Artificial Intelligence Programming Practice Exam 2025 - Free AI Programming Practice Questions and Study Guide

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Describe the ResNet architecture.

A method for unsupervised learning of data representations

A deep learning architecture that uses skip connections to allow gradients to flow more easily during backpropagation

The ResNet architecture, short for Residual Network, is fundamentally designed to facilitate deeper neural networks by incorporating skip connections, or shortcuts, between layers. This innovative approach enables the network to learn residual mappings instead of directly learning the desired underlying mappings. Essentially, it allows the network to skip one or more layers, which helps prevent issues commonly encountered in deep networks, such as the vanishing gradient problem.

By using skip connections, ResNet enhances the flow of gradients during backpropagation, simplifying the training of very deep networks. This architecture has been instrumental in achieving significant advancements in image recognition tasks, enabling networks to go from a mere few layers to hundreds or even thousands of layers without degradation in performance.

The significance of skip connections lies in their ability to maintain performance as depth increases, allowing the model to learn more complex features than traditional architectures could accomplish. This versatility has made ResNet one of the seminal architectures in the field of deep learning, influencing subsequent designs and methodologies in neural network research.

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A technique for convolutional neural networks to improve speed

A form of reinforcement learning strategies

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