In this work we present the Scaled QUantum IDentifier (SQUID), an open-source framework for exploring hybrid Quantum-Classical algorithms for classification problems. The classical infrastructure is based on PyTorch and we provide a standardized design to implement a variety of quantum models with the capability of back-propagation for efficient training. We present the structure of our framework and provide examples of using SQUID in a standard binary classification problem from the popular MNIST dataset. In particular, we highlight the implications for scalability for gradient-based optimization of quantum models on the choice of output for variational quantum models.Comment: 13 pages, 8 figures, accepted versio
We demonstrate the implementation of a novel machine learning framework for probability density esti...
Predictor importance is a crucial part of data preprocessing pipelines in classical and quantum mach...
Quantum machine learning with variational quantum algorithms (VQA) has been actively investigated as...
As more practical and scalable quantum computers emerge, much attention has been focused on realizin...
The hybrid quantum-classical learning scheme provides a prominent way to achieve quantum advantages ...
Machine learning algorithms based on parametrized quantum circuits are a prime candidate for near-te...
Quantum machine learning has proven to be a fruitful area in which to search for potential applicati...
We have developed two quantum classifier models for the ttH classification problem, both of which fa...
Quantum machine learning has emerged as a potential practical application of near-term quantum devic...
Quantum classifiers are trainable quantum circuits used as machine learning models. The first part o...
Significant challenges remain with the development of macroscopic quantum computing, hardware proble...
In the current era, quantum resources are extremely limited, and this makes difficult the usage of q...
In this dissertation, we study the intersection of quantum computing and supervised machine learning...
Quantum machine learning techniques have been proposed as a way to potentially enhance performance i...
Quantum Support Vector Machines (QSVM) have become an important tool in research and applications of...
We demonstrate the implementation of a novel machine learning framework for probability density esti...
Predictor importance is a crucial part of data preprocessing pipelines in classical and quantum mach...
Quantum machine learning with variational quantum algorithms (VQA) has been actively investigated as...
As more practical and scalable quantum computers emerge, much attention has been focused on realizin...
The hybrid quantum-classical learning scheme provides a prominent way to achieve quantum advantages ...
Machine learning algorithms based on parametrized quantum circuits are a prime candidate for near-te...
Quantum machine learning has proven to be a fruitful area in which to search for potential applicati...
We have developed two quantum classifier models for the ttH classification problem, both of which fa...
Quantum machine learning has emerged as a potential practical application of near-term quantum devic...
Quantum classifiers are trainable quantum circuits used as machine learning models. The first part o...
Significant challenges remain with the development of macroscopic quantum computing, hardware proble...
In the current era, quantum resources are extremely limited, and this makes difficult the usage of q...
In this dissertation, we study the intersection of quantum computing and supervised machine learning...
Quantum machine learning techniques have been proposed as a way to potentially enhance performance i...
Quantum Support Vector Machines (QSVM) have become an important tool in research and applications of...
We demonstrate the implementation of a novel machine learning framework for probability density esti...
Predictor importance is a crucial part of data preprocessing pipelines in classical and quantum mach...
Quantum machine learning with variational quantum algorithms (VQA) has been actively investigated as...