Fully Homomorphic Encryption (FHE) is a relatively recent advancement in the field of privacy-preserving technologies. FHE allows for the arbitrary depth computation of both addition and multiplication, and thus the application of abelian/polynomial equations, like those found in deep learning algorithms. This project investigates how FHE with deep learning can be used at scale toward accurate sequence prediction, with a relatively low time complexity, the problems that such a system incurs, and mitigations/solutions for such problems. In addition, we discuss how this could have an impact on the future of data privacy and how it can enable data sharing across various actors in the agri-food supply chain, hence allowing the development of ma...
Machine learning methods are widely used for a variety of prediction problems. Prediction as a servi...
We demonstrate that, by using a recently proposed leveled homomorphic encryption scheme, it is possi...
In a time in which computing power has never been cheaper and the possibilities of extracting knowle...
Fully Homomorphic Encryption (FHE) is a relatively recent advancement in the field of privacy-preser...
The authors would like to thank the British Biotechnology and Biological Sciences Research Council (...
We present automatically parameterised Fully Homomorphic Encryption (FHE) for encrypted neural netwo...
This research was supported in part by the Biotechnology and Biological Sciences Research Council (B...
The rise of machine learning as a service multiplies scenarios where one faces a privacy dilemma: ei...
In this report, to maximise data privacy, we conducted Federated Learning algorithm with Homomorphic...
Advances in technology have now made it possible to monitor heart rate, body temperature and sleep p...
Fully homomorphic encryption enables computation on encrypted data without leaking any information a...
As the amount of data collected and analyzed by machine learning technology increases, data that can...
International audienceConvolutional neural networks (CNNs) is a category of deep neural networks tha...
Data privacy concerns are increasing significantly in the context of Internet of Things, cloud servi...
We build a privacy-preserving deep learning system in which many learning participants perform neur...
Machine learning methods are widely used for a variety of prediction problems. Prediction as a servi...
We demonstrate that, by using a recently proposed leveled homomorphic encryption scheme, it is possi...
In a time in which computing power has never been cheaper and the possibilities of extracting knowle...
Fully Homomorphic Encryption (FHE) is a relatively recent advancement in the field of privacy-preser...
The authors would like to thank the British Biotechnology and Biological Sciences Research Council (...
We present automatically parameterised Fully Homomorphic Encryption (FHE) for encrypted neural netwo...
This research was supported in part by the Biotechnology and Biological Sciences Research Council (B...
The rise of machine learning as a service multiplies scenarios where one faces a privacy dilemma: ei...
In this report, to maximise data privacy, we conducted Federated Learning algorithm with Homomorphic...
Advances in technology have now made it possible to monitor heart rate, body temperature and sleep p...
Fully homomorphic encryption enables computation on encrypted data without leaking any information a...
As the amount of data collected and analyzed by machine learning technology increases, data that can...
International audienceConvolutional neural networks (CNNs) is a category of deep neural networks tha...
Data privacy concerns are increasing significantly in the context of Internet of Things, cloud servi...
We build a privacy-preserving deep learning system in which many learning participants perform neur...
Machine learning methods are widely used for a variety of prediction problems. Prediction as a servi...
We demonstrate that, by using a recently proposed leveled homomorphic encryption scheme, it is possi...
In a time in which computing power has never been cheaper and the possibilities of extracting knowle...