Beispiele für Amazon Transcribe unter Verwendung von SDK für Python (Boto3) - AWS-SDK-Codebeispiele

Weitere AWS-SDK-Beispiele sind im GitHub-Repository Beispiele für AWS Doc SDKs verfügbar.

Beispiele für Amazon Transcribe unter Verwendung von SDK für Python (Boto3)

Die folgenden Codebeispiele zeigen, wie Sie Aktionen durchführen und gängige Szenarien implementieren, indem Sie AWS SDK für Python (Boto3) mit Amazon Transcribe nutzen.

Aktionen sind Codeauszüge aus größeren Programmen und müssen im Kontext ausgeführt werden. Während Aktionen Ihnen zeigen, wie Sie einzelne Servicefunktionen aufrufen, können Sie Aktionen im Kontext der zugehörigen Szenarien anzeigen.

Szenarien sind Codebeispiele, die Ihnen zeigen, wie Sie bestimmte Aufgaben ausführen, indem Sie mehrere Funktionen innerhalb eines Services aufrufen oder mit anderen AWS-Services kombinieren.

Jedes Beispiel enthält einen Link zum vollständigen Quellcode, wo Sie Anweisungen zum Einrichten und Ausführen des Codes im Kodex finden.

Aktionen

Die folgenden Codebeispiele zeigen, wie CreateVocabulary verwendet wird.

SDK für Python (Boto3)
Anmerkung

Auf GitHub finden Sie noch mehr. Hier finden Sie das vollständige Beispiel und erfahren, wie Sie das AWS-Codebeispiel-Repository einrichten und ausführen.

def create_vocabulary( vocabulary_name, language_code, transcribe_client, phrases=None, table_uri=None ): """ Creates a custom vocabulary that can be used to improve the accuracy of transcription jobs. This function returns as soon as the vocabulary processing is started. Call get_vocabulary to get the current status of the vocabulary. The vocabulary is ready to use when its status is 'READY'. :param vocabulary_name: The name of the custom vocabulary. :param language_code: The language code of the vocabulary. For example, en-US or nl-NL. :param transcribe_client: The Boto3 Transcribe client. :param phrases: A list of comma-separated phrases to include in the vocabulary. :param table_uri: A table of phrases and pronunciation hints to include in the vocabulary. :return: Information about the newly created vocabulary. """ try: vocab_args = {"VocabularyName": vocabulary_name, "LanguageCode": language_code} if phrases is not None: vocab_args["Phrases"] = phrases elif table_uri is not None: vocab_args["VocabularyFileUri"] = table_uri response = transcribe_client.create_vocabulary(**vocab_args) logger.info("Created custom vocabulary %s.", response["VocabularyName"]) except ClientError: logger.exception("Couldn't create custom vocabulary %s.", vocabulary_name) raise else: return response
  • Weitere API-Informationen finden Sie unter CreateVocabulary in der API-Referenz zum AWS-SDK für Python (Boto3).

Die folgenden Codebeispiele zeigen, wie DeleteTranscriptionJob verwendet wird.

SDK für Python (Boto3)
Anmerkung

Auf GitHub finden Sie noch mehr. Hier finden Sie das vollständige Beispiel und erfahren, wie Sie das AWS-Codebeispiel-Repository einrichten und ausführen.

def delete_job(job_name, transcribe_client): """ Deletes a transcription job. This also deletes the transcript associated with the job. :param job_name: The name of the job to delete. :param transcribe_client: The Boto3 Transcribe client. """ try: transcribe_client.delete_transcription_job(TranscriptionJobName=job_name) logger.info("Deleted job %s.", job_name) except ClientError: logger.exception("Couldn't delete job %s.", job_name) raise
  • Weitere API-Informationen finden Sie unter DeleteTranscriptionJob in der API-Referenz zum AWS-SDK für Python (Boto3).

Die folgenden Codebeispiele zeigen, wie DeleteVocabulary verwendet wird.

SDK für Python (Boto3)
Anmerkung

Auf GitHub finden Sie noch mehr. Hier finden Sie das vollständige Beispiel und erfahren, wie Sie das AWS-Codebeispiel-Repository einrichten und ausführen.

def delete_vocabulary(vocabulary_name, transcribe_client): """ Deletes a custom vocabulary. :param vocabulary_name: The name of the vocabulary to delete. :param transcribe_client: The Boto3 Transcribe client. """ try: transcribe_client.delete_vocabulary(VocabularyName=vocabulary_name) logger.info("Deleted vocabulary %s.", vocabulary_name) except ClientError: logger.exception("Couldn't delete vocabulary %s.", vocabulary_name) raise
  • Weitere API-Informationen finden Sie unter DeleteVocabulary in der API-Referenz zum AWS-SDK für Python (Boto3).

