Cybersecurity Attack Detection Using LSTM and ResNet-50 Hybrid Model with Cloud Deployment

Authors

  • Venkata Surya Teja Gollapalli Author
  • Kannan Srinivasan Author
  • Guman Singh Chauhan Author
  • Rahul Jadon Author
  • Rajababu Budda Author
  • R Padmavathy Author

Keywords:

Cybersecurity

Abstract

As the number of complex cybersecurity threats accelerates at a fast pace, real-time attack identification
is now essential in defending computer systems. These methods are challenged by high-dimensional data, class
imbalance, and low scalability, resulting in low accuracy and increased false positives. This paper introduces a
hybrid DL archetype combining ResNet-50 for feature extraction and LSTM in learning lay sequences, running
on AWS Sage Maker for scalable cloud inference and training. The method involves extensive data pre-
processing, including imputation, one-hot encoding, and feature scaling, with model training optimized through
the Adam algorithm. Experimental results show excellent performance, with 99.50% of accuracy, 99.20% of
precision, 99.30% of recall, 99.40% of F1-score, and an AUC of 0.999998. These findings demonstrate the
strength and efficiency of the framework in real-time detection of cybersecurity attacks, providing an
enhancement over previous solutions through the ability to efficiently process intricate data patterns and deploy
quickly in cloud environments.

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Published

30-06-2023

How to Cite

Cybersecurity Attack Detection Using LSTM and ResNet-50 Hybrid Model with Cloud Deployment. (2023). Indo-American Journal of Mechanical Engineering, 12(2), 33-46. http://iajme.com/index.php/iajme/article/view/119

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