Security teams log 54% of successful attacks and alert on just 14%. The rest move through your environment unseen.
The Picus whitepaper shows how breach and attack simulation tests your SIEM and EDR rules so threats stop slipping by detection.
Three-quarters of school districts now have AI guidelines, up sharply from just a year ago, yet 82 percent of teachers say they have never received formal guidance on how to use AI in their work. EdSurge reporter Lauren Coffey breaks down the 2026 CoSN State of Ed Tech report and what it reveals about AI adoption, cybersecurity gaps, and edtech vetting inside K-12 districts. Then host Ira Apfel talks with Joseph South, chief innovation officer at ISTE+ASCD, about why teachers say they feel unprepared to bring AI into their classrooms and what it would take to change that.
What You’ll Learn
Why AI adoption in K-12 districts jumped from 54 percent in 2025 to 75 percent this year, and why most prefer local flexibility over state or federal mandates.Why cybersecurity remains many districts’ top concern even as two-thirds lack the staff and budget to address it, and what the Canvas ransomware attack reveals about the real cost of that gap.
What the Gallup and Walton Family Foundation data actually shows about the teacher guidance crisis: 82 percent of teachers have received no formal AI guidance, 34 percent have received no guidance at all, and 69 percent have received no guidance specifically on using AI for one-on-one instruction or tutoring.
How districts in Long Beach, Gwinnett County, and Fairfax County are building transparency-first AI frameworks, and what the Lighthouse Schools model offers as a replicable path for districts that want to move without waiting for policy from above.
Listen to the episode:
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LG Display recently announced that its OLED panels can accurately reproduce colors and brightness levels as content creators intended. The Korean manufacturer is the first company to pass a new Intertek certification program, and says it will use the achievement to better communicate the benefits of its display technology to…
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Orders are now open for Meta Glasses, a new lineup launched in partnership with EssilorLuxottica and sold under Meta’s own name for the first time. The AI-powered wearables carry over the core features from the earlier Ray-Ban and Oakley models but start at $299, undercutting the entry-level Ray-Ban Meta by $80.
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Early reviews praise the MSI Claw 8 EX AI+ for pushing handheld performance, with Intel’s Arc G3 Extreme outperforming current AMD rivals in many tests. However, at $1,800 and lack no OLED display, it’s a very tough sell.
Tata Electronics has confirmed in a statement to BleepingComputer that it was the target of a cyberattack that impacted parts of its IT infrastructure.
The company emphasizes that its operations continued to run normally and were not affected by the incident.
“A few weeks ago, Tata Electronics identified a cybersecurity incident on some of our systems,” a Tata Electronics spokesperson told BleepingComputer.
“Our response protocols were deployed immediately, and the incident has had no impact on our operations across businesses, which remain unaffected.”
Tata Electronics is a division of the Tata Group, an Indian multinational conglomerate, focused on electronic components and semiconductor manufacturing.
Since its founding in 2020, it has quickly grown to become one of India’s largest technology manufacturing companies, currently producing and assembling Apple iPhones and iPhone components.
While Tata Electronics has not disclosed the threat actor’s identity, the statement comes in response to a related claim by the World Leaks threat group, which leaked data allegedly stolen from Tata.
Among the leaked information, there are multiple directories and documents allegedly containing manufacturing data for Apple products, including internal component schematics, PCB designs, material specifications, and SDK files.

BleepingComputer has contacted Apple to inquire about the claims and whether any proprietary data has been exposed, but we have not yet received a response.
World Leaks is considered a rebrand of the Hunters International ransomware group, which wound down its operations in July 2025.
Unlike Hunters International, which used data encryptors in its attacks, World Leaks operates purely as a data extortion group, stealing files and threatening to leak them online.
Other high-profile victims of the same threat group are computer manufacturer Dell, which confirmed a breach in July 2025, and sportswear giant Nike, which launched an investigation after a claimed theft of 1.4 TB of files in January 2026.
Security teams log 54% of successful attacks and alert on just 14%. The rest move through your environment unseen.
The Picus whitepaper shows how breach and attack simulation tests your SIEM and EDR rules so threats stop slipping by detection.
While many enterprises have already begun integrating AI-generated images, visuals, graphics and videos into their production workflows — there is also a growing pool of data and subjective commentary indicating AI imagery ultimately looks non-distinct, monotonous, and too unoriginal to ensure a brand and its assets stand out from the pack. That it’s “AI slop,” in other words.
