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Abstract
DDoS attacks are one of the most prevalent and harmful cybersecurity threats
faced by organizations and individuals today. In recent years, the complexity
and frequency of DDoS attacks have increased significantly, making it
challenging to detect and mitigate them effectively. The study analyzes various
types of DDoS attacks, including volumetric, protocol, and application layer
attacks, and discusses the characteristics, impact, and potential targets of
each type. It also examines the existing techniques used for DDoS attack
detection, such as packet filtering, intrusion detection systems, and machine
learning-based approaches, and their strengths and limitations. Moreover, the
study explores the prevention techniques employed to mitigate DDoS attacks,
such as firewalls, rate limiting , CPP and ELD mechanism. It evaluates the
effectiveness of each approach and its suitability for different types of
attacks and environments. In conclusion, this study provides a comprehensive
overview of the different types of DDoS attacks, their detection, and
prevention techniques. It aims to provide insights and guidelines for
organizations and individuals to enhance their cybersecurity posture and
protect against DDoS attacks.