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Accelerating National Defense: Using Large Language Models (LLM) and NLP for Real-Time Semantic Correlation and De-Duplication of Shared Threat Indicators

Title: Accelerating National Defense: Using Large Language Models (LLM) and NLP for Real-Time Semantic Correlation and De-Duplication of Shared Threat Indicators

Term Paper , 2025 , 46 Pages , Grade: 3.77 (very good)

Autor:in: Chukwunenye Amadi (Author)

Computer Science - SEO, Search Engine Optimization

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Summary Details

This research study examines the pivotal role of Large Language Models (LLMs) and Natural Language Processing (NLP) in transforming national defense intelligence operations faced with information overload. In the contemporary digital security landscape, defense agencies are inundated with vast volumes of unstructured, redundant, and fragmented threat data from diverse global sources, which hinders timely and accurate analysis. The study addresses this critical challenge by designing and evaluating an AI-driven framework specifically for the real-time semantic correlation and intelligent de-duplication of shared cyber threat indicators.
Utilizing open-source and synthetic intelligence datasets, the proposed system employs advanced embedding techniques to understand contextual meaning, cluster related threats, and eliminate semantic redundancies. The results conclusively demonstrate that this LLM-based approach substantially outperforms conventional keyword-matching systems in both accuracy and processing speed. The integration of such semantic intelligence tools not only alleviates the cognitive burden on human analysts but also provides a clearer, more actionable intelligence picture, thereby accelerating response times and strengthening overall national cybersecurity posture and defense readiness.

Details

Title
Accelerating National Defense: Using Large Language Models (LLM) and NLP for Real-Time Semantic Correlation and De-Duplication of Shared Threat Indicators
College
The University of York
Course
Cyber Security
Grade
3.77 (very good)
Author
Chukwunenye Amadi (Author)
Publication Year
2025
Pages
46
Catalog Number
V1683825
ISBN (eBook)
9783389173992
Language
English
Tags
Large Language Models (LLMs) Natural Language Processing (NLP) Cyber Threat Intelligence Semantic Correlation National Defense
Product Safety
GRIN Publishing GmbH
Quote paper
Chukwunenye Amadi (Author), 2025, Accelerating National Defense: Using Large Language Models (LLM) and NLP for Real-Time Semantic Correlation and De-Duplication of Shared Threat Indicators, Munich, GRIN Verlag, https://www.hausarbeiten.de/document/1683825
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Excerpt from  46  pages
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