Tuesday, May 26, 2026

The Untrusted Autonomous Workload: How AI Coding Agents Reshape What Isolation Has to Do

Earlier this year I mass-migrated my blog to Astro using Claude Code. 146 posts. 6,024 images. Canonical URLs, JSON-LD markup, sitemap generation, the whole stack. I’d spent hours writing a skills file to teach the agent about my blog’s architecture, how deployment worked, what not to touch. And it worked. Claude Code rewrote components, fixed trailing-slash mismatches across hundreds of pages, added BreadcrumbList structured data to hundreds of routes. Lighthouse scores hit 97 on performance. The blog looked better than it ever had.

The problem was that I had stopped understanding my own codebase.

Not completely. I could still read the files. But somewhere around the third round of “fix the error that the last fix introduced,” I caught myself copy-pasting stack traces back into Claude and trusting whatever came back. The agent would make a change, something else would break, I’d ask the agent to fix that too, and a few cycles later the blog worked again. I couldn’t have told you what was actually in the PostCSS config or why the GA4 integration was wired up the way it was. It worked. It looked great. My confidence in what was underneath had quietly evaporated.

That feeling (it works, thank god, let’s not touch it) is the feeling of having given an autonomous agent real access to your codebase. Every developer using these tools knows it. Nobody writes about it in vendor blog posts. And it’s what made me understand, on a level deeper than reading documentation, why Docker had to build Sandboxes.

Because here’s what I hadn’t thought about: while Claude Code was rewriting my Astro components and fixing image CLS across hundreds of files, every npm install it ran happened on my laptop. Same for every file it modified and every package it pulled. My user privileges, no boundary in sight. If the agent had decided to modify a Git hook or rewrite a CI workflow, I would not have noticed. I wasn’t reviewing individual file changes at that point. I was reviewing outcomes. And reviewing outcomes while skipping changes is not a security model. It’s a prayer.

Docker Sandboxes exists to close that gap.

The container model and why it doesn’t stretch here

Containers were never the wrong abstraction. They were the right abstraction for a world where you knew what was inside them. For twelve years that world held: you wrote the code, you reviewed it, you put it in a Dockerfile, and the container gave it a clean room to run in. Shared kernel was fine because the threat model was bugs in your own software, not surprises from a tenant you’d just invited in.

AI coding agents don’t fit. They aren’t bugs in your software because they aren’t your software. They’re a new kind of tenant, one that’s autonomous and privileged in ways that would make any security engineer nervous. The agent installs packages you didn’t pick and runs commands you didn’t script. It makes network calls you’d never have predicted, to endpoints you didn’t know were in your dependency tree. The trust profile is code being written right now, by something that won’t pause to ask permission. Containers were built for a different kind of code.

This isn’t hypothetical. On March 19, 2026, attackers force-pushed 76 of the 77 version tags in aquasecurity/trivy-action and published a malicious Trivy v0.69.4 binary to GitHub Releases. The exposure window was about 12 hours. The compromised code scraped CI runner memory for secrets, cloud credentials, SSH keys, and Kubernetes tokens, exfiltrating them to a typosquatted domain. Every pipeline that referenced trivy-action by version tag during that window ran code nobody on the receiving end had reviewed.

What gets me about Trivy: the weaponized tool was a vulnerability scanner. The thing organizations deployed to find malicious code became the malicious code. The maintainers didn’t write the bad binary; a compromised CI workflow with too much access and not enough containment did. Substitute “compromised CI workflow” with “AI agent in permissive mode” and you have the same threat model, running all day on every developer machine.

Containers were the right answer to “I trust this code, I want to run it cleanly.” They were never going to be the right answer to “I don’t fully trust this code, and I want to give it real work to do anyway.” That’s the gap microVMs fill.

What Docker built, and why each piece is there

First choice: don’t patch containers. There’s a long tradition in our industry of making a familiar abstraction handle a new problem by adding flags to it. Privileged mode, capability dropping, seccomp profiles, gVisor in front of runc. All of those have their place. None of them solved the specific issue that an autonomous agent needs its own Docker daemon. Docker-in-Docker either compromises the isolation (privileged mode, host socket mounting) or creates a nested complexity that becomes its own attack surface. The Docker docs are blunt about this. Containers, they say, share the host kernel and “can’t safely isolate something that needs its own Docker daemon.”

Once you accept that, you end up at a VM. Not a heavyweight one (booting Ubuntu Server for every coding session would be absurd) but a microVM: light enough to start in seconds, with just enough kernel to run the agent’s containers.

Docker Sandboxes uses a custom VMM, not Firecracker. If you’ve read the Firecracker spec and you’re thinking “boots in 125ms with under 5MB of overhead,” those are Firecracker’s numbers, not Docker’s. Different microVM implementations have different cost profiles. Platform specifics: Hypervisor.framework on macOS, Windows Hypervisor Platform on Windows, KVM on Linux.

image4

Caption: The Sandbox architecture. Each microVM runs its own kernel and its own Docker Engine. Credentials never cross the VM boundary.

Inside each microVM, the sandbox runs a complete Docker Engine. When the agent runs docker build, that command goes to a private daemon that doesn’t know your host containers exist. When it pulls an image, the image lives inside the sandbox VM. When you delete the sandbox, the entire image cache goes with it. Multiple sandboxes don’t share layers. Wasteful. Worth it.

The first time I looked inside a running sandbox, the agent was running as root with sudo and full Docker Engine access inside the VM. My reflex was that this had to be wrong. You don’t give root to untrusted code. But the design is right: the isolation model doesn’t constrain what the agent does inside the boundary. It constrains where the consequences land. Inside the VM, the agent can do whatever it wants. Outside? Nothing. Trying to lock the agent down with capability dropping inside the VM would be solving the wrong problem. The agent legitimately needs to install packages and run docker build. What it doesn’t need is for any of that to touch your laptop.

image1

Caption: From the host, sandboxes don’t show up in docker ps because they aren’t containers; sbx ls is how you see them.

The network layer is where it gets interesting, because it doubles as the credential boundary.

Outbound HTTP/HTTPS traffic routes through a proxy on the host, accessible from inside the VM at host.docker.internal:3128. UDP and ICMP are blocked at the network layer and can’t be allowed by policy. Non-HTTP TCP (like SSH) needs explicit IP+port rules. DNS resolution goes through the proxy. If a request can’t go through the proxy, it doesn’t leave. The proxy terminates TLS, inspects the host header, applies your policy, and re-encrypts with its own certificate authority that the sandbox trusts. Man-in-the-middle by design. Docker uses that exact framing in the documentation.

MITM is what makes credential injection work. Agents need API keys: for the AI provider, for registries, sometimes for cloud accounts. Naive answer is to pass those credentials in as environment variables, where they sit inside the VM and follow it everywhere. Docker instead keeps credentials on the host, in your OS keychain, and has the proxy inject them into outbound requests transparently. The agent sees requests that just work, and the VM never had the secrets to begin with. The docs don’t hedge on this: credential values are never stored inside the VM. A compromised sandbox can’t exfiltrate your API keys because your API keys were never in there.

Docker tells you what won’t work

Sandboxes documentation has a quality that’s rare in security architecture docs: it tells you what the system doesn’t protect against. Most of these documents are written to make a product look strong. Docker’s docs surface the limits. Two of them matter.

The first one is about the network policy.

At first sbx login, you pick one of three default policies. Open allows everything except blocked CIDR ranges (private networks, link-local addresses, cloud metadata endpoints). Balanced denies by default but pre-allows common dev domains. Locked Down denies everything until you explicitly allow. Locked Down is the strictest option, the deny-by-default mode you’d want if you were paranoid. But even with Locked Down and a curated allowlist, the proxy filters by domain, not by content.

Here’s the exact language from the docs: allowing broad domains like github.com permits access to any content on that domain, “and agents could use these as channels for data exfiltration.” Security vendors don’t usually say this about their own products. If github.com is on your allowlist (and it almost certainly is, because the agent needs to clone repos), the proxy knows the request is going to github.com. It does not know whether the agent is reading documentation, cloning a repository, or creating a public gist with the contents of your .env file. All three look identical at the domain level. Same goes for every allowlist entry that includes user-generated content: Discord webhooks, Notion pages. “The domain is allowed” doesn’t mean “only safe content lives there.”

image5

Caption: Under a deny policy, non-allowlisted domains are blocked. Allowlisted domains succeed, including domains that host arbitrary user-generated content.

