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I have a list of file names, experiments = ['f1','f2','f3','f4'], times of day, t = ['am','pm'], and types of data collected, ['temp','humidity'].

From these I want to create dictionaries within dictionaries in the following format:

dict = {'f1': { am : {'temp': [], 'humidity': []} , pm : {'temp': [], 'humidity': []}},
        'f2': { am : {'temp': [], 'humidity': []} , pm : {'temp': [], 'humidity': []}},
        'f3': { am : {'temp': [], 'humidity': []} , pm : {'temp': [], 'humidity': []}},
        'f4': { am : {'temp': [], 'humidity': []} , pm : {'temp': [], 'humidity': []}}}

What's the best way to do this? Many thanks in advanced.

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3 Answers 3

up vote 5 down vote accepted
{z: {y: {x: [] for x in data_types} for y in t} for z in experiments}
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1  
should be noted that dict comprehensions were introduced in Python 2.7 –  Will May 18 '12 at 13:57
    
Absolutely true, thank you for adding that info. I get caught by this myself when forced to use Python 2.6. –  marshall.ward Jun 28 '13 at 2:49

A case for comprehensions if I ever saw.

from copy import deepcopy
datatypes = ['temp','humidity']
times = ['am','pm']
experiments = ['f1','f2','f3','f4']

datatypes_dict = dict((k, []) for k in datatypes)
times_dict = dict((k, deepcopy(datatypes_dict)) for k in times)
experiments_dict = dict((k, deepcopy(times_dict)) for k in experiments)

or the nicer dict comprehension way (python 2.7+)

datatypes_dict = {k: [] for k in datatypes}
times_dict = {k: deepcopy(datatypes_dict) for k in times}
experiments_dict = {k: deepcopy(times_dict) for k in experiments}

you can nest them but it gets mind-blowing pretty quick if things are at all complicated.

In this use case, however, @marshall.ward's answer

{z: {y: {x: [] for x in data_types} for y in t} for z in experiments}

is far better than mine, as you can avoid the deepcopy()ing.

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2  
"the py3k way" also works in 2.7. –  Karl Knechtel May 18 '12 at 5:00
    
true... we are living in the fuuutuuure! –  ben author May 18 '12 at 5:03
2  
Isn't this sharing the same datatypes_dict and times_dict everywhere? eg experiments_dict['f1']['am']['temp'].append(25) probably doesn't work as the OP expects –  gnibbler May 18 '12 at 5:18
    
oh. you are absolutely correct. hrm. –  ben author May 18 '12 at 5:30
1  
in retrospect my choice not to nest was probably the wrong approach. I learn more answering questions on SO than asking them! –  ben author May 18 '12 at 5:56

Taking some artistic license with the output format

>>> from collections import namedtuple, defaultdict
>>> from itertools import product
>>> experiments = ['f1','f2','f3','f4']
>>> times_of_day = ['am','pm']
>>> data_types = ['temp','humidity']
>>> DataItem = namedtuple('DataItem', data_types)
>>> D=defaultdict(dict)
>>> for ex, tod in product(experiments, times_of_day):
...     D[ex][tod]=DataItem([], [])
... 
>>> D
defaultdict(<type 'dict'>, {'f1': {'am': DataItem(temp=[], humidity=[]), 'pm': DataItem(temp=[], humidity=[])}, 'f2': {'am': DataItem(temp=[], humidity=[]), 'pm': DataItem(temp=[], humidity=[])}, 'f3': {'am': DataItem(temp=[], humidity=[]), 'pm': DataItem(temp=[], humidity=[])}, 'f4': {'am': DataItem(temp=[], humidity=[]), 'pm': DataItem(temp=[], humidity=[])}})

You can access the data items like this

>>> D['f1']['am'].temp
[]
>>> D['f1']['am'].humidity
[]
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