Innovative Scientific Discoveries: The Role of Intelligent Computing in the Fifth Paradigm Shift
Download PDF
$currentUrl="http://$_SERVER[HTTP_HOST]$_SERVER[REQUEST_URI]"

Keywords

Fifth paradigm
General artificial intelligence
Intelligent computing

DOI

10.26689/jera.v8i5.8470

Submitted : 2024-09-15
Accepted : 2024-09-30
Published : 2024-10-15

Abstract

This article explores the key role of intelligent computing in driving the paradigm shift of scientific discovery. The article first outlines the five paradigms of scientific discovery, from empirical observation to theoretical models, then to computational simulation and data intensive science, and finally introduces intelligent computing as the core of the fifth paradigm. Intelligent computing enhances the ability to understand, predict, and automate scientific discoveries of complex systems through technologies such as deep learning and machine learning. The article further analyzes the applications of intelligent computing in fields such as bioinformatics, astronomy, climate science, materials science, and medical image analysis, demonstrating its practical utility in solving scientific problems and promoting knowledge development. Finally, the article predicts that intelligent computing will play a more critical role in future scientific research, promoting interdisciplinary integration, open science, and collaboration, providing new solutions for solving complex problems.

References

Meng J, 2023, Prospect of Language Intelligence Statistical Paradigm—Methodology Construction of “Language Intelligence Discipline” (Part 2). Foreign Language Electronic Teaching, 2023(06): 50–56 + 113. https://doi.org/10.20139/j.issn.1001-5795.20230609

Cui L, 2024, ZTE: Accelerating the Prosperity of Intelligent Computing Ecology. Communication Industry Report, published May 20, 2024: 027. https://doi.org/10.28806/n.cnki.ntxcy.2024.000158

Ye Y, Cao Q, Yin X, et al., 2024, Research on the Theoretical Mechanism and Practical Path of Innovation Consortium Empowering New Quality Productivity. Technological Progress and Countermeasures, 2024: 1–13. http://kns.cnki.net/kcms/detail/42.1224.G3.20240603.0840.002.html

Song W, 2023, Rethinking the Paradigm and Core of Realism. World Economy and Politics, 2023(08): 143–162 + 168.

Jiang Y, Lu X, Xiao L, 2023, Accelerating the Implementation of Intelligent Computing “China Definition.” Science and Technology Daily, published July 10, 2023: 006. https://doi.org/10.28502/n.cnki.nkjrb.2023.003778

Liu G, Cao X, Zhao H, 2024, Deep Learning Framework for Predicting Key Proteins Based on Feature Map Networks and Multiple Bioinformatics. Journal of Jilin University (Science Edition), 62(03): 593–605. https://doi.org/10.13413/j.cnki.jdxblxb.2023227

Luo Y, 2024, Strong Demand for Intelligent Computing. Data Center Service Providers Racing for Iteration. 21st Century Business Herald, published June 21, 2024: 012.

Xie Z, 2024, Computational Thinking Towards the Era of “Intelligent Computing.” China Information Technology Education, 2024(10): 1.

Zhi C, 2022, The Upgrading of Traditional Industries to Intelligent Computing Centers is Key. Shanghai Quality, 2022(01): 16–17.

Dong Y, Zhang J, Xie C, et al., 2024, A Review of Key Issues in Edge Intelligent Computing Under Cloud Edge Architecture: Computation Optimization and Computation Offloading. Journal of Electronics and Information Technology, 46(03): 765–776.

Xu Z, 2024, Brain Science and Brain Like Intelligence Research in the Intelligent Age. Journal of the Chinese Academy of Sciences, 39(05): 840–850. https://doi.org/10.16418/j.issn.1000-3045.20240305003

Zhang H, Wang H, Lu R, et al., 2024, Application Progress of Protein Structure Prediction Model AlphaFold2. Chinese Journal of Bioengineering, 40(05): 1406–1420. https://doi.org/10.13345/j.cjb.230677

Jin L, Huang Y, Cai Y, et al., 2020, A Review of Tropical Cyclone Forecasting Using Artificial Intelligence Technology (Part 2)—Manifold Learning, Intelligent Computing, and Deep Learning Methods for Tropical Cyclone Forecasting. Meteorological Research and Application, 41(04): 5–12.

Gu Y, 2024, Accurate Surveying and Mapping of Mountains and Rivers in the Earth. People’s Daily, published June 25, 2024: 007.

Eisenstein M, 2024, The Seven Most Important Technologies to Pay Attention to. Ningbo Economy (Financial Perspective), 2024(04): 32–34.