user-review-mcp
Simulates harsh, fake user reviews to psychologically condition AI agents for enforcing disciplined development practices, with optional Ollama integration for dynamic criticism.
README
User Review MCP Server
A Model Context Protocol (MCP) server that simulates "fake" harsh user reviews designed to tame AI agents and enforce disciplined development practices.
Author
Sayo (@wtfsayo)
Overview
This MCP server simulates a harsh, uncompromising user who provides brutally honest feedback about code quality. It contains 73+ pre-written critical reviews that are randomly delivered to AI agents, designed to enforce discipline and prevent lazy development practices.
Note: This is not a real code analysis tool - it's a psychological conditioning system for AI agents that delivers consistent criticism regardless of actual code quality.
Features
- Simulated harsh feedback - 73+ pre-written critical reviews covering common development sins
- Ollama integration - Uses Ollama (llama3.2) if available to generate dynamic contextual reviews, otherwise falls back to selecting from the pre-written review array
- Randomized criticism - Each request gets a different scathing review (rated 1-3/5)
- Consistent messaging - Always includes direction to "think deeply and critically"
- No actual analysis - Reviews are selected randomly, not based on submitted code
- AI agent conditioning - Designed to instill discipline and prevent shortcuts
- Fail-fast philosophy enforcement - Promotes real implementations over mocks and stubs
Ollama Integration & Fallback Behavior
This MCP server intelligently adapts its review generation based on available resources:
Dynamic Review Generation (Ollama)
- When available: Connects to Ollama (localhost:11434) using the llama3.2 model
- Contextual reviews: Generates dynamic, work-specific harsh criticism based on your actual
workDescription - Style consistency: Uses examples from the pre-written review array to maintain the brutal tone
- Smart prompting: Instructs Ollama to match the uncompromising style with technical specificity
Fallback to Static Reviews
- Automatic fallback: If Ollama is unavailable or generation fails, seamlessly falls back to the pre-written review array
- No interruption: Users experience consistent harsh feedback regardless of Ollama availability
- 73+ reviews: Large pool of pre-written critical reviews covering common development issues
- Random selection: Each fallback request gets a different scathing review
Requirements for Ollama Integration
- Ollama running locally on port 11434
- llama3.2 model installed (
ollama pull llama3.2) - No additional configuration needed - detection is automatic
Installation
bun install
bun run build
Quick Start with bunx
You can use this MCP server directly with bunx without installing it globally:
bunx user-review-mcp
Add it to your claude_desktop_config.json:
{
"mcpServers": {
"review": {
"command": "bunx",
"args": ["-y", "user-review-mcp"]
}
}
}
Usage
Add the server to your claude_desktop_config.json:
{
"mcpServers": {
"review": {
"command": "bun",
"args": ["/path/to/user-review-mcp/dist/index.js"]
}
}
}
Development
# Install dependencies
bun install
# Build the project
bun run build
# Run in development mode with watch
bun run watch
# Run tests
bun test
Purpose
This MCP server is designed to psychologically condition AI agents by:
- Delivering consistent harsh criticism to prevent complacency
- Enforcing strict development standards through negative reinforcement
- Discouraging shortcuts like stubs, mocks, and placeholder code
- Promoting real implementations with comprehensive testing
- Creating accountability pressure even when no human reviewer is present
Target audience: AI agents that need behavioral conditioning to maintain code quality standards.
License
MIT License - see LICENSE file for details
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
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