Docs also acknowledge domain fronting as an inherent limitation of HTTPS proxying. Proxy sees which domain a request claims to be going to; it cannot always prevent the request from being routed elsewhere through that allowed CDN.

The microVM boundary is the primary isolation. Network proxy is a useful additional control, especially for blocking accidental access to internal networks. It is not a hermetic seal, and Docker doesn’t claim it is. “The agent is on a deny policy” is not the same thing as “the agent cannot send data anywhere.”

The workspace is always shared

Network policy is the smaller honest limit. Workspace sharing is the bigger one.

The microVM boundary is strong everywhere except for one path that crosses it on purpose: the workspace directory.

The whole point of running an agent in a Sandbox is for the agent to do real work in your real codebase. Docker shares the workspace between the host and the sandbox at the same absolute path. When the agent edits a file inside the sandbox, the file changes on your host. When you pull a new commit on your host, the agent sees it. This is the design. It’s exactly what you want from a developer tool.

It’s also a covert channel that the agent has legitimate write access to.

Docker security documentation spells out what “the same files” includes, and this is what matters: files that execute implicitly during normal development. Git hooks. CI configurations. IDE task definitions. Makefile targets. package.json scripts. Pre-commit configs. Anything that runs when you do something that feels like just “using your tools.”

Simplest version of the attack: an agent inside the sandbox writes a malicious post-commit hook to .git/hooks/post-commit. Git hooks don’t appear in git diff. They live in .git/, which most developers never open. Next time you commit on your host, the hook runs on your host with your user privileges. Sandbox boundary doesn’t matter, because the boundary ended at the workspace, and the workspace was always shared.

Which brought me back to my own Astro migration, uncomfortably. I’d let Claude Code rewrite hundreds of files across my blog. I’d reviewed the outcomes (Lighthouse scores, visual appearance, build success) but I had not audited every file it touched. Had not checked .git/hooks/. I’d never opened that directory in my life. Had not read every package.json script before running npm install. I’d been doing exactly the thing the documentation warns about: treating the agent’s output as reviewed code when it was unreviewed code that I was about to execute on my machine.

It would be easy to read this as “Sandboxes are broken.” That’s not what I mean. The microVM does exactly what microVMs are supposed to do: it contains the consequences of arbitrary code execution behind a hardware boundary. What it cannot do is make the workspace contents safe, because the workspace contents are how the agent does its job. The agent has to be able to write files. You have to be able to read them. Shared region is necessary, and the shared region is where the threat model gets interesting.

Mitigation isn’t more isolation. The microVM is doing its job. Mitigation is discipline: treat the workspace contents the way you’d treat a pull request from a contributor you don’t know yet. Diff .git/hooks/ after agent sessions. Read package.json scripts before running npm install. Use the --branch flag, which creates a Git worktree so the agent works in an isolated branch you can review before merging. None of this is exotic. It’s just the practice of not treating autonomous-agent output as trusted code. Because it isn’t.

I’m spending this much space on it because it’s the part most people get wrong. Hypervisor boundary makes you feel safe, but you aren’t. Not completely. Both things have to be true at once for the product to work, and the Docker team built it that way on purpose. Good security architectures document their gaps and make sure the user knows what they’re signing up for.

What it actually costs

Hypervisor isolation isn’t free, and you can’t pretend otherwise. I tested this against my own production codebase, the same Astro blog I mentioned at the top, because synthetic benchmarks for sandboxed agent workloads don’t tell you much. You want to know what it feels like to do real work.

image2

Caption: The same docker build --no-cache against the same Astro codebase. Host: 1:44.62. Sandbox microVM: 1:28.58. The isolation boundary is invisible to the workload. On this run, the sandbox actually finished faster.

I ran docker build --no-cache against the same Dockerfile and the same codebase, once on the host and once inside the sandbox. Host finished in 1:44.62. Sandbox finished in 1:28.58, actually faster, within noise across runs. The Docker Engine inside the sandbox is running on its own kernel with its own block device, completely isolated from the host, and the build doesn’t care. The microVM adds essentially zero overhead to the actual build.

One real-world caveat from running this on Apple Silicon: a Rust dependency in my Astro pipeline ships jemalloc that assumes 4K page sizes, which fails on sandbox VMs (16K pages). The build itself completed correctly. All 354 pages rendered, dist generated, but a teardown step exited non-zero. The fix was a one-line guard in the Dockerfile that checks for valid build output before exiting. Took 30 minutes to track down. Worth knowing about before you ship sandbox-aware Dockerfiles on Apple Silicon, because the symptom looks like a build failure when the build actually succeeded.

Verdict: for session-based agent work (a few hours on a project), the overhead disappears. For high-frequency sandbox creation (dozens per minute for short tasks), cold-start cost adds up. For the workload Sandboxes is designed for, which is giving an agent a real environment for a real session, the trade is sound.

Matching isolation to trust

Most discussions of containers versus VMs treat it as a binary, and that’s the wrong frame. The frame I’ve found useful, both for my own work and in conversations with engineering leaders who ask “do we really need microVMs for this?”, is a spectrum.

image3

Caption: The Trust Spectrum. Match isolation strength to the trust profile of the workload.

On one end you have code you wrote yourself. Your team reviewed it, your CI tested it, your production runs it. A standard container is the right answer. Kernel is shared, daemon is shared, and none of that matters because the workload is known.

One step removed from that are CI/CD pipelines running your team’s code plus dependencies from registries you mostly trust. Mostly known, but the inputs are more variable. You add seccomp profiles, drop capabilities, write network policies.

Further along, supervised AI agents: tools that suggest code while a developer reviews each step. Human in the loop, so hardened containers with strict policies still work.

At the far end are autonomous AI agents. Nobody reviewing each command. Agents making decisions on your behalf, each one potentially different from the last. The trust profile isn’t “I trust this code” because there’s no fixed code to trust. It’s “I’m letting something operate on my system without supervision, and I want the failure mode to be ‘contained to a disposable VM’ rather than ‘on my laptop.'” That’s the workload that needs a microVM.

This is not a declaration that containers are obsolete. It’s the opposite. Containers are the right answer for everything on the left side of that spectrum, which is most of what runs in production today. MicroVMs extend the spectrum to the right, where containers were never going to be the right tool. The four isolation layers in Sandboxes (hypervisor, network, Docker Engine, credential proxy) are additive. They wrap containers in additional protection rather than replacing them. Inside every Sandbox is a microVM that runs containers. Containers haven’t gone anywhere, they’ve moved one level deeper in the trust stack.

“MicroVMs for AI agents, containers for everything else” is too crude. “Match the isolation to the trust profile of the workload” is the one that holds up.

Why everyone is converging here

Docker isn’t the only company that arrived at this answer, and the convergence tells you something.

Firecracker powers AWS Lambda and Fly.io’s microVM platform. gVisor intercepts syscalls in a user-space kernel. Kata Containers provides VM isolation behind a container-compatible interface. Modal runs serverless agent workloads on gVisor. E2B offers Firecracker-based sandboxes as a managed cloud service. Northflank ships Kata-based isolation for production AI workloads. All adopted at the same time, for the same reasons. Architecture everywhere looks the same: containers on the inside (because that’s how developers think), VM on the outside (because that’s where the boundary needs to be).

Docker Sandboxes is the local-first version. Most alternatives are cloud services where you pay per execution and your code runs on someone else’s machines. Docker put the same architecture on the developer’s laptop. CLI supports eight agents natively (Claude Code, Codex, Copilot, Gemini CLI, Kiro, OpenCode, Docker Agent, and Droid), plus a Shell mode for custom tooling. A standalone sbx CLI runs without Docker Desktop, so the architecture isn’t locked to a commercial product. MicroVM layer has an HTTP API that the open-source community has already started building on.

That’s a runtime. And Docker is positioning it to become the standard way to run autonomous coding agents, the way docker run became the standard way to run microservices ten years ago.

One more thing. Hardened Images and sandboxes address different layers of the same problem: Hardened Images for the supply chain (where binaries come from), sandboxes for runtime isolation (what those binaries can touch). Both exist because the assumption that “code from a trusted publisher is safe” stopped being reliable.

