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The primary influences on data preparedness are time and readiness. However, other factors, including people, metrics, and industry conditions (the “radar” factor), also play significant roles. Design and construction professionals feel pressured for time. Familiarity and readiness to work with data will have a strong impact on and implications for the AECO industry. Having the right people on board is critical, especially those who are predisposed or motivated to work with data and see the value in doing so. When working with data, design professionals need to become aware of the outcomes from a quantitative standpoint. They need to provide proof for their design intentions, and back up their building performance claims. The chapter also explores what in their education prepared these design professionals for careers in the AECO industry where they are working with and in data and taking an algorithmic approach to the work they do.
The primary influences on data preparedness are time and readiness. However, other factors, including people, metrics, and industry conditions (the “radar” factor), also play significant roles. Design and construction professionals feel pressured for time. Familiarity and readiness to work with data will have a strong impact on and implications for the AECO industry. Having the right people on board is critical, especially those who are predisposed or motivated to work with data and see the value in doing so. When working with data, design professionals need to become aware of the outcomes from a quantitative standpoint. They need to provide proof for their design intentions, and back up their building performance claims. The chapter also explores what in their education prepared these design professionals for careers in the AECO industry where they are working with and in data and taking an algorithmic approach to the work they do.
Learning from Data
Deutsch, Randy (editor)
Data‐Driven Design and Construction ; 107-139
2012-05-08
33 pages
Article/Chapter (Book)
Electronic Resource
English
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