Using Deep Learning to Enhance Incident Response in Cybersecurity: Analyzing Visual Data for Faster Decision Making
Published 20-12-2023
Keywords
- Deep Learning,
- Cybersecurity,
- Incident Response,
- Visual Data
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
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Abstract
In an era where cyber threats are becoming increasingly sophisticated, organizations must enhance their incident response capabilities to protect their assets effectively. This paper explores the application of deep learning techniques in analyzing visual data to expedite incident response in cybersecurity. By leveraging advancements in computer vision and neural networks, organizations can process and analyze large volumes of visual data in real time. The paper discusses how these technologies can facilitate faster and more accurate decision-making during cyber incidents, thereby improving overall security posture. The research highlights case studies and provides recommendations for integrating deep learning into incident response frameworks. The findings demonstrate that deep learning not only enhances the efficiency of incident response but also significantly reduces response times, enabling organizations to mitigate risks effectively.
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