@ThreadSafe public class AmazonMachineLearningClient extends AmazonWebServiceClient implements AmazonMachineLearning
Definition of the public APIs exposed by Amazon Machine Learning
LOGGING_AWS_REQUEST_METRIC| Constructor and Description | 
|---|
| AmazonMachineLearningClient()Constructs a new client to invoke service methods on Amazon Machine
 Learning. | 
| AmazonMachineLearningClient(AWSCredentials awsCredentials)Constructs a new client to invoke service methods on Amazon Machine
 Learning using the specified AWS account credentials. | 
| AmazonMachineLearningClient(AWSCredentials awsCredentials,
                           ClientConfiguration clientConfiguration)Constructs a new client to invoke service methods on Amazon Machine
 Learning using the specified AWS account credentials and client
 configuration options. | 
| AmazonMachineLearningClient(AWSCredentialsProvider awsCredentialsProvider)Constructs a new client to invoke service methods on Amazon Machine
 Learning using the specified AWS account credentials provider. | 
| AmazonMachineLearningClient(AWSCredentialsProvider awsCredentialsProvider,
                           ClientConfiguration clientConfiguration)Constructs a new client to invoke service methods on Amazon Machine
 Learning using the specified AWS account credentials provider and client
 configuration options. | 
| AmazonMachineLearningClient(AWSCredentialsProvider awsCredentialsProvider,
                           ClientConfiguration clientConfiguration,
                           RequestMetricCollector requestMetricCollector)Constructs a new client to invoke service methods on Amazon Machine
 Learning using the specified AWS account credentials provider, client
 configuration options, and request metric collector. | 
| AmazonMachineLearningClient(ClientConfiguration clientConfiguration)Constructs a new client to invoke service methods on Amazon Machine
 Learning. | 
| Modifier and Type | Method and Description | 
|---|---|
| CreateBatchPredictionResult | createBatchPrediction(CreateBatchPredictionRequest createBatchPredictionRequest)
 Generates predictions for a group of observations. | 
| CreateDataSourceFromRDSResult | createDataSourceFromRDS(CreateDataSourceFromRDSRequest createDataSourceFromRDSRequest)
 Creates a  DataSourceobject from an  Amazon Relational Database Service
 (Amazon RDS). | 
| CreateDataSourceFromRedshiftResult | createDataSourceFromRedshift(CreateDataSourceFromRedshiftRequest createDataSourceFromRedshiftRequest)
 Creates a  DataSourcefrom Amazon Redshift. | 
| CreateDataSourceFromS3Result | createDataSourceFromS3(CreateDataSourceFromS3Request createDataSourceFromS3Request)
 Creates a  DataSourceobject. | 
| CreateEvaluationResult | createEvaluation(CreateEvaluationRequest createEvaluationRequest)
 Creates a new  Evaluationof anMLModel. | 
| CreateMLModelResult | createMLModel(CreateMLModelRequest createMLModelRequest)
 Creates a new  MLModelusing the data files and the recipe as
 information sources. | 
| CreateRealtimeEndpointResult | createRealtimeEndpoint(CreateRealtimeEndpointRequest createRealtimeEndpointRequest)
 Creates a real-time endpoint for the  MLModel. | 
| DeleteBatchPredictionResult | deleteBatchPrediction(DeleteBatchPredictionRequest deleteBatchPredictionRequest)
 Assigns the DELETED status to a  BatchPrediction, rendering
 it unusable. | 
| DeleteDataSourceResult | deleteDataSource(DeleteDataSourceRequest deleteDataSourceRequest)
 Assigns the DELETED status to a  DataSource, rendering it
 unusable. | 
| DeleteEvaluationResult | deleteEvaluation(DeleteEvaluationRequest deleteEvaluationRequest)
 Assigns the  DELETEDstatus to anEvaluation,
 rendering it unusable. | 
| DeleteMLModelResult | deleteMLModel(DeleteMLModelRequest deleteMLModelRequest)
 Assigns the DELETED status to an  MLModel, rendering it
 unusable. | 
| DeleteRealtimeEndpointResult | deleteRealtimeEndpoint(DeleteRealtimeEndpointRequest deleteRealtimeEndpointRequest)
 Deletes a real time endpoint of an  MLModel. | 
| DescribeBatchPredictionsResult | describeBatchPredictions()Simplified method form for invoking the DescribeBatchPredictions
 operation. | 
| DescribeBatchPredictionsResult | describeBatchPredictions(DescribeBatchPredictionsRequest describeBatchPredictionsRequest)
 Returns a list of  BatchPredictionoperations that match the
 search criteria in the request. | 
| DescribeDataSourcesResult | describeDataSources()Simplified method form for invoking the DescribeDataSources operation. | 
| DescribeDataSourcesResult | describeDataSources(DescribeDataSourcesRequest describeDataSourcesRequest)
 Returns a list of  DataSourcethat match the search criteria
 in the request. | 
| DescribeEvaluationsResult | describeEvaluations()Simplified method form for invoking the DescribeEvaluations operation. | 
| DescribeEvaluationsResult | describeEvaluations(DescribeEvaluationsRequest describeEvaluationsRequest)
 Returns a list of  DescribeEvaluationsthat match the search
 criteria in the request. | 
| DescribeMLModelsResult | describeMLModels()Simplified method form for invoking the DescribeMLModels operation. | 
| DescribeMLModelsResult | describeMLModels(DescribeMLModelsRequest describeMLModelsRequest)
 Returns a list of  MLModelthat match the search criteria in
 the request. | 
| GetBatchPredictionResult | getBatchPrediction(GetBatchPredictionRequest getBatchPredictionRequest)
