#[non_exhaustive]pub struct StartTranscriptionJobInput {Show 20 fields
pub transcription_job_name: Option<String>,
pub language_code: Option<LanguageCode>,
pub media_sample_rate_hertz: Option<i32>,
pub media_format: Option<MediaFormat>,
pub media: Option<Media>,
pub output_bucket_name: Option<String>,
pub output_key: Option<String>,
pub output_encryption_kms_key_id: Option<String>,
pub kms_encryption_context: Option<HashMap<String, String>>,
pub settings: Option<Settings>,
pub model_settings: Option<ModelSettings>,
pub job_execution_settings: Option<JobExecutionSettings>,
pub content_redaction: Option<ContentRedaction>,
pub identify_language: Option<bool>,
pub identify_multiple_languages: Option<bool>,
pub language_options: Option<Vec<LanguageCode>>,
pub subtitles: Option<Subtitles>,
pub tags: Option<Vec<Tag>>,
pub language_id_settings: Option<HashMap<LanguageCode, LanguageIdSettings>>,
pub toxicity_detection: Option<Vec<ToxicityDetectionSettings>>,
}
Fields (Non-exhaustive)§
This struct is marked as non-exhaustive
Struct { .. }
syntax; cannot be matched against without a wildcard ..
; and struct update syntax will not work.transcription_job_name: Option<String>
A unique name, chosen by you, for your transcription job. The name that you specify is also used as the default name of your transcription output file. If you want to specify a different name for your transcription output, use the OutputKey
parameter.
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 job with the same name as an existing job, you get a ConflictException
error.
language_code: Option<LanguageCode>
The language code that represents the language spoken in the input media file.
If you're unsure of the language spoken in your media file, consider using IdentifyLanguage
or IdentifyMultipleLanguages
to enable automatic language identification.
Note that you must include one of LanguageCode
, IdentifyLanguage
, or IdentifyMultipleLanguages
in your request. If you include more than one of these parameters, your transcription job fails.
For a list of supported languages and their associated language codes, refer to the Supported languages table.
To transcribe speech in Modern Standard Arabic (ar-SA
) in Amazon Web Services GovCloud (US) (US-West, us-gov-west-1), Amazon Web Services GovCloud (US) (US-East, us-gov-east-1), Canada (Calgary, ca-west-1) and Africa (Cape Town, af-south-1), your media file must be encoded at a sample rate of 16,000 Hz or higher.
media_sample_rate_hertz: Option<i32>
The sample rate, in hertz, of the audio track in your input media file.
If you do not specify the media sample rate, Amazon Transcribe determines it for you. If you specify the sample rate, it must match the rate detected by Amazon Transcribe. If there's a mismatch between the value that you specify and the value detected, your job fails. In most cases, you can omit MediaSampleRateHertz
and let Amazon Transcribe determine the sample rate.
media_format: Option<MediaFormat>
Specify the format of your input media file.
media: Option<Media>
Describes the Amazon S3 location of the media file you want to use in your request.
output_bucket_name: Option<String>
The name of the Amazon S3 bucket where you want your transcription output stored. Do not include the S3://
prefix of the specified bucket.
If you want your output to go to a sub-folder of this bucket, specify it using the OutputKey
parameter; OutputBucketName
only accepts the name of a bucket.
For example, if you want your output stored in S3://DOC-EXAMPLE-BUCKET
, set OutputBucketName
to DOC-EXAMPLE-BUCKET
. However, if you want your output stored in S3://DOC-EXAMPLE-BUCKET/test-files/
, set OutputBucketName
to DOC-EXAMPLE-BUCKET
and OutputKey
to test-files/
.
Note that Amazon Transcribe must have permission to use the specified location. You can change Amazon S3 permissions using the Amazon Web Services Management Console. See also Permissions Required for IAM User Roles.
If you do not specify OutputBucketName
, your transcript is placed in a service-managed Amazon S3 bucket and you are provided with a URI to access your transcript.
output_key: Option<String>
Use in combination with OutputBucketName
to specify the output location of your transcript and, optionally, a unique name for your output file. The default name for your transcription output is the same as the name you specified for your transcription job (TranscriptionJobName
).
