$ oc -n openshift-logging edit ClusterLogging instance
As a cluster administrator, you can deploy the logging subsystem to aggregate all the logs from your OKD cluster, such as node system audit logs, application container logs, and infrastructure logs. The logging subsystem aggregates these logs from throughout your cluster and stores them in a default log store. You can use the Kibana web console to visualize log data.
The logging subsystem aggregates the following types of logs:
application
- Container logs generated by user applications running in the cluster, except infrastructure container applications.
infrastructure
- Logs generated by infrastructure components running in the cluster and OKD nodes, such as journal logs. Infrastructure components are pods that run in the openshift*
, kube*
, or default
projects.
audit
- Logs generated by auditd, the node audit system, which are stored in the /var/log/audit/audit.log file, and the audit logs from the Kubernetes apiserver and the OpenShift apiserver.
Because the internal OKD Elasticsearch log store does not provide secure storage for audit logs, audit logs are not stored in the internal Elasticsearch instance by default. If you want to send the audit logs to the default internal Elasticsearch log store, for example to view the audit logs in Kibana, you must use the Log Forwarding API as described in Forward audit logs to the log store. |
This glossary defines common terms that are used in the OKD Logging content.
You can use annotations to attach metadata to objects.
The Cluster Logging Operator provides a set of APIs to control the collection and forwarding of application, infrastructure, and audit logs.
A CR is an extension of the Kubernetes API. To configure OKD Logging and log forwarding, you can customize the ClusterLogging
and the ClusterLogForwarder
custom resources.
The event router is a pod that watches OKD events. It collects logs by using OKD Logging.
Fluentd is a log collector that resides on each OKD node. It gathers application, infrastructure, and audit logs and forwards them to different outputs.
Garbage collection is the process of cleaning up cluster resources, such as terminated containers and images that are not referenced by any running pods.
Elasticsearch is a distributed search and analytics engine. OKD uses ELasticsearch as a default log store for OKD Logging.
Elasticsearch operator is used to run Elasticsearch cluster on top of OKD. The Elasticsearch Operator provides self-service for the Elasticsearch cluster operations and is used by OKD Logging.
Indexing is a data structure technique that is used to quickly locate and access data. Indexing optimizes the performance by minimizing the amount of disk access required when a query is processed.
OKD Logging Log Forwarding API enables you to parse JSON logs into a structured object and forward them to either OKD Logging-managed Elasticsearch or any other third-party system supported by the Log Forwarding API.
Kibana is a browser-based console interface to query, discover, and visualize your Elasticsearch data through histograms, line graphs, and pie charts.
Kubernetes API server validates and configures data for the API objects.
Labels are key-value pairs that you can use to organize and select subsets of objects, such as a pod.
With OKD Logging you can aggregate application, infrastructure, and audit logs throughout your cluster. You can also store them to a default log store, forward them to third party systems, and query and visualize the stored logs in the default log store.
A logging collector collects logs from the cluster, formats them, and forwards them to the log store or third party systems.
A log store is used to store aggregated logs. You can use the default Elasticsearch log store or forward logs to external log stores. The default log store is optimized and tested for short-term storage.
Log visualizer is the user interface (UI) component you can use to view information such as logs, graphs, charts, and other metrics. The current implementation is Kibana.
A node is a worker machine in the OKD cluster. A node is either a virtual machine (VM) or a physical machine.
Operators are the preferred method of packaging, deploying, and managing a Kubernetes application in an OKD cluster. An Operator takes human operational knowledge and encodes it into software that is packaged and shared with customers.
A pod is the smallest logical unit in Kubernetes. A pod consists of one or more containers and runs on a worker node..
RBAC is a key security control to ensure that cluster users and workloads have access only to resources required to execute their roles.
Elasticsearch organizes the log data from Fluentd into datastores, or indices, then subdivides each index into multiple pieces called shards.
Taints ensure that pods are scheduled onto appropriate nodes. You can apply one or more taints on a node.
You can apply tolerations to pods. Tolerations allow the scheduler to schedule pods with matching taints.
A user interface (UI) to manage OKD.
OKD cluster administrators can deploy the logging subsystem using
the OKD web console or CLI to install the OpenShift Elasticsearch
Operator and Red Hat OpenShift Logging Operator. When the Operators are installed, you create
a ClusterLogging
custom resource (CR) to schedule logging subsystem pods and
other resources necessary to support the logging subsystem. The Operators are
responsible for deploying, upgrading, and maintaining the logging subsystem.
The ClusterLogging
CR defines a complete logging subsystem environment that includes all the components
of the logging stack to collect, store and visualize logs. The Red Hat OpenShift Logging Operator watches the logging subsystem CR and adjusts the logging deployment accordingly.
Administrators and application developers can view the logs of the projects for which they have view access.
For information, see Configuring the log collector.
