ToolPiper

ToolPiper

300+ MCP tools for macOS, all on-device — local AI inference (llama.cpp on Metal), voice, vision OCR, local RAG, browser automation, and ~140 system actions across 26 macOS domains. Nothing leaves your Mac.

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README

ToolPiper — MCP Server for macOS

300+ Model Context Protocol tools, all running on-device. ToolPiper is a native macOS app that turns your Mac into a local AI platform: bundled inference (llama.cpp on Metal, Apple Intelligence, voice on the Neural Engine), an OpenAI-compatible API at localhost:9998, and a built-in MCP server that exposes the whole machine to any MCP client — Claude Code, Cursor, Windsurf, or your own scripts.

No cloud. No Docker. No Python. No API keys. Nothing leaves your Mac, and you can verify that yourself: lsof -i -P | grep ToolPiper while it runs.

  • Website: https://modelpiper.com/toolpiper
  • Download: https://modelpiper.com (free — the full local model runner has no caps and needs no account)
  • Docs: https://modelpiper.com/docs/toolpiper
  • Community: https://github.com/ModelPiper/modelpiper-community

This repository is the official home for ToolPiper's MCP server manifest, setup guides, and recipes. The ToolPiper app itself is not open source — but its privacy claims don't ask for trust: every byte of network traffic is observable on your own machine. Open-source siblings live in this org: PiperSR (ANE super-resolution model), FluidAudio, mlx-audio-swift.

Quick start

Install ToolPiper from modelpiper.com, launch it once, then connect any MCP client.

Streamable HTTP (zero config — loopback connections need no auth):

claude mcp add --transport http toolpiper http://127.0.0.1:9998/mcp
{
  "mcpServers": {
    "toolpiper": { "type": "http", "url": "http://127.0.0.1:9998/mcp" }
  }
}

stdio (the ~/.toolpiper/mcp symlink is created automatically on launch):

claude mcp add toolpiper -- ~/.toolpiper/mcp
{
  "mcpServers": {
    "toolpiper": { "type": "stdio", "command": "/Users/<you>/.toolpiper/mcp" }
  }
}

What's in the catalog

300+ tools, 5 resources, and 5 workflow prompts. Names follow <category>_<action> (vision_ocr, system_window_snap, browser_assert). The full catalog ships names-only on the wire (~24 KB), so it fits under Claude Code's per-server payload cap without trimming.

Category Examples What it covers
Core AI chat, audio_transcribe, audio_speak, text_embed Local LLM inference, speech-to-text and text-to-speech on the Neural Engine, embeddings
Apple frameworks + RAG vision_ocr, image_analyze, text_analyze, rag_query Apple Vision OCR, 11 vision endpoints, 6 NLP endpoints, hybrid HNSW + BM25 document search
Browser automation browser_snapshot, browser_action, browser_assert, browser_intercept Chrome via CDP: AX-tree snapshots, self-healing selectors, network mocking, Web Vitals, coverage
Testing test_run, test_save, test_export Saved browser test sessions, ~10–50 ms/step replay, Playwright/Cypress export
System actions system_* — ~140 tools across 26 macOS domains Windows, Spaces, clipboard (with OCR'd history), audio, displays, Finder, Calendar, Reminders, Contacts, notifications, processes, network, Bluetooth, Shortcuts, and more
Video creator video_record, video_render, video_edit_timeline Screen-recorded screenplays, non-destructive timeline editing, OTIO/FCP XML/EDL export
Outreach hn_search, reddit_search, github_compare, gsc_analytics HN, Reddit, GitHub, Google Search Console
Model management model_search, model_download, model_load Search HuggingFace, download GGUF/CoreML, load/unload
Routing + integrations endpoint_set, endpoint_recommend, claude_code_install Switch inference endpoints per session, Claude Code helper install

Resources: toolpiper://status, toolpiper://models, toolpiper://backends, toolpiper://tests, toolpiper://categories Prompts: setup-model, audit-page, create-test, voice-over, research-topic

Category filtering (stdio)

Don't want all 300 tools in context? Filter at connect time — both the tool list and the server instructions trim to match:

# Just LLM inference (11 tools)
claude mcp add toolpiper -- ~/.toolpiper/mcp --category core

# Web dev workflow (34 tools)
claude mcp add toolpiper -- ~/.toolpiper/mcp --profile automation

Transports

Transport Endpoint Auth
Streamable HTTP POST http://127.0.0.1:9998/mcp (+ GET /mcp SSE channel for tools/list_changed) None for loopback peers — enforced at the kernel socket, so Host/Origin spoofing can't widen it. LAN/remote peers require Authorization: Bearer.
stdio ~/.toolpiper/mcp Reads the local ambient token automatically

Privacy

ToolPiper never calls out. No telemetry, no analytics, no crash uploads, no account requirement. The only network traffic is the traffic you ask for (model downloads from HuggingFace, tools that explicitly target the web). This is a property you can check, not a policy you have to trust:

lsof -i -P | grep ToolPiper

Requirements & pricing

  • macOS on Apple Silicon
  • Free: the full local model runner — no caps, no account
  • Pro ($10/mo): all 9 inference backends, full voice suite, and more — see pricing

FAQ

Is this the same as "ToolPipe"? No. ToolPiper (this page, modelpiper.com) is the macOS MCP server by ModelPiper. Unrelated projects with similar names exist in some directories.

What does the MIT license in this repo cover? The contents of this repository — the server manifest, setup guides, and recipes. The ToolPiper app itself is proprietary (free tier + Pro).

Does it work without an internet connection? Yes — inference, voice, vision, RAG, and system tools are all on-device. You only need the network to download models.

Can other machines connect? Loopback is zero-config. LAN/remote access goes through bearer-token auth.

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