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Underground Forum Tutorial Reveals How Cybercriminal Communities Teach Vulnerability Exploitation and Profit-Making

  A forum discussion titled “Hacking for Profit. Working method” has provided cybersecurity researchers with a unique look into how undergr...

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New Apple Ad Blocker Filtr Expands Protection Beyond Browsers on iPhone, iPad and Mac

 

Filtr, a fresh ad-blocking app, extends privacy for Apple device owners. Instead of limiting itself to web browsers, it stops advertisements inside mobile and desktop applications too. Created by Kaylee Serena Calderolla - known for developing Wipr, a tool that blocks ads in Safari - it taps into features unveiled in iOS 26 and macOS 26. Through these updates, the software intercepts ad-related data directly within the system’s network layer. Beyond the usual add-ons confined to Safari alone, Filtr taps into Apple’s updated method for handling web traffic. 

With that foundation, it intercepts connections aimed at known ad networks long before content appears - stopping trackers and pop-ups not just in browsers but throughout compatible apps. Blocking happens earlier, silently, cutting down unwanted surveillance along with cluttered visuals wherever digital activity occurs. Filtr comes as a premium feature inside Wipr, an often-used tool that stops ads in Safari. 

Its creator, Calderolla, claims it runs without gathering any personal details or needing entry to sensitive user content. Updates to a custom blocklist - kept current by the maker - allow the filter system to work effectively. Working begins with an initial screening done locally on the device. This step uses a built-in catalog of sites that often serve ads. When uncertainty remains, a follow-up check occurs using a fuller database kept by Calderolla. Communication moves through Apple’s infrastructure, which keeps individual users anonymous to service creators. 

Only matching results trigger deeper analysis, limiting exposure of personal activity. Some people trying the function notice fewer commercials when opening certain programs, though a few show blank spaces instead of promotions. Enabling the link blocker just one time lets the software manage changes on its own, making preparation straightforward. Not every application behaves the same way - some skip ads entirely, others leave gaps. Updates happen in the background after initial activation, reducing ongoing effort. Filtr cannot stop all ads - some slip through when they come straight from an app’s built-in servers. 

Since cutting those might break how the app works, certain promotions stay visible. So, while using platforms like Facebook, Google, or Reddit, users may still spot occasional banners. Even with its constraints, progress shows clearly in how Wipr tackles ads across Apple devices. Priced at five dollars, it works on any device, whereas Filtr adds yearly fees unless users opt to pay twenty-five upfront inside the app.

Peter Todd Warns Zcash Privacy Tech Is Too Risky for Bitcoin Consensus Layer

 

Bitcoin developer Peter Todd has warned that Zcash-style privacy technology is too risky to integrate into Bitcoin’s consensus layer, arguing that the cryptographic complexity behind Zcash’s shielded transactions introduces unacceptable operational risk for Bitcoin’s base protocol. His comments erupted after the Zcash Open Development Lab disclosed a critical issue in Zcash’s Orchard shielded pool on June 1, 2026, which temporarily paralyzed the network and required an emergency hard fork to fix. 

The vulnerability affected Orchard, Zcash’s most widely used shielded pool for private transactions, and was discovered during routine security auditing on May 29 by researcher Taylor Hornby using an AI-assisted tool. The flaw centered on just two lines of code in the Orchard circuit, the cryptographic core that processes Zcash’s private transactions, and dated back to when Orchard launched in May 2022. CoinDesk reported that the issue could theoretically have allowed an attacker to mint counterfeit ZEC without leaving any on-chain evidence, though the bug was identified before any known exploitation occurred. 

Fixing it demanded a coordinated hard fork that forced nodes, wallets, and block explorers to update simultaneously, with Orchard transactions suspended during the upgrade window until re-enabled around 23:00 EDT on June 1. Nodes that failed to upgrade quickly became desynchronized, leaving the network paralyzed for several hours and exposing a major coordination problem unique to complex privacy protocols. Todd’s argument centers on the difference between visible and hidden failures in blockchain systems. In Bitcoin’s transparent accounting model, counterfeit coins or invalid outputs are immediately visible on-chain, making it relatively straightforward to detect bugs, identify affected coins, and reverse the chain if necessary. 

