Python data validation library
Project description
DataGuard
Introduction
DataGuard is a powerful and flexible Python library designed to streamline data validation processes. Whether you're building data pipelines, developing web applications, or handling complex datasets, DataGuard offers a comprehensive suite of tools to ensure your data is clean, consistent, and reliable.
Key Features
- Comprehensive Rule Set:
- Validate data with a wide range of built-in rules, including checks for required fields, conditional presence, format validation, and more.
- Examples include rules for ensuring fields are present, validating email formats, checking numeric ranges, and enforcing unique constraints.
- Custom Validators:
- Easily create and integrate custom validation rules tailored to your specific needs.
- Extend the library with your own validation logic to handle any specific data requirements.
- Chainable Validation:
- Build complex validation logic by chaining multiple rules together for more nuanced data integrity checks.
- Combine rules like
Required
,Min
, andEmail
in a single, readable chain to enforce multiple conditions on a single field.
- Detailed Error Reporting:
- Generate clear, actionable error messages that help you quickly identify and resolve data issues.
- Each validation failure is accompanied by descriptive messages indicating the nature of the error and the affected data fields.
- Ease of Use:
- Designed with simplicity in mind, DataGuard's intuitive API allows you to validate data with minimal code.
- Quickly set up validations using a declarative syntax that integrates seamlessly into your Python projects.
- Highly Extensible:
- Flexible architecture that integrates seamlessly with other libraries and frameworks, making it ideal for use in a variety of projects.
- Whether you're working with Flask, Django, or standalone scripts, DataGuard adapts to your environment.
Installation
pip install data-guard
from data_guard.validator import Validator
# Define the data to be validated
data = {"name": "John Doe", "email": "johndoe@example.com"}
# Define the validation rules
rules = {
"name": ["required"],
"email": ["required", "email"],
}
# Create a Validator instance
validator = Validator(data,rules)
# Perform the validation
response = validator.validate()
# Check if validation failed and print the errors if any
if response.validated:
print("Validation passed!", response.data)
else:
print("Validation failed with errors:", response.errors)
After installing the DataGuard
package, providing a list of available validation rules is a great way to help users quickly understand the capabilities of the library..
Contributing
Contributions are welcome! If you find a bug or have a feature request, please open an issue or submit a pull request on GitHub.
License
This project is licensed under the MIT License - see the LICENSE file for details.
More Information
For more information, visit the documentation or view the package on PyPI.
Project details
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Hashes for data_guard-0.0.3-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | e4e954e3a8aecc87250bd9af6b7298db631bbe19eea1ed027ba11f789d8aba9a |
|
MD5 | 8e84eed7d4e6a190a67c9d348c9faab2 |
|
BLAKE2b-256 | a30534530301c273f0e2f72f119faee63cb26a614ba509d018480640c2fa9af3 |