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In recent years, Kubernetes has emerged as a leading platform for container orchestration. It has become essential for professionals in the tech industry to possess Kubernetes expertise, making Kubernetes interviews extremely competitive. To help you prepare effectively, we have compiled a comprehensive list of the Top 56 Kubernetes Interview Questions and answers.
In this blog, we will cover basic, advanced, and situational Kubernetes Interview Questions and answers to equip you with the knowledge needed to succeed in the interviews.
Table of Contents
1) Basic Kubernetes Interview Questions and answers
2) Advanced Kubernetes Interview Questions and answers
3) Situational Kubernetes Interview Questions and answers
4) Tips to pass a Kubernetes interview
5) Conclusion
Basic Kubernetes Interview Questions and answers
This section of the blog will focus on the basic Kubernetes Interview Questions and answers.
1) What is Kubernetes?
Kubernetes can be defined as an open-source container orchestration platform that automates the deployment and management of containerised applications. It provides a framework for running and coordinating containers across a cluster of machines.
2) Why is Kubernetes important?
Kubernetes simplifies the management of containerised applications, enabling scalability, resilience, and portability. It provides features like automatic scaling, load balancing, and self-healing, making deploying and managing complex microservices architectures easier.
3) What are containers in Kubernetes?
Containers are lightweight, isolated environments that package an application and its dependencies, allowing it to run consistently across different computing environments. Containers offer flexibility, portability, and efficient resource utilisation.
4) How does Kubernetes work?
Kubernetes follows a client-server architecture. The main components include:
1) Control plane: Manages the cluster and its components.
2) Nodes: Machines that run containers and are managed by the control plane.
3) Pods: Smallest deployable units in Kubernetes that encapsulate one or more containers.
5) What are the key components of a Kubernetes cluster?
A Kubernetes cluster consists of several key components, including the master node, worker nodes, etc, and various controllers and plugins.
6) Explain the concept of Pods.
Pods are the fundamental units of deployment in Kubernetes. They represent a single running process instance and can contain one or more containers. Pods share network and storage resources and are scheduled and managed as a cohesive unit.
7) What is a Service in Kubernetes?
Service in Kubernetes is an abstraction layer that provides a consistent network endpoint for accessing a group of Pods. It enables load balancing and service discovery within the cluster, allowing communication between different components of an application.
8) How does Kubernetes handle scaling?
Kubernetes supports both horizontal and vertical scaling. Horizontal Pod Autoscaling (HPA) automatically adjusts the number of Pods based on resource usage metrics, while vertical scaling involves changing the resources allocated to individual Pods.
9) Describe the role of ReplicaSets.
ReplicaSets ensure that a specified number of identical Pods are running at all times. They provide fault tolerance and high availability by automatically creating or removing Pods to maintain the desired replica count.
10) What is the purpose of a Deployment?
Deployments manage the rollout and updates of application Pods. They enable declarative updates, rolling updates, and rollbacks, ensuring seamless application deployment and minimising downtime.
11) What are ConfigMaps and Secrets in Kubernetes?
ConfigMaps are Kubernetes objects used to store configuration data that can be consumed by Pods as environment variables or mounted as configuration files. On the other hand, Secretes are used to store sensitive information, such as passwords or API keys, securely within a cluster.
12) Explain the concept of a StatefulSet in Kubernetes.
StatefulSets are Kubernetes objects designed to manage stateful applications, like databases, that require stable network identities and storage. Unlike ReplicaSets, which are stateless and provide no guarantees about ordering Pods, StatefulSets ensure stable and unique identities for each Pod.
13) Explain the concept of a DaemonSet in Kubernetes.
A DaemonSet is a Kubernetes resource designed to ensure that a Pod is running on every node within a cluster. It guarantees that a copy of the specified Pod is created and maintained on each node, regardless of the cluster's size or changes in the cluster's configuration.
14) What are the different container runtime options supported by Kubernetes?
Kubernetes provides support for various container runtimes, allowing you to choose the most suitable runtime for your cluster's requirements. Some of the container runtime options supported by Kubernetes include:
1) Docker: It is one of the most widely used container runtimes and is well-integrated with Kubernetes. It provides a comprehensive set of features for container management, including image distribution, container execution, and networking.
