AI in operations management: applications, challenges and opportunities

Journal of Data, Information and Management - Tập 2 - Trang 67-74 - 2020
Ali K. Dogru1, Burcu B. Keskin2
1College of Business and Economic Development, School of Management, University of Southern Mississippi, Hattiesburg, USA
2Culverhouse College of Business Administration, ISM Department, The University of Alabama, Tuscaloosa, USA

Tóm tắt

We have witnessed unparalleled progress in artificial intelligence (AI) and machine learning (ML) applications in the last two decades. The AI technologies have accelerated advancements in robotics and automation, which have significant implications on almost every aspect of businesses, and especially supply chain operations. Supply chains have widely adopted smart technologies that enable real-time automated data collection, analysis, and prediction. In this study, we review recent applications of AI in operations management (OM) and supply chain management (SCM). Specifically, we consider the innovations in healthcare, manufacturing, and retail operations, since collectively, these three areas represent a majority of the AI innovations in business as well as growing problem areas. We discuss primary challenges and opportunities for utilizing AI in those industries. We also discuss trending research topics with significant value potential in these areas.

Tài liệu tham khảo

Acemoglu D, Restrepo P (2018) Artificial intelligence automation and work. Tech. rep., National Bureau of Economic Research Bowser DM, Utz S, Glick D, Harmon R (2010) A systematic review of the relationship of diabetes mellitus, depression, and missed appointments in a low-income uninsured population. Arch Psychiatr Nurs 24(5):317–329 Bruck BP, Cordeau JF, Iori M (2018) A practical time slot management and routing problem for attended home services. Omega 81:208–219 Bughin J, Hazan E, Ramaswamy S, Chui M, Allas T, Dahlstrom P, Henke N, Trench M (2017) Artificial intelligence: the next digital frontier? https://www.mckinsey.com/mgi. Accessed 5 December 2019 Campbell M, Hoane AJ Jr, Hsu Fh (2002) Deep blue. Artif Intell 134(1–2):57–83 Castellanos S (2019) Digital twins concept gains traction among enterprises. https://blogs.wsj.com/cio/2018/09/12/digital-twins-concept-gains-traction-among-enterprises/. Accessed 17 September 2019 Chorev M (2019) Ai models predict breast cancer with radiologist-level accuracy. https://www.ibm.com/blogs/research/2019/06/ai-models-radiologist-level-accuracy/. Accessed 18 September 2019 Chui M, Manyika J, Miremadi M, Henke N, Chung R, Nel P, Malhotra S (2018) Notes from the ai frontier: insights from hundreds of use cases. https://www.mckinsey.com/mgi. Accessed 5 December 2019 Daugherty P, Wilson HJ (2017) Process reimagined: together, people and ai are reinventing business processes from the ground up. https://www.accenture.com/_acnmedia/pdf-76/accenture-process-reimagined.pdf#zoom=50. Accessed 18 September 2019 Dogru AK, Melouk SH (2019) Adaptive appointment scheduling for patient-centered medical homes. Omega 85:166–181 Ehmke JF, Mattfeld DC (2012) Vehicle routing for attended home delivery in city logistics. Procedia-Soc Behav Sci 39:622– 632 EUGDPR (2016) European union general data protection regulation. https://eugdpr.org/. Accessed 18 September 2019 Feldman J, Liu N, Topaloglu H, Ziya S (2014) Appointment scheduling under patient preference and no-show behavior. Oper Res 62(4):794–811 Gupta D, Wang L (2008) Revenue management for a primary-care clinic in the presence of patient choice. Oper Res 56(3):576–592 Holley P (2019) George mason students have a new dining option: Food delivery