Sunday, August 28, 2022

Realme 9i 5G hands-on

Realme launched the 9i in January and followed up with the 5G version last week. It has Soulful Blue, Rocking Black, and Metallica Gold color options, but Realme is currently only selling the latter two models, with the blue variant coming at some later point. We got a chance to spend some time with the Metallica Gold version, so here are our first-hand impressions. The Realme 9i 5G comes in a yellow-colored box similar to its 4G counterpart, including a protective case, a SIM card ejector tool, a USB-C cable, an 18W power adapter, and some paperwork. The Realme 9i 5G is built...



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Saturday, August 27, 2022

Google's Tensor 3 CPU and Samsung's Exynos 1380 reportedly in the works

As per a report from GalaxyClub, Google and Samsung are already working on a third-generation Tensor SoC, which should power next year's Pixel 8 lineup. On the one hand, it's no surprise that Google and Samsung will continue to work on their joint venture but on the other, it's not the first time Google has killed a project or two. After all, the first-generation Tensor chipset isn't exactly on par with the competition from Qualcomm and Apple. Things may change in the future, though. The Tensor's advantage, however, is that Google has the freedom to tailor the SoC to its needs. Its...



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Perceptron: Face-tracking ‘earables,’ analog AI chips, and accelerating particle accelerators

Research in the field of machine learning and AI, now a key technology in practically every industry and company, is far too voluminous for anyone to read it all. This column, Perceptron, aims to collect some of the most relevant recent discoveries and papers — particularly in, but not limited to, artificial intelligence — and explain why they matter.

An “earable” that uses sonar to read facial expressions was among the projects that caught our eyes over these past few weeks. So did ProcTHOR, a framework from the Allen Institute for AI (AI2) that procedurally generates environments that can be used to train real-world robots. Among the other highlights, Meta created an AI system that can predict a protein’s structure given a single amino acid sequence. And researchers at MIT developed new hardware that they claim offers faster computation for AI with less energy.

The “earable,” which was developed by a team at Cornell, looks something like a pair of bulky headphones. Speakers send acoustic signals to the side of a wearer’s face, while a microphone picks up the barely-detectable echoes created by the nose, lips, eyes, and other facial features. These “echo profiles” enable the earable to capture movements like eyebrows raising and eyes darting, which an AI algorithm translates into complete facial expressions.

AI earable

Image Credits: Cornell

The earable has a few limitations. It only lasts three hours on battery and has to offload processing to a smartphone, and the echo-translating AI algorithm must train on 32 minutes of facial data before it can begin recognizing expressions. But the researchers make the case that it’s a much sleeker experience than the recorders traditionally used in animations for movies, TV, and video games. For example, for the mystery game L.A. Noire, Rockstar Games built a rig with 32 cameras trained on each actor’s face.

Perhaps someday, Cornell’s earable will be used to create animations for humanoid robots. But those robots will have to learn how to navigate a room first. Fortunately, AI2’s ProcTHOR takes a step (no pun intended) in this direction, creating thousands of custom scenes including classrooms, libraries, and offices in which simulated robots must complete tasks, like picking up objects and moving around furniture.

The idea behind the scenes, which have simulated lighting and contain a subset of a massive array of surface materials (e.g., wood, tile, etc.) and household objects, is to expose the simulated robots to as much variety as possible. It’s a well-established theory in AI that performance in simulated environments can improve the performance of real-world systems; autonomous car companies like Alphabet’s Waymo simulate entire neighborhoods to fine-tune how their real-world cars behave.

ProcTHOR AI2

Image Credits: Allen Institute for Artificial Intelligence

As for ProcTHOR, AI2 claims in a paper that scaling the number of training environments consistently improves performance. That bodes well for robots bound for homes, workplaces, and elsewhere.

Of course, training these types of systems requires a lot of compute power. But that might not be the case forever. Researchers at MIT say they’ve created an “analog” processor that can be used to create superfast networks of “neurons” and “synapses,” which in turn can be used to perform tasks like recognizing images, translating languages, and more.

The researchers’ processor uses “protonic programmable resistors” arranged in an array to “learn” skills. Increasing and decreasing the electrical conductance of the resistors mimics the strengthening and weakening of synapses between neurons in the brain, a part of the learning process.

The conductance is controlled by an electrolyte that governs the movement of protons. When more protons are pushed into a channel in the resistor, the conductance increases. When protons are removed, the conductance decreases.

computer circuit board

Processor on a computer circuit board

An inorganic material, phosphosilicate glass, makes the MIT team’s processor extremely fast because it contains nanometer-sized pores whose surfaces provide the perfect paths for protein diffusion. As an added benefit, the glass can run at room temperature, and it isn’t damaged by the proteins as they move along the pores.

“Once you have an analog processor, you will no longer be training networks everyone else is working on,” lead author and MIT postdoc Murat Onen was quoted as saying in a press release. “You will be training networks with unprecedented complexities that no one else can afford to, and therefore vastly outperform them all. In other words, this is not a faster car, this is a spacecraft.”

Speaking of acceleration, machine learning is now being put to use managing particle accelerators, at least in experimental form. At Lawrence Berkeley National Lab two teams have shown that ML-based simulation of the full machine and beam gives them a highly precise prediction as much as 10 times better than ordinary statistical analysis.

Image Credits: Thor Swift/Berkeley Lab

“If you can predict the beam properties with an accuracy that surpasses their fluctuations, you can then use the prediction to increase the performance of the accelerator,” said the lab’s Daniele Filippetto. It’s no small feat to simulate all the physics and equipment involved, but surprisingly the various teams’ early efforts to do so yielded promising results.

And over at Oak Ridge National Lab an AI-powered platform is letting them do Hyperspectral Computed Tomography using neutron scattering, finding optimal… maybe we should just let them explain.

