Welcome to Francis Academic Press

Academic Journal of Business & Management, 2021, 3(6); doi: 10.25236/AJBM.2021.030609.

The Realistic Dilemma and Implementation Countermeasures of the Integration of Industry and Education in the Big Data Era

Author(s)

Songfei Li, Lina Wang, Song Li

Corresponding Author:
Lina Wang
Affiliation(s)

School of Economics and Management, Shenyang Institute of Technology, Shenyang 113122, China

Abstract

The integration of industry and education in the era of big data is not only a policy requirement, but also in line with the development trend of technological change. However, from the perspective of colleges, teachers and enterprises, there are many practical difficulties in the integration of industry and education in the current big data era: the level of informatization construction of vocational colleges needs to be improved; the informatization capabilities of teachers cannot meet the development needs of industry and education integration; enterprises there is insufficient motivation to promote the integration of industry and education. This article uses research methods of literature and questionnaire survey, based on big data thinking: use user thinking, centering on the needs of industries and enterprises; use cross-border thinking to promote cross-border integration of talent training; use social thinking to reshape the relationship between industry and education; use iterative thinking to constantly innovate; use platform thinking to build a cloud service platform for integration of industry and education.

Keywords

big data, integration of industry and education, school-enterprise cooperation

Cite This Paper

Songfei Li, Lina Wang, Song Li. The Realistic Dilemma and Implementation Countermeasures of the Integration of Industry and Education in the Big Data Era. Academic Journal of Business & Management (2021) Vol. 3, Issue 6: 67-71. https://doi.org/10.25236/AJBM.2021.030609.

References

[1] Wang Y , Min S , Wang X , et al. Mobile-Edge Computing: Partial Computation Offloading Using Dynamic Voltage Scaling. IEEE Transactions on Communications, 2016, 64(10):4268-4282.

[2] Dario, Sabella, Alessandro, et al. Mobile-Edge Computing Architecture: The role of MEC in the Internet of Things. IEEE Consumer Electronics Magazine, 2016, 5(4):84-91.

[3] Mao Y , Zhang J , Song S H , et al. Stochastic Joint Radio and Computational Resource Management for Multi-User Mobile-Edge Computing Systems. IEEE transactions on wireless communications, 2017, 16(9):5994-6009.

[4] Kazimierski W , Wlodarczyk-Sielicka M . Technology of Spatial Data Geometrical Simplification in Maritime Mobile Information System for Coastal Waters. Polish Maritime Research, 2016, 23(3):3-12.

[5] Shi W, Jie C, Quan Z, et al. Edge Computing: Vision and Challenges. Internet of Things Journal, IEEE, 2016, 3(5):637-646.

[6] Ke Z, Mao Y, Leng S, et al. Mobile-Edge Computing for Vehicular Networks: A Promising Network Paradigm with Predictive Off-Loading. IEEE Vehicular Technology Magazine, 2017, 12(2):36-44.