AI creative tools startup Krea is hoping to change that trend by opening up the weights to its new frontier AI image model Krea 2 as two versions, “Krea 2 Raw” and “Krea 2 Turbo,” under a custom license that requires firms with more than 50 seats to pay for Enterprise usage, and mandates all users of any size to implement technical safeguards to prevent the generation of illegal materials, non-consensual intimate imagery (NCII), child sexual abuse material (CSAM), or defamatory assets.
Both models are available for public download on Hugging Face. The company says the models provide more visual variety than typical AI generators, while maintaining high prompt accuracy, fidelity, and quality. Importantly, they also offer enterprises and users the ability to customize the generative outputs much more than typical proprietary or even other open source models.
And, for those seeking to generate imagery at high-throughput, Krea 2 Turbo’s generation speed is only 2 seconds, making it among the fastest now available across open and proprietary AI image generation models.
|
Model / Generator |
Developer / Platform |
Avg. Generation Time |
Licensing & Commercial Use |
Key Characteristics |
|
FLUX.1 [schnell] (fast) |
Prodia |
0.5 seconds |
Open Weights (Apache 2.0). Fully permissive for free commercial use. |
Highly optimized endpoint utilizing step distillation to deliver sub-second generation times, representing the absolute floor for current API latency. |
|
Z-Image Turbo |
Replicate / fal.ai |
1.8 seconds |
Proprietary. Commercial rights require active API usage contracts. |
Designed for instantaneous inference bursts. Both Replicate and fal.ai achieve identical 1.8-second median times on this model. |
|
Krea 2 Turbo |
Krea |
2.0 seconds |
Open Weights / Proprietary Hybrid. Available via platform trial or API. |
Maintains the base model’s compatibility with style references and LoRAs while utilizing Trajectory Distribution Matching (TDM) to accelerate the creative ideation loop. |
|
Midjourney v8.1 (Turbo Mode) |
Midjourney |
3 – 6 seconds |
Proprietary. Commercial use requires an active Standard, Pro, or Mega tier subscription. |
Delivers generation speeds “three times faster than v8” while maintaining the model’s signature “painterly realism with sophisticated lighting,” though it requires a “higher credit cost”. |
|
FLUX.2 [klein] 4B |
Black Forest Labs |
3.9 seconds |
Open Weights. Permissive commercial use. |
The lightweight 4-billion parameter variant of the FLUX.2 architecture, balancing prompt adherence with high-speed generation. |
|
FLUX.2 [klein] 9B |
Black Forest Labs |
4.6 seconds |
Open Weights. Permissive commercial use. |
The medium-weight 9-billion parameter open model. It scales up compositional intelligence while keeping generation firmly under the 5-second barrier. |
|
MAI Image 2 Efficient |
Microsoft |
4 – 7 seconds |
Proprietary. Commercial use requires consumption-based API billing via Azure AI Foundry. |
A throughput-optimized variant explicitly designed to “out-pace Google’s Imagen Flash”. It makes a slight trade-off in detail for “substantially lower latency” that suits “automated pipelines” perfectly. |
|
Midjourney v8.1 (Fast Mode) |
Midjourney |
5 – 9 seconds |
Proprietary. Commercial use requires an active Standard, Pro, or Mega tier subscription. |
The standard operational mode for v8.1. Average wait times “consistently lands below 10 seconds for most prompts” while offering “excellent handling of complex multi-element scenes”. |
|
FLUX.2 [dev] |
fal.ai / DeepInfra |
6.1 – 6.4 seconds |
Open Weights (Non-Commercial). Strictly for research and non-commercial development. |
The developer-focused research model. API endpoint optimizations cause slight variance, with fal.ai operating at 6.1 seconds and DeepInfra at 6.4 seconds. |
|
Midjourney v8.1 (Relax Mode) |
Midjourney |
8 – 14 seconds |
Proprietary. Commercial use requires an active Standard, Pro, or Mega tier subscription. |
Processes standard 1024×1024 resolution images without consuming fast GPU hours. The model retains “strong compositional instincts” and “consistent color grading and mood”. |
|
FLUX.2 [pro] |
Black Forest Labs |
11.1 seconds |
Proprietary. Commercial rights require paid API consumption. |
The closed, professional-grade tier. It drops extreme step-distillation to prioritize high-fidelity commercial rendering and strict spatial alignments. |
|
Seedream 4.0 |
BytePlus |
11.6 seconds |
Proprietary. Commercial use via BytePlus enterprise contracts. |
The base commercial generation model for the Seedream architecture, focused on reliable, standard-resolution outputs. |
|
MAI Image 2 Standard |
Microsoft |
12 – 20 seconds |
Proprietary. Commercial use requires consumption-based API billing via Azure AI Foundry. |
