Python Developer for RAG Pipeline
Budget: $15.0 - $35.0
HOURLY / PART_TIME
⭐ 0.00 (0)
PRT
python, django-framework, scrapy-framework, postgresql-programming
We are seeking an experienced Python developer to build a RAG pipeline using Qdrant, ChromaDB, and FastAPI. The project involves integrating vector databases and knowledge bases, with a focus on embeddings and RAGAS. The ideal candidate will have experience with Docker and restic for deployment and backup. This is a part-time role with a medium project scale, expected to last 1 to 3 months.
Python Developer — RAG Pipeline, Qdrant, ChromaDB, Embeddings, Vector Database, Knowledge Base, RAGAS, FastAPI, restic, Docker
Building the knowledge layer for a local-first enterprise AI platform. Need a Python developer to build a full RAG pipeline, structured Knowledge Base, and backup system from scratch. All in Docker, fully replicable.
Scope:
- Document ingestion: PDF/DOCX loading, chunking, embeddings via Ollama
- Vector storage in Qdrant or ChromaDB with metadata per document (area, owner, language, confidentiality, permissions)
- RBAC retrieval: users only access permitted documents
- Base user context: user_id, role, departments, language, session memory
- RAGAS evaluation pipeline
- FastAPI endpoints: /ingest and /query
- Logging of all queries and retrievals
- restic backups tested with restore
Deliverables:
- Working RAG pipeline with metadata filtering
- RBAC retrieval with 2 test roles
- FastAPI endpoints in Docker
- RAGAS report
- Docker Compose and README
Required: Python, RAG pipelines, Qdrant/ChromaDB, FastAPI, Docker, RAGAS, restic
Timeline: 3-4 weeks, fixed price
To apply: share one RAG example with metadata filtering and your price.
Auf Upwork öffnen