When AI makes music

9

October

2025

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In the past summer, I have spent a bit of time experimenting with Suno, an AI music generation tool. This application turns short text prompts into complete songs. This especially interested me because I enjoy playing instruments, but have no experience in the creation of digital music. This new application makes it very easy to create melodies, harmonies, and lyrics that sound coherent. Suno and other comparable applications lower the barriers to music production, making music production accessible to individuals with no prior experience in creating music.

The ease with which these applications can now be used reflects a broader transformation in how music is composed and experienced. Briot (2020) explains that advances in deep learning have allowed AI models to learn musical structures from large collections of data and to generate new music that fits within those styles. He draws a distinction between two types of generation. On the one hand autonomous generation, where the system creates music on its own, and on the other hand composition assistance, where the user guides the process through creative input and feedback. In my opinion my experience with Suno fits this second description best. Because the tool does not replace creativity completely. It translates my prompts into musical output. In the way I used Suno, the AI application acted more as a creative assistant but sometimes also as an autonomous generator.

Apart from the fact that these new applications are very useful for people with no musical knowledge to suddenly create music, they also come with significant legal and ethical challenges. Gervais (2019) notes that copyright law is based on the concept of human authorship. Since AI operates mostly autonomously, it falls outside traditional legal definitions of creativity and ownership. This legal challenge became clear to me when I tried sharing an AI-generated track to Soundcloud and was asked to confirm the ownership rights. Although I had shaped the prompts and creative direction, I could not confidently claim to be the legal author of the music.

Hugenholtz and Quintais (2021) argue that creativity in copyright law involves three stages: the conception of an idea, its execution, and the final refinement of the work. Copyright protection, they note, requires meaningful human input across these stages. When an AI system carries out most of these steps autonomously, without relevant human creativity, the result cannot be regarded as a protected work. In my experience, a tool like Suno automates much of this process: the user provides a brief prompt, but the system composes, arranges, and polishes the final piece. As a result, the main creative labour lies with the algorithm rather than the human user. This not only limits the legal protection but also raises ethical concerns about authorship and artistic responsibility. It reinforces my earlier point that while applications like Suno make music creation remarkably easy, they also blur the boundaries of what it means to be creative human being.

Sources:

Briot, J. (2020). From artificial neural networks to deep learning for music generation: history, concepts and trends. Neural Computing and Applications33(1), 39–65. https://doi.org/10.1007/s00521-020-05399-0

Gervais, D. J. (2019). The machine as author. Iowa Law Review, 105(5), 2053–2106. https://ilr.law.uiowa.edu/print/volume-105-issue-5/the-machine-as-author/

Hugenholtz, P., & Quintais, J. P. (2021). Auteursrecht en artificiële creatie. Auteursrecht, 47–52. https://pure.uva.nl/ws/files/61822465/Auteursrecht_2021_2.pdf

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2 thoughts on “When AI makes music”

  1. I like how your reflection captures the tension between creativity and automation well. I agree that tools like suno make making music more inclusive. But, as you mentioned, also bring risks with copyright infringment. When anyone can generate a polished song in seconds, the line between creating and prompting becomes unclear. I however still think that these tools dont exactly replace creativity. They shift it. Because writing the right prompt, shaping the mood, and improving earlier outputs untill you get the desired result are all creative acts in themselves, eventhough the process might feel different from traditional music creation.

  2. I think this topic is really interesting. As someone who produces music from time to time, I am a bit skeptical on such tools because I think the creativity and production is something that should be completely human centered. The production of music is an artistic process where you have to take your time and get in a flow. However, I do think it helps with learning different ways of making music and coming up with new sounds or patterns. My take would be that AI should only be used for educational purposes and that the professional music production must be left for the musical geniuses of our time. I totally agree with you on the copyright part and see that as another risk to using such tools. Nice write!

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