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Overview
- 1: What is Kubernetes?
- 2: Kubernetes Components
- 3: The Kubernetes API
- 4: Working with Kubernetes Objects
- 4.1: Understanding Kubernetes Objects
- 4.2: Kubernetes Object Management
- 4.3: Object Names and IDs
- 4.4: Namespaces
- 4.5: Labels and Selectors
- 4.6: Annotations
- 4.7: Field Selectors
- 4.8: Finalizers
- 4.9: Owners and Dependents
- 4.10: Recommended Labels
1 - What is Kubernetes?
This page is an overview of Kubernetes.
Kubernetes is a portable, extensible, open-source platform for managing containerized workloads and services, that facilitates both declarative configuration and automation. It has a large, rapidly growing ecosystem. Kubernetes services, support, and tools are widely available.
The name Kubernetes originates from Greek, meaning helmsman or pilot. K8s as an abbreviation results from counting the eight letters between the "K" and the "s". Google open-sourced the Kubernetes project in 2014. Kubernetes combines over 15 years of Google's experience running production workloads at scale with best-of-breed ideas and practices from the community.
Going back in time
Let's take a look at why Kubernetes is so useful by going back in time.
Traditional deployment era: Early on, organizations ran applications on physical servers. There was no way to define resource boundaries for applications in a physical server, and this caused resource allocation issues. For example, if multiple applications run on a physical server, there can be instances where one application would take up most of the resources, and as a result, the other applications would underperform. A solution for this would be to run each application on a different physical server. But this did not scale as resources were underutilized, and it was expensive for organizations to maintain many physical servers.
Virtualized deployment era: As a solution, virtualization was introduced. It allows you to run multiple Virtual Machines (VMs) on a single physical server's CPU. Virtualization allows applications to be isolated between VMs and provides a level of security as the information of one application cannot be freely accessed by another application.
Virtualization allows better utilization of resources in a physical server and allows better scalability because an application can be added or updated easily, reduces hardware costs, and much more. With virtualization you can present a set of physical resources as a cluster of disposable virtual machines.
Each VM is a full machine running all the components, including its own operating system, on top of the virtualized hardware.
Container deployment era: Containers are similar to VMs, but they have relaxed isolation properties to share the Operating System (OS) among the applications. Therefore, containers are considered lightweight. Similar to a VM, a container has its own filesystem, share of CPU, memory, process space, and more. As they are decoupled from the underlying infrastructure, they are portable across clouds and OS distributions.
Containers have become popular because they provide extra benefits, such as:
- Agile application creation and deployment: increased ease and efficiency of container image creation compared to VM image use.
- Continuous development, integration, and deployment: provides for reliable and frequent container image build and deployment with quick and efficient rollbacks (due to image immutability).
- Dev and Ops separation of concerns: create application container images at build/release time rather than deployment time, thereby decoupling applications from infrastructure.
- Observability: not only surfaces OS-level information and metrics, but also application health and other signals.
- Environmental consistency across development, testing, and production: Runs the same on a laptop as it does in the cloud.
- Cloud and OS distribution portability: Runs on Ubuntu, RHEL, CoreOS, on-premises, on major public clouds, and anywhere else.
- Application-centric management: Raises the level of abstraction from running an OS on virtual hardware to running an application on an OS using logical resources.
- Loosely coupled, distributed, elastic, liberated micro-services: applications are broken into smaller, independent pieces and can be deployed and managed dynamically – not a monolithic stack running on one big single-purpose machine.
- Resource isolation: predictable application performance.
- Resource utilization: high efficiency and density.
Why you need Kubernetes and what it can do
Containers are a good way to bundle and run your applications. In a production environment, you need to manage the containers that run the applications and ensure that there is no downtime. For example, if a container goes down, another container needs to start. Wouldn't it be easier if this behavior was handled by a system?
That's how Kubernetes comes to the rescue! Kubernetes provides you with a framework to run distributed systems resiliently. It takes care of scaling and failover for your application, provides deployment patterns, and more. For example, Kubernetes can easily manage a canary deployment for your system.
Kubernetes provides you with:
- Service discovery and load balancing Kubernetes can expose a container using the DNS name or using their own IP address. If traffic to a container is high, Kubernetes is able to load balance and distribute the network traffic so that the deployment is stable.
- Storage orchestration Kubernetes allows you to automatically mount a storage system of your choice, such as local storages, public cloud providers, and more.
- Automated rollouts and rollbacks You can describe the desired state for your deployed containers using Kubernetes, and it can change the actual state to the desired state at a controlled rate. For example, you can automate Kubernetes to create new containers for your deployment, remove existing containers and adopt all their resources to the new container.
- Automatic bin packing You provide Kubernetes with a cluster of nodes that it can use to run containerized tasks. You tell Kubernetes how much CPU and memory (RAM) each container needs. Kubernetes can fit containers onto your nodes to make the best use of your resources.
- Self-healing Kubernetes restarts containers that fail, replaces containers, kills containers that don't respond to your user-defined health check, and doesn't advertise them to clients until they are ready to serve.
- Secret and configuration management Kubernetes lets you store and manage sensitive information, such as passwords, OAuth tokens, and SSH keys. You can deploy and update secrets and application configuration without rebuilding your container images, and without exposing secrets in your stack configuration.
What Kubernetes is not
Kubernetes is not a traditional, all-inclusive PaaS (Platform as a Service) system. Since Kubernetes operates at the container level rather than at the hardware level, it provides some generally applicable features common to PaaS offerings, such as deployment, scaling, load balancing, and lets users integrate their logging, monitoring, and alerting solutions. However, Kubernetes is not monolithic, and these default solutions are optional and pluggable. Kubernetes provides the building blocks for building developer platforms, but preserves user choice and flexibility where it is important.
Kubernetes:
- Does not limit the types of applications supported. Kubernetes aims to support an extremely diverse variety of workloads, including stateless, stateful, and data-processing workloads. If an application can run in a container, it should run great on Kubernetes.
- Does not deploy source code and does not build your application. Continuous Integration, Delivery, and Deployment (CI/CD) workflows are determined by organization cultures and preferences as well as technical requirements.
- Does not provide application-level services, such as middleware (for example, message buses), data-processing frameworks (for example, Spark), databases (for example, MySQL), caches, nor cluster storage systems (for example, Ceph) as built-in services. Such components can run on Kubernetes, and/or can be accessed by applications running on Kubernetes through portable mechanisms, such as the Open Service Broker.
- Does not dictate logging, monitoring, or alerting solutions. It provides some integrations as proof of concept, and mechanisms to collect and export metrics.
- Does not provide nor mandate a configuration language/system (for example, Jsonnet). It provides a declarative API that may be targeted by arbitrary forms of declarative specifications.
- Does not provide nor adopt any comprehensive machine configuration, maintenance, management, or self-healing systems.
