21 - 25 April 2024
National Harbor, Maryland, US
Conference 13058 > Paper 13058-24
Paper 13058-24

A look inside of homomorphic encryption for federated learning

On demand | Presented live 23 April 2024

Abstract

When you think of different standards of encryption you may think of Data Encryption Standard, Advanced Encryption Standard or Elliptic Curve Cryptography. However, a new standard for encryption, called homomorphic encryption, is being researched and put into use. Homomorphic encryption is a cryptographic technique that has the potential to significantly impact the field of Artificial Intelligence (AI). It allows data to be processed in an encrypted form without first decrypting it, thus preserving privacy and security while still enabling meaningful computation. Homomorphic encryption can also be applied in federated learning, a decentralized approach to machine learning. Multiple parties can collaborate to train a machine learning model without sharing their individual data directly. Throughout this paper first we will discuss what homomorphic encryption is and then, we explore how homomorphic encryption can be used to ensure that data remains encrypted during model updates and aggregation, enhancing privacy.

Presenter

Lubjana Beshaj
U.S. Military Academy (United States)
Dr. Lubjana Beshaj is a Cyber Fellow of Mathematics at the Army Cyber Institute and an Assistant Professor in the Department of Mathematical Sciences at West Point. She is a member of the American Mathematical Society and Women in Mathematics. Her research interests include cryptography, elliptic and hyperelliptic curve cryptography, post-quantum cryptography, and emerging technologies.
Application tracks: AI/ML
Presenter/Author
Lubjana Beshaj
U.S. Military Academy (United States)
Author
Michael Hoefler
United States Military Academy (United States)