UCLA-developed artificial intelligence device identifies objects at the speed of light

The 3D-printed artificial neural network can be used in medicine, robotics and security

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The network, composed of a series of polymer layers, works using light that travels through it. Each layer is 8 centimeters square.

A team of UCLA electrical and computer engineers has created a physical artificial neural network — a device modeled on how the human brain works — that can analyze large volumes of data and identify objects at the actual speed of light. The device was created using a 3D printer at the UCLA Samueli School of Engineering.

Numerous devices in everyday life today use computerized cameras to identify objects — think of automated teller machines that can “read” handwritten dollar amounts when you deposit a check, or internet search engines that can quickly match photos to other similar images in their databases. But those systems rely on a piece of equipment to image the object, first by “seeing” it with a camera or optical sensor, then processing what it sees into data, and finally using computing programs to figure out what it is.

The UCLA-developed device gets a head start. Called a “diffractive deep neural network,” it uses the light bouncing from the object itself to identify that object in as little time as it would take for a computer to simply “see” the object. The UCLA device does not need advanced computing programs to process an image of the object and decide what the object is after its optical sensors pick it up. And no energy is consumed to run the device because it only uses diffraction of light.

New technologies based on the device could be used to speed up data-intensive tasks that involve sorting and identifying objects. For example, a driverless car using the technology could react instantaneously — even faster than it does using current technology — to a stop sign. With a device based on the UCLA system, the car would “read” the sign as soon as the light from the sign hits it, as opposed to having to “wait” for the car’s camera to image the object and then use its computers to figure out what the object is.

Technology based on the invention could also be used in microscopic imaging and medicine, for example, to sort through millions of cells for signs of disease.

The study was published online in Science on July 26.

“This work opens up fundamentally new opportunities to use an artificial intelligence-based passive device to instantaneously analyze data, images and classify objects,” said Aydogan Ozcan, the study’s principal investigator and the UCLA Chancellor’s Professor of Electrical and Computer Engineering. “This optical artificial neural network device is intuitively modeled on how the brain processes information. It could be scaled up to enable new camera designs and unique optical components that work passively in medical technologies, robotics, security or any application where image and video data are essential.”

The process of creating the artificial neural network began with a computer-simulated design. Then, the researchers used a 3D printer to create very thin, 8 centimeter-square polymer wafers. Each wafer has uneven surfaces, which help diffract light coming from the object in different directions. The layers look opaque to the eye but submillimeter-wavelength terahertz frequencies of light used in the experiments can travel through them. And each layer is composed of tens of thousands of artificial neurons — in this case, tiny pixels that the light travels through.

Together, a series of pixelated layers functions as an “optical network” that shapes how incoming light from the object travels through them. The network identifies an object because the light coming from the object is mostly diffracted toward a single pixel that is assigned to that type of object.

The researchers then trained the network using a computer to identify the objects in front of it by learning the pattern of diffracted light each object produces as the light from that object passes through the device. The “training” used a branch of artificial intelligence called deep learning, in which machines “learn” through repetition and over time as patterns emerge.

“This is intuitively like a very complex maze of glass and mirrors,” Ozcan said. “The light enters a diffractive network and bounces around the maze until it exits. The system determines what the object is by where most of the light ends up exiting.”

In their experiments, the researchers demonstrated that the device could accurately identify handwritten numbers and items of clothing — both of which are commonly used tests in artificial intelligence studies. To do that, they placed images in front of a terahertz light source and let the device “see” those images through optical diffraction.

They also trained the device to act as a lens that projects the image of an object placed in front of the optical network to the other side of it — much like how a typical camera lens works, but using artificial intelligence instead of physics.

Because its components can be created by a 3D printer, the artificial neural network can be made with larger and additional layers, resulting in a device with hundreds of millions of artificial neurons. Those bigger devices could identify many more objects at the same time or perform more complex data analysis. And the components can be made inexpensively — the device created by the UCLA team could be reproduced for less than $50.

