# Split a list of dates by another list of dates

I have a number of nodes in a network. The nodes send status information every hour to indicate that they are alive. So i have a list of Nodes and the time when they were last alive. I want to graph the number of alive nodes over the time.

The list of nodes is sorted by the time they were last alive but i cant figure out a nice way to count how many are alive at a each date.

``````from datetime import datetime, timedelta

seen = [ n.last_seen for n in c.nodes ] # a list of datetimes
seen.sort()
start = seen[0]
end = seen[-1]

diff = end - start
num_points = 100

step = diff / num_points

num = len( c.nodes )

dates = [ start + i * step for i in range( num_points ) ]
``````

What i want is basically

``````alive = [ len([ s for s in seen if s > date]) for date in dates ]
``````

but thats not really efficient. The solution should use the fact that the `seen` list is sorted and not loop over the whole list for every date.

-

this generator traverses the list only once:

``````def get_alive(seen, dates):
c = len(seen)
for date in dates:
for s in seen[-c:]:
if s >= date:      # replaced your > for >= as it seems to make more sense
yield c
break
else:
c -= 1
``````
-
but for every date, `seen[-c:]` makes a copy of the remaining list – Jochen Ritzel Sep 2 '09 at 17:07
so? did you timed it and find out that it's slower? – SilentGhost Sep 2 '09 at 17:17
point being that I have timed it and it seems to be the fastest solution, but I'm eager to here the opposite. – SilentGhost Sep 2 '09 at 17:26
@SilentGhost, x is undefined. – Nadia Alramli Sep 2 '09 at 17:30
+1 I think you solution is the better one – Nadia Alramli Sep 2 '09 at 17:45

The python bisect module will find the correct index for you, and you can deduct the number of items before and after.

If I'm understanding right, that would be O(dates) * O(log(seen))

Edit 1

It should be possible to do in one pass, just like SilentGhost demonstrates. However,itertools.groupby works fine with sorted data, it should be able to do something here, perhaps like this (this is more than O(n) but could be improved):

``````import itertools

# numbers are easier to make up now
seen = [-1, 10, 12, 15, 20, 75]
dates = [5, 15, 25, 50, 100]

def finddate(s, dates):
"""Find the first date in @dates larger than s"""
for date in dates:
if s < date:
break
return date

for date, group in itertools.groupby(seen, key=lambda s: finddate(s, dates)):
print date, list(group)
``````
-

I took SilentGhosts generator solution a bit further using explicit iterators. This is the linear time solution i was thinking of.

``````def splitter( items, breaks ):
""" assuming `items` and `breaks` are sorted """
c = len( items )

items = iter(items)
item = items.next()
breaks = iter(breaks)
breaker = breaks.next()

while True:
if breaker > item:
for it in items:
c -= 1
if it >= breaker:
item = it
yield c
break
else:# no item left that is > the current breaker
yield 0 # 0 items left for the current breaker
# and 0 items left for all other breaks, since they are > the current
for _ in breaks:
yield 0
break # and done
else:
yield c
for br in breaks:
if br > item:
breaker = br
break
yield c
else:
# there is no break > any item in the list
break
``````
-
@SilentGhosts's solution was really neat and short I don't think the performance gain if any is big enough to prefer a less readable solution. – Nadia Alramli Sep 2 '09 at 18:48
The problem with @SilentGhosts's is that it is O(n**2) too. Its easy to see with `seen = range( 0,n )` and `dates = [-1]` .. c never changes and therefore it makes n copies of the n items in seen – Jochen Ritzel Sep 2 '09 at 19:04