Deep Learning for Cyber Threat Intelligence: Enhancing Security Through Automated Data Analysis

Main Article Content

Rajan Sharma

Abstract

Cyber threat intelligence (CTI) is vital for understanding and mitigating risks in the digital landscape. This paper explores the use of deep learning techniques to automate the analysis of threat intelligence data, including malware samples, threat actor profiles, and attack vectors. By employing convolutional neural networks and natural language processing, the model extracts meaningful patterns and insights from unstructured data sources, improving the speed and accuracy of threat identification. Case studies demonstrate the model's effectiveness in predicting emerging threats and informing proactive security measures, thereby enhancing overall cybersecurity resilience.

Downloads

Download data is not yet available.

Article Details

How to Cite
Deep Learning for Cyber Threat Intelligence: Enhancing Security Through Automated Data Analysis (R. Sharma , Trans.). (2022). International Journal of Creative Research In Computer Technology and Design, 4(4). https://jrctd.in/index.php/IJRCTD/article/view/71
Section
Articles

How to Cite

Deep Learning for Cyber Threat Intelligence: Enhancing Security Through Automated Data Analysis (R. Sharma , Trans.). (2022). International Journal of Creative Research In Computer Technology and Design, 4(4). https://jrctd.in/index.php/IJRCTD/article/view/71

References

Boppiniti, S. T. (2020). Big Data Meets Machine Learning: Strategies for Efficient Data Processing and Analysis in Large Datasets. International Journal of Creative Research In Computer Technology and Design, 2(2).

Boppiniti, S. T. (2021). Real-Time Data Analytics with AI: Leveraging Stream Processing for Dynamic Decision Support. International Journal of Management Education for Sustainable Development, 4(4).

Boppiniti, S. T. (2019). Machine Learning for Predictive Analytics: Enhancing Data-Driven Decision-Making Across Industries. International Journal of Sustainable Development in Computing Science, 1(3).

Balantrapu, S. S. (2022). Evaluating AI-Enhanced Cybersecurity Solutions Versus Traditional Methods: A Comparative Study. International Journal of Sustainable Development Through AI, ML and IoT, 1(1), 1-15.

Balantrapu, S. S. (2022). Ethical Considerations in AI-Powered Cybersecurity. International Machine learning journal and Computer Engineering, 5(5).

Balantrapu, S. S. (2021). The Impact of Machine Learning on Incident Response Strategies. International Journal of Management Education for Sustainable Development, 4(4), 1-17.

Balantrapu, S. S. (2019). Adversarial Machine Learning: Security Threats and Mitigations. International Journal of Sustainable Development in Computing Science, 1(3), 1-18.

Pillai, S. E. V. S., Polimetla, K., Avacharmal, R., & Perumal, A. P. (2022). Mental health in the tech industry: Insights from surveys and NLP analysis. JOURNAL OF RECENT TRENDS IN COMPUTER SCIENCE AND ENGINEERING (JRTCSE), 10(2), 22-33.

Deekshith, A. (2022). Cross-Disciplinary Approaches: The Role of Data Science in Developing AI-Driven Solutions for Business Intelligence. International Machine learning journal and Computer Engineering, 5(5).

Deekshith, A. (2021). Data Engineering for AI: Optimizing Data Quality and Accessibility for Machine Learning Models. International Journal of Management Education for Sustainable Development, 4(4), 1-33.

Most read articles by the same author(s)

<< < 1 2 3 4 5