安装与设置
安装依赖项Copy
pip install -U langchain-community
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import requests
from langchain_community.embeddings import JinaEmbeddings
from numpy import dot
from numpy.linalg import norm
from PIL import Image
通过 JinaAI API 使用 jina 嵌入模型嵌入文本和查询
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text_embeddings = JinaEmbeddings(
jina_api_key="jina_*", model_name="jina-embeddings-v2-base-en"
)
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text = "This is a test document."
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query_result = text_embeddings.embed_query(text)
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print(query_result)
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doc_result = text_embeddings.embed_documents([text])
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print(doc_result)
通过 JinaAI API 使用 jina CLIP 嵌入图像和查询
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multimodal_embeddings = JinaEmbeddings(jina_api_key="jina_*", model_name="jina-clip-v1")
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image = "https://avatars.githubusercontent.com/u/126733545?v=4"
description = "Logo of a parrot and a chain on green background"
im = Image.open(requests.get(image, stream=True).raw)
print("Image:")
display(im)
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image_result = multimodal_embeddings.embed_images([image])
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print(image_result)
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description_result = multimodal_embeddings.embed_documents([description])
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print(description_result)
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cosine_similarity = dot(image_result[0], description_result[0]) / (
norm(image_result[0]) * norm(description_result[0])
)
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print(cosine_similarity)
通过 MCP 将这些文档连接 到 Claude、VSCode 等,获取实时解答。

