When you think "check to see if a in b", think hashes (in this case, sets). The fastest way is to hash the list you want to check, and then check each item in there.

This is why Joe Koberg's answer is fast: checking set intersection is very fast.

When you don't have a lot of data though, making sets can be a waste of time. So, you can make a set of the list and just check each item. I wrote this:

```
tocheck = [1,2] # items to check
a = [2,3,4] # the list
a = set(a) # convert to set (O(len(a)))
print [i for i in tocheck if i in a] # check items (O(len(tocheck)))
```

When the number of items you want to check is small, the difference can be negligible. But check lots of numbers against a large list...

tests:

```
from timeit import timeit
methods = ['''tocheck = [1,2] # items to check
a = [2,3,4] # the list
a = set(a) # convert to set (O(n))
[i for i in tocheck if i in a] # check items (O(m))''',
'''L1 = [2,3,4]
L2 = [1,2]
[i for i in L1 if i in L2]''',
'''S1 = set([2,3,4])
S2 = set([1,2])
S1.intersection(S2)''',
'''a = [1,2]
b = [2,3,4]
any(x in a for x in b)''']
for method in methods:
print timeit(method, number=10000)
print
methods = ['''tocheck = range(200,300) # items to check
a = range(2, 10000) # the list
a = set(a) # convert to set (O(n))
[i for i in tocheck if i in a] # check items (O(m))''',
'''L1 = range(2, 10000)
L2 = range(200,300)
[i for i in L1 if i in L2]''',
'''S1 = set(range(2, 10000))
S2 = set(range(200,300))
S1.intersection(S2)''',
'''a = range(200,300)
b = range(2, 10000)
any(x in a for x in b)''']
for method in methods:
print timeit(method, number=1000)
```

speeds:

```
M1: 0.0170331001282 # make one set
M2: 0.0164539813995 # list comprehension
M3: 0.0286040306091 # set intersection
M4: 0.0305438041687 # any
M1: 0.49850320816 # make one set
M2: 25.2735087872 # list comprehension
M3: 0.466138124466 # set intersection
M4: 0.668627977371 # any
```

The method that is consistently fast is to make one set (of the list), but the intersection works on large data sets the best!