Data-Enhanced Design

Engaging Designers in Exploratory Sensemaking with Multimodal Data

Journal Article (2023)
Author(s)

Katerina Gorkovenko (Natwest)

A. Jenkins (King’s College London)

Kami Vaniea (University of Waterloo)

Dave Murray-Rust (The University of Edinburgh, TU Delft - Human Technology Relations)

Research Group
Human Technology Relations
Copyright
© 2023 Katerina Gorkovenko, Adam Jenkins, Kami Vaniea, D.S. Murray-Rust
DOI related publication
https://doi.org/10.57698/v17i3.01
More Info
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Publication Year
2023
Language
English
Copyright
© 2023 Katerina Gorkovenko, Adam Jenkins, Kami Vaniea, D.S. Murray-Rust
Research Group
Human Technology Relations
Issue number
3
Volume number
17
Pages (from-to)
1-23
Reuse Rights

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Abstract

Research in the wild can reveal human behaviors, contexts, and needs around products that are difficult to observe in the lab. Telemetry data from the use of physical products can help facilitate in the wild research, in particular by suggesting hypotheses that can be explored through machine learning models. This paper explores ways for designers without strong data skills to engage with multimodal data to develop a contextual understanding of product use. This study is framed around a lightweight version of a data enhanced design research process where multimodal telemetry data was captured by a GoPro camera attached to a bicycle. This was combined with the video data and conversation with the rider to carry out an exploratory sensemaking process and generate design research questions that could potentially be addressed through data capture, annotation, and machine learning. We identify a range of ways that designers could make use of the data for ideation and developing context through annotating and exploring the data. Participants used data and annotation practices to connect the micro and macro, spot interesting moments, and frame questions around an unfamiliar problem. The work follows the designers’ questions, methods, and explorations, both immediate concerns and speculations about working at larger scales with machine learning models. This points to the possibility of tools that help designers to engage with machine learning, not just for optimization and refinement, but for creative ideation in the early stages of design processes.