Here are some examples of how you can use OutputKey
:
-
If you specify 'DOC-EXAMPLE-BUCKET' as the
OutputBucketName
and 'my-transcript.json' as theOutputKey
, your transcription output path iss3://DOC-EXAMPLE-BUCKET/my-transcript.json
. -
If you specify 'my-first-transcription' as the
TranscriptionJobName
, 'DOC-EXAMPLE-BUCKET' as theOutputBucketName
, and 'my-transcript' as theOutputKey
, your transcription output path iss3://DOC-EXAMPLE-BUCKET/my-transcript/my-first-transcription.json
. -
If you specify 'DOC-EXAMPLE-BUCKET' as the
OutputBucketName
and 'test-files/my-transcript.json' as theOutputKey
, your transcription output path iss3://DOC-EXAMPLE-BUCKET/test-files/my-transcript.json
. -
If you specify 'my-first-transcription' as the
TranscriptionJobName
, 'DOC-EXAMPLE-BUCKET' as theOutputBucketName
, and 'test-files/my-transcript' as theOutputKey
, your transcription output path iss3://DOC-EXAMPLE-BUCKET/test-files/my-transcript/my-first-transcription.json
.
If you specify the name of an Amazon S3 bucket sub-folder that doesn't exist, one is created for you.
output_encryption_kms_key_id: Option<String>
The KMS key you want to use to encrypt your transcription output.
If using a key located in the current Amazon Web Services account, you can specify your KMS key in one of four ways:
-
Use the KMS key ID itself. For example,
1234abcd-12ab-34cd-56ef-1234567890ab
. -
Use an alias for the KMS key ID. For example,
alias/ExampleAlias
. -
Use the Amazon Resource Name (ARN) for the KMS key ID. For example,
arn:aws:kms:region:account-ID:key/1234abcd-12ab-34cd-56ef-1234567890ab
. -
Use the ARN for the KMS key alias. For example,
arn:aws:kms:region:account-ID:alias/ExampleAlias
.
If using a key located in a different Amazon Web Services account than the current Amazon Web Services account, you can specify your KMS key in one of two ways:
-
Use the ARN for the KMS key ID. For example,
arn:aws:kms:region:account-ID:key/1234abcd-12ab-34cd-56ef-1234567890ab
. -
Use the ARN for the KMS key alias. For example,
arn:aws:kms:region:account-ID:alias/ExampleAlias
.
If you do not specify an encryption key, your output is encrypted with the default Amazon S3 key (SSE-S3).
If you specify a KMS key to encrypt your output, you must also specify an output location using the OutputLocation
parameter.
Note that the role making the request must have permission to use the specified KMS key.
kms_encryption_context: Option<HashMap<String, String>>
A map of plain text, non-secret key:value pairs, known as encryption context pairs, that provide an added layer of security for your data. For more information, see KMS encryption context and Asymmetric keys in KMS.
settings: Option<Settings>
Specify additional optional settings in your request, including channel identification, alternative transcriptions, speaker partitioning. You can use that to apply custom vocabularies and vocabulary filters.
If you want to include a custom vocabulary or a custom vocabulary filter (or both) with your request but do not want to use automatic language identification, use Settings
with the VocabularyName
or VocabularyFilterName
(or both) sub-parameter.
If you're using automatic language identification with your request and want to include a custom language model, a custom vocabulary, or a custom vocabulary filter, use instead the parameter with the
LanguageModelName
, VocabularyName
or VocabularyFilterName
sub-parameters.
model_settings: Option<ModelSettings>
Specify the custom language model you want to include with your transcription job. If you include ModelSettings
in your request, you must include the LanguageModelName
sub-parameter.
For more information, see Custom language models.
job_execution_settings: Option<JobExecutionSettings>
Makes it possible to control how your transcription job is processed. Currently, the only JobExecutionSettings
modification you can choose is enabling job queueing using the AllowDeferredExecution
sub-parameter.
