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I have an n-layered dict of dicts and want to get the leaf values by a certain series of keys.

So:

example_dict = {'level_one':
    {'level_two_a':
        {'level_three_a':[1,2,3], 
         'level_three_b':[4,5,6]
        }, 
     'level_two_b':
        {'level_three_c':[7,8,9], 
         'level_three_d':[10,11,12]
        }
    }
}

Sometimes I will want to query:

example_dict['level_one']['level_two_a']['level_three_a']

other times I need:

example_dict['level_one']['level_two_b']

The real nested dict is very large, so I want to avoid something like:

result_dict = copy.deepcopy(example_dict)
search_key = ['level_one', 'level_two_a']
for term in search_key:
 result_dict = copy.deepcopy(result_dict[term])

Is there a more memory efficient method?

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Why would you need to copy anything? Are you altering the dictionaries at all? Your copies get replaced by deeper copies in any case, so that's a waste of your processor time. –  Martijn Pieters Jan 15 '13 at 22:51

1 Answer 1

up vote 1 down vote accepted

Yes, don't create so many copies. Just reference the subdict:

result = example_dict
search_key = ['level_one', 'level_two_a']
for term in search_key:
    result = result[term]

As long as you are not altering the result dict, making a copy is pointless. Since you discard the previous copy and make a new one on every iteration, you are wasting CPU time as well as memory.

Even if you did have to modify result and don't want those changes to affect example_dict, you only need to copy the final result value after looping.

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