Litcius/Paper detail

PyQUBO: Python Library for Mapping Combinatorial Optimization Problems to QUBO Form

Mashiyat Zaman, Kôtarô Tanahashi, Shu Tanaka

2021IEEE Transactions on Computers101 citationsDOI

Abstract

We present PyQUBO, an open-source Python library for constructing quadratic unconstrained binary optimizations (QUBOs) from the objective functions and the constraints of optimization problems. PyQUBO enables users to prepare QUBOs or Ising models for various combinatorial optimization problems with ease thanks to the abstraction of expressions and the extensibility of the program. QUBOs and Ising models formulated using PyQUBO are solvable by Ising machines, including quantum annealing machines. We introduce the features of PyQUBO with applications in the number partitioning problem, knapsack problem, graph coloring problem, and integer factorization using a binary multiplier. Moreover, we demonstrate how PyQUBO can be applied to production-scale problems through integration with quantum annealing machines. Through its flexibility and ease of use, PyQUBO has the potential to make quantum annealing a more practical tool among researchers.

Topics & Concepts

Quantum annealingQuadratic unconstrained binary optimizationComputer scienceIsing modelKnapsack problemSimulated annealingCombinatorial optimizationPython (programming language)Optimization problemTheoretical computer scienceQuantumQuantum computerAlgorithmStatistical physicsOperating systemQuantum mechanicsPhysicsQuantum Computing Algorithms and ArchitectureComputability, Logic, AI AlgorithmsComplexity and Algorithms in Graphs