If you include JobExecutionSettings
in your request, you must also include the sub-parameters: AllowDeferredExecution
and DataAccessRoleArn
.
content_redaction: Option<ContentRedaction>
Makes it possible to redact or flag specified personally identifiable information (PII) in your transcript. If you use ContentRedaction
, you must also include the sub-parameters: RedactionOutput
and RedactionType
. You can optionally include PiiEntityTypes
to choose which types of PII you want to redact. If you do not include PiiEntityTypes
in your request, all PII is redacted.
identify_language: Option<bool>
Enables automatic language identification in your transcription job request. Use this parameter if your media file contains only one language. If your media contains multiple languages, use IdentifyMultipleLanguages
instead.
If you include IdentifyLanguage
, you can optionally include a list of language codes, using LanguageOptions
, that you think may be present in your media file. Including LanguageOptions
restricts IdentifyLanguage
to only the language options that you specify, which can improve transcription accuracy.
If you want to apply a custom language model, a custom vocabulary, or a custom vocabulary filter to your automatic language identification request, include LanguageIdSettings
with the relevant sub-parameters (VocabularyName
, LanguageModelName
, and VocabularyFilterName
). If you include LanguageIdSettings
, also include LanguageOptions
.
Note that you must include one of LanguageCode
, IdentifyLanguage
, or IdentifyMultipleLanguages
in your request. If you include more than one of these parameters, your transcription job fails.
identify_multiple_languages: Option<bool>
Enables automatic multi-language identification in your transcription job request. Use this parameter if your media file contains more than one language. If your media contains only one language, use IdentifyLanguage
instead.
If you include IdentifyMultipleLanguages
, you can optionally include a list of language codes, using LanguageOptions
, that you think may be present in your media file. Including LanguageOptions
restricts IdentifyLanguage
to only the language options that you specify, which can improve transcription accuracy.
If you want to apply a custom vocabulary or a custom vocabulary filter to your automatic language identification request, include LanguageIdSettings
with the relevant sub-parameters (VocabularyName
and VocabularyFilterName
). If you include LanguageIdSettings
, also include LanguageOptions
.
Note that you must include one of LanguageCode
, IdentifyLanguage
, or IdentifyMultipleLanguages
in your request. If you include more than one of these parameters, your transcription job fails.
language_options: Option<Vec<LanguageCode>>
You can specify two or more language codes that represent the languages you think may be present in your media. Including more than five is not recommended. If you're unsure what languages are present, do not include this parameter.
If you include LanguageOptions
in your request, you must also include IdentifyLanguage
.
For more information, refer to Supported languages.
To transcribe speech in Modern Standard Arabic (ar-SA
)in Amazon Web Services GovCloud (US) (US-West, us-gov-west-1), Amazon Web Services GovCloud (US) (US-East, us-gov-east-1), in Canada (Calgary) ca-west-1 and Africa (Cape Town) af-south-1, your media file must be encoded at a sample rate of 16,000 Hz or higher.
subtitles: Option<Subtitles>
Produces subtitle files for your input media. You can specify WebVTT (*.vtt) and SubRip (*.srt) formats.
Adds one or more custom tags, each in the form of a key:value pair, to a new transcription job at the time you start this new job.
To learn more about using tags with Amazon Transcribe, refer to Tagging resources.
language_id_settings: Option<HashMap<LanguageCode, LanguageIdSettings>>
If using automatic language identification in your request and you want to apply a custom language model, a custom vocabulary, or a custom vocabulary filter, include LanguageIdSettings
with the relevant sub-parameters (VocabularyName
, LanguageModelName
, and VocabularyFilterName
). Note that multi-language identification (IdentifyMultipleLanguages
) doesn't support custom language models.
LanguageIdSettings
supports two to five language codes. Each language code you include can have an associated custom language model, custom vocabulary, and custom vocabulary filter. The language codes that you specify must match the languages of the associated custom language models, custom vocabularies, and custom vocabulary filters.
It's recommended that you include LanguageOptions
when using LanguageIdSettings
to ensure that the correct language dialect is identified. For example, if you specify a custom vocabulary that is in en-US
but Amazon Transcribe determines that the language spoken in your media is en-AU
, your custom vocabulary is not applied to your transcription. If you include LanguageOptions
and include en-US
as the only English language dialect, your custom vocabulary is applied to your transcription.
