This workflow follows the Agent → Chainllm recipe pattern — see all workflows that pair these two integrations.
The workflow JSON
Copy or download the full n8n JSON below. Paste it into a new n8n workflow, add your credentials, activate. Full import guide →
Credentials you'll need
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googlePalmApiollamaApipostgres
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About this workflow
My Workflow. Uses outputParserStructured, httpRequest, lmChatGoogleGemini, chainLlm. Scheduled trigger; 82 nodes.
Source: https://github.com/kevinboehmisch/n8n-automation/blob/882d1601e729ddced8fc5f0cbcd16410325e92e7/n8n-template/My_workflow.json — original creator credit. Request a take-down →
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