Home Mathematics 8 Decentralized quantum machine learning: distributed quantum computing for enhanced learning
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8 Decentralized quantum machine learning: distributed quantum computing for enhanced learning

  • Malik Muzamil Ishaq , Inam Ul Haq and Aya Gamal
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Quantum Machine Learning
This chapter is in the book Quantum Machine Learning

Abstract

Decentralized quantum machine learning (DQML) represents an innovative fusion of two cutting-edge technologies: quantum computing and decentralized/distributed systems. This chapter explores the emerging field of DQML and its potential to revolutionize traditional machine-learning paradigms by harnessing the power of quantum computing while leveraging the benefits of decentralized networks. This chapter delves into the underlying principles, challenges, and opportunities associated with DQML, offering insights into how this interdisciplinary approach can accelerate advancements in artificial intelligence and data processing. Moreover, this chapter discusses various use cases where DQML demonstrates its superiority over classical machine learning approaches including privacy-preserving data analysis, federated learning, and distributed optimization. Finally, this chapter discusses the future research directions and key considerations for the successful integration and deployment of DQML in real-world applications.

Abstract

Decentralized quantum machine learning (DQML) represents an innovative fusion of two cutting-edge technologies: quantum computing and decentralized/distributed systems. This chapter explores the emerging field of DQML and its potential to revolutionize traditional machine-learning paradigms by harnessing the power of quantum computing while leveraging the benefits of decentralized networks. This chapter delves into the underlying principles, challenges, and opportunities associated with DQML, offering insights into how this interdisciplinary approach can accelerate advancements in artificial intelligence and data processing. Moreover, this chapter discusses various use cases where DQML demonstrates its superiority over classical machine learning approaches including privacy-preserving data analysis, federated learning, and distributed optimization. Finally, this chapter discusses the future research directions and key considerations for the successful integration and deployment of DQML in real-world applications.

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