agent-intel-mcp
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@agent-intel-mcpanalyze my local repo and suggest AGENTS.md improvements"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
agent-intel-mcp
agent-intel-mcp is an OpenAI-powered developer intelligence MCP server. It scans high-signal GitHub repositories, extracts reusable agent-engineering patterns, clusters them, compares them against a local codebase, and proposes safe AGENTS.md improvements.
This version moves beyond a thin MVP:
Deep local codebase scanning with conventions and gap detection
OpenAI
Responses APIfor suggestion synthesisOpenAI embeddings for pattern clustering with heuristic fallback
MCP stdio server with tools, resources, and prompts
GitHub repository scanning with relevance scoring
AGENTS.mdpatch preview generationSQLite-backed local memory for scans, clusters, suggestions, and dashboard history
CI, release, and deploy scaffolding for portfolio-ready delivery
What This Project Proves
OpenAI integration beyond chat wrappers
MCP server design for agent clients
GitHub mining and local repo analysis in one workflow
safe patch generation instead of blind repository mutation
TypeScript developer tooling with tests, CI, and release scaffolding
Related MCP server: codeweave-mcp
Demo Preview


Architecture
+---------------------------------------------------------------+
| agent-intel-mcp |
| |
| MCP Server (stdio) |
| |- Tools: scan, extract, cluster, analyze, suggest, patch |
| |- Resources: scans, patterns, clusters, local profile, patch|
| `- Prompts: summary, AGENTS rewrite |
| |
| Core Engine |
| |- GithubScanner -> Octokit search + README fetch |
| |- PatternExtractor -> heuristic pattern mining |
| |- PatternClusterer -> embeddings / cosine clustering |
| |- LocalRepoProfiler -> codebase conventions + gaps |
| |- OpenAiSuggestionEngine -> Responses API / heuristic mode |
| |- PatchBuilder -> non-destructive AGENTS diff |
| `- SqliteStore -> scans, patterns, clusters |
+---------------------------------------------------------------+More detail: docs/ARCHITECTURE.md Case study: docs/CASE_STUDY.md
Tools
scan_github_reposextract_patternscluster_patternsanalyze_local_repogenerate_suggestionsgenerate_agents_patch
Quick Start
npm install
cp .env.example .env
npm run build
npm test
npm run demo:seed
npm run demoOpen http://localhost:4321.
Run With .env
Create a local .env in the project root:
OPENAI_API_KEY=sk-...
GITHUB_TOKEN=ghp_...
LOCAL_REPO_PATH=C:\Users\syfsy\projekty\agent-intel-mcpThen run:
npm install
npm run build
npm run demoUse .env when you want real OpenAI-backed suggestions or a different local repository target.
Run Demo Against Another Repo
PowerShell example:
$env:LOCAL_REPO_PATH="C:\Users\syfsy\projekty\some-other-repo"
npm run demoOr put that path into .env:
LOCAL_REPO_PATH=C:\Users\syfsy\projekty\some-other-repoWhat changes in this mode:
local stack analysis points at the other repo
detected gaps and conventions come from the other repo
generated
AGENTS.mdpatch is tailored to the other repo
Connect As An MCP Server
Build first:
npm install
npm run buildThen add it to your MCP client config:
{
"mcpServers": {
"agent-intel": {
"command": "node",
"args": ["C:/Users/syfsy/projekty/agent-intel-mcp/dist/index.js"],
"env": {
"OPENAI_API_KEY": "sk-...",
"GITHUB_TOKEN": "ghp_...",
"LOCAL_REPO_PATH": "C:/Users/syfsy/projekty/agent-intel-mcp"
}
}
}
}After restart, the MCP client will see these tools:
scan_github_reposextract_patternscluster_patternsanalyze_local_repogenerate_suggestionsgenerate_agents_patch
Environment
Variable | Default | Description |
| unset | Enables model-backed suggestions and embeddings |
|
| OpenAI model used for suggestion generation |
|
| Model used for pattern clustering |
| unset | Raises GitHub API limits and private-org access |
|
| Cosine threshold for embedding-based clusters |
|
| Repository profiled for AGENTS.md suggestions |
|
| SQLite and cached outputs |
Demo UX
Local dashboard served from
http://localhost:4321Real pipeline trigger: fresh scan, clustering, local gap analysis, patch preview, and history charts
Seeded portfolio state via
npm run demo:seedSafe patch preview keeps suggested
AGENTS.mdchanges reviewable before any adoptionFrontend files: public/index.html, public/styles.css, public/app.js
Release Readiness
CI: ci.yml
Tagged release publishing: release.yml
Package validation:
npm run release:check
Deploy Preview
The repo ships with Docker and Render scaffolding:
Recommended path:
Push the repo to GitHub.
Create a Render web service from the repo.
Add
OPENAI_API_KEYandGITHUB_TOKENif you want live model-backed scans.Use
/healthzas the health check.Deploy and open the generated public URL as the portfolio preview.
Why OpenAI Here
This implementation uses the OpenAI Responses API for suggestion synthesis and the embeddings API for semantic clustering. Current official docs also describe tool-driven workflows and remote MCP support: Using tools and Developer quickstart.
This server cannot be installed
Maintenance
Resources
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Looking for Admin?
If you are the server author, to access and configure the admin panel.
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