[ aws . transcribe ]
Transcribes the audio from a customer service call and applies any additional Request Parameters you choose to include in your request.
In addition to many standard transcription features, Call Analytics provides you with call characteristics, call summarization, speaker sentiment, and optional redaction of your text transcript and your audio file. You can also apply custom categories to flag specified conditions. To learn more about these features and insights, refer to Analyzing call center audio with Call Analytics .
If you want to apply categories to your Call Analytics job, you must create them before submitting your job request. Categories cannot be retroactively applied to a job. To create a new category, use the operation. To learn more about Call Analytics categories, see Creating categories for batch transcriptions and Creating categories for streaming transcriptions .
To make a StartCallAnalyticsJob
request, you must first upload your media file into an Amazon S3 bucket; you can then specify the Amazon S3 location of the file using the Media
parameter.
You must include the following parameters in your StartCallAnalyticsJob
request:
region
: The Amazon Web Services Region where you are making your request. For a list of Amazon Web Services Regions supported with Amazon Transcribe, refer to Amazon Transcribe endpoints and quotas .
CallAnalyticsJobName
: A custom name that you create for your transcription job that’s unique within your Amazon Web Services account.
DataAccessRoleArn
: The Amazon Resource Name (ARN) of an IAM role that has permissions to access the Amazon S3 bucket that contains your input files.
Media
(MediaFileUri
or RedactedMediaFileUri
): The Amazon S3 location of your media file.
Note
With Call Analytics, you can redact the audio contained in your media file by including RedactedMediaFileUri
, instead of MediaFileUri
, to specify the location of your input audio. If you choose to redact your audio, you can find your redacted media at the location specified in the RedactedMediaFileUri
field of your response.
See also: AWS API Documentation
start-call-analytics-job
--call-analytics-job-name <value>
--media <value>
[--output-location <value>]
[--output-encryption-kms-key-id <value>]
[--data-access-role-arn <value>]
[--settings <value>]
[--channel-definitions <value>]
[--cli-input-json | --cli-input-yaml]
[--generate-cli-skeleton <value>]
[--debug]
[--endpoint-url <value>]
[--no-verify-ssl]
[--no-paginate]
[--output <value>]
[--query <value>]
[--profile <value>]
[--region <value>]
[--version <value>]
[--color <value>]
[--no-sign-request]
[--ca-bundle <value>]
[--cli-read-timeout <value>]
[--cli-connect-timeout <value>]
[--cli-binary-format <value>]
[--no-cli-pager]
[--cli-auto-prompt]
[--no-cli-auto-prompt]
--call-analytics-job-name
(string)
A unique name, chosen by you, for your Call Analytics job.
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.
--media
(structure)
Describes the Amazon S3 location of the media file you want to use in your Call Analytics request.
MediaFileUri -> (string)
The Amazon S3 location of the media file you want to transcribe. For example:
s3://DOC-EXAMPLE-BUCKET/my-media-file.flac
s3://DOC-EXAMPLE-BUCKET/media-files/my-media-file.flac
Note that the Amazon S3 bucket that contains your input media must be located in the same Amazon Web Services Region where you’re making your transcription request.
RedactedMediaFileUri -> (string)
The Amazon S3 location of the media file you want to redact. For example:
s3://DOC-EXAMPLE-BUCKET/my-media-file.flac
s3://DOC-EXAMPLE-BUCKET/media-files/my-media-file.flac
Note that the Amazon S3 bucket that contains your input media must be located in the same Amazon Web Services Region where you’re making your transcription request.