- Additionally, Kubernetes is not a mere orchestration system. In fact, it eliminates the need for orchestration. The technical definition of orchestration is execution of a defined workflow: first do A, then B, then C. In contrast, Kubernetes comprises a set of independent, composable control processes that continuously drive the current state towards the provided desired state. It shouldn't matter how you get from A to C. Centralized control is also not required. This results in a system that is easier to use and more powerful, robust, resilient, and extensible.
What's next
- Take a look at the Kubernetes Components
- Ready to Get Started?
2 - Kubernetes Components
When you deploy Kubernetes, you get a cluster.
A Kubernetes cluster consists of a set of worker machines, called nodes, that run containerized applications. Every cluster has at least one worker node.
The worker node(s) host the Pods that are the components of the application workload. The control plane manages the worker nodes and the Pods in the cluster. In production environments, the control plane usually runs across multiple computers and a cluster usually runs multiple nodes, providing fault-tolerance and high availability.
This document outlines the various components you need to have for a complete and working Kubernetes cluster.
Control Plane Components
The control plane's components make global decisions about the cluster (for example, scheduling), as well as detecting and responding to cluster events (for example, starting up a new pod when a deployment's replicas
field is unsatisfied).
Control plane components can be run on any machine in the cluster. However, for simplicity, set up scripts typically start all control plane components on the same machine, and do not run user containers on this machine. See Creating Highly Available clusters with kubeadm for an example control plane setup that runs across multiple VMs.
kube-apiserver
The API server is a component of the Kubernetes control plane that exposes the Kubernetes API. The API server is the front end for the Kubernetes control plane.
The main implementation of a Kubernetes API server is kube-apiserver. kube-apiserver is designed to scale horizontally—that is, it scales by deploying more instances. You can run several instances of kube-apiserver and balance traffic between those instances.
etcd
Consistent and highly-available key value store used as Kubernetes' backing store for all cluster data.
If your Kubernetes cluster uses etcd as its backing store, make sure you have a back up plan for those data.
You can find in-depth information about etcd in the official documentation.
kube-scheduler
Control plane component that watches for newly created Pods with no assigned node, and selects a node for them to run on.
Factors taken into account for scheduling decisions include: individual and collective resource requirements, hardware/software/policy constraints, affinity and anti-affinity specifications, data locality, inter-workload interference, and deadlines.
kube-controller-manager
Control plane component that runs controller processes.
Logically, each controller is a separate process, but to reduce complexity, they are all compiled into a single binary and run in a single process.
Some types of these controllers are:
- Node controller: Responsible for noticing and responding when nodes go down.
- Job controller: Watches for Job objects that represent one-off tasks, then creates Pods to run those tasks to completion.
- Endpoints controller: Populates the Endpoints object (that is, joins Services & Pods).
- Service Account & Token controllers: Create default accounts and API access tokens for new namespaces.
cloud-controller-manager
A Kubernetes control plane component that embeds cloud-specific control logic. The cloud controller manager lets you link your cluster into your cloud provider's API, and separates out the components that interact with that cloud platform from components that only interact with your cluster.The cloud-controller-manager only runs controllers that are specific to your cloud provider. If you are running Kubernetes on your own premises, or in a learning environment inside your own PC, the cluster does not have a cloud controller manager.
As with the kube-controller-manager, the cloud-controller-manager combines several logically independent control loops into a single binary that you run as a single process. You can scale horizontally (run more than one copy) to improve performance or to help tolerate failures.
The following controllers can have cloud provider dependencies:
- Node controller: For checking the cloud provider to determine if a node has been deleted in the cloud after it stops responding
- Route controller: For setting up routes in the underlying cloud infrastructure
- Service controller: For creating, updating and deleting cloud provider load balancers
Node Components
Node components run on every node, maintaining running pods and providing the Kubernetes runtime environment.
kubelet
An agent that runs on each node in the cluster. It makes sure that containers are running in a Pod.
The kubelet takes a set of PodSpecs that are provided through various mechanisms and ensures that the containers described in those PodSpecs are running and healthy. The kubelet doesn't manage containers which were not created by Kubernetes.
kube-proxy
kube-proxy is a network proxy that runs on each node in your cluster, implementing part of the Kubernetes Service concept.
kube-proxy maintains network rules on nodes. These network rules allow network communication to your Pods from network sessions inside or outside of your cluster.
kube-proxy uses the operating system packet filtering layer if there is one and it's available. Otherwise, kube-proxy forwards the traffic itself.
Container runtime
The container runtime is the software that is responsible for running containers.
Kubernetes supports several container runtimes: Docker, containerd, CRI-O, and any implementation of the Kubernetes CRI (Container Runtime Interface).
Addons
Addons use Kubernetes resources (DaemonSet,
Deployment, etc)
to implement cluster features. Because these are providing cluster-level features, namespaced resources
for addons belong within the kube-system
namespace.
Selected addons are described below; for an extended list of available addons, please see Addons.
DNS
While the other addons are not strictly required, all Kubernetes clusters should have cluster DNS, as many examples rely on it.
Cluster DNS is a DNS server, in addition to the other DNS server(s) in your environment, which serves DNS records for Kubernetes services.
Containers started by Kubernetes automatically include this DNS server in their DNS searches.
Web UI (Dashboard)
Dashboard is a general purpose, web-based UI for Kubernetes clusters. It allows users to manage and troubleshoot applications running in the cluster, as well as the cluster itself.
Container Resource Monitoring
Container Resource Monitoring records generic time-series metrics about containers in a central database, and provides a UI for browsing that data.
Cluster-level Logging
A cluster-level logging mechanism is responsible for saving container logs to a central log store with search/browsing interface.
What's next
- Learn about Nodes
- Learn about Controllers
- Learn about kube-scheduler
- Read etcd's official documentation
3 - The Kubernetes API
The core of Kubernetes' control plane is the API server. The API server exposes an HTTP API that lets end users, different parts of your cluster, and external components communicate with one another.
The Kubernetes API lets you query and manipulate the state of API objects in Kubernetes (for example: Pods, Namespaces, ConfigMaps, and Events).
Most operations can be performed through the kubectl command-line interface or other command-line tools, such as kubeadm, which in turn use the API. However, you can also access the API directly using REST calls.
Consider using one of the client libraries if you are writing an application using the Kubernetes API.
OpenAPI specification
Complete API details are documented using OpenAPI.
OpenAPI V2
The Kubernetes API server serves an aggregated OpenAPI v2 spec via the
/openapi/v2
endpoint. You can request the response format using
request headers as follows:
Header | Possible values | Notes |
---|---|---|
Accept-Encoding |
gzip |
not supplying this header is also acceptable |
Accept |
application/[email protected]+protobuf |
mainly for intra-cluster use |
application/json |
default | |
* |
serves application/json |
Kubernetes implements an alternative Protobuf based serialization format that is primarily intended for intra-cluster communication. For more information about this format, see the Kubernetes Protobuf serialization design proposal and the Interface Definition Language (IDL) files for each schema located in the Go packages that define the API objects.
