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arxiv:2506.13001

Personalizable Long-Context Symbolic Music Infilling with MIDI-RWKV

Published on Jun 16
· Submitted by ChristianAzinn on Jun 17

Abstract

MIDI-RWKV, a novel RWKV-7 based model, enables efficient and coherent musical infilling on edge devices with personalizable initial states, enhancing the computer-assisted composition process.

AI-generated summary

Existing work in automatic music generation has primarily focused on end-to-end systems that produce complete compositions or continuations. However, because musical composition is typically an iterative process, such systems make it difficult to engage in the back-and-forth between human and machine that is essential to computer-assisted creativity. In this study, we address the task of personalizable, multi-track, long-context, and controllable symbolic music infilling to enhance the process of computer-assisted composition. We present MIDI-RWKV, a novel model based on the RWKV-7 linear architecture, to enable efficient and coherent musical cocreation on edge devices. We also demonstrate that MIDI-RWKV admits an effective method of finetuning its initial state for personalization in the very-low-sample regime. We evaluate MIDI-RWKV and its state tuning on several quantitative and qualitative metrics, and release model weights and code at https://github.com/christianazinn/MIDI-RWKV.

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Paper author Paper submitter

We present a new model, based on RWKV-7, for long-context musical infilling and a novel finetuning scheme for it! We'll be following up with more work in this direction, including better/bigger models and more evaluations and comparisons, so stay tuned!

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