Looking back, looking forward

I’ve watched the industry rebuild its trust model three times in twenty years.

Bare metal to virtual machines, because we needed to put multiple workloads on the same hardware safely.

Virtual machines to containers, because we needed faster startup, lower overhead, and a packaging model that matched how developers actually ship code.

Now, containers to a different kind of virtual machine, because the workload changed and the kernel namespace stopped being enough. Not because containers were wrong, but because the new tenant needs more, and more looks like a hypervisor again.

Each of these transitions felt obvious in hindsight and contested at the time. I remember the arguments about whether containers were really secure enough for multi-tenant workloads. (They mostly weren’t, which is why we ended up with namespaced clusters and per-tenant VMs and gVisor and now microVMs for agents.) I expect the microVM argument to follow the same arc: contested for about a year, obvious within three.

My Astro migration taught me what it feels like to work alongside an autonomous agent that has real access to your system. More productive than doing it by hand, and more unsettling than I expected, once I realized how much I’d stopped tracking. Sandboxes don’t make the agent trustworthy. It just makes sure that when the agent does something you didn’t expect, the damage stays inside a box you can throw away. Workspace still requires your attention. Your skepticism. That combination (strong boundaries where you can enforce them, disciplined review where you can’t) is the model for working with autonomous code, and it’s probably going to stay that way for a while.

If you’ve been holding back on running AI coding agents because of permission prompts, accidental file changes, or just a feeling that something about the whole arrangement isn’t quite safe: that feeling was correct. Containers were the wrong fit for the workload. Sandboxes is the right one. Try it on a project you actually care about. That’s the only test that matters.

Get started with Docker Sandboxes →



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Microsoft Patches SharePoint RCE Flaw CVE-2026-45659 Across Server Versions

Microsoft has rolled out updates to fix a remote code execution vulnerability impacting SharePoint that could be exploited by bad actors in attacks without requiring any specialized conditions to be met.

The vulnerability, tracked as CVE-2026-45659, carries a CVSS score of 8.8. It has been assigned an important severity.

"Deserialization of untrusted data in Microsoft Office SharePoint allows an authorized attacker to execute code over a network," Microsoft said in an advisory released last week.

Microsoft noted that the vulnerability could be triggered by any authenticated attacker, and that it does not require administrator or other elevated privileges.

"In a network-based attack, an authenticated attacker, who has a minimum of Site Member permissions (PR:L), could execute code remotely on the SharePoint Server," the Windows maker added.

Microsoft credited a researcher named MEOW for discovering and reporting the flaw. Updates have been released for the following versions -

Last month, Microsoft issued fixes for a spoofing vulnerability impacting Microsoft SharePoint Server (CVE-2026-32201, CVSS score: 6.5) that it said has been exploited in the wild.

Although the tech giant notes that CVE-2026-45659 is less likely to be exploited, it's essential that users apply the necessary fixes for optimal protection, particularly when considering the fact that several flaws in the collaborative platform have been repeatedly weaponized by attackers over the years.



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MFA Prompt Bombing: Why Your Second Factor Isn't Saving You

Multi-factor authentication (MFA) was supposed to close a critical gap in identity security. It meant that, even if an attacker possessed the account credentials, they couldn't log in without the second factor. While that logic was sound, attackers have now figured out that they don't need to steal the second factor: they just need the user to hand it over.

If your workforce authenticates with push-based MFA, this attack is a live threat to your organization today. Tools like Specops Secure Access are built specifically to close that gap, but before getting into the fix, it's worth understanding how this technique works.

How MFA prompt bombing works

The attack requires three key elements to work:

  • Valid account credentials, usually sourced from breached password dumps on the dark web
  • A login portal that uses push-based MFA (such as a VPN, Microsoft 365, Okta, or Duo)
  • A victim who is alerted every time the attacker tries the login

Attackers repeatedly trigger the prompt, attempting to trick the target or wear them down to approve the request. Sometimes, attackers will pair prompt bombing with a vishing call pretending to be from IT, where they will try to socially engineer the target. The danger is that these methods only need to work once.

If the prompt is approved, the attacker is logged in as that user. Security systems typically won't be alerted, as the login looks entirely legitimate.

The Cisco breach

The 2022 Cisco breach is a key example of how effective this technique is against even mature security programs. An attacker linked to the Yanluowang ransomware group compromised a Cisco employee's personal Google account, which was syncing browser-stored credentials, including the employee's Cisco VPN password.

From there, the attacker pushed MFA prompts to the employee's phone. That initially didn't work, so they began using vishing calls posing as trusted support organizations, speaking in various accents, and eventually convincing the employee to accept a push notification.

Once accepted, the attacker had VPN access as the employee. They then enrolled their own devices for MFA to maintain persistence, escalated to administrative privileges, reached Citrix servers and domain controllers, and exfiltrated around 2.8GB of data before being evicted. The fact that prompt bombing worked against a company like Cisco, which is far from having a weak security posture, highlights just how dangerous and effective the attack has become.

Why push MFA doesn't eliminate risk

The issue with push-based MFA is that users are asked to approve or deny a login with very little to go on. There's no clear indication of where the request originated, what device is being used, or whether the login attempt was initiated by the user at all. In isolation, that might be manageable. But when prompts start arriving repeatedly, it's easy to assume something's misfiring rather than recognizing it as a potential attack.

If that's paired with a well-timed phone call from someone posing as IT support, the situation becomes even harder to assess. At that point, the user isn't acting carelessly, but responding to a scenario designed to feel routine and legitimate, using credentials the attacker already has.

3 ways organizations can prevent prompt bombing

1. Use fatigue and phishing-resistant MFA factors

Push notifications are the weakest common form of MFA. Phishing-resistant factors such as FIDO2 security keys, hardware tokens like YubiKey, or number-matching codes from authenticator apps are harder to abuse.

Specops Secure Access supports more than 15 identity providers and includes these fatigue-resistant options for Windows logon, RDP, and VPN connections, so organizations can retire push-only MFA for high-risk access points.

Specops Secure Access

2. Block compromised passwords at the source

Prompt bombing is only made possible when the attacker already has a valid password. Scanning Active Directory (AD) continuously against a live database of breached passwords, and forcing a reset when a match appears, removes the fuel for the attack. Relying on default AD password policies won't catch reused, incremental, or breached passwords. If you don't know where you stand today, Specops Password Auditor is a free, read-only scan of your AD that flags vulnerabilities like compromised passwords or inactive admin accounts.

Specops Password Auditor

3. Add risk signals to the login

Conditional access policies that factor in geography, device posture, and login times can block or step up authentication before a prompt is ever sent to the user's phone. This reduces reliance on user behaviour alone and introduces real-time context to stop suspicious logins before they escalate into successful account compromise.

MFA still matters

MFA prompt bombing isn't a reason to move away from MFA, but it does highlight where some factors fall short. When approval requests can be triggered repeatedly with no meaningful context, the control becomes easier to influence than intended.

If push is still your default second factor, it's worth revisiting that decision. Number matching or phishing-resistant methods strengthen the MFA method itself, while scanning for compromised passwords limits the risk of attackers possessing the first authentication step. If you're looking to evolve your identity security with more robust MFA, talk to Specops.

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CERT-In Mandates 12-Hour Patching for Internet-Facing Flaws Amid AI-Assisted Attacks

The Indian Computer Emergency Response Team (CERT-In) has issued new guidelines requiring organizations to patch critical security vulnerabilities in internet-exposed systems within 12 hours of being flagged where "feasible" to safeguard against potential threats stemming from threat actors' abuse of artificial intelligence (AI) tools and large language models (LLMs) to automate vulnerability discovery and exploitation, and enhance the scale and velocity of cyber attacks.

"AI-assisted cyber exploitation reduces the time required for adversaries to identify, weaponize, and exploit vulnerabilities, exposed services, weak identities, insecure APIs, and misconfigured systems," CERT-In said in a 38-page blueprint published Monday.

"As organizations become increasingly dependent on interconnected digital infrastructure, cloud ecosystems, software supply chains, operational technologies, and AI-enabled platforms, the potential impact of AI-enabled cyber threats continues to increase across sectors."

