Teased at Google I/O, Project Aura is a collaboration between Xreal and Google. It’s the second Android XR device (the first being Samsung’s Galaxy XR headset) and is expected to launch in 2026. Putting it on, I get why the term “smart glasses” doesn’t exactly fit.
Artificial Intelligence
A first look at Google’s Project Aura glasses built with Xreal
Is it a headset? Smart glasses? Both? Those were the questions running through my head as I held Project Aura in my hands in a recent demo. It looked like a pair of chunky sunglasses, except for the cord dangling off the left side, leading down to a battery pack that also served as a trackpad. When I asked, Google’s reps told me they consider it a headset masquerading as glasses. They have a term for it, too: wired XR glasses.
I can connect wirelessly to a laptop and create a giant virtual desktop in my space. I have up to a 70-degree field of view. My first task is to launch Lightroom on the virtual desktop while opening YouTube in another window. I play a 3D tabletop game where I can pinch and pull the board to zoom in and out. I look at a painting on the wall and summon Circle to Search. Gemini tells me the name of the artwork and the artist.
I’ve done all of this before in the Vision Pro and Galaxy XR. This time, my head isn’t stuffed into a bulky headset. If I wore this in public, most people wouldn’t notice. But this isn’t augmented reality, which overlays digital information over the real world. It’s much more like using a Galaxy XR, where you see apps in front of you and your surroundings.
A Google representative told me everything I tried on Project Aura had originally been developed for Galaxy XR. None of the apps, features, or experiences had to be remade for Project Aura’s form factor. That’s huge.
XR has a major app problem. Take the Meta Ray-Ban Display and the Vision Pro. Both launched with few third-party apps, giving consumers little reason to wear them. Developers also have to pick and choose which of these gadgets they’ll invest in making apps for. That leaves little room for smaller companies with big ideas to compete or experiment.
That’s what makes Android XR fascinating. Smaller players, like Xreal, can access apps developed for Samsung’s headset. Android apps will also work on the AI glasses launching next year from Warby Parker and Gentle Monster.
“I think this is probably the best thing for all the developers. You just don’t see any fragmentation anymore. And I do believe there will be more and more devices converging together. That’s the whole point of Android XR,” says Xreal CEO Chi Xu.
Slipping on Google’s latest prototype AI glasses, I’m treated to an Uber demo in which a fictional version of me is hailing a ride from JFK Airport. A rep summons an Uber on the phone. I see an Uber widget pop up on the glasses display. It shows the estimated pickup time and my driver’s license plate and car model. If I look down, a map of the airport appears with real-time directions to the pickup zone.
It’s all powered by Uber’s Android app. Meaning Uber didn’t have to code an Android XR app from scratch. Theoretically, users could just pair the glasses and start using apps they already have.
When I’m prompted to ask Gemini to play some music, a YouTube Music widget pops up, showing the title of a funky jazz mix and media controls. It’s also just using the YouTube Music app on an Android phone.
I’m asked to tell Gemini to take a photo with the glasses. A preview of it appears in the display and on a paired Pixel Watch. The idea is that integrating smartwatches gives users more options. Say someone wants audio-only glasses with a camera. They can now take a picture and view what it looks like on the wrist. It’ll work on any compatible Wear OS watch.
I also try live translations where the glasses detect the language being spoken. I take Google Meet video calls. I get Nano Banana Pro to add K-pop elements to another photo I’ve taken. I try a second prototype with a display in both lenses, enabling a larger field of view. (These are not coming out next year.) I watch a 3D YouTube video.
It’s all impressive. I hear a few spiels about how Gemini truly is the killer app. But my jaw really drops when I’m told next year’s Android XR glasses will support iOS.
“The goal is to give this ability to have multimodal Gemini in your glasses to as many people as possible. If you’re an iPhone user and you have the Gemini app on your phone, great news. You’re gonna get the full Gemini experience there,” says Juston Payne, Google’s director of product management for XR.
Payne notes that this will be broadly true across Google’s iOS apps, such as Google Maps and YouTube Music. The limitations on iOS will mostly involve third-party apps. But even there, Payne says the Android XR team is exploring workarounds. At a time when wearable ecosystem lock-in is at an all-time high, this is a breath of fresh air.
