I'm trying to design a project that takes global positioning data, like city and state names along with latitudes and locations. I'll also have distances between every pair of cities. I want to make a graph with all of this information, and manipulate it to perform some graph algorithms. I've decided to have city objects which contains each location's data. Now should I have a hash function to differentiate objects? And how should I handle graph algorithms that combine nodes and remove edges?
def minCut(self): """Returns the lowest-cost set of edges that will disconnect a graph""" smcut = (float('infinity'), None) cities = self.__selectedcities[:] edges = self.__selectededges[:] g = self.__makeGRAPH(cities, edges) if not nx.is_connected(g): print("The graph is already diconnected!") return while len(g.nodes()) >1: stphasecut = self.mincutphase(g) if stphasecut < smcut: smcut = (stphasecut, None) self.__merge(g, stphasecut, stphasecut) print("Weight of the min-cut: "+str(smcut))
It's in really bad shape. I'm rewriting my original program, but this is the approach i took from the previous version.