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Orchestrating the Cloud with Kubernetes

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Orchestrating the Cloud with Kubernetes

1 hour 15 minutes 1 Credit

GSP021

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Overview

In this lab you will learn how to:

  • Provision a complete Kubernetes cluster using Kubernetes Engine.
  • Deploy and manage Docker containers using kubectl.
  • Break an application into microservices using Kubernetes' Deployments and Services.

Kubernetes is all about applications. In this part of the lab you will use an example application called "app".

Note: App is hosted on GitHub and provides an example 12-Factor application. During this lab you will be working with the following Docker images:
  • kelseyhightower/monolith - Monolith includes auth and hello services.
  • kelseyhightower/auth - Auth microservice. Generates JWT tokens for authenticated users.
  • kelseyhightower/hello - Hello microservice. Greets authenticated users.
  • nginx - Frontend to the auth and hello services.
  • Kubernetes is an open source project (available on kubernetes.io) which can run on many different environments, from laptops to high-availability multi-node clusters, from public clouds to on-premise deployments, from virtual machines to bare metal.

    For this lab, using a managed environment such as Kubernetes Engine allows you to focus on experiencing Kubernetes rather than setting up the underlying infrastructure.

    Setup and requirements

    Before you click the Start Lab button

    Read these instructions. Labs are timed and you cannot pause them. The timer, which starts when you click Start Lab, shows how long Google Cloud resources will be made available to you.

    This hands-on lab lets you do the lab activities yourself in a real cloud environment, not in a simulation or demo environment. It does so by giving you new, temporary credentials that you use to sign in and access Google Cloud for the duration of the lab.

    To complete this lab, you need:

    • Access to a standard internet browser (Chrome browser recommended).
    Note: Use an Incognito or private browser window to run this lab. This prevents any conflicts between your personal account and the Student account, which may cause extra charges incurred to your personal account.
    • Time to complete the lab---remember, once you start, you cannot pause a lab.
    Note: If you already have your own personal Google Cloud account or project, do not use it for this lab to avoid extra charges to your account.

    How to start your lab and sign in to the Google Cloud Console

    1. Click the Start Lab button. If you need to pay for the lab, a pop-up opens for you to select your payment method. On the left is the Lab Details panel with the following:

      • The Open Google Console button
      • Time remaining
      • The temporary credentials that you must use for this lab
      • Other information, if needed, to step through this lab
    2. Click Open Google Console. The lab spins up resources, and then opens another tab that shows the Sign in page.

      Tip: Arrange the tabs in separate windows, side-by-side.

      Note: If you see the Choose an account dialog, click Use Another Account.
    3. If necessary, copy the Username from the Lab Details panel and paste it into the Sign in dialog. Click Next.

    4. Copy the Password from the Lab Details panel and paste it into the Welcome dialog. Click Next.

      Important: You must use the credentials from the left panel. Do not use your Google Cloud Skills Boost credentials. Note: Using your own Google Cloud account for this lab may incur extra charges.
    5. Click through the subsequent pages:

      • Accept the terms and conditions.
      • Do not add recovery options or two-factor authentication (because this is a temporary account).
      • Do not sign up for free trials.

    After a few moments, the Cloud Console opens in this tab.

    Note: You can view the menu with a list of Google Cloud Products and Services by clicking the Navigation menu at the top-left. Navigation menu icon

    Activate Cloud Shell

    Cloud Shell is a virtual machine that is loaded with development tools. It offers a persistent 5GB home directory and runs on the Google Cloud. Cloud Shell provides command-line access to your Google Cloud resources.

    1. Click Activate Cloud Shell Activate Cloud Shell icon at the top of the Google Cloud console.

    When you are connected, you are already authenticated, and the project is set to your PROJECT_ID. The output contains a line that declares the PROJECT_ID for this session:

    Your Cloud Platform project in this session is set to YOUR_PROJECT_ID

    gcloud is the command-line tool for Google Cloud. It comes pre-installed on Cloud Shell and supports tab-completion.

    1. (Optional) You can list the active account name with this command:

    gcloud auth list
    1. Click Authorize.

