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

V2EX - 技术
V2EX - 技术
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
T
Threat Research - Cisco Blogs
T
The Exploit Database - CXSecurity.com
S
Schneier on Security
S
Securelist
P
Privacy & Cybersecurity Law Blog
Scott Helme
Scott Helme
T
Threatpost
C
Cybersecurity and Infrastructure Security Agency CISA
L
LINUX DO - 热门话题
Cyberwarzone
Cyberwarzone
Cisco Talos Blog
Cisco Talos Blog
量子位
博客园 - Franky
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
Latest news
Latest news
T
Troy Hunt's Blog
N
News | PayPal Newsroom
Google Online Security Blog
Google Online Security Blog
Apple Machine Learning Research
Apple Machine Learning Research
N
Netflix TechBlog - Medium
小众软件
小众软件
P
Palo Alto Networks Blog
Spread Privacy
Spread Privacy
C
Cyber Attacks, Cyber Crime and Cyber Security
C
Check Point Blog
aimingoo的专栏
aimingoo的专栏
WordPress大学
WordPress大学
L
Lohrmann on Cybersecurity
L
LINUX DO - 最新话题
D
Darknet – Hacking Tools, Hacker News & Cyber Security
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
The Last Watchdog
The Last Watchdog
S
Security @ Cisco Blogs
P
Privacy International News Feed
Last Week in AI
Last Week in AI
Microsoft Security Blog
Microsoft Security Blog
T
Tailwind CSS Blog
博客园_首页
云风的 BLOG
云风的 BLOG
V
Vulnerabilities – Threatpost
D
DataBreaches.Net
Recent Announcements
Recent Announcements
酷 壳 – CoolShell
酷 壳 – CoolShell
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
罗磊的独立博客
Engineering at Meta
Engineering at Meta
Forbes - Security
Forbes - Security
T
Tenable Blog

