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I'm searching for an elegant way to get data using attribute access on a dict with some nested dicts and lists (i.e. javascript-style object syntax).

For example:

>>> d = {'a': 1, 'b': {'c': 2}, 'd': ["hi", {'foo': "bar"}]}

Should be accessible in this way:

>>> x = dict2obj(d)
>>> x.a
1
>>> x.b.c
2
>>> x.d[1].foo
bar

I think, this is not possible without recursion, but what would be a nice way to get an object style for dicts?

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  • 6
    I was trying to do something similar recently, but a recurring dictionary key ("from" - which is a Python keyword) prevented me from going through with it. Because as soon as you tried using "x.from" to access that attribute you'd get a syntax error. Aug 20, 2009 at 13:08
  • 3
    that's a problem indeed, but i can abandon on "from" to make life easier in accessing large dict constructs :) typing x['a']['d'][1]['foo'] is really annoying, so x.a.d[1].foo rules. if you need from, you can access it via getattr(x, 'from') or use _from as attribute instead.
    – Marc
    Aug 20, 2009 at 15:51
  • 7
    from_ rather than _from according to PEP 8.
    – Kos
    Jan 14, 2013 at 7:32
  • 4
    Most of these "solutions" don't seem to work (even the accepted one, doesn't allow nested d1.b.c), I think it's clear you should be using something from a library, e.g. namedtuple from collections, as this answer suggests, ... Apr 29, 2013 at 14:50
  • 2
    Bunch - Use a Python dict like an object: thechangelog.com/bunch-lets-use-python-dict-like-object
    – Marc
    Mar 10, 2014 at 17:23

45 Answers 45

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2
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class Dict2Obj:
    def __init__(self, json_data):
        self.convert(json_data)

    def convert(self, json_data):
        if not isinstance(json_data, dict):
            return
        for key in json_data:
            if not isinstance(json_data[key], dict):
                self.__dict__.update({key: json_data[key]})
            else:
                self.__dict__.update({ key: Dict2Obj(json_data[key])})

I could not find the implementation of nested dictionary to object, so wrote one.

Usage:

>>> json_data = {"a": {"b": 2}, "c": 3}
>>> out_obj = Dict2Obj(json_data)
>>> out_obj.a
<Dict2Obj object at 0x7f3dc22c2d68>
>>> out_obj.a.b
2
>>> out_obj.a.c
3
2

Looking for a simple wrapper class for dict enabling attribute-style key access/assignment (dot notation) I was not satisfied with the existing options for the reasons below.

dataclasses, pydantic, etc. are great but require a static definition of the content. Also, they cannot replace dict in code which relied on dict since they don't share the same methods and __getitem__() syntax is not supported.

Hence, I developed MetaDict. It behaves exactly like dict but enables dot notation and IDE autocompletion (if the object is loaded in the RAM) without the shortcomings and potential namespace conflicts of other solutions. All features and usage examples can be found on GitHub (see link above).

Full disclosure: I am the author of MetaDict.

Shortcomings/limitations I encountered when trying out other solutions:

  • Addict
    • No key autocompletion in IDE
    • Nested key assignment cannot be turned off
    • Newly assigned dict objects are not converted to support attribute-style key access
    • Shadows inbuilt type Dict
  • Prodict
    • No key autocompletion in IDE without defining a static schema (similar to dataclass)
    • No recursive conversion of dict objects when embedded in list or other inbuilt iterables
  • AttrDict
    • No key autocompletion in IDE
    • Converts list objects to tuple behind the scenes
  • Munch
    • Inbuilt methods like items(), update(), etc. can be overwritten with obj.items = [1, 2, 3]
    • No recursive conversion of dict objects when embedded in list or other inbuilt iterables
  • EasyDict
    • Only strings are valid keys, but dict accepts all hashable objects as keys
    • Inbuilt methods like items(), update(), etc. can be overwritten with obj.items = [1, 2, 3]
    • Inbuilt methods don't behave as expected: obj.pop('unknown_key', None) raises an AttributeError

Note: I wrote a similar answer in this stackoverflow, which is related.

1

My dictionary is of this format:

addr_bk = {
    'person': [
        {'name': 'Andrew', 'id': 123, 'email': '[email protected]',
         'phone': [{'type': 2, 'number': '633311122'},
                   {'type': 0, 'number': '97788665'}]
        },
        {'name': 'Tom', 'id': 456,
         'phone': [{'type': 0, 'number': '91122334'}]}, 
        {'name': 'Jack', 'id': 7788, 'email': '[email protected]'}
    ]
}

As can be seen, I have nested dictionaries and list of dicts. This is because the addr_bk was decoded from protocol buffer data that converted to a python dict using lwpb.codec. There are optional field (e.g. email => where key may be unavailable) and repeated field (e.g. phone => converted to list of dict).

