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Network Design Spaces
Traditionally, the design of deep neural networks has been a highly manual process, relying heavily on human intuition to find optimal hyperparameters and structural configurations. Because this manual approach is costly in terms of human time and does not guarantee optimal outcomes, researchers developed the notion of network design spaces. Instead of manually designing a single specific network instance, this automated strategy parameterizes a population of possible architectures—a design space—and searches within it to systematically discover high-quality models, such as the RegNetX and RegNetY families.
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