Scope Guard
@dgtalquantumleap-ai
关于 Scope Guard
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概览
What is Scope Guard?
Scope Guard is an MCP server from the Signova platform that detects scope creep and generates change orders. It is designed for AI agents such as Claude Desktop and Cursor, and is one of three first-party MCP servers published by Signova alongside legal-docs and insights.
How to use Scope Guard?
Use Scope Guard as an MCP server with compatible AI agents. It is published independently and can be installed via npm, the MCP Registry, Smithery, or Glama. The server has its own package.json, server.json, and Dockerfile under mcp-servers/scope-guard/.
Key features of Scope Guard
- Scope-creep detection for projects and contracts
- Change-order generation based on detected changes
- Integration with AI assistants (Claude Desktop, Cursor)
- Published as a reusable, standalone MCP server
Use cases of Scope Guard
- Freelancers tracking project scope changes and automating change orders
- Agencies managing contract modifications with AI assistance
- Small businesses ensuring legal protection against scope creep
FAQ from Scope Guard
What runtime does Scope Guard require?
Scope Guard runs on Node.js (ESM), consistent with the Signova platform’s tech stack.
How is Scope Guard published and available?
It is published to npm, the MCP Registry, Smithery, and Glama via its own package.json, server.json, and Dockerfile.
Does
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