Class: Aws::MachineLearning::Client
- Inherits:
-
Seahorse::Client::Base
- Object
- Seahorse::Client::Base
- Aws::MachineLearning::Client
- Includes:
- ClientStubs
- Defined in:
- lib/aws-sdk-machinelearning/client.rb
Class Attribute Summary collapse
- .identifier ⇒ Object readonly private
API Operations collapse
-
#add_tags(params = {}) ⇒ Types::AddTagsOutput
Adds one or more tags to an object, up to a limit of 10.
-
#create_batch_prediction(params = {}) ⇒ Types::CreateBatchPredictionOutput
Generates predictions for a group of observations.
-
#create_data_source_from_rds(params = {}) ⇒ Types::CreateDataSourceFromRDSOutput
Creates a ‘DataSource` object from an [ Amazon Relational Database Service] (Amazon RDS).
-
#create_data_source_from_redshift(params = {}) ⇒ Types::CreateDataSourceFromRedshiftOutput
Creates a ‘DataSource` from a database hosted on an Amazon Redshift cluster.
-
#create_data_source_from_s3(params = {}) ⇒ Types::CreateDataSourceFromS3Output
Creates a ‘DataSource` object.
-
#create_evaluation(params = {}) ⇒ Types::CreateEvaluationOutput
Creates a new ‘Evaluation` of an `MLModel`.
-
#create_ml_model(params = {}) ⇒ Types::CreateMLModelOutput
Creates a new ‘MLModel` using the `DataSource` and the recipe as information sources.
-
#create_realtime_endpoint(params = {}) ⇒ Types::CreateRealtimeEndpointOutput
Creates a real-time endpoint for the ‘MLModel`.
-
#delete_batch_prediction(params = {}) ⇒ Types::DeleteBatchPredictionOutput
Assigns the DELETED status to a ‘BatchPrediction`, rendering it unusable.
-
#delete_data_source(params = {}) ⇒ Types::DeleteDataSourceOutput
Assigns the DELETED status to a ‘DataSource`, rendering it unusable.
-
#delete_evaluation(params = {}) ⇒ Types::DeleteEvaluationOutput
Assigns the ‘DELETED` status to an `Evaluation`, rendering it unusable.
-
#delete_ml_model(params = {}) ⇒ Types::DeleteMLModelOutput
Assigns the ‘DELETED` status to an `MLModel`, rendering it unusable.
-
#delete_realtime_endpoint(params = {}) ⇒ Types::DeleteRealtimeEndpointOutput
Deletes a real time endpoint of an ‘MLModel`.
-
#delete_tags(params = {}) ⇒ Types::DeleteTagsOutput
Deletes the specified tags associated with an ML object.
-
#describe_batch_predictions(params = {}) ⇒ Types::DescribeBatchPredictionsOutput
Returns a list of ‘BatchPrediction` operations that match the search criteria in the request.
-
#describe_data_sources(params = {}) ⇒ Types::DescribeDataSourcesOutput
Returns a list of ‘DataSource` that match the search criteria in the request.
-
#describe_evaluations(params = {}) ⇒ Types::DescribeEvaluationsOutput
Returns a list of ‘DescribeEvaluations` that match the search criteria in the request.
-
#describe_ml_models(params = {}) ⇒ Types::DescribeMLModelsOutput
Returns a list of ‘MLModel` that match the search criteria in the request.
-
#describe_tags(params = {}) ⇒ Types::DescribeTagsOutput
Describes one or more of the tags for your Amazon ML object.
-
#get_batch_prediction(params = {}) ⇒ Types::GetBatchPredictionOutput
Returns a ‘BatchPrediction` that includes detailed metadata, status, and data file information for a `Batch Prediction` request.
-
#get_data_source(params = {}) ⇒ Types::GetDataSourceOutput
Returns a ‘DataSource` that includes metadata and data file information, as well as the current status of the `DataSource`.
-
#get_evaluation(params = {}) ⇒ Types::GetEvaluationOutput
Returns an ‘Evaluation` that includes metadata as well as the current status of the `Evaluation`.
-
#get_ml_model(params = {}) ⇒ Types::GetMLModelOutput
Returns an ‘MLModel` that includes detailed metadata, data source information, and the current status of the `MLModel`.
