299

How do I make Python dictionary members accessible via a dot "."?

For example, instead of writing mydict['val'], I'd like to write mydict.val.

Also I'd like to access nested dicts this way. For example

mydict.mydict2.val 

would refer to

mydict = { 'mydict2': { 'val': ... } }
  • 21
    Many of the situations where people use nested dicts would be just as well or better served by dicts with tuples as keys, where d[a][b][c] is replaced by d[a, b, c]. – Mike Graham Feb 28 '10 at 19:03
  • 7
    It's not magic: foo={}; foo[1,2,3] = "one, two, three!"; foo.keys() => [(1,2,3)] – Bryan Oakley Feb 28 '10 at 19:38
  • 10
    Wow. Wow again. I didn't know tuples could be keys of dict. Wow third time. – bodacydo Feb 28 '10 at 19:53
  • 3
    Any object that is "hashable" may be used as the key of a dict. Most immutable objects are also hashable, but only if all of their contents are hashable. The code d[1, 2, 3] works because "," is the "create a tuple operator"; it's the same as d[(1, 2, 3)]. Parentheses are often optional around the declaration of a tuple. – Larry Hastings Mar 1 '10 at 3:05
  • 6
    Have you considered the case where the key has a dot by itself - {"my.key":"value"}? Or when the key is a keyword, like "from"? I have considered it a couple of times, and it's more problems and troubleshooting than perceived benefits. – Todor Minakov Nov 1 '15 at 8:12

24 Answers 24

155

You can do it using this class I just made. With this class you can use the Map object like another dictionary(including json serialization) or with the dot notation. I hope to help you:

class Map(dict):
    """
    Example:
    m = Map({'first_name': 'Eduardo'}, last_name='Pool', age=24, sports=['Soccer'])
    """
    def __init__(self, *args, **kwargs):
        super(Map, self).__init__(*args, **kwargs)
        for arg in args:
            if isinstance(arg, dict):
                for k, v in arg.iteritems():
                    self[k] = v

        if kwargs:
            for k, v in kwargs.iteritems():
                self[k] = v

    def __getattr__(self, attr):
        return self.get(attr)

    def __setattr__(self, key, value):
        self.__setitem__(key, value)

    def __setitem__(self, key, value):
        super(Map, self).__setitem__(key, value)
        self.__dict__.update({key: value})

    def __delattr__(self, item):
        self.__delitem__(item)

    def __delitem__(self, key):
        super(Map, self).__delitem__(key)
        del self.__dict__[key]

Usage examples:

m = Map({'first_name': 'Eduardo'}, last_name='Pool', age=24, sports=['Soccer'])
# Add new key
m.new_key = 'Hello world!'
# Or
m['new_key'] = 'Hello world!'
print m.new_key
print m['new_key']
# Update values
m.new_key = 'Yay!'
# Or
m['new_key'] = 'Yay!'
# Delete key
del m.new_key
# Or
del m['new_key']
| improve this answer | |
  • 21
    To work on Python 3 I updated .iteritems() to .items() – berto Jul 14 '16 at 21:17
  • 13
    Note that this will behave differently from common expectations in that it won't raise AttributeError if the attribute does not exist. Instead it will return None. – mic_e Aug 1 '16 at 10:45
  • Recommend adding getstate and setstate so that deep copy and other systems can support it. – user1363990 Sep 27 '17 at 3:01
  • 4
    You can simplify your constructor to self.update(*args,**kwargs). Also, you can add __missing__(self,key): value=self[key]= type(self)(); return value. Then you can add missing entries using dot notation. If you want it to be pickable, you can add __getstate__ and __setstate__ – Jens Munk Nov 5 '17 at 21:32
  • 1
    This would make hasattr(Map, 'anystring') is true. which means the hasattr would always return True due to overriding __getattr__` – Xiao Nov 7 '18 at 5:51
282

I've always kept this around in a util file. You can use it as a mixin on your own classes too.

