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Abhishek Gupta for AWS

Posted on • Edited on • Originally published at buildon.aws

Build a Serverless Application for Audio to Text conversion

Learn how to use Amazon Transcribe and AWS Lambda to build an audio to text conversion application written in Go

In this blog post, you will learn how to build a Serverless speech to text conversion solution using Amazon Transcribe, AWS Lambda and the Go programming language. Audio files uploaded to Amazon Simple Storage Service (S3) will trigger a Lambda function which will submit an asynchronous job to Amazon Transcribe (using the AWS Go SDK) which will in turn store the result in another S3 bucket.

You will be using the Go programming language for the business logic (thanks to aws-lambda-go library) as well as the infrastructure component (Go bindings for AWS CDK) to deploy the solution.

The code is available on GitHub

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What's covered?

Introduction

Amazon Transcribe is a service that utilizes machine learning models to convert speech to text automatically. It offers various features that can enhance the accuracy of the transcribed text, such as language customization, content filtering, multi-channel audio analysis, and individual speaker speech partitioning. Amazon Transcribe can be used as a standalone transcription service or to add speech-to-text capabilities to any application. You can transcribe media in real time (streaming) or you can transcribe media files located in an Amazon S3 bucket (batch).

Amazon Transcribe can be used for a variety of use cases, including:

  • Customer service and support: Transcribe customer service calls, chats, and emails, enabling companies to analyze customer feedback, identify issues, and improve customer experience.
  • Education and research: Transcribe lectures, seminars, and research interviews, allowing researchers and educators to create searchable, accessible text transcripts.
  • Accessibility: Provide closed captions for live streams, webinars, and other events, making content accessible to viewers.
  • Media and entertainment: Transcribe podcasts, interviews, and other audio content, enabling media companies to create searchable, accessible text transcripts.

Let's learn Amazon Transcribe with a hands-on tutorial.

Pre-requisites

Before you proceed, make sure you have the following installed:

Clone the project and change to the right directory:



git clone https://github.com/abhirockzz/ai-ml-golang-transcribe-speech-to-text
cd ai-ml-golang-transcribe-speech-to-text


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Use AWS CDK to deploy the solution

The AWS Cloud Development Kit (AWS CDK) is a framework that lets you define your cloud infrastructure as code in one of its supported programming and provision it through AWS CloudFormation.

To start the deployment, simply invoke cdk deploy and wait for a bit. You will see a list of resources that will be created and will need to provide your confirmation to proceed.



cd cdk

cdk deploy

# output

Bundling asset LambdaTranscribeAudioToTextGolangStack/audio-to-text-function/Code/Stage...

✨  Synthesis time: 4.42s

//.... omitted

Do you wish to deploy these changes (y/n)? y


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Enter y to start creating the AWS resources required for the application.

If you want to see the AWS CloudFormation template which will be used behind the scenes, run cdk synth and check the cdk.out folder

You can keep track of the stack creation progress in the terminal or navigate to AWS console: CloudFormation > Stacks > LambdaTranscribeAudioToTextGolangStack.

Once the stack creation is complete, you should have:

  • Two S3 buckets - Source bucket to upload audio files and the target bucket to store the transcribed text files.
  • A Lambda function to convert audio to text using Amazon Transcribe.
  • .... along with a few other components (like IAM roles etc.)

You will also see the following output in the terminal (resource names will differ in your case). In this case, these are the names of the S3 buckets created by CDK:



✅  LambdaTranscribeAudioToTextGolangStack

✨  Deployment time: 98.61s

Outputs:
LambdaTranscribeAudioToTextGolangStack.audiofilesourcebucketname = lambdatranscribeaudiotot-audiofilesourcebucket05f-182vj224hnpfl
LambdaTranscribeAudioToTextGolangStack.transcribejobbucketname = lambdatranscribeaudiotot-transcribejoboutputbucke-1gi0bu6r1d1jn
.....


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You can now try out the end to end solution!

Convert speech to text

To try the solution, you can either use a mp3 audio file of your own. I really enjoy listening to the Go Time podcast. For demo purposes, I will simply use one of it's episodes and upload (the MP3 file) it to the source S3 bucket using the S3 CLI.



export SOURCE_BUCKET=<enter source S3 bucket name - check the CDK output>

curl -sL https://cdn.changelog.com/uploads/gotime/267/go-time-267.mp3 | aws s3 cp - s3://$SOURCE_BUCKET/go-time-267.mp3

# verify that the file was uploaded
aws s3 ls s3://$SOURCE_BUCKET


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This will invoke a batch transcribe job - you can check the status of the job in the AWS console: Amazon Transcribe > Jobs. Once it completes, you should see a new file (in the output S3 bucket) with the same name as the audio file you uploaded, but with a .txt extension - this is the output file generated by Amazon Transcribe.

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Download and open the output file.



export TARGET_BUCKET=<enter target S3 bucket name - check the CDK output>

# list contents of the target bucket
aws s3 ls s3://$TARGET_BUCKET

# download the output file
aws s3 cp s3://$TARGET_BUCKET/go-time-267.txt .


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Interestingly enough, it's has a JSON payload that looks like this:



{
    "jobName": "job-go-time-267",
    "accountId": "1234566789",
    "results": {
        "transcripts": [
            {
                "transcript": "<transcribed text output...>"
            }
        ]
    },
    "status": "COMPLETED"
}


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You can use the transcript property to extract the actual text.

