pub struct CreateLanguageModelFluentBuilder { /* private fields */ }
Expand description
Fluent builder constructing a request to CreateLanguageModel
.
Creates a new custom language model.
When creating a new custom language model, you must specify:
-
If you want a Wideband (audio sample rates over 16,000 Hz) or Narrowband (audio sample rates under 16,000 Hz) base model
-
The location of your training and tuning files (this must be an Amazon S3 URI)
-
The language of your model
-
A unique name for your model
Implementations§
Source§impl CreateLanguageModelFluentBuilder
impl CreateLanguageModelFluentBuilder
Sourcepub fn as_input(&self) -> &CreateLanguageModelInputBuilder
pub fn as_input(&self) -> &CreateLanguageModelInputBuilder
Access the CreateLanguageModel as a reference.
Sourcepub async fn send(
self,
) -> Result<CreateLanguageModelOutput, SdkError<CreateLanguageModelError, HttpResponse>>
pub async fn send( self, ) -> Result<CreateLanguageModelOutput, SdkError<CreateLanguageModelError, HttpResponse>>
Sends the request and returns the response.
If an error occurs, an SdkError
will be returned with additional details that
can be matched against.
By default, any retryable failures will be retried twice. Retry behavior is configurable with the RetryConfig, which can be set when configuring the client.
Sourcepub fn customize(
self,
) -> CustomizableOperation<CreateLanguageModelOutput, CreateLanguageModelError, Self>
pub fn customize( self, ) -> CustomizableOperation<CreateLanguageModelOutput, CreateLanguageModelError, Self>
Consumes this builder, creating a customizable operation that can be modified before being sent.
Sourcepub fn language_code(self, input: ClmLanguageCode) -> Self
pub fn language_code(self, input: ClmLanguageCode) -> Self
The language code that represents the language of your model. Each custom language model must contain terms in only one language, and the language you select for your custom language model must match the language of your training and tuning data.
For a list of supported languages and their associated language codes, refer to the Supported languages table. Note that US English (en-US
) is the only language supported with Amazon Transcribe Medical.
A custom language model can only be used to transcribe files in the same language as the model. For example, if you create a custom language model using US English (en-US
), you can only apply this model to files that contain English audio.
Sourcepub fn set_language_code(self, input: Option<ClmLanguageCode>) -> Self
pub fn set_language_code(self, input: Option<ClmLanguageCode>) -> Self
The language code that represents the language of your model. Each custom language model must contain terms in only one language, and the language you select for your custom language model must match the language of your training and tuning data.
For a list of supported languages and their associated language codes, refer to the Supported languages table. Note that US English (en-US
) is the only language supported with Amazon Transcribe Medical.
A custom language model can only be used to transcribe files in the same language as the model. For example, if you create a custom language model using US English (en-US
), you can only apply this model to files that contain English audio.
Sourcepub fn get_language_code(&self) -> &Option<ClmLanguageCode>
pub fn get_language_code(&self) -> &Option<ClmLanguageCode>
The language code that represents the language of your model. Each custom language model must contain terms in only one language, and the language you select for your custom language model must match the language of your training and tuning data.
For a list of supported languages and their associated language codes, refer to the Supported languages table. Note that US English (en-US
) is the only language supported with Amazon Transcribe Medical.
A custom language model can only be used to transcribe files in the same language as the model. For example, if you create a custom language model using US English (en-US
), you can only apply this model to files that contain English audio.
Sourcepub fn base_model_name(self, input: BaseModelName) -> Self
pub fn base_model_name(self, input: BaseModelName) -> Self
The Amazon Transcribe standard language model, or base model, used to create your custom language model. Amazon Transcribe offers two options for base models: Wideband and Narrowband.
If the audio you want to transcribe has a sample rate of 16,000 Hz or greater, choose WideBand
. To transcribe audio with a sample rate less than 16,000 Hz, choose NarrowBand
.
Sourcepub fn set_base_model_name(self, input: Option<BaseModelName>) -> Self
pub fn set_base_model_name(self, input: Option<BaseModelName>) -> Self
The Amazon Transcribe standard language model, or base model, used to create your custom language model. Amazon Transcribe offers two options for base models: Wideband and Narrowband.
If the audio you want to transcribe has a sample rate of 16,000 Hz or greater, choose WideBand
. To transcribe audio with a sample rate less than 16,000 Hz, choose NarrowBand
.
Sourcepub fn get_base_model_name(&self) -> &Option<BaseModelName>
pub fn get_base_model_name(&self) -> &Option<BaseModelName>
The Amazon Transcribe standard language model, or base model, used to create your custom language model. Amazon Transcribe offers two options for base models: Wideband and Narrowband.