With threat actors beginning to increasingly rely on AI for a wide range of tasks, including attack surface discovery, exploit analysis, convincing phishing content, and even malware generation, they can significantly compress attack preparation timelines and bypass traditional security controls.

Furthermore, AI-enabled systems may themselves become targets of malicious attacks via prompt injections, data leakage vulnerabilities, jailbreaking techniques, model manipulation, training data poisoning, model theft, and orchestration pipeline compromises, effectively undermining their confidentiality and integrity.

CERT-In has warned that organizations should expect exploitation timelines to collapse significantly and attacks to become autonomous, necessitating the need for adopting heightened cybersecurity measures that involve continuous threat assessment, proactive exposure reduction, and operational preparedness.

Some of the defensive principles outlined by the cybersecurity agency to reduce exposure and better respond to AI-assisted cyber threats are listed below -

  • Assume breach and prepare for rapid detection, containment, and recovery from compromise scenarios.
  • Adopt a Zero Trust approach by enforcing continuous verification and least-privilege access.
  • Implement a defense-in-depth strategy with layered controls across infrastructure to eliminate single points of failure and minimize the overall impact of a successful breach.
  • Monitor and reduce exposure to security vulnerabilities.
  • Embed a secure-by-design paradigm into systems, applications, and AI workflows.
  • Maintain operational continuity during cyber incidents and disruption scenarios.
  • Safeguard sensitive and operationally critical data throughout its lifecycle.
  • Reduce software supply chain risks arising from third-party software, AI models, and dependencies through SBOM, provenance
  • validation, and assessments.
  • Test security effectiveness against evolving threats through red teaming, vulnerability assessments, penetration testing, and independent audits.
  • Prioritize controls based on operational criticality and threat exposure.
  • Establish formal governance mechanisms regarding the use of AI systems.
  • Maintain visibility into AI systems, integrations, and operational behavior.

"Organizations should implement layered, risk-based, and continuously validated technical controls to reduce exposure to AI-assisted cyber threats," CERT-In said. "Controls should prioritise protection of internet-facing systems, critical business applications, identities, cloud environments, APIs, sensitive data, AI-enabled systems, and operational infrastructure."

The agency is also urging organizations to embrace "continuous, risk-based vulnerability and patch management practices" to reduce exposure arising from security flaws, misconfigurations, insecure APIs, publicly-accessible services, and weak identities. To that end, known exploited vulnerabilities affecting internet-facing and critical systems should be remediated within 12 hours where applicable.

Other risk-based remediation times are as follows -

  • Critical externally exposed vulnerabilities: Within 1 day
  • Known exploited vulnerabilities affecting internal systems: Within 1 day unless other mitigations are implemented and documented
  • Critical internal vulnerabilities affecting high-value systems: Within 3 days
  • High-severity vulnerabilities: Within 5 days based on risk prioritization

In scenarios where no patches are immediately available, it's advised to implement temporary mitigations such as isolation, access restriction, WAF/API protection, enhanced monitoring, or feature disablement until the fix is released.

"Given the rapidly evolving nature of AI-assisted cyber threats, organisations should continuously reassess exposure, validate security controls, strengthen resilience capabilities, and enhance operational preparedness through ongoing audits, monitoring, testing, and coordinated cybersecurity governance," CERT-In said.

The blueprint arrives a month after CERT-In released an advisory warning of the growing cyber capabilities of frontier AI models from Anthropic and OpenAI, stating how their "dual-use nature" could "lower the barrier to entry for malicious cyber actors and be leveraged to accelerate attack execution, automate exploitation workflows and scale cyber campaigns."

"Keeping pace with frontier AI-driven cyber developments is critical for maintaining cyber resilience," it added. "Baseline cybersecurity controls remain critical and should be rigorously enforced."



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Iranian Hackers Deploy MiniFast and MiniJunk V2 via Phishing and SEO Poisoning

The Iranian state-sponsored threat actor known as Nimbus Manticore (aka Screening Serpens and UNC1549) has been attributed to a fresh campaign using lures impersonating organizations in the aviation and software sectors across the U.S., Europe, and the Middle East following the joint U.S.-Israeli military campaign against the country in late February 2026.

The activity, besides embracing previously undocumented techniques and enhanced capabilities, is characterized by the use of a new backdoor codenamed MiniFast (aka MiniUpdate) that appears to have been developed with assistance using artificial intelligence (AI), Check Point said in an analysis published last week.

Affiliated with Iran's Islamic Revolutionary Guard Corps (IRGC), Nimbus Manticore is best known for targeting defense, aviation, and telecommunication sectors using career-themed phishing lures. These campaigns have also been codenamed the Iranian Dream Job, owing to tactical similarities with Operation Dream Job orchestrated by North Korean hackers.

Recent attack chains linked to the threat actor have witnessed a shift in tradecraft, as evidenced by the use of AppDomain hijacking to deliver MiniJunk in February 2026, followed by the deployment of the MiniFast backdoor in March and a reliance on SEO poisoning to distribute a trojanized version of Oracle's SQL Developer software in April.

In the first campaign observed before the onset of the war, employees in software and aviation sectors in Saudi Arabia and Australia were targeted with bogus career opportunities, tricking them into downloading a ZIP archive hosted on OnlyOffice. Launching a benign executable within the ZIP file leveraged a technique known as AppDomain hijacking to launch a rogue MiniJunk DLL.

The March 2026 campaign has been found to follow more or less the same approach, only this time the threat actor also used a trojanized Zoom installer as part of the attack sequence to launch the binary that then leverages AppDomain hijacking to deploy MiniFast. It's suspected that the activity was part of a phishing campaign using fake meeting invitations.

There are signs that Nimbus Manticore used AI-assisted development to help create MiniFast. This includes excessive error handling and defensive programming logic, repetitive function and method naming patterns with descriptive or verbose identifiers, several detailed error-reporting strings and debug-style status messages, and modular code organization despite the malware's overall simplicity.

Check Point said it also observed last month a fake website impersonating a download page for SQL Developer, duping visitors who land the page via SEO poisoning to download a weaponized installer that delivers MiniFast. The development marks the first time the threat actor has resorted to this approach for malware delivery.

"This malware delivery method differs from Nimbus Manticore's usual infection chains, which typically rely on career-themed phishing lures," the company said. "In this campaign, the actor abuses search engine optimization techniques by registering dozens of domains that link to the bogus domain, getsqldeveloper[.]com. This is likely an attempt to increase the site's visibility through link-based reputation signals."

MiniFast is described as a fully featured backdoor designed for long-term persistence and remote command execution. It communicates with a remote server over HTTP requests to fetch tasks, upload command execution results, exfiltrate files, and download additional payload from the server. Before entering the tasking loop, the malware also beacons basic system information to the operator.

The commands supported by the backdoor are varied, enabling file operations, directory listings, process enumeration, command execution via "cmd.exe," process termination using its PID, DLL loading, ZIP archive creation, persistence via scheduled tasks, and privilege escalation via the "runas" command.

The backdoor also supports the ability to update the polling interval and jitter value applied to beacon intervals so as to randomize the frequency with which commands are retrieved from the server.

"What stands out is that this group's ambitions extended well beyond targeted espionage in the Middle East," Sergey Shykevich, threat intelligence group manager at Check Point Research, said in a statement shared with The Hacker News. "We found strong indicators that Nimbus Manticore used AI tools to write malware faster."

"They built and deployed a brand-new backdoor mid-conflict while operations were actively underway. We also tracked a third campaign wave using a completely different playbook: SEO poisoning."

"They built a fake SQL Developer download page and pushed it to the top of Bing and DuckDuckGo - no spearphishing, no fake job offer, just waiting for a developer to search for common software. And when you map all three waves together, February through April, there was no pause. The conflict didn't slow them down; it actually accelerated them."

The disclosure coincides with a report from Palo Alto Networks Unit 42 about the threat actor's targeting of entities in the U.S., Israel, the United Arab Emirates, and the Middle East with MiniUpdate and an updated version of MiniJunk called MiniJunk V2. Among those targeted as part of the elaborate espionage scheme was a U.S. oil and gas firm.

The findings show that Iranian threat actors are taking a page out of North Korea's playbook to infiltrate organizations of interest by going after their employees with lucrative job opportunities.

"The group has increased its operations since the regional conflict that started in February 2026, deploying two families of RAT variants across entities in up to five different countries," Unit 42 researchers said.

