As the connection between classical and quantum worlds, quantum measurements play a unique role in the era of quantum information processing. Given an arbitrary function of quantum measurements, how to obtain its optimal value is often considered as a basic yet important problem in various applications. Typical examples include but are not limited to optimizing the likelihood functions in quantum measurement tomography, searching the Bell parameters in Bell-test experiments, and calculating the capacities of quantum channels. In this work, we propose reliable algorithms for optimizing arbitrary functions over the space of quantum measurements by combining the so-called Gilbert’s algorithm for convex optimization with certain gradient algori...
With nowadays steadily growing quantum processors, it is required to develop new quantum tomography ...
Variational quantum algorithms (VQAs) offer some promising characteristics for carrying out optimiza...
In this paper we describe how to use convex optimization to design quantum algorithms for certain co...
As the connection between classical and quantum worlds, quantum measurements play a unique role in t...
This talk will introduce numerical and analytical techniques of convex optimization. While these tec...
In this dissertation we consider quantum algorithms for convex optimization. We start by considering...
We consider a problem in quantum theory that can be formulated as an optimisation problem and presen...
© 2020, The Author(s). A fundamental model of quantum computation is the programmable quantum gate a...
The theories of optimization and machine learning answer foundational questions in computer science ...
Quantum Computing leverages the quantum properties of subatomic matter to enable computations faster...
We study to what extent quantum algorithms can speed up solving convex optimization problems. Follow...
This thesis is concerned with convex optimization problems in quantum information theory. It feature...
Using the convex structure of positive operator value measurements and several quantities used in qu...
In 2005, Jordan showed how to estimate the gradient of a real-valued function with a high-dimensiona...
The problem addressed is to design a detector which is maximally sensitive to specific quantum state...
With nowadays steadily growing quantum processors, it is required to develop new quantum tomography ...
Variational quantum algorithms (VQAs) offer some promising characteristics for carrying out optimiza...
In this paper we describe how to use convex optimization to design quantum algorithms for certain co...
As the connection between classical and quantum worlds, quantum measurements play a unique role in t...
This talk will introduce numerical and analytical techniques of convex optimization. While these tec...
In this dissertation we consider quantum algorithms for convex optimization. We start by considering...
We consider a problem in quantum theory that can be formulated as an optimisation problem and presen...
© 2020, The Author(s). A fundamental model of quantum computation is the programmable quantum gate a...
The theories of optimization and machine learning answer foundational questions in computer science ...
Quantum Computing leverages the quantum properties of subatomic matter to enable computations faster...
We study to what extent quantum algorithms can speed up solving convex optimization problems. Follow...
This thesis is concerned with convex optimization problems in quantum information theory. It feature...
Using the convex structure of positive operator value measurements and several quantities used in qu...
In 2005, Jordan showed how to estimate the gradient of a real-valued function with a high-dimensiona...
The problem addressed is to design a detector which is maximally sensitive to specific quantum state...
With nowadays steadily growing quantum processors, it is required to develop new quantum tomography ...
Variational quantum algorithms (VQAs) offer some promising characteristics for carrying out optimiza...
In this paper we describe how to use convex optimization to design quantum algorithms for certain co...