SageMaker / Client / create_auto_ml_job_v2
create_auto_ml_job_v2#
- SageMaker.Client.create_auto_ml_job_v2(**kwargs)#
Creates an Autopilot job also referred to as Autopilot experiment or AutoML job V2.
Note
CreateAutoMLJobV2 and DescribeAutoMLJobV2 are new versions of CreateAutoMLJob and DescribeAutoMLJob which offer backward compatibility.
CreateAutoMLJobV2
can manage tabular problem types identical to those of its previous versionCreateAutoMLJob
, as well as time-series forecasting, and non-tabular problem types such as image or text classification.Find guidelines about how to migrate a
CreateAutoMLJob
toCreateAutoMLJobV2
in Migrate a CreateAutoMLJob to CreateAutoMLJobV2.For the list of available problem types supported by
CreateAutoMLJobV2
, see AutoMLProblemTypeConfig.You can find the best-performing model after you run an AutoML job V2 by calling DescribeAutoMLJobV2.
See also: AWS API Documentation
Request Syntax
response = client.create_auto_ml_job_v2( AutoMLJobName='string', AutoMLJobInputDataConfig=[ { 'ChannelType': 'training'|'validation', 'ContentType': 'string', 'CompressionType': 'None'|'Gzip', 'DataSource': { 'S3DataSource': { 'S3DataType': 'ManifestFile'|'S3Prefix'|'AugmentedManifestFile', 'S3Uri': 'string' } } }, ], OutputDataConfig={ 'KmsKeyId': 'string', 'S3OutputPath': 'string' }, AutoMLProblemTypeConfig={ 'ImageClassificationJobConfig': { 'CompletionCriteria': { 'MaxCandidates': 123, 'MaxRuntimePerTrainingJobInSeconds': 123, 'MaxAutoMLJobRuntimeInSeconds': 123 } }, 'TextClassificationJobConfig': { 'CompletionCriteria': { 'MaxCandidates': 123, 'MaxRuntimePerTrainingJobInSeconds': 123, 'MaxAutoMLJobRuntimeInSeconds': 123 }, 'ContentColumn': 'string', 'TargetLabelColumn': 'string' }, 'TabularJobConfig': { 'CandidateGenerationConfig': { 'AlgorithmsConfig': [ { 'AutoMLAlgorithms': [ 'xgboost'|'linear-learner'|'mlp'|'lightgbm'|'catboost'|'randomforest'|'extra-trees'|'nn-torch'|'fastai', ] }, ] }, 'CompletionCriteria': { 'MaxCandidates': 123, 'MaxRuntimePerTrainingJobInSeconds': 123, 'MaxAutoMLJobRuntimeInSeconds': 123 }, 'FeatureSpecificationS3Uri': 'string', 'Mode': 'AUTO'|'ENSEMBLING'|'HYPERPARAMETER_TUNING', 'GenerateCandidateDefinitionsOnly': True|False, 'ProblemType': 'BinaryClassification'|'MulticlassClassification'|'Regression', 'TargetAttributeName': 'string', 'SampleWeightAttributeName': 'string' }, 'TimeSeriesForecastingJobConfig': { 'FeatureSpecificationS3Uri': 'string', 'CompletionCriteria': { 'MaxCandidates': 123, 'MaxRuntimePerTrainingJobInSeconds': 123, 'MaxAutoMLJobRuntimeInSeconds': 123 }, 'ForecastFrequency': 'string', 'ForecastHorizon': 123, 'ForecastQuantiles': [ 'string', ], 'Transformations': { 'Filling': { 'string': { 'string': 'string' } }, 'Aggregation': { 'string': 'sum'|'avg'|'first'|'min'|'max' } }, 'TimeSeriesConfig': { 'TargetAttributeName': 'string', 'TimestampAttributeName': 'string', 'ItemIdentifierAttributeName': 'string', 'GroupingAttributeNames': [ 'string', ] }, 'HolidayConfig': [ { 'CountryCode': 'string' }, ] } }, RoleArn='string', Tags=[ { 'Key': 'string', 'Value': 'string' }, ], SecurityConfig={ 'VolumeKmsKeyId': 'string', 'EnableInterContainerTrafficEncryption': True|False, 'VpcConfig': { 'SecurityGroupIds': [ 'string', ], 'Subnets': [ 'string', ] } }, AutoMLJobObjective={ 'MetricName': 'Accuracy'|'MSE'|'F1'|'F1macro'|'AUC'|'RMSE'|'MAE'|'R2'|'BalancedAccuracy'|'Precision'|'PrecisionMacro'|'Recall'|'RecallMacro'|'MAPE'|'MASE'|'WAPE'|'AverageWeightedQuantileLoss' }, ModelDeployConfig={ 'AutoGenerateEndpointName': True|False, 'EndpointName': 'string' }, DataSplitConfig={ 'ValidationFraction': ... } )
- Parameters:
AutoMLJobName (string) –
[REQUIRED]
Identifies an Autopilot job. The name must be unique to your account and is case insensitive.
