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Installation

Arlon CLI downloads are provided on GitHub. The CLI is not a self-contained standalone executable though. It is required to point the CLI to a management cluster and set up the Arlon controller in this management cluster. It is also recommended to have the tools described here to be installed for a seamless experience.

For a quickstart minimal demonstration setup, follow the instructions to set up a KIND based testbed with Arlon and ArgoCD running here.

Please follow the manual instructions in this section for a customised setup or refer the instructions for automated installation here.

Setting up tools

To leverage the complete features provided by ArgoCD and Arlon, it is recommended to have the following tools installed:

  1. git
  2. ArgoCD CLI
  3. kubectl

Barring the git installation, the Arlon CLI has the ability to install argocd and kubectl CLIs on a user's machine for Linux and macOS based systems. To install these tools, run arlon install --tools-only to download and place these executables in ~/.local/bin. It however, falls to the user to add the aforementioned directory to $PATH if not present. This command also verifies the presence of git on your $PATH.

Customised Setup

Management cluster

You can use any Kubernetes cluster that you have admin access to. Ensure:

  • kubectl is in your path
  • KUBECONFIG is pointing to the right file and the context set properly

ArgoCD

  • Follow steps 1-4 of the ArgoCD installation guide to install ArgoCD onto your management cluster.
  • After this step, you should be logged in as admin and a config file was created at ${HOME}/.config/argocd/config
  • Create your workspace repository in your git provider if necessary, then register it. Example: argocd repo add https://github.com/myname/arlon_workspace --username myname --password secret.
  • Note: type argocd repo add --help to see all available options.
  • For Arlon developers, this is not your fork of the Arlon source code repository, but a separate git repo where some artifacts like profiles created by Arlon will be stored.
  • Highly recommended: configure a webhook to immediately notify ArgoCD of changes to the repo. This will be especially useful during the tutorial. Without a webhook, repo changes may take up to 3 minutes to be detected, delaying cluster configuration updates.
  • Create a local user named arlon with the apiKey capability. This involves editing the argocd-cm ConfigMap using kubectl.
  • Adjust the RBAC settings to grant admin permissions to the arlon user. This involves editing the argocd-rbac-cm ConfigMap to add the entry g, arlon, role:admin under the policy.csv section. Example:
apiVersion: v1
data:
  policy.csv: |
    g, arlon, role:admin
kind: ConfigMap
        [...]
  • Generate an account token: argocd account generate-token --account arlon
  • Make a temporary copy of this config-file in /tmp/config then edit it to replace the value of auth-token with the token from the previous step. Save changes. This file will be used to configure the Arlon controller's ArgoCD credentials during the next steps.

Arlon controller

  • Create the arlon namespace: kubectl create ns arlon
  • Create the ArgoCD credentials secret from the temporary config file: kubectl -n arlon create secret generic argocd-creds --from-file /tmp/config
  • Delete the temporary config file
  • Clone the arlon git repo and cd to its top directory
  • Create the CRDs: kubectl apply -f config/crd/bases/
  • Deploy the controller: kubectl apply -f deploy/manifests/
  • Ensure the controller eventually enters the Running state: watch kubectl -n arlon get pod

Arlon CLI

Download the CLI for the latest release from GitHub. Currently, Linux and macOS operating systems are supported. Uncompress the tarball, rename it as arlon and add to your PATH

Run arlon verify to check for prerequisites. Run arlon install to install any missing prerequisites.

The following instructions are to manually build CLI from this code repository.

Building the CLI

  • Clone this repository and pull the latest version of a branch (main by default)
  • From the top directory, run make build
  • Optionally create a symlink from a directory (e.g. /usr/local/bin) included in your ${PATH} to the bin/arlon binary to make it easy to invoke the command.

Cluster orchestration API providers

Arlon currently supports Cluster API on AWS cloud. It also has experimental support for Crossplane on AWS. cluster-api cloud provider components on a management cluster can be installed by following the official guide, as instructed here. In addition to this, the Arlon CLI also ships with an install command to facilitate, the installation of supported infrastructure providers by mimicking the behaviour of clusterctl CLI used in the official setup instructions. The details for which can be found here.

Cluster API

Manual Installation

Using the Cluster API Quickstart Guide as reference, complete these steps:

  • Install clusterctl
  • Initialize the management cluster. In particular, follow instructions for your specific cloud provider (AWS in this example) Ensure clusterctl init completes successfully and produces the expected output.

Using Arlon CLI

To install cluster-api components on the management cluster, the install command provides a helpful wrapper around clusterctl CLI tool.

To install a provider, all the pre-requisites must be met as mentioned here. After which, simply running arlon install --capi-only --infrastructure aws,docker will install the latest available version of AWS and Docker provider components onto the management cluster.