He cited Bitcoin’s 2010 value overflow incident and 2013 chain split as examples where rollback was feasible because only a small fraction of coins were affected and the exploit was trivial to notice. In Zcash’s shielded system, however, privacy cryptography using Halo 2 zk-SNARKs allows transaction validation without revealing sender, recipient, or amount, creating a dangerous blind spot where a bug could destroy shielded funds without developers being able to quantify the damage in real time. 

Todd emphasized that approximately 30% of Zcash’s total supply is already shielded in the Orchard pool, meaning a catastrophic failure would wipe out holdings for a high percentage of all Zcash users. He rejected comparisons to Bitcoin’s historical bugs, stating that neither the 2010 overflow nor CVE-2018-17144 could destroy the currency because counterfeit coins were trivially visible and easily rolled back. 

He argued that different types of cryptography have different levels of risk, and that Zcash-style cryptography carries a very high risk level reflected in Zcash having experienced much more serious issues than Bitcoin. The debate reflects a fundamental divide in crypto between innovation and protocol conservatism, with Todd favoring maintaining Bitcoin’s deliberately simple core design. 

Privacy advocates seeking Bitcoin improvements without consensus-layer changes point to Silent Payments, an application-layer solution that generates unique addresses for each transaction without exposing payment history. Unlike Zcash’s approach, Silent Payments does not modify Bitcoin’s base protocol, though adoption remains limited to wallets like Sparrow Wallet and Cake Wallet. At press time after the incident, ZEC traded around $532 following a 37.8% slide before recovering, demonstrating market volatility tied to Orchard’s technical stability.

Researchers Warn AI Is Blurring the Line Between Skilled and Unskilled Hackers

 




For years, cybersecurity teams have relied on established methods to determine how dangerous a threat actor might be. Analysts typically examine the techniques an attacker uses, the tools involved, and the complexity of an operation to estimate the level of risk. New research from Anthropic, however, recommends that artificial intelligence is beginning to disrupt those assumptions.

The company's Frontier Red Team recently analyzed 832 user accounts that were removed from Anthropic's platforms for engaging in malicious cyber activity between March 2025 and March 2026. Researchers compared the observed behavior against the MITRE ATT&CK framework, a widely used industry resource that categorizes adversary tactics and techniques. Portions of the findings were also referenced in Verizon's 2026 Data Breach Investigations Report.

It's a signal to keep up with how cybercriminals are using AI. Rather than limiting AI to basic tasks, attackers are increasingly applying it to activities that take place after gaining access to a target environment. This trend suggests that AI is becoming part of deeper operational stages of cyber intrusions, including tasks that traditionally required stronger technical expertise.

Among all observed cases, malware development was the most common use of AI. Researchers found that 560 of the 832 analyzed accounts, representing more than two-thirds of the dataset, used AI-assisted tools to help create or modify malicious software. While this finding was expected, the more notable change appeared elsewhere.

Throughout the study period, researchers recorded a movement away from AI-assisted initial access activities and toward post-compromise operations. One example was account discovery, a process attackers use to identify valid user accounts within a breached network. AI-assisted account discovery increased by 8.9% during the reporting period. By contrast, AI-supported phishing activity declined by 8.6%.

The data also showed growing use of AI during lateral movement operations. Lateral movement refers to the actions attackers take after entering a network to expand their access and reach more valuable systems, users, or data repositories. According to the report, 54 of the 832 observed actors used AI assistance during this stage of an intrusion.

Historically, activities such as account discovery, privilege escalation, and lateral movement have been associated with more experienced operators because they require a stronger understanding of network environments and attack workflows. Researchers argue that AI is reducing those technical barriers, allowing a broader range of actors to perform tasks that were previously more difficult to execute effectively.

