AQMLator -- An Auto Quantum Machine Learning E-Platform
Tomasz Rybotycki, Piotr Gawron

TL;DR
AQMLator is an automated platform that simplifies the integration of quantum computing into machine learning models, enabling data scientists to easily develop quantum-enhanced ML solutions with minimal manual effort.
Contribution
It introduces AQMLator, a novel auto-ML platform that automates the design and training of quantum layers in ML models, bridging the gap between classical ML and quantum computing.
Findings
Automates quantum layer proposal and training in ML models
Integrates with standard ML libraries for ease of use
Reduces entry barriers for quantum machine learning
Abstract
A successful Machine Learning (ML) model implementation requires three main components: training dataset, suitable model architecture and training procedure. Given dataset and task, finding an appropriate model might be challenging. AutoML, a branch of ML, focuses on automatic architecture search -- a meta method that aims at moving human from ML system design process. The success of ML and the development of quantum computing (QC) in recent years led to a birth of new fascinating field called Quantum Machine Learning (QML) that, amongst others, incorporates quantum computers into ML models. In this paper we present AQMLator, an Auto Quantum Machine Learning platform that aims to automatically propose and train the quantum layers of an ML model with minimal input from the user. This way, data scientists can bypass the entry barrier for QC and use QML. AQMLator uses standard ML…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Cloud Computing and Resource Management