Warning
RedactedMediaFileUri
produces a redacted audio file in addition to a redacted transcript. It is only supported for Call Analytics (StartCallAnalyticsJob
) transcription requests.Shorthand Syntax:
MediaFileUri=string,RedactedMediaFileUri=stringJSON Syntax:
{ "MediaFileUri": "string", "RedactedMediaFileUri": "string" }
--output-location
(string)The Amazon S3 location where you want your Call Analytics transcription output stored. You can use any of the following formats to specify the output location:
s3://DOC-EXAMPLE-BUCKET
s3://DOC-EXAMPLE-BUCKET/my-output-folder/
s3://DOC-EXAMPLE-BUCKET/my-output-folder/my-call-analytics-job.json
Unless you specify a file name (option 3), the name of your output file has a default value that matches the name you specified for your transcription job using the
CallAnalyticsJobName
parameter.You can specify a KMS key to encrypt your output using the
OutputEncryptionKMSKeyId
parameter. If you don’t specify a KMS key, Amazon Transcribe uses the default Amazon S3 key for server-side encryption.If you don’t specify
OutputLocation
, your transcript is placed in a service-managed Amazon S3 bucket and you are provided with a URI to access your transcript.
--output-encryption-kms-key-id
(string)The KMS key you want to use to encrypt your Call Analytics 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 don’t 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 user making the request must have permission to use the specified KMS key.
--data-access-role-arn
(string)The Amazon Resource Name (ARN) of an IAM role that has permissions to access the Amazon S3 bucket that contains your input files. If the role that you specify doesn’t have the appropriate permissions to access the specified Amazon S3 location, your request fails.
IAM role ARNs have the format
arn:partition:iam::account:role/role-name-with-path
. For example:arn:aws:iam::111122223333:role/Admin
.For more information, see IAM ARNs .
--settings
(structure)Specify additional optional settings in your request, including content redaction; allows you to apply custom language models, vocabulary filters, and custom vocabularies to your Call Analytics job.
VocabularyName -> (string)
The name of the custom vocabulary you want to include in your Call Analytics transcription request. Custom vocabulary names are case sensitive.
VocabularyFilterName -> (string)
The name of the custom vocabulary filter you want to include in your Call Analytics transcription request. Custom vocabulary filter names are case sensitive.
Note that if you include
VocabularyFilterName
in your request, you must also includeVocabularyFilterMethod
.VocabularyFilterMethod -> (string)
Specify how you want your custom vocabulary filter applied to your transcript.
To replace words with
***
, choosemask
.To delete words, choose
remove
.To flag words without changing them, choose
tag
.LanguageModelName -> (string)
The name of the custom language model you want to use when processing your Call Analytics job. Note that custom language model names are case sensitive.
The language of the specified custom language model must match the language code that you specify in your transcription request. If the languages don’t match, the custom language model isn’t applied. There are no errors or warnings associated with a language mismatch.
ContentRedaction -> (structure)
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:PiiEntityTypes
,RedactionOutput
, andRedactionType
.RedactionType -> (string)
Specify the category of information you want to redact;
PII
(personally identifiable information) is the only valid value. You can usePiiEntityTypes
to choose which types of PII you want to redact.RedactionOutput -> (string)
Specify if you want only a redacted transcript, or if you want a redacted and an unredacted transcript.
When you choose
redacted
Amazon Transcribe creates only a redacted transcript.When you choose
redacted_and_unredacted
Amazon Transcribe creates a redacted and an unredacted transcript (as two separate files).PiiEntityTypes -> (list)
Specify which types of personally identifiable information (PII) you want to redact in your transcript. You can include as many types as you’d like, or you can select
ALL
.(string)
LanguageOptions -> (list)
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.
Including language options can improve the accuracy of language identification.
For a list of languages supported with Call Analytics, refer to the Supported languages table.
To transcribe speech in Modern Standard Arabic (
ar-SA
), your media file must be encoded at a sample rate of 16,000 Hz or higher.(string)
LanguageIdSettings -> (map)
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
, andVocabularyFilterName
).
