In this proceedings we present quantum machine learning optimization experiments using stochastic gradient descent with the parameter shift rule algorithm. We first describe the gradient evaluation algorithm and its optimization procedure implemented using the Qibo framework. After numerically testing the implementation using quantum simulation on classical hardware, we perform successfully a full quantum hardware optimization exercise using a single superconducting qubit chip controlled by Qibo. We show results for a quantum regression model by comparing simulation to real hardware optimization.In this proceedings we present quantum machine learning optimization experiments using stochastic gradient descent with the parameter shift rule al...
The quantum approximate optimization algorithm (QAOA) transforms a simple many-qubit wave function i...
This thesis studies strengths and weaknesses of quantum computers. In the first part we present thre...
Quantum computing represents a promising paradigm for solving complex problems, such as large-number...
Quantum Computing leverages the quantum properties of subatomic matter to enable computations faster...
Can quantum computers be used for implementing machine learning models that are better than traditio...
Abstract A major challenge in machine learning is the computational expense of training these models...
Quantum control is valuable for various quantum technologies such as high-fidelity gates for univers...
Optimization is one of the research areas where quantum computing could bring significant benefits. ...
In 2005, Jordan showed how to estimate the gradient of a real-valued function with a high-dimensiona...
Optimization problems are ubiquitous in but not limited to the sciences, engineering, and applied ma...
This thesis explores the application of quantum computing techniques to solve Quadratic Unconstraine...
Quantum computing is a computational paradigm with the potential to outperform classical methods for...
In the last decade, public and industrial research funding has moved quantum computing from the earl...
Quantum machine learning has proven to be a fruitful area in which to search for potential applicati...
A quantum approximate optimization algorithm (QAOA) is a polynomial-time approximate optimization al...
The quantum approximate optimization algorithm (QAOA) transforms a simple many-qubit wave function i...
This thesis studies strengths and weaknesses of quantum computers. In the first part we present thre...
Quantum computing represents a promising paradigm for solving complex problems, such as large-number...
Quantum Computing leverages the quantum properties of subatomic matter to enable computations faster...
Can quantum computers be used for implementing machine learning models that are better than traditio...
Abstract A major challenge in machine learning is the computational expense of training these models...
Quantum control is valuable for various quantum technologies such as high-fidelity gates for univers...
Optimization is one of the research areas where quantum computing could bring significant benefits. ...
In 2005, Jordan showed how to estimate the gradient of a real-valued function with a high-dimensiona...
Optimization problems are ubiquitous in but not limited to the sciences, engineering, and applied ma...
This thesis explores the application of quantum computing techniques to solve Quadratic Unconstraine...
Quantum computing is a computational paradigm with the potential to outperform classical methods for...
In the last decade, public and industrial research funding has moved quantum computing from the earl...
Quantum machine learning has proven to be a fruitful area in which to search for potential applicati...
A quantum approximate optimization algorithm (QAOA) is a polynomial-time approximate optimization al...
The quantum approximate optimization algorithm (QAOA) transforms a simple many-qubit wave function i...
This thesis studies strengths and weaknesses of quantum computers. In the first part we present thre...
Quantum computing represents a promising paradigm for solving complex problems, such as large-number...