About
Vibetest is an automated QA testing tool that orchestrates multiple Browser-Use agents to thoroughly test websites for bugs, broken functionality, and accessibility issues. Key features of Vibetest: - Multi-agent parallel testing using configurable numbers of Browser-Use agents (default 3) - Comprehensive testing for UI bugs, broken links, and accessibility violations - Support for both production websites and localhost development environments - Configurable headless or visible browser modes for testing flexibility - Powered by the Browser-Use library for intelligent web automation - Integration with Gemini AI models (gemini-2.0-flash) for intelligent test execution
README
Vibetest Use
Automated QA testing using Browser-Use agents.
https://github.com/user-attachments/assets/9558d051-78bc-45fd-8694-9ac80eaf9494
An MCP server that launches multiple Browser-Use agents to test a vibe-coded website for UI bugs, broken links, accessibility issues, and other technical problems.
Perfect for testing both live websites and localhost development sites.
Vibecode and vibetest until your website works.
Quick Start
# Install dependencies
uv venv
source .venv/bin/activate
uv pip install -e .Install the browser
playwright install chromium --with-deps --no-shell
1) Claude Code
# Add MCP server via CLI
claude mcp add vibetest /full/path/to/vibetest-use/.venv/bin/vibetest-mcp -e GOOGLE_API_KEY="your_api_key"Test in Claude Code
> claude> /mcp
⎿ MCP Server Status
• vibetest: connected
2) Cursor (manually)
1. Install via MCP Settings UI: - Open Cursor Settings - Click on "MCP" in the left sidebar - Click "Add Server" or the "+" button - Manually edit config:
{
"mcpServers": {
"vibetest": {
"command": "/full/path/to/vibetest-use/.venv/bin/vibetest-mcp",
"env": {
"GOOGLE_API_KEY": "your_api_key"
}
}
}
}Basic Prompts
> Vibetest my website with 5 agents: browser-use.com
> Run vibetest on localhost:3000
> Run a headless vibetest on localhost:8080 with 10 agents
Parameters You Can Specify
https://example.com, localhost:3000, http://dev.mysite.com)3 (default), 5 agents, 2 agents - more agents = more thorough testingnon-headless (default) or headlessRequirements
Full Demo
https://github.com/user-attachments/assets/6450b5b7-10e5-4019-82a4-6d726dbfbe1f
License
MIT
---
Powered by Browser Use
Related MCP Servers
AI Research Assistant
hamid-vakilzadeh
AI Research Assistant provides comprehensive access to millions of academic papers through the Semantic Scholar and arXiv databases. This MCP server enables AI coding assistants to perform intelligent literature searches, citation network analysis, and paper content extraction without requiring an API key. Key features include: - Advanced paper search with multi-filter support by year ranges, citation thresholds, field of study, and publication type - Title matching with confidence scoring for finding specific papers - Batch operations supporting up to 500 papers per request - Citation analysis and network exploration for understanding research relationships - Full-text PDF extraction from arXiv and Wiley open-access content (Wiley TDM token required for institutional access) - Rate limits of 100 requests per 5 minutes with options to request higher limits through Semantic Scholar
Linkup
LinkupPlatform
Linkup is a real-time web search and content extraction service that enables AI assistants to search the web and retrieve information from trusted sources. It provides source-backed answers with citations, making it ideal for fact-checking, news gathering, and research tasks. Key features of Linkup: - Real-time web search using natural language queries to find current information, news, and data - Page fetching to extract and read content from any webpage URL - Search depth modes: Standard for direct-answer queries and Deep for complex research across multiple sources - Source-backed results with citations and context from relevant, trustworthy websites - JavaScript rendering support for accessing dynamic content on JavaScript-heavy pages
Math-MCP
EthanHenrickson
Math-MCP is a computation server that enables Large Language Models (LLMs) to perform accurate numerical calculations through the Model Context Protocol. It provides precise mathematical operations via a simple API to overcome LLM limitations in arithmetic and statistical reasoning. Key features of Math-MCP: - Basic arithmetic operations: addition, subtraction, multiplication, division, modulo, and bulk summation - Statistical analysis functions: mean, median, mode, minimum, and maximum calculations - Rounding utilities: floor, ceiling, and nearest integer rounding - Trigonometric functions: sine, cosine, tangent, and their inverses with degrees and radians conversion support