Help Net Security

Your work apps are quietly handing 19 data points to someone ChatGPT advanced account security adds passkeys and hardware keys Week in review: High-severity LPE vulnerability in the Linux kernel, cPanel 0-day exploited for months Automating Pentest Delivery: A Step-by-Step Guide - PlexTrac Open-source privacy proxy masks PII before prompts reach external AI services Shadow AI risks deepen as 31% of users get no employer training Identity is the control plane for distributed infrastructure AI traffic is getting bigger, louder, and less predictable New infosec products of the month: April 2026 cPanel zero-day exploited for months before patch release (CVE-2026-41940) Cisco releases open-source toolkit for verifying AI model lineage Met Police face criticism for using AI to spy on their own officers Nine-year-old Linux kernel flaw enables reliable local privilege escalation (CVE-2026-31431) Hacker with a special interest in breaching sports institutions ends behind bars - Help Net Security IP Fabric MCP server adds governance and control to enterprise AIOps workflows - Help Net Security Aqua Compass MCP server enables real-time investigation and containment of runtime threats - Help Net Security Google brings instant email verification to Android, no OTP needed - Help Net Security If cyber espionage via HDMI worries you, NCSC built a device to stop it - Help Net Security Apple fixes iPhone bug that let FBI retrieve deleted Signal messages(CVE-2026-28950) - Help Net Security GopherWhisper APT group hides command and control traffic in Slack and Discord - Help Net Security OpenAI tackles a bad habit people have when interacting with AI - Help Net Security A year in, Zoom's CISO reflects on balancing security and business - Help Net Security Scenario: Open-source framework for automated AI app red-teaming - Help Net Security GDPR works, but only where someone enforces it - Help Net Security Ransomware, fraud, and lawsuits drive cyber insurance claims to new peaks - Help Net Security Google’s Workspace Intelligence promises privacy while running on your data - Help Net Security Cyberattack on French government agency triggers phishing alert - Help Net Security Claude Mythos finds 271 Firefox flaws, Mozilla believes zero-days are numbered - Help Net Security Prove Identity Platform connects verification, authentication, and fraud prevention - Help Net Security New Mirai variants target routers and DVRs in parallel campaigns - Help Net Security Acronis GenAI Protection gives MSPs control over AI usage and data risks - Help Net Security Elastic MCP Apps bring security and observability workflows into AI tools - Help Net Security Progress Software fixes sneaky WAF bypass vulnerability (CVE-2026-21876) - Help Net Security Tencent's QClaw AI agent app arrives on Windows and macOS - Help Net Security Phishing reclaims the top initial access spot, attackers experiment with AI tools - Help Net Security OneDrive updates focus on AI, access control, and compliance - Help Net Security PentAGI: Open-source autonomous AI penetration testing system - Help Net Security Apple Intelligence flaw kept stolen tokens reusable on another device - Help Net Security Shadow AI, deepfakes, and supply chain compromise are rewriting the financial sector threat playbook - Help Net Security Thunderbird 150 arrives with encrypted message search and OpenPGP improvements - Help Net Security VirtualBox 7.2.8 is out with Linux kernel 7.0 support and crash fixes - Help Net Security Ransomware negotiator admits role in attacks he was hired to resolve - Help Net Security Scattered Spider hacker pleads guilty to stealing $8 million in cryptocurrency Ivanti Neurons AI automates IT operations, reducing manual work and security risk Silobreaker Mimir adds agentic AI to intelligence workflows with governance and transparency - Help Net Security OpenAI’s Chronicle feature lets Codex read your screen, raising privacy concerns CISA flags another Cisco Catalyst SD-WAN Manager bug as exploited (CVE-2026-20133) A single platform powers SIM farm proxy networks across 17 countries - Help Net Security NGate NFC malware targets Android users through trojanized payment app - Help Net Security Meta and PortSwigger drive offensive security further to find what others miss - Help Net Security EU pushes for stronger cloud sovereignty, awards €180 million to four providers - Help Net Security SmokedMeat: Open-source tool shows what attackers do inside CI/CD pipelines - Help Net Security How to spot a North Korean fake in a job interview - Help Net Security Product showcase: Syncthing for secure, private file synchronization - Help Net Security Week in review: Acrobat Reader flaw exploited, Claude Mythos offensive capabilities and limits Google wipes out 602 million scam ads with Gemini on duty Researcher drops two more Microsoft Defender zero-days, all three now exploited in the wild GitLab 18.11 brings agentic AI to security fixes, CI pipelines, and delivery analytics Liongard upgrades LiongardIQ with AI access, live asset data, and deeper discovery Mozilla challenges enterprise AI providers with Thunderbolt, open-source AI client under your control Codex can now operate between apps. Where are the boundaries? Android 17 Beta 4 arrives with post-quantum cryptography and new memory limits Apple AirTag tracking can be misled by replayed Bluetooth signals Social media bans might steer kids into riskier corners of the internet Workplace stress in 2026 is still worse than before the pandemic New infosec products of the week: April 17, 2026 - Help Net Security ImmuniWeb brings AI upgrades, post-quantum detection and more in Q1 2026 NIST admits defeat on NVD backlog, will enrich only highest-risk CVEs going forward Anthropic releases Claude Opus 4.7 with automated cybersecurity safeguards - Help Net Security Fortinet fixes critical FortiSandbox vulnerabilities (CVE-2026-39813, CVE-2026-39808) - Help Net Security Google Play is changing how Android apps access your contacts and location Tails 7.6.2 patches vulnerability that could expose saved files Cargo theft malware actor spent a month inside a decoy network before researchers pulled the plug Two US nationals jailed over scheme that generated $5 million for the North Korean regime Product showcase: Ente Auth encrypts, backs up, and syncs 2FA Wi-Fi roaming security practices for access network providers and identity providers European AI spending set to hit $290 billion by 2029 Windows is getting stronger RDP file protections to fight phishing attacks Capsule Security debuts with $7 million funding to secure AI agent behavior Hackers hijacked CPUID downloads, served STX RAT to victims $12 million frozen, 20,000 victims identified in crypto scam crackdown Rockstar Games receives “pay or leak” warning after cyberattack Google makes it harder to exploit Pixel 10 modem firmware Siemens expands Industrial Automation DataCenter with edge AI and cybersecurity Adobe issues emergency fix for Acrobat Reader flaw exploited in the wild (CVE-2026-34621) Seized VerifTools servers expose 915,655 fake IDs, 8 arrested Fixing vulnerability data quality requires fixing the architecture first ZeroID: Open-source identity platform for autonomous AI agents MITRE releases a shared fraud-cyber framework built from real attack data The fully free Linux OS Trisquel gets a major update with version 12.0 Ecne Week in review: Windows zero-day exploit leaked, Patch Tuesday forecast ClickFix campaign delivers Mac malware via fake Apple page Poisoned “Office 365” search results lead to stolen paychecks Gmail’s end-to-end encryption comes to mobile, no extra apps required To counter cookie theft, Chrome ships device-bound session credentials Product showcase: Session, a messenger without phone numbers or metadata Little Snitch for Linux shows what your apps are connecting to - Help Net Security Apiiro CLI turns AI coding assistants into full-stack security engineers - Help Net Security April 2026 Patch Tuesday forecast: Spring-cleaning of a preview - Help Net Security Health insurance lead sites sell personal data within seconds of form submission - Help Net Security
What vibe hunting gets right about AI threat hunting, and where it breaks down - Help Net Security
2026-04-10 · via Help Net Security

