Tuesday, July 2, 2024

DataStax and LlamaIndex Partner to Make Building RAG Applications Easier than Ever for GenAI Developers

Related stories

Releasing Hopsworks 4.0 – Introducing the AI Lakehouse

The team at Hopsworks is excited to announce our...

Sharpen Revolutionizes Contact Center Operations with Usable AI™ Platform

Sharpen, a recognized leader in cloud contact center software,...

RamSoft and RADPAIR Announce Integration of AI-Driven Radiology Report Generation into OmegaAI’s Platform

RamSoft®, a global leader in cloud-based RIS/PACS radiology solutions,...

Fonon’s Additive Manufacturing Paired With AI To Usher in New Possibilities

Fonon Corporation, a multi-market holding company, R&D center, equipment...

Calabrio Enhances its Innovative AI-driven Business Intelligence Tools

Calabrio, the workforce performance company, unveiled its Summer of...
spot_imgspot_img

New Integration Lets Developers Use DataStax RAGStack with LlamaIndex to Build GenAI Applications with Preview of LlamaParse

DataStax, the Gen AI data company, announced its out-of-the-box retrieval augmented generation (RAG) solution, RAGStack, is now generally available powered by LlamaIndex as an open source framework, in addition to LangChain. DataStax RAGStack for LlamaIndex is also the first partner to support an integration (currently in public preview) with LlamaIndex’s LlamaParse, which gives developers using Astra DB a simple API to efficiently parse and transform complex PDFs into vectors in minutes.

LlamaIndex is a framework for ingesting, indexing, and querying data for building generative AI applications and addresses the ingestion pipelines needed for enterprise-ready RAG. LlamaParse is LlamaIndex’s new offering that targets enterprise developers building RAG over complex PDFs; it enables clean extraction of tables by running recursive retrieval, promising more accurate parsing of the complex documents often found in business.

RAGStack with LlamaIndex offers a comprehensive solution tailored to address the challenges encountered by enterprise developers in implementing RAG solutions. Key benefits include a curated Python distribution available on PyPI, ensuring smooth integration with Astra DB, DataStax Enterprise (DSE), and Apache Cassandra®, and a live RAGStack test matrix and proven GenAI app templates. The inclusion of LlamaIndex enhanced indexing and parsing capabilities enables users to use LlamaIndex alone, or in combination with LangChain and their ecosystem including LangServe, LangChain Templates, and LangSmith.

Also Read: Alan AI Assessed “Awardable” for Department of Defense Work in the CDAO’s Tradewinds Solutions Marketplace

“We are excited to be working with DataStax to streamline the implementation process of RAG techniques,” said Jerry Liu, co-founder and CEO of LlamaIndex. “Together, we’re reshaping the RAG landscape by offering a simplified journey for not only enterprises but also developers looking to put GenAI applications into production with ease. This collaboration embodies our commitment to simplicity, innovation, and limitless possibilities.”

“At Imprompt, we’re pioneering digital interaction with our ‘Chat-to-Everything’ platform, seamlessly integrating with Astra DB from DataStax as our primary vector store,” said Jeff Schneider, CEO at Imprompt. “With RAGStack powered by LlamaIndex, we enhance enterprise offerings while prioritizing privacy. Our integration with RAGStack enables secure data exchange, powering innovation for global enterprises.”

“Out-of-the-box RAG solutions are in high demand, so this integration is a significant milestone for our enterprise developers seeking to implement generative AI applications,” said Davor Bonaci, CTO and executive vice president, DataStax. “By incorporating LlamaIndex into RAGStack, we are providing developers with a comprehensive GenAI stack that simplifies the complexities of RAG implementation, while offering long-term support and compatibility assurance.”

SOURCE: BusinessWire

Subscribe

- Never miss a story with notifications


    Latest stories

    spot_img