AutoMLJobInputDataConfig (list) –
[REQUIRED]
An array of channel objects describing the input data and their location. Each channel is a named input source. Similar to the InputDataConfig attribute in the
CreateAutoMLJob
input parameters. The supported formats depend on the problem type:For tabular problem types:
S3Prefix
,ManifestFile
.For image classification:
S3Prefix
,ManifestFile
,AugmentedManifestFile
.For text classification:
S3Prefix
.For time-series forecasting:
S3Prefix
.
(dict) –
A channel is a named input source that training algorithms can consume. This channel is used for AutoML jobs V2 (jobs created by calling CreateAutoMLJobV2).
ChannelType (string) –
The type of channel. Defines whether the data are used for training or validation. The default value is
training
. Channels fortraining
andvalidation
must share the sameContentType
Note
The type of channel defaults to
training
for the time-series forecasting problem type.ContentType (string) –
The content type of the data from the input source. The following are the allowed content types for different problems:
For tabular problem types:
text/csv;header=present
orx-application/vnd.amazon+parquet
. The default value istext/csv;header=present
.For image classification:
image/png
,image/jpeg
, orimage/*
. The default value isimage/*
.For text classification:
text/csv;header=present
orx-application/vnd.amazon+parquet
. The default value istext/csv;header=present
.For time-series forecasting:
text/csv;header=present
orx-application/vnd.amazon+parquet
. The default value istext/csv;header=present
.
CompressionType (string) –
The allowed compression types depend on the input format and problem type. We allow the compression type
Gzip
forS3Prefix
inputs on tabular data only. For all other inputs, the compression type should beNone
. If no compression type is provided, we default toNone
.DataSource (dict) –
The data source for an AutoML channel (Required).
S3DataSource (dict) – [REQUIRED]
The Amazon S3 location of the input data.
S3DataType (string) – [REQUIRED]
The data type.
If you choose
S3Prefix
,S3Uri
identifies a key name prefix. SageMaker uses all objects that match the specified key name prefix for model training. TheS3Prefix
should have the following format:s3://DOC-EXAMPLE-BUCKET/DOC-EXAMPLE-FOLDER-OR-FILE
If you choose
ManifestFile
,S3Uri
identifies an object that is a manifest file containing a list of object keys that you want SageMaker to use for model training. AManifestFile
should have the format shown below:[ {"prefix": "s3://DOC-EXAMPLE-BUCKET/DOC-EXAMPLE-FOLDER/DOC-EXAMPLE-PREFIX/"},
"DOC-EXAMPLE-RELATIVE-PATH/DOC-EXAMPLE-FOLDER/DATA-1",
"DOC-EXAMPLE-RELATIVE-PATH/DOC-EXAMPLE-FOLDER/DATA-2",
... "DOC-EXAMPLE-RELATIVE-PATH/DOC-EXAMPLE-FOLDER/DATA-N" ]
If you choose
AugmentedManifestFile
,S3Uri
identifies an object that is an augmented manifest file in JSON lines format. This file contains the data you want to use for model training.AugmentedManifestFile
is available for V2 API jobs only (for example, for jobs created by callingCreateAutoMLJobV2
). Here is a minimal, single-record example of anAugmentedManifestFile
:{"source-ref": "s3://DOC-EXAMPLE-BUCKET/DOC-EXAMPLE-FOLDER/cats/cat.jpg",
"label-metadata": {"class-name": "cat"
} For more information onAugmentedManifestFile
, see Provide Dataset Metadata to Training Jobs with an Augmented Manifest File.