OpenAPI V3
Kubernetes v1.23 [alpha]
Kubernetes v1.23 offers initial support for publishing its APIs as OpenAPI v3; this is an
alpha feature that is disabled by default.
You can enable the alpha feature by turning on the
feature gate named OpenAPIV3
for the kube-apiserver component.
With the feature enabled, the Kubernetes API server serves an
aggregated OpenAPI v3 spec per Kubernetes group version at the
/openapi/v3/apis/<group>/<version>
endpoint. Please refer to the
table below for accepted request headers.
Header | Possible values | Notes |
---|---|---|
Accept-Encoding |
gzip |
not supplying this header is also acceptable |
Accept |
application/[email protected]+protobuf |
mainly for intra-cluster use |
application/json |
default | |
* |
serves application/json |
A discovery endpoint /openapi/v3
is provided to see a list of all
group/versions available. This endpoint only returns JSON.
Persistence
Kubernetes stores the serialized state of objects by writing them into etcd.
API groups and versioning
To make it easier to eliminate fields or restructure resource representations,
Kubernetes supports multiple API versions, each at a different API path, such
as /api/v1
or /apis/rbac.authorization.k8s.io/v1alpha1
.
Versioning is done at the API level rather than at the resource or field level to ensure that the API presents a clear, consistent view of system resources and behavior, and to enable controlling access to end-of-life and/or experimental APIs.
To make it easier to evolve and to extend its API, Kubernetes implements API groups that can be enabled or disabled.
API resources are distinguished by their API group, resource type, namespace (for namespaced resources), and name. The API server handles the conversion between API versions transparently: all the different versions are actually representations of the same persisted data. The API server may serve the same underlying data through multiple API versions.
For example, suppose there are two API versions, v1
and v1beta1
, for the same
resource. If you originally created an object using the v1beta1
version of its
API, you can later read, update, or delete that object
using either the v1beta1
or the v1
API version.
API changes
Any system that is successful needs to grow and change as new use cases emerge or existing ones change. Therefore, Kubernetes has designed the Kubernetes API to continuously change and grow. The Kubernetes project aims to not break compatibility with existing clients, and to maintain that compatibility for a length of time so that other projects have an opportunity to adapt.
In general, new API resources and new resource fields can be added often and frequently. Elimination of resources or fields requires following the API deprecation policy.
Kubernetes makes a strong commitment to maintain compatibility for official Kubernetes APIs
once they reach general availability (GA), typically at API version v1
. Additionally,
Kubernetes keeps compatibility even for beta API versions wherever feasible:
if you adopt a beta API you can continue to interact with your cluster using that API,
even after the feature goes stable.
Refer to API versions reference for more details on the API version level definitions.
API Extension
The Kubernetes API can be extended in one of two ways:
- Custom resources let you declaratively define how the API server should provide your chosen resource API.
- You can also extend the Kubernetes API by implementing an aggregation layer.
What's next
- Learn how to extend the Kubernetes API by adding your own CustomResourceDefinition.
- Controlling Access To The Kubernetes API describes how the cluster manages authentication and authorization for API access.
- Learn about API endpoints, resource types and samples by reading API Reference.
- Learn about what constitutes a compatible change, and how to change the API, from API changes.
4 - Working with Kubernetes Objects
4.1 - Understanding Kubernetes Objects
This page explains how Kubernetes objects are represented in the Kubernetes API, and how you can express them in .yaml
format.
Understanding Kubernetes objects
Kubernetes objects are persistent entities in the Kubernetes system. Kubernetes uses these entities to represent the state of your cluster. Specifically, they can describe:
- What containerized applications are running (and on which nodes)
- The resources available to those applications
- The policies around how those applications behave, such as restart policies, upgrades, and fault-tolerance
A Kubernetes object is a "record of intent"--once you create the object, the Kubernetes system will constantly work to ensure that object exists. By creating an object, you're effectively telling the Kubernetes system what you want your cluster's workload to look like; this is your cluster's desired state.
To work with Kubernetes objects--whether to create, modify, or delete them--you'll need to use the Kubernetes API. When you use the kubectl
command-line interface, for example, the CLI makes the necessary Kubernetes API calls for you. You can also use the Kubernetes API directly in your own programs using one of the Client Libraries.
Object Spec and Status
Almost every Kubernetes object includes two nested object fields that govern
the object's configuration: the object spec
and the object status
.
For objects that have a spec
, you have to set this when you create the object,
providing a description of the characteristics you want the resource to have:
its desired state.
The status
describes the current state of the object, supplied and updated
by the Kubernetes system and its components. The Kubernetes
control plane continually
and actively manages every object's actual state to match the desired state you
supplied.
For example: in Kubernetes, a Deployment is an object that can represent an
application running on your cluster. When you create the Deployment, you
might set the Deployment spec
to specify that you want three replicas of
the application to be running. The Kubernetes system reads the Deployment
spec and starts three instances of your desired application--updating
the status to match your spec. If any of those instances should fail
(a status change), the Kubernetes system responds to the difference
between spec and status by making a correction--in this case, starting
a replacement instance.
For more information on the object spec, status, and metadata, see the Kubernetes API Conventions.
Describing a Kubernetes object
When you create an object in Kubernetes, you must provide the object spec that describes its desired state, as well as some basic information about the object (such as a name). When you use the Kubernetes API to create the object (either directly or via kubectl
), that API request must include that information as JSON in the request body. Most often, you provide the information to kubectl
in a .yaml file. kubectl
converts the information to JSON when making the API request.
Here's an example .yaml
file that shows the required fields and object spec for a Kubernetes Deployment:
apiVersion: apps/v1
kind: Deployment
metadata:
name: nginx-deployment
spec:
selector:
matchLabels:
app: nginx
replicas: 2 # tells deployment to run 2 pods matching the template
template:
metadata:
labels:
app: nginx
spec:
containers:
- name: nginx
image: nginx:1.14.2
ports:
- containerPort: 80
One way to create a Deployment using a .yaml
file like the one above is to use the
kubectl apply
command
in the kubectl
command-line interface, passing the .yaml
file as an argument. Here's an example:
kubectl apply -f https://k8s.io/examples/application/deployment.yaml --record
The output is similar to this:
deployment.apps/nginx-deployment created
Required Fields
In the .yaml
file for the Kubernetes object you want to create, you'll need to set values for the following fields:
apiVersion
- Which version of the Kubernetes API you're using to create this objectkind
- What kind of object you want to createmetadata
- Data that helps uniquely identify the object, including aname
string,UID
, and optionalnamespace
spec
- What state you desire for the object
The precise format of the object spec
is different for every Kubernetes object, and contains nested fields specific to that object. The Kubernetes API Reference can help you find the spec format for all of the objects you can create using Kubernetes.