Google’s use of its existing Android ecosystem is an astute move that could give Android XR an edge over Meta, which currently leads in hardware but has only just opened its API to developers. It also ramps up the pressure on Apple, which has fallen behind on both the AI and glasses fronts. Making things interoperable between device form factors? Frankly, it’s the only way an in-between device like Project Aura has a shot.
“I know we can make these glasses smaller and smaller in the future, but we don’t have this ecosystem,” adds Xu, Xreal’s CEO. “There are only two companies right now in the world that can really have an ecosystem: Apple and Google. Apple, they’re not going to work with others. Google is the only option for us.”
Google is trying to avoid past mistakes. It’s deliberately partnering with other companies to make the hardware. It’s steering clear of the conspicuous design of the original Google Glass. It has apps pre-launch. The prototypes explore multiple form factors — audio-only and displays in one or both lenses.
Payne doesn’t dodge when I ask the big cultural question: How do you discourage glassholes?
“There’s a very bright, pulsing light if anything’s being recorded. So if the sensor is on with the intent to save anything, it will tell everyone around,” says Payne. That includes queries to Gemini for any task involving the camera. On and off switches will have clear red and green markings so users can prove to others that they’re not lying when they say the glasses aren’t recording. Payne says Android’s and Gemini’s existing permissions frameworks, privacy policies, encryption, data retention, and security guarantees will also apply.
“There’s going to be a whole process for getting certain sensor access so we can avoid certain things that could happen if somebody decides to use the camera in a bad way,” Payne says, noting Google’s taking a conservative approach to granting third parties access to the cameras.
On paper, Google is making smart moves that address many of the challenges inherent to this space. It sounds good, but that’s easy to say before these glasses launch. A lot could change between now and then.
Artificial Intelligence
How Cisco builds smart systems for the AI era
Among the big players in technology, Cisco is one of the sector’s leaders that’s advancing operational deployments of AI internally to its own operations, and the tools it sells to its customers around the world. As a large company, its activities encompass many areas of the typical IT stack, including infrastructure, services, security, and the design of entire enterprise-scale networks.
Cisco’s internal teams use a blend of machine learning and agentic AI to help them improve their own service delivery and personalise user experiences for its customers. It’s built a shared AI fabric built on patterns of compute and networking that are the product of years spent checking and validating its systems – battle-hardened solutions it then has the confidence to offer to customers. The infrastructure in play relies on high-performance GPUs, of course, but it’s not just raw horse-power. The detail is in the careful integration between compute and network stacks used in model training and the quite different demands from the ongoing load of inference.
Having made its name as the de facto supplier of networking infrastructure for the enterprise, it comes as no shock that it’s in network automation that some of its better-known uses of AI finds their place. Automated configuration workflows and identity management combine into access solutions that are focused on rapid network deployments generated by natural language.
For organisations looking to develop into the next generation of AI users, Cisco has been rolling out hardware and orchestration tools that are aimed explicitly to support AI workloads. A recent collaboration with chip giant NVIDIA led to the emergence of a new line of switches and the Nexus Hyperfabric line of AI network controllers. These aim to simplify the deployment of the complex clusters needed for top-end, high-performance artificial intelligence clusters.
Cisco’s Secure AI Factory framework with partners like NVIDIA and Run:ai is aimed at production-grade AI pipelines. It uses distributed orchestration, GPU utilisation governance, Kubernetes microservice optimisation, and storage, under the umbrella product description Intersight. For more local deployments, Cisco Unified Edge brings all the necessary elements – compute, networking, security, and storage – close to where data gets generated and processed.
In environments where latency metrics are critically important, AI processing at the edge is the answer. But Cisco’s approach is not necessarily to offer dedicated IIoT-specific solutions. Instead, it tries to extend the operational models typically found in a data centre and applies the same technology (if not the same exact methodology) to edge sites. It’s like data centre-grade security policies and configurations available to remote installations. Having the same precepts and standards in cloud and edge mean that Cisco accredited engineers can manage and maintain data centres or small edge deployments using the same skills, accreditation, knowledge, and experience.
