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Uffizzi Resource Controller

A smart proxy service that handles requests from Uffizzi API to the Kubernetes API

This application connects to a Kubernetes cluster to provision users' ephemeral environments (deployment workloads) on their behalf. While it provides a documented REST API for anyone to use, it's designed to be used with the open-source Uffizzi API (uffizzi).

Installing Uffizzi Platform

To install the open-sourece version of Uffizzi, which includes this controller, see the official documentation.

Uffizzi Architecture Overview

For a detailed overview of Uffizzi architecture, see the official documenation.

Uffizzi consists of the following required components:

  • Uffizzi API - The primary REST API for creating and managing Uffizzi environments
  • Uffizzi Controller (this repository) - A smart proxy service that handles requests from Uffizzi API to the Kubernetes API
  • Uffizzi Cluster Operator - A Kubernetes operator for managing virtual clusters
  • Uffizzi CLI - A command-line interface for Uffizzi API

Controller Design

This uffizzi_controller acts as a smart and secure proxy for uffizzi and is designed to restrict required access to the k8s cluster. It accepts authenticated instructions from other Uffizzi components, then specifies Resources within the cluster's control API. It is implemented in Golang to leverage the best officially-supported Kubernetes API client.

The controller is required as a uffizzi supporting service and serves these purposes:

  1. Communicate deployment instructions via native Golang API client to the designated Kubernetes cluster(s) from the Uffizzi interface
  2. Provide Kubernetes cluster information back to the Uffizzi interface
  3. Support restricted and secure connection between the Uffizzi interface and the Kubernetes cluster

Example story: New Preview

  • main() loop is within cmd/controller/controller.go, which calls setup() and handles exits. This initializes global settings and the sentry logging, connects to the database, initializes the Kubernetes clients, and starts the HTTP server listening.
  • An HTTP request for a new Deployment arrives and is handled within internal/http/handlers.go. The request contains the new Deployment integer ID.
  • The HTTP handler uses the ID as an argument to call the ApplyDeployment function within internal/domain/deployment.go. This takes a series of steps:
    • It then calls several methods from internal/kuber/client.go, which creates Kubernetes specifications for each k8s resource (Namespace, Deployment, NetworkPolicy, Service, etc.) and publishes them to the Cluster one at a time.
      • This function should return an IP address or hostname, which is added to the data for this Deployment's state.
  • Any errors are then handled and returned to the HTTP client.

Dependencies

This controller specifies custom Resources managed by popular open-source controllers:

You'll want these installed within the Cluster managed by this controller.

Configuration

Environment Variables

You can specify these within credentials/variables.env for use with docker-compose and our Makefile. Some of these may have defaults within configs/settings.yml.

  • ENV - Which deployment environment we're currently running within. Default: development
  • CONTROLLER_LOGIN - The username to HTTP Basic Authentication
  • CONTROLLER_PASSWORD - The password to HTTP Basic Authentication
  • CONTROLLER_NAMESPACE_NAME_PREFIX - Prefix for Namespaces provisioned. Default: deployment
  • CERT_MANAGER_CLUSTER_ISSUER - The issuer for signing certificates. Possible values:
    • letsencrypt (used by default)
    • zerossl
  • POOL_MACHINE_TOTAL_CPU_MILLICORES - Node resource to divide for Pods. Default: 2000
  • POOL_MACHINE_TOTAL_MEMORY_BYTES - Node recourse to divide for Pods. Default: 17179869184
  • DEFAULT_AUTOSCALING_CPU_THRESHOLD - Default: 75
  • DEFAULT_AUTOSCALING_CPU_THRESHOLD_EPSILON - Default: 8
  • AUTOSCALING_MAX_PERFORMANCE_REPLICAS - Horizontal Pod Autoscaler configuration. Default: 10
  • AUTOSCALING_MIN_PERFORMANCE_REPLICAS - Horizontal Pod Autoscaler configuration. Default: 1
  • AUTOSCALING_MAX_ENTERPRISE_REPLICAS - Horizontal Pod Autoscaler configuration. Default: 30
  • AUTOSCALING_MIN_ENTERPRISE_REPLICAS - Horizontal Pod Autoscaler configuration. Default: 3
  • STARTUP_PROBE_DELAY_SECONDS - Startup Probe configuration. Default: 10
  • STARTUP_PROBE_FAILURE_THRESHOLD - Startup Probe configuration. Default: 80
  • STARTUP_PROBE_PERIOD_SECONDS - Startup Probe configuration. Default: 15
  • EPHEMERAL_STORAGE_COEFFICIENT - LimitRange configuration. Default: 1.9

Kubernetes API Server Connection

This process expects to be provided a Kubernetes Service Account within a Kubernetes cluster. You can emulate this with these four pieces of configuration:

  • KUBERNETES_SERVICE_HOST - Hostname (or IP) of the k8s API service
  • KUBERNETES_SERVICE_PORT - TCP port number of the k8s API service (usually 443.)
  • KUBERNETES_NAMESPACE - Namespace where both this controller and ingress-nginx reside
  • /var/run/secrets/kubernetes.io/serviceaccount/token - Authentication token
  • /var/run/secrets/kubernetes.io/serviceaccount/ca.crt - k8s API Server's x509 host certificate

Once you're configured to connect to your cluster (using kubectl et al) then you can get the value for these two environment variables from the output of kubectl cluster-info.

Add those two environment variables to credentials/variables.env.

The authentication token must come from the cluster's cloud provider, e.g. gcloud config config-helper --format="value(credential.access_token)"

The server certificate must also come from the cluster's cloud provider, e.g. gcloud container clusters describe uffizzi-pro-production-gke --zone us-central1-c --project uffizzi-pro-production-gke --format="value(masterAuth.clusterCaCertificate)" | base64 --decode

You should write these two values to credentials/token and credentials/ca.crt and the make commands and docker-compose will copy them for you.

Shell

While developing, we most often run the controller within a shell on our workstations. docker-compose will set up this shell and mount the current working directory within the container so you can use other editors from outside. To login into docker container just run:

make shell

All commands in this "Shell" section should be run inside this shell.

Compile

After making any desired changes, compile the controller:

go install ./cmd/controller/...

Execute

/go/bin/controller

Test Connection to Cluster

Once you've configured access to your k8s Cluster (see above), you can test kubectl within the shell:

kubectl --token=`cat /var/run/secrets/kubernetes.io/serviceaccount/token` --certificate-authority=/var/run/secrets/kubernetes.io/serviceaccount/ca.crt get nodes

Tests, Linters

In docker shell:

make test
make lint
make fix_lint

External Testing

Once the controller is running on your workstation, you can make HTTP requests to it from outside of the shell.

Ping controller

curl localhost:8080 \
  --user "${CONTROLLER_LOGIN}:${CONTROLLER_PASSWORD}"

Remove all workload from existing environment

This will remove the specified Preview's Namespace and all other Resources.

curl -X POST localhost:8080/clean \
     --user "${CONTROLLER_LOGIN}:${CONTROLLER_PASSWORD}" \
     -H "Content-Type: application/json" \
     -d '{ "environment_id": 1 }'

Online API Documentation

Available at http://localhost:8080/docs/

Installation within a Cluster

Functional usage within a Kubernetes Cluster is beyond the scope of this document. For more, join us on Slack or contact us at info@uffizzi.com.

That said, we've included a Kubernetes manifest to help you get started at infrastructure/controller.yaml. Review it and change relevant variables before applying this manifest. You'll also need to install and configure the dependencies identified near the top of this document.