If you want to include a custom language model with your request but do not want to use automatic language identification, use instead the parameter with the
LanguageModelName
sub-parameter. If you want to include a custom vocabulary or a custom vocabulary filter (or both) with your request but do not want to use automatic language identification, use instead the parameter with the
VocabularyName
or VocabularyFilterName
(or both) sub-parameter.
toxicity_detection: Option<Vec<ToxicityDetectionSettings>>
Enables toxic speech detection in your transcript. If you include ToxicityDetection
in your request, you must also include ToxicityCategories
.
For information on the types of toxic speech Amazon Transcribe can detect, see Detecting toxic speech.
Implementations§
Source§impl StartTranscriptionJobInput
impl StartTranscriptionJobInput
Sourcepub fn transcription_job_name(&self) -> Option<&str>
pub fn transcription_job_name(&self) -> Option<&str>
A unique name, chosen by you, for your transcription job. The name that you specify is also used as the default name of your transcription output file. If you want to specify a different name for your transcription output, use the OutputKey
parameter.
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 job with the same name as an existing job, you get a ConflictException
error.
Sourcepub fn language_code(&self) -> Option<&LanguageCode>
pub fn language_code(&self) -> Option<&LanguageCode>
The language code that represents the language spoken in the input media file.
If you're unsure of the language spoken in your media file, consider using IdentifyLanguage
or IdentifyMultipleLanguages
to enable automatic language identification.
Note that you must include one of LanguageCode
, IdentifyLanguage
, or IdentifyMultipleLanguages
in your request. If you include more than one of these parameters, your transcription job fails.
For a list of supported languages and their associated language codes, refer to the Supported languages table.
To transcribe speech in Modern Standard Arabic (ar-SA
) in Amazon Web Services GovCloud (US) (US-West, us-gov-west-1), Amazon Web Services GovCloud (US) (US-East, us-gov-east-1), Canada (Calgary, ca-west-1) and Africa (Cape Town, af-south-1), your media file must be encoded at a sample rate of 16,000 Hz or higher.
Sourcepub fn media_sample_rate_hertz(&self) -> Option<i32>
pub fn media_sample_rate_hertz(&self) -> Option<i32>
The sample rate, in hertz, of the audio track in your input media file.
If you do not specify the media sample rate, Amazon Transcribe determines it for you. If you specify the sample rate, it must match the rate detected by Amazon Transcribe. If there's a mismatch between the value that you specify and the value detected, your job fails. In most cases, you can omit MediaSampleRateHertz
and let Amazon Transcribe determine the sample rate.
Sourcepub fn media_format(&self) -> Option<&MediaFormat>
pub fn media_format(&self) -> Option<&MediaFormat>
Specify the format of your input media file.
Sourcepub fn media(&self) -> Option<&Media>
pub fn media(&self) -> Option<&Media>
Describes the Amazon S3 location of the media file you want to use in your request.
Sourcepub fn output_bucket_name(&self) -> Option<&str>
pub fn output_bucket_name(&self) -> Option<&str>
The name of the Amazon S3 bucket where you want your transcription output stored. Do not include the S3://
prefix of the specified bucket.
If you want your output to go to a sub-folder of this bucket, specify it using the OutputKey
parameter; OutputBucketName
only accepts the name of a bucket.
For example, if you want your output stored in S3://DOC-EXAMPLE-BUCKET
, set OutputBucketName
to DOC-EXAMPLE-BUCKET
. However, if you want your output stored in S3://DOC-EXAMPLE-BUCKET/test-files/
, set OutputBucketName
to DOC-EXAMPLE-BUCKET
and OutputKey
to test-files/
.
Note that Amazon Transcribe must have permission to use the specified location. You can change Amazon S3 permissions using the Amazon Web Services Management Console. See also Permissions Required for IAM User Roles.
If you do not specify OutputBucketName
, your transcript is placed in a service-managed Amazon S3 bucket and you are provided with a URI to access your transcript.