For example, the reference for Pod details the spec
field
for a Pod in the API, and the reference for Deployment details the spec
field for Deployments.
In those API reference pages you'll see mention of PodSpec and DeploymentSpec. These names are implementation details of the Golang code that Kubernetes uses to implement its API.
What's next
- Learn about the most important basic Kubernetes objects, such as Pod.
- Learn about controllers in Kubernetes.
- Using the Kubernetes API explains some more API concepts.
4.2 - Kubernetes Object Management
The kubectl
command-line tool supports several different ways to create and manage
Kubernetes objects. This document provides an overview of the different
approaches. Read the Kubectl book for
details of managing objects by Kubectl.
Management techniques
Management technique | Operates on | Recommended environment | Supported writers | Learning curve |
---|---|---|---|---|
Imperative commands | Live objects | Development projects | 1+ | Lowest |
Imperative object configuration | Individual files | Production projects | 1 | Moderate |
Declarative object configuration | Directories of files | Production projects | 1+ | Highest |
Imperative commands
When using imperative commands, a user operates directly on live objects
in a cluster. The user provides operations to
the kubectl
command as arguments or flags.
This is the recommended way to get started or to run a one-off task in a cluster. Because this technique operates directly on live objects, it provides no history of previous configurations.
Examples
Run an instance of the nginx container by creating a Deployment object:
kubectl create deployment nginx --image nginx
Trade-offs
Advantages compared to object configuration:
- Commands are expressed as a single action word.
- Commands require only a single step to make changes to the cluster.
Disadvantages compared to object configuration:
- Commands do not integrate with change review processes.
- Commands do not provide an audit trail associated with changes.
- Commands do not provide a source of records except for what is live.
- Commands do not provide a template for creating new objects.
Imperative object configuration
In imperative object configuration, the kubectl command specifies the operation (create, replace, etc.), optional flags and at least one file name. The file specified must contain a full definition of the object in YAML or JSON format.
See the API reference for more details on object definitions.
replace
command replaces the existing
spec with the newly provided one, dropping all changes to the object missing from
the configuration file. This approach should not be used with resource
types whose specs are updated independently of the configuration file.
Services of type LoadBalancer
, for example, have their externalIPs
field updated
independently from the configuration by the cluster.
Examples
Create the objects defined in a configuration file:
kubectl create -f nginx.yaml
Delete the objects defined in two configuration files:
kubectl delete -f nginx.yaml -f redis.yaml
Update the objects defined in a configuration file by overwriting the live configuration:
kubectl replace -f nginx.yaml
Trade-offs
Advantages compared to imperative commands:
- Object configuration can be stored in a source control system such as Git.
- Object configuration can integrate with processes such as reviewing changes before push and audit trails.
- Object configuration provides a template for creating new objects.
Disadvantages compared to imperative commands:
- Object configuration requires basic understanding of the object schema.
- Object configuration requires the additional step of writing a YAML file.
Advantages compared to declarative object configuration:
- Imperative object configuration behavior is simpler and easier to understand.
- As of Kubernetes version 1.5, imperative object configuration is more mature.
Disadvantages compared to declarative object configuration:
- Imperative object configuration works best on files, not directories.
- Updates to live objects must be reflected in configuration files, or they will be lost during the next replacement.
Declarative object configuration
When using declarative object configuration, a user operates on object
configuration files stored locally, however the user does not define the
operations to be taken on the files. Create, update, and delete operations
are automatically detected per-object by kubectl
. This enables working on
directories, where different operations might be needed for different objects.
patch
API operation to write only
observed differences, instead of using the replace
API operation to replace the entire object configuration.
Examples
Process all object configuration files in the configs
directory, and create or
patch the live objects. You can first diff
to see what changes are going to be
made, and then apply:
kubectl diff -f configs/
kubectl apply -f configs/
Recursively process directories:
kubectl diff -R -f configs/
kubectl apply -R -f configs/
Trade-offs
Advantages compared to imperative object configuration:
- Changes made directly to live objects are retained, even if they are not merged back into the configuration files.
- Declarative object configuration has better support for operating on directories and automatically detecting operation types (create, patch, delete) per-object.
Disadvantages compared to imperative object configuration:
- Declarative object configuration is harder to debug and understand results when they are unexpected.
- Partial updates using diffs create complex merge and patch operations.
What's next
- Managing Kubernetes Objects Using Imperative Commands
- Managing Kubernetes Objects Using Object Configuration (Imperative)
- Managing Kubernetes Objects Using Object Configuration (Declarative)
- Managing Kubernetes Objects Using Kustomize (Declarative)
- Kubectl Command Reference
- Kubectl Book
- Kubernetes API Reference
4.3 - Object Names and IDs
Each object in your cluster has a Name that is unique for that type of resource. Every Kubernetes object also has a UID that is unique across your whole cluster.
For example, you can only have one Pod named myapp-1234
within the same namespace, but you can have one Pod and one Deployment that are each named myapp-1234
.
For non-unique user-provided attributes, Kubernetes provides labels and annotations.
Names
A client-provided string that refers to an object in a resource URL, such as /api/v1/pods/some-name
.
Only one object of a given kind can have a given name at a time. However, if you delete the object, you can make a new object with the same name.
Below are four types of commonly used name constraints for resources.
DNS Subdomain Names
Most resource types require a name that can be used as a DNS subdomain name as defined in RFC 1123. This means the name must:
- contain no more than 253 characters
- contain only lowercase alphanumeric characters, '-' or '.'
- start with an alphanumeric character
- end with an alphanumeric character
RFC 1123 Label Names
Some resource types require their names to follow the DNS label standard as defined in RFC 1123. This means the name must:
- contain at most 63 characters
- contain only lowercase alphanumeric characters or '-'
- start with an alphanumeric character
- end with an alphanumeric character
RFC 1035 Label Names
Some resource types require their names to follow the DNS label standard as defined in RFC 1035. This means the name must:
- contain at most 63 characters
- contain only lowercase alphanumeric characters or '-'
- start with an alphabetic character
- end with an alphanumeric character
Path Segment Names
Some resource types require their names to be able to be safely encoded as a path segment. In other words, the name may not be "." or ".." and the name may not contain "/" or "%".
Here's an example manifest for a Pod named nginx-demo
.
apiVersion: v1
kind: Pod
metadata:
name: nginx-demo
spec:
containers:
- name: nginx
image: nginx:1.14.2
ports:
- containerPort: 80
UIDs
A Kubernetes systems-generated string to uniquely identify objects.
Every object created over the whole lifetime of a Kubernetes cluster has a distinct UID. It is intended to distinguish between historical occurrences of similar entities.
Kubernetes UIDs are universally unique identifiers (also known as UUIDs). UUIDs are standardized as ISO/IEC 9834-8 and as ITU-T X.667.
What's next
- Read about labels in Kubernetes.
