Eigenstate Preparation on Quantum Computers
Joey Bonitati

TL;DR
This thesis explores quantum algorithms for eigenstate preparation, focusing on adiabatic evolution, the Rodeo Algorithm, and a novel Variational Rodeo Algorithm, demonstrating their implementation and effectiveness on near-term quantum hardware.
Contribution
It introduces the Variational Rodeo Algorithm, enhancing eigenstate preparation scalability by combining optimal control and variational techniques.
Findings
Successful implementation of adiabatic evolution on IBM quantum hardware.
Demonstrated the effectiveness of the Rodeo Algorithm in eigenstate filtering.
Proposed the Variational Rodeo Algorithm to improve success probability and scalability.
Abstract
This thesis investigates quantum algorithms for eigenstate preparation, with a focus on solving eigenvalue problems such as the Schrodinger equation by utilizing near-term quantum computing devices. These problems are ubiquitous in several scientific fields, but more accurate solutions are specifically needed as a prerequisite for many quantum simulation tasks. To address this, we establish three methods in detail: quantum adiabatic evolution with optimal control, the Rodeo Algorithm, and the Variational Rodeo Algorithm. The first method explored is adiabatic evolution, a technique that prepares quantum states by simulating a quantum system that evolves slowly over time. The adiabatic theorem can be used to ensure that the system remains in an eigenstate throughout the process, but its implementation can often be infeasible on current quantum computing hardware. We employ a unique…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture
