I'm trying to find nodes where a relationship exists between a person and location as well as filter that location within a certain bounding box.
I'm able to produce the results I need but the poor performance is becoming an issue:
In the example below I'm starting with a user and finding all locations that user or anyone that user knows (up to 3 relationships deep) has visited.
START user = node:USER('username:"testuser"') MATCH user-[:KNOWS*0..3]->(users)<-[:VISITED]-place RETURN place;
The performance is fine (<200 ms).
Once I add in the spatial filter the execution time jumps to 10 seconds.
START user = node:USER('username:"testuser"'), place = node:LOCATION("bbox:[-0.32487837,0.10114981,50.469185,52.508842]") MATCH user-[:KNOWS*0..3]->(users)<-[:VISITED]-place RETURN place;
The spatial query itself returns very quickly (< 100 ms), it's only when you put both of these start conditions together that the query hits the brakes.
Is there a better way of structuring this query so it performs better?
Any advice for executing a query with both a spatial filter as well as other indexed conditions?
Additional context: This is Neo4j 1.9.2 via the Web Console. In the example above the number of users 0-3 levels from testuser is 16. The number of places in the universe is >1000. The number of places within the bounding box is 933. The final number of places in the result is 290. The nodes themselves are very small - only ID and spatial data. The entire graph database is about 7 MB in size.
Updated with query plan
==> ColumnFilter(symKeys=["users", "user", " UNNAMED6", "place", " UNNAMED5"], returnItemNames=["place"], _rows=2633, _db_hits=0) ==> PatternMatch(g="(user)-[' UNNAMED5']-(users)", _rows=2633, _db_hits=0) ==> Nodes(name="user", _rows=13281, _db_hits=13281) ==> TraversalMatcher(trail="(place)-[ UNNAMED6:VISITED WHERE true AND true]->(users)", _rows=13281, _db_hits=14214) ==> ParameterPipe(_rows=1, _db_hits=0)
I rebuild the graph, tuned the memory, shut down all other running applications, moved it to a much faster server and got it down to 2 seconds. The data is going to grow by 2 significant digits in a production scenario however so this really needs to be in the 1/10 of a second space...