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To export a knowledge base related to designing and implementing a Microsoft Azure AI solution, you can follow these steps:
Log in to the Azure portal using your Azure account credentials.
Navigate to the “QnA Maker” service in the Azure portal. Click on “Create a knowledge base” to start the process of creating a new knowledge base.
Provide a name and description for your knowledge base. Select the appropriate Azure subscription, resource group, and Azure Search pricing tier. Choose the language for your knowledge base, such as English or Spanish.
To import content from an existing file or URL, select the “Import file” or “Import URL” options, respectively. QnA Maker supports various file formats, including PDF, Word, Excel, and HTML. If you prefer to create content manually, select the “Create” option.
After importing or creating content, QnA Maker processes the data and extracts questions and answers. It then trains a machine learning model based on this information. Once training is completed, you can test the knowledge base by asking questions and checking if the correct answers are returned.
Once you are satisfied with the training and testing results, you can publish the knowledge base. This makes it accessible for integration with Azure services or your own applications. Click on the “Publish” button and wait for the knowledge base to be deployed.
To export the knowledge base, go to the “Settings” tab of your knowledge base in the Azure portal. Scroll down to the “Export” section and click on “Add export method”. Select the desired export method, such as Azure Blob Storage or Azure Cognitive Search. Configure the export settings, such as the storage account or search index name.
After exporting the knowledge base, it is essential to monitor its performance and make necessary updates over time. You can use the Azure portal’s analytics and insights to gain valuable information about user queries, interactions, and feedback.
By following these steps, you can successfully export a knowledge base related to designing and implementing a Microsoft Azure AI solution. This knowledge base can serve as a valuable resource for providing AI-powered support and information to users within your applications or services.
Correct answer: d. Azure Cognitive Services
Correct answer: True
Correct answer: a. Computer Vision API
Correct answer: c. To enable real-time communication with AI-powered chatbots
Correct answer: True
Correct answer: c. Azure Bot Service
Correct answer: True
Correct answer: b. Text Analytics
Correct answer: c. Personalizer
Correct answer: True
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