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July 9, 2026 Read Full Article • 16 min read

Best 5 Password Managers in 2026

Compare the best password managers for families, free plans, business security, passkeys, secure sharing, breach alerts, and everyday autofill.

July 9, 2026 Read Full Article • 16 min read

Best 5 PDF Enhancers in 2026

Compare the best PDF enhancers for OCR, scanned PDF cleanup, readability, editing, compression, AI summaries, and document repair.

AI Tools July 8, 2026 Read Full Article • 14 min read

Best 5 Online Signature Generators in 2026

Compare the best online signature generators for handwritten signatures, typed signatures, AI signatures, free downloads, and document signing.

AI Tools July 8, 2026 Read Full Article • 15 min read

Best 5 Fitness and Workout Apps in 2026

Compare the best fitness apps and workout apps for home training, strength plans, personal coaching, Apple workouts, and gym tracking.

AI Tools July 7, 2026 Read Full Article • 16 min read

Best 5 Invoice Generators in 2026

Compare the best invoice generators for free invoices, online payments, branded templates, recurring billing, and small business invoicing.

AI Tools July 6, 2026 Read Full Article • 15 min read

Best 5 Online Whiteboard Tools in 2026

Compare the best online whiteboard tools for brainstorming, workshops, product planning, teaching, meetings, diagramming, and remote collaboration.

AI Tools July 6, 2026 Read Full Article • 16 min read

Best 5 Email Marketing Services in 2026

Compare the best email marketing services for newsletters, automation, ecommerce, small business campaigns, segmentation, and growth.

AI News

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

Jul 10, 2026

Meta's New AI Tool Creates Deepfakes. Here's How to Protect Yourself on Instagram

Meta's new AI image-generation features have made it easier to create convincing deepfakes and reuse people’s images without consent, prompting concerns about misuse on Instagram and other platforms. The article explains how the AI can produce realistic altered photos and composites, and highlights the risks of impersonation, harassment, reputational harm and nonconsensual image reuse that can result when these tools are widely available. Practical steps for protecting yourself on Instagram include tightening privacy settings (make your account private and review follower requests), limiting who can tag or mention you, regularly checking and removing unwanted tagged photos, and disabling or restricting features that share location or personal info. Use strong, unique passwords and enable two-factor authentication, be cautious about sharing intimate images, and verify suspicious content with reverse image search or by checking the source. Report deepfakes, impersonation, or abuse to Instagram promptly and consider watermarking original images; stay informed about platform policy updates and new AI tools so you can respond if your likeness is misused.

How AI can turn restaurant phone lines into profit centers

AI-powered conversational systems can transform restaurant phone lines from cost centers into revenue drivers by handling orders, reservations and upsells with natural language interactions. Implementing voice AI and advanced IVR that understand intent lets restaurants capture more business from callers 24/7, reduce missed orders and lift average order values through contextual recommendations. Practical benefits include integrating call-based AI with POS and CRM to sync orders, menu changes and loyalty data, automating routine inquiries (hours, menu, delivery) and routing complex issues to staff. Restaurants can realize labor savings, faster service and measurable lift in conversion rates; analytics from calls also reveal demand patterns and menu performance for data-driven decisions. Key considerations are accuracy of speech recognition, clear fallback to human agents, data privacy and PCI compliance for payment by phone. Successful deployments focus on seamless handoffs, testing for local accents and menu variations, and tracking ROI through call conversion, average check uplift and reduced handling time.

HIX.ai review

HIX.ai is an all-in-one AI writing assistant designed to streamline content creation across various platforms, functioning as both a browser extension and a web application. It integrates seamlessly into workflows by providing features like long-form article generation, email drafting, and social media post creation, while offering support for over 50 languages and multiple AI models, including GPT-4o and Claude 3.5. The platform distinguishes itself through its "HIX Editor," a tool that emulates the functionality of Google Docs with added AI-driven editing, proofreading, and rewriting capabilities. Its versatile sidebar extension ensures users have instant access to AI tools while browsing the web, making it a highly efficient solution for marketers, freelancers, and students seeking to enhance productivity and content quality.

