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Diffusion models are a new class of state-of-the-art generative models that generate diverse high-resolution images. They have already attracted a lot of attention after OpenAI, Nvidia and Google managed to train large-scale models. Example architectures that are based on diffusion models are GLIDE, DALLE-2, Imagen, and the full open-source stable diffusion. But what is the main principle behind t
The famous paper “Attention is all you need” in 2017 changed the way we were thinking about attention. With enough data, matrix multiplications, linear layers, and layer normalization we can perform state-of-the-art-machine-translation. Nonetheless, 2020 was definitely the year of transformers! From natural language now they are into computer vision tasks. How did we go from attention to self-atte
Over the past decade, we’ve seen that Neural Networks can perform tremendously well in structured data like images and text. Most of the popular models like convolutional networks, recurrent, autoencoders work very well on data that have a tabular format like a matrix or a vector. But what about unstructured data? What about Graph data? Is there a model that can learn efficiently from them? Probab
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