- Introduction
- Core Concepts
- 1. What is Pacha?
- 2. MLOps Artifact Management
- 3. Semantic Versioning for ML
- 4. Reproducibility Principles
- Architecture
- 5. System Overview
- 6. Content-Addressed Storage
- 7. SQLite Metadata Store
- 8. BLAKE3 Hashing
- Model Registry
- 9. Model Versioning
- 10. Model Cards
- 11. Lifecycle Stages
- 12. Model Lineage
- Data Registry
- 13. Dataset Versioning
- 14. Datasheets
- 15. Data Provenance
- Recipe Registry
- 16. Training Recipes
- 17. Hyperparameters
- 18. Environment Dependencies
- Storage Layer
- 19. Content Addressing
- 20. Deduplication
- 21. Integrity Verification
- 22. Compression
- Lineage Tracking
- 23. Lineage Graph
- 24. Model Derivation
- 25. Fine-Tuning Lineage
- 26. Quantization Tracking
- CLI Reference
- 27. Installation
- 28. Model Commands
- 29. Data Commands
- 30. Recipe Commands
- 31. Run Commands
- Examples
- 32. Quick Start
- 33. Registering Models
- 34. Tracking Experiments
- 35. Managing Datasets
- 36. Training Workflows
- Best Practices
- 37. Versioning Strategy
- 38. Model Documentation
- 39. Reproducibility Checklist
- 40. CI/CD Integration
- Appendix
- 41. Glossary
- 42. References
- 43. API Reference