469 lines
18 KiB
Plaintext
469 lines
18 KiB
Plaintext
[role="xpack"]
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[testenv="platinum"]
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[[ml-results-resource]]
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=== Results resources
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Several different result types are created for each job. You can query anomaly
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results for _buckets_, _influencers_, and _records_ by using the results API.
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Summarized bucket results over multiple jobs can be queried as well; those
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results are called _overall buckets_.
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Results are written for each `bucket_span`. The timestamp for the results is the
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start of the bucket time interval.
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The results include scores, which are calculated for each anomaly result type and
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each bucket interval. These scores are aggregated in order to reduce noise, and
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normalized in order to identify and rank the most mathematically significant
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anomalies.
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Bucket results provide the top level, overall view of the job and are ideal for
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alerts. For example, the bucket results might indicate that at 16:05 the system
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was unusual. This information is a summary of all the anomalies, pinpointing
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when they occurred.
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Influencer results show which entities were anomalous and when. For example,
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the influencer results might indicate that at 16:05 `user_name: Bob` was unusual.
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This information is a summary of all the anomalies for each entity, so there
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can be a lot of these results. Once you have identified a notable bucket time,
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you can look to see which entities were significant.
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Record results provide details about what the individual anomaly was, when it
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occurred and which entity was involved. For example, the record results might
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indicate that at 16:05 Bob sent 837262434 bytes, when the typical value was
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1067 bytes. Once you have identified a bucket time and perhaps a significant
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entity too, you can drill through to the record results in order to investigate
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the anomalous behavior.
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Categorization results contain the definitions of _categories_ that have been
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identified. These are only applicable for jobs that are configured to analyze
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unstructured log data using categorization. These results do not contain a
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timestamp or any calculated scores. For more information, see
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{xpack-ref}/ml-configuring-categories.html[Categorizing Log Messages].
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* <<ml-results-buckets,Buckets>>
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* <<ml-results-influencers,Influencers>>
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* <<ml-results-records,Records>>
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* <<ml-results-categories,Categories>>
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* <<ml-results-overall-buckets,Overall Buckets>>
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NOTE: All of these resources and properties are informational; you cannot
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change their values.
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[float]
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[[ml-results-buckets]]
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==== Buckets
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Bucket results provide the top level, overall view of the job and are best for
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alerting.
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Each bucket has an `anomaly_score`, which is a statistically aggregated and
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normalized view of the combined anomalousness of all the record results within
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each bucket.
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One bucket result is written for each `bucket_span` for each job, even if it is
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not considered to be anomalous. If the bucket is not anomalous, it has an
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`anomaly_score` of zero.
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When you identify an anomalous bucket, you can investigate further by expanding
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the bucket resource to show the records as nested objects. Alternatively, you
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can access the records resource directly and filter by the date range.
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A bucket resource has the following properties:
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`anomaly_score`::
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(number) The maximum anomaly score, between 0-100, for any of the bucket
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influencers. This is an overall, rate-limited score for the job. All the
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anomaly records in the bucket contribute to this score. This value might be
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updated as new data is analyzed.
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`bucket_influencers`::
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(array) An array of bucket influencer objects.
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For more information, see <<ml-results-bucket-influencers,Bucket Influencers>>.
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`bucket_span`::
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(number) The length of the bucket in seconds.
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This value matches the `bucket_span` that is specified in the job.
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`event_count`::
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(number) The number of input data records processed in this bucket.
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`initial_anomaly_score`::
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(number) The maximum `anomaly_score` for any of the bucket influencers.
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This is the initial value that was calculated at the time the bucket was
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processed.
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`is_interim`::
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(boolean) If true, this is an interim result. In other words, the bucket
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results are calculated based on partial input data.
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`job_id`::
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(string) The unique identifier for the job that these results belong to.
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`processing_time_ms`::
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(number) The amount of time, in milliseconds, that it took to analyze the
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bucket contents and calculate results.
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`result_type`::
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(string) Internal. This value is always set to `bucket`.
