Creates a new MLModel using the DataSource and the recipe as information sources
Creates a new MLModel
using the DataSource
and the recipe as
information sources.
An MLModel
is nearly immutable. Users can update only the
MLModelName
and the ScoreThreshold
in an MLModel
without creating
a new MLModel
.
create_ml_model
is an asynchronous
operation. In response to
create_ml_model
, Amazon Machine
Learning (Amazon ML) immediately returns and sets the MLModel
status
to PENDING
. After the MLModel
has been created and ready is for use,
Amazon ML sets the status to COMPLETED
.
You can use the get_ml_model
operation
to check the progress of the MLModel
during the creation operation.
create_ml_model
requires a
DataSource
with computed statistics, which can be created by setting
ComputeStatistics
to true
in
create_data_source_from_rds
,
create_data_source_from_s3
,
or
create_data_source_from_redshift
operations.
machinelearning_create_ml_model(MLModelId, MLModelName, MLModelType, Parameters, TrainingDataSourceId, Recipe, RecipeUri)
MLModelId |
[required] A user-supplied ID that uniquely identifies the |
MLModelName |
A user-supplied name or description of the |
MLModelType |
[required] The category of supervised learning that this
For more information, see the Amazon Machine Learning Developer Guide. |
Parameters |
A list of the training parameters in the The following is the current set of training parameters:
|
TrainingDataSourceId |
[required] The |
Recipe |
The data recipe for creating the |
RecipeUri |
The Amazon Simple Storage Service (Amazon S3) location and file name
that contains the |
A list with the following syntax:
list( MLModelId = "string" )
svc$create_ml_model( MLModelId = "string", MLModelName = "string", MLModelType = "REGRESSION"|"BINARY"|"MULTICLASS", Parameters = list( "string" ), TrainingDataSourceId = "string", Recipe = "string", RecipeUri = "string" )
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