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OpenAI launches centralized agent platform as enterprises push for multi-vendor flexibility

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OpenAI launched Frontier, a platform for building and governing enterprise AI agents, as companies increasingly question whether to commit to single-vendor systems or maintain multi-model flexibility.

The platform offers integrated tools for agent execution, evaluation, and governance in one place. But Frontier also reflects OpenAI’s push into enterprise AI at a moment when organizations are actively moving toward multi-vendor architectures — creating tension between OpenAI’s centralized approach and what enterprises say they want.

Tatyana Mamut, CEO of the agent observability company Wayfound, told VentureBeat that enterprises don’t want to be locked into a single vendor or platform because AI strategies are ever-evolving. 

“They’re not ready to fully commit. Everybody I talk to knows that eventually they’ll move to a one-size-fits-all solution, but right now, things are moving too fast for us to commit,” Mamut said. “This is the reason why most AI contracts are not traditional SaaS contracts; nobody is signing multi-year contracts anymore because if something great comes out next month, I need to be able to pivot, and I can’t be locked in.”

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How Frontier compares to AWS Bedrock

OpenAI is not the first to offer an end-to-end platform for building, prototyping, testing, deploying, and monitoring agents. AWS launched Bedrock AgentCore with the idea that there will be enterprise customers who don’t want to assemble an extensive collection of tools and platforms for their agentic AI projects. 

However, AWS offers a significant advantage: access to multiple LLMs for building agents. Enterprises can choose a hybrid system in which an agent selects the best LLM for each task. OpenAI has not made it clear if it will open Frontier to models and tools from other vendors.

OpenAI did not say whether Frontier users can bring any third-party tools they already use to the platform, and it didn’t comment on why it chose to release Frontier now when enterprises are considering more hybrid systems.

But the company is working with companies including Clay, Abridge, Harvey, Decagon, Ambience, and Sierra to design solutions within Frontier. 

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What is Frontier

Frontier is a single platform that offers access to different enterprise-grade tools from OpenAI. The company told VentureBeat that Frontier will not replace offerings such as the Agents SDK, AgentKit, or its suite of APIs. 

OpenAI said Frontier helps bring context, agent execution, and evaluation into a single platform rather than multiple systems and tools.

OpenAI Frontier flow chart

“Frontier gives agents the same skills people need to succeed at work: shared context, onboarding, hands-on learning with feedback, and clear permissions and boundaries. That’s how teams move beyond isolated use cases to AI co-workers that work across the business,” OpenAI said in a blog post.

Users can connect their data sources, CRM tools, and other internal applications directly to Frontier, effectively creating a semantic layer that normalizes permissions and retrieval logic for agents built on the platform to pull information from. Frontier has an agent executive environment, which can run on local environments, cloud infrastructures, or “OpenAI-hosted runtimes without forcing teams to reinvent how work gets done.”

Built-in evaluation structures, security, and governance dashboards allow teams to monitor agent behavior and performance. These give organizations visibility into their agents’ success rates, accuracy, and latency. OpenAI said Frontier incorporates its enterprise-grade data security layer, including the option for companies to choose where to store their data at rest.

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Frontier launched with a small group of initial customers, including HP, Intuit, Oracle, State Farm, Thermo Fisher, and Uber.

Security and governance concerns

Frontier is available only to a select group of customers with wider availability coming soon. Enterprise providers are already weighing what the platform needs to address.

Ellen Boehm, senior vice president for IoT and AI Identity Innovation at Keyfactor, told VentureBeat that companies will still need to focus their agents on security and identity. 

“Agent platforms like OpenAI’s Frontier model are critical for democratizing AI adoption beyond the enterprise,” she said. “This levels the playing field — startups get enterprise-grade capabilities without enterprise-scale infrastructure, which means more innovation and healthier competition across the market. But accessible doesn’t mean you skip the fundamentals.” 

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Salesforce AI executive vice president and GM Madhav Thattai, who is overseeing an agent builder and library platform at his company, noted that no matter the platform, enterprises need to focus agents on value.

“What we’re finding is that to build an agent that actually does something at scale that creates real ROI is pretty challenging,” Thattai said. “The true business value for enterprises doesn’t reside in the AI model alone — it’s in the ‘last mile.’”

“That is the software layer that translates raw technology into trusted, autonomous execution. To traverse this last mile, agents must be able to reason through complexity and operate on trusted business data, which is exactly where we are focusing.” 

