I have timelines/timeseries which consist of a list of two-tuples where the first part of the tuple is a timestamp and the second part is the value. The tuples are ordered by their timestamp.
I now have two of these timelines and need to divide them by each other. This means that if I got values in both timelines for the same timestamp, I need to divide them. If there is no value in one of the timelines on the timestamp, 0 should be assumed. If (and only if) a division by zero occurs, NaN should be assumed. The timestamps have large gaps, which means that iterating from min(timestamp) to max(timestamp) is not a solution.
I constructed a solution which is both, very unpythonic and has a poor running time. As the timelines are about a million entries long, performance is important for me. My solution does not take advantage, that both lists are sorted.
Is there a better solution, if yes which?
#!/usr/bin/env python l1 = [(1, 100), (2, 1000), (4, 1500), (5, 5400), (7, 7800)] l2 = [(1, 20), (2, 400), (3, 240), (4, 500), (5, 100), (6, 27), ] ex = [(1, 5), (2, 2), (3, 0), (4, 3), (5, 54), (6, 0), (7, float('NaN'))] def f(l1, l2): #Turn to dicts: l1d = dict(l1) l2d = dict(l2) #Compute Keyspace keys = set(l1d.keys()).union(set(l2d.keys())) result =  for key in keys: if not key in l2d: result.append((key, float('NaN'))) elif key not in l1d: result.append((key, 0)) else: result.append((key, l1d[key]/l2d[key])) return result r = f(l1, l2) print("L1: %s" % (l1)) print("L2: %s" % (l2)) print("") print("Expected: %s" % (ex)) print("Result: %s" % (r))