S3Uri (string) – [REQUIRED]
The URL to the Amazon S3 data source. The Uri refers to the Amazon S3 prefix or ManifestFile depending on the data type.
OutputDataConfig (dict) –
[REQUIRED]
Provides information about encryption and the Amazon S3 output path needed to store artifacts from an AutoML job.
KmsKeyId (string) –
The Key Management Service (KMS) encryption key ID.
S3OutputPath (string) – [REQUIRED]
The Amazon S3 output path. Must be 128 characters or less.
AutoMLProblemTypeConfig (dict) –
[REQUIRED]
Defines the configuration settings of one of the supported problem types.
Note
This is a Tagged Union structure. Only one of the following top level keys can be set:
ImageClassificationJobConfig
,TextClassificationJobConfig
,TabularJobConfig
,TimeSeriesForecastingJobConfig
.ImageClassificationJobConfig (dict) –
Settings used to configure an AutoML job V2 for the image classification problem type.
CompletionCriteria (dict) –
How long a job is allowed to run, or how many candidates a job is allowed to generate.
MaxCandidates (integer) –
The maximum number of times a training job is allowed to run.
For text and image classification, as well as time-series forecasting problem types, the supported value is 1. For tabular problem types, the maximum value is 750.
MaxRuntimePerTrainingJobInSeconds (integer) –
The maximum time, in seconds, that each training job executed inside hyperparameter tuning is allowed to run as part of a hyperparameter tuning job. For more information, see the StoppingCondition used by the CreateHyperParameterTuningJob action.
For job V2s (jobs created by calling
CreateAutoMLJobV2
), this field controls the runtime of the job candidate.MaxAutoMLJobRuntimeInSeconds (integer) –
The maximum runtime, in seconds, an AutoML job has to complete.
If an AutoML job exceeds the maximum runtime, the job is stopped automatically and its processing is ended gracefully. The AutoML job identifies the best model whose training was completed and marks it as the best-performing model. Any unfinished steps of the job, such as automatic one-click Autopilot model deployment, are not completed.
TextClassificationJobConfig (dict) –
Settings used to configure an AutoML job V2 for the text classification problem type.
CompletionCriteria (dict) –
How long a job is allowed to run, or how many candidates a job is allowed to generate.
MaxCandidates (integer) –
The maximum number of times a training job is allowed to run.
For text and image classification, as well as time-series forecasting problem types, the supported value is 1. For tabular problem types, the maximum value is 750.
MaxRuntimePerTrainingJobInSeconds (integer) –
The maximum time, in seconds, that each training job executed inside hyperparameter tuning is allowed to run as part of a hyperparameter tuning job. For more information, see the StoppingCondition used by the CreateHyperParameterTuningJob action.
For job V2s (jobs created by calling
CreateAutoMLJobV2
), this field controls the runtime of the job candidate.MaxAutoMLJobRuntimeInSeconds (integer) –
The maximum runtime, in seconds, an AutoML job has to complete.
If an AutoML job exceeds the maximum runtime, the job is stopped automatically and its processing is ended gracefully. The AutoML job identifies the best model whose training was completed and marks it as the best-performing model. Any unfinished steps of the job, such as automatic one-click Autopilot model deployment, are not completed.
ContentColumn (string) – [REQUIRED]
The name of the column used to provide the sentences to be classified. It should not be the same as the target column.
TargetLabelColumn (string) – [REQUIRED]
The name of the column used to provide the class labels. It should not be same as the content column.