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How AI Will Change Chip Design

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The end of Moore’s Law is looming. Engineers and designers can do only so much to miniaturize transistors and pack as many of them as possible into chips. So they’re turning to other approaches to chip design, incorporating technologies like AI into the process.

Samsung, for instance, is adding AI to its memory chips to enable processing in memory, thereby saving energy and speeding up machine learning. Speaking of speed, Google’s TPU V4 AI chip has doubled its processing power compared with that of its previous version.

But AI holds still more promise and potential for the semiconductor industry. To better understand how AI is set to revolutionize chip design, we spoke with Heather Gorr, senior product manager for MathWorksMATLAB platform.

How is AI currently being used to design the next generation of chips?

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Heather Gorr: AI is such an important technology because it’s involved in most parts of the cycle, including the design and manufacturing process. There’s a lot of important applications here, even in the general process engineering where we want to optimize things. I think defect detection is a big one at all phases of the process, especially in manufacturing. But even thinking ahead in the design process, [AI now plays a significant role] when you’re designing the light and the sensors and all the different components. There’s a lot of anomaly detection and fault mitigation that you really want to consider.

Portrait of a woman with blonde-red hair smiling at the cameraHeather GorrMathWorks

Then, thinking about the logistical modeling that you see in any industry, there is always planned downtime that you want to mitigate; but you also end up having unplanned downtime. So, looking back at that historical data of when you’ve had those moments where maybe it took a bit longer than expected to manufacture something, you can take a look at all of that data and use AI to try to identify the proximate cause or to see something that might jump out even in the processing and design phases. We think of AI oftentimes as a predictive tool, or as a robot doing something, but a lot of times you get a lot of insight from the data through AI.

What are the benefits of using AI for chip design?

Gorr: Historically, we’ve seen a lot of physics-based modeling, which is a very intensive process. We want to do a reduced order model, where instead of solving such a computationally expensive and extensive model, we can do something a little cheaper. You could create a surrogate model, so to speak, of that physics-based model, use the data, and then do your parameter sweeps, your optimizations, your Monte Carlo simulations using the surrogate model. That takes a lot less time computationally than solving the physics-based equations directly. So, we’re seeing that benefit in many ways, including the efficiency and economy that are the results of iterating quickly on the experiments and the simulations that will really help in the design.

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So it’s like having a digital twin in a sense?

Gorr: Exactly. That’s pretty much what people are doing, where you have the physical system model and the experimental data. Then, in conjunction, you have this other model that you could tweak and tune and try different parameters and experiments that let sweep through all of those different situations and come up with a better design in the end.

So, it’s going to be more efficient and, as you said, cheaper?

Gorr: Yeah, definitely. Especially in the experimentation and design phases, where you’re trying different things. That’s obviously going to yield dramatic cost savings if you’re actually manufacturing and producing [the chips]. You want to simulate, test, experiment as much as possible without making something using the actual process engineering.

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We’ve talked about the benefits. How about the drawbacks?

Gorr: The [AI-based experimental models] tend to not be as accurate as physics-based models. Of course, that’s why you do many simulations and parameter sweeps. But that’s also the benefit of having that digital twin, where you can keep that in mind—it’s not going to be as accurate as that precise model that we’ve developed over the years.

Both chip design and manufacturing are system intensive; you have to consider every little part. And that can be really challenging. It’s a case where you might have models to predict something and different parts of it, but you still need to bring it all together.

One of the other things to think about too is that you need the data to build the models. You have to incorporate data from all sorts of different sensors and different sorts of teams, and so that heightens the challenge.

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How can engineers use AI to better prepare and extract insights from hardware or sensor data?

Gorr: We always think about using AI to predict something or do some robot task, but you can use AI to come up with patterns and pick out things you might not have noticed before on your own. People will use AI when they have high-frequency data coming from many different sensors, and a lot of times it’s useful to explore the frequency domain and things like data synchronization or resampling. Those can be really challenging if you’re not sure where to start.

One of the things I would say is, use the tools that are available. There’s a vast community of people working on these things, and you can find lots of examples [of applications and techniques] on GitHub or MATLAB Central, where people have shared nice examples, even little apps they’ve created. I think many of us are buried in data and just not sure what to do with it, so definitely take advantage of what’s already out there in the community. You can explore and see what makes sense to you, and bring in that balance of domain knowledge and the insight you get from the tools and AI.

