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sooperset/mcp-atlassian

MCP server for Atlassian tools (Confluence, Jira)

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What it does

This project lets AI assistants like Claude directly read and update your team's Jira tickets and Confluence wiki pages, so you can ask questions and make changes in plain conversation instead of clicking through those tools manually. It acts as a bridge between AI chat tools and Atlassian's project management software, meaning your AI assistant can find assigned tasks, create bug reports, or search documentation just by being asked.

Why it matters

As AI assistants become standard in the workplace, teams that connect them to their existing project management workflows will move significantly faster than those treating AI as a separate tool. With nearly 4,400 stars and almost 1,000 forks, strong developer adoption signals that AI-powered Atlassian automation is becoming an expected capability, which has implications for how PMs scope roadmaps, run standups, and manage backlogs going forward.

24Active

On the radar — signal detected

Stars
5.5k
Forks
1.2k
Contributors
96
Language
Python
Downloads (7d)
241.4k

pypi/mcp-atlassian

Score updated Feb 26, 2026

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