




Innovation in technology knows no borders. It is a worldwide endeavor to address the intricate challenges of the music industry landscape. Our scientists and engineers embody this ethos with their diverse backgrounds and unique perspectives. We are a living proof that the collective creativity of a diverse team can compose symphonies of innovation.
The team
We're pioneering the future of music-tech with cutting-edge research. Be a part of our mission to empower creative potential through technology.
Our primary objective is to foster innovation that has the potential to empower not just individual musicians but the entire music industry as a whole.
Latest news and publications from our research team.
MoisesDB is a comprehensive multitrack dataset for source separation beyond 4-stems, comprising 240 previously unreleased songs by 47 artists spanning twelve high-level genres. The total duration of the dataset is 14 hours, 24 minutes and 46 seconds, with an average recording length of 3:36 seconds. MoisesDB is offered free of charge for non-commercial research use only and includes baseline performance results for two publicly available source separation methods.
The purpose of this dataset is to provide the research community with a set of songs that can be used to design and evaluate source separation system under robust separation settings (i.e., when the ground truth data contains errors and inconsistencies). This dataset contains simulated errors regarding the identity of the musical instruments included in each track: we call these errors Label Noise.
The purpose of this dataset is to provide the research community with a set of songs that can be used to design and evaluate source separation system under robust separation settings (i.e., when the ground truth data contains errors and inconsistencies). This dataset contains simulated errors for which each source is also present in the recording of all others: we call this phenomenon Bleeding.