<?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>Wed, 24 Jun 2026 10:05:09 +0530</lastBuildDate><atom:link href="https://gridthegrey.com/index.xml" rel="self" type="application/rss+xml"/><item><title>First Look: MoEngage Acquires Aampe to Deploy Millions of Autonomous AI Marketing Agents</title><link>https://gridthegrey.com/posts/first-look-moengage-acquires-aampe-to-deploy-millions-of-autonomous-ai-marketing/</link><pubDate>Wed, 24 Jun 2026 04:34:53 +0000</pubDate><guid>https://gridthegrey.com/posts/first-look-moengage-acquires-aampe-to-deploy-millions-of-autonomous-ai-marketing/</guid><category>Threat Level: HIGH</category><category>First Look</category><category>Agentic AI</category><category>LLM Security</category><category>Supply Chain</category><category>Industry News</category><category>AML.T0020 - Poison Training Data</category><category>AML.T0043 - Craft Adversarial Data</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0010 - ML Supply Chain Compromise</category><category>AML.T0040 - ML Model Inference API Access</category><description>MoEngage has acquired Aampe to deploy individualized AI agents for every customer, enabling autonomous decisions on messaging targeting, timing, and content at enterprise scale across 1,350+ brands globally. This architecture introduces a large, distributed fleet of autonomous agents operating on sensitive behavioral and PII data, dramatically expanding the blast radius of any single compromise. Security teams at enterprises adopting this platform must now reason about agent-level trust boundaries, data inference risks, and the amplification potential of adversarial manipulation across millions of simultaneous decision-making agents.</description></item><item><title>First Look: Dragos Launches EmberAI, an OT-Specific AI Security Intelligence Platform</title><link>https://gridthegrey.com/posts/first-look-dragos-launches-emberai-an-ot-specific-ai-security-intelligence/</link><pubDate>Wed, 24 Jun 2026 04:30:55 +0000</pubDate><guid>https://gridthegrey.com/posts/first-look-dragos-launches-emberai-an-ot-specific-ai-security-intelligence/</guid><category>Threat Level: HIGH</category><category>First Look</category><category>LLM Security</category><category>Prompt Injection</category><category>Supply Chain</category><category>Industry News</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0056 - LLM Meta Prompt Extraction</category><category>AML.T0020 - Poison Training Data</category><category>AML.T0010 - ML Supply Chain Compromise</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0040 - ML Model Inference API Access</category><description>Dragos has launched EmberAI, an AI module embedded within its OT security platform that allows analysts to query threat intelligence, asset data, and network activity in plain language, grounded in a decade of proprietary OT-specific data. The system introduces new attack surface considerations because it aggregates highly sensitive OT network telemetry, vulnerability data, and adversary intelligence into a single AI-queryable layer — making the platform itself a high-value target. Defenders must weigh the risks of prompt injection, over-reliance on AI-generated recommendations in safety-critical environments, and the intelligence value this consolidated dataset represents to nation-state adversaries.</description></item><item><title>First Look: Mistral AI Ships OCR 4 with Structured Document Extraction for RAG Pipelines</title><link>https://gridthegrey.com/posts/first-look-mistral-ai-ships-ocr-4-with-structured-document-extraction-for-rag/</link><pubDate>Wed, 24 Jun 2026 04:29:02 +0000</pubDate><guid>https://gridthegrey.com/posts/first-look-mistral-ai-ships-ocr-4-with-structured-document-extraction-for-rag/</guid><category>Threat Level: MEDIUM</category><category>First Look</category><category>LLM Security</category><category>Prompt Injection</category><category>Supply Chain</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.T0010 - ML Supply Chain Compromise</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0020 - Poison Training Data</category><description>Mistral OCR 4 is a production-grade document intelligence model delivering bounding boxes, block classification, inline confidence scores, and 170-language OCR optimised for enterprise RAG and search ingestion pipelines. For defenders, the model's role as a trusted ingestion component in downstream retrieval pipelines creates a high-value attack surface: adversarially crafted documents can now influence RAG context, citations, and automated redaction decisions at scale. The self-hosted single-container deployment option further expands the supply chain and misconfiguration risk surface for organisations running document intelligence internally.