This page describes the deprecated version 2 of the grok_exporter
configuration file.
While grok_exporter
still supports this format, we recommend converting to the current configuration version 3.
The following command will convert the configuration automatically and print the result to the console:
grok_exporter -config path/to/config_v2.yml -showconfig
The current configuration version 3 is documented in CONFIG.md.
The grok_exporter
configuration file consists of five main sections:
global:
# Config version
input:
# How to read log lines (file or stdin).
grok:
# Available Grok patterns.
metrics:
# How to map Grok fields to Prometheus metrics.
server:
# How to expose the metrics via HTTP(S).
The following shows the configuration options for each of these sections.
The global
section is as follows:
global:
config_version: 2
retention_check_interval: 53s
The config_version
specifies the version of the config file format. Specifying the config_version
is mandatory, it has to be included in every configuration file. The current config_version
is 2
.
The config file format is versioned independently of the grok_exporter
program. When a new version of grok_exporter
keeps using the same config file, the config_version
will remain the same.
The following table shows which grok_exporter
version uses which config_version
:
grok_exporter | config_version |
---|---|
≤ 0.1.4 | 1 |
0.2.X, 1.0.0.RC1, 1.0.0.RC2 | 2 |
1.0.0.RC3 | 3 |
The retention_check_interval
is the interval at which grok_exporter
checks for expired metrics. By default, metrics don't expire so this is relevant only if retention
is configured explicitly with a metric. The retention_check_interval
is optional, the value defaults to 53s
. The default value is reasonable for production and should not be changed. This property is intended to be used in tests, where you might not want to wait 53 seconds until an expired metric is cleaned up. The format is described in How to Configure Durations below.
We currently support three input types: file
, stdin
, and webhook
. The following three sections describe the input types respectively:
The configuration for the file
input type is as follows:
Example 1:
input:
type: file
path: /var/logdir1/*.log
readall: false
fail_on_missing_logfile: true
poll_interval_seconds: 5 # should not be needed in most cases, see below
Example 2:
input:
type: file
paths:
- /var/logdir1/*.log
- /var/logdir2/*.log
readall: false
fail_on_missing_logfile: true
poll_interval_seconds: 5 # should not be needed in most cases, see below
The path
is the path to the log file. path
is uses if you want to monitor a single path. If you want to monitor a list of paths, use paths
instead, as in example 2 above. Globs are supported on the file level, but not on the directory level. If you want to monitor multiple logfiles, see also restricting a metric to specific log files and pre-defined label variables below.
The readall
flag defines if grok_exporter
starts reading from the beginning or the end of the file.
True means we read the whole file, false means we start at the end of the file and read only new lines.
True is good for debugging, because we process all available log lines.
False is good for production, because we avoid to process lines multiple times when grok_exporter
is restarted.
The default value for readall
is false
.
If fail_on_missing_logfile
is true, grok_exporter
will not start if the path
is not found.
This is the default value, and it should be used in most cases because a missing logfile is likely a configuration error.
However, in some scenarios you might want grok_exporter
to start successfully even if the logfile is not found,
because you know the file will be created later. In that case, set fail_on_missing_logfile: false
.
On poll_interval_seconds
: You probably don't need this. The internal implementation of grok_exporter
's
file input is based on the operating system's file system notification mechanism, which is inotify
on Linux,
kevent
on BSD (or macOS), and ReadDirectoryChangesW
on Windows. These tools will inform grok_exporter
as
soon as a new log line is written to the log file, and let grok_exporter
sleep as long as the log file doesn't
change. There is no need for configuring a poll interval. However, there is one combination where the above
notifications don't work: If the logging application keeps the logfile open and the underlying file system is NTFS
(see #17). For this specific case you can configure a
poll_interval_seconds
. This will disable file system notifications and instead check the log file periodically.
The poll_interval_seconds
option was introduced with release 0.2.2.
The configuration for the stdin
input type does not have any additional parameters:
input:
type: stdin
This is useful if you want to pipe log data to the grok_exporter
command,
for example if you want to monitor the output of journalctl
:
journalctl -f | grok_exporter -config config.yml
Note that grok_exporter
terminates as soon as it finishes reading from stdin
.
