Global Multidisciplinary Journal

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Cloud Deployed Ensemble Deep Learning Architectures for Predictive Modeling of Cryptocurrency Market Dynamics

4 Department of Computer Science, University of Zurich, Switzerland

Abstract

Cryptocurrency markets have emerged as one of the most complex, volatile, and information intensive financial ecosystems of the digital economy. Unlike traditional equity or commodity markets, crypto assets are characterized by twenty four hour global trading, extreme price sensitivity to socio technical signals, fragmented liquidity, and algorithmic dominance in trading execution. These features collectively create a nonlinear, high dimensional, and dynamically evolving data environment that challenges classical econometric and statistical forecasting models. The rise of deep learning and ensemble based artificial intelligence has therefore been accompanied by growing academic and industrial interest in their application to cryptocurrency trend prediction, particularly when deployed on scalable cloud infrastructures that can process continuous data streams in real time.

Methodologically, the paper presents a text based but highly detailed design of a cloud deployed ensemble deep learning system for crypto trend modeling. It elaborates on data acquisition, feature engineering, model heterogeneity, ensemble fusion strategies, and cloud orchestration mechanisms, while critically discussing their limitations and trade offs. The results section provides a rich interpretive account of how ensemble deep learning improves robustness, reduces variance, and adapts to regime shifts in cryptocurrency markets, grounding these claims in the existing literature. The discussion extends these findings through theoretical synthesis, critical debate, and exploration of future research directions, including uncertainty quantification, meta learning, and decentralized deployment paradigms.

By offering a deeply elaborated, literature grounded, and theoretically integrated account of cloud deployed ensemble deep learning for cryptocurrency trend prediction, this article contributes to both academic scholarship and applied financial technology. It demonstrates that the convergence of ensemble intelligence and cloud computing represents not merely a technical upgrade, but a paradigmatic shift in how volatile, data intensive financial systems can be modeled, understood, and forecasted in the digital age.

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How to Cite

Dr. Michael R. Hoffman. (2026). Cloud Deployed Ensemble Deep Learning Architectures for Predictive Modeling of Cryptocurrency Market Dynamics. Global Multidisciplinary Journal, 5(01), 92-102. https://www.grpublishing.org/journals/index.php/gmj/article/view/318

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