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LLM-Powered Silent Bug Fuzzing in Deep Learning Libraries via Versatile and Controlled Bug Transfer

  • Kunpeng ZHANG
  • , Dongwei XIAO
  • , Daoyuan WU
  • , Shuai WANG
  • , Jiali ZHAO
  • , Yuanyi LIN
  • , Tongtong XU
  • , Shaohua WANG

Research output: Journal PublicationsJournal Article (refereed)peer-review

Abstract

Deep learning (DL) libraries are widely used in critical applications, where even subtle silent bugs can lead to serious consequences. While existing DL fuzzing techniques have made progress in detecting crashes, they inherently struggle to detect silent bugs due to the lack of effective test programs and corresponding oracles.

Building on the observation that historical bug reports contain rich, underutilized information about silent bugs, we leverage large language models (LLMs) to perform versatile yet controlled bug transfer for silent bug fuzzing. Specifically, our approach uses LLMs to extract context-aware bug patterns from historical issues, match semantically related Application Programming Interfaces (APIs) using functionality-based embeddings, and synthesize test cases with customized oracles. This enables proactive detection of silent bugs by transferring high-risk contexts and oracle designs from known buggy APIs to functionally similar target APIs. To ensure the reliability of our context-aware bug transfer, we introduce an LLM-powered self-validation module that systematically evaluates the validity of each transferred bug instance. We implement this methodology in a tool named TransFuzz and evaluate it on three mainstream DL libraries: PyTorch, TensorFlow, and MindSpore. TransFuzz successfully discovers 79 previously unknown bugs (12 confirmed as Common Vulnerabilities and Exposures (CVEs)) in 10 bug types, demonstrating its effectiveness and generalizability in migrating DL library bug discovery capabilities.
Original languageEnglish
Article number150
Pages (from-to)1599-1626
Number of pages28
JournalProceedings of the ACM on Programming Languages
Volume10
Issue numberOOPSLA1
DOIs
Publication statusPublished - 10 Apr 2026

Bibliographical note

Publisher Copyright:
© 2026 Owner/Author.

Keywords

  • Deep Learning Library
  • Fuzzing
  • Large Language Model
  • Silent Bug

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