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I have a list of tuples that looks something like this:

[('abc', 121),('abc', 231),('abc', 148), ('abc',221)]

I want to sort this list in ascending order by the integer value inside the tuples. Is it possible?

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up vote 154 down vote accepted

Try using the key keyword with sorted().

sorted([('abc', 121),('abc', 231),('abc', 148), ('abc',221)], key=lambda x: x[1])

key should be a function that identifies how to retrieve the comparable element from your data structure. In your case, it is the second element of the tuple, so we access [1].

For optimization, see jamylak's response using itemgetter(1), which is essentially a faster version of lambda x: x[1].

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1  
thanks, thats what i am using now ! :) – Amyth May 22 '12 at 3:58
    
This solution appears to only work if the first elements are all the same, correct? – Matt O'Brien Feb 27 '14 at 22:22
3  
@MattO'Brien - nope! In fact, the first can be anything at all; it's not even looked at while the sorting is happening. ideone.com/tcNB9d – cheeken Feb 27 '14 at 22:41
    
Nice, thanks for getting back on that! – Matt O'Brien Feb 27 '14 at 23:42
>>> from operator import itemgetter
>>> data = [('abc', 121),('abc', 231),('abc', 148), ('abc',221)]
>>> sorted(data,key=itemgetter(1))
[('abc', 121), ('abc', 148), ('abc', 221), ('abc', 231)]

IMO using itemgetter is more readable in this case than the solution by @cheeken. It is also faster since almost all of the computation will be done on the c side (no pun intended) rather than through the use of lambda.

>python -m timeit -s "from operator import itemgetter; data = [('abc', 121),('abc', 231),('abc', 148), ('abc',221)]" "sorted(data,key=itemgetter(1))"
1000000 loops, best of 3: 1.22 usec per loop

>python -m timeit -s "data = [('abc', 121),('abc', 231),('abc', 148), ('abc',221)]" "sorted(data,key=lambda x: x[1])"
1000000 loops, best of 3: 1.4 usec per loop
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6  
+1 I agree that itemgetter() is a better solution. However, I thought a lambda expression would make it clearer how key functions. – cheeken May 22 '12 at 4:45
    
+1 However, When I ran your testing of the speed I noticed 'human-eye' that the one that is supposed to be faster.. and measured faster, actually was noticeably slower. I scratched my head on this for a bit, then took the python timeout module out of play and just used linux time. i.e. time `python -c "the code"` then I got 'human-eye' results that you spell out, as well as sys clock times that were faster. Still not sure why this is, but it was reproducible. I gather it has something to do with the overhead of loading in the module's, but still does not quite make since to me, just yet. – Jeff Sheffield Jul 23 '14 at 17:38
1  
@JeffSheffield: Notice that jamylak is doing the import in the setup code (outside the timing), not the tested code. That's perfectly reasonable, because most programs will need to sort more than once, or need to sort much larger collections, but they'll only do the import once. (And for those programs that only need to do one smallish sort ever… well, you're talking about a difference of under a microsecond, so who cares either way?) – abarnert Sep 4 '14 at 2:24
    
@abarnert FYI: jamylak is doing the import inside of the python -m timeit -s but yea I think you are on point to say that in a production scenario you only pay that lib load penalty once. and... as for who cares about that microsecond... you care because the assumption is that your sorting data is going to get quite large and that microsecond is going to turn into real seconds once the data set grows. – Jeff Sheffield Sep 4 '14 at 14:05
    
@JeffSheffield: That's exactly the point: the cost of the import will not grow with the data, so even if it seems like a large part of the 1us you're paying for one smallish sort, it's going to be an irrelevant part of the 500ms you pay for a big sort, or a bunch of small sorts. – abarnert Sep 4 '14 at 17:37

As a python neophyte, I just wanted to mention that if the data did actually look like this:

data = [('abc', 121),('abc', 231),('abc', 148), ('abc',221)]

then sorted() would automatically sort by the second element in the tuple, as the first elements are all identical.

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Adding to Cheeken's answer, This is how you sort a list of tuples by the 2nd item in descending order.

sorted([('abc', 121),('abc', 231),('abc', 148), ('abc',221)],key=lambda x: x[1], reverse=True)
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From python wiki:

>>> from operator import itemgetter, attrgetter    
>>> sorted(student_tuples, key=itemgetter(2))
[('dave', 'B', 10), ('jane', 'B', 12), ('john', 'A', 15)]    
>>> sorted(student_objects, key=attrgetter('age'))
[('dave', 'B', 10), ('jane', 'B', 12), ('john', 'A', 15)]
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For a lambda-avoiding method, first define your own function:

def MyFn(a):
    return a[1]

then:

sorted([('abc', 121),('abc', 231),('abc', 148), ('abc',221)], key=MyFn)
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What are the benefits of this? – dromtrund May 3 at 8:42

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