    2. Your output should now look like this:

    Output:

    ACTIVE: * ACCOUNT: student-01-xxxxxxxxxxxx@qwiklabs.net To set the active account, run: $ gcloud config set account `ACCOUNT`
    1. (Optional) You can list the project ID with this command:

    gcloud config list project

    Output:

    [core] project = <project_ID>

    Example output:

    [core] project = qwiklabs-gcp-44776a13dea667a6 Note: For full documentation of gcloud, in Google Cloud, refer to the gcloud CLI overview guide.

    Google Kubernetes Engine

    1. In the cloud shell environment type the following command to set the zone:

    gcloud config set compute/zone us-central1-b
    1. Start up a cluster for use in this lab:

    gcloud container clusters create io You are automatically authenticated to your cluster upon creation. If you lose connection to your Cloud Shell for any reason, run the gcloud container clusters get-credentials io command to re-authenticate. Note: It will take a while to create a cluster - Kubernetes Engine is provisioning a few Virtual Machines behind the scenes for you to play with!

    Task 1. Get the sample code

    1. Copy the source code from the Cloud Shell command line:

    gsutil cp -r gs://spls/gsp021/* .
    1. Change into the directory needed for this lab:

    cd orchestrate-with-kubernetes/kubernetes
    1. List the files to see what you're working with:

    ls

    The sample has the following layout:

    deployments/ /* Deployment manifests */ ... nginx/ /* nginx config files */ ... pods/ /* Pod manifests */ ... services/ /* Services manifests */ ... tls/ /* TLS certificates */ ... cleanup.sh /* Cleanup script */

    Now that you have the code -- it's time to give Kubernetes a try!

    Task 2. Quick Kubernetes Demo

    The easiest way to get started with Kubernetes is to use the kubectl create command.

    1. Use it to launch a single instance of the nginx container:

    kubectl create deployment nginx --image=nginx:1.10.0

    Kubernetes has created a deployment -- more about deployments later, but for now all you need to know is that deployments keep the pods up and running even when the nodes they run on fail.

    In Kubernetes, all containers run in a pod.

    1. Use the kubectl get pods command to view the running nginx container:

    kubectl get pods
    1. Once the nginx container has a Running status you can expose it outside of Kubernetes using the kubectl expose command:

    kubectl expose deployment nginx --port 80 --type LoadBalancer

    So what just happened? Behind the scenes Kubernetes created an external Load Balancer with a public IP address attached to it. Any client who hits that public IP address will be routed to the pods behind the service. In this case that would be the nginx pod.

    1. List our services now using the kubectl get services command:

    kubectl get services Note: It may take a few seconds before the ExternalIP field is populated for your service. This is normal -- just re-run the kubectl get services command every few seconds until the field populates.
    1. Add the External IP to this command to hit the Nginx container remotely:

    curl http://<External IP>:80

    And there you go! Kubernetes supports an easy to use workflow out of the box using the kubectl run and expose commands.

    Test completed task

    Click Check my progress below to check your lab progress. If you successfully created a Kubernetes cluster and deploy a Nginx container, you'll see an assessment score.

    Create a Kubernetes cluster and launch Nginx container

    Now that you've seen a quick tour of kubernetes, it's time to dive into each of the components and abstractions.

    Task 3. Pods

    At the core of Kubernetes is the Pod.

    Pods represent and hold a collection of one or more containers. Generally, if you have multiple containers with a hard dependency on each other, you package the containers inside a single pod.

    Pod containing the monolith and nginx containers

    In this example there is a pod that contains the monolith and nginx containers.

    Pods also have Volumes. Volumes are data disks that live as long as the pods live, and can be used by the containers in that pod. Pods provide a shared namespace for their contents which means that the two containers inside of our example pod can communicate with each other, and they also share the attached volumes.

    Pods also share a network namespace. This means that there is one IP Address per pod.

    Next, a deeper dive into pods.

    Task 4. Creating pods

    Pods can be created using pod configuration files. Take a moment to explore the monolith pod configuration file.

    1. Go to directory:

    cd ~/orchestrate-with-kubernetes/kubernetes
    1. Run the following:

    cat pods/monolith.yaml

    The output shows the open configuration file:

    apiVersion: v1 kind: Pod metadata: name: monolith labels: app: monolith spec: containers: - name: monolith image: kelseyhightower/monolith:1.0.0 args: - "-http=0.0.0.0:80" - "-health=0.0.0.0:81" - "-secret=secret" ports: - name: http containerPort: 80 - name: health containerPort: 81 resources: limits: cpu: 0.2 memory: "10Mi"

    There's a few things to notice here. You'll see that:

    • Your pod is made up of one container (the monolith).

