amazonaws.com – forecast
Provides APIs for creating and managing Amazon Forecast resources.
- Homepage
- https://api.apis.guru/v2/specs/amazonaws.com:forecast/2018-06-26.json
- Provider
- amazonaws.com:forecast / forecast
- OpenAPI version
- 3.0.0
- Spec (JSON)
- https://api.apis.guru/v2/specs/amazonaws.com/forecast/2018-06-26/openapi.json
- Spec (YAML)
- https://api.apis.guru/v2/specs/amazonaws.com/forecast/2018-06-26/openapi.yaml
Tools (65)
Extracted live via the executor SDK.
-
xAmzTargetAmazonForecastCreateAutoPredictor.createAutoPredictorCreates an Amazon Forecast predictor.
Amazon Forecast creates predictors with AutoPredictor, which involves applying the optimal combination of algorithms to each time series in your datasets. You can use CreateAutoPredictor [blocked] to create new predictors or upgrade/retrain existing predictors.
Creating new predictors
The following parameters are required when creating a new predictor:
-
PredictorName- A unique name for the predictor. -
DatasetGroupArn- The ARN of the dataset group used to train the predictor. -
ForecastFrequency- The granularity of your forecasts (hourly, daily, weekly, etc). -
ForecastHorizon- The number of time-steps that the model predicts. The forecast horizon is also called the prediction length.
When creating a new predictor, do not specify a value for
ReferencePredictorArn.Upgrading and retraining predictors
The following parameters are required when retraining or upgrading a predictor:
-
PredictorName- A unique name for the predictor. -
ReferencePredictorArn- The ARN of the predictor to retrain or upgrade.
When upgrading or retraining a predictor, only specify values for the
ReferencePredictorArnandPredictorName. -
-
xAmzTargetAmazonForecastCreateDataset.createDatasetCreates an Amazon Forecast dataset. The information about the dataset that you provide helps Forecast understand how to consume the data for model training. This includes the following:
-
DataFrequency- How frequently your historical time-series data is collected. -
DomainandDatasetType- Each dataset has an associated dataset domain and a type within the domain. Amazon Forecast provides a list of predefined domains and types within each domain. For each unique dataset domain and type within the domain, Amazon Forecast requires your data to include a minimum set of predefined fields. -
Schema- A schema specifies the fields in the dataset, including the field name and data type.
After creating a dataset, you import your training data into it and add the dataset to a dataset group. You use the dataset group to create a predictor. For more information, see .
To get a list of all your datasets, use the operation.
For example Forecast datasets, see the .
The
Statusof a dataset must beACTIVEbefore you can import training data. Use the operation to get the status. -
-
xAmzTargetAmazonForecastCreateDatasetGroup.createDatasetGroupCreates a dataset group, which holds a collection of related datasets. You can add datasets to the dataset group when you create the dataset group, or later by using the operation.
After creating a dataset group and adding datasets, you use the dataset group when you create a predictor. For more information, see .
To get a list of all your datasets groups, use the operation.
The
Statusof a dataset group must beACTIVEbefore you can use the dataset group to create a predictor. To get the status, use the operation. -
xAmzTargetAmazonForecastCreateDatasetImportJob.createDatasetImportJobImports your training data to an Amazon Forecast dataset. You provide the location of your training data in an Amazon Simple Storage Service (Amazon S3) bucket and the Amazon Resource Name (ARN) of the dataset that you want to import the data to.
You must specify a object that includes an Identity and Access Management (IAM) role that Amazon Forecast can assume to access the data, as Amazon Forecast makes a copy of your data and processes it in an internal Amazon Web Services system. For more information, see .
The training data must be in CSV or Parquet format. The delimiter must be a comma (,).
You can specify the path to a specific file, the S3 bucket, or to a folder in the S3 bucket. For the latter two cases, Amazon Forecast imports all files up to the limit of 10,000 files.
Because dataset imports are not aggregated, your most recent dataset import is the one that is used when training a predictor or generating a forecast. Make sure that your most recent dataset import contains all of the data you want to model off of, and not just the new data collected since the previous import.
