PAPER DIGEST
Most Influential SIGMOD 2020 Paper · 2026-03 edition

Elastic Machine Learning Algorithms In Amazon SageMaker

Edo Liberty, Zohar Karnin, Bing Xiang, Laurence Rouesnel, Baris Coskun, Ramesh Nallapati, Julio Delgado, Amir Sadoughi, Yury Astashonok, Piali Das, Can Balioglu, Saswata Chakravarty, Madhav Jha, Philip Gautier, David Arpin, Tim Januschowski, Valentin Flunkert, Yuyang Wang, Jan Gasthaus, Lorenzo Stella, Syama Rangapuram, David Salinas, Sebastian Schelter, Alex Smola

Venue
ACM SIGMOD Conference (SIGMOD) 2020
Recognition
Most Influential SIGMOD 2020 Paper (Rank No. 9)
Edition
2026-03
Impact factor
4
Certificate ID
71346813a562afcf

Abstract

There is a large body of research on scalable machine learning (ML). Nevertheless, training ML models on large, continuously evolving datasets is still a difficult and costly undertaking for many companies and institutions. We discuss such challenges and derive requirements for an industrial-scale ML platform. Next, we describe the computational model behind Amazon SageMaker, which is designed to meet such challenges. SageMaker is an ML platform provided as part of Amazon Web Services (AWS), and supports incremental training, resumable and elastic learning as well as automatic hyperparameter optimization. We detail how to adapt several popular ML algorithms to its computational model. Finally, we present an experimental evaluation on large datasets, comparing SageMaker to several scalable, JVM-based implementations of ML algorithms, which we significantly outperform with regard to computation time and cost.

Download PDF certificate