That means, if we run cat sample.log | grok_exporter -config config.yml
,
the exporter will terminate as soon as sample.log
is processed,
and we will not be able to access the result via HTTP(S) after that.
Always use a command that keeps the output open (like tail -f
) when testing the grok_exporter
with the stdin
input.
The grok_exporter is capable of receive log entries from webhook sources. It supports webhook reception in various formats... plain-text or JSON, single entries or bulk entries.
The following input configuration example which demonstrates how to configure grok_exporter to receive HTTP webhooks from the Logstash HTTP Output Plugin configured in json_batch
mode, which allows the transmission of multiple json log entries in a single webhook.
input:
type: webhook
# HTTP Path to POST the webhook
# Default is `/webhook`
webhook_path: /webhook
# HTTP Body POST Format
# text_single: Webhook POST body is a single plain text log entry
# text_bulk: Webhook POST body contains multiple plain text log entries
# separated by webhook_text_bulk_separator (default: \n\n)
# json_single: Webhook POST body is a single json log entry. Log entry
# text is selected from the value of a json key determined by
# webhook_json_selector.
# json_bulk: Webhook POST body contains multiple json log entries. The
# POST body envelope must be a json array "[ <entry>, <entry> ]". Log
# entry text is selected from the value of a json key determined by
# webhook_json_selector.
# Default is `text_single`
webhook_format: json_bulk
# JSON Path Selector
# Within an json log entry, text is selected from the value of this json selector
# Example ".path.to.element"
# Default is `.message`
webhook_json_selector: .message
# Bulk Text Separator
# Separator for text_bulk log entries
# Default is `\n\n`
webhook_text_bulk_separator: "\n\n"
This configuration example may be found in the examples directory here.
The grok
section configures the available Grok patterns. An example configuration is as follows:
grok:
patterns_dir: ./logstash-patterns-core/patterns
additional_patterns:
- 'EXIM_MESSAGE [a-zA-Z ]*'
- 'EXIM_SENDER_ADDRESS F=<%{EMAILADDRESS}>'
In most cases, we will have a directory containing the Grok pattern files. Grok's default pattern directory is included in the grok_exporter
release. The path to this directory is configured with patterns_dir
.
There are two ways to define additional Grok patterns:
- Create a custom pattern file and store it in the
patterns_dir
directory. - Add pattern definitions directly to the
grok_exporter
configuration. This can be done via theadditional_patterns
configuration. It takes a list of pattern definitions. The pattern definitions have the same format as the lines in the Grok pattern files.
Grok patterns are simply key/value pairs: The key is the pattern name, and the value is a Grok macro defining a regular expression. There is a lot of documentation available on Grok patterns: The logstash-patterns-core repository contains pre-defined patterns, the Grok documentation shows how patterns are defined, and there are online pattern builders available here: http://grokdebug.herokuapp.com and here: http://grokconstructor.appspot.com.
At least one of patterns_dir
or additional_patterns
is required: If patterns_dir
is missing all patterns must be defined directly in the additional_patterns
config. If additional_patterns
is missing all patterns must be defined in the patterns_dir
.
The metrics section contains a list of metric definitions, specifying how log lines are mapped to Prometheus metrics. Four metric types are supported:
To exemplify the different metrics configurations, we use the following example log lines:
30.07.2016 14:37:03 alice 1.5
30.07.2016 14:37:33 alice 2.5
30.07.2016 14:43:02 bob 2.5
30.07.2016 14:45:59 alice 2.5
The following is a simple counter counting the number of log lines containing alice
.
metrics:
- type: counter
name: alice_occurrences_total
help: number of log lines containing alice
match: 'alice'
labels:
logfile: '{{base .logfile}}'
The match
is a regular expression. In the simple example above, alice
is a regular expression matching the string alice.
