Optimizing Secure AI Lifecycle Model Management With Innovative Generative AI Strategies

Generative AI (GAI) is one of the significant components that can efficiently improve and augment the AI cycle model’s robustness when it comes to different threats, weaknesses, and abnormalities detection. When applied in this field, GAI is very useful in emulating the various forms of s...

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Main Authors: Alaa Omran Almagrabi, Rafiq Ahmad Khan
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
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Online Access:https://ieeexplore.ieee.org/document/10742321/
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author Alaa Omran Almagrabi
Rafiq Ahmad Khan
author_facet Alaa Omran Almagrabi
Rafiq Ahmad Khan
author_sort Alaa Omran Almagrabi
collection DOAJ
description Generative AI (GAI) is one of the significant components that can efficiently improve and augment the AI cycle model’s robustness when it comes to different threats, weaknesses, and abnormalities detection. When applied in this field, GAI is very useful in emulating the various forms of security violations in actual adversarial settings. These scenarios are important when different aspects of an AI system are tested on how robust they are and thus permit the developers to amend any vulnerability that may be induced before the time it could be utilized in practice. Data and model manipulation, data theft, and adversarial attacks as well as model inference threats which we do a systematic analysis to disrupt the integrity, confidentiality as well as availability of AI models. Considering the current weaknesses and threats related to GAI we provide a systematic approach to how safety concerns that are currently relevant can be integrated with every stage of Artificial Intelligence (AI) lifecycle management: from continuous monitoring to the application of cybersecurity trends and practices, etc. In our approach, the emphasis is placed on the multi-level security management strategy that incorporates the improvement of coding practices, validation and testing, and the implementation of advanced intrusion detection systems. Before proceeding to further analysis and discussion of the given topic, it is also critical to mention the aspect of regulation and ethical concern as the major drivers of GAI usage. Additionally, organizations can involve GAI in the lifecycle to address security needs, during the development, acquisition, deployment, updating, maintenance, and decommissioning of the AI system, making them reliable, safe, and secure all through their lifecycle. Toward these ends, the goal of this work is to present a set of canonical recommendations for the many scientists, engineers, managers, technologists, and policymakers who will play a key role in constructing a sound and secure AI future.
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spelling doaj-art-6b737720554245b69db6698043db76952025-01-25T00:02:38ZengIEEEIEEE Access2169-35362025-01-0113128891292010.1109/ACCESS.2024.349137310742321Optimizing Secure AI Lifecycle Model Management With Innovative Generative AI StrategiesAlaa Omran Almagrabi0https://orcid.org/0000-0002-4858-9366Rafiq Ahmad Khan1https://orcid.org/0000-0002-5983-9981Department of Information Systems, Faculty of Computing and Information Technology, King Abdulaziz University, Jeddah, Saudi ArabiaDepartment of Computer Science and IT, Software Engineering Research Group, University of Malakand, Chakdara, PakistanGenerative AI (GAI) is one of the significant components that can efficiently improve and augment the AI cycle model’s robustness when it comes to different threats, weaknesses, and abnormalities detection. When applied in this field, GAI is very useful in emulating the various forms of security violations in actual adversarial settings. These scenarios are important when different aspects of an AI system are tested on how robust they are and thus permit the developers to amend any vulnerability that may be induced before the time it could be utilized in practice. Data and model manipulation, data theft, and adversarial attacks as well as model inference threats which we do a systematic analysis to disrupt the integrity, confidentiality as well as availability of AI models. Considering the current weaknesses and threats related to GAI we provide a systematic approach to how safety concerns that are currently relevant can be integrated with every stage of Artificial Intelligence (AI) lifecycle management: from continuous monitoring to the application of cybersecurity trends and practices, etc. In our approach, the emphasis is placed on the multi-level security management strategy that incorporates the improvement of coding practices, validation and testing, and the implementation of advanced intrusion detection systems. Before proceeding to further analysis and discussion of the given topic, it is also critical to mention the aspect of regulation and ethical concern as the major drivers of GAI usage. Additionally, organizations can involve GAI in the lifecycle to address security needs, during the development, acquisition, deployment, updating, maintenance, and decommissioning of the AI system, making them reliable, safe, and secure all through their lifecycle. Toward these ends, the goal of this work is to present a set of canonical recommendations for the many scientists, engineers, managers, technologists, and policymakers who will play a key role in constructing a sound and secure AI future.https://ieeexplore.ieee.org/document/10742321/Generative artificial intelligenceAI lifecycle modelsecurity threats and practicessystematic mapping study
spellingShingle Alaa Omran Almagrabi
Rafiq Ahmad Khan
Optimizing Secure AI Lifecycle Model Management With Innovative Generative AI Strategies
IEEE Access
Generative artificial intelligence
AI lifecycle model
security threats and practices
systematic mapping study
title Optimizing Secure AI Lifecycle Model Management With Innovative Generative AI Strategies
title_full Optimizing Secure AI Lifecycle Model Management With Innovative Generative AI Strategies
title_fullStr Optimizing Secure AI Lifecycle Model Management With Innovative Generative AI Strategies
title_full_unstemmed Optimizing Secure AI Lifecycle Model Management With Innovative Generative AI Strategies
title_short Optimizing Secure AI Lifecycle Model Management With Innovative Generative AI Strategies
title_sort optimizing secure ai lifecycle model management with innovative generative ai strategies
topic Generative artificial intelligence
AI lifecycle model
security threats and practices
systematic mapping study
url https://ieeexplore.ieee.org/document/10742321/
work_keys_str_mv AT alaaomranalmagrabi optimizingsecureailifecyclemodelmanagementwithinnovativegenerativeaistrategies
AT rafiqahmadkhan optimizingsecureailifecyclemodelmanagementwithinnovativegenerativeaistrategies