- See the Identifiers and Names in Kubernetes design document.
4.4 - Namespaces
In Kubernetes, namespaces provides a mechanism for isolating groups of resources within a single cluster. Names of resources need to be unique within a namespace, but not across namespaces. Namespace-based scoping is applicable only for namespaced objects (e.g. Deployments, Services, etc) and not for cluster-wide objects (e.g. StorageClass, Nodes, PersistentVolumes, etc).
When to Use Multiple Namespaces
Namespaces are intended for use in environments with many users spread across multiple teams, or projects. For clusters with a few to tens of users, you should not need to create or think about namespaces at all. Start using namespaces when you need the features they provide.
Namespaces provide a scope for names. Names of resources need to be unique within a namespace, but not across namespaces. Namespaces cannot be nested inside one another and each Kubernetes resource can only be in one namespace.
Namespaces are a way to divide cluster resources between multiple users (via resource quota).
It is not necessary to use multiple namespaces to separate slightly different resources, such as different versions of the same software: use labels to distinguish resources within the same namespace.
Working with Namespaces
Creation and deletion of namespaces are described in the Admin Guide documentation for namespaces.
kube-
, since it is reserved for Kubernetes system namespaces.
Viewing namespaces
You can list the current namespaces in a cluster using:
kubectl get namespace
NAME STATUS AGE
default Active 1d
kube-node-lease Active 1d
kube-public Active 1d
kube-system Active 1d
Kubernetes starts with four initial namespaces:
default
The default namespace for objects with no other namespacekube-system
The namespace for objects created by the Kubernetes systemkube-public
This namespace is created automatically and is readable by all users (including those not authenticated). This namespace is mostly reserved for cluster usage, in case that some resources should be visible and readable publicly throughout the whole cluster. The public aspect of this namespace is only a convention, not a requirement.kube-node-lease
This namespace holds Lease objects associated with each node. Node leases allow the kubelet to send heartbeats so that the control plane can detect node failure.
Setting the namespace for a request
To set the namespace for a current request, use the --namespace
flag.
For example:
kubectl run nginx --image=nginx --namespace=<insert-namespace-name-here>
kubectl get pods --namespace=<insert-namespace-name-here>
Setting the namespace preference
You can permanently save the namespace for all subsequent kubectl commands in that context.
kubectl config set-context --current --namespace=<insert-namespace-name-here>
# Validate it
kubectl config view --minify | grep namespace:
Namespaces and DNS
When you create a Service,
it creates a corresponding DNS entry.
This entry is of the form <service-name>.<namespace-name>.svc.cluster.local
, which means
that if a container only uses <service-name>
, it will resolve to the service which
is local to a namespace. This is useful for using the same configuration across
multiple namespaces such as Development, Staging and Production. If you want to reach
across namespaces, you need to use the fully qualified domain name (FQDN).
Not All Objects are in a Namespace
Most Kubernetes resources (e.g. pods, services, replication controllers, and others) are in some namespaces. However namespace resources are not themselves in a namespace. And low-level resources, such as nodes and persistentVolumes, are not in any namespace.
To see which Kubernetes resources are and aren't in a namespace:
# In a namespace
kubectl api-resources --namespaced=true
# Not in a namespace
kubectl api-resources --namespaced=false
Automatic labelling
Kubernetes 1.21 [beta]
The Kubernetes control plane sets an immutable label
kubernetes.io/metadata.name
on all namespaces, provided that the NamespaceDefaultLabelName
feature gate is enabled.
The value of the label is the namespace name.
What's next
- Learn more about creating a new namespace.
- Learn more about deleting a namespace.
4.5 - Labels and Selectors
Labels are key/value pairs that are attached to objects, such as pods. Labels are intended to be used to specify identifying attributes of objects that are meaningful and relevant to users, but do not directly imply semantics to the core system. Labels can be used to organize and to select subsets of objects. Labels can be attached to objects at creation time and subsequently added and modified at any time. Each object can have a set of key/value labels defined. Each Key must be unique for a given object.
"metadata": {
"labels": {
"key1" : "value1",
"key2" : "value2"
}
}
Labels allow for efficient queries and watches and are ideal for use in UIs and CLIs. Non-identifying information should be recorded using annotations.
Motivation
Labels enable users to map their own organizational structures onto system objects in a loosely coupled fashion, without requiring clients to store these mappings.
Service deployments and batch processing pipelines are often multi-dimensional entities (e.g., multiple partitions or deployments, multiple release tracks, multiple tiers, multiple micro-services per tier). Management often requires cross-cutting operations, which breaks encapsulation of strictly hierarchical representations, especially rigid hierarchies determined by the infrastructure rather than by users.
Example labels:
"release" : "stable"
,"release" : "canary"
"environment" : "dev"
,"environment" : "qa"
,"environment" : "production"
"tier" : "frontend"
,"tier" : "backend"
,"tier" : "cache"
"partition" : "customerA"
,"partition" : "customerB"
"track" : "daily"
,"track" : "weekly"
These are examples of commonly used labels; you are free to develop your own conventions. Keep in mind that label Key must be unique for a given object.
Syntax and character set
Labels are key/value pairs. Valid label keys have two segments: an optional prefix and name, separated by a slash (/
). The name segment is required and must be 63 characters or less, beginning and ending with an alphanumeric character ([a-z0-9A-Z]
) with dashes (-
), underscores (_
), dots (.
), and alphanumerics between. The prefix is optional. If specified, the prefix must be a DNS subdomain: a series of DNS labels separated by dots (.
), not longer than 253 characters in total, followed by a slash (/
).
If the prefix is omitted, the label Key is presumed to be private to the user. Automated system components (e.g. kube-scheduler
, kube-controller-manager
, kube-apiserver
, kubectl
, or other third-party automation) which add labels to end-user objects must specify a prefix.
The kubernetes.io/
and k8s.io/
prefixes are reserved for Kubernetes core components.
Valid label value:
- must be 63 characters or less (can be empty),
- unless empty, must begin and end with an alphanumeric character (
[a-z0-9A-Z]
), - could contain dashes (
-
), underscores (_
), dots (.
), and alphanumerics between.
For example, here's the configuration file for a Pod that has two labels environment: production
and app: nginx
:
apiVersion: v1
kind: Pod
metadata:
name: label-demo
labels:
environment: production
app: nginx
spec:
containers:
- name: nginx
image: nginx:1.14.2
ports:
- containerPort: 80
Label selectors
Unlike names and UIDs, labels do not provide uniqueness. In general, we expect many objects to carry the same label(s).
Via a label selector, the client/user can identify a set of objects. The label selector is the core grouping primitive in Kubernetes.
The API currently supports two types of selectors: equality-based and set-based.
A label selector can be made of multiple requirements which are comma-separated. In the case of multiple requirements, all must be satisfied so the comma separator acts as a logical AND (&&
) operator.
