Data Centric AI: Transforming the Future of Artificial Intelligence and Analytics

Authors

  • Rashi Nimesh Kumar Dhenia Independent Researcher, USA. Author
  • Ishva Jitendrakumar Kanani Independent Researcher, USA. Author
  • Raghavendra Sridhar Independent Researcher, USA. Author

DOI:

https://doi.org/10.63282/3050-9262.IJAIDSML-V4I2P111

Keywords:

Data, AI, Machine Learning, Diversity

Abstract

Data-centric AI has emerged as a pivotal paradigm in artificial intelligence and data analytics, shifting the focus from model-centric to data-driven approaches. This paper explores the evolution, methodologies, and transformative impact of data-centric AI on various industries. It reviews the theoretical underpinnings, key applications, and challenges associated with ensuring data quality, labeling, and governance. The discussion highlights how datacentric strategies are enabling more robust, ethical, and scalable AI systems, setting the stage for future innovation across sectors

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Published

2023-06-30

Issue

Section

Articles

How to Cite

1.
Dhenia RNK, Kanani IJ, Sridhar R. Data Centric AI: Transforming the Future of Artificial Intelligence and Analytics. IJAIDSML [Internet]. 2023 Jun. 30 [cited 2025 Sep. 16];4(2):101-4. Available from: https://ijaidsml.org/index.php/ijaidsml/article/view/202