TabularJobConfig (dict) –
Settings used to configure an AutoML job V2 for a tabular problem type (regression, classification).
CandidateGenerationConfig (dict) –
The configuration information of how model candidates are generated.
AlgorithmsConfig (list) –
Stores the configuration information for the selection of algorithms used to train model candidates on tabular data.
The list of available algorithms to choose from depends on the training mode set in TabularJobConfig.Mode.
AlgorithmsConfig
should not be set inAUTO
training mode.When
AlgorithmsConfig
is provided, oneAutoMLAlgorithms
attribute must be set and one only. If the list of algorithms provided as values forAutoMLAlgorithms
is empty,CandidateGenerationConfig
uses the full set of algorithms for the given training mode.When
AlgorithmsConfig
is not provided,CandidateGenerationConfig
uses the full set of algorithms for the given training mode.
For the list of all algorithms per problem type and training mode, see AutoMLAlgorithmConfig.
For more information on each algorithm, see the Algorithm support section in Autopilot developer guide.
(dict) –
The collection of algorithms run on a dataset for training the model candidates of an Autopilot job.
AutoMLAlgorithms (list) – [REQUIRED]
The selection of algorithms run on a dataset to train the model candidates of an Autopilot job.
Note
Selected algorithms must belong to the list corresponding to the training mode set in AutoMLJobConfig.Mode (
ENSEMBLING
orHYPERPARAMETER_TUNING
). Choose a minimum of 1 algorithm.In
ENSEMBLING
mode:”catboost”
”extra-trees”
”fastai”
”lightgbm”
”linear-learner”
”nn-torch”
”randomforest”
”xgboost”
In
HYPERPARAMETER_TUNING
mode:”linear-learner”
”mlp”
”xgboost”
(string) –
CompletionCriteria (dict) –
How long a job is allowed to run, or how many candidates a job is allowed to generate.
MaxCandidates (integer) –
The maximum number of times a training job is allowed to run.
For text and image classification, as well as time-series forecasting problem types, the supported value is 1. For tabular problem types, the maximum value is 750.
MaxRuntimePerTrainingJobInSeconds (integer) –
The maximum time, in seconds, that each training job executed inside hyperparameter tuning is allowed to run as part of a hyperparameter tuning job. For more information, see the StoppingCondition used by the CreateHyperParameterTuningJob action.
For job V2s (jobs created by calling
CreateAutoMLJobV2
), this field controls the runtime of the job candidate.MaxAutoMLJobRuntimeInSeconds (integer) –
The maximum runtime, in seconds, an AutoML job has to complete.
If an AutoML job exceeds the maximum runtime, the job is stopped automatically and its processing is ended gracefully. The AutoML job identifies the best model whose training was completed and marks it as the best-performing model. Any unfinished steps of the job, such as automatic one-click Autopilot model deployment, are not completed.
FeatureSpecificationS3Uri (string) –
A URL to the Amazon S3 data source containing selected features from the input data source to run an Autopilot job V2. You can input
FeatureAttributeNames
(optional) in JSON format as shown below:{ "FeatureAttributeNames":["col1", "col2", ...] }
.You can also specify the data type of the feature (optional) in the format shown below:
{ "FeatureDataTypes":{"col1":"numeric", "col2":"categorical" ... } }
Note
These column keys may not include the target column.
In ensembling mode, Autopilot only supports the following data types:
numeric
,categorical
,text
, anddatetime
. In HPO mode, Autopilot can supportnumeric
,categorical
,text
,datetime
, andsequence
.If only
FeatureDataTypes
is provided, the column keys (col1
,col2
,..) should be a subset of the column names in the input data.If both
FeatureDataTypes
andFeatureAttributeNames
are provided, then the column keys should be a subset of the column names provided inFeatureAttributeNames
.The key name
FeatureAttributeNames
is fixed. The values listed in["col1", "col2", ...]