To get a list of all your dataset import jobs, filtered by specified criteria, use the operation.
-
xAmzTargetAmazonForecastCreateExplainability.createExplainabilityExplainability is only available for Forecasts and Predictors generated from an AutoPredictor (CreateAutoPredictor [blocked])
Creates an Amazon Forecast Explainability.
Explainability helps you better understand how the attributes in your datasets impact forecast. Amazon Forecast uses a metric called Impact scores to quantify the relative impact of each attribute and determine whether they increase or decrease forecast values.
To enable Forecast Explainability, your predictor must include at least one of the following: related time series, item metadata, or additional datasets like Holidays and the Weather Index.
CreateExplainability accepts either a Predictor ARN or Forecast ARN. To receive aggregated Impact scores for all time series and time points in your datasets, provide a Predictor ARN. To receive Impact scores for specific time series and time points, provide a Forecast ARN.
CreateExplainability with a Predictor ARN
You can only have one Explainability resource per predictor. If you already enabled
ExplainPredictorin CreateAutoPredictor [blocked], that predictor already has an Explainability resource.The following parameters are required when providing a Predictor ARN:
-
ExplainabilityName- A unique name for the Explainability. -
ResourceArn- The Arn of the predictor. -
TimePointGranularity- Must be set to “ALL”. -
TimeSeriesGranularity- Must be set to “ALL”.
Do not specify a value for the following parameters:
-
DataSource- Only valid when TimeSeriesGranularity is “SPECIFIC”. -
Schema- Only valid when TimeSeriesGranularity is “SPECIFIC”. -
StartDateTime- Only valid when TimePointGranularity is “SPECIFIC”. -
EndDateTime- Only valid when TimePointGranularity is “SPECIFIC”.
CreateExplainability with a Forecast ARN
You can specify a maximum of 50 time series and 500 time points.
The following parameters are required when providing a Predictor ARN:
-
ExplainabilityName- A unique name for the Explainability. -
ResourceArn- The Arn of the forecast. -
TimePointGranularity- Either “ALL” or “SPECIFIC”. -
TimeSeriesGranularity- Either “ALL” or “SPECIFIC”.
If you set TimeSeriesGranularity to “SPECIFIC”, you must also provide the following:
-
DataSource- The S3 location of the CSV file specifying your time series. -
Schema- The Schema defines the attributes and attribute types listed in the Data Source.
If you set TimePointGranularity to “SPECIFIC”, you must also provide the following:
-
StartDateTime- The first timestamp in the range of time points. -
EndDateTime- The last timestamp in the range of time points.
-
-
xAmzTargetAmazonForecastCreateExplainabilityExport.createExplainabilityExportExports an Explainability resource created by the CreateExplainability [blocked] operation. Exported files are exported to an Amazon Simple Storage Service (Amazon S3) bucket.
You must specify a DataDestination [blocked] object that includes an Amazon S3 bucket and an Identity and Access Management (IAM) role that Amazon Forecast can assume to access the Amazon S3 bucket. For more information, see aws-forecast-iam-roles [blocked].
The
Statusof the export job must beACTIVEbefore you can access the export in your Amazon S3 bucket. To get the status, use the DescribeExplainabilityExport [blocked] operation. -
xAmzTargetAmazonForecastCreateForecast.createForecastCreates a forecast for each item in the
TARGET_TIME_SERIESdataset that was used to train the predictor. This is known as inference. To retrieve the forecast for a single item at low latency, use the operation. To export the complete forecast into your Amazon Simple Storage Service (Amazon S3) bucket, use the CreateForecastExportJob [blocked] operation.The range of the forecast is determined by the
ForecastHorizonvalue, which you specify in the CreatePredictor [blocked] request. When you query a forecast, you can request a specific date range within the forecast.To get a list of all your forecasts, use the ListForecasts [blocked] operation.
The forecasts generated by Amazon Forecast are in the same time zone as the dataset that was used to create the predictor.
For more information, see howitworks-forecast [blocked].
