lookoutequipment: Amazon Lookout for Equipment

View source: R/paws.R

lookoutequipmentR Documentation

Amazon Lookout for Equipment

Description

Amazon Lookout for Equipment is a machine learning service that uses advanced analytics to identify anomalies in machines from sensor data for use in predictive maintenance.

Usage

lookoutequipment(
  config = list(),
  credentials = list(),
  endpoint = NULL,
  region = NULL
)

Arguments

config

Optional configuration of credentials, endpoint, and/or region.

  • credentials:

    • creds:

      • access_key_id: AWS access key ID

      • secret_access_key: AWS secret access key

      • session_token: AWS temporary session token

    • profile: The name of a profile to use. If not given, then the default profile is used.

    • anonymous: Set anonymous credentials.

  • endpoint: The complete URL to use for the constructed client.

  • region: The AWS Region used in instantiating the client.

  • close_connection: Immediately close all HTTP connections.

  • timeout: The time in seconds till a timeout exception is thrown when attempting to make a connection. The default is 60 seconds.

  • s3_force_path_style: Set this to true to force the request to use path-style addressing, i.e. ⁠http://s3.amazonaws.com/BUCKET/KEY⁠.

  • sts_regional_endpoint: Set sts regional endpoint resolver to regional or legacy https://docs.aws.amazon.com/sdkref/latest/guide/feature-sts-regionalized-endpoints.html

credentials

Optional credentials shorthand for the config parameter

  • creds:

    • access_key_id: AWS access key ID

    • secret_access_key: AWS secret access key

    • session_token: AWS temporary session token

  • profile: The name of a profile to use. If not given, then the default profile is used.

  • anonymous: Set anonymous credentials.

endpoint

Optional shorthand for complete URL to use for the constructed client.

region

Optional shorthand for AWS Region used in instantiating the client.

Value

A client for the service. You can call the service's operations using syntax like svc$operation(...), where svc is the name you've assigned to the client. The available operations are listed in the Operations section.

Service syntax

svc <- lookoutequipment(
  config = list(
    credentials = list(
      creds = list(
        access_key_id = "string",
        secret_access_key = "string",
        session_token = "string"
      ),
      profile = "string",
      anonymous = "logical"
    ),
    endpoint = "string",
    region = "string",
    close_connection = "logical",
    timeout = "numeric",
    s3_force_path_style = "logical",
    sts_regional_endpoint = "string"
  ),
  credentials = list(
    creds = list(
      access_key_id = "string",
      secret_access_key = "string",
      session_token = "string"
    ),
    profile = "string",
    anonymous = "logical"
  ),
  endpoint = "string",
  region = "string"
)

Operations

create_dataset Creates a container for a collection of data being ingested for analysis
create_inference_scheduler Creates a scheduled inference
create_label Creates a label for an event
create_label_group Creates a group of labels
create_model Creates a machine learning model for data inference
create_retraining_scheduler Creates a retraining scheduler on the specified model
delete_dataset Deletes a dataset and associated artifacts
delete_inference_scheduler Deletes an inference scheduler that has been set up
delete_label Deletes a label
delete_label_group Deletes a group of labels
delete_model Deletes a machine learning model currently available for Amazon Lookout for Equipment
delete_resource_policy Deletes the resource policy attached to the resource
delete_retraining_scheduler Deletes a retraining scheduler from a model
describe_data_ingestion_job Provides information on a specific data ingestion job such as creation time, dataset ARN, and status
describe_dataset Provides a JSON description of the data in each time series dataset, including names, column names, and data types
describe_inference_scheduler Specifies information about the inference scheduler being used, including name, model, status, and associated metadata
describe_label Returns the name of the label
describe_label_group Returns information about the label group
describe_model Provides a JSON containing the overall information about a specific machine learning model, including model name and ARN, dataset, training and evaluation information, status, and so on
describe_model_version Retrieves information about a specific machine learning model version
describe_resource_policy Provides the details of a resource policy attached to a resource
describe_retraining_scheduler Provides a description of the retraining scheduler, including information such as the model name and retraining parameters
import_dataset Imports a dataset
import_model_version Imports a model that has been trained successfully
list_data_ingestion_jobs Provides a list of all data ingestion jobs, including dataset name and ARN, S3 location of the input data, status, and so on
list_datasets Lists all datasets currently available in your account, filtering on the dataset name
list_inference_events Lists all inference events that have been found for the specified inference scheduler
list_inference_executions Lists all inference executions that have been performed by the specified inference scheduler
list_inference_schedulers Retrieves a list of all inference schedulers currently available for your account
list_label_groups Returns a list of the label groups
list_labels Provides a list of labels
list_models Generates a list of all models in the account, including model name and ARN, dataset, and status
list_model_versions Generates a list of all model versions for a given model, including the model version, model version ARN, and status
list_retraining_schedulers Lists all retraining schedulers in your account, filtering by model name prefix and status
list_sensor_statistics Lists statistics about the data collected for each of the sensors that have been successfully ingested in the particular dataset
list_tags_for_resource Lists all the tags for a specified resource, including key and value
put_resource_policy Creates a resource control policy for a given resource
start_data_ingestion_job Starts a data ingestion job
start_inference_scheduler Starts an inference scheduler
start_retraining_scheduler Starts a retraining scheduler
stop_inference_scheduler Stops an inference scheduler
stop_retraining_scheduler Stops a retraining scheduler
tag_resource Associates a given tag to a resource in your account
untag_resource Removes a specific tag from a given resource
update_active_model_version Sets the active model version for a given machine learning model
update_inference_scheduler Updates an inference scheduler
update_label_group Updates the label group
update_model Updates a model in the account
update_retraining_scheduler Updates a retraining scheduler

Examples

## Not run: 
svc <- lookoutequipment()
# 
svc$create_retraining_scheduler(
  ClientToken = "sample-client-token",
  LookbackWindow = "P360D",
  ModelName = "sample-model",
  PromoteMode = "MANUAL",
  RetrainingFrequency = "P1M"
)

## End(Not run)


paws documentation built on Sept. 17, 2024, 5:07 p.m.

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