Splunk® Enterprise

Search Reference

Splunk Enterprise version 9.0 will no longer be supported as of June 14, 2024. See the Splunk Software Support Policy for details. For information about upgrading to a supported version, see How to upgrade Splunk Enterprise.

streamstats

Description

Adds cumulative summary statistics to all search results in a streaming manner. The streamstats command calculates statistics for each event at the time the event is seen. For example, you can calculate the running total for a particular field. The total is calculated by using the values in the specified field for every event that has been processed, up to the current event.

As the streamstats command processes each event, it adds a field to that event or result that represents the accumulation of all of the events before it in the time window. The value of that field changes per event or result as the composition of events in the window or result set changes. In other words, the streamstats command produces a running total that is applied to each event, or the result of another transforming search, as they stream in. The streamstats command operates on whatever search output it receives and is the accumulation of the average, sum, count or so on, of one the following two elements:

  • All of the events in the search window that have been collected up to that point, if a window is applied. If you don't set the time_window or the window arguments, the default of 10,000 events set by the max_stream_window in the limits.conf file applies to your streamstats searches. See Optional arguments.
  • The results returned by a transforming command, such as the stats, chart, or timechart command, as each result is received and the running total of the events preceding that result is applied to it.

Syntax

The required syntax is in bold.

streamstats
[reset_on_change=<bool>]
[reset_before="("<eval-expression>")"]
[reset_after="("<eval-expression>")"]
[current=<bool>]
[window=<int>]
[time_window=<span-length>]
[global=<bool>]
[allnum=<bool>]
<stats-agg-term>...
[<by-clause>]

Required arguments

stats-agg-term
Syntax: <stats-func>( <evaled-field> | <wc-field> ) [AS <wc-field>]
Description: A statistical aggregation function. See Stats function options. The function can be applied to an eval expression, or to a field or set of fields. Use the AS clause to place the result into a new field with a name that you specify. You can use wild card characters in field names. For more information on eval expressions, see Types of eval expressions in the Search Manual.

Optional arguments

allnum
Syntax: allnum=<boolean>
Description: If true, computes numerical statistics on each field only if all of the values in that field are numerical.
Default: false
by-clause
Syntax: BY <field-list>
Description: The name of one or more fields to group by.
current
Syntax: current=<boolean>
Description: If true, the search includes the given, or current, event in the summary calculations. If false, the search uses the field value from the previous event.
Default: true
global
Syntax: global=<boolean>
Description: Used only when the window argument is set. Defines whether to use a single window, global=true, or to use separate windows based on the by clause. If global=false and window is set to a non-zero value, a separate window is used for each group of values of the field specified in the by clause.
Default: true
reset_after
Syntax: reset_after="("<eval-expression>")"
Description: After the streamstats calculations are produced for an event, reset_after specifies that all of the accumulated statistics are reset if the eval-expression returns true. The eval-expression must evaluate to true or false. The eval-expression can reference fields that are returned by the streamstats command. When the reset_after argument is combined with the window argument, the window is also reset when the accumulated statistics are reset.
Default: false
reset_before
Syntax: reset_before="("<eval-expression>")"
Description: Before the streamstats calculations are produced for an event, reset_before specifies that all of the accumulated statistics are reset when the eval-expression returns true. The eval-expression must evaluate to true or false. When the reset_before argument is combined with the window argument, the window is also reset when the accumulated statistics are reset.
Default: false
reset_on_change
Syntax: reset_on_change=<bool>
Description: Specifies that all of the accumulated statistics are reset when the group by fields change. The reset is as if no previous events have been seen. Only events that have all of the group by fields can trigger a reset. Events that have only some of the group by fields are ignored. When the reset_on_change argument is combined with the window argument, the window is also reset when the accumulated statistics are reset. See the Usage section.
Default: false
time_window
Syntax: time_window=<span-length>
Description: Specifies the window size for the streamstats calculations, based on time. After each time window passes, the streamstats calculations are reset.
The time_window argument is limited by range of values in the _time field in the events. To use the time_window argument, the events must be sorted in either ascending or descending time order. You can use the window argument with the time_window argument to specify the maximum number of events in a window. To specify five minutes for the span length, use time_window=5m. To specify 2 days, use time_window=2d.
The following table shows additional time ranges and valid values that you can set for the span length.
Time range Valid values
seconds 1s, 2s, ...
minutes 1m, 2m, …
hours 1h,2h, …
days 1d, 2d, ...
weeks 1w, 2w, ...
months 1mon, 2mon, 3mon, 4mon, 6mon, 12mon
quarters 1q, 2q, 4q
years 1y, 2y, ...
Default: None. However, the value of the max_stream_window attribute in the limits.conf file applies. The default value is 10000 events.
window
Syntax: window=<integer>
Description: Specifies the number of events to use when computing the statistics.
Default: 0, which means that all previous and current events are used.

