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Looper: An end-to-end ML platform for product decisions

Authors :
Markov, Igor L.
Wang, Hanson
Kasturi, Nitya
Singh, Shaun
Yuen, Sze Wai
Garrard, Mia
Tran, Sarah
Huang, Yin
Wang, Zehui
Glotov, Igor
Gupta, Tanvi
Huang, Boshuang
Chen, Peng
Xie, Xiaowen
Belkin, Michael
Uryasev, Sal
Howie, Sam
Bakshy, Eytan
Zhou, Norm
Publication Year :
2021

Abstract

Modern software systems and products increasingly rely on machine learning models to make data-driven decisions based on interactions with users, infrastructure and other systems. For broader adoption, this practice must (i) accommodate product engineers without ML backgrounds, (ii) support finegrain product-metric evaluation and (iii) optimize for product goals. To address shortcomings of prior platforms, we introduce general principles for and the architecture of an ML platform, Looper, with simple APIs for decision-making and feedback collection. Looper covers the end-to-end ML lifecycle from collecting training data and model training to deployment and inference, and extends support to personalization, causal evaluation with heterogenous treatment effects, and Bayesian tuning for product goals. During the 2021 production deployment Looper simultaneously hosted 440-1,000 ML models that made 4-6 million real-time decisions per second. We sum up experiences of platform adopters and describe their learning curve.<br />Comment: 11 pages + references, 7 figures; to appear in KDD 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2110.07554
Document Type :
Working Paper