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Reference documentation and code samples for the Vertex AI V1 API module Google::Cloud::AIPlatform::V1::FeatureView::IndexConfig::DistanceMeasureType.
The distance measure used in nearest neighbor search.
Constants
DISTANCE_MEASURE_TYPE_UNSPECIFIED
value: 0
Should not be set.
SQUARED_L2_DISTANCE
value: 1
Euclidean (L_2) Distance.
COSINE_DISTANCE
value: 2
Cosine Distance. Defined as 1 - cosine similarity.
We strongly suggest using DOT_PRODUCT_DISTANCE + UNIT_L2_NORM instead of COSINE distance. Our algorithms have been more optimized for DOT_PRODUCT distance which, when combined with UNIT_L2_NORM, is mathematically equivalent to COSINE distance and results in the same ranking.
DOT_PRODUCT_DISTANCE
value: 3
Dot Product Distance. Defined as a negative of the dot product.