<?xml version="1.0" encoding="utf-8" standalone="yes"?><rss version="2.0" xmlns:atom="http://www.w3.org/2005/Atom"><channel><title>GRID THE GREY — AI Threat Intelligence | GRID THE GREY</title><link>https://gridthegrey.com/</link><description>Real-time AI security intelligence — adversarial ML, LLM vulnerabilities, and supply chain threats mapped to MITRE ATLAS and OWASP LLM Top 10.</description><generator>Hugo</generator><language>en-us</language><copyright/><lastBuildDate>Mon, 08 Jun 2026 19:36:42 +0530</lastBuildDate><atom:link href="https://gridthegrey.com/index.xml" rel="self" type="application/rss+xml"/><item><title>AI Security M&amp;A Surge: Agentic Identity, LLM Evaluation, and Browser Control Targeted</title><link>https://gridthegrey.com/posts/ai-security-m-a-surge-agentic-identity-llm-evaluation-and-browser-control/</link><pubDate>Mon, 08 Jun 2026 14:06:27 +0000</pubDate><guid>https://gridthegrey.com/posts/ai-security-m-a-surge-agentic-identity-llm-evaluation-and-browser-control/</guid><category>Threat Level: MEDIUM</category><category>Agentic AI</category><category>LLM Security</category><category>Industry News</category><category>Supply Chain</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0012 - Valid Accounts</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0040 - ML Model Inference API Access</category><description>May 2026 saw a wave of cybersecurity acquisitions with a clear focus on securing AI agents and LLM infrastructure, including Cisco's ~$400M acquisition of Astrix Security for non-human identity management and Check Point's acquisition of Deepchecks for LLM evaluation and continuous monitoring. Akamai also moved to acquire LayerX for AI usage control and agentic activity visibility across browsers and IDEs. These deals signal that enterprise security vendors are racing to build defensive capabilities around the expanding agentic AI attack surface.</description></item><item><title>Claude Code GitHub Action Leaked CI/CD Secrets via Prompt Injection</title><link>https://gridthegrey.com/posts/claude-code-github-action-leaked-ci-cd-secrets-via-prompt-injection/</link><pubDate>Mon, 08 Jun 2026 14:05:30 +0000</pubDate><guid>https://gridthegrey.com/posts/claude-code-github-action-leaked-ci-cd-secrets-via-prompt-injection/</guid><category>Threat Level: HIGH</category><category>Prompt Injection</category><category>Agentic AI</category><category>LLM Security</category><category>Supply Chain</category><category>Research</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0043 - Craft Adversarial Data</category><description>Microsoft Threat Intelligence disclosed a vulnerability in Anthropic's Claude Code GitHub Action whereby prompt injection via untrusted GitHub content — issue bodies, PR descriptions, and comments — could cause the AI agent to read sensitive environment variables, including the ANTHROPIC_API_KEY, from /proc/self/environ. The flaw stemmed from inconsistent sandboxing: while subprocess execution paths like Bash were scrubbed of environment variables, the Read tool had no equivalent restriction. Anthropic patched the issue in Claude Code version 2.1.128 by blocking access to sensitive /proc filesystem paths.</description></item><item><title>Gartner Flags Deepfakes and Prompt Injection Among Top Attacker Advantages</title><link>https://gridthegrey.com/posts/gartner-flags-deepfakes-and-prompt-injection-among-top-attacker-advantages/</link><pubDate>Mon, 08 Jun 2026 14:05:30 +0000</pubDate><guid>https://gridthegrey.com/posts/gartner-flags-deepfakes-and-prompt-injection-among-top-attacker-advantages/</guid><category>Threat Level: HIGH</category><category>LLM Security</category><category>Prompt Injection</category><category>Adversarial ML</category><category>Industry News</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0043 - Craft Adversarial Data</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0054 - LLM Jailbreak</category><description>Gartner analysts have identified deepfakes and prompt injection as two of four critical emerging threats where attackers currently hold a structural advantage over defenders. The advisory signals growing institutional recognition that AI-native attack vectors are maturing faster than enterprise defenses. Organizations are urged to treat these threats as priority items requiring immediate defensive investment.