Sourcepub fn output_key(&self) -> Option<&str>
pub fn output_key(&self) -> Option<&str>
Use in combination with OutputBucketName
to specify the output location of your transcript and, optionally, a unique name for your output file. The default name for your transcription output is the same as the name you specified for your transcription job (TranscriptionJobName
).
Here are some examples of how you can use OutputKey
:
-
If you specify 'DOC-EXAMPLE-BUCKET' as the
OutputBucketName
and 'my-transcript.json' as theOutputKey
, your transcription output path iss3://DOC-EXAMPLE-BUCKET/my-transcript.json
. -
If you specify 'my-first-transcription' as the
TranscriptionJobName
, 'DOC-EXAMPLE-BUCKET' as theOutputBucketName
, and 'my-transcript' as theOutputKey
, your transcription output path iss3://DOC-EXAMPLE-BUCKET/my-transcript/my-first-transcription.json
. -
If you specify 'DOC-EXAMPLE-BUCKET' as the
OutputBucketName
and 'test-files/my-transcript.json' as theOutputKey
, your transcription output path iss3://DOC-EXAMPLE-BUCKET/test-files/my-transcript.json
. -
If you specify 'my-first-transcription' as the
TranscriptionJobName
, 'DOC-EXAMPLE-BUCKET' as theOutputBucketName
, and 'test-files/my-transcript' as theOutputKey
, your transcription output path iss3://DOC-EXAMPLE-BUCKET/test-files/my-transcript/my-first-transcription.json
.
If you specify the name of an Amazon S3 bucket sub-folder that doesn't exist, one is created for you.
Sourcepub fn output_encryption_kms_key_id(&self) -> Option<&str>
pub fn output_encryption_kms_key_id(&self) -> Option<&str>
The KMS key you want to use to encrypt your transcription output.
If using a key located in the current Amazon Web Services account, you can specify your KMS key in one of four ways:
-
Use the KMS key ID itself. For example,
1234abcd-12ab-34cd-56ef-1234567890ab
. -
Use an alias for the KMS key ID. For example,
alias/ExampleAlias
. -
Use the Amazon Resource Name (ARN) for the KMS key ID. For example,
arn:aws:kms:region:account-ID:key/1234abcd-12ab-34cd-56ef-1234567890ab
. -
Use the ARN for the KMS key alias. For example,
arn:aws:kms:region:account-ID:alias/ExampleAlias
.
If using a key located in a different Amazon Web Services account than the current Amazon Web Services account, you can specify your KMS key in one of two ways:
-
Use the ARN for the KMS key ID. For example,
arn:aws:kms:region:account-ID:key/1234abcd-12ab-34cd-56ef-1234567890ab
. -
Use the ARN for the KMS key alias. For example,
arn:aws:kms:region:account-ID:alias/ExampleAlias
.
If you do not specify an encryption key, your output is encrypted with the default Amazon S3 key (SSE-S3).
If you specify a KMS key to encrypt your output, you must also specify an output location using the OutputLocation
parameter.
Note that the role making the request must have permission to use the specified KMS key.
Sourcepub fn kms_encryption_context(&self) -> Option<&HashMap<String, String>>
pub fn kms_encryption_context(&self) -> Option<&HashMap<String, String>>
A map of plain text, non-secret key:value pairs, known as encryption context pairs, that provide an added layer of security for your data. For more information, see KMS encryption context and Asymmetric keys in KMS.
Sourcepub fn settings(&self) -> Option<&Settings>
pub fn settings(&self) -> Option<&Settings>
Specify additional optional settings in your request, including channel identification, alternative transcriptions, speaker partitioning. You can use that to apply custom vocabularies and vocabulary filters.
If you want to include a custom vocabulary or a custom vocabulary filter (or both) with your request but do not want to use automatic language identification, use Settings
with the VocabularyName
or VocabularyFilterName
(or both) sub-parameter.
If you're using automatic language identification with your request and want to include a custom language model, a custom vocabulary, or a custom vocabulary filter, use instead the parameter with the
LanguageModelName
, VocabularyName
or VocabularyFilterName
sub-parameters.
