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Chapter 4. Installing RHEL AI on IBM cloud
For installing and deploying Red Hat Enterprise Linux AI on IBM Cloud, you must first convert the RHEL AI image into an IBM Cloud image. You can then launch an instance using the IBM Cloud image and deploy RHEL AI on an IBM Cloud machine.
4.1. Converting the RHEL AI image into a IBM Cloud image.
To create a bootable image in IBM Cloud you must configure your IBM Cloud accounts, set up a Cloud Object Storage (COS) bucket, and create a IBM Cloud image using the RHEL AI image.
Prerequisites
- You installed the IBM CLI on your specific machine. For more information about installing IBM Cloud CLI, see Installing the stand-alone IBM Cloud CLI.
Procedure
Log in to IBM Cloud with the following command:
$ ibmcloud login
When prompted, select your desired account to log in to.
Example output of the login
$ ibmcloud login API endpoint: https://cloud.ibm.com Region: us-east Get a one-time code from https://identity-1.eu-central.iam.cloud.ibm.com/identity/passcode to proceed. Open the URL in the default browser? [Y/n] > One-time code > Authenticating... OK Select an account: 1. <account-name> 2. <account-name-2> API endpoint: https://cloud.ibm.com Region: us-east User: <user-name> Account: <selected-account> Resource group: No resource group targeted, use 'ibmcloud target -g RESOURCE_GROUP'
You need to set up various IBM Cloud configurations and create your COS bucket before generating a QCOW2 image.
You can install the necessary IBM Cloud plugins by running the following command:
$ ibmcloud plugin install cloud-object-storage infrastructure-service
Set your preferred resource group, the following example command sets the resource group named
Default
.$ ibmcloud target -g Default
Set your preferred region, the following example command sets the
us-east
region.$ ibmcloud target -r us-east
You need to select a deployment plan for your service instance. Ensure you check the properties and pricing on the IBM cloud website.
You can list the available deployment plans by running the following command:
$ ibmcloud catalog service cloud-object-storage --output json | jq -r '.[].children[] | select(.children != null) | .children[].name'
The following example command uses the
premium-global-deployment
plan and puts it in the environment variablecos_deploy_plan
:$ cos_deploy_plan=premium-global-deployment
Create a Cloud Object Storage (COS) service instance and save the name in an environment variable named
cos_si_name
and create thecloud-object-storage
and by running the following commands:$ cos_si_name=THE_NAME_OF_YOUR_SERVICE_INSTANCE
$ ibmcloud resource service-instance-create ${cos_si_name} cloud-object-storage standard global -d ${cos_deploy_plan}
Get the Cloud Resource Name (CRN) for your Cloud Object Storage (COS) bucket in a variable named
cos_crn
by running the following commands:$ cos_crn=$(ibmcloud resource service-instance ${cos_si_name} --output json| jq -r '.[] | select(.crn | contains("cloud-object-storage")) | .crn')
$ ibmcloud cos config crn --crn ${cos_crn} --force
Create your Cloud Object Storage (COS) bucket named as the environment variable
bucket_name
with the following commands:$ bucket_name=NAME_OF_MY_BUCKET
$ ibmcloud cos bucket-create --bucket ${bucket_name}
Allow the infrastructure service to read the buckets that are in the service instance
${cos_si_guid}
variable by running the following commands:$ cos_si_guid=$(ibmcloud resource service-instance ${cos_si_name} --output json| jq -r '.[] | select(.crn | contains("cloud-object-storage")) | .guid')
$ ibmcloud iam authorization-policy-create is cloud-object-storage Reader --source-resource-type image --target-service-instance-id ${cos_si_guid}
- Now that your IBM Cloud Object Storage (CoS) service instance bucket is set up, you need to download the QCOW2 image from Red Hat Enterprise Linux AI download page
Copy the QCOW2 image link and add it to the following command:
$ curl -Lo disk.qcow2 "PASTE_HERE_THE_LINK_OF_THE_QCOW2_FILE"
Set the name you want to use as the RHEL AI IBM Cloud image
$ image_name=rhel-ai-20240703v0
Upload the QCOW2 image to the Cloud Object Storage (COS) bucket by running the following command:
$ ibmcloud cos upload --bucket ${bucket_name} --key ${image_name}.qcow2 --file disk.qcow2 --region <region>
Convert the QCOW2 you just uploaded to an IBM Cloud image with the following commands:
$ ibmcloud is image-create ${image_name} --file cos://<region>/${bucket_name}/${image_name}.qcow2 --os-name red-ai-9-amd64-nvidia-byol
Once the job launches, set the IBM Cloud image configurations into a variable called
image_id
by running the following command:$ image_id=$(ibmcloud is images --visibility private --output json | jq -r '.[] | select(.name=="'$image_name'") | .id')
You can view the progress of the job with the following command:
$ while ibmcloud is image --output json ${image_id} | jq -r .status | grep -xq pending; do sleep 1; done
You can view the information of the newly created image with the following command:
$ ibmcloud is image ${image_id}
4.2. Deploying your instance on IBM Cloud using the CLI
You can launch an instance with your new RHEL AI IBM Cloud image from the IBM Cloud web console or the CLI. You can use whichever method of deployment you want to launch your instance. The following procedure displays how you can use the CLI to launch an IBM Cloud instance with the custom IBM Cloud image
If you choose to use the CLI as a deployment option, there are several configurations you have to create, as shown in "Prerequisites".
