Holistic optimization for accelerating iterative machine learning

Doris Suiyi Xin (Inventor), Stephen Macke (Inventor), Aditya G Parameswaran (Inventor)

Research output: Patent

Abstract

A great deal of time and computational resources may be used when developing a machine learning or other data processing workflow. This can be related to the need to re-compute the workflow in response to adjustments to the workflow parameters, in order to assess the benefit of such adjustments so as to develop a workflow that satisfies accuracy or other constraints. Embodiments herein provide time and computational savings by selectively storing and re-loading intermediate results of steps of a data processing workflow. For each step of the workflow, during execution, a decision is made whether to store the intermediate results of the step. Thus, these embodiments can offer storage savings as well as processing speedups when repeatedly re-executing machine learning or other data processing workflows during workflow development.
Original languageEnglish (US)
U.S. patent number11620574
Filing date12/4/19
StatePublished - Apr 4 2023

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