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Learning to learn: a reflexive case study of PRiSM SampleRNN

Abstract:
The emergence of neural audio synthesis technology has opened up many new creative and collaborative avenues for musical practitioners in recent years. With a growing number of software tools becoming openly accessible, many composers and sound artists start to map their music-making processes into a nebulous, data-informed collaborative framework. This often puts the practice of data curation, generative machine-learning models, as well as the artistic usage of machine-generated outputs into a state of play, whereby much of the idiosyncrasy of the resultant work is shaped by fine-tuning deep-learning algorithms. However, issues surrounding agency, distributed creativity, and access to computational resources / specialists tend to surface. This paper looks at these issues within the existing infrastructure of a Music Conservatoire, where to engage creatively and strategically with data and artificial intelligence tools becomes an increasingly important skill for artists to adopt outside their conventional musical training. Through the lens of the work of PRiSM (The RNCM Centre for Practice & Research in Science & Music) and the rollout of PRiSM SampleRNN between 2020-2022, we identify an emergent model of musical training and research that institutionally facilitates knowledge exchange and collaborative dialogues between practitioners, pedagogues, as well as research software engineers who are often not considered part of the existing conservatoire establishment.
Publication status:
Published
Peer review status:
Peer reviewed

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Publication website:
https://aimc2024.pubpub.org/pub/fnpykfdv/release/1

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Institution:
University of Oxford
Division:
MPLS
Department:
Engineering Science
Oxford college:
Wolfson College
Role:
Author
ORCID:
0000-0001-9074-3016


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Funder identifier:
https://ror.org/02wxr8x18


Publisher:
AI Music Creativity
Host title:
AIMC 2024
Publication date:
2024-08-29
Acceptance date:
2024-05-10
Event title:
International Conference on AI and Musical Creativity (AIMC 2024)
Event location:
University of Oxford, UK
Event website:
https://aimc2024.pubpub.org/
Event start date:
2024-09-09
Event end date:
2024-09-11


Language:
English
Pubs id:
2037521
Local pid:
pubs:2037521
Deposit date:
2024-10-09

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