Computing: A Vision for Data Science. Mattmann, C. A. 493(7433):473–475. Paper doi abstract bibtex To get the best out of big data, funding agencies should develop shared tools for optimizing discovery and train a new breed of researchers, says Chris A. Mattmann.
@article{mattmannComputingVisionData2013,
title = {Computing: A Vision for Data Science},
author = {Mattmann, Chris A.},
date = {2013-01},
journaltitle = {Nature},
volume = {493},
pages = {473--475},
issn = {0028-0836},
doi = {10.1038/493473a},
url = {https://doi.org/10.1038/493473a},
abstract = {To get the best out of big data, funding agencies should develop shared tools for optimizing discovery and train a new breed of researchers, says Chris A. Mattmann.},
keywords = {*imported-from-citeulike-INRMM,~INRMM-MiD:c-11928483,~to-add-doi-URL,big-data,computational-science},
number = {7433}
}
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