2) Containerd: It is an industry-standard container runtime initially by the Cloud Native Computing Foundation (CNCF). It focuses on providing a simple and stable runtime for container execution, relying on higher-level components for additional functionalities.
3) CRI-O: CRI-O is another CNCF project that provides a lightweight and OCI-compliant runtime specifically designed for Kubernetes. It aims to provide a stable and optimised runtime for running containers within Kubernetes clusters.
15) How can you expose a Kubernetes service to external traffic?
To expose a Kubernetes Service to external traffic, you can utilise different mechanisms depending on your cluster's infrastructure and requirements:
1) NodePort: NodePort is a simple and straightforward way to expose a Service on a specific port of all worker nodes in the cluster. The Service can be accessed by sending traffic to any node's IP address on the specified port.
2) LoadBalancer: LoadBalancer is a mechanism that provisions an external load balancer to allocate traffic to the Service. The cloud provider creates and manages the load balancer and automatically routes traffic to the Service.
3) Ingress: Ingress is an API object in Kubernetes that allows you to define rules for routing external traffic to Services based on HTTP(S) rules. Ingress controllers are responsible for implementing the Ingress rules and handling traffic.
16) What are K8s?
K8s is a commonly used abbreviation for Kubernetes. It's a convenient way to refer to Kubernetes in written or verbal communication, especially in technical discussions and documentation.
17) How are Kubernetes and Docker related?
Kubernetes and Docker are related in the context of containerisation and application management. Docker is a platform that packages applications and their dependencies into containers, ensuring portability. Kubernetes, on the other hand, is an orchestration platform that automates the deployment and management of these containers, enabling scalability and efficient operation in complex environments. Overall, Docker creates containers, and Kubernetes manages and orchestrates them.
18) Explain Kubernetes architecture.
Kubernetes architecture is the backbone of this container orchestration platform, consisting of key components that work together to manage containerised applications. Let's explore some of its components:
1) Master node: This node is the central and crucial component responsible for managing the entire Kubernetes cluster. It serves as the primary control point for all administrative tasks and can be duplicated to ensure fault tolerance.
2) API server: The API server acts as the interface for executing REST commands that control the cluster. It's the entry point for managing and interacting with the cluster.
3) Scheduler: The scheduler plays a vital role in task distribution within the cluster. It collects information about resource usage on slave nodes and is responsible for assigning workloads to these nodes, ensuring efficient resource allocation.
4) Etcd: Etcd is a critical component that stores configuration details and values. It acts as the source of truth for the cluster, receiving and executing commands from various components. It also manages network rules and port forwarding.
5) Worker nodes: Worker nodes are essential components responsible for managing network communication between containers and connecting with the master node. They execute assigned resources and tasks for containers.
6) Kubelet: Kubelet is an agent on each worker node. It receives configuration information for Pods from the API server and ensures that the specified containers are up and running.
7) Docker container: Docker containers run on worker nodes and execute the configured Pods, encapsulating and running the applications.
8) Pods: Pods are fundamental units that consist of single or multiple containers that logically operate together on nodes. They share the same network space and are scheduled to run on worker nodes.
Overall, Kubernetes architecture encompasses master and worker nodes, with the master node at the core, controlling and managing the entire cluster. It uses components like the API server, scheduler, etcd, and Kubelet to ensure efficient deployment and orchestration of containerised applications within Pods.
19) What is the role of Kube-apiserver?
The Kube-apiserver acts as the front-end component of the Kubernetes control plane. It provides an API that enables users, administrators, and various Kubernetes components to communicate and interact with the cluster. This API server receives Representational State Transfer (REST)commands and uses them to manage and control the cluster's resources and configurations.
It is the central point for issuing commands and managing the cluster's state. Moreover, it also ensures that desired configurations are applied. This makes it a critical component for controlling and orchestrating containerised applications within a Kubernetes cluster.
20) What is a node in Kubernetes?
