Retrieval-Augmented Generation

Retrieval-Augmented Generation (RAG) is an AI technique that combines language generation with real-time information retrieval. It enhances the accuracy and relevance of AI responses by pulling contextually rich data from external sources. RAG is widely used to improve decision-making, reduce hallucinations in generative models, and adapt AI systems across various industries.

Read Your Blogs

Your Free Resource is Just a Click Away!

$1.2M

Average Annual Cost Savings in Logistics Operations

50%

Faster Time-to-market for Fintech and Healthtech products

28%

Boost in Customer Retention in Retail and E-commerce

30%

Reduction in Project Timelines for Pharmaceutical Firms