The
Statusof the forecast must beACTIVEbefore you can query or export the forecast. Use the DescribeForecast [blocked] operation to get the status.By default, a forecast includes predictions for every item (
item_id) in the dataset group that was used to train the predictor. However, you can use theTimeSeriesSelectorobject to generate a forecast on a subset of time series. Forecast creation is skipped for any time series that you specify that are not in the input dataset. The forecast export file will not contain these time series or their forecasted values. -
xAmzTargetAmazonForecastCreateForecastExportJob.createForecastExportJobExports a forecast created by the CreateForecast [blocked] operation to your Amazon Simple Storage Service (Amazon S3) bucket. The forecast file name will match the following conventions:
<ForecastExportJobName>_<ExportTimestamp>_<PartNumber>
where the <ExportTimestamp> component is in Java SimpleDateFormat (yyyy-MM-ddTHH-mm-ssZ).
You must specify a DataDestination [blocked] object that includes an Identity and Access Management (IAM) role that Amazon Forecast can assume to access the Amazon S3 bucket. For more information, see aws-forecast-iam-roles [blocked].
For more information, see howitworks-forecast [blocked].
To get a list of all your forecast export jobs, use the ListForecastExportJobs [blocked] operation.
The
Statusof the forecast export job must beACTIVEbefore you can access the forecast in your Amazon S3 bucket. To get the status, use the DescribeForecastExportJob [blocked] operation. -
xAmzTargetAmazonForecastCreateMonitor.createMonitorCreates a predictor monitor resource for an existing auto predictor. Predictor monitoring allows you to see how your predictor's performance changes over time. For more information, see .
-
xAmzTargetAmazonForecastCreatePredictor.createPredictorThis operation creates a legacy predictor that does not include all the predictor functionalities provided by Amazon Forecast. To create a predictor that is compatible with all aspects of Forecast, use CreateAutoPredictor [blocked].
Creates an Amazon Forecast predictor.
In the request, provide a dataset group and either specify an algorithm or let Amazon Forecast choose an algorithm for you using AutoML. If you specify an algorithm, you also can override algorithm-specific hyperparameters.
Amazon Forecast uses the algorithm to train a predictor using the latest version of the datasets in the specified dataset group. You can then generate a forecast using the CreateForecast [blocked] operation.
To see the evaluation metrics, use the GetAccuracyMetrics [blocked] operation.
You can specify a featurization configuration to fill and aggregate the data fields in the
TARGET_TIME_SERIESdataset to improve model training. For more information, see FeaturizationConfig [blocked].For RELATED_TIME_SERIES datasets,
CreatePredictorverifies that theDataFrequencyspecified when the dataset was created matches theForecastFrequency. TARGET_TIME_SERIES datasets don't have this restriction. Amazon Forecast also verifies the delimiter and timestamp format. For more information, see howitworks-datasets-groups [blocked].By default, predictors are trained and evaluated at the 0.1 (P10), 0.5 (P50), and 0.9 (P90) quantiles. You can choose custom forecast types to train and evaluate your predictor by setting the
ForecastTypes.AutoML
If you want Amazon Forecast to evaluate each algorithm and choose the one that minimizes the
objective function, setPerformAutoMLtotrue. Theobjective functionis defined as the mean of the weighted losses over the forecast types. By default, these are the p10, p50, and p90 quantile losses. For more information, see EvaluationResult [blocked].When AutoML is enabled, the following properties are disallowed:
-
AlgorithmArn -
HPOConfig -
PerformHPO -
TrainingParameters
To get a list of all of your predictors, use the ListPredictors [blocked] operation.
Before you can use the predictor to create a forecast, the
Statusof the predictor must beACTIVE, signifying that training has completed. To get the status, use the DescribePredictor [blocked] operation. -
-
xAmzTargetAmazonForecastCreatePredictorBacktestExportJob.createPredictorBacktestExportJobExports backtest forecasts and accuracy metrics generated by the CreateAutoPredictor [blocked] or CreatePredictor [blocked] operations. Two folders containing CSV or Parquet files are exported to your specified S3 bucket.
