Sunday, December 22, 2024

Hyperscience Wins 2023 Innovation Award for Pioneering Visual Language Model for the Enterprise

Related stories

Doc.com Expands AI developments to Revolutionize Healthcare Access

Doc.com, a pioneering healthcare technology company, proudly announces the development...

Amesite Announces AI-Powered NurseMagic™ Growth in Marketing Reach to Key Markets

Amesite Inc., creator of the AI-powered NurseMagic™ app, announces...

Quantiphi Joins AWS Generative AI Partner Innovation Alliance

Quantiphi, an AI-first digital engineering company, has been named...
spot_imgspot_img

The company’s new Visual Document Understanding (VDU) language model marks a significant advancement in enterprise data extraction and classification.

Hyperscience, a provider of enterprise artificial intelligence solutions, announced that it has been awarded a 2023 Innovation Award from Deep Analysis, a respected analyst firm in the unstructured data automation field. Commended for its research on generative document AI models, Hyperscience was singled out for its ability to eliminate the necessity for Optical Character Recognition (OCR) while still maintaining remarkable document comprehension.

“Hyperscience has successfully transitioned from a cool VC-funded AI start-up into a mature enterprise AI company, working with top partners and winning big deals with blue chip customers,” the Deep Analysis Innovation profile detailed. “With its latest release, Hyperscience has a highly advanced, end-to-end IDP platform for all document classes. The company developed its own OCR engine from the ground up, eschewing traditional engines developed in the 1980’s and 1990’s that are used in Kofax, ABBYY, and other classic IDP vendors. After 50 years of OCR engines ruling the document processing roost, Hyperscience is an innovation leader for an exciting new data extraction and classification phase.”

Historically, traditional Intelligent Document Processing (IDP) solutions rely on OCR to transcribe, classify, and extract documents, requiring multiple machine learning models to process a document end-to-end. This multi-model process, while being pivotal for some use cases, also presents several drawbacks, including compounding model errors, model management overhead, and slower processing times.

Also Read: Palantir Ranked No. 1 Vendor in AI, Data Science, and Machine Learning

The Hyperscience engineering team experimented with a new approach, using a generative document AI model that reduces complexity and accelerates time to value for customers. The team used an OCR-free visual document understanding model to dramatically reduce the number of document processing steps, streamlining end-to-end document processing. Now, customers can integrate machine learning models more seamlessly into their automation processes, minimizing text errors, and expediting the time it takes to go from the beginning of a project to its production phase.

“Generative AI is a disruptive technology that will transform how organizations leverage data to automate processes, increase productivity, and strengthen customer engagement,” said Andrew Joiner, CEO of Hyperscience. “Hyperscience stands out in the market with a modern, AI-based approach for processing data, our ability to automate enterprise business processes securely and at scale, and our steadfast focus on driving meaningful customer outcomes. We are honored to be recognized with the Deep Analysis Innovation Award, spotlighting our commitment to driving end-to-end hyperautomation.”

SOURCE: BusinessWire

Subscribe

- Never miss a story with notifications


    Latest stories

    spot_img