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Robotic Automations

Inside the Autonomous Racing League event that pitted a self-driving car against a Formula 1 driver | TechCrunch


Wander the pits at any professional motorsports event, especially something like Formula 1, and you’ll see endless computer displays full of telemetry. Modern teams are awash in real-time digital feedback from the cars. I’ve been in many of these pits over the years and marveled at the streams of data, but never have I seen an instance of the Microsoft Visual Studio software development suite running there right amid the chaos.

But then, I’ve never attended anything like the inaugural Abu Dhabi Autonomous Racing League event this past weekend. The A2RL, as it is known, is not the first autonomous racing series: There’s the Roborace series, which saw autonomous race cars setting fast lap times while dodging virtual obstacles, and the Indy Autonomous Challenge, which most recently ran at the Las Vegas Motor Speedway during CES 2024.

While the Roborace focuses on single-car time trials and the Indy Autonomous series centers on oval action, A2RL set out to break new ground in a couple of areas.

A2RL put four cars on track, competing simultaneously for the first time. And, perhaps more significantly, it pitted the top-performing autonomous car against a human being, former Formula 1 pilot Daniil Kvyat, who drove for various teams between 2014 and 2020.

Image Credits: Autonomous Racing League

The real challenge was behind the scenes, with teams staffed with an impressively diverse cadre of engineers, ranging from fledgling coders to doctorate students to full-time race engineers, all fighting to find the limit in a very new way.

Unlike Formula 1, where 10 manufacturers design, develop and produce completely bespoke cars (sometimes with the help of AI), the A2RL race cars are entirely standardized to provide a level playing field. The 550-horsepower machines, borrowed from the Japanese Super Formula Championship, are identical, and the teams are not allowed to change a single component.

That includes the sensor array, which features seven cameras, four radar sensors, three lidar sensors and GPS to boot — all of which are used to perceive the world around them. As I would learn while wandering the pits and chatting to the various teams, not everybody is fully tapping into the 15 terabytes of data each car hoovers up every single lap.

Some teams, like the Indianapolis-based Code19, only started work on the monumental project of creating a self-driving car a few months ago. “There’s four rookie teams here,” said Code19 co-founder Oliver Wells. “Everyone else has been competing in competitions just like this, some of them for up to seven years.”

It’s all about the code

Image Credits: Tim Stevens

Munich-based TUM and Milan-based Polimove have extensive experience running and winning in both Roborace and the Indy Autonomous Challenge. That experience carries over, as does the source code.

“On the one hand, the code is continuously developed and improved anyway,” said Simon Hoffmann, team principal at TUM. The team made adjustments to change the cornering behavior to suit the sharper turns in the road course and also adjust the overtaking aggression. “But in general, I would say we use the same base software,” he said.

Through the series of numerous qualifying rounds throughout the weekend, the teams with the greatest experience dominated the timing charts. TUM and Polimove were the only two teams to complete lap times in less than two minutes. Code19’s fastest lap, however, was just over three minutes; the other new teams were far slower.

This has created a competition that’s rarely seen in software development. While there have certainly been previous competitive coding challenges, like TopCoder or Google Kick Start, this is a very different sort of thing. Improvements in code mean faster lap times — and fewer crashes.

Kenna Edwards is a Code19 assistant race engineer and a student at Indiana University. She brought some previous app development experience to the table, but had to learn C++ to write the team’s antilock braking system. “It saved us at least a couple of times from crashing,” she said.

Unlike traditional coding problems that might require debuggers or other tools to monitor, improved algorithms here have tangible results. “A cool thing has been seeing the flat spots on the tire improve over the next session. Either they’ve reduced in size or in frequency,” Edwards said.

This implementation of theory not only makes for engaging engineering challenges but also opens up viable career paths. After earlier interning with Chip Ganassi Racing and General Motors, and thanks to her experience with Code19, Edwards starts full-time at GM Motorsports this summer.

An eye toward the future

Image Credits: Tim Stevens

That sort of development is a huge part of what A2RL is about. Shadowing the main on-track action is a secondary series of competitions for younger students and youth groups around the world. Before the main A2RL event, those groups competed with autonomous 1:8-scale model cars.

“The aim is, next year, we keep for the schools the smaller model cars, we’ll keep for the universities maybe doing it on go-karts, a bit bigger, they can play with the autonomous go-karts. And then, if you want to be in the big league, you start racing on these cars,” said Faisal Al Bannai, the secretary general of Abu Dhabi’s Advanced Technology Research Council, the ATRC. “I think by them seeing that path, I think you’ll encourage more guys to come into research, to come into science.”

