A Compositional Framework for Scientific Model Augmentation
July 01, 2019 Β· Declared Dead Β· π ACT
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Authors
Micah Halter, Christine Herlihy, James Fairbanks
arXiv ID
1907.03536
Category
cs.PL: Programming Languages
Cross-listed
cs.SE,
math.CT
Citations
5
Venue
ACT
Last Checked
3 months ago
Abstract
Scientists construct and analyze computational models to understand the world. That understanding comes from efforts to augment, combine, and compare models of related phenomena. We propose SemanticModels.jl, a system that leverages techniques from static and dynamic program analysis to process executable versions of scientific models to perform such metamodeling tasks. By framing these metamodeling tasks as metaprogramming problems, SemanticModels.jl enables writing programs that generate and expand models. To this end, we present a category theory-based framework for defining metamodeling tasks, and extracting semantic information from model implementations, and show how this framework can be used to enhance scientific workflows in a working case study.
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