International Journal of New Developments in Education, 2024, 6(12); doi: 10.25236/IJNDE.2024.061214.
Li Hua
Yancheng Teachers University, Yancheng, 224000, China
The popularization of higher education and the intensification of competition in the job market have attracted much attention to the employment of college students. The concept of collaborative education brings a new direction to solve the employment problem, and it is of great significance to construct the employment ecosystem of college students based on this concept. This study focuses on the construction strategy of the employment ecosystem of college students, firstly expounds the significance of the construction of the employment ecosystem of college students under the background of collaborative education, and then analyzes the current situation of the employment ecology of college students, including the poor circulation of employment information, the lack of coordination of education subjects, and the lack of systematic employment guidance. Based on this, the author puts forward construction strategies from multiple aspects, such as integrating education resources, optimizing employment guidance service system, strengthening the linkage between family, school and community, and establishing dynamic feedback mechanism, in order to build a benign and sustainable employment ecosystem, improve the employment quality of students, and promote the effective connection between college talent training and social needs.
Collaborative education; College students; Employment ecosystem; Construction strategy
Li Hua. Research on the Strategy of University Students' Employment Ecosystem Construction under the Background of Collaborative Education. International Journal of New Developments in Education (2024), Vol. 6, Issue 12: 94-99. https://doi.org/10.25236/IJNDE.2024.061214.
[1] Zhuqing H, Polytechnic C.Research on the Strategy of Home-school Co-construction and Collaborative Education under the Background of Big Data[J].The Guide of Science & Education, 2019.
[2] Li-Hua W.Research on network food safety supervision strategy under the background of "Internet Plus"[J].Food & Machinery, 2022(4).DOI:10.13652/j.spjx.1003.5788.2022.90032.
[3] Su J.Research on the driving principle and guiding strategy of the public's collaborative supervision of the sharing economy in my country[J].Applied Mathematics and Nonlinear Sciences, 2022.DOI:10.2478/amns.2021.2.00254.
[4] Pourzarei H, Boton C, Rivest L.On Considering a PLM Platform for Design Change Management in Construction[C]//IFIP International Conference on Product Lifecycle Management.Springer, Cham, 2024.DOI:10.1007/978-3-031-62578-7_25.
[5] Yi X , Ming X .Study on Competitive Advantage and Construction Strategy of E-Commerce Ecosystem[C]//2011 Fourth International Conference on Business Intelligence and Financial Engineering.IEEE, 2012.DOI:10.1109/BIFE.2011.111.
[6] Bacheva T S, Raposo Grau J F.Building Information Modeling (BIM) for Visual Representation of Embodied Impacts of Buildings: Current Methods and Future Prospects[C]//Congreso Internacional de Expresión Gráfica Arquitectónica.Springer, Cham, 2024.DOI:10.1007/978-3-031-57575-4_41.
[7] Andrews J, Almohammad M.Achieving creative collaboration between language teachers and artists: An evaluation of a workshop-based approach[J].Journal of Multilingual Theories & Practices, 2024, 5(1).DOI:10.1558/jmtp.25810.
[8] Li X, Jia T, Wang Y, et al.A DMSO-assisted iridium(III) complex as a luminescent "turn-on" sensor for selective detection of L-histidine and bacterial imaging[J].Analytical Methods, 2024, 16.DOI:10.1039/D4AY01431F.
[9] Xiao-Xian Y E, Hua-Feng P, Zheng W, et al.Exploration on construction of "three combinative medical experimental platform" under the background of collaborative Innovation[J].Soft Science of Health, 2015.
[10] Zhang L, Zhuang C, Tian Y, et al.Construction and Application of Energy Footprint Model for Digital Twin Workshop Oriented to Low-Carbon Operation[J].Sensors (14248220), 2024, 24(11).DOI:10.3390/s24113670.
[11] Bao D, Su W.Personalized Intelligent Recommendation Model Construction Based on Online Learning Behavior Features and CNN[J].Information Technology & Control, 2024, 53(1).DOI: 10.5755/j01. itc.53.1.34317.