Operates as a “full-quality output optimized for photorealism”. It acts as a literal renderer, delivering “high-fidelity skin tones and material textures” and “strong literal prompt adherence”. |
|
Nano Banana Pro (Gemini 3 Pro Image) |
Google DeepMind |
17.7 seconds |
Proprietary. Commercial rights granted via Gemini API terms. |
Prioritizes exact semantic accuracy and prompt adherence through an extended reasoning phase, trading raw speed for complex contextual execution. |
|
Seedream 4.5 |
BytePlus |
18.2 seconds |
Proprietary. Commercial use via BytePlus enterprise contracts. |
The upgraded high-fidelity variant, requiring an additional 6.6 seconds of compute time over the 4.0 version to refine complex textures and text rendering. |
|
Krea 2 Large |
Krea |
23.7 seconds |
Proprietary / Open Weights. Commercial rights depend on deployment. |
The un-distilled foundation model. It ignores the speed-focused Trajectory Distribution Matching of the Turbo variant to maximize aesthetic polish and structural stability. |
|
FLUX.2 [max] |
Black Forest Labs |
25.6 seconds |
Proprietary. Closed enterprise API. |
The heaviest parameter model in the FLUX lineup. It operates exclusively as a deep reasoning renderer for complex commercial assets. |
|
GPT-Image-2 |
OpenAI |
200.8 seconds |
Proprietary. Full commercial usage under standard OpenAI terms. |
A massive outlier in the latency landscape. It dedicates over three minutes to complex, multi-step semantic reasoning, likely utilizing an expansive chain-of-thought process prior to finalizing pixel outputs. |
Sources: Artificial Analysis, Krea, MindStudio.AI
At the technical core of the release sits an architectural framework built entirely from scratch: a Diffusion Transformer scaled to 12 billion parameters.
Rather than deploying a single, heavily fine-tuned model for all downstream tasks, Krea open-sources two highly differentiated checkpoints captured at distinct milestones of the model’s training lifecycle.
Departing from multi-stream configurations for structural clarity, the core engine standardizes on a single-stream transformer block architecture wherein attention and MLP layers are shared natively between text and image tokens.
To maximize computational efficiency, Krea incorporates a SwiGLU MLP layer operating at a 4x expansion factor alongside Grouped-Query Attention (GQA) combined with gated sigmoid attention layers to stabilize training dynamics.
Timestep conditioning is heavily optimized; the network replaces traditional per-block MLP modules with a lightweight, per-block tunable bias term, successfully cutting total block modulation parameters by 20% to 30% and reallocating that parameter budget directly into core layers.
Positional encoding is managed via a 3D Axial Rotary Position Embedding (RoPE) scheme mapping across individual frame, height, and width coordinate
Krea 2 Raw represents an undistilled base release checkpoint taken directly from the mid-training stage of the larger Krea 2 Medium development cycle.
Because it lacks post-training alignment, reinforcement learning from human feedback (RLHF), or final aesthetic distillation, Krea 2 Raw functions as a blank canvas.
It retains a vast, uncurated latent space that makes it poorly suited for immediate out-of-the-box prompting, but highly optimized for structural training.
Operating this model via the Hugging Face `diffusers` library requires a heavy compute footprint, executing via `Krea2Pipeline` in `torch.bfloat16` precision across 52 inference steps with a guidance scale of 3.5.
To accelerate early-stage architectural convergence during the first epoch of this 256px baseline training phase, Krea applied internal Representation Alignment (iREPA) techniques before decoupling them to let the underlying model develop independent structural representations.
The second checkpoint, Krea 2 Turbo, represents the opposite end of the optimization spectrum.
It is a distilled, post-trained variant derived from Krea 2 Medium. Through knowledge distillation, the network’s complex multi-step generation sequence is compressed into an incredibly lean operational profile.
Krea 2 Turbo slashes the required generation cycle down to just 8 inference steps with a guidance scale of 0.0, enabling it to render native 2k resolution imagery on standard consumer-grade hardware in approximately 2 seconds.
The underlying latent representations for both models are optimized through the integration of the Qwen Image VAE and the FLUX 2 VAE to guarantee rapid convergence while maintaining high reconstruction fidelity.
The underlying dataset strategy for the Krea 2 family relies on a hybrid blend of publicly harvested data, third-party licensed image repositories, and highly curated synthetic datasets built via proprietary generation methods.
