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I have a list that looks like this:

l1 = ['200:200', '90:728']

I have a dictionary that looks like this:

d1 = {'200:200':{'foo':'bar'},'300:300':{'foo':'bar'}}

I need to get filter out the dictioary where only the keys are in l1. The dict should look like this:

result = {'200:200':{'foo':'bar'}}

In essence a intersection of a list and the keys of a dict while returning the subsection of the dict.

How do I do this efficiently where time is an issue for a large sets?


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6 Answers 6

up vote 15 down vote accepted

You can use the following code:

keys = set(l1).intersection(set(d1.keys()))
result = {k:d1[k] for k in keys}

EDIT: As commenters suggest you can replace the first line with, in Python 2.x:

keys = set(l1).intersection(d1)

And in Python 3.x:

keys = d1.keys() & l1
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Note that in 3.x, a dictionary view is set-like, so you don't need to wrap it in set(). In fact, in 3.x, the entire top line can be keys = d1.keys() & l1. –  Lattyware Jun 22 '12 at 14:03
@Lattyware you don't need to cast it into a set in 2.x either –  jamylak Jun 22 '12 at 14:04
Don't even need keys(), set(l1).intersection(d1) –  georg Jun 22 '12 at 14:08
And not wrapping d1.keys() has the advantage that if d1 is large you won't be O(len(d1)). –  Kathy Van Stone Jun 22 '12 at 14:08
In 3.x, the keys() call doesn't cost anything, it's worth noting - as it just makes a dict view. I've shown in my answer. –  Lattyware Jun 22 '12 at 14:10

In 3.x, this can be as simple as:

>>> {k: d1[k] for k in (d1.keys() & l1)}
{'200:200': {'foo': 'bar'}}

Under 2.7, you can use dict.viewkeys() to recreate this functionality:

>>> {k: d1[k] for k in (d1.viewkeys() & l1)}
{'200:200': {'foo': 'bar'}}

Under older versions of 2.x, it's a tad more verbose:

>>> {k: d1[k] for k in (set(d1).intersection(l1))}
{'200:200': {'foo': 'bar'}}
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I checked the docs. It appears that viewkeys() is available in 2.7, not just 2.7.3. It appears in my copy of Python 2.7.1 –  JPvdMerwe Jun 22 '12 at 14:17
@JPvdMerwe Good to know, updated. –  Lattyware Jun 22 '12 at 14:18

Not sure about each solution performance, but I would do:

{k: v for k, v in d1.items() if k in l1}
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This will work even when a member of l1 is not a key in d1, which many others will fail on. –  Phil H Jun 22 '12 at 14:15

Define efficient. Anyway here's what I would do. If it was too slow I'd probably move it to Cython.

s1 = set(l1)
s2 = set(d1.keys())
s3 = s1 & s2
# now you can access d1 using only keys in s3, or construct a new dict if you like
d2 = dict([(k,d1[k]) for k in s3])
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If memory allocation and deallocation is making this process take too long, itertools to the rescue.

import itertools
result = {dict_key:d1[dict_key] for dict_key in itertools.ifilter(lambda list_item: list_item in d1, l1) }

This doesn't unnecessarily allocate memory for a whole new collection, and l1 could easily be an iterator instead of a list.

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You can use a list comprehension in the dict constructor:

result = dict([(k,d1[k]) for k in l1 if k in d1])

If you're worried about removing duplicate keys, make l1 into a set first:

result = dict([(k,d1[k]) for k in set(l1) if k in d1])
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A key may not be in d1. This won't work. –  Lattyware Jun 22 '12 at 14:07
Also note you can do dict generator expressions as in my solution. So {k:v for k,v in arr}. This even has the benefit of dealing with duplicates. –  JPvdMerwe Jun 22 '12 at 14:08
@JPvdMerwe It's a dict comprehension, not a dict generator expression - generator expressions are lazy, a dict comprehension is not. –  Lattyware Jun 22 '12 at 14:12
@Lattyware: I knew I should have checked the docs to get my terminology right. I stand corrected. –  JPvdMerwe Jun 22 '12 at 14:20
Quite right- edited. –  Platinum Azure Jun 22 '12 at 14:50

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