I am debugging some code and I want to find out when a particular dictionary is accessed. Well, it's actually a class that subclass dict and implements a couple extra features. Anyway, what I would like to do is subclass dict myself and add override __getitem__ and __setitem__ to produce some debugging output. Right now, I have

class DictWatch(dict):
    def __init__(self, *args):
        dict.__init__(self, args)

    def __getitem__(self, key):
        val = dict.__getitem__(self, key)
        log.info("GET %s['%s'] = %s" % str(dict.get(self, 'name_label')), str(key), str(val)))
        return val

    def __setitem__(self, key, val):
        log.info("SET %s['%s'] = %s" % str(dict.get(self, 'name_label')), str(key), str(val)))
        dict.__setitem__(self, key, val)

'name_label' is a key which will eventually be set that I want to use to identify the output. I have then changed the class I am instrumenting to subclass DictWatch instead of dict and changed the call to the superconstructor. Still, nothing seems to be happening. I thought I was being clever, but I wonder if I should be going a different direction.

Thanks for the help!

  • Did you try to use print instead of log? Also, could you explain how do you create/configure you log?
    – pajton
    Mar 6 '10 at 0:39
  • 3
    Doesn't dict.__init__ take *args? Oct 28 '17 at 23:04
  • 4
    Looks a bit like a good candidate for a decorator. Oct 28 '17 at 23:06

Another issue when subclassing dict is that the built-in __init__ doesn't call update, and the built-in update doesn't call __setitem__. So, if you want all setitem operations to go through your __setitem__ function, you should make sure that it gets called yourself:

class DictWatch(dict):
    def __init__(self, *args, **kwargs):
        self.update(*args, **kwargs)

    def __getitem__(self, key):
        val = dict.__getitem__(self, key)
        print('GET', key)
        return val

    def __setitem__(self, key, val):
        print('SET', key, val)
        dict.__setitem__(self, key, val)

    def __repr__(self):
        dictrepr = dict.__repr__(self)
        return '%s(%s)' % (type(self).__name__, dictrepr)
    def update(self, *args, **kwargs):
        print('update', args, kwargs)
        for k, v in dict(*args, **kwargs).iteritems():
            self[k] = v
  • 13
    If you are using Python 3, you'll want to change this example so that print is the print() function and the update() method uses items() instead of iteritems(). Sep 18 '17 at 4:01
  • I have tried your sol, but it seems that it only works for only one level of indexing (i.e., dict[key] and not dict[key1][key2] ... )*
    – ndrwnaguib
    Apr 4 '19 at 16:42
  • d[key1] returns something, perhaps a dictionary. The second key indexes that. This technique can’t work unless that returned thing supports the watch behavior also. Apr 4 '19 at 16:48
  • 1
    @AndrewNaguib: Why should it work with nested arrays? Nested array do not work with normal python dict either (if you did not implement it yourself) May 1 '19 at 11:32
  • 1
    @AndrewNaguib: __getitem__ would need to test val and only do that conditionally — i.e. if isinstance(val, dict): ...
    – martineau
    Sep 18 '19 at 18:46

What you're doing should absolutely work. I tested out your class, and aside from a missing opening parenthesis in your log statements, it works just fine. There are only two things I can think of. First, is the output of your log statement set correctly? You might need to put a logging.basicConfig(level=logging.DEBUG) at the top of your script.

Second, __getitem__ and __setitem__ are only called during [] accesses. So make sure you only access DictWatch via d[key], rather than d.get() and d.set()

  • Actually it's not extra parens, but a missing opening paren around (str(dict.get(self, 'name_label')), str(key), str(val)))
    – cobbal
    Mar 6 '10 at 0:44
  • 3
    True. To the OP: For future reference, you can simply do log.info('%s %s %s', a, b, c), instead of a Python string formatting operator.
    – BrainCore
    Mar 6 '10 at 0:50
  • Logging level ended up being the issue. I'm debugging someone else's code and I was originally testing in another file which head a different level of debugging set. Thanks! Mar 6 '10 at 3:01

Consider subclassing UserDict or UserList. These classes are intended to be subclassed whereas the normal dict and list are not, and contain optimisations.

  • 11
    For reference, the documentation in Python 3.6 says "The need for this class has been partially supplanted by the ability to subclass directly from dict; however, this class can be easier to work with because the underlying dictionary is accessible as an attribute".
    – Sean
    Sep 16 '18 at 17:33
  • 1
    @andrew an example might be helpful. Sep 26 '19 at 9:40
  • 3
    @VasanthaGaneshK treyhunner.com/2019/04/…
    – SirDorius
    Feb 11 '20 at 15:53

That should not really change the result (which should work, for good logging threshold values) : your init should be :

def __init__(self,*args,**kwargs) : dict.__init__(self,*args,**kwargs) 

instead, because if you call your method with DictWatch([(1,2),(2,3)]) or DictWatch(a=1,b=2) this will fail.

(or,better, don't define a constructor for this)

  • I'm only worried about the dict[key] form of access, so this isn't an issue. Mar 6 '10 at 2:16

As andrew pate answer proposed, subclassing collections.UserDict instead of dict is much less error prone.

Here is an example showing issue when inheriting dict naively:

class MyDict(dict):

  def __setitem__(self, key, value):
    super().__setitem__(key, value * 10)

d = MyDict(a=1, b=2)  # Bad! MyDict.__setitem__ not called
d.update(c=3)  # Bad! MyDict.__setitem__ not called
d['d'] = 4  # Good!
print(d)  # {'a': 1, 'b': 2, 'c': 3, 'd': 40}

UserDict inherit from collections.abc.MutableMapping, so works as expected:

class MyDict(collections.UserDict):

  def __setitem__(self, key, value):
    super().__setitem__(key, value * 10)

d = MyDict(a=1, b=2)  # Good: MyDict.__setitem__ correctly called
d.update(c=3)  # Good: MyDict.__setitem__ correctly called
d['d'] = 4  # Good
print(d)  # {'a': 10, 'b': 20, 'c': 30, 'd': 40}

Similarly, you only have to implement __getitem__ to automatically be compatible with key in my_dict, my_dict.get,...

Note: UserDict is not a subclass of dict, so isinstance(UserDict(), dict) will fail (but isinstance(UserDict(), collections.abc.MutableMapping) will work)


All you will have to do is

class BatchCollection(dict):
    def __init__(self, inpt={}):
        super(BatchCollection, self).__init__(inpt)

A sample usage for my personal use

class BatchCollection(dict):
    def __init__(self, inpt={}):
        super(BatchCollection, self).__init__(inpt)

    def __setitem__(self, key, item):
        if (isinstance(key, tuple) and len(key) == 2
                and isinstance(item, collections.Iterable)):
            # self.__dict__[key] = item
            super(BatchCollection, self).__setitem__(key, item)
            raise Exception(
                "Valid key should be a tuple (database_name, table_name) "
                "and value should be iterable")

Note: tested only in python3

  • Since this is Python 3, I recommend just using super() instead of super(BatchCollection, self)
    – MestreLion
    Oct 15 '21 at 11:47

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