Amazon Reportedly Considered Spending $20,000 a Week on Consultants in Failed Staten Island Union Busting

Amazon failed to stop a historic first of its kind unionization effort at a Staten Island fulfillment center despite documents showing it was considering spending up to $100,000 per month on anti-union consultants to kill it.

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For Earth Day, Houston Public Media Is Promoting… Chevron?

One might not associate “public media” with “carrying water for the oil and gas industry,” but it’s 2022, and anything can happen. On Wednesday, Houston Public Radio, which encompasses the city’s NPR affiliate as well as its public broadcasting network, unveiled a series it produced with oil giant Chevron on the…

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The Perfect Private Submarine For You and Eight of Your Supervillain Friends

The bottom of the sea can be a lonely place, and not just for the weird and creepy creatures that call it home. So if you’re already wealthy enough to afford a personal submarine, why descend to the murky depths alone when U-Boat Worx will build you an even more elaborate private sub with enough seating for nine…

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Another Familiar Face Could Return for Fast 10

Robert Eggers is losing hope for his Nosferatu movie to ever get made. Anson Mount talks Pike’s future on Star Trek: Strange New Worlds. Plus, get a look at today’s episode of Picard, and Chucky’s ready for round two on Syfy. To me, my spoilers!

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Biden Administration Urges Global Trade Chief To Speed Up COVID-19 Patent Waiver Process

It’s been nearly a year since the U.S. announced support for waiving vaccine patents, but influential countries have yet to release a possible agreement.

The latest Moto G phones include one with a stylus

Motorola has launched two new 5G phones as part of its Moto G line in North America, and one of them comes with a built-in stylus. The Moto G Stylus 5G has a 6.8-inch Max Vision FHD+ display that stretches edge to edge, as well as a 120Hz refresh rate that’s a first for the line. It also comes with a 50-megapixel camera system that’s comprised of a Macro Vision lens and a 118-degree ultra-wide angle lens. For selfies, the device has a 16-megapixel front camera that has improved light sensitivity over its predecessors. The device is powered by a Qualcomm Snapdragon 695 processor and is equipped with a 5000 mAh battery.

Its stylus, similar to the Samsung Galaxy Note’s and S22 Ultra’s, is closely integrated with the phone. Apps that support it show up the moment you pop out the stylus, and you can start writing on the screen without unlocking the device. The phone has up to 8GB in memory and 256GB of storage with the option to expand it with a microSD card that’s up to 1TB in size.

The other new entry to the product line is the Moto G 5G, which has a 6.5-inch HD+ display that has a 20:9 aspect ratio and a 90Hz refresh rate. It has a 50-megapixel main camera and a 13-megapixel front cam, and it’s powered by a MediaTek Dimensity 700 processor. The phone comes in variants with up to 6GB in RAM and up to 256GB in storage, though you can expand it with a microSD card that’s up to 1TB in size. Both phones also have 3.5mm jacks, so you can still use wired earphones with them.

Motorola has yet to announce the phones’ prices and availability, but we’ll keep you posted when we hear more. It’s worth noting that Moto G phones are historically mid-range in pricing, though the Stylus 5G will most likely be a bit more expensive based on its specs. 

MIT's newest computer vision algorithm identifies images down to the pixel

For humans, identifying items in a scene — whether that’s an avocado or an Aventador, a pile of mashed potatoes or an alien mothership — is as simple as looking at them. But for artificial intelligence and computer vision systems, developing a high-fidelity understanding of their surroundings takes a bit more effort. Well, a lot more effort. Around 800 hours of hand-labeling training images effort, if we’re being specific. To help machines better see the way people do, a team of researchers at MIT CSAIL in collaboration with Cornell University and Microsoft have developed STEGO, an algorithm able to identify images down to the individual pixel.

imagine looking around, but as a computer
MIT CSAIL

Normally, creating CV training data involves a human drawing boxes around specific objects within an image — say, a box around the dog sitting in a field of grass — and labeling those boxes with what’s inside (“dog”), so that the AI trained on it will be able to tell the dog from the grass. STEGO (Self-supervised Transformer with Energy-based Graph Optimization), conversely, uses a technique known as semantic segmentation, which applies a class label to each pixel in the image to give the AI a more accurate view of the world around it.

Whereas a labeled box would have the object plus other items in the surrounding pixels within the boxed-in boundary, semantic segmentation labels every pixel in the object, but only the pixels that comprise the object — you get just dog pixels, not dog pixels plus some grass too. It’s the machine learning equivalent of using the Smart Lasso in Photoshop versus the Rectangular Marquee tool.

