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Dataset for Systematic Review of IAM Advancements: Insights into AI, Blockchain, and Zero Trust Architectures

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Figshare2025-07-08 更新2026-04-28 收录
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https://figshare.com/articles/dataset/_b_Dataset_for_Systematic_Review_of_IAM_Advancements_b_b_b_b_Systematic_Insights_into_AI_Blockchain_and_Zero_Trust_Architectures_b_/29452097
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Advances in Identity and Access Management (IAM): Systematic Insights into AI, Blockchain, and Zero Trust ArchitecturesIn an era of expanding digital infrastructure, cloud computing, and remote work, robust Identity and Access Management (IAM) systems are critical for securing sensitive data and ensuring regulatory compliance. This research paper provides a comprehensive systematic review of recent advancements in IAM technologies, addressing the limitations of traditional centralized systems, such as single points of failure and privacy concerns. Utilizing the PRISMA methodology, the study analyzes five peer-reviewed articles from a pool of 23 retrieved from Scopus, published between 2021 and 2025. Key innovations explored include passwordless authentication, AI-driven adaptive authentication, Zero Trust architectures, decentralized identity (DID), self-sovereign identity (SSI), and privacy-enhancing cryptographic techniques like zero-knowledge proofs. The review highlights their applications in multi-cloud, IoT, and hybrid environments, emphasizing enhanced security, user experience, and interoperability. Challenges such as standardization gaps, implementation costs, and privacy concerns are discussed, alongside future directions, including universal protocols and IoT integration. A publicly accessible dataset (DOI: 10.5281/zenodo.12345678) ensures reproducibility. This work serves as an essential resource for cybersecurity researchers and practitioners seeking to navigate the evolving landscape of IAM technologies.
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2025-07-08
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