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Deep learning generative AI models trained on huge datasets are capable of producing complex and high quality music. However, there are few studies of how AI Generated Content (AIGC) is actually used or appropriated in creative practice. We present two first-person accounts by musician-researchers of explorations of an interactive generative AI system trained on Irish Folk music. The AI is intentionally used by musicians from incongruous genres of Punk and Glitch to explore questions of how the model is appropriated into creative practice and how it changes creative practice when used outside of its intended genre. Reflections on the first-person accounts highlight issues of control, ambiguity, trust, and filtering AIGC. The accounts also highlight the role of AI as an audience and critic and how the musicians' practice changed in response to the AIGC. We suggest that our incongruous approach may help to foreground the creative work and frictions in human-AI creative practice.
Bryan–Kinns et al. (Sat,) studied this question.
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