Security and risk management figure prominently in the Cisco AI narrative. Its Integrated AI Security and Safety Framework applies high standards of safety and security throughout the life-cycle of AI systems. It considers adversarial threats, supply chain weakness, the risk profiles of multi-agent interactions, and multi-modal vulnerabilities as issues that have to be addressed regardless of the nature or size of any deployment.
Cisco’s work on operational AI also reflects broader ecosystem conversations. The company markets products for organisations wanting to make the transition from generative to agentic AI, where autonomous software agents carry out operational tasks. In most cases, this requires new tooling and new operational protocols.
Cisco’s future AI plans include continuing its central work in infrastructure provision for AI workloads. It’s also pursuing broader adoption of AI-ready networks, including next-gen wireless and unified management systems that will control systems across campus, branch, and cloud environments. The company is also expanding its software and platform investments, including its most recent acquisition (NeuralFabric), to help it build a more comprehensive software stack and product portfolio.
In summary, Cisco’s AI deployment strategy combines hardware, software, and service elements that embed AI into operations, giving organisations a route to production-grade systems. Its work can be found in large-scale infrastructure, systems for unified management, risk mitigation, and anywhere that connects distributed, cloud, and edge computing.
(Image source: Pixabay)
Want to learn more about AI and big data from industry leaders? Check out AI & Big Data Expo taking place in Amsterdam, California, and London. The comprehensive event is part of TechEx and co-located with other leading technology events. Click here for more information.
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Artificial Intelligence
Combing the Rackspace blogfiles for operational AI pointers
In a recent blog output, Rackspace refers to the bottlenecks familiar to many readers: messy data, unclear ownership, governance gaps, and the cost of running models once they become part of production. The company frames them through the lens of service delivery, security operations, and cloud modernisation, which tells you where it is putting its own effort.
One of the clearest examples of operational AI inside Rackspace sits in its security business. In late January, the company described RAIDER (Rackspace Advanced Intelligence, Detection and Event Research) as a custom back-end platform built for its internal cyber defense centre. With security teams working amid many alerts and logs, standard detection engineering doesn’t scale if dependent on the manual writing of security rules. Rackspace says its RAIDER system unifies threat intelligence with detection engineering workflows and uses its AI Security Engine (RAISE) and LLMs to automate detection rule creation, generating detection criteria it describes as “platform-ready” in line with known frameworks such as MITRE ATT&CK. The company claims it’s cut detection development time by more than half and reduced mean time to detect and respond. This is just the kind of internal process change that matters.
The company also positions agentic AI as a way of taking the friction out of complex engineering programmes. A January post on modernising VMware environments on AWS describes a model in which AI agents handle data-intensive analysis and many repeating tasks, yet it keeps “architectural judgement, governance and business decisions” remain in the human domain. Rackspace presents this workflow as stopping senior engineers being sidelined into migration projects. The article states the target is to keep day two operations in scope – where many migration plans fail as teams discover they have modernised infrastructure but not operating practices.
Elsewhere the company sets out a picture of AI-supported operations where monitoring becomes more predictive, routine incidents are handled by bots and automation scripts, and telemetry (plus historical data) are used to spot patterns and, it turn, recommend fixes. This is conventional AIOps language, but it Rackspace is tying such language to managed services delivery, suggesting the company uses AI to reduce the cost of labour in operational pipelines in addition to the more familiar use of AI in customer-facing environments.
In a post describing AI-enabled operations, the company stresses the importance of focus strategy, governance and operating models. It specifies the machinery it needed to industrialise AI, such as choosing infrastructure based on whether workloads involve training, fine-tuning or inference. Many tasks are relatively lightweight and can run inference locally on existing hardware.
The company’s noted four recurring barriers to AI adoption, most notably that of fragmented and inconsistent data, and it recommends investment in integration and data management so models have consistent foundations. This is not an opinion unique to Rackspace, of course, but having it writ large by a technology-first, big player is illustrative of the issues faced by many enterprise-scale AI deployments.