class dotdict(dict):
    """dot.notation access to dictionary attributes"""
    __getattr__ = dict.get
    __setattr__ = dict.__setitem__
    __delattr__ = dict.__delitem__

mydict = {'val':'it works'}
nested_dict = {'val':'nested works too'}
mydict = dotdict(mydict)
mydict.val
# 'it works'

mydict.nested = dotdict(nested_dict)
mydict.nested.val
# 'nested works too'
| improve this answer | |
  • 5
    Very simple answer, great! Do you happen to know what I would need to to in order to have tab-completion in IPython work? The class would need to implement __dir__(self), but somehow I cannot get it to work. – andreas-h Feb 19 '16 at 18:59
  • 8
    +1 for simplicity. but doesn't seem to work on nested dicts. d = {'foo': {'bar': 'baz'}}; d = dotdict(d); d.foo.bar throws an attribute error, but d.foo work fine. – tmthyjames Jun 10 '16 at 22:28
  • 2
    Yep this does not work for complex nested structures. – David Jul 14 '16 at 12:08
  • 17
    @tmthyjames you could simply return dotdict type object in the getter method to recursively access attributes with dot notation like: python class DotDict(dict): """dot.notation access to dictionary attributes""" def __getattr__(*args): val = dict.get(*args) return DotDict(val) if type(val) is dict else val __setattr__ = dict.__setitem__ __delattr__ = dict.__delitem__ – TMKasun Jul 12 '17 at 13:41
  • 4
    After experimenting with it, it seems get is indeed a bad idea since it will return None instead of raising an error for missing items ... – NichtJens Sep 6 '17 at 0:16
122

Install dotmap via pip

pip install dotmap

It does everything you want it to do and subclasses dict, so it operates like a normal dictionary:

from dotmap import DotMap

m = DotMap()
m.hello = 'world'
m.hello
m.hello += '!'
# m.hello and m['hello'] now both return 'world!'
m.val = 5
m.val2 = 'Sam'

On top of that, you can convert it to and from dict objects:

d = m.toDict()
m = DotMap(d) # automatic conversion in constructor

This means that if something you want to access is already in dict form, you can turn it into a DotMap for easy access:

import json
jsonDict = json.loads(text)
data = DotMap(jsonDict)
print data.location.city

Finally, it automatically creates new child DotMap instances so you can do things like this:

m = DotMap()
m.people.steve.age = 31

Comparison to Bunch

Full disclosure: I am the creator of the DotMap. I created it because Bunch was missing these features

  • remembering the order items are added and iterating in that order
  • automatic child DotMap creation, which saves time and makes for cleaner code when you have a lot of hierarchy
  • constructing from a dict and recursively converting all child dict instances to DotMap
| improve this answer | |
  • 2
    :-) can you make it work with keys that have already dot in the name? {"test.foo": "bar"} can be accessed via mymap.test.foo That would be fantastic. It will take some regressesion to convert a flat map to a deep map then apply DotMap to it, but it's worth it! – dlite922 Nov 10 '15 at 17:39
  • Neat. Any way to make tab listing / completion work with the keys in Jupyter notebook? Dot-style access is most valuable for interactive use. – Dmitri Feb 13 '16 at 17:21
  • @Dmitri Cool product. Never heard of it before, so I'm not sure how to make its autocomplete work. I agree using DotMap with autocomplete works best. I use Sublime Text, which autocompletes previously typed keywords. – Chris Redford Feb 13 '16 at 18:58
  • 1
    I find that it lacks dictionary extraction for things like **kwargs or c = {**a, **b}. In fact, it fails quietly, it behaves like an empty dictionary when extracting. – Simon Streicher Feb 15 '18 at 23:11
  • @SimonStreicher I tested this with m = DotMap(); m.a = 2; m.b = 3; print('{a} {b}'.format(**m)); and I got the expected 2 3. If you have a proven broken case that works for dict() but not DotMap(), please submit your code to the Issues tab in GitHub. – Chris Redford Feb 16 '18 at 2:54
57

Derive from dict and and implement __getattr__ and __setattr__.

