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Build an On-Premises AI Kaggle Competition Assistant with Qdrant RAG and Ollama

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Created by: JHH || jac2325057

JHH

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Last update a month ago

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LLM/RAG Kaggle Development Assistant

An on-premises, domain-specific AI assistant for Kaggle (tested on binary disaster-tweet classification), combining LLM, an n8n workflow engine, and Qdrant-backed Retrieval-Augmented Generation (RAG).
Deploy via containerized starter kit.
Needs high end GPU support or patience.
Initial chat should contain guidelines on what to to produce and the challenge guidelines.

Features

  • Coding Assistance
    • "Real"-time Python code recommendations, debugging help, and data-science best practices
    • Multi-turn conversational context
  • Workflow Automation
    • n8n orchestration for LLM calls, document ingestion, and external API integrations
  • Retrieval-Augmented Generation (RAG)
    • Qdrant vector-database for competition-specific document lookup
    • On-demand retrieval of Kaggle competition guidelines, tutorials, and notebooks after convertion to HTML and ingestion into RAG
  • entirly On-Premises for Privacy
    • Locally hosted LLM (via Ollama) – no external code or data transfer

ALIENTELLIGENCE/contentsummarizer:latest for summarizing
qwen3:8b for chat and coding
mxbai-embed-large:latest for embedding

• GPU acceleration required

Based on:
https://n8n.io/workflows/2339 breakdown documents into study notes using templating mistralai and qdrant/