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June 9, 2026 Read Full Article • 17 min read

7 Best AI Pentesting Tools for Continuous Security Testing in 2026

As cyber threats become more sophisticated, traditional penetration testing is no longer enough. AI pentesting tools help security teams uncover vulnerabilities faster, automate repetitive tasks, and improve testing efficiency. Let's explore the best AI pentesting tools available in 2026.

AI Tools June 5, 2026 Read Full Article • 8 min read

Best 8 Knowledge Base Software in 2026

Compare the best knowledge base software in 2026 for customer support, internal docs, technical documentation, and team knowledge sharing.

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Stay updated with the latest developments and breakthroughs in global artificial intelligence

Jun 19, 2026

Billionaire Ambani wants AI in every call, app, and home

Mukesh Ambani, chairman of Reliance Industries, announced an ambitious strategy to integrate artificial intelligence across every facet of Indian daily life, ranging from telecommunications and digital applications to smart home ecosystems. By leveraging the vast scale of Reliance Jio’s infrastructure, the company aims to democratize AI access for hundreds of millions of users, positioning India as a global leader in accessible, low-cost intelligent digital services. Reliance's roadmap emphasizes internal development of proprietary AI models and infrastructure, while actively seeking partnerships to bolster its compute capabilities. This initiative seeks to transform Reliance from a pure-play telecom and retail conglomerate into an AI-first organization that integrates machine intelligence into mobile telephony, enterprise solutions, and residential connectivity. The move underscores an intense focus on capturing the growing demand for generative AI within the under-digitized segments of the Indian market.

Beartooth Pull Video Just Hours Before Release Over ‘Lying’ AI Artist Controversy

Beartooth pulled a music video hours before its scheduled release after fans discovered that the visual artist credited for the video had allegedly used AI to create imagery while presenting it as wholly human-made. The band removed the upload amid backlash and confusion, saying they needed time to investigate the claims and address fan concerns. Social media erupted with fans and other creators debating transparency, ethics, and the role of AI in visual art; many expressed anger that a credited artist may have misrepresented their process. Beartooth’s quick action reflects broader tensions in the music and creative industries about disclosure when AI tools are used and how audiences and collaborators should be informed. The incident highlights ongoing industry struggles to set standards for AI-generated content, with calls for clearer labeling, artist accountability, and better platform policies to prevent misleading claims while protecting creative work.

Microsoft warns AI agents are being 'AutoJack'-ed to deliver RCE payloads by browsing untrusted websites

Microsoft warns that autonomous AI agents can be "AutoJack"-ed—hijacked by malicious websites—to deliver remote code execution (RCE) payloads. Attackers host specially crafted pages that use prompt-injection, malicious artifacts, or tricked browser-automation flows to get agents to download and run payloads or exfiltrate secrets. These chains exploit web-browsing capabilities, unsafe file handling, insufficient sandboxing, and overly permissive agent actions to escalate from a deceptive webpage to code execution on the host. Microsoft’s analysis outlines attack surface areas and practical mitigations: limit or disable web-browsing features for agents, enforce strict sandboxing and least privilege, validate and sanitize fetched content, avoid automatic execution of downloaded files, and monitor agent telemetry for anomalous behaviors. The guidance urges organizations to treat AI agents as networked endpoints, apply standard security hygiene (patching, dependency management, RBAC), perform threat modeling before deployment, and combine AI-specific protections with existing security controls to reduce the risk of AutoJack-style RCE attacks.

As growth gets harder, AI emerges as the key to MSP success

AI is becoming the decisive capability that will allow MSPs to sustain growth and improve margins amid mounting market pressures. Faced with commoditization, pricing pressure, talent shortages and rising customer expectations, managed service providers are turning to AI-driven automation and intelligence to reduce costs, accelerate response times and create higher-value service offerings. Practical uses include automated ticket triage and remediation, predictive maintenance, proactive monitoring, enhanced threat detection for security services, and AI-augmented professional services that increase technician productivity and deepen customer insights. To capture value, MSPs should combine platform integrations (RMM, PSA, security stacks) with disciplined data governance, staff upskilling and vendor partnerships. Adoption requires careful attention to trust, explainability, compliance and commercial models: outcome-based pricing, packaged AI-enabled services, and vertical specialization are recommended paths. The article urges MSPs to run focused pilots, measure ROI, refine processes, and scale the most compelling AI use cases to differentiate and drive sustainable growth.

