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  1. Stackups
  2. DevOps
  3. Monitoring
  4. Monitoring Tools
  5. Nagios vs Prometheus

Nagios vs Prometheus

OverviewDecisionsComparisonAlternatives

Overview

Nagios
Nagios
Stacks811
Followers1.1K
Votes102
GitHub Stars57
Forks38
Prometheus
Prometheus
Stacks4.8K
Followers3.8K
Votes239
GitHub Stars61.1K
Forks9.9K

Nagios vs Prometheus: What are the differences?

Key Differences between Nagios and Prometheus

Nagios and Prometheus are both popular monitoring tools used in IT infrastructure management, but they differ in various aspects. Let's explore the key differences between Nagios and Prometheus.

  1. Architecture: Nagios is a traditional monolithic monitoring tool, where a single central server collects data from various monitored hosts. In contrast, Prometheus follows a modern microservices-based architecture, where each monitored host runs a Prometheus exporter that exposes metrics to be collected by the Prometheus server. This distributed approach in Prometheus allows for easier scalability and better fault tolerance.

  2. Data model: Nagios uses a passive check approach, where checks are initiated by the central Nagios server, and external plugins or scripts are executed on the monitored hosts to collect data. On the other hand, Prometheus follows a pull-based model, where the Prometheus server periodically scrapes metrics from the exporters on the monitored hosts. This pull-based approach in Prometheus provides real-time monitoring and better flexibility in data collection.

  3. Monitoring language: Nagios primarily uses the Nagios Object Configuration Language (NagiosQL) for defining hosts, services, and their checks. Prometheus, on the other hand, relies on Prometheus Query Language (PromQL) for querying and manipulating collected metrics. PromQL offers a rich set of functions and operators to perform complex queries and aggregations on the collected data.

  4. Data storage: Nagios uses flat file storage for storing monitoring data, which can lead to performance limitations and scalability issues in large-scale deployments. In contrast, Prometheus uses a powerful time-series database to store collected metrics efficiently. The TSDB in Prometheus allows for efficient querying and retention of large volumes of time-series data, making it suitable for long-term monitoring and analysis.

  5. Alerting system: Nagios comes with built-in alerting capabilities, where users can define thresholds and notification rules for triggering alerts. Prometheus, on the other hand, relies on its Alertmanager component for managing alerts. The Alertmanager integrates seamlessly with Prometheus and provides advanced features like deduplication, grouping, and silencing of alerts.

  6. Ecosystem and integrations: Nagios has been in the market for a longer time and has a large community supporting it. It has a wide range of plugins and addons available, making it highly extensible. Prometheus, although relatively newer, has gained significant traction and has a growing ecosystem. It has native integrations with other popular tools like Grafana for data visualization and Kubernetes for monitoring containerized environments.

In summary, Nagios and Prometheus differ in their architecture, data model, monitoring language, data storage, alerting systems, and ecosystem/integrations. While Nagios follows a monolithic design and uses a passive check approach, Prometheus adopts a microservices architecture with a pull-based model for data collection. It also leverages a time-series database, PromQL for querying, and Alertmanager for managing alerts.

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Advice on Nagios, Prometheus

Matt
Matt

Senior Software Engineering Manager at PayIt

May 3, 2021

DecidedonGrafanaGrafanaPrometheusPrometheusKubernetesKubernetes

Grafana and Prometheus together, running on Kubernetes , is a powerful combination. These tools are cloud-native and offer a large community and easy integrations. At PayIt we're using exporting Java application metrics using a Dropwizard metrics exporter, and our Node.js services now use the prom-client npm library to serve metrics.

1.1M views1.1M
Comments
Leonardo Henrique da
Leonardo Henrique da

Pleno QA Enginneer at SolarMarket

Dec 8, 2020

Decided

The objective of this work was to develop a system to monitor the materials of a production line using IoT technology. Currently, the process of monitoring and replacing parts depends on manual services. For this, load cells, microcontroller, Broker MQTT, Telegraf, InfluxDB, and Grafana were used. It was implemented in a workflow that had the function of collecting sensor data, storing it in a database, and visualizing it in the form of weight and quantity. With these developed solutions, he hopes to contribute to the logistics area, in the replacement and control of materials.

