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Azure Cognitive Language Services Question Answering client library for .NET - version 1.1.0

The Question Answering service is a cloud-based API service that lets you create a conversational question-and-answer layer over your existing data. Use it to build a knowledge base by extracting questions and answers from your semi-structured content, including FAQ, manuals, and documents. Answer users’ questions with the best answers from the QnAs in your knowledge base—automatically. Your knowledge base gets smarter, too, as it continually learns from user behavior.

Source code | Package (NuGet) | API reference documentation | Product documentation | Samples | Migration guide

Getting started

Install the package

Install the Azure Cognitive Language Services Question Answering client library for .NET with NuGet:

dotnet add package Azure.AI.Language.QuestionAnswering

Prerequisites

Though you can use this SDK to create and import conversation projects, Language Studio is the preferred method for creating projects.

Authenticate the client

In order to interact with the Question Answering service, you'll need to either create an instance of the QuestionAnsweringClient class for querying existing projects or an instance of the QuestionAnsweringAuthoringClient for managing projects within your resource. You will need an endpoint, and an API key to instantiate a client object. For more information regarding authenticating with Cognitive Services, see Authenticate requests to Azure Cognitive Services.

Get an API key

You can get the endpoint and an API key from the Cognitive Services resource or Question Answering resource in the Azure Portal.

Alternatively, use the Azure CLI command shown below to get the API key from the Question Answering resource.

az cognitiveservices account keys list --resource-group <resource-group-name> --name <resource-name>

Create a QuestionAnsweringClient

To use the QuestionAnsweringClient, make sure you use the right namespaces:

using Azure.Core;
using Azure.AI.Language.QuestionAnswering;

With your endpoint and API key you can instantiate a QuestionAnsweringClient:

Uri endpoint = new Uri("https://myaccount.cognitiveservices.azure.com/");
AzureKeyCredential credential = new AzureKeyCredential("{api-key}");

QuestionAnsweringClient client = new QuestionAnsweringClient(endpoint, credential);

Create a QuestionAnsweringAuthoringClient

To use the QuestionAnsweringAuthoringClient, use the following namespace in addition to those above, if needed.

using Azure.AI.Language.QuestionAnswering.Authoring;

With your endpoint and API key, you can instantiate a QuestionAnsweringAuthoringClient:

Uri endpoint = new Uri("https://myaccount.cognitiveservices.azure.com/");
AzureKeyCredential credential = new AzureKeyCredential("{api-key}");

QuestionAnsweringAuthoringClient client = new QuestionAnsweringAuthoringClient(endpoint, credential);

Create a client using Azure Active Directory authentication

You can also create a QuestionAnsweringClient or QuestionAnsweringAuthoringClient using Azure Active Directory (AAD) authentication. Your user or service principal must be assigned the "Cognitive Services Language Reader" role. Using the DefaultAzureCredential you can authenticate a service using Managed Identity or a service principal, authenticate as a developer working on an application, and more all without changing code.

Before you can use the DefaultAzureCredential, or any credential type from Azure.Identity, you'll first need to install the Azure.Identity package.

To use DefaultAzureCredential with a client ID and secret, you'll need to set the AZURE_TENANT_ID, AZURE_CLIENT_ID, and AZURE_CLIENT_SECRET environment variables; alternatively, you can pass those values to the ClientSecretCredential also in Azure.Identity.

Make sure you use the right namespace for DefaultAzureCredential at the top of your source file:

using Azure.Identity;

Then you can create an instance of DefaultAzureCredential and pass it to a new instance of your client:

Uri endpoint = new Uri("https://myaccount.cognitiveservices.azure.com");
DefaultAzureCredential credential = new DefaultAzureCredential();

QuestionAnsweringClient client = new QuestionAnsweringClient(endpoint, credential);

Note that regional endpoints do not support AAD authentication. Instead, create a custom domain name for your resource to use AAD authentication.

Key concepts

QuestionAnsweringClient

The QuestionAnsweringClient is the primary interface for asking questions using a knowledge base with your own information, or text input using pre-trained models. It provides both synchronous and asynchronous APIs to ask questions.

QuestionAnsweringAuthoringClient

The QuestionAnsweringAuthoringClient provides an interface for managing Question Answering projects. Examples of the available operations include creating and deploying projects, updating your knowledge sources, and updating question and answer pairs. It provides both synchronous and asynchronous APIs.

Thread safety

We guarantee that all client instance methods are thread-safe and independent of each other (guideline). This ensures that the recommendation of reusing client instances is always safe, even across threads.

Additional concepts

Client options | Accessing the response | Long-running operations | Handling failures | Diagnostics | Mocking | Client lifetime

Examples

QuestionAnsweringClient

The Azure.AI.Language.QuestionAnswering client library provides both synchronous and asynchronous APIs.

The following examples show common scenarios using the client created above.

Ask a question

The only input required to a ask a question using an existing knowledge base is just the question itself:

string projectName = "{ProjectName}";
string deploymentName = "{DeploymentName}";
QuestionAnsweringProject project = new QuestionAnsweringProject(projectName, deploymentName);
Response<AnswersResult> response = client.GetAnswers("How long should my Surface battery last?", project);

foreach (KnowledgeBaseAnswer answer in response.Value.Answers)
{
    Console.WriteLine($"({answer.Confidence:P2}) {answer.Answer}");
    Console.WriteLine($"Source: {answer.Source}");
    Console.WriteLine();
}

You can set additional properties on QuestionAnsweringClientOptions to limit the number of answers, specify a minimum confidence score, and more.