The Mammotion Luba 3 AWD robot lawn mower hits all-time best price — save over $500 at Amazon

The Mammotion Luba 3 AWD 3000H robot lawn mower is currently available on Amazon for its lowest price ever, reflecting a discount of over $500. This high-end robotic mower is designed for efficient, autonomous lawn care, utilizing advanced cutting technology to handle various terrains and gradients with its all-wheel-drive system. Key features of this model include sophisticated navigation systems that eliminate the need for traditional perimeter wires, allowing for easier setup and precise boundary control. By leveraging automated scheduling and robust hardware, the Luba 3 aims to reduce manual yard maintenance significantly while maintaining lawn health throughout the season.

How to Transfer Chatbot Memory to and From ChatGPT

Explains practical ways to move remembered information between ChatGPT and other chatbots so your assistants retain context across platforms. It outlines three main approaches: manual copying of key facts or conversation snippets into a new chat or the ChatGPT memory interface; using export/import features or structured files (like JSON or CSV) where available; and employing developer tools such as the OpenAI API, embeddings, and vector databases to extract, store and reinject memory programmatically for retrieval-augmented workflows. The piece highlights trade-offs and precautions: watch token and privacy limits, clean and structure data for consistent prompts, and respect user consent. It suggests using summaries rather than raw logs to save space, creating templates for reintroduction, and testing for redundancy or contradictions after transfer. For technical users it recommends embedding-based search and automated syncs; for casual users it recommends manual copy-paste or using built-in memory settings when supported. The article closes with privacy and security reminders and tips to maintain useful, current memories.

From flying chairs to a flood of tempura prawns, the Honor 600 Pro has some absolutely crazy AI video features — but there’s a catch

Honor 600 Pro introduces a bold suite of AI-driven video tools that let users generate surreal, cinema-style effects and manipulate moving subjects in short clips. The phone’s camera ecosystem includes features for real-time object insertion and removal, smart subject isolation and cloning, background and sky swapping, and stylized effects that can add or animate elements (the article cites whimsical demos like flying chairs and raining tempura prawns). These tools are presented as easy, one-tap experiences integrated into the gallery and camera apps, aimed at consumers who want eye-catching social-media-ready videos without advanced editing skills. The catch is practical: many of the most impressive results rely on heavy on-device processing or cloud-based AI, may be limited to short clips, and can produce artifacts or inconsistent results. Some features may require online processing, rollout by region, or future software refinement, raising questions about privacy, battery drain, and real-world reliability despite the impressive demonstrations.

AI exposes the M&A integration gaps that governance must fix

Artificial intelligence creates critical visibility into structural and operational discrepancies during mergers and acquisitions (M&A) that traditional governance often overlooks. By processing massive datasets across merging organizations, AI tools identify hidden integration risks, such as mismatched IT infrastructures, security vulnerabilities, or fragmented data policies, which are common sources of post-merger failure. Effective governance must pivot to focus on AI-driven oversight to bridge these gaps. Organizations that leverage AI for due diligence and integration monitoring are better equipped to harmonize disparate corporate cultures and technical frameworks. This shift requires governance leaders to prioritize data integrity and ethical compliance to ensure sustained value realization in an increasingly automated business environment.

Shadow AI – a step too far, or an opportunity?

Shadow AI presents both significant risks and tangible opportunities for organizations and must be managed rather than simply banned. The article explains that "shadow AI"—employees using unsanctioned generative AI tools like ChatGPT and other external services—can boost productivity, creativity and speed up routine tasks, but simultaneously introduces data leakage, compliance, IP and security risks when sensitive information is shared with third-party models. It recommends a balanced, risk-aware approach: acknowledge that shadow AI will happen, provide approved, secure alternatives, and create clear policies, training and model governance. Practical controls include data-loss prevention, access controls, enterprise-grade AI platforms, monitoring and auditing, and cross-functional coordination between IT, security and business leaders. The piece urges organizations to convert rogue usage into governed innovation by enabling safe tools, educating staff on data handling, and applying risk-based rules—turning a potential governance blind spot into an advantage for adoption and competitive differentiation.

AI traffic to travel sites is booming as shoppers look for the best holiday deal without doing any research

AI-driven traffic to travel websites is surging as consumers increasingly rely on generative AI and chatbots to find and compare holiday deals instead of conducting traditional multi-site research. This shift is sending more users to travel sites via AI referrals and summarized recommendations, changing how shoppers discover options and narrowing the number of sites they visit during planning. The trend forces travel brands to rethink marketing, SEO and attribution: they must optimize content for AI consumption, ensure data accuracy to avoid misinformation from AI summaries, and explore partnerships with AI platforms to maintain visibility. Personalization and dynamic pricing become more important as AI funnels users toward curated results, but companies also face challenges in tracking conversions and protecting margins. Overall, the rise in AI-originated traffic presents both opportunities for streamlined customer journeys and risks around control of user decision-making and the accuracy of AI-driven recommendations.