The export file names will match the following conventions:
<ExportJobName>_<ExportTimestamp>_<PartNumber>.csvThe <ExportTimestamp> component is in Java SimpleDate format (yyyy-MM-ddTHH-mm-ssZ).
You must specify a DataDestination [blocked] object that includes an Amazon S3 bucket and an Identity and Access Management (IAM) role that Amazon Forecast can assume to access the Amazon S3 bucket. For more information, see aws-forecast-iam-roles [blocked].
The
Statusof the export job must beACTIVEbefore you can access the export in your Amazon S3 bucket. To get the status, use the DescribePredictorBacktestExportJob [blocked] operation. -
xAmzTargetAmazonForecastCreateWhatIfAnalysis.createWhatIfAnalysisWhat-if analysis is a scenario modeling technique where you make a hypothetical change to a time series and compare the forecasts generated by these changes against the baseline, unchanged time series. It is important to remember that the purpose of a what-if analysis is to understand how a forecast can change given different modifications to the baseline time series.
For example, imagine you are a clothing retailer who is considering an end of season sale to clear space for new styles. After creating a baseline forecast, you can use a what-if analysis to investigate how different sales tactics might affect your goals.
You could create a scenario where everything is given a 25% markdown, and another where everything is given a fixed dollar markdown. You could create a scenario where the sale lasts for one week and another where the sale lasts for one month. With a what-if analysis, you can compare many different scenarios against each other.
Note that a what-if analysis is meant to display what the forecasting model has learned and how it will behave in the scenarios that you are evaluating. Do not blindly use the results of the what-if analysis to make business decisions. For instance, forecasts might not be accurate for novel scenarios where there is no reference available to determine whether a forecast is good.
The TimeSeriesSelector [blocked] object defines the items that you want in the what-if analysis.
-
xAmzTargetAmazonForecastCreateWhatIfForecast.createWhatIfForecastA what-if forecast is a forecast that is created from a modified version of the baseline forecast. Each what-if forecast incorporates either a replacement dataset or a set of transformations to the original dataset.
-
xAmzTargetAmazonForecastCreateWhatIfForecastExport.createWhatIfForecastExportExports a forecast created by the CreateWhatIfForecast [blocked] operation to your Amazon Simple Storage Service (Amazon S3) bucket. The forecast file name will match the following conventions:
≈<ForecastExportJobName>_<ExportTimestamp>_<PartNumber>The <ExportTimestamp> component is in Java SimpleDateFormat (yyyy-MM-ddTHH-mm-ssZ).
You must specify a DataDestination [blocked] object that includes an Identity and Access Management (IAM) role that Amazon Forecast can assume to access the Amazon S3 bucket. For more information, see aws-forecast-iam-roles [blocked].
For more information, see howitworks-forecast [blocked].
To get a list of all your what-if forecast export jobs, use the ListWhatIfForecastExports [blocked] operation.
The
Statusof the forecast export job must beACTIVEbefore you can access the forecast in your Amazon S3 bucket. To get the status, use the DescribeWhatIfForecastExport [blocked] operation. -
xAmzTargetAmazonForecastDeleteDataset.deleteDatasetDeletes an Amazon Forecast dataset that was created using the operation. You can only delete datasets that have a status of
ACTIVEorCREATE_FAILED. To get the status use the operation.Forecast does not automatically update any dataset groups that contain the deleted dataset. In order to update the dataset group, use the operation, omitting the deleted dataset's ARN.
-
xAmzTargetAmazonForecastDeleteDatasetGroup.deleteDatasetGroupDeletes a dataset group created using the operation. You can only delete dataset groups that have a status of
ACTIVE,CREATE_FAILED, orUPDATE_FAILED. To get the status, use the operation.This operation deletes only the dataset group, not the datasets in the group.
-
xAmzTargetAmazonForecastDeleteDatasetImportJob.deleteDatasetImportJobDeletes a dataset import job created using the operation. You can delete only dataset import jobs that have a status of
ACTIVEorCREATE_FAILED. To get the status, use the operation. -
xAmzTargetAmazonForecastDeleteExplainability.deleteExplainabilityDeletes an Explainability resource.