What should engineers and designers consider when using AI for chip design?

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Gorr: Think through what problems you’re trying to solve or what insights you might hope to find, and try to be clear about that. Consider all of the different components, and document and test each of those different parts. Consider all of the people involved, and explain and hand off in a way that is sensible for the whole team.

How do you think AI will affect chip designers’ jobs?

Gorr: It’s going to free up a lot of human capital for more advanced tasks. We can use AI to reduce waste, to optimize the materials, to optimize the design, but then you still have that human involved whenever it comes to decision-making. I think it’s a great example of people and technology working hand in hand. It’s also an industry where all people involved—even on the manufacturing floor—need to have some level of understanding of what’s happening, so this is a great industry for advancing AI because of how we test things and how we think about them before we put them on the chip.

How do you envision the future of AI and chip design?

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Gorr: It’s very much dependent on that human element—involving people in the process and having that interpretable model. We can do many things with the mathematical minutiae of modeling, but it comes down to how people are using it, how everybody in the process is understanding and applying it. Communication and involvement of people of all skill levels in the process are going to be really important. We’re going to see less of those superprecise predictions and more transparency of information, sharing, and that digital twin—not only using AI but also using our human knowledge and all of the work that many people have done over the years.

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Nvidia rival Cerebras raises $1bn at $23bn valuation

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Cerebras raised $1.1bn in a previous round last September at an $8.1bn post-money valuation.

Cerebras Systems, the AI chipmaker aiming to rival Nvidia, has raised $1bn in a Series H round led by Tiger Global with participation from AMD. The raise values the company at around $23bn, nearly triple the valuation made a little over four months ago.

Other backers in this round include Benchmark; Fidelity Management & Research Company; Atreides Management; Alpha Wave Global; Altimeter; Coatue; and 1789 Capital, among others.

The new round comes after Cerebras raised $1.1bn last September at an $8.1bn post-money valuation backed by several of the same investors.

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Just days later, the company withdrew from a planned initial public offering (IPO) without providing an official reason. At the time of the IPO filing in 2024, there was criticism around its heavy reliance on a single United Arab Emirates-based customer, the Microsoft-backed G42.

Cerebras still intends to go IPO as soon as possible, it said.

The recent raise better positions the company to compete with global AI chip leader Nvidia. Cerebras claims that it builds the “fastest AI infrastructure in the world” and company CEO Andrew Feldman has also gone on record to say that his hardware runs AI models multiple times faster than that of Nvidia’s.

Cerebras is behind WSE-3, touted to be the “largest” AI chip ever built, with 19-times more transistors and 28-times more compute that the Nvidia B200, according to the company.

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The company has a close connection with OpenAI, according to statements made by both Feldman and OpenAI chief Sam Altman – who happens to be an early investor in the chipmaker. Last month, the two announced a partnership to deploy 750MW of Cerebras’s wafer-scale systems to make OpenAI’s chatbots faster.

OpenAI – a voracious user of Nvidia’s AI technology – has been in search of alternatives,  although that’s not to say that OpenAI is backing down from using Nvidia technology in the future.

Last year, OpenAI drew up a 6GW agreement with AMD to power its AI infrastructure. The first 1GW deployment of AMD Instinct MI450 GPUs is set to begin in the second half of 2026.

At the time of the announcement, Altman said that the deal was “incremental” to OpenAI’s work with Nvidia. “We plan to increase our Nvidia purchasing over time”, he added.

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Medtronic and University of Galway open device prototype hub

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The facility is part of a five-year, €5m signature innovation partnership between Medtronic and the university.

US and Irish medical device company Medtronic and the University of Galway have launched their Medical Device Prototype Hub, a specialist facility designed to support the medtech ecosystem, STEM engagement and research.

Development of the hub, which belongs to the university’s new Technology Services Directorate, is part of a five-year, €5m signature innovation partnership between Medtronic and the university. 

Professor David Burn, the president of the university, said: “The launch of the Medical Device Prototype Hub at University of Galway marks a hugely significant milestone in our signature partnership with Medtronic, but it also sends a strong message to all those in the sector and all those who are driving innovation.

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“University of Galway is creating the ecosystem in which our partners in research and innovation can thrive. We look forward to celebrating the breakthroughs and successes that this initiative enables.”

