Machine Learning at Microsoft with ML.NET
/ Authors
Zeeshan Ahmed, S. Amizadeh, Mikhail Bilenko, Rogan Carr, Wei-Sheng Chin, Y. Dekel, Xavier Dupre, Vadim Eksarevskiy, Eric Erhardt, Costin Eseanu
and 24 more authors
Senja Filipi, Tom Finley, Abhishek Goswami, Monte L. Hoover, Scott Inglis, Matteo Interlandi, S. Katzenberger, Najeeb Kazmi, Gleb Krivosheev, Pete Luferenko, Ivan Matantsev, Sergiy Matusevych, S. Moradi, Gani Nazirov, Justin Ormont, Gal Oshri, Artidoro Pagnoni, J. Parmar, Prabhat Roy, Sarthak Shah, Mohammad Zeeshan Siddiqui, Markus Weimer, S. Zahirazami, Yiwen Zhu
/ Abstract
Machine Learning is transitioning from an art and science into a technology available to every developer. In the near future, every application on every platform will incorporate trained models to encode data-based decisions that would be impossible for developers to author. This presents a significant engineering challenge, since currently data science and modeling are largely decoupled from standard software development processes. This separation makes incorporating machine learning capabilities inside applications unnecessarily costly and difficult, and furthermore discourage developers from embracing ML in first place. In this paper we present ML.NET, a framework developed at Microsoft over the last decade in response to the challenge of making it easy to ship machine learning models in large software applications. We present its architecture, and illuminate the application demands that shaped it. Specifically, we introduce DataView, the core data abstraction of ML.NET which allows it to capture full predictive pipelines efficiently and consistently across training and inference lifecycles. We close the paper with a surprisingly favorable performance study of ML.NET compared to more recent entrants, and a discussion of some lessons learned.
Journal: Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining