A microservices-based endpoint monitoring platform with predictive NLP models for real-time security and hate-speech risk alerting
Darlan Noetzold, Anubis Graciela De Moraes Rossetto, Juan Francisco De Paz Santana, Valderi Reis Quietinho Leithard
TLDR
A microservices platform uses predictive NLP to provide real-time security and hate-speech risk alerts from endpoint data, unifying monitoring and analytics.
Key contributions
- A unified microservices platform monitors endpoints for security and compliance risks.
- Integrates predictive NLP models for real-time hate-speech and security alerting.
- Achieves 87% accuracy in hate-speech detection using transformer models like BERT.
- Centralizes alert management, detecting data exfiltration and policy violations promptly.
Why it matters
Existing solutions for endpoint security and content monitoring are often siloed, delaying incident response. This platform offers a unified, real-time approach, combining monitoring, security analytics, and predictive NLP to proactively address data leakage, policy violations, and hate-speech in corporate communications.
Original Abstract
Organizations increasingly depend on endpoint devices and corporate communication channels, yet they still face critical risks such as sensitive data leakage, suspicious user behavior, and the circulation of hateful or harmful language in workplace contexts. Current solutions frequently address these issues in isolation (e.g., productivity tracking, data loss prevention, or hate-speech detection), limiting correlation across signals and delaying incident response. This work proposes a unified, microservices-based platform that collects endpoint telemetry and applies predictive natural language processing models to support real-time security and compliance alerting. The architecture is modular and scalable, relying on RabbitMQ for event ingestion and routing and Redis for low-latency data access and alert delivery. For text classification, transformer-based models such as BERT are evaluated for hate-speech risk detection, achieving an average accuracy of 87\%. Experimental results indicate that the proposed platform can promptly surface indicators of data exfiltration and policy violations while centralizing alert management, providing an integrated framework that combines monitoring, security analytics, and predictive capabilities.
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