AIAXIO-AI Matched To Your Need

15,370 AI tools for 3,203 Tasks

Unstract logo

Unstract

1.0.0

6

0

Document Processing
Utilize AI to automate the processing of unstructured data.
Input:
Output:
Unstract screenshot
Updated: Dec 15, 2023 Free + from free tier available

Description

Unstract is an AI-powered solution designed to extract valuable insights from unstructured data. This no-code platform transforms unstructured data into usable formats, automating manual tasks.

It's applicable across industries, particularly in finance and insurance. It accelerates and improves the accuracy of document handling for insurance claims, underwriting, and KYC. Key Unstract features include LLMWhisperer, LLMeval, and LLMObservability.

LLMWhisperer is designed to optimize how data from complex documents is presented to Large Language Models (LLMs). LLMEval employs two LLMs to confirm the correctness of extracted data, providing confidence scores.

LLMObservability tracks data interactions from project development to production, offering visibility into data-LLM interaction. Unstract also provides ETL Pipelines and API deployments for integrating unstructured data workflows into existing applications.

The Automation Hub feature can structure various common unstructured documents, improving operational efficiency. The API Hub allows applications to manage unstructured data without directly interacting with LLMs.

Unstract's no-code Prompt Studio extracts structured data from any document. Finally, Unstract considers user interaction.

DocDialog enables users to interact naturally with documents. Overall, this tool is notable for adhering to strict regulatory rules, ensuring data safety, security, and privacy.

Pricing Plans

Model
freemium
Packages
1 Package
Price Start From
free tier available
Payment Model
Not specified

Releases

The initial version of Unstract is now available.

Reviews

Pros & Cons

Pros

No-code platform

Processes unstructured information

Automates manual workflows

Cons

Limited focus by industry

Relies on LLMs

Potentially lacks adaptability

Q&A

New Released

New Released