I tried all the above proposed solutions. Some doesn't handle the nested dictionaries well. Others cannot print the object details easily.

Only the solution, dict2obj(dict) by Dawie Strauss, works best.

I have enhanced it a little to handle when the key cannot be found:

# Work the best, with nested dictionaries & lists! :)
# Able to print out all items.
class dict2obj_new(dict):
    def __init__(self, dict_):
        super(dict2obj_new, self).__init__(dict_)
        for key in self:
            item = self[key]
            if isinstance(item, list):
                for idx, it in enumerate(item):
                    if isinstance(it, dict):
                        item[idx] = dict2obj_new(it)
            elif isinstance(item, dict):
                self[key] = dict2obj_new(item)

    def __getattr__(self, key):
        # Enhanced to handle key not found.
        if self.has_key(key):
            return self[key]
        else:
            return None

Then, I tested it with:

# Testing...
ab = dict2obj_new(addr_bk)

for person in ab.person:
  print "Person ID:", person.id
  print "  Name:", person.name
  # Check if optional field is available before printing.
  if person.email:
    print "  E-mail address:", person.email

  # Check if optional field is available before printing.
  if person.phone:
    for phone_number in person.phone:
      if phone_number.type == codec.enums.PhoneType.MOBILE:
        print "  Mobile phone #:",
      elif phone_number.type == codec.enums.PhoneType.HOME:
        print "  Home phone #:",
      else:
        print "  Work phone #:",
      print phone_number.number
1

Building off my answer to "python: How to add property to a class dynamically?":

class data(object):
    def __init__(self,*args,**argd):
        self.__dict__.update(dict(*args,**argd))

def makedata(d):
    d2 = {}
    for n in d:
        d2[n] = trydata(d[n])
    return data(d2)

def trydata(o):
    if isinstance(o,dict):
        return makedata(o)
    elif isinstance(o,list):
        return [trydata(i) for i in o]
    else:
        return o

You call makedata on the dictionary you want converted, or maybe trydata depending on what you expect as input, and it spits out a data object.

Notes:

  • You can add elifs to trydata if you need more functionality.
  • Obviously this won't work if you want x.a = {} or similar.
  • If you want a readonly version, use the class data from the original answer.
1

Here is a nested-ready version with namedtuple:

from collections import namedtuple

class Struct(object):
    def __new__(cls, data):
        if isinstance(data, dict):
            return namedtuple(
                'Struct', data.iterkeys()
            )(
                *(Struct(val) for val in data.values())
            )
        elif isinstance(data, (tuple, list, set, frozenset)):
            return type(data)(Struct(_) for _ in data)
        else:
            return data

=>

>>> d = {'a': 1, 'b': {'c': 2}, 'd': ["hi", {'foo': "bar"}]}
>>> s = Struct(d)
>>> s.d
['hi', Struct(foo='bar')]
>>> s.d[0]
'hi'
>>> s.d[1].foo
'bar'
1

Convert dict to object

from types import SimpleNamespace

def dict2obj(data):
    """将字典对象转换为可访问的对象属性"""
    if not isinstance(data, dict):
        raise ValueError('data must be dict object.')

    def _d2o(d):
        _d = {}
        for key, item in d.items():
            if isinstance(item, dict):
                _d[key] = _d2o(item)
            else:
                _d[key] = item
        return SimpleNamespace(**_d)

    return _d2o(data)

Reference Answer

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1

I wasn't satisfied with the marked and upvoted answers, so here is a simple and general solution for transforming JSON-style nested datastructures (made of dicts and lists) into hierachies of plain objects:

# tested in: Python 3.8
from collections import abc
from typings import Any, Iterable, Mapping, Union

class DataObject:
    def __repr__(self):
        return str({k: v for k, v in vars(self).items()})

def data_to_object(data: Union[Mapping[str, Any], Iterable]) -> object:
    """
    Example
    -------
    >>> data = {
    ...     "name": "Bob Howard",
    ...     "positions": [{"department": "ER", "manager_id": 13}],
    ... }
    ... data_to_object(data).positions[0].manager_id
    13
    """
    if isinstance(data, abc.Mapping):
        r = DataObject()
        for k, v in data.items():
            if type(v) is dict or type(v) is list:
                setattr(r, k, data_to_object(v))
            else:
                setattr(r, k, v)
        return r
    elif isinstance(data, abc.Iterable):
        return [data_to_object(e) for e in data]
    else:
        return data
1

Building on what was done earlier by the accepted answer, if you would like to have it recursive.