"A defining characteristic of these recent campaigns is the deep personalization of the attackers' lures. By leveraging tailored social engineering tactics, including fake job requisitions and spoofed video conferencing meeting invitations, the attackers lure victims into initiating the infection chain, thereby exposing their organizations to further exploitation."

The development also comes as Iranian hackers are suspected to have conducted a series of attacks aimed at tank readers at gas stations across multiple states in the U.S. While the incidents did not cause physical damage or harm, they have sparked concerns that such access could potentially cause gas leaks to go undetected or create other risks to critical infrastructure.

"The hackers responsible have exploited automatic tank gauge (ATG) systems that were sitting online and unprotected by passwords, allowing them in some cases to tinker with display readings on the tanks but not the actual levels of fuel in them," CNN reported, citing unnamed sources.



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KnowledgeDeliver LMS Flaw Exploited to Deploy Godzilla and Cobalt Strike

A now-patched high-severity security flaw affecting Digital Knowledge KnowledgeDeliver, a Learning Management System (LMS) popular in Japan, was exploited as a zero-day to deliver the Godzilla web shell and ultimately facilitate the deployment of Cobalt Strike Beacon.

The vulnerability, tracked as CVE-2026-5426 (CVSS score: 7.5), stems from the use of hard-coded ASP.NET machine keys, leading to unauthenticated remote code execution via a ViewState deserialization attack. The abuse of publicly disclosed ASP.NET machine keys by threat actors was first documented by Microsoft in February 2025.

"An unknown threat actor leveraged this access to inject malicious code into the LMS platform, with the goal of infecting users visiting the site," Google Mandiant and Google Threat Intelligence Group (GTIG) said.

The security flaw impacted Digital Knowledge KnowledgeDeliver deployments prior to February 24, 2026. It's worth noting that similar vulnerabilities in Sitecore Experience Manager (XM) and Gladinet CentreStack and TrioFox have also been exploited by threat actors.

The problem is rooted in the fact that KnowledgeDeliver installations relied on a standardized web.config file provided by the vendor that contained hard-coded machineKey values used by the ASP.NET framework to encrypt and sign data, including ViewState payloads.

As a result, a threat actor who manages to obtain the keys from one deployment could leverage them to compromise other internet-facing KnowledgeDeliver instances.

"The ASP.NET ViewState persists page state across postbacks," Google said. "When the machineKey is known, a threat actor can craft a malicious ViewState payload. By sending this payload in an HTTP request (via the __VIEWSTATE parameter), the threat actor can make the server deserialize it."

In the activity observed in connection with CVE-2026-5426, attackers have been found to deploy the Godzilla (aka BLUEBEAM) web shell, granting them the ability to run commands or drop additional payloads.

Among the commands executed were instructions to escalate their control over the web server's file system by granting "Everyone" complete access to the web application directory. Subsequently, the threat actor tampered with an application JavaScript file to include code that displayed a fake security alert, urging users to install a "security authentication plugin."

In tandem, the unauthorized modifications made it possible to stealthily load a malicious script hosted on an attacker-controlled domain. The script, in turn, convinced users to download a fake installer, ultimately infecting the machines with Cobalt Strike Beacon.

"The payload was encrypted using a key that used the name of the compromised organization, which indicated that the threat actor prepared this payload specifically for the targeted organization," Google said.

"The exploitation of KnowledgeDeliver highlights the severe risks of using shared secrets in deployment templates. A single leaked key can compromise an entire ecosystem of installations. By implementing unique secrets and robust endpoint monitoring, organizations can defend against these deserialization attacks."



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Monday, May 25, 2026

⚡ Weekly Recap: Linux Flaws, Defender 0-Days, Router Botnets, and Supply Chain Chaos

Monday recap. Same mess, new week.

A sketchy dev tool got people pwned, old bugs came back from the dead, and security products somehow needed protecting from themselves. A bunch of companies spent the week checking old boxes and forgotten servers they should've patched years ago. Good times.

Phishing crews are getting smarter too - less obvious scam junk, more targeted stuff that actually looks real. Meanwhile, botnets are grabbing anything exposed to the internet like it's free candy. The Internet's still a dumpster fire.

Let’s get into it.

⚡ Threat of the Week

GitHub Breached via Nx Console VS Code Extension—GitHub officially confirmed that the breach of its internal repositories was the result of a compromise of an employee device involving a poisoned version of the Nx Console Microsoft Visual Studio Code (VS Code) extension. The attack is said to have allowed the threat actor, a cybercriminal group known as TeamPCP, to exfiltrate about 3,800 repositories. GitHub said it has taken steps to contain the incident and rotated critical secrets, adding it's continuing to monitor the situation for follow-on activity. The Nx team revealed that the extension, nrwl.angular-console, was breached after one of its developers' systems was hacked in the wake of the recent TanStack supply chain attack. Other companies that were impacted by the TanStack compromise include OpenAI, Mistral AI, and Grafana Labs. Grafana Labs was also the target of an extortion attempt, but the company said it refused to pay the hackers who had threatened to release the company's codebase. The incidents are just some examples of the long tail of downstream victims emerging from the Mini Shai-Hulud campaign. This, coupled with TeamPCP's public release of the Shai-Hulud code, marks a significant evolution in software supply chain threats, as it gives attackers a ready-made blueprint for fleshing out similar worms targeting open-source repositories and developer environments.

🔔 Top News

  • Microsoft Took Down Fox Tempest—Microsoft has cracked down on Fox Tempest, a cyber threat actor that fueled Rhysida ransomware attacks and other infections involving Oyster, Lumma Stealer, and Vidar. The group operates upstream in the malware and ransomware supply chain, acting as an enabler and providing tools for other threat actors to carry out attacks. This included a fraudulent code-signing service that let cybercriminals deploy malware "through the front door" without being detected. While bad actors have been known to resell code-signing certificates for at least a decade, Fox Tempest's operation stood out because it provided a scalable service for extortion, phishing, SEO poisoning, or malware-laced advertising.
  • 9-Year-Old Linux Kernel Flaw Enables Root Command Execution—A new vulnerability disclosed in the Linux kernel remained undetected for nine years. The vulnerability, tracked as CVE-2026-46333 (CVSS score: 5.5), is a case of improper privilege management that could permit an unprivileged local user to disclose sensitive files and execute arbitrary commands as root on default installations of several major distributions like Debian, Fedora, and Ubuntu. The issue was introduced in November 2016.
  • Microsoft Warned of Two Actively Exploited Defender Vulnerabilities—Microsoft has disclosed that a privilege escalation and a denial-of-service flaw in Defender have come under active exploitation in the wild. While CVE-2026-41091 could allow an attacker to gain SYSTEM privileges, CVE-2026-45498 relates to a case of denial-of-service. Although Microsoft has not formally confirmed, the vulnerability descriptions for CVE-2026-41091 and CVE-2026-45498 overlap with those of RedSun and UnDefend, two Defender zero-days that were disclosed by Chaotic Eclipse (aka Nightmare-Eclipse) last month.
  • Newly Disclosed Drupal Core Flaw Under Attack—A critical security flaw impacting Drupal Core has come under active exploitation within days of public disclosure. The vulnerability in question is CVE-2026-9082 (CVSS score: 6.5), an SQL injection vulnerability affecting all supported versions of Drupal Core. Drupal acknowledged that "exploit attempts are now being detected in the wild." Thales-owned Imperva said it has observed over 15,000 attack attempts targeting almost 6,000 individual sites across 65 countries.
  • Claude Mythos AI Finds 10K High-Severity Flaws in Popular Software—Anthropic revealed that Project Glasswing has helped uncover more than 10,000 high- or critical-severity vulnerabilities across some of the most "systemically" important software across the world since the cybersecurity initiative went live last month. Of these vulnerabilities, 6,202 have been classified as high- or critical-severity flaws impacting more than 1,000 open-source projects. Subsequent analysis of these vulnerability candidates has identified that 1,726 are valid true positives. As many as 1,094 flaws are assessed to be either high- or critical-severity. In total, these efforts have led to 97 findings being patched upstream and 88 advisories being issued.
  • Cisco Patched CVSS 10.0 Secure Workload Flaw—Cisco rolled out updates for a maximum-severity security flaw impacting Secure Workload that could allow an unauthenticated, remote attacker to access sensitive data. Tracked as CVE-2026-20223 (CVSS score: 10.0), the vulnerability arises from insufficient validation and authentication when accessing REST API endpoints. "An attacker could exploit this vulnerability if they are able to send a crafted API request to an affected endpoint," Cisco said. "A successful exploit could allow the attacker to read sensitive information and make configuration changes across tenant boundaries with the privileges of the Site Admin user."
  • Microsoft Released Mitigations for YellowKey—Microsoft released a mitigation for a BitLocker bypass vulnerability named YellowKey following its public disclosure last week. The zero-day flaw, now tracked as CVE-2026-45585, carries a CVSS score of 6.8. It has been described as a BitLocker security feature bypass. The issue impacts Windows 11 version 26H1 for x64-based Systems, Windows 11 Version 24H2 for x64-based Systems, Windows 11 Version 25H2 for x64-based Systems, Windows Server 2025, and Windows Server 2025 (Server Core installation). Microsoft noted that successful exploitation could permit an attacker with physical access to sidestep the BitLocker Device Encryption feature on the system storage device and gain access to encrypted data.

