You can use Microsoft Azure ML Studio to log payload or feedback data, and to measure performance accuracy, runtime bias detection, explainability, and auto-debias results for deployed models when you evaluate models.
The following Microsoft Azure Machine Learning Studio frameworks are fully supported for model evaluations:
Table 1. Framework support details
Framework support details
Framework
Problem type
Data type
Native
Classification
Structured
Native
Regression
Structured
Attention: Microsoft Azure Machine Learning Studio (classic) will be deprecated on August 31, 2024. Azure Studio classic deployment listing and scoring will not work after August 31 2024.
Azure designer container instance endpoints are supported for model evaluations.
Adding Microsoft Azure ML Studio
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You can configure model evaluations to work with Microsoft Azure ML Studio by using one of the following methods:
You can also add your machine learning provider by using the Python SDK. You must use this method if you want to have more than one provider. For more information on performing this programmatically, see Add your Microsoft Azure machine learning engine.
Sample Notebooks
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The following Notebook shows how to work with Microsoft Azure ML Studio:
Your first step in the Watson OpenScale tool is to specify a Microsoft Azure ML Studio instance. Your Azure ML Studio instance is where you store your AI models and deployments.
You can connect to AI models and deployments in an Azure ML Studio instance for model evaluations. To connect your service, go to the Configure tab, add
a machine learning provider, and click the Edit icon. In addition to a name and description and whether the environment is a Pre-production or Production, you must provide the following information:
Client ID: The actual string value of your client ID, which verifies who you are and authenticates and authorizes calls that you make to Azure Studio.
Client Secret: The actual string value of the secret, which verifies who you are and authenticates and authorizes calls that you make to Azure Studio.
Tenant: Your tenant ID corresponds to your organization and is a dedicated instance of Azure AD. To find the tenant ID, hover over your account name to get the directory and tenant ID, or select Azure Active Directory > Properties >
Directory ID in the Azure portal.
Payload logging with the Microsoft Azure Machine Learning Studio engine
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Add your Microsoft Azure machine learning engine
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A non-IBM watsonx.ai Runtime engine is bound as Custom, meaning that this is just metadata; there is no direct integration with the non-IBM watsonx.ai Runtime service.
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