https://prometheus.io/docs/prometheus/latest/querying/basics/
Prometheus provides a functional expression language that lets the user select and aggregate time series data in real time. The result of an expression can either be shown as a graph, viewed as tabular data in Prometheus’s expression browser, or consumed by external systems via the HTTP API.
Examples
This document is meant as a reference. For learning, it might be easier to start with a couple of examples.
Expression language data types
In Prometheus’s expression language, an expression or sub-expression can evaluate to one of four types:
- Instant vector – a set of time series containing a single sample for each time series, all sharing the same timestamp
- Range vector – a set of time series containing a range of data points over time for each time series
- Scalar – a simple numeric floating point value
- String – a simple string value; currently unused
Depending on the use-case (e.g. when graphing vs. displaying the output of an expression), only some of these types are legal as the result from a user-specified expression. For example, an expression that returns an instant vector is the only type that can be directly graphed.
Literals
String literals
Strings may be specified as literals in single quotes, double quotes or backticks.
PromQL follows the same escaping rules as Go. In single or double quotes a backslash begins an escape sequence, which may be followed by a
, b
, f
, n
, r
, t
, v
or \
. Specific characters can be provided using octal (\nnn
) or hexadecimal (\xnn
, \unnnn
and \Unnnnnnnn
).
No escaping is processed inside backticks. Unlike Go, Prometheus does not discard newlines inside backticks.
Example:
"this is a string"
'these are unescaped: \n \\ \t'
`these are not unescaped: \n ' " \t`
Float literals
Scalar float values can be literally written as numbers of the form [-](digits)[.(digits)]
.
-2.43
Time series Selectors
Instant vector selectors
Instant vector selectors allow the selection of a set of time series and a single sample value for each at a given timestamp (instant): in the simplest form, only a metric name is specified. This results in an instant vector containing elements for all time series that have this metric name.
This example selects all time series that have the http_requests_total
metric name:
http_requests_total
It is possible to filter these time series further by appending a set of labels to match in curly braces ({}
).
This example selects only those time series with the http_requests_total
metric name that also have the job
label set to prometheus
and their group
label set to canary
:
http_requests_total{job="prometheus",group="canary"}
It is also possible to negatively match a label value, or to match label values against regular expressions. The following label matching operators exist:
=
: Select labels that are exactly equal to the provided string.!=
: Select labels that are not equal to the provided string.=~
: Select labels that regex-match the provided string (or substring).!~
: Select labels that do not regex-match the provided string (or substring).
For example, this selects all http_requests_total
time series for staging
, testing
, and development
environments and HTTP methods other than GET
.
http_requests_total{environment=~"staging|testing|development",method!="GET"}
Label matchers that match empty label values also select all time series that do not have the specific label set at all. Regex-matches are fully anchored. It is possible to have multiple matchers for the same label name.
Vector selectors must either specify a name or at least one label matcher that does not match the empty string. The following expression is illegal:
{job=~".*"} # Bad!
In contrast, these expressions are valid as they both have a selector that does not match empty label values.
{job=~".+"} # Good!
{job=~".*",method="get"} # Good!
Label matchers can also be applied to metric names by matching against the internal __name__
label. For example, the expression http_requests_total
is equivalent to {__name__="http_requests_total"}
. Matchers other than =
(!=
, =~
, !~
) may also be used. The following expression selects all metrics that have a name starting with job:
:
{__name__=~"job:.*"}
All regular expressions in Prometheus use RE2 syntax.
Range Vector Selectors
Range vector literals work like instant vector literals, except that they select a range of samples back from the current instant. Syntactically, a range duration is appended in square brackets ([]
) at the end of a vector selector to specify how far back in time values should be fetched for each resulting range vector element.
Time durations are specified as a number, followed immediately by one of the following units:
s
– secondsm
– minutesh
– hoursd
– daysw
– weeksy
– years
In this example, we select all the values we have recorded within the last 5 minutes for all time series that have the metric name http_requests_total
and a job
label set to prometheus
:
http_requests_total{job="prometheus"}[5m]
Offset modifier
The offset
modifier allows changing the time offset for individual instant and range vectors in a query.
For example, the following expression returns the value of http_requests_total
5 minutes in the past relative to the current query evaluation time:
http_requests_total offset 5m
Note that the offset
modifier always needs to follow the selector immediately, i.e. the following would be correct:
sum(http_requests_total{method="GET"} offset 5m) // GOOD.
While the following would be incorrect:
sum(http_requests_total{method="GET"}) offset 5m // INVALID.
The same works for range vectors. This returns the 5-minutes rate that http_requests_total
had a week ago:
rate(http_requests_total[5m] offset 1w)
Operators
Prometheus supports many binary and aggregation operators. These are described in detail in the expression language operators page.
Functions
Prometheus supports several functions to operate on data. These are described in detail in the expression language functions page.
Gotchas
Staleness
When queries are run, timestamps at which to sample data are selected independently of the actual present time series data. This is mainly to support cases like aggregation (sum
, avg
, and so on), where multiple aggregated time series do not exactly align in time. Because of their independence, Prometheus needs to assign a value at those timestamps for each relevant time series. It does so by simply taking the newest sample before this timestamp.
If a target scrape or rule evaluation no longer returns a sample for a time series that was previously present, that time series will be marked as stale. If a target is removed, its previously returned time series will be marked as stale soon afterwards.
If a query is evaluated at a sampling timestamp after a time series is marked stale, then no value is returned for that time series. If new samples are subsequently ingested for that time series, they will be returned as normal.
If no sample is found (by default) 5 minutes before a sampling timestamp, no value is returned for that time series at this point in time. This effectively means that time series “disappear” from graphs at times where their latest collected sample is older than 5 minutes or after they are marked stale.
Staleness will not be marked for time series that have timestamps included in their scrapes. Only the 5 minute threshold will be applied in that case.
Avoiding slow queries and overloads
If a query needs to operate on a very large amount of data, graphing it might time out or overload the server or browser. Thus, when constructing queries over unknown data, always start building the query in the tabular view of Prometheus’s expression browser until the result set seems reasonable (hundreds, not thousands, of time series at most). Only when you have filtered or aggregated your data sufficiently, switch to graph mode. If the expression still takes too long to graph ad-hoc, pre-record it via a recording rule.
This is especially relevant for Prometheus’s query language, where a bare metric name selector like api_http_requests_total
could expand to thousands of time series with different labels. Also keep in mind that expressions which aggregate over many time series will generate load on the server even if the output is only a small number of time series. This is similar to how it would be slow to sum all values of a column in a relational database, even if the output value is only a single number.