AI Engineering Degree Practice Exam 2025 - Free AI Engineering Practice Questions and Study Guide

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What type of learning allows models to learn from labeled training data?

Reinforced learning

Unsupervised learning

Supervised learning

Supervised learning is a type of machine learning where models are trained on a labeled dataset. In this framework, each training example is paired with an output label, meaning the model learns to map inputs to the correct outputs. This is achieved by providing the model with many examples of inputs along with their corresponding correct outputs during the training phase.

The effectiveness of supervised learning lies in its structured approach, allowing the model to make predictions or classifications based on the patterns it identifies in the labeled data. Common applications of supervised learning include regression tasks, where numerical values are predicted, and classification tasks, where categories are assigned to input data based on previously learned examples.

In contrast, other types of learning, such as reinforced learning, unsupervised learning, and generative learning, operate under different principles. Reinforced learning focuses on training models to make decisions by maximizing cumulative reward through interactions with an environment, while unsupervised learning deals with datasets without labeled responses, often aiming to identify hidden patterns or groupings. Generative learning generally involves creating new data points that resemble a given dataset but does not necessarily involve learning from labels.

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Generative learning

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