While the study used light in the terahertz frequencies, Ozcan said it would also be possible to create neural networks that use visible, infrared or other frequencies of light. A network could also be made using lithography or other printing techniques, he said.

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The study’s others authors, all from UCLA Samueli, are postdoctoral scholars Xing Lin, Yair Rivenson, and Nezih Yardimci; graduate students Muhammed Veli and Yi Luo; and Mona Jarrahi, UCLA professor of electrical and computer engineering.

The research was supported by the National Science Foundation and the Howard Hughes Medical Institute. Ozcan also has UCLA faculty appointments in bioengineering and in surgery at the David Geffen School of Medicine at UCLA. He is the associate director of the UCLA California NanoSystems Institute and an HHMI professor.

The Tech Giants Growing Behind China’s Great Firewall

The Tech Giants Growing Behind China’s Great Firewall

The Chart of the Week is a weekly Visual Capitalist feature on Fridays.

Every day, your feeds are likely dominated by the latest news about Silicon Valley’s biggest tech giants.

Whether it’s Facebook’s newest algorithm changes, Amazon’s announcement to enter the healthcare market, a new acquisition by Alphabet, or the buzz about the latest iPhone – the big four tech giants in the U.S. are covered extensively by the media, and we’re all very familiar with what they do.

However, what is less commonly talked about is the alternate universe that exists on the other side of China’s Great Firewall. It’s there that four Chinese tech giants are taking advantage of a lack of foreign competition to post explosive growth numbers – some which compare favorably even to their American peers.

BIZARRO WORLD

Like the “Bizarro Jerry” episode of Seinfeld, the Chinese-based tech giants look recognizably familiar – but markedly different – to the ones we know so well.

ALIBABA

Likely the best known of China’s tech giants, Alibaba is the dominant online retailer in the country. The company had revenues of $25.1 billion in 2017 and is seeing that revenue grow at impressive speeds. In its most recent quarterly results (Q3, 2017), the company noted a 56% jump in revenue.

Amazon’s tough sell: Amazon does exist in the Chinese market, but it just has trouble competing with Jack Ma’s creation. Amazon has less than a 1% share of the e-commerce space in China, after a decade of trying to get a foothold. Further, Alibaba also runs AliCloud, which provides direct competition to Amazon’s AWS.

BAIDU

Baidu is the largest search engine in China and also a leading player in AI. It’s the most visited website in China, and ranks #4 globally. The company will announce 2017 annual results in the coming weeks, after reporting a 29% jump in revenue in Q3 2017.

Google’s searching for a way in: Google was blocked in China in 2010 after refusing to filter search requests. However, since then, the giant has been able to take very small steps in entering the Chinese market – even though its signature search engine is still blocked, Google now has at least three offices in the country.

TENCENT

Tencent has recently been in the news for its rapidly surging stock. The company, which owns the dominant social platform in China (WeChat), is now valued at over $500 billion. For those keeping tabs, Facebook is currently worth $550 billion.

It’s complicated: Facebook remains blocked by China, meaning that Zuckerberg and company can’t take advantage of a 1 billion plus market of people with growing buying power. Even if it found its way in, there are multiple social platforms in China and competition would be stiff.

XIAOMI

Dubbed as “China’s Apple”, Xiaomi is one of the world’s most valuable private companies. Things have been hot and cold for the ambitious smartphone manufacturer, but recently reports have surfaced that Xiaomi will IPO in the second half of 2018 for upwards of $50 billion.

AI creates jobs for real people

Since the idea of robots doing jobs that a human can do there has been a widespread fear of what this might mean for the working population in the more advanced economies, where they are more likely to appear in greater numbers first. However, a new report by PricewaterhouseCooper in the UK has brought hope, because it claims that AI will actually create more jobs and compensate for those lost to automation.

