Conceptual Framework Toward Embodied Collective Adaptive Intelligence
- URL: http://arxiv.org/abs/2505.23153v2
- Date: Tue, 01 Jul 2025 03:22:25 GMT
- Title: Conceptual Framework Toward Embodied Collective Adaptive Intelligence
- Authors: Fan Wang, Shaoshan Liu,
- Abstract summary: Collective Adaptive Intelligence (CAI) represent a transformative approach in embodied AI.<n>This article introduces a conceptual framework for designing and analyzing CAI.
- Score: 11.063451220531585
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Collective Adaptive Intelligence (CAI) represent a transformative approach in embodied AI, wherein numerous autonomous agents collaborate, adapt, and self-organize to navigate complex, dynamic environments. By enabling systems to reconfigure themselves in response to unforeseen challenges, CAI facilitate robust performance in real-world scenarios. This article introduces a conceptual framework for designing and analyzing CAI. It delineates key attributes including task generalization, resilience, scalability, and self-assembly, aiming to bridge theoretical foundations with practical methodologies for engineering adaptive, emergent intelligence. By providing a structured foundation for understanding and implementing CAI, this work seeks to guide researchers and practitioners in developing more resilient, scalable, and adaptable AI systems across various domains.
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