Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
11002561 | Computers & Security | 2018 | 39 Pages |
Abstract
In this paper, we propose VUDDY, an approach for the scalable detection of vulnerable code clones, which is capable of detecting security vulnerabilities in large software programs efficiently and accurately. Its extreme scalability is achieved by leveraging function-level granularity and a length-filtering technique that reduces the number of signature comparisons. This efficient design enables VUDDY to preprocess a billion lines of code in 14 hours and 17 minutes, after which it requires a few seconds to identify code clones. In addition, we designed a vulnerability-preserving abstraction technique that renders VUDDY resilient to common modifications in cloned code, while preserving the vulnerable conditions even after the abstraction is applied. This extends the scope of VUDDY to identifying variants of known vulnerabilities, with high accuracy. An implementation of VUDDY has been serviced online for free at IoTcube, an automated vulnerability detection platform. In this study, we describe its principles, evaluate its efficacy, and analyze the vulnerabilities VUDDY detected in various real-world software systems, such as Apache HTTPD server and an Android smartphone.
Related Topics
Physical Sciences and Engineering
Computer Science
Computer Networks and Communications
Authors
Seulbae Kim, Heejo Lee,