Or you can use Bunch which is very similar.

I don't think it's possible to monkeypatch built-in dict class.

| improve this answer | |
  • 2
    What does monkeypatch mean exactly? I have heard about it but not used. (Sorry that I ask such newbie questions, I am not that good with programming yet (I'm only 2nd year student.)) – bodacydo Feb 28 '10 at 20:04
  • 9
    Monkeypatching is using the dynamicity of Python (or whatever language) to change something that would usually be defined in source code. It especially applies to changing the definition of classes after they are created. – Mike Graham Feb 28 '10 at 20:06
  • If you're using this functionality a lot, beware of the speed of Bunch. I was using it pretty frequently and it ended up consuming a third of my request time. Check out my answer for a more detailed explanation of this. – JayD3e Jul 22 '15 at 16:48
23

Fabric has a really nice, minimal implementation. Extending that to allow for nested access, we can use a defaultdict, and the result looks something like this:

from collections import defaultdict

class AttributeDict(defaultdict):
    def __init__(self):
        super(AttributeDict, self).__init__(AttributeDict)

    def __getattr__(self, key):
        try:
            return self[key]
        except KeyError:
            raise AttributeError(key)

    def __setattr__(self, key, value):
        self[key] = value

Make use of it as follows:

keys = AttributeDict()
keys.abc.xyz.x = 123
keys.abc.xyz.a.b.c = 234

That elaborates a bit on Kugel's answer of "Derive from dict and and implement __getattr__ and __setattr__". Now you know how!

| improve this answer | |
  • 1
    That one is awesome! – Thomas Klinger May 13 at 12:47
  • Nice to include a defaultdict - however this seems to only work when starting a dict from scratch. If we need to convert an existing dict to a "dotdict" recursively. Here's an alternative dotdict which allow to convert existing dict object recursively: gist.github.com/miku/… – miku May 14 at 17:13
19

I tried this:

class dotdict(dict):
    def __getattr__(self, name):
        return self[name]

you can try __getattribute__ too.

make every dict a type of dotdict would be good enough, if you want to init this from a multi-layer dict, try implement __init__ too.

| improve this answer | |
  • oops, @Kugel 's answer is similar. – tdihp Feb 9 '12 at 3:52
  • 1
    tdihp, I like your answer still because I understood it faster - it has the actual code. – yigal Jan 29 '14 at 20:55
  • 1
    +1 for actual code. But @Kugel's suggestion of using Bunch is also very good. – Dannid Oct 24 '14 at 18:04
  • I found it useful to embed this inside a function by placing def docdict(name): before it and then ` if isinstance(name, dict): return DotDict(name) return name ` – Daniel Moskovich Jun 13 '18 at 10:27
  • great simple example.. I extended this a little bit so that a nested dict is easily chained, similar to @DanielMoskovich, but also returns leaf nodes correctly for int, string, etc... or null if not found class dotdict(dict): def __getattr__(self, name): if name not in self: return None elif type(self[name]) is dict: return JsonDot(self[name]) else: return self[name] – D Sievers Mar 6 '19 at 20:50
12

Use SimpleNamespace:

>>> from types import SimpleNamespace   
>>> d = dict(x=[1, 2], y=['a', 'b'])
>>> ns = SimpleNamespace(**d)
>>> ns.x
[1, 2]
>>> ns
namespace(x=[1, 2], y=['a', 'b'])
| improve this answer | |
11

Don't. Attribute access and indexing are separate things in Python, and you shouldn't want them to perform the same. Make a class (possibly one made by namedtuple) if you have something that should have accessible attributes and use [] notation to get an item from a dict.

