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			204 lines
		
	
	
		
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			Markdown
		
	
	
	
	
	
			
		
		
	
	
			204 lines
		
	
	
		
			11 KiB
		
	
	
	
		
			Markdown
		
	
	
	
	
	
# Kubernetes monitoring architecture
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## Executive Summary
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Monitoring is split into two pipelines:
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* A **core metrics pipeline** consisting of Kubelet, a resource estimator, a slimmed-down
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Heapster called metrics-server, and the API server serving the master metrics API. These
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metrics are used by core system components, such as scheduling logic (e.g. scheduler and
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horizontal pod autoscaling based on system metrics) and simple out-of-the-box UI components
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(e.g. `kubectl top`). This pipeline is not intended for integration with third-party
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monitoring systems.
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* A **monitoring pipeline** used for collecting various metrics from the system and exposing
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them to end-users, as well as to the Horizontal Pod Autoscaler (for custom metrics) and Infrastore
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via adapters. Users can choose from many monitoring system vendors, or run none at all. In
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open-source, Kubernetes will not ship with a monitoring pipeline, but third-party options
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will be easy to install. We expect that such pipelines will typically consist of a per-node
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agent and a cluster-level aggregator.
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The architecture is illustrated in the diagram in the Appendix of this doc.
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## Introduction and Objectives
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This document proposes a high-level monitoring architecture for Kubernetes. It covers
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a subset of the issues mentioned in the “Kubernetes Monitoring Architecture” doc,
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specifically focusing on an architecture (components and their interactions) that
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hopefully meets the numerous requirements. We do not specify any particular timeframe
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for implementing this architecture, nor any particular roadmap for getting there.
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### Terminology
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There are two types of metrics, system metrics and service metrics. System metrics are
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generic metrics that are generally available from every entity that is monitored (e.g.
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usage of CPU and memory by container and node). Service metrics are explicitly defined
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in application code and exported (e.g. number of 500s served by the API server). Both
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system metrics and service metrics can originate from users’ containers or from system
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infrastructure components (master components like the API server, addon pods running on
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the master, and addon pods running on user nodes).
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We divide system metrics into
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* *core metrics*, which are metrics that Kubernetes understands and uses for operation
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of its internal components and core utilities -- for example, metrics used for scheduling
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(including the inputs to the algorithms for resource estimation, initial resources/vertical
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autoscaling, cluster autoscaling, and horizontal pod autoscaling excluding custom metrics),
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the kube dashboard, and “kubectl top.” As of now this would consist of cpu cumulative usage,
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memory instantaneous usage, disk usage of pods, disk usage of containers
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* *non-core metrics*, which are not interpreted by Kubernetes; we generally assume they
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include the core metrics (though not necessarily in a format Kubernetes understands) plus
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additional metrics.
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Service metrics can be divided into those produced by Kubernetes infrastructure components
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(and thus useful for operation of the Kubernetes cluster) and those produced by user applications.
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Service metrics used as input to horizontal pod autoscaling are sometimes called custom metrics.
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Of course horizontal pod autoscaling also uses core metrics.
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We consider logging to be separate from monitoring, so logging is outside the scope of
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this doc.
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### Requirements
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The monitoring architecture should
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* include a solution that is part of core Kubernetes and
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  * makes core system metrics about nodes, pods, and containers available via a standard
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  master API (today the master metrics API), such that core Kubernetes features do not
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  depend on non-core components
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  * requires Kubelet to only export a limited set of metrics, namely those required for
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  core Kubernetes components to correctly operate (this is related to #18770)
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  * can scale up to at least 5000 nodes
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  * is small enough that we can require that all of its components be running in all deployment
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  configurations
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* include an out-of-the-box solution that can serve historical data, e.g. to support Initial
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Resources and vertical pod autoscaling as well as cluster analytics queries, that depends
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only on core Kubernetes
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* allow for third-party monitoring solutions that are not part of core Kubernetes and can
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be integrated with components like Horizontal Pod Autoscaler that require service metrics
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## Architecture
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We divide our description of the long-term architecture plan into the core metrics pipeline
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and the monitoring pipeline. For each, it is necessary to think about how to deal with each
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type of metric (core metrics, non-core metrics, and service metrics) from both the master
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and minions.
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### Core metrics pipeline
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The core metrics pipeline collects a set of core system metrics. There are two sources for
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these metrics
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* Kubelet, providing per-node/pod/container usage information (the current cAdvisor that
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is part of Kubelet will be slimmed down to provide only core system metrics)
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* a resource estimator that runs as a DaemonSet and turns raw usage values scraped from
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Kubelet into resource estimates (values used by scheduler for a more advanced usage-based
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scheduler)
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These sources are scraped by a component we call *metrics-server* which is like a slimmed-down
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version of today's Heapster. metrics-server stores locally only latest values and has no sinks.
