惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

WordPress大学
WordPress大学
D
Darknet – Hacking Tools, Hacker News & Cyber Security
Hacker News: Ask HN
Hacker News: Ask HN
N
News and Events Feed by Topic
Forbes - Security
Forbes - Security
The Last Watchdog
The Last Watchdog
TaoSecurity Blog
TaoSecurity Blog
Schneier on Security
Schneier on Security
SecWiki News
SecWiki News
V
Vulnerabilities – Threatpost
Project Zero
Project Zero
O
OpenAI News
W
WeLiveSecurity
Security Archives - TechRepublic
Security Archives - TechRepublic
Exploit-DB.com RSS Feed
Exploit-DB.com RSS Feed
H
Hacker News: Front Page
Cisco Talos Blog
Cisco Talos Blog
Spread Privacy
Spread Privacy
Help Net Security
Help Net Security
P
Privacy & Cybersecurity Law Blog
K
Kaspersky official blog
S
Security @ Cisco Blogs
Latest news
Latest news
AWS News Blog
AWS News Blog
U
Unit 42
Martin Fowler
Martin Fowler
阮一峰的网络日志
阮一峰的网络日志
S
Secure Thoughts
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
Application and Cybersecurity Blog
Application and Cybersecurity Blog
Know Your Adversary
Know Your Adversary
Scott Helme
Scott Helme
博客园 - 司徒正美
B
Blog RSS Feed
C
Check Point Blog
Hacker News - Newest:
Hacker News - Newest: "LLM"
D
Docker
Google Online Security Blog
Google Online Security Blog
Jina AI
Jina AI
aimingoo的专栏
aimingoo的专栏
Recent Commits to openclaw:main
Recent Commits to openclaw:main
Last Week in AI
Last Week in AI
月光博客
月光博客
C
CXSECURITY Database RSS Feed - CXSecurity.com
S
SegmentFault 最新的问题
NISL@THU
NISL@THU
T
The Blog of Author Tim Ferriss
C
Cisco Blogs
Attack and Defense Labs
Attack and Defense Labs
小众软件
小众软件

CSO Online

New malware turns Linux systems into P2P attack networks Poisoned truth: The quiet security threat inside enterprise AI Train like you fight: Why cyber operations teams need no-notice drills Die besten DAST- & SAST-Tools CISA mulls new three-day remediation deadline for critical flaws CISA pushes critical infrastructure operators to prepare to work in isolation CISOs step up to the security workforce challenge 10 Anzeichen für einen schlechten CSO Anthropic Mythos spurs White House to weigh pre-release reviews for high-risk AI models Security agencies draw red lines around agentic AI deployments The fake IT worker problem CISOs can’t ignore How CISOs should utilize data security posture management to inform risk Was ist ein Botnet? Human-centric failures: Why BEC continues to work despite MFA Just 34% of cyber pros plan to stick with their current employer Managing OT risk at scale: Why OT cyber decisions are leadership decisions 4 ways to prepare your SOC for agentic AI ‘Trivial’ exploit can give attackers root access to Linux kernel Bank regulator sounds warning over cybersecurity threat posed by AI models Dismantle implicit trust in OT networks, CISA tells critical infrastructure operators Max-severity RCE flaw found in Google Gemini CLI Stopping the quiet drift toward excessive agency with re-permissioning ODNI to CISOs on threat assessments: You’re on your own 10 wichtige Security-Eigenschaften: So setzen Sie die Kraft Ihres IT-Sicherheitstechnik-Teams frei Researchers unearth industrial sabotage malware that predated Stuxnet by 5 years AWS leans on prior ingenuity to face future AI and quantum threats What it takes to win that CSO role Third Party Risk Management: So vermeiden Sie Compliance-Unheil Critical Cursor bug could turn routine Git into RCE Securing RAG pipelines in enterprise SaaS What CISOs need to get right as identity enters the agentic era Stopping AiTM attacks: The defenses that actually work after authentication succeeds EDR-Software – ein Kaufratgeber Microsoft patched an ‘agent-only’ role that was not AI is reshaping DevSecOps to bring security closer to the code The 'manager of agents': How AI evolves the SOC analyst role 4 Wege aus der Security-Akronymhölle Autonome KI-Agenten: Strategien für die neue Bedrohungslage New US House privacy bills raise hard questions about enterprise data collection Scattered Spider co-conspirator pleads guilty Security-KPIs und -KRIs: So messen Sie Cybersicherheit Bitwarden CLI password manager trojanized in supply chain attack 3 practical ways AI threat detection improves enterprise cyber resilience The curious case of Sean Plankey’s derailed CISA nomination Google gets agent-ready for the Mythos age Google drafts AI agents secure systems against AI hackers CNAPP – ein Kaufratgeber Riddled with flaws, serial-to-Ethernet converters endanger critical infrastructure NFC tap-to-pay gets tapped by hackers Anthropic bets on EPSS for the coming bug surge SBOM erklärt: Was ist eine Software Bill of Materials? Thousands of Apache ActiveMQ instances still unpatched, weeks after an actively exploited hole discovered Prompt injection turned Google’s Antigravity file search into RCE Why identity is the driving force behind digital transformation Top techniques attackers use to infiltrate your systems today The thin gray line: Handala, CyberAv3ngers and Iran’s proxy ops Attackers abuse Microsoft Teams to impersonate the IT helpdesk in a new enterprise intrusion playbook CISOs reshape their roles as business risk strategists Copilot & Agentforce offen für Prompt-Injection-Tricks Claude Mythos – ist der Hype gerechtfertigt? Für Cyberattacken gewappnet – Krisenkommunikation nach Plan Critical sandbox bypass fixed in popular Thymeleaf Java template engine White House moves to give federal agencies access to Anthropic’s Claude Mythos Another Microsoft Defender privilege escalation bug emerges days after patch Palo Alto’s Helmut Reisinger sees a cyber sea change ahead as AI advances Positiv denken für Sicherheitsentscheider: 6 Mindsets, die Sie sofort ablegen sollten NIST cuts down CVE analysis amid vulnerability overload Was bei der Cloud-Konfiguration schiefläuft – und wie es besser geht The endless CISO reporting line debate — and what it says about cybersecurity leadership Behind the Mythos hype, Glasswing has just one confirmed CVE Insurance carriers quietly back away from covering AI outputs RCE by design: MCP architectural choice haunts AI agent ecosystem Critical nginx UI tool vulnerability opens web servers to full compromise Copilot and Agentforce fall to form-based prompt injection tricks The deepfake dilemma: From financial fraud to reputational crisis 7 biggest healthcare security threats The need for a board-level definition of cyber resilience Mallory Launches AI-Native Threat Intelligence Platform, Turning Global Threat Data Into Prioritized Action 13 Fragen gegen Drittanbieterrisiken April Patch Tuesday roundup: Zero day vulnerabilities and critical bugs 4 questions to ask before outsourcing MDR 5 trends defining the future of AI-powered cybersecurity EU regulators largely denied access to Anthropic Mythos China-linked cloud credential heist runs on typos and SMTP How AI is transforming threat detection The AI inflection point: What security leaders must do now Cyber-Inspekteur: Hybride Attacken nehmen weiter zu Anthropic’s Mythos signals a structural cybersecurity shift Seven IBM WebSphere Liberty flaws can be chained into full takeover Old Docker authorization bypass pops up despite previous patch Hacker Unknown now known, named on Europol’s most-wanted list The cyber winners and losers in Trump’s 2027 budget CMMC compliance in the age of AI Claude uncovers a 13‑year‑old ActiveMQ RCE bug within minutes Was CISOs von Moschusochsen lernen können Hackers have been exploiting an unpatched Adobe Reader vulnerability for months New ClickFix variant bypasses Apple safeguards with one‑click script execution Cloudflare ‘actively adjusting’ quantum priorities in wake of Google warning Patch windows collapse as time-to-exploit accelerates So geht Post-Incident Review
Stop treating AI governance as a review layer. Make it release infrastructure
by Collin Hogue-Spears Contributor · 2026-05-26 · via CSO Online