The PwC report actually sticks a number on new employment opportunities. It says AI will deliver 7.2 million new jobs in healthcare, science and education by 2037. Of course, one has to balance this against the 7 million jobs lost to automation, but as PwC points out, AI is the winner and will boost economic growth.

It also estimates that around 20% of jobs in the UK will be automated over the next 20 years and that every economic sector will be affected. PwC said: “AI and related technologies such as robotics, drones and driverless vehicles will replace human workers in some areas, but it will also create many additional jobs as productivity and real incomes rise and new and better products are developed.”

AI can boost number of healthcare jobs

Fears among employees have already been raised by the use of robots like Pepper, made by Japanese firm Softbank Robotics. Pepper is already in use in banks, shops and social care, the latter being a major concern for Britain at the moment, as endless reports indicate the system is failing. However, the good news for all those healthcare and social workers is that PwcC claims that AI could make these two sectors amongst the biggest winners and generate one million new jobs, which is 20% more than the existing number of jobs in the sector.

Manufacturing, transport and logistics may lose out

On the other hand, as more driverless vehicles arrive and factories and warehouses become more automated, this employment sector could see a reduction in job opportunities, perhaps as much as 22%, or 400,000. The report also says clerical tasks in the public sector are likely to be replaced by algorithms while in the defence industry humans will increasingly be replaced by drones and other technologies.

Does AI offer hope post-Brexit?

This report may lift some spirits at a moment in British politics where things have never looked more unstable for the UK economy, if only for the reason that the business of exiting the European Union has raised more questions marks about the future of British trade and industry than it has been able to answer. However, if AI can create new jobs for working people and at least match the loss of jobs to automation, there’s a hope that the fallout from whatever the negotiations bring over the next few months will not hurt as much as many in business fear.

UK’s FCA opens up sandbox for more play

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In a week where the British government is losing Cabinet ministers on an almost daily basis as a result of party in fighting over the Brexit negotiations, making the pound sterling plunge in value, the UK’s financial regulator, the Financial Conduct Authority (FCA) has taken a bold step forward in recognising the potential of blockchain-based startups.

The FCA started a regulatory ‘sandbox’ some time ago in 2016 and it has just added its fourth cohort of startups to the process. The FCA received a total of 69 applications to participate in the exploration, and this week it has added 11 of the 29 successfully accepted applicants.

In its announcement regarding Cohort 4, the FCA revealed, “Applications came from a diverse range of firms operating across the financial services sector including in areas such as consumer credit, automated advice and insurance.”

The FCA also said, “We have accepted a number of firms that will be testing propositions relating to cryptoassets. We are keen to explore whether, in a controlled environment, consumer benefits can be delivered while effectively managing the associated risks.”

The startups in Cohort 4

One of the businesses in this cohort is 20/30. This London based financial firm is using the DLT to allow “companies to raise capital in a more efficient and streamlined way,” and it is partnering with the London Stock Exchange and Nivaura. According to the FCA’s press release, 20/30 will be issuing an equity token on the Ethereum blockchain. Capexmove, also in this new cohort is offering a similar service.

Another that stands out is called ‘Chasing Returns’. This startup is described as “Psychology-based risk platform that promotes good money management discipline and improves outcomes for customers that trade Contracts for Difference (CfDs). It acts like a digital coach, encouraging adherence to money management and risk exposure levels.”

While for those people with ID problems, ‘Community First Credit Union’ offers an “Initiative to facilitate creation of an identity token that supports customers who lack traditional forms of ID, in order to assist them in accessing bank account services in the UK.”

The latter perhaps answers the issues that many British immigrants have faced recently, most notably those who arrived from the Caribbean on the ‘Windrush’ and in recent months have found themselves at risk of deportation, because of lack of documentation establishing their British citizenship and right to stay.

The FCA has chosen a fascinating selection of startups for Cohort 4 and indicates its willingness to be open-minded and inclusive when it comes to envisioning a future for blackchain-based businesses. It certainly seems to be making better progress with blockchain than the government is with Brexit.