A company of even greater size, Microsoft, is working to coordinate autonomous agents’ work across systems. Copilot has evolved into an orchestration layer, and in Microsoft’s ecosystem, multi-step task execution and broader model choice do exist. However, it’s noteworthy that Redmond is called out by Rackspace on the fact that productivity gains only arrive when identity, data access, and oversight are firmly ensconced into operations.
Rackspace’s near-term AI plan comprises of AI-assisted security engineering, agent-supported modernisation, and AI-augmented service management. Its future plans can perhaps be discerned in a January article published on the company’s blog that concerns private cloud AI trends. In it, the author argues inference economics and governance will drive architecture decisions well into 2026. It anticipates ‘bursty’ exploration in public clouds, while moving inference tasks into private clouds on the grounds of cost stability, and compliance. That’s a roadmap for operational AI grounded in budget and audit requirements, not novelty.
For decision-makers trying to accelerate their own deployments, the useful takeaway is that Rackspace has treats AI as an operational discipline. The concrete, published examples it gives are those that reduce cycle time in repeatable work. Readers may accept the company’s direction and still be wary of the company’s claimed metrics. The steps to take inside a growing business are to discover repeating processes, examine where strict oversight is necessary because of data governance, and where inference costs might be reduced by bringing some processing in-house.
(Image source: Pixabay)
Want to learn more about AI and big data from industry leaders? Check out AI & Big Data Expo taking place in Amsterdam, California, and London. The comprehensive event is part of TechEx and co-located with other leading technology events. Click here for more information.
AI News is powered by TechForge Media. Explore other upcoming enterprise technology events and webinars here.
Artificial Intelligence
Ronnie Sheth, CEO, SENEN Group: Why now is the time for enterprise AI to ‘get practical'
Before you set sail on your AI journey, always check the state of your data – because if there is one thing likely to sink your ship, it is data quality.
Gartner estimates that poor data quality costs organisations an average of $12.9 million each year in wasted resources and lost opportunities. That’s the bad news. The good news is that organisations are increasingly understanding the importance of their data quality – and less likely to fall into this trap.
That’s the view of Ronnie Sheth, CEO of AI strategy, execution and governance firm SENEN Group. The company focuses on data and AI advisory, operationalisation and literacy, and Sheth notes she has been in the data and AI space ‘ever since [she] was a corporate baby’, so there is plenty of real-world experience behind the viewpoint. There is also plenty of success; Sheth notes that her company has a 99.99% client repeat rate.
“If I were to be very practical, the one thing I’ve noticed is companies jump into adopting AI before they’re ready,” says Sheth. Companies, she notes, will have an executive direction insisting they adopt AI, but without a blueprint or roadmap to accompany it. The result may be impressive user numbers, but with no measurable outcome to back anything up.
Even as recently as 2024, Sheth saw many organisations struggling because their data was ‘nowhere where it needed to be.’ “Not even close,” she adds. Now, the conversation has turned more practical and strategic. Companies are realising this, and coming to SENEN Group initially to get help with their data, rather than wanting to adopt AI immediately.
“When companies like that come to us, the first course of order is really fixing their data,” says Sheth. “The next course of order is getting to their AI model. They are building a strong foundation for any AI initiative that comes after that.
“Once they fix their data, they can build as many AI models as they want, and they can have as many AI solutions as they want, and they will get accurate outputs because now they have a strong foundation,” Sheth adds.
With breadth and depth in expertise, SENEN Group allows organisations to right their course. Sheth notes the example of one customer who came to them wanting a data governance initiative. Ultimately, it was the data strategy which was needed – the why and how, the outcomes of what they were trying to do with their data – before adding in governance and providing a roadmap for an operating model. “They’ve moved from raw data to descriptive analytics, moving into predictive analytics, and now we’re actually setting up an AI strategy for them,” says Sheth.
It is this attitude and requirement for practical initiatives which will be the cornerstone of Sheth’s discussion at AI & Big Data Expo Global in London this week. “Now would be the time to get practical with AI, especially enterprise AI adoption, and not think about ‘look, we’re going to innovate, we’re going to do pilots, we’re going to experiment,’” says Sheth. “Now is not the time to do that. Now is the time to get practical, to get AI to value. This is the year to do that in the enterprise.”
Watch the full video conversation with Ronnie Sheth below:
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