基于人工智能的业务流程自动化增强知识管理

V. Bindhu
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引用次数: 1

摘要

基于人工智能(AI)的客户关系管理(CRM)系统用于发现关键成功因素(CSF),以改进自动化业务流程并提供更好的知识管理(KM)。此外,不同的因素有助于实现有效的知识管理与人工智能方案的CRM系统。确定关键要素可以通过多种方式完成。为此,采用了德尔菲法、名义小组法和头脑风暴法。利用解释结构建模(ISM)方法,确定了10个关键变量、显著度和相互作用。在整合知识管理、客户关系管理和人工智能的十个变量中,像资金、领导和支持这样的csf是最重要的。此方法具有显著改进业务流程的潜力。
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Artificial Intelligence based Business Process Automation for Enhanced Knowledge Management
A customer relationship management (CRM) system based on Artificial Intelligence (AI) is used to discover critical success factors (CSF) in order to improve the automated business process and deliver better knowledge management (KM). Moreover, different factors contribute towards achieving efficient knowledge management in CRM systems with AI schemes. Identifying the key elements may be accomplished in a variety of ways. For this purpose, Delphi technique, nominal group technique, and brainstorming approach are used. Using the interpretive structural modelling (ISM) approach, ten key variables, significance degree, and interaction are determined. CSFs such as funding, leadership, and support are the most important of the ten variables identified for integrating KM, CRM, and AI. This approach has the potential to significantly improve the business processes.
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