AIAny
AI Agent2025
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AiToEarn

Distributes one post across 14+ platforms (Douyin, Xiaohongshu, TikTok, X), automates likes and replies via a browser plugin, and matches creators to paid brand tasks settled by sales, views, or engagement. Drivable from Claude/Cursor via MCP.

Introduction

Most "post everywhere" tools stop at distribution and call it a day. AiToEarn's bet is that publishing is the cheap part — the real value is closing the loop from a draft to actual cash. It treats a creator's whole pipeline (create, publish, engage, monetize) as one agent-driven workflow, and bakes in a settlement layer so content can be sold into brand tasks, not just scheduled.

What Sets It Apart
  • Monetization is built in, not bolted on: creators accept paid brand tasks settled by sales (CPS), engagement (CPE), or views (CPM) — where most schedulers stop at an analytics dashboard.
  • Both walled-garden Chinese and Western channels: Douyin, Xiaohongshu, Kuaishou, Bilibili, WeChat Channels and Official Accounts alongside TikTok, YouTube, X, Instagram, Threads, Pinterest, and LinkedIn — a combination few single tools cover.
  • Engagement is automated too: a browser plugin handles likes, follows, and AI-generated comment replies, and mines comments for buying-intent signals — so the after-you-post grind is handled, not just the publish button.
  • Agent-native surface: drive the whole system from Claude, Cursor, or any MCP client, use it inside OpenClaw, or self-host the Electron/TypeScript stack via Docker.
Great Fit / Look Elsewhere

Great fit if you're a solo creator, one-person company, or small brand team pushing content to many platforms — especially the Chinese ones — and you want distribution and monetization in a single place. Look elsewhere if you only publish to one or two Western platforms, where a lighter scheduler like Buffer is simpler, or if you need enterprise SSO and compliance guarantees: this is a young (first open-sourced in 2025), fast-moving project whose settlement marketplace is still maturing.

Information

  • Websitegithub.com
  • OrganizationsAiToEarn
  • Authorsyikart
  • Published date2025/02/24

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