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Video

Home : Knowledge Base : Knowledge Graphs & Data Modeling : Four Key Components of Enterprise Knowledge Graphs

Four Key Components of Enterprise Knowledge Graphs

September 26, 2019
EK Team

Enterprise knowledge graphs are an incredibly valuable tool for relating your structured and unstructured information, allowing you to easily obtain actionable insights from large amounts of information across your enterprise. An enterprise knowledge graph is also an important foundation for achieving semantic artificial intelligence applications (AI) that can help you garner new facts about your content, data, and organizational knowledge. Semantic AI applications, from chatbots, to cognitive search utilizing Natural Language Processing (NLP), to recommendation engines, can all leverage your enterprise knowledge graphs to extract, relate, and deliver answers, recommendations, and insights. In this video, Yanko Ivanov gives a high level overview of the four key components necessary for building a knowledge graph. 

Interested in learning more about knowledge graphs and how they can transform your organization and help you achieve your business goals? Contact us. We are here to help.

EK Team A services firm that integrates Knowledge Management, Information Management, Information Technology, and Agile Approaches to deliver comprehensive solutions. Our mission is to form true partnerships with our clients, listening and collaborating to create tailored, practical, and results-oriented solutions that enable them to thrive and adapt to changing needs. More from EK Team »

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