Querying a table reads data from the underlying Cloud Storage files using the metadata managed by the Lakehouse runtime catalog.
You can run queries from open source engines like Spark and Trino, or directly from BigQuery using a four-part table name syntax (P.C.N.T syntax).
Before you begin
-
Verify that billing is enabled for your Google Cloud project.
-
Enable the BigLake API.
Roles required to enable APIs
To enable APIs, you need the Service Usage Admin IAM role (
roles/serviceusage.serviceUsageAdmin), which contains theserviceusage.services.enablepermission. Learn how to grant roles. - Set up the Lakehouse runtime catalog with the Apache Iceberg REST catalog endpoint.
Required roles
To get the permissions that you need to query a table, ask your administrator to grant you the following IAM roles on your project and storage bucket:
-
Read table data in credential vending mode:
BigLake Viewer (
roles/biglake.viewer) - the project -
Read table data in non-credential vending mode:
- BigLake Viewer (
roles/biglake.viewer) - the project - Storage Object Viewer (
roles/storage.objectViewer) - the Cloud Storage bucket
- BigLake Viewer (
For more information about granting roles, see Manage access to projects, folders, and organizations.
You might also be able to get the required permissions through custom roles or other predefined roles.
Table capabilities and support
When using tables in the Lakehouse runtime catalog, it's helpful to understand the different table types and their opt-in capabilities. To learn more about using Apache Iceberg tables specifically, see Overview of Apache Iceberg tables.
Supported Iceberg tables
Only Apache Iceberg V2 (GA) and V3 (Preview) tables are supported. Iceberg V1 tables aren't supported. To upgrade existing V1 tables, see Upgrade Iceberg V1 tables to V2.
Use table options (Preview)
You can opt in to use BigQuery managed capabilities, such as BigQuery Data Manipulation Language (DML) and automatic table management, by configuring specific table properties. These features are enabled in different ways depending on where the table is created:
- From BigQuery: BigQuery DML and automatic table management are enabled by default.
- From open source engines: To opt-in, you must explicitly configure table properties. See Configure table options for more information.
When querying tables from BigQuery, you can access standard Iceberg tables as well as tables enabled for BigQuery managed capabilities. See Configure table options for detailed instructions.
Query a table
Select all data from the table:
Spark
spark.sql("SELECT * FROM TABLE_NAME;").show()
Trino
SELECT * FROM TABLE_NAME;
BigQuery
To query Apache Iceberg tables in the
Lakehouse runtime catalog from BigQuery, use
the four-part table name in your query with the following format: PROJECT_NAME.CATALOG_ID.NAMESPACE_OR_SCHEMA_NAME.TABLE_NAME.
SELECT * FROM `PROJECT_NAME.CATALOG_ID.NAMESPACE_OR_SCHEMA_NAME.TABLE_NAME`;
Replace the following values:
PROJECT_NAME: the Google Cloud project that owns the catalog in the Lakehouse runtime catalog. The selected Google Cloud project in the Google Cloud console is billed for the query.CATALOG_ID: the ID of the Lakehouse runtime catalog specified when the catalog was created. This identifier is used as the catalog name in BigQuery queries.This identifier is also the name of your Cloud Storage bucket.
For example, if you created your bucket to store your catalog and named it
iceberg-bucket, both your catalog name and bucket name areiceberg-bucket. This is used later when you query your catalog in BigQuery, using the P.C.N.T syntax. For example,my-project.catalog_id.quickstart_namespace.quickstart_table.NAMESPACE_OR_SCHEMA_NAME: the table namespace if using Spark or table schema name if using Trino.TABLE_NAME: the name of your table.
Query using time travel
You can query historical data from your Lakehouse Iceberg tables using time
travel. You can time travel from BigQuery using the FOR
SYSTEM_TIME AS OF clause, or from open source engines like Spark using snapshot
IDs, timestamps, tags, or branches.
Query by timestamp
To query data as of a specific timestamp:
Spark
SELECT * FROM NAMESPACE.TABLE_NAME TIMESTAMP AS OF '2026-02-26 01:21:00';
BigQuery
SELECT * FROM `PROJECT_ID.CATALOG_ID.NAMESPACE.TABLE_NAME` FOR SYSTEM_TIME AS OF '2026-02-26 01:21:00';
Query by snapshot ID
To query data as of a specific snapshot ID:
Spark
SELECT * FROM NAMESPACE.TABLE_NAME VERSION AS OF 10963874102873;
Query by tag
To create a tag and query data as of that tag:
Spark
-- Create tag 'historical-snapshot'
ALTER TABLE NAMESPACE.TABLE_NAME CREATE TAG 'historical-snapshot' AS OF VERSION 123456789012345;
-- Query by tag
SELECT * FROM NAMESPACE.TABLE_NAME VERSION AS OF 'historical-snapshot';
Query by branch
To create a branch and query data as of that branch:
Spark
-- Create branch 'audit-branch'
ALTER TABLE NAMESPACE.TABLE_NAME CREATE BRANCH 'audit-branch' AS OF VERSION 123456789012345;
-- Query by branch
SELECT * FROM NAMESPACE.TABLE_NAME VERSION AS OF 'audit-branch';
What's next
- Learn how to alter a table.