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 usingLanguageIdSettings
to ensure that the correct language dialect is identified. For example, if you specify a custom vocabulary that is inen-US
but Amazon Transcribe determines that the language spoken in your media isen-AU
, your custom vocabulary is not applied to your transcription. If you includeLanguageOptions
and includeen-US
as the only English language dialect, your custom vocabulary is applied to your transcription.If you want to include a custom language model, custom vocabulary, or custom vocabulary filter with your request but do not want to use automatic language identification, use instead the parameter with the
LanguageModelName
,VocabularyName
, orVocabularyFilterName
sub-parameters.For a list of languages supported with Call Analytics, refer to Supported languages and language-specific features .
key -> (string)
value -> (structure)
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
, andVocabularyFilterName
). 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 usingLanguageIdSettings
to ensure that the correct language dialect is identified. For example, if you specify a custom vocabulary that is inen-US
but Amazon Transcribe determines that the language spoken in your media isen-AU
, your custom vocabulary is not applied to your transcription. If you includeLanguageOptions
and includeen-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 theVocabularyName
orVocabularyFilterName
(or both) sub-parameter.VocabularyName -> (string)
The name of the custom vocabulary you want to use when processing your transcription job. Custom vocabulary names are case sensitive.
The language of the specified custom vocabulary must match the language code that you specify in your transcription request. If the languages don’t match, the custom vocabulary isn’t applied. There are no errors or warnings associated with a language mismatch.
VocabularyFilterName -> (string)
The name of the custom vocabulary filter you want to use when processing your transcription job. Custom vocabulary filter names are case sensitive.
The language of the specified custom vocabulary filter must match the language code that you specify in your transcription request. If the languages don’t match, the custom vocabulary filter isn’t applied. There are no errors or warnings associated with a language mismatch.
Note that if you include
VocabularyFilterName
in your request, you must also includeVocabularyFilterMethod
.LanguageModelName -> (string)
The name of the custom language model you want to use when processing your transcription job. Note that custom language model names are case sensitive.
The language of the specified custom language model must match the language code that you specify in your transcription request. If the languages don’t match, the custom language model isn’t applied. There are no errors or warnings associated with a language mismatch.
Shorthand Syntax:
VocabularyName=string,VocabularyFilterName=string,VocabularyFilterMethod=string,LanguageModelName=string,ContentRedaction={RedactionType=string,RedactionOutput=string,PiiEntityTypes=[string,string]},LanguageOptions=string,string,LanguageIdSettings={KeyName1={VocabularyName=string,VocabularyFilterName=string,LanguageModelName=string},KeyName2={VocabularyName=string,VocabularyFilterName=string,LanguageModelName=string}}JSON Syntax:
