I'm working on a academic project: writing a library for finding the shortest path on large, weighted, directed graphs.
The example data set is a graph of 1500 vertices with an average of 5.68 edges per node. Specification may vary up to 20.000 nodes.
Moreover I'm working in a cpu / memory bound, environment: Android.
Edge weight is not trivial, nor costant. It depends on variable states of the graph.
We must work offline.
I face several difficulties:
I need an efficient way to store, retrive and update data of the graph. Should I use a SQLite object with queries from the Java classes, a large custom java object on the heap, or what? I think this is the most performance-critical aspect.
I need an efficient way to implement some kind of short path algorithm. Since all the weight are positive, should I apply the Dijikstra algorithm with an ArrayList as the container of the visited nodes?
Is this a good case to use the NDK? The task is CPU intensive, but it also make frequent access to the memory, so I don't think so, but I'm open to contribution.
Always remember that resources are scarce, ram is insufficient, disk is slow, cpu is precious (battery - wise).
Any advice is wellcome, cheers :)