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Monitoring overview - Monitoring | Observability | OpenShift Dedicated
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About OpenShift Dedicated monitoring

In OpenShift Dedicated, you can monitor your own projects in isolation from Red Hat Site Reliability Engineering (SRE) platform metrics. You can monitor your own projects without the need for an additional monitoring solution.

Understanding the monitoring stack

The OpenShift Dedicated monitoring stack is based on the Prometheus open source project and its wider ecosystem. The monitoring stack includes the following:

  • Default platform monitoring components. A set of platform monitoring components are installed in the openshift-monitoring project by default during a OpenShift Dedicated installation. Red Hat Site Reliability Engineers (SRE) use these components to monitor core cluster components including Kubernetes services. This includes critical metrics, such as CPU and memory, collected from all of the workloads in every namespace.

    These components are illustrated in the Installed by default section in the following diagram.

  • Components for monitoring user-defined projects. A set of user-defined project monitoring components are installed in the openshift-user-workload-monitoring project by default during a OpenShift Dedicated installation. You can use these components to monitor services and pods in user-defined projects. These components are illustrated in the User section in the following diagram.

OpenShift Dedicated monitoring architecture

Default monitoring targets

The following are examples of targets monitored by Red Hat Site Reliability Engineers (SRE) in your OpenShift Dedicated cluster:

  • CoreDNS

  • etcd

  • HAProxy

  • Image registry

  • Kubelets

  • Kubernetes API server

  • Kubernetes controller manager

  • Kubernetes scheduler

  • OpenShift API server

  • OpenShift Controller Manager

  • Operator Lifecycle Manager (OLM)

The exact list of targets can vary depending on your cluster capabilities and installed components.

Components for monitoring user-defined projects

OpenShift Dedicated includes an optional enhancement to the monitoring stack that enables you to monitor services and pods in user-defined projects. This feature includes the following components:

Table 1. Components for monitoring user-defined projects
Component Description

Prometheus Operator

The Prometheus Operator (PO) in the openshift-user-workload-monitoring project creates, configures, and manages Prometheus and Thanos Ruler instances in the same project.

Prometheus

Prometheus is the monitoring system through which monitoring is provided for user-defined projects. Prometheus sends alerts to Alertmanager for processing.

Thanos Ruler

The Thanos Ruler is a rule evaluation engine for Prometheus that is deployed as a separate process. In OpenShift Dedicated , Thanos Ruler provides rule and alerting evaluation for the monitoring of user-defined projects.

Alertmanager

The Alertmanager service handles alerts received from Prometheus and Thanos Ruler. Alertmanager is also responsible for sending user-defined alerts to external notification systems. Deploying this service is optional.

All of these components are monitored by the stack and are automatically updated when OpenShift Dedicated is updated.

Monitoring targets for user-defined projects

Monitoring is enabled by default for OpenShift Dedicated user-defined projects. You can monitor:

  • Metrics provided through service endpoints in user-defined projects.

  • Pods running in user-defined projects.

Understanding the monitoring stack in high-availability clusters

By default, in multi-node clusters, the following components run in high-availability (HA) mode to prevent data loss and service interruption:

  • Prometheus

  • Alertmanager

  • Thanos Ruler

The component is replicated across two pods, each running on a separate node. This means that the monitoring stack can tolerate the loss of one pod.

Prometheus in HA mode
  • Both replicas independently scrape the same targets and evaluate the same rules.

  • The replicas do not communicate with each other. Therefore, data might differ between the pods.

Alertmanager in HA mode
  • The two replicas synchronize notification and silence states with each other. This ensures that each notification is sent at least once.

  • If the replicas fail to communicate or if there is an issue on the receiving side, notifications are still sent, but they might be duplicated.

Prometheus, Alertmanager, and Thanos Ruler are stateful components. To ensure high availability, you must configure them with persistent storage.

Glossary of common terms for OpenShift Dedicated monitoring

This glossary defines common terms that are used in OpenShift Dedicated architecture.

Alertmanager

Alertmanager handles alerts received from Prometheus. Alertmanager is also responsible for sending the alerts to external notification systems.

