I'm trying to find the shortest path on a weighted graph given the constraint that the path must have a total distance less than some parameter (let's say 1000).

I tried the following but I don't know why my code is wrong.

```
def directedDFS(digraph, start, end, maxTotalDist):
visited = []
if not (digraph.hasNode(start) and digraph.hasNode(end)):
raise ValueError('Start or end not in graph.')
path = [str(start)]
if start == end:
return path
shortest = None
for node in digraph.childrenOf(start):
if (str(node) not in visited):
visited = visited + [str(node)]
firststep_distance = digraph.childrenOf(start)[node][0]
firststep_outer_distance = digraph.childrenOf(start)[node][1]
if (firststep_distance <= maxTotalDist):
newPath = directedDFS(digraph, node, end, maxTotalDist-firststep_distance)
if newPath == None:
continue
if (shortest == None or TotalDistance(digraph,newPath) < TotalDistance(digraph,shortest)):
shortest = newPath
if shortest != None:
path = path + shortest
else:
path = None
return path
```

Another thing is that I don't want to compare based on the distance of the path starting from the given node but based on the distance of the ENTIRE PATH from the original starting point. I don't know the best way to do that here though.