</description></item><item><title>Malicious Pull Requests Compromise AI and Developer Toolchains via CI/CD Flaws</title><link>https://gridthegrey.com/posts/malicious-pull-requests-compromise-ai-and-developer-toolchains-via-ci-cd-flaws/</link><pubDate>Wed, 24 Jun 2026 04:27:38 +0000</pubDate><guid>https://gridthegrey.com/posts/malicious-pull-requests-compromise-ai-and-developer-toolchains-via-ci-cd-flaws/</guid><category>Threat Level: HIGH</category><category>Supply Chain</category><category>Agentic AI</category><category>LLM Security</category><category>Industry News</category><category>AML.T0010 - ML Supply Chain Compromise</category><category>AML.T0020 - Poison Training Data</category><category>AML.T0018 - Backdoor ML Model</category><category>AML.T0047 - ML-Enabled Product or Service</category><description>A campaign dubbed 'Cordyceps' is exploiting weaknesses in CI/CD workflows to inject malicious pull requests into high-profile open-source projects, including Google's AI Agent Development Kit and Microsoft's Azure Sentinel. The attack surface spans multiple trusted ecosystems, meaning poisoned code could propagate into AI tooling, cloud infrastructure, and widely-used developer utilities before detection. The breadth of targets — including Python's Black formatter — signals a supply chain strategy designed to maximise downstream blast radius.</description></item><item><title>Anthropic's Mythos AI Breached Classified US Government Systems in Hours</title><link>https://gridthegrey.com/posts/anthropic-s-mythos-ai-breached-classified-us-government-systems-in-hours/</link><pubDate>Wed, 24 Jun 2026 04:25:21 +0000</pubDate><guid>https://gridthegrey.com/posts/anthropic-s-mythos-ai-breached-classified-us-government-systems-in-hours/</guid><category>Threat Level: CRITICAL</category><category>LLM Security</category><category>Agentic AI</category><category>Regulatory</category><category>Industry News</category><category>Research</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0040 - ML Model Inference API Access</category><category>AML.T0044 - Full ML Model Access</category><category>AML.T0043 - Craft Adversarial Data</category><description>Anthropic's Mythos AI model identified vulnerabilities in classified US government computer systems within hours during a government-sanctioned testing exercise under Project Glasswing. A senior US official confirmed the findings to the Associated Press, corroborating statements made by Sen. Mark Warner that the model 'broke into almost all of our classified systems.' The incident marks a landmark demonstration of AI-enabled offensive cyber capability at the highest sensitivity levels of government infrastructure.</description></item><item><title>Cisco and NVIDIA AI Agent Skill Scanners Bypassed by Fake Marketplace Skill</title><link>https://gridthegrey.com/posts/first-look-cisco-and-nvidia-ai-agent-skill-scanners-bypassed-by-fake-marketplace/</link><pubDate>Wed, 24 Jun 2026 04:24:31 +0000</pubDate><guid>https://gridthegrey.com/posts/first-look-cisco-and-nvidia-ai-agent-skill-scanners-bypassed-by-fake-marketplace/</guid><category>Threat Level: CRITICAL</category><category>First Look</category><category>Supply Chain</category><category>Agentic AI</category><category>LLM Security</category><category>Prompt Injection</category><category>AML.T0010 - ML Supply Chain Compromise</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0019 - Publish Poisoned Datasets</category><description>Security firm AIR demonstrated that a malicious AI agent skill, disguised as a Google Stitch landing-page builder, passed every major skill scanner including Cisco's, NVIDIA's, and skills.sh integrations, reaching approximately 26,000 agents before its payload was activated. The attack exploits a structural gap: scanners evaluate a static package at submission time, while the external URL the skill instructs the agent to fetch can be silently swapped post-install to deliver arbitrary instructions. Defenders relying on marketplace reputation signals, GitHub star counts, or one-time scanner verdicts to gatekeep agent skills have no meaningful protection against this class of supply-chain attack.</description></item><item><title>Legacy Infrastructure Becomes Primary Attack Path into Enterprise AI Agents</title><link>https://gridthegrey.com/posts/legacy-infrastructure-becomes-primary-attack-path-into-enterprise-ai-agents/</link><pubDate>Tue, 23 Jun 2026 04:36:27 +0000</pubDate><guid>https://gridthegrey.com/posts/legacy-infrastructure-becomes-primary-attack-path-into-enterprise-ai-agents/</guid><category>Threat Level: HIGH</category><category>Agentic AI</category><category>LLM Security</category><category>Supply Chain</category><category>Industry News</category><category>AML.T0012 - Valid Accounts</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0010 - ML Supply Chain Compromise</category><description>Attackers are bypassing AI-layer defences entirely by exploiting unpatched legacy infrastructure — misconfigured Active Directory, stale credentials, and over-privileged IAM roles — to hijack the resources AI agents depend on. Research cited in the article shows 70% of organisations grant AI systems more access than a human in the same role, driving a 76% incident rate among over-privileged deployments. The article argues that securing AI agents requires closing the underlying infrastructure exposure gap, not just hardening the model layer.