ScalarQuantizationCompression Class
Definition
Important
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Contains configuration options specific to the scalar quantization compression method used during indexing and querying.
public class ScalarQuantizationCompression : Azure.Search.Documents.Indexes.Models.VectorSearchCompression
type ScalarQuantizationCompression = class
inherit VectorSearchCompression
Public Class ScalarQuantizationCompression
Inherits VectorSearchCompression
- Inheritance
Constructors
ScalarQuantizationCompression(String) |
Initializes a new instance of ScalarQuantizationCompression. |
Properties
CompressionName |
The name to associate with this particular configuration. (Inherited from VectorSearchCompression) |
DefaultOversampling |
Default oversampling factor. Oversampling will internally request more documents (specified by this multiplier) in the initial search. This increases the set of results that will be reranked using recomputed similarity scores from full-precision vectors. Minimum value is 1, meaning no oversampling (1x). This parameter can only be set when rerankWithOriginalVectors is true. Higher values improve recall at the expense of latency. (Inherited from VectorSearchCompression) |
Parameters |
Contains the parameters specific to Scalar Quantization. |
RerankWithOriginalVectors |
If set to true, once the ordered set of results calculated using compressed vectors are obtained, they will be reranked again by recalculating the full-precision similarity scores. This will improve recall at the expense of latency. (Inherited from VectorSearchCompression) |
RescoringOptions |
Contains the options for rescoring. (Inherited from VectorSearchCompression) |
TruncationDimension |
The number of dimensions to truncate the vectors to. Truncating the vectors reduces the size of the vectors and the amount of data that needs to be transferred during search. This can save storage cost and improve search performance at the expense of recall. It should be only used for embeddings trained with Matryoshka Representation Learning (MRL) such as OpenAI text-embedding-3-large (small). The default value is null, which means no truncation. (Inherited from VectorSearchCompression) |
Applies to
Azure SDK for .NET