mirror of https://github.com/prometheus/prometheus
268 lines
8.8 KiB
Markdown
268 lines
8.8 KiB
Markdown
---
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title: Getting started
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sort_rank: 1
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---
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# Getting started
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This guide is a "Hello World"-style tutorial which shows how to install,
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configure, and use Prometheus in a simple example setup. You will download and run
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Prometheus locally, configure it to scrape itself and an example application,
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and then work with queries, rules, and graphs to make use of the collected time
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series data.
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## Downloading and running Prometheus
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[Download the latest release](https://prometheus.io/download) of Prometheus for
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your platform, then extract and run it:
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```bash
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tar xvfz prometheus-*.tar.gz
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cd prometheus-*
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```
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Before starting Prometheus, let's configure it.
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## Configuring Prometheus to monitor itself
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Prometheus collects metrics from monitored targets by scraping metrics HTTP
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endpoints on these targets. Since Prometheus also exposes data in the same
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manner about itself, it can also scrape and monitor its own health.
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While a Prometheus server that collects only data about itself is not very
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useful in practice, it is a good starting example. Save the following basic
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Prometheus configuration as a file named `prometheus.yml`:
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```yaml
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global:
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scrape_interval: 15s # By default, scrape targets every 15 seconds.
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# Attach these labels to any time series or alerts when communicating with
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# external systems (federation, remote storage, Alertmanager).
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external_labels:
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monitor: 'codelab-monitor'
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# A scrape configuration containing exactly one endpoint to scrape:
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# Here it's Prometheus itself.
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scrape_configs:
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# The job name is added as a label `job=<job_name>` to any timeseries scraped from this config.
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- job_name: 'prometheus'
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# Override the global default and scrape targets from this job every 5 seconds.
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scrape_interval: 5s
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static_configs:
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- targets: ['localhost:9090']
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```
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For a complete specification of configuration options, see the
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[configuration documentation](configuration/configuration.md).
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## Starting Prometheus
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To start Prometheus with your newly created configuration file, change to the
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directory containing the Prometheus binary and run:
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```bash
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# Start Prometheus.
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# By default, Prometheus stores its database in ./data (flag --storage.tsdb.path).
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./prometheus --config.file=prometheus.yml
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```
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Prometheus should start up. You should also be able to browse to a status page
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about itself at [localhost:9090](http://localhost:9090). Give it a couple of
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seconds to collect data about itself from its own HTTP metrics endpoint.
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You can also verify that Prometheus is serving metrics about itself by
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navigating to its metrics endpoint:
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[localhost:9090/metrics](http://localhost:9090/metrics)
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## Using the expression browser
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Let us try looking at some data that Prometheus has collected about itself. To
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use Prometheus's built-in expression browser, navigate to
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http://localhost:9090/graph and choose the "Console" view within the "Graph"
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tab.
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As you can gather from [localhost:9090/metrics](http://localhost:9090/metrics),
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one metric that Prometheus exports about itself is called
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`prometheus_target_interval_length_seconds` (the actual amount of time between
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target scrapes). Go ahead and enter this into the expression console:
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```
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prometheus_target_interval_length_seconds
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```
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This should return a number of different time series (along with the latest value
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recorded for each), all with the metric name
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`prometheus_target_interval_length_seconds`, but with different labels. These
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labels designate different latency percentiles and target group intervals.
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If we were only interested in the 99th percentile latencies, we could use this
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query to retrieve that information:
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```
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prometheus_target_interval_length_seconds{quantile="0.99"}
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```
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To count the number of returned time series, you could write:
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```
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count(prometheus_target_interval_length_seconds)
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```
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For more about the expression language, see the
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[expression language documentation](querying/basics.md).
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## Using the graphing interface
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To graph expressions, navigate to http://localhost:9090/graph and use the "Graph"
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tab.
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For example, enter the following expression to graph the per-second rate of chunks
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being created in the self-scraped Prometheus:
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```
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rate(prometheus_tsdb_head_chunks_created_total[1m])
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```
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Experiment with the graph range parameters and other settings.
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## Starting up some sample targets
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Let us make this more interesting and start some example targets for Prometheus
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to scrape.
