🧪 Skills

QCut Toolkit

Unified QCut media toolkit — organize project files, process media with FFmpeg, generate AI content, control the QCut editor with native CLI commands, genera...

v1.0.1
❤️ 0
⬇️ 110
👁 1
Share

Description


name: qcut-toolkit description: Unified QCut media toolkit — organize project files, process media with FFmpeg, generate AI content, control the QCut editor with native CLI commands, generate video prompts, and test MCP preview. Use when the user asks about any media workflow, file organization, video processing, AI generation, editor control, video prompts, or content pipeline task. argument-hint: [task description]

QCut Toolkit

Unified entry point for QCut's six sub-skills. Route tasks to the appropriate sub-skill based on what the user needs.

Sub-Skills

1. native-cli — Project Setup & Native Pipeline Commands

When: Setting up a project, cleaning up files, organizing workspace, importing media Invoke: /native-cli Skill path: .claude/skills/native-cli/SKILL.md

Handles:

  • Initializing the standard project layout (input/*, output/*, config/)
  • Organizing media by extension with organize-project
  • Running structure audits with structure-info
  • Running editor media/timeline/export/diagnostic commands (editor:*)
  • Running additional native pipeline commands when needed

2. ffmpeg-skill — Media Processing

When: Converting, compressing, trimming, resizing, extracting audio, adding subtitles, creating GIFs, applying effects Invoke: /ffmpeg-skill Skill path: .claude/skills/qcut-toolkit/ffmpeg-skill/SKILL.md

Handles:

  • Format conversion (MP4, MKV, WebM, MP3, etc.)
  • Video compression (-crf), resizing (scale=), trimming (-ss/-t)
  • Audio extraction, subtitle burn-in, text overlays
  • GIF creation, speed changes, merging/concatenation
  • Streaming (HLS, DASH, RTMP) and complex filtergraphs

3. ai-content-pipeline — AI Content Generation & Analysis

When: Generating images/videos/avatars, transcribing audio, analyzing video, running AI pipelines Invoke: /ai-content-pipeline Skill path: .claude/skills/qcut-toolkit/ai-content-pipeline/SKILL.md

Handles:

  • Text-to-image (FLUX, Imagen 4, Nano Banana Pro, GPT Image)
  • Image-to-video (Veo 3, Sora 2, Kling, Hailuo)
  • Avatar/lipsync generation (OmniHuman, Fabric, Multitalk)
  • Speech-to-text transcription with word-level timestamps (Scribe v2)
  • Video analysis with Gemini 3 Pro
  • YAML pipeline orchestration with parallel execution
  • Motion transfer between images and videos

4. seedance — Video Prompt Engineering

When: Writing video prompts, Seedance/即梦 workflows, AI video prompt generation, video descriptions (Chinese or English) Invoke: /seedance Skill path: .claude/skills/qcut-toolkit/seedance/SKILL.md

Handles:

  • Seedance 2.0 (即梦) prompt generation in Chinese
  • Multi-modal video prompts (text-to-video, image-to-video, video extension)
  • Short drama (短剧), advertising video, and cinematic prompt templates
  • Prompt engineering best practices for ByteDance video models

5. qcut-mcp-preview-test — MCP Preview Testing

When: Testing MCP app preview, toggling "MCP Media App" mode, debugging iframe rendering, troubleshooting mcp:app-html events or /api/claude/mcp/app Invoke: /qcut-mcp-preview-test Skill path: .claude/skills/qcut-toolkit/qcut-mcp-preview-test/SKILL.md

Handles:

  • Switching preview panel between video preview and MCP app mode
  • Validating iframe srcDoc rendering for MCP HTML content
  • Debugging IPC (mcp:app-html) and HTTP (/api/claude/mcp/app) delivery
  • Crafting prompts that modify MCP media app UI safely

6. pr-comments — PR Review Processing

When: Exporting PR comments, evaluating code reviews, fixing review feedback from CodeRabbit/Gemini bots Invoke: /pr-comments Skill path: .claude/skills/pr-comments/SKILL.md

Handles:

  • Export review comments from GitHub PRs to markdown files
  • Preprocess comments into evaluation task files
  • Analyze comment groupings by source file
  • Evaluate, fix, or reject individual review comments
  • Batch process all comments with bottom-up line ordering
  • Resolve threads on GitHub and track completed tasks

Routing Logic

When the user's request involves multiple sub-skills, chain them in this order:

  1. Organize first — Ensure project structure exists before processing
  2. Process with FFmpeg — Convert, trim, or prepare source media
  3. Generate with AI — Create new content or analyze existing media
  4. Write prompts — Generate video prompts for Seedance/即梦 if needed
  5. Control editor — Use native-cli editor:* commands to update timeline, settings, or import results
  6. Organize output — Place results in media/generated/ or output/

Quick Routing Table

User says Route to
"organize", "set up project", "clean up files" native-cli
"convert", "compress", "trim", "resize", "extract audio", "gif", "subtitle" ffmpeg-skill
"generate image", "generate video", "avatar", "lipsync", "transcribe", "analyze video", "AI pipeline" ai-content-pipeline
"add to timeline", "update project settings", "list media", "export preset", "configure for TikTok" native-cli
"import media", "get project stats", "diagnose error" native-cli
"video prompt", "Seedance", "即梦", "视频提示词", "write video description" seedance
"test MCP preview", "MCP app mode", "debug iframe", "mcp:app-html" qcut-mcp-preview-test
"export PR comments", "fix review feedback", "process code review" pr-comments
"process this video and generate thumbnails" ffmpeg-skill → ai-content-pipeline
"import media and organize" native-cli
"generate content and add to timeline" ai-content-pipeline → native-cli
"set up project then generate content" native-cli → ai-content-pipeline
"write prompt then generate video" seedance → ai-content-pipeline

Multi-Step Workflow Example

User: "Take my raw footage, trim the first 30 seconds, compress it, then generate AI thumbnails"

  1. /native-cli — Run init-project / organize-project to prepare the project structure and source media
  2. /ffmpeg-skillffmpeg -ss 00:00:30 -i input.mp4 -c copy trimmed.mp4 then compress
  3. /ai-content-pipeline — Extract a frame, generate styled thumbnail with flux_dev
  4. Place output in input/, output/, or media/generated/ as needed

Output Structure

All sub-skills follow the same project structure:

Documents/QCut/Projects/{project-name}/
├── input/              ← native-cli init-project / organize-project
│   ├── images/
│   ├── videos/
│   ├── audio/
│   ├── text/
│   └── pipelines/
├── output/             ← final exports
│   ├── images/
│   ├── videos/
│   └── audio/
├── config/
└── media/generated/    ← ai-content-pipeline outputs (when used)

Full Production Workflow

$ARGUMENTS

Break the request into steps, invoke each sub-skill in sequence, and report progress after each step. Always confirm destructive operations (overwriting files, deleting temp data) before executing.

Reviews (0)

Sign in to write a review.

No reviews yet. Be the first to review!

Comments (0)

Sign in to join the discussion.

No comments yet. Be the first to share your thoughts!

Compatible Platforms

Pricing

Free

Related Configs