In our stack, we use neo4j and have encountered classical performance issues : application is slow as hell as soon as it requires data from neo4j.
Listening only my courage (pun intended) I started JVisualVM and done a profiling of application.
This application is hosted in a JavaEE server (Glassfish) and uses a quasi-semantic stack made of Empire-RDF, Blueprints, and neo4j. Access to neo4j is offered by JCA neo4j-connector.
Like this screenshot suggests, there is strong evidence that there is a bottleneck in neo4j data retrieval.

My question is double, but simple.
- Is that performance level normal ? (I guess no)
- What can I do to improve those performances ?
EDIT here are some informations regarding the test procdure that should enlighten both of you.
My graph structure is, to me, unknown : as I'm using Empire-RDF on top of Blueprints/Sesame/Neo4J, I only know the Java objects I'm manipulating, which are ten intereconnected classes, and they unfortunatly are at the very core of our buisness, so I can't disclose them.
Consider, for the sake of this example, they create a tree of visual elements linked to entities representing URI targets.
I have a maven test that runs a combination of read/write operation (I will say there is between 20 and 50 JPA operations involved). This maven test runs in 300 seconds.
On a lower level,
- application is run on Windows-7 and Mac OS X 10.6, with various sub-versions of Java 1.6.
- Application is hosted on a Glassfish 3.1.1
- neo4j DB is version 1.5, accessed through neo4j-connector for JCA (there is no customization made to default settings).
- Sesame is version 2.6.0
- blueprints is version 1.1
- Empire-RDF is version 0.7
As a last world, diving into jVisualVM sampler reveals most of the application time is spent in those NodeManager#getNodeForProxy calls.