Multi-year Strategic Collaboration Agreement includes integration with Amazon Bedrock for enterprise generative AI outcomes that are more accurate, transparent, and explainable
Neo4j, one of the world’s leading graph database and analytics companies, announced a multi-year Strategic Collaboration Agreement (SCA) with Amazon Web Services (AWS) that enables enterprises to achieve better generative artificial intelligence (AI) outcomes through a unique combination of knowledge graphs and native vector search that reduces generative AI hallucinations while making results more accurate, transparent, and explainable. This helps solve a common problem for developers who need long-term memory for large language models (LLMs) that are grounded in their specific enterprise data and domains.
Neo4j also announced the general availability of Neo4j Aura Professional, the company’s fully managed graph database offering, in AWS Marketplace, enabling a frictionless, fast-start experience for developers on generative AI. AWS Marketplace is a digital catalog with thousands of software listings from independent software vendors that make it easy to find, test, buy, and deploy software that runs on AWS.
Neo4j is a leading graph database with native vector search that captures both explicit and implicit relationships and patterns. Neo4j is also used to create knowledge graphs, enabling AI systems to reason, infer, and retrieve relevant information effectively. These capabilities enable Neo4j to serve as an enterprise database for grounding LLMs while serving as long-term memory for more accurate, explainable, and transparent outcomes for LLMs and other generative AI systems.
With today’s announcement, Neo4j is releasing a new integration with Amazon Bedrock, a fully managed service that makes foundation models from leading AI companies accessible via an API to build and scale generative AI applications. Neo4j’s native integration with Amazon Bedrock enables the following benefits:
- Reduced Hallucinations: Neo4j with Langchain and Amazon Bedrock can now work together using Retrieval Augmented Generation (RAG) to create virtual assistants grounded in enterprise knowledge. This helps customers by reducing hallucinations and providing more accurate, transparent, and explainable results.
- Personalized experiences: Neo4j’s context-rich knowledge graphs integration with Amazon Bedrock can invoke a rich ecosystem of foundation models that generate highly personalized text generation and summarization for end users.
- Get complete answers during real-time search: Developers can leverage Amazon Bedrock to generate vector embeddings from unstructured data (text, images, and video) and enrich knowledge graphs using Neo4j’s new vector search and store capability. For example, users can search a retail catalog for products explicitly based on ID or category, or implicitly search based on product descriptions or images.
- Kickstart a knowledge graph creation: Developers can leverage new generative AI capabilities using Amazon Bedrock to process unstructured data so it becomes structured and load it into a knowledge graph. Once in a knowledge graph, users can extract insights and make real-time decisions based on this knowledge.
CIO INFLUENCE News: Cadence Joins Arm Total Design to Accelerate Development of Arm-Based Custom SoCs
“The combination of knowledge graphs by Neo4j and generative AI capabilities by Amazon Bedrock will allow us to build generative AI applications at scale and democratize credit analysis and insights for our market. We have all types of data from transactions that include merchants, creditors, location, processing devices, transactions nature, amounts, values, and others – and Neo4j is the perfect database to store these highly connected transactions more efficiently and adjust them to new rules more responsively. Neo4j’s analytical tools and algorithms also help us create new products that provide insights to our partners on how to tailor their products and services better to the merchants and creditors.”
CIO INFLUENCE News: Crusoe Builds Climate-Focused Cloud for Generative AI with HPE Supercomputers
[To share your insights with us, please write to sghosh@martechseries.com]