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Cartesiam, a startup that aims to bring machine learning to edge devices powered by microcontrollers, has launched a new tool for developers who want an easier way to build services for these devices. The new NanoEdge AI Studio is the first IDE specifically designed for enabling machine learning and inferencing on Arm Cortex-M microcontrollers, which power billions of devices already.
As Cartesiam GM Marc Dupaquier, who co-founded the company in 2016, told me, the company works very closely with Arm, given that both have a vested interest in having developers create new features for these devices. He noted that while the first wave of IoT was all about sending data to the cloud, that has now shifted and most companies now want to limit the amount of data they send out and do a lot more on the device itself. And that’s pretty much one of the founding theses of Cartesiam. “It’s just absurd to send all this data — which, by the way, also exposes the device from a security standpoint,” he said. “What if we could do it much closer to the device itself?”
The company first bet on Intel’s short-lived Curie SoC platform. That obviously didn’t work out all that well, given that Intel axed support for Curie in 2017. Since then, Cartesiam has focused on the Cortex-M platform, which worked out for the better, given how ubiquitous it has become. Since we’re talking about low-powered microcontrollers, though, it’s worth noting that we’re not talking about face recognition or natural language understanding here. Instead, using machine learning on these devices is more about making objects a little bit smarter and, especially in an industrial use case, detecting abnormalities or figuring out when it’s time to do preventive maintenance.
Today, Cartesiam already works with many large corporations that build Cortex-M-based devices. The NanoEdge Studio makes this development work far easier, though. “Developing a smart object must be simple, rapid and affordable — and today, it is not, so we are trying to change it,” said Dupaquier. But the company isn’t trying to pitch its product to data scientists, he stressed. “Our target is not the data scientists. We are actually not smart enough for that. But we are unbelievably smart for the embedded designer. We will resolve 99% of their problems.” He argues that Cartesiam reduced time to market by a factor of 20 to 50, “because you can get your solution running in days, not in multiple years.”
One nifty feature of the NanoEdge Studio is that it automatically tries to find the best algorithm for a given combination of sensors and use cases and the libraries it generates are extremely small and use somewhere between 4K to 16K of RAM.
NanoEdge Studio for both Windows and Linux is now generally available. Pricing starts at €690/month for a single user or €2,490/month for teams.
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AWS today announced a number of IoT-related updates that, for the most part, aim to make getting started with its IoT services easier, especially for companies that are trying to deploy a large fleet of devices. The marquee announcement, however, is about the Alexa Voice Service, which makes Amazon’s Alex voice assistant available to hardware manufacturers who want to build it into their devices. These manufacturers can now create “Alexa built-in” devices with very low-powered chips and 1MB of RAM.
Until now, you needed at least 100MB of RAM and an ARM Cortex A-class processor. Now, the requirement for Alexa Voice Service integration for AWS IoT Core has come down 1MB and a cheaper Cortex-M processor. With that, chances are you’ll see even more lightbulbs, light switches and other simple, single-purpose devices with Alexa functionality. You obviously can’t run a complex voice-recognition model and decision engine on a device like this, so all of the media retrieval, audio decoding, etc. is done in the cloud. All it needs to be able to do is detect the wake word to start the Alexa functionality, which is a comparably simple model.
“We now offload the vast majority of all of this to the cloud,” AWS IoT VP Dirk Didascalou told me. “So the device can be ultra dumb. The only thing that the device still needs to do is wake word detection. That still needs to be covered on the device.” Didascalou noted that with new, lower-powered processors from NXP and Qualcomm, OEMs can reduce their engineering bill of materials by up to 50 percent, which will only make this capability more attractive to many companies.
Didascalou believes we’ll see manufacturers in all kinds of areas use this new functionality, but most of it will likely be in the consumer space. “It just opens up the what we call the real ambient intelligence and ambient computing space,” he said. “Because now you don’t need to identify where’s my hub — you just speak to your environment and your environment can interact with you. I think that’s a massive step towards this ambient intelligence via Alexa.”
No cloud computing announcement these days would be complete without talking about containers. Today’s container announcement for AWS’ IoT services is that IoT Greengrass, the company’s main platform for extending AWS to edge devices, now offers support for Docker containers. The reason for this is pretty straightforward. The early idea of Greengrass was to have developers write Lambda functions for it. But as Didascalou told me, a lot of companies also wanted to bring legacy and third-party applications to Greengrass devices, as well as those written in languages that are not currently supported by Greengrass. Didascalou noted that this also means you can bring any container from the Docker Hub or any other Docker container registry to Greengrass now, too.
“The idea of Greengrass was, you build an application once. And whether you deploy it to the cloud or at the edge or hybrid, it doesn’t matter, because it’s the same programming model,” he explained. “But very many older applications use containers. And then, of course, you saying, okay, as a company, I don’t necessarily want to rewrite something that works.”
