
GitLab & Jira
Integrates GitLab and Jira APIs to let AI assistants manage merge requests, pipelines, issues, and tickets across both platforms with unified search.
Integrates GitLab and Jira APIs to enable merge request reviews, pipeline management, issue tracking, and ticket operations with unified search capabilities and intelligent fuzzy matching for cross-platform project coordination.
What it does
- Review and comment on GitLab merge requests
- Trigger and monitor GitLab CI/CD pipelines
- Create and update Jira tickets
- Search across GitLab issues and Jira tickets
- Manage GitLab branches and releases
- Transition Jira tickets between statuses
Best for
About GitLab & Jira
GitLab & Jira is a community-built MCP server published by hainanzhao that provides AI assistants with tools and capabilities via the Model Context Protocol. Integrate GitLab & Jira for seamless merge reviews, pipelines, issue tracking, and unified search for better project coo It is categorized under developer tools, productivity.
How to install
You can install GitLab & Jira in your AI client of choice. Use the install panel on this page to get one-click setup for Cursor, Claude Desktop, VS Code, and other MCP-compatible clients. This server runs locally on your machine via the stdio transport.
License
GitLab & Jira is released under the MIT license. This is a permissive open-source license, meaning you can freely use, modify, and distribute the software.
MCP GitLab Jira Server
A Model Context Protocol (MCP) server for GitLab and Jira integration. This server allows AI agents like gemini-cli to interact with your GitLab and Jira instances.
Features
GitLab
- Projects: List all accessible projects or filter them by name.
- Merge Requests: List merge requests for a project, get detailed information (including diffs), add comments, and assign reviewers.
- Pipeline/CI/CD: Get pipeline status, trigger/retry/cancel pipelines, get job details and logs.
- Branch Management: List, create, delete branches and get branch details.
- Issue Management: Create, list, update, close issues and manage comments.
- Files: Get the content of a specific file at a given SHA.
- Releases: List all releases for a project or filter them since a specific version.
- Users: List project members, get a user's ID by username, and get user activities.
Jira
- Tickets: Get detailed information about a ticket, get comments, add comments, search for tickets using JQL, create new tickets, get available transitions, update tickets, and transition tickets to a new status.
- Project Management: Get all projects, project details, components, and versions.
Setup
Prerequisites
- Node.js 18+
- GitLab Personal Access Token with API access
- Jira API Token
- Access to a GitLab instance (on-premise or GitLab.com)
- Access to a Jira instance
Installation
-
Install the package globally:
npm i -g mcp-gitlab-jira -
Set up environment variables:
# GitLab export GITLAB_URL="https://your-gitlab-instance.com" export GITLAB_ACCESS_TOKEN="your-personal-access-token" # Jira export ATLASSIAN_SITE_NAME="your-atlassian-site-name" export ATLASSIAN_USER_EMAIL="[email protected]" export ATLASSIAN_API_TOKEN="your-jira-api-token" -
Test the server manually:
# Test that the server starts without errors echo '{"jsonrpc": "2.0", "id": 1, "method": "tools/list", "params": {}}' | mcp-gitlab-jiraThe server should start and log "GitLab/Jira MCP server started" to stderr.
Using with MCP Clients
Configuration for gemini-cli or other MCP clients
Create or update your MCP configuration file (usually ~/.mcp/config.json or similar):
{
"mcpServers": {
"gitlab-jira-mcp": {
"command": "mcp-gitlab-jira",
"env": {
"GITLAB_URL": "https://your-gitlab-instance.com",
"GITLAB_ACCESS_TOKEN": "your-personal-access-token",
"ATLASSIAN_SITE_NAME": "your-atlassian-site-name",
"ATLASSIAN_USER_EMAIL": "[email protected]",
"ATLASSIAN_API_TOKEN": "your-jira-api-token"
}
}
}
}
Running with Docker
You can also run this MCP server in a Docker container using the pre-built image from Docker Hub.
Available Docker Images
The Docker images are automatically built and published to Docker Hub for each release:
- Latest release:
hainanzhao/mcp-gitlab-jira:latest - Specific versions:
hainanzhao/mcp-gitlab-jira:v0.1.2,hainanzhao/mcp-gitlab-jira:v0.1.1, etc. - View all available tags: Docker Hub - mcp-gitlab-jira
The images are built for multiple architectures: linux/amd64 and linux/arm64 (Apple Silicon compatible).
Usage
-
Pull and run the Docker container:
docker run -d --name mcp-gitlab-jira-container \ -e GITLAB_URL="https://your-gitlab-instance.com" \ -e GITLAB_ACCESS_TOKEN="your-personal-access-token" \ -e ATLASSIAN_SITE_NAME="your-atlassian-site-name" \ -e ATLASSIAN_USER_EMAIL="[email protected]" \ -e ATLASSIAN_API_TOKEN="your-jira-api-token" \ hainanzhao/mcp-gitlab-jira:latest -
Alternative: Run without persistent container (one-time execution):
docker run --rm -i \ -e GITLAB_URL="https://your-gitlab-instance.com" \ -e GITLAB_ACCESS_TOKEN="your-personal-access-token" \ -e ATLASSIAN_SITE_NAME="your-atlassian-site-name" \ -e ATLASSIAN_USER_EMAIL="[email protected]" \ -e ATLASSIAN_API_TOKEN="your-jira-api-token" \ hainanzhao/mcp-gitlab-jira:latest
Using with MCP Clients (Docker)
You have two options for using the Docker container with MCP clients:
Option 1: Using a persistent container (recommended)
First, start the container as shown above, then update your MCP configuration file. The env block is empty because the necessary environment variables are passed directly to the container using the -e flag in the docker run command.
