/install aliyun-qwen-multimodal-embedding
Category: provider
Model Studio Multimodal Embedding
Validation
mkdir -p output/aliyun-qwen-multimodal-embedding
python -m py_compile skills/ai/search/aliyun-qwen-multimodal-embedding/scripts/prepare_multimodal_embedding_request.py && echo "py_compile_ok" > output/aliyun-qwen-multimodal-embedding/validate.txt
Pass criteria: command exits 0 and output/aliyun-qwen-multimodal-embedding/validate.txt is generated.
Output And Evidence
- Save normalized request payloads, selected dimensions, and sample input references under
output/aliyun-qwen-multimodal-embedding/. - Record the exact model, modality mix, and output vector dimension for reproducibility.
Use this skill when the task needs text, image, or video embeddings from Model Studio for retrieval or similarity workflows.
Critical model names
Use one of these exact model strings as needed:
qwen3-vl-embeddingqwen2.5-vl-embeddingtongyi-embedding-vision-plus-2026-03-06
Selection guidance:
- Prefer
qwen3-vl-embeddingfor the newest multimodal embedding path. - Use
qwen2.5-vl-embeddingwhen you need compatibility with an older deployed pipeline.
Prerequisites
- Set
DASHSCOPE_API_KEYin your environment, or adddashscope_api_keyto~/.alibabacloud/credentials. - Pair this skill with a vector store such as DashVector, OpenSearch, or Milvus when building retrieval systems.
Normalized interface (embedding.multimodal)
Request
model(string, optional): defaultqwen3-vl-embeddingtexts(array\x3Cstring>, optional)images(array\x3Cstring>, optional): public URLs or local paths uploaded by your client layervideos(array\x3Cstring>, optional): public URLs where supporteddimension(int, optional): e.g.2560,2048,1536,1024,768,512,256forqwen3-vl-embedding
Response
embeddings(array\x3Cobject>)dimension(int)usage(object, optional)
Quick start
python skills/ai/search/aliyun-qwen-multimodal-embedding/scripts/prepare_multimodal_embedding_request.py \
--text "A cat sitting on a red chair" \
--image "https://example.com/cat.jpg" \
--dimension 1024
Operational guidance
- Keep
input.contentsas an array; malformed shapes are a common 400 cause. - Pin the output dimension to match your index schema before writing vectors.
- Use the same model and dimension across one vector index to avoid mixed-vector incompatibility.
- For large image or video batches, stage files in object storage and reference stable URLs.
Output location
- Default output:
output/aliyun-qwen-multimodal-embedding/request.json - Override base dir with
OUTPUT_DIR.
References
references/sources.md
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install aliyun-qwen-multimodal-embedding - After installation, invoke the skill by name or use
/aliyun-qwen-multimodal-embedding - Provide required inputs per the skill's parameter spec and get structured output
What is Aliyun Qwen Multimodal Embedding?
Use when multimodal embeddings are needed from Alibaba Cloud Model Studio models such as `qwen3-vl-embedding` for image, video, and text retrieval, cross-mod... It is an AI Agent Skill for Claude Code / OpenClaw, with 93 downloads so far.
How do I install Aliyun Qwen Multimodal Embedding?
Run "/install aliyun-qwen-multimodal-embedding" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Aliyun Qwen Multimodal Embedding free?
Yes, Aliyun Qwen Multimodal Embedding is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Aliyun Qwen Multimodal Embedding support?
Aliyun Qwen Multimodal Embedding is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Aliyun Qwen Multimodal Embedding?
It is built and maintained by cinience (@cinience); the current version is v1.0.0.