Royal Bank of Canada
SYSTEM AND METHOD FOR DISTRIBUTED NON-LINEAR MASKING OF SENSITIVE DATA FOR MACHINE LEARNING TRAINING

Last updated:

Abstract:

Described in various embodiments herein is a technical solution directed to training downstream machine learning models. In particular, specific machines, computer-readable media, computer processes, and methods are described that are utilized to improve data security during training downstream machine learning models, including decreasing the risk of unauthorized access of training data, decreasing the risk of unauthorized use of training data by authorized users, increasing system systemic speed, and reduced overall computational resource requirements. Training data is manipulated prior to being provided for training machine learning models.

Status:
Application
Type:

Utility

Filling date:

18 Feb 2021

Issue date:

19 Aug 2021