It's best to take a layered approach to protecting your clusters and workloads. You can apply the principle of least privilege to the level of access provided to your users and your application. In each layer there may be different tradeoffs that must be made that allow the right level of flexibility and security for your organization to securely deploy and maintain their workloads. For example, some security settings may be too constraining for certain types of applications or use cases to function without significant refactoring.
This document provides an overview of each layer of your infrastructure, and shows how you can configure its security features to best suit your needs.
Authentication and authorization
Kubernetes supports two types of authentication:
- User accounts are accounts that are known to Kubernetes, but are not
managed by Kubernetes - for example, you cannot create or delete them using
- Service accounts are accounts that are created and managed by Kubernetes, but can only be used by Kubernetes-created entities, such as pods.
In a GKE cluster, Kubernetes user accounts are managed by Google Cloud, and may be one of the following two types:
Once authenticated, you need to authorize these identities to create, read, update or delete Kubernetes resources.
Despite the similar names, Kubernetes service accounts and Google Cloud service accounts are different entities. Kubernetes service accounts are part of the cluster in which they are defined and are typically used within that cluster. By contrast, Google Cloud service accounts are part of a Google Cloud project, and can easily be granted permissions both within clusters and to Google Cloud project clusters themselves, as well as to any Google Cloud resource using Identity and Access Management (IAM). This makes Google Cloud service accounts more powerful than Kubernetes service accounts; in order to follow the security principle of least privilege, you should consider using Google Cloud service accounts only when their capabilities are required.
To configure more granular access to Kubernetes resources at the cluster level or within Kubernetes namespaces, you use Role-Based Access Control (RBAC). RBAC allows you to create detailed policies that define which operations and resources you allow users and service accounts to access. With RBAC, you can control access for Google Accounts, Google Cloud service accounts, and Kubernetes service accounts. To further simplify and streamline your authentication and authorization strategy for GKE, you should ensure that the legacy Attribute Based Access Control is disabled so that Kubernetes RBAC and IAM are the sources of truth.
For more information:
- Read the GKE RBAC documentation.
- Follow best practices in the IAM section of Preparing GKE for Production.
- Learn about supported authentication methods when connecting to the Kubernetes API server in Authenticating to the Kubernetes API server.
Control plane security
In GKE, the Kubernetes master components are managed and maintained by Google. The master components host the software that runs the Kubernetes control plane, including the API server, scheduler, controller manager and the etcd database where your Kubernetes configuration is persisted.
By default, the master components use a public IP address. You can protect the Kubernetes API server by using master authorized networks, and private clusters, which allow you to assign a private IP address to the master and disable access on the public IP address.
You can handle cluster authentication in Google Kubernetes Engine by using IAM as the identity provider. For information on authentication, see Authenticating to the Kubernetes API server.
Another way to help secure your Kubernetes master is to ensure that you are doing credential rotation on a regular basis. When credential rotation is initiated, the SSL certificates and cluster certificate authority are rotated. This process is automated by GKE and also ensures that your master IP address rotates.
For more information:
- Read more about control plane security.
- Read the Role-Based Access Control documentation.
- Follow the Credential Rotation guide.
GKE deploys your workloads on Compute Engine instances running in your Google Cloud project. These instances are attached to your GKE cluster as nodes. The following sections show you how leverage the node-level security features available to you in Google Cloud.
By default, GKE nodes use Google's Container-Optimized OS as the operating system on which to run Kubernetes and its components. Container-Optimized OS implements several advanced features for enhancing the security of GKE clusters, including:
- Locked-down firewall
- Read-only filesystem where possible
- Limited user accounts and disabled root login
A best practice is to patch your OS on a regular basis. From time to time, security issues in the container runtime, Kubernetes itself, or the node operating system might require you to upgrade your nodes more urgently. When you upgrade your node, the node's software is upgraded to their latest versions.
Protecting nodes from untrusted workloads
For clusters that run unknown or untrusted workloads, a good practice is to protect the operating system on the node from the untrusted workload running in a Pod.
For example, multi-tenant clusters such as software-as-a-service (SaaS) providers often execute unknown code submitted by their users. Security research is another application where workloads may need stronger isolation than nodes provide by default.
Securing instance metadata
GKE nodes run as Compute Engine instances, and as such they
have access to instance metadata by
default. Instance metadata is used to provide nodes with credentials and
configurations used in bootstrapping and connecting to the Kubernetes master
nodes. However, a Pod running on a node does not necessarily need this
information, which contains sensitive data, like the node's service account key.
You can lock down sensitive instance metadata paths by disabling legacy APIs and
by using metadata concealment.
Metadata concealment ensures that Pods running in your cluster are not able to
access sensitive data by filtering requests to fields such as the
Most workloads running in GKE need to communicate with other services that could be running either inside or outside of the cluster. You can use several different methods to control what traffic is allowed to flow through your clusters and their Pods.
Limiting Pod-to-Pod communication
By default, all Pods in a cluster can be reached over the network via their Pod IP address. Similarly, by default, egress traffic allows outbound connections to any address accessible in the VPC into which the cluster was deployed.