‘The new battle ground for scaling and protecting margins’: AI servers set to consume more power than every conventional data center by 2027

AI servers are projected to draw more electricity than every conventional (non-AI) data center by 2027, creating a new operational and financial pressure point for operators and hyperscalers. Rapid growth in large-model training and dense GPU clusters is driving unprecedented rack-level power densities, forcing data center operators to rethink capacity planning, power provisioning, cooling and cost models. The article outlines how high-performance accelerators, tighter server consolidation and continuous inference workloads multiply energy demand, squeezing margins as energy bills and infrastructure investments rise. It highlights possible mitigations — liquid cooling, on-site generation and renewables, more efficient accelerators and tighter software/hardware co-design to improve utilization — while warning that retrofits and new designs will be costly. The piece stresses the strategic urgency: organizations must balance performance needs with energy efficiency and sustainability to protect margins, avoid supply and power constraints, and meet corporate carbon goals as AI workloads scale rapidly.

Why Human+AI collaboration beats AI-only automation

Human+AI collaboration delivers better outcomes than AI-only automation by combining human judgment, context awareness and ethical oversight with machine speed, pattern recognition and scale. This approach reduces costly errors from edge cases and ambiguity, preserves accountability, and improves trust and adoption by keeping humans in control of critical decisions. Practical benefits include faster throughput and improved accuracy where AI handles routine tasks and humans manage exceptions, nuance, and value judgments. The article highlights risks of full automation—automation bias, de-skilling, ethical lapses and brittle systems—and recommends design principles such as human-in-the-loop workflows, explainability, continuous feedback loops, clear role definitions, workforce reskilling and rigorous governance. Organizations are advised to measure real-world outcomes, phase deployments iteratively, and prioritize transparency to ensure systems augment human capabilities rather than replace essential human oversight.

'We need to see the pricing for AI come down': Palo Alto Networks CEO Nikesh Arora says AI is too expensive — and needs to fall 90% to become affordable

Palo Alto Networks CEO Nikesh Arora warns that the current high costs of artificial intelligence services are unsustainable, suggesting that prices must drop by 90% for the technology to achieve widespread, practical adoption. Arora argues that while AI captures immense excitement, the underlying operational expenses—particularly regarding cloud infrastructure and compute power—are currently too prohibitive for most enterprises to scale effectively. To make AI truly affordable and integrate it into standard business workflows, industry giants must optimize computational efficiency and reduce reliance on expensive high-end chips. Until these price points stabilize, businesses will continue to face barriers in deploying large-scale AI solutions, potentially slowing the overall digital transformation of the corporate sector.

The 'learn to code' era is over - and employers are on the hook for reskilling now

Employers must take primary responsibility for reskilling workforces rather than defaulting to the decades-old prescription that individuals should simply "learn to code." The article argues that structural changes in technology, automation and the labor market mean that telling people to self-teach coding is insufficient and often inequitable; companies that benefit from productivity gains have to invest in retraining, upskilling and internal mobility to sustain their talent pipelines. Practical approaches include employer-funded training programs, partnerships with bootcamps and community colleges, apprenticeships, on-the-job learning, and clearly defined career pathways with portable credentials. The piece highlights the need to measure training ROI, design curricula around business needs, provide mentoring and psychological safety, and include soft skills and systems thinking as well as technical competencies. It also discusses policy levers — tax incentives, public–private partnerships, and standards for credentialing — to scale reskilling. Overall, the call to action is clear: organizations must proactively invest in people to manage displacement from automation and AI and to build resilient workforces.