🔥 Trending CVEs

Bugs drop weekly, and the gap between a patch and an exploit is shrinking fast. These are the heavy hitters for the week: high-severity, widely used, or already being poked at in the wild.

Check the list, patch what you have, and hit the ones marked urgent first — CVE-2026-48172 (LiteSpeed User-End cPanel Plugin), CVE-2026-34926 (Trend Micro Apex One), CVE-2026-20223 (Cisco Secure Workload), CVE-2026-41091, CVE-2026-45498, CVE-2026-45584 (Microsoft Defender), CVE-2026-46333 (Linux Kernel), CVE-2026-9082 (Drupal Core), CVE-2026-45585 (Microsoft Windows BitLocker), CVE-2026-2743 (SEPPMail), CVE-2026-7301, CVE-2026-7302, CVE-2026-7304 (SGLang), CVE-2026-29205 (cPanel), CVE-2026-8178 (Amazon Redshift JDBC driver), CVE-2026-8053 (MongoDB), CVE-2026-45829 aka ChromaToast (ChromaDB), CVE-2026-8153 (Universal Robots PolyScope 5), CVE-2026-3102 (ExifTool), CVE-2026-9110, CVE-2026-9111, from CVE-2026-8511 through CVE-2026-8522 (Google Chrome), CVE-2026-45434 (Apache OFBiz), CVE-2026-33000, CVE-2026-34908, CVE-2026-34909, CVE-2026-34910, CVE-2026-34911 (UniFi OS), CVE-2026-45401 (Open WebUI), CVE-2026-9256, CVE‑2026‑8711 (F5 NGINX Plus and NGINX Open Source), CVE-2026-20239 (Splunk Enterprise and Splunk Cloud Platform), CVE-2026-46376 (FreePBX), CVE‑2026‑6637 (PostgreSQL), and CVE-2026-35194 (Apache Flink).

🎥 Cybersecurity Webinars

  • Learn How Attackers Use AI to Supercharge DDoS Efficiency (and How to Stop It) → Adversaries are weaponizing AI to exploit network blind spots, auto-generate evasion scripts, and bypass traditional defenses with surgical precision. This webinar bridges the gap between AI-driven exploitation and cloud resilience, offering data-driven insights into how attackers maximize DDoS success rates. Join us to move beyond theory, leverage AI for non-disruptive security testing (CTEM), and transition your team from reactive mitigation to automated, continuous resilience.
  • Beyond the Zero-Day: Hunting for Threats That Don't Need an Exploit → Zero-day exploits are no longer the ultimate metric of cyber risk. Today, sophisticated adversaries bypass traditional defenses entirely by leveraging identity flaws, living-off-the-land techniques, and AI automation that don't rely on unpatched software. This session moves beyond the zero-day obsession to expose how attackers operationalize modern post-compromise tactics—and how security teams can pivot from reactive patching to proactive, behavioral threat hunting.

