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Case Study

Applying Layer Normalization

An intermediate layer in a neural network produces a 4-dimensional output vector for a single training instance. Your task is to apply a normalization technique to this vector. The technique normalizes the inputs across the features for this single instance. Calculate the final output vector after applying this normalization, showing the main intermediate steps of your calculation (mean, standard deviation, and the final scaled/shifted vector).

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Updated 2025-10-07

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