Menu

  • Alerts
  • Incidents
  • News
  • APTs
  • Cyber Decoded
  • Cyber Hygiene
  • Cyber Review
  • Cyber Tips
  • Definitions
  • Malware
  • Threat Actors
  • Tutorials

Useful Tools

  • Password generator
  • Report an incident
  • Report to authorities
No Result
View All Result
CTF Hack Havoc
CyberMaterial
  • Education
    • Cyber Decoded
    • Definitions
  • Information
    • Alerts
    • Incidents
    • News
  • Insights
    • Cyber Hygiene
    • Cyber Review
    • Tips
    • Tutorials
  • Support
    • Contact Us
    • Report an incident
  • About
    • About Us
    • Advertise with us
Get Help
Hall of Hacks
  • Education
    • Cyber Decoded
    • Definitions
  • Information
    • Alerts
    • Incidents
    • News
  • Insights
    • Cyber Hygiene
    • Cyber Review
    • Tips
    • Tutorials
  • Support
    • Contact Us
    • Report an incident
  • About
    • About Us
    • Advertise with us
Get Help
No Result
View All Result
Hall of Hacks
CyberMaterial
No Result
View All Result
Home Alerts

InputSnatch Side-Channel Attack Targets LLMs

December 2, 2024
Reading Time: 2 mins read
in Alerts
InputSnatch Side-Channel Attack Targets LLMs

A recent study has uncovered a new side-channel attack, called “InputSnatch,” that poses a serious threat to user privacy in large language models (LLMs). The attack exploits timing differences in cache-sharing mechanisms that are commonly used to optimize LLM inference. While these optimizations enhance performance, they unintentionally create vulnerabilities by allowing attackers to infer private user inputs based on response times. This discovery highlights the trade-off between optimizing LLM performance and maintaining user privacy, particularly in sensitive contexts such as healthcare, finance, and legal services.

The InputSnatch attack takes advantage of both prefix caching and semantic caching techniques. These methods, designed to speed up LLM inference, can inadvertently leak information about the user’s typed input. By measuring the time it takes for an LLM to respond to a query, attackers can determine the length of cached input prefixes, potentially revealing private or sensitive information. Researchers demonstrated that InputSnatch can reconstruct user inputs with alarming accuracy, posing serious risks to user confidentiality.

In their research, the team showed that InputSnatch could achieve impressive success rates in various scenarios. For instance, the attack accurately determined cache hit prefix lengths 87.13% of the time. In more sensitive applications, such as medical question-answering systems, the attack was able to extract exact user inputs with a 62% success rate. Even in legal consultation services, the attack was able to extract semantic information with near-perfect accuracy, raising concerns about the potential misuse of this technique in high-stakes industries.

To address these risks, the research team calls for LLM developers to reassess their caching strategies and implement stronger privacy-preserving measures. They suggest that prioritizing user privacy alongside performance improvements is essential, especially as LLMs continue to be integrated into critical sectors. The study serves as a wake-up call for the AI community to address the delicate balance between performance and privacy, ensuring that LLM-powered applications can be both effective and secure for users across industries.

Reference:

  • New InputSnatch Side-Channel Attack Exploits LLMs to Steal User Data and Queries
Tags: Cyber AlertsCyber Alerts 2024Cyber threatsDecember 2024InputSnatchLarge Language ModelsLLMsSide-Channel AttackVulnerabilities
ADVERTISEMENT

Related Posts

HelloTDS Spreads Malware Via Fake CAPTCHAs

Sabotage Theft Malware On npm And PyPI

June 9, 2025
HelloTDS Spreads Malware Via Fake CAPTCHAs

Salesforce SOQL Flaw Exposed User Records

June 9, 2025
HelloTDS Spreads Malware Via Fake CAPTCHAs

HelloTDS Spreads Malware Via Fake CAPTCHAs

June 9, 2025
Chrome Extensions Leak Data And API Keys

Chrome Extensions Leak Data And API Keys

June 6, 2025
Chrome Extensions Leak Data And API Keys

AMOS Stealer Hits macOS Via Fake CAPTCHA

June 6, 2025
Chrome Extensions Leak Data And API Keys

BADBOX Turns 1M+ IoT Devices Into Proxies

June 6, 2025

Latest Alerts

Sabotage Theft Malware On npm And PyPI

Salesforce SOQL Flaw Exposed User Records

HelloTDS Spreads Malware Via Fake CAPTCHAs

AMOS Stealer Hits macOS Via Fake CAPTCHA

Chrome Extensions Leak Data And API Keys

BADBOX Turns 1M+ IoT Devices Into Proxies

Subscribe to our newsletter

    Latest Incidents

    Hack Shuts Down Brazil City Health Systems

    Sorbonne University Hit By Staff Data Breach

    Chaos Gang Leaks Optima Tax Client Data

    German Dog Rescue IG Hacked For Ransom

    Hack Attempt Hits German Police Phone System

    InfoJobs Spain Hit By Credential Stuffing

    CyberMaterial Logo
    • About Us
    • Contact Us
    • Jobs
    • Legal and Privacy Policy
    • Site Map

    © 2025 | CyberMaterial | All rights reserved

    Welcome Back!

    Login to your account below

    Forgotten Password?

    Retrieve your password

    Please enter your username or email address to reset your password.

    Log In

    Add New Playlist

    No Result
    View All Result
    • Alerts
    • Incidents
    • News
    • Cyber Decoded
    • Cyber Hygiene
    • Cyber Review
    • Definitions
    • Malware
    • Cyber Tips
    • Tutorials
    • Advanced Persistent Threats
    • Threat Actors
    • Report an incident
    • Password Generator
    • About Us
    • Contact Us
    • Advertise with us

    Copyright © 2025 CyberMaterial