Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

To see the advantages of using Neo4J for friend-relationships, i created on MySQL database with one table for the Persons ("Persons", 20900 datasets):

id     | name
 1     | Peter
 2     | Max
 3     | Sam
 ...   | ...
 20900 | Rudi

and one table for the relationships ("Friendships", each person with 50 to 100 friends):

personen_id_1 | personen_id_2
 1         | 2
 1         | 3
 2         | 56
 ...       | ...
 20900     | 201

so, there are arround 1.2 million relationships.

Now i want to now the friends-of-friends-of-friends-of-friends of Person with id=1, so i crafted a query like this:

select distinct P.name
from Friendships f
join Friendships f2 ON f.personen_id_2 = f2.personen_id_1
join Friendships f3 ON f2.personen_id_2 = f3.personen_id_1
join Friendships f4 ON f3.personen_id_2 = f4.personen_id_1
join Persons P ON f4.personen_id_2 = P.id
where f.personen_id_1 = 1

the query took arround 30 seconds for user-id 1

In Neo4J i created for each person one Node (20900 Nodes) with one name-property. All nodes were connected equal to the Friendships-table in MySQL, so there are 1.2 million relationships.

to get the same frinedset here, i typed in gremlin:

gremlin> g.v(1).outE.inV.loop(2){ it.loops <= 4 }.name.dedup.map()

this took arround 1 minute. I dont expected this at all!

so is my comparsion correct? and if yes, how to modify this example to show the advantages of using neo4j for this task?

share|improve this question
What JVM setup did you use? And what is your hardware? The default memory settings for a JVM are much too small for a database. If this is the first run, it will just measure your disk speed to pull in the data. – Michael Hunger Dec 12 '12 at 13:04
i use oracle jvm 1.6 with the heap-size set to java -Xms 1G -Xmx 1G – chris Jan 5 '13 at 12:25

If you know you are doing 4 loops, do this:


There is a known semantic bug in Gremlin where loop() will turn into a breadth-first query. https://github.com/tinkerpop/pipes/issues/25

Moreover, don't do outE.inV if you don't need to. The equivalent is out. Also, realize you are doing a 4 step search, that is a massive computation (combinatorial explosion). This is something that graph databases are not good at. You will want to look at a batch analytics framework like Faunus for this -- http://thinkaurelius.github.com/faunus/. For a reason why, see http://thinkaurelius.com/2012/04/21/loopy-lattices/

Graph databases are optimized for local traversals, by 4 steps, you touched (most likely) your entire dataset and using a "get get get"-style of database access, this is not efficient.

HTH, Marko.

share|improve this answer
okay, but i thought this should be more efficient than the same szenario in mysql?! – chris Dec 12 '12 at 11:09

I'm not overly familiar with Gremlin, but I generated a similar sized dataset (stats below) and ran an equivalent query in Cypher:

START person=node:user(name={name})
MATCH person-[:FRIEND]-()-[:FRIEND]-()-[:FRIEND]-()-[:FRIEND]-friend
RETURN friend.name AS name

I ran this 1000 times against the dataset, each time picking a different user as the starting point. I didn't warm the cache before running the tests, so this was from a standing start. Average response time: 33 ms.

Running on a MacBook Pro, 2.2 GHz Intel Core i7, 8 GB RAM, 4 GB heap

Here are the graph stats:

| user           | 20900                       |
|                | Average |    High |     Low |
| FRIEND                                       |
|       OUTGOING |      74 |     100 |      48 |
|       incoming |      74 |     123 |      31 |

| _UNKNOWN       | 1                           |
|                | Average |    High |     Low |

| Totals                                       |
| Nodes          | 20901                       |
| Relationships  | 1565787                     |
| FRIEND         | 1565787                     |
share|improve this answer
my specs: Corei5 2.5GHz, 8GB Ram, 2GB Java Heap-size. After increasing the RAM-size for memeory-io mapping of nodes and relationships, e.g. neostore.nodestore.db.mapped_memory=1000M neostore.relationshipstore.db.mapped_memory=1000M the query took 30 seconds, still too long – chris Dec 11 '12 at 21:11
the cypher query is as slow as the one in gremlin – chris Dec 11 '12 at 21:15
With your dataset, at depth 4, everybody is likely connected to everybody else. If each person has exactly 100 friends, then a depth 4 search will traverse 100 x 100 x 100 x 100 relationships, which is 100,000,000 traversals, or 100,000,000 entities visited. On commodity hardware, Neo4j can typically traverse 1-2 million relationships per second - that is, 1-2 million joins per second. So the numbers add up. If this were a real domain, we'd probably only want the first 100 or 1000 people at depth 4: if you iterate the result 100 times, you'll get the low ms response. – Ian Dec 11 '12 at 21:52
can you give an example for getting only the 100 first nodes of a depth 4 search in gremlin? – chris Dec 12 '12 at 11:16
In Cypher, this looks like START person=node:user(name={name}) MATCH person-[:FRIEND]-()-[:FRIEND]-()-[:FRIEND]-()-[:FRIEND]-friend RETURN friend.name AS name LIMIT 100, be sure to use Neo4j 1.9.M02 for this as there are some major optimisations around this done. – Peter Neubauer Dec 12 '12 at 12:58

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.