In Kubernetes, a "node" refers to a worker machine within the cluster that is responsible for running containerised applications. Nodes are also sometimes referred to as "minions." These nodes are essential for executing and managing the containers that make up your applications.
Nodes play a crucial role in Kubernetes by providing the compute resources necessary for running containers. They are responsible for executing the containers, monitoring their health, and communicating with the master node to manage and orchestrate the deployment and scaling of applications. In larger clusters, you'll find multiple nodes, each contributing to the overall computing power and capacity of the cluster.
21) Define Heapster in Kubernetes.
Heapster, in the context of Kubernetes, is a deprecated open-source monitoring and performance management tool. It was used to collect and aggregate resource utilisation data from various nodes and Pods within a Kubernetes cluster. Heapster tracked metrics such as CPU and memory usage, allowing administrators to gain insights into the cluster's performance.
22) What is Minikube?
Minikube is a tool that lets you set up a single-node Kubernetes cluster locally on your development machine. It is designed to provide a lightweight and easy-to-use environment for Kubernetes development, testing, and learning purposes. Minikube is a valuable tool for developers who want to work with Kubernetes in a local environment. It allows them to develop, test, and experiment with containerised applications and Kubernetes configurations without needing a fully-fledged cluster. It's particularly useful for learning and development scenarios.
23) What is ClusterIP?
ClusterIP is a type of service that provides internal network connectivity to the Pods within a cluster. It is used to expose a set of Pods as a stable network endpoint, typically for communication between various parts of an application running within the same Kubernetes cluster.
24) What is Kubelet?
Kubelet is an essential component in a Kubernetes cluster, responsible for managing the individual nodes within the cluster. It runs on every node and ensures that containers are running as expected. Here are the key responsibilities and functions of Kubelet:
1) Container execution: Kubelet is responsible for running and managing containers on its assigned node. It communicates with the container runtime (e.g., Docker) to ensure that the specified containers are created, started, and maintained according to the desired state defined in Kubernetes resources like Pods.
2) Pod Management: Kubelet acts as the custodian of Pods. It monitors the health of all the containers within a Pod, restarting them if they fail and ensuring that they remain in the desired state.
3) Resource management: Kubelet enforces resource constraints set in Pod specifications, such as CPU and memory limits. It monitors resource usage and takes necessary actions to ensure that containers do not exceed their allocated resources.
4) Node status: Kubelet regularly reports the node's status and the conditions of the containers running on it to the Kubernetes master, providing vital information about the node's health and capacity.
5) Communication: Kubelet communicates with the Kubernetes master node to receive Pod specifications, updates, and changes. It is responsible for executing the desired configuration.
Kubelet acts as the node-level agent that bridges the gap between the Kubernetes control plane and the worker nodes. It ensures that containers are running as specified, monitors their health, and communicates vital information to the master node.
25) What is Kubectl?
Kube Control, shortly Kubectl, is a command-line tool used for interacting with Kubernetes clusters. It serves as the primary interface for managing and controlling Kubernetes clusters, enabling users to perform various tasks and operations. These operations include anything from deploying applications to troubleshooting.
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Advanced Kubernetes Interview Questions and answers
This section of the blog will focus on the advanced Kubernetes Interview Questions and answers.
26) What is Kubernetes scaling, and how does it work?
Kubernetes scaling refers to adjusting the number of Pods or nodes in a cluster based on the workload's demand. Scaling in Kubernetes can be achieved through horizontal scaling or vertical scaling. Horizontal scaling involves increasing or decreasing the number of Pods running the application to handle varying traffic loads. Vertical scaling, however, involves adjusting the resources allocated to each Pod, such as CPU and memory.
27) Explain the concept of Kubernetes Operators.
Kubernetes Operators deploy and manage complex applications or infrastructure using custom controllers. Operators extend the functionality of Kubernetes by leveraging Custom Resource Definitions (CRDs) to define new types of resources and their behaviours. They encapsulate domain-specific knowledge and automate tasks related to managing, configuring, and operating applications or infrastructure components. Operators provide higher abstraction and automation, enabling more efficient management of complex systems in Kubernetes.