    • You're passing a few arguments to our container when it starts up.

    • You're opening up port 80 for http traffic.

    1. Create the monolith pod using kubectl:

    kubectl create -f pods/monolith.yaml
    1. Examine your pods. Use the kubectl get pods command to list all pods running in the default namespace:

    kubectl get pods Note: It may take a few seconds before the monolith pod is up and running. The monolith container image needs to be pulled from the Docker Hub before you can run it.
    1. Once the pod is running, use kubectl describe command to get more information about the monolith pod:

    kubectl describe pods monolith

    You'll see a lot of the information about the monolith pod including the Pod IP address and the event log. This information will come in handy when troubleshooting.

    Kubernetes makes it easy to create pods by describing them in configuration files and easy to view information about them when they are running. At this point you have the ability to create all the pods your deployment requires!

    Task 5. Interacting with pods

    By default, pods are allocated a private IP address and cannot be reached outside of the cluster. Use the kubectl port-forward command to map a local port to a port inside the monolith pod.

    Note: From this point on the lab will ask you to work in multiple cloud shell tabs to set up communication between the pods. Any commands that are executed in a second or third command shell will be denoted in the command's instructions.
    1. Open a second Cloud Shell terminal. Now you have two terminals, one to run the kubectl port-forward command, and the other to issue curl commands.

    2. In the 2nd terminal, run this command to set up port-forwarding:

    kubectl port-forward monolith 10080:80
    1. Now in the 1st terminal start talking to your pod using curl:

    curl http://127.0.0.1:10080

    Yes! You got a very friendly "hello" back from your container.

    1. Now use the curl command to see what happens when you hit a secure endpoint:

    curl http://127.0.0.1:10080/secure

    Uh oh.

    1. Try logging in to get an auth token back from the monolith:

    curl -u user http://127.0.0.1:10080/login
    1. At the login prompt, use the super-secret password "password" to login.

    Logging in caused a JWT token to print out.

    1. Since Cloud Shell does not handle copying long strings well, create an environment variable for the token.

    TOKEN=$(curl http://127.0.0.1:10080/login -u user|jq -r '.token')
    1. Enter the super-secret password "password" again when prompted for the host password.

    2. Use this command to copy and then use the token to hit the secure endpoint with curl:

    curl -H "Authorization: Bearer $TOKEN" http://127.0.0.1:10080/secure

    At this point you should get a response back from our application, letting us know everything is right in the world again.

    1. Use the kubectl logs command to view the logs for the monolith Pod.

    kubectl logs monolith
    1. Open a 3rd terminal and use the -f flag to get a stream of the logs happening in real-time:

    kubectl logs -f monolith
    1. Now if you use curl in the 1st terminal to interact with the monolith, you can see the logs updating (in the 3rd terminal):

    curl http://127.0.0.1:10080
    1. Use the kubectl exec command to run an interactive shell inside the Monolith Pod. This can come in handy when you want to troubleshoot from within a container:

    kubectl exec monolith --stdin --tty -c monolith -- /bin/sh
    1. For example, once you have a shell into the monolith container you can test external connectivity using the ping command:

    ping -c 3 google.com
    1. Be sure to log out when you're done with this interactive shell.

    exit

    As you can see, interacting with pods is as easy as using the kubectl command. If you need to hit a container remotely, or get a login shell, Kubernetes provides everything you need to get up and going.

    Task 6. Services

    Pods aren't meant to be persistent. They can be stopped or started for many reasons - like failed liveness or readiness checks - and this leads to a problem:

    What happens if you want to communicate with a set of Pods? When they get restarted they might have a different IP address.

    That's where Services come in. Services provide stable endpoints for Pods.

    Service network diagram

    Services use labels to determine what Pods they operate on. If Pods have the correct labels, they are automatically picked up and exposed by our services.

