With the same participants

Datasounds, datasets and datasense: Unboxing the hidden layers between musical data, knowledge and creativity

Project: Research project (funded)Research

Project participant(s)

Department / unit(s)

Description

This network aims to identify core questions that will drive forward the next phase in data-rich music research, focused in particular on creative music making. The increased availability of digital music data combined with new data science techniques are already opening new possibilities for making, studying and engaging with music. This direction is only likely to speed up upending many current practices, opening up creative avenues and offering new opportunities for research. However, the rapid technological progress with new techniques producing surprising results in rapid succession, is often disconnected from the knowledge and knowhow gained by musicians through creativity, practice and research. By bringing together researchers and practitioners from different underlying disciplines and with a wide range of expertise the network will enable a better foundation for future research. Performers, composers, and improvisers will contribute through embodied knowledge and practice-based methods; researchers in psychology will bring insights about cognitive, affective and behavioural processes underpinning musical experience; and data scientists will add analytical expertise as well as relevant theories, methods and techniques. These will lead to significant conceptual breakthroughs in data driven approaches and technologies applied to music.
The new data-based technologies usually rely on large data sets, they can also produce very large amounts of data. As part of the network activities we will map the limitations of existing music representations, identify the gaps that need to be addressed and propose pathways to improve representation formats. We do not envision developing a single, all encompassing representation that captures the full richness of musical experience. Nevertheless, through the dialogue that this network will facilitate we will be able to outline ways of improving on existing representation formats and develop methods for visualising, analysing, and interpreting large data sets. The network will also consider ethical and legal implications such as how best to address the challenges that Artificial Intelligence (AI) poses to existing musical practices and the fear that this technology induces. Some of these are common to many fields where AI is being applied to tasks which were until very recently the preserve of humans. Music offers a unique perspective on these wider problems - the opacity of 'black box' generative models is a low-risk research challenge not a potentially dangerous tool that may entrench existing injustices. By embedding the ethical dimension into the discussion of the future of data driven music research the network will serve as a model for other fields.
The core activity of the network are two workshops where short presentations will provide a springboard for in-depth discussions; a concert by practitioners with relevant experience will help connect the theoretical discussions to the reality of music making. These will enable a multidimensional exchange of ideas and methods. Material from these workshops will be shared online to document the process and provide a platform to engage wider audiences with the approach taken and the significant results obtained.
Data driven technologies are already having an effect on the way in which we understand, make and consume music within current cultural and economic contexts, raising complex and unprecedented ethical and legal considerations. This network will identify core questions that can propel forward data driven research into creative music making that consider social and individual needs. We will also be able to outline specific research projects that address the shared concerns and bridge the gaps between the different methods that, in many ways, bound our disciplines.
StatusActive
Effective start/end date1/01/2230/04/23

Award relations

Datasounds, datasets and datasense: Unboxing the hidden layers between musical data, knowledge and creativity

Reuben Paris, F.

AHRC: £5,521.61

1/01/2230/04/23

Award date: 15/07/21

Award: UK Research CouncilsAward

Funding

  • AHRC: £5,521.61

Discover related content

Find related publications, people, projects, datasets and more using interactive charts.

View graph of relations