VentureBeat 10月29日 23:48
利用Elastic Agent Builder加速组织部署智能AI
index_new5.html
../../../zaker_core/zaker_tpl_static/wap/tpl_guoji1.html

 

随着组织积极拥抱智能AI,准确访问分散在各类非结构化数据源中的专有信息变得至关重要。智能AI系统通过自主收集工具、数据和其他信息来源来做出响应,但其可靠性和相关性取决于准确的上下文。Elastic公司推出的Agent Builder功能,旨在简化智能AI代理的开发、配置、执行、定制和可观测性全生命周期。该工具利用Elasticsearch的核心能力,支持通过Elasticsearch查询语言或工作流建模等技术,在私有数据上构建模型上下文协议(MCP)工具,从而帮助LLM更好地理解和利用数据,加速AI应用的落地和生产力提升。

📊 **智能AI的关键在于准确的上下文获取**:智能AI系统(Agentic AI)需要自主收集信息来生成答案,其有效性高度依赖于访问准确、相关的上下文信息。在大多数企业中,这些信息分散在文档、邮件、业务应用和客户反馈等非结构化数据源中,如何整合这些数据是实现智能AI落地的关键挑战。

🚀 **Agent Builder简化AI代理构建流程**:Elastic新推出的Agent Builder功能,旨在简化智能AI代理的整个生命周期管理,包括开发、配置、执行、定制和可观测性。它允许用户在私有数据上构建模型上下文协议(MCP)工具,帮助大型语言模型(LLM)理解如何查找、使用数据以及调用API,从而加速AI应用的部署。

💡 **上下文工程的兴起与发展**:将相关上下文信息及时传递给AI代理的过程被称为“上下文工程”(Context Engineering)。这不仅确保AI应用获得所需数据以提供准确深入的响应,还能帮助LLM理解和调用外部数据。Elasticsearch作为上下文工程的核心平台,通过Agent Builder等工具,正在推动这一领域的发展。

📈 **AI代理应用场景的快速增长**:研究预测,到2026年,超过60%的大型企业将大规模部署智能AI,而40%的企业应用将集成特定任务的AI代理。这表明AI代理正从实验阶段走向主流应用,对上下文工程的需求日益增长。

Presented by Elastic


As organizations scramble to enact agentic AI solutions, accessing proprietary data from all the nooks and crannies will be key

By now, most organizations have heard of agentic AI, which are systems that “think” by autonomously gathering tools, data and other sources of information to return an answer. But here’s the rub: reliability and relevance depend on delivering accurate context. In most enterprises, this context is scattered across various unstructured data sources, including documents, emails, business apps, and customer feedback.

As organizations look ahead to 2026, solving this problem will be key to accelerating agentic AI rollouts around the world, says Ken Exner, chief product officer at Elastic.

"People are starting to realize that to do agentic AI correctly, you have to have relevant data," Exner says. "Relevance is critical in the context of agentic AI, because that AI is taking action on your behalf. When people struggle to build AI applications, I can almost guarantee you the problem is relevance.”

Agents everywhere

The struggle could be entering a make-or-break period as organizations scramble for competitive edge or to create new efficiencies. A Deloitte study predicts that by 2026, more than 60% of large enterprises will have deployed agentic AI at scale, marking a major increase from experimental phases to mainstream implementation. And researcher Gartner forecasts that by the end of 2026, 40% of all enterprise applications will incorporate task-specific agents, up from less than 5% in 2025. Adding task specialization capabilities evolves AI assistants into context-aware AI agents.

Enter context engineering

The process for getting the relevant context into agents at the right time is known as context engineering. It not only ensures that an agentic application has the data it needs to provide accurate, in-depth responses, it helps the large language model (LLM) understand what tools it needs to find and use that data, and how to call those APIs.

While there are now open-source standards such as the Model Context Protocol (MCP) that allow LLMs to connect to and communicate with external data, there are few platforms that let organizations build precise AI agents that use your data and combine retrieval, governance, and orchestration in one place, natively.

Elasticsearch has always been a leading platform for the core of context engineering. It recently released a new feature within Elasticsearch called Agent Builder, which simplifies the entire operational lifecycle of agents: development, configuration, execution, customization, and observability.

Agent Builder helps build MCP tools on private data using various techniques, including Elasticsearch Query Language, a piped query language for filtering, transforming, and analyzing data, or workflow modeling. Users can then take various tools and combine them with prompts and an LLM to build an agent.

Agent Builder offers a configurable, out-of-the-box conversational agent that allows you to chat with the data in the index, and it also gives users the ability to build one from scratch using various tools and prompts on top of private data.

"Data is the center of our world at Elastic. We’re trying to make sure that you have the tools you need to put that data to work," Exner explains. "The second you open up Agent Builder, you point it to an index in Elasticsearch, and you can begin chatting with any data you connect this to, any data that’s indexed in Elasticsearch — or from external sources through integrations.”

Context engineering as a discipline

Prompt and context engineering is becoming a discipli. It’s not something you need a computer science degree in, but more classes and best practices will emerge, because there’s an art to it.

"We want to make it very simple to do that," Exner says. "The thing that people will have to figure out is, how do you drive automation with AI? That’s what’s going to drive productivity. The people who are focused on that will see more success."

Beyond that, other context engineering patterns will emerge. The industry has gone from prompt engineering to retrieval-augmented generation, where information is passed to the LLM in a context window, to MCP solutions that help LLMs with tool selection. But it won't stop there.

"Given how fast things are moving, I will guarantee that new patterns will emerge quite quickly," Exner says. "There will still be context engineering, but they’ll be new patterns for how to share data with an LLM, how to get it to be grounded in the right information. And I predict more patterns that make it possible for the LLM to understand private data that it’s not been trained on."

Agent Builder is available now as a tech preview. Get started with an Elastic Cloud Trial, and check out the documentation for Agent Builder here.


Sponsored articles are content produced by a company that is either paying for the post or has a business relationship with VentureBeat, and they’re always clearly marked. For more information, contact sales@venturebeat.com.

Fish AI Reader

Fish AI Reader

AI辅助创作,多种专业模板,深度分析,高质量内容生成。从观点提取到深度思考,FishAI为您提供全方位的创作支持。新版本引入自定义参数,让您的创作更加个性化和精准。

FishAI

FishAI

鱼阅,AI 时代的下一个智能信息助手,助你摆脱信息焦虑

联系邮箱 441953276@qq.com

相关标签

Agentic AI Elastic Agent Builder Context Engineering AI LLM Elasticsearch 人工智能 智能AI 上下文工程
相关文章