Machine Learning: The High Interest Credit Card of Technical Debt
Venue
SE4ML: Software Engineering for Machine Learning (NIPS 2014 Workshop)
Publication Year
2014
Authors
D. Sculley, Gary Holt, Daniel Golovin, Eugene Davydov, Todd Phillips, Dietmar Ebner, Vinay Chaudhary, Michael Young
BibTeX
Abstract
                Machine learning offers a fantastically powerful toolkit for building complex
                systems quickly. This paper argues that it is dangerous to think of these quick
                wins as coming for free. Using the framework of technical debt, we note that it is
                remarkably easy to incur massive ongoing maintenance costs at the system level when
                applying machine learning. The goal of this paper is highlight several machine
                learning specific risk factors and design patterns to be avoided or refactored
                where possible. These include boundary erosion, entanglement, hidden feedback
                loops, undeclared consumers, data dependencies, changes in the external world, and
                a variety of system-level anti-patterns.
              
             
 