Hooklayer

Created By
Ashifur Rahman Khan18 days ago
Hooklayer is a hosted MCP server that gives AI agents 7 tools for short-form video intelligence: score any hook, predict a script's viral potential, analyze creator accounts, match a creator's voice, surface trending patterns, and remix winning videos into fresh scripts. Built for TikTok, Reels, and Shorts creators working inside Claude, Cursor, or n8n. Connect once and your agent auto-orchestrates the full creative workflow — from trend to ready-to-shoot script.
Overview

Hooklayer — Viral Content Intelligence for AI Agents

Hooklayer is a hosted MCP server that gives AI agents 7 tools for short-form video intelligence. Connect once in Claude, Cursor, or n8n and your agent can score hooks, predict virality, analyze creators, and reverse-engineer winning videos — all from natural language.

What it does

  • Hook Score — Rate any hook against proven viral patterns in one call
  • Predict Virality — Score a draft script before you film, with a DNA breakdown and mitigation notes
  • Analyze Account — Deep intelligence on any creator: voice, formats, what's working
  • Match Voice — Extract a creator's voice DNA from samples and rewrite scripts in it
  • Trend Pulse — Surface what's actually peaking in a niche right now
  • Find Viral Template — Proven viral templates with real example videos
  • Viral Remix — Turn a winning video into a fresh script that mirrors its viral DNA

Why it's different

The tools chain. A recommended_chain field lets your agent auto-orchestrate the full creative workflow — from trend, to scored hook, to ready-to-shoot script — without you stitching calls together.

Built for TikTok, Reels, and Shorts creators. Exposed as both MCP (for Claude/Cursor/n8n) and REST.

Get started

Free tier available — no card required. Get your key and full docs at hooklayer.dev.

Server Config

{
  "mcpServers": {
    "hooklayer": {
      "url": "https://hooklayer.dev/api/mcp",
      "transport": "http",
      "headers": {
        "Authorization": "Bearer hl_live_..."
      }
    }
  }
}
Project Info
Created At
18 days ago
Updated At
18 days ago
Author Name
Ashifur Rahman Khan
Star
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Language
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License
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Category

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