Prerequisites
- You created your RHEL AI IBM Cloud image. For more information, see "Converting the RHEL AI image to an IBM Cloud image".
- You installed the IBM CLI on your specific machine, see Installing the stand-alone IBM Cloud CLI.
- You configured your Virtual private cloud (VPC).
- You created a subnet for your instance.
Procedure
Log in to your IBM Cloud account and select the Account, Region and Resource Group by running the following command:
$ ibmcloud login -c <ACCOUNT_ID> -r <REGION> -g <RESOURCE_GROUP>
Before launching your IBM Cloud instance on the CLI, you need to create several configuration variables for your instance.
Install the
infrastructure-service
plugin for IBM Cloud by running the following command$ ibmcloud plugin install infrastructure-service
You need to create an SSH public key for your IBM Cloud account. IBM Cloud supports RSA and ed25519 keys. The following example command uses the ed25519 key types and names it
ibmcloud
.$ ssh-keygen -f ibmcloud -t ed25519
You can now upload the public key to your IBM Cloud account by following the example command.
$ ibmcloud is key-create my-ssh-key @ibmcloud.pub --key-type ed25519
You need to create a Floating IP for your IBM Cloud instance by following the example command. Ensure you change the region to your preferred zone.
$ ibmcloud is floating-ip-reserve my-public-ip --zone <region>
You need to select the instance profile that you want to use for the deployment. List all the profiles by running the following command:
$ ibmcloud is instance-profiles
Make a note of your preferred instance profile, you will need it for your instance deployment.
You can now start creating your IBM Cloud instance. Populate environment variables for when you create the instance.
name=my-rhelai-instance vpc=my-vpc-in-us-east zone=us-east-1 subnet=my-subnet-in-us-east-1 instance_profile=gx3-64x320x4l4 image=my-custom-rhelai-image sshkey=my-ssh-key floating_ip=my-public-ip disk_size=250
You can now launch your instance, by running the following command:
$ ibmcloud is instance-create \ $name \ $vpc \ $zone \ $instance_profile \ $subnet \ --image $image \ --keys $sshkey \ --boot-volume '{"name": "'${name}'-boot", "volume": {"name": "'${name}'-boot", "capacity": '${disk_size}', "profile": {"name": "general-purpose"}}}' \ --allow-ip-spoofing false
Link the Floating IP to the instance by running the following command:
$ ibmcloud is floating-ip-update $floating_ip --nic primary --in $name
User account
The default user account in the RHEL AI AMI is cloud-user
. It has all permissions via sudo
without password.
Verification
To verify that your Red Hat Enterprise Linux AI tools are installed correctly, run the
ilab
command:$ ilab
Example output
$ ilab Usage: ilab [OPTIONS] COMMAND [ARGS]... CLI for interacting with InstructLab. If this is your first time running ilab, it's best to start with `ilab config init` to create the environment. Options: --config PATH Path to a configuration file. [default: /home/<user>/.config/instructlab/config.yaml] -v, --verbose Enable debug logging (repeat for even more verbosity) --version Show the version and exit. --help Show this message and exit. Commands: config Command Group for Interacting with the Config of InstructLab. data Command Group for Interacting with the Data generated by... model Command Group for Interacting with the Models in InstructLab. system Command group for all system-related command calls taxonomy Command Group for Interacting with the Taxonomy of InstructLab. Aliases: chat model chat generate data generate serve model serve train model train
4.3. Adding more storage to your IBM Cloud instance
In [ibm-c], there is a size restriction of 250 GB of storage in the main IBM Cloud disk. RHEL AI might require more storage for models and generation data.
You can add more storage by attaching an extra disk to your instance and using it to hold data for RHEL AI.
Prerequisites
- You have a IBM Cloud RHEL AI instance.
Procedure
Create an environment variable called
name
that has the name of your instance by running the following command:$ name=my-rhelai-instance
Set the size of the new volume by running the following command:
$ data_volume_size=1000
Create and attach the instance volume by running the following command:
$ ibmcloud is instance-volume-attachment-add data ${name} \ --new-volume-name ${name}-data \ --profile general-purpose \ --capacity ${data_volume_size}
You can list all the disks with the following command:
$ lsblk
Create a
disk
variable with the content of the disk path your using. The following example command uses the/dev/vdb
path.$ disk=/dev/vdb
Create a partition on your disk by running the following command:
$ sgdisk -n 1:0:0 $disk
Format and label the partition by running the following command:
$ mkfs.xfs -L ilab-data ${disk}1
You can configure your system to auto mount to your preferred directory. The following example command uses the
/mnt
directory.$ echo LABEL=ilab-data /mnt xfs defaults 0 0 >> /etc/fstab
Reload the
systemd
service to acknowledge the new configuration on mounts by running the following command:$ systemctl daemon-reload
Mount the disk with the following command:
$ mount -a
Grant write permissions to all users in the new file system by running the following command:
$ chmod 1777 /mnt/
4.4. Adding a data storage directory to your instance
By default RHEL AI holds configuration data in the $HOME
directory. You can change this default to a different directory for holding InstructLab data.
Prerequisites
- You have a Red Hat Enterprise Linux AI instance
- You added an extra storage disk to your instance
Procedure
You can configure the
ILAB_HOME
environment variable by writing it to the$HOME/.bash_profile
file by running the following commands:$ echo 'export ILAB_HOME=/mnt' >> $HOME/.bash_profile
You can make that change effective by reloading the
$HOME/.bash_profile
file with the following command:$ source $HOME/.bash_profile