SonicWall

A comprehensive Model Context Protocol (MCP) server for analyzing SonicWall firewall logs from SonicOS 7.x and 8.x. This server provides intelligent log analysis, threat detection, and security insights through a fully MCP-compliant interface using SSE/HTTP transport.
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Language

6 months ago

First Indexed

2 months ago

Catalog Refreshed

Documentation & install

Readme and setup notes from the catalogue, plus a client-ready config you can copy for your MCP host.

Installation

Add the following to your MCP client configuration file.

Configuration

View docs

You run an MCP server that analyzes SonicWall firewall logs with natural language queries, providing real-time threat detection and Son icOS-aware endpoints. This enables you to ask in plain language for insights, trends, and security events, while the server talks to SonicWall devices via MCP-compatible endpoints.

How to use

You connect a compatible MCP client (such as Claude) to your SonicWall MCP Server to perform natural language analyses of firewall logs. Start by ensuring your SonicWall device has API access enabled and that you can reach the MCP server. Use simple, conversational queries like asking for suspicious activity, blocked connections, or threat trends over a specific period. The server handles version-aware communication with SonicWall 7.x or 8.x and returns structured insights suitable for dashboards and conversational responses.

How to install

Prerequisites you need on your machine or host: Node.js 20+ or Docker and Docker Compose. You will also need access to a SonicWall device with SonicOS 7.x or 8.x and API access enabled.

Step by step setup using Docker (recommended):

Available tools

analyze_logs

Natural language log analysis with intelligent insights

get_threats

Real-time threat monitoring and analysis

search_connections

Advanced connection search and investigation

get_stats

Network statistics and security metrics

export_logs

Export filtered logs for compliance and analysis

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