I am using Gremlin and Neo4j to manipulate the ENRON dataset from infochimps. This dataset has two types of vertexes, Message and Email Addresss and two types of edges, SENT and RECEVIED_BY. I would like to create a custom index on this dataset that creates a Lucene document for each vertex of type: 'Message' and incorporates information from associated vertexes (e.g., v.in(), v.out()) as additional fields in the Lucene document.
I am thinking of code along the lines of
g = new Neo4jGraph('enron');
PerFieldAnalyzerWrapper analyzer =
new PerFieldAnalyzerWrapper(new StandardAnalyzer());
analyzer.addAnalyzer("sender", new KeywordAnalyzer());
analyzer.addAnalyzer("recipient", new KeywordAnalyzer());
IndexWriter idx = new IndexWriter (dir,analyzer,IndexWriter.MaxFieldLength.UNLIMITED);
g.V.filter{it.type == 'Message'}.each { v ->
Document doc = new Document();
doc.add(new Field("subject", v.subject));
doc.add(new Field("body", v.body));
doc.add(new Field("sender", v.in().address);
v.out().each { recipient ->
doc.add(new Field("recipient", recipient.address));
}
idx.addDocument(doc);
}
idx.close();
My questions are:
- Is there a better way to enumerate vertexes for indexing?
- Can I use auto-indexing for this, and if so, how to I specify what should be indexed?
- Can I specify my own
Analyzer, or am I stuck with the default? What is the default? - If I must create my own index, should I be using gremlin for this, or am I better off with a Java program?