Penyuluhan Machine Learning dan Quantum Artificial Intelligence di Era Industri 4.0
DOI:
https://doi.org/10.21460/servirisma.2021.11.4Keywords:
artificial intelligence, digital era, industrial era 4.0, nuni, world digital competitivenessAbstract
The Digital Era 4.0 has started since 2016 and two Southeast Asia countries such as Malaysia and Singapore have already adapted to the era; unfortunately, Indonesia has been struggling to adapt the era and, therefore, needs to catch up the digital competitiveness of its neighbouring countries. According to IMD World Digital Competitiveness 2020, Indonesia placed 56th of 63 countries in the digital competitiveness measurement. Despite its poor performance, Indonesia can catch up with other countries by starting from universities’ environment where Indonesia’s next generations study. Universities are prominent education institutions which prepare next generations for world digital competitiveness. According to BPS Indonesia, the unemployment of bachelor, master, and doctoral graduates reach a total number of 737.000, or 5,67% of 13 millions work force. One of the causes is the lack of technological knowledge, specifically, Artificial Intelligence (AI), from the graduates. Particularly, when they become business leaders, they are not fully prepared to create new job openings because mostly their mindsets are to find suitable jobs after study. The two webinars are results of collaboration between several universities which form NUNI (Jejaring Universitas Nusantara) whose purpose is to equip students with the knowledge of AI. Our method of counselling whose format is two webinars with both titles are Interpretable Machine Learning and Quantum Artificial Intelligence has gained appreciation in the form of average participation score which approaches excellent score (4,60 of 5,00). Additionally, these two webinars are publicly available in web blogs and Youtube videos.
References
Beer, K., Bondarenko, D., & Farrelly, et al, T. (2020). Training deep quantum neural networks. Nature Communications, 11(808).
Biamonte, J., Wittek, P., & Pancotti , et al, N. (2017). Quantum machine learning. Nature , 549, 195-202.
Chapman, P. (2020, Desember 09). Scaling IonQ's Quantum Computers: The Roadmap. (IonQ) Retrieved April 1, 2021, from https://ionq.com/posts/december-09-2020-scalingquantum-computer-roadmap
Cong, I., Choi, S., & Lukin, M. D. (2019). Quantum convolutional neural networks. Nature Physics, 15, 1273 1278.
Gambetta, J. (2020). . (IBM) Retrieved April 1, 2021, from https://www.ibm.com/blogs/research/2020/09/ibm-quantum-roadmap
Géron, A. (2019). Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow, 2nd Edition.
Griffiths, D. J., & Schroeter, D. F. (2018 ). Introduction to Quantum Mechanics, 3rd Edition. Cambridge University Press.
Hartnett, K. (2018, Juni 21). Finally, a Problem That Only Quantum Computers Will Ever Be Able to Solve. (Quanta Magazine) Retrieved April 1, 2021, from https://www.quantamagazine.org/finally-a-problem-that-only-quantum-computerswill-ever-be-able-to-solve-20180621
Honeywell. (2020). Get to Know Honey . (Honeywell International Inc.) Retrieved April 1, 2021, from https://www.honeywell.com/us/en/news/2020/10/get-to-know-honeywell-s-latestquantum-computer-system-model-h1
IMD. (2021). IMD World Competitiveness Online. Retrieved Agustus 5, 2021, from https://worldcompetitiveness.imd.org/countryprofile/overview/ID
James, G., Witten, D., Hastie, T., & Tibshirani, R. (2017). An Introduction to Statistical Learning with Applications in R. Berlin: Springer.
Kharkovyba, O. (2019). A . Retrieved Nov 14, 2019, from https://towardsdatascience.com/a-beginners-guide-to-data-science-55edd0288973
Masís, S. (2021). Masís, S. (2021). Interpretable Machine Learning with Python: Learning to Build Interpretable High-performance Models with Hands-on Real-world Examples. Birmingham, UK: Packt Publishing.
Molnar, C. (2019). Interpretable Machine Learning. https://christophm.github.io/interpretableml-
book.
Neven , H. (2020). Google Quantum Summer Symposium 2020. (Google) Retrieved April 1, 2021, from https://quantumai.google/research/conferences
Nielsen, M. A., & Chuang, I. L. (2010 ). Quantum Computation and Quantum Information ,10th Anniversary Edition. Cambridge: Cambridge University Press.
Popkin, G. (02 Dec 2016). Quest for qubits. Science, 354(6316), 1090-1093. Retrieved from https://science.sciencemag.org/content/354/6316/1090/tab-figures-data
Raz, R., & Tal, A. (2018). Oracle Separation of BQP and PH. Electronic Colloquium on Computational Complexity, Report No. 107.
Schuld , M., & Petruccione, F. (2018). Supervised Learning with Quantum Computers. Berlin: Springer.
Rhoads, R. A. (1997). Community service and higher learning: Explorations of the caring self. New York: State University of New York Press.
Vogelgesang, L. J., & Astin, A. W. (2000). Comparing the effects of community service and service learning. Michigan Journal of Community Service Learning, 7(1), 25-34.
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2021 Hendra Bunyamin, Teddy Marcus Zakaria, Andreas Widjaja, Natanael Halim, Vania Sarwoko
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Authors who publish articles in SERVIRISMA agree on the following rules:
1. The author grants non exclusive royalty free rights, and is willing to publish articles online and complete (full access). With such rights SERVIRISMA reserves the right to save, transfers, manages in various forms, maintains and publishes articles while keeping the author's name as the copyright owner.
2. Each author contained in the article has contributed fully to the substance and intellectual, and is accountable to the public. If in the future there is a copyright infringement notification then this will be responsibility of the author, not SERVIRISMA .