Skip to content

Tool used to recover and download Twitch Vods, Highlights and Clips

Notifications You must be signed in to change notification settings

Irene75b/VodRecovery

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Welcome to Vod Recovery

This Fork of VodRecovery is used to recover and download Twitch VODs, highlights, and clips, including various adjustments and improvements.

Installation

  1. Install Python, during installation check the box labeled "Add Python to environment variables"
  2. Download the app by clicking here or with the command git clone https://github.com/MacielG1/VodRecovery
  3. Inside the downloaded folder run the file: install_dependencies.py
  4. Start the program by running the file vod_recovery.py or one of the shortcuts

Core Features

  • Video & Clip Recovery: Find VODs and clips using the listed websites or by manually inputting the values.
  • Video Format: Recovered VODs and highlights can be downloaded in various formats such as MP4, MKV, AVI, MOV and TS.
  • Download Highlights: Retrieve highlights and VODs using a direct Twitch URL.
  • Multiple Formats: Recovered M3U8 links are available in these formats: Chunked (Source Quality), 1080p60, 1080p30, 720p60, 720p30, 480p60, 480p30.
  • Platform Compatibility: VodRecovery is compatible with popular platforms such as TwitchTracker, Sullygnome, and Streamscharts and also direct Twitch links.
  • Bulk Video & Clip Recovery: Recovers multiple VODs and Clips using CSV files from Sullygnome.
  • Unmute VODs: Unmute M3U8 files so that they can be played in media players.

Usage

This is the interactive menu:

1) VOD Recovery
2) Clip Recovery
3) Download VOD (default mp4)
4) Unmute & Check M3U8 Availability
5) Options
6) Exit

Latest Release

https://github.com/MacielG1/VodRecovery/releases/latest

Notes

About

Tool used to recover and download Twitch Vods, Highlights and Clips

Resources

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 99.9%
  • Other 0.1%