Smart City Gnosys

Smart city article details

Title Machine Learning For Sustainable Development: Leveraging Technology For A Greener Future
ID_Doc 35985
Authors Kagzi M.; Khanra S.; Paul S.K.
Year 2023
Published Journal of Systems and Information Technology, 25, 4
DOI http://dx.doi.org/10.1108/JSIT-11-2022-0266
Abstract Purpose: From a technological determinist perspective, machine learning (ML) may significantly contribute towards sustainable development. The purpose of this study is to synthesize prior literature on the role of ML in promoting sustainability and to encourage future inquiries. Design/methodology/approach: This study conducts a systematic review of 110 papers that demonstrate the utilization of ML in the context of sustainable development. Findings: ML techniques may play a vital role in enabling sustainable development by leveraging data to uncover patterns and facilitate the prediction of various variables, thereby aiding in decision-making processes. Through the synthesis of findings from prior research, it is evident that ML may help in achieving many of the United Nations’ sustainable development goals. Originality/value: This study represents one of the initial investigations that conducted a comprehensive examination of the literature concerning ML’s contribution to sustainability. The analysis revealed that the research domain is still in its early stages, indicating a need for further exploration. © 2023, Emerald Publishing Limited.
Author Keywords Artificial intelligence; Clean energy; Industry innovation; Learning algorithms; Responsible consumption; Smart cities


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