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Mercury Spec Ops

n0zer0d4y/mercury-spec-ops
4STDIOregistry active
Summary

This server flips the usual MCP pattern by exposing prompts and templates as programmable tools rather than static resources. Instead of hardcoded prompts, you get six tools that dynamically assemble prompts and templates from 31 technology modules, 10 analysis dimensions, and 34 template sections. Pass "node.js,react,postgresql" and "security,performance" to the codebase analysis tool and it programmatically builds a prompt with the relevant modules, then constructs a matching template on demand. Same approach for PRD generation and bug analysis, with technology-specific and severity-specific assembly. Useful when you want AI to invoke structured, context-aware prompts based on parameters rather than manually selecting from a fixed catalog.

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Mercury Spec Ops MCP Server: Prompts and Resources as Tools

TypeScript MCP Registry MCP Dev MCP Server MCP Server with Tools standard-readme compliant License: MIT MseeP.ai Security Assessment Badge

The first MCP server to expose dynamic, AI-invocable tools for prompt generation and template assembly.

Transform how AI assistants interact with specialized content. Instead of static prompts and resources, Mercury Spec Ops provides 6 programmable tools that enable AI to dynamically generate technology-specific prompts and comprehensive templates on-demand. Built on a sophisticated modular architecture with 31 technology stacks, 10 analysis dimensions, and 34 template sections—all accessible through simple tool calls.

Features

This MCP server provides a modular, extensible architecture with:

Prompts (Enhanced with Enum Support)

  1. PRD Prompt - Generate Product Requirements Document with modular technology-specific analysis
  2. Codebase Analysis Prompt - Analyze codebases with modular technology/focus-specific analysis
  3. Bug Analysis Prompt - Analyze bugs with modular severity/technology-specific analysis

Resources (Modular Templates)

  1. PRD Template - Modular PRD template with technology-specific sections
  2. Codebase Analysis Template - Modular codebase analysis template with technology/focus-specific sections
  3. Bug Analysis Template - Modular bug analysis template with severity/technology-specific sections

Key Capabilities

Enum-Based Input Validation

  • Technology Stack (31 total):
    • Languages (11): JavaScript, TypeScript, Python, Java, Go, Rust, C#, PHP, Ruby, Swift, Kotlin
    • Runtimes (1): Node.js
    • Frontend (3): React, Angular, Vue
    • Backend (7): Express, NestJS, Django, Flask, Spring, Laravel, Rails
    • Databases (4): MongoDB, PostgreSQL, MySQL, Redis
    • Cloud (3): AWS, Azure, GCP
    • DevOps (2): Docker, Kubernetes
  • Analysis Focus (10 total): architecture, security, performance, testing, documentation, maintainability, scalability, reliability, code-quality, dependencies
  • Bug Severity (4 total): low, medium, high, critical
  • Target Audience: developers, business-users, enterprise, startup, healthcare, finance, and more

Programmatic Prompt Assembly

  • Base prompts + 31 technology modules + 10 focus modules + 4 severity modules
  • Automatic module selection based on input parameters
  • Priority-based module ordering
  • Multi-value support: Analyze multiple technologies and focus areas simultaneously
  • Comma-separated input: "node.js,react,postgresql" or "security,performance,code-quality"
  • Custom instruction integration
  • Intelligent fallback to base prompts

Modular Template System

  • Template sections with dependency resolution
  • Technology-specific template sections
  • Focus-specific template sections
  • Custom section support

Installation

Option 1: Local Development

  1. Clone and install dependencies:
git clone https://github.com/n0zer0d4y/mercury-spec-ops.git
cd mercury-spec-ops
npm install
npm run build
  1. Run the server locally:
npm run mcp

Option 2: Install from npm

npm install -g @n0zer0d4y/mercury-spec-ops

Or use directly with npx (no installation required):

npx @n0zer0d4y/mercury-spec-ops

Usage

Integration with MCP Clients

Configure the server in your MCP client (Claude Desktop, Cursor, etc.):

Using npx (Recommended - No Installation)

For Claude Desktop (claude_desktop_config.json):

{
  "mcpServers": {
    "mercury-spec-ops": {
      "command": "npx",
      "args": ["-y", "@n0zer0d4y/mercury-spec-ops"]
    }
  }
}

For Cursor (~/.cursor/mcp.json):