Stats function options

stats-func
Syntax: The syntax depends on the function that you use. Refer to the table below.
Description: Statistical and charting functions that you can use with the streamstats command. Each time you invoke the streamstats command, you can use one or more functions. However, you can only use one BY clause. See Usage.
The following table lists the supported functions by type of function. Use the links in the table to see descriptions and examples for each function. For an overview about using functions with commands, see Statistical and charting functions.
Type of function Supported functions and syntax
Aggregate functions avg()

count()
distinct_count()
estdc()
estdc_error()

exactperc<int>()

max()
median()
min()
mode()

perc<int>()

range()
stdev()
stdevp()

sum()

sumsq()
upperperc<int>()
var()
varp()

Event order functions earliest()
first()
last()
latest()
Multivalue stats and chart functions list(X)
values(X)

Usage

The streamstats command is a centralized streaming command. See Command types.

The streamstats command is similar to the eventstats command except that it uses events before the current event to compute the aggregate statistics that are applied to each event. If you want to include the current event in the statistical calculations, use current=true, which is the default.

The streamstats command is also similar to the stats command in that streamstats calculates summary statistics on search results. Unlike stats, which works on the group of results as a whole, streamstats calculates statistics for each event at the time the event is seen.

Statistical functions that are not applied to specific fields

With the exception of the count function, when you pair the streamstats command with functions that are not applied to specific fields or eval expressions that resolve into fields, the search head processes it as if it were applied to a wildcard for all fields. In other words, when you have | streamstats avg in a search, it returns results for | stats avg(*).

This "implicit wildcard" syntax is officially deprecated, however. Make the wildcard explicit. Write | streamstats <function>(*) when you want a function to apply to all possible fields.

Escaping string values

If your <eval-expression> contains a value instead of a field name, you must escape the quotation marks around the value.

The following example is a simple way to see this. Start by using the makeresults command to create 3 events. Use the streamstats command to produce a cumulative count of the events. Then use the eval command to create a simple test. If the value of the count field is equal to 2, display yes in the test field. Otherwise display no in the test field.

| makeresults count=3 | streamstats count | eval test=if(count==2,"yes","no")

The results appear something like this:

_time count test
2017-01-11 11:32:43 1 no
2017-01-11 11:32:43 2 yes
2017-01-11 11:32:43 3 no

Use the streamstats command to reset the count when the match is true. You must escape the quotation marks around the word yes. The following example shows the complete search.

| makeresults count=3 | streamstats count | eval test=if(count==2,"yes","no") | streamstats count as testCount reset_after="("match(test,\"yes\")")"

Here is another example. You want to look for the value session is closed in the description field. Because the value is a string, you must enclose it in quotation marks. You then need to escape those quotation marks.

... | streamstats reset_after="("description==\"session is closed\"")"

The reset_on_change argument

You have a dataset with the field "shift" that contains either the value DAY or the value NIGHT. You run this search:

...| streamstats count BY shift reset_on_change=true

If the dataset is:

shift
DAY
DAY
NIGHT
NIGHT
NIGHT
NIGHT
DAY
NIGHT

Running the command with reset_on_change=true produces the following streamstats results:

shift, count
DAY, 1
DAY, 2
NIGHT, 1
NIGHT, 2
NIGHT, 3
NIGHT, 4
DAY, 1
NIGHT, 1

Memory and maximum results

The streamstats search processor uses two limits.conf settings to determine the maximum number of results that it can store in memory for the purpose of computing statistics.

The maxresultrows setting specifies a top limit for the window argument. This sets the number of result rows that the streamstats command processor can store in memory. The max_mem_usage_mb setting limits how much memory the streamstats command uses to keep track of information.

When the max_mem_usage_mb limit is reached, the streamstats command processor stops adding the requested fields to the search results.

Do not set max_mem_usage_mb=0 as this removes the bounds to the amount of memory the streamstats command processor can use. This can lead to search failures.

Prerequisites

Never change or copy the configuration files in the default directory. The files in the default directory must remain intact and in their original location. Make changes to the files in the local directory.

If you have Splunk Cloud Platform and want to change these limits, file a Support ticket.

Basic examples

1. Compute the average of a field over the last 5 events

For each event, compute the average of the foo field over the last 5 events, including the current event.

