Send a file from S3 to AWS Textract
This workflow shows how to download an image file from S3 and pass it on to Textract for text extraction.

The workflow uses two nodes:
- AWS S3: This node will download a receipt file from S3
- AWS Textract: This node connects to Aamazon's Textract service to extract text from the receipt file
Send a File from S3 to AWS Textract
This n8n workflow demonstrates a basic integration between AWS S3 and AWS Textract. It serves as a foundational example for processing documents stored in S3 using Textract for optical character recognition (OCR) and data extraction.
What it does
This workflow performs the following steps:
- Starts the workflow: Initiates the execution.
- Retrieves data from AWS S3: Connects to an AWS S3 bucket. While the current configuration doesn't specify an operation, it's intended to fetch a file for processing.
- Sends file to AWS Textract: Takes the file retrieved from S3 and sends it to AWS Textract for analysis.
Prerequisites/Requirements
To use this workflow, you will need:
- n8n instance: A running n8n instance.
- AWS Account: An active AWS account.
- AWS S3 Bucket: An S3 bucket where your documents are stored.
- AWS Credentials: Configured AWS credentials in n8n with permissions to:
- Read from your specified S3 bucket.
- Access AWS Textract.
Setup/Usage
- Import the workflow:
- Copy the provided JSON code.
- 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 JSON code and click "Import".
- Configure AWS Credentials:
- Click on the "AWS S3" node and then the "AWS Textract" node.
- You will see a "Credential" field. Click "Create New" or select an existing AWS credential.
- If creating new, provide your AWS Access Key ID and Secret Access Key.
- Configure AWS S3 Node:
- In the "AWS S3" node, configure the "Bucket" and "Operation" to retrieve the desired file. For example, use the "Get" operation to download a specific file or "List" to get a list of files.
- Configure AWS Textract Node:
- In the "AWS Textract" node, ensure the "Input Data" is correctly mapped to the output of the "AWS S3" node, providing the file to be processed.
- Select the desired "Operation" for Textract (e.g., "Analyze Document", "Detect Document Text").
- Activate the workflow: Once configured, activate the workflow by toggling the "Active" switch in the top right corner.
- Execute the workflow: You can manually trigger the workflow by clicking "Execute Workflow" or set up a trigger node (e.g., a "Webhook" or "Cron" node) to automate its execution.
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