{
  "mcpServers": {
    "mercury-spec-ops": {
      "timeout": 60,
      "type": "stdio",
      "command": "npx",
      "args": ["-y", "@n0zer0d4y/mercury-spec-ops"]
    }
  }
}

Using Local Installation

For Claude Desktop (claude_desktop_config.json):

{
  "mcpServers": {
    "mercury-spec-ops": {
      "command": "node",
      "args": ["/path/to/mercury-spec-ops/dist/src/server.js"]
    }
  }
}

For Cursor (~/.cursor/mcp.json):

{
  "mcpServers": {
    "mercury-spec-ops": {
      "timeout": 60,
      "type": "stdio",
      "command": "node",
      "args": ["/path/to/mercury-spec-ops/dist/src/server.js"]
    }
  }
}

Windows Local Path Example (Cursor):

{
  "mcpServers": {
    "mercury-spec-ops": {
      "timeout": 60,
      "type": "stdio",
      "command": "node",
      "args": [
        "C:\\Development\\Projects\\MCP-Servers\\mercury-spec-ops\\dist\\src\\server.js"
      ]
    }
  }
}

Important Notes:

  • npx: Automatically fetches the latest version from npm (recommended for most users)
  • Local: Replace the path with your actual project location and run npm run build first
  • Restart: Restart your MCP client after configuration changes

Workflow Examples

Example 1: Enhanced Codebase Analysis

  1. User Prompt: "Analyze this Node.js/TypeScript codebase focusing on security and performance"
  2. Claude Desktop Action:
    • Calls the codebase-analysis-prompt with technology_stack: "node.js,typescript" and analysis_focus: "security,performance"
    • System programmatically assembles: base prompt + Node.js module + TypeScript module + security module + performance module
    • The prompt instructs Claude to first read the resource://codebase-analysis-template
    • Template builder assembles: base template + Node.js sections + TypeScript sections + security sections + performance sections
    • Claude reads the dynamically assembled template
    • Claude analyzes the codebase and generates a comprehensive technology-specific report

Example 2: Enhanced Bug Analysis

  1. User Prompt: "Analyze this critical security bug in React application"
  2. Claude Desktop Action:
    • Calls the bug-analysis-prompt with technology_stack: "react", severity_level: "critical", and bug_type: "security"
    • System assembles: base prompt + React module + security module + critical severity module
    • Template includes: general sections + React-specific + security-specific + critical-severity sections
    • Claude reads the bug analysis template
    • Claude analyzes the bug and generates a comprehensive technology and severity-specific report

Example 3: PRD Generation with Technology Support

  1. User Prompt: "Help me create a PRD for a React-based task management application"
  2. Claude Desktop Action:
    • Calls the prd-prompt with project details and technology_stack: "react"
    • System assembles: base prompt + React module
    • Template builder includes: base PRD template + React-specific considerations
    • Claude reads the technology-enhanced PRD template
    • Claude generates a comprehensive PRD with React-specific sections

Prompt Details

PRD Prompt

  • Name: prd-prompt
  • Arguments:
    • project_name (required): Name of the software project
    • project_description (required): Brief description of the project
    • target_audience (optional): Target audience for the product (enum values)
    • project_type (optional): Type of project (enum values)
    • key_features (optional): Key features to include in the PRD
    • technology_stack (optional): Technology stack to be used (enum values)
    • custom_instructions (optional): Custom instructions for PRD generation

Codebase Analysis Prompt

  • Name: codebase-analysis-prompt
  • Arguments:
    • repository_path (required): Path to the repository to analyze
    • technology_stack (required): Technology stack used in the codebase (enum values)
    • analysis_focus (optional): Focus areas for analysis (enum values)
    • custom_instructions (optional): Custom instructions for codebase analysis

Bug Analysis Prompt

  • Name: bug-analysis-prompt
  • Arguments:
    • repository_path (required): Path to the repository with bugs to analyze
    • bug_description (required): Description of the bug or issue to analyze
    • affected_components (optional): Components affected by the bug
    • severity_level (optional): Severity level of the bug (enum values)
    • bug_type (optional): Type of bug (enum values)
    • technology_stack (optional): Technology stack used in the affected components (enum values)
    • custom_instructions (optional): Custom instructions for bug analysis

Resource Details

PRD Template

  • URI: resource://prd-template
  • Format: Markdown
  • Content: Modular PRD template with technology-specific sections that dynamically assemble based on input parameters