You can use JSON logging to configure the Log Forwarding API to parse JSON strings into a structured object. You can perform the following tasks:
Parse JSON logs
Configure JSON log data for Elasticsearch
Forward JSON logs to the Elasticsearch log store
The OKD Event Router is a pod that watches Kubernetes events and logs them for collection by OKD Logging. You must manually deploy the Event Router.
For information, see About collecting and storing Kubernetes events.
OKD allows you to update OKD logging. You must update the following operators while updating OKD Logging:
Elasticsearch Operator
Cluster Logging Operator
For information, see About updating OKD Logging.
The OKD Logging dashboard contains charts that show details about your Elasticsearch instance at the cluster level. These charts help you diagnose and anticipate problems.
For information, see About viewing the cluster dashboard.
You can troubleshoot the logging issues by performing the following tasks:
Viewing logging status
Viewing the status of the log store
Understanding logging alerts
Collecting logging data for Red Hat Support
Troubleshooting for critical alerts
You can stop log aggregation by deleting the ClusterLogging custom resource (CR). After deleting the CR, there are other cluster logging components that remain, which you can optionally remove.
For information, see About uninstalling OKD Logging.
The logging system exports fields. Exported fields are present in the log records and are available for searching from Elasticsearch and Kibana.
For information, see About exporting fields.
The logging subsystem components include a collector deployed to each node in the OKD cluster that collects all node and container logs and writes them to a log store. You can use a centralized web UI to create rich visualizations and dashboards with the aggregated data.
The major components of the logging subsystem are:
collection - This is the component that collects logs from the cluster, formats them, and forwards them to the log store. The current implementation is Fluentd.
log store - This is where the logs are stored. The default implementation is Elasticsearch. You can use the default Elasticsearch log store or forward logs to external log stores. The default log store is optimized and tested for short-term storage.
visualization - This is the UI component you can use to view logs, graphs, charts, and so forth. The current implementation is Kibana.
This document might refer to log store or Elasticsearch, visualization or Kibana, collection or Fluentd, interchangeably, except where noted.
The logging subsystem for Red Hat OpenShift collects container and node logs.
By default, the log collector uses the following sources:
journald for all system logs
/var/log/containers/*.log
for all container logs
If you configure the log collector to collect audit logs, it gets them from /var/log/audit/audit.log
.
The logging collector is a daemon set that deploys pods to each OKD node. System and infrastructure logs are generated by journald log messages from the operating system, the container runtime, and OKD. Application logs are generated by the CRI-O container engine. Fluentd collects the logs from these sources and forwards them internally or externally as you configure in OKD.
The container runtimes provide minimal information to identify the source of log messages: project, pod name, and container ID. This information is not sufficient to uniquely identify the source of the logs. If a pod with a given name and project is deleted before the log collector begins processing its logs, information from the API server, such as labels and annotations, might not be available. There might not be a way to distinguish the log messages from a similarly named pod and project or trace the logs to their source. This limitation means that log collection and normalization are considered best effort.
The available container runtimes provide minimal information to identify the source of log messages and do not guarantee unique individual log messages or that these messages can be traced to their source. |
For information, see Configuring the log collector.
By default, OKD uses Elasticsearch (ES) to store log data. Optionally you can use the Log Forwarder API to forward logs to an external store. Several types of store are supported, including fluentd, rsyslog, kafka and others.
The logging subsystem Elasticsearch instance is optimized and tested for short term storage, approximately seven days. If you want to retain your logs over a longer term, it is recommended you move the data to a third-party storage system.
Elasticsearch organizes the log data from Fluentd into datastores, or indices, then subdivides each index into multiple pieces called shards, which it spreads across a set of Elasticsearch nodes in an Elasticsearch cluster. You can configure Elasticsearch to make copies of the shards, called replicas, which Elasticsearch also spreads across the Elasticsearch nodes. The ClusterLogging
custom resource (CR) allows you to specify how the shards are replicated to provide data redundancy and resilience to failure. You can also specify how long the different types of logs are retained using a retention policy in the ClusterLogging
CR.
The number of primary shards for the index templates is equal to the number of Elasticsearch data nodes. |
The Red Hat OpenShift Logging Operator and companion OpenShift Elasticsearch Operator ensure that each Elasticsearch node is deployed using a unique deployment that includes its own storage volume.
You can use a ClusterLogging
custom resource (CR) to increase the number of Elasticsearch nodes, as needed.
See the Elasticsearch documentation for considerations involved in configuring storage.
A highly-available Elasticsearch environment requires at least three Elasticsearch nodes, each on a different host. |
Role-based access control (RBAC) applied on the Elasticsearch indices enables the controlled access of the logs to the developers. Administrators can access all logs and developers can access only the logs in their projects.
For information, see Configuring the log store.
OKD uses Kibana to display the log data collected by Fluentd and indexed by Elasticsearch.
Kibana is a browser-based console interface to query, discover, and visualize your Elasticsearch data through histograms, line graphs, pie charts, and other visualizations.
For information, see Configuring the log visualizer.
The Event Router is a pod that watches OKD events so they can be collected by the logging subsystem for Red Hat OpenShift.
