Quantum-centric supercomputing for materials science: A perspective on challenges and future directions
Computational models are an essential tool for the design, characterization, and discovery
of novel materials. Computationally hard tasks in materials science stretch the limits of …
of novel materials. Computationally hard tasks in materials science stretch the limits of …
[PDF][PDF] Early fault-tolerant quantum computing
In recent years, research in quantum computing has largely focused on two approaches:
near-term intermediate-scale quantum (NISQ) computing and future fault-tolerant quantum …
near-term intermediate-scale quantum (NISQ) computing and future fault-tolerant quantum …
Quantum-enhanced greedy combinatorial optimization solver
Combinatorial optimization is a broadly attractive area for potential quantum advantage, but
no quantum algorithm has yet made the leap. Noise in quantum hardware remains a …
no quantum algorithm has yet made the leap. Noise in quantum hardware remains a …
Constrained optimization via quantum zeno dynamics
Constrained optimization problems are ubiquitous in science and industry. Quantum
algorithms have shown promise in solving optimization problems, yet none of the current …
algorithms have shown promise in solving optimization problems, yet none of the current …
Performance analysis of multi-angle QAOA for
In this paper we consider the scalability of multi-angle QAOA with respect to the number of
QAOA layers. We found that MA-QAOA is able to significantly reduce the depth of QAOA …
QAOA layers. We found that MA-QAOA is able to significantly reduce the depth of QAOA …
Alignment between initial state and mixer improves QAOA performance for constrained optimization
Quantum alternating operator ansatz (QAOA) has a strong connection to the adiabatic
algorithm, which it can approximate with sufficient depth. However, it is unclear to what …
algorithm, which it can approximate with sufficient depth. However, it is unclear to what …
A model of randomly-coupled Pauli spins
A bstract We construct a model of Pauli spin operators with all-to-all 4-local interactions by
replacing Majorana fermions in the SYK model with spin operators. Equivalently, we replace …
replacing Majorana fermions in the SYK model with spin operators. Equivalently, we replace …
Expressive variational quantum circuits provide inherent privacy in federated learning
Federated learning has emerged as a viable distributed solution to train machine learning
models without the actual need to share data with the central aggregator. However, standard …
models without the actual need to share data with the central aggregator. However, standard …
Fast simulation of high-depth QAOA circuits
Until high-fidelity quantum computers with a large number of qubits become widely
available, classical simulation remains a vital tool for algorithm design, tuning, and …
available, classical simulation remains a vital tool for algorithm design, tuning, and …
Utilizing modern computer architectures to solve mathematical optimization problems: A survey
Numerical algorithms to solve mathematical optimization problems efficiently are essential to
applications in many areas of engineering and computational science. To solve optimization …
applications in many areas of engineering and computational science. To solve optimization …