LogoLogo
2024.2
  • Immuta Documentation - 2024.2
  • What is Immuta?
  • Self-Managed Deployment
    • Getting Started
    • Deployment Requirements
    • Install
      • Managed Public Cloud
      • Red Hat OpenShift
      • Generic Installation
      • Immuta in an Air-Gapped Environment
      • Deploy Immuta without Elasticsearch
    • Configure
      • Ingress Configuration
      • Cosign Verification
      • TLS Configuration
      • Immuta in Production
      • External Cache Configuration
      • Rotating Credentials
      • Enabling Legacy Query Engine and Fingerprint
    • Upgrade
      • Upgrade Immuta
      • Upgrade to Immuta 2024.2 LTS
    • Disaster Recovery
    • Troubleshooting
    • Conventions
    • Release Notes
  • Data and Integrations
    • Immuta Integrations
    • Snowflake
      • Getting Started
      • How-to Guides
        • Configure a Snowflake Integration
        • Snowflake Table Grants Migration
        • Edit or Remove Your Snowflake Integration
        • Integration Settings
          • Enable Snowflake Table Grants
          • Use Snowflake Data Sharing with Immuta
          • Configure Snowflake Lineage Tag Propagation
          • Enable Snowflake Low Row Access Policy Mode
            • Upgrade Snowflake Low Row Access Policy Mode
      • Reference Guides
        • Snowflake Integration
        • Snowflake Data Sharing
        • Snowflake Lineage Tag Propagation
        • Snowflake Low Row Access Policy Mode
        • Snowflake Table Grants
        • Warehouse Sizing Recommendations
      • Phased Snowflake Onboarding Concept Guide
    • Databricks Unity Catalog
      • Getting Started
      • How-to Guides
        • Configure a Databricks Unity Catalog Integration
        • Migrate to Unity Catalog
      • Databricks Unity Catalog Integration Reference Guide
    • Databricks Spark
      • How-to Guides
        • Configuration
          • Simplified Databricks Configuration
          • Manual Databricks Configuration
          • Manually Update Your Databricks Cluster
          • Install a Trusted Library
        • DBFS Access
        • Limited Enforcement in Databricks
        • Hide the Immuta Database in Databricks
        • Run spark-submit Jobs on Databricks
        • Configure Project UDFs Cache Settings
        • External Metastores
      • Reference Guides
        • Databricks Spark Integration
        • Databricks Spark Pre-Configuration Details
        • Configuration Settings
          • Cluster Policies
            • Python & SQL
            • Python & SQL & R
            • Python & SQL & R with Library Support
            • Scala
            • Sparklyr
          • Environment Variables
          • Ephemeral Overrides
          • Py4j Security Error
          • Scala Cluster Security Details
          • Databricks Security Configuration for Performance
        • Databricks Change Data Feed
        • Databricks Libraries Introduction
        • Delta Lake API
        • Spark Direct File Reads
        • Databricks Metastore Magic
    • Starburst (Trino)
      • Getting Started
      • How-to Guides
        • Configure Starburst (Trino) Integration
        • Customize Read and Write Access Policies for Starburst (Trino)
      • Starburst (Trino) Integration Reference Guide
    • Redshift
      • Getting Started
      • How-to Guides
        • Configure Redshift Integration
        • Configure Redshift Spectrum
      • Reference Guides
        • Redshift Integration
        • Redshift Pre-Configuration Details
    • Azure Synapse Analytics
      • Getting Started
      • Configure Azure Synapse Analytics Integration
      • Reference Guides
        • Azure Synapse Analytics Integration
        • Azure Synapse Analytics Pre-Configuration Details
    • Amazon S3
    • Google BigQuery
    • Legacy Integrations
      • Securing Hive and Impala Without Sentry
      • Enabling ImmutaGroupsMapping
    • Registering Metadata
      • Data Sources in Immuta
      • Register Data Sources
        • Create a Data Source
        • Create an Amazon S3 Data Source
        • Create a Google BigQuery Data Source
        • Bulk Create Snowflake Data Sources
      • Data Source Settings
        • How-to Guides
          • Manage Data Sources and Data Source Settings
          • Manage Data Source Members
          • Manage Access Requests and Tasks
          • Manage Data Dictionary Descriptions
          • Disable Immuta from Sampling Raw Data
        • Data Source Health Checks Reference Guide
      • Schema Monitoring
        • How-to Guides
          • Run Schema Monitoring and Column Detection Jobs
          • Manage Schema Monitoring
        • Reference Guides
          • Schema Monitoring
          • Schema Projects
        • Why Use Schema Monitoring?
    • Catalogs
      • Getting Started with External Catalogs
      • Configure an External Catalog
      • Reference Guides
        • External Catalogs
        • Custom REST Catalogs
          • Custom REST Catalog Interface Endpoints
    • Tags
      • How-to Guides
        • Create and Manage Tags
