Iranian Journal of Information Processing and Management

Iranian Journal of Information Processing and Management

Harnessing Quantum Computing for Real-Time Data Analytics: A 2025 Perspective

Document Type : Original Article

Authors
1 Al-Turath University, Baghdad 10013, Iraq
2 Al-Mansour University College, Baghdad 10067, Iraq
3 Osh State University, Osh City 723500, Kyrgyzstan
4 Al-Rafidain University College Baghdad 10064, Iraq
5 Madenat Alelem University College, Baghdad 10006, Iraq
Abstract
ABSTRACT
 
Background: Quantum computing has brought in all new paradigm for computational processing providing unparallel ability for data analysis. Considering worldwide data production is expected to exceed 180 trillion zettabytes by 2025 the utilization of the conventional computing framework hampers the real-time processing of data. People consider quantum computing, which uses principles of quantum mechanics to solve problems 100 and 1,000 times faster than classical computing.
 
Objective: The article looks at quantum computing and its relevance to real time data analytics to determine its relevance, hence its impact, by the year 2025. It is worthwhile to emphasize the comparison of quantum algorithms with traditional approaches to dealing with extensive, data-centered workloads in various fields.
 
Methods: A comparison was made on quantum versus classical computing algorithms based on criteria such as, the flow rate, precision, and flexibility. Data sets provided by the finance stream, including real-time stock analysis, supply chain and logistics, genomic sequencing from the healthcare domain were used. Over 10 million simulation experiments were performed to gain trends and insights into the operational problems for quantum simulation.
 
Results: The study establishes differences in the efficiencies of these two approaches, with quantum algorithms speeding up particular tasks as much as a hundred times higher than classical algorithms and almost 15% of the error rate being decreased if quantum error correction modes were used. In scalability tests it was shown that quantum systems could process data sets larger than 10 terabytes with little slowdown, compared to a classical system, which reduced efficiency by as much as 30%. However, in present day quantum hardware, processing the capability is limited and problems arise with regards the error correction protocol.
 
Conclusion: Quantum computing, on the other hand, has an unconventional prospect of real-time data analytics to operate at high efficiency and big scale on data-bound concerns. However, much progress is required in the way of bettering coherence times and reducing exacting error rates, crucial advances for total realization of quantum potentialities by 2025
Keywords

