Ansible contains a number of modules for controlling Amazon Web Services (AWS). The purpose of this section is to explain how to put Ansible modules together (and use inventory scripts) to use Ansible in AWS context.
Requirements for the AWS modules are minimal.
All of the modules require and are tested against recent versions of boto, usually boto3. Check the module documentation for the minimum required version for each module. You must have the boto3 Python module installed on your control machine. You may also need the original boto package. You can install these modules from your OS distribution or using the python package installer: pip install boto3
.
Whereas classically Ansible will execute tasks in its host loop against multiple remote machines, most cloud-control steps occur on your local machine with reference to the regions to control.
In your playbook steps we’ll typically be using the following pattern for provisioning steps:
- hosts: localhost gather_facts: False tasks: - ...
Authentication with the AWS-related modules is handled by either specifying your access and secret key as ENV variables or module arguments.
For environment variables:
export AWS_ACCESS_KEY_ID='AK123' export AWS_SECRET_ACCESS_KEY='abc123'
For storing these in a vars_file, ideally encrypted with ansible-vault:
--- ec2_access_key: "--REMOVED--" ec2_secret_key: "--REMOVED--"
Note that if you store your credentials in vars_file, you need to refer to them in each AWS-module. For example:
- ec2 aws_access_key: "{{ec2_access_key}}" aws_secret_key: "{{ec2_secret_key}}" image: "..."
The ec2 module provisions and de-provisions instances within EC2.
An example of making sure there are only 5 instances tagged ‘Demo’ in EC2 follows.
In the example below, the “exact_count” of instances is set to 5. This means if there are 0 instances already existing, then 5 new instances would be created. If there were 2 instances, only 3 would be created, and if there were 8 instances, 3 instances would be terminated.
What is being counted is specified by the “count_tag” parameter. The parameter “instance_tags” is used to apply tags to the newly created instance.:
# demo_setup.yml - hosts: localhost gather_facts: False tasks: - name: Provision a set of instances ec2: key_name: my_key group: test instance_type: t2.micro image: "{{ ami_id }}" wait: true exact_count: 5 count_tag: Name: Demo instance_tags: Name: Demo register: ec2
The data about what instances are created is being saved by the “register” keyword in the variable named “ec2”.
From this, we’ll use the add_host module to dynamically create a host group consisting of these new instances. This facilitates performing configuration actions on the hosts immediately in a subsequent task.:
# demo_setup.yml - hosts: localhost gather_facts: False tasks: - name: Provision a set of instances ec2: key_name: my_key group: test instance_type: t2.micro image: "{{ ami_id }}" wait: true exact_count: 5 count_tag: Name: Demo instance_tags: Name: Demo register: ec2 - name: Add all instance public IPs to host group add_host: hostname={{ item.public_ip }} groups=ec2hosts loop: "{{ ec2.instances }}"
With the host group now created, a second play at the bottom of the same provisioning playbook file might now have some configuration steps:
# demo_setup.yml - name: Provision a set of instances hosts: localhost # ... AS ABOVE ... - hosts: ec2hosts name: configuration play user: ec2-user gather_facts: true tasks: - name: Check NTP service service: name=ntpd state=started
Security groups on AWS are stateful. The response of a request from your instance is allowed to flow in regardless of inbound security group rules and vice-versa. In case you only want allow traffic with AWS S3 service, you need to fetch the current IP ranges of AWS S3 for one region and apply them as an egress rule.:
- name: fetch raw ip ranges for aws s3 set_fact: raw_s3_ranges: "{{ lookup('aws_service_ip_ranges', region='eu-central-1', service='S3', wantlist=True) }}" - name: prepare list structure for ec2_group module set_fact: s3_ranges: "{{ s3_ranges | default([]) + [{'proto': 'all', 'cidr_ip': item, 'rule_desc': 'S3 Service IP range'}] }}" loop: "{{ raw_s3_ranges }}" - name: set S3 IP ranges to egress rules ec2_group: name: aws_s3_ip_ranges description: allow outgoing traffic to aws S3 service region: eu-central-1 state: present vpc_id: vpc-123456 purge_rules: true purge_rules_egress: true rules: [] rules_egress: "{{ s3_ranges }}" tags: Name: aws_s3_ip_ranges
Once your nodes are spun up, you’ll probably want to talk to them again. With a cloud setup, it’s best to not maintain a static list of cloud hostnames in text files. Rather, the best way to handle this is to use the aws_ec2 inventory plugin. See Working with dynamic inventory.