        • Add Tags to Data Sources and Projects
      • Tags Reference Guide
  • People
    • Getting Started
    • Identity Managers (IAMs)
      • How-to Guides
        • Microsoft Entra ID
        • Okta LDAP Interface
        • Okta and OpenID Connect
        • Integrate Okta SAML SCIM with Immuta
        • OneLogin with OpenID
        • Configure SAML IAM Protocol
      • Reference Guides
        • Identity Managers
        • SAML Single Logout
        • SAML Protocol Configuration Options
    • Immuta Users
      • How-to Guides
        • Managing Personas and Permissions
        • Manage Attributes and Groups
        • User Impersonation
        • External User ID Mapping
        • External User Info Endpoint
      • Reference Guides
        • Attributes and Groups in Immuta
        • Permissions and Personas
  • Discover Your Data
    • Getting Started
    • Introduction
    • Architecture
    • Data Discovery
      • How-to Guides
        • Enable Sensitive Data Discovery (SDD)
        • Manage Identification Frameworks
        • Manage Patterns
        • Manage Rules
        • Manage SDD on Data Sources
        • Manage Global SDD Settings
        • Migrate From Legacy to Native SDD
      • Reference Guides
        • How Competitive Pattern Analysis Works
        • Built-in Pattern Reference
        • Built-in Discovered Tags Reference
    • Data Classification
      • How-to Guides
        • Activate Classification Frameworks
        • Adjust Identification and Classification Framework Tags
        • How to Use a Built-In Classification Framework with Your Own Tags
      • Built-in Classification Frameworks Reference Guide
  • Detect Your Activity
    • Getting Started
      • Monitor and Secure Sensitive Data Platform Query Activity
        • User Identity Best Practices
        • Integration Architecture
        • Snowflake Roles Best Practices
        • Register Data Sources
        • Automate Entity and Sensitivity Discovery
        • Detect with Discover: Onboarding Guide
        • Using Immuta Detect
      • General Immuta Configuration
        • User Identity Best Practices
        • Integration Architecture
        • Databricks Roles Best Practices
        • Register Data Sources
    • Introduction
    • Audit
      • How-to Guides
        • Export Audit Logs to S3
        • Export Audit Logs to ADLS
        • Run Governance Reports
      • Reference Guides
        • Universal Audit Model (UAM)
        • Snowflake Query Audit Logs
        • Databricks Unity Catalog Audit Logs
        • Databricks Query Audit Logs
        • Starburst (Trino) Query Audit Logs
        • UAM Schema
        • Audit Export CLI
        • Governance Report Types
      • Deprecated Audit Guides
        • Legacy to UAM Migration
        • Download Audit Logs
        • System Audit Logs
    • Detection
      • Use the Detect Dashboards
      • Reference Guides
        • Detect
        • Detect Dashboards
        • Unknown Users in Audit Logs
    • Monitors
      • Manage Monitors and Observations
      • Detect Monitors Reference Guide
  • Secure Your Data
    • Getting Started with Secure
      • Automate Data Access Control Decisions
        • The Two Paths: Orchestrated RBAC and ABAC
        • Managing User Metadata
        • Managing Data Metadata
        • Author Policy
        • Test and Deploy Policy
      • Compliantly Open More Sensitive Data for ML and Analytics
        • Managing User Metadata
        • Managing Data Metadata
        • Author Policy
      • Federated Governance for Data Mesh and Self-Serve Data Access
        • Defining Domains
        • Managing Data Products
        • Managing Data Metadata
        • Apply Federated Governance
        • Discover and Subscribe to Data Products
    • Introduction
      • Scalability and Evolvability
      • Understandability
      • Distributed Stewardship
      • Consistency
      • Availability of Data
    • Authoring Policies in Secure
      • Authoring Policies at Scale
      • Data Engineering with Limited Policy Downtime
      • Subscription Policies
        • How-to Guides
          • Author a Subscription Policy
          • Author an ABAC Subscription Policy
          • Subscription Policies Advanced DSL Guide
          • Author a Restricted Subscription Policy
          • Clone, Activate, or Stage a Global Policy
        • Reference Guides
          • Subscription Policies
          • Subscription Policy Access Types
          • Advanced Use of Special Functions
      • Data Policies
        • Overview
        • How-to Guides
          • Author a Masking Data Policy
          • Author a Minimization Policy
          • Author a Purpose-Based Restriction Policy
          • Author a Restricted Data Policy
          • Author a Row-Level Policy
          • Author a Time-Based Restriction Policy
          • Certifications Exemptions and Diffs
          • External Masking Interface
        • Reference Guides
          • Data Policy Types
          • Masking Policies
          • Row-Level Policies
          • Custom WHERE Clause Functions