Another notable new feature is Stream Manager for Greengrass. Until now, developers had to cobble together their own solutions for managing data streams from edge devices, using Lambda functions. Now, with this new feature, they don’t have to reinvent the wheel every time they want to build a new solution for connection management and data retention policies, etc., but can instead rely on this new functionality to do that for them. It’s pre-integrated with AWS Kinesis and IoT Analytics, too.
Also new for AWS IoT Greengrass are fleet provisioning, which makes it easier for businesses to quickly set up lots of new devices automatically, as well as secure tunneling for AWS IoT Device Management, which makes it easier for developers to remote access into a device and troubleshoot them. In addition, AWS IoT Core now features configurable endpoints.
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Mobile World Congress, the mobile industry’s annual shindig, is next week, but Xiaomi can’t wait to reveal its newest top-end phone. The Chinese company instead picked today to unveil the Mi 9.
Once again Xiaomi’s design ethic closely resembles Apple’s iPhone, with a minimal bezel and notch-like front-facing camera, but Xiaomi has gone hard on photography with a triple lens camera.
There are two models available, with the regular Mi 9 priced from RMB 2,999, or $445, and the Mi 9SE priced from RMB 1,999, or $300. A premium model, the Transparent Edition, includes beefed-up specs for RMB 3,999, or $595.
The phone runs on Qualcomm’s Snapdragon 855 chipset and the headline feature, or at least the part that Xiaomi is shouting about most, is the triple lens camera array on the back of the device. That trio combines a 48-megapixel main camera with a 16-megapixel ultra-wide-angle camera and a 12-megapixel telephoto camera, Xiaomi said. The benefits of that lineup are improved wide-angle shots, better-quality close-up photography and performance in low-light conditions, according to the company.
The premium Mi 9 model, the Transparent Edition, sports 12GB of RAM and 256GB internal storage and features a transparent back cover
There’s also a “supermoon” mode for taking shots of the moon and presumably other night-sky images, while Xiaomi touts an improved night mode and, on the video side, 960fps capture and advanced motion tracking. We haven’t had the chance to test these out, which is worth noting at this point.
Xiaomi also talked up the battery features of the Mi 9, which ships with an impressive 3,300mAh battery that features wireless charging support and Qi EPP certification, meaning it will work with third-party charging mats. Xiaomi claims that the Mi 9 can charge to 70 percent in 30 minutes, and reach 100 percent in an hour using 27W wired charging.
Alongside the Mi 9, it unveiled its three wireless charging products — a charging pad (RMB 99, $15), a car charger (RMB 169, $25) and a 10,000mAh wireless power bank (RMB 149, $22.)
Xiaomi, as ever, offers a range of different options for customers, as follows:
Notably, the Mi 9 goes on sale February 26 — pre-orders open this evening — with the SE version arriving on March 1. As expected, the launch market is China but you can imagine that India — where Xiaomi is among the top players — and other global launches will follow.
Xiaomi said it plans to announce more products on Sunday, the eve of Mobile World Congress. It recently teased a foldable phone, so it’ll be interesting to see if it will follow suit and join Samsung, which had its first foldable phone outed by a leak.
Note: The original version of this article was updated to correct the Transparent Edition price and specs.
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Xiaomi has announced the newest version of its bezel-less Mi Mix family, and it doesn’t sport a notch like its Mi 8 flagship. Indeed, unlike the Mi 8 — which I called one of Xiaomi’s most brazen Apple clones — there’s a lot more to get excited about.
The Mi Mix 3 was unveiled at an event in Beijing and, like its predecessor, Xiaomi boasts that it offers a full front screen. Rather than opting for the near-industry standard notch, Xiaomi has developed a slider that houses its front-facing camera. Vivo and Oppo have done similar using a motorized approach, but Xiaomi’s is magnetic while it can also be programmed for functions such as answering calls.
That array gives it a claimed 93.4 percent screen-to-body ratio and a full 6.4-inch 1080p AMOLED display. The slider, by the way, is good for 300,000 cycles, according to Xiaomi’s lab testing.

The device itself follows the much-lauded Mi Mix aesthetic with a Snapdragon 845 processor and up to 10GB in RAM (!) in the highest-end model. Xiaomi puts plenty of emphasis on cameras. The Mi Mix 3 includes four of them: a 24-megapixel front camera paired with a two-megapixel sensor and on the back, like the Mi 8, a dual camera array with two 12-megapixel cameras.
Xiaomi has also snuck an ‘AI button’ on the left side of the phone, a first for the company. That awakens its Xiao Ai voice assistant, but since it only supports Chinese don’t expect to see that on worldwide models.