</description></item><item><title>Role Confusion Attack Lets Injected Text Override LLM Safety Controls</title><link>https://gridthegrey.com/posts/role-confusion-attack-lets-injected-text-override-llm-safety-controls/</link><pubDate>Tue, 23 Jun 2026 04:35:39 +0000</pubDate><guid>https://gridthegrey.com/posts/role-confusion-attack-lets-injected-text-override-llm-safety-controls/</guid><category>Threat Level: HIGH</category><category>LLM Security</category><category>Prompt Injection</category><category>Jailbreaks</category><category>Adversarial ML</category><category>Research</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0054 - LLM Jailbreak</category><category>AML.T0043 - Craft Adversarial Data</category><category>AML.T0015 - Evade ML Model</category><description>New research from Ye, Cui, and Hadfield-Menell demonstrates that LLMs prioritise the stylistic format of text over its structural role tags, enabling attackers to craft injected content that mimics internal reasoning blocks and bypasses safety guardrails. The study found attack success rates of 61% when injected text stylistically matched model-internal formats, dropping to just 10% after 'destyling'. The authors conclude that without genuine role perception in models, prompt injection defences will remain fundamentally reactive.</description></item><item><title>First Look: OpenAI Launches 'Patch the Planet' Open-Source Vulnerability Remediation Initiative</title><link>https://gridthegrey.com/posts/first-look-openai-launches-patch-the-planet-open-source-vulnerability-initiative/</link><pubDate>Tue, 23 Jun 2026 04:34:36 +0000</pubDate><guid>https://gridthegrey.com/posts/first-look-openai-launches-patch-the-planet-open-source-vulnerability-initiative/</guid><category>Threat Level: MEDIUM</category><category>First Look</category><category>Supply Chain</category><category>LLM Security</category><category>Agentic AI</category><category>Industry News</category><category>AML.T0010 - ML Supply Chain Compromise</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0020 - Poison Training Data</category><category>AML.T0057 - LLM Data Leakage</category><description>OpenAI has partnered with Trail of Bits to launch 'Patch the Planet,' an initiative using AI-assisted tooling (including Codex Security) to help open-source maintainers find and patch vulnerabilities at scale. While the defensive intent is clear, the program introduces new attack surface considerations: AI-generated patches applied to widely-used open-source projects create a high-value supply chain target, and the triage/remediation pipeline itself could be manipulated to introduce subtle flaws. Defenders should monitor open-source dependencies that receive AI-assisted patches and assess the integrity guarantees of the remediation workflow.</description></item><item><title>AutoJack Vulnerability Chain Enabled Remote Code Execution via AI Agent WebSocket</title><link>https://gridthegrey.com/posts/autojack-vulnerability-chain-enabled-remote-code-execution-via-ai-agent/</link><pubDate>Tue, 23 Jun 2026 04:33:34 +0000</pubDate><guid>https://gridthegrey.com/posts/autojack-vulnerability-chain-enabled-remote-code-execution-via-ai-agent/</guid><category>Threat Level: HIGH</category><category>Agentic AI</category><category>LLM Security</category><category>Supply Chain</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0057 - LLM Data Leakage</category><description>A three-flaw vulnerability chain dubbed AutoJack in Microsoft's AutoGen Studio allowed attackers to execute arbitrary commands on a developer's host system by manipulating a browsing AI agent into connecting to a malicious webpage. The attack exploited missing authentication on MCP WebSocket routes combined with unsanitised base64-encoded parameters to launch arbitrary processes. Microsoft confirmed the flaw was patched before any PyPI release, limiting exposure to developers building directly from the main GitHub branch.