Prior to final training, Krea processed these collections through rigorous algorithmic filters designed to strip out duplicative frames, low-resolution media, and explicit or harmful material, ensuring high fidelity and strong prompt compliance across both models.
Krea enforces a zero-synthetic data policy within its primary pretraining mix.
To prevent the upper-bound quality limitations and output biases induced by AI-generated data, the engineering team deployed custom in-house filtering classifiers built on top of DINOv3 and SigLIP-2 architectures to completely purge synthetic images at scale.
Furthermore, rather than using traditional model-based aesthetic filters that inadvertently strip away artistic intents like motion blur, Krea preserves wide stylistic boundaries.
The team trained a Sparse Autoencoder (SAE) on SigLIP-2 embeddings to isolate and filter out genuine visual artifacts using an unsupervised tagging framework.
The release establishes a highly deliberate operational paradigm for professional studios and independent creators: “train on Raw, generate with Turbo.” This workflow leverages the unique architectural properties of both open-weight files to optimize both training accuracy and rendering speed.
In creative production pipelines, engineers can use Krea 2 Raw to train custom Low-Rank Adaptations (LoRAs) or domain-specific fine-tunes.
Because the Raw checkpoint contains no baked-in stylistic opinions or aggressive post-training constraints, it absorbs unique aesthetic directions—such as architectural drafting styles, specific brand assets, or complex lighting designs—with high fidelity and zero stylistic interference.
Once the training phase is complete, creators can port those exact LoRAs directly over to Krea 2 Turbo.
This methodology is reflected in Krea’s own development ecosystem, which hosts an in-house collection of custom LoRAs trained entirely on the Raw foundation model but optimized for execution within Turbo workflows.
On the user-facing application layer, Krea integrates this dual-engine setup with a powerful style transfer system. Rather than relying on erratic text descriptions to achieve an artistic look, users can feed multiple style reference images directly into the system.
Krea 2 maps these references across its latent space, allowing creators to isolate individual aesthetic components, combine distinct moodboards, adjust style strength via generative sliders, and fine-tune batch variation levels to maintain visual cohesion across large-scale design iterations.
To address the gap between raw textual training captions and brief user inputs, Krea paired this suite with an advanced LLM Prompt Expander. Refined via Generalized Deep Q-Network Preference Optimization (GDPO) and trained on synthetic thinking traces to preserve intent reconstruction, the expander applies a photographic-medium bias to photorealistic requests and integrates an active DINOv3 embedding diversity score across rollout groups to prevent automated prompting routines from collapsing into a singular house style.
While Krea 2 Medium and Krea 2 Large remain the company’s flagship models for high-fidelity composition and absolute stylistic adherence, Turbo fills the critical role of rapid visual ideation.
It serves as an interactive scratchpad for early concept creation, quick prompt experimentation, and iterative art direction where near-instantaneous feedback loops are required to maintain creative momentum.
The open-weight assets deploy under the Krea 2 Community License Agreement operating alongside an official Acceptable Use Policy.
At a macro level, this legal framework mirrors recent industry trends toward commercial-use permissions that target small businesses while restricting large enterprise exploitation.
The license explicitly permits individuals, independent creators, and small commercial companies to build applications, monetize generated imagery, and integrate the open weights directly into commercial software products without royalty obligations.
Furthermore, Krea states that it “does not claim copyright or other intellectual property rights over content generated by users of this model,” leaving output ownership entirely in the hands of the operator.
For organizations scaling beyond this baseline, the ecosystem shifts into a paid, custom-tier structure.
While Krea’s official documentation lacks a rigid revenue threshold defining a “large enterprise,” the company structurally demarcates the boundary based on organizational footprint: standard commercial usage caps at a “Business” tier accommodating up to 50 seats.
Therefore, any entity requiring more than 50 seats, Single Sign-On (SSO) integrations, guaranteed Service Level Agreements (SLAs), or custom Data Processing Agreements (DPAs) qualifies as an Enterprise.
These larger entities fall outside the free Community License scope and must pay for a custom commercial license—operating under “Custom Terms of Service”—negotiated directly with Krea’s sales team.
Additionally, developer access to Krea’s official API remains entirely decoupled from the open-weights release; API usage operates as a distinct, paid service billed dynamically on a per-generation basis (measured in microdollars) and requires a prepaid USD balance independent of standard monthly compute subscriptions.
However, a close examination reveals a significant structural shift regarding legal and behavioral compliance for all self-hosted deployments.
