# Finding path with maximum minimum capacity in graph

I am helping a friend with a work related project where, he needs to calculate the maximum capacity from a node a to a node b, where the edge has a capacity. However the maximum capacity in a path from a to b is limited by the edge with the lowest capacity.

Let me try to explain with a simple sample

So the graph is a directed graph with weighted edges, and it can be cyclic. The path with the highest capacity would be s->b->t and have the capacity of 250, since that edge is setting the limit.

I have done a bit of reading and found out that this type of problem is a "Widest path problem" or I would call it something like a path with maximum minimum capacity, but I haven't found any examples or any pseudo code explaining how to tackle this.

I was thinking something in the lines of finding all paths from s to t, using BFS and somehow only to allow visiting a node once in a path, and then find the minimum value in the path, would that work?

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possible duplicate of Finding the path with the maximum minimal weight –  usamec Sep 1 '13 at 8:29

I would use some variant of Dijkstra's. I took the pseudo code below directly from Wikipedia and only changed 5 small things:

1. Renamed `dist` to `width` (from line 3 on)
2. Initialized each `width` to `-infinity` (line 3)
3. Initialized the width of the source to `infinity` (line 8)
4. Set the finish criterion to `-infinity` (line 14)
5. Modified the update function and sign (line 20 + 21)

``````1  function Dijkstra(Graph, source):
2      for each vertex v in Graph:                                 // Initializations
3          width[v] := -infinity  ;                                // Unknown width function from
4                                                                  // source to v
5          previous[v] := undefined ;                              // Previous node in optimal path
6      end for                                                     // from source
7
8      width[source] := infinity ;                                 // Width from source to source
9      Q := the set of all nodes in Graph ;                        // All nodes in the graph are
10                                                                 // unoptimized – thus are in Q
11      while Q is not empty:                                      // The main loop
12          u := vertex in Q with largest width in width[] ;       // Source node in first case
13          remove u from Q ;
14          if width[u] = -infinity:
15              break ;                                            // all remaining vertices are
16          end if                                                 // inaccessible from source
17
18          for each neighbor v of u:                              // where v has not yet been
19                                                                 // removed from Q.
20              alt := max(width[v], min(width[u], width_between(u, v))) ;
21              if alt > width[v]:                                 // Relax (u,v,a)
22                  width[v] := alt ;
23                  previous[v] := u ;
24                  decrease-key v in Q;                           // Reorder v in the Queue
25              end if
26          end for
27      end while
28      return width;
29  endfunction
``````

Some (handwaving) explanation why this works: you start with the source. From there, you have infinite capacity to itself. Now you check all neighbors of the source. Assume the edges don't all have the same capacity (in your example, say `(s, a) = 300`). Then, there is no better way to reach `b` then via `(s, b)`, so you know the best case capacity of `b`. You continue going to the best neighbors of the known set of vertices, until you reach all vertices.

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Can I just replace the vertices with edges? Remember my graph has weighted edges and not vertices. Also how do I specify the destination vertice? –  Cheesebaron Sep 1 '13 at 1:11
@Cheesebaron that's exactly what's happening. The interpretation of `width[v]` is 'the width of the widest path from s to v'. The edge weights are given by `width_between(u, v)` (admittedly, that might be unintuitive, but I just copied the wiki code). You can stop by simply testing `if u = destination` in line 14. –  Heuster Sep 1 '13 at 14:00
Thanks a bunch. Your pseudo code helped a lot! –  Cheesebaron Sep 1 '13 at 16:40