are case sensitive and should be a list of strings containing unique values that are a subset of the column names in the input data. The list of columns provided must not include the target column.Mode (string) –
The method that Autopilot uses to train the data. You can either specify the mode manually or let Autopilot choose for you based on the dataset size by selecting
AUTO
. InAUTO
mode, Autopilot choosesENSEMBLING
for datasets smaller than 100 MB, andHYPERPARAMETER_TUNING
for larger ones.The
ENSEMBLING
mode uses a multi-stack ensemble model to predict classification and regression tasks directly from your dataset. This machine learning mode combines several base models to produce an optimal predictive model. It then uses a stacking ensemble method to combine predictions from contributing members. A multi-stack ensemble model can provide better performance over a single model by combining the predictive capabilities of multiple models. See Autopilot algorithm support for a list of algorithms supported byENSEMBLING
mode.The
HYPERPARAMETER_TUNING
(HPO) mode uses the best hyperparameters to train the best version of a model. HPO automatically selects an algorithm for the type of problem you want to solve. Then HPO finds the best hyperparameters according to your objective metric. See Autopilot algorithm support for a list of algorithms supported byHYPERPARAMETER_TUNING
mode.GenerateCandidateDefinitionsOnly (boolean) –
Generates possible candidates without training the models. A model candidate is a combination of data preprocessors, algorithms, and algorithm parameter settings.
ProblemType (string) –
The type of supervised learning problem available for the model candidates of the AutoML job V2. For more information, see Amazon SageMaker Autopilot problem types.
Note
You must either specify the type of supervised learning problem in
ProblemType
and provide the AutoMLJobObjective metric, or none at all.TargetAttributeName (string) – [REQUIRED]
The name of the target variable in supervised learning, usually represented by ‘y’.
SampleWeightAttributeName (string) –
If specified, this column name indicates which column of the dataset should be treated as sample weights for use by the objective metric during the training, evaluation, and the selection of the best model. This column is not considered as a predictive feature. For more information on Autopilot metrics, see Metrics and validation.
Sample weights should be numeric, non-negative, with larger values indicating which rows are more important than others. Data points that have invalid or no weight value are excluded.
Support for sample weights is available in Ensembling mode only.
TimeSeriesForecastingJobConfig (dict) –
Settings used to configure an AutoML job V2 for a time-series forecasting problem type.
FeatureSpecificationS3Uri (string) –
A URL to the Amazon S3 data source containing additional selected features that complement the target, itemID, timestamp, and grouped columns set in
TimeSeriesConfig
. When not provided, the AutoML job V2 includes all the columns from the original dataset that are not already declared inTimeSeriesConfig
. If provided, the AutoML job V2 only considers these additional columns as a complement to the ones declared inTimeSeriesConfig
.You can input
FeatureAttributeNames
(optional) in JSON format as shown below:{ "FeatureAttributeNames":["col1", "col2", ...] }
.You can also specify the data type of the feature (optional) in the format shown below:
{ "FeatureDataTypes":{"col1":"numeric", "col2":"categorical" ... } }
Autopilot supports the following data types:
numeric
,categorical
,text
, anddatetime
.Note
These column keys must not include any column set in
TimeSeriesConfig
.CompletionCriteria (dict) –
How long a job is allowed to run, or how many candidates a job is allowed to generate.
MaxCandidates (integer) –
The maximum number of times a training job is allowed to run.
For text and image classification, as well as time-series forecasting problem types, the supported value is 1. For tabular problem types, the maximum value is 750.
MaxRuntimePerTrainingJobInSeconds (integer) –
The maximum time, in seconds, that each training job executed inside hyperparameter tuning is allowed to run as part of a hyperparameter tuning job. For more information, see the StoppingCondition used by the CreateHyperParameterTuningJob action.
For job V2s (jobs created by calling
CreateAutoMLJobV2
), this field controls the runtime of the job candidate.MaxAutoMLJobRuntimeInSeconds (integer) –
The maximum runtime, in seconds, an AutoML job has to complete.
