Date of Award

12-2024

Document Type

Thesis

Degree Name

Master of Science in Information Systems and Technology

Department

Information and Decision Sciences

First Reader/Committee Chair

Oluwatosin Ogundare (Ph.D)

Abstract

ABSTRACT

Generative AI (GenAI) has become a fundamental part of modern life, influencing how we work, learn, and interact with technology. This project focuses specifically on text-based GenAI, which is widely used for tasks such as information gathering, code improvement, and content creation. Despite its benefits, it presents significant security risks that are often underestimated by users. This project investigates these risks and the corporate security gaps that lead to unintentional data leaks. The project also provides a brief overview of Large Language Models (LLMs), which are based on the deep learning technique known as Transformer architecture, used for performing Natural Language Processing (NLP) tasks. Additionally, a brief explanation of the Transformer architecture, including its main components, the encoder and decoder, has been included. The research objectives of this project are: (RO1) to understand how security risks emerge from text-based GenAI and (RO2) to examine how corporate security weaknesses enable unintended data disclosures. Two case studies were selected and analyzed to answer the research objectives. Findings reveal that GenAI safeguards are insufficient, allowing for prompt manipulation and various malicious activities, while inadequate employee training and guidelines contribute to data leaks. Conclusion highlights that, while text-based GenAI offers numerous benefits, it also carries significant security risks. Enhanced corporate training, stronger GenAI security measures, and effective mitigation strategies are essential to address these vulnerabilities. Future research could concentrate on developing these mitigation strategies, establishing standardized guidelines for secure AI usage in corporate environments, and exploring security measures for media-based and audio-based GenAI.

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