Not that Groove: Zero-Shot Symbolic Music Editing
By: Li Zhang
Potential Business Impact:
AI changes music by editing notes from text.
Most work in AI music generation focused on audio, which has seen limited use in the music production industry due to its rigidity. To maximize flexibility while assuming only textual instructions from producers, we are among the first to tackle symbolic music editing. We circumvent the known challenge of lack of labeled data by proving that LLMs with zero-shot prompting can effectively edit drum grooves. The recipe of success is a creatively designed format that interfaces LLMs and music, while we facilitate evaluation by providing an evaluation dataset with annotated unit tests that highly aligns with musicians' judgment.
Similar Papers
Versatile Symbolic Music-for-Music Modeling via Function Alignment
Sound
AI writes music by learning music's own language.
LZMidi: Compression-Based Symbolic Music Generation
Sound
Makes music faster and cheaper on normal computers.
MusRec: Zero-Shot Text-to-Music Editing via Rectified Flow and Diffusion Transformers
Sound
Changes real music with just words.