This change became visible in the study's risk assessment data. During the first half of the observation period, approximately 33% of threat actors were categorized as medium-risk or higher. During the second half, that proportion rose to 56%. Researchers described this increase as evidence that AI is helping a larger segment of the threat landscape carry out more advanced cyber activity.

The findings also raise questions about how the industry evaluates attacker sophistication. Security teams have long treated the number of techniques used during an attack as an indicator of capability. Anthropic's analysis suggests that this relationship is becoming less reliable in AI-assisted environments.

Researchers found only a small difference between lower-risk and higher-risk actors when measuring the number of techniques used. Less sophisticated actors employed an average of 16 techniques, while the most capable actors averaged 20. The narrow gap indicates that technique counts alone may no longer provide a meaningful way to prioritize threats.

The same pattern appeared when researchers examined how attackers interacted with AI systems. Whether actors used Claude Code, direct API access, or standard chat interfaces showed little connection to their assessed risk level. Simply identifying which AI tool was used did not provide a clear indication of the threat posed by an actor.

Instead, researchers found that the location of AI usage within the attack lifecycle was a stronger indicator of risk. Higher-risk operators tended to apply AI to technically demanding stages of an intrusion, including internal reconnaissance, privilege escalation, and lateral movement. These activities often have a direct impact on how effectively an attacker can establish control over a compromised environment.

Even that distinction may not remain useful indefinitely. Researchers observed that these more advanced use cases are gradually spreading throughout the broader threat ecosystem. As AI tools become more accessible and capable, activities once associated with a smaller group of highly skilled operators may become increasingly common.

Anthropic identified another characteristic that separated the most dangerous actors from the rest. Rather than using AI for isolated tasks, some operators built systems around AI models that connected multiple attack stages together. This allowed AI to support planning, execution, and decision-making across larger portions of an operation with limited human involvement.

Researchers describe this capability as agentic attack orchestration. In practical terms, it refers to AI systems that can assist with coordinating different phases of an intrusion, helping move an attack from one stage to another without requiring constant manual direction from an operator.

According to the report, this rising behavior exposes a limitation in existing cybersecurity frameworks. MITRE ATT&CK was designed to document attacker actions and techniques. It was not built to measure the degree of autonomy involved when AI systems help coordinate those actions.

Anthropic underlined this challenge using a cyber-espionage campaign it disrupted in November 2025. The operation involved attempts to use Claude Code in support of intrusion activity targeting organizations in multiple regions with relatively little direct human intervention.

When researchers mapped the operation to MITRE ATT&CK, it generated a profile containing 30 techniques across 13 tactics. On paper, that profile appeared comparable to many medium-risk actors included in the study. However, Anthropic's internal evaluation system assigned the operation the maximum possible risk score of 100.

Researchers argue that the discrepancy exists because current frameworks focus on what actions occur during an attack rather than how those actions are coordinated. An AI-assisted system capable of executing commands, identifying vulnerabilities, collecting credentials, and adapting to changing conditions throughout an intrusion presents a different operational challenge than a human manually performing each step.

The report notes that there are currently no ATT&CK categories specifically designed to capture autonomous orchestration, automated chaining of attack stages, or the reduction of human decision-making throughout an attack lifecycle.

Anthropic says it is actively discussing potential framework updates with MITRE to better account for AI-enabled attack behaviors. The company has also used insights from the research to strengthen safeguards within its own models, including controls intended to detect and prevent misuse involving malware development and large-scale data theft attempts.

For defenders, the findings suggest that traditional indicators may no longer provide a complete picture of cyber risk. A threat actor using AI to automate portions of an attack may achieve outcomes similar to those of a more experienced operator performing the same tasks manually. Likewise, an individual using a basic chat interface could potentially conduct operations that resemble those performed through more advanced integrations.


Meta Faces Privacy Questions After Secret Face Recognition Code Discovery


The concept of facial recognition in consumer wearables remained largely a theoretical discussion for many years confined to research laboratories, privacy concerns, and product development. Having now discovered that Meta had quietly embedded facial recognition-related code within its Meta AI mobile application, the software that powers and supports its Ray-Ban and Oakley smart glasses ecosystem, this conversation is moving closer to reality. 