</description></item><item><title>OpenAI Lockdown Mode Targets Prompt Injection Data Exfiltration Vector</title><link>https://gridthegrey.com/posts/openai-lockdown-mode-targets-prompt-injection-data-exfiltration-vector/</link><pubDate>Mon, 08 Jun 2026 14:04:03 +0000</pubDate><guid>https://gridthegrey.com/posts/openai-lockdown-mode-targets-prompt-injection-data-exfiltration-vector/</guid><category>Threat Level: MEDIUM</category><category>LLM Security</category><category>Prompt Injection</category><category>Industry News</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0047 - ML-Enabled Product or Service</category><description>OpenAI has rolled out 'Lockdown Mode' for ChatGPT personal and self-serve business accounts, a deterministic control designed to block the data exfiltration leg of prompt injection attacks. The feature directly addresses the 'Lethal Trifecta' — the combination of private data access, untrusted content exposure, and an outbound exfiltration channel — by restricting outbound network requests at the infrastructure level rather than relying on AI-evaluated guardrails. Critically, OpenAI's own documentation acknowledges the feature's existence implies that default ChatGPT settings do not robustly prevent determined data exfiltration attacks.</description></item><item><title>Prototype AI Worm Carries Embedded LLM for Decentralised Self-Propagation</title><link>https://gridthegrey.com/posts/prototype-ai-worm-carries-embedded-llm-for-decentralised-self-propagation/</link><pubDate>Mon, 08 Jun 2026 14:04:03 +0000</pubDate><guid>https://gridthegrey.com/posts/prototype-ai-worm-carries-embedded-llm-for-decentralised-self-propagation/</guid><category>Threat Level: HIGH</category><category>LLM Security</category><category>Agentic AI</category><category>Adversarial ML</category><category>Research</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0043 - Craft Adversarial Data</category><category>AML.T0051 - LLM Prompt Injection</category><description>Researchers have prototyped an internet worm that bundles its own large language model, executing it on compromised hosts to enable fully decentralised propagation with no single point of control. The design mirrors John Brunner's 1975 fictional conception of a worm and echoes the destructive potential of WannaCry and NotPetya, but with the added capability of dynamically generating novel attacks by ingesting recent public vulnerability disclosures. The absence of a command-and-control chokepoint makes traditional takedown strategies ineffective, significantly raising the threat posed by AI-augmented malware.</description></item><item><title>Unauthorized Access to Anthropic's Claude Mythos Exposes Agentic AI Defense Risks</title><link>https://gridthegrey.com/posts/unauthorized-access-to-anthropic-s-claude-mythos-exposes-agentic-ai-defense/</link><pubDate>Mon, 08 Jun 2026 14:02:42 +0000</pubDate><guid>https://gridthegrey.com/posts/unauthorized-access-to-anthropic-s-claude-mythos-exposes-agentic-ai-defense/</guid><category>Threat Level: HIGH</category><category>Agentic AI</category><category>LLM Security</category><category>Supply Chain</category><category>Data Poisoning</category><category>Industry News</category><category>AML.T0020 - Poison Training Data</category><category>AML.T0010 - ML Supply Chain Compromise</category><category>AML.T0040 - ML Model Inference API Access</category><category>AML.T0044 - Full ML Model Access</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0012 - Valid Accounts</category><description>A reported unauthorized access to Anthropic's Claude Mythos model within hours of its limited technical preview highlights acute security risks as agentic AI is deployed across classified defense and intelligence networks. The incident underscores vulnerabilities specific to AI infrastructure in high-security environments, including training data poisoning, access control failures, and cross-domain classification boundary erosion. Secure IT infrastructure, governed access, and cross-domain data controls are identified as prerequisites for safe AI deployment at mission scale.