Gelashvili-Luik Teona, Vihma Peeter, Pappel Ingrid
Department of Software Science, Tallinn University of Technology, Tallinn, Estonia.
Ragnar Nurkse Department of Innovation and Governance, Tallinn University of Technology, Tallinn, Estonia.
Front Artif Intell. 2025 Jul 4;8:1595930. doi: 10.3389/frai.2025.1595930. eCollection 2025.
Artificial intelligence (AI) is transforming organizational knowledge management (KM) by leveraging techniques such as machine learning, neural networks, and fuzzy logic to enhance knowledge discovery, capture, storage, and sharing. While this shift promises improved efficiency and personalization, it also poses challenges related to data quality, employee resistance, and alignment with existing workflows.
This study presents a systematic literature review (SLR) of 40 peer-reviewed publications focused on the integration of AI in KM. The review follows PRISMA guidelines and includes thematic coding to identify patterns, critical success factors, and knowledge gaps.
Findings indicate that successful AI-enabled KM depends on strong leadership commitment, adaptable governance structures, and context-sensitive technology selection. AI's role is evolving from supporting routine tasks to enabling dynamic, real-time knowledge flows. The review also highlights a critical need to balance automation with human oversight.
Key gaps were identified in understanding cost-benefit trade-offs, ethical implications, and governance mechanisms. These insights suggest directions for future research focused on practical, accountable, and empirically validated KM strategies. As part of an ongoing research project, the synthesized findings will inform the design of future empirical studies. The evidence suggests that, when strategically implemented, AI can serve as a competitive enabler in knowledge-driven organizations.
人工智能(AI)正在通过利用机器学习、神经网络和模糊逻辑等技术来改变组织知识管理(KM),以加强知识发现、捕获、存储和共享。虽然这种转变有望提高效率和实现个性化,但它也带来了与数据质量、员工抵触以及与现有工作流程的一致性相关的挑战。
本研究对40篇专注于人工智能在知识管理中整合的同行评审出版物进行了系统文献综述(SLR)。该综述遵循PRISMA指南,并包括主题编码以识别模式、关键成功因素和知识差距。
研究结果表明,成功的基于人工智能的知识管理取决于强有力的领导承诺、适应性强的治理结构以及与上下文相关的技术选择。人工智能的作用正在从支持日常任务演变为实现动态、实时的知识流动。该综述还强调了在自动化与人工监督之间取得平衡的迫切需求。
在理解成本效益权衡、伦理影响和治理机制方面发现了关键差距。这些见解为未来侧重于实用、可问责且经过实证验证的知识管理策略的研究指明了方向。作为正在进行的研究项目的一部分,综合研究结果将为未来实证研究的设计提供参考。证据表明,当进行战略实施时,人工智能可以成为知识驱动型组织的竞争助力器。