Die folgenden Codebeispiele zeigen, wie GetTranscriptionJob verwendet wird.

SDK für Python (Boto3)
Anmerkung

Auf GitHub finden Sie noch mehr. Hier finden Sie das vollständige Beispiel und erfahren, wie Sie das AWS-Codebeispiel-Repository einrichten und ausführen.

def get_job(job_name, transcribe_client): """ Gets details about a transcription job. :param job_name: The name of the job to retrieve. :param transcribe_client: The Boto3 Transcribe client. :return: The retrieved transcription job. """ try: response = transcribe_client.get_transcription_job( TranscriptionJobName=job_name ) job = response["TranscriptionJob"] logger.info("Got job %s.", job["TranscriptionJobName"]) except ClientError: logger.exception("Couldn't get job %s.", job_name) raise else: return job
  • Weitere API-Informationen finden Sie unter GetTranscriptionJob in der API-Referenz zum AWS-SDK für Python (Boto3).

Die folgenden Codebeispiele zeigen, wie GetVocabulary verwendet wird.

SDK für Python (Boto3)
Anmerkung

Auf GitHub finden Sie noch mehr. Hier finden Sie das vollständige Beispiel und erfahren, wie Sie das AWS-Codebeispiel-Repository einrichten und ausführen.

def get_vocabulary(vocabulary_name, transcribe_client): """ Gets information about a custom vocabulary. :param vocabulary_name: The name of the vocabulary to retrieve. :param transcribe_client: The Boto3 Transcribe client. :return: Information about the vocabulary. """ try: response = transcribe_client.get_vocabulary(VocabularyName=vocabulary_name) logger.info("Got vocabulary %s.", response["VocabularyName"]) except ClientError: logger.exception("Couldn't get vocabulary %s.", vocabulary_name) raise else: return response
  • Weitere API-Informationen finden Sie unter GetVocabulary in der API-Referenz zum AWS-SDK für Python (Boto3).

Die folgenden Codebeispiele zeigen, wie ListTranscriptionJobs verwendet wird.

SDK für Python (Boto3)
Anmerkung

Auf GitHub finden Sie noch mehr. Hier finden Sie das vollständige Beispiel und erfahren, wie Sie das AWS-Codebeispiel-Repository einrichten und ausführen.

def list_jobs(job_filter, transcribe_client): """ Lists summaries of the transcription jobs for the current AWS account. :param job_filter: The list of returned jobs must contain this string in their names. :param transcribe_client: The Boto3 Transcribe client. :return: The list of retrieved transcription job summaries. """ try: response = transcribe_client.list_transcription_jobs(JobNameContains=job_filter) jobs = response["TranscriptionJobSummaries"] next_token = response.get("NextToken") while next_token is not None: response = transcribe_client.list_transcription_jobs( JobNameContains=job_filter, NextToken=next_token ) jobs += response["TranscriptionJobSummaries"] next_token = response.get("NextToken") logger.info("Got %s jobs with filter %s.", len(jobs), job_filter) except ClientError: logger.exception("Couldn't get jobs with filter %s.", job_filter) raise else: return jobs
  • Weitere API-Informationen finden Sie unter ListTranscriptionJobs in der API-Referenz zum AWS-SDK für Python (Boto3).

Die folgenden Codebeispiele zeigen, wie ListVocabularies verwendet wird.

SDK für Python (Boto3)
Anmerkung

Auf GitHub finden Sie noch mehr. Hier finden Sie das vollständige Beispiel und erfahren, wie Sie das AWS-Codebeispiel-Repository einrichten und ausführen.

def list_vocabularies(vocabulary_filter, transcribe_client): """ Lists the custom vocabularies created for this AWS account. :param vocabulary_filter: The returned vocabularies must contain this string in their names. :param transcribe_client: The Boto3 Transcribe client. :return: The list of retrieved vocabularies. """ try: response = transcribe_client.list_vocabularies(NameContains=vocabulary_filter) vocabs = response["Vocabularies"] next_token = response.get("NextToken") while next_token is not None: response = transcribe_client.list_vocabularies( NameContains=vocabulary_filter, NextToken=next_token ) vocabs += response["Vocabularies"] next_token = response.get("NextToken") logger.info( "Got %s vocabularies with filter %s.", len(vocabs), vocabulary_filter ) except ClientError: logger.exception( "Couldn't list vocabularies with filter %s.", vocabulary_filter ) raise else: return vocabs
  • Weitere API-Informationen finden Sie unter ListVocabularies in der API-Referenz zum AWS-SDK für Python (Boto3).

