Julia Louis-Dreyfus Reveals Storyline For Last Season Of ‘Veep’

The red carpet premiere for the HBO’ show’s season was bittersweet.

Interior Dept. Nominee’s Rise A Win For His Former Lobbying Clients

New analysis shows ex-clients of longtime lobbyist David Bernhardt have had dozens of meetings with agency officials.

FarmWise and Roush are making autonomous vegetable weeders

Silicon Valley startup FarmWise Labs announced today that it is teaming up with Michigan-based manufacturing and automotive company Roush to create autonomous vegetable weeders. The companies will work together over the course of the year to create p…

AT&T stores will carry Magic Leap's AR headset starting April 1st

There are a number of challenges you face if you’re interested in a Magic Leap One headset, not the least of which is trying it. Are you really going to drop $2,295 sight unseen, even if you’re an eager augmented reality developer? You won’t have to…

How Technology and Climate Change Are Transforming America's Wildest Dog Sled Race

The Iditarod is at a crossroads. The thousand-mile sled dog race through Alaska is bound as much by tradition as by the rigging between dog-sledders, or mushers, and their dog teams, who must lead each other through some of North America’s wildest land. It’s the sort of tradition one would expect to fade into legend,…

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In Banning April Fools' Day Pranks, Microsoft Is the Hero We All Need

Of all the days of the year, April Fools’ is the most cursed day on the internet. Cringey branded memes, inconvenient pranks, and annoying social media scares—this age-old tradition is now the day when anyone looking to preserve their sanity should just log off. But in 2019, Microsoft has emerged as a hero among tech…

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This self-driving AI faced off against an champion racer (kind of)

Developments in the self-driving car world can sometimes be a bit dry: a million miles without an accident, a 10 percent increase in pedestrian detection range, and so on. But this research has both an interesting idea behind it and a surprisingly hands-on method of testing: pitting the vehicle against a real racing driver on a course.

To set expectations here, this isn’t some stunt, it’s actually warranted given the nature of the research, and it’s not like they were trading positions, jockeying for entry lines, and generally rubbing bumpers. They went separately, and the researcher, whom I contacted, politely declined to provide the actual lap times. This is science, people. Please!

The question which Nathan Spielberg and his colleagues at Stanford were interested in answering has to do with an autonomous vehicle operating under extreme conditions. The simple fact is that a huge proportion of the miles driven by these systems are at normal speeds, in good conditions. And most obstacle encounters are similarly ordinary.

If the worst should happen and a car needs to exceed these ordinary bounds of handling — specifically friction limits — can it be trusted to do so? And how would you build an AI agent that can do so?

The researchers’ paper, published today in the journal Science Robotics, begins with the assumption that a physics-based model just isn’t adequate for the job. These are computer models that simulate the car’s motion in terms of weight, speed, road surface, and other conditions. But they are necessarily simplified and their assumptions are of the type to produce increasingly inaccurate results as values exceed ordinary limits.

Imagine if such a simulator simplified each wheel to a point or line when during a slide it is highly important which side of the tire is experiencing the most friction. Such detailed simulations are beyond the ability of current hardware to do quickly or accurately enough. But the results of such simulations can be summarized into an input and output, and that data can be fed into a neural network — one that turns out to be remarkably good at taking turns.

The simulation provides the basics of how a car of this make and weight should move when it is going at speed X and needs to turn at angle Y — obviously it’s more complicated than that, but you get the idea. It’s fairly basic. The model then consults its training, but is also informed by the real-world results, which may perhaps differ from theory.

So the car goes into a turn knowing that, theoretically, it should have to move the wheel this much to the left, then this much more at this point, and so on. But the sensors in the car report that despite this, the car is drifting a bit off the intended line — and this input is taken into account, causing the agent to turn the wheel a bit more, or less, or whatever the case may be.

And where does the racing driver come into it, you ask? Well, the researchers needed to compare the car’s performance with a human driver who knows from experience how to control a car at its friction limits, and that’s pretty much the definition of a racer. If your tires aren’t hot, you’re probably going too slow.

The team had the racer (a “champion amateur race car driver,” as they put it) drive around the Thunderhill Raceway Park in California, then sent Shelley — their modified, self-driving 2009 Audi TTS — around as well, ten times each. And it wasn’t a relaxing Sunday ramble. As the paper reads:

Both the automated vehicle and human participant attempted to complete the course in the minimum amount of time. This consisted of driving at accelerations nearing 0.95g while tracking a minimum time racing trajectory at the the physical limits of tire adhesion. At this combined level of longitudinal and lateral acceleration, the vehicle was able to approach speeds of 95 miles per hour (mph) on portions of the track.

Even under these extreme driving conditions, the controller was able to consistently track the racing line with the mean path tracking error below 40 cm everywhere on the track.

In other words, while pulling a G and hitting 95, the self-driving Audi was never more than a foot and a half off its ideal racing line. The human driver had much wider variation, but this is by no means considered an error — they were changing the line for their own reasons.

“We focused on a segment of the track with a variety of turns that provided the comparison we needed and allowed us to gather more data sets,” wrote Spielberg in an email to TechCrunch. “We have done full lap comparisons and the same trends hold. Shelley has an advantage of consistency while the human drivers have the advantage of changing their line as the car changes, something we are currently implementing.”

Shelley showed far lower variation in its times than the racer, but the racer also posted considerably lower times on several laps. The averages for the segments evaluated were about comparable, with a slight edge going to the human.

This is pretty impressive considering the simplicity of the self-driving model. It had very little real-world knowledge going into its systems, mostly the results of a simulation giving it an approximate idea of how it ought to be handling moment by moment. And its feedback was very limited — it didn’t have access to all the advanced telemetry that self-driving systems often use to flesh out the scene.

The conclusion is that this type of approach, with a relatively simple model controlling the car beyond ordinary handling conditions, is promising. It would need to be tweaked for each surface and setup — obviously a rear-wheel-drive car on a dirt road would be different than front-wheel on tarmac. How best to create and test such models is a matter for future investigation, though the team seemed confident it was a mere engineering challenge.

The experiment was undertaken in order to pursue the still-distant goal of self-driving cars being superior to humans on all driving tasks. The results from these early tests are promising, but there’s still a long way to go before an AV can take on a pro head-to-head. But I look forward to the occasion.

This Newly Discovered Mastodon Species Roamed California for Millions of Years

If you ponder mammoths, certain species of which died out a mere 3,000 or so years ago, their existence is but a breath away from our own. Echoes of their lives can be seen in today’s elephants, which lumber across our world in ways that might not be so different than their ancient relatives. Mammoths are almost…

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Magic Leap One heads to AT&T with Game of Thrones promos in tow

Early adopters have been able to purchase the Magic Leap One headset for a few months now, but beginning next week, you’ll have another option when it comes to acquiring one. AT&T has announced that it will begin carrying the Magic Leap One next week, and it’ll have various Game of Thrones tie-ins to go along with it, just in … Continue reading

Grindr's Chinese Parent Company Strong-Armed Into Selling Dating Service Over National Security Concerns

Beijing Kunlun Tech, the parent company of dating app Grindr, is planning to sell the service after a national security committee in the U.S. found its acquisition of the dating app last year posed a national security risk, Reuters reported Monday.

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