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</html><description>With the advancement of deep learning, the use of Generative Adversarial Networks (GANs) is increasing in various fields such as image generation, reinforcement learning, image transformation, and image combination. GANs are used to generate high-resolution images through the competition between two networks: the Generator and the Discriminator. This article will cover the basic concepts of &hellip; &#xB354; &#xBCF4;&#xAE30; ""</description></oembed>