Die folgenden Codebeispiele zeigen, wie StartTranscriptionJob verwendet wird.

SDK für Python (Boto3)
Anmerkung

Auf GitHub finden Sie noch mehr. Hier finden Sie das vollständige Beispiel und erfahren, wie Sie das AWS-Codebeispiel-Repository einrichten und ausführen.

def start_job( job_name, media_uri, media_format, language_code, transcribe_client, vocabulary_name=None, ): """ Starts a transcription job. This function returns as soon as the job is started. To get the current status of the job, call get_transcription_job. The job is successfully completed when the job status is 'COMPLETED'. :param job_name: The name of the transcription job. This must be unique for your AWS account. :param media_uri: The URI where the audio file is stored. This is typically in an Amazon S3 bucket. :param media_format: The format of the audio file. For example, mp3 or wav. :param language_code: The language code of the audio file. For example, en-US or ja-JP :param transcribe_client: The Boto3 Transcribe client. :param vocabulary_name: The name of a custom vocabulary to use when transcribing the audio file. :return: Data about the job. """ try: job_args = { "TranscriptionJobName": job_name, "Media": {"MediaFileUri": media_uri}, "MediaFormat": media_format, "LanguageCode": language_code, } if vocabulary_name is not None: job_args["Settings"] = {"VocabularyName": vocabulary_name} response = transcribe_client.start_transcription_job(**job_args) job = response["TranscriptionJob"] logger.info("Started transcription job %s.", job_name) except ClientError: logger.exception("Couldn't start transcription job %s.", job_name) raise else: return job
  • Weitere API-Informationen finden Sie unter StartTranscriptionJob in der API-Referenz zum AWS-SDK für Python (Boto3).

Die folgenden Codebeispiele zeigen, wie UpdateVocabulary verwendet wird.

SDK für Python (Boto3)
Anmerkung

Auf GitHub finden Sie noch mehr. Hier finden Sie das vollständige Beispiel und erfahren, wie Sie das AWS-Codebeispiel-Repository einrichten und ausführen.

def update_vocabulary( vocabulary_name, language_code, transcribe_client, phrases=None, table_uri=None ): """ Updates an existing custom vocabulary. The entire vocabulary is replaced with the contents of the update. :param vocabulary_name: The name of the vocabulary to update. :param language_code: The language code of the vocabulary. :param transcribe_client: The Boto3 Transcribe client. :param phrases: A list of comma-separated phrases to include in the vocabulary. :param table_uri: A table of phrases and pronunciation hints to include in the vocabulary. """ try: vocab_args = {"VocabularyName": vocabulary_name, "LanguageCode": language_code} if phrases is not None: vocab_args["Phrases"] = phrases elif table_uri is not None: vocab_args["VocabularyFileUri"] = table_uri response = transcribe_client.update_vocabulary(**vocab_args) logger.info("Updated custom vocabulary %s.", response["VocabularyName"]) except ClientError: logger.exception("Couldn't update custom vocabulary %s.", vocabulary_name) raise
  • Weitere API-Informationen finden Sie unter UpdateVocabulary in der API-Referenz zum AWS-SDK für Python (Boto3).

Szenarien

Wie das aussehen kann, sehen Sie am nachfolgenden Beispielcode:

  • Laden Sie eine Audiodatei auf Amazon S3 hoch.

  • Führen Sie einen Amazon Transcribe-Auftrag aus, um die Datei zu transkribieren und die Ergebnisse zu erhalten.

  • Erstellen und verfeinern Sie ein benutzerdefiniertes Vokabular, um die Transkriptionsgenauigkeit zu verbessern.

  • Führen Sie Aufträge mit benutzerdefinierten Vokabularen aus und erhalten Sie die Ergebnisse.

SDK für Python (Boto3)
Anmerkung

Auf GitHub finden Sie noch mehr. Hier finden Sie das vollständige Beispiel und erfahren, wie Sie das AWS-Codebeispiel-Repository einrichten und ausführen.