The Medical Device Prototype Hub forms part of the Institute for Health Discovery and Innovation, which was established at the university in 2024.

It will be further supported via collaborations with government agencies and industry leaders, aiming to create a collaborative environment that promotes innovation and regional growth in life sciences and medical technologies. 

The university said that the hub has a range of expert staff to facilitate concept creation, development and manufacturing of innovative medical device prototypes.

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It offers a suite of services to support early-stage medical device innovation – for example, virtual and physical prototyping – that enables rapid design iteration through computer aided design, modelling and simulation.  

“The Technology Services Directorate brings together key research facilities that support fundamental research at University of Galway,” said Aoife Duffy, the head of the directorate. 

“It aims to advance our research excellence by bringing together state-of-the-art core facilities and making strategic decisions on infrastructure and investment. The new prototype hub significantly enhances the innovation pathway available for the university research community and wider, and we look forward to working with Medtronic on this partnership.” 

Ronan Rogers, senior R&D director at Medtronic, added: “Today’s launch of the Medical Device Prototype Hub represents an exciting next step in our long‑standing partnership with University of Galway. Medtronic has deep roots in the west of Ireland, and this facility strengthens a shared commitment to advancing research, accelerating innovation and developing the next generation of medical technologies. 

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“We are proud to invest in an ecosystem that not only drives technological progress but also supports talent development. This hub will unlock new avenues for discovery and accelerate the path from promising ideas to real‑world medical solutions for patients.”

Just last week (27 January), two University of Galway projects won proof-of-concept grants from the European Research Council. One of the winning Galway projects is called Concept-AM and is being led by Prof Ted Vaughan, who is also involved with the new hub.

Concept-AM aims to advance software that enables engineers to design lighter, stronger and more efficient components optimised for 3D printing across biomedical, automotive and aerospace applications, creating complex and lightweight parts with less material waste.

Don’t miss out on the knowledge you need to succeed. Sign up for the Daily Brief, Silicon Republic’s digest of need-to-know sci-tech news.

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Shokz OpenFit Pro, Nex Playground, Sony A7 V and more

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We’re starting to hit our stride in 2026. Now that February is here, our reviews team is flush with new devices to test, which means you’ve got a lot to catch up on if you haven’t been following along. Read on for a roundup of the most compelling new gear we’ve tested recently from gaming, PCs, cameras and more.

Nex Playground

Image for the large product module

Nex

The Nex Playground brings motion-tracked games to the entire family. Consider it the best of the Xbox Kinect in a tiny box.

Pros
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  • Fun core titles
  • Solid motion-tracking
  • Well-designed hardware and UI
  • Large library of games
  • Works offline
Cons
  • Requires an ongoing subscription to access most games
  • Needs large open space for play

If you still have a fondness for the Xbox Kinect, the Nex Playground might be right up your alley. Senior reporter Devindra Hardawar recently put the tiny box through its paces and found an active gaming experience that’s fun for the whole family. “While I have some concerns about the company’s subscription model, Nex has accomplished a rare feat: It developed a simple box that makes it easy for your entire family to jump into genuinely innovative games and experiences,” he wrote.

MSI’s Prestige 14 Flip AI+

Image for the large product module

MSI

MSI’s Prestige 14 Flip AI+ is a remarkably powerful ultraportable, thanks to Intel’s Panther Lake chips. But it’s held back by a clunky trackpad and weak keyboard.

Pros
  • Excellent CPU performance
  • Solid gaming support
  • Bold OLED screen
  • Tons of ports
  • Relatively affordable
Cons
  • Awful mechanical trackpad
  • Dull-feeling keyboard
  • Display is limited to 60Hz

Devindra also tested MSI’s latest laptop, the powerful Prestige 14 Flip AI+. While the machine got high marks for its performance, display and connectivity, he noted that the overall experience is hindered by subpar keyboard and truly awful trackpad. “As one of the earliest Panther Lake laptops on the market, the $1,299 Prestige 14 Flip AI+ is a solid machine, if you’re willing to overlook its touchpad flaws,” he explained. “More than anything though, the Prestige 14 makes me excited to see what other PC makers offer with Intel’s new chips.”

Shokz OpenFit Pro

Image for the large product module

Shokz/Engadget

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Finally, a set of open earbuds that actually sound good and provide noticeable ambient noise reduction.