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The Go client library includes an example which exports fictional RPC latencies
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for three services with different latency distributions.
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Ensure you have the [Go compiler installed](https://golang.org/doc/install) and
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have a [working Go build environment](https://golang.org/doc/code.html) (with
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correct `GOPATH`) set up.
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Download the Go client library for Prometheus and run three of these example
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processes:
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```bash
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# Fetch the client library code and compile example.
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git clone https://github.com/prometheus/client_golang.git
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cd client_golang/examples/random
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go get -d
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go build
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# Start 3 example targets in separate terminals:
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./random -listen-address=:8080
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./random -listen-address=:8081
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./random -listen-address=:8082
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```
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You should now have example targets listening on http://localhost:8080/metrics,
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http://localhost:8081/metrics, and http://localhost:8082/metrics.
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## Configuring Prometheus to monitor the sample targets
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Now we will configure Prometheus to scrape these new targets. Let's group all
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three endpoints into one job called `example-random`. However, imagine that the
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first two endpoints are production targets, while the third one represents a
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canary instance. To model this in Prometheus, we can add several groups of
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endpoints to a single job, adding extra labels to each group of targets. In
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this example, we will add the `group="production"` label to the first group of
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targets, while adding `group="canary"` to the second.
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To achieve this, add the following job definition to the `scrape_configs`
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section in your `prometheus.yml` and restart your Prometheus instance:
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```yaml
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scrape_configs:
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- job_name: 'example-random'
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# Override the global default and scrape targets from this job every 5 seconds.
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scrape_interval: 5s
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static_configs:
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- targets: ['localhost:8080', 'localhost:8081']
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labels:
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group: 'production'
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- targets: ['localhost:8082']
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labels:
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group: 'canary'
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```
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Go to the expression browser and verify that Prometheus now has information
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about time series that these example endpoints expose, such as the
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`rpc_durations_seconds` metric.
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## Configure rules for aggregating scraped data into new time series
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Though not a problem in our example, queries that aggregate over thousands of
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time series can get slow when computed ad-hoc. To make this more efficient,
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Prometheus allows you to prerecord expressions into completely new persisted
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time series via configured recording rules. Let's say we are interested in
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recording the per-second rate of example RPCs
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(`rpc_durations_seconds_count`) averaged over all instances (but
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preserving the `job` and `service` dimensions) as measured over a window of 5
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minutes. We could write this as:
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```
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avg(rate(rpc_durations_seconds_count[5m])) by (job, service)
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```
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Try graphing this expression.
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To record the time series resulting from this expression into a new metric
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called `job_service:rpc_durations_seconds_count:avg_rate5m`, create a file
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with the following recording rule and save it as `prometheus.rules.yml`:
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```
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groups:
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- name: example
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rules:
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- record: job_service:rpc_durations_seconds_count:avg_rate5m
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expr: avg(rate(rpc_durations_seconds_count[5m])) by (job, service)
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```
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To make Prometheus pick up this new rule, add a `rule_files` statement to the
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`global` configuration section in your `prometheus.yml`. The config should now
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look like this:
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```yaml
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global:
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scrape_interval: 15s # By default, scrape targets every 15 seconds.
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evaluation_interval: 15s # Evaluate rules every 15 seconds.
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# Attach these extra labels to all timeseries collected by this Prometheus instance.
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external_labels:
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monitor: 'codelab-monitor'
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rule_files:
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- 'prometheus.rules.yml'
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scrape_configs:
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- job_name: 'prometheus'
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# Override the global default and scrape targets from this job every 5 seconds.
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scrape_interval: 5s
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static_configs:
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- targets: ['localhost:9090']
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- job_name: 'example-random'
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# Override the global default and scrape targets from this job every 5 seconds.
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scrape_interval: 5s
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static_configs:
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- targets: ['localhost:8080', 'localhost:8081']
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labels:
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group: 'production'
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- targets: ['localhost:8082']
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labels:
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group: 'canary'
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```
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Restart Prometheus with the new configuration and verify that a new time series
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with the metric name `job_service:rpc_durations_seconds_count:avg_rate5m`
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is now available by querying it through the expression browser or graphing it.
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