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Operations Systems with Discretionary Task Completion

Published: 01 January 2007 Publication History

Abstract

Most performance evaluation models in the operations management literature implicitly assume that tasks possess standardized completion criteria. However, in many systems, particularly service and professional work, judgment is frequently required to determine how much time to allocate to a task. In this paper, we show that introducing discretion in task completion adds a fourth variability buffer, quality, to the well-known buffers of capacity, inventory and time. To gain insight into the managerial implications of this difference, we model the work of one- and two-worker systems with discretionary task completion as controlled queues. After characterizing the optimal control policy and identifying some practical heuristics, we use this model to examine the differences between discretionary and nondiscretionary work. We show that in systems with discretionary task completion, (i) adding capacity may actually increase congestion, and (ii) task variability in service time can improve system performance. This implies that it may be suboptimal to expect shorter delays as a result of a capacity increase, and that task variability reduction may not be an appropriate goal in systems with discretionary task completion. We also find that the benefit of queue pooling is smaller in systems with discretionary task completion than in systems with nondiscretionary task completion.

References

[1]
Adler, P., Mandelbaum, A., Nguyen, V. and Schwerer, E., "From project to process management: An empirically-based framework for analyzing product development time," Management Sci., v41, pp. 458-484, 1995.
[2]
Aksin, O. Z. and Harker, P. T., "To sell or not to sell: Determining the tradeoffs between service and sales in retail banking phone centers," J. Service Res., v2, pp. 19-33, 1999.
[3]
Altiok, T., Performance Evaluation of Manufacturing Systems, Springer-Verlag, New York, 1996.
[4]
Armony, M. and Gurvich, I., "When promotions meet operations: Cross-selling and its effect on call-center performance," 2005.
[5]
Askin, R. G. and Goldberg, J. B., Design and Analysis of Lean Production Systems, Wiley, Hoboken, NJ, 2001.
[6]
Ata, B. and Shneorson, S., "Dynamic control of an M/M/1 service system with adjustable arrival and service rates," Management Sci., v52, pp. 1778-1791, 2006.
[7]
Aydin, G. and Ziya, S., "Upselling a promotional product using customer purchase information," 2005.
[8]
Bailey, D. E., "Comparison of maufacturing performance of three team structures in semiconductor plants," IEEE Trans. Engrg. Management, v45, pp. 20-32, 1998.
[9]
Banker, R., Field, J. and Sinha, K., "Work-team implementation and trajectories of manufacturing quality: A longitudinal study," Manufacturing Service Oper. Management, v3, pp. 25-42, 2001.
[10]
Boudreau, J., Hopp, W., McClain, J. and Thomas, I. J., "On the interface between operations and human resources management," Manufacturing Service Oper. Management, v5, pp. 179-202, 2003.
[11]
"Gross domestic product by industry," 2001.
[12]
Buzacott, J. A. and Shanthikumar, J. G., "Stochastic models of manufacturing systems," Prentice Hall, New York, 1992.
[13]
Debo, L. G., Toktay, L. B. and Van Wassenhove, L. N., "Queueing for expert services," 2004.
[14]
Doerr, K. H., Mitchell, T. R., Klastorin, T. D. and Brown, K. A., "Impact of material flow policies and goals on job outcomes," J. Appl. Pysch., v81, 1996.
[15]
Gans, N., Koole, G. and Mandelbaum, A., "Telephone call centers: Tutorial, review, and research prospects," Manufacturing Service Oper. Management, v5, pp. 79-141, 2003.
[18]
George, J. M. and Harrison, J. M., "Dynamic control of a queue with adjustable service rate," Oper. Res., v49, pp. 720-731, 2001.
[19]
Gross, D. and Harris, C. M., Fundamentals of Queueing Theory, Wiley, New York, 1985.
[20]
Hammer, M. and Champy, J., Reengineering the Corporation: A Manifesto for Business Revolution, Haper Business, New York, 1993.
[21]
Hardin, G., "The tragedy of the commons," Science, v162, pp. 1243-1248, 1968.
[22]
Hopp, W. and Spearman, M., Factory Physics: Foundations of Manufacturing Management, McGraw-Hill, Burr Ridge, IL, 2000.
[23]
Krishnan, V., Eppinger, S. D. and Whitney, D. E., "A model-based framework to overlap product development activities," Management Sci., v43, pp. 437-351, 1997.
[24]
Latane, B., Williams, K. D. and Harkins, S., "Many hands make light the work: The causes and consequences of social loafing," J. Personality Soc. Psych., v37, pp. 822-832, 1979.
[25]
Loch, C. H. and Terwiesch, C., "Accelerating the process of engineering change orders: Capactiy and congestion effects," J. Product Innovation Management, v16, pp. 145-169, 1999.
[26]
McGrath, J. E., Groups: Interaction and Performance, Prentice-Hall, Englewood Cliffs, NJ, 1984.
[27]
Olson, M., The Logic of Collective Action: Public Goods and the Theory of Groups, Harvard University Press, Cambridge, MA, 1965.
[28]
Owen, S. H. and Jordan, W. C., "An extended framework for studying white-collar work," 2003.
[29]
Schultz, K. L., Juran, D. C., Boudreau, J. W., McClain, J. O. and Thomas, L. J., "Modeling and worker motivation in just in time production systems," Management Sci., v44, pp. 595-607, 1998.
[30]
Stidham, S. and Weber, R. R., "Monotonic and insensitive optimal policies for control of queues with undiscounted costs," Oper. Res., v87, pp. 611-625, 1989.

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cover image Management Science
Management Science  Volume 53, Issue 1
January 2007
168 pages

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INFORMS

Linthicum, MD, United States

Publication History

Published: 01 January 2007

Author Tags

  1. Markov decision process
  2. flexibility
  3. service operations
  4. white collar work
  5. work systems

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