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Enabling Homomorphic Encryption of Deep Neural Network Models and Datasets in Production Environments

Descripción del proyecto

Una nueva tecnología de codificación y memoria ofrece volúmenes de trabajo de aprendizaje profundo más seguras

Con la explosión de datos disponibles para mejorar la precisión de las soluciones a problemas de clasificación complejos, las metodologías de aprendizaje profundo han sido fundamentales para extraer características. Sin embargo, el aumento de la disponibilidad de los datos ha traído consigo la necesidad cada vez mayor de proteger los datos debido al creciente número de agentes fraudulentos con intenciones maliciosas. La integración de los algoritmos de aprendizaje profundo con la codificación se ha visto gravemente limitada dado el enorme aumento del tamaño de los datos de dichos algoritmos combinado a la limitada memoria disponible. El proyecto HomE, financiado con fondos europeos, inspirará una nueva clase de arquitectura de sistemas para los volúmenes de trabajo de aprendizaje profundo codificados, lo que facilitará la ejecución simultánea de centenares de modelos con alta resolución y precisión.

Objetivo

Deep learning (DL) is widely used to solve classification problems previously unchallenged, such as face recognition, and presents clear use cases for privacy requirements. Homomorphic encryption (HE) enables operations upon encrypted data, at the expense of vast data size increase. RAM sizes currently limit the use of HE on DL to severely reduced use cases. Recently emerged persistent memory technology (PMEM) offers larger-than-ever RAM spaces, but its performance is far from that of customary DRAM technologies. This project aims at sparking a new class of system architectures for encrypted DL workloads, by eliminating or dramatically reducing data movements across memory/storage hierarchies and network, supported by PMEM technology, overcoming its current severe performance limitations. HomE intends to be a first-time enabler for the encrypted execution of large models that do not fit in DRAM footprints to execute local to accelerators, hundreds of DL models to run simultaneously, and large datasets to be run at high resolution and accuracy. Targeting these ground-breaking goals, HomE enters into unexplored field resulting from the innovative convergence of several disciplines, where wide-ranging research is required in order to assess current and future feasibility. Its main challenge is to develop methodology capable of breaking through the existing software and hardware limitations. HomE proposes a holistic approach yielding highly impactful outcomes that include novel comprehensive performance characterisation, innovative optimisations upon current technology, and pioneering hardware proposals. HomE can spawn a paradigm shift that will revolutionise the convergence of the machine learning and cryptography disciplines, filling a gap of knowledge and opening new horizons such as DL training on HE, currently too demanding even for DRAM. HomE, based on solid evidence, will unveil the great unknown of whether PMEM is a practical enabler for encrypted DL workloads.

Institución de acogida

BARCELONA SUPERCOMPUTING CENTER CENTRO NACIONAL DE SUPERCOMPUTACION
Aportación neta de la UEn
€ 2 680 195,00
Dirección
CALLE JORDI GIRONA 31
08034 Barcelona
España

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Región
Este Cataluña Barcelona
Tipo de actividad
Research Organisations
Enlaces
Coste total
€ 2 680 195,00

Beneficiarios (1)