DCAICRHEP-EXApr 16, 2017

A Security Monitoring Framework For Virtualization Based HEP Infrastructures

arXiv:1704.04782v12 citations
Originality Incremental advance
AI Analysis

This addresses security monitoring for High Energy Physics infrastructures, but it is incremental as it builds on existing virtualization and monitoring concepts.

The authors tackled the need for automated security monitoring in High Energy Physics distributed computing by developing a novel framework that achieves a fully virtualized environment to isolate services and jobs without significant performance impact, with a proof of concept for the ALICE experiment at CERN.

High Energy Physics (HEP) distributed computing infrastructures require automatic tools to monitor, analyze and react to potential security incidents. These tools should collect and inspect data such as resource consumption, logs and sequence of system calls for detecting anomalies that indicate the presence of a malicious agent. They should also be able to perform automated reactions to attacks without administrator intervention. We describe a novel framework that accomplishes these requirements, with a proof of concept implementation for the ALICE experiment at CERN. We show how we achieve a fully virtualized environment that improves the security by isolating services and Jobs without a significant performance impact. We also describe a collected dataset for Machine Learning based Intrusion Prevention and Detection Systems on Grid computing. This dataset is composed of resource consumption measurements (such as CPU, RAM and network traffic), logfiles from operating system services, and system call data collected from production Jobs running in an ALICE Grid test site and a big set of malware. This malware was collected from security research sites. Based on this dataset, we will proceed to develop Machine Learning algorithms able to detect malicious Jobs.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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