/
Precomputing dimensions during semantic model process

Precomputing dimensions during semantic model process

Applies to: Kyvos Enterprise  Kyvos Cloud (SaaS on AWS) Kyvos AWS Marketplace

Kyvos Azure Marketplace   Kyvos GCP Marketplace Kyvos Single Node Installation (Kyvos SNI)


Precomputing dimensions allow you to support a large number of dimensions and attributes in a single semantic model.

Reduce the combinations of dimensions that are pre-computed to reduce the semantic model size and the time to process the semantic model. This allows you to have more dimensions in a semantic model without exploding its size. You can choose to avoid those pre-aggregations, which are less significant for use in queries.

Use the following configuration property to define partial materialization:

kyvos.build.precompute.degree: Indicates the extent to which aggregates are precomputed in a semantic model. The value ranges from 1 to 10, where 1 indicates the lowest materialization that requires aggregate computations at runtime, while 10 indicates the highest materialization. The default value is 10.

Related content

Precomputing dimensions during semantic model process
Precomputing dimensions during semantic model process
More like this
Precomputing dimensions during semantic model process
Precomputing dimensions during semantic model process
More like this
Precomputing dimensions during semantic model process
Precomputing dimensions during semantic model process
More like this
Precomputing dimensions during semantic model process
Precomputing dimensions during semantic model process
More like this
Precomputing dimensions during semantic model process
Precomputing dimensions during semantic model process
More like this
Precomputing dimensions during semantic model process
Precomputing dimensions during semantic model process
More like this

Copyright Kyvos, Inc. All rights reserved.