Regular expressions quickly become hard to read. Grok patterns are pre-defined regular expression snippets that you can use in your match
patterns. For example, a complete match
pattern for the log lines above looks like this:
%{DATE} %{TIME} %{USER} %{NUMBER}
The actual regular expression snippets referenced by DATE
, TIME
, USER
, and NUMBER
are defined in logstash-patterns-core/patterns/grok-patterns.
One of the main features of Prometheus is its multi-dimensional data model: A Prometheus metric can be further partitioned using labels.
In order to define a label, you need to first define a Grok field name in the match:
pattern, and second add label template under labels:
.
- Define Grok field names. In Grok, each field, like
%{USER}
, can be given a name, like%{USER:user}
. The nameuser
can then be used in label templates. - Define label templates. Each metric type supports
labels
, which is a map of name/template pairs. The name will be used in Prometheus as the label name. The template is a Go template that may contain references to Grok fields, like{{.user}}
.
Example: In order to define a label user
for the example log lines above, use the following fragment:
match: '%{DATE} %{TIME} %{USER:user} %{NUMBER:val}'
labels:
user: '{{.user}}'
The match
stores whatever matches the %{USER}
pattern under the Grok field name user
. The label defines a Prometheus label user
with the value of the Grok field user
as its content.
This simple example shows a one-to-one mapping of a Grok field to a Prometheus label. However, the label definition is pretty flexible: You can combine multiple Grok fields in one label, and you can define constant labels that don't use Grok fields at all.
logfile
is currently the only pre-defined label variable that is independent of the Grok patterns. The logfile
variable is always present for input type file
, and contains the full path to the log file the line was read from. You can use it like this:
match: '%{DATE} %{TIME} %{USER:user} %{NUMBER:val}'
labels:
user: '{{.user}}'
logfile: '{{.logfile}}'
If you don't want the full path but only the file name, you can use the base
template function, see next section.
Label values are defined as Go templates. grok_exporter
supports the following template functions: gsub
, base
, add
, subtract
, multiply
, divide
.
For example, let's assume we have the match from above:
match: '%{DATE} %{TIME} %{USER:user} %{NUMBER:val}'
We apply this pattern to the first log line of our example:
30.07.2016 14:37:03 alice 1.5
This results in three variables that are available for defining labels:
user
has the valuealice
val
has the value1.5
logfile
has the value/tmp/example/example.log
, if that's where the logfile was located.
The following examples show how to use these fields as label values using the Go template language:
'{{.user}}'
->alice
'user {{.user}} with number {{.val}}.'
->user alice with number 1.5.
'{{gsub .user "ali" "beatri"}}'
->beatrice
'{{multiply .val 1000}}'
->1500
'{{if eq .user "alice"}}1{{else}}0{{end}}'
->1
'{{base .logfile}}'
->example.log
'{{gsub .logfile "/tmp/" ""}}
->example/example.log
The syntax of the gsub
function is {{gsub input pattern replacement}}
. The pattern and replacement are is similar to Elastic's mutate filter's gsub (derived from Ruby's String.gsub()), except that you need to double-escape backslashes (\\ instead of \). A more complex example (including capture groups) can be found in this comment.
The arithmetic functions add
, subtract
, multiply
, and divide
are straightforward. These functions may not be useful for label values, but they can be useful as the value:
in gauge, histogram, or summary metrics. For example, they could be used to convert milliseconds to seconds.
Conditionals like '{{if eq .user "alice"}}1{{else}}0{{end}}
are described in the Go template documentation. For example, they can be used to define boolean metrics, i.e. gauge metrics with a value of 1
or 0
. Another example can be found in this comment.
The base
function is like Golang's path.Base(). If you want something other than either the full path or the file name, use gsub
.
In the input
section above, we showed that you can monitor multiple logfiles. By default, all metrics are applied to all log files. If you want to restrict a metric to specific log files, you can specify either a path
or a list of paths
:
- type: counter
name: alice_occurrences_total
help: number of log lines containing alice
match: 'alice'
paths: /tmp/example/*.log
labels:
logfile: '{{base .logfile}}'
In the example, the alice_occurrences_total
would only be applied to files matching /tmp/example/*.log
and not to other files. If you have only one single path, you can use path
as an alternative to paths
. Note that path
and paths
are Glob patterns, which is not the same as Grok patterns or regular expressions.
