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Create and manage views

This article shows how to create views in Unity Catalog. See What is a view?.

Required permissions

To create a view:

  • You must have the USE CATALOG permission on the parent catalog and the USE SCHEMA and CREATE TABLE permissions on the parent schema. A metastore admin or the catalog owner can grant you all of these privileges. A schema owner can grant you USE SCHEMA and CREATE TABLE privileges on the schema.
  • You must be able to read the tables and views referenced in the view (SELECT on the table or view, as well as USE CATALOG on the catalog and USE SCHEMA on the schema).
  • If a view references tables in the workspace-local Hive metastore, the view can be accessed only from the workspace that contains the workspace-local tables. For this reason, Databricks recommends creating views only from tables or views that are in the Unity Catalog metastore.
  • You cannot create a view that references a view that has been shared with you using Delta Sharing. See What is Delta Sharing?.

To read a view, the permissions required depend on the compute type, Databricks Runtime version, and access mode:

  • For all compute resources, you must have SELECT on the view itself, USE CATALOG on its parent catalog, and USE SCHEMA on its parent schema. This applies to all compute types that support Unity Catalog, including SQL warehouses, clusters in shared access mode, and clusters in single user access mode on Databricks Runtime 15.4 and above.
  • For clusters on Databricks Runtime 15.3 and below that use single user access mode, you must also have SELECT on all tables and views that are referenced by the view, in addition to USE CATALOG on their parent catalogs and USE SCHEMA on their parent schemas.

Note

If you’re using a single-user cluster on Databricks Runtime 15.4 LTS and above and you want to avoid the requirement to have SELECT on the underlying tables and views, verify that your workspace is enabled for serverless compute.

Serverless compute handles data filtering, which allows access to a view without requiring permissions on its underlying tables and views. Be aware that you might incur serverless compute charges when you use single user compute to query views. For more information, see Fine-grained access control on single user compute.

Create a view

To create a view, run the following SQL command. Items in brackets are optional. Replace the placeholder values:

  • <catalog-name>: The name of the catalog.
  • <schema-name>: The name of the schema.
  • <view-name>: A name for the view.
  • <query>: The query, columns, and tables and views used to compose the view.
CREATE VIEW <catalog-name>.<schema-name>.<view-name> AS
SELECT <query>;

For example, to create a view named sales_redacted from columns in the sales_raw table:

CREATE VIEW sales_metastore.sales.sales_redacted AS
SELECT
  user_id,
  email,
  country,
  product,
  total
FROM sales_metastore.sales.sales_raw;

You can also create a view by using the Databricks Terraform provider and databricks_table. You can retrieve a list of view full names by using databricks_views.

Drop a view

You must be the view’s owner to drop a view. To drop a view, run the following SQL command:

DROP VIEW IF EXISTS catalog_name.schema_name.view_name;