CCS2025
PromeFuzz: A Knowledge-Driven Approach to Fuzzing Harness Generation with Large Language Models
Yuwei Liu, Junquan Deng, Xiangkun Jia, Yanhao Wang, Minghua Wang, Lin Huang, Tao Wei, Purui Su
摘要
API-level fuzzing has become increasingly important for discovering subtle bugs in modern software, yet generating effective fuzzing harnesses remains a complex and error-prone task. Existing approaches often rely on limited consumer code or shallow program analysis, which fail to capture deep API semantics and interdependencies, resulting in poor coverage and high false positive rates. Recent methods incorporating Large Language Models (LLMs) have improved harness generation by leveraging pretrained knowledge, but they still struggle with hallucinations and lack domain-specific understanding.