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Understanding Data-Intensive Science

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Title: Understanding Data-Intensive Science


1
Understanding Data-Intensive Science
  • Sabina Leonelli
  • Egenis
  • Department of Sociology and Philosophy
  • s.leonelli_at_exeter.ac.uk

2
Context The Rise of Data-Intensive Science and
the Difficulties in Making Sense of It
  • New ways to produce, store and disseminate data
    are affecting how scientists work, think and
    collaborate a qualitative shift to
    data-intensive science
  • Despite heated debates on the significance and
    impact of big data and data management tools
    (e.g. internet databases), no clear
    characterization of data-intensive science ---
    difficult given the distinctive methods, objects,
    materials, aims and technologies characterizing
    each of fields involved.
  • Further, no systematic study of how this approach
    affects existing philosophical views on
    scientific epistemology, as expressed within
    contemporary philosophy of science and underlying
    science policy

3
Towards a Philosophy ofData-Intensive Science
  • Aim systematically analyze whether and how the
    epistemology of science is changing in the
    digital age, through an empirical, comparative
    study of data-intensive practices and their
    results across different scientific areas and
    time periods
  • Method philosophy of science based on empirical
    studies of science (philosophy of science in
    practice)
  • Historical and sociological research on
    scientific practices
  • Collaborations with natural scientists (e.g.
    plant scientists, bioinformaticians and system
    biologists)

4
Specific Topics
  • Unsustainability of internet databases for
    biomedical data in the long term need for new
    funding support mechanisms
  • Huge impact of databases and classification
    systems on how data are interpreted and re-used
    not yet fully recognised by biologists
  • Shifts in division of labour in scientific
    research role of computer scientists and
    database curators?
  • Key role of model organism communities, e.g.
    Arabidopsis thaliana, in driving future research
    in biology as well as how biologists think of
    organisms

5
Activities and Results
  • Publications in science journals and in
    philosophy, history and social studies of
    science monograph in progress.
  • Forthcoming special issues on the characteristics
    of data-intensive biology, large-scale scientific
    research, and translational research.
  • Science policy
  • Consultations with funding bodies (e.g. BBSRC and
    NSF)
  • Consultations with United Nations and EU on
    impact of digital technologies on science and
    society (Global Young Academy)
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