You can delete only predictor that have a status of
ACTIVEorCREATE_FAILED. To get the status, use the DescribeExplainability [blocked] operation. -
xAmzTargetAmazonForecastDeleteExplainabilityExport.deleteExplainabilityExportDeletes an Explainability export.
-
xAmzTargetAmazonForecastDeleteForecast.deleteForecastDeletes a forecast created using the CreateForecast [blocked] operation. You can delete only forecasts that have a status of
ACTIVEorCREATE_FAILED. To get the status, use the DescribeForecast [blocked] operation.You can't delete a forecast while it is being exported. After a forecast is deleted, you can no longer query the forecast.
-
xAmzTargetAmazonForecastDeleteForecastExportJob.deleteForecastExportJobDeletes a forecast export job created using the CreateForecastExportJob [blocked] operation. You can delete only export jobs that have a status of
ACTIVEorCREATE_FAILED. To get the status, use the DescribeForecastExportJob [blocked] operation. -
xAmzTargetAmazonForecastDeleteMonitor.deleteMonitorDeletes a monitor resource. You can only delete a monitor resource with a status of
ACTIVE,ACTIVE_STOPPED,CREATE_FAILED, orCREATE_STOPPED. -
xAmzTargetAmazonForecastDeletePredictor.deletePredictorDeletes a predictor created using the DescribePredictor [blocked] or CreatePredictor [blocked] operations. You can delete only predictor that have a status of
ACTIVEorCREATE_FAILED. To get the status, use the DescribePredictor [blocked] operation. -
xAmzTargetAmazonForecastDeletePredictorBacktestExportJob.deletePredictorBacktestExportJobDeletes a predictor backtest export job.
-
xAmzTargetAmazonForecastDeleteResourceTree.deleteResourceTreeDeletes an entire resource tree. This operation will delete the parent resource and its child resources.
Child resources are resources that were created from another resource. For example, when a forecast is generated from a predictor, the forecast is the child resource and the predictor is the parent resource.
Amazon Forecast resources possess the following parent-child resource hierarchies:
-
Dataset: dataset import jobs
-
Dataset Group: predictors, predictor backtest export jobs, forecasts, forecast export jobs
-
Predictor: predictor backtest export jobs, forecasts, forecast export jobs
-
Forecast: forecast export jobs
DeleteResourceTreewill only delete Amazon Forecast resources, and will not delete datasets or exported files stored in Amazon S3. -
-
xAmzTargetAmazonForecastDeleteWhatIfAnalysis.deleteWhatIfAnalysisDeletes a what-if analysis created using the CreateWhatIfAnalysis [blocked] operation. You can delete only what-if analyses that have a status of
ACTIVEorCREATE_FAILED. To get the status, use the DescribeWhatIfAnalysis [blocked] operation.You can't delete a what-if analysis while any of its forecasts are being exported.
-
xAmzTargetAmazonForecastDeleteWhatIfForecast.deleteWhatIfForecastDeletes a what-if forecast created using the CreateWhatIfForecast [blocked] operation. You can delete only what-if forecasts that have a status of
ACTIVEorCREATE_FAILED. To get the status, use the DescribeWhatIfForecast [blocked] operation.You can't delete a what-if forecast while it is being exported. After a what-if forecast is deleted, you can no longer query the what-if analysis.
-
xAmzTargetAmazonForecastDeleteWhatIfForecastExport.deleteWhatIfForecastExportDeletes a what-if forecast export created using the CreateWhatIfForecastExport [blocked] operation. You can delete only what-if forecast exports that have a status of
ACTIVEorCREATE_FAILED. To get the status, use the DescribeWhatIfForecastExport [blocked] operation. -
xAmzTargetAmazonForecastDescribeAutoPredictor.describeAutoPredictorDescribes a predictor created using the CreateAutoPredictor operation.
-
xAmzTargetAmazonForecastDescribeDataset.describeDatasetDescribes an Amazon Forecast dataset created using the operation.
