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Monthly Archives: July 2017
AI is changing how we do science. Get a glimpse – Science Magazine
Posted: July 5, 2017 at 11:12 pm
By Science News StaffJul. 5, 2017 , 11:00 AM
Particle physicists began fiddling with artificial intelligence (AI) in the late 1980s, just as the term neural network captured the publics imagination. Their field lends itself to AI and machine-learning algorithms because nearly every experiment centers on finding subtle spatial patterns in the countless, similar readouts of complex particle detectorsjust the sort of thing at which AI excels. It took us several years to convince people that this is not just some magic, hocus-pocus, black box stuff, says Boaz Klima, of Fermi National Accelerator Laboratory (Fermilab) in Batavia, Illinois, one of the first physicists to embrace the techniques. Now, AI techniques number among physicists standard tools.
Neural networks search for fingerprints of new particles in the debris of collisions at the LHC.
2012 CERN, FOR THE BENEFIT OF THE ALICE COLLABORATION
Particle physicists strive to understand the inner workings of the universe by smashing subatomic particles together with enormous energies to blast out exotic new bits of matter. In 2012, for example, teams working with the worlds largest proton collider, the Large Hadron Collider (LHC) in Switzerland, discovered the long-predicted Higgs boson, the fleeting particle that is the linchpin to physicists explanation of how all other fundamental particles get their mass.
Such exotic particles dont come with labels, however. At the LHC, a Higgs boson emerges from roughly one out of every 1 billion proton collisions, and within a billionth of a picosecond it decays into other particles, such as a pair of photons or a quartet of particles called muons. To reconstruct the Higgs, physicists must spot all those more-common particles and see whether they fit together in a way thats consistent with them coming from the same parenta job made far harder by the hordes of extraneous particles in a typical collision.
Algorithms such as neural networks excel in sifting signal from background, says Pushpalatha Bhat, a physicist at Fermilab. In a particle detectorusually a huge barrel-shaped assemblage of various sensorsa photon typically creates a spray of particles or shower in a subsystem called an electromagnetic calorimeter. So do electrons and particles called hadrons, but their showers differ subtly from those of photons. Machine-learning algorithms can tell the difference by sniffing out correlations among the multiple variables that describe the showers. Such algorithms can also, for example, help distinguish the pairs of photons that originate from a Higgs decay from random pairs. This is the proverbial needle-in-the-haystack problem, Bhat says. Thats why its so important to extract the most information we can from the data.
Machine learning hasnt taken over the field. Physicists still rely mainly on their understanding of the underlying physics to figure out how to search data for signs of new particles and phenomena. But AI is likely to become more important, says Paolo Calafiura, a computer scientist at Lawrence Berkeley National Laboratory in Berkeley, California. In 2024, researchers plan to upgrade the LHC to increase its collision rate by a factor of 10. At that point, Calafiura says, machine learning will be vital for keeping up with the torrent of data. Adrian Cho
With billions of users and hundreds of billions of tweets and posts every year, social media has brought big data to social science. It has also opened an unprecedented opportunity to use artificial intelligence (AI) to glean meaning from the mass of human communications, psychologist Martin Seligman has recognized. At the University of Pennsylvanias Positive Psychology Center, he and more than 20 psychologists, physicians, and computer scientists in the World Well-Being Project use machine learning and natural language processing to sift through gobs of data to gauge the publics emotional and physical health.
Thats traditionally done with surveys. But social media data are unobtrusive, its very inexpensive, and the numbers you get are orders of magnitude greater, Seligman says. It is also messy, but AI offers a powerful way to reveal patterns.
In one recent study, Seligman and his colleagues looked at the Facebook updates of 29,000 users who had taken a self-assessment of depression. Using data from 28,000 of the users, a machine-learning algorithm found associations between words in the updates and depression levels. It could then successfully gauge depression in the other users based only on their updates.
In another study, the team predicted county-level heart disease mortality rates by analyzing 148 million tweets; words related to anger and negative relationships turned out to be risk factors. The predictions from social media matched actual mortality rates more closely than did predictions based on 10 leading risk factors, such as smoking and diabetes. The researchers have also used social media to predict personality, income, and political ideology, and to study hospital care, mystical experiences, and stereotypes. The team has even created a map coloring each U.S. county according to well-being, depression, trust, and five personality traits, as inferred from Twitter.