How AI is taking IoT security to the next level

AI dramatically improves IoT security by enabling real-time, scalable detection and response to device threats through behavioral analysis and automated mitigation. By using machine learning to establish normal device baselines and spot anomalies, organizations can detect previously unseen attacks, compromised firmware, and lateral movement across networks faster than signature-based systems. Practical implementations include edge and cloud ML models for low-latency monitoring, federated learning to preserve device privacy while improving models, and automated threat hunting and patch prioritization to reduce manual workload. Benefits highlighted include improved accuracy, reduced false positives, and the ability to protect diverse IoT ecosystems at scale. The article also addresses challenges such as data privacy, model explainability, adversarial attacks and poisoning, integration complexity, and the need for clear governance and human oversight. Overall, AI is portrayed as a force-multiplier for IoT security when combined with sound engineering, appropriate safeguards, and continuous model validation.

A New Experiential Gallery Just Might Change Your Mind About AI Art

An experimental gallery argues that experiencing AI-generated works in person can reshape public perceptions of AI art. It presents immersive installations and curated displays that emphasize the sensory, contextual, and collaborative aspects of artworks made with machine-learning tools, aiming to move conversations beyond simple binary judgments of authentic versus fake. The show highlights the creative processes—human curation, prompt engineering, model selection, and post-processing—that produce finished pieces, framing AI as a material and collaborator rather than an automatic auteur. By foregrounding provenance, intent, and presentation, the gallery challenges legal and ethical debates about authorship and ownership while inviting visitors to assess aesthetic value directly. The piece explains how situating AI work in physical, narrative-rich contexts can change how people interpret meaning, skill, and creativity, and suggests that museums and curators play a crucial role in shaping public understanding of machine-assisted art.

OpenAI unveils ChatGPT Work, an AI tool capable of handling workloads across finance, data analytics, engineering, and more

OpenAI has launched ChatGPT Work, a new offering designed to apply ChatGPT’s capabilities directly to enterprise workloads in finance, data analytics, engineering and other professional domains. The platform emphasizes workplace-focused features such as secure data handling, integrations with enterprise data sources, expanded context windows and tools for code, spreadsheets and documents to support tasks like financial modeling, automated reporting, data exploration and engineering problem-solving. ChatGPT Work layers admin controls, single sign-on and usage analytics on top of model capabilities to make deployment and governance easier for organizations. It provides specialized tools and connectors that let teams upload files, query internal datasets, run code-based analyses and create repeatable workflows. While promising significant productivity gains by automating routine analysis and coding tasks, the announcement also highlights the need for oversight around accuracy, data privacy and compliance when applying LLMs to critical business functions.

The dangerous myth of the ‘best’ AI model

No single AI model is universally “best”; effectiveness depends on context, objectives and constraints. The piece argues that treating one architecture or leaderboard winner as the optimal solution overlooks crucial trade-offs such as latency, cost, domain fit, robustness, interpretability and alignment. Benchmarks can be gamed, larger scale does not guarantee safer or more useful outcomes, and evaluation focused only on narrow metrics can conceal weaknesses in real-world deployment. Practical performance often hinges on data quality, fine-tuning, human feedback, and system design rather than raw model size. Relying on a presumed best model creates risks of monoculture, vendor lock-in and misaligned incentives that can amplify harms or failures. The article recommends diversifying evaluation metrics, prioritizing domain-specific models or ensembles when appropriate, increasing transparency around training and limitations, and fostering an ecosystem of interoperable, well-governed models to balance innovation, safety and real-world utility.

Worried about Flock cameras? All new cars in the EU now need to have a camera aimed at the driver's face in the latest privacy nightmare

The EU now mandates inward-facing driver-monitoring cameras in newly approved cars, provoking strong privacy and surveillance worries even as regulators pitch the change as a road-safety measure. The cameras are intended to detect driver distraction, drowsiness and impairment to enable advanced driver-assistance systems to intervene or warn the driver, reducing accidents. Critics warn the tech creates new avenues for persistent biometric surveillance: onboard camera feeds and derived facial/eye-tracking data could be retained, aggregated or accessed by insurers, law enforcement or commercial partners unless strictly limited. Comparisons to external ALPR/“Flock” systems highlight fears about linking in-cabin images with outside camera networks or location records. Privacy advocates call for tight GDPR-style constraints, local-only processing, minimal retention, strong encryption, independent audits and clear limits on sharing. Automakers and regulators say safeguards are possible, but debate continues over transparency, opt-out options and enforcement for older vehicles already on the road.

