I am yet trying to make use of neo4j to perform a complex query (similar to shortest path search except I have very strange conditions applied to this search like minimum path length in terms of nodes traversed count).
My dataset contains around 2.5M nodes of one single type and around 1.5 billion edges (One single type as well). Each given node has on average 1000 directional relation to a "next" node.
Yet, I have a query that allows me to retrieve this shortest path given all of my conditions but the only way I found to have decent response time (under one second) is to actually limit the number of results after each new node added to the path, filter it, order it and then pursue to the next node (This is kind of a greedy algorithm I suppose).
I'd like to limit them a lot less than I do in order to yield more path as a result, but the problem is the exponential complexity of this search that makes going from LIMIT 40
to LIMIT 60
usually a matter of x10 ~ x100 processing time.
This being said, I am yet evaluating several solutions to increase the speed of the request but I'm quite unsure of the result they will yield as I'm not sure about how neo4j really stores my data internally.
The solution I think about yet is to actually add a property to my relationships which would be an integer in between 1 and 15 because I usually will only query the relationships that have one or two max different values for this property. (like only relationships that have this property to 8 or 9 for example).
As I can guess yet, for each relationship, neo4j then have to gather the original node properties and use it to apply my further filters which takes a very long time when crossing 4 nodes long path with 1000 relationships each (I guess O(1000^4)). Am I right ?
With relationship properties, will it have direct access to it without further data fetching ? Is there any chance it will make my queries faster? How are neo4j edges properties stored ?
UPDATE
Following @logisima 's advice I've written a procedure directly with the Java traversal API of neo4j. I then switched to the raw Java procedure API of Neo4J to leverage even more power and flexibility as my use case required it.
The results are really good : the lower bound complexity is overall a little less thant it was before but the higher bound is like ten time faster and when at least some of the nodes that will be used for the traversal are in the cache of Neo4j, the performances just becomes astonishing (depth 20 in less than a second for one of my tests when I only need depth 4 usually).
But that's not all. The procedures makes it very very easily customisable while keeping the performances at their best and optimizing every single operation at its best. The results is that I can use far more powerful filters in far less computing time and can easily update my procedure to add new features. Last but not least Procedures are very easily pluggable with spring-data for neo4j (which I use to connect neo4j to my HTTP API). Where as with cypher, I would have to auto generate the queries (as being very complex, there was like 30 java classes to do the trick properly) and I should have used jdbc for neo4j while handling a separate connection pool only for this request. Cannot recommend more to use the awesome neo4j java API.
Thanks again @logisima