| improve this answer | |
  • Thanks for the answer. But take a look at this question that I also just asked: stackoverflow.com/questions/2352252/… This seems like a good idea to use . instead of [] to access complicated data structures in Mako templates. – bodacydo Feb 28 '10 at 19:14
  • 2
    I can see a use case for this; in fact, I did it just a couple weeks ago. In my case I wanted an object that I could access attributes with dot notation. I found it very easy to simply inherit from dict so I get all the dict features built-in, but the public interface to this object uses dot notation (it's essentially a read-only interface to some static data). My users are much happier with 'foo.bar' than with 'foo["bar"]' and I'm happy that I can piggy-back off of the features of the dict datatype. – Bryan Oakley Feb 28 '10 at 19:35
  • 10
    You already know good Python style: we're telling you, don't pretend that the values of a dict are attributes. It's bad practice. For example, what if you want to store a value with the same name as an existing attribute of a dict, like "items" or "get" or "pop"? Probably something confusing. So don't do it! – Larry Hastings Mar 1 '10 at 3:08
  • 5
    Oops, I forgot about attributes like 'items', 'get' or 'pop. Thanks for bringing up this important example! – bodacydo Mar 1 '10 at 6:20
  • 5
    @Gabe, it has been a long time... but I think it is worth saying. It is not "good enough in JS": it is "horrible enough in JS". It gets funny when you store keys/attr that have the same name as other important attributes in the prototypic chain. – bgusach Nov 21 '14 at 15:51
11

If you want to pickle your modified dictionary, you need to add few state methods to above answers:

class DotDict(dict):
    """dot.notation access to dictionary attributes"""
    def __getattr__(self, attr):
        return self.get(attr)
    __setattr__= dict.__setitem__
    __delattr__= dict.__delitem__

    def __getstate__(self):
        return self

    def __setstate__(self, state):
        self.update(state)
        self.__dict__ = self
| improve this answer | |
  • Thanks for the comment about pickling. I was driven crazy by this error and only realized that it was because of this issue! – Shagru Aug 24 '16 at 1:55
  • Also happens when you use copy.deepcopy. This addition is needed. – user1363990 Sep 27 '17 at 3:03
  • Simplification: __getattr__ = dict.get – martineau Jan 8 at 17:00
11

I recently came across the 'Box' library which does the same thing.

Installation command : pip install python-box

Example:

from box import Box

mydict = {"key1":{"v1":0.375,
                    "v2":0.625},
          "key2":0.125,
          }
mydict = Box(mydict)

print(mydict.key1.v1)

I found it to be more effective than other existing libraries like dotmap, which generate python recursion error when you have large nested dicts.

link to library and details: https://pypi.org/project/python-box/

| improve this answer | |
9

Building on Kugel's answer and taking Mike Graham's words of caution into consideration, what if we make a wrapper?

class DictWrap(object):
  """ Wrap an existing dict, or create a new one, and access with either dot 
    notation or key lookup.

    The attribute _data is reserved and stores the underlying dictionary.
    When using the += operator with create=True, the empty nested dict is 
    replaced with the operand, effectively creating a default dictionary
    of mixed types.

    args:
      d({}): Existing dict to wrap, an empty dict is created by default
      create(True): Create an empty, nested dict instead of raising a KeyError

    example:
      >>>dw = DictWrap({'pp':3})
      >>>dw.a.b += 2
      >>>dw.a.b += 2
      >>>dw.a['c'] += 'Hello'
      >>>dw.a['c'] += ' World'
      >>>dw.a.d
      >>>print dw._data
      {'a': {'c': 'Hello World', 'b': 4, 'd': {}}, 'pp': 3}

