Redefining Relationships in Music
- URL: http://arxiv.org/abs/2212.08038v2
- Date: Fri, 16 Dec 2022 16:36:34 GMT
- Title: Redefining Relationships in Music
- Authors: Christian Detweiler, Beth Coleman, Fernando Diaz, Lieke Dom, Chris
Donahue, Jesse Engel, Cheng-Zhi Anna Huang, Larry James, Ethan Manilow,
Amanda McCroskery, Kyle Pedersen, Pamela Peter-Agbia, Negar Rostamzadeh,
Robert Thomas, Marco Zamarato, Ben Zevenbergen
- Abstract summary: We argue that AI tools will fundamentally reshape our music culture.
People working in this space could decrease the possible negative impacts on the practice, consumption and meaning of music.
- Score: 55.478320310047785
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: AI tools increasingly shape how we discover, make and experience music. While
these tools can have the potential to empower creativity, they may
fundamentally redefine relationships between stakeholders, to the benefit of
some and the detriment of others. In this position paper, we argue that these
tools will fundamentally reshape our music culture, with profound effects (for
better and for worse) on creators, consumers and the commercial enterprises
that often connect them. By paying careful attention to emerging Music AI
technologies and developments in other creative domains and understanding the
implications, people working in this space could decrease the possible negative
impacts on the practice, consumption and meaning of music. Given that many of
these technologies are already available, there is some urgency in conducting
analyses of these technologies now. It is important that people developing and
working with these tools address these issues now to help guide their evolution
to be equitable and empower creativity. We identify some potential risks and
opportunities associated with existing and forthcoming AI tools for music,
though more work is needed to identify concrete actions which leverage the
opportunities while mitigating risks.
Related papers
- A Survey of Foundation Models for Music Understanding [60.83532699497597]
This work is one of the early reviews of the intersection of AI techniques and music understanding.
We investigated, analyzed, and tested recent large-scale music foundation models in respect of their music comprehension abilities.
arXiv Detail & Related papers (2024-09-15T03:34:14Z) - Now, Later, and Lasting: Ten Priorities for AI Research, Policy, and Practice [63.20307830884542]
Next several decades may well be a turning point for humanity, comparable to the industrial revolution.
Launched a decade ago, the project is committed to a perpetual series of studies by multidisciplinary experts.
We offer ten recommendations for action that collectively address both the short- and long-term potential impacts of AI technologies.
arXiv Detail & Related papers (2024-04-06T22:18:31Z) - Are machine learning technologies ready to be used for humanitarian work
and development? [2.156882891331917]
Digital data sources and tools like machine learning (ML) and artificial intelligence (AI) have the potential to revolutionize data about development.
We argue that new technologies risk at best falling short of promised goals, at worst they can increase inequality, amplify discrimination, and infringe upon human rights.
arXiv Detail & Related papers (2023-07-04T19:32:35Z) - Art and the science of generative AI: A deeper dive [26.675816750583138]
generative AI can produce high-quality artistic media for visual arts, concept art, music, fiction, literature, video, and animation.
We argue that generative AI is not the harbinger of art's demise, but rather is a new medium with its own distinct affordances.
arXiv Detail & Related papers (2023-06-07T04:27:51Z) - AI for IT Operations (AIOps) on Cloud Platforms: Reviews, Opportunities
and Challenges [60.56413461109281]
Artificial Intelligence for IT operations (AIOps) aims to combine the power of AI with the big data generated by IT Operations processes.
We discuss in depth the key types of data emitted by IT Operations activities, the scale and challenges in analyzing them, and where they can be helpful.
We categorize the key AIOps tasks as - incident detection, failure prediction, root cause analysis and automated actions.
arXiv Detail & Related papers (2023-04-10T15:38:12Z) - Human-Centered Responsible Artificial Intelligence: Current & Future
Trends [76.94037394832931]
In recent years, the CHI community has seen significant growth in research on Human-Centered Responsible Artificial Intelligence.
All of this work is aimed at developing AI that benefits humanity while being grounded in human rights and ethics, and reducing the potential harms of AI.
In this special interest group, we aim to bring together researchers from academia and industry interested in these topics to map current and future research trends.
arXiv Detail & Related papers (2023-02-16T08:59:42Z) - A Survey on Artificial Intelligence for Music Generation: Agents,
Domains and Perspectives [10.349825060515181]
We describe how humans compose music and how new AI systems could imitate such process.
To understand how AI models and algorithms generate music, we explore, analyze and describe the agents that take part of the music generation process.
arXiv Detail & Related papers (2022-10-25T11:54:30Z) - Building Bridges: Generative Artworks to Explore AI Ethics [56.058588908294446]
In recent years, there has been an increased emphasis on understanding and mitigating adverse impacts of artificial intelligence (AI) technologies on society.
A significant challenge in the design of ethical AI systems is that there are multiple stakeholders in the AI pipeline, each with their own set of constraints and interests.
This position paper outlines some potential ways in which generative artworks can play this role by serving as accessible and powerful educational tools.
arXiv Detail & Related papers (2021-06-25T22:31:55Z) - Artificial Intelligence in the Creative Industries: A Review [2.657505380055164]
This paper reviews the current state of the art in Artificial Intelligence (AI) technologies and applications in the context of the creative industries.
We categorise creative applications into five groups related to how AI technologies are used.
We examine the successes and limitations of this rapidly advancing technology in each of these areas.
arXiv Detail & Related papers (2020-07-24T07:29:52Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.