Adoption of AI Technology in the Music Mixing Workflow: An Investigation
- URL: http://arxiv.org/abs/2304.03407v2
- Date: Fri, 8 Sep 2023 08:53:49 GMT
- Title: Adoption of AI Technology in the Music Mixing Workflow: An Investigation
- Authors: Soumya Sai Vanka, Maryam Safi, Jean-Baptiste Rolland, and George
Fazekas
- Abstract summary: The study investigates the current state of AI in the mixing music and its adoption by different user groups.
Our findings show that while AI mixing tools can simplify the process, pro-ams seek precise control and customization options.
The study provides strategies for designing effective AI mixing tools for different user groups and outlines future directions.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The integration of artificial intelligence (AI) technology in the music
industry is driving a significant change in the way music is being composed,
produced and mixed. This study investigates the current state of AI in the
mixing workflows and its adoption by different user groups. Through
semi-structured interviews, a questionnaire-based study, and analyzing web
forums, the study confirms three user groups comprising amateurs, pro-ams, and
professionals. Our findings show that while AI mixing tools can simplify the
process and provide decent results for amateurs, pro-ams seek precise control
and customization options, while professionals desire control and customization
options in addition to assistive and collaborative technologies. The study
provides strategies for designing effective AI mixing tools for different user
groups and outlines future directions.
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