Class AutoMLChannel
- java.lang.Object
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- software.amazon.awssdk.services.sagemaker.model.AutoMLChannel
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- All Implemented Interfaces:
Serializable
,SdkPojo
,ToCopyableBuilder<AutoMLChannel.Builder,AutoMLChannel>
@Generated("software.amazon.awssdk:codegen") public final class AutoMLChannel extends Object implements SdkPojo, Serializable, ToCopyableBuilder<AutoMLChannel.Builder,AutoMLChannel>
A channel is a named input source that training algorithms can consume. The validation dataset size is limited to less than 2 GB. The training dataset size must be less than 100 GB. For more information, see Channel.
A validation dataset must contain the same headers as the training dataset.
- See Also:
- Serialized Form
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Nested Class Summary
Nested Classes Modifier and Type Class Description static interface
AutoMLChannel.Builder
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Method Summary
All Methods Static Methods Instance Methods Concrete Methods Modifier and Type Method Description static AutoMLChannel.Builder
builder()
AutoMLChannelType
channelType()
The channel type (optional) is anenum
string.String
channelTypeAsString()
The channel type (optional) is anenum
string.CompressionType
compressionType()
You can useGzip
orNone
.String
compressionTypeAsString()
You can useGzip
orNone
.String
contentType()
The content type of the data from the input source.AutoMLDataSource
dataSource()
The data source for an AutoML channel.boolean
equals(Object obj)
boolean
equalsBySdkFields(Object obj)
<T> Optional<T>
getValueForField(String fieldName, Class<T> clazz)
int
hashCode()
String
sampleWeightAttributeName()
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.List<SdkField<?>>
sdkFields()
static Class<? extends AutoMLChannel.Builder>
serializableBuilderClass()
String
targetAttributeName()
The name of the target variable in supervised learning, usually represented by 'y'.AutoMLChannel.Builder
toBuilder()
String
toString()
Returns a string representation of this object.-
Methods inherited from class java.lang.Object
clone, finalize, getClass, notify, notifyAll, wait, wait, wait
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Methods inherited from interface software.amazon.awssdk.utils.builder.ToCopyableBuilder
copy
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Method Detail
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dataSource
public final AutoMLDataSource dataSource()
The data source for an AutoML channel.
- Returns:
- The data source for an AutoML channel.
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compressionType
public final CompressionType compressionType()
You can use
Gzip
orNone
. The default value isNone
.If the service returns an enum value that is not available in the current SDK version,
compressionType
will returnCompressionType.UNKNOWN_TO_SDK_VERSION
. The raw value returned by the service is available fromcompressionTypeAsString()
.- Returns:
- You can use
Gzip
orNone
. The default value isNone
. - See Also:
CompressionType
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compressionTypeAsString
public final String compressionTypeAsString()
You can use
Gzip
orNone
. The default value isNone
.If the service returns an enum value that is not available in the current SDK version,
compressionType
will returnCompressionType.UNKNOWN_TO_SDK_VERSION
. The raw value returned by the service is available fromcompressionTypeAsString()
.- Returns:
- You can use
Gzip
orNone
. The default value isNone
. - See Also:
CompressionType
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targetAttributeName
public final String targetAttributeName()
The name of the target variable in supervised learning, usually represented by 'y'.
- Returns:
- The name of the target variable in supervised learning, usually represented by 'y'.
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contentType
public final String contentType()
The content type of the data from the input source. You can use
text/csv;header=present
orx-application/vnd.amazon+parquet
. The default value istext/csv;header=present
.- Returns:
- The content type of the data from the input source. You can use
text/csv;header=present
orx-application/vnd.amazon+parquet
. The default value istext/csv;header=present
.
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channelType
public final AutoMLChannelType channelType()
The channel type (optional) is an
enum
string. The default value istraining
. Channels for training and validation must share the sameContentType
andTargetAttributeName
. For information on specifying training and validation channel types, see How to specify training and validation datasets.If the service returns an enum value that is not available in the current SDK version,
channelType
will returnAutoMLChannelType.UNKNOWN_TO_SDK_VERSION
. The raw value returned by the service is available fromchannelTypeAsString()
.- Returns:
- The channel type (optional) is an
enum
string. The default value istraining
. Channels for training and validation must share the sameContentType
andTargetAttributeName
. For information on specifying training and validation channel types, see How to specify training and validation datasets. - See Also:
AutoMLChannelType
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channelTypeAsString
public final String channelTypeAsString()
The channel type (optional) is an
enum
string. The default value istraining
. Channels for training and validation must share the sameContentType
andTargetAttributeName
. For information on specifying training and validation channel types, see How to specify training and validation datasets.If the service returns an enum value that is not available in the current SDK version,
channelType
will returnAutoMLChannelType.UNKNOWN_TO_SDK_VERSION
. The raw value returned by the service is available fromchannelTypeAsString()
.- Returns:
- The channel type (optional) is an
enum
string. The default value istraining
. Channels for training and validation must share the sameContentType
andTargetAttributeName
. For information on specifying training and validation channel types, see How to specify training and validation datasets. - See Also:
AutoMLChannelType
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sampleWeightAttributeName
public final String sampleWeightAttributeName()
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.
- Returns:
- 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.
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toBuilder
public AutoMLChannel.Builder toBuilder()
- Specified by:
toBuilder
in interfaceToCopyableBuilder<AutoMLChannel.Builder,AutoMLChannel>
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builder
public static AutoMLChannel.Builder builder()
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serializableBuilderClass
public static Class<? extends AutoMLChannel.Builder> serializableBuilderClass()
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equalsBySdkFields
public final boolean equalsBySdkFields(Object obj)
- Specified by:
equalsBySdkFields
in interfaceSdkPojo
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toString
public final String toString()
Returns a string representation of this object. This is useful for testing and debugging. Sensitive data will be redacted from this string using a placeholder value.
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