In addition to listing the parameters specified in the
CreateDatasetrequest, this operation includes the following dataset properties:-
CreationTime -
LastModificationTime -
Status
-
-
xAmzTargetAmazonForecastDescribeDatasetGroup.describeDatasetGroupDescribes a dataset group created using the operation.
In addition to listing the parameters provided in the
CreateDatasetGrouprequest, this operation includes the following properties:-
DatasetArns- The datasets belonging to the group. -
CreationTime -
LastModificationTime -
Status
-
-
xAmzTargetAmazonForecastDescribeDatasetImportJob.describeDatasetImportJobDescribes a dataset import job created using the operation.
In addition to listing the parameters provided in the
CreateDatasetImportJobrequest, this operation includes the following properties:-
CreationTime -
LastModificationTime -
DataSize -
FieldStatistics -
Status -
Message- If an error occurred, information about the error.
-
-
xAmzTargetAmazonForecastDescribeExplainability.describeExplainabilityDescribes an Explainability resource created using the CreateExplainability [blocked] operation.
-
xAmzTargetAmazonForecastDescribeExplainabilityExport.describeExplainabilityExportDescribes an Explainability export created using the CreateExplainabilityExport [blocked] operation.
-
xAmzTargetAmazonForecastDescribeForecast.describeForecastDescribes a forecast created using the CreateForecast [blocked] operation.
In addition to listing the properties provided in the
CreateForecastrequest, this operation lists the following properties:-
DatasetGroupArn- The dataset group that provided the training data. -
CreationTime -
LastModificationTime -
Status -
Message- If an error occurred, information about the error.
-
-
xAmzTargetAmazonForecastDescribeForecastExportJob.describeForecastExportJobDescribes a forecast export job created using the CreateForecastExportJob [blocked] operation.
In addition to listing the properties provided by the user in the
CreateForecastExportJobrequest, this operation lists the following properties:-
CreationTime -
LastModificationTime -
Status -
Message- If an error occurred, information about the error.
-
-
xAmzTargetAmazonForecastDescribeMonitor.describeMonitorDescribes a monitor resource. In addition to listing the properties provided in the CreateMonitor [blocked] request, this operation lists the following properties:
-
Baseline -
CreationTime -
LastEvaluationTime -
LastEvaluationState -
LastModificationTime -
Message -
Status
-
-
xAmzTargetAmazonForecastDescribePredictor.describePredictorThis operation is only valid for legacy predictors created with CreatePredictor. If you are not using a legacy predictor, use DescribeAutoPredictor [blocked].
Describes a predictor created using the CreatePredictor [blocked] operation.
In addition to listing the properties provided in the
CreatePredictorrequest, this operation lists the following properties:-
DatasetImportJobArns- The dataset import jobs used to import training data. -
AutoMLAlgorithmArns- If AutoML is performed, the algorithms that were evaluated. -
CreationTime -
LastModificationTime -
Status -
Message- If an error occurred, information about the error.
-
-
xAmzTargetAmazonForecastDescribePredictorBacktestExportJob.describePredictorBacktestExportJobDescribes a predictor backtest export job created using the CreatePredictorBacktestExportJob [blocked] operation.
In addition to listing the properties provided by the user in the
CreatePredictorBacktestExportJobrequest, this operation lists the following properties:-
CreationTime -
LastModificationTime -
Status -
Message(if an error occurred)
-
-
xAmzTargetAmazonForecastDescribeWhatIfAnalysis.describeWhatIfAnalysisDescribes the what-if analysis created using the CreateWhatIfAnalysis [blocked] operation.
In addition to listing the properties provided in the
CreateWhatIfAnalysisrequest, this operation lists the following properties:-
CreationTime -
LastModificationTime -
Message- If an error occurred, information about the error. -
Status
-
-
xAmzTargetAmazonForecastDescribeWhatIfForecast.describeWhatIfForecastDescribes the what-if forecast created using the CreateWhatIfForecast [blocked] operation.
