Let's assume you have defined a Python dataclass:

class Marker:
    a: float
    b: float = 1.0

What's the easiest way to copy the values from an instance marker_a to another instance marker_b?

Here's an example of what I try to achieve:

marker_a = Marker(1.0, 2.0)
marker_b = Marker(11.0, 12.0)
# now some magic happens which you hopefully can fill in
# result: Marker(a=1.0, b=2.0)

As a boundary condition, I don't want to create and assign a new instance to marker_b. OK, I could loop through all defined fields and copy the values one by one, but there has to be a simpler way, I guess.


The dataclasses.replace function returns a new copy of the object. Without passing in any changes, it will return a copy with no modification:

>>> import dataclasses
>>> @dataclasses.dataclass
... class Dummy:
...     foo: int
...     bar: int
>>> dummy = Dummy(1, 2)
>>> dummy_copy = dataclasses.replace(dummy)
>>> dummy_copy.foo = 5
>>> dummy
Dummy(foo=1, bar=2)
>>> dummy_copy
Dummy(foo=5, bar=2)

Note that this is a shallow copy.

Edit to address comments:

If a copy is undesirable, I would probably go with the following:

for key, value in dataclasses.asdict(dummy).items():
    setattr(some_obj, key, value)
  • 2
    The question is specifically about how to copy the fields into an existing instance. Jun 11 at 18:40
  • The problem is that my data class has additional methods which are used in callbacks. That's why I don't want to create a new instance of the data class object.
    – Tom Pohl
    Jun 15 at 14:32
  • This is not a direct answer to the question, but can be found in Google as an answer to the question of how to create a copy, so thank you for this answer anyway! Aug 8 at 12:26
  • Too bad this isn't type safe (yet?). At least as of now mypy doesn't catch misspelled attribute names or types.
    – bluenote10
    Sep 24 at 10:17

I think that looping over the fields probably is the easiest way. All the other options I can think of involve creating a new object.

from dataclasses import fields

marker_a = Marker(5)
marker_b = Marker(0, 99)

for field in fields(Marker):
    setattr(marker_b, field.name, getattr(marker_a, field.name))

print(marker_b)  # Marker(a=5, b=1.0)
  • Thanks. It's similar to what I'm doing right now, but it somehow feels un-pythonic to me.
    – Tom Pohl
    Sep 16 '19 at 19:05
  • It's a bit of an unusual use case. The dataclasses module seems to mostly assume that you'll be happy making a new object. I would recommend sticking this (or whatever you have) in a function and moving on. One thing that's worth thinking about is what you want to happen if one of your arguments is actually a subclass of Marker with additional fields. Sep 16 '19 at 19:08
class Marker:
    a: float
    b: float = 1.0

marker_a = Marker(0.5)

marker_b = Marker(**marker_a.__dict__)


# Marker(a=0.5, b=1.0)

If you didn't want to create a new instance, try this:

marker_a = Marker(1.0, 2.0)
marker_b = Marker(11.0, 12.0)

marker_b.__dict__ = marker_a.__dict__.copy()

# result: Marker(a=1.0, b=2.0)

Not sure whether that's considered a bad hack though...

  • That does not meet the original requirement of copying in place .. does it? Dec 20 '20 at 23:53
  • @Hugues yes thanks for noticing. Edited.
    – r.ook
    Jan 11 at 21:33

Another option which may be more elegant:

import dataclasses

marker_a = Marker(1.0, 2.0)
marker_b = Marker(**dataclasses.asdict(marker_a))
  • Thanks, but my boundary condition was to not create a new instance. In my special case I have other object point to this particular instance, so a new instance is not an option.
    – Tom Pohl
    Oct 10 '20 at 19:44

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