liiir1985 7f62dcda9f | ||
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README.md | ||
create_instance.py | ||
create_instance_test.py | ||
noxfile.py | ||
requirements-test.txt | ||
requirements.txt | ||
startup-script.sh |
README.md
Using the Cloud Client Libraries for Python
This document demonstrates how to use the Cloud Client Libraries for Python for Compute Engine.
It describes how to authorize requests and how to create, list, and delete instances.
This exercise discusses how to use the google-api-python-client
library to access Compute Engine
resources. You can run this sample from your local machine or on a VM instance, provided that
you have authorized the sample correctly.
For a full list of available client libraries, including other Google client libraries and third-party open source libraries, see the client libraries page.
To view the full code example with all of the necessary imports, see the create_instance.py file.
Objectives
- Perform OAuth 2.0 authorization using the
oauth2client
library - Create, list and delete instances using the
google-api-python-client
library
Costs
This tutorial uses billable components of Google Cloud including Compute Engine.
Before you begin
-
In the Google Cloud Console, on the project selector page, select or create a Google Cloud project. Go to project selector.
-
Make sure that billing is enabled for your cloud project. Learn how to confirm that billing is enabled for your project.
-
After the SDK is installed, run
gcloud auth application-default login
. -
Install the google-api-python-client library. Typically, you can run:
pip install --upgrade google-api-python-client
-
Enable the Cloud Storage API.
gcloud services enable storage.googleapis.com
-
Create a Cloud Storage bucket and note the bucket name for later.
Authorizing requests
This sample uses OAuth 2.0 authorization. There are many ways to authorize requests using OAuth 2.0,
but for the example use application default credentials. This lets you reuse the credentials from
the gcloud
tool if you are running the sample on a local workstation or reuse credentials from a
service account if you are running the sample from within Compute Engine or App Engine. You should
have installed and authorized the gcloud
tool in the "Before you begin" section.
Application default credentials are provided in Google API Client Libraries automatically. You just have to build and initialize the API:
import googleapiclient
compute = googleapiclient.discovery.build('compute', 'v1')
See the main()
method in the create_instance.py script, to see how an API
client is built and used.
Listing instances
Using google-api-python-client
, you can list instances by using the compute.instances().list()
method.
You need to provide the project ID and the zone for which you want to list instances. For example:
def list_instances(compute, project, zone):
result = compute.instances().list(project=project, zone=zone).execute()
return result['items'] if 'items' in result else None
Adding an instance
To add an instance, use the compute.instances().insert()
method and specify the properties of the new
instance. These properties are specified in the request body; for details about each property see
the API reference for instances.insert
.
At a minimum, your request must provide values for the following properties when you create a new instance:
- Instance name
- Root persistent disk
- Machine type
- Zone
- Network Interfaces
This sample starts an instance with the following properties in a zone of your choice:
- Machine type: e2-standard-2
- Root persistent disk: a new persistent disk based on the latest Debian 8 image
- The Compute Engine default service account with the following scopes:
- https://www.googleapis.com/auth/devstorage.read_write, so the instance can read and write files in Cloud Storage
- https://www.googleapis.com/auth/logging.write, so the instances logs can upload to Cloud Logging
- Metadata to specify commands that the instance should execute upon startup
You can see an example of instance creation in the create_instance
method in create_instance.py file.
Root persistent disks
All instances must boot from a root persistent disk. The root persistent disk contains all of the necessary files required for starting an instance. When you create a root persistent disk you must select a public image or a custom image to apply to the disk. In the example above, a new root persistent disk is created based on Debian 8 at the same time as the instance. However, it is also possible to create a disk beforehand and attach it to the instance.
To create an instance using your own custom OS image, you need to provide a different URL than the one included in the example. For more information about starting an instance with your own images, see Creating an instance from a custom image.
Instance metadata
When you create your instance, you might want to include instance metadata such as a startup script,
configuration variables, and SSH keys. In the example above, you used the metadata
field in your
request body to specify a startup script for the instance and some configuration variables as
key/values pairs. The startup-script.sh shows how to read these variables and use them
to apply text to an image and upload it to Cloud Storage.
Deleting an Instance
To delete an instance, you need to call the compute.instances().delete()
method and provide the name,
zone, and project ID of the instance to delete. When the autoDelete
parameter is set to true
for the
boot disk it is also deleted with the instance. This setting is off by default but is
useful when your use case calls for disks and instances to be deleted together.
def delete_instance(compute, project, zone, name):
return compute.instances().delete(
project=project,
zone=zone,
instance=name).execute()
Running the sample
You can run the full sample by downloading the code and running it on the command line. Make sure
to download the create_instance.py
file and the startup-script.sh
file. To run the sample:
python create_instance.py --name [INSTANCE_NAME] --zone [ZONE] [PROJECT_ID] [CLOUD_STORAGE_BUCKET]
where:
[INSTANCE_NAME]
is the name of the instance to create.[ZONE]
is the desired zone for this request.[PROJECT_ID]
is our project ID.[CLOUD_STORAGE_BUCKET]
is the name of the bucket you initially set up but without thegs://
prefix.
For example:
python python-example.py --name example-instance --zone us-central1-a example-project my-gcs-bucket
Waiting for operations to complete
Requests to the Compute Engine API that modify resources such as instances immediately return a response acknowledging your request. The acknowledgement lets you check the status of the requested operation. Operations can take a few minutes to complete, so it's often easier to wait for the operation to complete before continuing. This helper method waits until the operation completes before returning:
def wait_for_operation(compute, project, zone, operation):
print('Waiting for operation to finish...')
while True:
result = compute.zoneOperations().get(
project=project,
zone=zone,
operation=operation).execute()
if result['status'] == 'DONE':
print("done.")
if 'error' in result:
raise Exception(result['error'])
return result
time.sleep(1)
When you query per-zone operations, use the compute.zoneOperations.get()
method. When you query global
operations, use the compute.globalOperations.get()
method. For more information, see zone resources.
Cleaning up
To avoid incurring charges to your Google Cloud account for the resources used in this tutorial, either delete the project that contains the resources, or keep the project and delete the individual resources.
Delete your Cloud Storage bucket
To delete a Cloud Storage bucket:
- In the Cloud Console, go to the Cloud Storage Browser page.
- Click the checkbox for the bucket that you want to delete.
- To delete the bucket, click
Delete
, and then follow the instructions.