The semantics of empty or non-specified selectors are dependent on the context, and API types that use selectors should document the validity and meaning of them.
||
) operator. Ensure your filter statements are structured accordingly.
Equality-based requirement
Equality- or inequality-based requirements allow filtering by label keys and values. Matching objects must satisfy all of the specified label constraints, though they may have additional labels as well.
Three kinds of operators are admitted =
,==
,!=
. The first two represent equality (and are synonyms), while the latter represents inequality. For example:
environment = production
tier != frontend
The former selects all resources with key equal to environment
and value equal to production
.
The latter selects all resources with key equal to tier
and value distinct from frontend
, and all resources with no labels with the tier
key.
One could filter for resources in production
excluding frontend
using the comma operator: environment=production,tier!=frontend
One usage scenario for equality-based label requirement is for Pods to specify
node selection criteria. For example, the sample Pod below selects nodes with
the label "accelerator=nvidia-tesla-p100
".
apiVersion: v1
kind: Pod
metadata:
name: cuda-test
spec:
containers:
- name: cuda-test
image: "k8s.gcr.io/cuda-vector-add:v0.1"
resources:
limits:
nvidia.com/gpu: 1
nodeSelector:
accelerator: nvidia-tesla-p100
Set-based requirement
Set-based label requirements allow filtering keys according to a set of values. Three kinds of operators are supported: in
,notin
and exists
(only the key identifier). For example:
environment in (production, qa)
tier notin (frontend, backend)
partition
!partition
- The first example selects all resources with key equal to
environment
and value equal toproduction
orqa
. - The second example selects all resources with key equal to
tier
and values other thanfrontend
andbackend
, and all resources with no labels with thetier
key. - The third example selects all resources including a label with key
partition
; no values are checked. - The fourth example selects all resources without a label with key
partition
; no values are checked.
Similarly the comma separator acts as an AND operator. So filtering resources with a partition
key (no matter the value) and with environment
different than qa
can be achieved using partition,environment notin (qa)
.
The set-based label selector is a general form of equality since environment=production
is equivalent to environment in (production)
; similarly for !=
and notin
.
Set-based requirements can be mixed with equality-based requirements. For example: partition in (customerA, customerB),environment!=qa
.
API
LIST and WATCH filtering
LIST and WATCH operations may specify label selectors to filter the sets of objects returned using a query parameter. Both requirements are permitted (presented here as they would appear in a URL query string):
- equality-based requirements:
?labelSelector=environment%3Dproduction,tier%3Dfrontend
- set-based requirements:
?labelSelector=environment+in+%28production%2Cqa%29%2Ctier+in+%28frontend%29
Both label selector styles can be used to list or watch resources via a REST client. For example, targeting apiserver
with kubectl
and using equality-based one may write:
kubectl get pods -l environment=production,tier=frontend
or using set-based requirements:
kubectl get pods -l 'environment in (production),tier in (frontend)'
As already mentioned set-based requirements are more expressive. For instance, they can implement the OR operator on values:
kubectl get pods -l 'environment in (production, qa)'
or restricting negative matching via exists operator:
kubectl get pods -l 'environment,environment notin (frontend)'
Set references in API objects
Some Kubernetes objects, such as services
and replicationcontrollers
,
also use label selectors to specify sets of other resources, such as
pods.
Service and ReplicationController
The set of pods that a service
targets is defined with a label selector. Similarly, the population of pods that a replicationcontroller
should manage is also defined with a label selector.
Labels selectors for both objects are defined in json
or yaml
files using maps, and only equality-based requirement selectors are supported:
"selector": {
"component" : "redis",
}
or
selector:
component: redis
this selector (respectively in json
or yaml
format) is equivalent to component=redis
or component in (redis)
.
Resources that support set-based requirements
Newer resources, such as Job
,
Deployment
,
ReplicaSet
, and
DaemonSet
,
support set-based requirements as well.
selector:
matchLabels:
component: redis
matchExpressions:
- {key: tier, operator: In, values: [cache]}
- {key: environment, operator: NotIn, values: [dev]}
matchLabels
is a map of {key,value}
pairs. A single {key,value}
in the matchLabels
map is equivalent to an element of matchExpressions
, whose key
field is "key", the operator
is "In", and the values
array contains only "value". matchExpressions
is a list of pod selector requirements. Valid operators include In, NotIn, Exists, and DoesNotExist. The values set must be non-empty in the case of In and NotIn. All of the requirements, from both matchLabels
and matchExpressions
are ANDed together -- they must all be satisfied in order to match.
Selecting sets of nodes
One use case for selecting over labels is to constrain the set of nodes onto which a pod can schedule. See the documentation on node selection for more information.
4.6 - Annotations
You can use Kubernetes annotations to attach arbitrary non-identifying metadata to objects. Clients such as tools and libraries can retrieve this metadata.
Attaching metadata to objects
You can use either labels or annotations to attach metadata to Kubernetes objects. Labels can be used to select objects and to find collections of objects that satisfy certain conditions. In contrast, annotations are not used to identify and select objects. The metadata in an annotation can be small or large, structured or unstructured, and can include characters not permitted by labels.
Annotations, like labels, are key/value maps:
"metadata": {
"annotations": {
"key1" : "value1",
"key2" : "value2"
}
}
Here are some examples of information that could be recorded in annotations:
-
Fields managed by a declarative configuration layer. Attaching these fields as annotations distinguishes them from default values set by clients or servers, and from auto-generated fields and fields set by auto-sizing or auto-scaling systems.
-
Build, release, or image information like timestamps, release IDs, git branch, PR numbers, image hashes, and registry address.
-
Pointers to logging, monitoring, analytics, or audit repositories.
-
Client library or tool information that can be used for debugging purposes: for example, name, version, and build information.
-
User or tool/system provenance information, such as URLs of related objects from other ecosystem components.
-
Lightweight rollout tool metadata: for example, config or checkpoints.
-
Phone or pager numbers of persons responsible, or directory entries that specify where that information can be found, such as a team web site.
-
Directives from the end-user to the implementations to modify behavior or engage non-standard features.
Instead of using annotations, you could store this type of information in an external database or directory, but that would make it much harder to produce shared client libraries and tools for deployment, management, introspection, and the like.
Syntax and character set
Annotations are key/value pairs. Valid annotation keys have two segments: an optional prefix and name, separated by a slash (/
). The name segment is required and must be 63 characters or less, beginning and ending with an alphanumeric character ([a-z0-9A-Z]
) with dashes (-
), underscores (_
), dots (.
), and alphanumerics between. The prefix is optional. If specified, the prefix must be a DNS subdomain: a series of DNS labels separated by dots (.
), not longer than 253 characters in total, followed by a slash (/
).
If the prefix is omitted, the annotation Key is presumed to be private to the user. Automated system components (e.g. kube-scheduler
, kube-controller-manager
, kube-apiserver
, kubectl
, or other third-party automation) which add annotations to end-user objects must specify a prefix.