 Returns a  BatchPredictionthat includes detailed metadata,
 status, and data file information for aBatch Predictionrequest. | 
| ResponseMetadata | getCachedResponseMetadata(AmazonWebServiceRequest request)Returns additional metadata for a previously executed successful,
 request, typically used for debugging issues where a service isn't acting
 as expected. | 
| GetDataSourceResult | getDataSource(GetDataSourceRequest getDataSourceRequest)
 Returns a  DataSourcethat includes metadata and data file
 information, as well as the current status of theDataSource. | 
| GetEvaluationResult | getEvaluation(GetEvaluationRequest getEvaluationRequest)
 Returns an  Evaluationthat includes metadata as well as the
 current status of theEvaluation. | 
| GetMLModelResult | getMLModel(GetMLModelRequest getMLModelRequest)
 Returns an  MLModelthat includes detailed metadata, and data
 source information as well as the current status of theMLModel. | 
| PredictResult | predict(PredictRequest predictRequest)
 Generates a prediction for the observation using the specified
  ML Model. | 
| UpdateBatchPredictionResult | updateBatchPrediction(UpdateBatchPredictionRequest updateBatchPredictionRequest)
 Updates the  BatchPredictionNameof aBatchPrediction. | 
| UpdateDataSourceResult | updateDataSource(UpdateDataSourceRequest updateDataSourceRequest)
 Updates the  DataSourceNameof aDataSource. | 
| UpdateEvaluationResult | updateEvaluation(UpdateEvaluationRequest updateEvaluationRequest)
 Updates the  EvaluationNameof anEvaluation. | 
| UpdateMLModelResult | updateMLModel(UpdateMLModelRequest updateMLModelRequest)
 Updates the  MLModelNameand theScoreThresholdof anMLModel. | 
addRequestHandler, addRequestHandler, configureRegion, getRequestMetricsCollector, getServiceName, getSignerByURI, getSignerRegionOverride, getTimeOffset, removeRequestHandler, removeRequestHandler, setEndpoint, setEndpoint, setRegion, setServiceNameIntern, setSignerRegionOverride, setTimeOffset, shutdown, withEndpoint, withRegion, withRegion, withTimeOffsetequals, getClass, hashCode, notify, notifyAll, toString, wait, wait, waitsetEndpoint, setRegion, shutdownpublic AmazonMachineLearningClient()
All service calls made using this new client object are blocking, and will not return until the service call completes.
DefaultAWSCredentialsProviderChainpublic AmazonMachineLearningClient(ClientConfiguration clientConfiguration)
All service calls made using this new client object are blocking, and will not return until the service call completes.
clientConfiguration - The client configuration options controlling how this client
        connects to Amazon Machine Learning (ex: proxy settings, retry
        counts, etc.).DefaultAWSCredentialsProviderChainpublic AmazonMachineLearningClient(AWSCredentials awsCredentials)
All service calls made using this new client object are blocking, and will not return until the service call completes.
awsCredentials - The AWS credentials (access key ID and secret key) to use when
        authenticating with AWS services.public AmazonMachineLearningClient(AWSCredentials awsCredentials, ClientConfiguration clientConfiguration)
All service calls made using this new client object are blocking, and will not return until the service call completes.
awsCredentials - The AWS credentials (access key ID and secret key) to use when
        authenticating with AWS services.clientConfiguration - The client configuration options controlling how this client
        connects to Amazon Machine Learning (ex: proxy settings, retry
        counts, etc.).public AmazonMachineLearningClient(AWSCredentialsProvider awsCredentialsProvider)
All service calls made using this new client object are blocking, and will not return until the service call completes.
awsCredentialsProvider - The AWS credentials provider which will provide credentials to
        authenticate requests with AWS services.public AmazonMachineLearningClient(AWSCredentialsProvider awsCredentialsProvider, ClientConfiguration clientConfiguration)
All service calls made using this new client object are blocking, and will not return until the service call completes.
awsCredentialsProvider - The AWS credentials provider which will provide credentials to
        authenticate requests with AWS services.clientConfiguration - The client configuration options controlling how this client
        connects to Amazon Machine Learning (ex: proxy settings, retry
        counts, etc.).public AmazonMachineLearningClient(AWSCredentialsProvider awsCredentialsProvider, ClientConfiguration clientConfiguration, RequestMetricCollector requestMetricCollector)
All service calls made using this new client object are blocking, and will not return until the service call completes.
awsCredentialsProvider - The AWS credentials provider which will provide credentials to
        authenticate requests with AWS services.clientConfiguration - The client configuration options controlling how this client
        connects to Amazon Machine Learning (ex: proxy settings, retry
        counts, etc.).requestMetricCollector - optional request metric collectorpublic CreateBatchPredictionResult createBatchPrediction(CreateBatchPredictionRequest createBatchPredictionRequest)
 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.
 
