It is a distributed graph database that is optimized for enterprise applications–Zero downtime, fast traversals at scale, and analysis of complex, related datasets in real time. | It is a scalable graph database optimized for storing and querying graphs containing hundreds of billions of vertices and edges distributed across a multi-machine cluster. It is a transactional database that can support thousands of concurrent users executing complex graph traversals in real time. |
Graph Powered Insights;
Graph Your Way;
Graph Available Always
| Elastic and linear scalability for a growing data and user base;
Data distribution and replication for performance and fault tolerance;
Multi-datacenter high availability and hot backups;
Support for ACID and eventual consistency;
Support for various storage backends: HBase, Cassandra, Bigtable, DynamoDB, BerkeleyDB;
Support for global graph data analytics, reporting, and ETL through integration with big data platforms: Spark, Giraph, Hadoop;
Support for geo, numeric range, and full-text search via:
ElasticSearch, Solr, Lucene;
Native integration with the Apache TinkerPop graph stack;
Open source under the Apache 2 license |
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Integrations | |

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