In this dissertation we consider quantum algorithms for convex optimization. We start by considering a black-box setting of convex optimization. In this setting we show that quantum computers require exponentially fewer queries to a membership oracle for a convex set in order to implement a separation oracle for that set. We do so by proving that Jordan's quantum gradient algorithm can also be applied to find sub-gradients of convex Lipschitz functions, even though these functions might not even be differentiable. As a corollary we get a quadraticly faster algorithm for convex optimization using membership queries. As a second set of results we give sub-linear time quantum algorithms for semidefinite optimization by speeding up the iteratio...
© 2020, The Author(s). A fundamental model of quantum computation is the programmable quantum gate a...
Optimization is a fundamental area in mathematics and computer science, with many real-world applica...
Optimization problems are ubiquitous in but not limited to the sciences, engineering, and applied ma...
We study to what extent quantum algorithms can speed up solving convex optimization problems. Follow...
We study to what extent quantum algorithms can speed up solving convex optimization problems. Follow...
We study to what extent quantum algorithms can speed up solving convex optimization problems. Follow...
We study to what extent quantum algorithms can speed up solving convex optimization problems. Follow...
We study to what extent quantum algorithms can speed up solving convex optimization problems. Follow...
Quantum Computing leverages the quantum properties of subatomic matter to enable computations faster...
The theories of optimization and machine learning answer foundational questions in computer science ...
In this paper we describe how to use convex optimization to design quantum algorithms for certain co...
In this dissertation we study how efficiently quantum computers can solve various problems, and how ...
The theories of optimization and machine learning answer foundational questions in computer science ...
© 2020, The Author(s). A fundamental model of quantum computation is the programmable quantum gate a...
Solving systems of linear equations is one of the most important primitives in quantum computing tha...
© 2020, The Author(s). A fundamental model of quantum computation is the programmable quantum gate a...
Optimization is a fundamental area in mathematics and computer science, with many real-world applica...
Optimization problems are ubiquitous in but not limited to the sciences, engineering, and applied ma...
We study to what extent quantum algorithms can speed up solving convex optimization problems. Follow...
We study to what extent quantum algorithms can speed up solving convex optimization problems. Follow...
We study to what extent quantum algorithms can speed up solving convex optimization problems. Follow...
We study to what extent quantum algorithms can speed up solving convex optimization problems. Follow...
We study to what extent quantum algorithms can speed up solving convex optimization problems. Follow...
Quantum Computing leverages the quantum properties of subatomic matter to enable computations faster...
The theories of optimization and machine learning answer foundational questions in computer science ...
In this paper we describe how to use convex optimization to design quantum algorithms for certain co...
In this dissertation we study how efficiently quantum computers can solve various problems, and how ...
The theories of optimization and machine learning answer foundational questions in computer science ...
© 2020, The Author(s). A fundamental model of quantum computation is the programmable quantum gate a...
Solving systems of linear equations is one of the most important primitives in quantum computing tha...
© 2020, The Author(s). A fundamental model of quantum computation is the programmable quantum gate a...
Optimization is a fundamental area in mathematics and computer science, with many real-world applica...
Optimization problems are ubiquitous in but not limited to the sciences, engineering, and applied ma...