Homomorphic encryption (HE) enables calculating on encrypted data, which makes it possible to perform privacypreserving neural network inference. One disadvantage of this technique is that it is several orders of magnitudes slower than calculation on unencrypted data. Neural networks are commonly trained using floating-point, while most homomorphic encryption libraries calculate on integers, thus requiring a quantisation of the neural network. A straightforward approach would be to quantise to large integer sizes (e.g. 32 bit) to avoid large quantisation errors. In this work, we reduce the integer sizes of the networks, using quantisation-aware training, to allow more efficient computations. For the targeted MNIST architecture proposed by B...
Big data is one of the cornerstones to enabling and training deep neural networks (DNNs). Because of...
The main bottleneck of all known Fully Homomorphic Encryption schemes lies in the bootstrapping proc...
The main bottleneck of all known Fully Homomorphic Encryption schemes lies in the bootstrapping pro...
The processing of sensitive user data using deep learning models is an area that has gained recent t...
The rise of machine learning as a service multiplies scenarios where one faces a privacy dilemma: ei...
We present automatically parameterised Fully Homomorphic Encryption (FHE) for encrypted neural netwo...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
The authors would like to thank the British Biotechnology and Biological Sciences Research Council (...
Privacy-preserving neural network (NN) inference solutions have recently gained significant traction...
Homomorphic Encryption (HE) presents a promising solution to securing neural networks for Machine Le...
Homomorphic Encryption (HE), allowing computations on encrypted data (ciphertext) without decrypting...
Fully Homomorphic Encryption is a technique that allows computation on encrypted data. It has the po...
Privacy-preserving deep neural network (DNN) inference is a necessity in different regulated industr...
We present a secure backpropagation neural network training model (SecureBP), which allows a neural ...
In a time in which computing power has never been cheaper and the possibilities of extracting knowle...
Big data is one of the cornerstones to enabling and training deep neural networks (DNNs). Because of...
The main bottleneck of all known Fully Homomorphic Encryption schemes lies in the bootstrapping proc...
The main bottleneck of all known Fully Homomorphic Encryption schemes lies in the bootstrapping pro...
The processing of sensitive user data using deep learning models is an area that has gained recent t...
The rise of machine learning as a service multiplies scenarios where one faces a privacy dilemma: ei...
We present automatically parameterised Fully Homomorphic Encryption (FHE) for encrypted neural netwo...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
The authors would like to thank the British Biotechnology and Biological Sciences Research Council (...
Privacy-preserving neural network (NN) inference solutions have recently gained significant traction...
Homomorphic Encryption (HE) presents a promising solution to securing neural networks for Machine Le...
Homomorphic Encryption (HE), allowing computations on encrypted data (ciphertext) without decrypting...
Fully Homomorphic Encryption is a technique that allows computation on encrypted data. It has the po...
Privacy-preserving deep neural network (DNN) inference is a necessity in different regulated industr...
We present a secure backpropagation neural network training model (SecureBP), which allows a neural ...
In a time in which computing power has never been cheaper and the possibilities of extracting knowle...
Big data is one of the cornerstones to enabling and training deep neural networks (DNNs). Because of...
The main bottleneck of all known Fully Homomorphic Encryption schemes lies in the bootstrapping proc...
The main bottleneck of all known Fully Homomorphic Encryption schemes lies in the bootstrapping pro...