The 10GB version — made in partnership with Palace Museum, located at the Forbidden City where the device was launched — also packs 256GB of onboard storage and is priced at RMB 4,999, or $720. That’s in addition to a ceramic design that Xiaomi says is inspired by the museum… better that than a fruity-sounding U.S. company.
That’s the special model, and the more affordable options include 6GB + 128GB for RMB 3,299 ($475), 8GB +128G for RMB 3,599 ($520) and 8GB + 256GB for RMB 3,999 ($575). The company also plans to introduce a 5G version in Europe sometime early next year.
Xiaomi said the phones will go on sale in China from 1 November, there’s no word on international availability or pricing right now.
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A group of computer vision researchers from ETH Zurich want to do their bit to enhance AI development on smartphones. To wit: They’ve created a benchmark system for assessing the performance of several major neural network architectures used for common AI tasks.
They’re hoping it will be useful to other AI researchers but also to chipmakers (by helping them get competitive insights); Android developers (to see how fast their AI models will run on different devices); and, well, to phone nerds — such as by showing whether or not a particular device contains the necessary drivers for AI accelerators. (And, therefore, whether or not they should believe a company’s marketing messages.)
The app, called AI Benchmark, is available for download on Google Play and can run on any device with Android 4.1 or higher — generating a score the researchers describe as a “final verdict” of the device’s AI performance.
AI tasks being assessed by their benchmark system include image classification, face recognition, image deblurring, image super-resolution, photo enhancement or segmentation.
They are even testing some algorithms used in autonomous driving systems, though there’s not really any practical purpose for doing that at this point. Not yet anyway. (Looking down the road, the researchers say it’s not clear what hardware platform will be used for autonomous driving — and they suggest it’s “quite possible” mobile processors will, in future, become fast enough to be used for this task. So they’re at least prepped for that possibility.)
The app also includes visualizations of the algorithms’ output to help users assess the results and get a feel for the current state-of-the-art in various AI fields.
The researchers hope their score will become a universally accepted metric — similar to DxOMark that is used for evaluating camera performance — and all algorithms included in the benchmark are open source. The current ranking of different smartphones and mobile processors is available on the project’s webpage.
The benchmark system and app was around three months in development, says AI researcher and developer Andrey Ignatov.
He explains that the score being displayed reflects two main aspects: The SoC’s speed and available RAM.
“Let’s consider two devices: one with a score of 6000 and one with a score of 200. If some AI algorithm will run on the first device for 5 seconds, then this means that on the second device this will take about 30 times longer, i.e. almost 2.5 minutes. And if we are thinking about applications like face recognition this is not just about the speed, but about the applicability of the approach: Nobody will wait 10 seconds till their phone will be trying to recognize them.
“The same is about memory: The larger is the network/input image — the more RAM is needed to process it. If the phone has a small amount of RAM that is e.g. only enough to enhance 0.3MP photo, then this enhancement will be clearly useless, but if it can do the same job for Full HD images — this opens up much wider possibilities. So, basically the higher score — the more complex algorithms can be used / larger images can be processed / it will take less time to do this.”
Discussing the idea for the benchmark, Ignatov says the lab is “tightly bound” to both research and industry — so “at some point we became curious about what are the limitations of running the recent AI algorithms on smartphones”.
“Since there was no information about this (currently, all AI algorithms are running remotely on the servers, not on your device, except for some built-in apps integrated in phone’s firmware), we decided to develop our own tool that will clearly show the performance and capabilities of each device,” he adds.
“We can say that we are quite satisfied with the obtained results — despite all current problems, the industry is clearly moving towards using AI on smartphones, and we also hope that our efforts will help to accelerate this movement and give some useful information for other members participating in this development.”
After building the benchmarking system and collating scores on a bunch of Android devices, Ignatov sums up the current situation of AI on smartphones as “both interesting and absurd”.
For example, the team found that devices running Qualcomm chips weren’t the clear winners they’d imagined — i.e. based on the company’s promotional materials about Snapdragon’s 845 AI capabilities and 8x performance acceleration.
“It turned out that this acceleration is available only for ‘quantized’ networks that currently cannot be deployed on the phones, thus for ‘normal’ networks you won’t get any acceleration at all,” he says. “The saddest thing is that actually they can theoretically provide acceleration for the latter networks too, but they just haven’t implemented the appropriated drivers yet, and the only possible way to get this acceleration now is to use Snapdragon’s proprietary SDK available for their own processors only. As a result — if you are developing an app that is using AI, you won’t get any acceleration on Snapdragon’s SoCs, unless you are developing it for their processors only.”
Whereas the researchers found that Huawei’s Kirin’s 970 CPU — which is technically even slower than Snapdragon 636 — offered a surprisingly strong performance.
“Their integrated NPU gives almost 10x acceleration for Neural Networks, and thus even the most powerful phone CPUs and GPUs can’t compete with it,” says Ignatov. “Additionally, Huawei P20/P20 Pro are the only smartphones on the market running Android 8.1 that are currently providing AI acceleration, all other phones will get this support only in Android 9 or later.”
