...
The Prometheus opensource monitoring solution (official page) can answer these and many other questions and addresses and solves these problems thanks also to the excellent travel companion Grafana. Grafana is a web application that creates graphs divided into panels, with data coming from a variety of different sources, such as OpenTSDB, InfluxDB, ElasticSearc and Prometheus itself.
Installation
...
We present a procedure that establishes the service using Docker-compose. Obviously, Docker-compose must be present on the system (if not present install docker-compose). Create a folder (e.g. "mkdir prometheus") in which we insert the docker-compose.yml
file
Code Block | ||||||
---|---|---|---|---|---|---|
| ||||||
version: '3'
services:
prometheus:
image: prom/prometheus
container_name: prometheus
ports:
- 90:9090
restart: always
user: '1000'
volumes:
- "$PWD/promdata:/prometheus"
- "$PWD/promconf:/etc/prometheus:ro"
command: "--config.file=/etc/prometheus/prometheus.yml --storage.tsdb.retention=90d"
logging:
driver: "json-file"
options:
max-size: "200k"
max-file: "10" |
Always inside the prometheus folder we create 2 other folders, called promconf
and promdata
, where we will insert, respectively, our configurations, present in the prometheus.yml
file, and storage. The latter allows you to configure Prometheus to monitor itself. The just mentioned configuration file is
Code Block | ||||||
---|---|---|---|---|---|---|
| ||||||
global:
scrape_interval: 15s # By default, scrape targets every 15 seconds.
# Attach these labels to any time series or alerts when communicating with
# external systems (federation, remote storage, Alertmanager).
external_labels:
monitor: 'codelab-monitor'
# A scrape configuration containing exactly one endpoint to scrape:
# Here it's Prometheus itself.
scrape_configs:
# The job name is added as a label `job=<job_name>` to any timeseries scraped from this config.
- job_name: 'prometheus'
# Override the global default and scrape targets from this job every 5 seconds.
scrape_interval: 5s
static_configs:
- targets: ['localhost:9090'] |
Prometheus collects metrics of monitored targets by scraping the HTTP endpoints of these targets. Since Prometheus himself exposes his internal metrics through the same mechanism, it is possible to scrape and monitor his health through the same mechanism. Now let's launch the service in background mode with the command
Code Block | ||||||
---|---|---|---|---|---|---|
| ||||||
$ docker-compose up -d
# To check the logs
$ docker-compose logs |
At this point, we open the browser at the address <master_FIP>:<port>
. The service is exposed by default on port 9090, but we have opted for port 90, which must be opened on OpenStack, for security reasons: the port is accessible with the network of the CNAF headquarters or via VPN if you are away.
In general, if we wanted to launch Prometheus with a custom version, we can further modify the prometheus.yml
file. For example, it is possible to modify the global configuration of the Prometheus server, specify the location of additional .yaml
files containing rules that we want to upload to the server or define which resources should be monitored. An extensive overview of the possible configurations is available here.
Installation with Helm
Probably the fastest and most efficient way to get Prometheus is via Helm chart. Add the repo (reference) and install the chart (here we work in namespace monitoring
)
...