If an AutoML job exceeds the maximum runtime, the job is stopped automatically and its processing is ended gracefully. The AutoML job identifies the best model whose training was completed and marks it as the best-performing model. Any unfinished steps of the job, such as automatic one-click Autopilot model deployment, are not completed.
ForecastFrequency (string) – [REQUIRED]
The frequency of predictions in a forecast.
Valid intervals are an integer followed by Y (Year), M (Month), W (Week), D (Day), H (Hour), and min (Minute). For example,
1D
indicates every day and15min
indicates every 15 minutes. The value of a frequency must not overlap with the next larger frequency. For example, you must use a frequency of1H
instead of60min
.The valid values for each frequency are the following:
Minute - 1-59
Hour - 1-23
Day - 1-6
Week - 1-4
Month - 1-11
Year - 1
ForecastHorizon (integer) – [REQUIRED]
The number of time-steps that the model predicts. The forecast horizon is also called the prediction length. The maximum forecast horizon is the lesser of 500 time-steps or 1/4 of the time-steps in the dataset.
ForecastQuantiles (list) –
The quantiles used to train the model for forecasts at a specified quantile. You can specify quantiles from
0.01
(p1) to0.99
(p99), by increments of 0.01 or higher. Up to five forecast quantiles can be specified. WhenForecastQuantiles
is not provided, the AutoML job uses the quantiles p10, p50, and p90 as default.(string) –
Transformations (dict) –
The transformations modifying specific attributes of the time-series, such as filling strategies for missing values.
Filling (dict) –
A key value pair defining the filling method for a column, where the key is the column name and the value is an object which defines the filling logic. You can specify multiple filling methods for a single column.
The supported filling methods and their corresponding options are:
frontfill
:none
(Supported only for target column)middlefill
:zero
,value
,median
,mean
,min
,max
backfill
:zero
,value
,median
,mean
,min
,max
futurefill
:zero
,value
,median
,mean
,min
,max
To set a filling method to a specific value, set the fill parameter to the chosen filling method value (for example
"backfill" : "value"
), and define the filling value in an additional parameter prefixed with “_value”. For example, to setbackfill
to a value of2
, you must include two parameters:"backfill": "value"
and"backfill_value":"2"
.(string) –
(dict) –
(string) –
(string) –
Aggregation (dict) –
A key value pair defining the aggregation method for a column, where the key is the column name and the value is the aggregation method.
The supported aggregation methods are
sum
(default),avg
,first
,min
,max
.Note
Aggregation is only supported for the target column.
(string) –
(string) –
TimeSeriesConfig (dict) – [REQUIRED]
The collection of components that defines the time-series.
TargetAttributeName (string) – [REQUIRED]
The name of the column representing the target variable that you want to predict for each item in your dataset. The data type of the target variable must be numerical.
TimestampAttributeName (string) – [REQUIRED]
The name of the column indicating a point in time at which the target value of a given item is recorded.
ItemIdentifierAttributeName (string) – [REQUIRED]
The name of the column that represents the set of item identifiers for which you want to predict the target value.
GroupingAttributeNames (list) –
A set of columns names that can be grouped with the item identifier column to create a composite key for which a target value is predicted.
(string) –
HolidayConfig (list) –
The collection of holiday featurization attributes used to incorporate national holiday information into your forecasting model.
(dict) –
Stores the holiday featurization attributes applicable to each item of time-series datasets during the training of a forecasting model. This allows the model to identify patterns associated with specific holidays.
CountryCode (string) –
The country code for the holiday calendar.
For the list of public holiday calendars supported by AutoML job V2, see Country Codes. Use the country code corresponding to the country of your choice.
RoleArn (string) –
[REQUIRED]
The ARN of the role that is used to access the data.
Tags (list) –
An array of key-value pairs. You can use tags to categorize your Amazon Web Services resources in different ways, such as by purpose, owner, or environment. For more information, see Tagging Amazon Web ServicesResources. Tag keys must be unique per resource.
(dict) –
A tag object that consists of a key and an optional value, used to manage metadata for SageMaker Amazon Web Services resources.