{ "VocabularyName": "string", "VocabularyFilterName": "string", "VocabularyFilterMethod": "remove"|"mask"|"tag", "LanguageModelName": "string", "ContentRedaction": { "RedactionType": "PII", "RedactionOutput": "redacted"|"redacted_and_unredacted", "PiiEntityTypes": ["BANK_ACCOUNT_NUMBER"|"BANK_ROUTING"|"CREDIT_DEBIT_NUMBER"|"CREDIT_DEBIT_CVV"|"CREDIT_DEBIT_EXPIRY"|"PIN"|"EMAIL"|"ADDRESS"|"NAME"|"PHONE"|"SSN"|"ALL", ...] }, "LanguageOptions": ["af-ZA"|"ar-AE"|"ar-SA"|"da-DK"|"de-CH"|"de-DE"|"en-AB"|"en-AU"|"en-GB"|"en-IE"|"en-IN"|"en-US"|"en-WL"|"es-ES"|"es-US"|"fa-IR"|"fr-CA"|"fr-FR"|"he-IL"|"hi-IN"|"id-ID"|"it-IT"|"ja-JP"|"ko-KR"|"ms-MY"|"nl-NL"|"pt-BR"|"pt-PT"|"ru-RU"|"ta-IN"|"te-IN"|"tr-TR"|"zh-CN"|"zh-TW"|"th-TH"|"en-ZA"|"en-NZ"|"vi-VN"|"sv-SE", ...], "LanguageIdSettings": {"af-ZA"|"ar-AE"|"ar-SA"|"da-DK"|"de-CH"|"de-DE"|"en-AB"|"en-AU"|"en-GB"|"en-IE"|"en-IN"|"en-US"|"en-WL"|"es-ES"|"es-US"|"fa-IR"|"fr-CA"|"fr-FR"|"he-IL"|"hi-IN"|"id-ID"|"it-IT"|"ja-JP"|"ko-KR"|"ms-MY"|"nl-NL"|"pt-BR"|"pt-PT"|"ru-RU"|"ta-IN"|"te-IN"|"tr-TR"|"zh-CN"|"zh-TW"|"th-TH"|"en-ZA"|"en-NZ"|"vi-VN"|"sv-SE": { "VocabularyName": "string", "VocabularyFilterName": "string", "LanguageModelName": "string" } ...} }
--channel-definitions
(list)Makes it possible to specify which speaker is on which channel. For example, if your agent is the first participant to speak, you would set
ChannelId
to0
(to indicate the first channel) andParticipantRole
toAGENT
(to indicate that it’s the agent speaking).(structure)
Makes it possible to specify which speaker is on which channel. For example, if your agent is the first participant to speak, you would set
ChannelId
to0
(to indicate the first channel) andParticipantRole
toAGENT
(to indicate that it’s the agent speaking).ChannelId -> (integer)
Specify the audio channel you want to define.
ParticipantRole -> (string)
Specify the speaker you want to define. Omitting this parameter is equivalent to specifying both participants.
Shorthand Syntax:
ChannelId=integer,ParticipantRole=string ...JSON Syntax:
[ { "ChannelId": integer, "ParticipantRole": "AGENT"|"CUSTOMER" } ... ]
--cli-input-json
|--cli-input-yaml
(string) Reads arguments from the JSON string provided. The JSON string follows the format provided by--generate-cli-skeleton
. If other arguments are provided on the command line, those values will override the JSON-provided values. It is not possible to pass arbitrary binary values using a JSON-provided value as the string will be taken literally. This may not be specified along with--cli-input-yaml
.
--generate-cli-skeleton
(string) Prints a JSON skeleton to standard output without sending an API request. If provided with no value or the valueinput
, prints a sample input JSON that can be used as an argument for--cli-input-json
. Similarly, if providedyaml-input
it will print a sample input YAML that can be used with--cli-input-yaml
. If provided with the valueoutput
, it validates the command inputs and returns a sample output JSON for that command. The generated JSON skeleton is not stable between versions of the AWS CLI and there are no backwards compatibility guarantees in the JSON skeleton generated.Global Options¶
--debug
(boolean)Turn on debug logging.
--endpoint-url
(string)Override command’s default URL with the given URL.
--no-verify-ssl
(boolean)By default, the AWS CLI uses SSL when communicating with AWS services. For each SSL connection, the AWS CLI will verify SSL certificates. This option overrides the default behavior of verifying SSL certificates.
--no-paginate
(boolean)Disable automatic pagination.
--output
(string)The formatting style for command output.
json
text
table
yaml
yaml-stream
--query
(string)A JMESPath query to use in filtering the response data.
--profile
(string)Use a specific profile from your credential file.
--region
(string)The region to use. Overrides config/env settings.
--version
(string)Display the version of this tool.
--color
(string)Turn on/off color output.
on
off
auto
--no-sign-request
(boolean)Do not sign requests. Credentials will not be loaded if this argument is provided.
--ca-bundle
(string)The CA certificate bundle to use when verifying SSL certificates. Overrides config/env settings.
--cli-read-timeout
(int)The maximum socket read time in seconds. If the value is set to 0, the socket read will be blocking and not timeout. The default value is 60 seconds.
--cli-connect-timeout
(int)The maximum socket connect time in seconds. If the value is set to 0, the socket connect will be blocking and not timeout. The default value is 60 seconds.