Unlike traditional open-source permissions like the MIT or Apache 2.0 licenses—which grant unconditional usage rights and completely waive liability—the Krea 2 Community License implements strict downstream behavioral guardrails.
Because Krea relinquishes centralized control over the downstream deployment of its open weights, the contract legally binds deployers to enforce content moderation protocols at the infrastructure layer.
Under the terms of the agreement, any developer or platform hosting Krea 2 models must implement active input/output classifiers or equivalent content filtering mechanisms to actively prevent the generation of illegal materials, non-consensual intimate imagery (NCII), child sexual abuse material (CSAM), or defamatory assets.
Developers who fail to deploy these defensive safety layers stand in immediate breach of contract, giving Krea the explicit right to update model weights or revoke access to the model family entirely.
Founded in 2022 by audiovisual systems engineering dropouts Víctor Perez and Diego Rodriguez Prado, San Francisco-based Krea initially captured market traction as a highly fluid user interface layer built to orchestrate disparate, third-party AI generative engines.
The startup’s rapid scaling via product-led adoption culminated in an aggregate $83 million in disclosed venture capital funding from major VCs including Andreessen Horowitz and Bain Capital Ventures, as well as early-stage institutional backers including Pebblebed, Abstract Ventures, and Gradient Ventures.
The company’s user base surpassed 30 million individuals across 191 countries as of June 2026, according to its website.
The open-weights launch of the Krea 2 model family represents the culmination of Krea’s deliberate evolution from a multi-model SaaS aggregator into a self-sustaining media research lab.
Early in its lifecycle, Krea focused on building workflow tools, editing systems, and a node-based automation pipeline that allowed digital artists to unify models from competitors like Runway, Midjourney, and Adobe under a single subscription.
However, to insulate itself against upstream platform dependencies and supplier margin pressures, the company aggressively shifted toward developing proprietary architectures. This transition began taking public shape in July 2025 with the open-weights release of the custom-curated FLUX.1 Krea checkpoint, followed in October 2025 by Krea Realtime 14B—an autoregressive video model distilled from Wan 2.1 capable of rendering 11 frames per second on localized enterprise hardware.
This underlying technical maturation parallels Krea’s accelerating push into high-end enterprise workflows. Large-scale creative production operations have shifted toward treating Krea as core creative infrastructure; for example, the digital creative services platform
Superside reported migrating workflows from fragmented open-source setups to route roughly 80 percent of its total AI generative production through Krea.
Furthermore, Krea established a strategic co-development partnership with Copenhagen-headquartered architecture firm Henning Larsen to build highly restricted, domain-specific design tools tuned to meet the compliance frameworks mandated by the EU AI Act.
By releasing Krea 2 Raw and Turbo as open weights, Krea is continuing its expansion from an AI tools provider to being a model provider in its own right.
Creators are focusing heavily on the structural freedom offered by the unaligned Raw checkpoint, viewing it as an important alternative to the locked-down APIs provided by closed-source models.
Through the official announcement on X, Krea emphasized the foundational shift this launch represents for open AI workflows.
Developers note that by treating AI as an “actual creative medium” that feels “raw, flexible, unopinionated, and unconstrained,” Krea is intentionally providing an infrastructure that creators can “break if [they] want to,” moving far away from the rigid safety guardrails that frequently limit the visual range of competing enterprise tools.
As independent model builders begin compiling the Hugging Face repositories, the practical value of the release will be determined by how effectively the open-source community can scale customized LoRAs using Krea 2 Raw.
By providing clear commercial terms and lowering hardware entry barriers via Turbo’s 8-step inference pipeline, Krea has introduced a highly competitive alternative to the open-weights market, challenging dominant models by prioritizing artistic control over centralized corporate alignment.
A recent craze in education that has garnered the attention of students and teachers alike is the ever increasing presence of phone pouches, or more specifically for my school, Yondr pouches, These small, neoprene packs have a firm magnetic seal that can only be released by tapping it against an unlocking base. Their main purpose is quite simple: stop students from accessing their phone during the school day. The rationale is that the less time students spend on their phone, the more time they will spend learning.
Recently, the response from students and teachers seems to be fairly divided, with most students vehemently opposing it and most teachers earnestly welcoming it. Indeed, according to a recent poll from the Pew Research Center, a majority of U.S. teenagers oppose banning phones during the school day. On the contrary, a separate survey of 1,098 adults found that 93% of adults support cell phone restrictions. This survey is part of the Understanding America Study (UAS), which was conducted last year by the University of Southern California Center for Economic and Social Research.