Crossplane (experimental)

Using the Upbound AWS Reference Platform Quickstart Guide as reference, complete these steps:

You do not need to go any further, but you're welcome to try the Network Fabric example.

FYI: we noticed the dozens/hundreds of CRDs that Crossplane installs in the management cluster can noticeably slow down kubectl, and you may see a warning that looks like:

I0222 17:31:14.112689   27922 request.go:668] Waited for 1.046146023s due to client-side throttling, not priority and fairness, request: GET:https://AA61XXXXXXXXXXX.gr7.us-west-2.eks.amazonaws.com/apis/servicediscovery.aws.crossplane.io/v1alpha1?timeout=32s

Automatic Setup

Arlon CLI provides an init command to install "itself" on a management cluster. This command performs a basic setup of argocd(if needed) and arlon controller. It makes the following assumptions while installing arlon:

  • For ArgoCD:

    • If ArgoCD is present, it is present the in namespace argocd and the admin password is the same as in argocd-initial-admin-secret ConfigMap.
  • For Arlon:

    • assuming that the existence of arlon namespace means Arlon controller exists.

To install Arlon controller using the init command these pre-requisites need to be met:

  1. A valid kubeconfig pointing to the management cluster.
  2. Port 8080 should not be in use by other programs. Arlon init uses it to port-forward argocd.
  3. A hosted Git repository with at least a README file present and a valid GitHub token(detailed here) for:
  4. Adding a repository to ArgoCD.
  5. Avoiding rate limiting of GitHub API while fetching cluster-api related manifests.
  6. Pushing cluster template manifests to the workspace repository.
  7. Pre-requisites for supported CAPI infrastructure providers(AWS and Docker as of now) as described below.

Setting up the workspace repository

  1. Create a GitHub repository if you don't already have it.
  2. Ensure that the repository at least has a README file because empty repository cannot be added to ArgoCD.
  3. Create a Personal Access Token for authentication, the token will need repo:write scope to push the cluster template example manifests.
  4. Set the GITHUB_TOKEN environment variable to the token create in the previous step.

Pre-requisites for cluster-api providers

This section outlines the requirements that need to be fulfilled for installing the cluster-api provider components that the init or the install command installs on the management cluster.

Docker

There are no special requirements for docker provider, as it is largely used in an experimental setups.

AWS

The following environment variables need to be set: - AWS_SSH_KEY_NAME (the SSH key name to use) - AWS_REGION (region where the cluster is deployed) - AWS_ACCESS_KEY_ID (access key id for the associated AWS account) - AWS_SECRET_ACCESS_KEY (secret access key for the associated AWS account) - AWS_NODE_MACHINE_TYPE (machine type for cluster nodes) - AWS_CONTROL_PLANE_MACHINE_TYPE (machine type for control plane) - AWS_SESSION_TOKEN (optional: only for MFA enabled accounts)

Starting the installation

Once the above requirements are met, start the installation process, simply running arlon init -e --username <GIT_USER> --repoURL <WORKSPACE_URL> --password <GIT_PASSWORD> --examples -y. This installs the controller, argocd(if not already present) -e flag adds cluster template manifests to the for using the given credentials. To not add examples, just remove the -e flag. The -y flag refers to silent installation, which is useful for scripts. For an interactive installation, exclude the -y or --no-confirm flag.

This command does the following:

  • Installs ArgoCD if not present.
  • Installs Arlon if not present.
  • Creates the Arlon user account in ArgoCD with admin rights.
  • Installs cluster-api with the latest versions of docker and aws providers.
  • Removes the repoctx file created by arlon git register if present.
  • Registers a default alias against the provided repoUrl.
  • Checks for pre-existing examples, and prompts to delete and proceed(if -y or --no-confirm flag is not set, else deletes the existing examples).
  • Pushes cluster template manifests to the provided GitHub repository.

The Arlon repository also hosts some examples in the examples directory. In particular, the examples/declarative directory is a set of ready to use manifests which allows us to deploy a cluster with the new app and app-profiles. To run these examples, simply clone the source code and run these commands:

cd <ARLON_SOURCE_REPO_PATH>
kubectl apply -f examples/declarative

This creates an EKS cluster with managed machine pools in the us-west-1 region, and attaches a few example "apps" to it in the form of two app-profiles namely frontent and backend. The frontend app-profile consists of the guestbook application and a sentinel non-existing app appropriately named nonexistent-1. Similarly, the backend app-profile consists of the redis and another non-existent app called nonexistent-2. The sentinel, nonexistent apps are simply present to demonstrate the description field for the health field and the invalidAppNames which lists down the apps which do not exist.