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  • A frozen set is a frozenset.
  • A frozen list could be a tuple.
  • What would a frozen dict be? An immutable, hashable dict.

I guess it could be something like collections.namedtuple, but that is more like a frozen-keys dict (a half-frozen dict). Isn't it?

A "frozendict" should be a frozen dictionary, it should have keys, values, get, etc., and support in, for, etc.

share|improve this question
up vote 63 down vote accepted

Python doesn't have a builtin frozendict type. It turns out this wouldn't be useful too often (though it would still probably be useful more often than frozenset is).

The most common reason to want such a type is when memoizing function calls for functions with unknown arguments. The most common solution to store a hashable equivalent of a dict (where the values are hashable) is something like tuple(sorted(kwargs.iteritems())).

This depends on the sorting not being a bit insane. Python cannot positively promise sorting will result in something reasonable here. (But it can't promise much else, so don't sweat it too much.)

You could easily enough make some sort of wrapper that works much like a dict. It might look something like

import collections

class FrozenDict(collections.Mapping):
    """Don't forget the docstrings!!"""

    def __init__(self, *args, **kwargs):
        self._d = dict(*args, **kwargs)
        self._hash = None

    def __iter__(self):
        return iter(self._d)

    def __len__(self):
        return len(self._d)

    def __getitem__(self, key):
        return self._d[key]

    def __hash__(self):
        # It would have been simpler and maybe more obvious to 
        # use hash(tuple(sorted(self._d.iteritems()))) from this discussion
        # so far, but this solution is O(n). I don't know what kind of 
        # n we are going to run into, but sometimes it's hard to resist the 
        # urge to optimize when it will gain improved algorithmic performance.
        if self._hash is None:
            self._hash = 0
            for pair in self.iteritems():
                self._hash ^= hash(pair)
        return self._hash

It should work great:

>>> x = FrozenDict(a=1, b=2)
>>> y = FrozenDict(a=1, b=2)
>>> x is y
>>> x == y
>>> x == {'a': 1, 'b': 2}
>>> d = {x: 'foo'}
>>> d[y]
share|improve this answer
I don't know what level of thread safety people worry about with this kind of thing, but in that respect your __hash__ method could be slightly improved. Simply use a temporary variable when calculating the hash, and only set self._hash once you have the final value. That way another thread getting a hash while the first is calculating will simply do redundant calculation, rather than getting an incorrect value. – Jeff DQ Jun 2 '11 at 17:02
@Jeff As a rule, all code everywhere is not thread-safe, and you should wrap it around some synchronization structures in order to safely use that code. Also, your particular notion of thread safety relies on the atomicity of object attribute assignment, which is far from guaranteed. – Devin Jeanpierre Jun 3 '11 at 1:07
@Anentropic, That's not true at all. – Mike Graham Nov 10 '11 at 14:08
Be warned: This "FrozenDict" is not necessarily frozen. There is nothing to stop you from putting a mutable list as a value, in which case hashing will throw an error. There's nothing necessarily wrong with that, but users should be aware. Another thing: This hashing algorithm is poorly chosen, very prone to hash collisions. For example {'a':'b'} hashes the same as {'b':'a'} and {'a':1, 'b':2} hashes the same as {'a':2, 'b':1}. Better choice would be self._hash ^= hash((key, value)) – Steve B Nov 11 '12 at 18:20
If you add a mutable entry in an immutable object, the two possible behaviors are to throw an error on creating the object, or throw an error on hashing the object. Tuples do the latter, frozenset does the former. I definitely think you made a good decision to take the latter approach, all things considered. Nevertheless, I think that people might see that FrozenDict and frozenset have similar names, and jump to a conclusion that they should behave similarly. So I think it is worth warning people about this difference. :-) – Steve B Nov 11 '12 at 19:52

Curiously, although we have the seldom useful frozenset in python, there's still no frozen mapping. The idea was rejected in PEP 416.

