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Molly reborn in C++ and R

Published online by Cambridge University Press:  26 February 2020

S. J. R. Woodward*
Affiliation:
DairyNZ Ltd, Private Bag 3221, Hamilton3240, New Zealand
P. C. Beukes*
Affiliation:
DairyNZ Ltd, Private Bag 3221, Hamilton3240, New Zealand
M. D. Hanigan
Affiliation:
Department of Dairy Science, Virginia Tech, Blacksburg, VA24060, USA
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Abstract

The dairy cow model ‘Molly’ is a mixed discrete event-continuous system model that simulates feeding, metabolism and lactation of dairy cows. Decades of model development have resulted in a valuable tool in dairy science. Due to the deprecation of the ACSL (Advanced Continuous Simulation Language) programming language, Molly has been translated into C++. This paper describes the translation process and discusses the advantages of the new implementation, one of which is the ability to run Molly within RStudio, a popular integrated development environment (IDE) for data science.

Type
Research Article
Copyright
© The Animal Consortium 2020

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