--cli-binary-format
(string)The formatting style to be used for binary blobs. The default format is base64. The base64 format expects binary blobs to be provided as a base64 encoded string. The raw-in-base64-out format preserves compatibility with AWS CLI V1 behavior and binary values must be passed literally. When providing contents from a file that map to a binary blob
fileb://
will always be treated as binary and use the file contents directly regardless of thecli-binary-format
setting. When usingfile://
the file contents will need to properly formatted for the configuredcli-binary-format
.
base64
raw-in-base64-out
--no-cli-pager
(boolean)Disable cli pager for output.
--cli-auto-prompt
(boolean)Automatically prompt for CLI input parameters.
--no-cli-auto-prompt
(boolean)Disable automatically prompt for CLI input parameters.
Output¶
CallAnalyticsJob -> (structure)
Provides detailed information about the current Call Analytics job, including job status and, if applicable, failure reason.
CallAnalyticsJobName -> (string)
The name of the Call Analytics job. Job names are case sensitive and must be unique within an Amazon Web Services account.
CallAnalyticsJobStatus -> (string)
Provides the status of the specified Call Analytics job.
If the status is
COMPLETED
, the job is finished and you can find the results at the location specified inTranscriptFileUri
(orRedactedTranscriptFileUri
, if you requested transcript redaction). If the status isFAILED
,FailureReason
provides details on why your transcription job failed.LanguageCode -> (string)
The language code used to create your Call Analytics job. For a list of supported languages and their associated language codes, refer to the Supported languages table.
If you don’t know the language spoken in your media file, you can omit this field and let Amazon Transcribe automatically identify the language of your media. To improve the accuracy of language identification, you can include several language codes and Amazon Transcribe chooses the closest match for your transcription.
MediaSampleRateHertz -> (integer)
The sample rate, in hertz, of the audio track in your input media file.
MediaFormat -> (string)
The format of the input media file.
Media -> (structure)
Provides the Amazon S3 location of the media file you used in your Call Analytics request.
MediaFileUri -> (string)
The Amazon S3 location of the media file you want to transcribe. For example:
s3://DOC-EXAMPLE-BUCKET/my-media-file.flac
s3://DOC-EXAMPLE-BUCKET/media-files/my-media-file.flac
Note that the Amazon S3 bucket that contains your input media must be located in the same Amazon Web Services Region where you’re making your transcription request.
RedactedMediaFileUri -> (string)
The Amazon S3 location of the media file you want to redact. For example:
s3://DOC-EXAMPLE-BUCKET/my-media-file.flac
s3://DOC-EXAMPLE-BUCKET/media-files/my-media-file.flac
Note that the Amazon S3 bucket that contains your input media must be located in the same Amazon Web Services Region where you’re making your transcription request.
Warning
RedactedMediaFileUri
produces a redacted audio file in addition to a redacted transcript. It is only supported for Call Analytics (StartCallAnalyticsJob
) transcription requests.Transcript -> (structure)
Provides you with the Amazon S3 URI you can use to access your transcript.
TranscriptFileUri -> (string)
The Amazon S3 location of your transcript. You can use this URI to access or download your transcript.
If you included
OutputBucketName
in your transcription job request, this is the URI of that bucket. If you also includedOutputKey
in your request, your output is located in the path you specified in your request.If you didn’t include
OutputBucketName
in your transcription job request, your transcript is stored in a service-managed bucket, andTranscriptFileUri
provides you with a temporary URI you can use for secure access to your transcript.Note
Temporary URIs for service-managed Amazon S3 buckets are only valid for 15 minutes. If you get an
AccesDenied
error, you can get a new temporary URI by running aGetTranscriptionJob
orListTranscriptionJob
request.RedactedTranscriptFileUri -> (string)
The Amazon S3 location of your redacted transcript. You can use this URI to access or download your transcript.