In this Help Net Security interview, Aqsa Taylor, Chief Security Evangelist, Exaforce, explains vibe hunting, an AI-driven approach to threat detection that inverts traditional hypothesis-driven methods.

Instead of analysts defining attack vectors upfront, the AI scans datasets for anomalous patterns and surfaces potential threats. Taylor draws a firm line on responsibility: analysts must be able to explain their reasoning. When they cannot, the AI is steering the hunt. She also addresses enrichment, junior analyst development, and the failure modes that emerge when teams follow AI output without questioning it.

OPIS

Hypothesis-driven hunting has been the gold standard for years. Does vibe hunting challenge that model, or does it just change who, or what, generates the hypothesis?

Hypothesis-driven hunting still applies for threat hunting but what changes is the validation to prove hypotheses. For example, the analyst thinks an adversary with initial access via a compromised identity would use a CreateAccessKey action to establish persistence. The analyst would then start looking for evidence to support that hypothesis. The hypothesis itself is legible. You can critique it, analyze it, refine it, document it, and quantify it.

Whereas when you’re doing vibe hunting, it’s a bit different. You invert the approach slightly. You let the AI find patterns in the dataset you have. Specifically, if the AI or an LLM is trained on secure data and focused on security analysis, you ask it to look for patterns within that data. From those patterns, it then identifies what it considers malicious or anomalous.

In other words, when you’re doing hypothesis-driven hunting, you have a defined set of hypotheses and attack vectors that you’re searching for, ones you think may or may not apply in a given environment. Your goal is to verify whether they apply.

When you’re doing vibe hunting, the approach is different. You consider the entire dataset and ask the LLM, “What could be applicable in this specific use case? What could be a potential attack vector? Is there anything here that doesn’t fit within the dataset?” By doing so, you invert the traditional hunting approach, making the hypothesis implicit rather than explicit.

There’s a difference between AI accelerating a hunt and AI steering one. Where do you draw that line, and who is responsible when it gets crossed?

This is a tricky question because, in some cases, the hunt can begin with the AI itself. The AI may flag or identify activity it considers malicious based on patterns that the analyst, engineer, or hunter may not be aware of. In that situation, the AI is effectively steering the initial direction of the hunt.

As the process continues, the analyst or detection engineer starts to build context and develop an understanding of what is happening. At that point, they begin contributing their own reasoning and use the AI to accelerate the investigation rather than define it.

So where do you draw the line, and who is responsible when it gets crossed?