While common sense dictates what side I should take as a teacher, I can’t say I’m a fervent supporter of phone pouches.
The Problem with Storage
On the surface, phone pouches promise to create distance between the phone and their pupil. Ultimately, this distance may improve learning outcomes by helping minimize phone-fueled distractions. Indeed, according to a study published in the Journal of the American Medical Association (JAMA), U.S. teenagers already spend approximately 70 minutes using their phones during the school day. Those 70 minutes lost could’ve been used to advance a student’s understanding of content, cultivate their ability to work with others or simply finish a recent assignment. Thus, with a Yondr pouch, those are an additional 70 minutes teachers like myself have to work with. However, what most don’t seem to understand is that implementing phone bans with a product like Yondr pouches has its drawbacks.
My district uses phone pouches because our policy prohibits students from using their phones the entire school day. Students are required to put their phones in these packs before their first class of the day. Every teacher and administrator has an unlocking station magnet that unlocks the pouches at the end of the school day.
At the beginning of every class, I spend roughly the first seven minutes walking around to check each student’s Yondr pouch. It’s a routine that provides me (as well as my colleagues) reassurance that every phone is truly sealed away. Considering a standard school day lasts seven class periods, that is already 49 minutes of instructional time a student has lost on Yondr pouches. But the worst part is, that’s only a conservative estimate. It doesn’t account for the additional time wasted on further surveillance.
Monitoring Student Activity
Oftentimes, as I monitor students, I see them attempting to circumvent this restriction on phones entirely. Whether students are scrambling to put their phone away since it was never locked up, messing with the seal so it appears to be untampered with or gritting their teeth because they have a fake phone in the pouch that they hope will deceive their teachers by tricking them that their real phone is in their pouch. For instance, some students instead put a calculator or a broken, “fake” phone instead of their real phone to subvert the policy. Because they have a fake phone in the pouch that they hope will trick their teachers, it still costs time.
I have seen students intentionally arrive late to school to avoid phone checks, use pencils to jam open the lock or simply steal magnets teachers use to unlock the pouches. Ultimately, each of these infractions add up. Now, instead of prioritizing learning through meaningful instructional time, teachers have adopted an additional role of policing the phone policy.
And what benefits, really, do the pouches have? A recent paper, “The Effects of School Phone Bans: National Evidence from Lockable Pouches,” found that Yondr pouches have no statistically significant impact on standardized scores for high schoolers in English. And the impacts in math are modest at best
Bans Backfiring
Fundamentally, what makes these pouches unsuited for education is not that they don’t stop phone use; rather, it’s because that’s all they accomplish. As educators, we often can’t see the forest for the trees. We get so caught up in locking up phones and villainizing students who pull them out during classtime, that we forget why they’re being used in the first place. We forget that there was once a time when students entered the classroom with the sole intention to learn something new, and to learn it well.
So, if promoting learning is truly the goal, a phone pouch isn’t the way to do it. Rather, addressing the underlying reasons why these pouches were needed in the first place will.
I would suggest that school districts approach the rollout of phone pouches with curiosity, not with blanket enforcements. This can mean dedicating several class periods during the first week of school to discuss this topic. Instead of walking through the various parts of your syllabus, have an open conversation with your students about the impacts of phones in their daily lives: When do you use them? How do you use them? What do you use them for?
From there, you can introduce them to what the research shows on the impacts of phone use in the classroom, bringing new meaning to a seemingly harmless (and leisurely) way of spending the day. This way, rather than pure enforcement, you can cultivate a culture where students “buy in” to this new phone practice, promoting both better learning outcomes and student agency.

Microsoft is promising relief to engineers who get woken up at 3 a.m. for outages and other cloud glitches: an agent informed by its years of experience running Azure, designed to diagnose whatever’s going wrong and recommend potential fixes.
One big benefit over humans: the agent can operate without the stress, fatigue, or tunnel vision that often hampers people doing it on little sleep.
“Agents are a little bit less emotionally attached,” said Brendan Burns, a Microsoft technical fellow and corporate vice president who was one of the creators of Kubernetes. He pointed out that agents don’t feel the pressure when a manager asks for a rapid root-cause analysis.
The Azure Copilot Observability Agent, in preview since late last year, was made generally available Tuesday. It investigates incidents by connecting the logs, metrics, traces and other signals scattered across a company’s systems, then points engineers toward the likely cause.