A system known as "NameTag" was discovered inside the smart glasses in order to process images captured through their cameras, generate biometric information, and match it with local data in order to recognize individuals in real time. Based on these findings, the integration of advanced computer vision capabilities into everyday consumer devices has been heightened, particularly when these capabilities appear in applications that are installed on tens of millions of smartphones well in advance of official announcements. 

Additionally, Meta's smart glasses platform continues to expand its capabilities, raising questions regarding transparency, biometric data handling, and the future of artificial intelligence-powered wearable technology. In further analysis of the software architecture, it is apparent that the NameTag framework was not limited to experimental code fragments, but rather was integrated into the Meta AI application, which is a mandatory companion application for several smart glasses features and has been downloaded by over 50 million people. 

An analysis of the system indicates that it was designed to capture facial imagery through the glasses, generate unique biometric templates known as faceprints, and compare the collected data with data stored locally on a user's device. Upon identifying a match, the application could generate recognition alerts to the wearer, while faces that could not immediately be matched were reportedly cropped, catalogued, and queued for future consideration. 

In the investigation, researchers noted that three separate machine learning models were already installed on user devices to handle face detection, image extraction, and biometric conversion, respectively, associated with the feature. In earlier application builds, the capability was also referenced under the label "Connections," which implies a potential application use case that could involve assisting users in recalling individuals they had previously encountered. 

A portion of the technical analysis was reviewed by independent security experts who emphasized the findings of the study. Although the feature was never publicly announced, researchers indicated that the underlying components appeared sufficiently developed to facilitate operational testing. 

Security researchers reported that one security researcher uploaded a faceprint associated with French philosopher Michel Foucault to demonstrate the system's recognition workflow, which triggered a notification which indicated successful identification of the user. Despite Meta's long-standing involvement with facial-recognition technologies, which have been the subject of both commercial interest and regulatory pressure in the past, this disclosure has reignited scrutiny. 

Previously, the company operated one of the largest facial-recognition systems for consumers by using Facebook's photo-tagging infrastructure before discontinuing the program in 2021 and destroying more than a billion biometric records. The development of a new facial-recognition framework against this backdrop has inevitably drawn the attention of privacy advocates and industry observers. 

A company representative of Meta has, however, strongly rejected interpretations that the technology had been secretly deployed or prepared for public release. The code, according to Meta spokesperson Ryan Daniels, reflects ongoing research and product exploration and not a finished consumer feature. Meta spokesperson said no facial-recognition capability has been offered to users and no decision has been made regarding its implementation in the future. 

The company will not construct a centralized facial-recognition database, he asserted, and stated that any eventual deployment would be disclosed in a clear manner. Andy Stone echoed this position, arguing that characterization of the technology as covertly released is misleading regarding both its purpose and status at present. Despite this, the episode illustrates the tension between rapidly advancing AI-powered wearable capabilities and the security expectations associated with technologies designed to process highly sensitive biometric data. 

There was further intensification in the debate when the Threat Lab of the Electronic Frontier Foundation confirmed certain aspects of the earlier findings and noted that Meta only removed the code related to facial recognition once the issue gained significant public attention. The organization cautioned, however, that deletion does not necessarily indicate an end to development efforts. 

In the course of investigating Meta, it was discovered that there appeared to be an apparent connection between Meta and the biometric technology provider Rank One Computing, a provider of facial recognition solutions for the United States Army and the U.S. Rank One's technology has been linked to Meta AI, the application used in conjunction with the company's smart glass ecosystem according to the report. 

According to the report, the contract permitted access to advanced biometric features, including facial recognition and liveness detection systems. These systems are designed to distinguish a real individual from a photograph, mask, or other spoofing attempt. Researchers expressed concern about the narrow technological gap between government-grade surveillance platforms and consumer-facing wearable devices, arguing that the gap is narrowing rapidly. 

A number of public clarifications regarding the reported partnership have not been made by either company Rank One Computing reportedly declined to respond, while Meta maintains that no consumer-facing facial-recognition features have been released and no final product decision has been reached. 

