attack 2026

TEMPLATEFUZZ: Fine-Grained Chat Template Fuzzing for Jailbreaking and Red Teaming LLMs

Qingchao Shen 1, Zibo Xiao 1, Lili Huang 1, Enwei Hu 1, Yongqiang Tian 2, Junjie Chen 1

0 citations

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Published on arXiv

2604.12232

Prompt Injection

OWASP LLM Top 10 — LLM01

Key Finding

Achieves 98.2% average attack success rate with only 1.1% accuracy degradation on 12 open-source LLMs, outperforming SOTA by 9.1%-47.9% in ASR; attains 90% ASR on 5 commercial LLMs

TEMPLATEFUZZ

Novel technique introduced


Large Language Models (LLMs) are increasingly deployed across diverse domains, yet their vulnerability to jailbreak attacks, where adversarial inputs bypass safety mechanisms to elicit harmful outputs, poses significant security risks. While prior work has primarily focused on prompt injection attacks, these approaches often require resource-intensive prompt engineering and overlook other critical components, such as chat templates. This paper introduces TEMPLATEFUZZ, a fine-grained fuzzing framework that systematically exposes vulnerabilities in chat templates, a critical yet underexplored attack surface in LLMs. Specifically, TEMPLATEFUZZ (1) designs a series of element-level mutation rules to generate diverse chat template variants, (2) proposes a heuristic search strategy to guide the chat template generation toward the direction of amplifying the attack success rate (ASR) while preserving model accuracy, and (3) integrates an active learning-based strategy to derive a lightweight rule-based oracle for accurate and efficient jailbreak evaluation. Evaluated on twelve open-source LLMs across multiple attack scenarios, TEMPLATEFUZZ achieves an average ASR of 98.2% with only 1.1% accuracy degradation, outperforming state-of-the-art methods by 9.1%-47.9% in ASR and 8.4% in accuracy degradation. Moreover, even on five industry-leading commercial LLMs where chat templates cannot be specified, TEMPLATEFUZZ attains a 90% average ASR via chat template-based prompt injection attacks.


Key Contributions

  • Element-level mutation rules for generating diverse chat template variants
  • Heuristic search strategy to amplify attack success rate while preserving model accuracy
  • Active learning-based lightweight oracle for efficient jailbreak evaluation

🛡️ Threat Analysis


Details

Domains
nlp
Model Types
llmtransformer
Threat Tags
black_boxinference_timeuntargeted
Datasets
AdvBench
Applications
chatbotsconversational ai