Theres a revolution going on in the analysis of language and its links to psychology, says James Pennebaker, a social psychologist at the University of Texas in Austin. He focuses not on content but style, and has found, for example, that the use of function words in a college admissions essay can predict grades. Articles and prepositions indicate analytical thinking and predict higher grades; pronouns and adverbs indicate narrative thinking and predict lower grades. He also found support for suggestions that much of the 1728 play Double Falsehood was likely written by William Shakespeare: Machine-learning algorithms matched it to Shakespeares other works based on factors such as cognitive complexity and rare words. Now, we can analyze everything that youve ever posted, ever written, and increasingly how you and Alexa talk, Pennebaker says. The result: richer and richer pictures of who people are. Matthew Hutson
For geneticists, autism is a vexing challenge. Inheritance patterns suggest it has a strong genetic component. But variants in scores of genes known to play some role in autism can explain only about 20% of all cases. Finding other variants that might contribute requires looking for clues in data on the 25,000 other human genes and their surrounding DNAan overwhelming task for human investigators. So computational biologist Olga Troyanskaya of Princeton University and the Simons Foundation in New York City enlisted the tools of artificial intelligence (AI).
Artificial intelligence tools are helping reveal thousands of genes that may contribute to autism.
BSIP SA/ALAMY STOCK PHOTO
We can only do so much as biologists to show what underlies diseases like autism, explains collaborator Robert Darnell, founding director of the New York Genome Center and a physician scientist at The Rockefeller University in New York City. The power of machines to ask a trillion questions where a scientist can ask just 10 is a game-changer.
Troyanskaya combined hundreds of data sets on which genes are active in specific human cells, how proteins interact, and where transcription factor binding sites and other key genome features are located. Then her team used machine learning to build a map of gene interactions and compared those of the few well-established autism risk genes with those of thousands of other unknown genes, looking for similarities. That flagged another 2500 genes likely to be involved in autism, they reported last year in Nature Neuroscience.
But genes dont act in isolation, as geneticists have recently realized. Their behavior is shaped by the millions of nearby noncoding bases, which interact with DNA-binding proteins and other factors. Identifying which noncoding variants might affect nearby autism genes is an even tougher problem than finding the genes in the first place, and graduate student Jian Zhou in Troyanskayas Princeton lab is deploying AI to solve it.
To train the programa deep-learning systemZhou exposed it to data collected by the Encyclopedia of DNA Elements and Roadmap Epigenomics, two projects that cataloged how tens of thousands of noncoding DNA sites affect neighboring genes. The system in effect learned which features to look for as it evaluates unknown stretches of noncoding DNA for potential activity.
When Zhou and Troyanskaya described their program, called DeepSEA, in Nature Methods in October 2015, Xiaohui Xie, a computer scientist at the University of California, Irvine, called it a milestone in applying deep learning to genomics. Now, the Princeton team is running the genomes of autism patients through DeepSEA, hoping to rank the impacts of noncoding bases.
Xie is also applying AI to the genome, though with a broader focus than autism. He, too, hopes to classify any mutations by the odds they are harmful. But he cautions that in genomics, deep learning systems are only as good as the data sets on which they are trained. Right now I think people are skeptical that such systems can reliably parse the genome, he says. But I think down the road more and more people will embrace deep learning. Elizabeth Pennisi
This past April, astrophysicist Kevin Schawinski posted fuzzy pictures of four galaxies on Twitter, along with a request: Could fellow astronomers help him classify them? Colleagues chimed in to say the images looked like ellipticals and spiralsfamiliar species of galaxies.
Some astronomers, suspecting trickery from the computation-minded Schawinski, asked outright: Were these real galaxies? Or were they simulations, with the relevant physics modeled on a computer? In truth they were neither, he says. At ETH Zurich in Switzerland, Schawinski, computer scientist Ce Zhang, and other collaborators had cooked the galaxies up inside a neural network that doesnt know anything about physics. It just seems to understand, on a deep level, how galaxies should look.
With his Twitter post, Schawinski just wanted to see how convincing the networks creations were. But his larger goal was to create something like the technology in movies that magically sharpens fuzzy surveillance images: a network that could make a blurry galaxy image look like it was taken by a better telescope than it actually was. That could let astronomers squeeze out finer details from reams of observations. Hundreds of millions or maybe billions of dollars have been spent on sky surveys, Schawinski says. With this technology we can immediately extract somewhat more information.