The kubernetes.io/
and k8s.io/
prefixes are reserved for Kubernetes core components.
For example, here's the configuration file for a Pod that has the annotation imageregistry: https://hub.docker.com/
:
apiVersion: v1
kind: Pod
metadata:
name: annotations-demo
annotations:
imageregistry: "https://hub.docker.com/"
spec:
containers:
- name: nginx
image: nginx:1.14.2
ports:
- containerPort: 80
What's next
Learn more about Labels and Selectors.
4.7 - Field Selectors
Field selectors let you select Kubernetes resources based on the value of one or more resource fields. Here are some examples of field selector queries:
metadata.name=my-service
metadata.namespace!=default
status.phase=Pending
This kubectl
command selects all Pods for which the value of the status.phase
field is Running
:
kubectl get pods --field-selector status.phase=Running
kubectl
queries kubectl get pods
and kubectl get pods --field-selector ""
equivalent.
Supported fields
Supported field selectors vary by Kubernetes resource type. All resource types support the metadata.name
and metadata.namespace
fields. Using unsupported field selectors produces an error. For example:
kubectl get ingress --field-selector foo.bar=baz
Error from server (BadRequest): Unable to find "ingresses" that match label selector "", field selector "foo.bar=baz": "foo.bar" is not a known field selector: only "metadata.name", "metadata.namespace"
Supported operators
You can use the =
, ==
, and !=
operators with field selectors (=
and ==
mean the same thing). This kubectl
command, for example, selects all Kubernetes Services that aren't in the default
namespace:
kubectl get services --all-namespaces --field-selector metadata.namespace!=default
Chained selectors
As with label and other selectors, field selectors can be chained together as a comma-separated list. This kubectl
command selects all Pods for which the status.phase
does not equal Running
and the spec.restartPolicy
field equals Always
:
kubectl get pods --field-selector=status.phase!=Running,spec.restartPolicy=Always
Multiple resource types
You can use field selectors across multiple resource types. This kubectl
command selects all Statefulsets and Services that are not in the default
namespace:
kubectl get statefulsets,services --all-namespaces --field-selector metadata.namespace!=default
4.8 - Finalizers
Finalizers are namespaced keys that tell Kubernetes to wait until specific conditions are met before it fully deletes resources marked for deletion. Finalizers alert controllers to clean up resources the deleted object owned.
When you tell Kubernetes to delete an object that has finalizers specified for
it, the Kubernetes API marks the object for deletion, putting it into a
read-only state. The target object remains in a terminating state while the
control plane, or other components, take the actions defined by the finalizers.
After these actions are complete, the controller removes the relevant finalizers
from the target object. When the metadata.finalizers
field is empty,
Kubernetes considers the deletion complete.
You can use finalizers to control garbage collection of resources. For example, you can define a finalizer to clean up related resources or infrastructure before the controller deletes the target resource.
You can use finalizers to control garbage collection of resources by alerting controllers to perform specific cleanup tasks before deleting the target resource.
Finalizers don't usually specify the code to execute. Instead, they are typically lists of keys on a specific resource similar to annotations. Kubernetes specifies some finalizers automatically, but you can also specify your own.
How finalizers work
When you create a resource using a manifest file, you can specify finalizers in
the metadata.finalizers
field. When you attempt to delete the resource, the
controller that manages it notices the values in the finalizers
field and does
the following:
- Modifies the object to add a
metadata.deletionTimestamp
field with the time you started the deletion. - Marks the object as read-only until its
metadata.finalizers
field is empty.
The controller then attempts to satisfy the requirements of the finalizers
specified for that resource. Each time a finalizer condition is satisfied, the
controller removes that key from the resource's finalizers
field. When the
field is empty, garbage collection continues. You can also use finalizers to
prevent deletion of unmanaged resources.
A common example of a finalizer is kubernetes.io/pv-protection
, which prevents
accidental deletion of PersistentVolume
objects. When a PersistentVolume
object is in use by a Pod, Kubernetes adds the pv-protection
finalizer. If you
try to delete the PersistentVolume
, it enters a Terminating
status, but the
controller can't delete it because the finalizer exists. When the Pod stops
using the PersistentVolume
, Kubernetes clears the pv-protection
finalizer,
and the controller deletes the volume.
Owner references, labels, and finalizers
Like labels, owner references describe the relationships between objects in Kubernetes, but are used for a different purpose. When a controller manages objects like Pods, it uses labels to track changes to groups of related objects. For example, when a Job creates one or more Pods, the Job controller applies labels to those pods and tracks changes to any Pods in the cluster with the same label.
The Job controller also adds owner references to those Pods, pointing at the Job that created the Pods. If you delete the Job while these Pods are running, Kubernetes uses the owner references (not labels) to determine which Pods in the cluster need cleanup.
Kubernetes also processes finalizers when it identifies owner references on a resource targeted for deletion.
In some situations, finalizers can block the deletion of dependent objects, which can cause the targeted owner object to remain in a read-only state for longer than expected without being fully deleted. In these situations, you should check finalizers and owner references on the target owner and dependent objects to troubleshoot the cause.
What's next
- Read Using Finalizers to Control Deletion on the Kubernetes blog.
4.9 - Owners and Dependents
In Kubernetes, some objects are owners of other objects. For example, a ReplicaSet is the owner of a set of Pods. These owned objects are dependents of their owner.
Ownership is different from the labels and selectors
mechanism that some resources also use. For example, consider a Service that
creates EndpointSlice
objects. The Service uses labels to allow the control plane to
determine which EndpointSlice
objects are used for that Service. In addition
to the labels, each EndpointSlice
that is managed on behalf of a Service has
an owner reference. Owner references help different parts of Kubernetes avoid
interfering with objects they don’t control.
Owner references in object specifications
Dependent objects have a metadata.ownerReferences
field that references their
owner object. A valid owner reference consists of the object name and a UID
within the same namespace as the dependent object. Kubernetes sets the value of
this field automatically for objects that are dependents of other objects like
ReplicaSets, DaemonSets, Deployments, Jobs and CronJobs, and ReplicationControllers.
You can also configure these relationships manually by changing the value of
this field. However, you usually don't need to and can allow Kubernetes to
automatically manage the relationships.
Dependent objects also have an ownerReferences.blockOwnerDeletion
field that
takes a boolean value and controls whether specific dependents can block garbage
collection from deleting their owner object. Kubernetes automatically sets this
field to true
if a controller
(for example, the Deployment controller) sets the value of the
metadata.ownerReferences
field. You can also set the value of the
blockOwnerDeletion
field manually to control which dependents block garbage
collection.
A Kubernetes admission controller controls user access to change this field for dependent resources, based on the delete permissions of the owner. This control prevents unauthorized users from delaying owner object deletion.
