AI in Scientific Research: Empowering Researchers with Intelligent Tools

Authors

  • Srikanth Padakanti Texas A&M University, USA Author
  • Phanindra Kalva Towson University, USA Author
  • Venkatarama Reddy Kommidi Avco Consulting, USA Author

DOI:

https://doi.org/10.32628/CSEIT241051012

Keywords:

Artificial Intelligence in Science, Machine Learning Research Tools, AI-Driven Data Analysis, Interdisciplinary AI Collaboration, Ethical AI in Scientific Discovery

Abstract

This article explores the transformative impact of artificial intelligence (AI) on scientific research across various disciplines. It examines how AI-driven tools are revolutionizing data analysis, simulation, and hypothesis generation, particularly in fields such as genomics, climate science, and materials science. The article discusses the acceleration of discovery processes through AI, highlighting its role in enabling sophisticated analysis of complex datasets, developing predictive models, and facilitating automated experimentation. Ethical considerations, including the need for transparency and reproducibility in AI-assisted research, are addressed. The synergy between human creativity and AI capabilities is explored, emphasizing how AI augments human ingenuity and fosters interdisciplinary collaboration. Case studies illustrate successful implementations of AI in scientific inquiry, demonstrating its potential to enhance research methodologies and outcomes. The article also looks ahead to the prospects of AI in scientific research, considering emerging technologies and the evolving role of AI in the scientific process. By providing a comprehensive overview of AI's current applications and future potential in scientific research, this article underscores the pivotal role of AI in advancing scientific knowledge and addressing complex global challenges.

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References

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Published

09-10-2024

Issue

Section

Research Articles

How to Cite

[1]
Srikanth Padakanti, Phanindra Kalva, and Venkatarama Reddy Kommidi, “AI in Scientific Research: Empowering Researchers with Intelligent Tools”, Int. J. Sci. Res. Comput. Sci. Eng. Inf. Technol, vol. 10, no. 5, pp. 416–422, Oct. 2024, doi: 10.32628/CSEIT241051012.

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