google.cloud.gcp_vertexai_tensorboard module – Creates a GCP VertexAI.Tensorboard resource

Note

This module is part of the google.cloud collection (version 1.12.0).

You might already have this collection installed if you are using the ansible package. It is not included in ansible-core. To check whether it is installed, run ansible-galaxy collection list.

To install it, use: ansible-galaxy collection install google.cloud. You need further requirements to be able to use this module, see Requirements for details.

To use it in a playbook, specify: google.cloud.gcp_vertexai_tensorboard.

Synopsis

  • Tensorboard is a physical database that stores users’ training metrics. A default Tensorboard is provided in each region of a GCP project. If needed users can also create extra Tensorboards in their projects.

Requirements

The below requirements are needed on the host that executes this module.

  • python >= 3.8

  • requests >= 2.18.4

  • google-auth >= 2.25.1

Parameters

Parameter

Comments

access_token

string

The access token used to authenticate.

auth_kind

string / required

The type of credential used.

Choices:

  • "accesstoken"

  • "application"

  • "machineaccount"

  • "serviceaccount"

description

string

Description of this Tensorboard.

display_name

string / required

User provided name of this Tensorboard.

encryption_spec

dictionary

Customer-managed encryption key spec for a Tensorboard.

If set, this Tensorboard and all sub-resources of this Tensorboard will be secured by this key.

kms_key_name

string / required

The Cloud KMS resource identifier of the customer managed encryption key used to protect a resource.

Has the form: projects/my-project/locations/my-region/keyRings/my-kr/cryptoKeys/my-key.

The key needs to be in the same region as where the resource is created.

env_type

string

Specifies which Ansible environment you’re running this module within.

This should not be set unless you know what you’re doing.

This only alters the User Agent string for any API requests.

labels

dictionary

The labels with user-defined metadata to organize your Tensorboards.

project

string

The Google Cloud Platform project to use.

region

string

The region of the tensorboard.

eg us-central1.

scopes

list / elements=string

Array of scopes to be used.

service_account_contents

jsonarg

The contents of a Service Account JSON file,

either in a dictionary or as a JSON string that represents it.

service_account_email

string

An optional service account email address if machineaccount is

selected and the user does not wish to use the default email.

service_account_file

path

The path of a Service Account JSON file if serviceaccount

is selected as type.

state

string

Whether the resource should exist in GCP.

Choices:

  • "present" ← (default)

  • "absent"

Notes

Note

Examples

- name: Create Tensorboard
  google.cloud.gcp_vertexai_tensorboard:
    state: present
    display_name: my-tensorboard
    description: sample description
    labels:
      key1: value1
      key2: value2
    region: us-central1
    project: "{{ gcp_project }}"
    auth_kind: "{{ gcp_cred_kind }}"
    service_account_file: "{{ gcp_cred_file }}"

Return Values

Common return values are documented here, the following are the fields unique to this module:

Key

Description

blobStoragePathPrefix

string

Consumer project Cloud Storage path prefix used to store blob data, which can either be a bucket or directory.

Does not end with a ‘/’.

Returned: success

changed

boolean

Whether the resource was changed.

Returned: always

createTime

string

The timestamp of when the Tensorboard was created in RFC3339 UTC “Zulu” format, with nanosecond resolution and up to nine fractional digits.

Returned: success

name

string

Name of the Tensorboard.

Returned: success

runCount

string

The number of Runs stored in this Tensorboard.

Returned: success

state

string

The current state of the resource.

Returned: always

updateTime

string

The timestamp of when the Tensorboard was last updated in RFC3339 UTC “Zulu” format, with nanosecond resolution and up to nine fractional digits.

Returned: success

Authors

  • Google Inc. (@googlecloudplatform)