Antidisciplinary: Tackling the technical and social challenges to data
science-driven discovery
Abstract
Data science refers to the set of tools, technologies, and teams that
alter the paradigm by which data are collected, managed and analyzed.
Data science is, therefore, decidedly broader than ‘machine learning,’
and includes instead the full data lifecycle. Never has the need for
effective data science innovation been greater than now when at every
turn data-driven discovery is both burdened and invigorated by the
growth of data volumes, varieties, veracities, and velocities. This
growing scale of science requires dramatic shifts in collaborative
research, requiring projects to climb the gradations of collaboration
from unidisciplinary, to multi-, inter-, and transdisciplinary (Figure
1, [Hall et al., 2014; NRC, 2015]), and perhaps even to an entirely
new level that defies any traditional boundary, or antidisciplinary
(https://joi.ito.com/weblog/2014/10/02/antidisciplinar.html). We will
discuss the cutting-edge efforts advancing collaborative research in
Space Physics and Aeronomy, highlight progress, and synthesize the
lessons to provide a vision for future innovation in data science for
Heliophysics. We will specifically focus on three trail-blazing
initiatives: 1) the NASA Frontier Development Laboratory; 2) the
HelioAnalytics group at the Goddard Space Flight Center in cooperation
with the NASA Jet Propulsion Laboratory’s Data Science Working Group;
and 3) an International Space Sciences Institute project. References:
Hall, K.L., Stipelman, B., Vogel, A.L., Huang, G., and Dathe, M. (2014).
Enhancing the Ef- fectiveness of Team-based Research: A Dynamic
Multi-level Systems Map of Integral Factors in Team Science. Presented
at the Fifth Annual Science of Team Science Confer- ence, August,
Austin, TX. NRC (National Research Council) (2015). Enhancing the
Effectiveness of Team Science. Washington, DC: The National Academies
Press. https://doi.org/10.17226/19007.