          • Data Policy Conflicts and Fallback
          • Custom Data Policy Certifications
          • Orchestrated Masking Policies
    • Domains
      • Getting Started with Domains
      • Domains Reference Guide
    • Projects and Purpose-Based Access Control
      • Projects and Purpose Controls
        • Getting Started
        • How-to Guides
          • Create a Project
          • Create and Manage Purposes
          • Adjust a Policy
          • Project Management
            • Manage Projects and Project Settings
            • Manage Project Data Sources
            • Manage Project Members
        • Reference Guides
          • Projects and Purposes
          • Policy Adjustments
        • Why Use Purposes?
      • Equalized Access
        • Manage Project Equalization
        • Project Equalization Reference Guide
        • Why Use Project Equalization?
      • Masked Joins
        • Enable Masked Joins
        • Why Use Masked Joins?
      • Writing to Projects
        • How-to Guides
          • Create and Manage Snowflake Project Workspaces
          • Create and Manage Databricks Project Workspaces
          • Write Data to the Workspace
        • Reference Guides
          • Project Workspaces
          • Project UDFs (Databricks)
    • Data Consumers
      • Subscribe to a Data Source
      • Query Data
        • Querying Snowflake Data
        • Querying Databricks Data
        • Querying Databricks SQL Data
        • Querying Starburst (Trino) Data
        • Querying Redshift Data
        • Querying Azure Synapse Analytics Data
      • Subscribe to Projects
  • Application Settings
    • How-to Guides
      • App Settings
      • BI Tools
        • BI Tool Configuration Recommendations
        • Power BI Configuration Example
        • Tableau Configuration Example
      • Add a License Key
      • Add ODBC Drivers
      • Manage Encryption Keys
      • System Status Bundle
    • Reference Guides
      • Data Processing, Encryption, and Masking Practices
      • Metadata Ingestion
  • Releases
    • Immuta v2024.2 Release Notes
    • Immuta Release Lifecycle
    • Immuta LTS Changelog
    • Immuta Support Matrix Overview
    • Immuta CLI Release Notes
    • Immuta Image Digests
    • Preview Features
      • Features in Preview
    • Deprecations
  • Developer Guides
    • The Immuta CLI
      • Install and Configure the Immuta CLI
      • Manage Your Immuta Tenant
      • Manage Data Sources
      • Manage Sensitive Data Discovery
        • Manage Sensitive Data Discovery Rules
        • Manage Identification Frameworks
        • Run Sensitive Data Discovery on Data Sources
      • Manage Policies
      • Manage Projects
      • Manage Purposes
    • The Immuta API
      • Integrations API
        • Getting Started
        • How-to Guides
          • Configure an Amazon S3 Integration
          • Configure an Azure Synapse Analytics Integration
          • Configure a Databricks Unity Catalog Integration
          • Configure a Google BigQuery Integration
          • Configure a Redshift Integration
          • Configure a Snowflake Integration
          • Configure a Starburst (Trino) Integration
        • Reference Guides
          • Integrations API Endpoints
          • Integration Configuration Payload
          • Response Schema
          • HTTP Status Codes and Error Messages
      • Immuta V2 API
        • Data Source Payload Attribute Details
        • Data Source Request Payload Examples
        • Create Policies API Examples
        • Create Projects API Examples
        • Create Purposes API Examples
      • Immuta V1 API
        • Authenticate with the API
        • Configure Your Instance of Immuta
          • Get Fingerprint Status
          • Get Job Status
          • Manage Frameworks
          • Manage IAMs
          • Manage Licenses
          • Manage Notifications
          • Manage Sensitive Data Discovery (SDD)
          • Manage Tags
          • Manage Webhooks
          • Search Filters
        • Connect Your Data
          • Create and Manage an Amazon S3 Data Source
          • Create an Azure Synapse Analytics Data Source
          • Create an Azure Blob Storage Data Source
          • Create a Databricks Data Source
          • Create a Presto Data Source
          • Create a Redshift Data Source
          • Create a Snowflake Data Source
          • Create a Starburst (Trino) Data Source
          • Manage the Data Dictionary
        • Manage Data Access
          • Manage Access Requests
          • Manage Data and Subscription Policies
          • Manage Domains
          • Manage Write Policies
            • Write Policies Payloads and Response Schema Reference Guide
          • Policy Handler Objects
          • Search Audit Logs
          • Search Connection Strings
          • Search for Organizations
          • Search Schemas
        • Subscribe to and Manage Data Sources
        • Manage Projects and Purposes
          • Manage Projects
          • Manage Purposes
        • Generate Governance Reports
Powered by GitBook