It’s Al Bannai’s ATRC that’s footing the bill for the A2RL, covering everything from the cars to the hotels for the numerous teams, some of whom have been testing in Abu Dhabi for months. They also put on a world-class party for the main event, complete with concerts, drone races, and a ridiculous fireworks show.

The on-track action was a little less spectacular. The first attempt at a four-car autonomous race was aborted after one car spun, blocking the following cars. The second race, however, was far more exciting, featuring a pass for the lead when the University of Modena’s Unimore team car went wide. It was TUM that made the pass and won the race, taking home the lion’s share of the $2.25 million prize purse.

As for man vs. machine, Daniil Kvyat made quick work of the autonomous car, passing it not once but twice to huge cheers from the assembled crowd of more than 10,000 spectators who took advantage of free tickets to come see a little bit of history — plus around 600,000 more streaming the event.

The technical glitches were unfortunate. Still it was a remarkable event to witness and illustrated how far autonomy has come — and of course, how much more progress needs to be made. The fastest car was still upward of 10 seconds off of Kvyat’s time. However, it ran smooth, clean laps at an impressive speed. That’s in stark contrast to the first DARPA Grand Challenge in 2004, which saw every single competitor either crashing into a barrier or meandering off into the desert on an unplanned sojourn.

For A2RL, the real test will be whether it can evolve into a financially viable series. Advertising drives most motorsports, but here, there’s the added benefit of developing algorithms and technologies that manufacturers could reasonably apply in their cars.

ATRC’s Al Bannai told me that while the series organizers own the cars, the teams own the code and are free to license it: “What they compete on at the moment is the algorithm, the AI algorithm that makes this car do what it does. That belongs to each of the teams. It doesn’t belong to us.”

The real race, then, might not be on the track, but in securing partnerships with manufacturers. After all, what better way to inspire confidence in your autonomous technology than by showing it can handle traffic on the race track at 160 mph?


Software Development in Sri Lanka

Robotic Automations

The first-ever race between four self-driving cars and a Formula 1 driver just happened in Abu Dhabi | TechCrunch


Wander the pits at any professional motorsports event, especially something like Formula 1, and you’ll see endless computer displays full of telemetry. Modern teams are awash in real-time digital feedback from the cars. I’ve been in many of these pits over the years and marveled at the streams of data, but never have I seen an instance of the Microsoft Visual Studio software development suite running there right amid the chaos.

But then, I’ve never attended anything like the inaugural Abu Dhabi Autonomous Racing League event this past weekend. The A2RL, as it is known, is not the first autonomous racing series: There’s the Roborace series, which saw autonomous race cars setting fast lap times while dodging virtual obstacles; and the Indy Autonomous Challenge, which most recently ran at Las Vegas Motor Speedway during CES 2024.

While the Roborace focused on single-car time trials and the Indy Autonomous series centers on oval action, A2RL set out to break new ground in a couple of areas.

A2RL put four cars on track, competing simultaneously for the first time. And, perhaps more significantly, it pitted the top-performing autonomous car against a human being, former Formula 1 pilot Daniil Kvyat, who drove for various teams between 2014 and 2020.

Image Credits: Autonomous Racing League

The real challenge was behind the scenes, with teams staffed with an impressively diverse cadre of engineers, ranging from fledgling coders to doctorate students to full-time race engineers, all fighting to find the limit in a very new way.

Unlike Formula 1, where 10 manufacturers design, develop and produce completely bespoke cars (sometimes with the help of AI), the A2RL race cars are entirely standardized to provide a level playing field. The 550-horsepower machines, borrowed from the Japanese Super Formula Championship, are identical, and the teams are not allowed to change a single component.

That includes the sensor array, which features seven cameras, four radar sensors, three lidar sensors and GPS to boot — all of which are used to perceive the world around them. As I would learn while wandering the pits and chatting to the various teams, not everybody is fully tapping into the 15 terabytes of data each car hoovers up every single lap.

Some teams, like the Indianapolis-based Code 19, only started work on the monumental project of creating a self-driving car a few months ago. “There’s four rookie teams here,” said Code 19 co-founder Oliver Wells. “Everyone else has been competing in competitions just like this, some of them for up to seven years.”