-
#predict(params = {}) ⇒ Types::PredictOutput
Generates a prediction for the observation using the specified ‘ML Model`.
-
#update_batch_prediction(params = {}) ⇒ Types::UpdateBatchPredictionOutput
Updates the ‘BatchPredictionName` of a `BatchPrediction`.
-
#update_data_source(params = {}) ⇒ Types::UpdateDataSourceOutput
Updates the ‘DataSourceName` of a `DataSource`.
-
#update_evaluation(params = {}) ⇒ Types::UpdateEvaluationOutput
Updates the ‘EvaluationName` of an `Evaluation`.
-
#update_ml_model(params = {}) ⇒ Types::UpdateMLModelOutput
Updates the ‘MLModelName` and the `ScoreThreshold` of an `MLModel`.
Class Method Summary collapse
- .errors_module ⇒ Object private
Instance Method Summary collapse
- #build_request(operation_name, params = {}) ⇒ Object private
-
#initialize(options) ⇒ Client
constructor
A new instance of Client.
-
#wait_until(waiter_name, params = {}, options = {}) {|w.waiter| ... } ⇒ Boolean
Polls an API operation until a resource enters a desired state.
- #waiter_names ⇒ Object deprecated private Deprecated.
Constructor Details
#initialize(options) ⇒ Client
Returns a new instance of Client.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 263 def initialize(*args) super end |
Class Attribute Details
.identifier ⇒ Object (readonly)
This method is part of a private API. You should avoid using this method if possible, as it may be removed or be changed in the future.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 2370 def identifier @identifier end |
Class Method Details
.errors_module ⇒ Object
This method is part of a private API. You should avoid using this method if possible, as it may be removed or be changed in the future.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 2373 def errors_module Errors end |
Instance Method Details
#add_tags(params = {}) ⇒ Types::AddTagsOutput
Adds one or more tags to an object, up to a limit of 10. Each tag consists of a key and an optional value. If you add a tag using a key that is already associated with the ML object, ‘AddTags` updates the tag’s value.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 310 def (params = {}, = {}) req = build_request(:add_tags, params) req.send_request() end |
#build_request(operation_name, params = {}) ⇒ Object
This method is part of a private API. You should avoid using this method if possible, as it may be removed or be changed in the future.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 2229 def build_request(operation_name, params = {}) handlers = @handlers.for(operation_name) context = Seahorse::Client::RequestContext.new( operation_name: operation_name, operation: config.api.operation(operation_name), client: self, params: params, config: config) context[:gem_name] = 'aws-sdk-machinelearning' context[:gem_version] = '1.16.0' Seahorse::Client::Request.new(handlers, context) end |
#create_batch_prediction(params = {}) ⇒ Types::CreateBatchPredictionOutput
Generates predictions for a group of observations. The observations to process exist in one or more data files referenced by a ‘DataSource`. This operation creates a new `BatchPrediction`, and uses an `MLModel` and the data files referenced by the `DataSource` as information sources.
‘CreateBatchPrediction` is an asynchronous operation. In response to `CreateBatchPrediction`, Amazon Machine Learning (Amazon ML) immediately returns and sets the `BatchPrediction` status to `PENDING`. After the `BatchPrediction` completes, Amazon ML sets the status to `COMPLETED`.
You can poll for status updates by using the GetBatchPrediction operation and checking the ‘Status` parameter of the result. After the `COMPLETED` status appears, the results are available in the location specified by the `OutputUri` parameter.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 381 def create_batch_prediction(params = {}, = {}) req = build_request(:create_batch_prediction, params) req.send_request() end |
#create_data_source_from_rds(params = {}) ⇒ Types::CreateDataSourceFromRDSOutput
Creates a ‘DataSource` object from an [ Amazon Relational Database Service] (Amazon RDS). A `DataSource` references data that can be used to perform `CreateMLModel`, `CreateEvaluation`, or `CreateBatchPrediction` operations.