By default, metrics are kept forever. However, sometimes you might want metrics with old labels to expire. There are two ways to do this in grok_exporter
:
As of version 0.2.2, grok_exporter
supports delete_match
and delete_labels
configuration:
delete_match: '%{DATE} %{TIME} %{USER:user} logged out'
delete_labels:
user: '{{.user}}'
Without delete_match
and delete_labels
, all labels are kept forever (until grok_exporter
is restarted). However, it might sometimes be desirable to explicitly remove metrics with specific labels. For example, if a service shuts down, it might be desirable to remove metrics labeled with that service name.
Using delete_match
you can define a regular expression that will trigger removal of metrics. For example, delete_match
could match a shutdown message in a log file.
Using delete_labels
you can restrict which labels are deleted if a line matches delete_match
. If no delete_labels
are specified, all labels for the given metric are deleted. If delete_labels
are specified, only those metrics are deleted where the label values are equal to the delete label values.
As of version 0.2.3, grok_exporter
supports retention
configuration for metrics:
metrics:
- type: ...
name: retention_example
help: ...
match: ...
labels:
...
retention: 2h30m
The example above means that if label values for the metrics named retention_example
have not been observed for 2 hours and 30 minutes, the retention_example
metrics with these label values will be removed.
For the format of the retention
value, see How to Configure Durations below.
Note that grok_exporter
checks the retention
every 53 seconds by default, so it may take 53 seconds until the metric is actually removed after the retention time is reached, see retention_check_interval
above.
The counter metric counts the number of matching log lines.
metrics:
- type: counter
name: grok_example_lines_total
help: Example counter metric with labels.
match: '%{DATE} %{TIME} %{USER:user} %{NUMBER}'
labels:
user: '{{.user}}'
The configuration is as follows:
type
iscounter
.name
is the name of the metric. Metric names are described in the [Prometheus data model documentation].help
is a comment describing the metric.match
is the Grok expression. See the Grok documentation for more info.labels
is an optional map of name/template pairs, as described above.
Output for the example log lines above:
# HELP grok_example_lines_total Example counter metric with labels.
# TYPE grok_example_lines_total counter
grok_example_lines_total{user="alice"} 3
grok_example_lines_total{user="bob"} 1
The gauge metric is used to monitor values that are logged with each matching log line.
metrics:
- type: gauge
name: grok_example_values
help: Example gauge metric with labels.
match: '%{DATE} %{TIME} %{USER:user} %{NUMBER:val}'
value: '{{.val}}'
cumulative: false
labels:
user: '{{.user}}'
The configuration is as follows:
type
isgauge
.name
,help
,match
, andlabels
have the same meaning as forcounter
metrics.value
is a Go template for the value to be monitored. The template must evaluate to a valid number. The template may use to Grok fields from thematch
patterns, like the label templates described above.cumulative
is optional. By default, the last observed value is measured. Withcumulative: true
, the sum of all observed values is measured.
Output for the example log lines above::
# HELP grok_example_values Example gauge metric with labels.
# TYPE grok_example_values gauge
grok_example_values{user="alice"} 6.5
grok_example_values{user="bob"} 2.5
Like gauge
metrics, the histogram metric monitors values that are logged with each matching log line. However, instead of just summing up the values, histograms count the observed values in configurable buckets.
- type: histogram
name: grok_example_values
help: Example histogram metric with labels.
match: '%{DATE} %{TIME} %{USER:user} %{NUMBER:val}'
value: '{{.val}}'
buckets: [1, 2, 3]
labels:
user: '{{.user}}'
The configuration is as follows:
type
ishistogram
.name
,help
,match
,labels
, andvalue
have the same meaning as forgauge
metrics.buckets
configure the categories to be observed. In the example, we have 4 buckets: One for values < 1, one for values < 2, one for values < 3, and one for all values (i.e. < infinity). Buckets are optional. The default buckets are[0.005, 0.01, 0.025, 0.05, 0.1, 0.25, 0.5, 1, 2.5, 5, 10]
, which is useful for HTTP response times in seconds.
