Neural-powered unit disk graph embedding: qubits connectivity for some QUBO problems
Chiara Vercellino, Paolo Viviani, Giacomo Vitali, Alberto Scionti, Andrea Scarabosio, Olivier Terzo, Edoardo Giusto, Bartolomeo Montrucchio

TL;DR
This paper introduces a neural network-based method for embedding QUBO problems onto quantum hardware with Rydberg atoms, improving over classical solvers in performance.
Contribution
It proposes a novel neural network approach to find feasible unit disk graph embeddings matching QUBO matrices for quantum optimization.
Findings
Neural approach outperforms Gurobi solver in experiments.
Successfully maps QUBO problems onto Rydberg atom-based quantum hardware.
Addresses the challenge of physical qubit placement for quantum annealers.
Abstract
Graph embedding is a recurrent problem in quantum computing, for instance, quantum annealers need to solve a minor graph embedding in order to map a given Quadratic Unconstrained Binary Optimization (QUBO) problem onto their internal connectivity pattern. This work presents a novel approach to constrained unit disk graph embedding, which is encountered when trying to solve combinatorial optimization problems in QUBO form, using quantum hardware based on neutral Rydberg atoms. The qubits, physically represented by the atoms, are excited to the Rydberg state through laser pulses. Whenever qubits pairs are closer together than the blockade radius, entanglement can be reached, thus preventing entangled qubits to be simultaneously in the excited state. Hence, the blockade radius determines the adjacency pattern among qubits, corresponding to a unit disk configuration. Although it is…
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