  """

  def __init__(self, d=None, create=True):
    if d is None:
      d = {}
    supr = super(DictWrap, self)  
    supr.__setattr__('_data', d)
    supr.__setattr__('__create', create)

  def __getattr__(self, name):
    try:
      value = self._data[name]
    except KeyError:
      if not super(DictWrap, self).__getattribute__('__create'):
        raise
      value = {}
      self._data[name] = value

    if hasattr(value, 'items'):
      create = super(DictWrap, self).__getattribute__('__create')
      return DictWrap(value, create)
    return value

  def __setattr__(self, name, value):
    self._data[name] = value  

  def __getitem__(self, key):
    try:
      value = self._data[key]
    except KeyError:
      if not super(DictWrap, self).__getattribute__('__create'):
        raise
      value = {}
      self._data[key] = value

    if hasattr(value, 'items'):
      create = super(DictWrap, self).__getattribute__('__create')
      return DictWrap(value, create)
    return value

  def __setitem__(self, key, value):
    self._data[key] = value

  def __iadd__(self, other):
    if self._data:
      raise TypeError("A Nested dict will only be replaced if it's empty")
    else:
      return other
| improve this answer | |
6

I like the Munch and it gives lot of handy options on top of dot access.

import munch

temp_1 = {'person': { 'fname': 'senthil', 'lname': 'ramalingam'}}

dict_munch = munch.munchify(temp_1)

dict_munch.person.fname

| improve this answer | |
5

Use __getattr__, very simple, works in Python 3.4.3

class myDict(dict):
    def __getattr__(self,val):
        return self[val]


blockBody=myDict()
blockBody['item1']=10000
blockBody['item2']="StackOverflow"
print(blockBody.item1)
print(blockBody.item2)

Output:

10000
StackOverflow
| improve this answer | |
4

The language itself doesn't support this, but sometimes this is still a useful requirement. Besides the Bunch recipe, you can also write a little method which can access a dictionary using a dotted string:

def get_var(input_dict, accessor_string):
    """Gets data from a dictionary using a dotted accessor-string"""
    current_data = input_dict
    for chunk in accessor_string.split('.'):
        current_data = current_data.get(chunk, {})
    return current_data

which would support something like this:

>> test_dict = {'thing': {'spam': 12, 'foo': {'cheeze': 'bar'}}}
>> output = get_var(test_dict, 'thing.spam.foo.cheeze')
>> print output
'bar'
>>
| improve this answer | |
4

To build upon epool's answer, this version allows you to access any dict inside via the dot operator:

foo = {
    "bar" : {
        "baz" : [ {"boo" : "hoo"} , {"baba" : "loo"} ]
    }
}

For instance, foo.bar.baz[1].baba returns "loo".

class Map(dict):
    def __init__(self, *args, **kwargs):
        super(Map, self).__init__(*args, **kwargs)
        for arg in args:
            if isinstance(arg, dict):
                for k, v in arg.iteritems():
                    if isinstance(v, dict):
                        v = Map(v)
                    if isinstance(v, list):
                        self.__convert(v)
                    self[k] = v

        if kwargs:
            for k, v in kwargs.iteritems():
                if isinstance(v, dict):
                    v = Map(v)
                elif isinstance(v, list):
                    self.__convert(v)
                self[k] = v

    def __convert(self, v):
        for elem in xrange(0, len(v)):
            if isinstance(v[elem], dict):
                v[elem] = Map(v[elem])
            elif isinstance(v[elem], list):
                self.__convert(v[elem])

    def __getattr__(self, attr):
        return self.get(attr)

    def __setattr__(self, key, value):
        self.__setitem__(key, value)

    def __setitem__(self, key, value):
        super(Map, self).__setitem__(key, value)
        self.__dict__.update({key: value})

    def __delattr__(self, item):
        self.__delitem__(item)

    def __delitem__(self, key):
        super(Map, self).__delitem__(key)
        del self.__dict__[key]
| improve this answer | |
  • 1
    Python 3: replace iteritems() with items() and xrange() with range() – sasawatc Jan 22 at 4:14
3
def dict_to_object(dick):
    # http://stackoverflow.com/a/1305663/968442

    class Struct:
        def __init__(self, **entries):
            self.__dict__.update(entries)

    return Struct(**dick)

If one decides to permanently convert that dict to object this should do. You can create a throwaway object just before accessing.

d = dict_to_object(d)
| improve this answer | |
  • def attr(**kwargs): o = lambda: None o.__dict__.update(**kwargs) return o – throws_exceptions_at_you Jan 31 '19 at 19:03
2

