Intelligent CIO LATAM Issue 35 | Page 64

t cht lk analytical insights – derived directly from the latest operational data .

t cht lk analytical insights – derived directly from the latest operational data .

But Kinetica says it can go further .
To truly understand data , AI needs context about the structure , relationships and meaning of tables and columns in an enterprise ’ s data .
Kinetica has built native database objects that allow users to define this semantic context for enterprise data . An LLM can use these objects to grasp the referential context it needs to interact with a database in a context-aware manner .
“ Kinetica ’ s real-time RAG solution , powered by NVIDIA NeMo Retriever microservices , seamlessly integrates LLMs with real-time streaming data insights , overcoming the limitations of traditional approaches ,” said Nima Negahban , Cofounder and CEO , Kinetica .
“ This innovation helps enterprise clients and analysts gain business insights from operational data , like network data in telcos , using just plain English . All they have to do is ask questions and we handle the rest .”
All the features in Kinetica ’ s generative AI solution are exposed to developers via a relational SQL API and LangChain plugins .
This means that developers building applications can harness all the enterprise-grade features that come with a relational database .
This includes control over who can access the data ( Role-Based Access Control ), reduce data movement from existing data lakes and warehouses ( query federation that allows pushdown to existing data sources ) and preservation of existing relational schemas .
64 INTELLIGENTCIO LATAM www . intelligentcio . com