Home / Volume 7, Issue 2 / Technologies and Traditional Laws: Interrogating the Nexus of… Open access · CC BY-NC 4.0
Research Paper Volume 7 Issue 2 1911 - 1919 April 11, 2024

Technologies and Traditional Laws: Interrogating the Nexus of Generative AI and IPR in Indian and U.S.A Context

Lead author · Corresponding
Eshita Gupta
Student at Amity University, Amity Law School, NOIDA, India
View PDF Full text DOIhttps://doij.org/10.10000/IJLMH.117259
Abstract

The growing incorporation of Artificial Intelligence (AI) into creative processes has sparked significant inquiries regarding intellectual property rights (IPR). This paper explores the intricate relationship between generative AI and IPR, specifically examining copyright laws and use of copyrighted data for training AI models. By conducting a thorough analysis of legal frameworks in the United States and India, we explore the contrasting approaches to safeguarding AI-generated works and the obstacles presented by the use of copyrighted material in AI training. In addition, we delve into the impact of these legal uncertainties on the advancement and effectiveness of AI models. Our study seeks to offer a thorough grasp of the legal and ethical aspects of this ever-changing field.

Type
Research Paper
Information
International Journal of Law Management and Humanities, Volume 7, Issue 2, Page 1911 - 1919
DOI: https://doij.org/10.10000/IJLMH.117259
Creative Commons
CC BY-NC 4.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution–NonCommercial 4.0 International (CC BY-NC 4.0) (https://creativecommons.org/licenses/by-nc/4.0/), which permits remixing, adapting, and building upon the work for non-commercial use, provided the original work is properly cited.
Copyright
Copyright © IJLMH 2026
Disclaimer
The views and opinions expressed in this manuscript are those of the author(s) alone and do not reflect the views, policies, or position of the Journal.

Export citation


        
📢 Call for Papers — Volume IX Issue III now open  ·  Impact Factor 7.010  ·  Indexed in HeinOnline, Manupatra & Google Scholar + 1000+ Libraries  ·  Free DOI Submit Now →
Chat with us