    The level of access a service provides to a set of pods depends on the Service's type. Currently there are three types:

    • ClusterIP (internal) -- the default type means that this Service is only visible inside of the cluster,
    • NodePort gives each node in the cluster an externally accessible IP and
    • LoadBalancer adds a load balancer from the cloud provider which forwards traffic from the service to Nodes within it.

    Now you'll learn how to:

    • Create a service

    • Use label selectors to expose a limited set of Pods externally

    Task 7. Creating a service

    Before you can create our services, first create a secure pod that can handle https traffic.

    1. If you've changed directories, make sure you return to the ~/orchestrate-with-kubernetes/kubernetes directory:

    cd ~/orchestrate-with-kubernetes/kubernetes
    1. Explore the monolith service configuration file:

    cat pods/secure-monolith.yaml
    1. Create the secure-monolith pods and their configuration data:

    kubectl create secret generic tls-certs --from-file tls/ kubectl create configmap nginx-proxy-conf --from-file nginx/proxy.conf kubectl create -f pods/secure-monolith.yaml

    Now that you have a secure pod, it's time to expose the secure-monolith Pod externally.To do that, create a Kubernetes service.

    1. Explore the monolith service configuration file:

    cat services/monolith.yaml

    (Output):

    kind: Service apiVersion: v1 metadata: name: "monolith" spec: selector: app: "monolith" secure: "enabled" ports: - protocol: "TCP" port: 443 targetPort: 443 nodePort: 31000 type: NodePort Things to note:

    * There's a selector which is used to automatically find and expose any pods with the labels `app: monolith` and `secure: enabled`.

    * Now you have to expose the nodeport here because this is how you'll forward external traffic from port 31000 to nginx (on port 443).

    1. Use the kubectl create command to create the monolith service from the monolith service configuration file:

    kubectl create -f services/monolith.yaml

    (Output):

    service/monolith created

    Test completed task

    Click Check my progress below to check your lab progress. If you successfully created Monolith pods and service, you'll see an assessment score.

    Create Monolith pods and service

    You're using a port to expose the service. This means that it's possible to have port collisions if another app tries to bind to port 31000 on one of your servers.

    Normally, Kubernetes would handle this port assignment. In this lab you chose a port so that it's easier to configure health checks later on.

    1. Use the gcloud compute firewall-rules command to allow traffic to the monolith service on the exposed nodeport:

    gcloud compute firewall-rules create allow-monolith-nodeport \ --allow=tcp:31000

    Test completed task

    Click Check my progress below to check your lab progress. If you successfully created a firewall rule to allow TCP traffic on the 31000 port, you'll see an assessment score.

    Allow traffic to the monolith service on the exposed nodeport

    Now that everything is set up you should be able to hit the secure-monolith service from outside the cluster without using port forwarding.

    1. First, get an external IP address for one of the nodes.

    gcloud compute instances list
    1. Now try hitting the secure-monolith service using curl:

    curl -k https://<EXTERNAL_IP>:31000

    Uh oh! That timed out. What's going wrong?

    Note: It's time for a quick knowledge check.

    Use the following commands to answer the questions below:

    kubectl get services monolith

    kubectl describe services monolith

    Questions:

  • Why are you unable to get a response from the monolith service?
  • How many endpoints does the monolith service have?
  • What labels must a Pod have to be picked up by the monolith service?
  • Hint: it has to do with labels. You'll fix the issue in the next section.

    Task 8. Adding labels to pods

    Currently the monolith service does not have endpoints. One way to troubleshoot an issue like this is to use the kubectl get pods command with a label query.

    1. You can see that you have quite a few pods running with the monolith label.

    kubectl get pods -l "app=monolith"
    1. But what about "app=monolith" and "secure=enabled"?

    kubectl get pods -l "app=monolith,secure=enabled"

    Notice this label query does not print any results. It seems like you need to add the "secure=enabled" label to them.

    1. Use the kubectl label command to add the missing secure=enabled label to the secure-monolith Pod. Afterwards, you can check and see that your labels have been updated.

    kubectl label pods secure-monolith 'secure=enabled' kubectl get pods secure-monolith --show-labels
    1. Now that your pods are correctly labeled, view the list of endpoints on the monolith service:

    kubectl describe services monolith | grep Endpoints

    And you have one!

