Brain Big Data in Wisdom Web of Things

The chapter summarizes main aspects of brain informatics based big data interacting with a social-cyber-physical space of Wisdom Web of Things (W2T). It describes how to realize human-level collective intelligence as a big data sharing mind—a harmonized collectivity of consciousness on the W2T by developing brain inspired intelligent technologies to provide wisdom services, and it proposes five guiding principles to deeper understand the nature of the vigorous interaction and interdependence of brain-body-environment.

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