[role="xpack"] [[ml-get-overall-buckets]] === Get Overall Buckets API ++++ Get Overall Buckets ++++ Retrieves overall bucket results that summarize the bucket results of multiple jobs. ==== Request `GET _xpack/ml/anomaly_detectors//results/overall_buckets` + `GET _xpack/ml/anomaly_detectors/,/results/overall_buckets` + `GET _xpack/ml/anomaly_detectors/_all/results/overall_buckets` ==== Description You can summarize the bucket results for all jobs by using `_all` or by specifying `*` as the ``. An overall bucket has a span equal to the largest `bucket_span` value for the specified jobs. The `overall_score` is calculated by combining the scores of all the buckets within the overall bucket span. First, the maximum `anomaly_score` per job in the overall bucket is calculated. Then the `top_n` of those scores are averaged to result in the `overall_score`. This means that you can fine-tune the `overall_score` so that it is more or less sensitive to the number of jobs that detect an anomaly at the same time. For example, if you set `top_n` to `1`, the `overall_score` is the maximum bucket score in the overall bucket. Alternatively, if you set `top_n` to the number of jobs, the `overall_score` is high only when all jobs detect anomalies in that overall bucket. In addition, the optional parameter `bucket_span` may be used in order to request overall buckets that span longer than the largest job's `bucket_span`. When set, the `overall_score` will be the max `overall_score` of the corresponding overall buckets with a span equal to the largest job's `bucket_span`. ==== Path Parameters `job_id`:: (string) Identifier for the job. It can be a job identifier, a group name, a comma-separated list of jobs or groups, or a wildcard expression. ==== Request Body `allow_no_jobs`:: (boolean) If `false` and the `job_id` does not match any job an error will be returned. The default value is `true`. `bucket_span`:: (string) The span of the overall buckets. Must be greater or equal to the largest job's `bucket_span`. Defaults to the largest job's `bucket_span`. `end`:: (string) Returns overall buckets with timestamps earlier than this time. `exclude_interim`:: (boolean) If `true`, the output excludes interim overall buckets. Overall buckets are interim if any of the job buckets within the overall bucket interval are interim. By default, interim results are included. `overall_score`:: (double) Returns overall buckets with overall scores greater or equal than this value. `start`:: (string) Returns overall buckets with timestamps after this time. `top_n`:: (integer) The number of top job bucket scores to be used in the `overall_score` calculation. The default value is `1`. ===== Results The API returns the following information: `overall_buckets`:: (array) An array of overall bucket objects. For more information, see <>. ==== Authorization You must have `monitor_ml`, `monitor`, `manage_ml`, or `manage` cluster privileges to use this API. You also need `read` index privilege on the index that stores the results. The `machine_learning_admin` and `machine_learning_user` roles provide these privileges. For more information, see {xpack-ref}/security-privileges.html[Security Privileges] and {xpack-ref}/built-in-roles.html[Built-in Roles]. //<> and <>. ==== Examples The following example gets overall buckets for jobs with IDs matching `job-*`: [source,js] -------------------------------------------------- GET _xpack/ml/anomaly_detectors/job-*/results/overall_buckets { "overall_score": 80, "start": "1403532000000" } -------------------------------------------------- // CONSOLE // TEST[skip:todo] In this example, the API returns a single result that matches the specified score and time constraints. The `overall_score` is the max job score as `top_n` defaults to 1 when not specified: [source,js] ---- { "count": 1, "overall_buckets": [ { "timestamp" : 1403532000000, "bucket_span" : 3600, "overall_score" : 80.0, "jobs" : [ { "job_id" : "job-1", "max_anomaly_score" : 30.0 }, { "job_id" : "job-2", "max_anomaly_score" : 10.0 }, { "job_id" : "job-3", "max_anomaly_score" : 80.0 } ], "is_interim" : false, "result_type" : "overall_bucket" } ] } ---- The next example is similar but this time `top_n` is set to `2`: [source,js] -------------------------------------------------- GET _xpack/ml/anomaly_detectors/job-*/results/overall_buckets { "top_n": 2, "overall_score": 50.0, "start": "1403532000000" } -------------------------------------------------- // CONSOLE // TEST[skip:todo] Note how the `overall_score` is now the average of the top 2 job scores: [source,js] ---- { "count": 1, "overall_buckets": [ { "timestamp" : 1403532000000, "bucket_span" : 3600, "overall_score" : 55.0, "jobs" : [ { "job_id" : "job-1", "max_anomaly_score" : 30.0 }, { "job_id" : "job-2", "max_anomaly_score" : 10.0 }, { "job_id" : "job-3", "max_anomaly_score" : 80.0 } ], "is_interim" : false, "result_type" : "overall_bucket" } ] } ----