ejertiotei Open Access Journal

European Journal of Emerging Real-Time IoT and Edge Infrastructures

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Integrative Intelligence at the Edge: Converging Large Language Model Multi-Agent Systems, Foundation Models, and Neuromorphic Paradigms for Sustainable and Privacy-Aware Artificial Intelligence

1 Université Grenoble Alpes, France

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Abstract

The contemporary evolution of artificial intelligence is characterized by the simultaneous maturation of multiple paradigms that were historically developed in relative isolation. Large language model based multi-agent systems, foundation models for time series and perception, edge intelligence architectures, and neuromorphic computing are now converging within a shared socio-technical context defined by sustainability constraints, privacy regulation, and real-world deployment complexity. This article develops an original, integrative research perspective that theorizes how these paradigms collectively redefine the architecture, governance, and epistemology of intelligent systems. Rather than treating large language models, object detection frameworks, time-series foundation models, and neuromorphic hardware as parallel trends, this work conceptualizes them as interacting layers within a unified intelligence stack spanning cloud, edge, and device-level computation. Drawing exclusively on established scholarly literature, the article advances a text-based analytical methodology to synthesize theoretical foundations, historical trajectories, and emerging challenges across these domains. Particular emphasis is placed on the role of multi-agent coordination among large language models, the long-term evolution of perception systems in computer vision, the environmental and computational implications of green AI benchmarks, and the epistemic shift introduced by foundation models for temporal data. The results of this integrative analysis reveal a set of structural tensions between scalability and efficiency, autonomy and control, and performance and accountability. The discussion critically interrogates these tensions by situating them within broader debates on edge intelligence, neuromorphic design philosophies, regulatory frameworks such as data protection law, and brain-inspired computation. The article concludes by proposing a forward-looking research agenda that emphasizes co-design across algorithms, hardware, and governance structures, arguing that sustainable and trustworthy artificial intelligence will emerge not from isolated optimization but from deliberate integration across conceptual and technological boundaries (Guo et al., 2024; Liang et al., 2024; Deng et al., 2020).


Keywords

Edge intelligence, Foundation models, Large language model multi-agents

References

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How to Cite

Integrative Intelligence at the Edge: Converging Large Language Model Multi-Agent Systems, Foundation Models, and Neuromorphic Paradigms for Sustainable and Privacy-Aware Artificial Intelligence. (2025). European Journal of Emerging Real-Time IoT and Edge Infrastructures, 2(01), 22-25. https://www.parthenonfrontiers.com/index.php/ejertiotei/article/view/498

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