Output for the example log lines above::
# HELP grok_example_values Example histogram metric with labels.
# TYPE grok_example_values histogram
grok_example_values_bucket{user="alice",le="1"} 0
grok_example_values_bucket{user="alice",le="2"} 1
grok_example_values_bucket{user="alice",le="3"} 3
grok_example_values_bucket{user="alice",le="+Inf"} 3
grok_example_values_sum{user="alice"} 6.5
grok_example_values_count{user="alice"} 3
grok_example_values_bucket{user="bob",le="1"} 0
grok_example_values_bucket{user="bob",le="2"} 0
grok_example_values_bucket{user="bob",le="3"} 1
grok_example_values_bucket{user="bob",le="+Inf"} 1
grok_example_values_sum{user="bob"} 2.5
grok_example_values_count{user="bob"} 1
Like gauge
and histogram
metrics, the summary metric monitors values that are logged with each matching log line. Summaries measure configurable φ quantiles, like the median (φ=0.5) or the 95% quantile (φ=0.95). See histograms and summaries for more info.
metrics:
- type: summary
name: grok_example_values
help: Summary metric with labels.
match: '%{DATE} %{TIME} %{USER:user} %{NUMBER:val}'
value: '{{.val}}'
quantiles: {0.5: 0.05, 0.9: 0.01, 0.99: 0.001}
labels:
user: '{{.user}}'
The configuration is as follows:
type
issummary
.name
,help
,match
,labels
, andvalue
have the same meaning as forgauge
metrics.quantiles
is a list of quantiles to be observed.grok_exporter
does not provide exact values for the quantiles, but only estimations. For each quantile, you also specify an uncertainty that is tolerated for the estimation. In the example, we measure the median (0.5 quantile) with uncertainty 5%, the 90% quantile with uncertainty 1%, and the 99% quantile with uncertainty 0.1%.quantiles
is optional, the default value is{0.5: 0.05, 0.9: 0.01, 0.99: 0.001}
.
Summaries represent a sliding time window of 10 minutes, i.e. if you observe a 0.5 quantile (median) of x, the value x represents the median within the last 10 minutes. The time window is moved forward every 2 minutes.
Output for the example log lines above::
# HELP grok_example_values Example summary metric with labels.
# TYPE grok_example_values summary
grok_example_values{user="alice",quantile="0.5"} 2.5
grok_example_values{user="alice",quantile="0.9"} 2.5
grok_example_values{user="alice",quantile="0.99"} 2.5
grok_example_values_sum{user="alice"} 6.5
grok_example_values_count{user="alice"} 3
grok_example_values{user="bob",quantile="0.5"} 2.5
grok_example_values{user="bob",quantile="0.9"} 2.5
grok_example_values{user="bob",quantile="0.99"} 2.5
grok_example_values_sum{user="bob"} 2.5
grok_example_values_count{user="bob"} 1
The server section configures the HTTP(S) server for exposing the metrics:
server:
protocol: https
host: localhost
port: 9144
path: /metrics
cert: /path/to/cert
key: /path/to/key
protocol
can behttp
orhttps
. Default ishttp
.host
can be a hostname or an IP address. If host is specified,grok_exporter
will listen on the network interface with the given address. If host is omitted,grok_exporter
will listen on all available network interfaces. Ifhost
is set to[::]
,grok_exporter
will listen on all IPV6 addresses.port
is the TCP port to be used. Default is9144
.path
is the path where the metrics are exposed. Default is/metrics
, i.e. by default metrics will be exported on http://localhost:9144/metrics.cert
is the path to the SSL certificate file for protocolhttps
. It is optional. If omitted, a hard-coded default certificate will be used.key
is the path to the SSL key file for protocolhttps
. It is optional. If omitted, a hard-coded default key will be used.
grok_exporter
uses the format from golang's time.ParseDuration() for configuring time intervals. Some examples are:
2h30m
: 2 hours and 30 minutes100ms
: 100 milliseconds1m30s
: 1 minute and 30 seconds5m
: 5 minutes