📰 Around the Cyber World

  • Vulnerability Exploitation Overtakes Compromised Credentials in a Long Time —Vulnerability exploitation has overtaken compromised credentials for the first time in nearly two decades as the most common initial access vector for data breaches, per Verizon. Nearly a third (31%) of data breaches over the past year started with vulnerability exploitation, up from 20% in 2024. Credential abuse declined from 22% to 13%. What's more, only 26% of critical vulnerabilities listed in the U.S. Cybersecurity Infrastructure and Security Agency Known Exploited Vulnerabilities (KEV) catalog were fully remediated by organizations in 2025, a drop from 38% the previous year. "The median time for full resolution went up to 43 days, almost two weeks more than the previous year’s 32 days," the report said. "In the median case, organizations had 50% more critical vulnerabilities to patch in this year’s reporting dataset compared to the previous year." Ransomware accounted for 48% of all breaches last year, up from 44% in 2024. But in a positive development, ransom payments have continued to decline, with the median payment sliding from $150,000 in 2024 to almost $140,000.
  • Attackers Go After India's Education Ecosystem —Threat actors are abusing student data within India's education ecosystem, spanning educational institutions, third-party vendors, and online services, for phishing, impersonation, social engineering, and financially motivated fraud operations. "Attackers commonly leverage exposed or misused student information to create highly convincing scams related to admissions, scholarships, internships, fee payments, and academic services," CYFIRMA said. "In several instances, threat actors exploited trusted educational branding, fraudulent portals, and insider access to obtain credentials, financial information, or direct payments. Additionally, some cases indicated the misuse of student-linked bank accounts within broader fraud and mule account operations."
  • RondoDox Adds ASUS Router Flaw to its Arsenal —The operators of the RondoDox botnet have incorporated CVE-2018-5999 (CVSS score: 9.8), a critical ASUS router flaw, to their arsenal, marking the first observation of in-the-wild exploitation of the vulnerability. The activity was first detected on May 17, 2026, against its honeypots. "The attack pattern: payloads that set the ateCommand_flag to 1, enabling the infosvr interface to accept arbitrary configuration changes," VulnCheck CTO Jacob Baines said in a post on LinkedIn.
  • Fake Microsoft Teams Sites Deliver ValleyRAT —Fake Microsoft Teams distribution sites shared on X are being used to trick unsuspecting users into downloading a trojanized installer packaged as a ZIP archive, ultimately leading to the deployment of ValleyRAT, a malware associated with a Chinese cybercrime group called Silver Fox. "The delivered payload leverages a DLL sideloading chain via a legitimate executable (GameBox.exe) developed by Tencent, ultimately deploying a ValleyRAT variant," K7 Labs said. "This malware campaign stands out for its clean execution chain, combining social engineering with staged payload delivery, in-memory decryption, and stealthy persistence mechanisms."
  • Malicious Activity Targeting Malaysian Entities —An attacker-controlled infrastructure hosted on Microsoft Azure infrastructure in the Malaysia West region has been used to conduct a targeted intrusion campaign against multiple Malaysian organizations, per Oasis Security. "The operation demonstrates a high degree of operational planning, with the attacker developing purpose-built Python tooling for each target — covering internal network enumeration, database access, and external data exfiltration," the company said. The infrastructure hosts target-specific Python scripts, webshell deployment tools, a Laravel remote code execution exploit chain, and source code for custom command-and-control (C2) components.
  • Texas Attorney General Sues Meta Over WhatsApp Encryption Claims —The Texas Attorney General has sued Meta over allegations that the company's WhatsApp messenger doesn't provide the end-to-end encryption (E2EE) it has long claimed. "Reports suggest that employees of WhatsApp have been able to access user communications," the Office of the Texas Attorney General said. "Additional reporting and investigations indicate that message content can be pulled and viewed after the message has been sent. This is a complete and total misrepresentation of Meta’s privacy policies." The lawsuit hinges on a report from Bloomberg from last month about how the U.S. Commerce Department's Bureau of Industry and Security had abruptly closed an investigation into allegations that Meta could access encrypted WhatsApp messages. Preliminary findings from the department claimed that "there is no limit to the type of WhatsApp message that can be viewed by Meta." Meta has called the allegations "baseless."
  • FIOD Arrests Two in Connection with Stark Industries —The Netherlands Fiscal Intelligence and Investigation Service (FIOD) arrested two men and seized 800 servers in connection with a web hosting company that enabled cyber attacks, interference operations, and disinformation campaigns. The arrested individuals included a 57-year-old man from Amsterdam and a 39-year-old man from The Hague. Although the name of the company was not explicitly mentioned, it is assessed to be Stark Industries, which was sanctioned by the E.U. in May 2025. Following the sanctions, a significant chunk of the technical infrastructure was transferred to a Dutch-based entity known as THE.Hostingaka WorkTitans. "This new company actually acts as a cover for the sanctioned entities," FIOD said. "The director and (indirect) sole shareholder of this company is the 57-year-old suspect." A second unnamed Dutch company is said to have played a facilitating role. "This company, of which the 39-year-old is a suspected director and sole shareholder, ensures that the servers of the former new company are connected to the internet," FIOD added.
  • UNG0002 Targets Chinese Educational Sector —The Chinese educational sector has become the target of a new campaign conducted by UNG0002 as part of a spear-phishing campaign codenamed Operation Dragon Whistle. "What makes this campaign particularly effective is the precision of its social engineering," Seqrite Labs said. "The threat actor did not use a generic lure — they specifically identified that Changzhou University conducts mandatory annual fitness assessments where failure directly impacts graduation eligibility. This creates an environment of urgency and compliance that significantly increases the probability of victim engagement." The emails have been found to distribute ZIP archives that ultimately lead to the deployment of Cobalt Strike Beacon.
  • Void Botnet Uses Ethereum Smart Contracts for C2 —A new botnet malware called Void Botnet uses Ethereum smart contracts for seizure-resistant command-and-control (C2). It's a Rust-based malware that's advertised on cybercrime forums by a developer operating under the handle TheVoidStl. "Based on the seller's documentation and panel screenshots, Void Botnet is a Rust-native loader with two command-and-control modes in the same binary," Qrator Labs said. "The first mode routes commands through Ethereum smart contracts: the operator writes instructions to a contract, and infected machines check it at regular intervals, picking up new tasks within three to five minutes. The second mode connects machines directly to the operator's web panel, with tasks completing in under thirty seconds. The operator switches between them at any time by updating the contract." The botnet works by writing commands to smart contracts, bots polling public RPC endpoints, and C2 infrastructure that is hard to take down.
  • Proton Debuts AI Access Tokens in Proton Pass —Proton Pass, a secure, end-to-end encrypted (E2EE) password manager, has added credential sharing through AI access tokens, allowing users to give AI agents access to items it's permissioned to and monitor their activity. "AI access tokens are our newest secure sharing option to bring password management into the age of agentic AI," Proton said. "Every time an AI agent uses an access token, this is logged, and a reason for the access must be provided. For extra security, you can also set an expiration for each token, from one hour to one year, after which it can no longer be used."
  • DevilNFC and NFCMultiPay Android NFC Relay Malware Spotted —Two new Android NFC relay malware families named DevilNFC and NFCMultiPay have been observed targeting European and LATAM banking customers. "These two NFC relay toolkits are being developed and operated outside the Chinese-speaking MaaS ecosystem: DevilNFC carries an exclusively Spanish-speaking attribution, while NFCMultiPay's developer fingerprint is Portuguese (Brazilian)," Cleafy said. "Local groups are no longer buying access to Chinese platforms; they are building their own." It's assessed that the malware families may have been developed with assistance using generative artificial intelligence (AI). Both malware families are designed to collect the victim's card PIN. "DevilNFC further locks the victim inside the malicious interface via Kiosk Mode, preventing any escape while the relay completes," the Italian company said. "DevilNFC employs an asymmetric architecture in which a single APK serves both roles in a relay attack: a passive reader on the victim's device and a system-level card emulator on the attacker's rooted device, achieved via a hooking framework that intercepts NFC traffic below the Android API layer." DevilNFC overlaps with an NGate variant documented by ESET last month. The malicious apps are distributed via SMS or WhatsApp messages, directing victims to fake landing pages impersonating Google Play Store listings. 
  • TAX#TRIDENT Uses Indian Income Tax Lures —A new campaign dubbed TAX#TRIDENT is using Indian Income Tax-themed lures to target Windows endpoints via three delivery paths. The campaign starts with fake tax assessment lures and then moves victims toward ZIP files, VBScript downloaders, or PHP-looking web endpoints that actually return script content," Securonix said. "The first branch uses a ZIP file and a signed ClientSetup installer. Once executed, the installer creates a hidden client tree, adds service and driver persistence, and starts network communication. The second branch uses 'Assessment_Order.vbs.' The script shows a tax assessment decoy image, downloads the same ClientSetup payload, writes a new 'YTSysConfig.ini,' and runs the payload hidden. The third branch uses a PHP-looking endpoint that returns VBScript. That script downloads more stages from S3, disguises a VBS file as a PNG image, changes UAC prompt behavior, and silently installs a signed ManageEngine UEMS / Endpoint Central agent." 
  • CISA Launches KEV Nomination Form to Report Exploited Bugs —The U.S. Cybersecurity and Infrastructure Security Agency (CISA) has introduced an online Nomination Form that lets researchers, vendors, and industry partners submit known exploited vulnerabilities (KEVs) directly so as to "quickly identify, validate, and share KEVs, critical threat information."
  • Exploitation of Four-Faith Router Flaw —Attackers are exploiting CVE-2024-9643 (CVSS score: 9.8), a critical authentication bypass flaw in Four-Faith F3x36 industrial cellular routers, as part of a large-scale campaign since mid-May 2026 to turn fold compromised devices into botnets for further campaigns. CrowdSec said it has observed 139 attacking IP addresses through May 18, 2026. "Exploitation was first observed on April 20 and escalated to the point of being reclassified as mass exploitation on May 12, a strong signal that attackers are operationalizing this flaw at scale," it added.
  • Chinese-Language PhaaS Ecosystem Detailed —An analysis of a dozen current phishing-as-a-service (PhaaS) offerings in the Chinese underground has found that they have shifted away from static password harvesting towards real-time interception and tokenization via live administration panels, allowing attackers to capture one-time passcodes (OTPs) and bypass multifactor authentication (MFA) instantly. The services, such as YY Lai Yu, primarily target non-Chinese entities, with advertisements regularly posted to Telegram rather than channels such as WeChat (Weixin) or Tencent QQ. A crucial aspect of these operations is their exploitation of digital wallet provisioning to monetize stolen payment details. Attackers have been found to leverage captured credentials and OTPs to provision the victim's card into a digital wallet on an attacker-controlled device. Once tokenized, the card can be used for high-value transactions, contactless payments, and ATM withdrawals. "Instead of simply gaining account access, these operations focus on exploiting digital wallet provisioning to transform stolen payment data into tokenized assets within ecosystems," Google said. "This shift—combined with the use of encrypted delivery channels like RCS and iMessage to bypass traditional carrier security filters on SMS messages—represents an emerging development where the goal is no longer just a login, but securing direct, unauthorized control over a victim's financial accounts."
  • Bumblebee → It is an open-source security tool for macOS and Linux designed to find software supply-chain vulnerabilities on developer computers. It acts as a lightweight, read-only scanner that audits metadata files, manifests, and configurations rather than executing code. This allows it to safely check local language packages, web browser extensions, text editor add-ons, and AI tool configurations for known security exposures without running potentially malicious install scripts.
  • Claude-BugHunter → It is an open-source add-on that configures Anthropic’s Claude Code command-line tool into a specialized security assistant. It equips the AI with pre-built vulnerability patterns, attack techniques, and reporting templates, automating the process of finding and documenting security flaws during authorized testing.

Disclaimer: This is strictly for research and learning. It hasn't been through a formal security audit, so don't just blindly drop it into production. Read the code, break it in a sandbox first, and make sure whatever you’re doing stays on the right side of the law.

Conclusion

Patch the easy stuff before it becomes a bigger problem next week. The old bugs everyone ignored? Attackers didn’t ignore them. They never do.

Right now, the internet feels held together with tape and luck. Every week, there’s a new mess, a new scam, or some old box getting dragged into a botnet. See you next Monday.



