(cherry picked from commit 0aa19a2837
)
81 KiB
sort | weight | title | menu | aliases | |||||||
---|---|---|---|---|---|---|---|---|---|---|---|
5 | 5 | LogsQL |
|
|
LogsQL
LogsQL is a simple yet powerful query language for VictoriaLogs. It provides the following features:
- Full-text search across log fields. See word filter, phrase filter and prefix filter.
- Ability to combine filters into arbitrary complex logical filters.
- Ability to extract structured fields from unstructured logs at query time. See these docs.
- Ability to calculate various stats over the selected log entries. See these docs.
LogsQL tutorial
If you aren't familiar with VictoriaLogs, then start with key concepts docs.
Then follow these docs:
The simplest LogsQL query is just a word, which must be found in the log message.
For example, the following query finds all the logs with error
word:
error
If the queried word clashes with LogsQL keywords, then just wrap it into quotes.
For example, the following query finds all the log messages with and
word:
"and"
It is OK to wrap any word into quotes. For example:
"error"
Moreover, it is possible to wrap phrases containing multiple words in quotes. For example, the following query
finds log messages with the error: cannot find file
phrase:
"error: cannot find file"
Queries above match logs with any timestamp, e.g. they may return logs from the previous year alongside recently ingested logs.
Usually logs from the previous year aren't so interesting comparing to the recently ingested logs.
So it is recommended adding time filter to the query.
For example, the following query returns logs with the error
word,
which were ingested into VictoriaLogs during the last 5 minutes:
error AND _time:5m
This query consists of two filters joined with AND
operator:
- The filter on the
error
word. - The filter on the
_time
field.
The AND
operator means that the log entry must match both filters in order to be selected.
Typical LogsQL query constists of multiple filters joined with AND
operator. It may be tiresome typing and then reading all these AND
words.
So LogsQL allows omitting AND
words. For example, the following query is equivalent to the query above:
error _time:5m
The query returns all the log fields by default. See how to query specific fields.
Suppose the query above selects too many rows because some buggy app pushes invalid error logs to VictoriaLogs. Suppose the app adds buggy_app
word to every log line.
Then the following query removes all the logs from the buggy app, allowing us paying attention to the real errors:
_time:5m error NOT buggy_app
This query uses NOT
operator for removing log lines from the buggy app. The NOT
operator is used frequently, so it can be substituted with !
char.
So the following query is equivalent to the previous one:
_time:5m error !buggy_app
Suppose another buggy app starts pushing invalid error logs to VictoriaLogs - it adds foobar
word to every emitted log line.
No problems - just add !foobar
to the query in order to remove these buggy logs:
_time:5m error !buggy_app !foobar
This query can be rewritten to more clear query with the OR
operator inside parentheses:
_time:5m error !(buggy_app OR foobar)
Note that the parentheses are required here, since otherwise the query won't return the expected results.
The query error !buggy_app OR foobar
is interpreted as (error AND NOT buggy_app) OR foobar
. This query may return error logs
from the buggy app if they contain foobar
word. This query also continues returning all the error logs from the second buggy app.
This is because of different priorities for NOT
, AND
and OR
operators.
Read these docs for more details. There is no need in remembering all these priority rules -
just wrap the needed query parts into explicit parentheses if you aren't sure in priority rules.
As an additional bonus, explicit parentheses make queries easier to read and maintain.
Queries above assume that the error
word is stored in the log message.
This word can be stored in other field such as log.level
.
How to select error logs in this case? Just add the log.level:
prefix in front of the error
word:
_time:5m log.level:error !(buggy_app OR foobar)
The field name can be wrapped into quotes if it contains special chars or keywords, which may clash with LogsQL syntax. Any word also can be wrapped into quotes. So the following query is equivalent to the previous one:
"_time":"5m" "log.level":"error" !("buggy_app" OR "foobar")
What if the application identifier - such as buggy_app
and foobar
- is stored in the app
field? Correct - just add app:
prefix in front of buggy_app
and foobar
:
_time:5m log.level:error !(app:buggy_app OR app:foobar)
The query can be simplified by moving the app:
prefix outside the parentheses:
_time:5m log.level:error !app:(buggy_app OR foobar)
The app
field uniquely identifies the application instance if a single instance runs per each unique app
.
In this case it is recommended associating the app
field with log stream fields
during data ingestion. This usually improves both compression rate
and query performance when querying the needed streams via _stream
filter.
If the app
field is associated with the log stream, then the query above can be rewritten to more performant one:
_time:5m log.level:error _stream:{app!~"buggy_app|foobar"}
This query completely skips scanning for logs from buggy_app
and foobar
apps, thus significantly reducing disk read IO and CPU time
needed for performing the query.
Finally, it is recommended reading performance tips.
Now you are familiar with LogsQL basics. Read query syntax if you want to continue learning LogsQL.
Key concepts
Word
LogsQL splits all the log fields into words
delimited by non-word chars such as whitespace, parens, punctuation chars, etc. For example, the foo: (bar,"тест")!
string
is split into foo
, bar
and тест
words. Words can contain arbitrary utf-8 chars.
These words are taken into account by full-text search filters such as
word filter, phrase filter and prefix filter.
Query syntax
LogsQL query must contain filters for selecting the matching logs. At least a single filter is required.
For example, the following query selects all the logs for the last 5 minutes by using _time
filter:
_time:5m
Additionally to filters, LogQL query may contain arbitrary mix of optional actions for processing the selected logs. These actions are delimited by |
and are known as pipes
.
For example, the following query uses stats
pipe for returning the number of log messages
with the error
word for the last 5 minutes:
_time:5m error | stats count() errors
See the list of supported pipes in LogsQL.
Filters
LogsQL supports various filters for searching for log messages (see below). They can be combined into arbitrary complex queries via logical filters.
Filters are applied to _msg
field by default.
If the filter must be applied to other log field,
then its' name followed by the colon must be put in front of the filter. For example, if error
word filter must be applied
to the log.level
field, then use log.level:error
query.
Field names and filter args can be put into quotes if they contain special chars, which may clash with LogsQL syntax. LogsQL supports quoting via double quotes "
,
single quotes '
and backticks:
"some 'field':123":i('some("value")') AND `other"value'`
If doubt, it is recommended quoting field names and filter args.
