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Tweet Sentiment Analysis 💬➡🧠➡[😊|😐|😥]

Summary

Real-time tweet sentiment analysis (positive/neutral/negative) and visualization in a .NET Core Web App.

The tweets that are retrieved in real-time from the Twitter Stream will be processed and analyzed by the Azure Sentiment Analysis API and persisted in Cosmos DB. Finally, both the tweet text and sentiment will be displayed in the Web App as they come through.

demo

Index

Architecture diagram

architecture-diagram

Requirements

You will need the following tools to complete the hands-on lab.

Deploy the infrastructure to Azure

You will be deploying the following resources to Azure using an already defined ARM template:

  • Container registry
  • Azure Cosmos DB
  • Application Insights
  • Function App (Consumption plan)
  • Storage Account
  • SignalR Service
  • Cognitive Services (Sentiment Analysis)

arm-infrastructure-resources

The following README will guide you through the instructions to deploy all the resources aforementioned.

Important: Before deploying the infrastructure, make sure you set your own resource names in the parameters file.

If you have chosen to deploy the resources using the Azure PowerShell module you can easily get the connection strings and keys from the PowerShell window; arm-infrastructure-deployment-output

Otherwise, you can download all the info from a zip file with the deployment details output files "deployment.json" and "deployment_operations.json" deployment details output results deployment operation results

Next step is to update the file appsettings.sample.json with your keys:

{
    "Twitter": {
        "ConsumerKey": "<your-consumer-key>",
        "ConsumerSecret": "<your-consumer-secret>",
        "AccessToken": "<your-access-token>",
        "AccessTokenSecret": "<your-access-token-secret>",
        "Keyword": "<your-keyword-or-hashtag>",
        "TweetsPerMinute": 3
    },        
    "TextAnalytics": {
        "Name": "<your-cognitive-service-resource-name>",
        "Key1": "<cognitivekeys-key1>",
        "Key2": "<cognitivekeys-key2>",
        "Language": "en"
    },
    "CosmosDB": {
        "EndpointUrl": "<cosmosDbEndpoint>",
        "AuthorizationKey": "<cosmosDbPrimaryKey>"
    }
}

In this link you can find how to create a Twitter App to get your Key and Token to use Twitter's Api.

Once you have done that, make sure you rename the appsettings.sample.json file to appsettings.json.

Build and push the docker image

The TweetSentimentAnalysis.Processor is a .NET Core App 2.2 that listens to the Twitter Stream for tweets given a keyword - you must set it in the appsettings.json file or pass it as an environment variable when you run the docker image.

Login to your Azure Container Registry

λ docker login <your-docker-registry> -u <your-user> -p <your-password>

Example:
λ docker login acrfcz.azurecr.io -u myuser -p 1234

WARNING! Using --password via the CLI is insecure. Use --password-stdin.
Login Succeeded

Build and publish the docker image

λ build-and-push.cmd <your-docker-registry> <docker-img-version>

Example:
λ build-and-push.cmd acrfcz.azurecr.io 0.1.0

Run the docker image (locally)

λ docker run -it --rm -e "Keyword=I love coding" twitterfeedprocessor

[04/12/2019 16:15:12] - Starting program...
[04/12/2019 16:15:12] - Environment:
[04/12/2019 16:15:12] - Starting listening for tweets that contains the keyword 'I love coding'...

or...

Run the docker image (as an Azure Container Instance)

run-twitterfeedprocessor-as-container-instance

Deploy the Azure Function

Within Visual Studio, right click on the TweetSentimentAnalysis.FunctionApp project and select Publish...

deploy-azure-function-from-vs

TIP: If you wanted to debug the Azure Function, make a copy of the local.settings.sample.json file that is present in the TweetSentimentAnalysis.FunctionApp folder and rename it to local.settings.json. Then update the following values according to the resources you created:

{
    "IsEncrypted": false,
    "Values": {
        "FUNCTIONS_WORKER_RUNTIME": "dotnet",
        "CosmosDbConnectionString": "<cosmosdb-connection-string>",
        "AzureSignalRConnectionString": "<signalr-connection-string>"
    }
}

Host your serverless web app in Blob Storage

Now it's time to build our serverless web app that consists of an index.html in Vue.js and with the SignalR JS libraries to interact with our backend (the Azure Function).

In the storage account, let's create a new blob container with the following configuration:

  • Name: $web
  • Public access level: Blob (anonymous read access for blobs only)

create-blob-containter

This will allow our serverless web app to be publicly available instead of private.

Then click in the container and just upload the index.html file:

upload-index

You can find your serverless web app URL by clicking on the blob:

web-app-url

Example:

https://safcztweetsentiment.blob.core.windows.net/$web/index.html

Once you click on it, a pop-up will appear. Enter the Azure Functionapp base URL and press OK.

webapp-popup

Some tweets should start appearing now :)

demo

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