Custom Validation
NetBox validates every object prior to it being written to the database to ensure data integrity. This validation includes things like checking for proper formatting and that references to related objects are valid. However, you may wish to supplement this validation with some rules of your own. For example, perhaps you require that every site's name conforms to a specific pattern. This can be done using custom validation rules.
Custom Validation Rules
Custom validation rules are expressed as a mapping of model attributes to a set of rules to which that attribute must conform. For example:
{
"name": {
"min_length": 5,
"max_length": 30
}
}
This defines a custom validator which checks that the length of the name
attribute for an object is at least five characters long, and no longer than 30 characters. This validation is executed after NetBox has performed its own internal validation.
The CustomValidator
class supports several validation types:
min
: Minimum valuemax
: Maximum valuemin_length
: Minimum string lengthmax_length
: Maximum string lengthregex
: Application of a regular expressionrequired
: A value must be specifiedprohibited
: A value must not be specified
The min
and max
types should be defined for numeric values, whereas min_length
, max_length
, and regex
are suitable for character strings (text values). The required
and prohibited
validators may be used for any field, and should be passed a value of True
.
Warning
Bear in mind that these validators merely supplement NetBox's own validation: They will not override it. For example, if a certain model field is required by NetBox, setting a validator for it with {'prohibited': True}
will not work.
Custom Validation Logic
There may be instances where the provided validation types are insufficient. NetBox provides a CustomValidator
class which can be extended to enforce arbitrary validation logic by overriding its validate()
method, and calling fail()
when an unsatisfactory condition is detected.
from extras.validators import CustomValidator
class MyValidator(CustomValidator):
def validate(self, instance):
if instance.status == 'active' and not instance.description:
self.fail("Active sites must have a description set!", field='status')
The fail()
method may optionally specify a field with which to associate the supplied error message. If specified, the error message will appear to the user as associated with this field. If omitted, the error message will not be associated with any field.
Assigning Custom Validators
Custom validators are associated with specific NetBox models under the CUSTOM_VALIDATORS configuration parameter. There are three manners by which custom validation rules can be defined:
- Plain JSON mapping (no custom logic)
- Dotted path to a custom validator class
- Direct reference to a custom validator class
Plain Data
For cases where custom logic is not needed, it is sufficient to pass validation rules as plain JSON-compatible objects. This approach typically affords the most portability for your configuration. For instance:
CUSTOM_VALIDATORS = {
"dcim.site": [
{
"name": {
"min_length": 5,
"max_length": 30,
}
}
],
"dcim.device": [
{
"platform": {
"required": True,
}
}
]
}
Dotted Path
In instances where a custom validator class is needed, it can be referenced by its Python path (relative to NetBox's working directory):
CUSTOM_VALIDATORS = {
'dcim.site': (
'my_validators.Validator1',
'my_validators.Validator2',
),
'dcim.device': (
'my_validators.Validator3',
)
}
Direct Class Reference
This approach requires each class being instantiated to be imported directly within the Python configuration file.
from my_validators import Validator1, Validator2, Validator3
CUSTOM_VALIDATORS = {
'dcim.site': (
Validator1(),
Validator2(),
),
'dcim.device': (
Validator3(),
)
}
Note
Even if defining only a single validator, it must be passed as an iterable.