Human-AI Collaboration: Advancing Productivity and Decision-making
Abstract
The collaboration between humans and artificial intelligence (AI) systems is reshaping industries and decision-making processes. This paper explores the significance of human-AI collaboration, emphasizing its role in enhancing productivity, data analysis, and decision support. It delves into various aspects, including AI-assisted workflows, machine learning algorithms, and natural language processing. The discussion includes the benefits of human-AI partnership, such as faster data insights, reduced errors, and improved resource allocation. Moreover, the paper addresses the challenges and ethical considerations in integrating AI into human-centric domains, including bias and accountability. Through a review of human-AI collaboration studies and applications, the study highlights the positive outcomes associated with this transformative synergy.
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References
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