Adversarial attacks on artificial intelligence (AI) systems have become a growing concern in the field of cybersecurity. Such attacks are based on minor alterations in the input data that may mislead AI models and make wrong judgments, which is a serious threat to many industries, which use AI technologies, including autonomous vehicles, healthcare, and finance. The growing complexities in such attacks bring out weak points to AI systems, which poses threat to their integrity, safety and reliability. This study examines adversarial attacks and how such attacks are made and their effect on AI-based systems. The research looks at different defence strategies and their contributions towards curbing such threats. The research mentions the main issues of detecting and defending against adversarial attacks through an in-depth analysis of real-life case studies and the necessity to harness the issue with enhanced security precautions. The approach is a synthesis of case studies, simulations, and metrics of evaluation in order to understand the susceptibility of AI models. Significant details of the research include the ever-increasing mounting sophistication of attacks and the dire necessity of sturdy defense measures to secure the AI systems.
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Ramesh Sharma Poudel
Mohammad Mosiur Rahman
Md Mashfiquer Rahman
International Journal of Science and Research Archive
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Poudel et al. (Sat,) studied this question.
www.synapsesocial.com/papers/68af65a1ad7bf08b1eae5c37 — DOI: https://doi.org/10.30574/ijsra.2023.10.2.1086
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