28) What are the benefits of using Helm in Kubernetes?
Helm is a popular package manager for Kubernetes that simplifies the deployment and management of applications. Some key benefits of using Helm include:
1) Simplified packaging and distribution: Helm allows applications to be packaged as charts, which include all the necessary Kubernetes manifests and dependencies. Charts can be easily shared and distributed, promoting reusability and standardisation.
2) Version control and rollback: Helm enables versioning of application releases, making it easy to roll back to a previous version if issues arise. This feature helps in maintaining application stability and allows for easy troubleshooting.
3) Template-based deployment: Helm uses templates to allow dynamic configuration and parameterisation of deployments. This enables the customisation of deployments for different environments or scenarios without modifying the underlying templates.
4) Dependency management: Helm manages dependencies between different components of an application. It simplifies the installation and deployment of complex applications with multiple interdependent services or microservices.
5) Thriving ecosystem: Helm has a vibrant community and a wide range of pre-built charts available in its official repository and community repositories. These charts cover various applications and services, making finding and deploying popular software in a Kubernetes environment easy.
29) How does Kubernetes handle storage orchestration?
Kubernetes provides a flexible storage orchestration framework to manage persistent storage for applications running in Pods. It abstracts the underlying storage infrastructure and provides a unified interface for managing storage resources. Kubernetes offers different types of storage options, including:
1) PersistentVolumes (PVs) and PersistentVolumeClaims (PVCs): PVs represent the actual storage resources, while PVCs are used by applications to request storage dynamically. Kubernetes automatically binds PVCs to available PVs, ensuring efficient utilisation of storage resources.
2) Storage classes: Storage classes define the characteristics and capabilities of the underlying storage provisioners. They allow administrators to define different storage profiles, such as performance, availability, or backup policies, and map them to specific PVs.
3) Volume plugins: Kubernetes supports various volume plugins, including local storage, network-attached storage (NAS), and cloud-specific storage solutions. These plugins enable applications to use different types of storage based on their requirements.
4) StatefulSets: StatefulSets are used for deploying stateful applications that require stable network identities and persistent storage. They ensure that Pods are deployed and scaled in a predictable and ordered manner, allowing applications to maintain their state across restarts or rescheduling.
30) What is the role of Service Mesh in Kubernetes?
Service Mesh is a dedicated infrastructure layer that handles service-to-service communication within a Kubernetes cluster. It provides advanced features like traffic routing, load balancing, service discovery, and observability, enhancing microservices architectures' resilience, security, and observability. Service Meshes can handle requests routing, circuit breaking, distributed tracing, and encryption, offloading these concerns from the application code and providing consistent features across multiple services.
31) How can you perform blue-green deployments in Kubernetes?
Blue-green deployments are a popular strategy for deploying applications with minimal downtime and risk. In Kubernetes, you can achieve blue-green deployments using the following steps:
1) Create two identical environments: Set up two environments, one representing the current live production environment (blue) and the other representing the new version of the application (green). Both environments should have the same infrastructure and configurations.
2) Deploy the new version to the green environment: Package and deploy the new version of the application to the green environment. Ensure that the new version is thoroughly tested and ready for production use.
3) Route traffic to the green environment: Configure a load balancer or Ingress controller to start routing a percentage of the traffic to the green environment. Gradually increase the traffic to the green environment while monitoring its stability and performance.
4) Monitor and validate: Continuously monitor the performance and health of the green environment. Validate that the new version of the application is functioning as expected and meets the desired performance criteria.
5) Switch traffic to the green environment: If the green environment proves to be stable and reliable, redirect all incoming traffic to the green environment. This can be achieved by updating the load balancer or Ingress configuration.
6) Decommission the blue environment: Once the traffic is successfully routed to the green environment, you can decommission the blue environment, freeing up resources and ensuring a clean transition.
32) What is the purpose of Horizontal Pod Autoscaling (HPA) in Kubernetes?