If you included
OutputBucketName
in your transcription job request, this is the URI of that bucket. If you also includedOutputKey
in your request, your output is located in the path you specified in your request.If you didn’t include
OutputBucketName
in your transcription job request, your transcript is stored in a service-managed bucket, andRedactedTranscriptFileUri
provides you with a temporary URI you can use for secure access to your transcript.Note
Temporary URIs for service-managed Amazon S3 buckets are only valid for 15 minutes. If you get an
AccesDenied
error, you can get a new temporary URI by running aGetTranscriptionJob
orListTranscriptionJob
request.StartTime -> (timestamp)
The date and time the specified Call Analytics job began processing.
Timestamps are in the format
YYYY-MM-DD'T'HH:MM:SS.SSSSSS-UTC
. For example,2022-05-04T12:32:58.789000-07:00
represents a transcription job that started processing at 12:32 PM UTC-7 on May 4, 2022.CreationTime -> (timestamp)
The date and time the specified Call Analytics job request was made.
Timestamps are in the format
YYYY-MM-DD'T'HH:MM:SS.SSSSSS-UTC
. For example,2022-05-04T12:32:58.761000-07:00
represents a transcription job that started processing at 12:32 PM UTC-7 on May 4, 2022.CompletionTime -> (timestamp)
The date and time the specified Call Analytics job finished processing.
Timestamps are in the format
YYYY-MM-DD'T'HH:MM:SS.SSSSSS-UTC
. For example,2022-05-04T12:33:13.922000-07:00
represents a transcription job that started processing at 12:33 PM UTC-7 on May 4, 2022.FailureReason -> (string)
If
CallAnalyticsJobStatus
isFAILED
,FailureReason
contains information about why the Call Analytics job request failed.The
FailureReason
field contains one of the following values:
Unsupported media format
. The media format specified inMediaFormat
isn’t valid. Refer to MediaFormat for a list of supported formats.
The media format provided does not match the detected media format
. The media format specified inMediaFormat
doesn’t match the format of the input file. Check the media format of your media file and correct the specified value.
Invalid sample rate for audio file
. The sample rate specified inMediaSampleRateHertz
isn’t valid. The sample rate must be between 8,000 and 48,000 hertz.
The sample rate provided does not match the detected sample rate
. The sample rate specified inMediaSampleRateHertz
doesn’t match the sample rate detected in your input media file. Check the sample rate of your media file and correct the specified value.
Invalid file size: file size too large
. The size of your media file is larger than what Amazon Transcribe can process. For more information, refer to Guidelines and quotas .
Invalid number of channels: number of channels too large
. Your audio contains more channels than Amazon Transcribe is able to process. For more information, refer to Guidelines and quotas .DataAccessRoleArn -> (string)
The Amazon Resource Name (ARN) you included in your request.
IdentifiedLanguageScore -> (float)
The confidence score associated with the language identified in your media file.
Confidence scores are values between 0 and 1; a larger value indicates a higher probability that the identified language correctly matches the language spoken in your media.
Settings -> (structure)
Provides information on any additional settings that were included in your request. Additional settings include content redaction and language identification settings.
VocabularyName -> (string)
The name of the custom vocabulary you want to include in your Call Analytics transcription request. Custom vocabulary names are case sensitive.
VocabularyFilterName -> (string)
The name of the custom vocabulary filter you want to include in your Call Analytics transcription request. Custom vocabulary filter names are case sensitive.
Note that if you include
VocabularyFilterName
in your request, you must also includeVocabularyFilterMethod
.VocabularyFilterMethod -> (string)
Specify how you want your custom vocabulary filter applied to your transcript.
To replace words with
***
, choosemask
.To delete words, choose
remove
.To flag words without changing them, choose
tag
.LanguageModelName -> (string)
The name of the custom language model you want to use when processing your Call Analytics job. Note that custom language model names are case sensitive.
The language of the specified custom language model must match the language code that you specify in your transcription request. If the languages don’t match, the custom language model isn’t applied. There are no errors or warnings associated with a language mismatch.
