Metadata-Version: 2.1
Name: valdec
Version: 1.0.4
Summary: Decorator for validating function arguments and result.
Home-page: https://github.com/EvgeniyBurdin/valdec
Author: Evgeniy Burdin
Author-email: e.s.burdin@mail.ru
License: MIT
Keywords: validation function
Platform: UNKNOWN
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.9
Classifier: License :: OSI Approved :: BSD License
Classifier: Operating System :: OS Independent
Classifier: Topic :: Software Development
Requires-Python: >=3.7
Description-Content-Type: text/markdown

# valdec

[![PyPI version](https://badge.fury.io/py/valdec.svg)](https://badge.fury.io/py/valdec) [![Build Status](https://travis-ci.com/EvgeniyBurdin/valdec.svg?branch=main)](https://travis-ci.com/EvgeniyBurdin/valdec) [![Coverage Status](https://coveralls.io/repos/github/EvgeniyBurdin/valdec/badge.svg?branch=main)](https://coveralls.io/github/EvgeniyBurdin/valdec?branch=main) [![Total alerts](https://img.shields.io/lgtm/alerts/g/EvgeniyBurdin/valdec.svg?logo=lgtm&logoWidth=18)](https://lgtm.com/projects/g/EvgeniyBurdin/valdec/alerts/) [![Language grade: Python](https://img.shields.io/lgtm/grade/python/g/EvgeniyBurdin/valdec.svg?logo=lgtm&logoWidth=18)](https://lgtm.com/projects/g/EvgeniyBurdin/valdec/context:python) ![PyPI - Python Version](https://img.shields.io/pypi/pyversions/valdec)

Decorator for validating arguments and/or result of functions and methods of a class against annotations.

Can be used in synchronous or asynchronous version.

Validation is supported using [pydantic.BaseModel](https://github.com/samuelcolvin/pydantic) and [validated_dc.ValidatedDC](https://github.com/EvgeniyBurdin/validated_dc).

You can easily add support for any other validator. To do this, you need to write your own validator-function and specify it in the settings for decorator (how to do this - see the examples below).

*Note: if the result of the function has no annotation, the result is expected to be `None`.*

## Installation

```bash
pip install valdec
```

## Quick example

### Default

Based on the validator `pydantic.BaseModel`:

```bash
pip install pydantic
```

```python
from typing import List, Optional

from pydantic import BaseModel, StrictInt, StrictStr
from valdec.decorators import validate
# from valdec.decorators import async_validate  # Use for async functions


@validate  # all arguments with annotations and return
def func(i: StrictInt, s: StrictStr) -> StrictInt:
    return i

assert func(1, "s") == 1


@validate("i", exclude=True)  # exclude "i" (only "s" and return)
def func(i: StrictInt, s: StrictStr) -> StrictInt:
    return int(i)

assert func("1", "s") == 1


# For example, an Api got a json-string and decoded it:
data_for_group = [
    {"name": "Peter", "profile": {"age": 22, "city": "Samara"}},
    {"name": "Elena", "profile": {"age": 20, "city": "Kazan"}},
]

class Profile(BaseModel):
    age: StrictInt
    city: StrictStr

class Student(BaseModel):
    name: StrictStr
    profile: Profile

@validate("s", "group")  # only "s" and "group"
def func(i: StrictInt, s: StrictStr, group: Optional[List[Student]] = None):

    assert i == "i not int"  # because "i" is not validated
    assert isinstance(s, str)
    for student in group:
        # `student` is now an instance of `Student`
        # (This conversion can be disabled!)
        assert isinstance(student, Student)
        assert isinstance(student.name, str)
        assert isinstance(student.profile.age, int)

    return group

result = func("i not int", "string",  data_for_group)
# The result can be any, because it is not validated.., now this is a list:
assert isinstance(result, list)
```

### validated_dc_validator

It is possible to enable validation with [validated_dc.ValidatedDC](https://github.com/EvgeniyBurdin/validated_dc). To do this, change the reference to the validator-function in the decorator settings:

```bash
pip install validated-dc
```

```python
from dataclasses import dataclass
from typing import List, Optional

from valdec.data_classes import Settings
from valdec.decorators import validate as _validate
from valdec.validators import validated_dc_validator
from validated_dc import ValidatedDC

custom_settings = Settings(
    validator=validated_dc_validator,  # function for validation
    is_replace_args=True,    # default
    is_replace_result=True,  # default
    extra={}                 # default
)
def validate(*args, **kwargs):  # define new decorator
    kwargs["settings"] = custom_settings
    return _validate(*args, **kwargs)


# The new decorator can now be used:

@validate  # all arguments with annotations and return
def func(i: int, s: str) -> int:
    return i

assert func(1, "s") == 1


@validate("s")  # only "s"
def func(i: int, s: str) -> int:
    return i

assert func("not int", "s") == "not int"


@validate("s", "return")  # only "s" and return
def func(i: int, s: str) -> int:
    return int(i)

assert func("1", "s") == 1


@validate("i", exclude=True)  # exclude "i" (only "s" and return)
def func(i: int, s: str) -> int:
    return int(i)

assert func("1", "s") == 1


data_for_group = [
    {"name": "Peter", "profile": {"age": 22, "city": "Samara"}},
    {"name": "Elena", "profile": {"age": 20, "city": "Kazan"}},
]

@dataclass
class Profile(ValidatedDC):
    age: int
    city: str

@dataclass
class Student(ValidatedDC):
    name: str
    profile: Profile

@validate("s", "group")  # only "s" and "group"
def func(i: int, s: str, group: Optional[List[Student]] = None):

    assert i == "i not int"  # because "i" is not validated
    assert isinstance(s, str)
    for student in group:
        # `student` is now an instance of `Student`
        # (This behavior can be changed by is_replace_args=False in the
        # Settings instance)
        assert isinstance(student, Student)
        assert isinstance(student.name, str)
        assert isinstance(student.profile.age, int)

    return group

result = func("i not int", "string",  data_for_group)
# The result can be any, because it is not validated.., now this is a list:
assert isinstance(result, list)
```

### Errors

`ValidationArgumentsError` is raised on an arguments validation error, and a `ValidationReturnError` on a result validation error:  

```python
from typing import Optional

from pydantic import StrictInt, StrictStr
from valdec.decorators import validate
from valdec.utils import ValidationArgumentsError, ValidationReturnError


class Foo:

    @validate  # all arguments with annotations and return
    def bar_1(self, i: StrictInt, s: Optional[StrictStr] = None):
        pass

    @validate("return")  # only "return"
    def bar_2(self, i: StrictInt, s: Optional[StrictStr] = None):
        return i


foo = Foo()

foo.bar_1(1, "2")  # ok

try:
    foo.bar_1(1, 2)
except ValidationArgumentsError as error:
    print(type(error), error, "\n")


foo.bar_2(None, 1)  # ok

try:
    foo.bar_2(1, 2)
except ValidationReturnError as error:
    print(type(error), error)
```