Sourcepub fn model_settings(&self) -> Option<&ModelSettings>
pub fn model_settings(&self) -> Option<&ModelSettings>
Specify the custom language model you want to include with your transcription job. If you include ModelSettings
in your request, you must include the LanguageModelName
sub-parameter.
For more information, see Custom language models.
Sourcepub fn job_execution_settings(&self) -> Option<&JobExecutionSettings>
pub fn job_execution_settings(&self) -> Option<&JobExecutionSettings>
Makes it possible to control how your transcription job is processed. Currently, the only JobExecutionSettings
modification you can choose is enabling job queueing using the AllowDeferredExecution
sub-parameter.
If you include JobExecutionSettings
in your request, you must also include the sub-parameters: AllowDeferredExecution
and DataAccessRoleArn
.
Sourcepub fn content_redaction(&self) -> Option<&ContentRedaction>
pub fn content_redaction(&self) -> Option<&ContentRedaction>
Makes it possible to redact or flag specified personally identifiable information (PII) in your transcript. If you use ContentRedaction
, you must also include the sub-parameters: RedactionOutput
and RedactionType
. You can optionally include PiiEntityTypes
to choose which types of PII you want to redact. If you do not include PiiEntityTypes
in your request, all PII is redacted.
Sourcepub fn identify_language(&self) -> Option<bool>
pub fn identify_language(&self) -> Option<bool>
Enables automatic language identification in your transcription job request. Use this parameter if your media file contains only one language. If your media contains multiple languages, use IdentifyMultipleLanguages
instead.
If you include IdentifyLanguage
, you can optionally include a list of language codes, using LanguageOptions
, that you think may be present in your media file. Including LanguageOptions
restricts IdentifyLanguage
to only the language options that you specify, which can improve transcription accuracy.
If you want to apply a custom language model, a custom vocabulary, or a custom vocabulary filter to your automatic language identification request, include LanguageIdSettings
with the relevant sub-parameters (VocabularyName
, LanguageModelName
, and VocabularyFilterName
). If you include LanguageIdSettings
, also include LanguageOptions
.
Note that you must include one of LanguageCode
, IdentifyLanguage
, or IdentifyMultipleLanguages
in your request. If you include more than one of these parameters, your transcription job fails.
Sourcepub fn identify_multiple_languages(&self) -> Option<bool>
pub fn identify_multiple_languages(&self) -> Option<bool>
Enables automatic multi-language identification in your transcription job request. Use this parameter if your media file contains more than one language. If your media contains only one language, use IdentifyLanguage
instead.
If you include IdentifyMultipleLanguages
, you can optionally include a list of language codes, using LanguageOptions
, that you think may be present in your media file. Including LanguageOptions
restricts IdentifyLanguage
to only the language options that you specify, which can improve transcription accuracy.
If you want to apply a custom vocabulary or a custom vocabulary filter to your automatic language identification request, include LanguageIdSettings
with the relevant sub-parameters (VocabularyName
and VocabularyFilterName
). If you include LanguageIdSettings
, also include LanguageOptions
.
Note that you must include one of LanguageCode
, IdentifyLanguage
, or IdentifyMultipleLanguages
in your request. If you include more than one of these parameters, your transcription job fails.
Sourcepub fn language_options(&self) -> &[LanguageCode]
pub fn language_options(&self) -> &[LanguageCode]
You can specify two or more language codes that represent the languages you think may be present in your media. Including more than five is not recommended. If you're unsure what languages are present, do not include this parameter.
If you include LanguageOptions
in your request, you must also include IdentifyLanguage
.
For more information, refer to Supported languages.
To transcribe speech in Modern Standard Arabic (ar-SA
)in Amazon Web Services GovCloud (US) (US-West, us-gov-west-1), Amazon Web Services GovCloud (US) (US-East, us-gov-east-1), in Canada (Calgary) ca-west-1 and Africa (Cape Town) af-south-1, your media file must be encoded at a sample rate of 16,000 Hz or higher.
If no value was sent for this field, a default will be set. If you want to determine if no value was sent, use .language_options.is_none()
.
