DS1 spectrogram: On-device Sora: Enabling Diffusion-Based Text-to-Video Generation for
  Mobile Devices

On-device Sora: Enabling Diffusion-Based Text-to-Video Generation for Mobile Devices

February 5, 20252502.04363

Authors

Bosung Kim,Kyuhwan Lee,Isu Jeong,Jungmin Cheon,Yeojin Lee

Abstract

We present On-device Sora, the first model training-free solution for diffusion-based on-device text-to-video generation that operates efficiently on smartphone-grade devices. To address the challenges of diffusion-based text-to-video generation on computation- and memory-limited mobile devices, the proposed On-device Sora applies three novel techniques to pre-trained video generative models.

First, Linear Proportional Leap (LPL) reduces the excessive denoising steps required in video diffusion through an efficient leap-based approach. Second, Temporal Dimension Token Merging (TDTM) minimizes intensive token-processing computation in attention layers by merging consecutive tokens along the temporal dimension.

Third, Concurrent Inference with Dynamic Loading (CI-DL) dynamically partitions large models into smaller blocks and loads them into memory for concurrent model inference, effectively addressing the challenges of limited device memory. We implement On-device Sora on the iPhone 15 Pro, and the experimental evaluations show that it is capable of generating high-quality videos on the device, comparable to those produced by high-end GPUs.

These results show that On-device Sora enables efficient and high-quality video generation on resource-constrained mobile devices. We envision the proposed On-device Sora as a significant first step toward democratizing state-of-the-art generative technologies, enabling video generation on commodity mobile and embedded devices without resource-intensive re-training for model optimization (compression).

The code implementation is available at a GitHub repository(https://github.com/eai-lab/On-device-Sora).

Resources

Stay in the loop

Every AI paper that matters, free in your inbox daily.

Details

  • © 2026 takara.ai Ltd
  • Content is sourced from third-party publications.