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metrics-server exposes the master metrics API. (The configuration described here is similar
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to the current Heapster in “standalone” mode.)
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[Discovery summarizer](../../docs/proposals/federated-api-servers.md)
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makes the master metrics API available to external clients such that from the client’s perspective
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it looks the same as talking to the API server.
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Core (system) metrics are handled as described above in all deployment environments. The only
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easily replaceable part is resource estimator, which could be replaced by power users. In
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theory, metric-server itself can also be substituted, but it’d be similar to substituting
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apiserver itself or controller-manager - possible, but not recommended and not supported.
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Eventually the core metrics pipeline might also collect metrics from Kubelet and Docker daemon
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themselves (e.g. CPU usage of Kubelet), even though they do not run in containers.
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The core metrics pipeline is intentionally small and not designed for third-party integrations.
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“Full-fledged” monitoring is left to third-party systems, which provide the monitoring pipeline
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(see next section) and can run on Kubernetes without having to make changes to upstream components.
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In this way we can remove the burden we have today that comes with maintaining Heapster as the
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integration point for every possible metrics source, sink, and feature.
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#### Infrastore
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We will build an open-source Infrastore component (most likely reusing existing technologies)
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for serving historical queries over core system metrics and events, which it will fetch from
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the master APIs. Infrastore will expose one or more APIs (possibly just SQL-like queries --
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this is TBD) to handle the following use cases
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* initial resources
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* vertical autoscaling
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* oldtimer API
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* decision-support queries for debugging, capacity planning,  etc.
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* usage graphs in the [Kubernetes Dashboard](https://github.com/kubernetes/dashboard)
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In addition, it may collect monitoring metrics and service metrics (at least from Kubernetes
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infrastructure containers), described in the upcoming sections.
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### Monitoring pipeline
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One of the goals of building a dedicated metrics pipeline for core metrics, as described in the
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previous section, is to allow for a separate monitoring pipeline that can be very flexible
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because core Kubernetes components do not need to rely on it. By default we will not provide
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one, but we will provide an easy way to install one (using a single command, most likely using
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Helm). We described the monitoring pipeline in this section.
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Data collected by the monitoring pipeline may contain any sub- or superset of the following groups
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of metrics:
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* core system metrics
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* non-core system metrics
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* service metrics from user application containers
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* service metrics from Kubernetes infrastructure containers; these metrics are exposed using
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Prometheus instrumentation
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It is up to the monitoring solution to decide which of these are collected.
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In order to enable horizontal pod autoscaling based on custom metrics, the provider of the
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monitoring pipeline would also have to create a stateless API adapter that pulls the custom
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metrics from the monitoring pipeline and exposes them to the Horizontal Pod Autoscaler. Such
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API will be a well defined, versioned API similar to regular APIs. Details of how it will be
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exposed or discovered will be covered in a detailed design doc for this component.
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The same approach applies if it is desired to make monitoring pipeline metrics available in
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Infrastore. These adapters could be standalone components, libraries, or part of the monitoring
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solution itself.
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There are many possible combinations of node and cluster-level agents that could comprise a
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monitoring pipeline, including
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cAdvisor + Heapster + InfluxDB (or any other sink)
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* cAdvisor + collectd + Heapster
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* cAdvisor + Prometheus
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* snapd + Heapster
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* snapd + SNAP cluster-level agent
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* Sysdig
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As an example we’ll describe a potential integration with cAdvisor + Prometheus.
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Prometheus has the following metric sources on a node:
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* core and non-core system metrics from cAdvisor
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* service metrics exposed by containers via HTTP handler in Prometheus format
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* [optional] metrics about node itself from Node Exporter (a Prometheus component)
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All of them are polled by the Prometheus cluster-level agent. We can use the Prometheus
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cluster-level agent as a source for horizontal pod autoscaling custom metrics by using a
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standalone API adapter that proxies/translates between the Prometheus Query Language endpoint
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on the Prometheus cluster-level agent and an HPA-specific API. Likewise an adapter can be
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used to make the metrics from the monitoring pipeline available in Infrastore. Neither
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adapter is necessary if the user does not need the corresponding feature.
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The command that installs cAdvisor+Prometheus should also automatically set up collection
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of the metrics from infrastructure containers. This is possible because the names of the
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infrastructure containers and metrics of interest are part of the Kubernetes control plane
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configuration itself, and because the infrastructure containers export their metrics in
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Prometheus format.
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## Appendix: Architecture diagram
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### Open-source monitoring pipeline
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<!-- BEGIN MUNGE: GENERATED_ANALYTICS -->
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[]()
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<!-- END MUNGE: GENERATED_ANALYTICS -->
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