The list of LogsQL filters:
- Time filter - matches logs with
_time
field in the given time range - Stream filter - matches logs, which belong to the given streams
- Word filter - matches logs with the given word
- Phrase filter - matches logs with the given phrase
- Prefix filter - matches logs with the given word prefix or phrase prefix
- Empty value filter - matches logs without the given log field
- Any value filter - matches logs with the given non-empty log field
- Exact filter - matches logs with the exact value
- Exact prefix filter - matches logs starting with the given prefix
- Multi-exact filter - matches logs with one of the specified exact values
- Case-insensitive filter - matches logs with the given case-insensitive word, phrase or prefix
- Sequence filter - matches logs with the given sequence of words or phrases
- Regexp filter - matches logs for the given regexp
- Range filter - matches logs with numeric field values in the given range
- IPv4 range filter - matches logs with ip address field values in the given range
- String range filter - matches logs with field values in the given string range
- Length range filter - matches logs with field values of the given length range
- Logical filter - allows combining other filters
Time filter
VictoriaLogs scans all the logs per each query if it doesn't contain the filter on _time
field.
It uses various optimizations in order to accelerate full scan queries without the _time
filter,
but such queries can be slow if the storage contains large number of logs over long time range. The easiest way to optimize queries
is to narrow down the search with the filter on _time
field.
For example, the following query returns log messages
ingested into VictoriaLogs during the last hour, which contain the error
word:
_time:1h AND error
The following formats are supported for _time
filter:
_time:duration
matches logs with timestamps on the time range(now-duration, now]
. Examples:_time:5m
- returns logs for the last 5 minutes_time:2.5d15m42.345s
- returns logs for the last 2.5 days, 15 minutes and 42.345 seconds_time:1y
- returns logs for the last year
_time:YYYY-MM-DD
- matches all the logs for the particular day by UTC. For example,_time:2023-04-25
matches logs on April 25, 2023 by UTC._time:YYYY-MM
- matches all the logs for the particular month by UTC. For example,_time:2023-02
matches logs on February, 2023 by UTC._time:YYYY
- matches all the logs for the particular year by UTC. For example,_time:2023
matches logs on 2023 by UTC._time:YYYY-MM-DDTHH
- matches all the logs for the particular hour by UTC. For example,_time:2023-04-25T22
matches logs on April 25, 2023 at 22 hour by UTC._time:YYYY-MM-DDTHH:MM
- matches all the logs for the particular minute by UTC. For example,_time:2023-04-25T22:45
matches logs on April 25, 2023 at 22:45 by UTC._time:YYYY-MM-DDTHH:MM:SS
- matches all the logs for the particular second by UTC. For example,_time:2023-04-25T22:45:59
matches logs on April 25, 2023 at 22:45:59 by UTC._time:[min_time, max_time]
- matches logs on the time range[min_time, max_time]
, including bothmin_time
andmax_time
. Themin_time
andmax_time
can contain any format specified here. For example,_time:[2023-04-01, 2023-04-30]
matches logs for the whole April, 2023 by UTC, e.g. it is equivalent to_time:2023-04
._time:[min_time, max_time)
- matches logs on the time range[min_time, max_time)
, not includingmax_time
. Themin_time
andmax_time
can contain any format specified here. For example,_time:[2023-02-01, 2023-03-01)
matches logs for the whole February, 2023 by UTC, e.g. it is equivalent to_time:2023-02
.
It is possible to specify time zone offset for all the absolute time formats by appending +hh:mm
or -hh:mm
suffix.
For example, _time:2023-04-25+05:30
matches all the logs on April 25, 2023 by India time zone,
while _time:2023-02-07:00
matches all the logs on February, 2023 by California time zone.
It is possible to specify generic offset for the selected time range by appending offset
after the _time
filter. Examples:
_time:5m offset 1h
matches logs on the time range(now-1h5m, now-1h]
._time:2023-07 offset 5h30m
matches logs on July, 2023 by UTC with offset 5h30m._time:[2023-02-01, 2023-03-01) offset 1w
matches logs the week before the time range[2023-02-01, 2023-03-01)
by UTC.
Performance tips:
-
It is recommended specifying the smallest possible time range during the search, since it reduces the amounts of log entries, which need to be scanned during the query. For example,
_time:1h
is usually faster than_time:5h
. -
While LogsQL supports arbitrary number of
_time:...
filters at any level of logical filters, it is recommended specifying a single_time
filter at the top level of the query.
See also:
Stream filter
VictoriaLogs provides an optimized way to select log entries, which belong to particular log streams.
This can be done via _stream:{...}
filter. The {...}
may contain arbitrary
Prometheus-compatible label selector
over fields associated with log streams.
For example, the following query selects log entries
with app
field equal to nginx
:
_stream:{app="nginx"}
This query is equivalent to the following exact() query, but the upper query usually works much faster:
app:exact("nginx")
Performance tips:
-
It is recommended using the most specific
_stream:{...}
filter matching the smallest number of log streams, which needs to be scanned by the rest of filters in the query. -
While LogsQL supports arbitrary number of
_stream:{...}
filters at any level of logical filters, it is recommended specifying a single_stream:...
filter at the top level of the query.
See also:
Word filter
The simplest LogsQL query consists of a single word to search in log messages. For example, the following query matches
log messages with error
word inside them:
error
This query matches the following log messages:
error
an error happened
error: cannot open file
This query doesn't match the following log messages:
ERROR
, since the filter is case-sensitive by default. Usei(error)
for this case. See these docs for details.multiple errors occurred
, since theerrors
word doesn't matcherror
word. Useerror*
for this case. See these docs for details.
By default the given word is searched in the _msg
field.
Specify the field name in front of the word and put a colon after it
if it must be searched in the given field. For example, the following query returns log entries containing the error
word in the log.level
field:
log.level:error
Both the field name and the word in the query can contain arbitrary utf-8-encoded chars. For example:
поле:значение
Both the field name and the word in the query can be put inside quotes if they contain special chars, which may clash with the query syntax.
