Building a Reproducible Machine Learning Pipeline
Reproducibility of modeling is a problem that exists for any machine learning practitioner, whether in industry or academia. The consequences of an irreproducible model can include significant financial costs, lost time, and even loss of personal reputation (if results prove unable to be replicated)...
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Zusammenfassung: | Reproducibility of modeling is a problem that exists for any machine learning
practitioner, whether in industry or academia. The consequences of an
irreproducible model can include significant financial costs, lost time, and
even loss of personal reputation (if results prove unable to be replicated).
This paper will first discuss the problems we have encountered while building a
variety of machine learning models, and subsequently describe the framework we
built to tackle the problem of model reproducibility. The framework is
comprised of four main components (data, feature, scoring, and evaluation
layers), which are themselves comprised of well defined transformations. This
enables us to not only exactly replicate a model, but also to reuse the
transformations across different models. As a result, the platform has
dramatically increased the speed of both offline and online experimentation
while also ensuring model reproducibility. |
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DOI: | 10.48550/arxiv.1810.04570 |