Enables on-demand code coverage report generation for analysis of test coverage metrics
Supports configuration through environment variables for customizing log analysis behavior
Integrates with GitHub Actions for CI workflows and test validation
Allows deployment and version management of the MCP server through the Python Package Index
Log Analyzer MCP
Overview: Analyze Logs with Ease
Log Analyzer MCP is a powerful Python-based toolkit designed to streamline the way you interact with log files. Whether you're debugging complex applications, monitoring test runs, or simply trying to make sense of verbose log outputs, this tool provides both a Command-Line Interface (CLI) and a Model-Context-Protocol (MCP) server to help you find the insights you need, quickly and efficiently.
Why use Log Analyzer MCP?
- Simplify Log Analysis: Cut through the noise with flexible parsing, advanced filtering (time-based, content, positional), and configurable context display.
- Integrate with Your Workflow: Use it as a standalone
loganalyzer
CLI tool for scripting and direct analysis, or integrate the MCP server with compatible clients like Cursor for an AI-assisted experience. - Extensible and Configurable: Define custom log sources, patterns, and search scopes to tailor the analysis to your specific needs.
Key Features
- Core Log Analysis Engine: Robust backend for parsing and searching various log formats.
loganalyzer
CLI: Intuitive command-line tool for direct log interaction.- MCP Server: Exposes log analysis capabilities to MCP clients, enabling features like:
- Test log summarization (
analyze_tests
). - Execution of test runs with varying verbosity.
- Targeted unit test execution (
run_unit_test
). - On-demand code coverage report generation (
create_coverage_report
). - Advanced log searching: all records, time-based, first/last N records.
- Test log summarization (
- Hatch Integration: For easy development, testing, and dependency management.
Installation
This package can be installed from PyPI (once published) or directly from a local build for development purposes.
From PyPI (Recommended for Users)
Once the package is published to PyPI.
This will install the loganalyzer
CLI tool and make the MCP server package available for integration.
From Local Build (For Developers or Testing)
If you have cloned the repository and want to use your local changes:
- Ensure Hatch is installed. (See Developer Guide)
- Build the package:This creates wheel and sdist packages in the
dist/
directory. - Install the local build into your Hatch environment (or any other virtual environment):
Replace
<version>
with the actual version from the generated wheel file (e.g.,0.2.7
).For IDEs like Cursor to pick up changes to the MCP server, you may need to manually reload the server in the IDE. See the Developer Guide for details.
Getting Started: Using Log Analyzer MCP
There are two primary ways to use Log Analyzer MCP:
- As a Command-Line Tool (
loganalyzer
):- Ideal for direct analysis, scripting, or quick checks.
- Requires Python 3.9+.
- For installation, see the Installation section above.
- For detailed usage, see the CLI Usage Guide (upcoming) or the API Reference for CLI commands.
- As an MCP Server (e.g., with Cursor):
- Integrates log analysis capabilities directly into your AI-assisted development environment.
- For installation, see the Installation section. The MCP server component is included when you install the package.
- For configuration with a client like Cursor and details on running the server, see Configuring and Running the MCP Server below and the Developer Guide.
Configuring and Running the MCP Server
Configuration
Configuration of the Log Analyzer MCP (for both CLI and Server) is primarily handled via environment variables or a .env
file in your project root.
- Environment Variables: Set variables like
LOG_DIRECTORIES
,LOG_PATTERNS_ERROR
,LOG_CONTEXT_LINES_BEFORE
,LOG_CONTEXT_LINES_AFTER
, etc., in the environment where the tool or server runs. .env
File: Create a.env
file by copying.env.template
(this template file needs to be created and added to the repository) and customize the values.
For a comprehensive list of all configuration options and their usage, please refer to the (Upcoming) Configuration Guide.
(Note: The .env.template
file should be created and added to the repository to provide a starting point for users.)
Running the MCP Server
The MCP server can be launched in several ways:
- Via an MCP Client (e.g., Cursor):
Configure your client to launch the
log-analyzer-mcp
executable (often using a helper likeuvx
). This is the typical way to integrate the server. Example Client Configuration (e.g., in.cursor/mcp.json
):Notes:- Replace placeholder paths and consult the Getting Started Guide, the (Upcoming) Configuration Guide, and the Developer Guide for more on configuration options and environment variables.
- The actual package name on PyPI is
log-analyzer-mcp
.
- Directly (for development/testing):
You can run the server directly using its entry point if needed. The
log-analyzer-mcp
command (available after installation) can be used:Refer tolog-analyzer-mcp --help
for more options. For development, using Hatch scripts defined inpyproject.toml
or the methods described in the Developer Guide is also common.
Documentation
- API Reference: Detailed reference for MCP server tools and CLI commands.
- Getting Started Guide: For users and integrators. This guide provides a general overview.
- Developer Guide: For contributors, covering environment setup, building, detailed testing procedures (including coverage checks), and release guidelines.
- (Upcoming) Configuration Guide: Detailed explanation of all
.env
and environment variable settings. (This document needs to be created.) - (Upcoming) CLI Usage Guide: Comprehensive guide to all
loganalyzer
commands and options. (This document needs to be created.) - .env.template: A template file for configuring environment variables. (This file needs to be created and added to the repository.)
- Refactoring Plan: Technical details on the ongoing evolution of the project.
Testing
To run tests and generate coverage reports, please refer to the comprehensive Testing Guidelines in the Developer Guide. This section covers using hatch test
, running tests with coverage, generating HTML reports, and targeting specific tests.
Contributing
We welcome contributions! Please see CONTRIBUTING.md and the Developer Guide for guidelines on how to set up your environment, test, and contribute.
License
Log Analyzer MCP is licensed under the MIT License with Commons Clause. See LICENSE.md for details.
This server cannot be installed
hybrid server
The server is able to function both locally and remotely, depending on the configuration or use case.
A Python-based MCP server that enables AI-assisted log file analysis with features for filtering, parsing, and interpreting log outputs, plus executing and analyzing test runs with varying verbosity levels.
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