Fairness Pipeline Development Toolkit Documentation
Welcome to the Fairness Pipeline Development Toolkit documentation.
This toolkit provides a unified, statistically-rigorous framework for detecting, mitigating, training, and validating fairness in ML workflows.
Contents:
- Getting Started
- API Reference
- Integration Guide
- Performance
- ADR-001: Measurement Module Architecture
- ADR-002:
fairpipeShim Namespace - Versioning
- Overview
- Semantic Versioning
- Backward Compatibility Guarantees
- Deprecation Policy
- Public API Boundaries
- Configuration File Compatibility
- CLI Compatibility
- Data Format Compatibility
- Python Version Support
- Migration Guides
- Version Information
- Release Process
- Pre-1.0.0 Considerations
- Best Practices for Users
- Support and Questions
- Summary
- Feedback