Amazon.com, Inc.
Dynamic accuracy-based deployment and monitoring of machine learning models in provider networks

Last updated:

Abstract:

Techniques for dynamic accuracy-based experimentation and deployment of machine learning (ML) models are described. Inference traffic flowing to ML models and the accuracy of the models is analyzed and used to ensure that better performing models are executed more often via model selection. A predictive component can evaluate which model is more likely to be accurate for certain input data elements. Ensemble techniques can combine inference results of multiple ML models to aim to achieve a better overall result than any individual model could on its own.

Status:
Grant
Type:

Utility

Filling date:

13 Mar 2018

Issue date:

22 Feb 2022