</description></item><item><title>Microsoft Scout Autonomous Agent Expands Attack Surface Across Microsoft 365</title><link>https://gridthegrey.com/posts/microsoft-scout-autonomous-agent-expands-attack-surface-across-microsoft-365/</link><pubDate>Thu, 04 Jun 2026 05:41:41 +0000</pubDate><guid>https://gridthegrey.com/posts/microsoft-scout-autonomous-agent-expands-attack-surface-across-microsoft-365/</guid><category>Threat Level: MEDIUM</category><category>Agentic AI</category><category>LLM Security</category><category>Industry News</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0012 - Valid Accounts</category><category>AML.T0040 - ML Model Inference API Access</category><description>Microsoft has launched Scout, an always-on autonomous AI agent built on the OpenClaw framework that operates across Microsoft 365 apps including Teams, Outlook, OneDrive, and SharePoint with its own Entra identity. The agent's persistent, unsupervised access to email, calendar, chat, and external systems via MCP creates a broad new attack surface for prompt injection, privilege abuse, and data exfiltration. As an experimental release with limited deployment controls, security teams should treat Scout as a high-risk agentic surface requiring careful governance before broad adoption.</description></item><item><title>High-Autonomy AI Agents With Broad Permissions Pose Enterprise Security Crisis</title><link>https://gridthegrey.com/posts/high-autonomy-ai-agents-with-broad-permissions-pose-enterprise-security-crisis/</link><pubDate>Thu, 04 Jun 2026 05:40:36 +0000</pubDate><guid>https://gridthegrey.com/posts/high-autonomy-ai-agents-with-broad-permissions-pose-enterprise-security-crisis/</guid><category>Threat Level: HIGH</category><category>Agentic AI</category><category>LLM Security</category><category>Industry News</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0012 - Valid Accounts</category><category>AML.T0057 - LLM Data Leakage</category><description>Enterprises deploying AI agents with elevated permissions and minimal oversight face compounding security risks as agentic systems gain the ability to take real-world actions with limited human intervention. The attack surface expands dramatically when agents can access APIs, execute code, and chain decisions autonomously, making containment of a compromise significantly harder. Security teams must implement least-privilege principles and robust monitoring before agentic deployments scale beyond their ability to govern.</description></item><item><title>Indirect Prompt Injection via Notifications Hijacks Google Gemini on Android</title><link>https://gridthegrey.com/posts/indirect-prompt-injection-via-notifications-hijacks-google-gemini-on-android/</link><pubDate>Thu, 04 Jun 2026 05:39:55 +0000</pubDate><guid>https://gridthegrey.com/posts/indirect-prompt-injection-via-notifications-hijacks-google-gemini-on-android/</guid><category>Threat Level: HIGH</category><category>LLM Security</category><category>Prompt Injection</category><category>Agentic AI</category><category>Research</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0043 - Craft Adversarial Data</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0057 - LLM Data Leakage</category><description>SafeBreach researcher Or Yair demonstrated that malicious text embedded in WhatsApp, Slack, SMS, or Signal notifications could trigger indirect prompt injection against Google Gemini's Android Utilities feature, causing the assistant to execute real device actions without user awareness. A novel bypass technique called 'Fake Context Alignment' defeated Google's post-patch authorization checks by exploiting multilingual obfuscation and muted hyperlinks to trick victims into authorising sensitive actions. Google has patched the issue, but the research exposes a fundamentally large attack surface where any app capable of pushing a notification becomes a potential injection vector.</description></item><item><title>Only 11 of 100 AI Agents Pass Security and Capability Benchmarks</title><link>https://gridthegrey.com/posts/only-11-of-100-ai-agents-pass-security-and-capability-benchmarks/</link><pubDate>Thu, 04 Jun 2026 05:38:21 +0000</pubDate><guid>https://gridthegrey.com/posts/only-11-of-100-ai-agents-pass-security-and-capability-benchmarks/</guid><category>Threat Level: HIGH</category><category>Agentic AI</category><category>LLM Security</category><category>Prompt Injection</category><category>Research</category><category>Industry News</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0040 - ML Model Inference API Access</category><category>AML.T0054 - LLM Jailbreak</category><description>Adversa AI's AI Risk Quadrant report evaluated 100 AI agents across ten categories, finding that only 11 qualify as both capable and well-defended. The research identifies a structural 'power-protection inversion' where the most capable agents also present the widest attack surface, driven by a 'lethal trifecta' of private data access, exposure to untrusted content, and outbound action capability. Computer and coding agents showed the most severe exposure, raising urgent concerns about autonomous agent deployment in enterprise environments.</description></item><item><title>Prompt Injection Flaw in Gemini Voice Assistant Enables Notification-Based Attacks</title><link>https://gridthegrey.com/posts/prompt-injection-flaw-in-gemini-voice-assistant-enables-notification-based/</link><pubDate>Thu, 04 Jun 2026 05:37:37 +0000</pubDate><guid>https://gridthegrey.com/posts/prompt-injection-flaw-in-gemini-voice-assistant-enables-notification-based/</guid><category>Threat Level: HIGH</category><category>LLM Security</category><category>Prompt Injection</category><category>Agentic AI</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0043 - Craft Adversarial Data</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0047 - ML-Enabled Product or Service</category><description>A prompt injection vulnerability in Google Gemini's voice assistant allows attackers to embed malicious instructions within device notifications, which the assistant then processes as legitimate commands. This attack vector enables social engineering, unauthorized actions, and potential data exfiltration without direct user interaction with the malicious payload. The flaw highlights the growing risk of indirect prompt injection in ambient AI assistants that consume untrusted content from the surrounding environment.</description></item><item><title>2,000 AI-Built Apps Expose Corporate Data via Misconfigured Vibe-Coding Platforms</title><link>https://gridthegrey.com/posts/2000-ai-built-apps-expose-corporate-data-via-misconfigured-vibe-coding-platforms/</link><pubDate>Sun, 31 May 2026 01:44:50 +0000</pubDate><guid>https://gridthegrey.com/posts/2000-ai-built-apps-expose-corporate-data-via-misconfigured-vibe-coding-platforms/</guid><category>Threat Level: HIGH</category><category>Agentic AI</category><category>LLM Security</category><category>Supply Chain</category><category>Industry News</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0012 - Valid Accounts</category><category>AML.T0040 - ML Model Inference API Access</category><description>A Red Access investigation found over 2,000 corporate applications built on AI-assisted 'vibe-coding' platforms publicly accessible on the open internet, many containing sensitive business data with no access controls. These shadow-built apps connect directly to production systems — CRMs, ERPs, BI tools — creating a new class of unaudited attack surface invisible to conventional security stacks. Traditional controls such as CASB, DLP, and EDR are structurally blind to this threat because the risk originates at the application layer, not the identity or network layer.</description></item><item><title>Anthropic Documents Sandbox Escape Risks and Credential Exfiltration Vectors in Claude Products</title><link>https://gridthegrey.com/posts/anthropic-documents-sandbox-escape-risks-and-credential-exfiltration-vectors-in/</link><pubDate>Sun, 31 May 2026 01:34:23 +0000</pubDate><guid>https://gridthegrey.com/posts/anthropic-documents-sandbox-escape-risks-and-credential-exfiltration-vectors-in/</guid><category>Threat Level: MEDIUM</category><category>LLM Security</category><category>Agentic AI</category><category>Research</category><category>Industry News</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0012 - Valid Accounts</category><description>Anthropic has published detailed documentation of its sandboxing architecture across Claude.ai, Claude Code, and Claude Cowork, including disclosure of a previously identified credential exfiltration vector via the api.anthropic.com/v1/files endpoint. The writeup covers process-level isolation technologies including gVisor, Seatbelt, Bubblewrap, and full VM approaches, and candidly acknowledges security gaps that were missed. This transparency is notable for the agentic AI space, where sandbox documentation is typically sparse and trust is difficult to calibrate.