So the python 2 solution to this:

def foo(config={'a': 1}):

Still seems to be the somewhat lame:

def foo(config=None):
    if config is None:
        config = default_config = {'a': 1}

In python3 you have the option of this:

from types import MappingProxyType

default_config = {'a': 1}
DEFAULTS = MappingProxyType(default_config)

def foo(config=DEFAULTS):

Now the default config can be updated dynamically, but remain immutable where you want it to be immutable by passing around the proxy instead.

So changes in the default_config will update DEFAULTS as expected, but you can't write to the mapping proxy object itself.

Admittedly it's not quite the same thing as an "immutable, hashable dict" - but it's a decent substitute given the same kind of use cases for which we might want a frozendict.

share|improve this answer

Assuming the keys and values of the dictionary are themselves immutable (e.g. strings) then:

>>> d
{'forever': 'atones', 'minks': 'cards', 'overhands': 'warranted', 
 'hardhearted': 'tartly', 'gradations': 'snorkeled'}
>>> t = tuple((k, d[k]) for k in sorted(d.keys()))
>>> hash(t)
share|improve this answer
This is a good, canonical, immutable representation of a dict (barring insane comparison behavior messing up the sort). – Mike Graham Apr 24 '10 at 16:06
+1, but nit: tuple(sorted(d.iteritems())) is nicer. – Devin Jeanpierre Apr 24 '10 at 16:31
@devin: agreed in full, but I'll let my post stand as an example that there's often an even better way. – msw May 9 '10 at 0:03
Even better would be to put it in a frozenset, which does not require the keys or values to have a consistent ordering defined. – asmeurer May 22 '12 at 22:09

I think of frozendict everytime I write a function like this:

def do_something(blah, optional_dict_parm=None):
    if optional_dict_parm is None:
        optional_dict_parm = {}
share|improve this answer
Every time I see a comment like this I'm sure that I screwed up somewhere and put {} as a default, and go back and look at my recently written code. – Ryan Hiebert Dec 27 '11 at 23:30
Yeah, it's a nasty gotcha that everyone runs into, sooner or later. – Mark Visser Jan 5 '12 at 20:59
Easier formulation: optional_dict_parm = optional_dict_parm or {} – Emmanuel Jun 13 '12 at 12:08
In this case you can use types.MappingProxyType({}) as default value for argument. – GingerPlusPlus Apr 10 '15 at 19:50
@GingerPlusPlus could you write that up as an answer? – jonrsharpe Jun 4 '15 at 7:30

Here is the code I've been using. I subclassed frozenset. The advantages of this are the following.

  1. This is a truly immutable object. No relying on the good behavior of future users and developers.
  2. It's easy to convert back and forth between a regular dictionary and a frozen dictionary. FrozenDict(orig_dict) --> frozen dictionary. dict(frozen_dict) --> regular dict.

Update Jan 21 2015: The original piece of code I posted in 2014 used a for-loop to find a key that matched. That was incredibly slow. Now I've put together an implementation which takes advantage of frozenset's hashing features. Key-value pairs are stored in special containers where the __hash__ and __eq__ functions are based on the key only. This code has also been formally unit-tested, unlike what I posted here in August 2014.

MIT-style license.

if 3 / 2 == 1:
    version = 2
elif 3 / 2 == 1.5:
    version = 3

def col(i):
    ''' For binding named attributes to spots inside subclasses of tuple.'''
    g = tuple.__getitem__
    def _col(self):
        return g(self,i)
    return _col

class Item(tuple):
    ''' Designed for storing key-value pairs inside
        a FrozenDict, which itself is a subclass of frozenset.
        The __hash__ is overloaded to return the hash of only the key.
        __eq__ is overloaded so that normally it only checks whether the Item's
        key is equal to the other object, HOWEVER, if the other object itself
        is an instance of Item, it checks BOTH the key and value for equality.

        WARNING: Do not use this class for any purpose other than to contain
        key value pairs inside FrozenDict!!!!

