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How to add web services and authentication to applications

Important

This content is being retired and may not be updated in the future. The support for Machine Learning Server will end on July 1, 2022. For more information, see What's happening to Machine Learning Server?

Applies to: Machine Learning Server, Microsoft R Server 9.x

Learn how to build and use API Client libraries from Swagger to integrate into your applications. Swagger is a machine-readable representation of a RESTful API that enables support for interactive documentation, client SDK generation, and discoverability.

While data scientists can work with R / Python directly in a console window or IDE, application developers often need a different set of tools to leverage R inside applications. As an application developer integrating with these web services, typically your interest is in executing R / Python code, not writing it. Data scientists with the R programming skills write the R / Python code. Then, using some core APIs, this code can be published as a Machine Learning Server-hosted analytics Web service.

To simplify the integration of your R / Python analytics web services, Machine Learning Server (formerly R Server) provides Swagger templates for operationalization. These Swagger-based JSON files define the list of calls and resources available in the REST APIs.

To access these RESTful APIs outside of R / Python, generate an API client library in your preferred programming language, such as .NET, C#, Java, JS, Python, or node.js. This library is built with a Swagger tool. The resulting API client library simplifies the making of calls, encoding of data, and markup response handling on the API.

Swagger workflow

Swagger Workflow: build api clients from swagger for app integration

Get the Swagger file

Machine Learning Server provides a Swagger template to simplify the integration. This template defines the available resources in the REST API and defines the operations you can call on those resources. A standard set of core operationalization APIs is available and defined in mlserver-swagger-<version>.json, where is the 3-digit product version number. Additionally, another Swagger-based JSON file is generated for each web service version. For R Server users, replace mlserver-swagger with rserver-swagger in the filename.

API Types Corresponding Swagger-based JSON File
Core APIs Download Swagger file containing the set of core operationalization APIs from https://microsoft.github.io/deployr-api-docs/<version>/swagger/mlserver-swagger-<version>.json, where <version> is the 3-digit product version number.
• For 9.2.1: https://microsoft.github.io/deployr-api-docs/9.2.1/swagger/mlserver-swagger-9.2.1.json
• For 9.1.0 https://microsoft.github.io/deployr-api-docs/9.1.0/swagger/rserver-swagger-9.1.0.json
Service-specific APIs Get the service-specific APIs defined in swagger.json so you can consume that service. Obtain it directly from the user that published the service or retrieve yourself using 'GET /api/{service}/{version}/swagger.json'. Learn more...

Build the core client library

Option 1. Build using a Swagger code generator

To build a client library, run the file through the Swagger code generator, and specify the language you want. Popular Swagger code generation tools include Azure AutoRest (requires node.js) and Swagger Codegen.

Generate Swagger

Familiarize yourself with the tool so you can generate the API client libraries in your preferred programming language.

If you use AutoRest to generate a C# client library, it might look like the following command:

AutoRest.exe -CodeGenerator CSharp -Modeler Swagger -Input mlserver-swagger-<version>.json -Namespace MyNamespace

where <version> is the 3-digit product version number.

You can now provide some custom headers and make other changes before using the generated client library stub. See the Command Line Interface documentation for details regarding different configuration options and preferences.

Option 2. Build using an online Swagger editor

You are not required to install a Swagger code generator on your machine. Instead, you can build the client library in your preferred language using an online Swagger editor.

  1. Go to http://editor.swagger.io/. The editor appears with default contents.
  2. Delete the default contents so the editor is empty.
  3. Open the Swagger file on your local machine in a text editor of your choice.
  4. Copy the Swagger contents to your clipboard.
  5. Switch back to the Swagger site and paste the contents into the online editor.
  6. Click the Generate Client button on the toolbar.
  7. Choose the language for the client. The client library is generated. Swagger Generate Client Library

Option 3. Build using httr package in R

You can also build a client library directly in R using the httr package. Like option 2, this option does not require you to install a Swagger code generator on your machine. This is very convenient when you want to publish a web service and immediately generate a client library from the resulting Swagger file. Learn more in this blog post.

Add Authentication Workflow Logic

Keep in mind that all APIs require authentication. Therefore, all users must authenticate when making an API call using the POST /login API or through Azure Active Directory (AAD).

To simplify this process, bearer access tokens are issued so that users need not provide their credentials for every single call. This bearer token is a lightweight security token that grants the “bearer” access to a protected resource, in this case, Machine Learning Server's operationalization APIs. After a user has provided authentication credentials, the application must validate the user’s bearer token to ensure that authentication was successful. Learn more about managing these tokens.

Before you interact with the core APIs, you must authenticate, get the bearer access token, and then include the token in each header for each subsequent request.

  • Azure Active Directory (AAD)

    Add code to pass the AAD credentials, authority, and client ID. In turn, AAD issues the token.

