MixPost is a Self-hosted Social Multi Network Management System

MixPost is a Self-hosted Social Multi Network Management System

Table of Content

Mixpost is an open-source social media management tool designed to simplify content scheduling and management across multiple platforms.

It offers a range of features that make it ideal for individuals, small businesses, and agencies looking to streamline their social media presence.

Features

  • User-friendly interface
  • Responsive Design
  • Privacy-focused Design
  • Multiple Account Management: Mixpost allows you to connect and manage multiple social media accounts from a single dashboard.
  • Content Scheduling: Easily schedule posts to be published at the optimal times across different platforms.
  • Post Preview: Preview your content before it goes live to ensure it appears as intended.
  • Analytics: Track the performance of your posts with built-in analytics tools.
  • Collaborative Workflows: Teams can collaborate seamlessly with roles and permissions tailored to different users.
  • Customizable Workspaces: Create and customize workspaces to suit the specific needs of your projects.
  • Comes with Weekly calendar
  • Media library management

Supported Social Networks

  • Facebook
  • Instagram
  • Mastodon
  • LinkedIn
  • Pinterest
  • YouTube
  • TikTok
  • X

License

Mixpost is licensed under the MIT License, sponsored and supported by Inovector.

Resources & Downloads

GitHub - inovector/mixpost: Mixpost - Self-hosted social media management software (Buffer alternative)
Mixpost - Self-hosted social media management software (Buffer alternative) - inovector/mixpost







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