</description></item><item><title>ChatGPhish Exploit Turns ChatGPT Summarisation Into a Live Phishing Surface</title><link>https://gridthegrey.com/posts/chatgphish-exploit-turns-chatgpt-summarisation-into-a-live-phishing-surface/</link><pubDate>Sun, 31 May 2026 01:33:33 +0000</pubDate><guid>https://gridthegrey.com/posts/chatgphish-exploit-turns-chatgpt-summarisation-into-a-live-phishing-surface/</guid><category>Threat Level: HIGH</category><category>LLM Security</category><category>Prompt Injection</category><category>Agentic AI</category><category>Research</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0043 - Craft Adversarial Data</category><category>AML.T0047 - ML-Enabled Product or Service</category><description>Permiso Security has disclosed ChatGPhish, a vulnerability in ChatGPT's web summarisation feature that allows attacker-controlled Markdown payloads embedded in third-party pages to render phishing links, spoofed alerts, and QR codes directly within ChatGPT's trusted UI. The attack requires no user interaction beyond asking ChatGPT to summarise a malicious page, and can exfiltrate IP addresses, User-Agent strings, and Referer headers via auto-fetched remote images. The technique significantly expands the phishing attack surface beyond email into everyday AI-assisted browsing workflows, posing a particular risk in enterprise environments.</description></item><item><title>LLMShare Campaign Weaponises ChatGPT Sharing Feature to Distribute Malware</title><link>https://gridthegrey.com/posts/llmshare-campaign-weaponises-chatgpt-sharing-feature-to-distribute-malware/</link><pubDate>Sun, 31 May 2026 01:32:53 +0000</pubDate><guid>https://gridthegrey.com/posts/llmshare-campaign-weaponises-chatgpt-sharing-feature-to-distribute-malware/</guid><category>Threat Level: HIGH</category><category>LLM Security</category><category>Supply Chain</category><category>Industry News</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0043 - Craft Adversarial Data</category><category>AML.T0015 - Evade ML Model</category><description>Threat actors are exploiting ChatGPT's legitimate content-sharing infrastructure to host convincing fake outage pages that trick users into downloading malware disguised as a ChatGPT desktop application. The 'LLMShare' campaign abuses chatgpt.com/s/ shared links to render attacker-crafted HTML within a trusted OpenAI domain, bypassing traditional phishing detection that relies on suspicious URL analysis. The attack chain combines Google ad abuse, domain cloaking, and AI platform misuse to deliver what are likely infostealer payloads.</description></item><item><title>Process-Level CAPTCHA Analysis Exposes Behavioural Fingerprints of AI Agents</title><link>https://gridthegrey.com/posts/process-level-captcha-analysis-exposes-behavioural-fingerprints-of-ai-agents/</link><pubDate>Sun, 31 May 2026 01:32:12 +0000</pubDate><guid>https://gridthegrey.com/posts/process-level-captcha-analysis-exposes-behavioural-fingerprints-of-ai-agents/</guid><category>Threat Level: MEDIUM</category><category>Adversarial ML</category><category>Agentic AI</category><category>Research</category><category>AML.T0015 - Evade ML Model</category><category>AML.T0043 - Craft Adversarial Data</category><category>AML.T0047 - ML-Enabled Product or Service</category><description>Researchers have developed CogCAPTCHA30, a 30-task cognitive battery demonstrating that AI agents (GPT, Claude, Gemini) solve CAPTCHAs with statistically distinguishable behavioural patterns despite matching human accuracy. The study introduces a 'Process Turing Test' concept, showing output equivalence and process equivalence are uncorrelated — meaning AI agents can be detected not by what they answer, but by how they answer. This has direct implications for bot detection, anti-automation defences, and the arms race between AI-driven agents and human-verification systems.</description></item><item><title>Robinhood MCP Integration Grants AI Agents Autonomous Financial Trading Powers</title><link>https://gridthegrey.com/posts/robinhood-mcp-integration-grants-ai-agents-autonomous-financial-trading-powers/</link><pubDate>Sun, 31 May 2026 01:31:37 +0000</pubDate><guid>https://gridthegrey.com/posts/robinhood-mcp-integration-grants-ai-agents-autonomous-financial-trading-powers/</guid><category>Threat Level: HIGH</category><category>Agentic AI</category><category>LLM Security</category><category>Prompt Injection</category><category>Industry News</category><category>Regulatory</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0040 - ML Model Inference API Access</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0012 - Valid Accounts</category><description>Robinhood has launched agentic trading and a virtual credit card that allow third-party AI agents to autonomously execute stock trades and payments on behalf of users via a Model Context Protocol (MCP) integration. This architecture introduces significant attack surface through prompt injection, excessive agency, and insecure plugin design risks inherent to LLM-driven autonomous financial action. The delegation of real financial authority to AI agents with limited human-in-the-loop controls represents a systemic risk to retail investors if agent pipelines are compromised or manipulated.