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Food Coach

This application demonstrates how the Conversation Service can be adapted to use Tone Analyzer's tone along with intents and entities in a simple chat interface.

Demo GIF

For more information on the Conversation Service, see the detailed documentation. For more information on the Tone Analyzer Service, see the detailed documentation.

What does the Food Coach do?

The food coach is a sample chat-bot application. The bot asks the user if they've had a particular meal (breakfast, lunch, or dinner) based on the time of day, and what the user ate for that meal.

The chat interface is in the left panel of the UI, and the JSON response object returned by the Conversation Service in the right panel. The user's input is run against a small set of sample data trained with the following intents:

yes: acknowledgment that the specified meal was eaten
no: the specified meal was not eaten
help
exit

The dialog is also trained on two types of entities:

food items
unhealthy food items

These intents and entities help the bot understand variations on user input.

After asking the user what they ate (if a meal was consumed), the bot asks the user how they feel about it. Depending on the user's emotional tone, the bot provides different feedback.

Below you can find some sample interactions:

Alt text

In order to integrate tone with conversation, the following approach was taken:

  • Intercept the user's message. Before sending it to the Conversation Service, invoke the Tone Analyzer Service. See the call to toneDetection.invokeToneAsync in the invokeToneConversation function in app.js.
  • Parse the JSON response object from the Tone Analyzer Service, and add appropriate variables to the context object of the JSON payload to be sent to the Conversation Service. See the updateUserTone function in tone_detection.js.
  • Send the user input, along with the updated context object in the payload to the Conversation Service. See the call to conversation.message in the invokeToneConversation function in app.js.

You can see the JSON response object from the Conversation Service in the right hand panel.

Alt text

In the conversation template, alternative bot responses were encoded based on the user's emotional tone. For example:

Alt text

Deploying the application

If you want to experiment with the application or use it as a basis for building your own application, you need to deploy it in your own environment. You can then explore the files, make changes, and see how those changes affect the running application. After making modifications, you can deploy your modified version of the application to the Bluemix cloud.

Before you begin

Getting the files

  1. Download the food coach application code to your computer. You can do this in either of the following ways:

    • Download the .zip file of the GitHub repository and extract the files to a local directory, OR

    • Use GitHub to clone the repository locally

Setting up the Conversation service

  1. Make sure you have logged into your Bluemix account using Cloud Foundry. For more information, see the Watson Developer Cloud documentation.

  2. Create an instance of the Conversation Service in the IBM cloud:

    cf create-service conversation <service_plan> <service_instance_name>

    Notes:

    • <service_plan>: options include free, standard or premium.
    • <service_instance_name>: this is a unique name of your choosing.

    For example:

    cf create-service conversation free conversation-food-coach
  3. Create a service key:

    cf create-service-key <service_instance> <service_key>

    For example:

    cf create-service-key conversation-food-coach conversation-food-coach-key

Setting up the Tone Analyzer service

  1. Create an instance of the Tone Analyzer service in the IBM cloud:

    cf create-service tone_analyzer <service_plan> <service_instance_name>

    <service_plan> options include standard and premium. Please note that either of these options will incur a cost.

    For example:

    cf create-service tone_analyzer standard tone-analyzer-food-coach
  2. Create a service key:

    cf create-service-key <service_instance> <service_key>

    For example:

    cf create-service-key tone-analyzer-food-coach tone-analyzer-food-coach-key

Importing the Conversation workspace

  1. In your browser, navigate to your Bluemix console.

  2. From the Dashboard tab, click the newly created Conversation service in the Services list. It'll have the name you gave it in the previous step (e.g., <service_instance_name>).

    Screen capture of Services list

    The Service Details page opens.

  3. Click the Launch tool button.

    Screen capture of Launch tool button

    The Conversation service tool opens.

  4. Click Import to add the food coach workspace. When prompted, specify the location of the workspace JSON file in your local copy of the application project:

    <project_root>/food-coach/training/food-coach-workspace.json

  5. Select Everything (Intents, Entities, and Dialog) and then click Import. The food coach workspace is created.

    • If you have any problems uploading the workspace using Chrome, please try another browser such as Firefox or Safari.

