Harnessing Artificial Intelligence to Build Agile and Resilient Business Ecosystems for the Smart Economy of the Future
Keywords:
Artificial intelligence, agile business ecosystems, smart economy, resilience, predictive analyticsAbstract
The emergence of the smart economy transforms the business landscape, demanding innovative strategies to ensure resilience and adaptability. This article explores the pivotal role of artificial intelligence (AI) in shaping agile business ecosystems capable of navigating complex and dynamic market environments. By leveraging AI-driven technologies such as predictive analytics, autonomous decision-making, and intelligent resource optimization, organizations can enhance their operational efficiency, sustainability, and responsiveness to change. The study delves into real-world applications, including AI-powered stakeholder collaboration and supply chain agility, illustrating how businesses can integrate these technologies to achieve long-term resilience. Furthermore, it examines the interplay between AI and sustainable practices, emphasizing their combined potential to drive innovation and economic growth. As the smart economy evolves, this research highlights actionable insights for organizations to harness AI as a transformative tool, fostering agility and resilience in an ever-changing global market.
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