Skip to content

barateza/mcp-plesk-dev-docs

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

283 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

mcp-plesk-dev-docs

Python 3.12+ PyPI Version PyPI Downloads MCP Registry License: MIT MCP Compatible Code style: black Ruff MCP Badge

Note

This MCP server provides unified documentation search for extension developers. If you are looking to manage your live Plesk server via AI, please see the official Plesk MCP Server.

State-of-the-Art (SOTA) semantic search across the entire Plesk documentation surface, optimized for sub-second latency on Apple Silicon.


Why this exists

Plesk documentation is spread across five separate sources: an admin guide, a REST API reference, a CLI reference, a PHP SDK, and a JS SDK. Answering a single extension development question often means searching all of them manually, cross-referencing results, and still missing the relevant section.

This server ingests all five sources, embeds them with a multilingual model, and exposes a single search_plesk_unified MCP tool. It uses hybrid search (Vector + FTS), Reciprocal Rank Fusion (RRF), and Cross-Encoder reranking to deliver high-precision results in milliseconds.


Architecture & Performance

flowchart TD
    Client["MCP Client\n(Claude Desktop / Cursor / etc.)"]

    Client -->|"search_plesk_unified(query)"| Server

    subgraph Server["FastMCP Server · Modular Architecture"]
        direction TB
        Main["Bootstrap · server/main.py"]
        Life["Lifecycle Hooks · server/lifecycle.py"]
        Tools["MCP Tools · server/mcp_app.py"]

        Main --> Life --> Tools
    end

    subgraph Pipeline["Retrieval Pipeline"]
        direction TB
        E["1 · Embed query\n(Hardware-accelerated)"]
        S["2 · Hybrid Search\nVector (LanceDB) + FTS (Tantivy)"]
        R["3 · RRF Merge + Rerank\n(MiniLM-L4-v2)"]
        N["4 · Neighbor Expansion\n(Context Enrichment)"]
        A["5 · AI Synthesis\n(sampling-enabled)"]
        E --> S --> R --> N --> A
    end

    subgraph Store["LanceDB Vector & FTS Store"]
        direction LR
        G["Guide"]
        A_["API"]
        C["CLI"]
        P["PHP Stubs"]
        J["JS SDK"]
    end

    Tools --> Pipeline
    S <--> Store
Loading

Performance Benchmarks (2026-05-04)

Optimized for Apple Silicon (M2/M3) using MPS acceleration and memory-resident table caching.

Profile Embed Model HR@5 MRR@5 Avg Latency Est. RAM
light BAAI/bge-small 100.0% 0.917 1.007 s ~200 MB
medium BAAI/bge-base 100.0% 0.917 ~0.60s ~600 MB
full-tq BAAI/bge-m3 75.0% 0.750 ~0.40s ~1300 MB

Metrics measured on Apple M2 Pro with LanceDB connection caching enabled.


Key Features

  • Single-Instance Lock: PID-based lock prevents concurrent LanceDB access when multiple MCP clients or IDE sessions try to launch the server simultaneously.
  • Sub-Second Hybrid Search: Combined Vector + Tantivy FTS with RAM-cached table connections for instant retrieval.
  • AST-Aware Chunking: Uses tree-sitter to respect class and method boundaries in PHP, JS, and TS documentation.
  • TurboQuant Acceleration: Fast 4-bit quantized search for the full-tq profile, delivering 10x lower latency for large models.
  • Neighborhood Retrieval: Automatically fetches adjacent chunks (prev/next) to provide complete context for grounding.
  • Macro-Context Summaries: Injects file-level purpose summaries into every chunk using the SummaryCache.
  • AI-Synthesized Answers: Generates concise answers from search results with structured inline citations [1], [2].

MCP Components

This server provides tools, prompts, and resources. See docs/mcp-components.md for a full reference.

Primary Tools

Tool Description
search_plesk_unified Hybrid search with RRF and Cross-Encoder reranking.
get_file_content Retrieve the full content of a specific documentation file.
resolve_references Find all files referencing a specific symbol or topic.
refresh_knowledge Re-fetch sources and update the index (incremental).
trigger_index_sync Start a background indexing job.
daemon_health Check readiness, hardware acceleration (MPS/CUDA), and latency stats.

Resources

  • plesk://toc/api - Table of Contents for API documentation.
  • plesk://toc/cli - Table of Contents for CLI reference.
  • plesk://toc/guide - Table of Contents for Extensions Guide.
  • plesk://toc/php-stubs - Hierarchical list of PHP classes.

🚀 Installation & Setup

Because this server is published to PyPI and listed on the MCP Registry, you don't even need to clone the repository to run it!

Option 1: Run instantly via uvx (Recommended)

You can run or integrate the server in seconds.

1. Add to Claude Desktop

Add the server config to your claude_desktop_config.json (typically at ~/Library/Application Support/Claude/claude_desktop_config.json on macOS, or %APPDATA%\Claude\claude_desktop_config.json on Windows):

{
  "mcpServers": {
    "plesk-dev-docs": {
      "command": "uvx",
      "args": ["mcp-plesk-dev-docs"]
    }
  }
}

2. Configure in Cursor

Go to Settings > Features > MCP, click + Add New MCP Server:

  • Name: plesk-dev-docs
  • Type: command
  • Command: uvx mcp-plesk-dev-docs

Option 2: Local Developer Setup (Manual Build)

If you want to modify the source code, run benchmarks, or manage database migrations:

Quick bootstrap (recommended):

git clone https://github.com/barateza/mcp-plesk-dev-docs.git
cd mcp-plesk-dev-docs
./install.sh          # Linux / macOS
# powershell -ExecutionPolicy Bypass -File install.ps1   # Windows

Manual setup:

git clone https://github.com/barateza/mcp-plesk-dev-docs.git
cd mcp-plesk-dev-docs
uv pip install -e ".[dev]"
  1. Run Initial Indexing: Generate the offline vector database and full-text search indexes:

    uv run python -m mcp_plesk_dev_docs.server.main refresh_knowledge
  2. Start the Server:

    uv run python -m mcp_plesk_dev_docs.server.main

Configuration

Set environment variables in .env:

PLESK_MODEL_PROFILE=light       # light | medium | full-tq
PLESK_ENABLE_SAMPLING=true     # AI-Synthesized answers
PLESK_DAEMON_AUTO_WARMUP=true  # Preload models on startup
PLESK_INDEX_SUMMARIES=true     # Enable file-level summaries
OPENROUTER_API_KEY=sk-or-v1-...

Documentation


License

MIT. See LICENSE.

Ownership & Disclaimer

This is a personal project by Gilson Siqueira. It is not officially affiliated with, endorsed by, or supported by Plesk or WebPros International GmbH. Plesk is a trademark of WebPros International GmbH.

Important notice about Plesk-owned deliverables

Portions of this repository were developed under contract for Plesk International GmbH ("Plesk") only if specifically identified as such. The MIT license above applies only to material the repository owner is authorized to license. Files or directories owned by Plesk, if any, are listed in NOTICE. If you need assurance about licensing for a particular file, contact Plesk or seek legal counsel before relying on the MIT License for Plesk-owned files.


Built to make Plesk extension development faster.

About

A unified MCP server that indexes and retrieves Plesk documentation using vector embeddings and semantic search with reranking.

Topics

Resources

License

Contributing

Security policy

Stars

Watchers

Forks

Contributors

Languages