How to Extract Add-On Documents and Send Data to Any Target

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Workflow Name:

Extract Add-on Document and Send It to Any Target

AI Model Type:

LLM / Vision

Model Provider:

Goldfinch AI / OpenAI

Task Type:

Extraction / Structuring

Input Type:

PDF / Image

Output Format:

JSON / CSV

Who Uses It:

Operations; Finance Teams

Category:

Description

Problem Before:

Manual data entry from add-on docs

AI Solution:

OCR + LLM structured extraction

Validation (HITL):

Sampled QA review

Accuracy Metric:

Field-level accuracy %

Time Savings:

80% reduction in processing time

Cost Impact:

Lower operational effort

Extract Add-on Document and Send It to Any Target

This workflow enables Document Extraction from add-on documents by processing PDFs or images using LLM and vision models to capture structured data accurately.

Automated Data Capture and Delivery

The system analyzes uploaded documents, extracts relevant fields, structures the output in JSON or CSV format, and sends the results to any configured target system. It helps operations and finance teams reduce manual data entry, improve accuracy, and accelerate downstream processing.

Watch Demo

Video Title:

How to Overcome Supplier & Fulfilment Challenges? – D2C No-Inventory Model Explained

Duration:

3:09

Outcome & Benefits

Accuracy:

98%

Touchless Rate:

85%

Time Saved:

From 8m to 1.5m/doc

Cost Saved:

$0.40 per doc

Functional Details

Business Tasks:

Add-on data capture

KPI Improved:

TAT; accuracy

Scheduling:

Real-time / batch

Downstream Use:

Datalake / ERP

Technical Details

Model Name/Version:

GPT-4o-mini

Hosting Type:

API / Cloud

Prompt Strategy:

Schema-guided extraction

Guardrails:

PII masking; validation rules

Throughput:

100 docs/min

Latency:

~2s/doc

Data Governance:

No customer data training

FAQ

1. What is the Extract Add-on Document and Send It to Any Target workflow?

It is an AI-powered document extraction workflow that uses LLM and vision models to extract structured data from add-on documents and send it to any target system.

2. How does the workflow work?

The workflow ingests add-on documents in PDF or image format, applies LLM and vision models to extract and structure the data, and exports the results in JSON or CSV format to the configured target.

3. What types of documents are supported?

It supports add-on documents such as supporting invoices, attachments, supplementary forms, and related documents provided as PDFs or images.

4. What AI models are used in this workflow?

The workflow uses LLM and vision models provided by Goldfinch AI and OpenAI to accurately extract and structure information from unstructured documents.

5. What is the output of the workflow?

The extracted and structured data is output in JSON or CSV format and can be sent to any downstream system such as a Datalake, ERP, CRM, or analytics platform.

6. Who uses this workflow?

Operations Teams and Finance Teams use this workflow to automate document processing, reduce manual data entry, and improve data accuracy.

7. What are the benefits of automating add-on document extraction?

Automation improves processing speed, reduces errors, standardizes data output, and enables seamless integration with downstream systems for faster decision-making.

Resources

Case Study

Industry:

Logistics / Retail

Problem:

Unstructured add-on docs

Solution:

AI-based document extraction

Outcome:

Faster structured ingestion

ROI:

2-month payback