MCP-Allure
Reads Allure test reports and returns them in LLM-friendly formats for better test analysis and insights.
MCP-Allure
MCP-Allure is a MCP server that reads Allure reports and returns them in LLM-friendly formats.
Motivation
As AI and Large Language Models (LLMs) become increasingly integral to software development, there is a growing need to bridge the gap between traditional test reporting and AI-assisted analysis. Traditional Allure test report formats, while human-readable, aren't optimized for LLM consumption and processing.
MCP-Allure addresses this challenge by transforming Allure test reports into LLM-friendly formats. This transformation enables AI models to better understand, analyze, and provide insights about test results, making it easier to:
- Generate meaningful test summaries and insights
- Identify patterns in test failures
- Suggest potential fixes for failing tests
- Enable more effective AI-assisted debugging
- Facilitate automated test documentation generation
By optimizing test reports for LLM consumption, MCP-Allure helps development teams leverage the full potential of AI tools in their testing workflow, leading to more efficient and intelligent test analysis and maintenance.
Problems Solved
- Efficiency: Traditional test reporting formats are not optimized for AI consumption, leading to inefficiencies in test analysis and maintenance.
- Accuracy: AI models may struggle with interpreting and analyzing test reports that are not in a format optimized for AI consumption.
- Cost: Converting test reports to LLM-friendly formats can be time-consuming and expensive.
Key Features
- Conversion: Converts Allure test reports into LLM-friendly formats.
- Optimization: Optimizes test reports for AI consumption.
- Efficiency: Converts test reports efficiently.
- Cost: Converts test reports at a low cost.
- Accuracy: Converts test reports with high accuracy.
Installation
To install mcp-repo2llm using uv:
{
"mcpServers": {
"mcp-allure-server": {
"command": "uv",
"args": [
"run",
"--with",
"mcp[cli]",
"mcp",
"run",
"/Users/crisschan/workspace/pyspace/mcp-allure/mcp-allure-server.py"
]
}
}
}
Tool
get_allure_report
- Reads Allure report and returns JSON data
- Input:
- report_dir: Allure HTML report path
- Return:
- String, formatted JSON data, like this:
{
"test-suites": [
{
"name": "test suite name",
"title": "suite title",
"description": "suite description",
"status": "passed",
"start": "timestamp",
"stop": "timestamp",
"test-cases": [
{
"name": "test case name",
"title": "case title",
"description": "case description",
"severity": "normal",
"status": "passed",
"start": "timestamp",
"stop": "timestamp",
"labels": [
],
"parameters": [
],
"steps": [
{
"name": "step name",
"title": "step title",
"status": "passed",
"start": "timestamp",
"stop": "timestamp",
"attachments": [
],
"steps": [
]
}
]
}
]
}
]
}
Похожие серверы
Alpha Vantage MCP Server
спонсорAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
spm-mcp
iOS Swift Package Manager server written in Swift
mcp4gql
An MCP server that acts as a bridge, allowing MCP clients to interact with a target GraphQL API.
Raygun
Interact with your crash reporting and real using monitoring data on your Raygun account
Loop MCP Server
Enables LLMs to process array items sequentially with a specific task.
mcp.shop
A web shop built with MCP, WorkOS AuthKit, and Next.js.
Figma MCP Server
Enables AI assistants to interact with Figma via WebSocket for reading data and design analysis.
SonarQube MCP Server
Integrates with SonarQube to provide AI assistants with access to code quality metrics, issues, and analysis results.
durable-objects-mcp
Query your Cloudflare Durable Objects from Claude Code, Cursor, and other AI clients
MCP TypeScript Implementation
A TypeScript implementation of the Model Context Protocol for the Personal Intelligence Framework.
MCP Server
A backend service providing tools, resources, and prompts for AI models using the Model Context Protocol (MCP).