Litcius/Paper detail

Expanding Data Encoding Patterns For Quantum Algorithms

Manuela Weigold, Johanna Barzen, Frank Leymann, Marie Salm

202163 citationsDOI

Abstract

As quantum computers are based on the laws of quantum mechanics, they are capable of solving certain problems faster than their classical counterparts. However, often algorithms which a theoretical speed-up assume that data can be loaded efficiently. In general, the runtime complexity of the loading routine depends on (i) the data encoding that defines how the data is represented and (ii) the data itself. In some cases, loading the data requires at least exponential time which destroys a potential speed-up. And especially for the first generation of devices that are currently available, the resources (qubits and operations) needed to encode the data are limited. Therefore, understanding the consequences of a particular data encoding is crucial. To capture knowledge about different encodings, we present two data encoding patterns that extend our previous collection of encoding patterns [1].

Topics & Concepts

Encoding (memory)ENCODEComputer scienceAlgorithmQubitQuantumTheoretical computer scienceQuantum computerArtificial intelligencePhysicsQuantum mechanicsBiochemistryGeneChemistryQuantum Computing Algorithms and ArchitectureParallel Computing and Optimization TechniquesComputability, Logic, AI Algorithms