In addition to listing the properties provided in the
CreateWhatIfForecastrequest, this operation lists the following properties:-
CreationTime -
LastModificationTime -
Message- If an error occurred, information about the error. -
Status
-
-
xAmzTargetAmazonForecastDescribeWhatIfForecastExport.describeWhatIfForecastExportDescribes the what-if forecast export created using the CreateWhatIfForecastExport [blocked] operation.
In addition to listing the properties provided in the
CreateWhatIfForecastExportrequest, this operation lists the following properties:-
CreationTime -
LastModificationTime -
Message- If an error occurred, information about the error. -
Status
-
-
xAmzTargetAmazonForecastGetAccuracyMetrics.getAccuracyMetricsProvides metrics on the accuracy of the models that were trained by the CreatePredictor [blocked] operation. Use metrics to see how well the model performed and to decide whether to use the predictor to generate a forecast. For more information, see .
This operation generates metrics for each backtest window that was evaluated. The number of backtest windows (
NumberOfBacktestWindows) is specified using the EvaluationParameters [blocked] object, which is optionally included in theCreatePredictorrequest. IfNumberOfBacktestWindowsisn't specified, the number defaults to one.The parameters of the
fillingmethod determine which items contribute to the metrics. If you want all items to contribute, specifyzero. If you want only those items that have complete data in the range being evaluated to contribute, specifynan. For more information, see FeaturizationMethod [blocked].Before you can get accuracy metrics, the
Statusof the predictor must beACTIVE, signifying that training has completed. To get the status, use the DescribePredictor [blocked] operation. -
xAmzTargetAmazonForecastListDatasetGroups.listDatasetGroupsReturns a list of dataset groups created using the operation. For each dataset group, this operation returns a summary of its properties, including its Amazon Resource Name (ARN). You can retrieve the complete set of properties by using the dataset group ARN with the operation.
-
xAmzTargetAmazonForecastListDatasetImportJobs.listDatasetImportJobsReturns a list of dataset import jobs created using the operation. For each import job, this operation returns a summary of its properties, including its Amazon Resource Name (ARN). You can retrieve the complete set of properties by using the ARN with the operation. You can filter the list by providing an array of objects.
-
xAmzTargetAmazonForecastListDatasets.listDatasetsReturns a list of datasets created using the operation. For each dataset, a summary of its properties, including its Amazon Resource Name (ARN), is returned. To retrieve the complete set of properties, use the ARN with the operation.
-
xAmzTargetAmazonForecastListExplainabilities.listExplainabilitiesReturns a list of Explainability resources created using the CreateExplainability [blocked] operation. This operation returns a summary for each Explainability. You can filter the list using an array of Filter [blocked] objects.
To retrieve the complete set of properties for a particular Explainability resource, use the ARN with the DescribeExplainability [blocked] operation.
-
xAmzTargetAmazonForecastListExplainabilityExports.listExplainabilityExportsReturns a list of Explainability exports created using the CreateExplainabilityExport [blocked] operation. This operation returns a summary for each Explainability export. You can filter the list using an array of Filter [blocked] objects.
To retrieve the complete set of properties for a particular Explainability export, use the ARN with the DescribeExplainability [blocked] operation.
-
xAmzTargetAmazonForecastListForecastExportJobs.listForecastExportJobsReturns a list of forecast export jobs created using the CreateForecastExportJob [blocked] operation. For each forecast export job, this operation returns a summary of its properties, including its Amazon Resource Name (ARN). To retrieve the complete set of properties, use the ARN with the DescribeForecastExportJob [blocked] operation. You can filter the list using an array of Filter [blocked] objects.
-
xAmzTargetAmazonForecastListForecasts.listForecastsReturns a list of forecasts created using the CreateForecast [blocked] operation. For each forecast, this operation returns a summary of its properties, including its Amazon Resource Name (ARN). To retrieve the complete set of properties, specify the ARN with the DescribeForecast [blocked] operation. You can filter the list using an array of Filter [blocked] objects.
-
xAmzTargetAmazonForecastListMonitorEvaluations.listMonitorEvaluationsReturns a list of the monitoring evaluation results and predictor events collected by the monitor resource during different windows of time.
For information about monitoring see predictor-monitoring [blocked]. For more information about retrieving monitoring results see .
