Cloud Data Loss Prevention (Cloud DLP) is now a part of Sensitive Data Protection. The API name remains the same: Cloud Data Loss Prevention API (DLP API). For information about the services that make up Sensitive Data Protection, see Sensitive Data Protection overview.

Sensitive Data Protection documentation

Sensitive Data Protection provides access to a powerful sensitive data inspection, classification, and de-identification platform. Sensitive Data Protection includes:

Go to the Sensitive Data Protection product page for more.

Start your proof of concept with 300ドル in free credit

  • Develop with our latest Generative AI models and tools.
  • Get free usage of 20+ popular products, including Compute Engine and AI APIs.
  • No automatic charges, no commitment.

Keep exploring with 20+ always-free products.

Access 20+ free products for common use cases, including AI APIs, VMs, data warehouses, and more.

Explore self-paced training, use cases, reference architectures, and code samples with examples of how to use and connect Google Cloud services.
Training
Training and tutorials

Redact sensitive data with Sensitive Data Protection

Learn the basic capabilities of the DLP API and try various ways to use the API to help protect data.

Training
Training and tutorials

Create a de-identified copy of data in Cloud Storage

Scan a Cloud Storage bucket for sensitive data and create a de-identified copy of the data in a separate bucket.

Training
Training and tutorials

Discover and Protect Sensitive Data Across Your Ecosystem

Complete a skill badge course to demonstrate your skills in using Sensitive Data Protection services to discover, inspect, and de-identify sensitive data in Google Cloud.

Related videos

Except as otherwise noted, the content of this page is licensed under the Creative Commons Attribution 4.0 License, and code samples are licensed under the Apache 2.0 License. For details, see the Google Developers Site Policies. Java is a registered trademark of Oracle and/or its affiliates.

Last updated 2025年11月21日 UTC.