Azure Data Scientists Associate Practice Exam

Question: 1 / 400

What is the primary purpose of using automated machine learning (AutoML) in Azure?

To enhance data storage solutions

To streamline the model selection and hyperparameter tuning process

The primary purpose of using automated machine learning (AutoML) in Azure is to streamline the model selection and hyperparameter tuning process. AutoML automates the intricate and often time-consuming tasks involved in developing machine learning models, such as selecting the best algorithms and tuning their hyperparameters. This automation allows data scientists and developers to focus more on interpreting results and less on the nuances of model development.

With AutoML, users can quickly explore multiple algorithms and configurations, enabling efficient experimentation and rapid iteration to identify the model that performs best on their specific data set. This results in faster deployment and improved model accuracy without requiring deep expertise in machine learning.

The other options, although relevant in various contexts, do not specifically address the core functionality and benefits of AutoML. For instance, while enhancing data storage solutions, managing cloud resources, or creating dashboards are important tasks in data management and visualization, they are not the primary focus of AutoML, which is dedicated to optimizing the machine learning development process.

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To manage cloud resources effectively

To create user-friendly dashboards for data insights

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