Score: 2

ZTaint-Havoc: From Havoc Mode to Zero-Execution Fuzzing-Driven Taint Inference

Published: June 10, 2025 | arXiv ID: 2506.08838v1

By: Yuchong Xie, Wenhui Zhang, Dongdong She

Potential Business Impact:

Finds software flaws faster by changing data.

Business Areas:
Penetration Testing Information Technology, Privacy and Security

Fuzzing is a widely used technique for discovering software vulnerabilities, but identifying hot bytes that influence program behavior remains challenging. Traditional taint analysis can track such bytes white-box, but suffers from scalability issue. Fuzzing-Driven Taint Inference (FTI) offers a black-box alternative, yet typically incurs significant runtime overhead due to extra program executions. We observe that the commonly used havoc mutation scheme in fuzzing can be adapted for lightweight FTI with zero extra executions. We present a computational model of havoc mode, demonstrating that it can perform FTI while generating new test cases. Building on this, we propose ZTaint-Havoc, a novel, efficient FTI with minimal overhead (3.84% on UniBench, 12.58% on FuzzBench). We further design an effective mutation algorithm utilizing the identified hot bytes. Our comprehensive evaluation shows that ZTaint-Havoc, implemented in AFL++, improves edge coverage by up to 33.71% on FuzzBench and 51.12% on UniBench over vanilla AFL++, with average gains of 2.97% and 6.12% in 24-hour fuzzing campaigns.

Country of Origin
🇭🇰 🇨🇳 China, Hong Kong

Repos / Data Links

Page Count
23 pages

Category
Computer Science:
Cryptography and Security