Ambitious Data Science Can Be Painless
Modern data science research can involve massive computational experimentation; an ambitious PhD in computational fields may do experiments consuming several million CPU hours. Traditional computing practices, in which researchers use laptops or shared campus-resident resources, are inadequate for e...
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Zusammenfassung: | Modern data science research can involve massive computational
experimentation; an ambitious PhD in computational fields may do experiments
consuming several million CPU hours. Traditional computing practices, in which
researchers use laptops or shared campus-resident resources, are inadequate for
experiments at the massive scale and varied scope that we now see in data
science. On the other hand, modern cloud computing promises seemingly unlimited
computational resources that can be custom configured, and seems to offer a
powerful new venue for ambitious data-driven science. Exploiting the cloud
fully, the amount of work that could be completed in a fixed amount of time can
expand by several orders of magnitude.
As potentially powerful as cloud-based experimentation may be in the
abstract, it has not yet become a standard option for researchers in many
academic disciplines. The prospect of actually conducting massive computational
experiments in today's cloud systems confronts the potential user with daunting
challenges. Leading considerations include: (i) the seeming complexity of
today's cloud computing interface, (ii) the difficulty of executing an
overwhelmingly large number of jobs, and (iii) the difficulty of monitoring and
combining a massive collection of separate results. Starting a massive
experiment `bare-handed' seems therefore highly problematic and prone to rapid
`researcher burn out'.
New software stacks are emerging that render massive cloud experiments
relatively painless. Such stacks simplify experimentation by systematizing
experiment definition, automating distribution and management of tasks, and
allowing easy harvesting of results and documentation. In this article, we
discuss several painless computing stacks that abstract away the difficulties
of massive experimentation, thereby allowing a proliferation of ambitious
experiments for scientific discovery. |
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DOI: | 10.48550/arxiv.1901.08705 |