Azure Data Scientists Associate Practice Exam

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What functionality does the scikit-learn estimator provide in Azure?

It allows for distributed training of large models

It provides a simple way to launch training jobs on a compute target

The chosen response is accurate because the scikit-learn estimator within Azure provides a streamlined interface for launching training jobs on various compute targets. This capability simplifies the model training process by abstracting the underlying complexity, enabling data scientists to focus more on building and refining their models rather than managing the intricacies of the underlying infrastructure.

This functionality is particularly valuable because it allows users to easily specify their compute resources—whether that be local machines, Azure virtual machines, or cloud-based environments—thus facilitating a more straightforward and efficient workflow for model development. The estimator handles many of the setups required for different environments, ensuring a smooth transition from development to deployment.

The other options do not fully capture the primary functionality offered by the scikit-learn estimator. While distributed training is a feature that certain Azure tools support, scikit-learn itself is generally not optimized for distributed training of large models compared to other specialized frameworks. Additionally, it is not specifically targeted at image data processing, which is more appropriately handled by libraries designed for that purpose. Finally, the scikit-learn estimator is built to simplify and automate processes rather than requiring extensive configuration and setup for each project, making it user-friendly.

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It is specifically designed for image data processing

It requires extensive configuration and setup for every project

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