Translations:Attention Mechanisms/33/en

    From Marovi AI
    Revision as of 21:57, 27 April 2026 by FuzzyBot (talk | contribs) (Importing a new version from external source)
    • Masking: In autoregressive decoding, future positions are masked (set to $ -\infty $ before softmax) to preserve the causal structure.
    • Attention dropout: Dropping attention weights randomly during training acts as a regulariser and reduces overfitting to specific alignment patterns.
    • Key-value caching: During inference, previously computed key and value vectors are cached to avoid redundant computation, significantly speeding up autoregressive generation.