Given an undirected unweighted graph, the 2-MaxCut problem can be stated as the problem of partitioning the nodes of a graph into two subsets such that the number of edges between them is as large as possible. It is a well-studied NP-hard and APX-hard problem with applications in various fields, including statistical physics, machine learning and circuit layout design. This thesis investigates the Quantum Approximation Optimization Algorithm for solving the MaxCut problem. We study this approach analytically, show how to implement it on the quantum circuit, hold the experiments on the quantum simulator and the real quantum computer and test how good this algorithm works on graphs of different sizes
The maximum clique in an undirected graph is the largest subset of a set of graph's vertices where ...
Farhi et al. recently proposed a class of quantum algorithms, the Quantum Approximate Optimization A...
Finding high-quality parameters is a central obstacle to using the quantum approximate optimization ...
Quantum computers are devices, which allow more efficient solutions of problems as compared to their...
Given an undirected, unweighted graph with n vertices and m edges, the maximum cut problem is to fin...
Quantum computers are devices which allow the solution of problems unsolvable to their classical cou...
Abstract We compare the performance of the Quantum Approximate Optimization Algorithm (QAOA) with st...
The Quantum Approximate Optimization Algorithm (QAOA) is one of the promising near-term algorithms d...
The weighted MAX k-CUT problem consists of finding a k-partition of a given weighted undirected grap...
A quantum approximate optimization algorithm (QAOA) is a polynomial-time approximate optimization al...
Approximate combinatorial optimisation has emerged as one of the most promising application areas fo...
Max-Cut (or, equivalently, Quadratic Unconstrained Binary Optimization (QUBO)) is one of the most r...
We compare the performance of a quantum local algorithm to a similar classical counterpart on a well...
Today’s quantum computers are limited in their capabilities, e.g., the size of executable quantum ci...
Maximum cut (Max-Cut) problem is one of the most important combinatorial optimization problems becau...
The maximum clique in an undirected graph is the largest subset of a set of graph's vertices where ...
Farhi et al. recently proposed a class of quantum algorithms, the Quantum Approximate Optimization A...
Finding high-quality parameters is a central obstacle to using the quantum approximate optimization ...
Quantum computers are devices, which allow more efficient solutions of problems as compared to their...
Given an undirected, unweighted graph with n vertices and m edges, the maximum cut problem is to fin...
Quantum computers are devices which allow the solution of problems unsolvable to their classical cou...
Abstract We compare the performance of the Quantum Approximate Optimization Algorithm (QAOA) with st...
The Quantum Approximate Optimization Algorithm (QAOA) is one of the promising near-term algorithms d...
The weighted MAX k-CUT problem consists of finding a k-partition of a given weighted undirected grap...
A quantum approximate optimization algorithm (QAOA) is a polynomial-time approximate optimization al...
Approximate combinatorial optimisation has emerged as one of the most promising application areas fo...
Max-Cut (or, equivalently, Quadratic Unconstrained Binary Optimization (QUBO)) is one of the most r...
We compare the performance of a quantum local algorithm to a similar classical counterpart on a well...
Today’s quantum computers are limited in their capabilities, e.g., the size of executable quantum ci...
Maximum cut (Max-Cut) problem is one of the most important combinatorial optimization problems becau...
The maximum clique in an undirected graph is the largest subset of a set of graph's vertices where ...
Farhi et al. recently proposed a class of quantum algorithms, the Quantum Approximate Optimization A...
Finding high-quality parameters is a central obstacle to using the quantum approximate optimization ...