Recent Deep Learning (DL) advancements in solving complex real-world tasks have led to its widespread adoption in practical applications. However, this opportunity comes with significant underlying risks, as many of these models rely on privacy-sensitive data for training in a variety of applications, making them an overly-exposed threat surface for privacy violations. Furthermore, the widespread use of cloud-based Machine-Learning-as-a-Service (MLaaS) for its robust infrastructure support has broadened the threat surface to include a variety of remote side-channel attacks. In this paper, we first identify and report a novel data-dependent timing side-channel leakage (termed Class Leakage) in DL implementations originating from non-constant...
International audienceMemorization of training data by deep neural networks enables an adversary to ...
International audienceThis position paper deals with privacy for deep neural networks, more precisel...
Distributed deep learning has potential for significant impact in preserving data privacy and improv...
Deep Learning (DL) algorithms based on artificial neural networks have achieved remarkable success a...
Advancements in Deep Learning (DL) have enabled leveraging large-scale datasets to train models that...
The processing of sensitive user data using deep learning models is an area that has gained recent t...
Machine learning models are increasingly utilized across impactful domains to predict individual out...
Data privacy in machine learning has become an urgent problem to be solved, along with machine learn...
Most current approaches for protecting privacy in machine learning (ML) assume that models exist in ...
Since the mid-10s, the era of Deep Learning (DL) has continued to this day, bringing forth new super...
We study the privacy implications of training recurrent neural networks (RNNs) with sensitive traini...
Deep Learning (DL) has become increasingly popular in recent years. While DL models can achieve high...
Recent years have witnessed a rapid development in machine learning systems and a widespread increas...
The significance of security is often overlooked until a catastrophic event occurs. This holds for t...
In collaborative learning, clients keep their data private and communicate only the computed gradien...
International audienceMemorization of training data by deep neural networks enables an adversary to ...
International audienceThis position paper deals with privacy for deep neural networks, more precisel...
Distributed deep learning has potential for significant impact in preserving data privacy and improv...
Deep Learning (DL) algorithms based on artificial neural networks have achieved remarkable success a...
Advancements in Deep Learning (DL) have enabled leveraging large-scale datasets to train models that...
The processing of sensitive user data using deep learning models is an area that has gained recent t...
Machine learning models are increasingly utilized across impactful domains to predict individual out...
Data privacy in machine learning has become an urgent problem to be solved, along with machine learn...
Most current approaches for protecting privacy in machine learning (ML) assume that models exist in ...
Since the mid-10s, the era of Deep Learning (DL) has continued to this day, bringing forth new super...
We study the privacy implications of training recurrent neural networks (RNNs) with sensitive traini...
Deep Learning (DL) has become increasingly popular in recent years. While DL models can achieve high...
Recent years have witnessed a rapid development in machine learning systems and a widespread increas...
The significance of security is often overlooked until a catastrophic event occurs. This holds for t...
In collaborative learning, clients keep their data private and communicate only the computed gradien...
International audienceMemorization of training data by deep neural networks enables an adversary to ...
International audienceThis position paper deals with privacy for deep neural networks, more precisel...
Distributed deep learning has potential for significant impact in preserving data privacy and improv...