Real-Time Cyber Threat Monitoring And Analysis

10 Mar

Authors: Professor Snehal chitale, Prashant shingote, Aditya Surve, Nikhil Suravkar

Abstract: The exponential growth of digital infrastructure and the increasing sophistication of cyber adversaries have made threat detection and situational awareness critical challenges for modern organizations, as traditional monitoring methods often rely on manual analysis and fail to keep pace with the velocity of online information. To overcome these limitations, this project presents an integrated platform for Real-Time Cyber Incident Monitoring and Analysis. The system autonomously aggregates unstructured data from diverse public sources, including social media platforms and news feeds, to extract critical indicators of compromise. It utilizes a machine learning engine to filter irrelevant noise, classify incidents by severity, and compare this data against historical patterns to identify genuine security events. The platform also includes a dynamic visualization dashboard that allows analysts to monitor live threat feeds, track regional incident trends, and receive instant alerts to accelerate response times. To enhance decision-making and operational efficiency, the system incorporates automated severity scoring and detailed event logging. In addition, region-specific filtering—specifically for the Indian cyber space—is provided to help organizations align their defense strategies with local threat landscapes. The proposed solution aims to reduce the time between incident occurrence and detection, improve analyst productivity, and support proactive cybersecurity measures. Functional evaluation and system testing indicate that the tool effectively streamlines the intelligence lifecycle and provides accurate, real-time situational awareness.