The Event Router collects events from all projects and writes them to STDOUT
. Fluentd collects those events and forwards them into the OKD Elasticsearch instance. Elasticsearch indexes the events to the infra
index.
You must manually deploy the Event Router.
For information, see Collecting and storing Kubernetes events.
By default, the logging subsystem for Red Hat OpenShift sends logs to the default internal Elasticsearch log store, defined in the ClusterLogging
custom resource (CR). If you want to forward logs to other log aggregators, you can use the log forwarding features to send logs to specific endpoints within or outside your cluster.
For information, see Forwarding logs to third-party systems.
Vector is a log collector offered as an alternative to Fluentd for the logging subsystem.
The following outputs are supported:
elasticsearch
. An external Elasticsearch instance. The elasticsearch
output can use a TLS connection.
kafka
. A Kafka broker. The kafka
output can use an unsecured or TLS connection.
loki
. Loki, a horizontally scalable, highly available, multitenant log aggregation system.
Vector is not enabled by default. Use the following steps to enable Vector on your OKD cluster.
Vector does not support fips Enabled Clusters. |
OKD: 4.11
Logging subsystem for Red Hat OpenShift: 5.4
fips disabled
Edit the ClusterLogging
custom resource (CR) in the openshift-logging
project:
$ oc -n openshift-logging edit ClusterLogging instance
Add a logging.openshift.io/preview-vector-collector: enabled
annotation to the ClusterLogging
custom resource (CR).
Add vector
as a collection type to the ClusterLogging
custom resource (CR).
apiVersion: "logging.openshift.io/v1"
kind: "ClusterLogging"
metadata:
name: "instance"
namespace: "openshift-logging"
annotations:
logging.openshift.io/preview-vector-collector: enabled
spec:
collection:
logs:
type: "vector"
vector: {}
Feature | Fluentd | Vector |
---|---|---|
App container logs |
✓ |
✓ |
App-specific routing |
✓ |
✓ |
App-specific routing by namespace |
✓ |
✓ |
Infra container logs |
✓ |
✓ |
Infra journal logs |
✓ |
✓ |
Kube API audit logs |
✓ |
✓ |
OpenShift API audit logs |
✓ |
✓ |
Open Virtual Network (OVN) audit logs |
✓ |
✓ |
Feature | Fluentd | Vector |
---|---|---|
Elasticsearch v5-v7 |
✓ |
✓ |
Fluent forward |
✓ |
|
Syslog RFC3164 |
✓ |
|
Syslog RFC5424 |
✓ |
|
Kafka |
✓ |
✓ |
Cloudwatch |
✓ |
✓ |
Loki |
✓ |
✓ |
Feature | Fluentd | Vector |
---|---|---|
Elasticsearch certificates |
✓ |
✓ |
Elasticsearch username / password |
✓ |
✓ |
Cloudwatch keys |
✓ |
✓ |
Cloudwatch STS |
✓ |
|
Kafka certificates |
✓ |
✓ |
Kafka username / password |
✓ |
✓ |
Kafka SASL |
✓ |
✓ |
Loki bearer token |
✓ |
✓ |
Feature | Fluentd | Vector |
---|---|---|
Viaq data model - app |
✓ |
✓ |
Viaq data model - infra |
✓ |
✓ |
Viaq data model - infra(journal) |
✓ |
✓ |
Viaq data model - Linux audit |
✓ |
✓ |
Viaq data model - kube-apiserver audit |
✓ |
✓ |
Viaq data model - OpenShift API audit |
✓ |
✓ |
Viaq data model - OVN |
✓ |
✓ |
Loglevel Normalization |
✓ |
✓ |
JSON parsing |
✓ |
✓ |
Structured Index |
✓ |
✓ |
Multiline error detection |
✓ |
|
Multicontainer / split indices |
✓ |
✓ |
Flatten labels |
✓ |
✓ |
CLF static labels |
✓ |
✓ |
Feature | Fluentd | Vector |
---|---|---|
Fluentd readlinelimit |
✓ |
|
Fluentd buffer |
✓ |
|
- chunklimitsize |
✓ |
|
- totallimitsize |
✓ |
|
- overflowaction |
✓ |
|
- flushthreadcount |
✓ |
|
- flushmode |
✓ |
|
- flushinterval |
✓ |
|
- retrywait |
✓ |
|
- retrytype |
✓ |
|
- retrymaxinterval |
✓ |
|
- retrytimeout |
✓ |
Feature | Fluentd | Vector |
---|---|---|
Metrics |
✓ |
✓ |
Dashboard |
✓ |
✓ |
Alerts |
✓ |
Feature | Fluentd | Vector |
---|---|---|
Global proxy support |
✓ |
✓ |
x86 support |
✓ |
✓ |
ARM support |
✓ |
✓ |
PowerPC support |
✓ |
✓ |
IBM Z support |
✓ |
✓ |
IPv6 support |
✓ |
✓ |
Log event buffering |
✓ |
|
Disconnected Cluster |
✓ |
✓ |