This book explores the need for a dataācentric AI approach and its application in the multidisciplinary domain, compared to a modelācentric approach. It examines the methodologies for dataācentric approaches, the use of dataācentric approaches in different domains, the need for edge AI and how it differs from cloudābased AI. It discusses the new category of AI technology, "dataācentric AI" (DCAI), which focuses on comprehending, utilizing, and reaching conclusions from data. By adding machine learning and big data analytics tools, dataācentric AI modifies this by enabling it to learn from data rather than depending on algorithms. It can therefore make wiser choices and deliver more precise outcomes. Additionally, it has the potential to be significantly more scalable than conventional AI methods.
⢠Includes a collection of case studies with experimentation results to adhere to the practical approaches
⢠Examines challenges in dataset generation, synthetic datasets, analysis, and prediction algorithms in stochastic ways
⢠Discusses methodologies to achieve accurate results by improving the quality of data
⢠Comprises cases in healthcare and agriculture with implementation and impact of quality data in building AI applications
Data-Centric Artificial Intelligence for Multidisciplinary Applications - Parikshit N. Mahalle, Namrata Nishant Wasatkar & Gitanjali R. Shinde
By Parikshit N. Mahalle, Namrata Nishant Wasatkar & Gitanjali R. Shinde
This book explores the need for a dataācentric AI approach and its application in the multidisciplinary domain, compared to a modelācentric approach. It examines the methodologies for dataācentric approaches, the use of dataācentric approaches in different domains, the need for edge AI and how it differs from cloudābased AI. It discusses the new category of AI technology, "dataācentric AI" (DCAI), which focuses on comprehending, utilizing, and reaching conclusions from data. By adding machine learning and big data analytics tools, dataācentric AI modifies this by enabling it to learn from data rather than depending on algorithms. It can therefore make wiser choices and deliver more precise outcomes. Additionally, it has the potential to be significantly more scalable than conventional AI methods.
⢠Includes a collection of case studies with experimentation results to adhere to the practical approaches
⢠Examines challenges in dataset generation, synthetic datasets, analysis, and prediction algorithms in stochastic ways
⢠Discusses methodologies to achieve accurate results by improving the quality of data
⢠Comprises cases in healthcare and agriculture with implementation and impact of quality data in building AI applications
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