By using this site, you agree to the Privacy Policy and Terms of Use.
Accept
World of SoftwareWorld of SoftwareWorld of Software
  • News
  • Software
  • Mobile
  • Computing
  • Gaming
  • Videos
  • More
    • Gadget
    • Web Stories
    • Trending
    • Press Release
Search
  • Privacy
  • Terms
  • Advertise
  • Contact
Copyright © All Rights Reserved. World of Software.
Reading: Microsoft Uncovers ‘Whisper Leak’ Attack That Identifies AI Chat Topics in Encrypted Traffic
Share
Sign In
Notification Show More
Font ResizerAa
World of SoftwareWorld of Software
Font ResizerAa
  • Software
  • Mobile
  • Computing
  • Gadget
  • Gaming
  • Videos
Search
  • News
  • Software
  • Mobile
  • Computing
  • Gaming
  • Videos
  • More
    • Gadget
    • Web Stories
    • Trending
    • Press Release
Have an existing account? Sign In
Follow US
  • Privacy
  • Terms
  • Advertise
  • Contact
Copyright © All Rights Reserved. World of Software.
World of Software > Computing > Microsoft Uncovers ‘Whisper Leak’ Attack That Identifies AI Chat Topics in Encrypted Traffic
Computing

Microsoft Uncovers ‘Whisper Leak’ Attack That Identifies AI Chat Topics in Encrypted Traffic

News Room
Last updated: 2025/11/08 at 10:03 AM
News Room Published 8 November 2025
Share
Microsoft Uncovers ‘Whisper Leak’ Attack That Identifies AI Chat Topics in Encrypted Traffic
SHARE

Microsoft has disclosed details of a novel side-channel attack targeting remote language models that could enable a passive adversary with capabilities to observe network traffic to glean details about model conversation topics despite encryption protections under certain circumstances.

This leakage of data exchanged between humans and streaming-mode language models could pose serious risks to the privacy of user and enterprise communications, the company noted. The attack has been codenamed Whisper Leak.

“Cyber attackers in a position to observe the encrypted traffic (for example, a nation-state actor at the internet service provider layer, someone on the local network, or someone connected to the same Wi-Fi router) could use this cyber attack to infer if the user’s prompt is on a specific topic,” security researchers Jonathan Bar Or and Geoff McDonald, along with the Microsoft Defender Security Research Team, said.

Put differently, the attack allows an attacker to observe encrypted TLS traffic between a user and LLM service, extract packet size and timing sequences, and use trained classifiers to infer whether the conversation topic matches a sensitive target category.

Model streaming in large language models (LLMs) is a technique that allows for incremental data reception as the model generates responses, instead of having to wait for the entire output to be computed. It’s a critical feedback mechanism as certain responses can take time, depending on the complexity of the prompt or task.

DFIR Retainer Services

The latest technique demonstrated by Microsoft is significant, not least because it works despite the fact that the communications with artificial intelligence (AI) chatbots are encrypted with HTTPS, which ensures that the contents of the exchange stay secure and cannot be tampered with.

Many a side-channel attack has been devised against LLMs in recent years, including the ability to infer the length of individual plaintext tokens from the size of encrypted packets in streaming model responses or by exploiting timing differences caused by caching LLM inferences to execute input theft (aka InputSnatch).

Whisper Leak builds upon these findings to explore the possibility that “the sequence of encrypted packet sizes and inter-arrival times during a streaming language model response contains enough information to classify the topic of the initial prompt, even in the cases where responses are streamed in groupings of tokens,” per Microsoft.

To test this hypothesis, the Windows maker said it trained a binary classifier as a proof-of-concept that’s capable of differentiating between a specific topic prompt and the rest (i.e., noise) using three different machine learning models: LightGBM, Bi-LSTM, and BERT.

The result is that many models from Mistral, xAI, DeepSeek, and OpenAI have been found to achieve scores above 98%, thereby making it possible for an attacker monitoring random conversations with the chatbots to reliably flag that specific topic.

“If a government agency or internet service provider were monitoring traffic to a popular AI chatbot, they could reliably identify users asking questions about specific sensitive topics – whether that’s money laundering, political dissent, or other monitored subjects – even though all the traffic is encrypted,” Microsoft said.

Whisper Leak attack pipeline

To make matters worse, the researchers found that the effectiveness of Whisper Leak can improve as the attacker collects more training samples over time, turning it into a practical threat. Following responsible disclosure, OpenAI, Mistral, Microsoft, and xAI have all deployed mitigations to counter the risk.

“Combined with more sophisticated attack models and the richer patterns available in multi-turn conversations or multiple conversations from the same user, this means a cyberattacker with patience and resources could achieve higher success rates than our initial results suggest,” it added.

