Exploring the scaling limitations of the variational quantum eigensolver with the bond dissociation of hydride diatomic molecules
Jacob M. Clary, Eric B. Jones, Derek Vigil-Fowler, Christopher Chang,, Peter Graf

TL;DR
This study assesses the limitations of the variational quantum eigensolver (VQE) in modeling complex molecules with d-orbitals, highlighting current hardware constraints and the need for technological advancements.
Contribution
The paper demonstrates the computational challenges of applying VQE+UCCSD to molecules with d-orbitals, providing a benchmark for future quantum hardware development.
Findings
VQE+UCCSD accurately models TiH's electronic structure
Modeling TiH requires error rates likely unachievable with current hardware
Including d-orbitals significantly increases computational cost
Abstract
Materials simulations involving strongly correlated electrons pose fundamental challenges to state-of-the-art electronic structure methods but are hypothesized to be the ideal use case for quantum computing. To date, no quantum computer has simulated a molecule of a size and complexity relevant to real-world applications, despite the fact that the variational quantum eigensolver (VQE) algorithm can predict chemically accurate total energies. Nevertheless, because of the many applications of moderately-sized, strongly correlated systems, such as molecular catalysts, the successful use of the VQE stands as an important waypoint in the advancement toward useful chemical modeling on near-term quantum processors. In this paper, we take a significant step in this direction. We lay out the steps, write, and run parallel code for an (emulated) quantum computer to compute the bond dissociation…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum-Dot Cellular Automata · Semiconductor materials and devices