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`timestamp`::
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(date) The start time of the bucket. This timestamp uniquely identifies the
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bucket. +
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NOTE: Events that occur exactly at the timestamp of the bucket are included in
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the results for the bucket.
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[float]
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[[ml-results-bucket-influencers]]
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==== Bucket Influencers
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Bucket influencer results are available as nested objects contained within
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bucket results. These results are an aggregation for each type of influencer.
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For example, if both `client_ip` and `user_name` were specified as influencers,
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then you would be able to determine when the `client_ip` or `user_name` values
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were collectively anomalous.
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There is a built-in bucket influencer called `bucket_time` which is always
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available. This bucket influencer is the aggregation of all records in the
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bucket; it is not just limited to a type of influencer.
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NOTE: A bucket influencer is a type of influencer. For example, `client_ip` or
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`user_name` can be bucket influencers, whereas `192.168.88.2` and `Bob` are
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influencers.
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An bucket influencer object has the following properties:
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`anomaly_score`::
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(number) A normalized score between 0-100, which is calculated for each bucket
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influencer. This score might be updated as newer data is analyzed.
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`bucket_span`::
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(number) The length of the bucket in seconds. This value matches the `bucket_span`
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that is specified in the job.
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`initial_anomaly_score`::
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(number) The score between 0-100 for each bucket influencer. This score is
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the initial value that was calculated at the time the bucket was processed.
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`influencer_field_name`::
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(string) The field name of the influencer. For example `client_ip` or
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`user_name`.
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`influencer_field_value`::
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(string) The field value of the influencer. For example `192.168.88.2` or
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`Bob`.
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`is_interim`::
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(boolean) If true, this is an interim result. In other words, the bucket
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influencer results are calculated based on partial input data.
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`job_id`::
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(string) The unique identifier for the job that these results belong to.
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`probability`::
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(number) The probability that the bucket has this behavior, in the range 0
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to 1. For example, 0.0000109783. This value can be held to a high precision
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of over 300 decimal places, so the `anomaly_score` is provided as a
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human-readable and friendly interpretation of this.
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`raw_anomaly_score`::
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(number) Internal.
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`result_type`::
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(string) Internal. This value is always set to `bucket_influencer`.
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`timestamp`::
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(date) The start time of the bucket for which these results were calculated.
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[float]
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[[ml-results-influencers]]
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==== Influencers
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Influencers are the entities that have contributed to, or are to blame for,
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the anomalies. Influencer results are available only if an
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`influencer_field_name` is specified in the job configuration.
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Influencers are given an `influencer_score`, which is calculated based on the
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anomalies that have occurred in each bucket interval. For jobs with more than
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one detector, this gives a powerful view of the most anomalous entities.
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For example, if you are analyzing unusual bytes sent and unusual domains
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visited and you specified `user_name` as the influencer, then an
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`influencer_score` for each anomalous user name is written per bucket. For
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example, if `user_name: Bob` had an `influencer_score` greater than 75, then
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`Bob` would be considered very anomalous during this time interval in one or
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both of those areas (unusual bytes sent or unusual domains visited).
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One influencer result is written per bucket for each influencer that is
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considered anomalous.
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When you identify an influencer with a high score, you can investigate further
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by accessing the records resource for that bucket and enumerating the anomaly
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records that contain the influencer.
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An influencer object has the following properties:
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`bucket_span`::
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(number) The length of the bucket in seconds. This value matches the `bucket_span`
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that is specified in the job.
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`influencer_score`::
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(number) A normalized score between 0-100, which is based on the probability
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of the influencer in this bucket aggregated across detectors. Unlike
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`initial_influencer_score`, this value will be updated by a re-normalization
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process as new data is analyzed.
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`initial_influencer_score`::
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(number) A normalized score between 0-100, which is based on the probability
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of the influencer aggregated across detectors. This is the initial value that
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was calculated at the time the bucket was processed.
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`influencer_field_name`::
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(string) The field name of the influencer.
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`influencer_field_value`::
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(string) The entity that influenced, contributed to, or was to blame for the
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anomaly.
