Server data from the Official MCP Registry
Review markdown plans before AI agents build. Annotate, gate-check, apply fixes, session handoffs.
Review markdown plans before AI agents build. Annotate, gate-check, apply fixes, session handoffs.
Valid MCP server (1 strong, 2 medium validity signals). No known CVEs in dependencies. ⚠️ Package registry links to a different repository than scanned source. Imported from the Official MCP Registry. 1 finding(s) downgraded by scanner intelligence.
8 files analyzed · 1 issue found
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Add this to your MCP configuration file:
{
"mcpServers": {
"io-github-yeominux-md-feedback": {
"args": [
"-y",
"md-feedback"
],
"command": "npx"
}
}
}From the project's GitHub README.
Review your plan. Guide your AI agent. Ship with confidence.
MD Feedback is a VS Code extension and MCP server for reviewing markdown plans before AI agents implement them. Annotate plans with Fix, Question, and Highlight — AI agents read your structured feedback directly through MCP. No copy-paste, no export step, no context lost between sessions.
Install from VS Code Marketplace, open a .md plan, select text, press 1/2/3, and your agent can act on that review immediately.
You review. The agent builds. Gates track completion. Handoffs preserve context.

Latest (v1.5.7): Web UI for
npx md-feedback— open your markdown workspace in any browser.
From plan to implementation, the complete AI coding loop:
Step 1 YOU Write a plan in markdown
│
Step 2 YOU Open in MD Feedback sidebar → highlight, fix, question
│ (press 1, 2, or 3)
│
Step 3 AGENT Reads annotations via MCP — no export step needed
│
Step 4 AGENT Implements fixes, answers questions
│
Step 5 YOU Review AI work → Approve, Request Changes, or Reject
│
Step 6 AGENT Gates auto-evaluate
│ "3 fixes remaining" → "All done, ready to merge"
│
Step 7 AGENT Generates handoff → next session picks up where you left off
You do steps 1–2 and 5. The agent does the rest.
This is the MCP-first path. If you use export-based workflow, run export after step 2.
1 (highlight), 2 (fix), 3 (question)Connect AI in the sidebar and add config to your MCP client:{ "mcpServers": { "md-feedback": { "command": "npx", "args": ["-y", "md-feedback"] } } }
Node.js 18+ required for MCP (
npx). Claude path:.claude/mcp.json
Cursor path:.cursor/mcp.json
Try it now: Install from Marketplace, open any
.mdfile, and press2to add your first Fix annotation.
Write a plan in markdown. Review it with MD Feedback. Let your AI agent build exactly what you reviewed. The plan is the contract — annotations are the instructions.
An AI agent generates an implementation plan. You review it with highlights, fixes, and questions before the agent writes any code. Catch errors at design time, not after implementation.
Working with AI across multiple sessions? Handoffs preserve every decision, open question, and key context point. The next session starts where the last one ended.
Annotations are HTML comments in the markdown file. They survive git commits, PRs, and branch merges. Share reviewed plans with your team through your normal version control workflow.
Set conditions that must be met before the agent proceeds. Gates auto-evaluate based on annotation resolution status — blocked, proceed, or done.
You can customize MD Feedback from VS Code Settings via md-feedback.*.
Advanced timing and performance tuning options are available for large workspaces.
MD Feedback includes an MCP server with 27 tools that let AI agents read your annotations without manual export. Agents can query memos, mark tasks done, apply fixes, check gate status, and generate handoffs — all through the Model Context Protocol.
Setup:
npx md-feedback
Workspace override — if your MCP client doesn't set cwd to the project folder (e.g. Antigravity), specify it explicitly:
{ "command": "npx", "args": ["-y", "md-feedback", "--workspace=/path/to/project"] }
Windows example: { "command": "npx", "args": ["-y", "md-feedback", "--workspace=C:\\\\work\\\\my-project"] }
Or via environment variable: MD_FEEDBACK_WORKSPACE=/path/to/project
For full details, see MCP Server documentation.
SUL-1.0 — Free for personal and non-commercial use.
What is MD Feedback? MD Feedback is a VS Code extension and MCP server for reviewing markdown plans before AI agents implement them. Select text, press 1 (highlight), 2 (fix), or 3 (question) — annotations are stored as portable HTML comments in the markdown file itself. AI agents read annotations directly via MCP, or you can export to 11 AI tools.
Does it work with Claude Code / Cursor / Copilot?
Yes. MD Feedback exports to Claude Code (CLAUDE.md), Cursor (.cursor/rules/), GitHub Copilot (.github/copilot-instructions.md), and 8 more tools. With MCP, agents read annotations directly — no export step needed.
What is MCP and why does it matter? MCP (Model Context Protocol) lets AI agents interact with external tools. MD Feedback's MCP server gives agents direct access to your annotations, so they can read feedback, mark tasks done, evaluate gates, and generate handoffs automatically. For example, when you mark a section as "Fix: use retry logic here," the agent reads that annotation via MCP, implements the fix, and marks it done — all without you switching tabs.
Can multiple people review the same plan? Yes. Annotations are HTML comments embedded in the markdown file. They travel with the file through git — commits, branches, pull requests, and merges all preserve annotations intact.
Is it free? Yes. MD Feedback is free for personal and non-commercial use under the SUL-1.0 license.
Who is this for? Developers using AI coding assistants who want to review plans before implementation, preserve context across sessions, and give agents structured feedback instead of unstructured chat messages.
More questions and advanced guidance: MCP Server docs and GitHub Issues.
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