بنقرة واحدة
video-generation
Use this skill when the user requests to generate, create, or imagine videos. Supports structured prompts and reference image for guided generation.
القائمة
Use this skill when the user requests to generate, create, or imagine videos. Supports structured prompts and reference image for guided generation.
Use when a DeerFlow maintainer needs comment-only GitHub issue or PR handling: resolve issue/PR scopes with gh, analyze issues, post or draft issue comments, perform PR review comments, review PR or issue batches, compare competing PRs that target the same issue, give fix strategy, risk classification, and validation guidance. Intended for maintainers and trusted local agents, not general contributors.
Ensure async-path backend code that could block the asyncio event loop is protected by a teeth-verified runtime anchor in tests/blocking_io/. Use when changing backend Python under app/, packages/harness/deerflow/, or scripts/, when running a blocking-IO triage round over the whole repo, or when a reviewer/CI asks for blocking-IO coverage. Runs a deterministic scan (changed-lines or full-repo), routes each candidate, drafts/extends an anchor, and proves it fails when the blocking IO regresses.
Use this skill when the user requests to generate, create, imagine, or visualize images including characters, scenes, products, or any visual content. Supports structured prompts and reference images for guided generation.
Use this skill when the user requests to generate, create, compose, or produce music or songs — background music, theme songs, jingles, or instrumental tracks. Generates a song from a style/mood prompt and optional lyrics via the MiniMax music API.
Use this skill when the user requests to generate, create, or produce podcasts from text content. Converts written content into a two-host conversational podcast audio format with natural dialogue.
End-to-end smoke test skill for DeerFlow. Guides through: 1) Pulling latest code, 2) Docker OR Local installation and deployment (user preference, default to Local if Docker network issues), 3) Service availability verification, 4) Health check, 5) Final test report. Use when the user says "run smoke test", "smoke test deployment", "verify installation", "test service availability", "end-to-end test", or similar.
| 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. |
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.
When a user requests video generation, identify:
/mnt/user-dataGenerate a structured JSON file in /mnt/user-data/workspace/ with naming pattern: {descriptive-name}.json
Generate reference image for the video generation.
Call the Python script:
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.
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:
{
"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
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.
After generation:
/mnt/user-data/outputs/present_files toolAuto-selected by environment variables (CLI unchanged):
GEMINI_API_KEY set → Gemini Veo (default, unchanged).MINIMAX_API_KEY set → MiniMax video (/v1/video_generation, async 3-step poll/download).VIDEO_GENERATION_PROVIDER=gemini|minimax.MiniMax overrides: MINIMAX_API_HOST (default https://api.minimaxi.com),
MINIMAX_VIDEO_MODEL (default MiniMax-Hailuo-2.3). The first reference image is used
as MiniMax first_frame_image. MiniMax ignores --aspect-ratio (it uses resolution/duration).