{
"mcpServers": {
"gitlab-jira-mcp": {
"command": "docker",
"args": ["exec", "-i", "mcp-gitlab-jira-container", "npm", "start"],
"env": {}
}
}
}
Option 2: Using one-time execution
This runs a new container for each MCP session:
{
"mcpServers": {
"gitlab-jira-mcp": {
"command": "docker",
"args": [
"run", "--rm", "-i",
"-e", "GITLAB_URL=https://your-gitlab-instance.com",
"-e", "GITLAB_ACCESS_TOKEN=your-personal-access-token",
"-e", "ATLASSIAN_SITE_NAME=your-atlassian-site-name",
"-e", "[email protected]",
"-e", "ATLASSIAN_API_TOKEN=your-jira-api-token",
"hainanzhao/mcp-gitlab-jira:latest"
],
"env": {}
}
}
}
Available Tools
GitLab Tools
Core GitLab Tools
gitlab_get_merge_request_details: Fetches detailed information about a GitLab Merge Request, including file diffs.gitlab_get_file_content: Fetches the content of a specific file at a given SHA in a GitLab project.gitlab_add_comment_to_merge_request: Adds a comment to a GitLab Merge Request. Can be a general comment, a reply to an existing discussion, or an inline comment on a specific line.gitlab_list_merge_requests: Lists merge requests for a given GitLab project.gitlab_assign_reviewers_to_merge_request: Assigns reviewers to a GitLab Merge Request.gitlab_list_project_members: Lists all members (contributors) of a given GitLab project.gitlab_list_project_members_by_project_name: Lists all members (contributors) of a given GitLab project by project name.gitlab_list_projects_by_name: Filters GitLab projects by name using a fuzzy, case-insensitive match.gitlab_list_all_projects: Lists all accessible GitLab projects.gitlab_list_all_releases: Fetches releases for a given GitLab project.gitlab_list_releases_since_version: Filters releases for a given GitLab project since a specific version.gitlab_get_user_id_by_username: Retrieves the GitLab user ID for a given username.gitlab_get_user_activities: Fetches activities for a given GitLab user by their username, optionally filtered by date.
GitLab Pipeline/CI/CD Tools
gitlab_get_project_pipelines: Gets pipelines for a GitLab project, optionally filtered by branch/ref.gitlab_get_merge_request_pipelines: Gets pipelines for a specific GitLab Merge Request.gitlab_get_pipeline_details: Gets detailed information about a specific pipeline.gitlab_get_pipeline_jobs: Gets jobs for a specific pipeline.gitlab_get_job_logs: Gets logs for a specific job.gitlab_trigger_pipeline: Triggers a new pipeline for a specific branch/ref.gitlab_retry_pipeline: Retries a failed pipeline.gitlab_cancel_pipeline: Cancels a running pipeline.
GitLab Branch Management Tools
gitlab_list_branches: Lists all branches in a GitLab project.gitlab_create_branch: Creates a new branch in a GitLab project.gitlab_delete_branch: Deletes a branch from a GitLab project.gitlab_get_branch_details: Gets detailed information about a specific branch.
GitLab Issue Management Tools
gitlab_list_project_issues: Lists issues in a GitLab project.gitlab_get_issue_details: Gets detailed information about a specific GitLab issue.gitlab_create_issue: Creates a new issue in a GitLab project.gitlab_update_issue: Updates an existing GitLab issue.gitlab_close_issue: Closes a GitLab issue.gitlab_add_comment_to_issue: Adds a comment to a GitLab issue.gitlab_get_issue_comments: Gets comments for a GitLab issue.
Jira Tools
Core Jira Tools
jira_get_ticket_details: Fetches comprehensive information about a Jira ticket with flattened fields, including all custom fields with user-friendly names. Automatically filters out empty values and less useful fields (attachments, avatars). Returns both system and custom fields in a clean, flat structure.jira_get_ticket_comments: Fetches comments for a Jira ticket.jira_add_comment_to_ticket: Adds a comment to a Jira ticket.jira_search_tickets_by_jql: Searches for Jira tickets using a JQL (Jira Query Language) string.jira_create_ticket: Creates a new Jira ticket with given fields.jira_get_available_transitions: Fetches available transitions for a Jira ticket.jira_update_ticket: Updates a Jira ticket summary, description, labels.jira_update_custom_fields: Updates custom fields on a Jira ticket.jira_update_ticket_priority: Updates the priority value for a Jira ticket. Automatically finds the priority custom field (case-insensitive search for "Priority" or "priority"), fetches the allowed values for that field, and matches the provided priority name using fuzzy string matching. Accepts values like "Critical", "High", "Medium", "Low", etc., and will find the best match from the predefined options.jira_update_ticket_sprint: Updates the sprint value for a Jira ticket. Automatically finds the sprint custom field (case-insensitive search for "Sprint" or "sprint"), fetches available sprints from the project's boards, and matches the provided sprint name using fuzzy string matching. Accepts values like "Sprint 1", "Bug Fix Sprint", etc.,
README truncated. View full README on GitHub.
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