Showing 1-20 of 59 projects
Interactive image manipulation using GANs with drag-based controls
Singing Voice Conversion framework using AI
PyTorch implementation of CycleGAN and pix2pix for image-to-image translation
Restores old photos using generative adversarial networks (GANs) and image manipulation techniques.
A comprehensive list of Generative Adversarial Networks (GANs) for developers working with AI tools.
Generates images from paintings using CycleGAN, a deep learning-based algorithm.
An image-to-image translation library using conditional adversarial networks for tasks like image generation and manipulation.
LaMa is a PyTorch-based library for high-resolution image inpainting using Fourier convolutions.
Keras implementations of Generative Adversarial Networks (GANs) for deep learning and AI applications.
A comprehensive PyTorch tutorial for building neural networks and AI models with ease
An open-source, multi-purpose AI creation toolbox for text-to-image, image/video processing, and more.
A PyTorch library for synthesizing and manipulating high-resolution 2048x1024 images using conditional GANs.
Curated list of awesome GAN applications and demos for developers working with generative AI tools.
A comprehensive TensorFlow tutorial covering a wide range of machine learning topics for AI-focused developers.
Collection of popular generative models in TensorFlow for developers interested in AI tools
A PyTorch library for computing Frรฉchet Inception Distance (FID), a metric used to evaluate generative adversarial networks.
Generative Adversarial Networks (GANs) library for PyTorch, enabling image generation and conditional/unconditional image synthesis.
An image inpainting model using deep neural networks and attention mechanisms, useful for vibe coders working on AI-powered applications.
Generates synthetic tabular data for machine learning and AI applications
A denoising autoencoder with adversarial losses and attention mechanisms for face swapping.
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