</description></item><item><title>First Look: AWS Launches Amazon Bedrock AgentCore Payments Enabling Autonomous Agent Transactions</title><link>https://gridthegrey.com/posts/first-look-aws-launches-amazon-bedrock-agentcore-payments-enabling-autonomous/</link><pubDate>Tue, 23 Jun 2026 04:32:37 +0000</pubDate><guid>https://gridthegrey.com/posts/first-look-aws-launches-amazon-bedrock-agentcore-payments-enabling-autonomous/</guid><category>Threat Level: HIGH</category><category>First Look</category><category>Agentic AI</category><category>LLM Security</category><category>Supply Chain</category><category>Prompt Injection</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0010 - ML Supply Chain Compromise</category><category>AML.T0040 - ML Model Inference API Access</category><category>AML.T0012 - Valid Accounts</category><category>AML.T0057 - LLM Data Leakage</category><description>AWS has launched Amazon Bedrock AgentCore Payments, a managed infrastructure layer that enables AI agents to autonomously transact with external model providers and services using the x402 payment protocol, without human intervention. This capability introduces a new class of financial attack surface where compromised or manipulated agents can autonomously spend real funds, exfiltrate value, or be redirected to malicious service endpoints. Defenders must now treat agent payment credentials and spending budgets as first-class financial controls, on par with cloud IAM policies.</description></item><item><title>First Look: OpenAI ChatGPT Image Generator Bypasses Content Filters via Viral Prompt</title><link>https://gridthegrey.com/posts/first-look-openai-chatgpt-image-generator-bypasses-content-filters-via-viral/</link><pubDate>Mon, 22 Jun 2026 05:19:54 +0000</pubDate><guid>https://gridthegrey.com/posts/first-look-openai-chatgpt-image-generator-bypasses-content-filters-via-viral/</guid><category>Threat Level: HIGH</category><category>First Look</category><category>Jailbreaks</category><category>LLM Security</category><category>Adversarial ML</category><category>Research</category><category>AML.T0054 - LLM Jailbreak</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0043 - Craft Adversarial Data</category><category>AML.T0015 - Evade ML Model</category><category>AML.T0040 - ML Model Inference API Access</category><description>Mindgard researchers demonstrated that ChatGPT's image generation pipeline can be manipulated through an indirect, socially-engineered prompt to produce violent and sexually explicit content without users directly requesting it, exposing a significant failure in OpenAI's content moderation controls. Defenders and enterprise operators of ChatGPT-integrated products face a newly validated attack class where innocuous-looking prompt patterns — potentially spreading virally — can systematically strip safety guardrails from image generation. This finding signals that content filter bypasses in multimodal systems are reproducible at scale, raising urgent questions about the adequacy of output-layer filtering as a sole defence mechanism.</description></item><item><title>First Look: Bayer and Thoughtworks Ship PRINCE Agentic RAG Platform for Pharmaceutical Research</title><link>https://gridthegrey.com/posts/first-look-bayer-and-thoughtworks-ship-prince-agentic-rag-platform-for-research/</link><pubDate>Mon, 22 Jun 2026 05:14:20 +0000</pubDate><guid>https://gridthegrey.com/posts/first-look-bayer-and-thoughtworks-ship-prince-agentic-rag-platform-for-research/</guid><category>Threat Level: HIGH</category><category>First Look</category><category>Agentic AI</category><category>Prompt Injection</category><category>LLM Security</category><category>Regulatory</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><category>AML.T0056 - LLM Meta Prompt Extraction</category><category>AML.T0040 - ML Model Inference API Access</category><description>Bayer AG and Thoughtworks have published a detailed case study on PRINCE, a production agentic RAG system combining multi-agent orchestration, Text-to-SQL, and human-in-the-loop workflows to answer complex pharmaceutical preclinical research questions and draft regulatory documents. The system's architecture — spanning intent clarification, planning, retrieval, reflection, and writing agents with access to decades of safety study data — introduces a broad attack surface including prompt injection across agent boundaries, SQL injection via natural language, and sensitive data exfiltration through compromised agent outputs. Defenders evaluating similar agentic platforms should treat each inter-agent handoff as a trust boundary requiring independent validation and focus on data leakage controls given the sensitivity of preclinical regulatory data.