Grok filter plugin
editGrok filter plugin
edit- Plugin version: v4.2.0
- Released on: 2019-11-18
- Changelog
For other versions, see the Versioned plugin docs.
Installation
editFor plugins not bundled by default, it is easy to install by running bin/logstash-plugin install logstash-filter-grok
. See Working with plugins for more details.
Getting Help
editFor questions about the plugin, open a topic in the Discuss forums. For bugs or feature requests, open an issue in Github. For the list of Elastic supported plugins, please consult the Elastic Support Matrix.
Description
editParse arbitrary text and structure it.
Grok is a great way to parse unstructured log data into something structured and queryable.
This tool is perfect for syslog logs, apache and other webserver logs, mysql logs, and in general, any log format that is generally written for humans and not computer consumption.
Logstash ships with about 120 patterns by default. You can find them here:
https://github.com/logstash-plugins/logstash-patterns-core/tree/master/patterns. You can add
your own trivially. (See the patterns_dir
setting)
If you need help building patterns to match your logs, you will find the http://grokdebug.herokuapp.com and http://grokconstructor.appspot.com/ applications quite useful!
Grok or Dissect? Or both?
editThe dissect
filter plugin
is another way to extract unstructured event data into fields using delimiters.
Dissect differs from Grok in that it does not use regular expressions and is faster. Dissect works well when data is reliably repeated. Grok is a better choice when the structure of your text varies from line to line.
You can use both Dissect and Grok for a hybrid use case when a section of the line is reliably repeated, but the entire line is not. The Dissect filter can deconstruct the section of the line that is repeated. The Grok filter can process the remaining field values with more regex predictability.
Grok Basics
editGrok works by combining text patterns into something that matches your logs.
The syntax for a grok pattern is %{SYNTAX:SEMANTIC}
The SYNTAX
is the name of the pattern that will match your text. For
example, 3.44
will be matched by the NUMBER
pattern and 55.3.244.1
will
be matched by the IP
pattern. The syntax is how you match.
The SEMANTIC
is the identifier you give to the piece of text being matched.
For example, 3.44
could be the duration of an event, so you could call it
simply duration
. Further, a string 55.3.244.1
might identify the client
making a request.
For the above example, your grok filter would look something like this:
%{NUMBER:duration} %{IP:client}
Optionally you can add a data type conversion to your grok pattern. By default
all semantics are saved as strings. If you wish to convert a semantic’s data type,
for example change a string to an integer then suffix it with the target data type.
For example %{NUMBER:num:int}
which converts the num
semantic from a string to an
integer. Currently the only supported conversions are int
and float
.
Examples:With that idea of a syntax and semantic, we can pull out useful fields from a sample log like this fictional http request log:
55.3.244.1 GET /index.html 15824 0.043
The pattern for this could be:
%{IP:client} %{WORD:method} %{URIPATHPARAM:request} %{NUMBER:bytes} %{NUMBER:duration}
A more realistic example, let’s read these logs from a file:
input { file { path => "/var/log/http.log" } } filter { grok { match => { "message" => "%{IP:client} %{WORD:method} %{URIPATHPARAM:request} %{NUMBER:bytes} %{NUMBER:duration}" } } }
After the grok filter, the event will have a few extra fields in it:
-
client: 55.3.244.1
-
method: GET
-
request: /index.html
-
bytes: 15824
-
duration: 0.043
Regular Expressions
editGrok sits on top of regular expressions, so any regular expressions are valid in grok as well. The regular expression library is Oniguruma, and you can see the full supported regexp syntax on the Oniguruma site.
Custom Patterns
editSometimes logstash doesn’t have a pattern you need. For this, you have a few options.
First, you can use the Oniguruma syntax for named capture which will let you match a piece of text and save it as a field:
(?<field_name>the pattern here)
For example, postfix logs have a queue id
that is an 10 or 11-character
hexadecimal value. I can capture that easily like this:
(?<queue_id>[0-9A-F]{10,11})
Alternately, you can create a custom patterns file.
-
Create a directory called
patterns
with a file in it calledextra
(the file name doesn’t matter, but name it meaningfully for yourself) - In that file, write the pattern you need as the pattern name, a space, then the regexp for that pattern.
