Elastic announced its AI ecosystem to help enterprise developers accelerate building and deploying their Retrieval Augmented Generation (RAG) applications.
The Elastic AI Ecosystem provides developers with a curated, comprehensive set of AI technologies and tools integrated with the Elasticsearch vector database, designed to speed time-to-market, ROI delivery, and innovation.
“The enterprise AI market is evolving at an accelerating rate, with new products and services arriving daily. While this dizzying array of options expands the portfolio of capabilities available to enterprises and their developers, it can simultaneously slow them down by increasing the number of choices and integrations that need to be made,” said Stephen O’Grady, principal analyst with RedMonk . “One way to balance the need for new capabilities with a streamlined developer experience is by thoughtfully curating and integrating tools to maximize their collective capabilities. This is what Elastic designed its AI Ecosystem to do.”
The Elastic AI Ecosystem offers developers pre-built Elasticsearch vector database integrations from a trusted network of industry-leading AI companies to deliver seamless access to the critical components of GenAI applications across AI models, cloud infrastructure, MLOps frameworks, data prep and ingestion platforms, and AI security & operations.
These integrations help developers:
■ Deliver more relevant experiences through RAG
■ Prepare and ingest data from multiple sources
■ Experiment with and evaluate AI models
■ Leverage GenAI development frameworks
■ Observe and securely deploy AI applications
The Elastic AI Ecosystem includes integrations with Alibaba Cloud, Amazon Web Services (AWS, Anthropic's Claude, Cohere, Confluent, Dataiku, DataRobot, Galileo, Google Cloud, Hugging Face, LangChain, LlamaIndex, Microsoft, Mistral AI, NVIDIA, OpenAI, Protect AI, RedHat, Vectorize, and Unstructured.
“Elasticsearch is the most widely downloaded vector database in the market, and customers and developers want to use it with the ecosystem's best models, platforms, and frameworks to build compelling RAG applications,” said Steve Kearns, general manager of Search at Elastic . “With our handpicked ecosystem of technology providers, we’re making it easier for developers to leverage Elastic’s vector database and choose the best combination of leading-edge technologies for their RAG applications. These integrations will help developers test, iterate, and deliver their RAG applications to production faster and improve the accuracy of their Gen AI applications.”
For more information on the Elastic AI Ecosystem, read Elastichere.
What the Elastic AI Ecosystem is saying:
"We’re committed to making it easy for developers to build and deploy generative AI applications,” said Stephen Orban, VP, Migrations, ISVs, & Marketplace, Google Cloud. “Through our partnership with Elastic, enterprises and developers gain access to powerful resources, streamlined frameworks, and robust governance tools – all powered by Google Cloud’s AI-optimized infrastructure to deliver next-gen AI capabilities.”
“Combining Hugging Face’s Inference Endpoints with Elastic’s retrieval relevance tools helps users gain better insights and improve search functionality,” said Jeff Boudier, head of product at Hugging Face. “With this integration, developers get a complete solution to leverage the best open models, hosted on Hugging Face multi-cloud GPU infrastructure, to build semantic search experiences in Elasticsearch.”
“Our work with Elastic helps developers build GenAI applications faster and more effectively,” said Harrison Chase, co-founder and CEO of LangChain . “Leveraging LangGraph alongside Elasticsearch’s vector database, developers can create high-impact agentic applications that streamline the path from development to production.”
“Elastic's integrations with Microsoft Azure AI solutions enable their users to use cutting-edge technology to build production-ready AI applications for their customers. This dynamic collaboration is a powerhouse of continuous innovation, driving benefits for customers, Elastic, Microsoft, and the broader partner ecosystem,” said Liliana Gonzalez, senior director, Partner Development at Microsoft .
“Broadening our collaboration with Elastic strengthens users’ power of choice on a reliable, consistent AI platform,” said Steven Huels, vice president and general manager, AI Engineering at Red Hat. “We’re pleased to bring new support for RAG patterns, a critical first step for enterprises beginning their AI journeys and building trust within the AI marketplace.”
The Latest
SLOs have long been a staple for DevOps teams to monitor the health of their applications and infrastructure ... Now, as digital trends have shifted, more and more teams are looking to adapt this model for the mobile environment. This, however, is not without its challenges ...
Modernizing IT infrastructure has become essential for organizations striving to remain competitive. This modernization extends beyond merely upgrading hardware or software; it involves strategically leveraging new technologies like AI and cloud computing to enhance operational efficiency, increase data accessibility, and improve the end-user experience ...
AI sure grew fast in popularity, but are AI apps any good? ... If companies are going to keep integrating AI applications into their tech stack at the rate they are, then they need to be aware of AI's limitations. More importantly, they need to evolve their testing regiment ...
If you were lucky, you found out about the massive CrowdStrike/Microsoft outage last July by reading about it over coffee. Those less fortunate were awoken hours earlier by frantic calls from work ... Whether you were directly affected or not, there's an important lesson: all organizations should be conducting in-depth reviews of testing and change management ...
In MEAN TIME TO INSIGHT Episode 11, Shamus McGillicuddy, VP of Research, Network Infrastructure and Operations, at EMA discusses Secure Access Service Edge (SASE) ...
On average, only 48% of digital initiatives enterprise-wide meet or exceed their business outcome targets according to Gartner's annual global survey of CIOs and technology executives ...
Artificial intelligence (AI) is rapidly reshaping industries around the world. From optimizing business processes to unlocking new levels of innovation, AI is a critical driver of success for modern enterprises. As a result, business leaders — from DevOps engineers to CTOs — are under pressure to incorporate AI into their workflows to stay competitive. But the question isn't whether AI should be adopted — it's how ...
The mobile app industry continues to grow in size, complexity, and competition. Also not slowing down? Consumer expectations are rising exponentially along with the use of mobile apps. To meet these expectations, mobile teams need to take a comprehensive, holistic approach to their app experience ...
Users have become digital hoarders, saving everything they handle, including outdated reports, duplicate files and irrelevant documents that make it difficult to find critical information, slowing down systems and productivity. In digital terms, they have simply shoved the mess off their desks and into the virtual storage bins ...
Today we could be witnessing the dawn of a new age in software development, transformed by Artificial Intelligence (AI). But is AI a gateway or a precipice? Is AI in software development transformative, just the latest helpful tool, or a bunch of hype? To help with this assessment, DEVOPSdigest invited experts across the industry to comment on how AI can support the SDLC. In this epic multi-part series to be posted over the next several weeks, DEVOPSdigest will explore the advantages and disadvantages; the current state of maturity and adoption; and how AI will impact the processes, the developers, and the future of software development ...