AppSignal MCP
Integrate with the AppSignal monitoring API to query and fetch error and performance data.
AppSignal MCP
A Model Context Protocol (MCP) server for AppSignal monitoring API integration. This server allows AI assistants to directly query and fetch error and performance data from AppSignal through the MCP protocol.
Features
- Fetch details about specific error or performance samples
- Search for errors, performance samples, or both with flexible filters
- Integration with AppSignal's Error and Performance Monitoring APIs
Prerequisites
- Bun runtime
- AppSignal account and API token
- Application ID from your AppSignal dashboard
Installation
# Clone the repository
git clone https://github.com/pauldub/appsignal-mcp.git
cd appsignal-mcp
# Install dependencies
bun install
Configuration
Create a .env file in the root directory with your AppSignal credentials:
# Server configuration
PORT=3000
LOG_LEVEL=info
# AppSignal configuration
APPSIGNAL_API_TOKEN=your-api-token
Usage
Starting the Server
# Run the server
bun start
# Development mode with auto-reload
bun dev
# Run tests
bun test
# Build a standalone executable
bun run build
CLI Options
appsignal-mcp --appsignal-api-token your-token
Available options:
--appsignal-api-token <token>- AppSignal API token--log-level <level>- Logging level (debug, info, warn, error)--port <port>- Server port number
MCP Tools
1. get_sample
Gets details about a specific sample by ID (error or performance).
Parameters:
sampleId(string, required): The AppSignal sample IDappId(string, required): The AppSignal application ID
2. search_samples
Searches for samples in an application with optional filters.
Parameters:
appId(string, required): The AppSignal application IDsample_type(string, optional): Type of samples to search - "all", "errors", or "performance" (defaults to "errors")exception(string, optional): Filter by exception name (e.g., "NoMethodError") - only applicable for error samplesaction_id(string, optional): Filter by action name (e.g., "BlogPostsController-hash-show")since(string/number, optional): Start timestamp in UTC (timestamp or ISO format)before(string/number, optional): End timestamp in UTC (timestamp or ISO format)limit(number, optional): Maximum number of samples to return (defaults to 10)count_only(boolean, optional): Only return the count, not the samples
Claude Integration
To use this MCP server with Claude, create a .mcp.json file in your Claude Code workspace:
{
"mcpServers": {
"appsignal-mcp": {
"type": "stdio",
"command": "bun",
"args": [
"run",
"start"
],
"env": {
"APPSIGNAL_API_TOKEN": "your-api-token"
}
}
}
}
License
MIT
Máy chủ liên quan
Alpha Vantage MCP Server
nhà tài trợAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
Raspberry Pi MCP Servers Collection
A collection of production-ready MCP servers optimized for Raspberry Pi and AI workloads.
TypeScript MCP
A TypeScript-specialized server providing advanced code manipulation and analysis capabilities.
ForgeCraft
MCP server that generates production-grade engineering standards (SOLID, testing, architecture, CI/CD) for AI coding assistants
Swagger/OpenAPI MCP Server
Explore and interact with Swagger/OpenAPI specifications, allowing for browsing endpoints and retrieving details on API operations.
Cashfree MCP Server
Integrate AI tools and agents with Cashfree's Payment Gateway, Payouts, and SecureID APIs.
Authless Remote MCP Server on Cloudflare
An example of a remote MCP server deployable on Cloudflare Workers without authentication.
Remote MCP Server on Cloudflare
A customizable remote MCP server for deployment on Cloudflare Workers, operating without authentication.
MCP Simple Server
A simple MCP server with streamable HTTP transport that supports basic math tools like add and multiply.
Codebase Context Dumper
Easily provide codebase context to Large Language Models (LLMs).
Replicate FLUX.1 Kontext [Max]
Image generation and editing using the FLUX.1 Kontext [Max] model via the Replicate API, featuring advanced text rendering and contextual understanding.