Generate AI descriptions for new Google Sheets entries with GPT-4.1-mini
This n8n workflow template automatically monitors your Google Sheets for new entries and uses AI to generate detailed descriptions for each topic. Perfect for content creators, researchers, project managers, or anyone who needs automatic content generation based on simple topic inputs.
What This Workflow Does
This automated workflow:
- Monitors a Google Sheet for new rows added to the "data" tab
- Takes the topic from each new row
- Uses OpenAI GPT to generate a detailed description of that topic
- Updates the same row with the AI-generated description
- Logs all activity in a separate "actions" tab for tracking
The workflow runs every minute, checking for new entries and processing them automatically.
Tools & Services Used
- N8N - Workflow automation platform
- OpenAI API - AI-powered description generation (GPT-4.1-mini)
- Google Sheets - Data input, storage, and activity logging
- Google Sheets Trigger - Real-time monitoring for new rows
Prerequisites
Before implementing this workflow, you'll need:
- N8N Instance - Self-hosted or cloud version
- OpenAI API Account - For AI description generation
- Google Account - For Google Sheets integration
- Google Sheets API Access - For both reading and writing to sheets
Step-by-Step Setup Instructions
Step 1: Set Up OpenAI API Access
- Visit OpenAI's API platform
- Create an account or log in
- Navigate to API Keys section
- Generate a new API key
- Copy and securely store your API key
Step 2: Set Up Your Google Sheets
Option 1: Use Our Pre-Made Template (Recommended)
- Copy our template: AI Description Generator Template
- Click "File" → "Make a copy" to create your own version
- Rename it as desired (e.g., "My AI Content Generator")
- Note your new sheet's URL - you'll need this for the workflow
Option 2: Create From Scratch
- Go to Google Sheets
- Create a new spreadsheet
- Set up the main "data" tab:
- Rename "Sheet1" to "data"
- Set up column headers in row 1:
- A1:
topic - B1:
description
- A1:
- Create an "actions" tab:
- Add a new sheet and name it "actions"
- Set up column headers:
- A1:
Update
- A1:
- Copy your sheet's URL
Step 3: Configure Google API Access
-
Enable Google Sheets API
- Go to Google Cloud Console
- Create a new project or select existing one
- Enable "Google Sheets API"
- Enable "Google Drive API"
-
Create Service Account (for N8N)
- In Google Cloud Console, go to "IAM & Admin" → "Service Accounts"
- Create a new service account
- Download the JSON credentials file
- Share your Google Sheet with the service account email address
Step 4: Import and Configure the N8N Workflow
-
Import the Workflow
- Copy the workflow JSON from the template
- In your N8N instance, go to Workflows → Import from JSON
- Paste the JSON and import
-
Configure OpenAI Credentials
- Click on the "OpenAI Chat Model" node
- Set up credentials using your OpenAI API key
- Test the connection to ensure it works
-
Configure Google Sheets Integration
For the Trigger Node:
- Click on "Row added - Google Sheet" node
- Set up Google Sheets Trigger OAuth2 credentials
- Select your spreadsheet from the dropdown
- Choose the "data" sheet
- Set polling to "Every Minute" (already configured)
For the Update Node:
- Click on "Update row in sheet" node
- Use the same Google Sheets credentials
- Select your spreadsheet and "data" sheet
- Verify column mapping (topic → topic, description → AI output)
For the Actions Log Node:
- Click on "Append row in sheet" node
- Use the same Google Sheets credentials
- Select your spreadsheet and "actions" sheet
Step 5: Customize the AI Description Generator
The workflow uses a simple prompt that can be customized:
- Click on the "Description Writer" node
- Modify the system message to change the AI behavior:
write a description of the topic. output like this. { "description": "description" }
Need Help with Implementation?
For professional setup, customization, or troubleshooting of this workflow, contact:
Robert - Ynteractive Solutions
- Email: robert@ynteractive.com
- Website: www.ynteractive.com
- LinkedIn: linkedin.com/in/robert-breen-29429625/
Specializing in AI-powered workflow automation, business process optimization, and custom integration solutions.
Generate AI Descriptions for New Google Sheets Entries
This n8n workflow automates the generation of AI-powered descriptions for new entries in a Google Sheet. It leverages the power of OpenAI's GPT models to enrich your spreadsheet data automatically.
What it does
This workflow simplifies the process of adding descriptive text to your Google Sheet entries by:
- Triggering on New Rows: It listens for new rows added to a specified Google Sheet.
- Generating AI Descriptions: For each new row, it uses an AI agent powered by an OpenAI Chat Model to generate a description.
- Parsing Structured Output: It then parses the AI-generated output to ensure it's in a structured format.
- Updating Google Sheet: Finally, it updates the original Google Sheet with the newly generated AI description in a designated column.
Prerequisites/Requirements
To use this workflow, you will need:
- n8n Instance: A running n8n instance.
- Google Sheets Account: A Google account with access to Google Sheets. You'll need to configure a Google Sheets credential in n8n.
- OpenAI API Key: An OpenAI API key to access the GPT models. You'll need to configure an OpenAI credential in n8n.
Setup/Usage
- Import the Workflow:
- Download the workflow JSON provided.
- In your n8n instance, go to "Workflows" and click "New".
- Click the three dots in the top right corner and select "Import from JSON".
- Paste the workflow JSON or upload the file.
- Configure Credentials:
- Google Sheets Trigger:
- Click on the "Google Sheets Trigger" node.
- Under "Credentials", select an existing Google Sheets credential or create a new one. Ensure it has access to the Google Sheet you intend to monitor.
- Specify the "Spreadsheet ID" and "Sheet Name" you want to monitor for new entries.
- Set the "Trigger On" option to "New Row".
- OpenAI Chat Model:
- Click on the "OpenAI Chat Model" node (nested within the "AI Agent" node).
- Under "Credentials", select an existing OpenAI credential or create a new one.
- Ensure the model selected (e.g.,
gpt-4-mini) is appropriate for your needs and budget.
- Google Sheets (Update):
- Click on the "Google Sheets" node.
- Under "Credentials", select the same Google Sheets credential used for the trigger.
- Specify the "Spreadsheet ID" and "Sheet Name" where the descriptions should be written.
- Configure the "Operation" to "Update Row".
- Map the "Row Index" to the appropriate data from the trigger (e.g.,
{{ $json.rowIndex }}). - Specify the "Column" where the AI-generated description should be written (e.g., "Description").
- Map the "Value" to the output of the "Structured Output Parser" node (e.g.,
{{ $json.description }}).
- Google Sheets Trigger:
- Configure the AI Agent Prompt:
- Click on the "AI Agent" node.
- Review and adjust the "System Message" and "Human Message" to guide the AI in generating the desired descriptions based on your Google Sheet columns. For example, if your sheet has columns like "Product Name" and "Features", your prompt might look like: "Generate a concise product description for a product named '{{ $json["Product Name"] }}' with features: '{{ $json.Features }}'."
- Activate the Workflow:
- Once all credentials and settings are configured, click the "Activate" toggle in the top right corner of the n8n editor to start the workflow.
Now, whenever a new row is added to your specified Google Sheet, the workflow will automatically generate and add an AI description to it.
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