Predict future behavior of a time series Generally available; Added in 6.1.0
Path parameters
-
Identifier for the anomaly detection job. The job must be open when you create a forecast; otherwise, an error occurs.
Query parameters
-
A period of time that indicates how far into the future to forecast. For example,
30d
corresponds to 30 days. The forecast starts at the last record that was processed.External documentation -
The period of time that forecast results are retained. After a forecast expires, the results are deleted. If set to a value of 0, the forecast is never automatically deleted.
External documentation -
The maximum memory the forecast can use. If the forecast needs to use more than the provided amount, it will spool to disk. Default is 20mb, maximum is 500mb and minimum is 1mb. If set to 40% or more of the job’s configured memory limit, it is automatically reduced to below that amount.
Body
-
Refer to the description for the
duration
query parameter.External documentation -
Refer to the description for the
expires_in
query parameter.External documentation -
Refer to the description for the
max_model_memory
query parameter.Default value is
20mb
.
POST _ml/anomaly_detectors/low_request_rate/_forecast { "duration": "10d" }
resp = client.ml.forecast( job_id="low_request_rate", duration="10d", )
const response = await client.ml.forecast({ job_id: "low_request_rate", duration: "10d", });
response = client.ml.forecast( job_id: "low_request_rate", body: { "duration": "10d" } )
$resp = $client->ml()->forecast([ "job_id" => "low_request_rate", "body" => [ "duration" => "10d", ], ]);
curl -X POST -H "Authorization: ApiKey $ELASTIC_API_KEY" -H "Content-Type: application/json" -d '{"duration":"10d"}' "$ELASTICSEARCH_URL/_ml/anomaly_detectors/low_request_rate/_forecast"
client.ml().forecast(f -> f .duration(d -> d .time("10d") ) .jobId("low_request_rate") );
{ "duration": "10d" }