Retrieval-Augmented Generation (RAG) as a Service

Combine retrieval mechanisms with generative AI to handle enterprise private content—both structured and unstructured—making it AI-ready. This process ingests data into large language models (LLMs), enabling enterprises to build private knowledge bases tailored to their needs and enhance AI capabilities for decision-making and automation.

Key Features

Integrated retrieval and generation workflows

Enhance responses by combining retrieved data with generative AI outputs.

AI-based contextual response generation

Generate accurate, context-aware responses tailored to user queries.

Real-time data access

Access live data from multiple sources to ensure up-to-date insights.

Implementation Steps:

Flow:

Retrieval-Augmented Generation (RAG) Use Cases

Generate Private Knowledge base for your enterprise

Apply internal audits and controls

Generating detailed financial reports for audits.

Supporting dynamic customer service FAQs.

Demo Request