‘CreateDataSourceFromRDS` is an asynchronous operation. In response to `CreateDataSourceFromRDS`, Amazon Machine Learning (Amazon ML) immediately returns and sets the `DataSource` status to `PENDING`. After the `DataSource` is created and ready for use, Amazon ML sets the `Status` parameter to `COMPLETED`. `DataSource` in the `COMPLETED` or `PENDING` state can be used only to perform `>CreateMLModel`>, `CreateEvaluation`, or `CreateBatchPrediction` operations.
If Amazon ML cannot accept the input source, it sets the ‘Status` parameter to `FAILED` and includes an error message in the `Message` attribute of the `GetDataSource` operation response.
[1]: aws.amazon.com/rds/
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# File 'lib/aws-sdk-machinelearning/client.rb', line 515 def create_data_source_from_rds(params = {}, = {}) req = build_request(:create_data_source_from_rds, params) req.send_request() end |
#create_data_source_from_redshift(params = {}) ⇒ Types::CreateDataSourceFromRedshiftOutput
Creates a ‘DataSource` from a database hosted on an Amazon Redshift cluster. A `DataSource` references data that can be used to perform either `CreateMLModel`, `CreateEvaluation`, or `CreateBatchPrediction` operations.
‘CreateDataSourceFromRedshift` is an asynchronous operation. In response to `CreateDataSourceFromRedshift`, Amazon Machine Learning (Amazon ML) immediately returns and sets the `DataSource` status to `PENDING`. After the `DataSource` is created and ready for use, Amazon ML sets the `Status` parameter to `COMPLETED`. `DataSource` in `COMPLETED` or `PENDING` states can be used to perform only `CreateMLModel`, `CreateEvaluation`, or `CreateBatchPrediction` operations.
If Amazon ML can’t accept the input source, it sets the ‘Status` parameter to `FAILED` and includes an error message in the `Message` attribute of the `GetDataSource` operation response.
The observations should be contained in the database hosted on an Amazon Redshift cluster and should be specified by a ‘SelectSqlQuery` query. Amazon ML executes an `Unload` command in Amazon Redshift to transfer the result set of the `SelectSqlQuery` query to `S3StagingLocation`.
After the ‘DataSource` has been created, it’s ready for use in evaluations and batch predictions. If you plan to use the ‘DataSource` to train an `MLModel`, the `DataSource` also requires a recipe. A recipe describes how each input variable will be used in training an `MLModel`. Will the variable be included or excluded from training? Will the variable be manipulated; for example, will it be combined with another variable or will it be split apart into word combinations? The recipe provides answers to these questions.
<?oxy\_insert\_start author="laurama" timestamp="20160406T153842-0700">You can't change an existing datasource, but you can copy and modify
the settings from an existing Amazon Redshift datasource to create a new datasource. To do so, call ‘GetDataSource` for an existing datasource and copy the values to a `CreateDataSource` call. Change the settings that you want to change and make sure that all required fields have the appropriate values.
<?oxy\_insert\_end>
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# File 'lib/aws-sdk-machinelearning/client.rb', line 650 def create_data_source_from_redshift(params = {}, = {}) req = build_request(:create_data_source_from_redshift, params) req.send_request() end |
#create_data_source_from_s3(params = {}) ⇒ Types::CreateDataSourceFromS3Output
Creates a ‘DataSource` object. A `DataSource` references data that can be used to perform `CreateMLModel`, `CreateEvaluation`, or `CreateBatchPrediction` operations.
‘CreateDataSourceFromS3` is an asynchronous operation. In response to `CreateDataSourceFromS3`, Amazon Machine Learning (Amazon ML) immediately returns and sets the `DataSource` status to `PENDING`. After the `DataSource` has been created and is ready for use, Amazon ML sets the `Status` parameter to `COMPLETED`. `DataSource` in the `COMPLETED` or `PENDING` state can be used to perform only `CreateMLModel`, `CreateEvaluation` or `CreateBatchPrediction` operations.
If Amazon ML can’t accept the input source, it sets the ‘Status` parameter to `FAILED` and includes an error message in the `Message` attribute of the `GetDataSource` operation response.
The observation data used in a ‘DataSource` should be ready to use; that is, it should have a consistent structure, and missing data values should be kept to a minimum. The observation data must reside in one or more .csv files in an Amazon Simple Storage Service (Amazon S3) location, along with a schema that describes the data items by name and type. The same schema must be used for all of the data files referenced by the `DataSource`.