Opinion

May 26, 20267 mins

Treating AI compliance as a final "check-the-box" step is failing. To keep up, we need to bake governance directly into the engineering pipeline itself.

I’ve spent years building compliance into security products. FedRAMP and Department of War Impact Level authorizations, vulnerability management pipelines: They all follow the same pattern. Build the product, then prove it meets requirements. The compliance layer sits outside the engineering workflow. It reviews what already exists.

That model worked when the product stayed static between audits. It breaks for AI.

AI systems change even when the base model does not. A retrieval index updates overnight. A new tool gets added to an agent’s action space. An evaluation that passed on Tuesday no longer reflects what the system does on Thursday. The compliance-as-review approach assumes that the thing you’re reviewing remains unchanged between review cycles. For AI, that assumption is fundamentally wrong. Most organizations I talk to are still trying to govern AI the way they govern traditional software: Build it, ship it, then ask legal to check the box. For AI, it leaves the release process blind to the thing most likely to change.

When I started researching how other countries handle this problem for my forthcoming book on China’s AI ecosystem, I found something that challenged my assumptions. Chinese AI companies don’t treat governance as a gate they pass after the model works. They treat it as release infrastructure: Compliance checkpoints embedded in the deployment pipeline itself. No checkpoint clearance, no product launch. The governance layer doesn’t review the product. It is part of the product.

In one AI deployment review I joined, the product team had everything the launch meeting usually rewards: Performance metrics, customer use cases, latency numbers and a firm release date. The missing pieces were not on anyone’s checklist. No one could point to a current, pipeline-generated record of the retrieval index feeding the model. No one owned the output-monitoring thresholds. No one had tied model evaluation results to an enforceable release gate. The team wasn’t ignoring governance. Governance simply had no place to live inside the actual release process.

The review layer is already failing

That scene is not unusual. When governance lives outside the engineering workflow, it competes with delivery timelines. Delivery timelines win every time. The NIST AI Risk Management Framework identifies govern, map, measure and manage as core functions for AI risk, but it doesn’t prescribe where those functions sit inside a release process. That leaves the hard architectural question to the security organization. Most companies default to what they know: A periodic review cycle borrowed from traditional IT compliance. That cycle was designed for systems that hold still between audits.

