#GraphCast: Building a Music Knowledge Graph
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Neo4j Content Coordinator
1 min read
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Last time, Angela Zimmerman, our Blog Managing Editor, brought us a video showing how graph technology can be used to explore Pokemon.
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This week, I wanted to share with you a fun video in which the team over at GraphAware showed us how they built a music knowledge graph.
Using Neo4j as the source and target database for workflow data processing, they collected almost 400 song recommendations from individuals on the team and created a database of their musical tastes.
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