After the ‘DataSource` has been created, it’s ready to use in evaluations and batch predictions. If you plan to use the ‘DataSource` to train an `MLModel`, the `DataSource` also needs a recipe. A recipe describes how each input variable will be used in training an `MLModel`. Will the variable be included or excluded from training? Will the variable be manipulated; for example, will it be combined with another variable or will it be split apart into word combinations? The recipe provides answers to these questions.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 742 def create_data_source_from_s3(params = {}, = {}) req = build_request(:create_data_source_from_s3, params) req.send_request() end |
#create_evaluation(params = {}) ⇒ Types::CreateEvaluationOutput
Creates a new ‘Evaluation` of an `MLModel`. An `MLModel` is evaluated on a set of observations associated to a `DataSource`. Like a `DataSource` for an `MLModel`, the `DataSource` for an `Evaluation` contains values for the `Target Variable`. The `Evaluation` compares the predicted result for each observation to the actual outcome and provides a summary so that you know how effective the `MLModel` functions on the test data. Evaluation generates a relevant performance metric, such as BinaryAUC, RegressionRMSE or MulticlassAvgFScore based on the corresponding `MLModelType`: `BINARY`, `REGRESSION` or `MULTICLASS`.
‘CreateEvaluation` is an asynchronous operation. In response to `CreateEvaluation`, Amazon Machine Learning (Amazon ML) immediately returns and sets the evaluation status to `PENDING`. After the `Evaluation` is created and ready for use, Amazon ML sets the status to `COMPLETED`.
You can use the ‘GetEvaluation` operation to check progress of the evaluation during the creation operation.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 802 def create_evaluation(params = {}, = {}) req = build_request(:create_evaluation, params) req.send_request() end |
#create_ml_model(params = {}) ⇒ Types::CreateMLModelOutput
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`.
‘CreateMLModel` is an asynchronous operation. In response to `CreateMLModel`, 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 ‘GetMLModel` operation to check the progress of the `MLModel` during the creation operation.
‘CreateMLModel` requires a `DataSource` with computed statistics, which can be created by setting `ComputeStatistics` to `true` in `CreateDataSourceFromRDS`, `CreateDataSourceFromS3`, or `CreateDataSourceFromRedshift` operations.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 933 def create_ml_model(params = {}, = {}) req = build_request(:create_ml_model, params) req.send_request() end |
#create_realtime_endpoint(params = {}) ⇒ Types::CreateRealtimeEndpointOutput
Creates a real-time endpoint for the ‘MLModel`. The endpoint contains the URI of the `MLModel`; that is, the location to send real-time prediction requests for the specified `MLModel`.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 966 def create_realtime_endpoint(params = {}, = {}) req = build_request(:create_realtime_endpoint, params) req.send_request() end |
#delete_batch_prediction(params = {}) ⇒ Types::DeleteBatchPredictionOutput
Assigns the DELETED status to a ‘BatchPrediction`, rendering it unusable.
After using the ‘DeleteBatchPrediction` operation, you can use the GetBatchPrediction operation to verify that the status of the `BatchPrediction` changed to DELETED.
Caution: The result of the ‘DeleteBatchPrediction` operation is irreversible.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1000 def delete_batch_prediction(params = {}, = {}) req = build_request(:delete_batch_prediction, params) req.send_request() end |
#delete_data_source(params = {}) ⇒ Types::DeleteDataSourceOutput
Assigns the DELETED status to a ‘DataSource`, rendering it unusable.
After using the ‘DeleteDataSource` operation, you can use the GetDataSource operation to verify that the status of the `DataSource` changed to DELETED.
Caution: The results of the ‘DeleteDataSource` operation are irreversible.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1033 def delete_data_source(params = {}, = {}) req = build_request(:delete_data_source, params) req.send_request() end |
#delete_evaluation(params = {}) ⇒ Types::DeleteEvaluationOutput
Assigns the ‘DELETED` status to an `Evaluation`, rendering it unusable.
After invoking the ‘DeleteEvaluation` operation, you can use the `GetEvaluation` operation to verify that the status of the `Evaluation` changed to `DELETED`.