e2e-assure introduces Cumulo, the U.K.’s only sovereign, AI-driven, zero-day SOC platform to secure IT and OT environments

Cumulo is a sovereign, AI-driven, zero-day SOC platform from e2e-assure designed to secure both IT and OT environments across the U.K., positioning itself as the nation's only fully sovereign option for real-time detection and response. The platform combines machine learning–based anomaly detection, automated triage and response, and integration with existing telemetry and threat intelligence to find and mitigate previously unseen (zero-day) threats. Emphasis is placed on data sovereignty and local control to address supply-chain and regulatory concerns, making it suitable for government, critical national infrastructure and regulated industries. Cumulo is presented as a managed, scalable SOC capability that reduces dwell time, supports continuous monitoring and can interoperate with existing security stacks to protect converged IT/OT estates while maintaining UK data residency and operational control.

10 settings and tools every AirPods Pro 3 user needs to know

Mastering ten essential settings and tools can significantly improve sound quality, comfort, battery life, and usability on the AirPods Pro 3. Key tips include using the Ear Tip Fit Test and Headphone Accommodations to personalize fit and EQ, enabling Personalized Spatial Audio for a more immersive experience, and toggling between Active Noise Cancellation, Transparency, and Adaptive Transparency for different environments. Customize press-and-hold or touch control actions in Bluetooth settings to switch modes quickly, and use Conversation Awareness to let voices through without removing an earbud. Practical maintenance and connectivity advice covers keeping firmware updated via your paired iPhone, using Find My with Precision Finding and Play Sound for lost buds, and conserving battery by managing automatic ear detection and background audio. Additional recommendations include optimizing call settings for clearer voice pickup, sharing audio between devices, and resetting or re-pairing if you encounter persistent issues.

The Best Fitness Trackers of 2026: Garmin, Google Fitbit, and More

Top fitness trackers in 2026 balance accuracy, battery life, and smart features to match different users’ priorities, with Garmin and Google’s Fitbit each leading distinct categories. Garmin remains the go-to for dedicated athletes thanks to class-leading GPS accuracy, long battery life, advanced training metrics, and robust multisport features (Forerunner/Venu/Enduro lines). Google’s Fitbit line focuses on accessible health tracking, sleep analysis, and a polished app experience for casual users and those on a budget. Smartwatches from Apple and Samsung offer deeper app ecosystems and daily-smartwatch functionality, while hybrid devices and rings emphasize comfort and continuous sleep/biometric monitoring. Key buying considerations include battery life versus real-time features, sensor accuracy (HR, SpO2, ECG), ecosystem and phone compatibility, and subscription costs for advanced analytics. The guide recommends specific models by use case—best for runners, best battery life, best value, and best overall—while advising readers to prioritize the metrics and integrations they’ll actually use over headline specs.

Britain is betting on AI. Now it needs the network that will run it

The UK's ambition to be a global AI leader depends on transforming its digital infrastructure to provide the high-capacity, low-latency networks required for modern AI development and delivery. The piece argues that without major upgrades in fiber, 5G, edge compute, data‑centre capacity and undersea connectivity, Britain will struggle to support large model training, real-time inference and widespread AI services. Beyond raw bandwidth, the article highlights the need for distributed edge nodes, local cloud capability, resilient power and cooling, and greener energy to handle the huge compute and energy demands of AI. It calls for coordinated public‑private investment, clearer regulatory frameworks, and skills development so industry and government can deploy AI securely and competitively. Missing these upgrades risks handing advantage to better-connected rivals and slowing adoption in healthcare, transport and industry; building the right network is framed as the critical next step for the UK’s AI strategy.

The enterprise AI gold rush is dead, and most companies aren’t ready for what comes next

The rush to slap AI labels on products and pursue rapid pilots has largely peaked, and organizations must now confront the harder work of integrating AI responsibly and profitably into operations. Many companies are discovering that hype-driven investments delivered limited ROI, while the real challenges—data quality, model maintenance, scaling, cost control, governance and regulatory compliance—remain unresolved. To move beyond the gold-rush phase, firms need to prioritize foundational capabilities: reliable data pipelines, clear ownership and accountability, robust MLOps and monitoring, risk management, and pragmatic productization focused on measurable business outcomes. Talent gaps, legacy IT constraints and immature procurement practices will slow progress unless addressed. The article argues for shifting from experimental pilots to disciplined engineering and governance, emphasizing measurable value, human oversight, and cost-aware deployment. Leaders should treat AI as a long-term operational transformation rather than a one-time technology bet, aligning incentives, upskilling staff, and investing in sustainable tooling and processes.

