Let’s talk to each other What topic are you most interested in? Select a topic*Data Integration and Data FabricSearch and Recommender EnginesTaxonomies, Ontologies and Knowledge GraphsText mining and Tagging Not the topic you are looking for? Contact us! Select a topic*Data Integration and Data FabricSearch and Recommender EnginesTaxonomies, Ontologies and Knowledge GraphsText mining and Tagging Data Integration and Data Fabric The semantic data fabric is a new solution to data silos that combines the best-of-breed technologies, data catalogs and knowledge graphs, based on Semantic AI. With a semantic data fabric, companies can combine text and documents (unstructured) with data residing in relational databases and data warehouses (structured) to create a much more comprehensive and accurate view of their customers, employees, products, and other vital areas of business. Search and Recommender Engines Arrive at enriched and in-depth search results that provide relevant facts and contextualized answers to your specific questions, rather than a broad search result with many (ir)relevant documents and messages – but no valuable input. Find out how knowledge graphs can be used to implement semantic search and recommendations that are relevant to your users. Taxonomies, Ontologies and Knowledge Graphs Many organizations are already using knowledge graph technology to help themselves stay ahead of the game. And knowledge graphs and graph databases have been in use for all types of industries, ranging from banking, the auto industry, oil and gas to pharmaceutical and health, retail, publishing, the media and more. Although these companies use Knowledge Graphs for different use cases, the end game is the same: adding value to data so it can be used (and ultimately re-used) in a meaningful and more intelligent way. Text mining and Tagging Manually tagging an entire database, file by file, is very time-consuming and involves a lot of people. But worse than that, one of the results of manual tagging are inconsistent search results. Graph-based text mining can improve this process making it not only faster, but more consistent and precise. This is achieved by automatically assigning metadata to documents based on controlled vocabularies.