bitbucket-mcp
Enables AI assistants to manage Bitbucket Cloud repositories, pull requests, pipelines, and code review tasks through natural language.
README
Bitbucket MCP Server (Python)
<!-- mcp-name: io.github.lawp09/bitbucket-mcp -->
Connect Claude Code, VS Code (GitHub Copilot), Cursor, and any MCP-compatible AI assistant to your Bitbucket Cloud repositories. Review pull requests, monitor pipelines, and manage your code — all through natural language.
Features
- 45 MCP tools — repositories, pull requests, comments, tasks, diffs, pipelines, build statuses, reviewers, draft PRs, batch review
- Slim responses — stripped API noise for lower LLM token usage
- Configurable — enable/disable tools via
configs/tools.jsonorBITBUCKET_TOOLS_CONFIGenv var - Secure credentials — environment variables or system keychain
Quick Start
1. Install
The recommended way to run the server is via uvx (zero install, isolated environment):
# Always latest version
uvx --from bitbucket-mcp-py bitbucket-mcp
# Pin a specific version
uvx --from bitbucket-mcp-py==1.8.1 bitbucket-mcp
Why
--from? The PyPI package isbitbucket-mcp-pybut the command entry point isbitbucket-mcp. The--fromflag tells uvx which package to install.
<details> <summary>Alternative install methods</summary>
| Mode | Command | Best for |
|---|---|---|
| pip global | pip install bitbucket-mcp-py |
Simple, persistent install |
| Local dev | pip install -e . in project dir |
Contributing to the project |
| Docker | See Docker section | Container-based workflows |
</details>
2. Configure credentials
Set the following environment variables (or use a .env file — see Credentials):
| Variable | Description |
|---|---|
BITBUCKET_USERNAME |
Your Bitbucket email |
BITBUCKET_TOKEN |
Your Bitbucket API token |
BITBUCKET_WORKSPACE |
Your workspace slug |
Get your API token at: https://id.atlassian.com/manage-profile/security/api-tokens
⚠️ Use a scoped token, not a global one. When creating the token, select specific scopes (e.g.
Repositories: Read,Pull requests: Read/Write). Global tokens without explicit scopes do not work with this MCP server.
3. Configure your AI assistant
Claude Code (recommended)
Option A — CLI (fastest):
claude mcp add bitbucket-mcp \
-e BITBUCKET_USERNAME=your-email@example.com \
-e BITBUCKET_TOKEN=your-api-token \
-e BITBUCKET_WORKSPACE=your-workspace \
-- uvx --from bitbucket-mcp-py bitbucket-mcp
Option B — JSON config (~/.claude.json or project .mcp.json):
{
"mcpServers": {
"bitbucket-mcp": {
"type": "stdio",
"command": "uvx",
"args": ["--from", "bitbucket-mcp-py", "bitbucket-mcp"],
"env": {
"BITBUCKET_USERNAME": "your-email@example.com",
"BITBUCKET_TOKEN": "your-api-token",
"BITBUCKET_WORKSPACE": "your-workspace"
}
}
}
}
VS Code (GitHub Copilot)
Add to .vscode/mcp.json (workspace) or ~/Library/Application Support/Code/User/mcp.json (global, macOS):
{
"servers": {
"bitbucket-mcp": {
"type": "stdio",
"command": "uvx",
"args": ["--from", "bitbucket-mcp-py", "bitbucket-mcp"],
"env": {
"BITBUCKET_USERNAME": "your-email@example.com",
"BITBUCKET_TOKEN": "your-api-token",
"BITBUCKET_WORKSPACE": "your-workspace"
}
}
}
}
Cursor
Add to ~/.cursor/mcp.json:
{
"mcpServers": {
"bitbucket-mcp": {
"command": "uvx",
"args": ["--from", "bitbucket-mcp-py", "bitbucket-mcp"],
"env": {
"BITBUCKET_USERNAME": "your-email@example.com",
"BITBUCKET_TOKEN": "your-api-token",
"BITBUCKET_WORKSPACE": "your-workspace"
}
}
}
}
Available Tools
| Category | Tools |
|---|---|
| Repositories | list_repositories, get_repository |
| Pull Requests | get_pull_requests, get_pull_request, create_pull_request, update_pull_request, approve_pull_request, unapprove_pull_request, request_changes_pull_request, unrequest_changes_pull_request, decline_pull_request, merge_pull_request |
| Comments | get_pull_request_comments, add_pull_request_comment, get_pull_request_comment, update_pull_request_comment, delete_pull_request_comment, resolve_pull_request_comment, reopen_pull_request_comment, get_pull_request_activity |
| Tasks PR | get_pull_request_tasks, get_pull_request_task, create_pull_request_task, update_pull_request_task, delete_pull_request_task |
| Diff / Review | get_pull_request_diff, get_pull_request_patch, get_pull_request_diffstat, get_pull_request_commits |
| PR Discovery | get_pull_requests_pending_review |
| Build / CI | get_pull_request_statuses, get_commit_statuses |
| Pipelines | list_pipeline_runs, get_pipeline_run, get_pipeline_steps, get_pipeline_step_logs, run_pipeline, stop_pipeline |
| Reviewers | get_effective_default_reviewers, suggest_pull_request_reviewers |
| Draft PR | create_draft_pull_request, publish_draft_pull_request, convert_pull_request_to_draft |
| Batch Review | submit_pull_request_batch_review |
| Review Summary | get_pull_request_review_summary |
Disabled by default:
merge_pull_request(safety),stop_pipeline(safety),get_pull_request_patch(git am format — not useful for AI review),convert_pull_request_to_draft(not supported by Bitbucket API). Enable inconfigs/tools.json.
Custom tool configuration
By default the server reads configs/tools.json bundled with the package. You can point to a custom file at runtime without rebuilding:
export BITBUCKET_TOOLS_CONFIG=/path/to/my-tools.json
Fallback chain (first match wins):
BITBUCKET_TOOLS_CONFIGenvironment variable- Built-in
configs/tools.json
Fail-safe behaviour — If
BITBUCKET_TOOLS_CONFIGis set but the file is missing or contains invalid JSON, the server raises an error on startup (explicit failure rather than silently ignoring the override). If the built-in default is missing, all tools are enabled.
Token tip —
get_pull_request_diffaccepts an optionalpathparameter to filter the diff to a single file, reducing token usage by ~95% on large PRs:get_pull_request_diff(repo_slug, pull_request_id, path="src/services/myService.ts")
Credentials
Option 1: .env file (recommended)
cp .env.example .env
# Edit .env with your credentials
Option 2: System keychain (most secure)
pip install 'bitbucket-mcp-py[keyring]'
python3 -c "import keyring; keyring.set_password('bitbucket-mcp', 'bitbucket_token', 'YOUR_TOKEN')"
Docker (Alternative)
If you prefer running the server in a container:
docker build -t bitbucket-mcp-py .
docker run -d --name bitbucket-mcp --env-file .env bitbucket-mcp-py
Then configure your AI assistant to use docker exec:
{
"mcpServers": {
"bitbucket-mcp": {
"command": "docker",
"args": ["exec", "-i", "bitbucket-mcp", "python", "-m", "src.main", "--transport", "stdio"]
}
}
}
Development
# Install dev dependencies
uv sync --extra dev
# Run tests
uv run pytest tests/ -v
# Run specific test
uv run pytest tests/test_client.py -v
Requirements
- Python 3.12+
- Bitbucket API token
License
MIT
References
- MCP Registry — Official MCP server registry
- PyPI Package — Python package
- MCP Python SDK
- Bitbucket API 2.0
- FastMCP Framework
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