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Skills included: - venice-chat: Chat with Venice LLM models, vision, reasoning - venice-chat-benchmark: Benchmark chat models with infographics - venice-image-gen: Generate images via Venice API - venice-list-image-models: List available image models - venice-list-text-models: List available text models - venice-list-video-models: List available video models - venice-tts: Text-to-speech via Venice API - venice-video-generate: Generate videos from text/images - venice-video-queue: Queue video generation jobs - venice-video-quote: Get video generation cost quotes - venice-video-retrieve: Retrieve completed videos All rebranded from Agent Zero paths to Agent JAE (~/.jae/agent/skills/). Requires VENICE_API_KEY environment variable.
2.5 KiB
2.5 KiB
Venice Video Queue
Queue videos for generation on Venice.ai. Supports text-to-video, image-to-video, and video-to-video. Returns a queue_id for later retrieval with venice-video-retrieve.
For a simpler all-in-one workflow, use venice-video-generate instead.
Features
- Text-to-video, image-to-video, and video-to-video support
- Automatic file-to-base64 encoding for local image/video/audio inputs
- CLI with full argparse support
- JSON output mode for scripting
- Convenience functions for common workflows
Prerequisites
pip install requests pydantic
export VENICE_API_KEY="your_venice_api_key"
Usage
Text-to-video
python scripts/queue_video.py "A cat playing piano in a jazz club" \
--duration 5s --resolution 720p --aspect-ratio 16:9
Image-to-video
python scripts/queue_video.py "Animate this scene with gentle motion" \
--image /path/to/image.png \
--model wan-2.5-preview-image-to-video
JSON output (for scripting)
python scripts/queue_video.py "Cinematic sunset" --json
# Output: {"model": "wan-2.5-preview-text-to-video", "queue_id": "abc123..."}
Options
| Option | Short | Default | Description |
|---|---|---|---|
prompt |
-- | (required) | Text description |
--model |
-m |
wan-2.5-preview-text-to-video |
Model ID |
--duration |
-d |
5s |
Duration (5s, 10s) |
--resolution |
-r |
720p |
Resolution |
--aspect-ratio |
-a |
None | Aspect ratio (omit if model doesn't support) |
--negative-prompt |
-n |
None | What to avoid |
--image |
-i |
None | Input image path |
--video |
-v |
None | Input video path |
--audio |
-- | None | Audio file path |
--with-audio |
-- | off | Enable audio generation |
--json |
-- | off | JSON output |
After Queuing
Use the returned queue_id with venice-video-retrieve:
python ../venice-video-retrieve/scripts/retrieve_video.py MODEL QUEUE_ID
Python Import
from queue_video import queue_video, queue_text_to_video, queue_image_to_video
# Text-to-video
result = queue_text_to_video(prompt="A cat playing piano", duration="5s")
print(f"Queue ID: {result.queue_id}")
# Image-to-video
result = queue_image_to_video(prompt="Animate this", image_path="/path/to/img.png")
print(f"Queue ID: {result.queue_id}")
Environment Variables
| Variable | Required | Description |
|---|---|---|
VENICE_API_KEY |
Yes | Venice.ai API key |