class FullStruct:
    def __init__(self, **kwargs):
        for key, value in kwargs.items():
            if isinstance(value, dict):
                f = FullStruct(**value)
                self.__dict__.update({key: f})
            else:
                self.__dict__.update({key: value})
1

You can use my way to handle it.

somedict= {"person": {"name": "daniel"}}

class convertor:
    def __init__(self, dic: dict) -> object:
        self.dict = dic

        def recursive_check(obj):
            for key, value in dic.items():
                if isinstance(value, dict):
                    value= convertor(value)
                setattr(obj, key, value)
        recursive_check(self)
my_object= convertor(somedict)

print(my_object.person.name)
1

The following code from here, works on nested dictionaries and IDEs such as VS Code are able to hint the existing attributes:

class Struct:
    def __init__(self, **kwargs):
        for key, value in kwargs.items():
            if isinstance(value, dict):
                self.__dict__[key] = Struct(**value)
            else:
                self.__dict__[key] = value


my_dict = {
    'name': 'bobbyhadz',
    'address': {
        'country': 'Country A',
        'city': 'City A',
        'codes': [1, 2, 3]
    },
}

obj = Struct(**my_dict)

If you want to see how to load a YAML file and covert it to a Python object, see this gist.

1
  • In general I like this solution because it's pretty concise. But, as with many of the other solutions, intermediate dictionaries become just an instance of the proxy (i.e. my_dict.address is no longer a dictionary, but an instance of Struct).
    – hlongmore
    Feb 19, 2023 at 10:26
0

I had some problems with __getattr__ not being called so I constructed a new style class version:

class Struct(object):
    '''The recursive class for building and representing objects with.'''
    class NoneStruct(object):
        def __getattribute__(*args):
            return Struct.NoneStruct()

        def __eq__(self, obj):
            return obj == None

    def __init__(self, obj):
        for k, v in obj.iteritems():
            if isinstance(v, dict):
                setattr(self, k, Struct(v))
            else:
                setattr(self, k, v)

    def __getattribute__(*args):
        try:
            return object.__getattribute__(*args)
        except:            
            return Struct.NoneStruct()

    def __repr__(self):
        return '{%s}' % str(', '.join('%s : %s' % (k, repr(v)) for 
(k, v) in self.__dict__.iteritems()))

This version also has the addition of NoneStruct that is returned when an attribute is called that is not set. This allows for None testing to see if an attribute is present. Very usefull when the exact dict input is not known (settings etc.).

bla = Struct({'a':{'b':1}})
print(bla.a.b)
>> 1
print(bla.a.c == None)
>> True
0

This is another, alternative, way to convert a list of dictionaries to an object:

def dict2object(in_dict):
    class Struct(object):
        def __init__(self, in_dict):
            for key, value in in_dict.items():
                if isinstance(value, (list, tuple)):
                    setattr(
                        self, key,
                        [Struct(sub_dict) if isinstance(sub_dict, dict)
                         else sub_dict for sub_dict in value])
                else:
                    setattr(
                        self, key,
                        Struct(value) if isinstance(value, dict)
                        else value)
    return [Struct(sub_dict) for sub_dict in in_dict] \
        if isinstance(in_dict, list) else Struct(in_dict)
0

This little class never gives me any problem, just extend it and use the copy() method:

  import simplejson as json

  class BlindCopy(object):

    def copy(self, json_str):
        dic = json.loads(json_str)
        for k, v in dic.iteritems():
            if hasattr(self, k):
                setattr(self, k, v);
0

Updated with recursive array expansion on @max-sirwa 's code

class Objectify:
    def __init__(self, **kwargs):
        for key, value in kwargs.items():
            if isinstance(value, dict):
                f = Objectify(**value)
                self.__dict__.update({key: f})
            elif isinstance(value, list):
                t = []
                for i in value:
                    t.append(Objectify(**i)) if isinstance(i, dict) else t.append(i)
                self.__dict__.update({key: t})
            else:
                self.__dict__.update({key: value})
0

The exact solution of the question can be achieved easily by PyPI package named attrdict. The interesting fact about this package is that the dict can be accessed either as keys or as attributes. Here is the solution -

from attrdict import AttrDict

d = {'a': 1, 'b': {'c': 2}, 'd': ["hi", {'foo': "bar"}]}

x = AttrDict(d)

print(x.a, x['a'])
print(x.b.c, x['b']['c'])
print(x.d[1].foo, x['d'][1]['foo'])

And output is as follows (obviously with no error) -

1 1
2 2
bar bar

N.B. It was first released in Feb 2, 2019 which means at the time of asking this question, this third party pypi package didn't exist. But if someone now wants to access dict value either by key or by attribute, this package surely can help as magic with only one line of code.

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