createBatchPrediction in interface AmazonMachineLearningcreateBatchPredictionRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.InternalServerException - An error on the server occurred when trying to process a request.IdempotentParameterMismatchException - A second request to use or change an object was not allowed. This
         can result from retrying a request using a parameter that was not
         present in the original request.public CreateDataSourceFromRDSResult createDataSourceFromRDS(CreateDataSourceFromRDSRequest createDataSourceFromRDSRequest)
 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
 COMPLETED or PENDING status can only be used 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.
 
createDataSourceFromRDS in interface AmazonMachineLearningcreateDataSourceFromRDSRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.InternalServerException - An error on the server occurred when trying to process a request.IdempotentParameterMismatchException - A second request to use or change an object was not allowed. This
         can result from retrying a request using a parameter that was not
         present in the original request.public CreateDataSourceFromRedshiftResult createDataSourceFromRedshift(CreateDataSourceFromRedshiftRequest createDataSourceFromRedshiftRequest)
 Creates a DataSource from Amazon Redshift. 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
 status can only be used 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.
 
 The observations should exist in the database hosted on an Amazon
 Redshift cluster and should be specified by a SelectSqlQuery
 . Amazon ML executes 
 Unload command in Amazon Redshift to transfer the result set of
 SelectSqlQuery to S3StagingLocation.
 
 After the DataSource is created, it's ready for use in
 evaluations and batch predictions. If you plan to use the
 DataSource to train an MLModel, the
 DataSource requires another item -- a recipe. A recipe
 describes the observation variables that participate in training an
 MLModel. A recipe describes how each input variable will be
 used in training. Will the variable be included or excluded from
 training? Will the variable be manipulated, for example, combined with
 another variable or split apart into word combinations? The recipe
 provides answers to these questions. For more information, see the Amazon
 Machine Learning Developer Guide.
 
createDataSourceFromRedshift in interface AmazonMachineLearningcreateDataSourceFromRedshiftRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.InternalServerException - An error on the server occurred when trying to process a request.IdempotentParameterMismatchException - A second request to use or change an object was not allowed. This
         can result from retrying a request using a parameter that was not
         present in the original request.public CreateDataSourceFromS3Result createDataSourceFromS3(CreateDataSourceFromS3Request createDataSourceFromS3Request)
 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 is
 created and ready for use, Amazon ML sets the Status
 parameter to COMPLETED. DataSource in
 COMPLETED or PENDING status can only be used 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.
 
