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@llama_index

Recently @cohere released multi-modal embeddings, allowing you to combine images and text in the same vector space. See how to use them in LlamaIndex in this notebook, along with @qdrant_engine to store the embeddings! https://t.co/FEnIGYiXFX Cohere's Embed 3 has industry-leading performance, and you can learn more about it on their blog: https://t.co/ytQUx5JJb1

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