402k views402k
Comments
Raja Subramaniam
Raja Subramaniam

Aug 27, 2019

Needs adviceonPrometheusPrometheusKubernetesKubernetesSysdigSysdig

We have Prometheus as a monitoring engine as a part of our stack which contains Kubernetes cluster, container images and other open source tools. Also, I am aware that Sysdig can be integrated with Prometheus but I really wanted to know whether Sysdig or sysdig+prometheus will make better monitoring solution.

779k views779k
Comments

Detailed Comparison

Nagios
Nagios
Prometheus
Prometheus

Nagios is a host/service/network monitoring program written in C and released under the GNU General Public License.

Prometheus is a systems and service monitoring system. It collects metrics from configured targets at given intervals, evaluates rule expressions, displays the results, and can trigger alerts if some condition is observed to be true.

Monitor your entire IT infrastructure;Spot problems before they occur;Know immediately when problems arise;Share availability data with stakeholders;Detect security breaches;Plan and budget for IT upgrades;Reduce downtime and business losses
Dimensional data; Powerful queries; Great visualization; Efficient storage; Precise alerting; Simple operation
Statistics
GitHub Stars
57
GitHub Stars
61.1K
GitHub Forks
38
GitHub Forks
9.9K
Stacks
811
Stacks
4.8K
Followers
1.1K
Followers
3.8K
Votes
102
Votes
239
Pros & Cons
Pros
  • 53
    It just works
  • 28
    The standard
  • 12
    Customizable
  • 8
    The Most flexible monitoring system
  • 1
    Huge stack of free checks/plugins to choose from
Pros
  • 47
    Powerful easy to use monitoring
  • 38
    Flexible query language
  • 32
    Dimensional data model
  • 27
    Alerts
  • 23
    Active and responsive community
Cons
  • 12
    Just for metrics
  • 6
    Bad UI
  • 6
    Needs monitoring to access metrics endpoints
  • 4
    Not easy to configure and use
  • 3
    Supports only active agents
Integrations
No integrations available
Grafana
Grafana

What are some alternatives to Nagios, Prometheus?

Grafana

Grafana

Grafana is a general purpose dashboard and graph composer. It's focused on providing rich ways to visualize time series metrics, mainly though graphs but supports other ways to visualize data through a pluggable panel architecture. It currently has rich support for for Graphite, InfluxDB and OpenTSDB. But supports other data sources via plugins.

Kibana

Kibana

Kibana is an open source (Apache Licensed), browser based analytics and search dashboard for Elasticsearch. Kibana is a snap to setup and start using. Kibana strives to be easy to get started with, while also being flexible and powerful, just like Elasticsearch.

Netdata

Netdata

Netdata collects metrics per second & presents them in low-latency dashboards. It's designed to run on all of your physical & virtual servers, cloud deployments, Kubernetes clusters & edge/IoT devices, to monitor systems, containers & apps

Zabbix

Zabbix

Zabbix is a mature and effortless enterprise-class open source monitoring solution for network monitoring and application monitoring of millions of metrics.

Sensu

Sensu

Sensu is the future-proof solution for multi-cloud monitoring at scale. The Sensu monitoring event pipeline empowers businesses to automate their monitoring workflows and gain deep visibility into their multi-cloud environments.

Graphite

Graphite

Graphite does two things: 1) Store numeric time-series data and 2) Render graphs of this data on demand

Lumigo

Lumigo

Lumigo is an observability platform built for developers, unifying distributed tracing with payload data, log management, and real-time metrics to help you deeply understand and troubleshoot your systems.

StatsD

StatsD

It is a network daemon that runs on the Node.js platform and listens for statistics, like counters and timers, sent over UDP or TCP and sends aggregates to one or more pluggable backend services (e.g., Graphite).

Jaeger

Jaeger

Jaeger, a Distributed Tracing System

Telegraf

Telegraf

It is an agent for collecting, processing, aggregating, and writing metrics. Design goals are to have a minimal memory footprint with a plugin system so that developers in the community can easily add support for collecting metrics.

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