Things You Learn When Building Models for Big Data - podcast episode cover

Things You Learn When Building Models for Big Data

May 22, 201722 min
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Episode description

As more and more data gets collected seemingly every day, and data scientists use that data for modeling, the technical limits associated with machine learning on big datasets keep getting pushed back.  This week is a first-hand case study in using scikit-learn (a popular python machine learning library) on multi-terabyte datasets, which is something that Katie does a lot for her day job at Civis Analytics.  There are a lot of considerations for doing something like this--cloud computing, artful use of parallelization, considerations of model complexity, and the computational demands of training vs. prediction, to name just a few.
Things You Learn When Building Models for Big Data | Linear Digressions podcast - Listen or read transcript on Metacast