Data Quality Rules
About
This skill redirects developers to the main Data Validation Rules skill for comprehensive implementation details. It covers multi-level validation patterns, libraries, and error handling across databases, applications, and APIs. Use this as a reference point for detailed data quality rule implementation.
Quick Install
Claude Code
Recommended/plugin add https://github.com/majiayu000/claude-skill-registrygit clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/Data Quality RulesCopy and paste this command in Claude Code to install this skill
Documentation
Data Quality Rules
This skill is covered in detail in the main Data Validation Rules skill.
Please refer to: 43-data-reliability/data-validation-rules/SKILL.md
That skill covers:
- Levels of data validation (database, application, pipeline, API)
- Common validation patterns (required fields, type, format, range, enum, cross-field, conditional)
- Validation libraries (Pydantic, Zod, JSON Schema, Marshmallow, Cerberus, Joi, Yup)
- Database-level validation (CHECK constraints, triggers, domain types)
- API validation (FastAPI, Fastify)
- ETL pipeline validation
- Validation error handling
- Performance considerations
- Real-world validation scenarios
Related Skills
43-data-reliability/data-validation-rules(Main skill)43-data-reliability/data-quality-checks43-data-reliability/data-contracts
GitHub Repository
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