    Here is an example of Azure Active Directory authentication in CSharp:

    <swagger-client-title> client = new <swagger-client-title>(new Uri("https://<host>:<port>"));
    
    // -------------------------------------------------------------------------
    // Note - Update these sections with your appropriate values
    // -------------------------------------------------------------------------
    
    // Address of the authority to issue token.
    const string tenantId = "microsoft.com";
    const string authority = "https://login.windows.net/" + tenantId;
    
    // Identifier of the client requesting the token
    const string clientId = "00000000-0000-0000-0000-000000000000";
    
    // Secret of the client requesting the token
    const string clientKey = "00000000-0000-0000-0000-00000000000";
    
    var authenticationContext = new AuthenticationContext(authority);
    var authenticationResult = await authenticationContext.AcquireTokenAsync(
         clientId, new ClientCredential(clientId, clientKey));
    
    // Set Authorization header with `Bearer` and access-token
    var headers = client.HttpClient.DefaultRequestHeaders;
    var accessToken = authenticationResult.AccessToken;
    
    headers.Remove("Authorization");
    headers.Add("Authorization", $"Bearer {accessToken}");
    
  • Active Directory LDAP or Local Admin

    For these authentication methods, you must call the POST /login API in order to authenticate. Now you can pass in the username and password for the local administrator, or if Active Directory is enabled, pass the LDAP account information. In turn, Machine Learning Server issues you a bearer/access token. After authenticated, the user does not need to provide credentials again as long as the token is still valid.

    Here is an example of Active Directory/LDAP authentication in CSharp:

    <swagger-client-title> client = new <swagger-client-title>(new Uri("https://<host>:<port>"));
    
    // Authenticate using username/password
    var loginRequest = new LoginRequest("LDAP_USER_NAME", "LDAP_PASSWORD");
    var loginResponse = await client.LoginAsync(loginRequest);
    
    // Set Authorization header with `Bearer` and access-token
    var headers = <swagger-client-title>.HttpClient.DefaultRequestHeaders;
    var accessToken = loginResponse.AccessToken;
    
    headers.Remove("Authorization");
    headers.Add("Authorization", $"Bearer {accessToken}");
    

Interact with the APIs

Now that you have generated the client library and added authentication logic to your application, you can interact with the core operationalization APIs.

<swagger-client-title> client = new <swagger-client-title>(new Uri("https://<host>:<port>"));

Example: Core Client Library from Swagger (in CSharp)

This example shows how you can use the mlserver-swagger-9.2.1.json swagger file to build a client library to interact with the core operationalization APIs from your application. For other versions, get the file from https://microsoft.github.io/deployr-api-docs/<version>/swagger/mlserver-swagger-<version>.json where is the server product version.

Build and use a core Machine Learning Server 9.2.1 client library from swagger in CSharp and Azure Active Directory authentication:

  1. Download mlserver-swagger-9.2.1.json from https://microsoft.github.io/deployr-api-docs/9.2.1/swagger/mlserver-swagger-9.2.1.json.

  2. Build the statically generated client library files for CSharp from the mlserver-swagger-9.2.1.json swagger. Notice the language is CSharp and the namespace is IO.Swagger.Client.

    AutoRest.exe -CodeGenerator CSharp -Modeler Swagger -Input mlserver-swagger-9.2.1.json -Namespace IO.Swagger.Client
    
  3. In Visual Studio, add the following NuGet package dependencies to your VS project.

    • Microsoft.Rest.ClientRuntime
    • Microsoft.IdentityModel.Clients.ActiveDirectory

    Open the Package Manager Console for NuGet and add them with this command:

    PM> Install-Package Microsoft.Rest.ClientRuntime
    PM> Install-Package Microsoft.IdentityModel.Clients.ActiveDirectory
    
  4. Use the statically generated client library files to call the operationalization APIs. In your application code, import the required namespace types and create an API client to manage the API calls:

    // --- IMPORT NAMESPACE TYPES -------------------------------------------------------
    // Use the namespace provided with `AutoRest.exe -Namespace IO.Swagger.Client`
    using IO.Swagger.Client;
    using IO.Swagger.Client.Models;
    
    using Microsoft.IdentityModel.Clients.ActiveDirectory;
    using Microsoft.Rest
    
    // --- CREATE API CLIENT -------------------------------------------------------------
    SwaggerClientTitle client = new SwaggerClientTitle(new Uri("https://rserver.contoso.com:12800"));
    
  5. Add the authentication workflow to your application. In this example, the organization has Azure Active Directory.

    Since all APIs require authentication, we first need to obtain our Bearer access token such that it can be included in every request header like this:

    GET /resource HTTP/1.1
    Host: rserver.contoso.com
    Authorization: Bearer mFfl_978_.G5p-4.94gM-
    

    In your application code, insert the following:

    // --- AUTHENTICATE WITH AAD ------------------------------------------------------
    // Note - Update these sections with your appropriate values
    // Once authenticated, user do not provide credentials again until token is invalid. 
    // You can now begin to interact with the core Op APIs
    // --------------------------------------------------------------------------------
    