The forgery Schawinski posted on Twitter was the work of a generative adversarial network, a kind of machine-learning model that pits two dueling neural networks against each other. One is a generator that concocts images, the other a discriminator that tries to spot any flaws that would give away the manipulation, forcing the generator to get better. Schawinskis team took thousands of real images of galaxies, and then artificially degraded them. Then the researchers taught the generator to spruce up the images again so they could slip past the discriminator. Eventually the network could outperform other techniques for smoothing out noisy pictures of galaxies.
AI that knows what a galaxy should look like transforms a fuzzy image (left) into a crisp one (right).
KIYOSHI TAKAHASE SEGUNDO/ALAMY STOCK PHOTO
Schawinskis approach is a particularly avant-garde example of machine learning in astronomy, says astrophysicist Brian Nord of Fermi National Accelerator Laboratory in Batavia, Illinois, but its far from the only one. At the January meeting of the American Astronomical Society, Nord presented a machine-learning strategy to hunt down strong gravitational lenses: rare arcs of light in the sky that form when the images of distant galaxies travel through warped spacetime on the way to Earth. These lenses can be used to gauge distances across the universe and find unseen concentrations of mass.
Strong gravitational lenses are visually distinctive but difficult to describe with simple mathematical ruleshard for traditional computers to pick out, but easy for people. Nord and others realized that a neural network, trained on thousands of lenses, can gain similar intuition. In the following months, there have been almost a dozen papers, actually, on searching for strong lenses using some kind of machine learning. Its been a flurry, Nord says.
And its just part of a growing realization across astronomy that artificial intelligence strategies offer a powerful way to find and classify interesting objects in petabytes of data. To Schawinski, Thats one way I think in which real discovery is going to be made in this age of Oh my God, we have too much data. Joshua Sokol
Organic chemists are experts at working backward. Like master chefs who start with a vision of the finished dish and then work out how to make it, many chemists start with the final structure of a molecule they want to make, and then think about how to assemble it. You need the right ingredients and a recipe for how to combine them, says Marwin Segler, a graduate student at the University of Mnster in Germany. He and others are now bringing artificial intelligence (AI) into their molecular kitchens.
They hope AI can help them cope with the key challenge of moleculemaking: choosing from among hundreds of potential building blocks and thousands of chemical rules for linking them. For decades, some chemists have painstakingly programmed computers with known reactions, hoping to create a system that could quickly calculate the most facile molecular recipes. However, Segler says, chemistry can be very subtle. Its hard to write down all the rules in a binary way.
So Segler, along with computer scientist Mike Preuss at Mnster and Seglers adviser Mark Waller, turned to AI. Instead of programming in hard and fast rules for chemical reactions, they designed a deep neural network program that learns on its own how reactions proceed, from millions of examples. The more data you feed it the better it gets, Segler says. Over time the network learned to predict the best reaction for a desired step in a synthesis. Eventually it came up with its own recipes for making molecules from scratch.
The trio tested the program on 40 different molecular targets, comparing it with a conventional molecular design program. Whereas the conventional program came up with a solution for synthesizing target molecules 22.5% of the time in a 2-hour computing window, the AI figured it out 95% of the time, they reported at a meeting this year. Segler, who will soon move to London to work at a pharmaceutical company, hopes to use the approach to improve the production of medicines.
Paul Wender, an organic chemist at Stanford University in Palo Alto, California, says its too soon to know how well Seglers approach will work. But Wender, who is also applying AI to synthesis, thinks it could have a profound impact, not just in building known molecules but in finding ways to make new ones. Segler adds that AI wont replace organic chemists soon, because they can do far more than just predict how reactions will proceed. Like a GPS navigation system for chemistry, AI may be good for finding a route, but it cant design and carry out a full synthesisby itself.
Of course, AI developers have their eyes trained on those other tasks as well. Robert F. Service
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How AI will change the way we live – VentureBeat
Posted: at 11:12 pm
Will robots take our jobs? When will driverless cars become the norm? How is Industry 4.0 transforming manufacturing? These were just some of the issues addressed at CogX in London last month. Held in association with The Alan Turing Institute, CogX 17 was an event bringing together thought leaders across more than 20 industries and domains to address the impact of artificial intelligence on society. To round off the proceedings, a prestigious panel of judges recognized some of the best contributions to innovation in AI in an awards ceremony.
In his keynote speech, Lord David Young, a former UK Secretary of State for Trade and Industry, was keen to point out that workers should not worry about being made unemployed by robots because, he said, most jobs that would be killed off were miserable anyway.
He told the conference that more jobs than ever would be automated in the future, but that this should be welcomed. When the Spinning Jenny first came in, it was almost exactly the same, he said. They thought it was going to kill employment. We may have a problem one day if the Googles of this world continue to get bigger and the Amazons spread into all sorts of things, but government has the power to regulate that, has the power to break it up.