Ask a follow-up question

If your knowledge base is configured for chit-chat, you can ask a follow-up question provided the previous question-answering ID and, optionally, the exact question the user asked:

string projectName = "{ProjectName}";
string deploymentName = "{DeploymentName}";
// Answers are ordered by their ConfidenceScore so assume the user choose the first answer below:
KnowledgeBaseAnswer previousAnswer = answers.Answers.First();
QuestionAnsweringProject project = new QuestionAnsweringProject(projectName, deploymentName);
AnswersOptions options = new AnswersOptions
{
    AnswerContext = new KnowledgeBaseAnswerContext(previousAnswer.QnaId.Value)
};

Response<AnswersResult> response = client.GetAnswers("How long should charging take?", project, options);

foreach (KnowledgeBaseAnswer answer in response.Value.Answers)
{
    Console.WriteLine($"({answer.Confidence:P2}) {answer.Answer}");
    Console.WriteLine($"Source: {answer.Source}");
    Console.WriteLine();
}

QuestionAnsweringAuthoringClient

The following examples show common scenarios using the QuestionAnsweringAuthoringClient instance created in this section.

Create a new project

To create a new project, you must specify the project's name and a create a RequestContent instance with the parameters needed to set up the project.

// Set project name and request content parameters
string newProjectName = "{ProjectName}";
RequestContent creationRequestContent = RequestContent.Create(
    new {
        description = "This is the description for a test project",
        language = "en",
        multilingualResource = false,
        settings = new {
            defaultAnswer = "No answer found for your question."
            }
        }
    );

Response creationResponse = client.CreateProject(newProjectName, creationRequestContent);

// Projects can be retrieved as follows
Pageable<BinaryData> projects = client.GetProjects();

Console.WriteLine("Projects: ");
foreach (BinaryData project in projects)
{
    Console.WriteLine(project);
}

Deploy your project

Your projects can be deployed using the DeployProjectAsync or the synchronous DeployProject. All you need to specify is the project's name and the deployment name that you wish to use. Please note that the service will not allow you to deploy empty projects.

// Set deployment name and start operation
string newDeploymentName = "{DeploymentName}";

Operation<BinaryData> deploymentOperation = client.DeployProject(WaitUntil.Completed, newProjectName, newDeploymentName);

// Deployments can be retrieved as follows
Pageable<BinaryData> deployments = client.GetDeployments(newProjectName);
Console.WriteLine("Deployments: ");
foreach (BinaryData deployment in deployments)
{
    Console.WriteLine(deployment);
}

Add a knowledge source

One way to add content to your project is to add a knowledge source. The following example shows how you can set up a RequestContent instance to add a new knowledge source of the type "url".

// Set request content parameters for updating our new project's sources
string sourceUri = "{KnowledgeSourceUri}";
RequestContent updateSourcesRequestContent = RequestContent.Create(
    new[] {
        new {
                op = "add",
                value = new
                {
                    displayName = "MicrosoftFAQ",
                    source = sourceUri,
                    sourceUri = sourceUri,
                    sourceKind = "url",
                    contentStructureKind = "unstructured",
                    refresh = false
                }
            }
    });

Operation<Pageable<BinaryData>> updateSourcesOperation = client.UpdateSources(WaitUntil.Completed, newProjectName, updateSourcesRequestContent);

// Knowledge Sources can be retrieved as follows
Pageable<BinaryData> sources = updateSourcesOperation.Value;

Console.WriteLine("Sources: ");
foreach (BinaryData source in sources)
{
    Console.WriteLine(source);
}

Troubleshooting

General

When you interact with the Cognitive Language Services Question Answering client library using the .NET SDK, errors returned by the service correspond to the same HTTP status codes returned for REST API requests.

For example, if you submit a question to a non-existant knowledge base, a 400 error is returned indicating "Bad Request".

try
{
    QuestionAnsweringProject project = new QuestionAnsweringProject("invalid-knowledgebase", "test");
    Response<AnswersResult> response = client.GetAnswers("Does this knowledge base exist?", project);
}
catch (RequestFailedException ex)
{
    Console.WriteLine(ex.ToString());
}

You will notice that additional information is logged, like the client request ID of the operation.

Azure.RequestFailedException: Please verify azure search service is up, restart the WebApp and try again
Status: 400 (Bad Request)
ErrorCode: BadArgument

Content:
{
    "error": {
    "code": "BadArgument",
    "message": "Please verify azure search service is up, restart the WebApp and try again"
    }
}

Headers:
x-envoy-upstream-service-time: 23
apim-request-id: 76a83876-22d1-4977-a0b1-559a674f3605
Strict-Transport-Security: max-age=31536000; includeSubDomains; preload
X-Content-Type-Options: nosniff
Date: Wed, 30 Jun 2021 00:32:07 GMT
Content-Length: 139
Content-Type: application/json; charset=utf-8

Setting up console logging

The simplest way to see the logs is to enable console logging. To create an Azure SDK log listener that outputs messages to the console use the AzureEventSourceListener.CreateConsoleLogger method.

// Setup a listener to monitor logged events.
using AzureEventSourceListener listener = AzureEventSourceListener.CreateConsoleLogger();

To learn more about other logging mechanisms see here.

Next steps

  • View our samples.
  • Read about the different features of the Question Answering service.
  • Try our service demos.

Contributing

See the CONTRIBUTING.md for details on building, testing, and contributing to this library.

This project welcomes contributions and suggestions. Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the rights to use your contribution. For details, visit cla.microsoft.com.

When you submit a pull request, a CLA-bot will automatically determine whether you need to provide a CLA and decorate the PR appropriately (e.g., label, comment). Simply follow the instructions provided by the bot. You will only need to do this once across all repos using our CLA.

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact opencode@microsoft.com with any additional questions or comments.

Impressions