Henry Chen (Palo Alto Networks), Victor Aranda (Palo Alto Networks), Samarth Keshari (Palo Alto Networks), Ryan Heartfield (Palo Alto Networks), Nicole Nichols (Palo Alto Networks)

Prompt-based attack techniques are one of the primary challenges in securely deploying and protecting LLM-based AI systems. LLM inputs are an unbounded, unstructured space. Consequently, effectively defending against these attacks requires proactive hardening strategies capable of continuously generating adaptive attack vectors to optimize LLM defense at runtime. We present HASTE (Hard-negative Attack Sample Training Engine): a systematic framework that iteratively engineers highly evasive prompts, within a modular optimization process, to continuously enhance detection efficacy for prompt-based attack techniques. The framework is agnostic to synthetic data generation methods, and can be generalized to evaluate prompt-injection detection efficacy, with and without fuzzing, for any hard-negative or hardpositive iteration strategy. Experimental evaluation of HASTE shows that hard negative mining successfully evades baseline detectors, reducing malicious prompt detection for baseline detectors by approximately 64%. However, when integrated with detection model re-training, it optimizes the efficacy of prompt detection models with significantly fewer iteration loops compared to relative baseline strategies.

The HASTE framework supports both proactive and reactive hardening of LLM defenses and guardrails. Proactively, developers can leverage HASTE to dynamically stress-test prompt injection detection systems; efficiently identifying weaknesses and strengthening defensive posture. Reactively, HASTE can mimic newly observed attack types and rapidly bridge detection coverage by teaching HASTE-optimized detection models to identify them.

View More Papers

Benchmarking and Understanding Safety Risks in AI Character Platforms

Yiluo Wei (The Hong Kong University of Science and Technology (Guangzhou)), Peixian Zhang (The Hong Kong University of Science and Technology (Guangzhou)), Gareth Tyson (The Hong Kong University of Science and Technology (Guangzhou))

Read More

Know Me by My Pulse: Toward Practical Continuous Authentication...

Wei Shao (University of California, Davis), Zequan Liang (University of California Davis), Ruoyu Zhang (University of California, Davis), Ruijie Fang (University of California, Davis), Ning Miao (University of California, Davis), Ehsan Kourkchi (University of California - Davis), Setareh Rafatirad (University of California, Davis), Houman Homayoun (University of California Davis), Chongzhou Fang (Rochester Institute of Technology)

Read More