Cloud Computing

How to Set Up Centralized Cross-Account Safeguards with Amazon Bedrock Guardrails

2026-05-01 09:05:34

Introduction

Amazon Bedrock Guardrails now offers centralized cross-account safeguards, allowing you to enforce safety controls across multiple AWS accounts within an organization from a single management account. This capability ensures uniform protection for all generative AI applications using Bedrock, reducing administrative overhead while maintaining compliance with corporate responsible AI policies. In this guide, we'll walk you through the steps to configure both account-level and organization-level enforcement, including prerequisites, model filtering, and content guarding options.

How to Set Up Centralized Cross-Account Safeguards with Amazon Bedrock Guardrails
Source: aws.amazon.com

What You Need

Step-by-Step Instructions

Step 1: Prepare Your Guardrail and Prerequisites

Before enabling enforcement, you must create a guardrail with a specific version. This version will be used across accounts and cannot be changed by member accounts – ensuring consistency. In the Bedrock Guardrails console, create a new guardrail or use an existing one. Then:

These steps ensure the guardrail is ready for centralized enforcement.

Step 2: Enable Account-Level Enforcement

Account-level enforcement automatically applies the guardrail to all Bedrock model invocations in a specific AWS account and region. To set it up:

  1. In the Bedrock Guardrails console, go to Account-level enforcement configurations.
  2. Click Create.
  3. Select the guardrail and version you prepared in Step 1. This guardrail will apply to all Bedrock inference calls from this account in the current region.
  4. (Optional) Configure model filtering – see Step 3 below.
  5. Save the configuration.

Repeat for each account where you want enforcement, or use organization-level enforcement to cover all at once.

Step 3: Configure Model Inclusion or Exclusion

With the new feature, you can define which models are affected by the enforcement. Use the Include or Exclude behavior:

In the account-level enforcement configuration form, look for the model selection options and choose your preference. This granular control lets you apply safeguards to specific models while exempting others (e.g., test models).

How to Set Up Centralized Cross-Account Safeguards with Amazon Bedrock Guardrails
Source: aws.amazon.com

Step 4: Set Content Guarding Controls

You can choose between Comprehensive and Selective content guarding for system prompts and user prompts:

Select the appropriate option in the enforcement form. This step ensures that the guardrail's filters are applied as intended.

Step 5: Enable Organization-Level Enforcement (Optional)

For centralized management across all accounts and OUs in your AWS Organization, use organization-level enforcement:

  1. In the Bedrock Guardrails console, navigate to Organization-level enforcement configurations.
  2. Choose a guardrail and version from the management account.
  3. Define the policy that applies this guardrail to all member accounts, OUs, or specific accounts.
  4. Optionally, allow account-level overrides (but note: organization-level enforcement can be set as mandatory).
  5. Save and deploy. This policy automatically enforces the guardrail on every Bedrock model invocation across the organization.

This eliminates the need to configure each account individually and ensures uniform protection.

Tips and Conclusion

By following these steps, you can centrally manage responsible AI safeguards across your entire AWS organization, reducing manual oversight while maintaining high standards. The new cross-account capabilities simplify compliance with corporate AI policies and free up your security team from per-account configuration checks.

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