We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Artificial intelligence ‐ driven sustainable development: Examining organizational, technical, and processing approaches to achieving global goals.
- Authors
Kulkov, Ignat; Kulkova, Julia; Rohrbeck, Rene; Menvielle, Loick; Kaartemo, Valtteri; Makkonen, Hannu
- Abstract
This study presents a comprehensive literature review using a systematic approach to explore the role of artificial intelligence (AI) in promoting sustainable development in line with the United Nations Sustainable Development Goals (SDGs). The systematic review approach was applied to collect and analyze topics, and the literature search was conducted in two stages, encompassing 57 articles that met the research requirements. Our analysis reveals that AI's contribution to sustainability is concentrated within three key areas: organizational, technical, and processing aspects. The organizational aspect focuses on the integration of AI in companies and industries, addressing barriers to implementation and the relationship between companies, partners, and customers. The technical aspect highlights the development of AI algorithms that can address global challenges and contribute to the growth of stability and development in society. The processing aspect emphasizes the internal transformation of companies, their business models, and strategies in response to AI integration. Our proposed conceptual model outlines the essential elements organizations must consider when incorporating AI into their sustainability efforts, such as strategic alignment, infrastructure development, change management, and continuous improvement. By addressing these critical aspects, organizations can harness the potential of AI to drive positive social, environmental, and economic outcomes, ultimately contributing to the achievement of the SDGs. The model serves as a comprehensive framework for organizations seeking to leverage AI for sustainable development, but it should be adapted to individual contexts to ensure its relevance and effectiveness.
- Subjects
UNITED Nations; SUSTAINABLE development; ARTIFICIAL intelligence; CHANGE management; CONCEPTUAL models; BUSINESS models
- Publication
Sustainable Development, 2024, Vol 32, Issue 3, p2253
- ISSN
0968-0802
- Publication type
Article
- DOI
10.1002/sd.2773