Acknowledgement
This paper was carried out in 2023 with the support of the Korea Institute of Environmental Industry and Technology's DX-based carbon supply chain environmental manpower training project (Ministry of Environment) and the Korea Energy Technology Evaluation Institute's energy manpower training project (task name: training specialized manpower for carbon resource based on energy efficiency) for each mid-sized business sector.
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