Backend for Resource Optimization Service
The Red Hat Insights resource optimization service enables RHEL customers to assess and monitor their public cloud usage and optimization. The service exposes workload metrics for CPU, memory, and disk-usage and compares them to resource limits recommended by the public cloud provider. Currently ROS only provides suggestions for AWS RHEL instances. To enable ROS, a customer needs to perform a few prerequisite steps on targeted systems via Ansible playbook.
Underneath, ROS uses Performance Co-Pilot (PCP) to monitor and report workload metrics.
This project uses poetry to manage the development and production environments.
Once you have poetry installed, do the following:
The latest version is supported on Python 3.11, install it and then switch to 3.11 version:
poetry env use python3.11
There are some package dependencies, install those:
dnf install tar gzip gcc python3.11-devel libpq-devel
Install the required dependencies:
poetry install
Afterwards you can activate the virtual environment by running:
poetry shell
A list of configurable environment variables is present inside .env.example
file.
The application depends on several parts of the insights platform. These dependencies are provided by the
docker-compose.yml
file in the scripts directory.
To run the dependencies, just run following command:
cd scripts && docker-compose up insights-inventory-mq db-ros insights-engine
To run the full application ( With ros components within docker)
docker-compose up ros-processor ros-api
In order to properly run the application from the host machine, you need to have modified your /etc/hosts
file. Check the
README.md file in scripts directory.
Run the following commands to execute the db migration scripts.
export FLASK_APP=manage.py
flask db upgrade
flask seed
The processor component connects to kafka, and listens on topics for system archive uploads/ system deletion messages.
python -m ros.processor.main
The web api component provides a REST api view of the app database.
python -m ros.api.main
It is possible to run the tests using pytest:
poetry install
poetry run pytest --cov=ros tests
To run full inventory api with xjoin , run the following command:
docker-compose up insights-inventory-web xjoin
make configure-xjoin
Note - Before running the above commands make sure kafka and db-host-inventory containers are up and running.
GET /api/ros/v1/status
Shows the status of the server
curl -v -H "Content-Type: application/json" https://cloud.redhat.com/api/ros/v1/status
HTTP/1.1 200 OK
Date: Thu, 24 Feb 2011 12:36:30 GMT
Status: 200 OK
Connection: close
Content-Type: application/json
Content-Length: 2
{"status": "Application is running!"}
GET /api/ros/v1/systems
Shows list of all systems from Host Inventory having a Performance Profile
curl -v -H "Content-Type: application/json" https://cloud.redhat.com/api/ros/v1/systems -u rhn-username:redhat
HTTP/1.1 200 OK
Date: Thu, 24 Feb 2011 12:36:30 GMT
Status: 200 OK
Connection: close
Content-Type: application/json
Content-Length: 2
[{
"fqdn": "string",
"display_name": "string",
"inventory_id": "string",
"account": "string",
"org_id": "string",
"number_of_suggestions": 0,
"state": "string",
"performance_utilization": {
"memory": 0,
"cpu": 0,
"io": 0
},
"cloud_provider": "string",
"instance_type": "string",
"idling_time": 0,
"os": "string",
"report_date": "string"
}]
For local dev setup, please remember to use the x-rh-identity header encoded from your account number and org_id, the one used while running make insights-upload-data
and make ros-upload-data
commands.