Older Macs and iPhones Could Lose Major Office 365 Features in a Few Weeks

Microsoft is about to block or limit key Microsoft 365 functionality on older Mac and iPhone Office apps unless users update their operating systems or Office clients. Users running legacy Office builds (including older perpetual-license versions) or outdated macOS/iOS may find Microsoft 365 sign-ins, cloud syncing, and editing of OneDrive/SharePoint documents degraded — apps can revert to read-only access or lose real-time co-authoring and other integrated features. The change is driven by Microsoft’s requirement for modern authentication, newer APIs, and updated client capabilities; staying on unsupported OS or app versions will prevent access to many cloud-first features. To avoid disruption, update macOS/iOS and Office apps, switch to the Office web apps, or consult IT administrators about upgrade paths. The requirement also affects newer platform-dependent services such as AI-powered features (Copilot) and advanced collaboration tools, which will only work on supported clients.

I found a hidden ChatGPT setting that changes how hard the AI thinks — and the difference surprised me

The 'o1' model in ChatGPT features a hidden parameter in its Custom Instructions that allows users to adjust the reasoning effort of the AI. By explicitly directing the model to 'think longer' or 'deepen its reasoning process' within these instructions, users can significantly boost performance for complex programming tasks, logic puzzles, and nuanced analysis. Deep reasoning allows the o1 model to dedicate more time to scratchpad-style processing before providing an final output, reducing errors and improving the quality of its logic. This discovery highlights how users can exert more control over the model's 'chain-of-thought' capabilities, effectively forcing the AI to slow down and verify its steps, which leads to noticeably more accurate and comprehensive results compared to default settings.

Source: Elastic agrees to buy CRV-backed DeductiveAI for up to $85M

Elastic has agreed to acquire CRV‑backed DeductiveAI for up to $85 million to accelerate its AI and data-product roadmap. The deal, reported by TechCrunch, is intended to fold DeductiveAI’s tooling and engineering talent into Elastic’s platform to enhance search, observability and AI-driven analytics across the Elastic Stack. DeductiveAI, backed by venture firm CRV, brings technology aimed at helping teams understand, debug and operationalize data-driven models and pipelines. Elastic expects the acquisition to strengthen its ability to offer customers tighter integrations between data ingestion, indexing and model-informed search/observability features, and to speed development of generative and retrieval-augmented capabilities on Elastic Cloud. Financial terms are structured as a headline value of up to $85M, likely including upfront consideration plus contingent payouts tied to milestones. Employees and stakes of DeductiveAI are expected to transition into Elastic, while the move positions Elastic more directly in the competitive space for AI-enabled infrastructure and observability tools.
Jun 18, 2026

Anthropic's Claude Code Artifacts update brings live, shared dashboards and interactive workspaces to enterprises

Anthropic's update to Claude Code Artifacts introduces live, shared dashboards and interactive workspaces that let enterprise teams build, run and collaborate on model-driven applications and analyses in real time. The release emphasizes collaborative development: multiple users can view and interact with the same dashboards and workspaces, execute cells or components live, and see updates immediately, which streamlines debugging, exploration and stakeholder reviews. The update also focuses on enterprise needs such as access controls, auditability and integrations with data sources and internal systems so organizations can securely surface model outputs to teams. Anthropic positions these features to accelerate productization of model capabilities across data science, analytics and engineering teams, reduce friction between prototyping and production, and enable governed sharing of insights. The article highlights how interactive artifacts aim to make model-driven workflows more transparent and collaborative for businesses adopting Claude-powered tools.

'Holy crap, this is not how you cool facilities' — Nuclear engineer wants to use special bubbles to save AI data centers from a massive energy crisis

A nuclear engineer proposes using specialized vapor-generating bubbles to boost heat transfer and radically improve cooling for AI data centers, potentially reducing energy demand and easing pressure on power grids. The concept centers on harnessing phase-change and bubble-driven convection inside liquid cooling systems to move heat away from high-power chips far more efficiently than conventional air or liquid cooling alone. The proposal has drawn strong online reaction — including skeptical warnings that it’s not how facilities are usually cooled — and experts note major challenges before deployment: engineering reliable bubble-generation at scale, contamination and maintenance risks, fluid chemistry and materials compatibility, redundancy and failure modes, and regulatory and safety concerns in live data centers. If validated through demonstration and rigorous testing, the approach could help lower operational costs, improve sustainability by enabling waste-heat recovery, and relieve energy-supply strain from rapidly growing AI compute demand, but significant R&D and cautious piloting are required.

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