I need to maintain a large directed graph G, with possibly millions of nodes and edges. Potentially it may not fit in memory.
Some frequent operations I need to perform on this graph include:
Each node/edges will have user defined properties associated with it, such as access count, weight, etc.
For each node (vertex), I will need to perform efficient query based on the property values. For example, find the node which has X value greater than v1 but less than v2. This probably requires build an index on certain fields.
I will need to find all incoming edges and outgoing edges of a given node, and update the weight of the edges.
I will need to do local (DFS based) traversal from a given node, and return all paths which satisfy a certain user defined predicate (this predicate may use the property values of the node/edges in a path).
I will need to add/delete nodes/edges efficiently. This is not performed as often as operation 1, 2, 3 though.
Potentially there are some hot-spots in the graph which gets accessed much more often than the other parts, and I would like to cache these hot-spots in memory.
What is the efficient way to achieve this with the least implementation effort?
I am looking at some disk-based graph databases, such as Neo4j/InfiniteGraph/DEX. Even though they support all the above operations, it seem to be an overkill since I don't need a lot of features they are offering, such as consistency/concurrent control or cluster-based replication. Also, a lot of them are based on Java, and I prefer something with a C/C++ interface.
Basically I just need an on-disk graph library which handles persistence, query on nodes and local traversal efficiently. Do you have any recommendation on existing (open source) project which I can use? If not, what's the best way to implement such a thing?