Seven Principles for Effective Scientific Big-DataSystems
We should be in a golden age of scientific discovery, given that we have more data and more compute power available than ever before, plus a new generation of algorithms that can learn effectively from data. But paradoxically, in many data-driven fields, the eureka moments are becoming increasingly...
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Zusammenfassung: | We should be in a golden age of scientific discovery, given that we have more
data and more compute power available than ever before, plus a new generation
of algorithms that can learn effectively from data. But paradoxically, in many
data-driven fields, the eureka moments are becoming increasingly rare.
Scientists are struggling to keep pace with the explosion in the volume and
complexity of scientific data. We describe here a few simple architectural
principles that we believe are essential in order to create effective, robust,
and flexible platforms that make the best use of emerging technology to deal
with the exponential growth of scientific data. |
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DOI: | 10.48550/arxiv.1908.03356 |