<caution markdown=“1”><title>Caution</title> The results of the ‘DeleteEvaluation` operation are irreversible.
</caution>
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1069 def delete_evaluation(params = {}, = {}) req = build_request(:delete_evaluation, params) req.send_request() end |
#delete_ml_model(params = {}) ⇒ Types::DeleteMLModelOutput
Assigns the ‘DELETED` status to an `MLModel`, rendering it unusable.
After using the ‘DeleteMLModel` operation, you can use the `GetMLModel` operation to verify that the status of the `MLModel` changed to DELETED.
Caution: The result of the ‘DeleteMLModel` operation is irreversible.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1102 def delete_ml_model(params = {}, = {}) req = build_request(:delete_ml_model, params) req.send_request() end |
#delete_realtime_endpoint(params = {}) ⇒ Types::DeleteRealtimeEndpointOutput
Deletes a real time endpoint of an ‘MLModel`.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1133 def delete_realtime_endpoint(params = {}, = {}) req = build_request(:delete_realtime_endpoint, params) req.send_request() end |
#delete_tags(params = {}) ⇒ Types::DeleteTagsOutput
Deletes the specified tags associated with an ML object. After this operation is complete, you can’t recover deleted tags.
If you specify a tag that doesn’t exist, Amazon ML ignores it.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1172 def (params = {}, = {}) req = build_request(:delete_tags, params) req.send_request() end |
#describe_batch_predictions(params = {}) ⇒ Types::DescribeBatchPredictionsOutput
Returns a list of ‘BatchPrediction` operations that match the search criteria in the request.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1303 def describe_batch_predictions(params = {}, = {}) req = build_request(:describe_batch_predictions, params) req.send_request() end |
#describe_data_sources(params = {}) ⇒ Types::DescribeDataSourcesOutput
Returns a list of ‘DataSource` that match the search criteria in the request.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1439 def describe_data_sources(params = {}, = {}) req = build_request(:describe_data_sources, params) req.send_request() end |
#describe_evaluations(params = {}) ⇒ Types::DescribeEvaluationsOutput
Returns a list of ‘DescribeEvaluations` that match the search criteria in the request.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1568 def describe_evaluations(params = {}, = {}) req = build_request(:describe_evaluations, params) req.send_request() end |
#describe_ml_models(params = {}) ⇒ Types::DescribeMLModelsOutput
Returns a list of ‘MLModel` that match the search criteria in the request.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1708 def describe_ml_models(params = {}, = {}) req = build_request(:describe_ml_models, params) req.send_request() end |
#describe_tags(params = {}) ⇒ Types::DescribeTagsOutput
Describes one or more of the tags for your Amazon ML object.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1744 def (params = {}, = {}) req = build_request(:describe_tags, params) req.send_request() end |
#get_batch_prediction(params = {}) ⇒ Types::GetBatchPredictionOutput
Returns a ‘BatchPrediction` that includes detailed metadata, status, and data file information for a `Batch Prediction` request.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1803 def get_batch_prediction(params = {}, = {}) req = build_request(:get_batch_prediction, params) req.send_request() end |
#get_data_source(params = {}) ⇒ Types::GetDataSourceOutput
Returns a ‘DataSource` that includes metadata and data file information, as well as the current status of the `DataSource`.
‘GetDataSource` provides results in normal or verbose format. The verbose format adds the schema description and the list of files pointed to by the DataSource to the normal format.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1890 def get_data_source(params = {}, = {}) req = build_request(:get_data_source, params) req.send_request() end |
#get_evaluation(params = {}) ⇒ Types::GetEvaluationOutput
Returns an ‘Evaluation` that includes metadata as well as the current status of the `Evaluation`.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 1948 def get_evaluation(params = {}, = {}) req = build_request(:get_evaluation, params) req.send_request() end |
#get_ml_model(params = {}) ⇒ Types::GetMLModelOutput
Returns an ‘MLModel` that includes detailed metadata, data source information, and the current status of the `MLModel`.
‘GetMLModel` provides results in normal or verbose format.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 2029 def get_ml_model(params = {}, = {}) req = build_request(:get_ml_model, params) req.send_request() end |
#predict(params = {}) ⇒ Types::PredictOutput
Generates a prediction for the observation using the specified ‘ML Model`.