It’s not all great news for Huawei phone owners, though, as Ignatov says the NPU doesn’t provide acceleration for ‘quantized’ networks (though he notes the company has promised to add this support by the end of this year); and also it uses its own RAM — which is “quite limited” in size, and therefore you “can’t process large images with it”…
“We would say that if they solve these two issues — most likely nobody will be able to compete with them within the following year(s),” he suggests, though he also emphasizes that this assessment only refers to the one SoC, noting that Huawei’s processors don’t have the NPU module.
For Samsung processors, the researchers flag up that all the company’s devices are still running Android 8.0 but AI acceleration is only available starting from Android 8.1 and above. Natch.
They also found CPU performance could “vary quite significantly” — up to 50% on the same Samsung device — because of throttling and power optimization logic. Which would then have a knock on impact on AI performance.
For Mediatek, the researchers found the chipmaker is providing acceleration for both ‘quantized’ and ‘normal’ networks — which means it can reach the performance of “top CPUs”.
But, on the flip side, Ignatov calls out the company’s slogan — that it’s “Leading the Edge-AI Technology Revolution” — dubbing it “nothing more than their dream”, and adding: “Even the aforementioned Samsung’s latest Exynos CPU can slightly outperform it without using any acceleration at all, not to mention Huawei with its Kirin’s 970 NPU.”
“In summary: Snapdragon — can theoretically provide good results, but are lacking the drivers; Huawei — quite outstanding results now and most probably in the nearest future; Samsung — no acceleration support now (most likely this will change soon since they are now developing their own AI Chip), but powerful CPUs; Mediatek — good results for mid-range devices, but definitely no breakthrough.”
It’s also worth noting that some of the results were obtained on prototype samples, rather than shipped smartphones, so haven’t yet been included in the benchmark table on the team’s website.
“We will wait till the devices with final firmware will come to the market since some changes might still be introduced,” he adds.
For more on the pros and cons of AI-powered smartphone features check out our article from earlier this year.
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Xiaomi gave Google’s well-intentioned but somewhat-stalled Android One project a major boost last year when it unveiled its first device under the program, Mi A1. That’s now joined by not one but two sequel devices, after the Chinese phone maker unveiled the Mi A2 and Mi A2 Lite at an event in Spain today.
Xiaomi in Spain? Yes, that’s right. International growth is a major part of the Xiaomi story now that it is a listed business, and Spain is one of a handful of countries in Europe where Xiaomi is aiming to make its mark. These two new A2 handsets are an early push and they’ll be available in over 40 countries, including Spain, France, Italy and 11 other European markets.
Both phones run on Android One — so none of Xiaomi’s iOS-inspired MIUI Android fork — and charge via type-C USB. The 5.99-inch A2 is the more premium option, sporting a Snapdragon 660 processor and 4GB or 6GB RAM with 32GB, 64GB or 128GB in storage. There’s a 20-megapixel front camera and dual 20-megapixel and 16-megapixel cameras on the rear. On-device storage ranges between 32GB, 64GB and 128GB.
The Mi A2 Lite is the more budget option that’s powered by a lesser Snapdragon 625 processor with 3GB or 4GB RAM, and 32GB or 64GB storage options. It comes with a smaller 5.84-inch display, there’s a 12- and 5-megapixel camera array on the reverse and a front-facing five-megapixel camera.

The A2 is priced from €249 to €279 ($291-$327) based on specs. The A2 Lite will sell for €179 or €229 ($210 or $268), against based on RAM and storage selection.
The 40 market availability mirrors the A1 launch last year, but on this occasion, Xiaomi has been busy preparing the ground in a number of countries, particularly in Europe. It has been in Spain for the past year, but it also launched local operations in France and Italy in May and tied up with CK Hutchison to sell phones in other parts of the continent via its 3 telecom business. While it isn’t operational in the U.S., Xiaomi has expanded into Mexico and it has set up partnerships with local retailers in dozens of other countries.
Xiaomi has been successful with its move into India, where it one of the top smartphone sellers, but it has not yet replicated that elsewhere outside of China so far.
China is, as you’d expect, the primary revenue market but Xiaomi is increasingly less dependent on its homeland. For 2017 sales, China represented 72 percent, but it had been 94 percent and 87 percent, respectively, in 2015 and 2016.
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The smartphone to beat this season is the Galaxy S6 Edge. It’s slim, stylish, and powerful, a mashup between the previous Galaxy S series with the original iPod Touch. It’s well-made and unique, a combination rarely found in cellphones these days and it is as far from the Galaxy S5 as the T-1000 was from the original Terminator. In short, it’s pretty cool and probably the only… Read More
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