SqueezeComposer: Temporal Speed-up is A Simple Trick for Long-form Music Composing
About
Composing coherent long-form music remains a significant challenge due to the complexity of modeling long-range dependencies and the prohibitive memory and computational requirements associated with lengthy audio representations. In this work, we propose a simple yet powerful trick: we assume that AI models can understand and generate time-accelerated (speeded-up) audio at rates such as 2x, 4x, or even 8x. By first generating a high-speed version of the music, we greatly reduce the temporal length and resource requirements, making it feasible to handle long-form music that would otherwise exceed memory or computational limits. The generated audio is then restored to its original speed, recovering the full temporal structure. This temporal speed-up and slow-down strategy naturally follows the principle of hierarchical generation from abstract to detailed content, and can be conveniently applied to existing music generation models to enable long-form music generation. We instantiate this idea in SqueezeComposer, a framework that employs diffusion models for generation in the accelerated domain and refinement in the restored domain. We validate the effectiveness of this approach on two tasks: long-form music generation, which evaluates temporal-wise control (including continuation, completion, and generation from scratch), and whole-song singing accompaniment generation, which evaluates track-wise control. Experimental results demonstrate that our simple temporal speed-up trick enables efficient, scalable, and high-quality long-form music generation. Audio samples are available at https://SqueezeComposer.github.io/.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Audio Restoration | Music Datasets (test) | Mel Distance2.9431 | 9 | |
| Singing Accompaniment Generation | In-domain | CE Score7.0498 | 8 | |
| Music Generation | Lakh MIDI Pure Instrumental | CE Score6.4319 | 5 | |
| Singing Accompaniment Generation | MUSDB18 | CE5.6126 | 3 | |
| Music Continuation | Lakh MIDI Dataset | CE6.8499 | 2 | |
| Music Generation from Scratch | Lakh MIDI Dataset | CE6.6919 | 2 | |
| Music Completion | Lakh MIDI Dataset | CE6.7321 | 1 |