large Language Model (LLM) based Multi-Agent Systems (MAS) evolve from experimental pilots to complex, persistent ecosystems, the limitations of direct agent-to-agent communication have become increasingly apparent. Current architectures suffer from fragmented context, stochastic hallucinations, rigid security boundaries, and inefficient topology management. This paper introduces Cognitive Fabric Nodes (CFN), a novel middleware layer that creates an omnipresent "Cognitive Fabric" between agents. Unlike traditional message queues or service meshes, CFNs are not merely pass-through mechanisms; they are active, intelligent intermediaries. Central to this architecture is the elevation of Memory from simple storage to an active functional substrate that informs four other critical capabilities: Topology Selection, Semantic Grounding, Security Policy Enforcement, and Prompt Transformation. We propose that each of these functions be governed by learning modules utilizing Reinforcement Learning (RL) and optimization algorithms to improve system performance dynamically. By intercepting, analyzing, and rewriting inter-agent communication, the Cognitive Fabric ensures that individual agents remain lightweight while the ecosystem achieves coherence, safety, and semantic alignment. We evaluate the effectiveness of the CFN on the HotPotQA and MuSiQue datasets in a multi-agent environment and demonstrate that the CFN improves performance by more than 10\% on both datasets over direct agent to agent communication.
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cs.SD 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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MeloTune: On-Device Arousal Learning and Peer-to-Peer Mood Coupling for Proactive Music Curation
MeloTune implements learned per-listener Personal Arousal Functions and mesh memory protocols on mobile devices to predict affective trajectories and enable peer-coupled proactive music selection, reporting 96.6% pattern accuracy in deployment.