22

Is there any obvious way to validate a pydantic model after changing some attribute?

Say I create a simple Model and object:

from pydantic import BaseModel

class A(BaseModel):
    b: int = 0
        
a=A()

Then edit it, so that it is actually invalid:

a.b = "foobar"

Can I force a re-validation and expect a ValidationError to be raised?

I tried

A.validate(a)                      # no error
a.copy(update=dict(b='foobar'))    # no error

What did work was

A(**dict(a._iter()))

ValidationError: 1 validation error for A
b
  value is not a valid integer (type=type_error.integer)

But that is not really straightforward and I need to use the supposedly private method _iter.

Is there a clean alternative?

1

2 Answers 2

27

pydantic can do this for you, you just need validate_assignment:

from pydantic import BaseModel

class A(BaseModel):
    b: int = 0

    class Config:
        validate_assignment = True
3
  • 7
    Do you have any insights into the design decision regarding this? That is, why is validate_assignment (and validate_all for that matter) False by default? I'm a huge Pydantic fan but was a bit surprised to learn about this because I thought that Pydantic would be more, well, pedantic (at least by default)...
    – Paul P
    Commented May 10, 2022 at 12:05
  • 2
    The problem I have with this is with root validators that validate multiple fields together. For example, I have a model with start/stop fields. In a root validator, I'm enforcing start<=stop. Say I initialize a model with start=1 and stop=2. I then want to change it to start=3 and stop=4. That's not possible (or it's cumbersome and hacky to resolve) because if I set start first, it will fail validation (start=3 stop=2). Commented Feb 1, 2023 at 14:02
  • 2
    @TaylorVance, I was stuck on that same question for a while as well. Finally came up with a couple approaches to address it that worked well for me. Check out this answer: stackoverflow.com/a/75451357/16448566 Commented Apr 2, 2023 at 14:27
10

With Pydantic V2 you should use the ConfigDict to configure the global behavior of your classes. Usage of the Config class is still supported, but deprecated.

from pydantic import BaseModel, ConfigDict

class A(BaseModel):
    model_config = ConfigDict(validate_assignment=True)
    b: int = 0
1
  • 1
    Hi. Since this was apparently resolved a long time ago, it should be useful to comment on how your post complements or updates the accepted answer.
    – OCa
    Commented Oct 27, 2023 at 20:15

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