Pros
  • Effective noise reduction
  • Comfy fit
  • Great sound for open earbuds
  • Dolby Atmos support
Cons
  • Sound quality varies with ear shape
  • Over ear hook isn’t for everyone
  • Noise reduction isn’t as effective as ANC

Fresh off of its Best of CES selection, I conducted a full review of the OpenFit Pro earbuds from Shokz. I continue to be impressed by the earbuds’ ability to reduce ambient noise while keeping your ears open. And the overall sound quality is excellent for a product that sits outside of your ears.

Sony A7 V

Image for the large product module

Sony/Engadget

With a new partially-stacked 33MP sensor, Sony’s A7 V offers speed, autofocus accuracy and the best image quality in its class.

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Pros
  • Fast shooting speeds
  • Quick and accurate autofocus
  • Outstanding photo quality
  • Good video stabilization
Cons
  • Video lags behind rivals
  • Uncomfortable to hold for long periods

Contributing reporter Steve Dent has been busy testing cameras to start the year. This week he added the Sony A7 V to the list, noting the excellent photo quality and accurate autofocus. “The A7 V is an incredible camera for photography, with speeds, autofocus accuracy and image quality ahead of rivals, including the Canon R6 III, Panasonic S1 II and Nikon Z6 III,” he said. “However, Sony isn’t keeping up with those models for video.”

Apple AirTag (2026)

Image for the large product module

Apple/Engadget

Apple has improved its Bluetooth tracker in practically every way, making it louder and extending its detection range.

Pros
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  • Precise Finding is far more useful
  • Louder and easier to hear
  • Same price as the original AirTag
Cons
  • Still lacks a keyring hole
  • Apple’s AirTag accessories are too expensive

Our first Editors’ Choice device of 2026 is Apple’s updated AirTag. All of the upgrades lead to a better overall item tracker, according to UK bureau chief Mat Smith. “There’s no doubt the second-gen AirTags are improved, and thankfully, upgrading to the new capabilities doesn’t come at too steep a cost,” he concluded.

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Daily Deal: The Ultimate AWS Data Master Class Bundle

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from the good-deals-on-cool-stuff dept

The Ultimate AWS Data Master Class Bundle has 9 courses to get you up to speed on Amazon Web Services. The courses cover AWS, DevOPs, Kubernetes Mesosphere DC/OS, AWS Redshift, and more. It’s on sale for $40.

Note: The Techdirt Deals Store is powered and curated by StackCommerce. A portion of all sales from Techdirt Deals helps support Techdirt. The products featured do not reflect endorsements by our editorial team.

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TechEx Global returns to London with enterprise technology and AI execution

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London, TechEx Global 2026, one of Europe’s biggest enterprise technology conferences, brought thousands of technology professionals together at Olympia London on 4 and 5 February. The event went beyond buzzwords, focusing on how emerging technologies, especially AI, are being applied in real business contexts.  TechEx Global combines several co-located expos, including AI & Big Data, Cyber Security & Cloud, IoT Tech, Intelligent Automation, and Digital Transformation. Over 200 expert speakers and 150 exhibitors offered insights into how organisations are using digital tools to solve real problems and make decisions, not just generate answers.  From talk to execution One recurring theme…
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IEEE Online Mini-MBA Helps Fill AI Skills Gaps

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Boardroom priorities are shifting from financial metrics toward technical oversight. Although market share and operational efficiency remain business bedrocks, executives also must now manage the complexities of machine learning, the integrity of their data systems, and the risks of algorithmic bias.

The change represents more than just a tech update; it marks a fundamental redefinition of the skills required for business leadership.

Research from the McKinsey Global Institute on the economic impact of artificial intelligence shows that companies integrating it effectively have boosted profit margins by up to 15 percent. Yet the same study revealed a sobering reality: 87 percent of organizations acknowledge significant AI skill gaps in their leadership ranks.

That disconnect between AI’s business potential and executive readiness has created a need for a new type of professional education.

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The leadership skills gap in the AI era

Traditional business education, with its focus on finance, marketing, and operations, wasn’t designed for an AI-driven economy. Today’s leaders need to understand not just what AI can do but also how to evaluate investments in the technology, manage algorithmic risks, and lead teams through digital transformations.

The challenges extend beyond the executive suite. Middle managers, project leaders, and department heads across industries are discovering that AI fluency has become essential for career advancement. In 2020 the World Economic Forum predicted that 50 percent of all employees would need reskilling by 2025, with AI-related competencies topping the list of required skills.

