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Resource-Aware Pareto-Optimal Automated Machine Learning Platform

2020-10-30 19:37:48
Yao Yang, Andrew Nam, Mohamad M. Nasr-Azadani, Teresa Tung

Abstract

In this study, we introduce a novel platform Resource-Aware AutoML (RA-AutoML) which enables flexible and generalized algorithms to build machine learning models subjected to multiple objectives, as well as resource and hard-ware constraints. RA-AutoML intelligently conducts Hyper-Parameter Search(HPS) as well as Neural Architecture Search (NAS) to build models optimizing predefined objectives. RA-AutoML is a versatile framework that allows user to prescribe many resource/hardware constraints along with objectives demanded by the problem at hand or business requirements. At its core, RA-AutoML relies on our in-house search-engine algorithm,MOBOGA, which combines a modified constraint-aware Bayesian Optimization and Genetic Algorithm to construct Pareto optimal candidates. Our experiments on CIFAR-10 dataset shows very good accuracy compared to results obtained by state-of-art neural network models, while subjected to resource constraints in the form of model size.

Abstract (translated)

URL

https://arxiv.org/abs/2011.00073

PDF

https://arxiv.org/pdf/2011.00073.pdf


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