This document describes how to authenticate to Vertex AI Agent Builder programmatically. How you authenticate to Vertex AI Agent Builder depends on the interface you use to access the API and the environment where your code is running.
For more information about Google Cloud authentication, see the authentication overview.
API access
Vertex AI Agent Builder supports programmatic access. You can access the API in the following ways:
Client libraries
The Vertex AI Agent Builder client libraries provide high-level language support for authenticating to Vertex AI Agent Builder programmatically. To authenticate calls to Google Cloud APIs, client libraries support Application Default Credentials (ADC); the libraries look for credentials in a set of defined locations and use those credentials to authenticate requests to the API. With ADC, you can make credentials available to your application in a variety of environments, such as local development or production, without needing to modify your application code.
REST
You can authenticate to the Vertex AI Agent Builder API by using your gcloud CLI credentials or by using Application Default Credentials. For more information about authentication for REST requests, see Authenticate for using REST. For information about the types of credentials, see gcloud CLI credentials and ADC credentials.
API keys
API keys provide a way to associate an API call with a project, which is used for billing and quota purposes, without determining the identity of the caller. API keys can be used only with API methods that support API keys.
Vertex AI Agent Builder supports API keys for the following API methods:
userEvents.Collect
. For more information, see Create an API key.servingConfigs.searchLite
. For more information, see Get search results for an app with website data (API key).
For general information about using API keys, see Authenticate using API keys.
Set up authentication for Vertex AI Agent Builder
How you set up authentication depends on the environment where your code is running.
The following options for setting up authentication are the most commonly used. For more options and information about authentication, see Authentication methods.
Before you complete these instructions, you must complete the basic setup for Vertex AI Agent Builder, as described in Before you begin.
For a local development environment
You can set up credentials for a local development environment in the following ways:
- User credentials for client libraries or third-party tools
- User credentials for REST requests from the command line
- Service account impersonation
Client libraries or third-party tools
Set up Application Default Credentials (ADC) in your local environment:
-
Install the Google Cloud CLI, then initialize it by running the following command:
gcloud init
-
If you're using a local shell, then create local authentication credentials for your user account:
gcloud auth application-default login
You don't need to do this if you're using Cloud Shell.
A sign-in screen appears. After you sign in, your credentials are stored in the local credential file used by ADC.
For more information about working with ADC in a local environment, see Set up ADC for a local development environment.
REST requests from the command line
When you make a REST request from the command line,
you can use your gcloud CLI credentials by including
gcloud auth print-access-token
as part of the command that sends the request.
The following example lists service accounts for the specified project. You can use the same pattern for any REST request.
Before using any of the request data, make the following replacements:
- PROJECT_ID: Your Google Cloud project ID.
To send your request, expand one of these options:
For more information about authenticating using REST and gRPC, see Authenticate for using REST. For information about the difference between your local ADC credentials and your gcloud CLI credentials, see gcloud CLI authentication configuration and ADC configuration.
Service account impersonation
In most cases, you can use your user credentials to authenticate from a local development
environment. If that is not feasible, or if you need to test the permissions assigned to
a service account, you can use service account impersonation. You must have the
iam.serviceAccounts.getAccessToken
permission, which is included in the
Service Account Token Creator
(roles/iam.serviceAccountTokenCreator
) IAM role.
You can set up the gcloud CLI to use service account impersonation by using the
gcloud config set
command:
gcloud config set auth/impersonate_service_account SERVICE_ACCT_EMAIL
For select languages, you can use service account impersonation to create a local ADC file
for use by client libraries. This approach is supported only for the Go, Java, Node.js, and
Python client libraries—it is not supported for the other languages.
To set up a local ADC file with service account impersonation, use the
--impersonate-service-account
flag
with the gcloud auth application-default login
command:
gcloud auth application-default login --impersonate-service-account=SERVICE_ACCT_EMAIL
For more information about service account impersonation, see Use service account impersonation.
On Google Cloud
To authenticate a workload running on Google Cloud, you use the credentials of the service account attached to the compute resource where your code is running, such as a Compute Engine virtual machine (VM) instance. This approach is the preferred authentication method for code running on a Google Cloud compute resource.
For most services, you must attach the service account when you create the resource that will run your code; you cannot add or replace the service account later. Compute Engine is an exception—it lets you attach a service account to a VM instance at any time.
Use the gcloud CLI to create a service account and attach it to your resource:
-
Install the Google Cloud CLI, then initialize it by running the following command:
gcloud init
-
Set up authentication:
-
Create the service account:
gcloud iam service-accounts create SERVICE_ACCOUNT_NAME
Replace
SERVICE_ACCOUNT_NAME
with a name for the service account. -
To provide access to your project and your resources, grant a role to the service account:
gcloud projects add-iam-policy-binding PROJECT_ID --member="serviceAccount:SERVICE_ACCOUNT_NAME@PROJECT_ID.iam.gserviceaccount.com" --role=ROLE
Replace the following:
SERVICE_ACCOUNT_NAME
: the name of the service accountPROJECT_ID
: the project ID where you created the service accountROLE
: the role to grant
- To grant another role to the service account, run the command as you did in the previous step.
-
Grant the required role to the principal that will attach the service account to other resources.
gcloud iam service-accounts add-iam-policy-binding SERVICE_ACCOUNT_NAME@PROJECT_ID.iam.gserviceaccount.com --member="user:USER_EMAIL" --role=roles/iam.serviceAccountUser
Replace the following:
SERVICE_ACCOUNT_NAME
: the name of the service accountPROJECT_ID
: the project ID where you created the service accountUSER_EMAIL
: the email address for a Google Account
-
-
Create the resource that will run your code, and attach the service account to that resource. For example, if you use Compute Engine:
Create a Compute Engine instance. Configure the instance as follows:-
Replace
INSTANCE_NAME
with your preferred instance name. -
Set the
--zone
flag to the zone in which you want to create your instance. -
Set the
--service-account
flag to the email address for the service account that you created.
gcloud compute instances create INSTANCE_NAME --zone=ZONE --service-account=SERVICE_ACCOUNT_EMAIL
-
Replace
For more information about authenticating to Google APIs, see Authentication methods.
On-premises or on a different cloud provider
The preferred method to set up authentication from outside of Google Cloud is to use workload identity federation. For more information, see Set up ADC for on-premises or another cloud provider in the authentication documentation.
Access control for Vertex AI Agent Builder
After you authenticate to Vertex AI Agent Builder, you must be authorized to access Google Cloud resources. Vertex AI Agent Builder uses Identity and Access Management (IAM) for authorization.
For more information about the roles for Vertex AI Agent Builder, see Access control with IAM. For more information about IAM and authorization, see IAM overview.
What's next
- Learn about Google Cloud authentication methods.
- See a list of authentication use cases.