We describe a resource-efficient approach to studying many-body quantum states on noisy, intermediate-scale quantum devices. We employ a sequential generation model that allows us to bound the range of correlations in the resulting many-body quantum states. From this, we characterize situations where the estimation of local observables does not require the preparation of the entire state. Instead smaller patches of the state can be generated from which the observables can be estimated. This can potentially reduce circuit size and number of qubits for the computation of physical properties of the states. Moreover, we show that the effect of noise decreases along the computation. Our results apply to a broad class of widely studied tensor net...
We study the approximate state preparation problem on noisy intermediate-scale quantum (NISQ) comput...
In recent years, due to unprecedented success in controlling and manipulating an individual quantum ...
Recent research has demonstrated the usefulness of neural networks as variational ansatz functions f...
We simulate the effects of different types of noise in state preparation circuits of variational qua...
This thesis consists of two parts. The main part is concerned with new schemes for measurement-based...
Quantum computers exist today that are capable of performing calculations that challenge the largest...
Many-body quantum systems are notoriously hard to study theoretically due to the exponential growth...
Many-body quantum systems are notoriously hard to study theoretically due to the exponential growth ...
Abstract Variational algorithms are a promising paradigm for utilizing near-term quantum devices for...
9 pags., 6 figs.Current noise levels in physical realizations of qubits and quantum operations limit...
Near-term quantum computers are noisy, and therefore must run algorithms with a low circuit depth an...
Variational quantum algorithms (VQA) are considered as some of the most promising methods to determi...
In this work, we first analyse a theoretical technique based on entropic inequalities, which in prin...
The exact description of many-body quantum systems represents one of the major challenges in modern ...
The inherent noise and complexity of quantum communication networks leads to challenges in designing...
We study the approximate state preparation problem on noisy intermediate-scale quantum (NISQ) comput...
In recent years, due to unprecedented success in controlling and manipulating an individual quantum ...
Recent research has demonstrated the usefulness of neural networks as variational ansatz functions f...
We simulate the effects of different types of noise in state preparation circuits of variational qua...
This thesis consists of two parts. The main part is concerned with new schemes for measurement-based...
Quantum computers exist today that are capable of performing calculations that challenge the largest...
Many-body quantum systems are notoriously hard to study theoretically due to the exponential growth...
Many-body quantum systems are notoriously hard to study theoretically due to the exponential growth ...
Abstract Variational algorithms are a promising paradigm for utilizing near-term quantum devices for...
9 pags., 6 figs.Current noise levels in physical realizations of qubits and quantum operations limit...
Near-term quantum computers are noisy, and therefore must run algorithms with a low circuit depth an...
Variational quantum algorithms (VQA) are considered as some of the most promising methods to determi...
In this work, we first analyse a theoretical technique based on entropic inequalities, which in prin...
The exact description of many-body quantum systems represents one of the major challenges in modern ...
The inherent noise and complexity of quantum communication networks leads to challenges in designing...
We study the approximate state preparation problem on noisy intermediate-scale quantum (NISQ) comput...
In recent years, due to unprecedented success in controlling and manipulating an individual quantum ...
Recent research has demonstrated the usefulness of neural networks as variational ansatz functions f...