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  • Comparison of Rotary and Sinusoidal Embeddings

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Match each operational description to the corresponding non-learnable positional embedding method.

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Updated 2025-10-10

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  • An engineer is analyzing a model's architecture and notes that positional information is incorporated by applying a rotational transformation to the token embedding vectors. This transformation changes a vector's direction based on its position in the sequence but preserves its original length. Which statement correctly analyzes this technique in contrast to another common, non-learnable method?

  • A key distinction between two common non-learnable positional encoding methods is that one applies a multiplicative rotational transformation to token embeddings, while the other applies an additive operation by summing a positional vector with the token embeddings.

  • Match each operational description to the corresponding non-learnable positional embedding method.

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