Blazegraph™ DB: An Incredibly High-Performance Graph Database with Unparalleled Scalability

Blazegraph™ DB: An Incredibly High-Performance Graph Database with Unparalleled Scalability
Photo by Erik Karits / Unsplash

Table of Content

Blazegraph™ DB is an incredibly high-performance graph database that provides support for Blueprints and RDF/SPARQL APIs. With the ability to handle up to 50 Billion edges on a single machine, it offers unparalleled scalability.

This powerful database is trusted by Fortune 500 companies such as EMC, Autodesk, and many others. It plays a critical role in supporting key Precision Medicine applications and is widely used in the field of life sciences.

Additionally, it is extensively utilized in both commercial and government applications for Cyber analytics. Notably, it is the driving force behind the Wikimedia Foundation's Wikidata Query Service, enabling efficient and effective data querying.

Features

  • Graph Database
  • RDF
  • SPARQL
  • Highly Available
  • Dual License
  • Easily Embedded
  • Horizontal Scaling
  • Tinkerpop
  • Triples, quads, or triples with provenance (RDR/SIDs)
  • RDF Graph Mining Service GASService
  • Fast 100% native SPARQL 1.1 evaluation
  • Reification Done Right RDR support
  • Gremlin

Tech

Java

License

  • GPL-2.0 license

Resources & Downloads

GitHub - blazegraph/database: Blazegraph High Performance Graph Database
Blazegraph High Performance Graph Database. Contribute to blazegraph/database development by creating an account on GitHub.







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