# Filter array to show rows with a specific value in a specific column

Let's say i have a multidimensional list l:

``````l = [['a', 1],['b', 2],['c', 3],['a', 4]]
``````

and I want to return another list consisting only of the rows that has 'a' in their first list element:

``````m = [['a', 1],['a', 4]]
``````

What's a good and efficient way of doing this?

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Definitely a case for a list comprehension:

``````m = [row for row in l if 'a' in row[0]]
``````

Here I'm taking your "having 'a' in the first element" literally, whence the use of the `in` operator. If you want to restrict this to "having 'a' as the first element" (a very different thing from what you actually wrote!-), then

``````m = [row for row in l if 'a' == row[0]]
``````

is more like it;-).

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``````m = [i for i in l if i[0] == 'a']
``````
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With the filter function:

``````m = filter(lambda x: x[0] == 'a', l)
``````

or as a list comprehension:

``````m = [x for x in l where x[0] == 'a']
``````
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What's wrong with just:

``````m = [i for i in l if i[0] == 'a']
``````

Or:

``````m = filter(lambda x: x[0] == 'a', l)
``````

I doubt the difference between these will be significant performance-wise. Use whichever is most convenient. I don't like `lambda`s, but the `filter` can be replaced with `itertools.ifilter` for larger lists if that's a problem, but you can also change the list comprehension to a generator (change the `[]` to `()`) to achieve the same general result. Other than that, they're probably identical.

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``````[i for i in l if i[0]=='a']
``````

btw, take a look at Python's list comprehension with conditions.

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