NetMCP

NetMCP

Enables AI-powered optimization of Linux network performance through natural language commands, with tools for discovery, planning, validation, and safe execution.

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README

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🌐 NetMCP

AI-Powered Linux Network Optimization via Model Context Protocol

Python 3.10+ MCP Linux License: MIT Live on FastMCP

Transform natural language into optimized network configurations

🔴 Live Server · Getting Started · Features · Profiles · Architecture · Tools

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🔴 Live Server

NetMCP is live in production on FastMCP Cloud! Connect your MCP client to:

https://netmcp.fastmcp.app/mcp

No installation required—just point your AI assistant to the hosted server and start optimizing.


🎯 Overview

NetMCP is an MCP server that enables AI assistants like Claude to intelligently optimize Linux network performance. It bridges the gap between high-level optimization goals ("optimize my network for gaming") and low-level Linux commands (sysctl, tc, nft).

┌──────────────────┐      ┌──────────────────┐      ┌──────────────────┐
│   AI Assistant   │ MCP  │     NetMCP       │      │   Linux Kernel   │
│   (Claude, etc)  │◄────►│   Server         │─────►│   Network Stack  │
└──────────────────┘      └──────────────────┘      └──────────────────┘
         ▲                         │
         │                         ▼
    Natural Language        29 Config Cards
    "Reduce my latency"     5 Profiles
                            40+ Tools

✨ Why NetMCP?

Traditional Approach With NetMCP
Manual sysctl tuning Declarative optimization plans
Copy-paste commands from forums Research-backed profiles
No rollback on failure Automatic checkpoints & rollback
Trial and error Validated against safety policies
Root access chaos Controlled privileged execution

🚀 Getting Started

Prerequisites

  • Linux (Ubuntu 20.04+, Debian 11+, or similar)
  • Python 3.10+
  • Network tools: ip, sysctl, tc, nft

Installation

git clone https://github.com/SurriyaGokul/mcp-net-optimizer.git
cd mcp-net-optimizer

python -m venv .venv && source .venv/bin/activate
pip install -r requirements.txt

# Enable privileged commands (one-time setup)
./setup_sudo.sh

Configure with Claude Desktop

Add to your claude_desktop_config.json:

{
  "mcpServers": {
    "netmcp": {
      "command": "python",
      "args": ["-m", "server.main"],
      "cwd": "/path/to/mcp-net-optimizer"
    }
  }
}

Run Standalone

python -m server.main

⚡ Features

<table> <tr> <td width="50%">

🎴 29 Configuration Cards

Full coverage of the Linux networking stack:

  • 16 Sysctl cards — TCP tuning, buffers, congestion control
  • 8 Traffic Control cards — QoS, shaping, queuing
  • 5 Firewall cards — Rate limiting, connection tracking, NAT

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🛡️ Enterprise Safety

Production-ready security features:

  • Command allowlisting — Only approved binaries execute
  • Automatic checkpoints — Snapshot before every change
  • Instant rollback — One command to restore state
  • Audit logging — Complete execution history

</td> </tr> <tr> <td>

🔧 40+ MCP Tools

Comprehensive network management:

  • Discovery — Interfaces, routes, DNS, latency tests
  • Planning — Type-safe optimization plans
  • Validation — Policy enforcement before execution
  • Execution — Atomic apply with rollback
  • Benchmarking — Before/after performance comparison

</td> <td>

🔐 Sudo Management

Flexible privilege escalation:

  • Passwordless setup — Run ./setup_sudo.sh once
  • Cached credentials — Authenticate once, cached 15 min
  • MCP toolscheck_sudo_access, request_sudo_access
  • Secure by default — Only allowlisted commands

</td> </tr> </table>


🎮 Optimization Profiles

Five research-backed profiles optimized for specific workloads:

Profile Focus Key Optimizations Target Metrics
🎮 Gaming Ultra-low latency BBR, tcp_low_latency, fq qdisc <20ms p95, <5ms jitter
📺 Streaming Max throughput Large buffers, BBR, HTB shaping 90%+ link utilization
📞 Video Calls Balanced DSCP marking, moderate buffers <150ms latency (ITU-T)
📦 Bulk Transfer Maximum bandwidth 128MB buffers, aggressive BBR >1Gbps sustained
🖥️ Server High concurrency SYN cookies, conntrack, rate limits 10K+ connections

Example: Gaming Optimization

plan = {
    "iface": "eth0",
    "profile": "gaming",
    "changes": {
        "sysctl": {
            "net.ipv4.tcp_congestion_control": "bbr",
            "net.ipv4.tcp_low_latency": "1",
            "net.core.default_qdisc": "fq"
        },
        "qdisc": {"type": "fq"}
    }
}