I ended up trying BOTH the AttrDict and the Bunch libraries and found them to be way to slow for my uses. After a friend and I looked into it, we found that the main method for writing these libraries results in the library aggressively recursing through a nested object and making copies of the dictionary object throughout. With this in mind, we made two key changes. 1) We made attributes lazy-loaded 2) instead of creating copies of a dictionary object, we create copies of a light-weight proxy object. This is the final implementation. The performance increase of using this code is incredible. When using AttrDict or Bunch, these two libraries alone consumed 1/2 and 1/3 respectively of my request time(what!?). This code reduced that time to almost nothing(somewhere in the range of 0.5ms). This of course depends on your needs, but if you are using this functionality quite a bit in your code, definitely go with something simple like this.

class DictProxy(object):
    def __init__(self, obj):
        self.obj = obj

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

    def __getattr__(self, key):
        try:
            return wrap(getattr(self.obj, key))
        except AttributeError:
            try:
                return self[key]
            except KeyError:
                raise AttributeError(key)

    # you probably also want to proxy important list properties along like
    # items(), iteritems() and __len__

class ListProxy(object):
    def __init__(self, obj):
        self.obj = obj

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

    # you probably also want to proxy important list properties along like
    # __iter__ and __len__

def wrap(value):
    if isinstance(value, dict):
        return DictProxy(value)
    if isinstance(value, (tuple, list)):
        return ListProxy(value)
    return value

See the original implementation here by https://stackoverflow.com/users/704327/michael-merickel.

The other thing to note, is that this implementation is pretty simple and doesn't implement all of the methods you might need. You'll need to write those as required on the DictProxy or ListProxy objects.

| improve this answer | |
0

I'd like to throw my own solution into the ring:

https://github.com/skorokithakis/jsane

It allows you to parse JSON into something you can access with.attribute.lookups.like.this.r(), mostly because I hadn't seen this answer before starting to work on it.

| improve this answer | |
  • Python is guilty of few pesky simple design mistakes, raising KeyError is one of them, When one access the key that doesn't exist all it has to do is return None similar to JS behavior. I'm a big fan of autovivification both for reading and writing. Your library is closest to the ideal. – nehem Oct 2 '17 at 22:50
0

Not a direct answer to the OP's question, but inspired by and perhaps useful for some.. I've created an object-based solution using the internal __dict__ (In no way optimized code)

payload = {
    "name": "John",
    "location": {
        "lat": 53.12312312,
        "long": 43.21345112
    },
    "numbers": [
        {
            "role": "home",
            "number": "070-12345678"
        },
        {
            "role": "office",
            "number": "070-12345679"
        }
    ]
}


class Map(object):
    """
    Dot style access to object members, access raw values
    with an underscore e.g.

    class Foo(Map):
        def foo(self):
            return self.get('foo') + 'bar'

    obj = Foo(**{'foo': 'foo'})

    obj.foo => 'foobar'
    obj._foo => 'foo'

    """

    def __init__(self, *args, **kwargs):
        for arg in args:
            if isinstance(arg, dict):
                for k, v in arg.iteritems():
                    self.__dict__[k] = v
                    self.__dict__['_' + k] = v

        if kwargs:
            for k, v in kwargs.iteritems():
                self.__dict__[k] = v
                self.__dict__['_' + k] = v

    def __getattribute__(self, attr):
        if hasattr(self, 'get_' + attr):
            return object.__getattribute__(self, 'get_' + attr)()
        else:
            return object.__getattribute__(self, attr)

    def get(self, key):
        try:
            return self.__dict__.get('get_' + key)()
        except (AttributeError, TypeError):
            return self.__dict__.get(key)

    def __repr__(self):
        return u"<{name} object>".format(
            name=self.__class__.__name__
        )


class Number(Map):
    def get_role(self):
        return self.get('role')

    def get_number(self):
        return self.get('number')


class Location(Map):
    def get_latitude(self):
        return self.get('lat') + 1

    def get_longitude(self):
        return self.get('long') + 1


class Item(Map):
    def get_name(self):
        return self.get('name') + " Doe"

    def get_location(self):
        return Location(**self.get('location'))

    def get_numbers(self):
        return [Number(**n) for n in self.get('numbers')]