The plugin will also return instances that were created outside of Ansible and allow Ansible to manage them.
For instance, you might use keyed_groups
to create groups from instance tags:
plugin: aws_ec2 keyed_groups: - prefix: tag key: tags
You can then target all instances with a “class” tag where the value is “webserver” in a play:
- hosts: tag_class_webserver tasks: - ping
You can also use these groups with ‘group_vars’ to set variables that are automatically applied to matching instances. See Organizing host and group variables.
Amazon Autoscaling features automatically increase or decrease capacity based on load. There are also Ansible modules shown in the cloud documentation that can configure autoscaling policy.
When nodes come online, it may not be sufficient to wait for the next cycle of an ansible command to come along and configure that node.
To do this, pre-bake machine images which contain the necessary ansible-pull invocation. Ansible-pull is a command line tool that fetches a playbook from a git server and runs it locally.
One of the challenges of this approach is that there needs to be a centralized way to store data about the results of pull commands in an autoscaling context. For this reason, the autoscaling solution provided below in the next section can be a better approach.
Read ansible-pull for more information on pull-mode playbooks.
Red Hat Ansible Tower also contains a very nice feature for auto-scaling use cases. In this mode, a simple curl script can call a defined URL and the server will “dial out” to the requester and configure an instance that is spinning up. This can be a great way to reconfigure ephemeral nodes. See the Tower install and product documentation for more details.
A benefit of using the callback in Tower over pull mode is that job results are still centrally recorded and less information has to be shared with remote hosts.
CloudFormation is a Amazon technology for defining a cloud stack as a JSON or YAML document.
Ansible modules provide an easier to use interface than CloudFormation in many examples, without defining a complex JSON/YAML document. This is recommended for most users.
However, for users that have decided to use CloudFormation, there is an Ansible module that can be used to apply a CloudFormation template to Amazon.
When using Ansible with CloudFormation, typically Ansible will be used with a tool like Packer to build images, and CloudFormation will launch those images, or ansible will be invoked through user data once the image comes online, or a combination of the two.
Please see the examples in the Ansible CloudFormation module for more details.
Many users may want to have images boot to a more complete configuration rather than configuring them entirely after instantiation. To do this, one of many programs can be used with Ansible playbooks to define and upload a base image, which will then get its own AMI ID for usage with the ec2 module or other Ansible AWS modules such as ec2_asg or the cloudformation module. Possible tools include Packer, aminator, and Ansible’s ec2_ami module.
Generally speaking, we find most users using Packer.
See the Packer documentation of the Ansible local Packer provisioner and Ansible remote Packer provisioner.
If you do not want to adopt Packer at this time, configuring a base-image with Ansible after provisioning (as shown above) is acceptable.
Ansible ships with lots of modules for configuring a wide array of EC2 services. Browse the “Cloud” category of the module documentation for a full list with examples.
See also
Browse existing collections, modules, and plugins
An introduction to playbooks
Delegation, useful for working with loud balancers, clouds, and locally executed steps.
Have a question? Stop by the google group!
#ansible IRC chat channel
© 2012–2018 Michael DeHaan
© 2018–2021 Red Hat, Inc.
Licensed under the GNU General Public License version 3.
https://docs.ansible.com/ansible/2.11/scenario_guides/guide_aws.html