Open Access Open Access  Restricted Access Subscription Access

Leveraging AI-Driven ChatGPT for Automated Data Preprocessing in Data Science


Affiliations
1 Vice President, Standard Chartered Global Business Services Sdn Bhd., Kuala Lumpur, Malaysia
2 Associate Professor, PG and Research Department of Computer Science, Sri Meenakshi Government Arts College for Women(A), Madurai, Tamil Nadu, India
3 Student – Cyber Security, School of Computer Science, University of Birmingham, Birmingham, United Kingdom
4 Student – Data Science, School of Engineering and Applied Sciences, University at Buffalo, The state University of New York, United States

In the rapidly evolving landscape of data science, the integration of AI-driven solutions has garnered increasing attention, particularly in the domain of data preprocessing. This study embarked on a comprehensive exploration of the potential, challenges, and implications inherent in incorporating AI-driven preprocessing solutions. Through a meticulous mixed-methods research design encompassing surveys, this study addressed three distinct research objectives. The findings reflect the intricate interplay of perspectives within the data science community. The comparative performance evaluation revealed a diverse range of opinions regarding the efficiency and accuracy of AIdriven preprocessing solutions. The ethical framework development highlighted the recognition of the significance of ethical considerations in AI-driven data preprocessing and its potential to enhance accountability and fairness. This study contributes a nuanced understanding of AI-driven ChatGPT for automated data preprocessing, encompassing technical, ethical, and practical dimensions. The elaborate analysis provides insights that guide responsible AI adoption and informed decision-making in data science workflows. As AI technologies continue to shape the landscape, these findings stand as a compass, guiding practitioners, researchers, and organisations toward a harmonious fusion of human expertise and AI capabilities in the realm of data preprocessing.

Keywords

AI-driven preprocessing, Automated data preprocessing, ChatGPT, Data science, Ethical Frameworks
User
Notifications
Font Size

Abstract Views: 65




  • Leveraging AI-Driven ChatGPT for Automated Data Preprocessing in Data Science

Abstract Views: 65  | 

Authors

Latha Narayanan Valli
Vice President, Standard Chartered Global Business Services Sdn Bhd., Kuala Lumpur, Malaysia
N. Sujatha
Associate Professor, PG and Research Department of Computer Science, Sri Meenakshi Government Arts College for Women(A), Madurai, Tamil Nadu, India
Mukul Mech
Student – Cyber Security, School of Computer Science, University of Birmingham, Birmingham, United Kingdom
Lokesh V S
Student – Data Science, School of Engineering and Applied Sciences, University at Buffalo, The state University of New York, United States

Abstract


In the rapidly evolving landscape of data science, the integration of AI-driven solutions has garnered increasing attention, particularly in the domain of data preprocessing. This study embarked on a comprehensive exploration of the potential, challenges, and implications inherent in incorporating AI-driven preprocessing solutions. Through a meticulous mixed-methods research design encompassing surveys, this study addressed three distinct research objectives. The findings reflect the intricate interplay of perspectives within the data science community. The comparative performance evaluation revealed a diverse range of opinions regarding the efficiency and accuracy of AIdriven preprocessing solutions. The ethical framework development highlighted the recognition of the significance of ethical considerations in AI-driven data preprocessing and its potential to enhance accountability and fairness. This study contributes a nuanced understanding of AI-driven ChatGPT for automated data preprocessing, encompassing technical, ethical, and practical dimensions. The elaborate analysis provides insights that guide responsible AI adoption and informed decision-making in data science workflows. As AI technologies continue to shape the landscape, these findings stand as a compass, guiding practitioners, researchers, and organisations toward a harmonious fusion of human expertise and AI capabilities in the realm of data preprocessing.

Keywords


AI-driven preprocessing, Automated data preprocessing, ChatGPT, Data science, Ethical Frameworks