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Neo4j is a really fast and scalable graph database, it seems that it can be used on business projects and it is free, too!

At the same time, there are no RDF triple stores that work well with large data or deliver a high-speed access. And what is more, free RDF triple stores perform even worse.

So what is the advantage of RDF and RDF triple stores to Neo4j?

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"really fast", can you quantify this? For example, loading speed... how many vertex|edges per second is 'really fast'? "scale graph database", can you quantify this? For example, how many vertex|edges on a server with X GB of RAM? –  castagna Apr 29 '12 at 12:36
@castagna: insertion or retrieval? With Pythonic bindings it is only twice slower when used on triplet insertion compared to a an optimized SQLAchemy / SQLite stack. For the traversal, if I remember well, it was well over 1 M edges/second on my personal machine (6GB RAM), but I think it can go beyond. For the pure queries on relation (vertexes, relations, etc...), no4j server on my machine is doing well over 1k transaction/s, even if the database is getting close to 1M indexed properties with 100sk of nodes and close to a M relations –  chiffa Jul 17 '13 at 22:17

4 Answers 4

up vote 13 down vote accepted

The advantage of using a triple store for RDF rather than Neo4j is that that's what they're designed for. Neo4j is pretty good for many use cases, but in my experience its performance for loading and querying RDF is well below all dedicated RDF databases.

It's a fallacy that RDF databases don't scale or are not fast. Sure, they're not yet up to the performance & scale levels that relational databases have, but they have a 50 year head start. Many triple stores scale into the billions of triples, provide 'standard' enterprise features, and provide great performance for many use cases.

If you're going to use RDF for a project, use a triple store; it's going to provide the best performance and set of features/APIs for working with RDF to build your application.

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Neo4J supports Sparql and Gremlin: blog.neo4j.org/2010/02/top-10-ways-to-get-to-know-neo4j.html Query languages Beyond using Neo4j programmatically, you can also issue queries using a query language. These are the supported options at the moment: SPARQL: Neo4j can be used as a triple- or quadstore, and has SAIL and SPARQL implementations. Go to the components site to find out more about the related components. Gremlin: a graph-based programming-language with different backend implementations in the works as well as a supporting toolset. –  sdw Apr 26 '13 at 0:34

RDF and SPARQL are standards, so you have a choice of multiple implementations, and can migrate your data from one RDF store to another.

Additionally, version 1.1 of the SPARQL query language is quite sophisticated (more expressive than most SQL implementations) and can do all kinds of queries that would require a lot of code to be written in Neo4J.

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If you are going for graph mining (e.g., graph traversal) upon triples, neo4j is a good choice. For the large triples, you might want to use its batchInserter which is fairly fast.

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I have heard rumors that it takes whole day to load 10M triples into Neo4j (it is actually the slowest one because it's not built primarily for RDF).

Sesame and 4Store are the fastest ones but Jena has powerful API.

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where did you hear these rumors? –  Janus Troelsen Aug 9 '13 at 13:58

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