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Forget-C/Jellyfish

一站式 AI 生成短剧(竖屏短剧 / 微短剧)的生产工具 , 从剧本输入 → 智能分镜 → 角色/场景/道具一致性管理 → AI 视频生成 → 后期剪辑 → 一键导出成片 .

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What it does

Jellyfish is an all-in-one studio tool that turns a written script into a finished short-form vertical video — the kind popular on TikTok and similar platforms — using AI to handle storyboarding, character consistency, video generation, and editing in a single workflow. It manages the hardest problem in AI video production: keeping characters, scenes, and props looking the same across every scene so the final product feels cohesive rather than randomly generated.

Why it matters

The short-form drama format (known as 'micro-drama') is a multi-billion dollar content category exploding across Asian markets and gaining traction globally, and this tool dramatically lowers the cost and headcount needed to produce it at scale. For founders and studios, it signals that AI is collapsing the production pipeline for scripted video content, which has major implications for content businesses, streaming platforms, and anyone competing in the creator economy.

33Active

On the radar — signal detected

Stars
4.6k
Forks
803
Contributors
2
Language
TypeScript

Score updated Apr 2, 2026

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