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Description

«If we think of Data Mesh as an evolution of data lakes, knowledge graphs are an evolution of Master Data Management.»

Data overload is becoming a real challenge for all types of businesses. With all data that is gathered, both in multiple formats and huge volumes, has created a need for connected, contextualized data. Combined with continuing developments in AI, has resulted in increasing interest in knowledge graphs as a means to generate context-based insights.

I had a fantastic chat with Mozhgan Tavakolifard. Mozhgan describes herself as «incubator and alchemist». She worked with PhD-research on trust and SOME. The techniques Mozhgan used to collect data for her research introduced her to Data Science. On this episode of #MetaDAMA, we talked about Knowledge Graph enabled Data Mesh.

Here are my key takeaways:

Data-driven transformation

Data Mesh

  1. Give data back to the domains where it is produced
  2. Create self-service data infrastructure
  3. Federated governance
  4. Data as a product

Knowledge Graphs

«RIP Semantic Web! The Semantic Web is dead.»

Trust