TeamCity MCP Server
Enables AI coding assistants to interact with JetBrains TeamCity CI/CD server through natural language commands. Supports triggering builds, monitoring status, analyzing test failures, and managing build configurations directly from development environments.
README
TeamCity MCP Server
A Model Control Protocol (MCP) server that bridges AI coding assistants with JetBrains TeamCity CI/CD server, enabling natural language control of builds, tests, and deployments.
Overview
The TeamCity MCP Server allows developers using AI-powered coding assistants (Claude Code, Cursor, Windsurf) to interact with TeamCity directly from their development environment using natural language commands.
Features
🚀 Two Operational Modes
-
Dev Mode: Safe CI/CD operations
- Trigger builds
- Monitor build status and progress
- Fetch and analyze build logs
- Investigate test failures
- List projects and configurations
-
Full Mode: Complete infrastructure management
- All Dev mode features, plus:
- Create and clone build configurations
- Manage build steps and triggers
- Configure VCS roots and agents
- Set up new projects
- Modify infrastructure settings
🎯 Key Capabilities
- Natural Language Control: Execute CI/CD tasks using conversational commands
- Intelligent Analysis: Automatic test failure summarization and build problem identification
- Real-time Monitoring: Live build status updates via WebSocket/SSE
- Enterprise Security: Token-based authentication with audit logging
- Modern Architecture: Simple, direct implementation with singleton pattern
- Performance Optimized: Fast startup time with minimal overhead
- Clean Codebase: Well-organized modules with clear separation of concerns
Installation
Prerequisites
- Node.js >= 20.10.0
- TeamCity Server 2020.1+ with REST API access
- TeamCity authentication token
Quick Start
# Clone the repository
git clone https://github.com/Daghis/teamcity-mcp.git
cd teamcity-mcp
# Install dependencies
npm install
# Configure environment
cp .env.example .env
# Edit .env with your TeamCity URL and token
# Run in development mode
npm run dev
npm Package (Coming Soon)
npx @daghis/teamcity-mcp --mode=dev
Configuration
Environment is validated centrally with Zod. Supported variables and defaults:
# Server Configuration
PORT=3000
NODE_ENV=development
LOG_LEVEL=info
# TeamCity Configuration (aliases supported)
TEAMCITY_URL=https://teamcity.example.com
TEAMCITY_TOKEN=your-auth-token
# Optional aliases:
# TEAMCITY_SERVER_URL=...
# TEAMCITY_API_TOKEN=...
# MCP Mode (dev or full)
MCP_MODE=dev
# Optional advanced TeamCity options (defaults shown)
# Connection
# TEAMCITY_TIMEOUT=30000
# TEAMCITY_MAX_CONCURRENT=10
# TEAMCITY_KEEP_ALIVE=true
# TEAMCITY_COMPRESSION=true
# Retry
# TEAMCITY_RETRY_ENABLED=true
# TEAMCITY_MAX_RETRIES=3
# TEAMCITY_RETRY_DELAY=1000
# TEAMCITY_MAX_RETRY_DELAY=30000
# Pagination
# TEAMCITY_PAGE_SIZE=100
# TEAMCITY_MAX_PAGE_SIZE=1000
# TEAMCITY_AUTO_FETCH_ALL=false
# Circuit Breaker
# TEAMCITY_CIRCUIT_BREAKER=true
# TEAMCITY_CB_FAILURE_THRESHOLD=5
# TEAMCITY_CB_RESET_TIMEOUT=60000
# TEAMCITY_CB_SUCCESS_THRESHOLD=2
These values are normalized in src/config/index.ts and consumed by src/teamcity/config.ts via helper getters.
Usage Examples
Once integrated with your AI coding assistant:
"Build the frontend on feature branch"
"Why did last night's tests fail?"
"Deploy staging with the latest build"
"Create a new build config for the mobile app"
Tool Responses and Pagination
- Responses: Tools now return consistent MCP content. For list/get operations, the
content[0].textcontains a JSON string. Example shape:{ "items": [...], "pagination": { "page": 1, "pageSize": 100 } }or{ "items": [...], "pagination": { "mode": "all", "pageSize": 100, "fetched": 250 } }. - Pagination: Most list_* tools accept
pageSize,maxPages, andall:pageSizecontrols items per page.all: truefetches multiple pages up tomaxPages.- Legacy
countonlist_buildsis kept for compatibility butpageSizeis preferred.
Validation and Errors
- Input validation: Tool inputs are validated with Zod schemas; invalid input returns a structured error payload in the response content (JSON string) with
success: falseanderror.code = VALIDATION_ERROR. - Error shaping: Errors are formatted consistently via a global handler. In production, messages may be sanitized; sensitive values (e.g., tokens) are redacted in logs.
API Usage
import { TeamCityAPI } from '@/api-client';
// Get the API client instance
const api = TeamCityAPI.getInstance();
// List projects
const projects = await api.listProjects();
// Get build status
const build = await api.getBuild('BuildId123');
// Trigger a new build
const newBuild = await api.triggerBuild('BuildConfigId', {
branchName: 'main',
});
Development
# Run tests
npm test
# Run tests with coverage
npm run test:coverage
# Lint code
npm run lint
# Format code
npm run format
# Type check
npm run typecheck
# Build for production
npm run build
# Analyze bundle for Codecov
npm run build:bundle
Bundle analysis in CI
The CI workflow runs npm run build:bundle and uploads the generated coverage/bundles JSON using codecov/codecov-action with the javascript-bundle plugin.
Project Structure
teamcity-mcp/
├── src/ # Source code
│ ├── tools/ # MCP tool implementations
│ ├── utils/ # Utility functions
│ ├── types/ # TypeScript type definitions
│ └── config/ # Configuration management
├── tests/ # Test files
├── docs/ # Documentation
└── .agent-os/ # Agent OS specifications
API Documentation
The MCP server exposes tools for TeamCity operations. Each tool corresponds to specific TeamCity REST API endpoints:
Build Management
TriggerBuild- Queue a new buildGetBuildStatus- Check build progressFetchBuildLog- Retrieve build logsListBuilds- Search builds by criteria
Test Analysis
ListTestFailures- Get failing testsGetTestDetails- Detailed test informationAnalyzeBuildProblems- Identify failure reasons
Configuration (Full Mode Only)
create_build_config- Create new TeamCity build configurations with full support for:- VCS roots (Git, SVN, Perforce) with authentication
- Build steps (script, Maven, Gradle, npm, Docker, PowerShell)
- Triggers (VCS, schedule, finish-build, maven-snapshot)
- Parameters and template-based configurations
- See the Tool Reference for details: docs/mcp-tools-reference.md
CloneBuildConfig- Duplicate configurations (coming soon)ManageBuildSteps- Add/edit/remove steps (coming soon)ManageVCS- Configure version control (coming soon)
See also: docs/TEAMCITY_MCP_TOOLS_GUIDE.md for an overview. Some advanced sections in that guide describe future enhancements; the behavior above reflects the current implementation.
Contributing
We welcome contributions! Please see CONTRIBUTING.md for details.
Security
- Configure
TEAMCITY_TOKENvia environment (see.env.example); never commit real tokens - Token-based authentication only
- Logs redact sensitive values
Support
- GitHub Issues: Report bugs or request features
- Documentation: See the
docs/folder in this repository
Acknowledgments
- JetBrains TeamCity for the excellent CI/CD platform
- Anthropic for the Model Control Protocol specification
- The open-source community for continuous support
Built with ❤️ for developers who love efficient CI/CD workflows
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