# Tests

obj = Item({'foo': 'bar'}, **payload)

assert type(obj) == Item
assert obj._name == "John"
assert obj.name == "John Doe"
assert type(obj.location) == Location
assert obj.location._lat == 53.12312312
assert obj.location._long == 43.21345112
assert obj.location.latitude == 54.12312312
assert obj.location.longitude == 44.21345112

for n in obj.numbers:
    assert type(n) == Number
    if n.role == 'home':
        assert n.number == "070-12345678"
    if n.role == 'office':
        assert n.number == "070-12345679"
| improve this answer | |
0

One simple way to get dot access (but not array access), is to use a plain object in Python. Like this:

class YourObject:
    def __init__(self, *args, **kwargs):
        for k, v in kwargs.items():
            setattr(self, k, v)

...and use it like this:

>>> obj = YourObject(key="value")
>>> print(obj.key)
"value"

... to convert it to a dict:

>>> print(obj.__dict__)
{"key": "value"}
| improve this answer | |
0

This solution is a refinement upon the one offered by epool to address the requirement of the OP to access nested dicts in a consistent manner. The solution by epool did not allow for accessing nested dicts.

class YAMLobj(dict):
    def __init__(self, args):
        super(YAMLobj, self).__init__(args)
        if isinstance(args, dict):
            for k, v in args.iteritems():
                if not isinstance(v, dict):
                    self[k] = v
                else:
                    self.__setattr__(k, YAMLobj(v))


    def __getattr__(self, attr):
        return self.get(attr)

    def __setattr__(self, key, value):
        self.__setitem__(key, value)

    def __setitem__(self, key, value):
        super(YAMLobj, self).__setitem__(key, value)
        self.__dict__.update({key: value})

    def __delattr__(self, item):
        self.__delitem__(item)

    def __delitem__(self, key):
        super(YAMLobj, self).__delitem__(key)
        del self.__dict__[key]

With this class, one can now do something like: A.B.C.D.

| improve this answer | |
0

This also works with nested dicts and makes sure that dicts which are appended later behave the same:

class DotDict(dict):

    def __init__(self, *args, **kwargs):
        super().__init__(*args, **kwargs)
        # Recursively turn nested dicts into DotDicts
        for key, value in self.items():
            if type(value) is dict:
                self[key] = DotDict(value)

    def __setitem__(self, key, item):
        if type(item) is dict:
            item = DotDict(item)
        super().__setitem__(key, item)

    __setattr__ = __setitem__
    __getattr__ = dict.__getitem__
| improve this answer | |
0

The answer of @derek73 is very neat, but it cannot be pickled nor (deep)copied, and it returns None for missing keys. The code below fixes this.

Edit: I did not see the answer above that addresses the exact same point (upvoted). I'm leaving the answer here for reference.

class dotdict(dict):
    __setattr__ = dict.__setitem__
    __delattr__ = dict.__delitem__

    def __getattr__(self, name):
        try:
            return self[name]
        except KeyError:
            raise AttributeError(name)
| improve this answer | |
-1

A solution kind of delicate

class DotDict(dict):

    __setattr__ = dict.__setitem__
    __delattr__ = dict.__delitem__

    def __getattr__(self, key):

        def typer(candidate):
            if isinstance(candidate, dict):
                return DotDict(candidate)

            if isinstance(candidate, str):  # iterable but no need to iter
                return candidate

            try:  # other iterable are processed as list
                return [typer(item) for item in candidate]
            except TypeError:
                return candidate

            return candidate

        return typer(dict.get(self, key))
| improve this answer | |

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