I have a dataset which is best represented by a graph. It consists of nodes of 6 or 7 different "types" with directed edges (dependencies on one another, guaranteed not to have cyclic dependencies). The dataset is essentially a template of a layered configuration, and the user needs to be able to select bits and pieces of the configuration from different layers which are desired, and have the dependent bits be brought in automatically.
The dataset is large and complex enough that actually showing it as a graph would be overwhelming and confusing to the user. Only basic graph traversal operations are needed, since all that is required is to cascade selections out the dependencies. (For example, a user un-selecting a node would result in that nodes dependencies becoming unselected if there were no other selected node which still depended on them. A user selecting a node would result in all of that node's dependencies becoming selected.) A simple depth or breadth first search following directed edges from the start node will suffice to visit all affected nodes. If I can follow edges either direction, bonus. (If not I can easily generate an edge-reversed graph and use that when needed.)
If anyone has experience with something from that list and believes that the graph portion of it can be used independently of the visualization portion, that will certainly meet my needs. If there is some other library I could use that meets my needs, that would be great too. One final requirement regarding licensing: the library needs to be "free" in a non-copyleft way - So ideally Apache v2.0, BSD, MIT, or something like that.