Abstract
With the rapid evolution of information technology, malware has become an advanced cybersecurity
threat, targeting computer systems, smart devices, and large-scale networks in real time. Traditional detection
methods often fail to recognize emerging malware variants due to limitations in accuracy, adaptability, and
response time. This paper presents a comprehensive review of machine learning algorithms for real-time
malware detection, categorizing existing approaches based on their methodologies and effectiveness. The
study examines recent advancements and evaluates the performance of various machine learning techniques in
detecting malware with minimal false positives and improved scalability. Additionally, key challenges, such as
adversarial attacks, computational overhead, and real-time processing constraints, are discussed, along with
potential solutions to enhance detection capabilities. An empirical evaluation is conducted to assess the
effectiveness of different machine learning models, providing insights for future research in real-time malware
detection.