AI systems do not hold still. A model fine-tuned on last quarter’s customer data produces different outputs once this quarter’s data enters the pipeline. A retrieval-augmented generation system returns different answers depending on which documents sit in its index today versus yesterday. An agentic workflow that chains three models together produces emergent behaviors that no single-model evaluation captures. Governance-as-periodic-review was built for a world where the artifact under review doesn’t change. We are deploying artifacts that change continuously.

The gap between how fast AI systems evolve and how slowly review-layer governance cycles operate is the core vulnerability. Every week that gap widens, organizations accumulate governance debt they will eventually have to repay, either on their own terms or on a regulator’s.

What release infrastructure looks like in practice

When I researched China’s AI deployment process, I expected to find a heavy-handed approval system that slowed companies down. I found the opposite.

China requires companies deploying generative AI to complete a regulatory filing before their product reaches consumers. The filing demands documentation of training data sources, content safety mechanisms, output controls and user-facing disclosures. Companies that clear the process ship. Companies that do not, wait.

What surprised me was the speed. Baidu launched Ernie Bot to the public on August 31, 2023, sixteen days after China’s generative AI rules took effect. Dozens of companies followed within weeks. The filing process did not stop deployment. It sorted companies by those that had already built the evidence machinery to pass. The firms that treated compliance as a last-mile legal exercise fell behind.

That finding matters for Western security leaders. We should not replicate China’s regulatory model. The underlying operational problem, though, is identical. The EU AI Act reaches the same conclusion from a different regulatory tradition: Its conformity assessment and ongoing risk management requirements for high-risk AI systems assume continuous compliance, not one-time certification. The operational question both frameworks share is the same one I face in my own work: Where in the development process does governance actually live? If the answer is “after the model is trained and before it ships,” you’ve recreated the review-layer bottleneck. Engineering teams will find ways around it.

I saw the same pattern with SBOMs. When teams treated the SBOM as a document someone assembled for a customer questionnaire, it aged out almost immediately. When they generated it from the build pipeline, it became part of the product’s living operating record. Model documentation has to move the same way. A model card written by hand after release is a snapshot. A model card generated from the pipeline is evidence.

Three shifts security leaders should make now

I’ve started applying this principle in my own work and in how I advise teams evaluating AI deployment readiness. Three operational shifts make the difference.

First, move model documentation into the CI/CD pipeline. Treat model cards, training data provenance records and output behavior baselines the same way you treat SBOMs: As artifacts generated automatically during the build process, not as documents written by a compliance analyst after the fact. If your model documentation isn’t versioned alongside your code, it’s already out of date. Every model retraining cycle that doesn’t produce updated compliance artifacts widens your governance gap.

Second, make compliance evidence a deployment gate rather than a post-launch audit item. Your release pipeline probably already blocks deployment if unit tests fail or if a container image carries a critical vulnerability. Add AI governance checkpoints to that same pipeline. Does the model have a current risk evaluation against your organization’s defined thresholds? Is the training data lineage documented and traceable? Are output controls configured, tested and monitored? If the answer to any of those is no, the deployment doesn’t proceed. The pipeline already blocks vulnerable containers. AI governance checkpoints belong in the same layer. It’s extending your existing security architecture to cover a new class of risk.

The problem gets sharper when the AI system stops generating recommendations and starts taking actions. Third, treat agent identity as a first-class security control. As AI agents move into production environments, each one needs an identity in your IAM system with scoped permissions, audit trails and session-level accountability. An agent calling external APIs, reading customer data or triggering automated workflows is an actor in your environment. It requires the same identity governance you apply to human users and service accounts. I wrote about the identity and persistence challenges in stealthy ransomware operations earlier this year here at CSO. The same principles apply: If you can’t identify the actor, you can’t govern the action.

None of this requires waiting for regulation. The organizations that will be best positioned when AI-specific compliance mandates arrive, whether from the EU AI Act’s enforcement timeline, emerging US state-level legislation in Colorado and California or sector-specific rules from financial and healthcare regulators, are the ones building governance into their release infrastructure now. The ones still treating it as a review layer will scramble to retrofit what their competitors already ship with.

I learned that lesson by studying how a very different system solved this problem first. The regulatory traditions are different. The operational logic is the same: Governance that ships with the product beats governance that reviews it after the fact.

This article is published as part of the Foundry Expert Contributor Network.
Want to join?

SUBSCRIBE TO OUR NEWSLETTER

From our editors straight to your inbox

Get started by entering your email address below.

Collin Hogue-Spears

Collin Hogue-Spears is an independent researcher and author of "From Lab to Life: How AI Works in China" (Gatekeeper Press, August 2026), which examines how China built a governed AI ecosystem where capability, compliance and distribution became inseparable. He has more than 20 years of technology experience across product management, cybersecurity, FedRAMP authorization, federal compliance and AI governance. His commentary has appeared in The Wall Street Journal, Politico, Compliance Week, Dark Reading and CIO. He holds CISSP, CISM and MBA credentials.

Show me more