Techniques for Field Validation in Django
- Use field parameters
For example, ensure that the maximum length of the
field is 100 characters. Since it is first_name
, you can use CharField
Parameters: max_length
from django import forms class PersonalInfo(forms.Form): first_name = forms.CharField(max_length=100)
- Use the built -in verification device
Assume that the minimum value of the
field is 18. Although the <数> parameters can be used directly, how to use the age
: min_value
MinValueValidator
from django import forms from django.core.validators import MinValueValidator class PersonalInfo(forms.Form): first_name = forms.CharField(max_length=100) age = forms.IntegerField(validators=[MinValueValidator(18)])
validators
- Writing a custom verification device
-
The verification device is a callable object. It receives a value. If the value does not meet the conditions, it will cause
. For example, create a verification device to ensure the number of numbers:
ValidationError
from django import forms from django.core.exceptions import ValidationError from django.core.validators import MinValueValidator def validate_even(value): if value % 2 != 0: raise ValidationError(f"{value} 不是偶数") class PersonalInfo(forms.Form): first_name = forms.CharField(max_length=100) age = forms.IntegerField(validators=[MinValueValidator(18)]) even_field = forms.IntegerField(validators=[validate_even])
. This depends on the scale of the project.
validators.py
-
clean_<fieldname>()
Another powerful field verification method is to rewrite the
field directly in the form: clean_<fieldname>()
This method can directly access the cleaning data of the field and allow more detailed control verification. even_field
from django import forms from django.core.exceptions import ValidationError from django.core.validators import MinValueValidator class PersonalInfo(forms.Form): first_name = forms.CharField(max_length=100) age = forms.IntegerField(validators=[MinValueValidator(18)]) even_field = forms.IntegerField() def clean_even_field(self): even_field_validated = self.cleaned_data.get("even_field") if even_field_validated % 2 != 0: raise ValidationError(f"{even_field_validated} 不是偶数") return even_field_validated
<<> Method
-
Sometimes, verification needs to consider the relationship between multiple fields in the form. For example, if there are two fields, there are more characters in one field than another field. This type of verification is
, because it depends on the value of multiple fields, not just a single field.clean()
Form -level verification
method in the form class.
By rewriting the <方法> method, you can realize the custom logic logic of the entire form to ensure that the data meets more complicated requirements.
clean()
Summary <总>
from django import forms from django.core.exceptions import ValidationError from django.core.validators import MinValueValidator class PersonalInfo(forms.Form): first_name = forms.CharField(max_length=100) age = forms.IntegerField(validators=[MinValueValidator(18)]) even_field = forms.IntegerField() field1 = forms.CharField() field2 = forms.CharField() def clean_even_field(self): even_field_validated = self.cleaned_data.get("even_field") if even_field_validated % 2 != 0: raise ValidationError(f"{even_field_validated} 不是偶数") return even_field_validated def clean(self): # 表单级验证 cleaned_data = super().clean() field1_value = cleaned_data.get("field1") field2_value = cleaned_data.get("field2") if field1_value and field2_value and len(field1_value) >= len(field2_value): raise ValidationError("field2 字符数必须多于 field1.") return cleaned_data
- Field parameters: Use
max_length
ormin_value
and other parameters for simple verification. - Built -in verification device: Use Django's predetermined verification device to handle common mode.
- Custom verification device: Written reusable callable objects for complex verification rules.
- Method: Rewrite this method for high -level specific field verification.
clean_<fieldname>()
Method: Use this method to perform form -level verification involving multiple fields. -
clean()
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