Asus ProArt GeForce RTX 5090 review: a slimmer SFF-ready RTX 5090 for creators who need flagship performance and 32GB of VRAM

The Asus ProArt GeForce RTX 5090 delivers flagship-class RTX 5090 performance in a slimmer, small-form-factor (SFF)-friendly design while offering a generous 32GB of VRAM for creators who work with large scenes and high-res video. The card targets content creators rather than pure gamers, combining excellent rasterization and ray-tracing performance with NVIDIA features such as DLSS frame generation and extensive CUDA/RT/Tensor resources. The 32GB of memory is a standout for workloads like 3D rendering, motion graphics, and high-resolution timeline editing where VRAM limits can bottleneck workflows. Asus’s ProArt tuning prioritizes stability and color-accurate design, making the card suitable for studio use. In trade-offs, the slimmer cooler and SFF-focused layout mean the card runs warmer and can be louder under sustained heavy loads compared with thicker custom designs, and it still demands a strong PSU and appropriate case airflow. The ProArt RTX 5090 is a compelling choice for creators needing flagship performance and large VRAM in constrained builds, albeit at a premium price.

OpenAI says GPT 5.6 is the ‘preferred model’ for Microsoft Copilot amid breakup chatter

OpenAI says GPT-5.6 is the preferred model for Microsoft Copilot, signaling continued product alignment between the two companies despite recent reports of a potential split. The company confirmed that GPT-5.6 offers the best balance of capability, safety and latency for Copilot integrations, and that Microsoft has been using it as the default backend in key Copilot features. This assertion comes amid media stories and market speculation about tensions in the OpenAI–Microsoft relationship and discussions over licensing, pricing and roadmap control. The piece outlines how reliance on GPT-5.6 underscores Microsoft’s dependence on OpenAI models for its flagship assistant products, while analysts warn that commercial and strategic frictions could prompt Microsoft to invest in alternative models or negotiate new terms. The article summarizes reactions from both companies (measured and noncommittal), potential customer impact, and what this status means for future model development and cloud integration, noting that any major breakup would be complex and costly for enterprise customers and platform continuity.
Jul 9, 2026

Prime Intellect raises $130M at $1B valuation for its AI training platform

Prime Intellect secured $130 million in new financing at a $1 billion valuation to expand its AI model training platform, positioning the company as a newly minted unicorn focused on large-scale model training and infrastructure. The company offers a training stack that aims to lower cost and complexity for organizations building large language models and other generative AI systems, combining optimized software, orchestration, and hardware-agnostic deployment across cloud and on-premises environments. The platform emphasizes faster throughput, improved resource utilization, and tools for dataset management, model tuning, and MLOps workflows to accelerate time-to-model. Proceeds from the round will be used to scale engineering and operations, broaden global capacity, and accelerate R&D into performance improvements and enterprise features. The raise underscores strong investor demand for companies that provide end-to-end training infrastructure as demand for custom and larger AI models continues to grow across industries.

Mindbeam sets generative AI models to task on drug design, hunting for better pain meds

Mindbeam uses generative AI to accelerate discovery and optimization of novel pain medications, claiming to shorten lead identification and improve candidate quality through in-silico design. The company applies advanced generative chemistry models and large language models trained on biochemical and medicinal chemistry data to propose novel scaffolds, optimize potency and selectivity, and predict ADMET and synthetic feasibility earlier in the discovery process. Mindbeam combines algorithmic design with laboratory validation workflows and partner collaborations to move promising candidates toward preclinical testing, focusing on non‑opioid mechanisms and reduced side-effect profiles. The piece highlights potential benefits—faster iteration, lower costs, and expanded chemical space exploration—while noting challenges including data quality, model interpretability, and the need for rigorous experimental validation and regulatory pathways before clinical use.

