Pingera Mcp
@pingera
About Pingera Mcp
An MCP server for Pingera monitoring platform. Geo-distributed monitoring, playwright scripts execution, status pages.
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"pingera": {
"command": "uv",
"args": [
"run",
"--with",
"pingera-mcp-server",
"--python",
"3.10",
"python",
"-m",
"pingera_mcp"
],
"env": {
"PINGERA_API_KEY": "your_api_key_here",
"PINGERA_MODE": "read_only",
"PINGERA_BASE_URL": "https://api.pingera.ru/v1",
"PINGERA_TIMEOUT": "30",
"PINGERA_MAX_RETRIES": "3",
"PINGERA_DEBUG": "false",
"PINGERA_SERVER_NAME": "Pingera MCP Server"
}
}
}
}Tools
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Overview
What is Pingera Mcp?
Pingera Mcp is a Model Context Protocol (MCP) server that integrates AI models with the Pingera monitoring service, enabling agents to access and manage monitoring data through a structured API.
How to use Pingera Mcp?
Install the package globally using UV (uv tool install pingera-mcp-server), then configure the Claude Desktop settings with the required PINGERA_API_KEY environment variable. Run the server with python main.py or use the Claude Desktop integration. The server starts in read‑only mode by default; set PINGERA_MODE=read_write to enable write operations.
Key features of Pingera Mcp
- Modular Pingera API client library with clean abstractions
- Read‑only and read‑write operation modes
- MCP tools for pages, components, checks, alerts, heartbeats, incidents
- Robust error handling with custom exception hierarchy
- Real‑time data via Pingera API v1
- Pydantic models for type‑safe data validation
- Environment‑based configuration management
Use cases of Pingera Mcp
- List monitored status pages and view their details
- Retrieve and analyze monitoring check results
- Manage components and component groups on a status page
- Create, update, and delete incidents with status updates (in read‑write mode)
- Test API connectivity from an AI agent
FAQ from Pingera Mcp
What dependencies does Pingera Mcp require?
Python 3.10 or later, the UV package manager, and a valid Pingera API key.
How do I switch between read‑only and read‑write mode?
Set the environment variable PINGERA_MODE to read_only (default) or read_write. In read‑write mode, the server also provides tools for creating, updating, and deleting resources.
Which MCP tools are always available?
The server always exposes tools for reading data: list_pages, get_page_details, list_component_groups, get_component_details, list_checks, get_check_details, list_alert_rules, list_heartbeats, list_incidents, and test_pingera_connection.
Where is the monitoring data stored?
All data is stored on the Pingera servers and accessed live via the Pingera API v1. No local persistence is performed by the MCP server.
How is authentication handled?
Authentication requires a PINGERA_API_KEY environment variable. The key is passed to the Pingera client for all API requests.
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