For example, doing the postfix queue id example as above:
# contents of ./patterns/postfix: POSTFIX_QUEUEID [0-9A-F]{10,11}
Then use the patterns_dir
setting in this plugin to tell logstash where
your custom patterns directory is. Here’s a full example with a sample log:
Jan 1 06:25:43 mailserver14 postfix/cleanup[21403]: BEF25A72965: message-id=<20130101142543.5828399CCAF@mailserver14.example.com>
filter { grok { patterns_dir => ["./patterns"] match => { "message" => "%{SYSLOGBASE} %{POSTFIX_QUEUEID:queue_id}: %{GREEDYDATA:syslog_message}" } } }
The above will match and result in the following fields:
-
timestamp: Jan 1 06:25:43
-
logsource: mailserver14
-
program: postfix/cleanup
-
pid: 21403
-
queue_id: BEF25A72965
-
syslog_message: message-id=<20130101142543.5828399CCAF@mailserver14.example.com>
The timestamp
, logsource
, program
, and pid
fields come from the
SYSLOGBASE
pattern which itself is defined by other patterns.
Another option is to define patterns inline in the filter using pattern_definitions
.
This is mostly for convenience and allows user to define a pattern which can be used just in that
filter. This newly defined patterns in pattern_definitions
will not be available outside of that particular grok
filter.
Grok Filter Configuration Options
editThis plugin supports the following configuration options plus the Common Options described later.
Setting | Input type | Required |
---|---|---|
No |
||
No |
||
No |
||
No |
||
No |
||
No |
||
No |
||
No |
||
No |
||
No |
||
No |
||
No |
Also see Common Options for a list of options supported by all filter plugins.
break_on_match
edit- Value type is boolean
-
Default value is
true
Break on first match. The first successful match by grok will result in the filter being finished. If you want grok to try all patterns (maybe you are parsing different things), then set this to false.
keep_empty_captures
edit- Value type is boolean
-
Default value is
false
If true
, keep empty captures as event fields.
match
edit- Value type is hash
-
Default value is
{}
A hash that defines the mapping of where to look, and with which patterns.
For example, the following will match an existing value in the message
field for the given pattern, and if a match is found will add the field duration
to the event with the captured value:
filter { grok { match => { "message" => "Duration: %{NUMBER:duration}" } } }
If you need to match multiple patterns against a single field, the value can be an array of patterns:
filter { grok { match => { "message" => [ "Duration: %{NUMBER:duration}", "Speed: %{NUMBER:speed}" ] } } }
named_captures_only
edit- Value type is boolean
-
Default value is
true
If true
, only store named captures from grok.
overwrite
edit- Value type is array
-
Default value is
[]
The fields to overwrite.
This allows you to overwrite a value in a field that already exists.
For example, if you have a syslog line in the message
field, you can
overwrite the message
field with part of the match like so:
filter { grok { match => { "message" => "%{SYSLOGBASE} %{DATA:message}" } overwrite => [ "message" ] } }
In this case, a line like May 29 16:37:11 sadness logger: hello world
will be parsed and hello world
will overwrite the original message.
pattern_definitions
edit- Value type is hash
-
Default value is
{}
A hash of pattern-name and pattern tuples defining custom patterns to be used by the current filter. Patterns matching existing names will override the pre-existing definition. Think of this as inline patterns available just for this definition of grok
patterns_dir
edit- Value type is array
-
Default value is
[]
Logstash ships by default with a bunch of patterns, so you don’t necessarily need to define this yourself unless you are adding additional patterns. You can point to multiple pattern directories using this setting. Note that Grok will read all files in the directory matching the patterns_files_glob and assume it’s a pattern file (including any tilde backup files).
patterns_dir => ["/opt/logstash/patterns", "/opt/logstash/extra_patterns"]
Pattern files are plain text with format:
NAME PATTERN
For example:
NUMBER \d+
The patterns are loaded when the pipeline is created.
patterns_files_glob
edit- Value type is string
-
Default value is
"*"
Glob pattern, used to select the pattern files in the directories specified by patterns_dir
tag_on_failure
edit- Value type is array
-
Default value is
["_grokparsefailure"]
Append values to the tags
field when there has been no
successful match
tag_on_timeout
edit- Value type is string
-
Default value is
"_groktimeout"
Tag to apply if a grok regexp times out.