Horizontal Pod Autoscaling (HPA) is a Kubernetes feature that automatically adjusts the number of Pods in a Deployment, ReplicaSet, or StatefulSet based on the observed CPU utilisation or custom metrics. The purpose of HPA is to ensure that the application scales up or down to handle varying levels of demand or workload.
By automatically adjusting the number of Pods, HPA optimises resource utilisation, improves application performance, and maintains desired performance levels. HPA can be configured with minimum and maximum Pod replicas, target CPU utilisation thresholds, and custom metrics to drive scaling decisions.
33) Explain the concept of Custom Resource Definitions (CRDs) in Kubernetes.
Custom Resource Definitions (CRDs) allow users to define their custom resources and behaviours in Kubernetes. CRDs extend the Kubernetes API by defining new resource types that can be managed like native Kubernetes objects. They provide a way to add domain-specific abstractions and workflows to Kubernetes.
CRDs are defined using the Kubernetes API extension mechanisms and can be created, updated, and deleted using standard Kubernetes API operations. Custom controllers and operators can be developed to manage the lifecycle of these custom resources and perform specific actions based on their states and events.
34) How does Kubernetes handle application logging and monitoring?
Kubernetes provides several mechanisms for application logging and monitoring. Here are some common approaches:
1) Container logging: Applications running in Pods can write logs to standard output or standard error streams. Kubernetes collects these logs and allows them to be accessed through different methods. Logs can be accessed using the kubectl logs command, integrated with logging solutions like Elasticsearch, Fluentd, or Loki, or exported to external log management systems.
2) Kubernetes monitoring: Kubernetes exposes metrics about cluster health, resource usage, and application performance through its Metrics API. Monitoring solutions like Prometheus can scrape and collect these metrics, allowing operators to visualise and analyse the performance of the cluster and individual components.
3) Application-specific monitoring: Applications can be instrumented with monitoring frameworks like Prometheus or integrated with application-specific monitoring tools or Application Performance Monitoring (APM) solutions. These frameworks provide insights into application-level metrics, traces, and performance indicators, enabling operators to monitor the health and performance of their applications.
35) What are the considerations for running stateful applications in Kubernetes?
Running stateful applications in Kubernetes requires additional considerations compared to stateless applications. Here are some key considerations:
1) Persistent storage: Stateful applications often require persistent storage to maintain data durability across Pod restarts or rescheduling. Kubernetes provides mechanisms like PersistentVolumes (PVs) and PersistentVolumeClaims (PVCs) to manage storage resources and attach them to Pods.
2) Stable network identities: Stateful applications may rely on stable network identities, such as stable DNS names or hostnames, to maintain consistent communication and data replication. Kubernetes provides StatefulSets, which ensure stable network identities for Pods and allow stateful applications to maintain their ordering and relationships.
3) Data consistency and synchronisation: Ensuring data consistency and synchronisation across multiple instances or replicas of a stateful application can be challenging. It often requires the use of distributed databases or shared storage systems that support replication, consistency models, and data synchronisation mechanisms.
4) Backup and disaster recovery: Stateful applications may require backup and disaster recovery mechanisms to protect data in case of failures or disasters. This can involve regular backups of persistent storage, replication strategies, or the use of external backup solutions that integrate with Kubernetes.
36) What is Kubernetes NetworkPolicy, and how does it enhance network security?
Kubernetes NetworkPolicy is a resource that allows you to define and enforce rules for network traffic within a Kubernetes cluster. It provides a way to control inbound and outbound traffic to and from Pods based on various criteria, such as Pod selectors, IP addresses, namespaces, and ports. By using NetworkPolicy, you can segment and isolate different components of your application, implement micro-segmentation, and enforce security policies at the network level.
NetworkPolicy enhances network security by allowing fine-grained control over traffic flows, reducing the attack surface, and preventing unauthorised access to Pods and Services within the cluster. It adds an extra layer of security to your Kubernetes environment by enforcing policies that dictate which Pods can communicate with each other and which can't, helping to protect sensitive data and resources.
37) Can you tell me about kube-proxy?
