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I have a dictionary dict1; each value is a list of strings. If all elements in this list of strings contain 'my_string', I don't need this particular key. I've come up with this:

from collections import defaultdict
dict2 = defaultdict(list)
for key, value in dict1.iteritems():
    for list_element in value:
        if 'my_string' not in list_element:
            dict2[key] = dict1[key]

It does work but I'm sure there is a better way of doing it. (And I'd prefer not to create another dictionary, which happens in the code above, but it's not really important.)

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3 Answers 3

up vote 2 down vote accepted

You can't modify a dict while iterating over it. You either need to create a new dict by filtering the old, or create a temporary object of some kind to iterate over:

(1) Create a new dict with the filtered results:

dict1 = {k:v for (k, v) in dict1.iteritems() if all('my_string' in e for e in v)}

(2.1) Create a temporary dict:

for k, v in dict1.copy():
    if all('my_string' in e for e in v):
        del dict1[k]

(2.2) Create a temporary list of key-value tuples:

for k, v in dict1.items():
    if all('my_string' in e for e in v):
        del dict1[k]

(2.3) Create a temporary list of keys:

for k in dict1.keys():
    if all('my_string' in e for e in dict1[k]):
        del dict1[k]

So, how do you decide between them?

Well, 1 is easiest to reason about, because it has all of the benefits of mutation-free code. But 2.1-2.3 are probably more straightforward for a novice programmer. Usually, that distinction is the most important one.

If you're worried about memory usage, obviously 2.3 is better than 2.1-2.2, because it generates a much smaller temporary object. But what about 2.3 vs. 1? That depends on two things: First, how big is a list of all of your keys compared to a dict of just your remaining items? Second, how much space is gained by building a smaller hash table from scratch instead of shrinking a larger one? Usually, you don't get any benefit from the latter, because Python doesn't shrink the hash table at all… but if it matters, you need to test with your use cases on your platform, and see what happens.

If you're worried about performance, it's pretty similar to memory usage. 2.3 vs. 1 are the obvious contenders, and 1 will be better unless you're keeping most of the dict around—but again, if it matters, you need to measure for yourself.

Finally, note that the above is for Python 2.7, which is what (as a guess) you seem to be using. In 3.x, items and keys both return iterators over the existing dict, so you need to do list(dict1.items()) and list(dict1.keys()) to make the copying explicit.

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for key, value in dict1.items():
    if all('my_string' in e for e in value):
        del dict1[key]

Note: be careful not to use iteritems and delete from the same dict. items are fine, it makes a copy.

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Should be all, not any, I think. –  Wooble Dec 29 '12 at 0:24
    
Yes, somehow I misread that. Fixed. –  Pavel Anossov Dec 29 '12 at 0:25

I think you can just use a dictionary comprehension, if that's available in your version:

filtered = {k:v for k,v in d1.items() if all(e == 'my_string' for e in v)}

This assumes you don't mind making a second dictionary that is a filtered copy of the first.

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