HP ALM MCP Server
Enables AI agents to interact with HP ALM / Quality Center for QA workflows including test case management, test execution, defect tracking, and requirements management.
README
HP ALM MCP Server
An MCP (Model Context Protocol) server that exposes HP ALM / Quality Center as tools for AI agents — GitHub Copilot, Claude Desktop, and any other MCP-compatible client.
It covers all day-to-day QA workflows: creating and managing test cases, pulling tests into test sets, recording execution results, filing defects, and managing requirements — all callable by an AI agent through natural language.
Table of Contents
- Features
- Available Tools
- Prerequisites
- Installation
- Configuration
- Running the Server
- Project Structure
- Security Notes
- Contributing
- License
Features
| Category | Count | What you can do |
|---|---|---|
| Session | 1 | Refresh / reconnect the ALM session |
| Test Plan — Folders | 2 | Create nested folder trees in Test Plan and Test Lab |
| Test Plan — Test Cases | 5 | List, get, find, create, bulk-create, update test cases |
| Test Plan — Version Control | 3 | Check out, check in, get VC status |
| Test Plan — Design Steps | 1 | Add / replace design steps |
| Test Lab — Test Sets | 2 | Find and create test sets |
| Test Lab — Test Instances | 3 | Add tests to sets, list instances, find by name |
| Test Execution | 5 | Create runs, update run/step status, full end-to-end execute |
| Defects | 4 | List, get, create, update defects |
| Requirements | 3 | List, get, create requirements |
| Attachments | 1 | Attach any file to any ALM entity |
| Search & Discovery | 2 | Generic HPQL search, list domains/projects |
| Total | 32 |
Available Tools
| Tool | Description |
|---|---|
alm_refresh_session |
Refresh or reconnect the ALM session |
alm_ensure_test_plan_folder |
Create nested Test Plan folder path |
alm_ensure_test_lab_folder |
Create nested Test Lab folder path |
alm_list_test_cases |
List test cases in a folder |
alm_get_test_case |
Get full details of a test case |
alm_find_test_by_name |
Find a test case ID by exact name |
alm_create_test_case |
Create a test case with optional design steps |
alm_update_test_case |
Update any field(s) on a test case |
alm_bulk_create_test_cases |
Create many test cases in one call |
alm_get_test_version_status |
Get VC status (Checked_In / Checked_Out) |
alm_checkout_test |
Check out a test case for editing |
alm_checkin_test |
Check in a test case after editing |
alm_add_design_steps |
Add / replace design steps on a test case |
alm_find_test_set |
Find a test set by name |
alm_create_test_set |
Create a test set in a Test Lab folder |
alm_add_test_to_set |
Pull a test from Test Plan into a test set |
alm_list_test_instances |
List all instances in a test set |
alm_find_test_instance |
Find a test instance by test case name |
alm_get_test_config |
Get test configuration ID for a test case |
alm_create_test_run |
Create a manual test run record |
alm_update_run_status |
Update the pass/fail status of a run |
alm_get_run_steps |
Get all run steps for a run |
alm_update_run_step |
Update status and actual result of a run step |
alm_execute_test |
Full end-to-end execution in one call |
alm_list_defects |
List defects with optional HPQL filter |
alm_get_defect |
Get full details of a defect |
alm_create_defect |
Create a new defect |
alm_update_defect |
Update any field(s) on a defect |
alm_list_requirements |
List requirements with optional HPQL filter |
alm_get_requirement |
Get full details of a requirement |
alm_create_requirement |
Create a new requirement |
alm_attach_to_entity |
Attach a local file to any ALM entity |
alm_search |
Generic HPQL search across any entity collection |
alm_list_domains_projects |
Discover all accessible domains and projects |
Prerequisites
- Python 3.11+
- An accessible HP ALM / Quality Center server (12.x, 15.x, 16.x tested)
- Network access from the machine running this server to your ALM instance
Installation
Option A — Install directly from GitHub (recommended for users)
pip install git+https://github.com/UditMahaldar/alm-mcp.git
Option B — Clone and install locally (recommended for contributors)
git clone https://github.com/UditMahaldar/alm-mcp.git
cd alm-mcp
pip install -e ".[dev]"
Configuration
All configuration is via environment variables or a .env file in the working directory.