The problem with this technique is one of scope. Conventional multi-shot supervised systems often demand thousands, if not hundreds of thousands, of labeled images with which to train the algorithm. Multiply that by the 65,536 individual pixels that make up even a single 256×256 image, all of which now need to be individually labeled as well, and the workload required quickly spirals into impossibility.

Instead, “STEGO looks for similar objects that appear throughout a dataset,” the CSAIL team wrote in a press release Thursday. “It then associates these similar objects together to construct a consistent view of the world across all of the images it learns from.”

“If you’re looking at oncological scans, the surface of planets, or high-resolution biological images, it’s hard to know what objects to look for without expert knowledge. In emerging domains, sometimes even human experts don’t know what the right objects should be,” MIT CSAIL PhD student, Microsoft Software Engineer, and the paper’s lead author Mark Hamilton said. “In these types of situations where you want to design a method to operate at the boundaries of science, you can’t rely on humans to figure it out before machines do.”

Trained on a wide variety of image domains — from home interiors to high altitude aerial shots — STEGO doubled the performance of previous semantic segmentation schemes, closely aligning with the image appraisals of the human control. What’s more, “when applied to driverless car datasets, STEGO successfully segmented out roads, people, and street signs with much higher resolution and granularity than previous systems. On images from space, the system broke down every single square foot of the surface of the Earth into roads, vegetation, and buildings,” the MIT CSAIL team wrote.

imagine looking around, but as a computer
MIT CSAIL

“In making a general tool for understanding potentially complicated data sets, we hope that this type of an algorithm can automate the scientific process of object discovery from images,” Hamilton said. “There’s a lot of different domains where human labeling would be prohibitively expensive, or humans simply don’t even know the specific structure, like in certain biological and astrophysical domains. We hope that future work enables application to a very broad scope of data sets. Since you don’t need any human labels, we can now start to apply ML tools more broadly.”

Despite its superior performance to the systems that came before it, STEGO does have limitations. For example, it can identify both pasta and grits as “food-stuffs” but doesn’t differentiate between them very well. It also gets confused by nonsensical images, such as a banana sitting on a phone receiver. Is this a food-stuff? Is this a pigeon? STEGO can’t tell. The team hopes to build a bit more flexibility into future iterations, allowing the system to identify objects under multiple classes.

The Galaxy A53 Offers Some of Samsung's Biggest Strengths Without the Price Tag

Mid-range smartphones are having a moment. Every major brand that considers itself a worthy player in today’s smartphone wars has to have an affordable equivalent to its flashy flagship. For Google, it’s the Pixel 5a—soon to be Pixel 6a, if rumors are true. For Apple, the iPhone SE nets you the same silicon as the…

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Judge Mulls Lawsuit Seeking To Kick Rep. Paul Gosar, 2 Others Off Ballot Over U.S. Capitol Riot

Lawsuits seeking to disqualify Reps. Paul Gosar and Andy Biggs and state Rep. Mark Finchem allege they are ineligible to hold office because they participated in an insurrection.

NASA enlists SpaceX and Amazon to help develop next-gen space communications

NASA has pickedSpaceX, Amazon and four other American companies to develop the next generation of near-Earth space communication services meant to support its future missions. The agency started looking for partners under the Communication Services Project (CSP) in mid-2021, explaining that the use of commercially provided SATCOM will reduce costs and allow it to focus its efforts on deep space exploration and science missions.

“Adopting commercial SATCOM capabilities will empower missions to leverage private sector investment that far exceeds what government can do,” NASA wrote in the official project page. By using technology developed by commercial companies, the agency will have continued access to any innovation they incorporate into the system. At the moment, NASA relies on its Tracking and Data Relay Satellite (TDRS) system for near-Earth space communications. Many of its satellites were launched in the 80’s and 90’s, though, and it’s set to be decommissioned in the coming years. 

The funded agreements under NASA’s Communication Services Project has a combined value of $278.5 million, with SpaceX getting the highest cut. NASA expects the companies to match and exceed its contribution during the five-year development period. SpaceX, which proposed a “commercial optical low-Earth orbiting relay network for high-rate SATCOM services,” has been awarded $69.95 million. Amazon’s Project Kuiper is getting the second-highest cut and has been awarded $67 million, while Viasat Incorporated has been awarded $53.3 million. The other three awardees are Telesat US Services ($30.65 million), SES Government Solutions ($28.96 million) and Inmarsat Government Inc. ($28.6 million).

All the participants are expected to be able to conduct in-space demonstrations by 2025 and show that their technology is capable of “new high-rate and high-capacity two-way communications.” NASA will sign multiple long-term contracts with the companies that succeed in developing effective communication technologies for near-Earth operations by 2030.