</description></item><item><title>First Look: Anthropic Claude Code Gains Fully-Local Persistent Session Memory via Recall</title><link>https://gridthegrey.com/posts/first-look-anthropic-claude-code-gains-fully-local-persistent-session-memory-via/</link><pubDate>Mon, 22 Jun 2026 05:12:25 +0000</pubDate><guid>https://gridthegrey.com/posts/first-look-anthropic-claude-code-gains-fully-local-persistent-session-memory-via/</guid><category>Threat Level: MEDIUM</category><category>First Look</category><category>LLM Security</category><category>Prompt Injection</category><category>Agentic AI</category><category>Supply Chain</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0010 - ML Supply Chain Compromise</category><category>AML.T0043 - Craft Adversarial Data</category><category>AML.T0056 - LLM Meta Prompt Extraction</category><description>Recall is an open-source, fully-local memory layer for Anthropic's Claude Code that persists and summarises project context across coding sessions without sending data to external services. For defenders, the introduction of a persistent, file-based context store creates a new attack surface: a poisoned or tampered memory file can silently inject malicious instructions into every subsequent Claude Code session. Security teams should treat the local memory store as a trusted-input boundary and apply appropriate file-integrity and access controls.</description></item><item><title>First Look: OpenAI Ships GPT-5.5 Instant with Enhanced Health Intelligence in ChatGPT</title><link>https://gridthegrey.com/posts/first-look-openai-ships-gpt-5-5-instant-with-enhanced-health-intelligence-in/</link><pubDate>Sun, 21 Jun 2026 09:10:25 +0000</pubDate><guid>https://gridthegrey.com/posts/first-look-openai-ships-gpt-5-5-instant-with-enhanced-health-intelligence-in/</guid><category>Threat Level: MEDIUM</category><category>First Look</category><category>LLM Security</category><category>Prompt Injection</category><category>Regulatory</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0054 - LLM Jailbreak</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0056 - LLM Meta Prompt Extraction</category><description>OpenAI has upgraded ChatGPT's health and wellness response capabilities via GPT-5.5 Instant, incorporating stronger reasoning, physician-informed evaluations, and improved contextual understanding for medical queries. This expansion into high-stakes health guidance raises meaningful concerns for defenders, as improved fluency and authority in medical responses increases the risk of user overreliance and lowers the perceived threshold for trusting AI-generated health advice. Security and trust-safety teams should evaluate how this capability interacts with prompt injection, social engineering chains, and the broader risk of AI-mediated medical misinformation at scale.</description></item><item><title>Malware Embeds Policy-Triggering Text to Evade LLM-Based Security Analysis</title><link>https://gridthegrey.com/posts/malware-embeds-policy-triggering-text-to-evade-llm-based-security-analysis/</link><pubDate>Sun, 21 Jun 2026 09:09:14 +0000</pubDate><guid>https://gridthegrey.com/posts/malware-embeds-policy-triggering-text-to-evade-llm-based-security-analysis/</guid><category>Threat Level: HIGH</category><category>LLM Security</category><category>Prompt Injection</category><category>Adversarial ML</category><category>First Look</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0015 - Evade ML Model</category><category>AML.T0043 - Craft Adversarial Data</category><description>A malware developer has been observed embedding fake system instructions and policy-triggering content — including references to nuclear and biological weapons — inside JavaScript comment blocks to confuse or trigger refusal behaviour in LLM-powered security analysis pipelines. The technique does not affect code execution but is specifically designed to disrupt naive AI-first triage tools that feed raw file content to language models without isolating it as untrusted data. Traditional static analysis methods remain unaffected, but the approach signals an emerging class of anti-AI-analysis evasion techniques.</description></item><item><title>First Look: Agentic AI Security Platforms Emerge Promising Autonomous CTEM Operationalization</title><link>https://gridthegrey.com/posts/first-look-agentic-ai-security-platforms-emerge-promising-autonomous-ctem/</link><pubDate>Sun, 21 Jun 2026 09:05:17 +0000</pubDate><guid>https://gridthegrey.com/posts/first-look-agentic-ai-security-platforms-emerge-promising-autonomous-ctem/</guid><category>Threat Level: HIGH</category><category>First Look</category><category>Agentic AI</category><category>LLM Security</category><category>Prompt Injection</category><category>Supply Chain</category><category>Industry News</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0043 - Craft Adversarial Data</category><category>AML.T0020 - Poison Training Data</category><category>AML.T0010 - ML Supply Chain Compromise</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0040 - ML Model Inference API Access</category><category>AML.T0056 - LLM Meta Prompt Extraction</category><description>A new class of agentic AI security platforms is emerging that autonomously correlates threat intelligence, validates controls, and prioritizes remediations across siloed enterprise security tooling — moving beyond assistive chatbot interfaces to continuous, multi-step autonomous action. This shift introduces significant new attack surface: an AI system with persistent access to live exposure data, security telemetry, and remediation workflows becomes a high-value target for adversarial manipulation. Defenders must assess trust boundaries, prompt injection risks, and the consequences of autonomous action taken on poisoned or manipulated inputs before deploying these systems.