IEEE | Rutgers Online Mini-MBA: Artificial Intelligence

Recognizing the skills gap, IEEE partnered with the Rutgers Business School to offer a comprehensive business education program designed for the new era of AI. The IEEE | Rutgers Online Mini-MBA: Artificial Intelligence program combines rigorous business strategy with deep AI literacy.

Rather than treating AI as a separate technical subject, the program incorporates it into each aspect of business strategy. Students learn to evaluate AI opportunities through financial modeling, assess algorithmic risks through governance frameworks, and use change-management principles to implement new technologies.

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A curriculum built for real-world impact

The program’s modular structure lets professionals focus on areas relevant to their immediate needs while building toward comprehensive AI business literacy. Each of the 10 modules includes practical exercises and case study analyses that participants can immediately apply in their organization.

The Introduction to AI module provides a comprehensive overview of the technology’s capabilities, benefits, and challenges. Other technologies are covered as well, including how they can be applied across diverse business contexts, laying the groundwork for informed decision‑making and strategic adoption.

Rather than treating AI as a separate technical subject, the online mini-MBA program incorporates the technology throughout each aspect of business strategy.

Building on that foundation, the Data Analytics module highlights how AI projects differ from traditional programming, how to assess data readiness, and how to optimize data to improve accuracy and outcomes. The module can equip leaders to evaluate whether their organization is prepared to launch successful AI initiatives.

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The Process Optimization module focuses on reimagining core organizational workflows using AI. Students learn how machine learning and automation are already transforming industries such as manufacturing, distribution, transportation, and health care. They also learn how to identify critical processes, create AI road maps, establish pilot programs, and prepare their organization for change.

Industry-specific applications

The core modules are designed for all participants, and the program highlights how AI is applied across industries. By analyzing case studies in fraud detection, medical diagnostics, and predictive maintenance, participants see underlying principles in action.

Participants gain a broader perspective on how AI can be adapted to different contexts so they can draw connections to the opportunities and challenges in their organization. The approach ensures everyone comes away with a strong foundation and the ability to apply learned lessons to their environment.

Flexible learning for busy professionals

With the understanding that senior professionals have demanding schedules, the mini-MBA program offers flexibility. The online format lets participants engage with content in their own time frame, while live virtual office hours with faculty provide opportunities for real-time interaction.

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The program, which offers discounts to IEEE members and flexible payment options, qualifies for many tuition reimbursement programs.

Graduates report that implementing AI strategies developed during the program has helped drive tangible business results. This success often translates into career advancement, including promotions and expanded leadership roles. Furthermore, the curriculum empowers graduates to confidently vet AI vendor proposals, lead AI project teams, and navigate high-stakes investment decisions.

Beyond curriculum content, the mini MBA can create valuable professional networks among AI-forward business leaders. Participants collaborate on projects, share implementation experiences, and build relationships that extend beyond the program’s 12 weeks.

Specialized training from IEEE

To complement the mini-MBA program, IEEE offers targeted courses addressing specific AI applications in critical industries. The Artificial Intelligence and Machine Learning in Chip Design course explores how the technology is revolutionizing semiconductor development. Integrating Edge AI and Advanced Nanotechnology in Semiconductor Applications delves into cutting-edge hardware implementations. The Mastering AI Integration in Semiconductor Manufacturing course examines how AI enhances production efficiency and quality control in one of the world’s most complex manufacturing processes. AI in Semiconductor Packaging equips professionals to apply machine learning and neural networks to modernize semiconductor packaging reliability and performance.

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The programs grant professional development credits including PDHs and CEUs, ensuring participants receive formal recognition for their educational investments. Digital badges provide shareable credentials that professionals can showcase across professional networks, demonstrating their AI competencies to current and prospective employers.

Learn more about IEEE Educational Activities’ corporate solutions and professional development programs at innovationatwork.ieee.org.

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GPT 5.3 Codex, OpenAI's new agentic coding model, helped create itself

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GPT-5.3 Codex merges the advanced coding capabilities of GPT-5.2 Codex with the reasoning and professional knowledge of GPT-5.2 into a single, unified model that is 25 percent faster than its predecessors. According to OpenAI, the model even contributed to its own development, as early versions were used to debug training processes,…
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Today’s NYT Strands Hints, Answer and Help for Feb. 7 #706

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Looking for the most recent Strands answer? Click here for our daily Strands hints, as well as our daily answers and hints for The New York Times Mini Crossword, Wordle, Connections and Connections: Sports Edition puzzles.