Other versions

  • SaaS
  • 2024.3

Copyright © 2014-2024 Immuta Inc. All rights reserved.

On this page
  • Getting started with Google BigQuery integration
  • Configuration
  • Protect your data
  • FAQs
  • Google BigQuery integration conceptual overview
  • Secure views
  • Managing access
  • Limitations
  • Supported policies
  • Additional resources
  • Configure the Google BigQuery integration
  • Prerequisites
  • Google Cloud service account and role used by Immuta to connect to Google BigQuery
  • Enable the Google BigQuery integration
  • Disable the Google BigQuery integration
  • Next steps

Was this helpful?

Export as PDF
  1. Data and Integrations

Google BigQuery

Last updated 3 months ago

Was this helpful?

Private preview: This integration is available to select accounts. Reach out to your Immuta representative for details.

Getting started with Google BigQuery integration

The Google BigQuery integration allows users to query policy protected data directly in BigQuery as secure views within an Immuta-created dataset. Immuta controls who can see what within the views, allowing data governors to create complex ABAC policies and data users to query the right data within the BigQuery console.

Configuration

Google BigQuery is configured through the Immuta console and a script provided by Immuta. While you can complete some steps within the BigQuery console, it is easiest to install using gcloud and the Immuta script.

Protect your data

Once Google BigQuery has been configured, BigQuery admins can start creating subscription and data policies to meet compliance requirements and users can start querying policy protected data directly in BigQuery.

  1. Create a global or .

  2. Revoke user access to the original datasets and grant users access to the Immuta created datasets in BigQuery.

  3. Users query data from the Immuta created datasets directly in BigQuery.

FAQs

  1. What permissions will Immuta have in my BigQuery environment?

  2. What integration features will Immuta support for BigQuery?

    • For private preview, Immuta supports a basic version of the BigQuery integration where Immuta can enforce specific policies on data in a single BigQuery project. At this time, workspaces, tag ingestion, user impersonation, query audit, and multiple integrations are not supported.

Google BigQuery integration conceptual overview

In this policy push integration, Immuta creates views that contain all policy logic. Each view has a 1-to-1 relationship with the original table. Access controls are applied in the view, allowing customers to leverage Immuta’s powerful set of attribute-based policies and query data directly in BigQuery.

BigQuery is organized by projects (which can be thought of as databases), datasets (which can be compared to schemas), tables, and views. When you enable the integration, an Immuta dataset is created in BigQuery that contains the Immuta-required user entitlements information. These objects within the Immuta dataset are intended to only be used and altered by the Immuta application.

After data sources are registered, Immuta uses the custom user and role, created before the integration is enabled, to push the Immuta data sources as views into a mirrored dataset of the original table. Immuta manages grants on the created view to ensure only users subscribed to the Immuta data source will see the data.

Secure views

Managing access

Following the principle of least privilege, Immuta does not have permission to manage Google Cloud Platform users, specifically in granting or denying access to a project and its datasets. This means that data governors should limit user access to original datasets to ensure data users are accessing the data through the Immuta created views and not the backing tables. The only users who need to have access to the backing tables are the credentials used to register the tables in Immuta.

Additionally, a data governor must grant users access to the mirrored datasets that Immuta will create and populate with views. Immuta and BigQuery’s best practice recommendation is to grant access via groups in Google Cloud Platform. Because users still must be registered in Immuta and subscribed to an Immuta data source to be able to query Immuta views, all Immuta users can be granted access to the mirrored datasets that Immuta creates.