At this point, the agent does not fix problems on its own. Microsoft also introduced what it calls autonomous operations, in preview, letting the agent triage and investigate alerts without a person prompting it. But it still stops short of acting. It won’t restart a resource or change a configuration, for example, instead leaving it to humans to decide and execute.
Microsoft is joining a crowded field. Datadog made its Bits AI SRE agent generally available in December, and Amazon’s AWS followed with a comparable DevOps Agent this spring. Microsoft said the agent is priced based on usage rather than a flat per-seat license, which is the same model AWS uses for its DevOps Agent.
Established observability players including Dynatrace, Splunk, New Relic and Grafana are moving quickly in the same direction, alongside a wave of AI-focused startups.
In an interview with GeekWire this week, Burns said he believes Microsoft’s breadth is one of its advantages, seeing more of a customer’s software than rivals do, from GitHub to Azure deployments to the signals systems generate. Knowing how those connect, he said, helps the agent trace a problem back to the line of code behind it.
More than a decade ago, Burns and his then-Google colleagues Joe Beda and Craig McLuckie created Kubernetes, the open-source software that lets companies run applications across large, constantly changing infrastructure. It became foundational to cloud computing, and added to the complexity teams now have to manage.
Kubernetes brought a kind of self-repair to that world: when something breaks, it works automatically to restore the system to a healthy state. But it follows fixed rules, Burns said. It’s “very deterministic” — it “can’t make hypotheses, it can’t investigate solutions.”
AI tools like the Azure observability agent are meant to add that missing layer: forming a theory about what went wrong, testing it against the data, and continuing to work to find a solution.
Full autonomy — letting the agent act, not just investigate — is still down the road. In a blog post Tuesday, Burns framed the launch as part of a broader shift toward “agentic operations,” which reason across signals and will someday be able to act on them.
For now, the agent can do a lot of the digging, even if a human still makes the call.
Burns, who recalled once pulling a 36-hour on-call shift, said he can think of “a lot of late nights that would have been a lot nicer if I’d had this 10 years ago.”

Apple’s refreshed AirPods Max 2, priced at $399 on Prime Day (was $549), immerse you with a listening experience that grabs your attention right away and keeps it there without you having to think about it. The improved noise cancellation eliminates common distractions, such as road rumble or workplace noise, keeping the music front and center. When someone nearby begins talking, the headphones detect it and lower the volume for you, allowing you to hear what’s going on outside in crystal clear detail until the conversation is over. Pairing with Apple devices happens automatically and switches in the blink of an eye, while the USB-C connector allows for both quick top-ups as well as wired playback with CD-quality sound.
Mounting the eufy SoloCam S340 in a sunny location allows the solar panel’s battery to stay charged, eliminating the need to recharge it or run any cables to get it going. The dual lens setup provides a nice wide view of the yard as well as the option to zoom in and get a closer look at anything that catches your eye, all in crystal clear 3K during the day and in stunning color at night. With motorized pan and tilt, the camera can track activity across the yard, leaving no blind zones, while the app only sends you a legitimate alarm when it detects a real person or a vehicle, not every single leaf that falls. There’s a built-in light to lighten things up when needed, and local storage means that all clips are preserved safely directly on the camera, with no subscription required. Two-way communication works great over the phone, and connecting is a breeze with only your usual Wi-Fi and some easy controls. Product page.
Lenovo’s Idea Tab includes a pen and a folio case, making it a ready-to-use tool for taking notes, reading, or simply working. The 11-inch screen displays all details at a fluid 90 frames per second, and its matte texture eliminates bothersome glare, even on bright days, when you’re browsing pages or viewing videos. The included Tab Pen glides over the screen like a dream, making it easy to write, draw, or even sign papers without the need for setup or pairing. The battery life will last you a whole day of mixed use: watch a few shows, browse the web, do some light office work, and don’t need to recharge till the next day. The built-in speakers work well whether you’re viewing movies or listening to music, and you can quickly add more storage with a memory card as your app collection and files develop. Everything operates on the current Android version, and the controls are really basic, making it easy to complete daily tasks and respond quickly to the initial swipe. Product page.
The Samsung The Frame 55-Inch LS03F TV is designed in such a way that it adheres perfectly to the wall, with barely a gap and just one cable connected to an outside box; it looks more like a large piece of framed artwork than a television screen. In its off state, Art Mode displays art gallery quality artworks or pictures which seem to be printed and three dimensional because of the matte surface of the screen which prevents reflection in regular light. Bezel customization ensures that the frame blends in with the woods of the room. The processor takes care of all the processes including streaming applications and also upscaling old media without any lag in the interface. Once it is mounted along with some choice artworks, it becomes visually less conspicuous and yet provides a great viewing experience. Product page.