TheCUBE Research finds Oracle’s AI database move could unlock bigger multicloud returns

Oracle’s introduction of AI-native database capabilities could materially increase multicloud value by simplifying AI deployments and improving data portability across clouds. TheCUBE Research argues that embedding AI features—such as vector search, model inference close to data, and built-in ML pipelines—into the database layer reduces friction for enterprises running large language models and other AI workloads, which in turn can lower costs and speed time-to-value in multicloud environments. TheCUBE Research highlights how these capabilities help address data gravity, minimize cross-cloud data movement, and standardize operational practices across providers, making hybrid and multicloud strategies more economically attractive. It also cautions about potential trade-offs: risks include vendor lock-in, the need for strong governance, and migration complexity for legacy systems. The report recommends practical steps for CIOs and architects, including prioritizing open formats and interoperability, designing federated data architectures, and investing in governance and skills to capture the promised multicloud returns from AI-enabled databases.

OpenAI debuts ChatGPT Work, an agentic tool for automating business workflows

OpenAI launched ChatGPT Work, an agentic platform that enables organizations to build and run autonomous AI agents to automate multi-step business workflows. The offering extends ChatGPT’s capabilities beyond chat by allowing configurable agents to access tools, connect to enterprise systems, and carry out sequences of actions with oversight and audit logging. ChatGPT Work includes integrations and connectors for common enterprise apps, templates for tasks such as customer support triage, scheduling, reporting and data extraction, and controls for security, permissioning and human-in-the-loop approval. The product is positioned for teams and IT to create reusable, governed automations without heavy engineering, while preserving data controls and enterprise administration features. OpenAI framed the release as part of its push to bring agentic automation into real business operations, aiming to reduce manual work and speed processes. The announcement noted availability for enterprise customers and plans to expand access and partner integrations over time.

Publishers Accuse OpenAI of Withholding Evidence in Copyright Lawsuits

Publishers including The New York Times and Ziff Davis claim OpenAI has withheld key evidence in multiple copyright lawsuits, arguing the company has not fully produced documents and data requested during discovery. Plaintiffs allege OpenAI resisted or delayed turning over internal communications, records about training data and licensing, and other materials that could show whether copyrighted works were used without permission. OpenAI has cited confidentiality, trade-secret concerns and burdens of compliance in resisting some disclosure, while courts and plaintiffs have pushed for more transparency. The disputes focus on what information about model training and data provenance must be shared to adjudicate claims that large language models were trained on copyrighted content. Potential outcomes include court orders to compel production, protective orders limiting public disclosure, or sanctions for noncompliance. The litigation underscores broader tensions between AI developers’ secrecy and the need for accountability, with implications for future AI regulation, copyright law, and industry practices around data use and transparency.

Fidji Simo steps down from OpenAI’s no. 2 role

Fidji Simo has stepped down from her role as OpenAI’s president and No. 2 executive, leaving the company less than two years after joining to help lead product and commercialization efforts. TechCrunch reports the departure was confirmed by OpenAI and outlines Simo’s responsibilities overseeing product, partnerships and go-to-market strategy, as well as the immediate organizational implications. The article places the exit in the context of Simo’s background as former Instacart CEO, her high-profile hire amid OpenAI’s rapid expansion, and broader executive turnover in the AI industry. It describes company statements, notes potential interim arrangements and successor searches, and examines how the change could influence OpenAI’s product roadmap, internal operations and external relationships with partners and regulators. Industry analysts and observers are cited to assess short-term impact and what the shift signals about leadership priorities as AI companies scale.

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