Cross-namespace owner references are disallowed by design. Namespaced dependents can specify cluster-scoped or namespaced owners. A namespaced owner must exist in the same namespace as the dependent. If it does not, the owner reference is treated as absent, and the dependent is subject to deletion once all owners are verified absent.
Cluster-scoped dependents can only specify cluster-scoped owners. In v1.20+, if a cluster-scoped dependent specifies a namespaced kind as an owner, it is treated as having an unresolvable owner reference, and is not able to be garbage collected.
In v1.20+, if the garbage collector detects an invalid cross-namespace ownerReference
,
or a cluster-scoped dependent with an ownerReference
referencing a namespaced kind, a warning Event
with a reason of OwnerRefInvalidNamespace
and an involvedObject
of the invalid dependent is reported.
You can check for that kind of Event by running
kubectl get events -A --field-selector=reason=OwnerRefInvalidNamespace
.
Ownership and finalizers
When you tell Kubernetes to delete a resource, the API server allows the
managing controller to process any finalizer rules
for the resource. Finalizers
prevent accidental deletion of resources your cluster may still need to function
correctly. For example, if you try to delete a PersistentVolume
that is still
in use by a Pod, the deletion does not happen immediately because the
PersistentVolume
has the kubernetes.io/pv-protection
finalizer on it.
Instead, the volume remains in the Terminating
status until Kubernetes clears
the finalizer, which only happens after the PersistentVolume
is no longer
bound to a Pod.
Kubernetes also adds finalizers to an owner resource when you use either
foreground or orphan cascading deletion.
In foreground deletion, it adds the foreground
finalizer so that the
controller must delete dependent resources that also have
ownerReferences.blockOwnerDeletion=true
before it deletes the owner. If you
specify an orphan deletion policy, Kubernetes adds the orphan
finalizer so
that the controller ignores dependent resources after it deletes the owner
object.
What's next
- Learn more about Kubernetes finalizers.
- Learn about garbage collection.
- Read the API reference for object metadata.
4.10 - Recommended Labels
You can visualize and manage Kubernetes objects with more tools than kubectl and the dashboard. A common set of labels allows tools to work interoperably, describing objects in a common manner that all tools can understand.
In addition to supporting tooling, the recommended labels describe applications in a way that can be queried.
The metadata is organized around the concept of an application. Kubernetes is not a platform as a service (PaaS) and doesn't have or enforce a formal notion of an application. Instead, applications are informal and described with metadata. The definition of what an application contains is loose.
Shared labels and annotations share a common prefix: app.kubernetes.io
. Labels
without a prefix are private to users. The shared prefix ensures that shared labels
do not interfere with custom user labels.
Labels
In order to take full advantage of using these labels, they should be applied on every resource object.
Key | Description | Example | Type |
---|---|---|---|
app.kubernetes.io/name |
The name of the application | mysql |
string |
app.kubernetes.io/instance |
A unique name identifying the instance of an application | mysql-abcxzy |
string |
app.kubernetes.io/version |
The current version of the application (e.g., a semantic version, revision hash, etc.) | 5.7.21 |
string |
app.kubernetes.io/component |
The component within the architecture | database |
string |
app.kubernetes.io/part-of |
The name of a higher level application this one is part of | wordpress |
string |
app.kubernetes.io/managed-by |
The tool being used to manage the operation of an application | helm |
string |
app.kubernetes.io/created-by |
The controller/user who created this resource | controller-manager |
string |
To illustrate these labels in action, consider the following StatefulSet object:
apiVersion: apps/v1
kind: StatefulSet
metadata:
labels:
app.kubernetes.io/name: mysql
app.kubernetes.io/instance: mysql-abcxzy
app.kubernetes.io/version: "5.7.21"
app.kubernetes.io/component: database
app.kubernetes.io/part-of: wordpress
app.kubernetes.io/managed-by: helm
app.kubernetes.io/created-by: controller-manager
Applications And Instances Of Applications
An application can be installed one or more times into a Kubernetes cluster and, in some cases, the same namespace. For example, WordPress can be installed more than once where different websites are different installations of WordPress.
The name of an application and the instance name are recorded separately. For
example, WordPress has a app.kubernetes.io/name
of wordpress
while it has
an instance name, represented as app.kubernetes.io/instance
with a value of
wordpress-abcxzy
. This enables the application and instance of the application
to be identifiable. Every instance of an application must have a unique name.
Examples
To illustrate different ways to use these labels the following examples have varying complexity.
A Simple Stateless Service
Consider the case for a simple stateless service deployed using Deployment
and Service
objects. The following two snippets represent how the labels could be used in their simplest form.
The Deployment
is used to oversee the pods running the application itself.
apiVersion: apps/v1
kind: Deployment
metadata:
labels:
app.kubernetes.io/name: myservice
app.kubernetes.io/instance: myservice-abcxzy
...
The Service
is used to expose the application.
apiVersion: v1
kind: Service
metadata:
labels:
app.kubernetes.io/name: myservice
app.kubernetes.io/instance: myservice-abcxzy
...
Web Application With A Database
Consider a slightly more complicated application: a web application (WordPress) using a database (MySQL), installed using Helm. The following snippets illustrate the start of objects used to deploy this application.
The start to the following Deployment
is used for WordPress:
apiVersion: apps/v1
kind: Deployment
metadata:
labels:
app.kubernetes.io/name: wordpress
app.kubernetes.io/instance: wordpress-abcxzy
app.kubernetes.io/version: "4.9.4"
app.kubernetes.io/managed-by: helm
app.kubernetes.io/component: server
app.kubernetes.io/part-of: wordpress
...
The Service
is used to expose WordPress:
apiVersion: v1
kind: Service
metadata:
labels:
app.kubernetes.io/name: wordpress
app.kubernetes.io/instance: wordpress-abcxzy
app.kubernetes.io/version: "4.9.4"
app.kubernetes.io/managed-by: helm
app.kubernetes.io/component: server
app.kubernetes.io/part-of: wordpress
...
MySQL is exposed as a StatefulSet
with metadata for both it and the larger application it belongs to:
apiVersion: apps/v1
kind: StatefulSet
metadata:
labels:
app.kubernetes.io/name: mysql
app.kubernetes.io/instance: mysql-abcxzy
app.kubernetes.io/version: "5.7.21"
app.kubernetes.io/managed-by: helm
app.kubernetes.io/component: database
app.kubernetes.io/part-of: wordpress
...
The Service
is used to expose MySQL as part of WordPress:
apiVersion: v1
kind: Service
metadata:
labels:
app.kubernetes.io/name: mysql
app.kubernetes.io/instance: mysql-abcxzy
app.kubernetes.io/version: "5.7.21"
app.kubernetes.io/managed-by: helm
app.kubernetes.io/component: database
app.kubernetes.io/part-of: wordpress
...
With the MySQL StatefulSet
and Service
you'll notice information about both MySQL and WordPress, the broader application, are included.