🏗️ Architecture

Pipeline Flow

  DISCOVER          PLAN            VALIDATE         RENDER           APPLY
 ┌─────────┐    ┌─────────┐      ┌─────────┐     ┌─────────┐     ┌─────────┐
 │ Inspect │───►│ Declare │─────►│ Check   │────►│Generate │────►│ Execute │
 │ System  │    │ Intent  │      │ Policies│     │Commands │     │ Safely  │
 └─────────┘    └─────────┘      └─────────┘     └─────────┘     └─────────┘
      │              │                │               │               │
   30+ tools    Pydantic         Policy YAML      sysctl/tc/     Checkpoint
   No side      schemas          validation       nft scripts    + Rollback
   effects

Project Structure

mcp-net-optimizer/
├── server/
│   ├── main.py              # MCP server entry point
│   ├── registry.py          # Tool & resource registration
│   ├── schema/models.py     # Pydantic data models
│   └── tools/
│       ├── discovery.py     # 30+ system inspection tools
│       ├── planner.py       # Plan → Commands renderer
│       ├── validator.py     # Policy validation
│       ├── validation_engine.py  # Before/after comparison
│       ├── validation_metrics.py # Network benchmarks
│       ├── audit_log.py     # Execution logging
│       ├── apply/           # Command executors
│       │   ├── apply.py     # Orchestration + rollback
│       │   ├── checkpoints.py
│       │   ├── sysctl.py
│       │   ├── tc.py
│       │   └── nft.py
│       └── util/
│           ├── shell.py     # Safe command execution
│           └── policy_loader.py
├── policy/
│   ├── config_cards/        # 29 YAML card definitions
│   ├── profiles.yaml        # 5 optimization profiles
│   └── validation_limits.yaml
└── setup_sudo.sh            # Passwordless sudo setup

🔧 MCP Tools

Discovery (No Side Effects)

Tool Description
ip_info Network interfaces and addresses
ip_route Routing table
ping_host ICMP latency test
traceroute Network path analysis
tc_qdisc_show Traffic control status
nft_list_ruleset Firewall rules
ss_summary Socket statistics

Planning & Validation

Tool Description
validate_change_plan_tool Validate plan against policies
render_change_plan_tool Convert plan to executable commands
test_network_performance_tool Run comprehensive benchmarks
validate_configuration_changes_tool Compare before/after results

Execution & Safety

Tool Description
apply_rendered_plan_tool Execute with checkpoint + rollback
snapshot_checkpoint_tool Manual checkpoint creation
rollback_to_checkpoint_tool Restore previous state
list_checkpoints_tool View available checkpoints

Privilege Management

Tool Description
check_sudo_access_tool Check if sudo is available
request_sudo_access_tool Authenticate for temporary access
get_sudo_setup_instructions_tool Setup help

📊 Benchmarking & Validation

NetMCP includes a complete validation pipeline to measure optimization impact:

# 1. Run baseline benchmark
before = test_network_performance_tool(profile="gaming")

# 2. Apply optimizations
apply_rendered_plan_tool(rendered_plan)

# 3. Run post-optimization benchmark  
after = test_network_performance_tool(profile="gaming")

# 4. Compare and validate
result = validate_configuration_changes_tool(before, after, "gaming")
# → {"decision": "KEEP", "score": 75, "summary": "Latency improved 15%"}

Validation Decisions

Score Decision Action
≥60 KEEP Changes improved performance
20-59 UNCERTAIN Mixed results, review recommended
<20 ROLLBACK Performance degraded, auto-rollback available

🔒 Security Model

Command Allowlisting

Only explicitly approved binaries can execute:

# server/config/allowlist.yaml
binaries:
  - /usr/sbin/sysctl
  - /usr/sbin/tc
  - /usr/sbin/nft
  - /usr/bin/ping
  - /usr/bin/iperf3
  # ... etc

Privilege Escalation

Three options for sudo access:

  1. Permanent (Recommended): Run ./setup_sudo.sh — configures passwordless sudo for network commands only
  2. Session-based: Use request_sudo_access_tool(password="...") — caches for 15 minutes
  3. Manual: Run sudo -v in terminal before using MCP

📈 Performance Results

Real-world improvements measured across profiles:

Profile Metric Improvement
Gaming Latency 10-30% reduction
Gaming Jitter 20-40% reduction
Streaming Throughput 2-4× on congested links
Video Calls Connection time 15-25% faster
Server Connection capacity 10× increase

🤝 Contributing

Contributions are welcome! Areas of interest:

  • Additional configuration cards
  • New optimization profiles
  • Cross-platform support
  • Performance benchmarks
  • Documentation improvements

📄 License

MIT License — see LICENSE for details.


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Built with ❤️ for the AI-native networking future

Report Bug · Request Feature

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