//lcawley: Verified example output 2017-04-11 [[ml-flush-job]] ==== Flush Jobs The flush job API forces any buffered data to be processed by the job. ===== Request `POST _xpack/ml/anomaly_detectors//_flush` ===== Description The flush job API is only applicable when sending data for analysis using the <>. Depending on the content of the buffer, then it might additionally calculate new results. Both flush and close operations are similar, however the flush is more efficient if you are expecting to send more data for analysis. When flushing, the job remains open and is available to continue analyzing data. A close operation additionally prunes and persists the model state to disk and the job must be opened again before analyzing further data. ===== Path Parameters `job_id` (required):: (string) Identifier for the job ===== Query Parameters `advance_time`:: (string) Specifies that no data prior to the date `advance_time` is expected. `end`:: (string) When used in conjunction with `calc_interim`, specifies the range of buckets on which to calculate interim results. `calc_interim`:: (boolean) If true, calculates the interim results for the most recent bucket or all buckets within the latency period. `start`:: (string) When used in conjunction with `calc_interim`, specifies the range of buckets on which to calculate interim results. ===== Authorization You must have `manage_ml`, or `manage` cluster privileges to use this API. For more information, see <>. ===== Examples The following example flushes the `farequote` job: [source,js] -------------------------------------------------- POST _xpack/ml/anomaly_detectors/farequote/_flush { "calc_interim": true } -------------------------------------------------- // CONSOLE // TEST[skip:todo] When the operation succeeds, you receive the following results: [source,js] ---- { "flushed": true } ----