Conference PaperFull Review

Understanding Distributed Cooperative Work through Data Traces

Loading...
Thumbnail Image

Fulltext URI

Document type

Text/Conference Paper

Additional Information

Date

Journal Title

Journal ISSN

Volume Title

Publisher

European Society for Socially Embedded Technologies (EUSSET)

Abstract

Understanding cooperative work in distributed and hybrid settings is complex due to the interplay of multiple artifacts, technologies, and collaboration styles. This paper uses an auto-ethnographic approach to explore the collaborative practices of a geographically distributed scientific research team over one year, introducing Data Traces as a novel method for capturing interactions with artifacts and team members. We examine how Data Traces can support reflection and development of long-term group collaboration by providing detailed insights—such as patterns of teamwork and coordination—into the collaborative practices of the team. Our analysis produced three main findings: (1) Data Traces help visualize temporal rhythms in cooperative work, (2) Data Traces are shaped by the proximity across collocated, hybrid, or distributed participants, and (3) Data Traces cannot capture invisible work. These results contribute to the broader discussion on data tracking in CSCW by demonstrating the potential of Data Traces as a feature of cooperative technologies supporting group reflection connecting the use and relations of artifacts, devices, and applications in the larger ecology of artifacts.

Description

Beerepoot, Iris; Resinas, Manuel; del Río Ortega, Adela; Reijers, Hajo A.; Bjørn, Pernille (2025): Understanding Distributed Cooperative Work through Data Traces. Proceedings of the 23rd EUSSET Conference on Computer Supported Cooperative Work. DOI: 10.48340/ecscw2025_cp05. European Society for Socially Embedded Technologies (EUSSET). EISSN: 2510-2591. Conference Papers. Newcastle upon Tyne, United Kingdom. June 30th – July 4th, 2025

Keywords

Collaborative Practices, Cooperative Technologies, Data Traces, Hybrid and Distributed Collaboration, Temporal Rhythms, Auto-ethnography, Artifact Ecology

Citation

URI

Endorsement

Review

Supplemented By

Referenced By

Creative Commons license

Except where otherwised noted, this item's license is described as https://creativecommons.org/licenses/by/4.0/