Visible to the public Coordinated Machine Learning-Based Vulnerability & Security Patching for Resilient Virtual Computing InfrastructureConflict Detection Enabled

PI(s), Co-PI(s), Researchers:

PI: Helen Gu; Researchers: Olufogorehan Tunde-Onadele (Fogo)

HARD PROBLEM(S) ADDRESSED
This refers to Hard Problems, released November 2012.

Resilient Architectures

Our research aims at aiding administrators of virtualized computing infrastructures in making services more resilient to security attacks through applying machine learning to reduce both security and functionality risks in software patching by continually monitoring patched and unpatched software to discover vulnerabilities and triggering proper security updates.

PUBLICATIONS
Papers written as a result of your research from the current quarter only.

KEY HIGHLIGHTS
Each effort should submit one or two specific highlights. Each item should include a paragraph or two along with a citation if available. Write as if for the general reader of IEEE S&P.
The purpose of the highlights is to give our immediate sponsors a body of evidence that the funding they are providing (in the framework of the SoS lablet model) is delivering results that "more than justify" the investment they are making.

In this quarter, we continued to study a hybrid learning framework that combines our previous CDL solution with a supervised learning model to further improve our attack detection accuracy. We also further studied how to identify vulnerable code patterns automatically by analyzing code control flows to extract call paths that can reach vulnerable Java library functions or infinite loops.

COMMUNITY ENGAGEMENTS

EDUCATIONAL ADVANCES: