Multiple levels of 'collection.defaultdict' in Python
Thanks to some great folks on SO, I discovered the possibilities offered by collections.defaultdict
, notably in readability and speed. I have put them to use with success.
Now I would like to implement three levels of dictionaries, the two top ones being defaultdict
and the lowest one being int
. I don't find the appropriate way to do this. Here is my attempt:
from collections import defaultdict
d = defaultdict(def开发者_如何学编程aultdict)
a = [("key1", {"a1":22, "a2":33}),
("key2", {"a1":32, "a2":55}),
("key3", {"a1":43, "a2":44})]
for i in a:
d[i[0]] = i[1]
Now this works, but the following, which is the desired behavior, doesn't:
d["key4"]["a1"] + 1
I suspect that I should have declared somewhere that the second level defaultdict
is of type int
, but I didn't find where or how to do so.
The reason I am using defaultdict
in the first place is to avoid having to initialize the dictionary for each new key.
Any more elegant suggestion?
Thanks pythoneers!
Use:
from collections import defaultdict
d = defaultdict(lambda: defaultdict(int))
This will create a new defaultdict(int)
whenever a new key is accessed in d
.
Another way to make a pickleable, nested defaultdict is to use a partial object instead of a lambda:
from functools import partial
...
d = defaultdict(partial(defaultdict, int))
This will work because the defaultdict class is globally accessible at the module level:
"You can't pickle a partial object unless the function [or in this case, class] it wraps is globally accessible ... under its __name__ (within its __module__)" -- Pickling wrapped partial functions
Look at nosklo's answer here for a more general solution.
class AutoVivification(dict):
"""Implementation of perl's autovivification feature."""
def __getitem__(self, item):
try:
return dict.__getitem__(self, item)
except KeyError:
value = self[item] = type(self)()
return value
Testing:
a = AutoVivification()
a[1][2][3] = 4
a[1][3][3] = 5
a[1][2]['test'] = 6
print a
Output:
{1: {2: {'test': 6, 3: 4}, 3: {3: 5}}}
As per @rschwieb's request for D['key'] += 1
, we can expand on previous by overriding addition by defining __add__
method, to make this behave more like a collections.Counter()
First __missing__
will be called to create a new empty value, which will be passed into __add__
. We test the value, counting on empty values to be False
.
See emulating numeric types for more information on overriding.
from numbers import Number
class autovivify(dict):
def __missing__(self, key):
value = self[key] = type(self)()
return value
def __add__(self, x):
""" override addition for numeric types when self is empty """
if not self and isinstance(x, Number):
return x
raise ValueError
def __sub__(self, x):
if not self and isinstance(x, Number):
return -1 * x
raise ValueError
Examples:
>>> import autovivify
>>> a = autovivify.autovivify()
>>> a
{}
>>> a[2]
{}
>>> a
{2: {}}
>>> a[4] += 1
>>> a[5][3][2] -= 1
>>> a
{2: {}, 4: 1, 5: {3: {2: -1}}}
Rather than checking argument is a Number (very non-python, amirite!) we could just provide a default 0 value and then attempt the operation:
class av2(dict):
def __missing__(self, key):
value = self[key] = type(self)()
return value
def __add__(self, x):
""" override addition when self is empty """
if not self:
return 0 + x
raise ValueError
def __sub__(self, x):
""" override subtraction when self is empty """
if not self:
return 0 - x
raise ValueError
Late to the party, but for arbitrary depth I just found myself doing something like this:
from collections import defaultdict
class DeepDict(defaultdict):
def __call__(self):
return DeepDict(self.default_factory)
The trick here is basically to make the DeepDict
instance itself a valid factory for constructing missing values. Now we can do things like
dd = DeepDict(DeepDict(list))
dd[1][2].extend([3,4])
sum(dd[1][2]) # 7
ddd = DeepDict(DeepDict(DeepDict(list)))
ddd[1][2][3].extend([4,5])
sum(ddd[1][2][3]) # 9
def _sub_getitem(self, k):
try:
# sub.__class__.__bases__[0]
real_val = self.__class__.mro()[-2].__getitem__(self, k)
val = '' if real_val is None else real_val
except Exception:
val = ''
real_val = None
# isinstance(Avoid,dict)也是true,会一直递归死
if type(val) in (dict, list, str, tuple):
val = type('Avoid', (type(val),), {'__getitem__': _sub_getitem, 'pop': _sub_pop})(val)
# 重新赋值当前字典键为返回值,当对其赋值时可回溯
if all([real_val is not None, isinstance(self, (dict, list)), type(k) is not slice]):
self[k] = val
return val
def _sub_pop(self, k=-1):
try:
val = self.__class__.mro()[-2].pop(self, k)
val = '' if val is None else val
except Exception:
val = ''
if type(val) in (dict, list, str, tuple):
val = type('Avoid', (type(val),), {'__getitem__': _sub_getitem, 'pop': _sub_pop})(val)
return val
class DefaultDict(dict):
def __getitem__(self, k):
return _sub_getitem(self, k)
def pop(self, k):
return _sub_pop(self, k)
In[8]: d=DefaultDict()
In[9]: d['a']['b']['c']['d']
Out[9]: ''
In[10]: d['a']="ggggggg"
In[11]: d['a']
Out[11]: 'ggggggg'
In[12]: d['a']['pp']
Out[12]: ''
No errors again. No matter how many levels nested. pop no error also
dd=DefaultDict({"1":333333})
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