Artificial Intelligence at the Service of Knowledge through Automation Archiving and Discovery towards Human Machine Synergy
Intelligence artificielle au service du savoir par l’automatisation, l’archivage et la découverte vers une synergie homme-machine.
DOI:
https://doi.org/10.61856/g7743a62Keywords:
Artificial intelligence, Knowledge management, Automation, Digital archiving, Human-machine synergy.Abstract
In today's academic and professional world, knowledge management methods are being transformed by artificial intelligence (AI). This research examines the integration of AI in three specific areas: automating document search processes, optimizing digital archiving systems, and improving knowledge discovery mechanisms. Through a systematic review of recent literature and an analysis of existing empirical studies, this study examines the hypothesis that AI can improve the effectiveness of knowledge management while preserving the central role of human expertise. The results reveal varying efficiency gains depending on the context of application, but also highlight critical challenges in terms of algorithmic bias, explainability, and organizational implementation.
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