Kube-proxy is a fundamental component in a Kubernetes cluster responsible for network communication and service discovery. Its primary role is to maintain network rules on nodes, enabling communication between Pods and services while ensuring that network traffic is properly routed and load balanced. Let's explore Kube-proxy's key functions and responsibilities:
1) Network rules management: Kube-proxy manages network rules that allow traffic to be directed to the appropriate destination, ensuring that Pods can communicate with each other and with external services. It sets up rules to support network policies, service endpoints, and other networking requirements.
2) Service load balancing: Kube-proxy plays a vital role in load balancing traffic to services. When a service is created in Kubernetes, Kube-proxy ensures that incoming requests are distributed across the relevant Pods associated with that service. This load balancing enhances the availability and scalability of applications.
3) Service discovery: Kube-proxy helps with service discovery by mapping service names to the IP addresses of Pods that back the service. This simplifies how services can be accessed within the cluster without needing to know the IP addresses of individual Pods.
4) Packet forwarding: Kube-proxy forwards network packets to the correct destination based on network rules. It operates at both the node and cluster levels, ensuring that network traffic is appropriately directed within the cluster.
5) Node ports: Kube-proxy manages node ports, which allow services to be accessed externally. It maps a port on the node to a service's port, enabling external traffic to reach the service.
38) What is etcd?
Etcd is a distributed key-value store used in Kubernetes and other distributed systems for storing and managing configuration data and metadata. It helps maintain the overall health and consistency of a distributed system. In Kubernetes, etcd serves as the source of truth for all cluster data and configuration. Hence, it is very integral to the operation of the control plane.
It maintains a real-time representation of the cluster state and changes to cluster objects. This includes Pods, Services, and ConfigMaps, which are stored and synchronised through etcd. The distributed and highly available nature of etcd ensures that Kubernetes clusters remain reliable and fault-tolerant even in network failures.
39) What is the work of a kube-scheduler?
The kube-scheduler is a vital component within a Kubernetes cluster responsible for making decisions on where to place Pods based on the available resources and user-defined constraints. Its primary role is to ensure the efficient allocation of workloads across the cluster's nodes. Here's how it works:
1) Pod scheduling: When a user or system creates a new Pod, the kube-scheduler is responsible for determining which node within the cluster should host the Pod. It takes into account several factors, including the available resources (CPU, memory), Pod resource requirements, node conditions, and user-defined scheduling policies.
2) Node selection: The kube-scheduler examines the available nodes to find a suitable candidate for the Pod. It considers factors like the node's capacity, available resources, and any taints and tolerations applied to the node, which helps define constraints and preferences.
3) Resource optimisation: The kube-scheduler aims to optimise the allocation of resources to maximise resource utilisation and improve overall cluster efficiency. It balances the distribution of Pods across nodes, preventing overloading or underutilisation of resources.
4) Affinity rules: The kube-scheduler considers affinity and anti-affinity rules defined in Pod specifications. These rules specify which nodes are preferred or avoided based on labels and node attributes.
5) Custom scheduling policies: Kubernetes allows users to define custom scheduling policies by writing custom schedulers. The kube-scheduler can be extended to incorporate these custom policies to meet specific deployment requirements.
40) Define Kubernetes controller manager
The Kubernetes Controller Manager is a core component of the Kubernetes control plane, responsible for overseeing and managing various controllers that regulate the desired state of resources within a Kubernetes cluster. These controllers continuously work to ensure that the cluster maintains the desired configurations and that applications are running as intended.
41) What is Google Container Engine?
Google Container Engine, often referred to as GKE is a managed container orchestration service provided by Google Cloud. It allows users to deploy, manage, and scale containerised applications using Kubernetes, an open-source container orchestration platform, without the operational overhead of managing the underlying infrastructure.
42) What is Kubernetes Load Balancing?
Kubernetes Load Balancing refers to the mechanism and processes in Kubernetes that distribute incoming network traffic across multiple Pods, ensuring even distribution of requests, enhancing application availability, and preventing overloading of specific Pods. Load balancing is a fundamental requirement for managing the traffic to applications running in a Kubernetes cluster.
43) What are federated clusters?