by robots. https://www.washingtonpost.com/technology/2019/01/22/george-mason-students-have-new-dining-option-food-delivered-by-robots/. Accessed 17 September 2019 Jha S, Topol EJ (2016) Adapting to artificial intelligence: radiologists and pathologists as information specialists. Jama 316(22):2353–2354 Klein R, Neugebauer M, Ratkovitch D, Steinhardt C (2017) Differentiated time slot pricing under routing considerations in attended home delivery. Transp Sci 53(1):236–255 Latts L (2019) Alleviating the burden of diabetes with ai. https://www.ibm.com/blogs/think/2019/01/alleviating-the-burden-of-diabetes-with-ai/. Accessed 17 September 2019 McCarthy J, Minsky ML, Rochester N, Shannon CE (2006) A proposal for the dartmouth summer research project on artificial intelligence, august 31, 1955. AI Mag 27(4):12–12 MigraineAI (2019) Migraine ai official website. http://migraine.ai. Accessed 12 September 2019 Murawski J (2019) Ai runs smart steel plant. https://www.wsj.com/articles/ai-runs-smart-steel-plant-11563183000. Accessed 17 September 2019 Nilsson NJ (2009) The quest for artificial intelligence. Cambridge University Press Olsen TL, Tomlin B (2019) Industry 4.0: opportunities and challenges for operations management. Manuf Serv Oper Manag Pan S, Giannikas V, Han Y, Grover-Silva E, Qiao B (2017) Using customer-related data to enhance e-grocery home delivery. Ind Manag Data Syst 117(9):1917–1933 Panch T, Szolovits P, Atun R (2018) Artificial intelligence, machine learning and health systems. J Glob Health 8:2 Rajpurkar P, Irvin J, Zhu K, Yang B, Mehta H, Duan T, Ding D, Bagul A, Langlotz C, Shpanskaya K et al (2017) Chexnet: radiologist-level pneumonia detection on chest x-rays with deep learning. arXiv:https://arxiv.org/abs/171105225 Samuel AL (1959) Some studies in machine learning using the game of checkers. IBM J Res Dev 3:210–229 Schectman JM, Schorling JB, Voss JD (2008) Appointment adherence and disparities in outcomes among patients with diabetes. J Gen Intern Med 23(10):1685 Schmitz C, Tschiesner A, Janse C, Hallerstede S, Garms F (2019) Indusry 4.0: capturing value at scale in discrete manufacturing. https://www.mckinsey.com/industries/advanced-electronics/our-insights/capturing-value-at-scale-in-discrete-manufacturing-with-industry-4-0. Accessed 10 December 2019 Silver D, Hubert T, Schrittwieser J, Antonoglou I, Lai M, Guez A, Lanctot M, Sifre L, Kumaran D, Graepel T et al (2018) A general reinforcement learning algorithm that masters chess, shogi, and go through self-play. Science 362(6419):1140–1144 Smith J (2019) Unilever uses virtual factories to tune up its supply chain. https://www.wsj.com/articles/unilever-uses-virtual-factories-to-tune-up-its-supply-chain-11563206402. Accessed 17 September 2019 Travers M (2019) Medical scheduling software makes black patients wait longer in waiting rooms than white patients. https://www.forbes.com/sites/traversmark/2019/12/03/medical-scheduling-software-makes-black-patients-wait-longer-in-waiting-rooms-than-white-patients/. Accessed 9 December 2019 Turing A (1950) Computing machinery and intelligence. Mind 59(236):433 Vartabedian M (2019) Ups ventures invest in self-driving trucking startup. https://www.wsj.com/articles/ups-ventures-invests-in-self-driving-trucking-startup-11565874002. Accessed 17 September 2019 Weber F, Schütte R (2019) A domain-oriented analysis of the impact of machine learning—the case of retailing. Big Data Cogn Comput 3(1):11 Whittaker M, Crawford K, Dobbe R, Fried G, Kaziunas E, Mathur V, West SM, Richardson R, Schultz J, Schwartz O (2018) Ai now report 2018. https://ainowinstitute.org/AI_Now_2018_Report.pdf. Accessed 10 December 2019