Im not the slightest worried about it, he continued. Most of the jobs are miserable jobs. What technology has to do is get rid of all the nasty jobs.
Its certainly an interesting analogy, comparing the current tech and AI revolution to the Industrial Revolution. Its hard to disagree that just as the proliferation of machines in the 18th and 19th centuries helped create new jobs and wealth, AI is likely to do the same. There is undoubtedly a bigger question around regulation and whos in charge of this new landscape, however.
CogX also threw some fascinating panel discussions about transportation and smart cities. Panelists including M.C. Srivas, Ubers chief data scientist, and Huawei CTO Ayush Sharma talked at length about the necessity of self-driving cars in our towns and cities, whose roads have become jails where commuters do time. And thats without delving into issues of safety and pollution.
Kenneth Cukier, The Economistsbig data expert, asked the audience whether they thought autonomous cars were likely to hit our cities in either 5, 10, or 15 years. Most of those in attendance, along with the panel, agreed that we should see autonomous cars becoming the norm in the next 10 to 15 years, with clear legislation set to come in around 2023.
However and this is something that affects us directly the panel also agreed that although the mass manufacturing of self-driving cars is still a few years off, intelligent assistants for smart cars are imminent, likely to become standard within the next couple of years. Voice offers countless possibilities in the automotive space. Besides enabling the safe use of existing controls such as in-car entertainment systems or heating/air conditioning, it also offers GPS functionality as well as control over the vehicles mechanics.
The session on Industry 4.0 kicked off by attempting to make sense of a term that has been used for several years. The general consensus was that automating manufacturingwas the best way to express an idea that originated in a report by the German government. Industrial companies have to become automated to survive, and many are building highly integrated engines to capture data from their machines. The market for smart manufacturing tools is expected to hit $250 billion by 2018.
Its well known that robotics are already used in manufacturing to handle larger-scale and more dangerous work. What the panel also discussed are other possibilities AI offers, such as virtual personal assistants for workers to help them complete their daily tasks or smart technology such as 3D printing and its benefits for smaller companies.
Even our entertainment these days is driven by AI. The Industry 4.0 session ended on a lighter note with Limor Schweitzer, CEO at RoboSavvy, encouraging Franky the robot to show the audience its dance moves. Sophia, a humanlike robot created by Hanson Robotics, also provided entertainment at the CogX awards ceremony; she announced the nominees and winners in the category of best innovation in artificial general intelligence, which included my company Sherpa, Alphabets DeepMind, and Vicarious.
CogX also touched on the impact of AI on health, HR, education, legal services, fintech, and many other sectors. Panelists were in agreement that advances in AI must benefit all of us. While there are still many question marks about regulation of the sector, AI already permeates all aspects of our society.
Ian Cowley is the marketing manager at Sherpa, which uses algorithms based on probability models to predict information a user might need.
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Google’s DeepMind Turns to Canada for Artificial Intelligence Boost – Fortune
Posted: at 11:12 pm
Googles high-profile artificial intelligence unit has a new Canadian outpost.
DeepMind, which Google bought in 2014 for roughly $650 million, said Wednesday that it would open a research center in Edmonton, Canada. The new research center, which will work closely with the University of Alberta, is the United Kingdom-based DeepMinds first international AI research lab.
DeepMind, now a subsidiary of Google parent company Alphabet ( goog ) , recruited three University of Alberta professors from to lead the new research lab. The professorsRich Sutton, Michael Bowling, and Patrick Pilarskiwill maintain their positions at the university while working at the new research office.
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Sutton, in particular, is a noted expert in a subset of AI technologies called reinforcement learning and was an advisor to DeepMind in 2010. With reinforcement learning, computers look for the best possible way to achieve a particular goal, and learn from each time they fail.
DeepMind has popularized reinforcement learning in recent years through its AlphaGo program that has beat the worlds top players in the ancient Chinese board game, Go. Google has also incorporated some of the reinforcement learning techniques used by DeepMind in its data centers to discover the best calibrations that result in lower power consumption.
DeepMind has taken this reinforcement learning approach right from the very beginning, and the University of Alberta is the worlds academic leader in reinforcement learning, so its very natural that we should work together, Sutton said in a statement. And as a bonus, we get to do it without moving.
DeepMind has also been investigated by the United Kingdom's Information Commissioner's Office for failing to comply with the United Kingdom's Data Protection Act as it expands to using its technology in the healthcare space.