Federated clusters, in the context of Kubernetes, refer to a method of managing multiple Kubernetes clusters as a single, cohesive entity. This approach allows organisations to operate multiple geographically distributed clusters and treat them as a unified and centrally managed environment.
44) Can you explain the differences between Docker Swarm and Kubernetes?
Docker Swarm and Kubernetes are two popular container orchestration platforms, each with its own set of features, design principles, and use cases. Here are the key differences between Docker Swarm and Kubernetes:
1) Kubernetes installation is complex but leads to robust clusters, while Docker Swarm offers a simpler installation but with less robustness.
2) Kubernetes supports auto-scaling based on metrics, providing advanced scalability features. Docker Swarm lacks native auto-scaling capabilities.
3) Kubernetes is a full-fledged framework with a focus on consistency, making it suitable for complex applications. Docker Swarm is simpler and better for straightforward deployments.
45) What is a headless service?
A headless service is a type of Kubernetes service that is designed to route network traffic to individual Pods directly without load balancing or service discovery. In other words, it doesn't assign a ClusterIP to the service like a regular service would. Instead, it's used when you need to interact with each Pod individually and need to know their specific network identities.
In this section, you would have learned the advanced Kubernetes Interview Questions for experienced professionals and professionals of all levels. Let’s now move on to the situational questions.
46) Can you explain what Daemon sets are?
Daemon Sets are a feature in Kubernetes that ensures a copy of a specific pod runs on all or some selected nodes in a cluster. They are ideal for deploying system daemons such as log collectors, monitoring agents, or any service that needs to run on every node for consistent system-wide functionality. They also automatically add or remove pods as nodes join or leave the cluster.
Situational Kubernetes Interview Questions and answers
Let's Discuss some situational interview questions on Kubernetes, along with the answers you will be expected to provide.
47) You have a stateful application deployed in Kubernetes that requires a specific hostname for each Pod. How would you ensure that the Pods have stable hostnames?
For this question, you will be expected to answer along the lines of: “I would use a StatefulSet in Kubernetes to deploy the stateful application. StatefulSets provide stable network identities for Pods, assigning them unique hostnames that persist across rescheduling or scaling. This ensures that each Pod has a specific and stable hostname required by the stateful application.”
48) You want to deploy a containerised application to Kubernetes and ensure it is highly available. How would you achieve this?
You can approach this question like, “To achieve high availability, I would deploy the application as a Deployment in Kubernetes. Deployments manage the lifecycle of Pods and provide features like replica sets, rolling updates, and automatic scaling. By specifying the desired number of replicas, Kubernetes ensures that the application has multiple instances running, distributing the workload and providing redundancy to handle failures.
49) You have multiple microservices deployed in Kubernetes, and they need to communicate with each other securely. How would you enable secure communication between these microservices?
To answer this question, you can say, “I would use a Service Mesh like Istio or Linkerd to enable secure communication between microservices in Kubernetes. Service Meshes provide features like mutual TLS (Transport Layer Security), traffic encryption, and authentication. They intercept the network traffic between microservices, ensuring secure communication and enforcing policies for access control, traffic routing, and observability.”
50) You need to scale your Kubernetes cluster dynamically based on the incoming workload. How would you achieve this?
You can approach this question like, “I would use a Kubernetes cluster autoscaler to scale the cluster based on the workload dynamically. Kubernetes provides a Cluster Autoscaler, which automatically adjusts the number of worker nodes in the cluster based on resource utilisation. By monitoring the demand and available resources, the autoscaler scales the cluster up or down, ensuring optimal resource allocation and accommodating fluctuations in workload.”
51) You have a Kubernetes cluster running multiple applications, and you want to ensure that each application gets its fair share of resources. How would you implement resource allocation and scheduling?
To answer this question, you can go with “I would use Kubernetes' resource management features like resource requests, limits, and Quality Of Service (QoS) classes to implement resource allocation and scheduling. By setting appropriate resource requests and limits for each Pod, Kubernetes ensures that each application gets its allocated resources. QoS classes, such as Guaranteed, Burstable, and BestEffort, define the priority and guarantees for resource allocation, allowing fair distribution of resources among applications.”