It’s all about the code

Image credits: Tim Stevens

Munich-based TUM and Milan-based Polimove have extensive experience running and winning in both Roborace and the Indy Autonomous Challenge. That experience carries over, as does the source code.

“On the one hand, the code is continuously developed and improved anyway,” said Simon Hoffmann, team principal at TUM. The team made adjustments to change the cornering behavior to suit the sharper turns in the road course and also adjust the overtaking aggression. “But in general, I would say we use the same base software,” he said.

Through the series of numerous qualifying rounds throughout the weekend, the teams with the greatest experience dominated the timing charts. TUM and Polimove were the only two teams to complete lap times in less than two minutes. Code 19’s fastest lap, however, was just over three minutes; the other new teams were far slower.

This has created a competition that’s rarely seen in software development. While there have certainly been previous competitive coding challenges, like TopCoder or Google Kick Start, this is a very different sort of thing. Improvements in code mean faster lap times — and fewer crashes.

Kenna Edwards is a Code 19 assistant race engineer and a student at Indiana University. She brought some previous app development experience to the table, but had to learn C++ to write the team’s antilock braking system. “It saved us at least a couple of times from crashing,” she said.

Unlike traditional coding problems that might require debuggers or other tools to monitor, improved algorithms here have tangible results. “A cool thing has been seeing the flat spots on the tire improve over the next session. Either they’ve reduced in size or in frequency,” Edwards said.

This implementation of theory not only makes for engaging engineering challenges but also opens up viable career paths. After earlier interning with Chip Ganassi Racing and General Motors, and thanks to her experience with Code 19, Edwards starts full-time at GM Motorsports this summer.

An eye toward the future

Image Credits:

That sort of development is a huge part of what A2RL is about. Shadowing the main on-track action is a secondary series of competitions for younger students and youth groups around the world. Before the main A2RL event, those groups competed with autonomous 1:8-scale model cars.

“The aim is, next year, we keep for the schools the smaller model cars, we’ll keep for the universities maybe doing it on go-karts, a bit bigger, they can play with the autonomous go-karts. And then, if you want to be in the big league, you start racing on these cars,” said Faisal Al Bannai, the secretary general of Abu Dhabi’s Advanced Technology Research Council, the ATRC. “I think by them seeing that path, I think you’ll encourage more guys to come into research, to come into science.”

It’s Al Bannai’s ATRC that’s footing the bill for the A2RL, covering everything from the cars to the hotels for the numerous teams, some of whom have been testing in Abu Dhabi for months. They also put on a world-class party for the main event, complete with concerts, drone races, and a ridiculous fireworks show.

The on-track action was a little less spectacular. The first attempt at a four-car autonomous race was aborted after one car spun, blocking the following cars. The second race, however, was far more exciting, featuring a pass for the lead when the University of Modena’s Unimore team car went wide. It was TUM that made the pass and won the race, taking home the lion’s share of the $2.25 million prize purse.

As for man vs. machine, Daniil Kvyat made quick work of the autonomous car, passing it not once but twice to huge cheers from the assembled crowd of more than 10,000 spectators who took advantage of free tickets to come see a little bit of history — plus around 600,000 more streaming the event.

The technical glitches were unfortunate. Still it was a remarkable event to witness and illustrated how far autonomy has come — and of course, how much more progress needs to be made. The fastest car was still upwards of 10 seconds off of Kvyat’s time. However, it ran smooth, clean laps at an impressive speed. That’s in stark contrast to the first DARPA Grand Challenge in 2004, which saw every single competitor either crashing into a barrier or meandering off into the desert on an unplanned sojourn.

For A2RL, the real test will be whether it can evolve into a financially viable series. Advertising drives most motorsports, but here, there’s the added benefit of developing algorithms and technologies that manufacturers could reasonably apply in their cars.

ATRC’s Al Bannai told me that while the series organizers own the cars, the teams own the code and are free to license it: “What they compete on at the moment is the algorithm, the AI algorithm that makes this car do what it does. That belongs to each of the teams. It doesn’t belong to us.”

The real race, then, might not be on the track, but in securing partnerships with manufacturers. After all, what better way to inspire confidence in your autonomous technology than by showing it can handle traffic on the race track at 160 mph?


Software Development in Sri Lanka

Robotic Automations

Microsoft's $1.5B check for G42 shows growing US-China rift | TechCrunch


As the Gulf region gains growing strategic importance for the tech war between the U.S. and China, Microsoft makes a big move into one of its richest oil countries.