Configuring the application environment

  1. At the command line, navigate to the local project directory (<project_root>/food-coach).

  2. Copy the .env.example file to a new .env file. Open this file in a text editor.

   cp .env.example .env
  1. Retrieve the credentials from the service key for both the conversation and tone analyzer services:

    cf service-key <service_instance_name> <service_key>

    For example:

    cf service-key conversation-food-coach conversation-food-coach-key

    AND

    cf service-key tone-analyzer-food-coach tone-analyzer-food-coach-key

    The output from this command is a JSON object, as in this example:

    {
      "password": "87iT7aqpvU7l",
      "url": "https://gateway.watsonplatform.net/conversation/api",
      "username": "ca2905e6-7b5d-4408-9192-e4d54d83e604"
    }
  2. In the JSON output, find the values for the password and username keys. Paste these values (not including the quotation marks) into the CONVERSATION_PASSWORD and CONVERSATION_USERNAME variables in the .env file:

    CONVERSATION_USERNAME=ca2905e6-7b5d-4408-9192-e4d54d83e604
    CONVERSATION_PASSWORD=87iT7aqpvU7l
    

Do the same for the Tone Analyzer service, and paste the values into the TONE_ANALYZER_PASSWORD and TONE_ANALYZER_USERNAME variables in the .env file

TONE_ANALYZER_USERNAME=mhl715fg-y6h5-2113-6540-ytr78nhs8u64
TONE_ANALYZER_PASSWORD=124GHaq31M9l

Leave the .env file open in your text editor.

  1. In your Bluemix console, open the Conversation service instance where you imported the workspace.

  2. Click the menu icon in the upper right corner of the workspace tile, and then select View details.

    Screen capture of workspace tile menu

    The tile shows the workspace details.

  3. Click the Copy icon next to the workspace ID to copy the workspace ID to the clipboard.

  4. Back on your local system, paste the workspace ID into the WORKSPACE_ID variable in the .env file you previously created. At this point, your .env file should look like the following:

    Screen capture of env file

    Save and close the file. Please note that the logging...ADD THIS IN

  5. Install the demo application package into the local Node.js runtime environment:

    npm install
  6. Start the application:

    npm start

The application is now deployed and running on the local system. Go to http://localhost:3000 in your browser to try it out.

Optional: Deploying from the local system to Bluemix

If you want to subsequently deploy your local version of the application to the Bluemix cloud, you can use Cloud Foundry.

  1. In the project root directory, open the manifest.yml file in a text editor.

  2. Specify the following values in the file:

    • In the applications section of the manifest.yml file, change the name value to a unique name for your version of the demo application.

    • In the services section, specify the name of the Conversation service instance you created for the demo application. If you do not remember the service name, use the cf services command to list all services you have created.

    • In the env section, add the WORKSPACE_ID environment variable, specifying the value from the .env file.

    The following example shows a modified manifest.yml file:

    ---
    declared-services:
      conversation-food-coach:
        label: conversation
        plan: free
      tone-analyzer-food-coach:
        label: tone_analyzer
        plan: standard
    applications:
    - name: conversation-food-coach-demo
      command: npm start
      path: .
      memory: 256M
      instances: 1
      services:
      - conversation-food-coach
      - tone-analyzer-food-coach
      env:
        NPM_CONFIG_PRODUCTION: false
        WORKSPACE_ID: fdeab5e4-0ebe-4183-8d10-6e5557a6d842
  3. Save and close the manifest.yml file.

  4. Push the application to Bluemix:

    cf push

When the command finishes processing, your application is deployed and running on Bluemix. You can access it using the URL specified in the command output.

What to do next

After you have the application installed and running, experiment with it to see how it responds to your input.

The application interface is designed and trained for chatting with a cognitive car. The chat interface is on the left, and the JSON that the JavaScript code receives from the server is on the right. Your questions and commands are interpreted using a small set of sample data trained with the following intents:

yes
no
help
exit

To see details of how these intents are defined, including sample input for each intent, open the workspace in the Conversation tooling on Bluemix, and go to the Intents tab. (For more information about intents, see the Conversation service documentation.)

The system understands your intent and responds accordingly. You can see the details of how your input was understood by examining the JSON data in the Watson understands section on the right side.

Modifying the application

After you have the application deployed and running, you can explore the source files and make changes. Try the following:

  • Modify the .js files to change the application logic.

  • Modify the .html file to change the appearance of the application page.

  • Use the Conversation tool to train the service for new intents, or to modify the dialog flow. For more information, see the Conversation service documentation.

Troubleshooting

If you encounter a problem, you can check the logs for more information. To see the logs, run the cf logs command:

cf logs <application-name> --recent

License

This sample code is licensed under Apache 2.0. Full license text is available in LICENSE.

Contributing

See CONTRIBUTING.

Open Source @ IBM

Find more open source projects on the IBM Github Page.