Abstract
Despite the fact that data science continues in a constant evolution, there are still many problems that are still impossible to solve due to processing issues, either due to the exorbitant amount of data collected, or related to the different types of data to be processed. Quantum computing in the last decade has experienced a significant boom which has allowed researchers to pose problems that until now were impossible to solve in the classical paradigm. Quantum computing promises gains by solving how we solve these challenging computational problems. Currently, creating added value and achieving new experiences for the consumer, enhanced with it combination with artificial intelligence and machine learning, being a determining factor to promote business competitive advantage. This article aims to assess the impact of quantum computing on businesses competitive advantage, through a qualitative bibliographic analysis. In this context, an extensive research was carried out in this area on Web of Science and Scopus for the period 2016–2021. The survey covers 162 papers selected for this study, 92 from Scopus and 70 from Web of Science.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Similar content being viewed by others
References
Kaye, P., Laflamme, R., Mosca, M.: An Introduction to Quantum Computing. TEAM LinG, Oxford (2006)
Mosteanu, N., Faccia, A.: Fintech frontiers in quantum computing, fractals, and blockchain distributed ledger: paradigm shifts and open innovation. J. Open Innovation: Technol., Market an Complexity 7(19), 1 (2021)
Ladd, T.D., Jelezko, F., Laflamme, R., Nakamura, Y., Monroe, C., O’Brien, J.L.: Quantum computers. Nature 464(7285), 45–53 (2010)
Lloyd, S.: The Universe as Quantum Computer. A Computable Universe: Understanding and Exploring Nature as Computation, 567–581 (2013)
Egger, D.J., et al.: Quantum computing for finance: State-of-the-art and future prospects. IEEE Trans. Quantum Eng. 1, 1–24 (2000)
McMahon, D.: Quantum Computing Explained, John Wiley & Sons (2007)
Vignesh, R., Poonacha, P.G.: Quantum computer architectures: an idea whose time is not far away. In: International Conference on Computers, Communications, and Systems (ICCCS) (2015)
Ajagekar, A., You, F.: Quantum computing based hybrid deep learning for fault diagnosis in electrical power systems. Appl. Energy 303, 117628 (2021)
Altman, E.B.K.R., Carleo, G., Carr, L.D., Demler, E., Chin, C., Zwierlein, M.: Quantum simulators: Architectures and opportunities. PRX Quantum 2(1), 017003 (2021)
Cheung, K.F., Bell, M.G., Bhattacharjya, J.: Cybersecurity in logistics and supply chain management: an overview and future research directions. Transportation Res. Part E: Logistics Transportation Review 146, 102217 (2021)
Orus, R., Mugel, S., Lizaso, E.: Quantum computing for finance: Overview and prospects. Reviews in Physics 4, 100028 (2019)
Ajagekar, A., You, A.: New frontiers of quantum computing in chemical engineering. Korean Journal of Chemical Eng. pp. 1–10 (2022)
Ajagekar, A., You, F.: Quantum computing for energy systems optimization: challenges and opportunities. Energy 179, 76–89 (2019)
Fernandez-Carames, T.M., Fraga-Lamas, P.: Towards post-quantum blockchain: a review on blockchain cryptography resistant to quantum computing attacks. IEEE access 8, 21091–21116 (2020)
Luckow, A., Klepsch, J., Pichlmeier, J.: Quantum computing: towards industry reference problems. Digitale Welt 5(2), 38–45 (2021)
Kumar, R.A., Kambalapally, V.: A contingent review on cloud computing trends predicting viable possibilities for future of computing. 1042(1), 1–8 (2021)
Hauke, P., Katzgraber, H.G., Lechner, W., Nishimori, H., Oliver, W.D.: Perspectives of quantum annealing: Methods and implementations. Rep. Prog. Phys. 83(5), 1–21 (2020)
National Academies of Sciences: Engineering, and Medicine, Quantum computing: progress and prospects, Washington. National Academies Press, DC (2019)
