I'm new to the Graph Database scene, looking into Neo4j and learning Cypher, we're trying to model a graph database, it's a fairly simple one, we got users, and we got movies, users can VIEW movies, RATE movies, create playlists and playlists can HAVE movies.

The question is regarding the Super Node performance issue. And I will quote something from a very good book I am currently reading - Learning Neo4j by Rik Van Bruggen, so here it is:

A very interesting problem then occurs in datasets where some parts of the graph are all connected to the same node. This node, also referred to as a dense node or a supernode, becomes a real problem for graph traversals because the graph database management system will have to evaluate all of the connected relationships to that node in order to determine what the next step will be in the graph traversal.

The solution to this problem proposed in the book is to have a Meta node with 100 connections to it, and the 101th connection to be linked to a new Meta node that is linked to the previous Meta Node.

DENSE_LIKES fanning out

I have seen a blog post from the official Neo4j Blog saying that they will fix this problem in the upcoming future (the blog post is from January 2013) - http://neo4j.com/blog/2013-whats-coming-next-in-neo4j/

More exactly they say:

Another project we have planned around “bigger data” is to add some specific optimizations to handle traversals across densely-connected nodes, having very large numbers (millions) of relationships. (This problem is sometimes referred to as the “supernodes” problem.)

What are your opinions on this issue? Should we go with the Meta node fanning-out pattern or go with the basic relationship that every tutorial seem to be using? Any other suggestions?


UPDATE - October 2020. This article is the best source on this topic, covering all aspects of super nodes

(my original answer below)

It's a good question. This isn't really an answer, but why shouldn't we be able to discuss this here? Technically I think I'm supposed to flag your question as "primarily opinion based" since you're explicitly soliciting opinions, but I think it's worth the discussion.

The boring but honest answer is that it always depends on your query patterns. Without knowing what kinds of queries you're going to issue against this data structure, there's really no way to know the "best" approach.

Supernodes are problems in other areas as well. Graph databases sometimes are very difficult to scale in some ways, because the data in them is hard to partition. If this were a relational database, we could partition vertically or horizontally. In a graph DB when you have supernodes, everything is "close" to everything else. (An Alaskan farmer likes Lady Gaga, so does a New York banker). Moreso than just graph traversal speed, supernodes are a big problem for all sorts of scalability.

Rik's suggestion boils down to encouraging you to create "sub-clusters" or "partitions" of the super-node. For certain query patterns, this might be a good idea, and I'm not knocking the idea, but I think hidden in here is the notion of a clustering strategy. How many meta nodes do you assign? How many max links per meta-node? How did you go about assigning this user to this meta node (and not some other)? Depending on your queries, those questions are going to be very hard to answer, hard to implement correctly, or both.

A different (but conceptually very similar) approach is to clone Lady Gaga about a thousand times, and duplicate her data and keep it in sync between nodes, then assert a bunch of "same as" relationships between the clones. This isn't that different than the "meta" approach, but it has the advantage that it copies Lady Gaga's data to the clone, and the "Meta" node isn't just a dumb placeholder for navigation. Most of the same problems apply though.

Here's a different suggestion though: you have a large-scale many-to-many mapping problem here. It's possible that if this is a really huge problem for you, you'd be better off breaking this out into a single relational table with two columns (from_id, to_id), each referencing a neo4j node ID. You then might have a hybrid system that's mostly graph (but with some exceptions). Lots of tradeoffs here; of course you couldn't traverse that rel in cypher at all, but it would scale and partition much better, and querying for a particular rel would probably be much faster.

One general observation here: whether we're talking about relational, graph, documents, K/V databases, or whatever -- when the databases get really big, and the performance requirements get really intense, it's almost inevitable that people end up with some kind of a hybrid solution with more than one kind of DBMS. This is because of the inescapable reality that all databases are good at some things, and not good at others. So if you need a system that's good at most everything, you're going to have to use more than one kind of database. :)

There is probably quite a bit neo4j can do to optimize in these cases, but it would seem to me that the system would need some kinds of hints on access patterns in order to do a really good job at that. Of the 2,000,000 relations present, how to the endpoints best cluster? Are older relationships more important than newer, or vice versa?

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    Thanks for the answer, read it a couple of time, we want Neo4j to power an entire platform, worked a lot with SQL databases, some of the questions we need to answer would be fairly simple: "Get all the playlists a user has and all of the movies in that playlists" or "Get all the movies I like", I fear that compared to the MySQL counterpart, the answer to the question "Get all the movies I like" would have a 0.001 answer in MySQL and a huge one in Neo4j – Eek Dec 21 '14 at 14:21
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    For those queries, all neo sounds perfectly fine. Those queries sound like they might touch supernodes (if one of my favorite movies is extremely popular) but not navigate through supernodes. A bad query might be, "show me all movies that people who liked the Shawshank Redemption liked". – FrobberOfBits Dec 22 '14 at 12:44

Re. the Neo4j blog, dense node support should be enhanced in Neo4j 2.1 (and above), see also http://neo4j.com/blog/neo4j-2-1-graph-etl/


(disclaimer: not an answer, but some discussion)

The 2013 neo4j blog post you mentioned links to this github commit, where the intended problem scope and its solution is discussed. To summarize, it does not address the general supernode issue. Instead, it alleviates the issue when, among multiple relationship types (and directions) that a supernode has, some of the types (directions) happen to have disproportionately less edges than the others. The engine is able to filter based on types and directions.

A more generic solution is the vertex centric approach from Titan (https://stackoverflow.com/a/21385213/1311956), which sort the edges by one or a composite of properties, result in O(log(E)) searching performance, where E is the number of edges in/out of the supernode.

Neo4j has the concept of index on relationships. Unlike vertex centric approach of Titan, the index is global. However, relationship index is a legacy one in Neo4j. This is discussed in another stackoverflow thread.

Another issue with Supernode is the storage problem which leads to storage issue and IO cost.

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