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Schlagwörter:
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Zusammenfassung:
Environmental scientists typically need to access data from a variety of sources, analyze and process them
with different tools, and model them on heterogeneous IT systems. Gathering all the necessary knowledge and
executing the corresponding workflows repeatedly consumes a lot of the researcher’s time, which leads to a
problem we call the "knowledge and know-how bias": Scientists will generally prefer data from sources they are
familiar with, and focus on computational methods and tools they know.
This undesirable situation can be improved by services that help scientists with their core workflows in data-driven
research. We believe that optimizing scientific workflows – which in the environmental sciences typically involve
data and metadata in diverse formats, as well as a vast variety of software stacks and libraries for data analysis –
should not be the primary task of a scientist, but rather a central service of modern scientific data and computing
centers. With their expertise in this area, they can provide scientists with specifically tailored, yet flexible solutions.
With this aim in mind, we exemplarily discuss efforts to set up closer collaborations between scientists and the
Leibniz Supercomputing Centre (LRZ, Garching, Germany). High-level IT services developed in such contexts
will enable environmental scientists to shift the focus of their work away from the search for data and methods
towards their actual research, and reduce the knowledge and know-how biases of their work.