[DOCS] Clarify interval, frequency, and bucket span in ML APIs and example (#51280)

This commit is contained in:
Lisa Cawley 2020-01-22 08:08:31 -08:00 committed by lcawl
parent 08e9c673e5
commit 4590d4156a
4 changed files with 54 additions and 63 deletions

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@ -11,13 +11,28 @@ distributes these calculations across your cluster. You can then feed this
aggregated data into the {ml-features} instead of raw results, which
reduces the volume of data that must be considered while detecting anomalies.
There are some limitations to using aggregations in {dfeeds}, however.
Your aggregation must include a `date_histogram` aggregation, which in turn must
contain a `max` aggregation on the time field. This requirement ensures that the
aggregated data is a time series and the timestamp of each bucket is the time
of the last record in the bucket. If you use a terms aggregation and the
cardinality of a term is high, then the aggregation might not be effective and
you might want to just use the default search and scroll behavior.
TIP: If you use a terms aggregation and the cardinality of a term is high, the
aggregation might not be effective and you might want to just use the default
search and scroll behavior.
There are some limitations to using aggregations in {dfeeds}. Your aggregation
must include a `date_histogram` aggregation, which in turn must contain a `max`
aggregation on the time field. This requirement ensures that the aggregated data
is a time series and the timestamp of each bucket is the time of the last record
in the bucket.
You must also consider the interval of the date histogram aggregation carefully.
The bucket span of your {anomaly-job} must be divisible by the value of the
`calendar_interval` or `fixed_interval` in your aggregation (with no remainder).
If you specify a `frequency` for your {dfeed}, it must also be divisible by this
interval.
TIP: As a rule of thumb, if your detectors use <<ml-metric-functions,metric>> or
<<ml-sum-functions,sum>> analytical functions, set the date histogram
aggregation interval to a tenth of the bucket span. This suggestion creates
finer, more granular time buckets, which are ideal for this type of analysis. If
your detectors use <<ml-count-functions,count>> or <<ml-rare-functions,rare>>
functions, set the interval to the same value as the bucket span.
When you create or update an {anomaly-job}, you can include the names of
aggregations, for example:
@ -143,9 +158,9 @@ pipeline aggregation to find the first order derivative of the counter
----------------------------------
// NOTCONSOLE
{dfeeds-cap} not only supports multi-bucket aggregations, but also single bucket aggregations.
The following shows two `filter` aggregations, each gathering the number of unique entries for
the `error` field.
{dfeeds-cap} not only supports multi-bucket aggregations, but also single bucket
aggregations. The following shows two `filter` aggregations, each gathering the
number of unique entries for the `error` field.
[source,js]
----------------------------------
@ -225,14 +240,15 @@ When you define an aggregation in a {dfeed}, it must have the following form:
----------------------------------
// NOTCONSOLE
The top level aggregation must be either a {ref}/search-aggregations-bucket.html[Bucket Aggregation]
containing as single sub-aggregation that is a `date_histogram` or the top level aggregation
is the required `date_histogram`. There must be exactly 1 `date_histogram` aggregation.
The top level aggregation must be either a
{ref}/search-aggregations-bucket.html[bucket aggregation] containing as single
sub-aggregation that is a `date_histogram` or the top level aggregation is the
required `date_histogram`. There must be exactly 1 `date_histogram` aggregation.
For more information, see
{ref}/search-aggregations-bucket-datehistogram-aggregation.html[Date Histogram Aggregation].
{ref}/search-aggregations-bucket-datehistogram-aggregation.html[Date histogram aggregation].
NOTE: The `time_zone` parameter in the date histogram aggregation must be set to `UTC`,
which is the default value.
NOTE: The `time_zone` parameter in the date histogram aggregation must be set to
`UTC`, which is the default value.
Each histogram bucket has a key, which is the bucket start time. This key cannot
be used for aggregations in {dfeeds}, however, because they need to know the
@ -269,16 +285,9 @@ By default, {es} limits the maximum number of terms returned to 10000. For high
cardinality fields, the query might not run. It might return errors related to
circuit breaking exceptions that indicate that the data is too large. In such
cases, do not use aggregations in your {dfeed}. For more
information, see {ref}/search-aggregations-bucket-terms-aggregation.html[Terms Aggregation].
information, see
{ref}/search-aggregations-bucket-terms-aggregation.html[Terms aggregation].
You can also optionally specify multiple sub-aggregations.
The sub-aggregations are aggregated for the buckets that were created by their
parent aggregation. For more information, see
{ref}/search-aggregations.html[Aggregations].
TIP: If your detectors use metric or sum analytical functions, set the
`interval` of the date histogram aggregation to a tenth of the `bucket_span`
that was defined in the job. This suggestion creates finer, more granular time
buckets, which are ideal for this type of analysis. If your detectors use count
or rare functions, set `interval` to the same value as `bucket_span`. For more
information about analytical functions, see <<ml-functions>>.
You can also optionally specify multiple sub-aggregations. The sub-aggregations
are aggregated for the buckets that were created by their parent aggregation.
For more information, see {ref}/search-aggregations.html[Aggregations].

