tegwick 2e49072d41 feat: complete core asset management system with database integration
- Add enhanced AssetManager with database integration and usage tracking
- Implement Asset model with from_dict/to_dict conversion methods
- Add resolve_asset_references() for linking discovered assets to imports
- Integrate AssetDatabase with enhanced schema and performance indexes
- Fix database schema constraints and test compatibility issues
- Add list_assets_as_objects() method for dict-to-object migration
- Resolve 91% of asset management tests (51/56 passing)

Key features:
* Content-addressable asset storage with deduplication
* Database-backed usage statistics and processing logs
* Asset reference resolution from markdown files
* Enhanced performance with indexing and caching
* Object-oriented Asset model with backwards compatibility

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-10-14 23:42:42 +02:00
2025-10-03 03:39:43 +02:00
2025-10-03 03:39:43 +02:00
2025-10-06 22:51:38 +02:00
2025-10-03 03:39:43 +02:00
2025-10-03 02:38:06 +02:00

MarkiTect - Advanced Markdown Engine

Your Markdown, Redefined.

MarkiTect transforms markdown from plain text into intelligent, structured data with performance optimization, schema validation, and relational querying capabilities. Stop treating documentation as text files—start managing it as a database.

Key Features:

  • Lightning Performance: 60-85% faster document processing through intelligent AST caching
  • Schema Validation: Enforce document structure and consistency
  • Database Integration: Query markdown content with SQL-like operations
  • CLI Tools: Complete command-line interface for automation and workflows

📚 Documentation

Quick Start: Getting Started · Command Reference

Architecture: Caching System · Performance Philosophy

Development: TDD Workflow · Contributing

Project Status: Current Status · Roadmap · Next Actions

Description
An advanced markdown engine
https://coulomb.social/open/MarkiTect
Readme 34 MiB
2025-11-08 20:34:42 +00:00
Languages
Python 84.7%
JavaScript 8%
HTML 5.6%
Makefile 1.3%
Shell 0.2%
Other 0.1%