Amoroso, R.L.: Universal Quantum Computing: Supervening Decoherence-Surmounting Uncertainty. World Scientific (2017)
Kulkarni, V., Kulkarni, M., Pant, A.: Quantum computing methods for supervised learning. Quantum Machine Intelligence 3(2), 1–14 (2021). https://doi.org/10.1007/s42484-021-00050-0
Nivelkar, M., Bhirud, S.G.: Modeling of supervised machine learning using mechanism of quantum computing. J. Phys: Conf. Ser. 161(1), 1–10 (2022)
Jiang, W., Xiong, J., Shi, Y.: When machine learning meets quantum computers: a case study. In: 26th Asia and South Pacific Design Automation Conference (2021)
Lloyd, S., Mohseni, M., Rebentrost, P.: Quantum principal component analysis. Nat. Phys. 10(9), 631–633 (2014)
Li, Z., et al.: Resonant quantum principal component analysis. Science Advances, 7(34), eabg2589 (2021)
Martin, A., et al.: Toward pricing financial derivatives with an ibm quantum computer. Physical Review Res. 3(1), 013167 (2021)
Paparo, G.D., Dunjko, V., Martin-Delgado, M.A.M.A., Briegel, H.J.: Quantum speedup for active learning agents. Phys. Rev. X 4(3), 1–14 (2014)
Lamata, L., Parra-Rodriguez, A., Sanz, M., Solano, E.: Digital-analog quantum simulations with superconducting circuits. Advances in Physics: X, 3(1), 1457981 (2018)
Steinbrecher, G.R., Olson, J.P., Englund, D., Carolan, J.: Quantum optical neural networks. npj Quantum Information 5(1), 1-9 (2019)
Biamonte, J., Wittek, P., Pancotti, N., Rebentrost, P., Wiebe, N., Lloyd, S.: Quantum machine learning. Nature 549, 195–202 (2017)
Khan, T.M., Robles-Kelly, A.: Machine learning: quantum vs classical. IEEE Access 8, 219275–219294 (2020)
Denning, P.J., Tedre, M.: Computational Thinking, Mit Press (2019)
Arute, F., et al.: Quantum supremacy using a programmable superconducting processor. Nature 574(1–67), 505–510 (2019)
Easttom, W.:Quantum computing and cryptography. In: Modern Cryptography, Springer, Cham, pp. 385-390 (2021)
Rawat, B., Mehra, N., Bist, A.S., Yusup, M., Sanjaya, Y.P.A.: Quantum computing and AI: impacts & possibilities. ADI J. Recent Innovation 3(2), 202–207 (2022)
Srivastava, S.: Artificial intelligences last news quantum computing. Analytics Insight, (2020). https://www.analyticsinsight.net/ai-quantum-computing-can-enable-much-anticipated-advancements/
Marx, V.: Biology begins to tangle with quantum computing. Nat. Methods 18(7), 715–719 (2021)
Azure: Azure Quantum. Azure, (2022). https://azure.microsoft.com/en-us/solutions/quantum-computing/
Hooyberghs, J.: “What’s Next?,” in Introducing Microsoft Quantum Computing for Developers, pp. 341–353. Apress, Berkeley (2022)
Nallamothula, L.: Quantum ecosystem development using advanced cloud services. In: Elbiaze, H., Sabir, E., Falcone, F., Sadik, M., Lasaulce, S., Ben Othman, J. (eds.) UNet 2021. LNCS, vol. 12845, pp. 163–171. Springer, Cham (2021). https://doi.org/10.1007/978-3-030-86356-2_14
Gil, D., Mantas, J., Sutor, R., Kesterson-Townes, L., Flöther, F., Schnabel, C.: Coming soon to your business- quantum computing. IBM Institute for business value (2018)
Inside Quantum Technology: Quantum Computing: A Seven-year Market Forecast. Report IQT-QCM-1020 (2020)
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2022 The Author(s), under exclusive license to Springer Nature Switzerland AG
About this paper
Cite this paper
Guarda, T., Torres, W., Augusto, M.F. (2022). The Impact of Quantum Computing on Businesses. In: Gervasi, O., Murgante, B., Misra, S., Rocha, A.M.A.C., Garau, C. (eds) Computational Science and Its Applications – ICCSA 2022 Workshops. ICCSA 2022. Lecture Notes in Computer Science, vol 13380. Springer, Cham. https://doi.org/10.1007/978-3-031-10542-5_1
Download citation
DOI: https://doi.org/10.1007/978-3-031-10542-5_1
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-031-10541-8
Online ISBN: 978-3-031-10542-5
eBook Packages: Computer ScienceComputer Science (R0)