timeout_millis
edit- Value type is number
-
Default value is
30000
Attempt to terminate regexps after this amount of time. This applies per pattern if multiple patterns are applied This will never timeout early, but may take a little longer to timeout. Actual timeout is approximate based on a 250ms quantization. Set to 0 to disable timeouts
timeout_scope
edit- Value type is string
-
Default value is
"pattern"
-
Supported values are
"pattern"
and"event"
When multiple patterns are provided to match
,
the timeout has historically applied to each pattern, incurring overhead
for each and every pattern that is attempted; when the grok filter is
configured with timeout_scope => event
, the plugin instead enforces
a single timeout across all attempted matches on the event, so it can
achieve similar safeguard against runaway matchers with significantly
less overhead.
It’s usually better to scope the timeout for the whole event.
Common Options
editThe following configuration options are supported by all filter plugins:
Setting | Input type | Required |
---|---|---|
No |
||
No |
||
No |
||
No |
||
No |
||
No |
||
No |
add_field
edit- Value type is hash
-
Default value is
{}
If this filter is successful, add any arbitrary fields to this event.
Field names can be dynamic and include parts of the event using the %{field}
.
Example:
filter { grok { add_field => { "foo_%{somefield}" => "Hello world, from %{host}" } } }
# You can also add multiple fields at once: filter { grok { add_field => { "foo_%{somefield}" => "Hello world, from %{host}" "new_field" => "new_static_value" } } }
If the event has field "somefield" == "hello"
this filter, on success,
would add field foo_hello
if it is present, with the
value above and the %{host}
piece replaced with that value from the
event. The second example would also add a hardcoded field.
add_tag
edit- Value type is array
-
Default value is
[]
If this filter is successful, add arbitrary tags to the event.
Tags can be dynamic and include parts of the event using the %{field}
syntax.
Example:
filter { grok { add_tag => [ "foo_%{somefield}" ] } }
# You can also add multiple tags at once: filter { grok { add_tag => [ "foo_%{somefield}", "taggedy_tag"] } }
If the event has field "somefield" == "hello"
this filter, on success,
would add a tag foo_hello
(and the second example would of course add a taggedy_tag
tag).
enable_metric
edit- Value type is boolean
-
Default value is
true
Disable or enable metric logging for this specific plugin instance. By default we record all the metrics we can, but you can disable metrics collection for a specific plugin.
id
edit- Value type is string
- There is no default value for this setting.
Add a unique ID
to the plugin configuration. If no ID is specified, Logstash will generate one.
It is strongly recommended to set this ID in your configuration. This is particularly useful
when you have two or more plugins of the same type, for example, if you have 2 grok filters.
Adding a named ID in this case will help in monitoring Logstash when using the monitoring APIs.
filter { grok { id => "ABC" } }
periodic_flush
edit- Value type is boolean
-
Default value is
false
Call the filter flush method at regular interval. Optional.
remove_field
edit- Value type is array
-
Default value is
[]
If this filter is successful, remove arbitrary fields from this event. Fields names can be dynamic and include parts of the event using the %{field} Example:
filter { grok { remove_field => [ "foo_%{somefield}" ] } }
# You can also remove multiple fields at once: filter { grok { remove_field => [ "foo_%{somefield}", "my_extraneous_field" ] } }
If the event has field "somefield" == "hello"
this filter, on success,
would remove the field with name foo_hello
if it is present. The second
example would remove an additional, non-dynamic field.
remove_tag
edit- Value type is array
-
Default value is
[]
If this filter is successful, remove arbitrary tags from the event.
Tags can be dynamic and include parts of the event using the %{field}
syntax.
Example:
filter { grok { remove_tag => [ "foo_%{somefield}" ] } }
# You can also remove multiple tags at once: filter { grok { remove_tag => [ "foo_%{somefield}", "sad_unwanted_tag"] } }
If the event has field "somefield" == "hello"
this filter, on success,
would remove the tag foo_hello
if it is present. The second example
would remove a sad, unwanted tag as well.