# Copy the example and edit it
cp .env.example .env
| Variable | Required | Default | Description |
|---|---|---|---|
ALM_BASE_URL |
✅ | — | Base URL of your ALM server, e.g. https://alm.company.com/qcbin |
ALM_USERNAME |
✅ | — | ALM login username |
ALM_PASSWORD |
✅ | — | ALM login password |
ALM_DOMAIN |
✅ | — | ALM domain name |
ALM_PROJECT |
✅ | — | ALM project name |
ALM_REQUEST_DELAY |
❌ | 2.0 |
Seconds between API calls — increase if ALM throttles requests |
Security: Never commit your
.envfile. It is listed in.gitignoreby default.
Running the Server
Claude Desktop
Add this block to your Claude Desktop config file:
macOS: ~/Library/Application Support/Claude/claude_desktop_config.json
Windows: %APPDATA%\Claude\claude_desktop_config.json
{
"mcpServers": {
"hp-alm": {
"command": "python",
"args": ["-m", "alm_mcp.server"],
"env": {
"ALM_BASE_URL": "https://your-alm-server.example.com/qcbin",
"ALM_USERNAME": "your_username",
"ALM_PASSWORD": "your_password",
"ALM_DOMAIN": "YOUR_DOMAIN",
"ALM_PROJECT": "YOUR_PROJECT"
}
}
}
}
Restart Claude Desktop. You should see HP ALM MCP Server in the tools list.
VS Code / GitHub Copilot
Add this to your VS Code settings.json (or .vscode/mcp.json in the workspace):
{
"mcp": {
"servers": {
"hp-alm": {
"type": "stdio",
"command": "python",
"args": ["-m", "alm_mcp.server"],
"env": {
"ALM_BASE_URL": "https://your-alm-server.example.com/qcbin",
"ALM_USERNAME": "your_username",
"ALM_PASSWORD": "your_password",
"ALM_DOMAIN": "YOUR_DOMAIN",
"ALM_PROJECT": "YOUR_PROJECT"
}
}
}
}
}
Alternatively, if you installed via pip and want to use the entry-point script:
{
"mcp": {
"servers": {
"hp-alm": {
"type": "stdio",
"command": "alm-mcp",
"env": { "..." : "..." }
}
}
}
}
Standalone (stdio)
# With a .env file in the current directory
python -m alm_mcp.server
# Or with explicit env vars
ALM_BASE_URL=https://... ALM_USERNAME=user ALM_PASSWORD=pass \
ALM_DOMAIN=DEFAULT ALM_PROJECT=MyProject \
python -m alm_mcp.server
Project Structure
alm-mcp/
├── src/
│ └── alm_mcp/
│ ├── __init__.py # Package init
│ ├── config.py # pydantic-settings configuration
│ ├── alm_client.py # HP ALM REST API client
│ └── server.py # MCP tool definitions (FastMCP)
├── .env.example # Environment variable template
├── .gitignore
├── LICENSE
├── README.md
└── pyproject.toml
Security Notes
- SSL verification is disabled (
verify=False) because many enterprise ALM deployments use self-signed certificates. This is intentional and matches standard practice for on-premise ALM. - Credentials are never stored in code. They are loaded exclusively from environment variables or
.envfiles. - XML injection prevention: all user-supplied values are escaped with
html.escape()before being inserted into ALM XML payloads. - Path traversal prevention:
alm_attach_to_entityresolves and validatesfile_pathwithos.path.realpath()before opening the file. - No secrets in error messages: authentication error messages do not include the HTTP response body, preventing credential leakage.
Contributing
- Fork the repository and create a feature branch.
- Install dev dependencies:
pip install -e ".[dev]" - Make your changes.
- Open a pull request with a clear description.
License
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