alicloud-ai-image-qwen-image

Verified·Scanned 2/17/2026

This skill integrates Alibaba Cloud DashScope qwen-image-max image generation and includes a Python script that calls ImageGeneration and downloads images. It reads DASHSCOPE_API_KEY from env or ~/.alibabacloud/credentials, includes example shell commands, and makes external network requests to image URLs.

from clawhub.ai·vd15ea99·15.1 KB·0 installs
Scanned from 1.0.0 at d15ea99 · Transparency log ↗
$ vett add clawhub.ai/cinience/alicloud-ai-image-qwen-image

Category: provider

Model Studio Qwen Image

Build consistent image generation behavior for the video-agent pipeline by standardizing image.generate inputs/outputs and using DashScope SDK (Python) with the exact model name.

Prerequisites

  • Install SDK (recommended in a venv to avoid PEP 668 limits):
python3 -m venv .venv
. .venv/bin/activate
python -m pip install dashscope
  • Set DASHSCOPE_API_KEY in your environment, or add dashscope_api_key to ~/.alibabacloud/credentials (env takes precedence).

Critical model name

Use ONLY this exact model string:

  • qwen-image-max

Do not add date suffixes or aliases.

Normalized interface (image.generate)

Request

  • prompt (string, required)
  • negative_prompt (string, optional)
  • size (string, required) e.g. 1024*1024, 768*1024
  • style (string, optional)
  • seed (int, optional)
  • reference_image (string | bytes, optional)

Response

  • image_url (string)
  • width (int)
  • height (int)
  • seed (int)

Quickstart (normalized request + preview)

Minimal normalized request body:

{
  "prompt": "a cinematic portrait of a cyclist at dusk, soft rim light, shallow depth of field",
  "negative_prompt": "blurry, low quality, watermark",
  "size": "1024*1024",
  "seed": 1234
}

Preview workflow (download then open):

curl -L -o output/ai-image-qwen-image/images/preview.png "<IMAGE_URL_FROM_RESPONSE>" && open output/ai-image-qwen-image/images/preview.png

Local helper script (JSON request -> image file):

python skills/ai/image/alicloud-ai-image-qwen-image/scripts/generate_image.py \\
  --request '{"prompt":"a studio product photo of headphones","size":"1024*1024"}' \\
  --output output/ai-image-qwen-image/images/headphones.png \\
  --print-response

Parameters at a glance

FieldRequiredNotes
promptyesDescribe a scene, not just keywords.
negative_promptnoBest-effort, may be ignored by backend.
sizeyesWxH format, e.g. 1024*1024, 768*1024.
stylenoOptional stylistic hint.
seednoUse for reproducibility when supported.
reference_imagenoURL/file/bytes, SDK-specific mapping.

Quick start (Python + DashScope SDK)

Use the DashScope SDK and map the normalized request into the SDK call. Note: For qwen-image-max, the DashScope SDK currently succeeds via ImageGeneration (messages-based) rather than ImageSynthesis. If the SDK version you are using expects a different field name for reference images, adapt the input mapping accordingly.

import os
from dashscope.aigc.image_generation import ImageGeneration

# Prefer env var for auth: export DASHSCOPE_API_KEY=...
# Or use ~/.alibabacloud/credentials with dashscope_api_key under [default].


def generate_image(req: dict) -> dict:
    messages = [
        {
            "role": "user",
            "content": [{"text": req["prompt"]}],
        }
    ]

    if req.get("reference_image"):
        # Some SDK versions accept {"image": <url|file|bytes>} in messages content.
        messages[0]["content"].insert(0, {"image": req["reference_image"]})

    response = ImageGeneration.call(
        model="qwen-image-max",
        messages=messages,
        size=req.get("size", "1024*1024"),
        api_key=os.getenv("DASHSCOPE_API_KEY"),
        # Pass through optional parameters if supported by the backend.
        negative_prompt=req.get("negative_prompt"),
        style=req.get("style"),
        seed=req.get("seed"),
    )

    # Response is a generation-style envelope; extract the first image URL.
    content = response.output["choices"][0]["message"]["content"]
    image_url = None
    for item in content:
        if isinstance(item, dict) and item.get("image"):
            image_url = item["image"]
            break
    return {
        "image_url": image_url,
        "width": response.usage.get("width"),
        "height": response.usage.get("height"),
        "seed": req.get("seed"),
    }

Error handling

ErrorLikely causeAction
401/403Missing or invalid DASHSCOPE_API_KEYCheck env var or ~/.alibabacloud/credentials, and access policy.
400Unsupported size or bad request shapeUse common WxH and validate fields.
429Rate limit or quotaRetry with backoff, or reduce concurrency.
5xxTransient backend errorsRetry with backoff once or twice.

Output location

  • Default output: output/ai-image-qwen-image/images/
  • Override base dir with OUTPUT_DIR.

Operational guidance

  • Store the returned image in object storage and persist only the URL in metadata.
  • Cache results by (prompt, negative_prompt, size, seed, reference_image hash) to avoid duplicate costs.
  • Add retries for transient 429/5xx responses with exponential backoff.
  • Some backends ignore negative_prompt, style, or seed; treat them as best-effort inputs.
  • If the response contains no image URL, surface a clear error and retry once with a simplified prompt.

Size notes

  • Use WxH format (e.g. 1024*1024, 768*1024).
  • Prefer common sizes; unsupported sizes can return 400.

Anti-patterns

  • Do not invent model names or aliases; use qwen-image-max only.
  • Do not store large base64 blobs in DB rows; use object storage.
  • Do not omit user-visible progress for long generations.

References

  • See references/api_reference.md for a more detailed DashScope SDK mapping and response parsing tips.

  • See references/prompt-guide.md for prompt patterns and examples.

  • Source list: references/sources.md