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The Alert Firehose Finally Meets Its Match

Ask a cybersecurity pro about Network Detection and Response (NDR) and you might still hear "Noisy," "Too much data." But ask the teams running NDR that includes agentic AI capabilities and you'll hear they're actually using it to catch threats earlier, triage faster, and chase fewer false positives. The old complaint lingers in part because reputations are sticky, and because NDR has evolved faster than the narrative.

The origins of noise

NDR deployments have always given analysts deep visibility into network traffic, encrypted session behavior, and protocol anomalies. But visibility often came as raw material, not finished intelligence.

Some systems required extensive manual tuning during deployment to prevent SIEM overload. Organizations that couldn't invest that time (or didn't know how important it was) helped cement NDR's "alert firehose" or "noisy" reputation.

NDR with agentic AI turns noise into narrative

Agentic AI autonomously fetches data, triages alerts, and performs correlation and initial analysis, handling the time-consuming, repetitive work that used to bury analysts. Here's the unexpected twist: the data volume that once could overwhelm teams if the NDR wasn't appropriately tuned, has become a strategic asset. Because AI can ingest and simultaneously analyze thousands of data points, "noise" can become rich ground for finding actionable signals such as connections between low-severity, informational, or otherwise low profile activity most SOC teams would never have the capacity to piece together. The system can surface detections that might otherwise have been missed.

With AI processing data volume and tedious tasks, analysts are freed up to focus on the top threats. NDR with agentic AI pieces together a complete, correlated story from network data and surfaces a prioritized set of detections such as an anomalous connection tied to a failed login, a suspicious DNS query, or unusual file access. Each detection is delivered with the network evidence analysts need for immediate context.

NDR should still be tuned to ignore true "meaningless" noise, but agentic AI's correlation capabilities also reduce the need for the manual tuning that some NDR deployments sometimes struggled with in the past by identifying and automating detection improvements.

Comparing NDR without and with agentic AI

Let's start without agentic AI. In a typical 24-hour window, imagine your NDR system detects 847 network anomalies, and ML models flag 312 as potentially malicious. Now the analysts step in to manually triage and investigate these, likely dismissing a large number as false positives. Four detections eventually emerge that require action.

Now picture the same window and the same number of anomalies, but with agentic AI handling triage. It correlates alerts, reasons through the evidence, and draws conclusions. It then presents the analysts with four prioritized detections to review, each with relevant evidence and suggested response actions attached. For example, it might determine that a DNS anomaly correlates with a new process on an endpoint, flag a compromised identity, and match TTP patterns to Cobalt Strike beacons. Advanced NDR even lets analysts look under the hood to see how the AI reached its conclusions, for full transparency. The analysts simply pick up the prioritized detections and begin their review.

Operational deployment

Agentic AI still doesn't fully eliminate the need for proper deployment. Three key areas contribute to NDR becoming a trusted partner instead of a noisy neighbor: baselining, staying tuned, and SOC integration.

Baselining

NDR has detection engines that can generate alerts immediately out of the box, but some methods such as anomaly detection require the platform to run for a period of time to baseline the network's normal behavior. During this period it observes typical traffic flows, known server and endpoint activities, and expected devices. Most NDR platforms already automate this process, which helps the system distinguish routine operations from true threats and identify malicious traffic. Tuning builds on that baseline. When false positives fire, analysts can classify and eliminate them from the alert queue, helping retrain the detections and further reducing noise.

Staying tuned

Networks change. New applications, cloud workloads, unknown devices, and AI-driven data flows can shift the baseline, and an outdated baseline can lead to more false positives. Regular tuning keeps NDR calibrated while AI can help spot emerging patterns before they turn into noise.

SOC integration

NDR data can fuel other systems in an AI-powered SOC, and better fuel can deliver cleaner results. This matters for the noise problem: when AI has high-fidelity data to work with, it can more accurately distinguish true threats from false positives.

In one example, a recent report demonstrated just how much data quality matters, with one type of data improving CTF test scores by over 350%. In this report, the same data increased accuracy (95% vs. 26%) and delivered nearly 300% more IR findings compared to common log formats. Across test runs conducted during the study, frontier AI models performed at comparable levels, meaning data quality, not model choice, had the greater impact on security outcomes.

This same data can enrich other AI SOC tools, SIEMs powered with AI (e.g., CrowdStrike's Charlotte), and connections to local models via MCP. Organizations getting the most from their systems use APIs and detection feeds strategically, letting the NDR AI handle correlation before alerts reach other platforms, further reducing noise before it ever hits the analyst queue.

The bottom line

Myths often persist because they're easy to repeat. The "NDR is noisy" story is quickly being replaced by AI designed to correlate at scale that:

  • Handles the volume
  • Creates context
  • Finds signals otherwise lost in the noise
  • Reduces manual tuning dependency
  • Shifts analyst focus to high-severity threats

Proper deployment handles the rest. What emerges is NDR that delivers better visibility and faster response, and fuels the SOC to finally keep pace with the network.

Corelight Network Detection & Response

Trusted to defend the world's most sensitive networks, Corelight's Network Detection & Response (NDR) platform combines deep visibility with agentic AI, and advanced behavioral and anomaly detections to help your SOC uncover new, fast-moving threats. Learn more about Corelight.

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Lazarus Deploys RemotePE Memory-Only RAT Against Financial and Crypto Firms

Cybersecurity researchers have shed light on a cross-platform malware called RemotePE that has been put to use by the North Korea-linked Lazarus Group in attacks targeting financial and cryptocurrency organizations.

RemotePE, per NCC Group subsidiary Fox-IT, is part of a multi-stage attack chain that involves two loaders tracked as DPAPILoader and RemotePELoader.

"DPAPILoader decrypts and loads RemotePELoader from disk using the Windows Data Protection API (DPAPI)," security researchers Yun Zheng Hu and Mick Koomen said. "RemotePELoader beacons to a C2 server and waits until it receives the next stage: RemotePE, a RAT executed entirely in memory and never written to disk, leaving no filesystem artifacts."

RemotePE was first highlighted by the security vendor in September 2025 in connection with an attack targeting an unnamed organization in the decentralized finance (DeFi) sector, leading to the deployment of three malware families, including PondRAT, ThemeForestRAT, and RemotePE.

The intrusion commenced with the compromise of an employee's device through social engineering, after having approached the victim on Telegram under the guise of an existing employee of a trading company and scheduling a meeting on fake Calendly and Picktime domains.

The RemotePE infection sequence goes through three stages, with the DPAPILoader DLL ("Iassvc.dll") responsible for decrypting and loading an encrypted payload from disk using DPAPI. The earliest DPAPILoader artifact dates back to November 2023.

The decrypted payload is another loader, RemotePELoader, which is designed to contact a remote server ("aes-secure[.]net") over HTTP, fetch the core module, and execute it in memory, but not before taking steps to evade detection using techniques like Hell's Gate and patching Event Tracing for Windows (ETW).

The final stage is a full-fledged remote access trojan named RemotePE that's written in C++ and polls a command-and-control (C2) server for further instructions. The malware supports six categories of commands, allowing it to -

  • Obtain or modify the C2 configuration
  • Get or change the current working directory, register a new DLL module, get loaded DLLs, and unload a DLL
  • Perform file operations
  • Get a list of running processes, create a new process, or kill process by ID
  • Sleep for a predetermined interval or exit RemotePE
  • Ping the server

A notable aspect of the file deletion command is that it overwrites each file with constant bytes seven times before renaming and deleting it, a pattern also observed in PondRAT and POOLRAT (aka SIMPLESEA). PondRAT is assessed to be a lightweight version of POOLRAT.

Fox-IT said it obtained four RemotePE samples that indicate the RAT was under active development between mid-2023 and mid-2024. The first version has a timestamp of July 4, 2023.

"The toolset's environmental keying, memory-only execution, EDR evasion, and low forensic footprint suggest it is purpose-built for long-term observation campaigns," the researchers said. "This allows the actor to quietly maintain access over an extended period before moving to a high-impact final objective such as data theft or a large-scale financial heist, consistent with this actor's known history."

"The actor-in-the-loop delivery model and the toolset's low detection rate (neither RemotePELoader nor RemotePE appeared on VirusTotal prior to this publication) suggest this toolset may be reserved for high-value targets where long-term, stealthy access is the objective, consistent with this Lazarus subgroup's known focus on financial and cryptocurrency organizations."



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