If the audio you want to transcribe has a sample rate of 16,000 Hz or greater, choose WideBand
. To transcribe audio with a sample rate less than 16,000 Hz, choose NarrowBand
.
Sourcepub fn model_name(self, input: impl Into<String>) -> Self
pub fn model_name(self, input: impl Into<String>) -> Self
A unique name, chosen by you, for your custom language model.
This name is case sensitive, cannot contain spaces, and must be unique within an Amazon Web Services account. If you try to create a new custom language model with the same name as an existing custom language model, you get a ConflictException
error.
Sourcepub fn set_model_name(self, input: Option<String>) -> Self
pub fn set_model_name(self, input: Option<String>) -> Self
A unique name, chosen by you, for your custom language model.
This name is case sensitive, cannot contain spaces, and must be unique within an Amazon Web Services account. If you try to create a new custom language model with the same name as an existing custom language model, you get a ConflictException
error.
Sourcepub fn get_model_name(&self) -> &Option<String>
pub fn get_model_name(&self) -> &Option<String>
A unique name, chosen by you, for your custom language model.
This name is case sensitive, cannot contain spaces, and must be unique within an Amazon Web Services account. If you try to create a new custom language model with the same name as an existing custom language model, you get a ConflictException
error.
Sourcepub fn input_data_config(self, input: InputDataConfig) -> Self
pub fn input_data_config(self, input: InputDataConfig) -> Self
Contains the Amazon S3 location of the training data you want to use to create a new custom language model, and permissions to access this location.
When using InputDataConfig
, you must include these sub-parameters: S3Uri
, which is the Amazon S3 location of your training data, and DataAccessRoleArn
, which is the Amazon Resource Name (ARN) of the role that has permission to access your specified Amazon S3 location. You can optionally include TuningDataS3Uri
, which is the Amazon S3 location of your tuning data. If you specify different Amazon S3 locations for training and tuning data, the ARN you use must have permissions to access both locations.
Sourcepub fn set_input_data_config(self, input: Option<InputDataConfig>) -> Self
pub fn set_input_data_config(self, input: Option<InputDataConfig>) -> Self
Contains the Amazon S3 location of the training data you want to use to create a new custom language model, and permissions to access this location.
When using InputDataConfig
, you must include these sub-parameters: S3Uri
, which is the Amazon S3 location of your training data, and DataAccessRoleArn
, which is the Amazon Resource Name (ARN) of the role that has permission to access your specified Amazon S3 location. You can optionally include TuningDataS3Uri
, which is the Amazon S3 location of your tuning data. If you specify different Amazon S3 locations for training and tuning data, the ARN you use must have permissions to access both locations.
Sourcepub fn get_input_data_config(&self) -> &Option<InputDataConfig>
pub fn get_input_data_config(&self) -> &Option<InputDataConfig>
Contains the Amazon S3 location of the training data you want to use to create a new custom language model, and permissions to access this location.
When using InputDataConfig
, you must include these sub-parameters: S3Uri
, which is the Amazon S3 location of your training data, and DataAccessRoleArn
, which is the Amazon Resource Name (ARN) of the role that has permission to access your specified Amazon S3 location. You can optionally include TuningDataS3Uri
, which is the Amazon S3 location of your tuning data. If you specify different Amazon S3 locations for training and tuning data, the ARN you use must have permissions to access both locations.
Appends an item to Tags
.
To override the contents of this collection use set_tags
.
Adds one or more custom tags, each in the form of a key:value pair, to a new custom language model at the time you create this new model.
To learn more about using tags with Amazon Transcribe, refer to Tagging resources.
Adds one or more custom tags, each in the form of a key:value pair, to a new custom language model at the time you create this new model.
To learn more about using tags with Amazon Transcribe, refer to Tagging resources.
Adds one or more custom tags, each in the form of a key:value pair, to a new custom language model at the time you create this new model.
To learn more about using tags with Amazon Transcribe, refer to Tagging resources.
Trait Implementations§
Source§impl Clone for CreateLanguageModelFluentBuilder
impl Clone for CreateLanguageModelFluentBuilder
Source§fn clone(&self) -> CreateLanguageModelFluentBuilder
fn clone(&self) -> CreateLanguageModelFluentBuilder
1.0.0 · Source§const fn clone_from(&mut self, source: &Self)
const fn clone_from(&mut self, source: &Self)
source
. Read moreAuto Trait Implementations§
impl Freeze for CreateLanguageModelFluentBuilder
impl !RefUnwindSafe for CreateLanguageModelFluentBuilder
impl Send for CreateLanguageModelFluentBuilder
impl Sync for CreateLanguageModelFluentBuilder
impl Unpin for CreateLanguageModelFluentBuilder
impl !UnwindSafe for CreateLanguageModelFluentBuilder
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