Tacit Knowledge Management with Generative AI: Proposal of the GenAI SECI Model

Open Access
Article
Conference Proceedings
Authors: Naoshi Uchihira
Abstract

The emergence of generative AI is bringing about a significant transformation in knowledge management. Generative AI has the potential to address the limitations of conventional knowledge management systems, and it is increasingly being deployed in real-world settings with promising results. Related research is also expanding rapidly. However, much of this work focuses on research and practice related to the management of explicit knowledge. While fragmentary efforts have been made regarding the management of tacit knowledge using generative AI, the modeling and systematization that handle both tacit and explicit knowledge in an integrated manner remain insufficient. In this paper, we propose the "GenAI SECI" model as an updated version of the knowledge creation process (SECI) model, redesigned to leverage the capabilities of generative AI. A defining feature of the "GenAI SECI" model is the introduction of "Digital Fragmented Knowledge", a new concept that integrates explicit and tacit knowledge within cyberspace. Furthermore, a concrete system configuration for the proposed model is presented, along with a comparison with prior research models that share a similar problem awareness and objectives.

Keywords: Knowledge Management, Tacit Knowledge, SECI Model, Generative AI

DOI: 10.54941/ahfe1007727

Cite this paper
Downloads
0
Visits
1
Download PDF

More from this volume

What Aspects of Tacit Knowledge Are Structurally Excluded from Generative AI? : A Conceptual Framework of Mediation, Structure, and RepresentationThe Dynamics of Trust in AI Systems: Human–Machine Collaboration Within the MLS Exploitation Process
View all articles in The Human Side of Service Engineering