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`is_interim`::
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(boolean) If true, this is an interim result. In other words, the influencer
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results are calculated based on partial input data.
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`job_id`::
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(string) The unique identifier for the job that these results belong to.
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`probability`::
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(number) The probability that the influencer has this behavior, in the range
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0 to 1. For example, 0.0000109783. This value can be held to a high precision
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of over 300 decimal places, so the `influencer_score` is provided as a
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human-readable and friendly interpretation of this.
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// For example, 0.03 means 3%. This value is held to a high precision of over
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//300 decimal places. In scientific notation, a value of 3.24E-300 is highly
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//unlikely and therefore highly anomalous.
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`result_type`::
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(string) Internal. This value is always set to `influencer`.
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`timestamp`::
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(date) The start time of the bucket for which these results were calculated.
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NOTE: Additional influencer properties are added, depending on the fields being
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analyzed. For example, if it's analyzing `user_name` as an influencer, then a
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field `user_name` is added to the result document. This information enables you to
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filter the anomaly results more easily.
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[float]
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[[ml-results-records]]
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==== Records
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Records contain the detailed analytical results. They describe the anomalous
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activity that has been identified in the input data based on the detector
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configuration.
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For example, if you are looking for unusually large data transfers, an anomaly
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record can identify the source IP address, the destination, the time window
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during which it occurred, the expected and actual size of the transfer, and the
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probability of this occurrence.
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There can be many anomaly records depending on the characteristics and size of
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the input data. In practice, there are often too many to be able to manually
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process them. The {xpackml} features therefore perform a sophisticated
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aggregation of the anomaly records into buckets.
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The number of record results depends on the number of anomalies found in each
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bucket, which relates to the number of time series being modeled and the number of
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detectors.
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A record object has the following properties:
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`actual`::
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(array) The actual value for the bucket.
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`bucket_span`::
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(number) The length of the bucket in seconds.
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This value matches the `bucket_span` that is specified in the job.
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`by_field_name`::
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(string) The name of the analyzed field. This value is present only if
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it is specified in the detector. For example, `client_ip`.
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`by_field_value`::
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(string) The value of `by_field_name`. This value is present only if
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it is specified in the detector. For example, `192.168.66.2`.
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`causes`::
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(array) For population analysis, an over field must be specified in the
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detector. This property contains an array of anomaly records that are the
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causes for the anomaly that has been identified for the over field. If no
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over fields exist, this field is not present. This sub-resource contains
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the most anomalous records for the `over_field_name`. For scalability reasons,
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a maximum of the 10 most significant causes of the anomaly are returned. As
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part of the core analytical modeling, these low-level anomaly records are
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aggregated for their parent over field record. The causes resource contains
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similar elements to the record resource, namely `actual`, `typical`,
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`*_field_name` and `*_field_value`. Probability and scores are not applicable
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to causes.
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`detector_index`::
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(number) A unique identifier for the detector.
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`field_name`::
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(string) Certain functions require a field to operate on, for example, `sum()`.
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For those functions, this value is the name of the field to be analyzed.
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`function`::
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(string) The function in which the anomaly occurs, as specified in the
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detector configuration. For example, `max`.
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`function_description`::
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(string) The description of the function in which the anomaly occurs, as
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specified in the detector configuration.
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`influencers`::
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(array) If `influencers` was specified in the detector configuration, then
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this array contains influencers that contributed to or were to blame for an
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anomaly.
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`initial_record_score`::
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(number) A normalized score between 0-100, which is based on the
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probability of the anomalousness of this record. This is the initial value
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that was calculated at the time the bucket was processed.
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`is_interim`::
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(boolean) If true, this is an interim result. In other words, the anomaly
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record is calculated based on partial input data.
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`job_id`::
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(string) The unique identifier for the job that these results belong to.
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`over_field_name`::
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(string) The name of the over field that was used in the analysis. This value
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is present only if it was specified in the detector. Over fields are used
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in population analysis. For example, `user`.
