Practical application-specific advantage through hybrid quantum
computing
- URL: http://arxiv.org/abs/2205.04858v1
- Date: Tue, 10 May 2022 12:58:41 GMT
- Title: Practical application-specific advantage through hybrid quantum
computing
- Authors: Michael Perelshtein, Asel Sagingalieva, Karan Pinto, Vishal Shete,
Alexey Pakhomchik, Artem Melnikov, Florian Neukart, Georg Gesek, Alexey
Melnikov, Valerii Vinokur
- Abstract summary: We present a hybrid quantum cloud based on a memory-centric and heterogeneous multiprocessing architecture.
We show the advantage of hybrid algorithms compared to standard classical algorithms in both the computational speed and quality of the solution.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Quantum computing promises to tackle technological and industrial problems
insurmountable for classical computers. However, today's quantum computers
still have limited demonstrable functionality, and it is expected that scaling
up to millions of qubits is required for them to live up to this touted
promise. The feasible route in achieving practical quantum advantage goals is
to implement a hybrid operational mode that realizes the cohesion of quantum
and classical computers. Here we present a hybrid quantum cloud based on a
memory-centric and heterogeneous multiprocessing architecture, integrated into
a high-performance computing data center grade environment. We demonstrate that
utilizing the quantum cloud, our hybrid quantum algorithms including Quantum
Encoding (QuEnc), Hybrid Quantum Neural Networks and Tensor Networks enable
advantages in optimization, machine learning, and simulation fields. We show
the advantage of hybrid algorithms compared to standard classical algorithms in
both the computational speed and quality of the solution. The achieved advance
in hybrid quantum hardware and software makes quantum computing useful in
practice today.
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