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Main Authors: S, Swetha, Shaju, Ram Sundhar K, M, Rakshana, R, Ganesh, S, Balavedhaa, U, Thiruvaazhi
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.09095
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author S, Swetha
Shaju, Ram Sundhar K
M, Rakshana
R, Ganesh
S, Balavedhaa
U, Thiruvaazhi
author_facet S, Swetha
Shaju, Ram Sundhar K
M, Rakshana
R, Ganesh
S, Balavedhaa
U, Thiruvaazhi
contents The ability of machines to comprehend and produce language that is similar to that of humans has revolutionized sectors like customer service, healthcare, and finance thanks to the quick advances in Natural Language Processing (NLP), which are fueled by Generative Artificial Intelligence (AI) and Large Language Models (LLMs). However, because LLMs trained on large datasets may unintentionally absorb and reveal Personally Identifiable Information (PII) from user interactions, these capabilities also raise serious privacy concerns. Deep neural networks' intricacy makes it difficult to track down or stop the inadvertent storing and release of private information, which raises serious concerns about the privacy and security of AI-driven data. This study tackles these issues by detecting Generative AI weaknesses through attacks such as data extraction, model inversion, and membership inference. A privacy-preserving Generative AI application that is resistant to these assaults is then developed. It ensures privacy without sacrificing functionality by using methods to identify, alter, or remove PII before to dealing with LLMs. In order to determine how well cloud platforms like Microsoft Azure, Google Cloud, and AWS provide privacy tools for protecting AI applications, the study also examines these technologies. In the end, this study offers a fundamental privacy paradigm for generative AI systems, focusing on data security and moral AI implementation, and opening the door to a more secure and conscientious use of these tools.
format Preprint
id arxiv_https___arxiv_org_abs_2504_09095
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Privacy Preservation in Gen AI Applications
S, Swetha
Shaju, Ram Sundhar K
M, Rakshana
R, Ganesh
S, Balavedhaa
U, Thiruvaazhi
Cryptography and Security
Artificial Intelligence
The ability of machines to comprehend and produce language that is similar to that of humans has revolutionized sectors like customer service, healthcare, and finance thanks to the quick advances in Natural Language Processing (NLP), which are fueled by Generative Artificial Intelligence (AI) and Large Language Models (LLMs). However, because LLMs trained on large datasets may unintentionally absorb and reveal Personally Identifiable Information (PII) from user interactions, these capabilities also raise serious privacy concerns. Deep neural networks' intricacy makes it difficult to track down or stop the inadvertent storing and release of private information, which raises serious concerns about the privacy and security of AI-driven data. This study tackles these issues by detecting Generative AI weaknesses through attacks such as data extraction, model inversion, and membership inference. A privacy-preserving Generative AI application that is resistant to these assaults is then developed. It ensures privacy without sacrificing functionality by using methods to identify, alter, or remove PII before to dealing with LLMs. In order to determine how well cloud platforms like Microsoft Azure, Google Cloud, and AWS provide privacy tools for protecting AI applications, the study also examines these technologies. In the end, this study offers a fundamental privacy paradigm for generative AI systems, focusing on data security and moral AI implementation, and opening the door to a more secure and conscientious use of these tools.
title Privacy Preservation in Gen AI Applications
topic Cryptography and Security
Artificial Intelligence
url https://arxiv.org/abs/2504.09095