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UserCentrix: An Agentic Memory-augmented AI Framework for Smart Spaces

Abstract

Agentic AI, with its autonomous and proactive decision-making, has transformed smart environments. By integrating Generative AI (GenAI) and multi-agent systems, modern AI frameworks can dynamically adapt to user preferences, optimize data management, and improve resource allocation. This paper introduces UserCentrix, an agentic memory-augmented AI framework designed to enhance smart spaces through dynamic, context-aware decision-making. This framework integrates personalized Large Language Model (LLM) agents that leverage user preferences and LLM memory management to deliver proactive and adaptive assistance. Furthermore, it incorporates a hybrid hierarchical control system, balancing centralized and distributed processing to optimize real-time responsiveness while maintaining global situational awareness. UserCentrix achieves resource-efficient AI interactions by embedding memory-augmented reasoning, cooperative agent negotiation, and adaptive orchestration strategies. Our key contributions include (i) a self-organizing framework with proactive scaling based on task urgency, (ii) a Value of Information (VoI)-driven decision-making process, (iii) a meta-reasoning personal LLM agent, and (iv) an intelligent multi-agent coordination system for seamless environment adaptation. Experimental results across various models confirm the effectiveness of our approach in enhancing response accuracy, system efficiency, and computational resource management in real-world application.

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@article{saleh2025_2505.00472,
  title={ UserCentrix: An Agentic Memory-augmented AI Framework for Smart Spaces },
  author={ Alaa Saleh and Sasu Tarkoma and Praveen Kumar Donta and Naser Hossein Motlagh and Schahram Dustdar and Susanna Pirttikangas and Lauri Lovén },
  journal={arXiv preprint arXiv:2505.00472},
  year={ 2025 }
}
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