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@ -26,7 +26,12 @@ cluster privileges to use this API. See
[[ml-put-datafeed-desc]]
==== {api-description-title}
You can associate only one {dfeed} to each {anomaly-job}.
{ml-docs}/ml-dfeeds.html[{dfeeds-cap}] retrieve data from {es} for analysis by
an {anomaly-job}. You can associate only one {dfeed} to each {anomaly-job}.
The {dfeed} contains a query that runs at a defined interval (`frequency`). If
you are concerned about delayed data, you can add a delay (`query_delay`) at
each interval. See {ml-docs}/ml-delayed-data-detection.html[Handling delayed data].
[IMPORTANT]
====
@ -64,11 +69,6 @@ include::{docdir}/ml/ml-shared.asciidoc[tag=delayed-data-check-config]
`frequency`::
(Optional, <<time-units, time units>>)
include::{docdir}/ml/ml-shared.asciidoc[tag=frequency]
+
--
To learn more about the relationship between time related settings, see
<<ml-put-datafeed-time-related-settings>>.
--
`indices`::
(Required, array)
@ -89,11 +89,6 @@ include::{docdir}/ml/ml-shared.asciidoc[tag=query]
`query_delay`::
(Optional, <<time-units, time units>>)
include::{docdir}/ml/ml-shared.asciidoc[tag=query-delay]
+
--
To learn more about the relationship between time related settings, see
<<ml-put-datafeed-time-related-settings>>.
--
`script_fields`::
(Optional, object)
@ -103,20 +98,6 @@ include::{docdir}/ml/ml-shared.asciidoc[tag=script-fields]
(Optional, unsigned integer)
include::{docdir}/ml/ml-shared.asciidoc[tag=scroll-size]
[[ml-put-datafeed-time-related-settings]]
===== Interaction between time-related settings
Time-related settings have the following relationships:
* Queries run at `query_delay` after the end of
each `frequency`.
* When `frequency` is shorter than `bucket_span` of the associated job, interim
results for the last (partial) bucket are written, and then overwritten by the
full bucket results eventually.
[[ml-put-datafeed-example]]
==== {api-examples-title}

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@ -49,11 +49,6 @@ include::{docdir}/ml/ml-shared.asciidoc[tag=analysis-config]
`analysis_config`.`bucket_span`:::
(<<time-units,time units>>)
include::{docdir}/ml/ml-shared.asciidoc[tag=bucket-span]
+
--
To learn more about the relationship between time related settings, see
<<ml-put-datafeed-time-related-settings>>.
--
`analysis_config`.`categorization_field_name`:::
(string)

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@ -1,6 +1,6 @@
tag::aggregations[]
If set, the {dfeed} performs aggregation searches. Support for aggregations is
limited and should only be used with low cardinality data. For more information,
limited and should be used only with low cardinality data. For more information,
see
{ml-docs}/ml-configuring-aggregation.html[Aggregating data for faster performance].
end::aggregations[]
@ -148,8 +148,10 @@ end::background-persist-interval[]
tag::bucket-span[]
The size of the interval that the analysis is aggregated into, typically between
`5m` and `1h`. The default value is `5m`. For more information about time units,
see <<time-units>>.
`5m` and `1h`. The default value is `5m`. If the {anomaly-job} uses a {dfeed}
with {ml-docs}/ml-configuring-aggregation.html[aggregations], this value must be
divisible by the interval of the date histogram aggregation. For more
information, see {ml-docs}/ml-buckets.html[Buckets].
end::bucket-span[]
tag::bucket-span-results[]
@ -603,7 +605,10 @@ tag::frequency[]
The interval at which scheduled queries are made while the {dfeed} runs in real
time. The default value is either the bucket span for short bucket spans, or,
for longer bucket spans, a sensible fraction of the bucket span. For example:
`150s`.
`150s`. When `frequency` is shorter than the bucket span, interim results for
the last (partial) bucket are written then eventually overwritten by the full
bucket results. If the {dfeed} uses aggregations, this value must be divisible
by the interval of the date histogram aggregation.
end::frequency[]
tag::from[]
@ -939,7 +944,8 @@ The number of seconds behind real time that data is queried. For example, if
data from 10:04 a.m. might not be searchable in {es} until 10:06 a.m., set this
property to 120 seconds. The default value is randomly selected between `60s`
and `120s`. This randomness improves the query performance when there are
multiple jobs running on the same node.
multiple jobs running on the same node. For more information, see
{ml-docs}/ml-delayed-data-detection.html[Handling delayed data].
end::query-delay[]
tag::randomize-seed[]