    1. Test this out by hitting one of our nodes again.

    gcloud compute instances list curl -k https://<EXTERNAL_IP>:31000

    Bam! Houston, we have contact.

    Test completed task

    Click Check my progress below to check your lab progress. If you successfully added labels to monolith pods, you'll see an assessment score.

    Adding Labels to Pods

    Task 9. Deploying applications with Kubernetes

    The goal of this lab is to get you ready for scaling and managing containers in production. That's where Deployments come in. Deployments are a declarative way to ensure that the number of Pods running is equal to the desired number of Pods, specified by the user.

    Deployments diagram includes nodes one, two, and three. app: hello. replicas: 3The main benefit of Deployments is in abstracting away the low level details of managing Pods. Behind the scenes Deployments use Replica Sets to manage starting and stopping the Pods. If Pods need to be updated or scaled, the Deployment will handle that. Deployment also handles restarting Pods if they happen to go down for some reason.

    Look at a quick example:

    Deployments diagram

    Pods are tied to the lifetime of the Node they are created on. In the example above, Node3 went down (taking a Pod with it). Instead of manually creating a new Pod and finding a Node for it, your Deployment created a new Pod and started it on Node2.

    That's pretty cool!

    It's time to combine everything you learned about Pods and Services to break up the monolith application into smaller Services using Deployments.

    Task 10. Creating deployments

    You're going to break the monolith app into three separate pieces:

    • auth - Generates JWT tokens for authenticated users.
    • hello - Greet authenticated users.
    • frontend - Routes traffic to the auth and hello services.

    You are ready to create deployments, one for each service. Afterwards, you'll define internal services for the auth and hello deployments and an external service for the frontend deployment. Once finished you'll be able to interact with the microservices just like with Monolith only now each piece will be able to be scaled and deployed, independently!

    1. Get started by examining the auth deployment configuration file.

    cat deployments/auth.yaml

    (Output)

    apiVersion: apps/v1 kind: Deployment metadata: name: auth spec: selector: matchlabels: app: auth replicas: 1 template: metadata: labels: app: auth track: stable spec: containers: - name: auth image: "kelseyhightower/auth:2.0.0" ports: - name: http containerPort: 80 - name: health containerPort: 81 ...

    The deployment is creating 1 replica, and you're using version 2.0.0 of the auth container.

    When you run the kubectl create command to create the auth deployment it will make one pod that conforms to the data in the Deployment manifest. This means you can scale the number of Pods by changing the number specified in the Replicas field.

    1. Anyway, go ahead and create your deployment object:

    kubectl create -f deployments/auth.yaml
    1. It's time to create a service for your auth deployment. Use the kubectl create command to create the auth service:

    kubectl create -f services/auth.yaml
    1. Now do the same thing to create and expose the hello deployment:

    kubectl create -f deployments/hello.yaml kubectl create -f services/hello.yaml
    1. And one more time to create and expose the frontend Deployment.

    kubectl create configmap nginx-frontend-conf --from-file=nginx/frontend.conf kubectl create -f deployments/frontend.yaml kubectl create -f services/frontend.yaml Note: There is one more step to creating the frontend because you need to store some configuration data with the container.
    1. Interact with the frontend by grabbing its External IP and then curling to it:

    kubectl get services frontend Note: It might take a minute for the external IP address to be generated. Run the above command again if the EXTERNAL-IP column status is pending. curl -k https://<EXTERNAL-IP>

    And you get a hello response back!

    Test completed task

    Click Check my progress below to check your lab progress. If you successfully created Auth, Hello and Frontend deployments, you'll see an assessment score.

    Creating Deployments (Auth, Hello and Frontend)

    Congratulations!

    You've developed a multi-service application using Kubernetes. The skills you've learned here will allow you to deploy complex applications on Kubernetes using a collection of deployments and services.

    Finish your quest

    This self-paced lab is part of the Cloud Architecture and Kubernetes in Google Cloud quests. A quest is a series of related labs that form a learning path. Completing this quest earns you a badge to recognize your achievement. You can make your badge or badges public and link to them in your online resume or social media account. Enroll in any quest that contains this lab and get immediate completion credit. See the Google Cloud Skills Boost catalog to see all available quests.

    Take your next lab

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    Manual Last Updated September 26, 2022

    Lab Last Tested November 04, 2022

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