# Iterative depth-first tree traversal with pre- and post-visit at each node

Can anyone point me at pseudocode for iterative depth-first tree traversal, where it's possible to do actions on each node at both pre- and post- order?

That is, an action before decent into a node's children, then an action after ascent from the children?

Also, my tree is not binary - each node has 0..n children.

Basically, my case is transforming a recursive traversal, where I do the pre- and post- operations on the current node, either side of the recursion into the children.

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Pretty generic question, with pretty specific requirements ;). What about just asking for hints on an iterative traversal - pre/post ops will than just fit in ;). –  Marcus Fritzsch Jan 12 '11 at 0:05
Sounds like 'can anyone show me how to iterate over array and execute function on each element'. What's the problem with iterating it step by step, just as you described? –  Nikita Rybak Jan 12 '11 at 1:07
Each parent needs to be visited before it's children (pre-operation) then visited once more after it's children (post-operation). We lose that context when we iterate over an array. Easy to do recursively, but it beats me how to do that iteratively. –  xeolabs Jan 12 '11 at 1:12
Tree traversal is inherently recursive. In converting to an iterative approach, you'll still need to use a stack of your own to be able to track back up the tree. –  marcog Jan 12 '11 at 1:47

``````class Node:
def __init__( self, value ):
self.value    = value
self.children = []

def preprocess( node ):
print( node.value )

def postprocess( node ):
print( node.value )

def preorder( root ):
# Always a flat, homogeneous list of Node instances.
queue = [ root ]
while len( queue ) > 0:
a_node = queue.pop( 0 )
preprocess( a_node )
queue = a_node.children + queue

def postorder( root ):
# Always a flat, homogeneous list of Node instances:
queue   = [ root ]
visited = set()
while len( queue ) > 0:
a_node = queue.pop( 0 )
if a_node not in visited:
queue = a_node.children + [ a_node ] + queue
else:
# this is either a leaf or a parent whose children have all been processed
postprocess( a_node )
``````
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Is it hard to make it work for a general graph DFS, rather than tree DFS? It won't work as is, since in a general graph, `a_node` may be in `visited` without being a parent. –  max Apr 17 '12 at 8:12

I think I have exactly what I need by inserting a preProcess into the postorder function provided by El Mariachi:

``````def postorder( root ):
# Always a flat, homogeneous list of Node instances:
queue   = [ root ]
visited = set()
while len( queue ) > 0:
a_node = queue.pop( 0 )
if a_node not in visited:
preprocess( a_node )                  # <<<<<<<< Inserted
queue = a_node.children + [ a_node ] + queue
else:
# this is either a leaf or a parent whose children have all been processed
postprocess( a_node )
``````
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I hope you find it useful.

http://www.vvlasov.com/2013/07/post-order-iterative-dfs-traversal.html

Code:

``````public void dfsPostOrderIterative(AdjGraph graph, AdjGraph.Node vertex, Callback callback) {
Stack<Level> toVisit = new Stack<Level>();
toVisit.push(new Level(Collections.singletonList(vertex)));

while (!toVisit.isEmpty()) {
Level level = toVisit.peek();

if (level.index >= level.nodes.size()) {
toVisit.pop();
continue;
}

if (!node.isVisited()) {
if (node.isChildrenExplored()) {
node.markVisited();
callback.nodeVisited(graph, node);
level.index++;
} else {
@Override
return !input.isChildrenExplored();
}
}));

if (outgoing.size() > 0)
node.markChildrenExplored();
}
} else {
level.index++;
}
}
}
``````
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I realize this post is several years old, but none of the answers seem to directly answer the question, so I figured I'd write up something somewhat simple.

This assumes an integer indexed graph; but you can certainly adapt it as necessary. The key to doing DFS iteratively and still having pre-order/post-order operations is to NOT just append every child at once, but instead, behave exactly as recursive DFS would, which is adding just one child-node to the stack at a time, and only removing them from the stack once it has finished. I accomplish this in my example by creating a wrapper node with the adjacency list as a stack. Just omit the cycle check if you wish to allow cycles (it doesn't traverse visited nodes anyway, so it will still work)

``````class Stack(object):
def __init__(self, l=None):
if l is None:
self._l = []
else:
self._l = l
return

def pop(self):
return self._l.pop()

def peek(self):
return self._l[-1]

def push(self, value):
self._l.append(value)
return

def __len__(self):
return len(self._l)

class NodeWrapper(object):
def __init__(self, graph, v):
self.v = v
self.children = Stack(graph[v])
return

def iterative_postorder(G, s):
onstack = [False] * len(G)
edgeto = [None] * len(G)
visited = [False] * len(G)

st = Stack()
st.push(NodeWrapper(G, s))

while len(st) > 0:
vnode = st.peek()
v = vnode.v
if not onstack[v]:
print "Starting %d" % (v)
visited[v] = True
onstack[v] = True
if len(vnode.children) > 0:
e = vnode.children.pop()
if onstack[e]:
cycle = [e]
e = v
while e != cycle[0]:
cycle.append(e)
e = edgeto[e]
raise StandardError("cycle detected: %s, graph not acyclic" % (cycle))
if not visited[e]:
edgeto[e] = v
st.push(NodeWrapper(G, e))
else:
vnode = st.pop()
onstack[vnode.v] = False
print 'Completed %d' % (vnode.v)
``````
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Awesome. Thanks for actually considering my core requirement of pre/post ops. –  xeolabs Nov 15 '13 at 3:21