# Longest acyclic path in a directed unweighted graph

What algorithm can be used to find the longest path in an unweighted directed acyclic graph?

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Dynamic programming. It is also referenced in Longest path problem, given that it is a DAG.

The following code from Wikipedia:

``````algorithm dag-longest-path is
input:
Directed acyclic graph G
output:
Length of the longest path

length_to = array with |V(G)| elements of type int with default value 0

for each vertex v in topOrder(G) do
for each edge (v, w) in E(G) do
if length_to[w] <= length_to[v] + weight(G,(v,w)) then
length_to[w] = length_to[v] + weight(G, (v,w))

return max(length_to[v] for v in V(G))
``````
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This returns just the length of the path. Can the code easily be modified to return the path? –  oschrenk Apr 2 '12 at 20:46
Yes, the same way with most DP problems -- keep track of the previous and go back on it. –  Larry Jul 17 '12 at 16:34

As long as the graph is acyclic, all you need to do is negate the edge weights and run any shortest-path algorithm.

EDIT: Obviously, you need a shortest-path algorithm that supports negative weights. Also, the algorithm from Wikipedia seems to have better time complexity, but I'll leave my answer here for reference.

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and do we keep the negative weights as negative ? :p –  Hellnar Mar 27 '10 at 0:26
@Hellnar: nope, if you have negative weights in the original graph, they should become positive. w' = -(w) –  Can Berk Güder Mar 27 '10 at 9:55

Wikipedia has an algorithm: http://en.wikipedia.org/wiki/Longest_path_problem

Looks like they use weightings, but should work with weightings all set to 1.

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This problem is NP-complete. What this means in practice is that for a large random graph there's no known algorithm that can solve this in reasonable time.

If the graph has a special property, like being small, or being acyclic, or alternatively if you just wish to find a long path and not necessarily the longest, then that might be doable.

So find out if any of these cases (or another interesting property) applies and then your refined question might be solvable.

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Can be solved by critical path method:
1. find a topological ordering
2. find the critical path
see [Horowitz 1995], Fundamentals of Data Structures in C++, Computer Science Press, New York.

Greedy strategy(e.g. Dijkstra) will not work, no matter:1. use "max" instead of "min" 2. convert positive weights to negative 3. give a very large number M and use M-w as weight.

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