-
xAmzTargetAmazonForecastListMonitors.listMonitorsReturns a list of monitors created with the CreateMonitor [blocked] operation and CreateAutoPredictor [blocked] operation. For each monitor resource, this operation returns of a summary of its properties, including its Amazon Resource Name (ARN). You can retrieve a complete set of properties of a monitor resource by specify the monitor's ARN in the DescribeMonitor [blocked] operation.
-
xAmzTargetAmazonForecastListPredictorBacktestExportJobs.listPredictorBacktestExportJobsReturns a list of predictor backtest export jobs created using the CreatePredictorBacktestExportJob [blocked] operation. This operation returns a summary for each backtest export job. You can filter the list using an array of Filter [blocked] objects.
To retrieve the complete set of properties for a particular backtest export job, use the ARN with the DescribePredictorBacktestExportJob [blocked] operation.
-
xAmzTargetAmazonForecastListPredictors.listPredictorsReturns a list of predictors created using the CreateAutoPredictor [blocked] or CreatePredictor [blocked] operations. For each predictor, this operation returns a summary of its properties, including its Amazon Resource Name (ARN).
You can retrieve the complete set of properties by using the ARN with the DescribeAutoPredictor [blocked] and DescribePredictor [blocked] operations. You can filter the list using an array of Filter [blocked] objects.
-
xAmzTargetAmazonForecastListTagsForResource.listTagsForResourceLists the tags for an Amazon Forecast resource.
-
xAmzTargetAmazonForecastListWhatIfAnalyses.listWhatIfAnalysesReturns a list of what-if analyses created using the CreateWhatIfAnalysis [blocked] operation. For each what-if analysis, this operation returns a summary of its properties, including its Amazon Resource Name (ARN). You can retrieve the complete set of properties by using the what-if analysis ARN with the DescribeWhatIfAnalysis [blocked] operation.
-
xAmzTargetAmazonForecastListWhatIfForecastExports.listWhatIfForecastExportsReturns a list of what-if forecast exports created using the CreateWhatIfForecastExport [blocked] operation. For each what-if forecast export, this operation returns a summary of its properties, including its Amazon Resource Name (ARN). You can retrieve the complete set of properties by using the what-if forecast export ARN with the DescribeWhatIfForecastExport [blocked] operation.
-
xAmzTargetAmazonForecastListWhatIfForecasts.listWhatIfForecastsReturns a list of what-if forecasts created using the CreateWhatIfForecast [blocked] operation. For each what-if forecast, this operation returns a summary of its properties, including its Amazon Resource Name (ARN). You can retrieve the complete set of properties by using the what-if forecast ARN with the DescribeWhatIfForecast [blocked] operation.
-
xAmzTargetAmazonForecastResumeResource.resumeResourceResumes a stopped monitor resource.
-
xAmzTargetAmazonForecastStopResource.stopResourceStops a resource.
The resource undergoes the following states:
CREATE_STOPPINGandCREATE_STOPPED. You cannot resume a resource once it has been stopped.This operation can be applied to the following resources (and their corresponding child resources):
-
Dataset Import Job
-
Predictor Job
-
Forecast Job
-
Forecast Export Job
-
Predictor Backtest Export Job
-
Explainability Job
-
Explainability Export Job
-
-
xAmzTargetAmazonForecastTagResource.tagResourceAssociates the specified tags to a resource with the specified
resourceArn. If existing tags on a resource are not specified in the request parameters, they are not changed. When a resource is deleted, the tags associated with that resource are also deleted. -
xAmzTargetAmazonForecastUntagResource.untagResourceDeletes the specified tags from a resource.
-
xAmzTargetAmazonForecastUpdateDatasetGroup.updateDatasetGroupReplaces the datasets in a dataset group with the specified datasets.
The
Statusof the dataset group must beACTIVEbefore you can use the dataset group to create a predictor. Use the operation to get the status. -
openapi.previewSpecPreview an OpenAPI document before adding it as a source
-
openapi.addSourceAdd an OpenAPI source and register its operations as tools