|
|
Intelligent data analytics is here to change engineering management |
Jonathan Jingsheng SHI1(), Saixing ZENG2, Xiaohua MENG3 |
1. College of Engineering, Louisiana State University, Baton Rouge, LA 70803, USA 2. Antai College of Economics & Management, Shanghai Jiao Tong University, Shanghai 200030, China 3. Department of Management Science and Engineering, Soochow University, Suzhou 215006, China |
|
|
Abstract A great deal of scientific research in the world aims at discovering the facts about the world so that we understand it better and find solutions to problems. Data enabling technology plays an important role in modern scientific discovery and technologic advancement. The importance of good information was long recognized by prominent leaders such as Sun Tzu and Napoleon. Factual data enables managers to measure, to understand their businesses, and to directly translate that knowledge into improved decision making and performance. This position paper argues that data analytics is ready to change engineering management in the following areas: 1) by making relevant historical data available to the manager at the time when it’s needed; 2) by filtering out actionable intelligence from the ocean of data; and 3) by integrating useful data from multiple sources to support quantitative decision-making. Considering the unique need for engineering management, the paper proposes researchable topics in the two broad areas of data acquisition and data analytics. The purpose of the paper is to provoke discussion from peers and to encourage research activity.
|
Keywords
engineering management
project management
big data
data analytics
planning
execution
|
Corresponding Author(s):
Jonathan Jingsheng SHI
|
Online First Date: 21 March 2017
Issue Date: 19 April 2017
|
|
1 |
I Aldridge (2013). High-Frequency Trading: A Practical Guide to Algorithmic Strategies and Trading Systems. 2nd ed. Hoboken: John Wiley & Sons
|
2 |
J N Brookes (2014). Mankind and mega-projects. Frontiers of Engineering Management, 1(3): 241–245
https://doi.org/10.15302/J-FEM-2014033
|
3 |
C Barnhart, M S Daskin, B Dietrich, E Kaplan R , Larson. (2007). “Grand challenges in engineering.” INFORMS – Institute for Operations Research and the Management Sciences.
|
4 |
H T Davenport, T Redman (2015). Getting advantage from proprietary data.
|
5 |
J Davis, T Edgar, J Porter, J Bernaden, M Sarli (2012). Smart manufacturing, manufacturing intelligence and demand-dynamic performance. Computers & Chemical Engineering, 47: 145–156
https://doi.org/10.1016/j.compchemeng.2012.06.037
|
6 |
A De los Reyes (2006). The role of computer-aided drafting, analysis, and design software in structural engineering practice.
|
7 |
J Hinze (2012). Construction Planning and Scheduling. 4th ed. Upper Saddle River: Prentice Hall
|
8 |
C Hendrickson, T Au (2008). Project Management for Construction: Fundamental Concepts for Owners, Engineers, Architects and Builders. Upper Saddle River: Prentice Hall
|
9 |
H S Kang, J Y Lee, S S Choi, H Kim, J H Park, J Y Son, B H Kim, S D Noh (2016). Smart manufacturing: past research, present findings, and future directions. International Journal of Precision Engineering and Manufacturing-Green Technology, 3(1): 111–128
|
10 |
S Lohr (2012). The age of big data.
|
11 |
J Manyika, M Chui, B Brown, J, Bughin R, Dobbs C, Roxburgh A H. Byers (2011). Big data: the next frontier for innovation, competition, and productivity.
|
12 |
A McAfee, E Brynjolfsson (2012). Big data: the management revolution. Harvard Business Review, 90(10): 60–68
|
13 |
E W Merrow (2011). Industrial Mega-projects: Concepts, Strategies, and Practices for Success. Hoboken: John Wiley & Sons
|
14 |
R Miller, D R Lessard (2000). The Strategic Management of Large Engineering Projects: Shaping Institutions, Risks, and Governance. Cambridge: MIT Press
|
15 |
G A Moore (2014). In: Marketing and Selling Disruptive Products to Mainstream Customers. Crossing the Chasm. 3rd ed. New York: Harper Collin Publishers
|
16 |
J Moorthy, R Lahiri, N Biswas, P. Ghosh (2015). Big data: prospects and challenges. Vikalpa., 40(1): 74–96
|
17 |
NAE. (2008). Grand challenges for engineering.
|
18 |
T Rujirayanyong, J Shi (2006). A project-oriented data warehouse for construction. Automation in Construction, 15(6): 800–807
https://doi.org/10.1016/j.autcon.2005.11.001
|
19 |
E Siegel (2013). Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die. Hoboken: John Wiley & Sons
|
|
Viewed |
|
|
|
Full text
|
|
|
|
|
Abstract
|
|
|
|
|
Cited |
|
|
|
|
|
Shared |
|
|
|
|
|
Discussed |
|
|
|
|