# What is difference between BFS and Dijkstra's algorithms when looking for shortest path?

I was reading about Graph algorithms and I came across these two algorithms.

I searched a lot about this but didn't get any satisfactory answer!

I have a doubt that what is the difference between Dijkstra's algorithm and BFS while looking for shortest path?

while using BFS for finding shortest path in a graph what we do is

We discover all the connected vertices, add them in the queue and also maintain the distance from source to that vertex. Now if we find a path from source to that vertex with still less distance then we update it!

This is exactly the same thing we do in Dijkstra's algorithm! then what is the difference between Dijkstra's and BFS? And then why are the time complexities of these algorithms so different?

If anyone can explain it with the help of a pseudo code then I will be very grateful!

I know I am missing something! Please help!

• Have you looked at wikipedia? "Breadth-first search can be viewed as a special-case of Dijkstra's algorithm on unweighted graphs, where the priority queue degenerates into a FIFO queue." – hatchet Aug 22 '14 at 14:50
• Yes! I have read almost all question related to this on stackoverflow too but didn't get proper answer! – harrythomas Aug 22 '14 at 14:51
• – nurb Jan 24 at 0:25

## 2 Answers

Breadth-first search is just Dijkstra's algorithm with all edge weights equal to 1.

Dijkstra's algorithm is conceptually breadth-first search that respects edge costs.

The process for exploring the graph is structurally the same in both cases.

• Then why is the difference between time complexities? I mean why do they say that use BFS rather than Dijkstra's when looking for shortest path in non weighted graph? – harrythomas Aug 22 '14 at 14:55
• @harrythomas Dijkstra's uses a priority queue data structure to keep track of the frontier of unvisited nodes. Breadth-first search uses a regular queue data structure. Operations on a priority queue are O(log n). Operations on a regular queue are O(1). The use of a regular queue in BFS is made possible by all edge weights being 1 - which makes the regular queue effectively behave as a priority queue. – Timothy Shields Aug 22 '14 at 14:56
• Thanks a lot! That cleared my confusion! – harrythomas Aug 22 '14 at 14:58

Blockquote while using BFS for finding shortest path in a graph what we do is We discover all the connected vertices, add them in the queue and also maintain the distance from source to that vertex. Now if we find a path from source to that vertex with still less distance then we update it!

We do not maintain a distance in BFS. It is for discovery of nodes. So we put them in a general queue and pop them. unlike in Dijikstra where we put accumulative weight of node (after relaxation) in a priority queue and pop the min distance.

So BFS would work like dijikstra in equal weight graph because.

complexity varies because of the use of simple queue and priority queue.