Video generation models as world simulators
OpenAI publishes research on Sora, a text-conditional diffusion model trained on video and image data that can generate up to one minute of high-fidelity video using a spacetime patch transformer.
We explore large-scale training of generative models on video data. Specifically, we train text-conditional diffusion models jointly on videos and images of variable durations, resolutions and aspect ratios. We leverage a transformer architecture that operates on spacetime patches of video and image latent codes.
Our largest model, Sora, is capable of generating a minute of high fidelity video. Our results suggest that scaling video generation models is a promising path towards building general purpose simulators of the physical world.