 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)
 bucket, 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 requires another item: a recipe. A recipe
 describes the observation variables that participate in training an
 MLModel. A recipe describes how each input variable will be
 used in training. Will the variable be included or excluded from
 training? Will the variable be manipulated, for example, combined with
 another variable, or split apart into word combinations? The recipe
 provides answers to these questions. For more information, see the Amazon
 Machine Learning Developer Guide.
 
createDataSourceFromS3 in interface AmazonMachineLearningcreateDataSourceFromS3Request - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.InternalServerException - An error on the server occurred when trying to process a request.IdempotentParameterMismatchException - A second request to use or change an object was not allowed. This
         can result from retrying a request using a parameter that was not
         present in the original request.public CreateEvaluationResult createEvaluation(CreateEvaluationRequest createEvaluationRequest)
 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.
createEvaluation in interface AmazonMachineLearningcreateEvaluationRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.InternalServerException - An error on the server occurred when trying to process a request.IdempotentParameterMismatchException - A second request to use or change an object was not allowed. This
         can result from retrying a request using a parameter that was not
         present in the original request.public CreateMLModelResult createMLModel(CreateMLModelRequest createMLModelRequest)
 Creates a new MLModel using the data files and the recipe as
 information sources.
 
 An MLModel is nearly immutable. Users can only update 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 is created and ready
 for use, Amazon ML sets the status to COMPLETED.
 
 You can use the GetMLModel operation to check 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.
 
createMLModel in interface AmazonMachineLearningcreateMLModelRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.InternalServerException - An error on the server occurred when trying to process a request.IdempotentParameterMismatchException - A second request to use or change an object was not allowed. This
         can result from retrying a request using a parameter that was not
         present in the original request.public CreateRealtimeEndpointResult createRealtimeEndpoint(CreateRealtimeEndpointRequest createRealtimeEndpointRequest)
 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
 .
 
createRealtimeEndpoint in interface AmazonMachineLearningcreateRealtimeEndpointRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public DeleteBatchPredictionResult deleteBatchPrediction(DeleteBatchPredictionRequest deleteBatchPredictionRequest)
 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.
 
deleteBatchPrediction in interface AmazonMachineLearningdeleteBatchPredictionRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public DeleteDataSourceResult deleteDataSource(DeleteDataSourceRequest deleteDataSourceRequest)
 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.
 
deleteDataSource in interface AmazonMachineLearningdeleteDataSourceRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public DeleteEvaluationResult deleteEvaluation(DeleteEvaluationRequest deleteEvaluationRequest)
 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: The results of the DeleteEvaluation
 operation are irreversible.
 
deleteEvaluation in interface AmazonMachineLearningdeleteEvaluationRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public DeleteMLModelResult deleteMLModel(DeleteMLModelRequest deleteMLModelRequest)
 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.
 
deleteMLModel in interface AmazonMachineLearningdeleteMLModelRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public DeleteRealtimeEndpointResult deleteRealtimeEndpoint(DeleteRealtimeEndpointRequest deleteRealtimeEndpointRequest)
 Deletes a real time endpoint of an MLModel.
 
deleteRealtimeEndpoint in interface AmazonMachineLearningdeleteRealtimeEndpointRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public DescribeBatchPredictionsResult describeBatchPredictions(DescribeBatchPredictionsRequest describeBatchPredictionsRequest)
 Returns a list of BatchPrediction operations that match the
 search criteria in the request.
 
describeBatchPredictions in interface AmazonMachineLearningdescribeBatchPredictionsRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.InternalServerException - An error on the server occurred when trying to process a request.public DescribeBatchPredictionsResult describeBatchPredictions()
AmazonMachineLearningdescribeBatchPredictions in interface AmazonMachineLearningAmazonMachineLearning.describeBatchPredictions(DescribeBatchPredictionsRequest)public DescribeDataSourcesResult describeDataSources(DescribeDataSourcesRequest describeDataSourcesRequest)
 Returns a list of DataSource that match the search criteria
 in the request.
 
describeDataSources in interface AmazonMachineLearningdescribeDataSourcesRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.InternalServerException - An error on the server occurred when trying to process a request.public DescribeDataSourcesResult describeDataSources()
AmazonMachineLearningdescribeDataSources in interface AmazonMachineLearningAmazonMachineLearning.describeDataSources(DescribeDataSourcesRequest)public DescribeEvaluationsResult describeEvaluations(DescribeEvaluationsRequest describeEvaluationsRequest)
 Returns a list of DescribeEvaluations that match the search
 criteria in the request.
 
