Transforming Data Engineering with Quantum Computing: A New Frontier for AI Models
DOI:
https://doi.org/10.70153/IJCMI/2024.16303Keywords:
Quantum Computing, Data Engineering, Artificial Intelligence, AI Models, Quantum Algorithms, Quantum AI, Quantum-enhanced ModelsAbstract
The convergence of quantum computing and artificial intelligence (AI) represents a transformative opportunity to advance data engineering processes. Traditional data engineering models face significant challenges in handling the increasing complexity and volume of data required for modern AI applications. Quantum computing, with its ability to process vast amounts of data simultaneously, offers a promising solution to these challenges. This paper explores how quantum computing can revolutionize data engineering by providing unprecedented computational power and efficiency. We present an overview of the core principles of quantum computing and examine its potential applications in AI models, focusing specifically on optimization, data processing, and machine learning. The integration of quantum algorithms into existing data engineering workflows is discussed, highlighting their impact on improving the efficiency, speed, and scalability of AI systems. Through an experimental case study, the performance of quantum-enhanced AI models is evaluated against classical models, showcasing significant improvements in processing time and model accuracy. The paper concludes by outlining future research directions and the challenges that need to be addressed to fully leverage the potential of quantum computing in data engineering.
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