AIGC In China: Current Developments And Future Outlook
- URL: http://arxiv.org/abs/2308.08451v2
- Date: Mon, 21 Aug 2023 07:23:13 GMT
- Title: AIGC In China: Current Developments And Future Outlook
- Authors: Xiangyu Li, Yuqing Fan, Shenghui Cheng
- Abstract summary: This study aims to analyze China's current status in the field of AIGC.
The investigation begins with an overview of the foundational technologies and current applications of AIGC.
The paper provides a comprehensive examination of AIGC products and their corresponding ecosystem.
- Score: 3.43268168345109
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The increasing attention given to AI Generated Content (AIGC) has brought a
profound impact on various aspects of daily life, industrial manufacturing, and
the academic sector. Recognizing the global trends and competitiveness in AIGC
development, this study aims to analyze China's current status in the field.
The investigation begins with an overview of the foundational technologies and
current applications of AIGC. Subsequently, the study delves into the market
status, policy landscape, and development trajectory of AIGC in China,
utilizing keyword searches to identify relevant scholarly papers. Furthermore,
the paper provides a comprehensive examination of AIGC products and their
corresponding ecosystem, emphasizing the ecological construction of AIGC.
Finally, this paper discusses the challenges and risks faced by the AIGC
industry while presenting a forward-looking perspective on the industry's
future based on competitive insights in AIGC.
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