Focuslog

Created By
DragonsWhoa year ago
A background server that logs your desktop activity, calculates your Actions Per Minute (APM), and provides a clean, anonymized timeline of your work on demand. It's designed to be a data source for personal analytics or AI assistants.
Overview

What is FocusLog?

FocusLog is a background server that logs your desktop activity, calculates your Actions Per Minute (APM), and provides a clean, anonymized timeline of your work on demand. It serves as a data source for personal analytics or AI assistants.

How to use FocusLog?

To use FocusLog, clone the repository, set up a virtual environment, install the required packages, and configure the settings in the config.py file. You can run it manually for testing or set it up as a systemd service for continuous operation.

Key features of FocusLog?

  • Activity logging of the currently focused window.
  • APM tracking based on keyboard and mouse activity.
  • Timeline aggregation for easy reading.
  • Two-stage anonymization to protect personal information.
  • Title sanitization for cleaner logs.
  • Configurable settings and reliable operation as a systemd service.

Use cases of FocusLog?

  1. Tracking productivity by analyzing desktop activity.
  2. Providing data for personal analytics or AI assistants.
  3. Monitoring user engagement through APM metrics.

FAQ from FocusLog?

  • Is FocusLog compatible with all operating systems?

No, FocusLog is designed specifically for Linux desktop environments running on the X11 display server.

  • How does FocusLog ensure user privacy?

FocusLog uses a two-stage anonymization process to remove sensitive information from logs.

  • Can I run FocusLog as a background service?

Yes, it is recommended to run FocusLog as a systemd service for reliable background operation.

Server Config

{
  "mcpServers": {
    "focuslog": {
      "command": "git",
      "args": [
        "clone",
        "https://github.com/DragonsWho/FocusLog"
      ],
      "env": {}
    }
  }
}
Project Info
Created At
a year ago
Updated At
a year ago
Author Name
DragonsWho
Star
-
Language
-
License
-

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