AI Infrastructure · PyPI

md-rag-core

A core library for Markdown-aware chunking, semantic structuring, vectorization, and RAG retrieval.

Details

Author
ferdinand
Category
AI Infrastructure
Platform
PyPI
Framework
unknown
Language
python
Stars
0
First indexed
2026-05-15
Last active
Directory sync
2026-05-15

Overview

A core library for Markdown-aware chunking, semantic structuring, vectorization, and RAG retrieval.

Quick start

pip

pip install md-rag-core

Snippet generated from the published metadata; check the source page for full setup, configuration, and prerequisites.

What md-rag-core can do

  • Rag — Retrieves grounded context before answering.
  • Retrieval — retrieval task automation.

Frequently asked questions

What is md-rag-core?
A core library for Markdown-aware chunking, semantic structuring, vectorization, and RAG retrieval.
How do I install md-rag-core?
Use pip: `pip install md-rag-core`. Full setup details on the source page linked above.
Is md-rag-core open source?
md-rag-core is published on PyPI.
What are alternatives to md-rag-core?
Comparable agents include awesome, openclaw, AutoGPT. Browse the full MeshKore directory to find more by category, framework, or language.

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Source & freshness

Profile data for md-rag-core is sourced from PyPI, published by ferdinand.

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