Predominantly DFS is used to find a cycle in graphs and not BFS. Any reasons? Both can find if a node has already been visited while traversing the tree/graph.

Depth first search is more memory efficient than breadth first search as you can backtrack sooner. It is also easier to implement if you use the call stack but this relies on the longest path not overflowing the stack. Also if your graph is directed then you have to not just remember if you have visited a node or not, but also how you got there. Otherwise you might think you have found a cycle but in reality all you have is two separate paths A>B but that doesn't mean there is a path B>A. With a depth first search you can mark nodes as visited as you descend and unmark them as you backtrack. See comments for a performance improvement on this algorithm. For the best algorithm for detecting cycles in a directed graph you could look at Tarjan's algorithm. 





A BFS could be reasonable if the graph is undirected (be my guest at showing an efficient algorithm using BFS that would report the cycles in a directed graph!), where each "cross edge" defines a cycle. If the cross edge is The only reason to use a BFS would be if you know your (undirected) graph is going to have long paths and small path cover (in other words, deep and narrow). In that case, BFS would require proportionally less memory for its queue than DFS' stack (both still linear of course). In all other cases, DFS is clearly the winner. It works on both directed and undirected graphs, and it is trivial to report the cycles  just concat any back edge to the path from the ancestor to the descendant, and you get the cycle. All in all, much better and practical than BFS for this problem. 


If you place a cycle at a random spot in a tree, DFS will tend to hit the cycle when it's covered about half the tree, and half the time it will have already traversed where the cycle goes, and half the time it will not (and will find it on average in half the rest of the tree), so it will evaluate on average about 0.5*0.5 + 0.5*0.75 = 0.625 of the tree. If you place a cycle at a random spot in a tree, BFS will tend to hit the cycle only when it's evaluated the layer of the tree at that depth. Thus, you usually end up having to evaluate the leaves of a balance binary tree, which generally results in evaluating more of the tree. In particular, 3/4 of the time at least one of the two links appear in the leaves of the tree, and on those cases you have to evaluate on average 3/4 of the tree (if there is one link) or 7/8 of the tree (if there are two), so you're already up to an expectation of searching 1/2*3/4 + 1/4*7/8 = (7+12)/32 = 21/32 = 0.656... of the tree without even adding the cost of searching a tree with a cycle added away from the leaf nodes. In addition, DFS is easier to implement than BFS. So it's the one to use unless you know something about your cycles (e.g. cycles are likely to be near the root from which you search, at which point BFS gives you an advantage). 


BFS wont work for a directed graph in finding cycles. Consider A>B and A>C>B as paths from A to B in a graph. BFS will say that after going along one of the path that B is visited. When continuing to travel the next path it will say that marked node B has been again found,hence, a cycle is there. Clearly there is no cycle here. 


To prove that a graph is cyclic you just need to prove it has one cycle(Edge pointing towoards itself either directly or indirectly). In DFS we take on vertex at a time and check if it has cycle. As soon a cycle is found we can omit checking other vertex. In BFS we need to keep track of many vertex's edges simultaneously and more often than not at the end you find out if it has cycle. As the size of graph grows BFS requires more space, computation and time compared to DFS. 