52) You have a long-running batch job that needs to be completed successfully before the associated Pods can be terminated. How would you ensure that the job is completed before the Pods are terminated?
You will be expected to answer this question: "I would use Kubernetes' Job resource to manage the batch job. Jobs in Kubernetes ensure that a specified number of Pods successfully complete their tasks before they are considered complete. By configuring the Job with the appropriate completion criteria, such as the number of successful completions or a completion deadline, Kubernetes ensures that the associated Pods continue running until the job is completed, preventing premature termination.”
53) You want to update a running application in Kubernetes with zero downtime. How would you achieve this?
In order to answer this question, you can say: “To update the application with zero downtime, I would use a rolling update strategy in Kubernetes. By deploying the application as a Deployment and configuring rolling update parameters, Kubernetes orchestrates the update process by gradually replacing the old Pods with new ones. This ensures that the application remains available during the update, as the traffic is shifted seamlessly to the updated Pods without any noticeable downtime.”
54) You have a Kubernetes cluster running multiple namespaces, and you want to enforce resource quotas for each namespace. How would you implement resource quotas in Kubernetes?
You can answer this question by saying: “I would use Kubernetes' resource quota feature to enforce resource limits for each namespace. By defining resource quota objects and associating them with specific namespaces, Kubernetes restricts the amount of compute resources (CPU, memory) and storage that Pods can use within those namespaces. Resource quotas help prevent resource contention and ensure fair resource allocation among namespaces.”
55) You have a stateful application running in Kubernetes that requires data persistence. How would you ensure data durability and availability?
Make sure to answer this question along the lines of “To ensure data durability and availability for the stateful application, and I would use PersistentVolumes (PVs) and PersistentVolumeClaims (PVCs) in Kubernetes. PVs represent the underlying storage resources, while PVCs are requests for storage by Pods. Kubernetes ensures that the stateful application's data persists even if Pods are rescheduled or restarted by provisioning appropriate PVs and binding them to PVCs. This enables data durability and availability for the application.”
56) You want to implement canary deployments in Kubernetes to test a new version of an application before rolling it out to all users. How would you achieve this?
You can answer this question in this manner: “I would use Kubernetes' canary deployment strategy to test the new version of the application. By creating a new Deployment with the updated version and a smaller number of replicas, I can direct a fraction of the traffic to the new Deployment using Service configuration. This allows me to test the new version in a controlled manner, monitor its performance and stability, and gradually increase the traffic to the new version based on the testing results.
Tips to pass a Kubernetes interview
To excel in a Kubernetes interview, make sure to follow these tips:
1) Master the basics: Understand key Kubernetes concepts like Pods, Deployments, Services, and ConfigMaps.
2) Practical experience: Gain hands-on practice by setting up and managing Kubernetes clusters.
3) Networking knowledge: Familiarise yourself with Services, Ingress, and NetworkPolicies.
4) Explore advanced topics: Study Helm charts, StatefulSets, DaemonSets, and operators.
5) Troubleshooting skills: Develop problem-solving abilities for common Kubernetes issues.
6) Stay updated: Follow Kubernetes trends, releases, and best practices.
7) Emphasise teamwork: Showcase your ability to communicate and collaborate effectively.
8) Ask insightful questions: Demonstrate your curiosity and interest.
9) Mock interviews and feedback: Practice Kubernetes interview questions with peers and seek constructive feedback.
10) Be confident: Highlight your technical expertise and enthusiasm for Kubernetes.
Conclusion
All in all, Kubernetes is a powerful container orchestration platform that offers various components and features for deploying and managing containerised applications. In this Blog, we explored a range of basic, advanced and situational Kubernetes Interview Questions, providing detailed and expanded answers to help you understand the concepts better. By familiarising yourself with these questions and their answers, you can confidently tackle Kubernetes interviews and demonstrate your understanding of the platform.
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Fri 14th Feb 2025
Fri 11th Apr 2025
Fri 13th Jun 2025
Fri 15th Aug 2025
Fri 10th Oct 2025
Fri 12th Dec 2025