Exploration of the Development Path of Artificial Intelligence under the Innovation of the Multi-Intelligence Era

Authors

  • Qiu Min Sichuan Technology and Business University, Chengdu 611745, Sichuan

Keywords:

Artificial Intelligence, Multi-Intelligence Era, Technological Integration, Innovation System

Abstract

This paper explores the impact of the multi-intelligence era on the development of artificial intelligence, analyzes its main research directions, including intelligent simulation, swarm intelligence, computational intelligence, and brain-like intelligence, and proposes strategies to optimize the scientific and technological innovation system of artificial intelligence, emphasizing the importance of basic theoretical innovation, core technology breakthroughs, and technological integration innovation. The massive data, powerful computing power, and highly interconnected network infrastructure possessed by the multi-intelligence era provide unprecedented opportunities for the development of artificial intelligence, while also bringing new challenges. This paper deeply analyzes these opportunities and challenges and explores the future development path of artificial intelligence.

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Published

2026-07-07

How to Cite

Min, Q. (2026). Exploration of the Development Path of Artificial Intelligence under the Innovation of the Multi-Intelligence Era. International Journal of Advance in Applied Science Research, 5(6), 14–19. Retrieved from https://h-tsp.com/index.php/ijaasr/article/view/312

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Section

Articles