Limitations

  • This integration can only be enabled through a manual bootstrap using the Immuta API.

  • This integration can only be enabled to work in a single region.

Supported policies

This integration supports the following policy types:

  • Column masking

    • Mask using hashing (SHA256())

    • Mask by making NULL

    • Mask using constant

    • Mask using a regular expression

    • Mask by date rounding

    • Mask by numeric rounding

    • Mask using custom functions

  • Row-level masking

  • Row visibility based on user attributes and/or object attributes

  • Only show rows that fall within a given time window

  • Minimize rows

  • Filter rows using custom WHERE clause

  • Always hide rows

Additional resources

See the resources below to start implementing and using the BigQuery integration:

Configure the Google BigQuery integration

Follow this guide to connect your Google BigQuery data warehouse to Immuta.

Prerequisites

  • Immuta SaaS or Immuta v2023.1 or newer with Google BigQuery integration (PrPr) enabled.

Google Cloud service account and role used by Immuta to connect to Google BigQuery

The Google BigQuery integration requires you to create a Google Cloud service account and role that will be used by Immuta to

  • create a Google BigQuery dataset that will be used to store a table of user entitlements, UDFs for policy enforcement, etc.

  • manage the table of user entitlements via updates when entitlements change in Immuta.

  • create datasets and secure views with access control policies enforced, which mirror tables inside of datasets you ingest as Immuta data sources.

You have two options to create the required Google Cloud service account and role:

The Immuta script

The bootstrap.sh script is a shell script provided by Immuta that creates prerequisite Google Cloud IAM objects for the integration to connect. When you run this script from your command line, it will create the following items, scoped at the project-:

  • A new Google Cloud IAM role

  • A new Google Cloud service account, which will be granted the newly-created role

  • A JSON keyfile for the newly-created service account

Google Cloud IAM roles required to run the script

To execute bootstrap.sh from your command line, you must be authenticated to the gcloud CLI utility as a user with all of the following roles:

  • roles/iam.roleAdmin

  • roles/iam.serviceAccountAdmin

  • roles/serviceusage.serviceUsageAdmin

Having these three roles is the least-privilege set of Google Cloud IAM roles required to successfully run the bootstrap.sh script from your command line. However, having either of the following Google Cloud IAM roles will also allow you to run the script successfully:

  • roles/editor

  • roles/owner

Create a service account and role by running the script provided by Immuta

  1. Set the account property in the core section for Google Cloud CLI to the account gcloud should use for authentication. (You can run gcloud auth list to see your currently available accounts):

    gcloud config set account ACCOUNT
  2. In Immuta, navigate to the App Settings page and click the Integrations tab.

  3. Click Add Integration and select Google BigQuery from the dropdown menu.

  4. Click Select Authentication Method and select Key File.

  5. Click Download Script(s).

  6. Before you run the script, update your permissions to execute it:

    chmod 755 <path to downloaded script>
  7. Run the script, where

    • PROJECT_ID is the Google Cloud Platform project to operate on.

    • ROLE_ID is the name of the custom role to create.

    • NAME will create a service account with the provided name.

    • OUTPUT_FILE is the path where the resulting private key should be written. File system write permission will be checked on the specified path prior to the key creation.

    • undelete-role (optional) will undelete the custom role from the project. Roles that have been deleted for a long time can't be undeleted. This option can fail for the following reasons:

      • The role specified does not exist.

      • The active user does not have permission to access the given role.

    • enable-api (optional) provided you’ve been granted access to enable the Google BigQuery API, will enable the service.

    $ bootstrap.sh \
        --project PROJECT_ID \
        --role ROLE_ID \
        --service_account NAME \
        --keyfile OUTPUT_FILE \
        [--undelete-role] \
        [--enable-api]

Create a service account and role by using Google Cloud console

Alternatively, you may use the Google Cloud Console to create the prerequisite role, service account, and private key file for the integration to connect to Google BigQuery.

