1

I want to create a dataclass from a dict not only with the values of the dict but also with it's keys automatically recognized as field names for the dataclass.

The input is

d = {'a': 3, 'b': 7}

Now I want to do something making like this

import dataclasses

# Hocus pocus
X = dataclasses.dataclass_from_dict(name='X', the_dict=d)

print(X)  # <class '__main__.X'> 

z = X(a=3, b=99)                                                                                                         
print(z)  # X(a=3, b=99)

The important point here is that the dataclass and it's fields is created automatically out of the keys of the dictionary. So there is no need to know the structure and the keys of the dict.

What I tried so far

I tried dataclasses.make_dataclass() but the result (AUTO) is different from a dataclasse created the usual way (MANUAL).

>>> d = {'a': 3, 'b': 7}
>>> AUTO = dataclasses.make_dataclass('AUTO', [(key, type(d[key])) for key in d])
>>> @dataclass
... class MANUAL:
...   a: int
...   b: int
...
>>> AUTO
<class 'types.AUTO'>
>>> MANUAL
<class '__main__.MANUAL'>  
5
  • 2
    Why? Why not just use a dict?
    – Barmar
    May 12, 2022 at 14:31
  • A dynamic dataclass seems similar to variable variables -- not very useful.
    – Barmar
    May 12, 2022 at 14:34
  • With a dict I have to type d["a"] but I want to do d.a. But I can't use namedtuples because I need to manipulate the fields.
    – buhtz
    May 12, 2022 at 14:36
  • 1
    But you can't do d.a if the field names are determined dynamically from the dictionary. How would your code know that a is a valid field name?
    – Barmar
    May 12, 2022 at 14:36
  • this is correct, you also lose out on type hinting from an IDE, which is arguably one of the advantage of dataclasses. For example if you do d.a on a dynamic generated dataclass, your IDE has no idea if it is a str or int type. It sounds like what you want is a dotdict though - dot access for a dict object. May 12, 2022 at 19:08

2 Answers 2

2

In this scenario, the type hinting and auto-complete benefits would largely be missed, so I would personally suggest going with a custom-built DotDict approach as outlined below.

I was curious so I timed this against the dataclasses.make_dataclass approach. If you are interested, I have also attached my complete test code I used for benchmark purposes.

Update (6/22): I’ve come up with a library for this and published on pypi - dotwiz. Check it out. It should be just as fast as the approach below, with a few noticeable improvements.

import dataclasses
from timeit import timeit


class DotDict(dict):

    __getattr__ = dict.__getitem__
    __delattr__ = dict.__delitem__

    def __repr__(self):
        fields = [f'{k}={v!r}' for k, v in self.items()]
        return f'{self.__class__.__name__}({", ".join(fields)})'


def make_dot_dict(input_dict: dict) -> DotDict:
    """
    Helper method to generate and return a `DotDict` (dot-access dict) from a
    Python `dict` object.

    """
    return DotDict(
        (
            k,
            make_dot_dict(v) if isinstance(v, dict)
            else [make_dot_dict(e) if isinstance(e, dict) else e
                  for e in v] if isinstance(v, list)
            else v
        ) for k, v in input_dict.items()
    )


def main():
    d = {'a': 3, 'b': 1, 'c': {'aa': 33, 'bb': [{'x': 77}]}}
    X = dataclasses.make_dataclass('X', d)

    n = 10_000
    globals().update(locals())

    time_to_make_dataclass = timeit("dataclasses.make_dataclass('X', d)", number=n, globals=globals())
    time_to_instantiate_dataclass = timeit("X(**d)", number=n, globals=globals())
    time_to_instantiate_dot_dict = timeit("make_dot_dict(d)", number=n, globals=globals())

    print(f'dataclasses.make_dataclass:     {time_to_make_dataclass:.3f}')
    print(f'instantiate dataclass (X):      {time_to_instantiate_dataclass:.3f}')
    print(f'instantiate dotdict (DotDict):  {time_to_instantiate_dot_dict:.3f}')

    print()

    create_instance_perc = time_to_instantiate_dot_dict / time_to_instantiate_dataclass
    total_time_perc = (time_to_make_dataclass + time_to_instantiate_dataclass) / time_to_instantiate_dot_dict

    print(f'It is {create_instance_perc:.0f}x faster to create a dataclass instance')
    print(f'It is {total_time_perc:.0f}x faster (overall) to create a DotDict instance')

    # create new `DotDict` and check we can use dot-access as well as dict-access

    dd = make_dot_dict(d)

    assert dd.b == 1
    assert dd.c.aa == 33
    assert dd['c']['aa'] == 33
    assert dd.c.bb[0].x == 77

    # create new dataclass `X` instance
    x = X(**d)

    # assert result is same between both DotDict and dataclass approach
    assert dd == x.__dict__


if __name__ == '__main__':
    main()

I received the following results on my Mac (M1 chip):

dataclasses.make_dataclass:     1.342
instantiate dataclass (X):      0.002
instantiate dotdict (DotDict):  0.013

It is 6x faster to create a dataclass instance
It is 100x faster (overall) to create a DotDict instance

As expected, I found the DotDict approach to perform overall much better in the general case. This is mainly because it doesn't need to dynamically generate a new class, and scan through the dict object once to generate the dataclass fields and their types.

Though once the class is initially created, I was surprised to find that the dataclass approach performs about 5x better in an average case.

1

Use dataclasses.make_dataclass with a dictionary with the appropriate keys.

X = dataclasses.make_dataclass('X', d)

Then you can instantiate X using the same kind of dict.

z = X(**d)
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  • Please check your code first and tell us your exact Python version. In Python 3.9.10 the make_dataclass() does not accept one argument only.
    – buhtz
    May 12, 2022 at 14:41
  • 1
    Oops, I caught that when testing, but forgot to actually fix the answer.
    – chepner
    May 12, 2022 at 15:45
  • But why is there the difference I described in the section "What I tried so far" of my question? Does this diff matter?
    – buhtz
    May 13, 2022 at 7:29
  • I'm not sure why you care about the repr.
    – chepner
    May 13, 2022 at 12:26
  • It indicates that something is wrong there. Btw pickling is not possible.
    – buhtz
    May 13, 2022 at 14:38

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