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</html><description>Generative Adversarial Networks (GANs) are a type of generative model that generate data similar to real data through competition between two neural networks (generator and discriminator). In this article, we will explore how to generate images of apples and oranges using GANs. We will implement GAN using the PyTorch framework and provide Python code for &hellip; &#xB354; &#xBCF4;&#xAE30; ""</description></oembed>
