In 2005, Jordan showed how to estimate the gradient of a real-valued function with a high-dimensional domain on a quantum computer. Subsequently, in 2017, it was shown by Gilyén et al. how to do this with a different input model. They also proved optimality of their algorithm for \ell^\infty -approximations of functions satisfying some smoothness conditions.In this text, we expand the ideas of Gilyén et al., and extend their algorithm such that functions with fewer regularity constraints can be used as input. Moreover, we show that their algorithm is essentially optimal in the query complexity to the phase oracle even for classes of functions that have more stringent smoothness conditions. Finally, we also prove that their algorithm is opti...
We propose a method for quantum algorithm design assisted by machine learning. The method uses a qua...
In this dissertation we consider quantum algorithms for convex optimization. We start by considering...
Quantum machine learning (QML) has been identified as one of the key fields that could reap advantag...
This thesis studies strengths and weaknesses of quantum computers. In the first part we present thre...
We present a full implementation and simulation of a novel quantum reinforcement learning (RL) metho...
Understanding the power and limitations of quantum access to data in machine learning tasks is primo...
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 ...
We initiate the study of quantum algorithms for escaping from saddle points with provable guarantee....
Reinforcement learning is a growing field in AI with a lot of potential. Intelligent behavior is lea...
We consider a generic framework of optimization algorithms based on gradient descent. We develop a q...
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 ...
Quantum control is valuable for various quantum technologies such as high-fidelity gates for univers...
Quantum annealing algorithms belong to the class of metaheuristic tools, applicable for solving bina...
We propose a method for quantum algorithm design assisted by machine learning. The method uses a qua...
In this dissertation we consider quantum algorithms for convex optimization. We start by considering...
Quantum machine learning (QML) has been identified as one of the key fields that could reap advantag...
This thesis studies strengths and weaknesses of quantum computers. In the first part we present thre...
We present a full implementation and simulation of a novel quantum reinforcement learning (RL) metho...
Understanding the power and limitations of quantum access to data in machine learning tasks is primo...
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 ...
We initiate the study of quantum algorithms for escaping from saddle points with provable guarantee....
Reinforcement learning is a growing field in AI with a lot of potential. Intelligent behavior is lea...
We consider a generic framework of optimization algorithms based on gradient descent. We develop a q...
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 ...
Quantum control is valuable for various quantum technologies such as high-fidelity gates for univers...
Quantum annealing algorithms belong to the class of metaheuristic tools, applicable for solving bina...
We propose a method for quantum algorithm design assisted by machine learning. The method uses a qua...
In this dissertation we consider quantum algorithms for convex optimization. We start by considering...
Quantum machine learning (QML) has been identified as one of the key fields that could reap advantag...