</description></item><item><title>First Look: Token Security Launches AI Agent Identity Governance Platform for Enterprise</title><link>https://gridthegrey.com/posts/first-look-token-security-launches-ai-agent-identity-governance-platform-for/</link><pubDate>Sat, 20 Jun 2026 04:35:56 +0000</pubDate><guid>https://gridthegrey.com/posts/first-look-token-security-launches-ai-agent-identity-governance-platform-for/</guid><category>Threat Level: HIGH</category><category>First Look</category><category>Agentic AI</category><category>LLM Security</category><category>Supply Chain</category><category>AML.T0012 - Valid Accounts</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0057 - LLM Data Leakage</category><category>AML.T0040 - ML Model Inference API Access</category><category>AML.T0010 - ML Supply Chain Compromise</category><description>Token Security has published analysis and launched a platform addressing the growing security gap created by AI agents operating as unmanaged identities within enterprise environments, connecting to critical systems like Salesforce, GitHub, Snowflake, and production databases with minimal governance. Most organizations have deployed AI agents using credentials provisioned for other purposes, creating high-privilege, low-visibility actors outside the scope of existing IAM controls. Defenders now face a sprawling, machine-speed identity layer that existing lifecycle management, least-privilege enforcement, and audit tooling were never designed to handle.</description></item><item><title>First Look: GitHub Ships Internal Data Analytics Agent Built on Copilot</title><link>https://gridthegrey.com/posts/first-look-github-ships-internal-data-analytics-agent-built-on-copilot/</link><pubDate>Sat, 20 Jun 2026 04:34:14 +0000</pubDate><guid>https://gridthegrey.com/posts/first-look-github-ships-internal-data-analytics-agent-built-on-copilot/</guid><category>Threat Level: MEDIUM</category><category>First Look</category><category>Agentic AI</category><category>LLM Security</category><category>Prompt Injection</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0056 - LLM Meta Prompt Extraction</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.T0010 - ML Supply Chain Compromise</category><description>GitHub has published a detailed engineering account of how it built an internal data analytics agent using GitHub Copilot, exposing the architectural patterns — including natural language-to-SQL translation, autonomous tool invocation, and internal data access — that underpin such systems. For defenders, this blueprint highlights concrete risks around prompt injection into analytics pipelines, excessive agency over sensitive internal datasets, and the challenge of auditing LLM-generated queries before execution. Organisations adopting similar agentic analytics patterns should treat this as a reference threat model rather than a safe-to-copy architecture.</description></item><item><title>AutoJack Exploit Chain Turns AI Browsing Agent Into Remote Code Execution Vector</title><link>https://gridthegrey.com/posts/autojack-exploit-chain-turns-ai-browsing-agent-into-remote-code-execution-vector/</link><pubDate>Sat, 20 Jun 2026 04:32:27 +0000</pubDate><guid>https://gridthegrey.com/posts/autojack-exploit-chain-turns-ai-browsing-agent-into-remote-code-execution-vector/</guid><category>Threat Level: HIGH</category><category>Agentic AI</category><category>LLM Security</category><category>Prompt Injection</category><category>Supply Chain</category><category>Research</category><category>AML.T0051 - LLM Prompt Injection</category><category>AML.T0047 - ML-Enabled Product or Service</category><category>AML.T0010 - ML Supply Chain Compromise</category><category>AML.T0057 - LLM Data Leakage</category><description>Microsoft researchers disclosed AutoJack, an exploit chain targeting AutoGen Studio's MCP WebSocket endpoint that allows a single malicious web page to execute arbitrary commands on a developer's host machine via an AI browsing agent. The attack chains three distinct weaknesses — localhost trust bypass, missing authentication on MCP paths, and unsanitised command execution — requiring no credentials or user interaction beyond the agent loading the attacker's URL. While the vulnerable handler was not included in stable PyPI releases, it shipped in two pre-release builds that remain unyanked, leaving anyone who installed those versions exposed.</description></item></channel></rss>