In the medical world, there’s a new application of machine learning-based image analysis in the field of neurology, where researchers at University College London have trained a model to detect early signs of epilepsy-causing brain lesions.

MRIs of brains used to train the UCL algorithm.

One frequent cause of drug-resistant epilepsy is what is known as a focal cortical dysplasia, a region of the brain that has developed abnormally but for whatever reason doesn’t appear obviously abnormal in MRI. Detecting it early can be extremely helpful, so the UCL team trained an MRI inspection model called Multicentre Epilepsy Lesion Detection on thousands of examples of healthy and FCD-affected brain regions.

The model was able to detect two thirds of the FCDs it was shown, which is actually quite good as the signs are very subtle. In fact, it found 178 cases where doctors were unable to locate an FCD but it could. Naturally the final say goes to the specialists, but a computer hinting that something might be wrong can sometimes be all it takes to look closer and get a confident diagnosis.

“We put an emphasis on creating an AI algorithm that was interpretable and could help doctors make decisions. Showing doctors how the MELD algorithm made its predictions was an essential part of that process,” said UCL’s Mathilde Ripart.



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Analytics, AI and robotics help MLB teams get a step closer to a perfect pitching machine

The first pitching machine dates back well over 100 years. Obviously things have come a long way since that injury-inducing, gunpowder-fueled machine made its debut at Princeton University, but most modern systems are more or less the same. A ball is manually or mechanically dropped into a spinning wheel or wheels, which propel it toward the battery at high velocity.

It’s gotten the job done, so why quibble, right? But there’s a lot of potential room for innovation here. Advances in AI, stat tracking, advanced metrics and robotics could fit together nicely for a proper 21st-century twist on a classic. This is my first time seeing the Trajekt Arc, but the product seems to speak for itself. It’s a pitching robot designed to learn and re-create real-world pitches from real-world pitchers.

The Athletic ran a nice spot the other week about how the Cubs are using the system to mimic Madison Bumgarner in practice. The system adjusts to the World Series hero’s left arm release point, and serves up an image of the bearded Diamondbacks’ pitcher on its display. It’s not exactly the same as facing him on the field, but by all accounts, it’ll work in a pinch. “It’s fucking unbelievable,” the story quotes a team official going full locker room blue.

Image Credits: Trajek

According to parent company, Trajekt Sports, seven of the MLB’s 30 teams are currently using the robot. St. Louis–based sport data firm, Rapsodo, meanwhile, claims that all 30 are using its services. Earlier this week, the two firms announced a partnership that brings a wider range of pitch variables to the system.

Says Rapsodo:

Users can simply add in pitch characteristics to the Trajekt Arc, and the machine will replicate the pitch. Before practice, the Trajekt Arc will throw a series of test pitches, and Rapsodo’s PRO 3.0 will measure the pitches and provide real-time feedback to the Trajekt Arc to compare their desired metrics with the measured ones. Some of those metrics include speed, spin, movement and strike zone location. Once the data is captured, that pitch will now be added to the devices system and available for the team to use in training their athletes.

Image Credits: Rapsodo

With analytics having becoming such a core part of the game over the past few decades (happy 20th anniversary to the Oakland A’s improbable 20-win Moneyball streak), it makes sense to find a way to integrate that into the data-obsessed tech world.

“I like it, personally,” Mets hitting coach (and former third baseman) Eric Chavez said in an interview with the New York Post. “We can’t duplicate anything that happens in the game, but it’s the closest thing we’ve got. But I’m not playing anymore, and how they’re going to use it moving forward, I’m not sure. It’s just there for whoever wants it.”

It sure beats a cannon full of gunpowder.



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Investment clubs are cool again, and maybe community is, too

The bets are no longer just on Wall Street — they’re in your group chats, book clubs and that awkward shuffle that happens when everyone’s trying to get out of the door at the same time at the end of class.

Community investment clubs are nothing new, but a renewed interest in decentralization and the glittering — albeit now hungover — allure of getting in at the ground level of a rocket-ship venture has created a new wave of efforts around group investing.

Individualism is out. Collectivism is in vogue.

The game (doesn’t) stop

The meme stock craze of 2021 highlighted a crucial trend — people want to invest with the conviction of a community behind them. It’s tough to assess exactly how many retail investors (aka regular people) started investing for the first time during the height of the COVID-19 pandemic, but one Schwab study estimates that 15% of investors who were participating in the market in 2021 got started for the first time in 2020.

Outperforming the market requires differentiated thinking, often a solitary pursuit. But humans are social creatures, and money and investing can be scary.



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OnePlus Nord Wired Earphones launched in India

As promised, OnePlus today launched the OnePlus Nord Wired Earphones in India. They come in a single black color and are designed after the Bullets Wireless Z neckband-style Bluetooth earphones. The Nord Wired Earphones pack 9.2mm dynamic drivers and have a sound cavity of 0.42cc. These come with a 3.5mm connector, and OnePlus bundles a total of three pairs of silicone tips (small, medium, large) for passive noise cancellation. You also get an inline mic with button controls, and the earphones also have magnets that allow you to play/pause the audio. OnePlus Nord Wired...



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Asus Zenfone 9 Android 13 beta program announced

Asus has announced the Android 13 beta program for the Zenfone 9 launched last month with Android 12. Those interested can apply for the beta program by navigating to their Zenfone 9's Settings > System > System update menu, clicking on the gear icon in the top-right corner, and then clicking on "Enroll in the Beta Test Program." After that, click on "Agree", sign up for the Asus member account if you don't have one already, fill in the beta test application, and click "Submit." If your application is accepted, you will be informed via email and receive the Android 13 beta on your...



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