WHAM Demonstrator tutorial

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Published on ● Video Link: https://www.youtube.com/watch?v=DGWMIxaDXlo



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Introducing Muse, our World and Human Action Model (WHAM). Muse is a generative AI model of a video game that can generate game visuals, controller actions, or both. It can predict how the game will evolve from the initial prompt sequence, generating gameplay frame by frame. This allows for creative exploration, starting anywhere in the game and adding new elements to see how the model reacts.




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