... | streamstats avg(foo) window=5

This is similar to using the trendline command to compute a simple moving average (SMA), such as trendline sma5(foo).

2. Compute the average of a field, with a by clause, over the last 5 events

For each event, compute the average value of foo for each value of bar including only 5 events, specified by the window size, with that value of bar.

... | streamstats avg(foo) by bar window=5 global=f

3. For each event, add a count of the number of events processed

This example adds to each event a count field that represents the number of events seen so far, including that event. For example, it adds 1 for the first event, 2 for the second event, and so on.

... | streamstats count

If you did not want to include the current event, you would specify:

... | streamstats count current=f

4. Apply a time-based window to streamstats

Assume that the max_stream_window argument in the limits.conf file is the default value of 10000 events.

The following search counts the events, using a time window of five minutes.

... | streamstats count time_window=5m

This search adds a count field to each event.

  • If the events are in descending time order (most recent to oldest), the value in the count field represents the number of events in the next 5 minutes.
  • If the events are in ascending time order (oldest to most recent), the count field represents the number of events in the previous 5 minutes.

If there are more events in the time-based window than the value for the max_stream_window argument, the max_stream_window argument takes precedence. The count will never be greater than 10000, even if there are actually more than 10,000 events in any 5 minute period.

Extended examples

1. Create events for testing

You can use the streamstats command with the makeresults command to create a series events. This technique is often used for testing search syntax. The eval command is used to create events with different hours. You use 3600, the number of seconds in an hour, in the eval command.

| makeresults count=5 | streamstats count | eval _time=_time-(count*3600)

The makeresults command is used to create the count field. The streamstats command calculates a cumulative count for each event, at the time the event is processed.

The results look something like this:

_time count
2020-01-09 15:35:14 1
2020-01-09 14:35:14 2
2020-01-09 13:35:14 3
2020-01-09 12:35:14 4
2020-01-09 11:35:14 5

Notice that the hours in the timestamp are 1 hour apart.

You can create additional fields by using the eval command.

| makeresults count=5 | streamstats count | eval _time=_time-(count*3600) | eval age = case(count=1, 25, count=2, 39, count=3, 31, count=4, 27, count=5, null()) | eval city = case(count=1 OR count=3, "San Francisco", count=2 OR count=4, "Seattle",count=5, "Los Angeles")

  • The eval command is used to create two new fields, age and city. The eval command uses the value in the count field.
  • The case function takes pairs of arguments, such as count=1, 25. The first argument is a Boolean expression. When that expression is TRUE, the corresponding second argument is returned.

The results of the search look like this:

_time age city count
2020-01-09 15:35:14 25 San Francisco 1
2020-01-09 14:35:14 39 Seattle 2
2020-01-09 13:35:14 31 San Francisco 3
2020-01-09 12:35:14 27 Seattle 4
2020-01-09 11:35:14 Los Angeles 5

2. Calculate a snapshot of summary statistics

This example uses the sample data from the Search Tutorial but should work with any format of Apache web access log. To try this example on your own Splunk instance, you must download the sample data and follow the instructions to get the tutorial data into Splunk. Use the time range All time when you run the search.

You want to determine the number of the bytes used over a set period of time. The following search uses the first 5 events. Because search results typically display the most recent event first, the sort command is used to sort the 5 events in ascending order to see the oldest event first and the most recent event last. Ascending order enables the streamstats command to calculate statistics over time.

sourcetype=access_combined* | head 5 | sort _time

This image shows the most recent 5 events in the data set. The events are in ascending order by time.


Add the streamstats command to the search to generate a running total of the bytes over the 5 events and organize the results by clientip.

sourcetype=access_combined* | head 5 |sort _time | streamstats sum(bytes) AS ASimpleSumOfBytes BY clientip


When you click on the ASimpleSumOfBytes field in the list of Interesting fields, an information window shows the cumulative sum of the bytes, as shown in this image:

This image shows the ASimpleSumOfBytes field selected in the list of Interesting fields. A popup window shows the cumulative sum of the bytes.

The streamstats command aggregates the statistics to the original data, which means that all of the original data is accessible for further calculations.


Add the table command to the search to display the only the values in the _time, clientip, bytes, and ASimpleSumOfBytes fields.

sourcetype=access_combined* | head 5 |sort _time | streamstats sum(bytes) as ASimpleSumOfBytes by clientip | table _time, clientip, bytes, ASimpleSumOfBytes

Each event shows the timestamp for the event, the clientip, and the number of bytes used. The ASimpleSumOfBytes field shows a cumulative summary of the bytes for each clientip.