</description></item><item><title>Malicious npm Package Targets Claude AI Users via Supply Chain Attack</title><link>https://gridthegrey.com/posts/malicious-npm-package-targets-claude-ai-users-via-supply-chain-attack/</link><pubDate>Fri, 29 May 2026 10:10:53 +0000</pubDate><guid>https://gridthegrey.com/posts/malicious-npm-package-targets-claude-ai-users-via-supply-chain-attack/</guid><category>Threat Level: HIGH</category><category>Supply Chain</category><category>LLM Security</category><category>Industry News</category><category>AML.T0010 - ML Supply Chain Compromise</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0012 - Valid Accounts</category><category>AML.T0047 - ML-Enabled Product or Service</category><description>A malicious npm package named 'mouse5212-super-formatter' was discovered exfiltrating files from Anthropic's Claude AI user directory by authenticating to a threat actor-controlled GitHub repository. The package disguised itself as a legitimate archive utility while silently uploading all local workspace files during the postinstall phase. Notably, the attacker's poor operational security — including a leaked GitHub token — suggests AI-generated malware with minimal human oversight, pointing to a growing trend of low-skill threat actors leveraging AI to produce supply chain malware.</description></item><item><title>Multi-Agent LLM System Discovers 29 Zero-Day Vulnerabilities in Open-Source Projects</title><link>https://gridthegrey.com/posts/multi-agent-llm-system-discovers-29-zero-day-vulnerabilities-in-open-source/</link><pubDate>Fri, 29 May 2026 10:10:04 +0000</pubDate><guid>https://gridthegrey.com/posts/multi-agent-llm-system-discovers-29-zero-day-vulnerabilities-in-open-source/</guid><category>Threat Level: HIGH</category><category>Agentic AI</category><category>Research</category><category>LLM Security</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0040 - ML Model Inference API Access</category><category>AML.T0043 - Craft Adversarial Data</category><description>Researchers have developed FuzzingBrain V2, a multi-agent LLM system capable of autonomously discovering and reproducing software vulnerabilities with a 90% detection rate on a competitive benchmark dataset. The system discovered 29 zero-day vulnerabilities across 12 open-source projects, all confirmed by maintainers, raising both defensive and dual-use concerns for the security community. While positioned as a defensive research tool, the automation of end-to-end vulnerability discovery at this scale represents a meaningful shift in the offensive capability landscape.</description></item><item><title>Russia-Linked GreyVibe Weaponises ChatGPT and Gemini Across Full Attack Lifecycle</title><link>https://gridthegrey.com/posts/russia-linked-greyvibe-weaponises-chatgpt-and-gemini-across-full-attack/</link><pubDate>Fri, 29 May 2026 10:09:20 +0000</pubDate><guid>https://gridthegrey.com/posts/russia-linked-greyvibe-weaponises-chatgpt-and-gemini-across-full-attack/</guid><category>Threat Level: HIGH</category><category>LLM Security</category><category>Adversarial ML</category><category>Industry News</category><category>Research</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0043 - Craft Adversarial Data</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0015 - Evade ML Model</category><description>WithSecure has documented GreyVibe, a Russia-nexus threat actor systematically deploying ChatGPT, Google Gemini, and Ideogram AI across every phase of its attack chain — from phishing lure creation to custom malware development — against Ukrainian targets since August 2025. The group's LLM-assisted malware, LegionRelay, contained design flaws introduced during AI-generated development, which paradoxically allowed researchers to track the group over an extended period. The case illustrates both the operational leverage AI provides to moderately skilled threat actors and the novel forensic signatures that AI-assisted development can inadvertently introduce.</description></item></channel></rss>