Codebase Analysis Template

  • URI: resource://codebase-analysis-template
  • Format: Markdown
  • Content: Modular codebase analysis template with technology and focus-specific sections that assemble based on analysis parameters

Bug Analysis Template

  • URI: resource://bug-analysis-template
  • Format: Markdown
  • Content: Modular bug analysis template with severity and technology-specific sections that assemble based on bug parameters

Development

Project Structure

src/
├── server.ts                    # Main MCP server implementation
├── types/
│   ├── enums.ts                 # All enum definitions (31 tech + 10 focus)
│   └── index.ts                 # Type definitions and exports
├── prompts/
│   ├── modules/                 # 45 modular prompt components
│   │   ├── technology/          # 31 technology-specific modules
│   │   │   ├── languages/       # 11 language modules
│   │   │   ├── runtimes/        # 1 runtime module
│   │   │   ├── frameworks/      # 10 framework modules (3 frontend, 7 backend)
│   │   │   ├── databases/       # 4 database modules
│   │   │   ├── cloud/           # 3 cloud platform modules
│   │   │   └── tools/           # 2 DevOps tool modules
│   │   ├── analysis-focus/      # 10 focus-area modules
│   │   └── bug-severity/        # 4 severity-specific modules
│   ├── base-prompts/            # Base prompt templates
│   └── prompt-builder.ts        # Programmatic prompt assembly
├── resources/
│   ├── templates/               # Modular template components
│   │   ├── prd/                 # 10 PRD template modules
│   │   ├── codebase-analysis/   # 8 codebase analysis modules
│   │   └── bug-analysis/        # 4 bug analysis modules
│   └── template-builder.ts      # Programmatic template assembly
└── __tests__/                   # Comprehensive test suite (66 tests)
    ├── utils/                   # Utility function tests (enum parser)
    ├── prompts/                 # Prompt builder tests
    ├── resources/               # Template builder tests
    └── types/                   # Enum and type tests

Testing

The project includes a comprehensive test suite with 88% coverage:

# Run all tests
npm test

# Run tests in watch mode
npm run test:watch

# Run tests with coverage report
npm run test:coverage

# Run tests with interactive UI
npm run test:ui

# Test MCP integration
npm run test:mcp

Test Statistics:

  • 66 tests (100% passing)
  • 88.48% overall coverage
  • Statement coverage: 88.48%
  • Line coverage: 88.70%

Building for Production

npm run build

Linting

npm run lint

Extending the System

Adding New Technology Modules

  1. Add the technology to the TechnologyStack enum in src/types/enums.ts
  2. Create a new module file in the appropriate category:
    • Languages: src/prompts/modules/technology/languages/
    • Frameworks: src/prompts/modules/technology/frameworks/frontend/ or backend/
    • Databases: src/prompts/modules/technology/databases/
    • Cloud: src/prompts/modules/technology/cloud/
    • Tools: src/prompts/modules/technology/tools/
  3. Implement the TechnologyPromptModule interface
  4. Export from the category's index.ts
  5. Register it in prompt-builder.ts
  6. Add corresponding template sections in src/resources/templates/
  7. Write tests in src/__tests__/

Adding New Focus Areas

  1. Add the focus area to the AnalysisFocus enum in src/types/enums.ts
  2. Create a new module file in src/prompts/modules/analysis-focus/
  3. Implement the AnalysisFocusPromptModule interface
  4. Export from analysis-focus/index.ts
  5. Register it in prompt-builder.ts
  6. Add corresponding template sections
  7. Write tests

Adding New Severity Levels

  1. Add the severity to the BugSeverity enum in src/types/enums.ts
  2. Create a new module file in src/prompts/modules/bug-severity/
  3. Implement the BugSeverityPromptModule interface
  4. Register it in the prompt builder
  5. Add corresponding template sections
  6. Write tests

Contributing

Contributions are welcome! Please follow these guidelines:

  • Fork the repository and create a feature branch
  • Follow existing code patterns and maintain test coverage above 85%
  • Use Conventional Commits format (feat, fix, docs, test, chore)
  • Ensure all tests pass before submitting a pull request
  • See Extending the System for adding new modules

Report issues on GitHub Issues with clear reproduction steps.

License

This project is licensed under the MIT License - see LICENSE file for details.

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Categories
AI & LLM Tools
Registryactive
Package@n0zer0d4y/mercury-spec-ops
TransportSTDIO
UpdatedNov 14, 2025
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