Alerting rules

Alerting rules contain a set of conditions that outline a particular state within a cluster. Alerts are triggered when those conditions are true. An alerting rule can be assigned a severity that defines how the alerts are routed.

Cluster Monitoring Operator

The Cluster Monitoring Operator (CMO) is a central component of the monitoring stack. It deploys and manages Prometheus instances such as, the Thanos Querier, the Telemeter Client, and metrics targets to ensure that they are up to date. The CMO is deployed by the Cluster Version Operator (CVO).

Cluster Version Operator

The Cluster Version Operator (CVO) manages the lifecycle of cluster Operators, many of which are installed in OpenShift Dedicated by default.

config map

A config map provides a way to inject configuration data into pods. You can reference the data stored in a config map in a volume of type ConfigMap. Applications running in a pod can use this data.

Container

A container is a lightweight and executable image that includes software and all its dependencies. Containers virtualize the operating system. As a result, you can run containers anywhere from a data center to a public or private cloud as well as a developer’s laptop.

custom resource (CR)

A CR is an extension of the Kubernetes API. You can create custom resources.

etcd

etcd is the key-value store for OpenShift Dedicated, which stores the state of all resource objects.

Fluentd

Fluentd is a log collector that resides on each OpenShift Dedicated node. It gathers application, infrastructure, and audit logs and forwards them to different outputs.

Fluentd is deprecated and is planned to be removed in a future release. Red Hat provides bug fixes and support for this feature during the current release lifecycle, but this feature no longer receives enhancements. As an alternative to Fluentd, you can use Vector instead.

Kubelets

Runs on nodes and reads the container manifests. Ensures that the defined containers have started and are running.

Kubernetes API server

Kubernetes API server validates and configures data for the API objects.

Kubernetes controller manager

Kubernetes controller manager governs the state of the cluster.

Kubernetes scheduler

Kubernetes scheduler allocates pods to nodes.

labels

Labels are key-value pairs that you can use to organize and select subsets of objects such as a pod.

Metrics Server

The Metrics Server monitoring component collects resource metrics and exposes them in the metrics.k8s.io Metrics API service for use by other tools and APIs, which frees the core platform Prometheus stack from handling this functionality.

node

A worker machine in the OpenShift Dedicated cluster. A node is either a virtual machine (VM) or a physical machine.

Operator

The preferred method of packaging, deploying, and managing a Kubernetes application in an OpenShift Dedicated cluster. An Operator takes human operational knowledge and encodes it into software that is packaged and shared with customers.

Operator Lifecycle Manager (OLM)

OLM helps you install, update, and manage the lifecycle of Kubernetes native applications. OLM is an open source toolkit designed to manage Operators in an effective, automated, and scalable way.

Persistent storage

Stores the data even after the device is shut down. Kubernetes uses persistent volumes to store the application data.

Persistent volume claim (PVC)

You can use a PVC to mount a PersistentVolume into a Pod. You can access the storage without knowing the details of the cloud environment.

pod

The pod is the smallest logical unit in Kubernetes. A pod is comprised of one or more containers to run in a worker node.

Prometheus

Prometheus is the monitoring system on which the OpenShift Dedicated monitoring stack is based. Prometheus is a time-series database and a rule evaluation engine for metrics. Prometheus sends alerts to Alertmanager for processing.

Prometheus Operator

The Prometheus Operator (PO) in the openshift-monitoring project creates, configures, and manages platform Prometheus and Alertmanager instances. It also automatically generates monitoring target configurations based on Kubernetes label queries.

Silences

A silence can be applied to an alert to prevent notifications from being sent when the conditions for an alert are true. You can mute an alert after the initial notification, while you work on resolving the underlying issue.

storage

OpenShift Dedicated supports many types of storage on AWS and GCP. You can manage container storage for persistent and non-persistent data in an OpenShift Dedicated cluster.

Thanos Ruler

The Thanos Ruler is a rule evaluation engine for Prometheus that is deployed as a separate process. In OpenShift Dedicated, Thanos Ruler provides rule and alerting evaluation for the monitoring of user-defined projects.

Vector

Vector is a log collector that deploys to each OpenShift Dedicated node. It collects log data from each node, transforms the data, and forwards it to configured outputs.

web console

A user interface (UI) to manage OpenShift Dedicated.