The Convergence of Distributed Computing and Quantum Computing: A Paradigm Shift in Computational Power

Prudhvi Naayini1*, Chiranjeevi Bura1, Anil Kumar Jonnalagadda2

Abstract

The rapid evolution of computational technologies has led to the emergence of quantum computing as a powerful supplement to traditional distributed computing. The increasing complexity of machine learning workloads is pushing the limits of classical computing. This paper explores the synergistic potential of combining distributed and quantum computing to overcome these limitations and unlock new frontiers in artificial intelligence. We investigate how quantum algorithms can enhance the training of complex machine learning models within a distributed framework, enabling more accurate and efficient learning through quantum-accelerated data analysis. While challenges remain in hybrid quantum-classical integration and quantum hardware limitations, this convergence offers a promising path toward realizing the full potential of quantum machine learning. This paper highlights the path toward unprecedented computational power in AI.

Keywords

distributed computing; quantum computing; machine learning; quantum optimization.

Cite This Article

Naayini, P., Bura, C., Jonnalagadda, A. K. (2025). The Convergence of Distributed Computing and Quantum Computing: A Paradigm Shift in Computational Power. International Journal of Scientific Advances (IJSCIA), Volume 6| Issue 2: Mar-Apr 2025, Pages 265-275 URL: https://www.ijscia.com/wp-content/uploads/2025/03/Volume6-Issue2-Mar-Apr-No.852-265-275.pdf

Volume 6 | Issue 2: Mar – Apr 2025