References

Abbas, T. N. A., Hameed, R., Kadhim, A. A., and Qasim, N. H. (2024). Artificial intelligence and criminal liability: exploring the legal implications of ai-enabled crimes.  Encuentros. Revista de Ciencias Humanas, Teoría Social y Pensamiento Crítico., (22), 140-159. https://doi.org/:10.5281/zenodo.13386675
Acharya, R., Aleiner, I., Allen, R., Andersen, T. I., Ansmann, M., Arute, F., Arya, K., et al. (2023). Suppressing quantum errors by scaling a surface code logical qubit.  Nature, 614 (7949), 676-681. https://doi.org/:10.1038/s41586-022-05434-1
Alghamdi, W., Salama, R., S, H., Alzubaidi, L., Akrom, U., and Senthilkumar, R. (2023). Quantum Computing: Algorithms,Architectures, and Applications.  E3S Web of Conferences, 399. https://doi.org/:10.1051/e3sconf/202339904041
Bechtold, M., Barzen, J., Leymann, F., Mandl, A., Obst, J., Truger, F., and Weder, B. (2023). Investigating the effect of circuit cutting in QAOA for the MaxCut problem on NISQ devices.  Quantum Science and Technology, 8 (4), 045022. https://doi.org/:10.1088/2058-9565/acf59c
Bova, F., Goldfarb, A., and Melko, R. G. (2022). Quantum Economic Advantage.  Management Science, 69 (2), 1116-1126. https://doi.org/:10.1287/mnsc.2022.4578
Chabaud, U., and Walschaers, M. (2023). Resources for Bosonic Quantum Computational Advantage. Physical Review Letters, 130 (9), 090602. https://doi.org/:10.1103/PhysRevLett.130.090602
Chang, Y. J., Sie, M. F., Liao, S. W., and Chang, C. R. (2023). The Prospects of Quantum Computing for Quantitative Finance and Beyond.  IEEE Nanotechnology Magazine, 17 (2), 31-37. https://doi.org/:10.1109/MNANO.2023.3249501
El-Araby, E., Mahmud, N., Jeng, M. J., MacGillivray, A., Chaudhary, M., Nobel, M. A. I., Islam, S. I. U., et al. (2023). Towards Complete and Scalable Emulation of Quantum Algorithms on High-Performance Reconfigurable Computers.  IEEE Transactions on Computers, 72 (8), 2350-2364. https://doi.org/:10.1109/TC.2023.3248276
Jawad, A. M., Qasim, N. H., Jawad, H. M., Abu-Alshaeer, M. J., Khlaponin, Y., Jawad, M., Sieliukov, O., et al. (2022). Basics of application of unmanned aerial vehicles: Vocational Training Center.
Jayanthi. R., and Sunethra, B. (2022). Review on Quantum Computers in Machine Learning. Technoarete Transactions on Advances in Computer Applications 1, 20–24. https://doi.org/:10.36647/ttaca/01.01.a005
Lee, W. B., and Constantinides, A. G. (2023). Computational Results for a Quantum Computing Application in Real-Life Finance. IEEE International Conference on Quantum Computing and Engineering (QCE), 17-22 Sept. https://doi.org/:10.1109/QCE57702.2023.00054.
Lubinski, T., Granade, C., Anderson, A., Geller, A., Roetteler, M., Petrenko, A., and Heim, B. (2022). Advancing hybrid quantum–classical computation with real-time execution.  Frontiers in Physics, 10. https://doi.org/:10.3389/fphy.2022.940293
Maheshwari, D., Garcia-Zapirain, B., and Sierra-Sosa, D. (2022). Quantum Machine Learning Applications in the Biomedical Domain: A Systematic Review.  IEEE Access, 10, 80463-80484. https://doi.org/:10.1109/ACCESS.2022.3195044
Mujal, P., Martínez-Peña, R., Giorgi, G. L., Soriano, M. C., and Zambrini, R. (2023). Time-series quantum reservoir computing with weak and projective measurements.  npj Quantum Information, 9 (1), 16. https://doi.org/:10.1038/s41534-023-00682-z
Nguyen, T., Paik, I., Sagawa, H., and Thang, T. C. (2022). Towards Quantum Scalable Data for Heterogeneous Computing Environments. IEEE International Conference on Quantum Computing and Engineering (QCE), 18-23 Sept. https://doi.org/:10.1109/QCE53715.2022.00153.
Nie, F., Li, Z., Wang, R., and Li, X. (2023). An Effective and Efficient Algorithm for K-Means Clustering With New Formulation.  IEEE Transactions on Knowledge and Data Engineering, 35 (4), 3433-3443. https://doi.org/:10.1109/TKDE.2022.3155450
Özpolat, Z., and Karabatak, M. (2023). Exploring the Potential of Quantum-Based Machine Learning: A Comparative Study of QSVM and Classical Machine Learning Algorithms. 11th International Symposium on Digital Forensics and Security (ISDFS), 11-12 May. https://doi.org/:10.1109/ISDFS58141.2023.10131821.
Perelshtein, M., Sagingalieva, A., Pinto, K., Shete, V., Pakhomchik, A., Melnikov, A., Neukart, F., et al. (2022). Practical application-specific advantage through hybrid quantum computing.  arXiv preprint. 2205.04858. https://doi.org/:10.48550/arXiv.2205.04858
Qasim, N., Khlaponin, Y., & Vlasenko, M. (2022). Formalization of the Process of Managing the Transmission of Traffic Flows on a Fragment of the LTE network.  Collection of Scientific Papers of the Military Institute of Taras Shevchenko National University of Kyiv, 75, 88–93. https://doi.org/:10.17721/2519-481X/2022/75-09
Qasim, N., Shevchenko, Y.P., and Pyliavskyi, V. (2019). Analysis of methods to improve energy efficiency of digital broadcasting.  Telecommunications and Radio Engineering, 78 (16), 1457-1469. https://doi.org/:10.1615/TelecomRadEng.v78.i16.40
Qasim, N. H., Al-Helli, H.I., Savelieva, I., Jawad, A. M. (2023). Modern Ships and the Integration of Drones – a New Era for Marine Communication.  Development of Transport, 4 (19). https://doi.org/:10.33082/td.2023.4-19.05
Sharma, A. (2022). QUANTUM COMPUTING: A REVIEW ON BIG DATA ANALYTICS AND DATA SECURITY.  International Research Journal of Computer Science, 9, 96-100. https://doi.org/:10.26562/irjcs.2021.v0904.005
Stooβ, V., Ulmke, M., and Govaers, F. (2023). Quantum Computing for Applications in Data Fusion.  IEEE Transactions on Aerospace and Electronic Systems, 59 (2), 2002-2012. https://doi.org/:10.1109/TAES.2022.3212026