For example, the following query searches for the ip 1.2.3.45
in the field ip:remote
:
"ip:remote":"1.2.3.45"
See also:
Phrase filter
Is you need to search for log messages with the specific phrase inside them, then just wrap the phrase in quotes.
The phrase can contain any chars, including whitespace, punctuation, parens, etc. They are taken into account during the search.
For example, the following query matches log messages
with ssh: login fail
phrase inside them:
"ssh: login fail"
This query matches the following log messages:
ERROR: ssh: login fail for user "foobar"
ssh: login fail!
This query doesn't match the following log messages:
ssh login fail
, since the message misses:
char just after thessh
. Useseq("ssh", "login", "fail")
query if log messages with the sequence of these words must be found. See these docs for details.login fail: ssh error
, since the message doesn't contain the full phrase requested in the query. If you need matching a message with all the words listed in the query, then usessh AND login AND fail
query. See these docs for details.ssh: login failed
, since the message ends withfailed
word instead offail
word. Use"ssh: login fail"*
query for this case. See these docs for details.SSH: login fail
, since theSSH
word is in capital letters. Usei("ssh: login fail")
for case-insensitive search. See these docs for details.
By default the given phrase is searched in the _msg
field.
Specify the field name in front of the phrase and put a colon after it
if it must be searched in the given field. For example, the following query returns log entries containing the cannot open file
phrase in the event.original
field:
event.original:"cannot open file"
Both the field name and the phrase can contain arbitrary utf-8-encoded chars. For example:
сообщение:"невозможно открыть файл"
The field name can be put inside quotes if it contains special chars, which may clash with the query syntax.
For example, the following query searches for the cannot open file
phrase in the field some:message
:
"some:message":"cannot open file"
See also:
Prefix filter
If you need to search for log messages with words / phrases containing some prefix, then just add *
char to the end of the word / phrase in the query.
For example, the following query returns log messages, which contain words with err
prefix:
err*
This query matches the following log messages:
err: foobar
cannot open file: error occurred
This query doesn't match the following log messages:
Error: foobar
, since theError
word starts with capital letter. Usei(err*)
for this case. See these docs for details.fooerror
, since thefooerror
word doesn't start witherr
. Usere("err")
for this case. See these docs for details.
Prefix filter can be applied to phrases. For example, the following query matches
log messages containing phrases with unexpected fail
prefix:
"unexpected fail"*
This query matches the following log messages:
unexpected fail: IO error
error:unexpected failure
This query doesn't match the following log messages:
unexpectedly failed
, since theunexpectedly
doesn't matchunexpected
word. Useunexpected* AND fail*
for this case. See these docs for details.failed to open file: unexpected EOF
, sincefailed
word occurs before theunexpected
word. Useunexpected AND fail*
for this case. See these docs for details.
By default the prefix filter is applied to the _msg
field.
Specify the needed field name in front of the prefix filter
in order to apply it to the given field. For example, the following query matches log.level
field containing any word with the err
prefix:
log.level:err*
If the field name contains special chars, which may clash with the query syntax, then it may be put into quotes in the query.
For example, the following query matches log:level
field containing any word with the err
prefix.
"log:level":err*
Performance tips:
- Prefer using word filters and phrase filters combined via logical filter instead of prefix filter.
- Prefer moving word filters and phrase filters in front of prefix filter when using logical filter.
- See other performance tips.
See also:
Empty value filter
Sometimes it is needed to find log entries without the given log field.
This can be performed with log_field:""
syntax. For example, the following query matches log entries without host.hostname
field:
host.hostname:""
See also:
Any value filter
Sometimes it is needed to find log entries containing any non-empty value for the given log field.
This can be performed with log_field:*
syntax. For example, the following query matches log entries with non-empty host.hostname
field:
host.hostname:*
See also:
Exact filter
The word filter and phrase filter return log messages,
which contain the given word or phrase inside them. The message may contain additional text other than the requested word or phrase. If you need searching for log messages
or log fields with the exact value, then use the exact(...)
filter.
For example, the following query returns log messages wih the exact value fatal error: cannot find /foo/bar
:
exact("fatal error: cannot find /foo/bar")
The query doesn't match the following log messages:
-
fatal error: cannot find /foo/bar/baz
orsome-text fatal error: cannot find /foo/bar
, since they contain an additional text other than the specified in theexact()
filter. Use"fatal error: cannot find /foo/bar"
query in this case. See these docs for details. -
FATAL ERROR: cannot find /foo/bar
, since theexact()
filter is case-sensitive. Usei("fatal error: cannot find /foo/bar")
in this case. See these docs for details.
By default the exact()
filter is applied to the _msg
field.
Specify the field name in front of the exact()
filter and put a colon after it
if it must be searched in the given field. For example, the following query returns log entries with the exact error
value at log.level
field:
log.level:exact("error")
Both the field name and the phrase can contain arbitrary utf-8-encoded chars. For example:
log.уровень:exact("ошибка")
The field name can be put inside quotes if it contains special chars, which may clash with the query syntax.
For example, the following query matches the error
value in the field log:level
:
"log:level":exact("error")
See also:
Exact prefix filter
Sometimes it is needed to find log messages starting with some prefix. This can be done with the exact("prefix"*)
filter.
For example, the following query matches log messages, which start from Processing request
prefix:
exact("Processing request"*)
This filter matches the following log messages:
Processing request foobar
Processing requests from ...
It doesn't match the following log messages:
processing request foobar
, since the log message starts with lowercasep
. Useexact("processing request"*) OR exact("Processing request"*)
query in this case. See these docs for details.start: Processing request
, since the log message doesn't start withProcessing request
. Use"Processing request"
query in this case. See these docs for details.
By default the exact()
filter is applied to the _msg
field.
Specify the field name in front of the exact()
filter and put a colon after it
if it must be searched in the given field. For example, the following query returns log entries with log.level
field, which starts with err
prefix:
log.level:exact("err"*)
Both the field name and the phrase can contain arbitrary utf-8-encoded chars. For example:
log.уровень:exact("ошиб"*)
The field name can be put inside quotes if it contains special chars, which may clash with the query syntax.
