THE INTERSECTION OF AI AND HUMAN INTELLIGENCE

Authors

  • Pradeep Sambamurthy Nvidia Corporation, USA. Author

Keywords:

Artificial Intelligence, Human-AI Integration, Machine Learning, Cognitive Enhancement, Ethical Considerations

Abstract

This comprehensive article explores the intersection of Artificial Intelligence (AI) and human intelligence, examining their synergistic relationship and its transformative impact across various domains. It delves into the foundational technologies enabling this integration, including machine learning algorithms, natural language processing, and data analytics. The article discusses real-world applications in healthcare, education, business, and daily life, highlighting how AI augments human cognitive capabilities. It also addresses this technological convergence's challenges and ethical considerations, such as transparency, privacy, and job displacement. Finally, the article looks ahead to future directions in brain-computer interfaces, emotionally intelligent AI, and collaborative problem-solving systems, emphasizing the potential for AI and human intelligence to address complex global challenges collectively.

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Published

2024-08-02