I would like to group similar entries of a dataset.

ds = {1: 'foo',
      2: 'bar',
      3: 'foo',
      4: 'bar',
      5: 'foo'}

   (1,3,5): 'foo',
   (2,4): 'bar'

I wrote this function, but I am sure there is something way simpler, isn't?

def tupelize_dict(data):
    from itertools import chain, combinations
    while True:
        rounds = []
        for x in combinations(data.keys(), 2):
            rounds.append((x, data[x[0]], data[x[1]]))

        end = True
        for k, a, b in rounds:
            if a == b:
                k_chain = [x if isinstance(x, (tuple, list)) else [x] for x in k]
                data[tuple(sorted(chain.from_iterable(k_chain)))] = a
                [data.pop(r) for r in k]
                end = False
        if end:
    return data  


I am interested in the general case where the content of the dataset can be any type of object that allows ds[i] == ds[j]:

ds = {1: {'a': {'b':'c'}},
      2: 'bar',
      3: {'a': {'b':'c'}},
      4: 'bar',
      5: {'a': {'b':'c'}}}

something like this should do the trick:

>>> from collections import defaultdict
>>> ds = {1: 'foo',
...       2: 'bar',
...       3: 'foo',
...       4: 'bar',
...       5: 'foo'}
>>> d = defaultdict(list)
>>> for k, v in ds.items():
...     d[v].append(k)
>>> res = {tuple(v): k for k, v in d.items()}
>>> res
{(1, 3, 5): 'foo', (2, 4): 'bar'}
  • Well, in a generic case the value of the dict can be a complex object not a string and dictionaries are unhashable... That said it could be interesting to use your idea by getting a hash of each dict. – nowox Nov 13 '16 at 0:07

as well as you could do something like this.

def tupelize_dict(ds):
    cache = {}
    for key, value in ds.items():
        cache.setdefault(value, []).append(key)
    return {tuple(v): k for k, v in cache.items()}

ds = {1: 'foo',
      2: 'bar',
      3: 'foo',
      4: 'bar',
      5: 'foo'}

Following the answer of acushner, it is possible to make it work if I can compute a hash of the content of dataset's elements.

import pickle
from collections import defaultdict

def tupelize_dict(ds):
    t = {}
    d = defaultdict(list)
    for k, v in ds.items():
        h = dumps(ds)
        t[h] = v

    return {tuple(v): t[k] for k, v in d.items()}   

This solution is MUCH faster than my original proposition.

To test it I made a set of big random nested dictionary and run cProfile on both implementations:

original: 204.9 seconds
new:        6.4 seconds


I realized the dumps does not work with some dictionaries because the keys order can internally vary for obscure reasons (see this question)

A workaround would be to order all the dicts:

import copy
import collections

def faithfulrepr(od):
    od = od.deepcopy(od)
    if isinstance(od, collections.Mapping):
        res = collections.OrderedDict()
        for k, v in sorted(od.items()):
            res[k] = faithfulrepr(v)
        return repr(res)
    if isinstance(od, list):
        for i, v in enumerate(od):
            od[i] = faithfulrepr(v)
        return repr(od)
    return repr(od)

def tupelize_dict(ds):
    taxonomy = {}
    binder = collections.defaultdict(list)
    for key, value in ds.items():
        signature = faithfulrepr(value)
        taxonomy[signature] = value
    def tu(keys):
        return tuple(sorted(keys)) if len(keys) > 1 else keys[0]
    return {tu(keys): taxonomy[s] for s, keys in binder.items()}   

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