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[chore] Update sklearn envs to ditch deprecated environments (#3124)
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src [chore] Update sklearn envs to ditch deprecated environments (#3124) 2024-04-22 14:04:18 -07:00
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tsconfig.json Adding some basic samples for autogenerated SDKv2 for TypeSript language (#1895) 2022-11-28 15:57:44 -08:00

README.md

AzureMachineLearningWorkspaces client library for JavaScript

This package contains an isomorphic SDK (runs both in Node.js and in browsers) for AzureMachineLearningWorkspaces client.

These APIs allow end users to operate on Azure Machine Learning Workspace resources.

Source code | Package (NPM) | API reference documentation | Samples

Getting started

Currently supported environments

See our support policy for more details.

Prerequisites

Install the @azure/arm-machinelearning package

Install the AzureMachineLearningWorkspaces client library for JavaScript with npm:

npm install @azure/arm-machinelearning

Create and authenticate a AzureMachineLearningWorkspaces

To create a client object to access the AzureMachineLearningWorkspaces API, you will need the endpoint of your AzureMachineLearningWorkspaces resource and a credential. The AzureMachineLearningWorkspaces client can use Azure Active Directory credentials to authenticate. You can find the endpoint for your AzureMachineLearningWorkspaces resource in the Azure Portal.

You can authenticate with Azure Active Directory using a credential from the @azure/identity library or an existing AAD Token.

To use the DefaultAzureCredential provider shown below, or other credential providers provided with the Azure SDK, please install the @azure/identity package:

npm install @azure/identity

You will also need to register a new AAD application and grant access to AzureMachineLearningWorkspaces by assigning the suitable role to your service principal (note: roles such as "Owner" will not grant the necessary permissions). Set the values of the client ID, tenant ID, and client secret of the AAD application as environment variables: AZURE_CLIENT_ID, AZURE_TENANT_ID, AZURE_CLIENT_SECRET.

For more information about how to create an Azure AD Application check out this guide.

const { AzureMachineLearningWorkspaces } = require("@azure/arm-machinelearning");
const { DefaultAzureCredential } = require("@azure/identity");
// For client-side applications running in the browser, use InteractiveBrowserCredential instead of DefaultAzureCredential. See https://aka.ms/azsdk/js/identity/examples for more details.

const subscriptionId = "00000000-0000-0000-0000-000000000000";
const client = new AzureMachineLearningWorkspaces(new DefaultAzureCredential(), subscriptionId);

// For client-side applications running in the browser, use this code instead:
// const credential = new InteractiveBrowserCredential({
//   tenantId: "<YOUR_TENANT_ID>",
//   clientId: "<YOUR_CLIENT_ID>"
// });
// const client = new AzureMachineLearningWorkspaces(credential, subscriptionId);

JavaScript Bundle

To use this client library in the browser, first you need to use a bundler. For details on how to do this, please refer to our bundling documentation.

Key concepts

AzureMachineLearningWorkspaces

AzureMachineLearningWorkspaces is the primary interface for developers using the AzureMachineLearningWorkspaces client library. Explore the methods on this client object to understand the different features of the AzureMachineLearningWorkspaces service that you can access.

Troubleshooting

Logging

Enabling logging may help uncover useful information about failures. In order to see a log of HTTP requests and responses, set the AZURE_LOG_LEVEL environment variable to info. Alternatively, logging can be enabled at runtime by calling setLogLevel in the @azure/logger:

const { setLogLevel } = require("@azure/logger");
setLogLevel("info");

For more detailed instructions on how to enable logs, you can look at the @azure/logger package docs.

Next steps

Please take a look at the samples directory for detailed examples on how to use this library.

Contributing

If you'd like to contribute to this library, please read the contributing guide to learn more about how to build and test the code.

Impressions