One effective countermeasure devised by OpenAI, Microsoft, and Mistral involves adding a “random sequence of text of variable length” to each response, which, in turn, masks the length of each token to render the side-channel moot.

CIS Build Kits

Microsoft is also recommending that users concerned about their privacy when talking to AI providers can avoid discussing highly sensitive topics when using untrusted networks, utilize a VPN for an extra layer of protection, use non-streaming models of LLMs, and switch to providers that have implemented mitigations.

The disclosure comes as a new evaluation of eight open-weight LLMs from Alibaba (Qwen3-32B), DeepSeek (v3.1), Google (Gemma 3-1B-IT), Meta (Llama 3.3-70B-Instruct), Microsoft (Phi-4), Mistral (Large-2 aka Large-Instruct-2047), OpenAI (GPT-OSS-20b), and Zhipu AI (GLM 4.5-Air) has found them to be highly susceptible to adversarial manipulation, specifically when it comes to multi-turn attacks.

Comparative vulnerability analysis showing attack success rates across tested models for both single-turn and multi-turn scenarios

“These results underscore a systemic inability of current open-weight models to maintain safety guardrails across extended interactions,” Cisco AI Defense researchers Amy Chang, Nicholas Conley, Harish Santhanalakshmi Ganesan, and Adam Swanda said in an accompanying paper.

“We assess that alignment strategies and lab priorities significantly influence resilience: capability-focused models such as Llama 3.3 and Qwen 3 demonstrate higher multi-turn susceptibility, whereas safety-oriented designs such as Google Gemma 3 exhibit more balanced performance.”

These discoveries show that organizations adopting open-source models can face operational risks in the absence of additional security guardrails, adding to a growing body of research exposing fundamental security weaknesses in LLMs and AI chatbots ever since OpenAI ChatGPT’s public debut in November 2022.

This makes it crucial that developers enforce adequate security controls when integrating such capabilities into their workflows, fine-tune open-weight models to be more robust to jailbreaks and other attacks, conduct periodic AI red-teaming assessments, and implement strict system prompts that are aligned with defined use cases.

Sign Up For Daily Newsletter

Be keep up! Get the latest breaking news delivered straight to your inbox.
By signing up, you agree to our Terms of Use and acknowledge the data practices in our Privacy Policy. You may unsubscribe at any time.
Share This Article
Facebook Twitter Email Print
Share
What do you think?
Love0
Sad0
Happy0
Sleepy0
Angry0
Dead0
Wink0
Previous Article 5 Phone Carriers With The Best Cheap Plans – BGR 5 Phone Carriers With The Best Cheap Plans – BGR
Next Article Globant will develop an agentic AI program for LaLiga Globant will develop an agentic AI program for LaLiga
Leave a comment

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Stay Connected

248.1k Like
69.1k Follow
134k Pin
54.3k Follow

Latest News

Denmark passes social media ban for users under 15
Denmark passes social media ban for users under 15
News
Meta announces plans to spend 0B in the US over three years –  News
Meta announces plans to spend $600B in the US over three years – News
News
Linux 6.18-rc5 To Cut Down Performance Regression Observed On IBM POWER CPUs
Linux 6.18-rc5 To Cut Down Performance Regression Observed On IBM POWER CPUs
Computing
Does Your iPhone Actually Emit Harmful Radiation? – BGR
Does Your iPhone Actually Emit Harmful Radiation? – BGR
News

You Might also Like

Linux 6.18-rc5 To Cut Down Performance Regression Observed On IBM POWER CPUs
Computing

Linux 6.18-rc5 To Cut Down Performance Regression Observed On IBM POWER CPUs

2 Min Read
Gran Turismo 7 – How to Save & Upload Race Clips/Replays to YouTube | HackerNoon
Computing

Gran Turismo 7 – How to Save & Upload Race Clips/Replays to YouTube | HackerNoon

3 Min Read
DevOps Isn’t a Tool, It’s a Chain Reaction | HackerNoon
Computing

DevOps Isn’t a Tool, It’s a Chain Reaction | HackerNoon

25 Min Read
Rustup 1.27.1: Minor Bug Fixes Can Have a Big Positive Impact | HackerNoon
Computing

Rustup 1.27.1: Minor Bug Fixes Can Have a Big Positive Impact | HackerNoon

2 Min Read
//

World of Software is your one-stop website for the latest tech news and updates, follow us now to get the news that matters to you.

Quick Link

  • Privacy Policy
  • Terms of use
  • Advertise
  • Contact

Topics

  • Computing
  • Software
  • Press Release
  • Trending

Sign Up for Our Newsletter

Subscribe to our newsletter to get our newest articles instantly!

World of SoftwareWorld of Software
Follow US
Copyright © All Rights Reserved. World of Software.
Welcome Back!

Sign in to your account

Lost your password?