Artificial Intelligence: 70 Years Down the Road
- URL: http://arxiv.org/abs/2303.02819v1
- Date: Mon, 6 Mar 2023 01:19:25 GMT
- Title: Artificial Intelligence: 70 Years Down the Road
- Authors: Lin Zhang
- Abstract summary: We have analyzed the reasons from both technical and philosophical perspectives to help understand the reasons behind the past failures and current successes of AI.
We have concluded that the sustainable development direction of AI should be human-machine collaboration and a technology path centered on computing power.
- Score: 4.952211615828121
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Artificial intelligence (AI) has a history of nearly a century from its
inception to the present day. We have summarized the development trends and
discovered universal rules, including both success and failure. We have
analyzed the reasons from both technical and philosophical perspectives to help
understand the reasons behind the past failures and current successes of AI,
and to provide a basis for thinking and exploring future development.
Specifically, we have found that the development of AI in different fields,
including computer vision, natural language processing, and machine learning,
follows a pattern from rules to statistics to data-driven methods. In the face
of past failures and current successes, we need to think systematically about
the reasons behind them. Given the unity of AI between natural and social
sciences, it is necessary to incorporate philosophical thinking to understand
and solve AI problems, and we believe that starting from the dialectical method
of Marx is a feasible path. We have concluded that the sustainable development
direction of AI should be human-machine collaboration and a technology path
centered on computing power. Finally, we have summarized the impact of AI on
society from this trend.
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