Encoding lattice structures in Quantum Computational Basis States
- URL: http://arxiv.org/abs/2406.01547v1
- Date: Mon, 3 Jun 2024 17:29:15 GMT
- Title: Encoding lattice structures in Quantum Computational Basis States
- Authors: Kalyan Dasgupta,
- Abstract summary: We discuss an encoding methodology of lattice structures in computational basis states of qubits.
We demonstrate a specific use case of lattice models in protein structure prediction.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Lattice models or structures are geometrical objects with mathematical forms, that are used to represent physical systems. They have been used widely in diverse fields, namely, in condensed matter physics, to study degrees of freedom of molecules in chemistry and in studying polymer dynamics and protein structures to name a few. In this article we discuss an encoding methodology of lattice structures in computational basis states of qubits (as used in quantum computing algorithms). We demonstrate a specific use case of lattice models in protein structure prediction. We do not propose any quantum algorithm to solve the protein structure prediction problem, instead, we propose a generic encoding methodology of lattice structures.
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