Additionally, Meta did not confirm if third-party biometric engines with military-grade accuracy are being evaluated for future wearable products. Nonetheless, the revelations have renewed discussion about Meta's long and often controversial history with facial recognition. It was due to years of regulatory pressure that the company dismantled its large-scale facial recognition infrastructure on Facebook in 2021, despite hundreds of millions of users opting into the system previously. 

Recently, Meta settled a lawsuit over allegations relating to the collection of biometric data for $1.4 billion. It was reported earlier this year that Meta had explored ways to use information related to its social media ecosystem to identify individuals using smart glasses. Further concerns have been raised about the integration of biometric intelligence into future consumer products. 

The issue of privacy and cybersecurity goes beyond the release of a single product or feature. Through the transformation of a person's face into a persistent digital credential that can be stored, matched, and analyzed, facial recognition systems fundamentally alter the balance between anonymity and identification in public spaces. 

A number of advocacy organizations have argued that such technologies are disproportionately damaging to marginalized groups, contribute to misidentification, and create avenues for unauthorized surveillance. The security threat associated with biometric identifiers is that, unlike passwords, they cannot simply be changed once they have been exposed. 

The evolution of smart glasses into platforms combining cameras, microphones, artificial intelligence, and biometric processing is increasingly challenging regulators, technologists, and consumers alike. There is the question as to whether privacy safeguards can keep pace with the capabilities being built into the next generation of wearable computing devices. 

A growing number of wearable devices can collect, analyze, and interpret real-world data, thereby expanding the debate from what a wearable device can achieve to how it should be utilized responsibly. In Meta's facial-recognition prototype, questions arise that illustrate an underlying cybersecurity and privacy challenge faced by the industry: ensuring that innovation relating to biometric data is accompanied by transparency, accountability, and meaningful user protections. 

Organizations and consumers should take note that features involving identity recognition should be carefully scrutinized, particularly as the lines between convenience, surveillance, and privacy become increasingly blurred.

Why Privacy-Conscious Users Should Think Twice Before Storing Sensitive Files on Google Drive

 

Google Drive has become an essential tool for millions of users worldwide. Whether it's storing contacts, backing up WhatsApp chats, or saving photos, videos, and important documents, the platform serves as a central hub for digital storage. Its deep integration with Google's ecosystem makes it a convenient choice for Android and Gmail users alike.

However, while Google Drive offers robust security against cyber threats, questions remain about whether it is the best place to store highly sensitive personal information. Documents such as passport scans, banking records, legal contracts, and tax returns may require an additional layer of protection beyond what the service provides by default.

From a security standpoint, Google Drive employs industry-standard safeguards. Data is encrypted while being transferred using TLS protocols, and files stored on Google's servers are protected with AES-128 encryption. Users can further strengthen account security through features like passkeys and two-factor authentication.

The key concern, however, lies in how the encryption system works. Unlike services that provide end-to-end encryption, Google retains control of the encryption keys used to access stored files. This means the company has the technical ability to decrypt and view user data when necessary.

"When you upload a file, Google encrypts it with a unique data encryption key, then encrypts that key with another key it controls, and stores both on its servers. To read the file, Google's systems unwrap the keys on the fly. With true end-to-end encryption, only your device holds the key, so even the service provider sees nothing but scrambled bytes. Google's setup doesn't meet that bar."

As a result, while hackers and unauthorized third parties face significant barriers in accessing files, Google itself can access stored content. Additionally, government agencies or courts may compel the company to share user data through legal processes because Google possesses the necessary decryption keys.

Another privacy consideration is automated content scanning. Google uses systems that review files for policy enforcement purposes, including identifying known illegal content and potential violations of its terms of service. Although the company states that Drive content is not used for advertising purposes, automated systems can sometimes generate false positives, potentially leading to account restrictions or suspensions.