<note markdown=“1”><title>Note</title> Not all response parameters will be populated. Whether a response parameter is populated depends on the type of model requested.
</note>
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# File 'lib/aws-sdk-machinelearning/client.rb', line 2075 def predict(params = {}, = {}) req = build_request(:predict, params) req.send_request() end |
#update_batch_prediction(params = {}) ⇒ Types::UpdateBatchPredictionOutput
Updates the ‘BatchPredictionName` of a `BatchPrediction`.
You can use the ‘GetBatchPrediction` operation to view the contents of the updated data element.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 2108 def update_batch_prediction(params = {}, = {}) req = build_request(:update_batch_prediction, params) req.send_request() end |
#update_data_source(params = {}) ⇒ Types::UpdateDataSourceOutput
Updates the ‘DataSourceName` of a `DataSource`.
You can use the ‘GetDataSource` operation to view the contents of the updated data element.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 2142 def update_data_source(params = {}, = {}) req = build_request(:update_data_source, params) req.send_request() end |
#update_evaluation(params = {}) ⇒ Types::UpdateEvaluationOutput
Updates the ‘EvaluationName` of an `Evaluation`.
You can use the ‘GetEvaluation` operation to view the contents of the updated data element.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 2176 def update_evaluation(params = {}, = {}) req = build_request(:update_evaluation, params) req.send_request() end |
#update_ml_model(params = {}) ⇒ Types::UpdateMLModelOutput
Updates the ‘MLModelName` and the `ScoreThreshold` of an `MLModel`.
You can use the ‘GetMLModel` operation to view the contents of the updated data element.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 2220 def update_ml_model(params = {}, = {}) req = build_request(:update_ml_model, params) req.send_request() end |
#wait_until(waiter_name, params = {}, options = {}) {|w.waiter| ... } ⇒ Boolean
Polls an API operation until a resource enters a desired state.
## Basic Usage
A waiter will call an API operation until:
-
It is successful
-
It enters a terminal state
-
It makes the maximum number of attempts
In between attempts, the waiter will sleep.
# polls in a loop, sleeping between attempts
client.wait_until(waiter_name, params)
## Configuration
You can configure the maximum number of polling attempts, and the delay (in seconds) between each polling attempt. You can pass configuration as the final arguments hash.
# poll for ~25 seconds
client.wait_until(waiter_name, params, {
max_attempts: 5,
delay: 5,
})
## Callbacks
You can be notified before each polling attempt and before each delay. If you throw ‘:success` or `:failure` from these callbacks, it will terminate the waiter.
started_at = Time.now
client.wait_until(waiter_name, params, {
# disable max attempts
max_attempts: nil,
# poll for 1 hour, instead of a number of attempts
before_wait: -> (attempts, response) do
throw :failure if Time.now - started_at > 3600
end
})
## Handling Errors
When a waiter is unsuccessful, it will raise an error. All of the failure errors extend from Waiters::Errors::WaiterFailed.
begin
client.wait_until(...)
rescue Aws::Waiters::Errors::WaiterFailed
# resource did not enter the desired state in time
end
## Valid Waiters
The following table lists the valid waiter names, the operations they call, and the default ‘:delay` and `:max_attempts` values.
| waiter_name | params | :delay | :max_attempts | | ————————– | —————————– | ——– | ————- | | batch_prediction_available | #describe_batch_predictions | 30 | 60 | | data_source_available | #describe_data_sources | 30 | 60 | | evaluation_available | #describe_evaluations | 30 | 60 | | ml_model_available | #describe_ml_models | 30 | 60 |
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# File 'lib/aws-sdk-machinelearning/client.rb', line 2333 def wait_until(waiter_name, params = {}, = {}) w = waiter(waiter_name, ) yield(w.waiter) if block_given? # deprecated w.wait(params) end |
#waiter_names ⇒ Object
This method is part of a private API. You should avoid using this method if possible, as it may be removed or be changed in the future.
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# File 'lib/aws-sdk-machinelearning/client.rb', line 2341 def waiter_names waiters.keys end |