Ontotext Enhances the Performance of LLMs and Downstream Analytics with Updated Ontotext Metadata Studio
Supporting Ontotext’s AI-in-Action initiative, OMDS 3.7 combines and interlinks textual knowledge with Wikidata to support developing a single, domain focused knowledge graph.
Note: TDWI's editors carefully choose vendor-issued press releases about new or upgraded products and services. We have edited and/or condensed this release to highlight key features but make no claims as to the accuracy of the vendor's statements.
Ontotext, a leading global provider of enterprise knowledge graph (EKG) technology and semantic database engines, has released Ontotext Metadata Studio (OMDS) 3.7, an all-in-one environment that facilitates the creation, evaluation, and quality improvement of text analytics services. This latest release provides out-of-the-box, rapid natural language processing (NLP) prototyping and development so an organization can iteratively create a text analytics service that best serves its domain knowledge.
As part of Ontotext’s AI-in-Action initiative, which helps data scientists and engineers benefit from the AI capabilities of its products, OMDS 3.7 enables users to tag content with the Common English Entity Linking (CEEL) text-analytics service. CEEL is trained to tag mentions of people, organizations, and locations to their representation in Wikidata -- the biggest global public knowledge graph, which includes close to 100 million entity instances. With OMDS, organizations can recognize approximately 40 million Wikidata concepts, and streamline information extraction from text and enrichment of databases and knowledge graphs.
“While large language models (LLMs) are good for extracting specific types of company-related events from news sources, they cannot disambiguate the names to specific concepts in a graph or records in a database,” said Atanas Kiryakov, CEO of Ontotext. “Ontotext Metadata Studio addresses this by enabling organizations to utilize information extraction to make their own content discoverable through the world's biggest public knowledge graph data set.”
With OMDS 3.7 organizations can:
- Enhance content discoverability by linking entity mentions in text to their corresponding Wikidata entries. Readers now have instant access to additional global knowledge context.
- Automate tagging and categorization of content to facilitate more efficient discovery, reviews, and knowledge synthesis.
- Enrich content, achieve precise search, improve SEO, and enhance the performance of LLMs and downstream analytics.
- Streamline information extraction from large volumes of unstructured content and quickly analyze market trends.
This latest offering further allows users to perform entity linking against their own taxonomies and reference data. By easily combining and interlinking organizational and domain knowledge with the global body of reference of Wikidata -- and with powerful modeling capabilities, an intuitive interface, and detailed reporting capabilities -- organizations can create a single cohesive knowledge graph that improves the accuracy and quality of text analytics services.
To learn more visit Ontotext.com.