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International Journal of Frontiers in Sociology, 2023, 5(2); doi: 10.25236/IJFS.2023.050201.

Modern Industrial Productivity Development Challenges and Its Big Data Solutions

Author(s)

Li Xia1, Huang Qiqi2

Corresponding Author:
Li Xia
Affiliation(s)

1School of Marxism, South China University of Technology, Guangzhou, 510641, China

2School of Marxism, Guangzhou College of Technology and Business, Guangzhou, 510641, China

Abstract

Since the establishment of the modern industrial production mode, it is faced with the dilemma, shortages of resources and market, and the detail labourer, which limiting its productivity development. These problems are further deepened after three industrial revolutions and manifested in the present day as follows: the inefficiency and poor resilience of the production system; the structural contradiction between supply and demand structure triggering a decline in the vitality of the production organism; and the inability of the efficiency of production and utilization of knowledge to meet the needs of productivity development. The root cause of the problem is the division of labour in modern industrial, which destroys the internal links of the production organism. Big Data technology provides new solutions to solve those dilemmas: firstly, it overcomes the impact of uncertainties on the production system and increases total factor productivity; secondly, the demand-oriented production model generates new demand and stimulates the development of productivity; finally, it imbues things with human intelligence, provides a platform for innovation for the people and fully releases human intelligence resources.

Keywords

Productivity; Production Mode; Modern Industry; Big Data

Cite This Paper

Li Xia, Huang Qiqi. Modern Industrial Productivity Development Challenges and Its Big Data Solutions. International Journal of Frontiers in Sociology (2023), Vol. 5, Issue 2: 1-8. https://doi.org/10.25236/IJFS.2023.050201.

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