@Generated(value="com.amazonaws:aws-java-sdk-code-generator") public class AutoMLChannel extends Object implements Serializable, Cloneable, StructuredPojo
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 .
A validation dataset must contain the same headers as the training dataset.
| Constructor and Description |
|---|
AutoMLChannel() |
| Modifier and Type | Method and Description |
|---|---|
AutoMLChannel |
clone() |
boolean |
equals(Object obj) |
String |
getChannelType()
The channel type (optional) is an
enum string. |
String |
getCompressionType()
You can use
Gzip or None. |
String |
getContentType()
The content type of the data from the input source.
|
AutoMLDataSource |
getDataSource()
The data source for an AutoML channel.
|
String |
getTargetAttributeName()
The name of the target variable in supervised learning, usually represented by 'y'.
|
int |
hashCode() |
void |
marshall(ProtocolMarshaller protocolMarshaller)
Marshalls this structured data using the given
ProtocolMarshaller. |
void |
setChannelType(String channelType)
The channel type (optional) is an
enum string. |
void |
setCompressionType(String compressionType)
You can use
Gzip or None. |
void |
setContentType(String contentType)
The content type of the data from the input source.
|
void |
setDataSource(AutoMLDataSource dataSource)
The data source for an AutoML channel.
|
void |
setTargetAttributeName(String targetAttributeName)
The name of the target variable in supervised learning, usually represented by 'y'.
|
String |
toString()
Returns a string representation of this object.
|
AutoMLChannel |
withChannelType(AutoMLChannelType channelType)
The channel type (optional) is an
enum string. |
AutoMLChannel |
withChannelType(String channelType)
The channel type (optional) is an
enum string. |
AutoMLChannel |
withCompressionType(CompressionType compressionType)
You can use
Gzip or None. |
AutoMLChannel |
withCompressionType(String compressionType)
You can use
Gzip or None. |
AutoMLChannel |
withContentType(String contentType)
The content type of the data from the input source.
|
AutoMLChannel |
withDataSource(AutoMLDataSource dataSource)
The data source for an AutoML channel.
|
AutoMLChannel |
withTargetAttributeName(String targetAttributeName)
The name of the target variable in supervised learning, usually represented by 'y'.
|
public void setDataSource(AutoMLDataSource dataSource)
The data source for an AutoML channel.
dataSource - The data source for an AutoML channel.public AutoMLDataSource getDataSource()
The data source for an AutoML channel.
public AutoMLChannel withDataSource(AutoMLDataSource dataSource)
The data source for an AutoML channel.
dataSource - The data source for an AutoML channel.public void setCompressionType(String compressionType)
You can use Gzip or None. The default value is None.
compressionType - You can use Gzip or None. The default value is None.CompressionTypepublic String getCompressionType()
You can use Gzip or None. The default value is None.
Gzip or None. The default value is None.CompressionTypepublic AutoMLChannel withCompressionType(String compressionType)
You can use Gzip or None. The default value is None.
compressionType - You can use Gzip or None. The default value is None.CompressionTypepublic AutoMLChannel withCompressionType(CompressionType compressionType)
You can use Gzip or None. The default value is None.
compressionType - You can use Gzip or None. The default value is None.CompressionTypepublic void setTargetAttributeName(String targetAttributeName)
The name of the target variable in supervised learning, usually represented by 'y'.
targetAttributeName - The name of the target variable in supervised learning, usually represented by 'y'.public String getTargetAttributeName()
The name of the target variable in supervised learning, usually represented by 'y'.
public AutoMLChannel withTargetAttributeName(String targetAttributeName)
The name of the target variable in supervised learning, usually represented by 'y'.
targetAttributeName - The name of the target variable in supervised learning, usually represented by 'y'.public void setContentType(String contentType)
The content type of the data from the input source. You can use text/csv;header=present or
x-application/vnd.amazon+parquet. The default value is text/csv;header=present.
contentType - The content type of the data from the input source. You can use text/csv;header=present or
x-application/vnd.amazon+parquet. The default value is text/csv;header=present.public String getContentType()
The content type of the data from the input source. You can use text/csv;header=present or
x-application/vnd.amazon+parquet. The default value is text/csv;header=present.
text/csv;header=present or
x-application/vnd.amazon+parquet. The default value is text/csv;header=present.public AutoMLChannel withContentType(String contentType)
The content type of the data from the input source. You can use text/csv;header=present or
x-application/vnd.amazon+parquet. The default value is text/csv;header=present.
contentType - The content type of the data from the input source. You can use text/csv;header=present or
x-application/vnd.amazon+parquet. The default value is text/csv;header=present.public void setChannelType(String channelType)
The channel type (optional) is an enum string. The default value is training. Channels
for training and validation must share the same ContentType and TargetAttributeName.
For information on specifying training and validation channel types, see How to specify training and validation datasets .
channelType - The channel type (optional) is an enum string. The default value is training.
Channels for training and validation must share the same ContentType and
TargetAttributeName. For information on specifying training and validation channel types, see
How to specify training and validation datasets .AutoMLChannelTypepublic String getChannelType()
The channel type (optional) is an enum string. The default value is training. Channels
for training and validation must share the same ContentType and TargetAttributeName.
For information on specifying training and validation channel types, see How to specify training and validation datasets .
enum string. The default value is training.
Channels for training and validation must share the same ContentType and
TargetAttributeName. For information on specifying training and validation channel types,
see How to specify training and validation datasets .AutoMLChannelTypepublic AutoMLChannel withChannelType(String channelType)
The channel type (optional) is an enum string. The default value is training. Channels
for training and validation must share the same ContentType and TargetAttributeName.
For information on specifying training and validation channel types, see How to specify training and validation datasets .
channelType - The channel type (optional) is an enum string. The default value is training.
Channels for training and validation must share the same ContentType and
TargetAttributeName. For information on specifying training and validation channel types, see
How to specify training and validation datasets .AutoMLChannelTypepublic AutoMLChannel withChannelType(AutoMLChannelType channelType)
The channel type (optional) is an enum string. The default value is training. Channels
for training and validation must share the same ContentType and TargetAttributeName.
For information on specifying training and validation channel types, see How to specify training and validation datasets .
channelType - The channel type (optional) is an enum string. The default value is training.
Channels for training and validation must share the same ContentType and
TargetAttributeName. For information on specifying training and validation channel types, see
How to specify training and validation datasets .AutoMLChannelTypepublic String toString()
toString in class ObjectObject.toString()public AutoMLChannel clone()
public void marshall(ProtocolMarshaller protocolMarshaller)
StructuredPojoProtocolMarshaller.marshall in interface StructuredPojoprotocolMarshaller - Implementation of ProtocolMarshaller used to marshall this object's data.