This workflow corresponds to n8n.io template #4566 — we link there as the canonical source.
This workflow follows the Agent → Documentdefaultdataloader recipe pattern — see all workflows that pair these two integrations.
The workflow JSON
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{
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}
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About this workflow
This n8n workflow automates the process of summarizing uploaded books from Google Drive using vector databases and LLMs. It uses Cohere for embeddings, Qdrant for storage and retrieval, and DeepSeek or your preferred LLM for summarization and Q\&A. Designed for researchers,…
Source: https://n8n.io/workflows/4566/ — original creator credit. Request a take-down →
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