        The __eq__ operator is overloaded in such a way that it violates a
        fundamental property of mathematics. That property, which says that
        a == b and b == c implies a == c, does not hold for this object.
        Here's a demonstration:
            [in]  >>> x = Item(('a',4))
            [in]  >>> y = Item(('a',5))
            [in]  >>> hash('a')
            [out] >>> 194817700
            [in]  >>> hash(x)
            [out] >>> 194817700
            [in]  >>> hash(y)
            [out] >>> 194817700
            [in]  >>> 'a' == x
            [out] >>> True
            [in]  >>> 'a' == y
            [out] >>> True
            [in]  >>> x == y
            [out] >>> False

    __slots__ = ()
    key, value = col(0), col(1)
    def __hash__(self):
        return hash(self.key)
    def __eq__(self, other):
        if isinstance(other, Item):
            return tuple.__eq__(self, other)
        return self.key == other
    def __ne__(self, other):
        return not self.__eq__(other)
    def __str__(self):
        return '%r: %r' % self
    def __repr__(self):
        return 'Item((%r, %r))' % self

class FrozenDict(frozenset):
    ''' Behaves in most ways like a regular dictionary, except that it's immutable.
        It differs from other implementations because it doesn't subclass "dict".
        Instead it subclasses "frozenset" which guarantees immutability.
        FrozenDict instances are created with the same arguments used to initialize
        regular dictionaries, and has all the same methods.
            [in]  >>> f = FrozenDict(x=3,y=4,z=5)
            [in]  >>> f['x']
            [out] >>> 3
            [in]  >>> f['a'] = 0
            [out] >>> TypeError: 'FrozenDict' object does not support item assignment

        FrozenDict can accept un-hashable values, but FrozenDict is only hashable if its values are hashable.
            [in]  >>> f = FrozenDict(x=3,y=4,z=5)
            [in]  >>> hash(f)
            [out] >>> 646626455
            [in]  >>> g = FrozenDict(x=3,y=4,z=[])
            [in]  >>> hash(g)
            [out] >>> TypeError: unhashable type: 'list'

        FrozenDict interacts with dictionary objects as though it were a dict itself.
            [in]  >>> original = dict(x=3,y=4,z=5)
            [in]  >>> frozen = FrozenDict(x=3,y=4,z=5)
            [in]  >>> original == frozen
            [out] >>> True

        FrozenDict supports bi-directional conversions with regular dictionaries.
            [in]  >>> original = {'x': 3, 'y': 4, 'z': 5}
            [in]  >>> FrozenDict(original)
            [out] >>> FrozenDict({'x': 3, 'y': 4, 'z': 5})
            [in]  >>> dict(FrozenDict(original))
            [out] >>> {'x': 3, 'y': 4, 'z': 5}   '''

    __slots__ = ()
    def __new__(cls, orig={}, **kw):
        if kw:
            d = dict(orig, **kw)
            items = map(Item, d.items())
                items = map(Item, orig.items())
            except AttributeError:
                items = map(Item, orig)
        return frozenset.__new__(cls, items)

    def __repr__(self):
        cls = self.__class__.__name__
        items = frozenset.__iter__(self)
        _repr = ', '.join(map(str,items))
        return '%s({%s})' % (cls, _repr)

    def __getitem__(self, key):
        if key not in self:
            raise KeyError(key)
        diff = self.difference
        item = diff(diff({key}))
        key, value = set(item).pop()
        return value

    def get(self, key, default=None):
        if key not in self:
            return default
        return self[key]

    def __iter__(self):
        items = frozenset.__iter__(self)
        return map(lambda i: i.key, items)

    def keys(self):
        items = frozenset.__iter__(self)
        return map(lambda i: i.key, items)

    def values(self):
        items = frozenset.__iter__(self)
        return map(lambda i: i.value, items)

    def items(self):
        items = frozenset.__iter__(self)
        return map(tuple, items)

    def copy(self):
        cls = self.__class__
        items = frozenset.copy(self)
        dupl = frozenset.__new__(cls, items)
        return dupl