The line is drawn at the point where the analyst can no longer explain, in their own words, why they are pursuing a particular line of investigation. If they cannot articulate the reasoning behind the hunt, then they are no longer directing it. The AI is.

Responsibility follows that same boundary. The analyst is responsible when they are driving the reasoning and using AI as a tool to move faster. If they defer that reasoning to the AI and cannot independently justify the path they are taking, then the AI is effectively steering the hunt, even though accountability still rests with the human.

Enrichment is where hunts historically slow to a crawl. Mapping a single event, like a CreateAccessKey call, to whether that behavior is normal for a specific identity in a specific environment requires deep contextual knowledge. How does an AI system build that understanding without years of analyst institutional memory baked in?

Enrichment is where hunts historically slow down because that context is not readily available in a structured or accessible way. The key to solving this is not just better models, but better context.

AI models need to operate on a knowledge graph based on that institutional knowledge and turn it into a structured, queryable layer. This includes business context, ownership mappings, and operational patterns. More importantly, it requires a semantic context layer that maps identities, roles, resources, and their relationships across the environment. This semantic layer should also incorporate historical baselining, so the system understands what “normal” looks like for a specific identity over time.

Once you have that, the AI is reasoning over a rich graph of relationships and behavioral history. A CreateAccessKey event is no longer just an API call. It becomes an action performed by a specific identity, within a known role, tied to certain resources, compared against its historical behavior and peer group patterns.

At that point, enrichment becomes significantly more effective. The AI can make context-aware judgments that are much closer to what an experienced analyst would do. It is not replacing that expertise, but it is operationalizing it at scale.

Junior analysts have traditionally learned threat hunting by suffering through the slow, manual version first. If AI abstracts that pain away, what replaces it as the mechanism for building genuine analyst judgment?

I don’t see vibe hunting as replacing the knowledge that comes from “learning from scratch.” I see it as elevating and scaling that experience more quickly. Instead of spending hours sifting through noise to find the signals they need, analysts spend their time making judgment calls on whether the analysis presented to them will support the right decision.

They focus on investigating effectively and making correct judgments. This includes asking the right questions, ensuring the relevant signals are included in the context, and following the investigative path a seasoned analyst would take by leveraging institutionalized knowledge quickly as needed, learning through the steps, and benefiting from the explainability provided by the right AI model.

Security teams have been burned before by tools that promised to compress the hard parts and delivered false confidence instead. What would a failed vibe hunting implementation look like in practice, and how would you know you were inside one?

A failed vibe hunting implementation shows up when analysts stop thinking critically and start relying on the AI to drive the hunt end to end. Instead of forming hypotheses or asking targeted questions, they simply prompt the model and follow whatever leads it produces.

At that point, the hunt becomes AI-steered rather than analyst-driven. Analysts chase patterns flagged by the model without questioning them. They do not validate the data, examine the context, or ask basic questions like why the pattern is suspicious, where the signal came from, or whether it is grounded in real data versus model error.

This creates a false sense of productivity. Teams may appear to be running more hunts, but those hunts do not lead to meaningful outcomes. Instead of improving detection quality, they generate noise and shallow conclusions. This is where false confidence sets in.

There are warning signs that you are inside this failure mode.

One sign is that analysts spend most of their time closing AI-generated leads rather than developing or refining them. Hunt reports become summaries of what the AI suggested, not what the analyst concluded. The reasoning is missing. There is no articulation of what was tested or why.

Another sign is that analysts cannot explain the threat model behind a hunt. If they cannot answer what they are trying to validate or why a path was pursued, then the hunt is not grounded in intent. It is just following a trail.

A third sign is a breakdown in trust within the team. Senior analysts start re-running hunts manually because they do not trust the AI output. At the same time, they begin to question the quality of work produced by junior analysts who rely heavily on the model.

In practice, a failed implementation does not reduce effort or improve insight. It replaces critical thinking with automation and produces more activity, but less understanding.