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Gemini Embedding 2 uses Matryoshka Representation Learning (MRL) to nest critical semantic data right at the beginning of the vector. This means you can "peel away" the outer layers—truncating from 3072 dimensions down to 768—to optimize storage while maintaining enterprise-grade accuracy. It’s the ultimate cost-performance trade-off in a single API call. Resources: Get the code samples here → https://goo.gle/4dqP0Yl Subscribe to Google for Developers → https://goo.gle/developers Products Mentioned: Gemini Speakers: Laura Radovolsky Carroll