Rabbitt.ai Launches ChanceRAG, a No-Code Retrieval Augmented Generation Solution

7 months ago 141
  • Last updated September 9, 2024
  • In AI News

ChanceRAG is built around key features such as PDF processing, vector store creation, BM25 indexing, and the fusion of retrieval methods.

Rabbitt AI

Indian genAI startup, Rabbitt.ai has announced the launch of ChanceRAG, a no-code Retrieval Augmented Generation (RAG) solution designed to simplify the integration of large language models (LLMs) with document retrieval systems. 

Harneet Singh, chief AI officer at Rabbitt.ai, highlighted the product as an “enterprise-grade solution for building RAG.”

“We noticed that traditional retrieval methods, whether semantic or keyword-based, weren’t providing the depth and accuracy needed for complex queries. With ChanceRAG, we’ve created a fusion retrieval technique that delivers unparalleled precision and context, something that no current method achieves on its own,” he said.

ChanceRAG allows users to upload PDF documents and connect their LLMs to these documents through a vector database. The product introduces an Advanced Fusion Retrieval technique, which blends semantic understanding with keyword matching for enhanced performance.

Singh explained that the motivation behind ChanceRAG stemmed from the challenges businesses face in building effective RAG pipelines. He noted that existing retrieval methods were inefficient for real-world applications like customer support chatbots and AI sales agents. ChanceRAG seeks to eliminate trial-and-error in RAG implementation, enabling organisations to launch LLM applications with minimal effort.

The solution has undergone industry benchmarking, delivering high precision in document retrieval. Tests showed nDCG@5 = 5, a precision rate of 80%, and accurate responses without hallucination. A live demo of ChanceRAG is available on HuggingFace for users to test its capabilities.

ChanceRAG is built around key features such as PDF processing, vector store creation, BM25 indexing, and the fusion of retrieval methods. These elements work together to deliver precise and relevant query results. Users can further customize retrieval options by adjusting chunk size, overlap settings, and selecting retrieval and reranking methods.

Rabbitt.ai plans to release additional RAG advancements in the coming weeks, including dynamic query expansion, multimodal document summarization, adaptive re-ranking, and context-driven document segmentation.

Founded by Singh, Rabbitt.ai focuses on generative AI solutions, including custom LLM development, RAG fine-tuning, and MLOps integration. The company recently raised $2.1 million from TC Group of Companies.

Picture of Siddharth Jindal

Siddharth Jindal

Siddharth is a media graduate who loves to explore tech through journalism and putting forward ideas worth pondering about in the era of artificial intelligence.

Association of Data Scientists

Tailored Generative AI Training for Your Team

Upcoming Large format Conference

Sep 25-27, 2024 | 📍 Bangalore, India

Download the easiest way to
stay informed

Subscribe to The Belamy: Our Weekly Newsletter

Biggest AI stories, delivered to your inbox every week.

Rising 2024 | DE&I in Tech Summit

April 4 and 5, 2024 | 📍 Hilton Convention Center, Manyata Tech Park, Bangalore

Data Engineering Summit 2024

May 30 and 31, 2024 | 📍 Bangalore, India

26 July 2024 | 583 Park Avenue, New York

MachineCon GCC Summit 2024

June 28 2024 | 📍Bangalore, India

Nov 21-22 2024 | 📍Santa Clara Convention Center, California, USA

September 25-27, 2024 | 📍Bangalore, India

discord icon

Our Discord Community for AI Ecosystem, In collaboration with NVIDIA. 

Read Entire Article