I have written some code that finds all the paths upstream of a given reach in a dendritic stream network. As an example, if I represent the following network:
4 -- 5 -- 8
/
2 --- 6 - 9 -- 10
/ \
1 -- 11
\
3 ----7
as a set of parent-child pairs:
{(11, 9), (10, 9), (9, 6), (6, 2), (8, 5), (5, 4), (4, 2), (2, 1), (3, 1), (7, 3)}
it will return all of the paths upstream of a node, for instance:
get_paths(h, 1) # edited, had 11 instead of 1 in before
[[Reach(2), Reach(6), Reach(9), Reach(11)], [Reach(2), Reach(6), Reach(9), Reach(10)], [Reach(2), Reach(4), Reach(5), Reach(8)], [Reach(3), Reach(7)]]
The code is included below.
My question is: I am applying this to every reach in a very large (e.g., New England) region for which any given reach may have millions of paths. There's probably no way to avoid this being a very long operation, but is there a pythonic way to perform this operation such that brand new paths aren't generated with each run?
For example, if I run get_paths(h, 2) and all paths upstream from 2 are found, can I later run get_paths(h, 1) without retracing all of the paths in 2?
import collections
# Object representing a stream reach. Used to construct a hierarchy for accumulation function
class Reach(object):
def __init__(self):
self.name = None
self.ds = None
self.us = set()
def __repr__(self):
return "Reach({})".format(self.name)
def build_hierarchy(flows):
hierarchy = collections.defaultdict(lambda: Reach())
for reach_id, parent in flows:
if reach_id:
hierarchy[reach_id].name = reach_id
hierarchy[parent].name = parent
hierarchy[reach_id].ds = hierarchy[parent]
hierarchy[parent].us.add(hierarchy[reach_id])
return hierarchy
def get_paths(h, start_node):
def go_up(n):
if not h[n].us:
paths.append(current_path[:])
for us in h[n].us:
current_path.append(us)
go_up(us.name)
if current_path:
current_path.pop()
paths = []
current_path = []
go_up(start_node)
return paths
test_tree = {(11, 9), (10, 9), (9, 6), (6, 2), (8, 5), (5, 4), (4, 2), (2, 1), (3, 1), (7, 3)}
h = build_hierarchy(test_tree)
p = get_paths(h, 1)
EDIT: A few weeks ago I asked a similar question about finding "ALL" upstream reaches in a network and received an excellent answer that was very fast:
class Node(object):
def __init__(self):
self.name = None
self.parent = None
self.children = set()
self._upstream = set()
def __repr__(self):
return "Node({})".format(self.name)
@property
def upstream(self):
if self._upstream:
return self._upstream
else:
for child in self.children:
self._upstream.add(child)
self._upstream |= child.upstream
return self._upstream
import collections
edges = {(11, 9), (10, 9), (9, 6), (6, 2), (8, 5), (5, 4), (4, 2), (2, 1), (3, 1), (7, 3)}
nodes = collections.defaultdict(lambda: Node())
for node, parent in edges:
nodes[node].name = node
nodes[parent].name = parent
nodes[node].parent = nodes[parent]
nodes[parent].children.add(nodes[node])
I noticed that the def upstream(): part of this code adds upstream nodes in sequential order, but because it's an iterative function I can't find a good way to append them to a single list. Perhaps there is a way to modify this code that preserves the order.
python-way
issue rather a database or structure issue, For example you can add some data to your parent-child pairs tuple that will indicate the number of sons and 0 will be represent as untested reach, by the way if it's so many reach where are you planning to store the data? you can easily get memory issues...