Using Sensitive Data Protection to scan BigQuery data
Knowing where your sensitive data exists is often the first step in ensuring that it is properly secured and managed. This knowledge can help reduce the risk of exposing sensitive details such as credit card numbers, medical information, Social Security numbers, driver's license numbers, addresses, full names, and company-specific secrets. Periodic scanning of your data can also help with compliance requirements and ensure best practices are followed as your data grows and changes with use. To help meet compliance requirements, use Sensitive Data Protection to inspect your BigQuery tables and to help protect your sensitive data.
There are two ways to scan your BigQuery data:
Sensitive data profiling. Sensitive Data Protection can generate profiles about BigQuery data across an organization, folder, or project. Data profiles contain metrics and metadata about your tables and help you determine where sensitive and high-risk data reside. Sensitive Data Protection reports these metrics at the project, table, and column levels. For more information, see Data profiles for BigQuery data.
On-demand inspection. Sensitive Data Protection can perform a deep inspection on a single table or a subset of columns and report its findings down to the cell level. This kind of inspection can help you identify individual instances of specific data types, such as the precise location of a credit card number inside a table cell. You can do an on-demand inspection through the Sensitive Data Protection page in the Google Cloud console, the BigQuery page in the Google Cloud console, or programmatically through the DLP API.
This page describes how to do an on-demand inspection through the BigQuery page in the Google Cloud console.
Sensitive Data Protection is a fully managed service that lets Google Cloud customers identify and protect sensitive data at scale. Sensitive Data Protection uses more than 150 predefined detectors to identify patterns, formats, and checksums. Sensitive Data Protection also provides a set of tools to de-identify your data including masking, tokenization, pseudonymization, date shifting, and more, all without replicating customer data.
To learn more about Sensitive Data Protection, see the Sensitive Data Protection documentation.
Before you begin
- Get familiar with Sensitive Data Protection pricing and how to keep Sensitive Data Protection costs under control.
Ensure that the user creating your Sensitive Data Protection jobs is granted an appropriate predefined Sensitive Data Protection IAM role or sufficient permissions to run Sensitive Data Protection jobs.
Scanning BigQuery data using the Google Cloud console
To scan BigQuery data, you create a Sensitive Data Protection job that analyzes a table. You can scan a BigQuery table quickly by using the Scan with Sensitive Data Protection option in the BigQuery Google Cloud console.
To scan a BigQuery table using Sensitive Data Protection:
In the Google Cloud console, go to the BigQuery page.
In the Explorer panel, expand your project and dataset, then select the table.
Click Export > Scan with Sensitive Data Protection. The Sensitive Data Protection job creation page opens in a new tab.
For Step 1: Choose input data, enter a job ID. The values in the Location section are automatically generated. Also, the Sampling section is automatically configured to run a sample scan against your data, but you can adjust the settings as needed.
Click Continue.
Optional: For Step 2: Configure detection, you can configure what types of data to look for, called
infoTypes
.Do one of the following:
- To select from the list of predefined
infoTypes
, click Manage infoTypes. Then, select the infoTypes you want to search for. - To use an existing inspection template, in the Template name field, enter the template's full resource name.
For more information on
infoTypes
, see InfoTypes and infoType detectors in the Sensitive Data Protection documentation.- To select from the list of predefined
Click Continue.
Optional: For Step 3: Add actions, turn on Save to BigQuery to publish your Sensitive Data Protection findings to a BigQuery table. If you don't store findings, the completed job contains only statistics about the number of findings and their
infoTypes
. Saving findings to BigQuery saves details about the precise location and confidence of each individual finding.Optional: If you turned on Save to BigQuery, in the Save to BigQuery section, enter the following information:
- Project ID: the project ID where your results are stored.
- Dataset ID: the name of the dataset that stores your results.
- Optional: Table ID: the name of the table that stores your
results. If no table ID is specified, a default name is assigned to
a new table similar to the following:
dlp_googleapis_date_1234567890
. If you specify an existing table, findings are appended to it.
To include the actual content that was detected, turn on Include quote.
Click Continue.
Optional: For Step 4: Schedule, configure a time span or schedule by selecting either Specify time span or Create a trigger to run the job on a periodic schedule.
Click Continue.
Optional: On the Review page, examine the details of your job. If needed, adjust the previous settings.
Click Create.
After the Sensitive Data Protection job completes, you are redirected to the job details page, and you're notified by email. You can view the results of the scan on the job details page, or you can click the link to the Sensitive Data Protection job details page in the job completion email.
If you chose to publish Sensitive Data Protection findings to BigQuery, on the Job details page, click View Findings in BigQuery to open the table in the Google Cloud console. You can then query the table and analyze your findings. For more information on querying your results in BigQuery, see Querying Sensitive Data Protection findings in BigQuery in the Sensitive Data Protection documentation.
What's next
Learn more about inspecting BigQuery and other storage repositories for sensitive data using Sensitive Data Protection.
Learn more about profiling data in an organization, folder, or project.
Read the Identity & Security blog post Take charge of your data: using Sensitive Data Protection to de-identify and obfuscate sensitive information.
If you want to redact or otherwise de-identify the sensitive data that the Sensitive Data Protection scan found, see the following:
- Inspect text to de-identify sensitive information
- De-identifying sensitive data in the Sensitive Data Protection documentation
- AEAD encryption concepts in GoogleSQL for information on encrypting individual values within a table
- Protecting data with Cloud KMS keys for information on creating and managing your own encryption keys in Cloud KMS to encrypt BigQuery tables