ContentRedaction -> (structure)
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:PiiEntityTypes
,RedactionOutput
, andRedactionType
.RedactionType -> (string)
Specify the category of information you want to redact;
PII
(personally identifiable information) is the only valid value. You can usePiiEntityTypes
to choose which types of PII you want to redact.RedactionOutput -> (string)
Specify if you want only a redacted transcript, or if you want a redacted and an unredacted transcript.
When you choose
redacted
Amazon Transcribe creates only a redacted transcript.When you choose
redacted_and_unredacted
Amazon Transcribe creates a redacted and an unredacted transcript (as two separate files).PiiEntityTypes -> (list)
Specify which types of personally identifiable information (PII) you want to redact in your transcript. You can include as many types as you’d like, or you can select
ALL
.(string)
LanguageOptions -> (list)
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.
Including language options can improve the accuracy of language identification.
For a list of languages supported with Call Analytics, refer to the Supported languages table.
To transcribe speech in Modern Standard Arabic (
ar-SA
), your media file must be encoded at a sample rate of 16,000 Hz or higher.(string)
LanguageIdSettings -> (map)
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
, andVocabularyFilterName
).
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 usingLanguageIdSettings
to ensure that the correct language dialect is identified. For example, if you specify a custom vocabulary that is inen-US
but Amazon Transcribe determines that the language spoken in your media isen-AU
, your custom vocabulary is not applied to your transcription. If you includeLanguageOptions
and includeen-US
as the only English language dialect, your custom vocabulary is applied to your transcription.If you want to include a custom language model, custom vocabulary, or custom vocabulary filter with your request but do not want to use automatic language identification, use instead the parameter with the
LanguageModelName
,VocabularyName
, orVocabularyFilterName
sub-parameters.For a list of languages supported with Call Analytics, refer to Supported languages and language-specific features .
key -> (string)
value -> (structure)
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
, andVocabularyFilterName
). 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 usingLanguageIdSettings
to ensure that the correct language dialect is identified. For example, if you specify a custom vocabulary that is inen-US
but Amazon Transcribe determines that the language spoken in your media isen-AU
, your custom vocabulary is not applied to your transcription. If you includeLanguageOptions
and includeen-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 theVocabularyName
orVocabularyFilterName
(or both) sub-parameter.VocabularyName -> (string)
The name of the custom vocabulary you want to use when processing your transcription job. Custom vocabulary names are case sensitive.
The language of the specified custom vocabulary must match the language code that you specify in your transcription request. If the languages don’t match, the custom vocabulary isn’t applied. There are no errors or warnings associated with a language mismatch.
VocabularyFilterName -> (string)
The name of the custom vocabulary filter you want to use when processing your transcription job. Custom vocabulary filter names are case sensitive.
The language of the specified custom vocabulary filter must match the language code that you specify in your transcription request. If the languages don’t match, the custom vocabulary filter isn’t applied. There are no errors or warnings associated with a language mismatch.
Note that if you include
VocabularyFilterName
in your request, you must also includeVocabularyFilterMethod
.LanguageModelName -> (string)
The name of the custom language model you want to use when processing your transcription job. Note that custom language model names are case sensitive.
The language of the specified custom language model must match the language code that you specify in your transcription request. If the languages don’t match, the custom language model isn’t applied. There are no errors or warnings associated with a language mismatch.
ChannelDefinitions -> (list)
Indicates which speaker is on which channel.
(structure)
Makes it possible to specify which speaker is on which channel. For example, if your agent is the first participant to speak, you would set
ChannelId
to0
(to indicate the first channel) andParticipantRole
toAGENT
(to indicate that it’s the agent speaking).ChannelId -> (integer)
Specify the audio channel you want to define.
ParticipantRole -> (string)
Specify the speaker you want to define. Omitting this parameter is equivalent to specifying both participants.