Hybrid Quantum-Classical Machine Learning Models: Powering the Future of AI

Hybrid Quantum-Classical Machine Learning Models: Powering the Future of AI

Authors

  • Mohan Raja Pulicharla Department of Computer Sciences, Monad University, India

DOI:

https://doi.org/10.55662/JST.2023.4102

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Keywords:

Machine Learning, Quantum Computing, Classical Algorithms, Hybrid Models, Quantum Machine Learning, Quantum Support Vector Machines, Quantum Neural Networks, Optimization, Large-Scale Problems, Artificial Intelligence

Abstract

The burgeoning field of machine learning has transformed numerous sectors, revolutionizing everything from image recognition to financial forecasting. However, classical machine learning algorithms often encounter limitations when dealing with complex, high-dimensional problems. This is where the nascent field of quantum machine learning (QML) emerges, offering a paradigm shift with its unique computational capabilities. By harnessing the principles of quantum mechanics, QML promises to solve problems intractable for classical methods, like simulating complex molecules or optimizing financial portfolios. However, current quantum hardware limitations necessitate a hybrid approach: Hybrid Quantum-Classical Machine Learning Models (HQCLML).

The convergence of quantum computing and classical machine learning has sparked significant interest in the development of hybrid quantum-classical machine learning models. This research explores the synergy between quantum and classical paradigms, aiming to leverage the strengths of both to enhance the capabilities of machine learning algorithms. The paper provides an in-depth overview of quantum computing principles, classical machine learning models, and the foundational concepts that form the basis for hybrid models. Various approaches to integrating quantum computing into machine learning are discussed, emphasizing the potential advantages in solving complex problems, particularly those involving large-scale optimization or exponential search spaces.

The study delves into quantum machine learning algorithms, showcasing examples such as Quantum Support Vector Machines and Quantum Neural Networks. Case studies and applications of hybrid models are presented to illustrate instances where quantum enhancements outperform classical counterparts. While highlighting the promising achievements, the paper also addresses the current challenges and limitations associated with hybrid models, including practical considerations, error rates, and the impact of decoherence in quantum computing.

As quantum hardware technologies continue to advance, the paper explores the current landscape of quantum processors and their implications for hybrid models. The discussion extends to future directions, offering predictions for the development of hybrid quantum-classical machine learning models. Emerging technologies and potential breakthroughs are considered, presenting a forward-looking perspective on the evolving landscape of artificial intelligence research.

In conclusion, the research underscores the significance of hybrid quantum-classical machine learning models as a transformative avenue for addressing complex computational problems. The synergy between quantum and classical approaches holds immense potential for advancing the field of machine learning, opening new horizons for solving problems that were once deemed computationally intractable.

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References

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Published

12-01-2023 — Updated on 13-01-2023
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DOI: 10.55662/JST.2023.4102
Published: 13-01-2023

How to Cite

Pulicharla, M. R. “Hybrid Quantum-Classical Machine Learning Models: Powering the Future of AI”. Journal of Science & Technology, vol. 4, no. 1, Jan. 2023, pp. 40-65, doi:10.55662/JST.2023.4102.
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