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      <title>NVIDIA open-sources Nemotron 3 Embed models — the 8B version tops a new benchmark</title>
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      <description>&lt;p&gt;The models that power how AI systems search, retrieve, and cross-reference information don&amp;rsquo;t get much attention, but they&amp;rsquo;re quietly becoming one of the most competitive layers in the AI stack. Embedding models — the ones that turn text into vectors for similarity search — are the engine behind RAG pipelines, AI agent memory, and enterprise search. On Thursday, NVIDIA released an open-weight family called Nemotron 3 Embed that targets exactly this layer, and the largest variant is already topping a new benchmark from Hugging Face.&lt;/p&gt;</description>
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