Sept. 18, 2023, 6:53 p.m. |

InfoWorld Machine Learning www.infoworld.com



Citing privacy and security concerns over public large language models, Kinetica is adding a self-developed LLM for generating SQL queries from natural language prompts to its relational database for online analytical processing (OLAP) and real-time analytics.

The company, which derives more than half of its revenue from US defense organizations such as NORAD and the Air Force, claims that the native LLM is more secure, tailored to the database management system syntax, and is contained within the customer’s network …

analytics database defense generative-ai kinetica language language models large language large language models llm natural natural language natural language prompts olap privacy processing prompts public real-time relational relational database relational databases revenue security sql sql queries

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