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I am looking to change back and forth between a dictionary of lists (all of the same length):

DL={'a':[0,1],'b':[2,3]}

and a list of dictionaries:

LD=[{'a':0,'b':2},{'a':1,'b':3}]

I am looking for the cleanest way to switch between the two forms.

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5  
Make up your mind and stick to one. "Fools ignore complexity. Pragmatists suffer it. Some can avoid it. Geniuses remove it." (Alan Perlis) –  delnan Apr 5 '11 at 21:05
    
It is unclear how you would interpret the order of DL? ie, if you have many elements, they loose their insertion order. If 'a' and 'b' come out of DL in a different order, what should the order of the resulting LD be? –  dawg Apr 7 '11 at 0:35
    
Good advice delnan and drewk, thanks. I am working on importing data from CSV files where order of the columns doesn't matter. –  Adam Greenhall Apr 7 '11 at 22:50
    
@AdamGreenhall since you're working with CSV files, I highly recommend giving pandas a try. It's a bit like R data frames on steroids. –  Midnighter May 23 at 20:33

8 Answers 8

up vote 5 down vote accepted

Perhaps consider using numpy:

import numpy as np

arr=np.array([(0,2),(1,3)],dtype=[('a',int),('b',int)])
print(arr)
# [(0, 2) (1, 3)]

Here we access columns indexed by names, e.g. 'a', or 'b' (sort of like DL):

print(arr['a'])
# [0 1]

Here we access rows by integer index (sort of like LD):

print(arr[0])
# (0, 2)

Each value in the row can be accessed by column name (sort of like LD):

print(arr[0]['b'])
# 2
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Nifty. Could you explain the difference between passing [(0,2),(1,3)] and [[0,2],[1,3]] to np.array? Specifically why does the second not work? –  Adam Greenhall Apr 7 '11 at 18:36
    
@Adam Greenhall: You are asking a very good question. I don't know the complete answer. I know that numpy sometimes makes a much greater distinction between lists and tuples than does Python. The documentation for dtype syntax docs.scipy.org/numpy/docs/numpy.doc.structured_arrays says, when defining a dtype using a "[l]ist argument ... the record structure is defined with a list of tuples." But I don't know why it must be this way. –  unutbu Apr 7 '11 at 23:14

To go from the list of dictionaries, it is straightforward:

You can use this form:

DL={'a':[0,1],'b':[2,3], 'c':[4,5]}
LD=[{'a':0,'b':2, 'c':4},{'a':1,'b':3, 'c':5}]

nd={}
for d in LD:
    for k,v in d.items():
        try:
            nd[k].append(v)
        except KeyError:
            nd[k]=[v]

print nd     
#{'a': [0, 1], 'c': [4, 5], 'b': [2, 3]}

Or use defaultdict:

nd=cl.defaultdict(list)
for d in LD:
   for key,val in d.items():
      nd[key].append(val)

print dict(nd.items())
#{'a': [0, 1], 'c': [4, 5], 'b': [2, 3]}

Going the other way is problematic. You need to have some information of the insertion order into the list from keys from the dictionary. Recall that the order of keys in a dict is not necessarily the same as the original insertion order.

For giggles, assume the insertion order is based on sorted keys. You can then do it this way:

nl=[]
nl_index=[]

for k in sorted(DL.keys()):
    nl.append({k:[]})
    nl_index.append(k)

for key,l in DL.items():
    for item in l:
        nl[nl_index.index(key)][key].append(item)

print nl        
#[{'a': [0, 1]}, {'b': [2, 3]}, {'c': [4, 5]}]

If your question was based on curiosity, there is your answer. If you have a real-world problem, let me suggest you rethink your data structures. Neither of these seems to be a very scalable solution.

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Here are the one-line solutions (spread out over multiple lines for readability) that I came up with:

if dl is your original dict of lists:

dl = {"a":[0,1],"b":[2,3]}

Then here's how to convert it to a list of dicts:

ld = [{key:value[index] for key in dl.keys()}
         for index in range(max(map(len,dl.values()]

Which, if you assume that all your lists are the same length, you can simplify and gain a performance increase by going to:

ld = [{key:value[index] for key, value in dl.items()}
         for index in range(len(dl.values()[0]))]

and here's how to convert that back into a dict of lists:

dl2 = {key:[item[key] for item in ld]
         for key in list(functools.reduce(
             lambda x, y: x.union(y),
             (set(dicts.keys()) for dicts in ld)
         ))
      }

If you're using Python 2 instead of Python 3, you can just use reduce instead of functools.reduce there.

You can simplify this if you assume that all the dicts in your list will have the same keys:

dl2 = {key:[item[key] for item in ld] for key in ld[0].keys() }
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If you're allowed to use outside packages, Pandas works great for this:

import pandas as pd
pd.DataFrame(DL).to_dict('list')

Which outputs:

[{'a': 0, 'b': 2}, {'a': 1, 'b': 3}]
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Here my small script :

a = {'a': [0, 1], 'b': [2, 3]}
elem = {}
result = []

for i in a['a']: # (1)
    for key, value in a.items():
        elem[key] = value[i]
    result.append(elem)
    elem = {}

print result

I'm not sure that is the beautiful way.

(1) You suppose that you have the same length for the lists

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A hacky, clever one-liner isn't neccessarily the best. I'd go with a boring but straightforward and understandable implementation using a couple of for loops.

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If you don't mind a generator, you can use something like

def f(dl):
  l = list((k,v.__iter__()) for k,v in dl.items())
  while True:
    d = dict((k,i.next()) for k,i in l)
    if not d:
      break
    yield d

It's not as "clean" as it could be for Technical Reasons: My original implementation did yield dict(...), but this ends up being the empty dictionary because (in Python 2.5) a for b in c does not distinguish between a StopIteration exception when iterating over c and a StopIteration exception when evaluating a.

On the other hand, I can't work out what you're actually trying to do; it might be more sensible to design a data structure that meets your requirements instead of trying to shoehorn it in to the existing data structures. (For example, a list of dicts is a poor way to represent the result of a database query.)

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Cleanest way I can think of a summer friday. As a bonus, it supports lists of different lengths (but in this case, DLtoLD(LDtoDL(l)) is no more identity).

  1. From list to dict

    Actually less clean than @dwerk's defaultdict version.

    def LDtoDL (l) :
       result = {}
       for d in l :
          for k, v in d.items() :
             result[k] = result.get(k,[]) + [v] #inefficient
       return result
    
  2. From dict to list

    def DLtoLD (d) :
       if not d :
          return []
       #reserve as much *distinct* dicts as the longest sequence
       result = [{} for i in range(max (map (len, d.values())))]
       #fill each dict, one key at a time
       for k, seq in d.items() :
          for oneDict, oneValue in zip(result, seq) :
         oneDict[k] = oneValue
       return result
    
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