🧠 This workflow is designed for one purpose only: to bulk-upload structured JSON articles from an FTP server into a Qdrant vector database for use in LLM-powered semantic search, RAG systems, or AI assistants.

The JSON files are pre-cleaned and contain metadata and rich text chunks, ready for vectorization. This workflow handles:

– Downloading from FTP
– Parsing & splitting
– Embedding with OpenAI-embedding
– Storing in Qdrant for future querying

JSON structure format for blog articles:json { “id”: “article_001”, “title”: “reseguider”, “language”: “sv”, “tags”: [“london”, “resa”, “info”], “source”: “alltomlondon.se”, “url”: “https://…”, “embedded_at”: “2025-04-08T15:27:00Z”, “chunks”: [ { “chunk_id”: “article_001_01”, “section_title”: “Introduktion”, “text”: “Välkommen till London…” }, … ] }

🧰 Benefits

✅ Automated Vector Loading
Handles FTP → JSON → Qdrant in a hands-free pipeline.

✅ Clean Embedding Input
Supports pre-validated chunks with metadata: titles, tags, language, and article ID.

✅ AI-Ready Format
Perfect for Retrieval-Augmented Generation (RAG), semantic search, or assistant memory.

✅ Flexible Architecture
Modular and swappable: FTP can be replaced with GDrive/Notion/S3, and embeddings can switch to local models like Ollama.

✅ Community Friendly
This template helps others adopt best practices for vector DB feeding and LLM integration.