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Transformation of thinking consciousness is the key to the success or failure of digital transformation of construction enterprises
2022-07-02 19:04:00 【Maidao Technology】
Many construction enterprises have many puzzles in the process of digital transformation. The lack of digital thinking consciousness leads to the unclear transformation goal , What kind of digital platform should be built , There is no specific standard . Lack of successful experience , There is no way and entry point for digital transformation , During the implementation of digital transformation, the personnel organization is not online , The implementation effect cannot reach the set goal .

When construction enterprises are undergoing digital transformation , We must focus on the core business activities of construction enterprises , Using digital tools 、 Digital thinking and digital talents improve the innovation ability of construction enterprises , So as to improve the overall operation efficiency of construction enterprises .

At the same time, digital thinking is a kind of comprehensive thinking . One side , Use digital tools to process and analyze data scientifically , Through the data, we can know what happened , Why did this happen , What kind of rules . On the other hand , And have full imagination , Ability to relate data to business and management processes , And can creatively put forward different opinions .
The main characteristics of digitalization of construction enterprises include three aspects :
The first is to connect , All things connected , Connect employees 、 Connecting customers 、 Connect IOT devices ; Connection between things 、 People and things are connected , People are connected .
The second is data , Data fusion , That is, the data generated in real time after connection ; Realize data collection 、 transmission 、 Storage .
The third is intelligence , Data decision making , With big data + Algorithm constructs intelligent brain to form decision data , Improve intelligent decision-making ability .
Construction enterprises establish an integrated digital integrated management system platform , Using big data + Algorithm makes intelligent brain , Realize deep data mining and analysis , Ultimately, business innovation 、 Management decisions 、 Production and operation empowerment provides strong support , Realize cross level and cross department sharing of enterprise data .

Enterprise smart brain is based on enterprise data , According to the sharing needs of enterprises across businesses and departments , Expand to form the group enterprise data sharing service directory , Actively carry out data sharing applications , Promote the ability and level of cross department and cross level collaborative joint handling of business matters .

Group level Realize the centralization of standards through standardization , Realize data centralization through centralized management of group wide data , Build a data-driven decision-making system , Realize centralized decision .
Company level Through internal horizontal business interworking , The process interconnection between upper and lower levels and the data connection between systems , Realize the integration of business applications , Improve the management and control ability of enterprise management , Realize centralized management .
Project level Through mobile office 、 Smart hardware 、BIM And other digital technologies , Service operation layer , Improve the work efficiency of the project level .
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