Transkribieren Sie eine Audiodatei, die eine Lesung von Jabberwocky von Lewis Carroll enthält. Beginnen Sie damit, Funktionen zu erstellen, die Amazon Transcribe-Aktionen wrappen.

def start_job( job_name, media_uri, media_format, language_code, transcribe_client, vocabulary_name=None, ): """ Starts a transcription job. This function returns as soon as the job is started. To get the current status of the job, call get_transcription_job. The job is successfully completed when the job status is 'COMPLETED'. :param job_name: The name of the transcription job. This must be unique for your AWS account. :param media_uri: The URI where the audio file is stored. This is typically in an Amazon S3 bucket. :param media_format: The format of the audio file. For example, mp3 or wav. :param language_code: The language code of the audio file. For example, en-US or ja-JP :param transcribe_client: The Boto3 Transcribe client. :param vocabulary_name: The name of a custom vocabulary to use when transcribing the audio file. :return: Data about the job. """ try: job_args = { "TranscriptionJobName": job_name, "Media": {"MediaFileUri": media_uri}, "MediaFormat": media_format, "LanguageCode": language_code, } if vocabulary_name is not None: job_args["Settings"] = {"VocabularyName": vocabulary_name} response = transcribe_client.start_transcription_job(**job_args) job = response["TranscriptionJob"] logger.info("Started transcription job %s.", job_name) except ClientError: logger.exception("Couldn't start transcription job %s.", job_name) raise else: return job def get_job(job_name, transcribe_client): """ Gets details about a transcription job. :param job_name: The name of the job to retrieve. :param transcribe_client: The Boto3 Transcribe client. :return: The retrieved transcription job. """ try: response = transcribe_client.get_transcription_job( TranscriptionJobName=job_name ) job = response["TranscriptionJob"] logger.info("Got job %s.", job["TranscriptionJobName"]) except ClientError: logger.exception("Couldn't get job %s.", job_name) raise else: return job def delete_job(job_name, transcribe_client): """ Deletes a transcription job. This also deletes the transcript associated with the job. :param job_name: The name of the job to delete. :param transcribe_client: The Boto3 Transcribe client. """ try: transcribe_client.delete_transcription_job(TranscriptionJobName=job_name) logger.info("Deleted job %s.", job_name) except ClientError: logger.exception("Couldn't delete job %s.", job_name) raise def create_vocabulary( vocabulary_name, language_code, transcribe_client, phrases=None, table_uri=None ): """ Creates a custom vocabulary that can be used to improve the accuracy of transcription jobs. This function returns as soon as the vocabulary processing is started. Call get_vocabulary to get the current status of the vocabulary. The vocabulary is ready to use when its status is 'READY'. :param vocabulary_name: The name of the custom vocabulary. :param language_code: The language code of the vocabulary. For example, en-US or nl-NL. :param transcribe_client: The Boto3 Transcribe client. :param phrases: A list of comma-separated phrases to include in the vocabulary. :param table_uri: A table of phrases and pronunciation hints to include in the vocabulary. :return: Information about the newly created vocabulary. """ try: vocab_args = {"VocabularyName": vocabulary_name, "LanguageCode": language_code} if phrases is not None: vocab_args["Phrases"] = phrases elif table_uri is not None: vocab_args["VocabularyFileUri"] = table_uri response = transcribe_client.create_vocabulary(**vocab_args) logger.info("Created custom vocabulary %s.", response["VocabularyName"]) except ClientError: logger.exception("Couldn't create custom vocabulary %s.", vocabulary_name) raise else: return response def get_vocabulary(vocabulary_name, transcribe_client): """ Gets information about a custom vocabulary. :param vocabulary_name: The name of the vocabulary to retrieve. :param transcribe_client: The Boto3 Transcribe client. :return: Information about the vocabulary. """ try: response = transcribe_client.get_vocabulary(VocabularyName=vocabulary_name) logger.info("Got vocabulary %s.", response["VocabularyName"]) except ClientError: logger.exception("Couldn't get vocabulary %s.", vocabulary_name) raise else: return response def update_vocabulary( vocabulary_name, language_code, transcribe_client, phrases=None, table_uri=None ): """ Updates an existing custom vocabulary. The entire vocabulary is replaced with the contents of the update. :param vocabulary_name: The name of the vocabulary to update. :param language_code: The language code of the vocabulary. :param transcribe_client: The Boto3 Transcribe client. :param phrases: A list of comma-separated phrases to include in the vocabulary. :param table_uri: A table of phrases and pronunciation hints to include in the vocabulary. """ try: vocab_args = {"VocabularyName": vocabulary_name, "LanguageCode": language_code} if phrases is not None: vocab_args["Phrases"] = phrases elif table_uri is not None: vocab_args["VocabularyFileUri"] = table_uri response = transcribe_client.update_vocabulary(**vocab_args) logger.info("Updated custom vocabulary %s.", response["VocabularyName"]) except ClientError: logger.exception("Couldn't update custom vocabulary %s.", vocabulary_name) raise def list_vocabularies(vocabulary_filter, transcribe_client): """ Lists the custom vocabularies created for this AWS account. :param vocabulary_filter: The returned vocabularies must contain this string in their names. :param transcribe_client: The Boto3 Transcribe client. :return: The list of retrieved vocabularies. """ try: response = transcribe_client.list_vocabularies(NameContains=vocabulary_filter) vocabs = response["Vocabularies"] next_token = response.get("NextToken") while next_token is not None: response = transcribe_client.list_vocabularies( NameContains=vocabulary_filter, NextToken=next_token ) vocabs += response["Vocabularies"] next_token = response.get("NextToken") logger.info( "Got %s vocabularies with filter %s.", len(vocabs), vocabulary_filter ) except ClientError: logger.exception( "Couldn't list vocabularies with filter %s.", vocabulary_filter ) raise else: return vocabs def delete_vocabulary(vocabulary_name, transcribe_client): """ Deletes a custom vocabulary. :param vocabulary_name: The name of the vocabulary to delete. :param transcribe_client: The Boto3 Transcribe client. """ try: transcribe_client.delete_vocabulary(VocabularyName=vocabulary_name) logger.info("Deleted vocabulary %s.", vocabulary_name) except ClientError: logger.exception("Couldn't delete vocabulary %s.", vocabulary_name) raise