On Monday evening, Microsoft announced a $1.5 billion strategic investment in G42, the Abu Dhabi-based company that has become a major force in the United Arab Emirates’ ambition to be a global leader in artificial intelligence. The minority stake will give Brad Smith, Microsoft’s vice chair and president, a seat on G42’s board of directors.

The deal signifies much more than a mere commercial collaboration between two AI titans. It serves as evidence of the two countries’ strategic positioning amid rising geopolitical tensions.

The funding comes amid U.S. politicians’ escalating concerns over G42’s ties with China. In January, the bipartisan-select House Select Committee on the Chinese Communist Party sent a letter to Commerce Secretary Gina Raimondo calling for the inclusion of G42 on the Entity List, which would bar the Emirati company from accessing sensitive U.S. technologies.

Such a move would put G42 under the same security concerns umbrella as Huawei, which was placed on the Entity List in 2019 and has since been restricted from acquiring critical U.S. technologies, including high-end chips and certain Android services.

Now, the Microsoft deal is a judgment on which superpower G42 has aligned itself with.

Delicate dance

As the UAE navigates a delicate balance between the U.S. and China, its AI poster child G42 has inevitably become a proxy in the tech rivalry between the two superpowers. Though a long-time economic and military ally of the U.S., the UAE has in recent times diverged from Washington’s foreign policy and expanded its partnerships with China, a development that worries Washington.

Last year, the UAE’s president Mohamed bin Zayed attended Russia’s flagship economic forum, which was largely shunned by Western countries in protest of the Ukraine war. The UAE has also increased military cooperation with China, including a plan for their first joint air force training last year.

On the business side, the UAE is attracting Chinese venture capitalists and entrepreneurs who are increasingly excluded from the U.S. market. General managers of Chinese funds have turned to the UAE and its affluent Middle Eastern neighbors for capital as American limited partners retreat from China. Riding on the UAE’s commitment to electrify its economy, China’s electric vehicle manufacturers have been aggressively peddling plug-in models in the market. Last year, premium EV maker Nio secured a handsome $738.5 million investment from an Abu Dhabi-backed fund.

Given the two countries’ increasing economic ties, it’s no surprise that G42, the AI poster child of the UAE, has also forged ties with Chinese firms. What appears to be commercial relationships, however, have greatly concerned U.S. politicians.

In its letter to Raimondo, the House Select Committee on the CCP noted that G42 maintains relationships with companies like Huawei, biotech giant Beijing Genomics Institute (BGI) and Tencent.

The Committee also highlighted the background of G42’s CEO Peng Xiao, who previously held a senior position at a subsidiary of DarkMatter, a company that develops “spyware and surveillance tools that can be used to spy on dissidents, journalists, politicians, and U.S. companies.”

Given these alleged Chinese ties, the Committee is concerned that G42 can be a way for Chinese firms to access U.S. technologies that are otherwise under export control. G42 and its affiliates maintain “extensive commercial relationships” with companies including Microsoft, Dell, and OpenAI.

Picking side

The deal between the two private tech giants represents an uncommon case involving overt backing from their respective governments. According to the announcement, this “commercial partnership is backed by assurances to the U.S. and UAE governments through a first-of-its-kind binding agreement to apply world-class best practices to ensure the secure, trusted, and responsible development and deployment of AI.”

If the deal goes through, it will designate Microsoft as G42’s official cloud partner. Under the agreement, the Emirati company’s data platform and other key technology infrastructure will migrate to Microsoft Azure, which will power G42’s AI product development. G42 already has a partnership with OpenAI that commenced in 2023.

The partnership with Microsoft appears to be a continuation of G42’s ongoing effort to pare back its Chinese influence. The firm has divested from its China-related investments, including TikTok parent ByteDance, and Xiao said late last year that the firm had plans to phase out Chinese hardware because “We cannot work with both sides.”

What Microsoft gains in return is extensive market access to the region, where its AI business and Azure will be implemented across a range of industries like financial services, healthcare, energy, government and education. The partnership will also see the pair launching a $1 billion fund “for developers to boost AI skills” in the UAE and the broader region.

As tech companies have learned in the past few years, it’s become increasingly difficult to avoid picking a side — whether in terms of technology solutions, markets or capital — between the U.S. and China. The developments around G42 demonstrate that even a country like the UAE, which has sought to be a neutral ground between the two rival nations, will ultimately be forced to take a side.




Software Development in Sri Lanka

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