Skills_disabled/invokeai-image-gen/SKILL.md
Generate images using InvokeAI's local API. Use when asked to generate, create, or make images with InvokeAI, FLUX.2 Klein, Z-Image Turbo, FLUX, or SDXL models. Supports text-to-image generation, automatic model detection, image download, and parameter selection based on model architecture.
npx skillsauth add sammcj/agentic-coding invokeai-image-genInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Generate images via InvokeAI's REST API. Supports FLUX.2 Klein (default), Z-Image Turbo, FLUX.1, and SDXL.
Simply call the script with your prompt and the output file name:
python scripts/generate.py -p "A dramatic sunset over snow-capped mountains, warm orange light reflecting off a still alpine lake in the foreground. Soft clouds catch the fading light." -o sunset.png
If the user asks you to use a specific model, first find the model key, then use it in the command:
python scripts/generate.py --list-models | grep -i 'flux'
python scripts/generate.py -p "A tabby cat with bright green eyes sits on a weathered wooden windowsill, soft afternoon light streaming through lace curtains. Cosy, intimate mood." --model MODEL_KEY -o cat.png
| Option | Description |
|--------|-------------|
| --prompt, -p | Generation prompt (required) |
| --negative, -n | Negative prompt (SDXL only) |
| --model, -m | Model key (UUID) or partial name match |
| --width, -W / --height, -H | Dimensions |
| --steps, -s | Denoising steps |
| --cfg, -c | CFG scale |
| --guidance, -g | Guidance strength (FLUX.1 only) |
| --scheduler | Sampling scheduler |
| --seed | Random seed |
| --output, -o | Output path (default: invokeai-{seed}.png) |
| --list-models | List installed models |
| --json | JSON output |
Note: FLUX.2 Klein is the latest model which is used by default.
| Model | Steps | Guidance | CFG | Scheduler | |-------|-------|----------|-----|-----------| | FLUX.2 Klein | 4 | 3.5 | 1.0 | euler | | Z-Image Turbo | 9 | - | 1.0 | euler | | FLUX.1 dev | 28 | 3.5 | 1.0 | euler | | FLUX.1 Krea dev | 28 | 4.5 | 1.0 | euler | | FLUX.1 Kontext dev | 28 | 2.5 | 1.0 | euler | | FLUX.1 schnell | 4 | 0.0 | 1.0 | euler | | SDXL | 25 | - | 6.0 | dpmpp_2m_k | | SDXL Turbo | 8 | - | 1.0 | dpmpp_sde |
All models default to 1024x1024. FLUX requires dimensions divisible by 16, SDXL by 8.
Auto-priority: Klein > Z-Image > FLUX > SDXL
Detection by name/base:
Write prose, not keywords. Structure: Subject -> Setting -> Details -> Lighting -> Atmosphere
A weathered fisherman in his late sixties stands at the bow of a wooden boat,
wearing a salt-stained wool sweater. Golden hour sunlight filters through
morning mist, creating quiet determination and solitude.
Key techniques:
Good: "A woman with short blonde hair poses against a light neutral background wearing colourful earrings, resting her chin on her hand."
Bad: "woman, blonde, short hair, neutral background, earrings"
Append style tags: Style: Country chic. Mood: Serene, romantic.
| Issue | Solution |
|-------|----------|
| Connection refused | Check InvokeAI is running |
| Model not found | Use --list-models for valid keys |
| Dimensions error | FLUX: multiples of 16, SDXL: 8 |
| Black images (macOS) | Set precision: bfloat16 in invokeai.yaml |
If the script fails to find the URL or authentication token, you can set or ask the user to set environment variables:
export INVOKEAI_API_URL='http://localhost:9090'
export INVOKEAI_AUTH_TOKEN='your-token' # Optional
scripts/generate.py - Main generation scripttools
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