describeEvaluations in interface AmazonMachineLearningdescribeEvaluationsRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.InternalServerException - An error on the server occurred when trying to process a request.public DescribeEvaluationsResult describeEvaluations()
AmazonMachineLearningdescribeEvaluations in interface AmazonMachineLearningAmazonMachineLearning.describeEvaluations(DescribeEvaluationsRequest)public DescribeMLModelsResult describeMLModels(DescribeMLModelsRequest describeMLModelsRequest)
 Returns a list of MLModel that match the search criteria in
 the request.
 
describeMLModels in interface AmazonMachineLearningdescribeMLModelsRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.InternalServerException - An error on the server occurred when trying to process a request.public DescribeMLModelsResult describeMLModels()
AmazonMachineLearningdescribeMLModels in interface AmazonMachineLearningAmazonMachineLearning.describeMLModels(DescribeMLModelsRequest)public GetBatchPredictionResult getBatchPrediction(GetBatchPredictionRequest getBatchPredictionRequest)
 Returns a BatchPrediction that includes detailed metadata,
 status, and data file information for a Batch Prediction
 request.
 
getBatchPrediction in interface AmazonMachineLearninggetBatchPredictionRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public GetDataSourceResult getDataSource(GetDataSourceRequest getDataSourceRequest)
 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.
 
getDataSource in interface AmazonMachineLearninggetDataSourceRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public GetEvaluationResult getEvaluation(GetEvaluationRequest getEvaluationRequest)
 Returns an Evaluation that includes metadata as well as the
 current status of the Evaluation.
 
getEvaluation in interface AmazonMachineLearninggetEvaluationRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public GetMLModelResult getMLModel(GetMLModelRequest getMLModelRequest)
 Returns an MLModel that includes detailed metadata, and data
 source information as well as the current status of the
 MLModel.
 
 GetMLModel provides results in normal or verbose format.
 
getMLModel in interface AmazonMachineLearninggetMLModelRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public PredictResult predict(PredictRequest predictRequest)
 Generates a prediction for the observation using the specified
 ML Model.
 
Not all response parameters will be populated. Whether a response parameter is populated depends on the type of model requested.
predict in interface AmazonMachineLearningpredictRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.LimitExceededException - The subscriber exceeded the maximum number of operations. This
         exception can occur when listing objects such as
         DataSource.InternalServerException - An error on the server occurred when trying to process a request.PredictorNotMountedException - The exception is thrown when a predict request is made to an
         unmounted MLModel.public UpdateBatchPredictionResult updateBatchPrediction(UpdateBatchPredictionRequest updateBatchPredictionRequest)
 Updates the BatchPredictionName of a
 BatchPrediction.
 
You can use the GetBatchPrediction operation to view the contents of the updated data element.
updateBatchPrediction in interface AmazonMachineLearningupdateBatchPredictionRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public UpdateDataSourceResult updateDataSource(UpdateDataSourceRequest updateDataSourceRequest)
 Updates the DataSourceName of a DataSource.
 
You can use the GetDataSource operation to view the contents of the updated data element.
updateDataSource in interface AmazonMachineLearningupdateDataSourceRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public UpdateEvaluationResult updateEvaluation(UpdateEvaluationRequest updateEvaluationRequest)
 Updates the EvaluationName of an Evaluation.
 
You can use the GetEvaluation operation to view the contents of the updated data element.
updateEvaluation in interface AmazonMachineLearningupdateEvaluationRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public UpdateMLModelResult updateMLModel(UpdateMLModelRequest updateMLModelRequest)
 Updates the MLModelName and the ScoreThreshold
 of an MLModel.
 
You can use the GetMLModel operation to view the contents of the updated data element.
updateMLModel in interface AmazonMachineLearningupdateMLModelRequest - InvalidInputException - An error on the client occurred. Typically, the cause is an
         invalid input value.ResourceNotFoundException - A specified resource cannot be located.InternalServerException - An error on the server occurred when trying to process a request.public ResponseMetadata getCachedResponseMetadata(AmazonWebServiceRequest request)
Response metadata is only cached for a limited period of time, so if you need to access this extra diagnostic information for an executed request, you should use this method to retrieve it as soon as possible after executing the request.
getCachedResponseMetadata in interface AmazonMachineLearningrequest - The originally executed requestCopyright © 2013 Amazon Web Services, Inc. All Rights Reserved.