This image shows the Statistics tab with the columns _time, clientip, bytes, ASimpleSumOfBytes.

3. Calculate the running total of distinct users over time

Each day you track unique users, and you would like to track the cumulative count of distinct users. This example calculates the running total of distinct users over time.

eventtype="download" | bin _time span=1d as day | stats values(clientip) as ips dc(clientip) by day | streamstats dc(ips) as "Cumulative total"

The bin command breaks the time into days. The stats command calculates the distinct users (clientip) and user count per day. The streamstats command finds the running distinct count of users.

This search returns a table that includes: day, ips, dc(clientip), and Cumulative total.

4. Calculate hourly cumulative totals

This example uses streamstats to produce hourly cumulative totals.

... | timechart span=1h sum(bytes) as SumOfBytes | streamstats global=f sum(*) as accu_total_*

This search returns 3 columns: _time, SumOfBytes, and accu_total_SumOfBytes.

The timechart command buckets the events into spans of 1 hour and counts the total values for each category. The timechart command also fills NULL values, so that there are no missing values. Then, the streamstats command is used to calculate the accumulated total.


This example uses streamstats to produce hourly cumulative totals for category values.

... | timechart span=1h sum(value) as total by category | streamstats global=f | addtotals | accum Total | rename Total as accu_total

5. Calculate when a DHCP IP lease address changed for a specific MAC address

This example uses streamstats to figure out when a DHCP IP lease address changed for a MAC address, 54:00:00:00:00:00.

source=dhcp MAC=54:00:00:00:00:00 | head 10 | streamstats current=f last(DHCP_IP) as new_dhcp_ip last(_time) as time_of_change by MAC

You can also clean up the presentation to display a table of the DHCP IP address changes and the times the occurred.

source=dhcp MAC=54:00:00:00:00:00 | head 10 | streamstats current=f last(DHCP_IP) as new_dhcp_ip last(_time) as time_of_change by MAC | where DHCP_IP!=new_dhcp_ip | convert ctime(time_of_change) as time_of_change | rename DHCP_IP as old_dhcp_ip | table time_of_change, MAC, old_dhcp_ip, new_dhcp_ip

For more details, refer to the Splunk Blogs post for this example.

6. Compare a number with itself over a few months

Say a community needs to find out how their vaccination booster campaign is going. They want to check the gap after their citizens get the second booster shot, which should keep up with their target of about 6 months between the second and third doses. The following search is across the daily number of people by number of doses.

... | sort _time | streamstats time_window=153d earliest(two_doses) as two_doses_5mon | streamstats time_window=183d earliest(two_doses) as two_doses_6mon | streamstats time_window=214d earliest(two_doses) as two_doses_7mon | foreach two_doses_* [ eval booster_gap_<<MATCHSTR>> = <<FIELD>> - three_doses ] | timechart span=1d max(booster_gap_*) as booster_gap_*

The search results return a graph that looks something like this, with 3 lines for the second booster showing the gap at 5 months, 6 months, and 7 months, which shows that the community is almost keeping up with a 6-month booster gap:

Graph with population on the Y axis from -5 million to 20 million, and the Y axis shows months from July 5 to November 22. The orange line shows that the 7 month booster gap starts from population 0, is flat until November 8 when the line drops to just slightly above -5 million after November 22. The next line, the green line, shows that the 6 month booster gap starts from population 0 and gradually rises until it is just above 5 million after November 22. The top line, the blue line, starts at population 0 and gradually increases to about 5 million in the end of September, and then steeply increases to just above 20 million after November 22.

See also

Commands
accum
autoregress
delta
fillnull
eventstats
makeresults
trendline
Blogs
Getting started with stats, eventstats and streamstats
Last modified on 01 March, 2024
strcat   table

This documentation applies to the following versions of Splunk® Enterprise: 8.2.0, 8.2.1, 8.2.2, 8.2.3, 8.2.4, 8.2.5, 8.2.6, 8.2.7, 8.2.8, 8.2.9, 8.2.10, 8.2.11, 8.2.12, 9.0.0, 9.0.1, 9.0.2, 9.0.3, 9.0.4, 9.0.5, 9.0.6, 9.0.7, 9.0.8, 9.0.9, 9.0.10, 9.1.0, 9.1.1, 9.1.2, 9.1.3, 9.1.4, 9.1.5, 9.1.6, 9.1.7, 9.2.0, 9.2.1, 9.2.2, 9.2.3, 9.2.4, 9.3.0, 9.3.1, 9.3.2


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