    • bigquery.datasets.create

    • bigquery.datasets.delete

    • bigquery.datasets.get

    • bigquery.datasets.update

    • bigquery.jobs.create

    • bigquery.jobs.get

    • bigquery.jobs.list

    • bigquery.jobs.listAll

    • bigquery.routines.create

    • bigquery.routines.delete

    • bigquery.routines.get

    • bigquery.routines.list

    • bigquery.routines.update

    • bigquery.tables.create

    • bigquery.tables.delete

    • bigquery.tables.export

    • bigquery.tables.get

    • bigquery.tables.getData

    • bigquery.tables.list

    • bigquery.tables.setCategory

    • bigquery.tables.update

    • bigquery.tables.updateData

    • bigquery.tables.updateTag

Enable the Google BigQuery integration

  1. In Immuta, navigate to the App Settings page and click the Integrations tab.

  2. Click Add Integration and select Google BigQuery from the dropdown menu.

  3. Click Select Authentication Method and select Key File.

    • Project Id: The Google Cloud Platform project to operate on, where your Google BigQuery data warehouse is located. A new dataset will be provisioned in this Google BigQuery project to store the integration configuration.

  4. Complete the following fields:

    • Immuta Dataset: The name of the Google BigQuery dataset to provision inside of the project. Important: if you are using multiple environments in the same Google BigQuery project, this dataset to provision must be unique across environments.

    • Dataset Suffix: The suffix that will be postfixed to the name of each dataset created to store secure views, one per dataset that you ingest a table for as a data source in Immuta. Important: if you are using multiple environments in the same Google BigQuery project, this suffix must be unique across environments.

    • GCP Location: The dataset’s location. After a dataset is created, the location can't be changed. Note that

      • If you choose EU for the dataset location, your Core BigQuery Customer Data resides in the EU.

      • The region set for the GCP location must match the region of your datasets. Set GCP location to a general region (for example, US) to include child regions.

  5. Click Test Google BigQuery Integration.

  6. Click Save.

Disable the Google BigQuery integration

You can disable the Google BigQuery integration automatically or manually.

Automatically disable integration

  1. Click the App Settings icon, and then click the Integrations tab.

  2. Select the Google BigQuery integration you would like to disable, and select the Disable Integration checkbox.

  3. Click Save.

Manually disable integration

The privileges required to run the cleanup script are the same as the Google Cloud IAM roles required to run the bootstrap.sh script.

  1. Click the App Settings icon, and then click the Integrations tab.

  2. Select the Google BigQuery integration you would like to disable, and click Download Scripts.

  3. Click Save. Wait until Immuta has finished saving your configuration changes before proceeding.

  4. Before you run the script, update your permissions to execute it:

    chmod 755 <path to downloaded script>
  5. Run the cleanup script.

Next steps

You can find a list of the permissions the custom Immuta role has .

The Immuta integration uses a mirrored dataset approach. That is, if the source dataset is named mydataset, Immuta will create a dataset named mydataset_secure, assuming that _secure is the specified Immuta dataset suffix. This mirrored dataset is an , allowing it to access the data of the original dataset. It will contain the Immuta-managed views, which have identical names to the original tables they’re based on.

Building global and to govern data

to collaborate

uploaded on the Immuta .

Immuta role with SYSTEM_ADMIN permissions and an .

.

You will need to use the objects created in these steps to .

Install .

with the following privileges:

and grant it the custom role you created in step 1.

.

Once the Google Cloud IAM custom role and service account are created, you can enable the Google BigQuery integration. This section illustrates how to enable the integration on the Immuta app settings page. To configure this integration via the Immuta API, see the .

Upload your GCP Service Account Key File. This is the private key file generated in . Uploading this file will auto-populate the following fields:

Service Account: The service account you created in .

Immuta Role: The custom role you created in .

Build and

to securely collaborate on analytical workloads

authorized dataset
Creating BigQuery data sources
subscription
data policies
Creating projects
Install the gcloud CLI
gcloud
Create a custom role using the console
Create a service account
Enable the Google BigQuery API
Configure a Google BigQuery integration API guide
Create Google BigQuery data sources
global subscription policies
data policies
Create projects
subscription
Register your BigQuery tables and views in Immuta as data sources.
Create a custom role and assign that role to a custom user to use as the Immuta system account.
Enable the integration in the Immuta console.
supported data policy
here
Configuring the Google BigQuery integration
Run the script provided by Immuta
Use the Google Cloud Console
enable the Google BigQuery integration
create a Google Cloud service account and role for Immuta to use to connect to Google BigQuery
create a Google Cloud service account and role for Immuta to use to connect to Google BigQuery
create a Google Cloud service account and role for Immuta to use to connect to Google BigQuery
Google BigQuery ODBC driver
API key
app settings page