    //
    // ADDRESS OF AUTHORITY ISSUING TOKEN
    //
    const string tenantId = "microsoft.com";
    const string authority = "https://login.windows.net/" + tenantId;
    
    //
    // ID OF CLIENT REQUESTING TOKEN
    //
    const string clientId = "00000000-0000-0000-0000-000000000000";
    
    //
    // SECRET OF CLIENT REQUESTING TOKEN 
    //
    const string clientKey = "00000000-0000-0000-0000-00000000000";
    
    var authenticationContext = new AuthenticationContext(authority);
    var authenticationResult = await authenticationContext.AcquireTokenAsync(
           clientId, new ClientCredential(clientId, clientKey));
    
    //
    // SET AUTHORIZATION HEADER WITH BEARER ACCESS TOKEN FOR FUTURE CALLS
    //
    var headers = client.HttpClient.DefaultRequestHeaders;
    var accessToken = authenticationResult.AccessToken;
    
    headers.Remove("Authorization");
    headers.Add("Authorization", $"Bearer {accessToken}");
    
  6. Begin consuming the core operationalization APIs.

    // --- INVOKE API -----------------------------------------------------------------
    
    // Try creating an R Session `POST /sessions`
    var createSessionResponse = client.CreateSession(
          new CreateSessionRequest("Session One"));
    
    Console.WriteLine("Session ID: " + createSessionResponse.SessionId);
    

Example: Service Consumption Client Library from Swagger (in CSharp)

This example shows how you can use the swagger.json swagger file for version 1.0.0 of a service named transmission to build a client library to interact with published service from your application.

Build and use a service consumption client library from swagger in CSharp and Active Directory LDAP authentication:

  1. Get the swagger.json for the service you want to consume named transmission:

    GET /api/transmission/1.0.0/swagger.json
    
  2. Build the statically generated client library files for CSharp from the swagger.json swagger. Notice the language is CSharp and the namespace is Transmission.

    AutoRest.exe -CodeGenerator CSharp -Modeler Swagger -Input swagger.json -Namespace Transmission
    
  3. In Visual Studio, add the following NuGet package dependencies to your VS project.

    • Microsoft.Rest.ClientRuntime
    • Microsoft.IdentityModel.Clients.ActiveDirectory

    Open the Package Manager Console for NuGet and add them with this command:

    PM> Install-Package Microsoft.Rest.ClientRuntime
    PM> Install-Package Microsoft.IdentityModel.Clients.ActiveDirectory
    
  4. Use the statically-generated client library files to call the operationalization APIs. In your application code, import the required namespace types and create an API client to manage the API calls:

    // --- IMPORT NAMESPACE TYPES -------------------------------------------------------
    // Use the namespace provided with `AutoRest.exe -Namespace Transmission`
    using System;
    
    using Transmission;
    using Transmission.Models;
    
    using Microsoft.IdentityModel.Clients.ActiveDirectory;
    using Microsoft.Rest
    
    // --- CREATE API CLIENT -------------------------------------------------------------
    Transmission client = new Transmission(new Uri("https://rserver.contoso.com:12800”));
    
  5. Add the authentication workflow to your application. In this example, the organization has Active Directory/LDAP.

    Since all APIs require authentication, first get the Bearer access token so it can be included in every request header. For example:

    GET /resource HTTP/1.1
    Host: rserver.contoso.com
    Authorization: Bearer mFfl_978_.G5p-4.94gM-
    

    In your application code, insert the following code:

    // --- AUTHENTICATE WITH ACTIVE DIRECTORY -----------------------------------------
    // Note - Update these with your appropriate values
    // Once authenticated, user won't provide credentials again until token is invalid. 
    // You can now begin to interact with the operationalization APIs
    // --------------------------------------------------------------------------------
    var loginRequest = new LoginRequest("LDAP_USERNAME", "LDAP_PASSWORD");
    var loginResponse = client.Login(loginRequest);
    
    //
    // SET AUTHORIZATION HEADER WITH BEARER ACCESS TOKEN FOR FUTURE CALLS
    //
    var headers = client.HttpClient.DefaultRequestHeaders;
    var accessToken = loginResponse.AccessToken;
    headers.Remove("Authorization");
    headers.Add("Authorization", $"Bearer {accessToken}");
    
  6. Begin consuming the service consumption APIs.

    // --- INVOKE API -----------------------------------------------------------------
    InputParameters inputs = new InputParameters() { Hp = 120, Wt = 2.8 };
    var serviceResult = client.ManualTransmission(inputs);
    
    Console.Out.WriteLine(serviceResult.OutputParameters.Answer);
    

Example in Java

The following blog article shows how to create a Java client.

https://blogs.msdn.microsoft.com/mlserver/2017/10/04/enterprise-friendly-java-client-for-microsoft-machine-learning-server/

See also