For example, the following query matches log:level
values starting with err
prefix:
"log:level":exact("err"*)
See also:
Multi-exact filter
Sometimes it is needed to locate log messages with a field containing one of the given values. This can be done with multiple exact filters
combined into a single logical filter. For example, the following query matches log messages with log.level
field
containing either error
or fatal
exact values:
log.level:(exact("error") OR exact("fatal"))
While this solution works OK, LogsQL provides simpler and faster solution for this case - the in()
filter.
log.level:in("error", "fatal")
It works very fast for long lists passed to in()
.
The future VictoriaLogs versions will allow passing arbitrary queries into in()
filter.
For example, the following query selects all the logs for the last hour for users, who visited pages with admin
word in the path
during the last day:
_time:1h AND user_id:in(_time:1d AND path:admin | fields user_id)
See the Roadmap for details.
See also:
Case-insensitive filter
Case-insensitive filter can be applied to any word, phrase or prefix by wrapping the corresponding word filter,
phrase filter or prefix filter into i()
. For example, the following query returns
log messages with error
word in any case:
i(error)
The query matches the following log messages:
unknown error happened
ERROR: cannot read file
Error: unknown arg
An ErRoR occured
The query doesn't match the following log messages:
FooError
, since theFooError
word has superflouos prefixFoo
. Usere("(?i)error")
for this case. See these docs for details.too many Errors
, since theErrors
word has superflouos suffixs
. Usei(error*)
for this case.
By default the i()
filter is applied to the _msg
field.
Specify the needed field name in front of the filter
in order to apply it to the given field. For example, the following query matches log.level
field containing error
word in any case:
log.level:i(error)
If the field name contains special chars, which may clash with the query syntax, then it may be put into quotes in the query.
For example, the following query matches log:level
field containing error
word in any case.
"log:level":i("error")
Performance tips:
- Prefer using case-sensitive filter over case-insensitive filter.
- Prefer moving word filter, phrase filter and prefix filter in front of case-sensitive filter when using logical filter.
- See other performance tips.
See also:
Sequence filter
Sometimes it is needed to find log messages
with words or phrases in a particular order. For example, if log messages with error
word followed by open file
phrase
must be found, then the following LogsQL query can be used:
seq("error", "open file")
This query matches some error: cannot open file /foo/bar
message, since the open file
phrase goes after the error
word.
The query doesn't match the cannot open file: error
message, since the open file
phrase is located in front of the error
word.
If you need matching log messages with both error
word and open file
phrase, then use error AND "open file"
query. See these docs
for details.
By default the seq()
filter is applied to the _msg
field.
Specify the needed field name in front of the filter
in order to apply it to the given field. For example, the following query matches event.original
field containing (error, "open file")
sequence:
event.original:seq(error, "open file")
If the field name contains special chars, which may clash with the query syntax, then it may be put into quotes in the query.
For example, the following query matches event:original
field containing (error, "open file")
sequence:
"event:original":seq(error, "open file")
See also:
Regexp filter
LogsQL supports regular expression filter with re2 syntax via re(...)
expression.
For example, the following query returns all the log messages containing err
or warn
susbstrings:
re("err|warn")
The query matches the following log messages, which contain either err
or warn
substrings:
error: cannot read data
2 warnings have been raised
data trasferring finished
The query doesn't match the following log messages:
ERROR: cannot open file
, since theERROR
word is in uppercase letters. Usere("(?i)(err|warn)")
query for case-insensitive regexp search. See these docs for details. See also case-insenstive filter docs.it is warmer than usual
, since it doesn't contain neithererr
norwarn
substrings.
By default the re()
filter is applied to the _msg
field.
Specify the needed field name in front of the filter
in order to apply it to the given field. For example, the following query matches event.original
field containing either err
or warn
substrings:
event.original:re("err|warn")
If the field name contains special chars, which may clash with the query syntax, then it may be put into quotes in the query.
For example, the following query matches event:original
field containing either err
or warn
substrings:
"event:original":re("err|warn")
Performance tips:
- Prefer combining simple word filter with logical filter instead of using regexp filter.
For example, the
re("error|warning")
query can be substituted witherror OR warning
query, which usually works much faster. Note that there("error|warning")
matcheserrors
as well aswarnings
words, whileerror OR warning
matches only the specified words. See also multi-exact filter. - Prefer moving the regexp filter to the end of the logical filter, so lightweighter filters are executed first.
- Prefer using
exact("some prefix"*)
instead ofre("^some prefix")
, since the exact() works much faster than there()
filter. - See other performance tips.
See also:
Range filter
If you need to filter log message by some field containing only numeric values, then the range()
filter can be used.
For example, if the request.duration
field contains the request duration in seconds, then the following LogsQL query can be used
for searching for log entries with request durations exceeding 4.2 seconds:
request.duration:range(4.2, Inf)
The lower and the upper bounds of the range are excluded by default. If they must be included, then substitute the corresponding parentheses with square brackets. For example:
range[1, 10)
includes1
in the matching rangerange(1, 10]
includes10
in the matching rangerange[1, 10]
includes1
and10
in the matching range
The range boundaries can be expressed in the following forms:
- Hexadecimal form. For example,
range(0xff, 0xABCD)
. - Binary form. Form example,
range(0b100110, 0b11111101)
- Integer form with
_
delimiters for better readability. For example,range(1_000, 2_345_678)
.
Note that the range()
filter doesn't match log fields
with non-numeric values alongside numeric values. For example, range(1, 10)
doesn't match the request took 4.2 seconds
log message, since the 4.2
number is surrounded by other text.
Extract the numeric value from the message with parse(_msg, "the request took <request_duration> seconds")
transformation
and then apply the range()
post-filter to the extracted request_duration
field.
Performance tips:
- It is better to query pure numeric field instead of extracting numeric field from text field via transformations at query time.
- See other performance tips.
See also:
IPv4 range filter
If you need to filter log message by some field containing only IPv4 addresses such as 1.2.3.4
,
then the ipv4_range()
filter can be used. For example, the following query matches log entries with user.ip
address in the range [127.0.0.0 - 127.255.255.255]
:
user.ip:ipv4_range(127.0.0.0, 127.255.255.255)
The ipv4_range()
accepts also IPv4 subnetworks in CIDR notation.
