Built on the Model Context Protocol (MCP) apps spec, the open standard co-authored by Anthropic and OpenAI, these apps allow AI assistants to return fully interactive user interfaces rendered directly within environments such as Claude, VS Code, GitHub Copilot, Goose, Postman, and MCPJam.
Most AI integrations today stop at conversational text. That works for simple queries, but breaks down for workflows that are inherently visual and interactive, including alert triage, investigation graphs, dashboards, and distributed traces. Elastic’s MCP Apps close that gap by supporting security and observability workflows in a live AI-native interface that users can explore, filter, and act on, allowing teams to manage threat detection or system diagnosis without leaving the conversation.
“The MCP App for Elastic Security bridges the gap between automated detection and manual hunting,” said Mandy Andress, CISO of Elastic. “By bringing our security data directly into a single interface within Claude Desktop, we surfaced 'silent' threats in under an hour, risks that didn't trigger standard alerts but required immediate action. It's a force multiplier for our analysts."
“Our customers are increasingly working inside AI-native environments,” said Ken Exner, chief product officer at Elastic. “With our MCP Apps, Elastic meets them there by bringing security, observability, and search workflows into the AI tools that they are using so that teams can investigate threats and diagnose systems without switching tools. The answer is no longer a summary, it’s the workflow itself.”
While early MCP App adopters have focused on productivity tools like Amplitude, Asana, Figma, and Slack, the Elastic Security MCP App enables analysts to triage alerts, run ES|QL queries, investigate threats, and manage cases through interactive views rendered directly in the conversation. Workflows such as alert lists, process trees, and investigation graphs remain fully interactive, allowing analysts to move from question to action without tab switching or hand-offs.
The MCP App for Security provides core tasks for analysts, including:
The Elastic Observability MCP App enables teams to explore distributed traces, inspect service dependencies, and diagnose system health through interactive views rendered directly in the conversation, helping engineers move from detection to root cause analysis without switching tools.
The MCP App for Observability provides, end-to-end Kubernetes & APM incident investigation, including:
Elastic also provides MCP Apps for search and data exploration. The Search MCP App enables users to explore data and build dashboards through natural language, with results rendered as interactive visualizations that can be edited and exported.
The MCP App for Search, includes:
Availability
Elastic MCP Apps for Security, Observability, and Search are available now in public preview, with support across platforms including Claude, Claude Desktop, VS Code, GitHub Copilot, Goose, Postman, and MCPJam.
To find out more read the blog: Elastic Security, Search, and Observability now run as an interactive UI in your AI tools
About Elastic
Elastic (NYSE: ESTC) enables organizations to search, analyze, and act on all types of data in real time. Its solutions for search, observability, and security are built on the Elastic Search AI Platform, helping teams solve problems faster and operate more efficiently at scale.
View source version on businesswire.com: https://www.businesswire.com/news/home/20260421761409/en/
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