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Abstract
The increasing availability of personal data has enabled significant advances
in fields such as machine learning, healthcare, and cybersecurity. However,
this data abundance also raises serious privacy concerns, especially in light
of powerful re-identification attacks and growing legal and ethical demands for
responsible data use. Differential privacy (DP) has emerged as a principled,
mathematically grounded framework for mitigating these risks. This review
provides a comprehensive survey of DP, covering its theoretical foundations,
practical mechanisms, and real-world applications. It explores key algorithmic
tools and domain-specific challenges - particularly in privacy-preserving
machine learning and synthetic data generation. The report also highlights
usability issues and the need for improved communication and transparency in DP
systems. Overall, the goal is to support informed adoption of DP by researchers
and practitioners navigating the evolving landscape of data privacy.