For example, the following query is equivalent to the query above:
user.ip:ipv4_range("127.0.0.0/8")
If you need matching a single IPv4 address, then just put it inside ipv4_range()
. For example, the following query matches 1.2.3.4
IP
at user.ip
field:
user.ip:ipv4_range("1.2.3.4")
Note that the ipv4_range()
doesn't match a string with IPv4 address if this string contains other text. For example, ipv4_range("127.0.0.0/24")
doesn't match request from 127.0.0.1: done
log message,
since the 127.0.0.1
ip is surrounded by other text. Extract the IP from the message with parse(_msg, "request from <ip>: done")
transformation
and then apply the ipv4_range()
post-filter to the extracted ip
field.
Hints:
- If you need searching for log messages containing the given
X.Y.Z.Q
IPv4 address, then"X.Y.Z.Q"
query can be used. See these docs for details. - If you need searching for log messages containing
at least a single IPv4 address out of the given list, then
"ip1" OR "ip2" ... OR "ipN"
query can be used. See these docs for details. - If you need finding log entries with
ip
field in multiple ranges, then useip:(ipv4_range(range1) OR ipv4_range(range2) ... OR ipv4_range(rangeN))
query. See these docs for details.
Performance tips:
- It is better querying pure IPv4 field instead of extracting IPv4 from text field via transformations at query time.
- See other performance tips.
See also:
String range filter
If you need to filter log message by some field with string values in some range, then string_range()
filter can be used.
For example, the following LogsQL query matches log entries with user.name
field starting from A
and B
chars:
user.name:string_range(A, C)
The string_range()
includes the lower bound, while excluding the upper bound. This simplifies querying distinct sets of logs.
For example, the user.name:string_range(C, E)
would match user.name
fields, which start from C
and D
chars.
See also:
Length range filter
If you need to filter log message by its length, then len_range()
filter can be used.
For example, the following LogsQL query matches log messages
with lengths in the range [5, 10]
chars:
len_range(5, 10)
This query matches the following log messages, since their length is in the requested range:
foobar
foo bar
This query doesn't match the following log messages:
foo
, since it is too shortfoo bar baz abc
, sinc it is too long
It is possible to use inf
as the upper bound. For example, the following query matches log messages
with the length bigger or equal to 5 chars:
len_range(5, inf)
The range boundaries can be expressed in the following forms:
- Hexadecimal form. For example,
len_range(0xff, 0xABCD)
. - Binary form. Form example,
len_range(0b100110, 0b11111101)
- Integer form with
_
delimiters for better readability. For example,len_range(1_000, 2_345_678)
.
By default the len_range()
is applied to the _msg
field.
Put the field name in front of the len_range()
in order to apply
the filter to the needed field. For example, the following query matches log entries with the foo
field length in the range [10, 20]
chars:
foo:len_range(10, 20)
See also:
Logical filter
Simpler LogsQL filters can be combined into more complex filters with the following logical operations:
-
q1 AND q2
- matches common log entries returned by bothq1
andq2
. Arbitrary number of filters can be combined withAND
operation. For example,error AND file AND app
matches log messages, which simultaneously containerror
,file
andapp
words. TheAND
operation is frequently used in LogsQL queries, so it is allowed to skip theAND
word. For example,error file app
is equivalent toerror AND file AND app
. -
q1 OR q2
- merges log entries returned by bothq1
andq2
. Aribtrary number of filters can be combined withOR
operation. For example,error OR warning OR info
matches log messages, which contain at least one oferror
,warning
orinfo
words. -
NOT q
- returns all the log entries except of those which matchq
. For example,NOT info
returns all the log messages, which do not containinfo
word. TheNOT
operation is frequently used in LogsQL queries, so it is allowed substitutingNOT
with!
in queries. For example,!info
is equivalent toNOT info
.
The NOT
operation has the highest priority, AND
has the middle priority and OR
has the lowest priority.
The priority order can be changed with parentheses. For example, NOT info OR debug
is interpreted as (NOT info) OR debug
,
so it matches log messages,
which do not contain info
word, while it also matches messages with debug
word (which may contain the info
word).
This is not what most users expect. In this case the query can be rewritten to NOT (info OR debug)
,
which correctly returns log messages without info
and debug
words.
LogsQL supports arbitrary complex logical queries with arbitrary mix of AND
, OR
and NOT
operations and parentheses.
By default logical filters apply to the _msg
field
unless the inner filters explicitly specify the needed log field via field_name:filter
syntax.
For example, (error OR warn) AND host.hostname:host123
is interpreted as (_msg:error OR _msg:warn) AND host.hostname:host123
.
It is possible to specify a single log field for multiple filters with the following syntax:
field_name:(q1 OR q2 OR ... qN)
For example, log.level:error OR log.level:warning OR log.level:info
can be substituted with the shorter query: log.level:(error OR warning OR info)
.
Performance tips:
-
VictoriaLogs executes logical operations from the left to the right, so it is recommended moving the most specific and the fastest filters (such as word filter and phrase filter) to the left, while moving less specific and the slowest filters (such as regexp filter and case-insensitive filter) to the right. For example, if you need to find log messages with the
error
word, which match some/foo/(bar|baz)
regexp, it is better from performance PoV to use the queryerror re("/foo/(bar|baz)")
instead ofre("/foo/(bar|baz)") error
.The most specific filter means that it matches the lowest number of log entries comparing to other filters.
Pipes
Additionally to filters, LogsQL query may contain arbitrary mix of '|'-delimited actions known as pipes
.
For example, the following query uses stats
, sort
and limit
pipes
for returning top 10 log streams
with the biggest number of logs during the last 5 minutes:
_time:5m | stats by (_stream) count() per_stream_logs | sort by (per_stream_logs desc) | limit 10
LogsQL supports the following pipes:
copy
copies log fields.delete
deletes log fields.fields
selects the given set of log fields.limit
limits the number selected logs.offset
skips the given number of selected logs.rename
renames log fields.sort
sorts logs by the given fields.stats
calculates various stats over the selected logs.uniq
returns unique log entires.
copy pipe
If some log fields must be copied, then | copy src1 as dst1, ..., srcN as dstN
pipe can be used.
