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I am writing a bit of python code where I had to check if all values in list2 was present in list1, I did that by using set(list2).difference(list1) but that function was too slow with many items in the list.

So I was thinking that list1 could be a dictionary for fast lookup...

So I would like to find a fast way to determent if a list has an item that isn't part of a dict

performance wise is there any difference between

d = {1: 1, 2:2, 3:3}
l = [3, 4, 5]

for n in l:
  if not n in d:


for n in l:
  if not d[n]:

and please if both of these are rubbish and you know something much quicker, tell me.

Edit1: list1 or d can contain elements not in list2 but not the other way around.

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The two are not the same. Test with d = {1: 1, 2:2, 3:3, 4:0} and that will point out the difference between the two to you. –  Praveen Gollakota Jan 21 '13 at 17:28
Note that a dict is not going to be any faster for membership testing, it uses the exact same data structure and algorithm. Your problem is the list. –  Martijn Pieters Jan 21 '13 at 17:30
The reason your second attempt is not the same as the first is because you are testing the dict's value at a particular key, and -- as Praveen Gollakota astutely notes -- the value of zero evaluates to False. –  bernie Jan 21 '13 at 17:56
The answer may depend somewhat on your anticipated inputs. For example, are matches common, or rare? Are partial matches common, or is it the case that most are mostly different (very few or no similar elements). –  Travis Griggs Jan 21 '13 at 18:06

3 Answers 3

up vote 3 down vote accepted

A fast way to achieve what you want will be using all and a generator comprehension.

s_list2 = set(list2)
all_present = all(l in s_list2 for l in list1)

This will be advantageous in the case that some elements of list1 are not present in list2.

Some timing. In the case where all values in the first list are contained in the second:

In [4]: l1 = range(100)
In [5]: l2 = range(1000)
In [6]: random.shuffle(l1)
In [9]: random.shuffle(l2)
In [20]: %timeit s2 = set(l2); all(l in s2 for l in l1)
10000 loops, best of 3: 26.4 us per loop
In [21]: %timeit s1 = set(l1); s2 = set(l2); s1.issubset(s2)
10000 loops, best of 3: 25.3 us per loop

If we look at the case where some values in the first list are not present in the second:

In [2]: l1 = range(1000)
In [3]: l2 = range(100)
In [4]: random.shuffle(l1)
In [5]: random.shuffle(l2)
In [6]: sl2 = set(l2)
In [8]: %timeit ss = set(l2); set(l1) & ss == ss
10000 loops, best of 3: 27.8 us per loop
In [10]: %timeit s1 = set(l1); s2 = set(l2); s2.issubset(s1)
10000 loops, best of 3: 24.7 us per loop
In [11]: %timeit sl2 = set(l2); all(l in sl2 for l in l1)
100000 loops, best of 3: 3.58 us per loop

You can see that this method is equivalent in performance to the issubset in the first case and is faster in the second case as it will short circuit and obviates the need to construct 2 intermediate sets (only requiring one).

Having one large list and one small lists demonstrates the benefit of the gencomp method:

In [7]: l1 = range(10)
In [8]: l2 = range(10000)
In [9]: %timeit sl2 = set(l2); all(l in sl2 for l in l1)
1000 loops, best of 3: 230 us per loop
In [10]: %timeit sl1 = set(l1); all(l in sl1 for l in l2)
1000000 loops, best of 3: 1.45 us per loop
In [11]: %timeit s1 = set(l1); s2 = set(l2); s1.issubset(s2)
1000 loops, best of 3: 228 us per loop
In [12]: %timeit s1 = set(l1); s2 = set(l2); s2.issubset(s1)
1000 loops, best of 3: 228 us per loop
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I'm not sure if I understand what advantage you're describing, but in any case, this repeatedly does linear search in list2, so it's awfully slow unless either list is very short. –  delnan Jan 21 '13 at 17:33
-1. Still two nested loops in there (the second loop is hidden in the in-statement). –  Steven Rumbalski Jan 21 '13 at 17:34
Ugh, skipped an entire mental step form brain to keyboard. –  cmh Jan 21 '13 at 17:34
Removed my -1 in light of the edit. However, your answer does not seem all that different than set(list2).difference(list1) which the OP has already tried and found wanting. –  Steven Rumbalski Jan 21 '13 at 17:36
I agree, although I'm not sure we can do better unless in raw python, unless we know something in advance about the data being compared. –  cmh Jan 21 '13 at 17:39

You can convert the lists to sets and then use the method issubset() to check whether one is a subset of another set or not.

In [78]: import random

In [79]: lis2=range(100)

In [80]: random.shuffle(lis2)

In [81]: lis1=range(1000)

In [82]: random.shuffle(lis1)

In [83]: s1=set(lis1)

In [84]: all(l in s1 for l in lis2)
Out[84]: True

In [85]: %timeit all(l in s1 for l in lis2)
10000 loops, best of 3: 28.6 us per loop

In [86]: %timeit s2=set(lis2);s2.issubset(s1)
100000 loops, best of 3: 12 us per loop

In [87]: s2.issubset(s1)
Out[87]: True
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The timing comparison here is dishonest as you are not including the time needed to create the sets. If lis1 and lis2 were constant we could remove the need to do anything of this by just caching the result. –  cmh Jan 21 '13 at 17:40
@cmh I used the same thing for all() as well. see: all(l in s1 for l in s2). –  Ashwini Chaudhary Jan 21 '13 at 17:41
the benefit of the all solution is that you don't need to transform s2 into a set. –  cmh Jan 21 '13 at 17:42
... and the downside is that it loops in Python rather than in C ;-) –  delnan Jan 21 '13 at 17:42
I've just realised that our timing is going to be reasonably dependant on the particular shuffle of the range. A more rigorous test would be over a range of shuffles. –  cmh Jan 21 '13 at 18:16

Sorting both lists and then walking through them together is O(n log n). i.e.:


j = 0
for i in range(0,len(l1)):
  while ((j < len(l2)) and (l1[i] == l2[j])):
    j = j+1
  if (j == len(l2)):
  if (l1[i] > l2[j]):

if (j == len(l2)): # all of l2 in l1

Now in terms of time complexity, like I said this is O(n log n) because of the sorts (second loop is less than that at O(n)). However it may not be faster in python than the builtin set operations. You'd have to try it.

[BTW, probably a more pythony way to do the last piece with comprehensions if I thought about it]

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