Secure multi-party computation (MPC) is an essential tool for privacy-preserving machine learning (ML). However, secure training of large-scale ML models currently requires a prohibitively long time to complete. Given that large ML inference and training tasks in the plaintext setting are significantly accelerated by Graphical Processing Units (GPUs), this raises the natural question: can secure MPC leverage GPU acceleration? A few recent works have studied this question in the context of accelerating specific components or protocols, but do not provide a general-purpose solution. Consequently, MPC developers must be both experts in cryptographic protocol design and proficient at low-level GPU kernel development to achieve good performance ...
We implement training of neural networks in secure multi-party computation (MPC) using quantization ...
This paper aims to provide a high-level overview of practical approaches to machine-learning respect...
Part 4: Machine LearningInternational audienceConfidential multi-stakeholder machine learning (ML) a...
Secure multi-party computation (MPC) is an essential tool for privacy-preserving machine learning (M...
Tremendous efforts have been made to improve the efficiency of secure Multi-Party Computation (MPC),...
Secure multi-party computation (MPC) allows parties to perform computations on data while keeping th...
Secure Multiparty Computation (MPC) protocols enable secure evaluation of a circuit by several parti...
In (two-party) privacy-preserving-based applications, two users use encrypted inputs to compute a fu...
We describe, and implement, a maliciously secure protocol for two-party computation in a parallel co...
Multi-Party Computation (MPC) is an important technique used to enable computation over confidential...
Secure multiparty computation protocols allow multiple distrustful parties to jointly compute a func...
Big data utilizes large amounts of processing resources requiring either greater efficiency or more ...
Secure Multi-Party Computation (MPC) allows a group of parties to compute a join function on their i...
International audienceIn this work we study the feasibility of high-bandwidth, secure communications...
Secure multi-party computation (MPC) allows a set of parties to jointly compute a function on their ...
We implement training of neural networks in secure multi-party computation (MPC) using quantization ...
This paper aims to provide a high-level overview of practical approaches to machine-learning respect...
Part 4: Machine LearningInternational audienceConfidential multi-stakeholder machine learning (ML) a...
Secure multi-party computation (MPC) is an essential tool for privacy-preserving machine learning (M...
Tremendous efforts have been made to improve the efficiency of secure Multi-Party Computation (MPC),...
Secure multi-party computation (MPC) allows parties to perform computations on data while keeping th...
Secure Multiparty Computation (MPC) protocols enable secure evaluation of a circuit by several parti...
In (two-party) privacy-preserving-based applications, two users use encrypted inputs to compute a fu...
We describe, and implement, a maliciously secure protocol for two-party computation in a parallel co...
Multi-Party Computation (MPC) is an important technique used to enable computation over confidential...
Secure multiparty computation protocols allow multiple distrustful parties to jointly compute a func...
Big data utilizes large amounts of processing resources requiring either greater efficiency or more ...
Secure Multi-Party Computation (MPC) allows a group of parties to compute a join function on their i...
International audienceIn this work we study the feasibility of high-bandwidth, secure communications...
Secure multi-party computation (MPC) allows a set of parties to jointly compute a function on their ...
We implement training of neural networks in secure multi-party computation (MPC) using quantization ...
This paper aims to provide a high-level overview of practical approaches to machine-learning respect...
Part 4: Machine LearningInternational audienceConfidential multi-stakeholder machine learning (ML) a...