Slimmable NAM: Neural Amp Models with adjustable runtime computational cost

2025-11-11 20:00 GMT · 5 months ago aimagpro.com

arXiv:2511.07470v1 Announce Type: new
Abstract: This work demonstrates “slimmable Neural Amp Models”, whose size and computational cost can be changed without additional training and with negligible computational overhead, enabling musicians to easily trade off between the accuracy and compute of the models they are using. The method’s performance is quantified against commonly-used baselines, and a real-time demonstration of the model in an audio effect plug-in is developed.