Artificial intelligence is also expanding Google's access to stored data. As Gemini becomes more deeply integrated into Workspace products, it requires permission to analyze files in order to generate summaries and provide contextual assistance. While Google maintains that Drive files are not used to train its general AI models, some privacy advocates argue that increased AI integration broadens the potential exposure of personal information.

"This doesn't mean Google is malicious or will snoop on you. It means the threat model is different from what most people assume. You're not just trusting Google to fend off hackers; you're trusting it never to read, mishandle, or be compelled to share your data."

For users seeking stronger privacy protections, encrypting files before uploading them to Google Drive is often recommended. Applications such as Cryptomator allow users to create encrypted vaults on their devices, ensuring that files remain unreadable to Google. VeraCrypt is another option that enables users to create secure encrypted containers that can be synced to cloud storage services.

Those looking for built-in privacy protections may consider alternative platforms. Services such as Proton Drive, Tresorit, and Sync.com offer end-to-end encryption, ensuring that providers cannot access the contents of user files because they do not possess the decryption keys.

There are trade-offs, however. End-to-end encrypted files often cannot be searched by content, previewed in a browser, or edited collaboratively in the same way as standard cloud storage files. Additionally, users are solely responsible for managing recovery credentials, meaning forgotten passwords may result in permanent loss of access.

For particularly sensitive documents, some users may choose to avoid cloud storage altogether. External hard drives or self-hosted solutions such as Nextcloud can provide greater control over personal data while reducing dependence on third-party providers.

Despite these concerns, Google Drive remains a secure and practical solution for everyday storage needs, including photos, shared documents, and routine work files. The issue is less about security and more about privacy.

"The privacy story shifts when you start storing things that would hurt to lose to a stranger, a Google reviewer, or a court order. For those files, the answer isn't to abandon Drive but to stop treating it as a vault. Encrypt sensitive documents before you upload, or move them to a service that can't read them at all. The few minutes of friction are worth knowing that the most personal pieces of your life aren't sitting on a server with someone else's keys."

For privacy-focused users, the best approach may be to continue using Google Drive for convenience while reserving encrypted storage solutions for highly confidential files.

Ransomware Gangs Splinter as Cyber Threat Becomes More Volatile

 

Cybercrime is moving through a major reset as the ransomware world shifts away from big, organized cartels and toward smaller, more volatile splinter groups. Speaking at Infosecurity Europe 2026, William Lyne, Head of Economic and Cybercrime at the Metropolitan Police Service, said the underground market has become a highly accessible ecosystem where criminals can buy tools, services, and stolen data with ease. He described it as a place where threat actors can get almost everything they need, except a good drink. 

The biggest driver behind this change is convenience. Cryptocurrencies have removed one of the oldest bottlenecks in cybercrime by making it much easier to cash out illegal profits, while underground marketplaces now provide ransomware kits, phishing services, infrastructure, and support on demand. That lower barrier to entry has blurred the old lines between hacktivists, criminal gangs, and state-linked actors, creating a blended threat environment that is far more crowded and harder to police.

Lyne warned that law enforcement crackdowns are also reshaping the market. When large, centralized groups such as LockBit are disrupted, their affiliates do not disappear; they scatter into smaller factions, each trying to rebuild revenue streams in a less visible way. The result is a more fragmented and “post-trust” criminal scene, where weaker internal controls and looser coordination can make attackers more aggressive, reckless, and unpredictable. 

The threat is also becoming more global. Lyne said the ransomware ecosystem is no longer dominated by traditional Russian-speaking hubs, with actors now emerging from Brazil, Türkiye, and English-speaking groups such as Scattered Spider. At the same time, criminals are increasingly using AI to search through hoarded corporate data, turning old thefts into fresh extortion opportunities and new monetization schemes. 

For police and security teams, the response must go beyond arrests alone. Lyne said the Met Police cannot “arrest its way out” of the problem and instead needs to focus on disrupting infrastructure, weakening trust inside criminal networks, and working more closely with private-sector defenders. In practical terms, that means security teams should expect a ransomware landscape that is smaller in structure but sharper in impact, where fragmented gangs may strike faster and with fewer rules than the cartels they replaced.

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