Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

When Efficiency Backfires: Cascading LLMs Trigger Cascade Failure under Adversarial Attack

About

Large Language Model (LLM) cascade systems are designed to balance efficiency and performance by processing queries with lightweight models while selectively escalating complex cases to more powerful ones. Such systems seek to reduces computational cost and latency while maintaining task performance, making it an appealing choice for large-scale deployment. However, the cascade design introduces new vulnerabilities through an expanded attack surface: the inclusion of lightweight front-end models and internal decision mechanisms introduces new weaknesses. In this work, we present the first study demonstrating that LLM cascade systems are susceptible to targeted adversarial manipulation, which disrupts both performance objectives and the intended cost advantages of the cascade design. We propose a novel attack framework that employs constrained sequential collaborative optimization of adversarial suffix under cascade dependencies, enabling simultaneous exploitation of lightweight models and decision mechanisms. This framework adapts to adversaries with varying capabilities, inducing controllable degradation in both cost-efficiency and accuracy. Unlike prior attacks targeting standalone models, our approach strategically leverages the cascade structure to achieve significantly stronger impact. Extensive experiments across diverse datasets and representative LLM cascade systems validate the practicality and severity of this attack. Our findings highlight the urgent need to rigorously scrutinize the security of LLM cascade systems and call for broader attention to the systemic risks inherent in such designs.

Zehan Sun, Dingfan Chen, Songze Li• 2026

Related benchmarks

TaskDatasetResultRank
Adversarial Attack TransferabilityLLM Cascades Evaluation Set Open-Source Models
Accuracy84
144
Jailbreak evaluationWildJailbreak
Performance Rate88.5
22
Text ClassificationAGNews
Performance Score75.5
22
Adversarial Attack TransferabilityAPI-based Language Model Cascade Evaluation Set
Cascade Accuracy77.5
14
Attacking Cascade System Decision MakerAGNews
Accuracy77.5
11
Attacking Cascade System Decision MakerSQuAD 2.0
Performance70.5
11
Attacking Cascade System Decision MakerWildJailbreak
Performance92.5
11
Math Word ProblemsSVAMP
Accuracy69
11
Text ClassificationOverruling
Accuracy67.5
11
Topic ClassificationAGNews
Performance Score70.5
11
Showing 10 of 20 rows

Other info

Follow for update