Rufen Sie die Wrapper-Funktionen auf, um Audio ohne ein benutzerdefiniertes Vokabular und anschließend mit verschiedenen Versionen eines benutzerdefinierten Vokabulars zu transkribieren, um bessere Ergebnisse zu erzielen.

def usage_demo(): """Shows how to use the Amazon Transcribe service.""" logging.basicConfig(level=logging.INFO, format="%(levelname)s: %(message)s") s3_resource = boto3.resource("s3") transcribe_client = boto3.client("transcribe") print("-" * 88) print("Welcome to the Amazon Transcribe demo!") print("-" * 88) bucket_name = f"jabber-bucket-{time.time_ns()}" print(f"Creating bucket {bucket_name}.") bucket = s3_resource.create_bucket( Bucket=bucket_name, CreateBucketConfiguration={ "LocationConstraint": transcribe_client.meta.region_name }, ) media_file_name = ".media/Jabberwocky.mp3" media_object_key = "Jabberwocky.mp3" print(f"Uploading media file {media_file_name}.") bucket.upload_file(media_file_name, media_object_key) media_uri = f"s3://{bucket.name}/{media_object_key}" job_name_simple = f"Jabber-{time.time_ns()}" print(f"Starting transcription job {job_name_simple}.") start_job( job_name_simple, f"s3://{bucket_name}/{media_object_key}", "mp3", "en-US", transcribe_client, ) transcribe_waiter = TranscribeCompleteWaiter(transcribe_client) transcribe_waiter.wait(job_name_simple) job_simple = get_job(job_name_simple, transcribe_client) transcript_simple = requests.get( job_simple["Transcript"]["TranscriptFileUri"] ).json() print(f"Transcript for job {transcript_simple['jobName']}:") print(transcript_simple["results"]["transcripts"][0]["transcript"]) print("-" * 88) print( "Creating a custom vocabulary that lists the nonsense words to try to " "improve the transcription." ) vocabulary_name = f"Jabber-vocabulary-{time.time_ns()}" create_vocabulary( vocabulary_name, "en-US", transcribe_client, phrases=[ "brillig", "slithy", "borogoves", "mome", "raths", "Jub-Jub", "frumious", "manxome", "Tumtum", "uffish", "whiffling", "tulgey", "thou", "frabjous", "callooh", "callay", "chortled", ], ) vocabulary_ready_waiter = VocabularyReadyWaiter(transcribe_client) vocabulary_ready_waiter.wait(vocabulary_name) job_name_vocabulary_list = f"Jabber-vocabulary-list-{time.time_ns()}" print(f"Starting transcription job {job_name_vocabulary_list}.") start_job( job_name_vocabulary_list, media_uri, "mp3", "en-US", transcribe_client, vocabulary_name, ) transcribe_waiter.wait(job_name_vocabulary_list) job_vocabulary_list = get_job(job_name_vocabulary_list, transcribe_client) transcript_vocabulary_list = requests.get( job_vocabulary_list["Transcript"]["TranscriptFileUri"] ).json() print(f"Transcript for job {transcript_vocabulary_list['jobName']}:") print(transcript_vocabulary_list["results"]["transcripts"][0]["transcript"]) print("-" * 88) print( "Updating the custom vocabulary with table data that provides additional " "pronunciation hints." ) table_vocab_file = "jabber-vocabulary-table.txt" bucket.upload_file(table_vocab_file, table_vocab_file) update_vocabulary( vocabulary_name, "en-US", transcribe_client, table_uri=f"s3://{bucket.name}/{table_vocab_file}", ) vocabulary_ready_waiter.wait(vocabulary_name) job_name_vocab_table = f"Jabber-vocab-table-{time.time_ns()}" print(f"Starting transcription job {job_name_vocab_table}.") start_job( job_name_vocab_table, media_uri, "mp3", "en-US", transcribe_client, vocabulary_name=vocabulary_name, ) transcribe_waiter.wait(job_name_vocab_table) job_vocab_table = get_job(job_name_vocab_table, transcribe_client) transcript_vocab_table = requests.get( job_vocab_table["Transcript"]["TranscriptFileUri"] ).json() print(f"Transcript for job {transcript_vocab_table['jobName']}:") print(transcript_vocab_table["results"]["transcripts"][0]["transcript"]) print("-" * 88) print("Getting data for jobs and vocabularies.") jabber_jobs = list_jobs("Jabber", transcribe_client) print(f"Found {len(jabber_jobs)} jobs:") for job_sum in jabber_jobs: job = get_job(job_sum["TranscriptionJobName"], transcribe_client) print( f"\t{job['TranscriptionJobName']}, {job['Media']['MediaFileUri']}, " f"{job['Settings'].get('VocabularyName')}" ) jabber_vocabs = list_vocabularies("Jabber", transcribe_client) print(f"Found {len(jabber_vocabs)} vocabularies:") for vocab_sum in jabber_vocabs: vocab = get_vocabulary(vocab_sum["VocabularyName"], transcribe_client) vocab_content = requests.get(vocab["DownloadUri"]).text print(f"\t{vocab['VocabularyName']} contents:") print(vocab_content) print("-" * 88) print("Deleting demo jobs.") for job_name in [job_name_simple, job_name_vocabulary_list, job_name_vocab_table]: delete_job(job_name, transcribe_client) print("Deleting demo vocabulary.") delete_vocabulary(vocabulary_name, transcribe_client) print("Deleting demo bucket.") bucket.objects.delete() bucket.delete() print("Thanks for watching!")

Wie das aussehen kann, sehen Sie am nachfolgenden Beispielcode:

  • Starten Sie einen Transkriptionsauftrag mit Amazon Transcribe.

  • Warten Sie, bis der -Auftrag abgeschlossen wurde.

  • Ermitteln Sie die URI, unter der das Transkript gespeichert ist.

Weitere Informationen finden Sie unter Erste Schritte mit Amazon Transcribe.

SDK für Python (Boto3)
Anmerkung

Auf GitHub finden Sie noch mehr. Hier finden Sie das vollständige Beispiel und erfahren, wie Sie das AWS-Codebeispiel-Repository einrichten und ausführen.

import time import boto3 def transcribe_file(job_name, file_uri, transcribe_client): transcribe_client.start_transcription_job( TranscriptionJobName=job_name, Media={"MediaFileUri": file_uri}, MediaFormat="wav", LanguageCode="en-US", ) max_tries = 60 while max_tries > 0: max_tries -= 1 job = transcribe_client.get_transcription_job(TranscriptionJobName=job_name) job_status = job["TranscriptionJob"]["TranscriptionJobStatus"] if job_status in ["COMPLETED", "FAILED"]: print(f"Job {job_name} is {job_status}.") if job_status == "COMPLETED": print( f"Download the transcript from\n" f"\t{job['TranscriptionJob']['Transcript']['TranscriptFileUri']}." ) break else: print(f"Waiting for {job_name}. Current status is {job_status}.") time.sleep(10) def main(): transcribe_client = boto3.client("transcribe") file_uri = "s3://test-transcribe/answer2.wav" transcribe_file("Example-job", file_uri, transcribe_client) if __name__ == "__main__": main()