For example, the following query copies host
field to server
for logs over the last 5 minutes, so the output contains both host
and server
fields:
_time:5m | copy host as server
Multiple fields can be copied with a single | copy ...
pipe. For example, the following query copies
_time
field to timestamp
, while _msg
field
is copied to message
:
_time:5m | copy _time as timestmap, _msg as message
The as
keyword is optional.
cp
keyword can be used instead of copy
for convenience. For example, _time:5m | cp foo bar
is equivalent to _time:5m | copy foo as bar
.
See also:
delete pipe
If some log fields must be deleted, then | delete field1, ..., fieldN
pipe can be used.
For example, the following query deletes host
and app
fields from the logs over the last 5 minutes:
_time:5m | delete host, app
del
and rm
keywords can be used instead of delete
for convenience. For example, _time:5m | del host
is equivalent to _time:5m | rm host
and _time:5m | delete host
.
See also:
fields pipe
By default all the log fields are returned in the response.
It is possible to select the given set of log fields with | fields field1, ..., fieldN
pipe. For example, the following query selects only host
and _msg
fields from logs for the last 5 minutes:
_time:5m | fields host, _msg
See also:
limit pipe
If only a subset of selected logs must be processed, then | limit N
pipe can be used, where N
can contain any supported integer numeric value.
For example, the following query returns up to 100 logs over the last 5 minutes:
_time:5m | limit 100
head
keyword can be used instead of limit
for convenience. For example, _time:5m | head 100
is equivalent to _time:5m | limit 100
.
By default rows are selected in arbitrary order because of performance reasons, so the query above can return different sets of logs every time it is executed.
sort
pipe can be used for making sure the logs are in the same order before applying limit ...
to them.
See also:
offset pipe
If some selected logs must be skipped after sort
, then | offset N
pipe can be used, where N
can contain any supported integer numeric value.
For example, the following query skips the first 100 logs over the last 5 minutes after soring them by _time
:
_time:5m | sort by (_time) | offset 100
skip
keyword can be used instead of offset
keyword for convenience. For example, _time:5m | skip 10
is equivalent to _time:5m | offset 10
.
Note that skipping rows without sorting has little sense, since they can be returned in arbitrary order because of performance reasons.
Rows can be sorted with sort
pipe.
See also:
rename pipe
If some log fields must be renamed, then | rename src1 as dst1, ..., srcN as dstN
pipe can be used.
For example, the following query renames host
field to server
for logs over the last 5 minutes, so the output contains server
field instead of host
field:
_time:5m | rename host as server
Multiple fields can be renamed with a single | rename ...
pipe. For example, the following query renames host
to instance
and app
to job
:
_time:5m | rename host as instance, app as job
The as
keyword is optional.
mv
keyword can be used instead of rename
keyword for convenience. For example, _time:5m | mv foo bar
is equivalent to _time:5m | rename foo as bar
.
See also:
sort pipe
By default logs are selected in arbitrary order because of performance reasons. If logs must be sorted, then | sort by (field1, ..., fieldN)
pipe can be used.
The returned logs are sorted by the given fields
using natural sorting.
For example, the following query returns logs for the last 5 minutes sorted by _stream
and then by _time
:
_time:5m | sort by (_stream, _time)
Add desc
after the given log field in order to sort in reverse order of this field. For example, the following query sorts log fields in reverse order of request_duration_seconds
field:
_time:5m | sort by (request_duration_seconds desc)
The reverse order can be applied globally via desc
keyword after by(...)
clause:
_time:5m | sort by (foo, bar) desc
Sorting of big number of logs can consume a lot of CPU time and memory. Sometimes it is enough to return the first N
entries with the biggest
or the smallest values. This can be done by adding limit N
to the end of sort ...
pipe.
Such a query consumes lower amounts of memory when sorting big number of logs, since it keeps in memory only N
log entries.
For example, the following query returns top 10 log entries with the biggest values
for the request_duration
field during the last hour:
_time:1h | sort by (request_duration desc) limit 10
If the first N
sorted results must be skipped, then offset N
can be added to sort
pipe. For example,
the following query skips the first 10 logs with the biggest request_duration
field,
and then returns the next 20 sorted logs for the last 5 minutes:
_time:1h | sort by (request_duration desc) offset 10 limit 20
Note that sorting of big number of logs can be slow and can consume a lot of additional memory. It is recommended limiting the number of logs before sorting with the following approaches:
- Adding
limit N
to the end ofsort ...
pipe. - Reducing the selected time range with time filter.
- Using more specific filters, so they select less logs.
- Limiting the number of selected fields via
fields
pipe.
See also:
uniq pipe
| uniq ...
pipe allows returning only unique results over the selected logs. For example, the following LogsQL query
returns unique values for ip
log field
over logs for the last 5 minutes:
_time:5m | uniq by (ip)
It is possible to specify multiple fields inside by(...)
clause. In this case all the unique sets for the given fields
are returned. For example, the following query returns all the unique (host, path)
pairs for the logs over the last 5 minutes:
_time:5m | uniq by (host, path)
Unique entries are stored in memory during query execution. Big number of unique selected entries may require a lot of memory.
Sometimes it is enough to return up to N
unique entries. This can be done by adding limit N
after by (...)
clause.
This allows limiting memory usage. For example, the following query returns up to 100 unique (host, path)
pairs for the logs over the last 5 minutes:
_time:5m | uniq by (host, path) limit 100
See also:
stats pipe
| stats ...
pipe allows calculating various stats over the selected logs. For example, the following LogsQL query
uses count
stats function for calculating the number of logs for the last 5 minutes:
_time:5m | stats count() logs_total
| stats ...
pipe has the following basic format:
... | stats
stats_func1(...) as result_name1,
...
stats_funcN(...) as result_nameN
Where stats_func*
is any of the supported stats function, while result_name*
is the name of the log field
to store the result of the corresponding stats function. The as
keyword is optional.