You can add tags to notebook instances, training jobs, hyperparameter tuning jobs, batch transform jobs, models, labeling jobs, work teams, endpoint configurations, and endpoints. For more information on adding tags to SageMaker resources, see AddTags.
For more information on adding metadata to your Amazon Web Services resources with tagging, see Tagging Amazon Web Services resources. For advice on best practices for managing Amazon Web Services resources with tagging, see Tagging Best Practices: Implement an Effective Amazon Web Services Resource Tagging Strategy.
Key (string) – [REQUIRED]
The tag key. Tag keys must be unique per resource.
Value (string) – [REQUIRED]
The tag value.
SecurityConfig (dict) –
The security configuration for traffic encryption or Amazon VPC settings.
VolumeKmsKeyId (string) –
The key used to encrypt stored data.
EnableInterContainerTrafficEncryption (boolean) –
Whether to use traffic encryption between the container layers.
VpcConfig (dict) –
The VPC configuration.
SecurityGroupIds (list) – [REQUIRED]
The VPC security group IDs, in the form sg-xxxxxxxx. Specify the security groups for the VPC that is specified in the
Subnets
field.(string) –
Subnets (list) – [REQUIRED]
The ID of the subnets in the VPC to which you want to connect your training job or model. For information about the availability of specific instance types, see Supported Instance Types and Availability Zones.
(string) –
AutoMLJobObjective (dict) –
Specifies a metric to minimize or maximize as the objective of a job. If not specified, the default objective metric depends on the problem type. For the list of default values per problem type, see AutoMLJobObjective.
Note
For tabular problem types, you must either provide both the
AutoMLJobObjective
and indicate the type of supervised learning problem inAutoMLProblemTypeConfig
(TabularJobConfig.ProblemType
), or none at all.MetricName (string) – [REQUIRED]
The name of the objective metric used to measure the predictive quality of a machine learning system. During training, the model’s parameters are updated iteratively to optimize its performance based on the feedback provided by the objective metric when evaluating the model on the validation dataset.
For the list of all available metrics supported by Autopilot, see Autopilot metrics.
If you do not specify a metric explicitly, the default behavior is to automatically use:
For tabular problem types:
Regression:
MSE
.Binary classification:
F1
.Multiclass classification:
Accuracy
.
For image or text classification problem types:
Accuracy
For time-series forecasting problem types:
AverageWeightedQuantileLoss
ModelDeployConfig (dict) –
Specifies how to generate the endpoint name for an automatic one-click Autopilot model deployment.
AutoGenerateEndpointName (boolean) –
Set to
True
to automatically generate an endpoint name for a one-click Autopilot model deployment; set toFalse
otherwise. The default value isFalse
.Note
If you set
AutoGenerateEndpointName
toTrue
, do not specify theEndpointName
; otherwise a 400 error is thrown.EndpointName (string) –
Specifies the endpoint name to use for a one-click Autopilot model deployment if the endpoint name is not generated automatically.
Note
Specify the
EndpointName
if and only if you setAutoGenerateEndpointName
toFalse
; otherwise a 400 error is thrown.
DataSplitConfig (dict) –
This structure specifies how to split the data into train and validation datasets.
The validation and training datasets must contain the same headers. For jobs created by calling
CreateAutoMLJob
, the validation dataset must be less than 2 GB in size.Note
This attribute must not be set for the time-series forecasting problem type, as Autopilot automatically splits the input dataset into training and validation sets.
ValidationFraction (float) –
The validation fraction (optional) is a float that specifies the portion of the training dataset to be used for validation. The default value is 0.2, and values must be greater than 0 and less than 1. We recommend setting this value to be less than 0.5.
- Return type:
dict
- Returns:
Response Syntax
{ 'AutoMLJobArn': 'string' }
Response Structure
(dict) –
AutoMLJobArn (string) –
The unique ARN assigned to the AutoMLJob when it is created.
Exceptions
SageMaker.Client.exceptions.ResourceInUse
SageMaker.Client.exceptions.ResourceLimitExceeded