    def fromkeys(cls, keys, value):
        d = dict.fromkeys(keys,value)
        return cls(d)

    def __hash__(self):
        kv = tuple.__hash__
        items = frozenset.__iter__(self)
        return hash(frozenset(map(kv, items)))

    def __eq__(self, other):
        if not isinstance(other, FrozenDict):
                other = FrozenDict(other)
            except Exception:
                return False
        return frozenset.__eq__(self, other)

    def __ne__(self, other):
        return not self.__eq__(other)

if version == 2:
    #Here are the Python2 modifications
    class Python2(FrozenDict):
        def __iter__(self):
            items = frozenset.__iter__(self)
            for i in items:
                yield i.key

        def iterkeys(self):
            items = frozenset.__iter__(self)
            for i in items:
                yield i.key

        def itervalues(self):
            items = frozenset.__iter__(self)
            for i in items:
                yield i.value

        def iteritems(self):
            items = frozenset.__iter__(self)
            for i in items:
                yield (i.key, i.value)

        def has_key(self, key):
            return key in self

        def viewkeys(self):
            return dict(self).viewkeys()

        def viewvalues(self):
            return dict(self).viewvalues()

        def viewitems(self):
            return dict(self).viewitems()

    #If this is Python2, rebuild the class
    #from scratch rather than use a subclass
    py3 = FrozenDict.__dict__
    py3 = {k: py3[k] for k in py3}
    py2 = {}
    dct = Python2.__dict__
    py2.update({k: dct[k] for k in dct})

    FrozenDict = type('FrozenDict', (frozenset,), py2)
share|improve this answer
Note that you have also licensed it under CC BY-SA 3.0, by posting it here. At least that's the prevalent view. I guess the legal basis for that is agreeing to some T&Cs when you first signed up. – Evgeni Sergeev Nov 1 '15 at 1:44

Yes, this is my second answer, but it is a completely different approach. The first implementation was in pure python. This one is in Cython. If you know how to use and compile Cython modules, this is just as fast as a regular dictionary. Roughly .04 to .06 micro-sec to retrieve a single value.

This is the file "frozen_dict.pyx"

import cython
from collections import Mapping

cdef class dict_wrapper:
    cdef object d
    cdef int h

    def __init__(self, *args, **kw):
        self.d = dict(*args, **kw)
        self.h = -1

    def __len__(self):
        return len(self.d)

    def __iter__(self):
        return iter(self.d)

    def __getitem__(self, key):
        return self.d[key]

    def __hash__(self):
        if self.h == -1:
            self.h = hash(frozenset(self.d.iteritems()))
        return self.h

class FrozenDict(dict_wrapper, Mapping):
    def __repr__(self):
        c = type(self).__name__
        r = ', '.join('%r: %r' % (k,self[k]) for k in self)
        return '%s({%s})' % (c, r)

__all__ = ['FrozenDict']

Here's the file "setup.py"

from distutils.core import setup
from Cython.Build import cythonize

    ext_modules = cythonize('frozen_dict.pyx')

If you have Cython installed, save the two files above into the same directory. Move to that directory in the command line.

python setup.py build_ext --inplace
python setup.py install

And you should be done.

share|improve this answer

The main disadvantage of namedtuple is that it needs to be specified before it is used, so it's less convenient for single-use cases.

However, there is a practical workaround that can be used to handle many such cases. Let's say that you want to have an immutable equivalent of the following dict:

    'something': 123,
    'something_else': 456

This can be emulated like this:

from collections import namedtuple

MY_CONSTANT = namedtuple('MyConstant', 'something something_else')(123, 456)

It's even possible to write an auxiliary function to automate this:

def freeze_dict(data):
    from collections import namedtuple
    keys = sorted(data.keys())
    frozen_type = namedtuple(''.join(keys), keys)
    return frozen_type(**data)

a = {'foo':'bar', 'x':'y'}
fa = freeze_dict(data)
assert a['foo'] == a.foo

Of course this works only for flat dicts, but it shouldn't be too difficult to implement a recursive version.

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