Get trained model API
Retrieves configuration information for a trained model.
This functionality is experimental and may be changed or removed completely in a future release. Elastic will take a best effort approach to fix any issues, but experimental features are not subject to the support SLA of official GA features.
Request
GET _ml/inference/
GET _ml/inference/<model_id>
GET _ml/inference/_all
GET _ml/inference/<model_id1>,<model_id2>
GET _ml/inference/<model_id_pattern*>
Prerequisites
Required privileges which should be added to a custom role:
- cluster:
monitor_ml
For more information, see Security privileges and Machine learning security privileges.
Description
You can get information for multiple trained models in a single API request by using a comma-separated list of model IDs or a wildcard expression.
Path parameters
<model_id>
(Optional, string) The unique identifier of the trained model.
Query parameters
allow_no_match
(Optional, boolean) Specifies what to do when the request:
- Contains wildcard expressions and there are no models that match.
- Contains the
_all
string or no identifiers and there are no matches. - Contains wildcard expressions and there are only partial matches.
The default value is true
, which returns an empty array when there are no matches and the subset of results when there are partial matches. If this parameter is false
, the request returns a 404
status code when there are no matches or only partial matches.
decompress_definition
(Optional, boolean) Specifies whether the included model definition should be returned as a JSON map (true
) or in a custom compressed format (false
). Defaults to true
.
for_export
(Optional, boolean) Indicates if certain fields should be removed from the model configuration on retrieval. This allows the model to be in an acceptable format to be retrieved and then added to another cluster. Default is false.
from
(Optional, integer) Skips the specified number of models. The default value is 0
.
include_model_definition
(Optional, boolean) Specifies whether the model definition is returned in the response. Defaults to false
. When true
, only a single model must match the ID patterns provided. Otherwise, a bad request is returned.
size
(Optional, integer) Specifies the maximum number of models to obtain. The default value is 100
.
tags
(Optional, string) A comma delimited string of tags. A trained model can have many tags, or none. When supplied, only trained models that contain all the supplied tags are returned.
Response body
trained_model_configs
(array) An array of trained model resources, which are sorted by the model_id
value in ascending order.
Properties of trained model resources
created_by
(string) Information on the creator of the trained model.
create_time
(time units) The time when the trained model was created.
default_field_map
(object) A string to string object that contains the default field map to use when inferring against the model. For example, data frame analytics may train the model on a specific multi-field
foo.keyword
. The analytics job would then supply a default field map entry for"foo" : "foo.keyword"
.Any field map described in the inference configuration takes precedence.
estimated_heap_memory_usage_bytes
(integer) The estimated heap usage in bytes to keep the trained model in memory.
estimated_operations
(integer) The estimated number of operations to use the trained model.
license_level
(string) The license level of the trained model.
metadata
(object) An object containing metadata about the trained model. For example, models created by data frame analytics contain
analysis_config
andinput
objects.model_id
(string) Idetifier for the trained model.
tags
(string) A comma delimited string of tags. A trained model can have many tags, or none.
version
(string) The Elasticsearch version number in which the trained model was created.
Response codes
400
If include_model_definition
is true
, this code indicates that more than one models match the ID pattern.
404
(Missing resources)
If allow_no_match
is false
, this code indicates that there are no resources that match the request or only partial matches for the request.
Examples
The following example gets configuration information for all the trained models:
GET _ml/inference/