For example, the following query calculates the following stats for logs over the last 5 minutes:
- the number of logs with the help of
count
stats function; - the number of unique log streams with the help of
count_uniq
stats function:
_time:5m | stats count() logs_total, count_uniq(_stream) streams_total
See also:
Stats by fields
The following LogsQL syntax can be used for calculating independent stats per group of log fields:
... | stats by (field1, ..., fieldM)
stats_func1(...) as result_name1,
...
stats_funcN(...) as result_nameN
This calculates stats_func*
per each (field1, ..., fieldM)
group of log fields.
For example, the following query calculates the number of logs and unique ip addresses over the last 5 minutes,
grouped by (host, path)
fields:
_time:5m | stats by (host, path) count() logs_total, count_uniq(ip) ips_total
Stats by time buckets
The following syntax can be used for calculating stats grouped by time buckets:
... | stats by (_time:step)
stats_func1(...) as result_name1,
...
stats_funcN(...) as result_nameN
This calculates stats_func*
per each step
of _time
field.
The step
can have any duration value. For example, the following LogsQL query returns per-minute number of logs and unique ip addresses
over the last 5 minutes:
_time:5m | stats by (_time:1m) count() logs_total, count_uniq(ip) ips_total
Additionally, the following step
values are supported:
nanosecond
- equals to1ns
duration.microsecond
- equals to1µs
duration.millisecond
- equals to1ms
duration.second
- equals to1s
duration.minute
- equals to1m
duration.hour
- equalst to1h
duration.day
- equals to1d
duration.week
- equals to1w
duration.month
- equals to one month. It properly takes into account the number of days per each month.year
- equals to one year. It properly takes into account the number of days per each year.
Stats by time buckets with timezone offset
VictoriaLogs stores _time
values as Unix time
in nanoseconds. This time corresponds to UTC time zone. Sometimes it is needed calculating stats
grouped by days or weeks at non-UTC timezone. This is possible with the following syntax:
... | stats by (_time:step offset timezone_offset) ...
For example, the following query calculates per-day number of logs over the last week, in UTC+02:00
time zone:
_time:1w | stats by (_time:1d offset 2h) count() logs_total
Stats by field buckets
Every log field inside | stats by (...)
can be bucketed in the same way at _time
field in this example.
Any numeric value can be used as step
value for the bucket. For example, the following query calculates
the number of requests for the last hour, bucketed by 10KB of request_size_bytes
field:
_time:1h | stats by (request_size_bytes:10KB) count() requests
Stats by IPv4 buckets
Stats can be bucketed by log field containing IPv4 addresses
via the ip_field_name:/network_mask
syntax inside by(...)
clause. For example, the following query returns the number of log entries per /24
subnetwork
extracted from the ip
log field during the last 5 minutes:
_time:5m | stats by (ip:/24) count() requests_per_subnet
stats pipe functions
LogsQL supports the following functions for stats
pipe:
avg
calculates the average value over the given numeric log fields.count
calculates the number of log entries.count_empty
calculates the number logs with empty log fields.count_uniq
calculates the number of unique non-empty values for the given log fields.max
calcualtes the maximum value over the given numeric log fields.median
calcualtes the median value over the given numeric log fields.min
calculates the minumum value over the given numeric log fields.quantile
calculates the given quantile for the given numeric log fields.sum
calculates the sum for the given numeric log fields.sum_len
calculates the sum of lengths for the given log fields.uniq_values
returns unique non-empty values for the given log fields.values
returns all the values for the given log fields.
avg stats
avg(field1, ..., fieldN)
stats pipe calculates the average value across
all the mentioned log fields.
Non-numeric values are ignored.
For example, the following query returns the average value for the duration
field
over logs for the last 5 minutes:
_time:5m | stats avg(duration) avg_duration
See also:
count stats
count()
calculates the number of selected logs.
For example, the following query returns the number of logs over the last 5 minutes:
_time:5m | stats count() logs
It is possible calculating the number of logs with non-empty values for some log field
with the count(fieldName)
syntax. For example, the following query returns the number of logs with non-empty username
field over the last 5 minutes:
_time:5m | stats count(username) logs_with_username
If multiple fields are enumerated inside count()
, then it counts the number of logs with at least a single non-empty field mentioned inside count()
.
For example, the following query returns the number of logs with non-empty username
or password
fields
over the last 5 minutes:
_time:5m | stats count(username, password) logs_with_username_or_password
See also:
count_empty stats
count_empty(field1, ..., fieldN)
calculates the number of logs with empty (field1, ..., fieldN)
tuples.
For example, the following query calculates the number of logs with empty username
field
during the last 5 minutes:
_time:5m | stats count_empty(username) logs_with_missing_username
See also:
count_uniq stats
count_uniq(field1, ..., fieldN)
stats pipe calculates the number of unique non-empty (field1, ..., fieldN)
tuples.
For example, the following query returns the number of unique non-empty values for ip
field
over the last 5 minutes:
_time:5m | stats count_uniq(ip) ips
The following query returns the number of unique (host, path)
pairs for the corresponding fields
over the last 5 minutes:
_time:5m | stats count_uniq(host, path) unique_host_path_pairs
Every unique value is stored in memory during query execution. Big number of unique values may require a lot of memory.
Sometimes it is needed to know whether the number of unique values reaches some limit. In this case add limit N
just after count_uniq(...)
for limiting the number of counted unique values up to N
, while limiting the maximum memory usage. For example, the following query counts
up to 1_000_000
unique values for the ip
field:
_time:5m | stats count_uniq(ip) limit 1_000_000 as ips_1_000_000
See also:
max stats
max(field1, ..., fieldN)
stats pipe calculates the maximum value across
all the mentioned log fields.
Non-numeric values are ignored.
For example, the following query returns the maximum value for the duration
field
over logs for the last 5 minutes:
_time:5m | stats max(duration) max_duration
See also:
median stats
median(field1, ..., fieldN)
stats pipe calculates the median value across
the give numeric log fields.
For example, the following query return median for the duration
field
over logs for the last 5 minutes:
_time:5m | stats median(duration) median_duration
See also:
min stats
min(field1, ..., fieldN)
stats pipe calculates the minimum value across
all the mentioned log fields.
Non-numeric values are ignored.