The recently released second-generation AirTag perfectly fits into the previous compact circular form factor, but with a very important upgrade, which is increased accuracy. The signal emitted by the AirTag when activated from the Find My app will be much louder, regardless of whether it’s hiding underneath the couch cushion or inside a bag. Setup is easy since AirTags will connect with Apple’s large network of devices, which will quietly transmit the location of AirTags when out of reach. The battery will last you approximately a year before having to change it, and the AirTag itself is so small that it can easily attach to your keys or slip into your wallet without adding any extra weight. Product page.
The newest Kindle Paperwhite screen at Amazon feels incredibly like paper, without the shine or reflections, which makes the words readable in broad daylight and under lamp light during the night. Turning of the pages happens by light tap on the screen, and there is no need to make pauses or interruptions by the device in the process of reading. Warm light mode contributes to reducing the brightness and making the nighttime reading easier. Plus, the battery life is quite decent, which means that it works weeks and needs only quick charging through USB-C port. Despite the abundance of technology in it, the device is quite light and thin, which makes it possible to hold the gadget in one hand all day long. It is also water-resistant, so the device will not suffer from any water contacts, be it a bath or a beach. Besides, you can save thousands of books on the device and even more in the clouds. Product page.

Lime went full Beastmode for last Friday’s FIFA World Cup match in Seattle.
Seahawks legend Marshawn Lynch was among the riders who helped Lime set a new single-day ridership record in Seattle, with 83,000 trips recorded on shared bikes and scooters.
The tally eclipsed a record set by fans of Lynch’s former team in February when they descended on Seattle for the Super Bowl Championship parade and took more than 60,000 trips.
Across the full week, from June 15 through June 21, Lime said riders took more than 300,000 trips on its devices in Seattle, underscoring Lime’s position as the sole shared e-bike and scooter provider in the city — and the popularity of micromobility during crowded events.

“Major events put real pressure on city streets, transit systems and people’s wallets, and Seattle’s first week of match play showed how micromobility can help,” Parker Dawson, senior regional lead of government relations at Lime, said in a statement Tuesday.
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The company — which has 15,000 devices on city streets — says it worked closely with the Seattle Department of Transportation and local stakeholders “to support safe, organized and reliable operations.” Around Pioneer Square, the waterfront and stadium district, huge numbers of Lime devices were staged in drop-off and pick-up spots.
The company also gave away free helmets to riders and deployed teams to help with orderly parking and fleet rebalancing. Lime introduced temporary geofencing and launched a Fan Pass for discounted riding and flexible use through July 19.
“Seattle showed the world how shared e-bikes and scooters can help a major host city move,” Dawson said.
Sound Transit’s Link light also set a record, drawing approximately 280,000 riders on Friday and exceeding a mark of 220,000 that it also set earlier this year during the Super Bowl parade.
The agency said it operated at peak service from 6 a.m. to 1 a.m. to get soccer fans from across the region to and from Friday’s match. Baseball fans also descended on T-Mobile Park for a sold-out Mariners game that evening.
Seattle will host four more World Cup matches:
For this year’s Prime Day, MSI has slashed the price of the Pro MP165 E6 portable monitor to $65 (was $95) at Amazon.
That’s an incredible price for an ultra-thin, ultra-light portable monitor from a well-known brand. And with this price cut, I don’t hesitate in calling this the best budget second display you can get in the sales.
Taking this out for a test drive, we used the screen as part of our professional IT set-up while working on desktops, working across multiple locations, and even used it to create music tracks on a Mac mini. We found it easy to deploy throughout. For a 15.6in 1080p display, there’s not much we didn’t like.
• See all Prime Day deals at Amazon.com
Scoring 4 stars in our review, we called it “a super-light, hyper-functional portable display that is great to have as an extra display for all of your tech.”
After spending time trying this out across a range of workflows, we found it well-designed for business professionals who could really use more screen real estate.
Now, it’s not the most feature-rich portable monitor we’ve ever reviewed – notable, color coverage is average, so I wouldn’t recommend this as a primary screen for video and photo editing.
But it’s not entirely stripped back. Highlights here include the stable integrated kickstand, single cable set-up, and VESA mountable design.
I’m seeing plenty of discounts on portable monitors for Prime Day – including a few at $50. But personally, I’d spend the extra fifteen bucks and pick up the MSI screen. Considering the big 32% discount, I think MSI’s budget pick is the one to go for.
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