video-generation

Pass

Use this skill when the user requests to generate, create, or imagine videos. Supports structured prompts and reference image for guided generation.

@bytedance
MIT4/1/2026
54out of 100
(0)
56.0k
15
18

Install Skill

Skills are third-party code from public GitHub repositories. SkillHub scans for known malicious patterns but cannot guarantee safety. Review the source code before installing.

Install globally (user-level):

npx skillhub install bytedance/deer-flow/video-generation

Install in current project:

npx skillhub install bytedance/deer-flow/video-generation --project

Suggested path: ~/.claude/skills/video-generation/

AI Review

Instruction Quality60
Description Precision60
Usefulness44
Technical Soundness55

Scored 54 because the skill is functional within deer-flow's platform but the /mnt/ hardcoded paths make it useless outside that environment (generality 20). generate.py uses Gemini API correctly with async polling. Instructions are clear for their intended audience but the framework lock significantly limits value.

SKILL.md Content

---
name: video-generation
description: Use this skill when the user requests to generate, create, or imagine videos. Supports structured prompts and reference image for guided generation.
---

# Video Generation Skill

## Overview

This skill generates high-quality videos using structured prompts and a Python script. The workflow includes creating JSON-formatted prompts and executing video generation with optional reference image.

## Core Capabilities

- Create structured JSON prompts for AIGC video generation
- Support reference image as guidance or the first/last frame of the video
- Generate videos through automated Python script execution

## Workflow

### Step 1: Understand Requirements

When a user requests video generation, identify:

- Subject/content: What should be in the image
- Style preferences: Art style, mood, color palette
- Technical specs: Aspect ratio, composition, lighting
- Reference image: Any image to guide generation
- You don't need to check the folder under `/mnt/user-data`

### Step 2: Create Structured Prompt

Generate a structured JSON file in `/mnt/user-data/workspace/` with naming pattern: `{descriptive-name}.json`

### Step 3: Create Reference Image (Optional when image-generation skill is available)

Generate reference image for the video generation.

- If only 1 image is provided, use it as the guided frame of the video

### Step 3: Execute Generation

Call the Python script:
```bash
python /mnt/skills/public/video-generation/scripts/generate.py \
  --prompt-file /mnt/user-data/workspace/prompt-file.json \
  --reference-images /path/to/ref1.jpg \
  --output-file /mnt/user-data/outputs/generated-video.mp4 \
  --aspect-ratio 16:9
```

Parameters:

- `--prompt-file`: Absolute path to JSON prompt file (required)
- `--reference-images`: Absolute paths to reference image (optional)
- `--output-file`: Absolute path to output image file (required)
- `--aspect-ratio`: Aspect ratio of the generated image (optional, default: 16:9)

[!NOTE]
Do NOT read the python file, instead just call it with the parameters.

## Video Generation Example

User request: "Generate a short video clip depicting the opening scene from "The Chronicles of Narnia: The Lion, the Witch and the Wardrobe"

Step 1: Search for the opening scene of "The Chronicles of Narnia: The Lion, the Witch and the Wardrobe" online

Step 2: Create a JSON prompt file with the following content:

```json
{
  "title": "The Chronicles of Narnia - Train Station Farewell",
  "background": {
    "description": "World War II evacuation scene at a crowded London train station. Steam and smoke fill the air as children are being sent to the countryside to escape the Blitz.",
    "era": "1940s wartime Britain",
    "location": "London railway station platform"
  },
  "characters": ["Mrs. Pevensie", "Lucy Pevensie"],
  "camera": {
    "type": "Close-up two-shot",
    "movement": "Static with subtle handheld movement",
    "angle": "Profile view, intimate framing",
    "focus": "Both faces in focus, background soft bokeh"
  },
  "dialogue": [
    {
      "character": "Mrs. Pevensie",
      "text": "You must be brave for me, darling. I'll come for you... I promise."
    },
    {
      "character": "Lucy Pevensie",
      "text": "I will be, mother. I promise."
    }
  ],
  "audio": [
    {
      "type": "Train whistle blows (signaling departure)",
      "volume": 1
    },
    {
      "type": "Strings swell emotionally, then fade",
      "volume": 0.5
    },
    {
      "type": "Ambient sound of the train station",
      "volume": 0.5
    }
  ]
}
```

Step 3: Use the image-generation skill to generate the reference image

Load the image-generation skill and generate a single reference image `narnia-farewell-scene-01.jpg` according to the skill.

Step 4: Use the generate.py script to generate the video
```bash
python /mnt/skills/public/video-generation/scripts/generate.py \
  --prompt-file /mnt/user-data/workspace/narnia-farewell-scene.json \
  --reference-images /mnt/user-data/outputs/narnia-farewell-scene-01.jpg \
  --output-file /mnt/user-data/outputs/narnia-farewell-scene-01.mp4 \
  --aspect-ratio 16:9
```
> Do NOT read the python file, just call it with the parameters.

## Output Handling

After generation:

- Videos are typically saved in `/mnt/user-data/outputs/`
- Share generated videos (come first) with user as well as generated image if applicable, using `present_files` tool
- Provide brief description of the generation result
- Offer to iterate if adjustments needed

## Notes

- Always use English for prompts regardless of user's language
- JSON format ensures structured, parsable prompts
- Reference image enhance generation quality significantly
- Iterative refinement is normal for optimal results