Don't forget to clean up

Once you're done, to delete all the services, simply use:



cdk destroy

#output prompt (choose 'y' to continue)

Are you sure you want to delete: LambdaTranscribeAudioToTextGolangStack (y/n)?


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You were able to setup and try the complete solution. Before we wrap up, let's quickly walk through some of important parts of the code to get a better understanding of what's going on behind the scenes.

Code walk through

We will only focus on the important parts - some of the code has been omitted for brevity.

CDK

You can refer to the complete CDK code here

We start by creating the source and target S3 buckets.



    sourceBucket := awss3.NewBucket(stack, jsii.String("audio-file-source-bucket"), &awss3.BucketProps{
        BlockPublicAccess: awss3.BlockPublicAccess_BLOCK_ALL(),
        RemovalPolicy:     awscdk.RemovalPolicy_DESTROY,
        AutoDeleteObjects: jsii.Bool(true),
    })

    outputBucket := awss3.NewBucket(stack, jsii.String("transcribe-job-output-bucket"), &awss3.BucketProps{
        BlockPublicAccess: awss3.BlockPublicAccess_BLOCK_ALL(),
        RemovalPolicy:     awscdk.RemovalPolicy_DESTROY,
        AutoDeleteObjects: jsii.Bool(true),
    })


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Then, we create the Lambda function and grant it the required permissions to read from the source bucket and write to the target bucket. A managed policy is also attached to the Lambda function's IAM role to allow it to access Amazon Transcribe.



    function := awscdklambdagoalpha.NewGoFunction(stack, jsii.String("audio-to-text-function"),
        &awscdklambdagoalpha.GoFunctionProps{
            Runtime:     awslambda.Runtime_GO_1_X(),
            Environment: &map[string]*string{"OUTPUT_BUCKET_NAME": outputBucket.BucketName()},
            Entry:       jsii.String(functionDir),
        })

    sourceBucket.GrantRead(function, "*")
    outputBucket.GrantReadWrite(function, "*")
    function.Role().AddManagedPolicy(awsiam.ManagedPolicy_FromAwsManagedPolicyName(jsii.String("AmazonTranscribeFullAccess")))


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We add an event source to the Lambda function to trigger it when a new file is uploaded to the source bucket.



function.AddEventSource(awslambdaeventsources.NewS3EventSource(sourceBucket, &awslambdaeventsources.S3EventSourceProps{
        Events: &[]awss3.EventType{awss3.EventType_OBJECT_CREATED},
    }))


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Finally, we export the bucket names as CloudFormation output.



    awscdk.NewCfnOutput(stack, jsii.String("audio-file-source-bucket-name"),
        &awscdk.CfnOutputProps{
            ExportName: jsii.String("audio-file-source-bucket-name"),
            Value:      sourceBucket.BucketName()})

    awscdk.NewCfnOutput(stack, jsii.String("transcribe-job-bucket-name"),
        &awscdk.CfnOutputProps{
            ExportName: jsii.String("transcribe-job-bucket-name"),
            Value:      outputBucket.BucketName()})


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Lambda function

You can refer to the complete Lambda Function code here



func handler(ctx context.Context, s3Event events.S3Event) {
    for _, record := range s3Event.Records {

        sourceBucketName := record.S3.Bucket.Name
        fileName := record.S3.Object.Key

        err := audioToText(sourceBucketName, fileName)
    }
}


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The Lambda function is triggered when a new file is uploaded to the source bucket. The handler function iterates over the S3 event records and calls the audioToText function.

Let's go through it.



func audioToText(sourceBucketName, fileName string) error {

    inputFileNameFormat := "s3://%s/%s"
    inputFile := fmt.Sprintf(inputFileNameFormat, sourceBucketName, fileName)

    languageCode := "en-US"
    jobName := "job-" + sourceBucketName + "-" + fileName

    outputFileName := strings.Split(fileName, ".")[0] + "-job-output.txt"

    _, err := transcribeClient.StartTranscriptionJob(context.Background(), &transcribe.StartTranscriptionJobInput{
        TranscriptionJobName: &jobName,
        LanguageCode:         types.LanguageCode(languageCode),
        MediaFormat:          types.MediaFormatMp3,
        Media: &types.Media{
            MediaFileUri: &inputFile,
        },
        OutputBucketName: aws.String(outputBucket),
        OutputKey:        aws.String(outputFileName),
        Settings: &types.Settings{
            ShowSpeakerLabels: aws.Bool(true),
            MaxSpeakerLabels:  aws.Int32(5),
        },
    })

    return nil
}


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  • The audioToText function submits a transcription job to Amazon Transcribe.
  • The transcription job is configured to output the results to a file in the target bucket.
  • The name of the output file is derived from the name of the input file.

Conclusion and next steps

In this post, you saw how to create a serverless solution that converts text to speech using Amazon Transcribe. The entire infrastructure life-cycle was automated using AWS CDK. All this was done using the Go programming language, which is well supported in AWS Lambda and AWS CDK.

Here are a few things you can try out to improve/extend this solution:

  • Build and develop another function that's triggered by the transcribed file in the output bucket, parse the JSON content and extract the transcribed text. Update the CDK code to include this functionality.
  • Try generate transcriptions in real-time with Amazon Transcribe streaming

Happy building!

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