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Let's say I've got directed graph with 100k nodes and 500k edges. From them 15k nodes are 'important'. I need to find 100 nearest 'important' nodes starting from one specific node.

I've implemented Dijkstra algorithm in C#, which finds distance from starting node to all other nodes. Then I sort 'important' nodes by distance and return 100 first. This takes about 1 second.

Now I need to do the same at server side (Linux) with possibly many concurrent queries and different starting nodes. I've tried node4j graph database, and after consulting with the developers, we've got solution which does the same in 10-20 sec (actually, if we compute paths without length limit, it takes about 10 min). It takes so long, because neo4j stores all shortest paths, and my C# implementation stores only distances. The only option to make it faster in neo4j is to write extension which isn't trivial.

So question is: is there any graph db (non-commercial) that can be installed at Linux server and is able to run such query fast? I've checked all graph dbs from wikipedia list, and didn't find anything suitable.

Another option is to implement same algorithm in Java and make a service (Tomcat?) that will store shared copy of the graph (how?) and will answer these queries. But I'd prefer something ready...

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How do you define your important nodes? Do you have a list? Or other properties? Any chance to share your graph or a generated similar graph? –  Michael Hunger Mar 27 '13 at 20:36
What version of neo4j did you use? –  Michael Hunger Mar 27 '13 at 20:38
important nodes are in special neo4j index, so I can get their list fast –  E M Mar 28 '13 at 0:03
I've used 1.8.2 –  E M Mar 28 '13 at 0:03
basically graph is genealogical forest –  E M Mar 28 '13 at 0:04
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2 Answers

up vote 2 down vote accepted

Writing a Neo4j Extension to do this isn't as bad as you think.

See here for an example: http://maxdemarzi.com/2012/11/26/extending-neo4j/

And this one does "custom" pathfinding using the A* algorithm: http://maxdemarzi.com/2012/11/27/pathfinding-with-neo4j-unmanaged-extensions/

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thanks, I'll check it out –  E M Mar 28 '13 at 6:24
BTW: A* won't be an optimization over dijkstra in a one-to-many case. It could lead to little faster running times when you're doing a bidirectional search (for every 15k points) –  Karussell Mar 31 '13 at 9:22
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This is intended as a compliment to the answer @MaxDeMarzi gave...

You mention that your C# implementation: (1) finds distance from starting node to ALL other nodes, (2) SORTS 'important' nodes by distance, (3) returns 100 first.

To improve efficiency could you do something like this instead?

top = 100

Then, every time Dijkstra finds the shortest path to a new node:

if (isImportant(node)) resultSet.add(node,distance)
if (resultSet.size() >= top) return resultSet

This would avoid finding paths to nodes you're not interested in

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You're right, I could stop after finding N nearest nodes. Just for client-side version 1 sec was more than enough. But for the server-side version it will be nice optimization. –  E M Mar 28 '13 at 12:14
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