Sourcepub fn subtitles(&self) -> Option<&Subtitles>
pub fn subtitles(&self) -> Option<&Subtitles>
Produces subtitle files for your input media. You can specify WebVTT (*.vtt) and SubRip (*.srt) formats.
Adds one or more custom tags, each in the form of a key:value pair, to a new transcription job at the time you start this new job.
To learn more about using tags with Amazon Transcribe, refer to Tagging resources.
If no value was sent for this field, a default will be set. If you want to determine if no value was sent, use .tags.is_none()
.
Sourcepub fn language_id_settings(
&self,
) -> Option<&HashMap<LanguageCode, LanguageIdSettings>>
pub fn language_id_settings( &self, ) -> Option<&HashMap<LanguageCode, LanguageIdSettings>>
If using automatic language identification in your request and you want to apply a custom language model, a custom vocabulary, or a custom vocabulary filter, include LanguageIdSettings
with the relevant sub-parameters (VocabularyName
, LanguageModelName
, and VocabularyFilterName
). Note that multi-language identification (IdentifyMultipleLanguages
) doesn't support custom language models.
LanguageIdSettings
supports two to five language codes. Each language code you include can have an associated custom language model, custom vocabulary, and custom vocabulary filter. The language codes that you specify must match the languages of the associated custom language models, custom vocabularies, and custom vocabulary filters.
It's recommended that you include LanguageOptions
when using LanguageIdSettings
to ensure that the correct language dialect is identified. For example, if you specify a custom vocabulary that is in en-US
but Amazon Transcribe determines that the language spoken in your media is en-AU
, your custom vocabulary is not applied to your transcription. If you include LanguageOptions
and include en-US
as the only English language dialect, your custom vocabulary is applied to your transcription.
If you want to include a custom language model with your request but do not want to use automatic language identification, use instead the parameter with the
LanguageModelName
sub-parameter. If you want to include a custom vocabulary or a custom vocabulary filter (or both) with your request but do not want to use automatic language identification, use instead the parameter with the
VocabularyName
or VocabularyFilterName
(or both) sub-parameter.
Sourcepub fn toxicity_detection(&self) -> &[ToxicityDetectionSettings]
pub fn toxicity_detection(&self) -> &[ToxicityDetectionSettings]
Enables toxic speech detection in your transcript. If you include ToxicityDetection
in your request, you must also include ToxicityCategories
.
For information on the types of toxic speech Amazon Transcribe can detect, see Detecting toxic speech.
If no value was sent for this field, a default will be set. If you want to determine if no value was sent, use .toxicity_detection.is_none()
.
Source§impl StartTranscriptionJobInput
impl StartTranscriptionJobInput
Sourcepub fn builder() -> StartTranscriptionJobInputBuilder
pub fn builder() -> StartTranscriptionJobInputBuilder
Creates a new builder-style object to manufacture StartTranscriptionJobInput
.
Trait Implementations§
Source§impl Clone for StartTranscriptionJobInput
impl Clone for StartTranscriptionJobInput
Source§fn clone(&self) -> StartTranscriptionJobInput
fn clone(&self) -> StartTranscriptionJobInput
1.0.0 · Source§const fn clone_from(&mut self, source: &Self)
const fn clone_from(&mut self, source: &Self)
source
. Read moreSource§impl Debug for StartTranscriptionJobInput
impl Debug for StartTranscriptionJobInput
Source§impl PartialEq for StartTranscriptionJobInput
impl PartialEq for StartTranscriptionJobInput
Source§fn eq(&self, other: &StartTranscriptionJobInput) -> bool
fn eq(&self, other: &StartTranscriptionJobInput) -> bool
self
and other
values to be equal, and is used by ==
.impl StructuralPartialEq for StartTranscriptionJobInput
Auto Trait Implementations§
impl Freeze for StartTranscriptionJobInput
impl RefUnwindSafe for StartTranscriptionJobInput
impl Send for StartTranscriptionJobInput
impl Sync for StartTranscriptionJobInput
impl Unpin for StartTranscriptionJobInput
impl UnwindSafe for StartTranscriptionJobInput
Blanket Implementations§
Source§impl<T> BorrowMut<T> for Twhere
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