Google Cloud and Adaptive Machine Learning: Advancing Cybersecurity in the Age of Digitalization

Authors

  • Usman Hider, Rehan Aslam Department of Computer Science, University of Sargodha, Pakistan Author

Keywords:

Google Cloud, adaptive machine learning, cybersecurity, digitalization, threat detection, incident response, data privacy, predictive analytics

Abstract

In an era characterized by rapid digitalization and increasing cyber threats, leveraging advanced technologies is essential for enhancing cybersecurity measures. This paper explores the integration of Google Cloud's robust infrastructure with adaptive machine learning (AML) techniques to improve threat detection and response mechanisms. By harnessing the scalability and computational power of Google Cloud, organizations can analyze vast amounts of data in real-time, enabling the identification of anomalies and emerging threats with unprecedented accuracy. Adaptive machine learning algorithms learn from historical data and user interactions, allowing them to evolve and adapt to new attack vectors continuously. This paper discusses various use cases, including automated threat intelligence, predictive analytics, and incident response automation, demonstrating how this synergy can lead to more proactive and resilient cybersecurity strategies. Furthermore, it addresses challenges such as data privacy and compliance, emphasizing the importance of ethical considerations in deploying these technologies. Ultimately, the findings highlight the transformative potential of integrating Google Cloud with adaptive machine learning in creating a dynamic and responsive cybersecurity landscape.

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Published

2024-12-07