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Kyvos Native Compute operates independently of any external compute clusters when processing semantic models. It uses its proprietary Kyvos Analytical Store, which reduces costs, bolsters security, and removes the dependency on permissions.

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When you process a semantic model with no Spark, cuboids are stored at persistent storage. However, a copy of these cuboids is kept at the local storage (local disk).

  • Shared Query Engine: In this mode, the query engine not only performs queries but also handles semantic model processing. This dual role is named SHARED because the same process undertakes both activities.

  • Dedicated Compute: In this mode, the semantic model is processed via dedicated service. In cloud-based deployment, the semantic model is processed using Kubernetes (K8S) cluster-based nodes while in ON PREM environment, models are processed on dedicated nodes.

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  • AWS: For Kubernetes, Kyvos processes the semantic model using Amazon Elastic Kubernetes Service (Amazon EKS). You can select Query Engine or Kubernetes as a compute engine using no Spark model processing.
    From Kyvos 2024.10, you can process semantic model with no-Spark using the Shared Query Engine on AWS Managed Services.
    For further details about deployment, see the Automated deployment for AWS via CloudFormation with Kyvos Native section.

  • Azure: For Kubernetes, Kyvos processes the semantic model using Azure’s managed service AKS (Azure Kubernetes Service).

    • The Azure cluster is deployed via ARM templates. You can create a cluster without Spark or process the semantic model using Spark mode within ARM templates.
      For further details about deployment, see the Automated deployment on Azure with Kyvos Native section.

    • From Kyvos 2024.3 onwards, you can select the compute cluster as the Query engine or Kubernetes when deploying Kyvos through Azure Template Specs.

  • GCP: For Kubernetes, Kyvos processes the semantic model using Google Cloud's managed service GKE (Google Kubernetes Engine). The GKE cluster is deployed through GCP Installation Files. Using the scripts, you can select a No-Spark-based cluster or process the semantic model using Spark Mode.
    Optionally, for no-Spark deployments, you can either use new or existing Dataproc cluster.
    For further details about Kyvos deployment on GCP using the no-Spark model, see the following section:

  • On Premises: For On-premises deployment, you can deploy using No Spark types: SHARED_QE and Compute Server. For further details about on premises deployment with no-Spark, see the Deploying no Hadoop no Spark.

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