For example, the following query returns the minimum value for the duration
field
over logs for the last 5 minutes:
_time:5m | stats min(duration) min_duration
See also:
quantile stats
quantile(phi, field1, ..., fieldN)
stats pipe calculates phi
percentile over numeric values
for the given log fields. The phi
must be in the range 0 ... 1
, where 0
means 0th
percentile,
while 1
means 100th
percentile.
For example, the following query calculates 50th
, 90th
and 99th
percentiles for the request_duration_seconds
field
over logs for the last 5 minutes:
_time:5m | stats
quantile(0.5, request_duration_seconds) p50,
quantile(0.9, request_duration_seconds) p90,
quantile(0.99, request_duration_seconds) p99
See also:
sum stats
sum(field1, ..., fieldN)
stats pipe calculates the sum of numeric values across
all the mentioned log fields.
For example, the following query returns the sum of numeric values for the duration
field
over logs for the last 5 minutes:
_time:5m | stats sum(duration) sum_duration
See also:
sum_len stats
sum_len(field1, ..., fieldN)
stats pipe calculates the sum of lengths of all the values
for the given log fields.
For example, the following query returns the sum of lengths of _msg
fields
across all the logs for the last 5 minutes:
_time:5m | stats sum_len(_msg) messages_len
See also:
uniq_values stats
uniq_values(field1, ..., fieldN)
stats pipe returns the unique non-empty values across
the mentioned log fields.
The returned values are encoded in JSON array. The order of the returned values is arbitrary.
For example, the following query returns unique non-empty values for the ip
field
over logs for the last 5 minutes:
_time:5m | stats uniq_values(ip) unique_ips
Every unique value is stored in memory during query execution. Big number of unique values may require a lot of memory. Sometimes it is enough to return
only a subset of unique values. In this case add limit N
after uniq_values(...)
in order to limit the number of returned unique values to N
,
while limiting the maximum memory usage.
For example, the following query returns up to 100
unique values for the ip
field
over the logs for the last 5 minutes. Note that arbitrary subset of unique ip
values is returned every time:
_time:5m | stats uniq_values(ip) limit 100 as unique_ips_100
See also:
values stats
values(field1, ..., fieldN)
stats pipe returns all the values (including empty values)
for the mentioned log fields.
The returned values are encoded in JSON array.
For example, the following query returns all the values for the ip
field
over logs for the last 5 minutes:
_time:5m | stats values(ip) ips
See also:
Stream context
LogsQL will support the ability to select the given number of surrounding log lines for the selected log lines on a per-stream basis.
See the Roadmap for details.
Transformations
It is possible to perform various transformations on the selected log entries at client side
with jq
, awk
, cut
, etc. Unix commands according to these docs.
LogsQL will support the following transformations for the selected log entries:
- Extracting the specified fields from text log fields according to the provided pattern.
- Extracting the specified fields from JSON strings stored inside log fields.
- Extracting the specified fields from logfmt strings stored inside log fields.
- Creating a new field from existing log fields according to the provided format.
- Creating a new field according to math calculations over existing log fields.
- Parsing duration strings into floating-point seconds for further stats calculations.
- Creating a boolean field with the result of arbitrary post-filters applied to the current fields.
- Creating an integer field with the length of the given field value. This can be useful for stats calculations.
See the Roadmap for details.
Post-filters
It is possible to perform post-filtering on the selected log entries at client side with grep
or similar Unix commands
according to these docs.
LogsQL will support post-filtering on the original log fields and fields created by various transformations. The following post-filters will be supported:
- Full-text filtering.
- Logical filtering.
See the Roadmap for details.
Stats
Stats over the selected logs can be calculated via stats
pipe.
LogsQL will support calculating the following additional stats based on the log fields and fields created by transformations:
It will be possible specifying an optional condition filter when calculating the stats.
For example, sum(response_size) if (is_admin:true)
calculates the total response size for admins only.
It is possible to perform stats calculations on the selected log entries at client side with sort
, uniq
, etc. Unix commands
according to these docs.
Sorting
By default VictoriaLogs doesn't sort the returned results because of performance reasons. Use sort
pipe for sorting the results.
Limiters
LogsQL provides the following pipes for limiting the number of returned log entries:
fields
anddelete
pipes allow limiting the set of log fields to return.limit
pipe allows limiting the number of log entries to return.
Querying specific fields
Specific log fields can be queried via fields
pipe.
Numeric values
LogsQL accepts numeric values in the following formats:
- regular integers like
12345
or-12345
- regular floating point numbers like
0.123
or-12.34
- short numeric format
- duration format
Short numeric values
LogsQL accepts integer and floating point values with the following suffixes:
K
andKB
- the value is multiplied by10^3
M
andMB
- the value is multiplied by10^6
G
andGB
- the value is multiplied by10^9
T
andTB
- the value is multiplied by10^12
Ki
andKiB
- the value is multiplied by2^10
Mi
andMiB
- the value is multiplied by2^20
Gi
andGiB
- the value is multiplied by2^30
Ti
andTiB
- the value is multiplied by2^40
All the numbers may contain _
delimiters, which may improve readability of the query. For example, 1_234_567
is equivalent to 1234567
,
while 1.234_567
is equivalent to 1.234567
.
Duration values
LogsQL accepts duration values with the following suffixes at places where the duration is allowed:
ns
- nanoseconds. For example,123ns
.µs
- microseconds. For example,1.23µs
.ms
- milliseconds. For example,1.23456ms
s
- seconds. For example,1.234s
m
- minutes. For example,1.5m
h
- hours. For example,1.5h
d
- days. For example,1.5d
w
- weeks. For example,1w
y
- years as 365 days. For example,1.5y
Multiple durations can be combined. For example, 1h33m55s
.
Internally duration values are converted into nanoseconds.
Performance tips
- It is highly recommended specifying time filter in order to narrow down the search to specific time range.
- It is highly recommended specifying stream filter in order to narrow down the search to specific log streams.
- Move faster filters such as word filter and phrase filter to the beginning of the query. This rule doesn't apply to time filter and stream filter, which can be put at any place of the query.
- Move more specific filters, which match lower number of log entries, to the beginning of the query. This rule doesn't apply to time filter and stream filter, which can be put at any place of the query.