Deno has introduced an open-source security framework called Claw Patrol, a tool designed to help organizations control how AI agents interact with databases, business applications, cloud services, and other external systems.
The release comes as companies increasingly deploy AI agents to perform tasks that involve accessing internal resources, executing commands, and communicating with third-party services. While these capabilities can automate routine work, they also create security concerns if an AI system is manipulated, makes an incorrect decision, or gains access to information it should not handle.
According to Deno, Claw Patrol operates as an intermediary between an AI agent and the systems it needs to access. Instead of providing the agent with direct access to credentials such as API keys, authentication tokens, or database passwords, those secrets remain stored on a dedicated gateway server. When an authenticated request is required, the gateway supplies the credentials automatically, preventing the AI agent from viewing or storing them.
This approach is intended to reduce the risk of credential theft and prompt injection attacks, a technique where attackers attempt to manipulate AI models into revealing sensitive information or performing unauthorized actions. Even if an agent is tricked into executing a malicious instruction, the underlying credentials remain isolated from the model itself.
Beyond protecting credentials, Claw Patrol gives administrators the ability to define rules that determine exactly what actions an AI agent is allowed to perform. Organizations can block potentially dangerous database commands, restrict connections to unauthorized external services, or require additional approval before sensitive operations are executed.
For tasks that carry greater risk, the platform supports human review workflows. This allows certain requests to be paused until they are approved by an administrator, adding an additional layer of oversight before changes are made to critical systems.
Deno also states that the firewall can use large language model-based evaluation to assist with policy enforcement in situations where static rules may not be sufficient. This enables security controls to assess requests dynamically while still operating within predefined boundaries established by administrators.
To help organizations monitor AI activity, Claw Patrol includes tools that provide visibility into agent behavior. Administrators can review active sessions, inspect actions performed by agents, monitor resource consumption, and investigate unusual activity through a centralized monitoring interface. These capabilities are designed to support auditing and incident response efforts.
The platform is configured using HashiCorp Configuration Language (HCL), which allows administrators to define security policies, credentials, access permissions, and system endpoints. Deno says the framework supports multiple credential types and can be extended through custom plugins to meet specialized requirements.
Claw Patrol also incorporates role-based access controls, enabling organizations to assign permissions according to job responsibilities. This helps limit access to sensitive resources and reduces the likelihood of unauthorized activity within AI-powered workflows.
For secure communications, the platform can integrate with technologies such as WireGuard and Tailscale, allowing AI agents to connect to protected environments without exposing internal infrastructure directly to public networks. Deno has also included testing capabilities that allow administrators to evaluate policy changes against real-world actions before deploying them into production systems.
While the project introduces several security-focused capabilities, some challenges remain. Organizations unfamiliar with firewall administration or HCL-based configuration may face a learning curve during deployment. The current version also relies heavily on configuration files, and some users may prefer a graphical interface for managing rules and credentials. Additionally, certain networking features may require further refinement as the project matures.
Despite these limitations, the release reflects a growing focus on AI security as autonomous systems gain broader access to enterprise environments. By separating credentials from AI agents, restricting actions through policy controls, and providing continuous monitoring, Claw Patrol aims to give organizations greater control over how AI systems interact with critical business resources.
The project has been released as open-source software, allowing developers and security teams to inspect its code, modify its capabilities, and adapt it to their own operational requirements.
Researchers at ESET have identified a previously undocumented Android spyware strain called Asin that is being distributed through fraudulent websites aimed at Arabic-speaking users.
According to the security company, the activity was first observed in early 2025 and involved several separate campaigns. The operators used different websites during each phase of the operation, presenting them as legitimate services to encourage users to download malicious Android applications.
Among the websites identified by researchers was govlens[.]net, which was registered in May 2025 and presented itself as a government-related news platform. Another site, pdf-reader[.]help, registered two days later, claimed to provide secure PDF viewing and editing capabilities. A third domain, live-war-map[.]com, registered in January 2025, advertised itself as a source of information about military incidents and conflict activity.
ESET found that some of these websites were promoted through social media accounts on Facebook and Telegram. The campaign's Telegram presence appeared to draw inspiration from Live Universal Awareness Map (Liveuamap), a legitimate service widely used to monitor armed conflicts, humanitarian crises, natural disasters, human rights developments, and geopolitical events around the world.
While the websites offered services that appeared useful or relevant to their intended audience, the downloaded applications contained hidden spyware components. Researchers said the malicious apps combined advertised functionality with surveillance capabilities operating in the background.
Additional evidence suggests the campaign remained active beyond its initial discovery. ESET identified several artifacts linked to Asin, including a sample uploaded to VirusTotal from Türkiye in October 2025. Another malicious Android package was downloaded from the domain c-pdf[.]net in December 2025 by a user operating a Xiaomi Redmi Note 13 Pro running Android 15.
Researchers also revealed a separate application disguised as Syria Defense Map. That sample was detected on a Xiaomi Redmi Note 13 Pro+ 5G device using Android 15 around mid-January 2026. In that case, the application was reportedly obtained through the website syriadefensemap[.]com.
As with many Android threats distributed outside official app marketplaces, users must manually install the software before it can operate. The spyware also relies on victims granting requested permissions, which can provide access to sensitive information stored on the device.
ESET has not attributed the activity to any known threat group, and the purpose behind the operation remains uncertain. However, the themes used throughout the campaign provide some indication of who may have been in the attackers' sights.
The company noted that three of the fraudulent applications, GovLens, WarMap, and Syria Defense Map, appear particularly relevant to individuals involved in open-source intelligence (OSINT) research. Because the applications focused on news gathering, conflict tracking, and investigative information, researchers believe Arabic-speaking journalists and OSINT practitioners may have been among the intended targets.
The findings illustrate how threat actors continue to package malicious code within applications that appear credible and useful. By exploiting interest in current events, government information, and conflict monitoring, attackers increase the likelihood that users will install software capable of collecting data from their devices without raising immediate suspicion.