Cluster administrators and users can lock down the ingress and egress connections created to and from the Pods in a namespace by using network policies. By default, when there are no network policies defined, all ingress and egress traffic is allowed to flow into and out of all Pods. Network policies allow you to use tags to define the traffic flowing through your Pods.
Once a network policy is applied in a namespace, all traffic is dropped to and from Pods that don't match the configured labels. As part of your creation of clusters and/or namespaces, you can apply the default deny traffic to both ingress and egress of every Pod to ensure that all new workloads added to the cluster must explicitly authorize the traffic they require.
For more information:
- Read more about network policies
- Follow the network policy tutorial
- Read more about default policies
Filtering load balanced traffic
To load balance your Kubernetes Pods with a
network load balancer,
you need to create a Service of type
LoadBalancer that matches your Pod's
labels. With the Service created, you will have an external-facing IP that maps
to ports on your Kubernetes Pods. Filtering authorized traffic is achieved at
the node level by
filters based on IP address.
To configure this filtering, you can use the
loadBalancerSourceRanges configuration of the Service object. With this
configuration parameter, you can provide a list of CIDR ranges that you would
like to whitelist for access to the Service. If you do not configure
loadBalancerSourceRanges, all addresses are allowed to access the Service via
its external IP.
For cases in which access to the Service is not required, consider using an
internal load balancer.
The internal load balancer also respects the
loadBalancerSourceRanges when it
is necessary to filter out traffic from inside of the VPC.
For more information, follow the internal load balancing tutorial.
Securing your workloads
Kubernetes allows users to quickly provision, scale, and update container-based workloads. This section describes tactics that administrators and users can employ to limit the effect a running container can have on other containers in the same cluster, the nodes where containers can run, and the Google Cloud services enabled in users' projects.
Limiting Pod container process privileges
Limiting the privileges of containerized processes is important for the overall security of your cluster. GKE allows you to set security-related options via the Security Context on both Pods and containers. These settings allow you to change security settings of your processes like:
- User and group to run as
- Available Linux capabilities
- Ability to escalate privileges
In order to change these settings at the cluster level rather than at the Pod or container, you need to implement a PodSecurityPolicy. Cluster administrators can use PodSecurityPolicies to ensure that all Pods in a cluster adhere to a minimum baseline policy that you define.
The GKE node operating systems, both Container-Optimized OS and Ubuntu, apply the default Docker AppArmor security policies to all containers started by Kubernetes. You can view the profile's template on GitHub. Among other things, the profile denies the following abilities to containers:
- Write files directly in
- Write to files that are not in a process ID directory (
- Write to files in
- Mount filesystems
For more information:
- Read the Pod Security Context documentation.
- Read the Pod Security Policy documentation.
- Learn more about existing protections in the Container-Optimized OS AppArmor documentation.
Giving Pods access to Google Cloud resources
Your containers and Pods might need access to other resources in Google Cloud. There are three ways to do this.
Workload Identity (recommended)
The simplest and most secure way to authorize Pods to access Google Cloud resources is with Workload Identity. Workload identity allows a Kubernetes service account to run as a Google Cloud service account. Pods that run as the Kubernetes service account have the permissions of the Google Cloud service account.
Workload Identity can be used with GKE Sandbox.
Node Service Account
Your Pods can also authenticate to Google Cloud using the Kubernetes clusters' service account credentials from metadata. However, these credentials can be reached by any Pod running in the cluster if Workload Identity is not enabled. Create and configure a custom service account that has the minimum IAM roles that are required by all the Pods running in the cluster.
This approach is not compatible with GKE Sandbox because GKE Sandbox blocks access to the metadata server.
Service Account JSON key
A third way to grant credentials for Google Cloud resources to applications is to manually use the service account's key. This approach is strongly discouraged because of the difficulty of securely managing account keys.
You should use application-specific Google Cloud service accounts to provide credentials so that applications have the minimal necessary permissions. Each service account is assigned only the IAM roles that are needed for its paired application to operate successfully. Keeping the service account application-specific makes it easier to revoke its access in the case of a compromise without affecting other applications. Once you have assigned your service account the correct IAM roles, you can create a JSON service account key, and then mount that into your Pod using a Kubernetes Secret.
Using Binary Authorization
Binary Authorization is a service on Google Cloud that provides software supply-chain security for applications that run in the cloud. Binary Authorization works with images that you deploy to GKE from Container Registry or another container image registry. With Binary Authorization, you can ensure that internal processes that safeguard the quality and integrity of your software have successfully completed before an application is deployed to your production environment.
Audit logging provides a way for administrators to retain, query, process, and alert on events that occur in your GKE environments. Administrators can use the logged information to do forensic analysis, real-time alerting, or for cataloging how a fleet of GKE clusters are being used and by whom.
By default, GKE logs Admin Activity logs. You can optionally also log Data Access events, depending on the types of operations you are interested in inspecting.
For more information: