Distributed Quantum Machine Learning

conference paper
Quantum computers can solve specific complex tasks for which no reasonable-time classical algorithm is known. Quantum computers do however also offer inherent security of data, as measurements destroy quantum states.
Using shared entangled states, multiple parties can collaborate and securely compute quantum algorithms. In this paper we propose an approach for distributed quantum machine learning, which allows multiple parties to securely perform computations, without having to reveal their data.We will consider a distributed adder and a distributed distance-based classifier
TNO Identifier
973091
Publisher
Springer
Source title
Innovations for Community Services International Conference on Innovations for Community Services
Editor(s)
Phillipson, F.
Eichler, G.
Erfurth, C.
Fahrnberger, G.
Pages
281–293
Files
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