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`over_field_value`::
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(string) The value of `over_field_name`. This value is present only if it
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was specified in the detector. For example, `Bob`.
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`partition_field_name`::
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(string) The name of the partition field that was used in the analysis. This
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value is present only if it was specified in the detector. For example,
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`region`.
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`partition_field_value`::
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(string) The value of `partition_field_name`. This value is present only if
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it was specified in the detector. For example, `us-east-1`.
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`probability`::
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(number) The probability of the individual anomaly occurring, in the range
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0 to 1. For example, 0.0000772031. This value can be held to a high precision
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of over 300 decimal places, so the `record_score` is provided as a
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human-readable and friendly interpretation of this.
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//In scientific notation, a value of 3.24E-300 is highly unlikely and therefore
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//highly anomalous.
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`multi_bucket_impact`::
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(number) an indication of how strongly an anomaly is multi bucket or single bucket.
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The value is on a scale of -5 to +5 where -5 means the anomaly is purely single
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bucket and +5 means the anomaly is purely multi bucket.
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`record_score`::
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(number) A normalized score between 0-100, which is based on the probability
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of the anomalousness of this record. Unlike `initial_record_score`, this
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value will be updated by a re-normalization process as new data is analyzed.
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`result_type`::
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(string) Internal. This is always set to `record`.
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`timestamp`::
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(date) The start time of the bucket for which these results were calculated.
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`typical`::
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(array) The typical value for the bucket, according to analytical modeling.
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NOTE: Additional record properties are added, depending on the fields being
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analyzed. For example, if it's analyzing `hostname` as a _by field_, then a field
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`hostname` is added to the result document. This information enables you to
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filter the anomaly results more easily.
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[float]
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[[ml-results-categories]]
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==== Categories
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When `categorization_field_name` is specified in the job configuration, it is
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possible to view the definitions of the resulting categories. A category
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definition describes the common terms matched and contains examples of matched
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values.
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The anomaly results from a categorization analysis are available as bucket,
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influencer, and record results. For example, the results might indicate that
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at 16:45 there was an unusual count of log message category 11. You can then
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examine the description and examples of that category.
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A category resource has the following properties:
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`category_id`::
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(unsigned integer) A unique identifier for the category.
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`examples`::
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(array) A list of examples of actual values that matched the category.
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`grok_pattern`::
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experimental[] (string) A Grok pattern that could be used in Logstash or an
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Ingest Pipeline to extract fields from messages that match the category. This
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field is experimental and may be changed or removed in a future release. The
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Grok patterns that are found are not optimal, but are often a good starting
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point for manual tweaking.
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`job_id`::
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(string) The unique identifier for the job that these results belong to.
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`max_matching_length`::
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(unsigned integer) The maximum length of the fields that matched the category.
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The value is increased by 10% to enable matching for similar fields that have
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not been analyzed.
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`regex`::
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(string) A regular expression that is used to search for values that match the
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category.
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`terms`::
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(string) A space separated list of the common tokens that are matched in
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values of the category.
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[float]
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[[ml-results-overall-buckets]]
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==== Overall Buckets
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Overall buckets provide a summary of bucket results over multiple jobs.
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Their `bucket_span` equals the longest `bucket_span` of the jobs in question.
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The `overall_score` is the `top_n` average of the max `anomaly_score` per job
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within the overall bucket time interval.
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This means that you can fine-tune the `overall_score` so that it is more
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or less sensitive to the number of jobs that detect an anomaly at the same time.
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An overall bucket resource has the following properties:
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`timestamp`::
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(date) The start time of the overall bucket.
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`bucket_span`::
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(number) The length of the bucket in seconds. Matches the `bucket_span`
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of the job with the longest one.
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`overall_score`::
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(number) The `top_n` average of the max bucket `anomaly_score` per job.
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`jobs`::
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(array) An array of objects that contain the `max_anomaly_score` per `job_id`.
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`is_interim`::
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(boolean) If true, this is an interim result. In other words, the anomaly
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record is calculated based on partial input data.
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`result_type`::
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(string) Internal. This is always set to `overall_bucket`.
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