LookoutEquipment.Client.
create_model
(**kwargs)¶Creates an ML model for data inference.
A machine-learning (ML) model is a mathematical model that finds patterns in your data. In Amazon Lookout for Equipment, the model learns the patterns of normal behavior and detects abnormal behavior that could be potential equipment failure (or maintenance events). The models are made by analyzing normal data and abnormalities in machine behavior that have already occurred.
Your model is trained using a portion of the data from your dataset and uses that data to learn patterns of normal behavior and abnormal patterns that lead to equipment failure. Another portion of the data is used to evaluate the model's accuracy.
See also: AWS API Documentation
Request Syntax
response = client.create_model(
ModelName='string',
DatasetName='string',
DatasetSchema={
'InlineDataSchema': 'string'
},
LabelsInputConfiguration={
'S3InputConfiguration': {
'Bucket': 'string',
'Prefix': 'string'
},
'LabelGroupName': 'string'
},
ClientToken='string',
TrainingDataStartTime=datetime(2015, 1, 1),
TrainingDataEndTime=datetime(2015, 1, 1),
EvaluationDataStartTime=datetime(2015, 1, 1),
EvaluationDataEndTime=datetime(2015, 1, 1),
RoleArn='string',
DataPreProcessingConfiguration={
'TargetSamplingRate': 'PT1S'|'PT5S'|'PT10S'|'PT15S'|'PT30S'|'PT1M'|'PT5M'|'PT10M'|'PT15M'|'PT30M'|'PT1H'
},
ServerSideKmsKeyId='string',
Tags=[
{
'Key': 'string',
'Value': 'string'
},
],
OffCondition='string'
)
[REQUIRED]
The name for the ML model to be created.
[REQUIRED]
The name of the dataset for the ML model being created.
The data schema for the ML model being created.
The input configuration for the labels being used for the ML model that's being created.
Contains location information for the S3 location being used for label data.
The name of the S3 bucket holding the label data.
The prefix for the S3 bucket used for the label data.
The name of the label group to be used for label data.
[REQUIRED]
A unique identifier for the request. If you do not set the client request token, Amazon Lookout for Equipment generates one.
This field is autopopulated if not provided.
The configuration is the TargetSamplingRate
, which is the sampling rate of the data after post processing by Amazon Lookout for Equipment. For example, if you provide data that has been collected at a 1 second level and you want the system to resample the data at a 1 minute rate before training, the TargetSamplingRate
is 1 minute.
When providing a value for the TargetSamplingRate
, you must attach the prefix "PT" to the rate you want. The value for a 1 second rate is therefore PT1S , the value for a 15 minute rate is PT15M , and the value for a 1 hour rate is PT1H
The sampling rate of the data after post processing by Amazon Lookout for Equipment. For example, if you provide data that has been collected at a 1 second level and you want the system to resample the data at a 1 minute rate before training, the TargetSamplingRate
is 1 minute.
When providing a value for the TargetSamplingRate
, you must attach the prefix "PT" to the rate you want. The value for a 1 second rate is therefore PT1S , the value for a 15 minute rate is PT15M , and the value for a 1 hour rate is PT1H
Any tags associated with the ML model being created.
A tag is a key-value pair that can be added to a resource as metadata.
The key for the specified tag.
The value for the specified tag.
dict
Response Syntax
{
'ModelArn': 'string',
'Status': 'IN_PROGRESS'|'SUCCESS'|'FAILED'
}
Response Structure
(dict) --
ModelArn (string) --
The Amazon Resource Name (ARN) of the model being created.
Status (string) --
Indicates the status of the CreateModel
operation.
Exceptions
LookoutEquipment.Client.exceptions.ValidationException
LookoutEquipment.Client.exceptions.ConflictException
LookoutEquipment.Client.exceptions.ThrottlingException
LookoutEquipment.Client.exceptions.ServiceQuotaExceededException
LookoutEquipment.Client.exceptions.InternalServerException
LookoutEquipment.Client.exceptions.ResourceNotFoundException
LookoutEquipment.Client.exceptions.AccessDeniedException