Today’s NYT Strands puzzle is especially tricky, as a variety of words could fit the theme. Some of the answers are difficult to unscramble, so if you need hints and answers, read on.

I go into depth about the rules for Strands in this story

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If you’re looking for today’s Wordle, Connections and Mini Crossword answers, you can visit CNET’s NYT puzzle hints page.

Read more: NYT Connections Turns 1: These Are the 5 Toughest Puzzles So Far

Hint for today’s Strands puzzle

Today’s Strands theme is: Boo-o-o-o-ring

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If that doesn’t help you, here’s a clue: Zzzz… not very exciting.

Clue words to unlock in-game hints

Your goal is to find hidden words that fit the puzzle’s theme. If you’re stuck, find any words you can. Every time you find three words of four letters or more, Strands will reveal one of the theme words. These are the words I used to get those hints but any words of four or more letters that you find will work:

  • HIND, DATE, DRUM, MOST, CHIN, PAIN, RAIN, NOSE, TOME, TOMES

Answers for today’s Strands puzzle

These are the answers that tie into the theme. The goal of the puzzle is to find them all, including the spangram, a theme word that reaches from one side of the puzzle to the other. When you have all of them (I originally thought there were always eight but learned that the number can vary), every letter on the board will be used. Here are the nonspangram answers:

  • DULL, DREARY, HUMDRUM, MUNDANE, TIRESOME

Today’s Strands spangram

completed NYT Strands puzzle for Feb. 7, 2026.

The completed NYT Strands puzzle for Feb. 7, 2026.

NYT/Screenshot by CNET

Today’s Strands spangram is WATCHINGPAINTDRY. To find it, start with the W that’s three letters up from the bottom on the far-left row, and wind up, across and down.

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Toughest Strands puzzles

Here are some of the Strands topics I’ve found to be the toughest.

#1: Dated slang. Maybe you didn’t even use this lingo when it was cool. Toughest word: PHAT.

#2: Thar she blows! I guess marine biologists might ace this one. Toughest word: BALEEN or RIGHT. 

#3: Off the hook. Again, it helps to know a lot about sea creatures. Sorry, Charlie. Toughest word: BIGEYE or SKIPJACK.

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Insta360 Ace Pro 2 Xplorer Grip Pro Kit Review: An Even Better Action Camera

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The final exposure control feature is one I use a lot, and it’s exposure compensation. This works with the auto exposure and can be used to combat the tendency to go too slow with the shutter speed be forcing the Ace Pro 2 to underexpose the image. The exposure comp here is the best among action cameras, running from –4 stops to + 4 stops in ⅓-stop increments. I set the Xplorer Grip to control EV, so when I am in auto mode, the dial is an exposure comp dial just like “real” camera. (The dial can also be set to control ISO, shutter speed, shooting mode, filter selection, and white balance.)

Even better, if you’re in manual mode and you want to go back to auto, the first click of the dial will open the side panel, the second will switch from manual to auto, the third will start adjusting your exposure value. This is a really fast way to get from a carefully composed exposure back to full auto without needing to get into the touchscreen menus.

The final thing worth mentioning is the included Leica color profiles. If you haven’t updated your firmware recently, you should. Insta360 has added a few more of these. Because I shoot RAW, I don’t use these much, but as color profiles go these are great, especially the new Leica high-contrast black and white, which is what I’ve been using most of the time. This way I get a black-and-white JPG and a full-color RAW file.

To be honest, I did not have high hopes for the Xplorer Grip Pro Kit. For me, action cameras have primarily been for shooting around water, and while that still works with the bare camera, it doesn’t with the grip. However, I was pleasantly surprised using the Ace Pro 2 with the Xplorer grip as an everyday camera.

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I would say it’s best thought of as a compliment to your existing “real” camera. It’s not going to replace your interchangeable lens camera. It could replace your point-and-shoot, but I haven’t done that, because sometimes I want a pocket camera with a 28mm lens. Instead, the Ace Pro 2 with the grip has become an extra camera that I bring along when I want a wide angle or fisheye look and don’t feel like lugging a big, heavy, fast, full-frame, ultrawide lens.

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