ICO information commissioner Elizabeth Denham said in a statement on Monday that the office discovered a "number of shortcomings" in the way DeepMind handled patient data as part of a clinical trial to use its technology to alert, detect, and diagnosis kidney injuries. The ICO claims that DeepMind failed to explain to participants how it was using their medical data for the project.
DeepMind said Monday that it "underestimated the complexity" of the United Kingdom's National Health Service "and of the rules around patient data, as well as the potential fears about a well-known tech company working in health." DeepMind said it would be now be more open to the public, patients, and regulators with how it uses patient data.
"We were almost exclusively focused on building tools that nurses and doctors wanted, and thought of our work as technology for clinicians rather than something that needed to be accountable to and shaped by patients, the public and the NHS as a whole," DeepMind said in a statement. "We got that wrong, and we need to do better."
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Artificial Stupidity: Learning To Trust Artificial Intelligence (Sometimes) – Breaking Defense
Posted: at 11:12 pm
A young Marine reaches out for a hand-launched drone.
In science fiction and real life alike, there are plenty of horror stories where humans trust artificial intelligence too much. They range from letting the fictional SkyNet control our nuclear weapons to letting Patriots shoot down friendly planes or letting Tesla Autopilot crash into a truck. At the same time, though, theres also a danger of not trusting AI enough.
As conflict on earth, in space, and in cyberspace becomes increasingly fast-paced and complex, the Pentagons Third Offset initiative is counting on artificial intelligence to help commanders, combatants, and analysts chart a course through chaos what weve dubbed the War Algorithm (click here for the full series). But if the software itself is too complex, too opaque, or too unpredictable for its users to understand, theyll just turn it off and do things manually. At least, theyll try: What worked for Luke Skywalker against the first Death Star probably wont work in real life. Humans cant respond to cyberattacks in microseconds or coordinate defense against a massive missile strike in real time. With Russia and China both investing in AI systems, deactivating our own AI may amount to unilateral disarmament.
Abandoning AI is not an option. Never is abandoning human input. The challenge is to create an artificial intelligence that can earn the humans trust, a AI that seems transparent or even human.
Robert Work
Tradeoffs for Trust
Clausewitz had a term calledcoup doeil, a great commanders intuitive grasp of opportunity and danger on the battlefield, said Robert Work, the outgoing Deputy Secretary of Defense and father of the Third Offset, at a Johns Hopkins AI conference in May. Learning machines are going to give more and more commanderscoup doeil.
Conversely, AI can speak the ugly truths that human subordinates may not. There are not many captains that are going to tell a four-star COCOM (combatant commander) that idea sucks,' Work said, (but) the machine will say, you are an idiot, there is a 99 percent probability that you are going to get your ass handed to you.
Before commanders will take an AIs insights as useful, however, Work emphasized, they need to trust and understand how it works. That requires intensive operational test and evaluation, where you convince yourself that the machineswilldo exactly what you expect them to, reliably and repeatedly, he said. This goes back to trust.
Trust is so important, in fact, that two experts we heard from said they were willing to accept some tradeoffs in performance in order to get it: A less advanced and versatile AI, even a less capable one, is better than a brilliant machine you cant trust.
Army command post
The intelligence community, for instance, is keenly interested in AI that can help its analysts make sense of mind-numbing masses of data. But the AI has to help the analysts explain how it came to its conclusions, or they can never brief them to their bosses, explained Jason Matheny, director of the Intelligence Advanced Research Projects Agency. IARPA is the intelligence equivalent of DARPA, which is running its own explainable AI project. So, when IARPA held one recent contest for analysis software, Matheny told the AI conference, it barred entry to programs whose reasoning could not be explained in plain English.
From the start of this program, (there) was a requirement that all the systems be explainable in natural language, Matheny said. That ended up consuming up about half the effort of the researchers, and they were really irritated.because it meant they couldnt in most cases use the best deep neural net approaches to solve this problem, they had to use kernel-based methods that were easier to explain.
Compared to cutting edge but harder-to-understand software, Matheny said, we got a 20-30 percent performance loss but these tools were actually adopted. They were used by analysts because they were explainable.
Transparent, predictable software isnt only importance for analysts: Its also vital for pilots, said Igor Cherepinsky, director ofautonomy programsat Sikorsky. Sikorskys goal for its MATRIX automated helicopter is that the AI prove itself as reliable as flight controls for manned aircraft, failing only once in a billion flight hours. Its the same probability as the wing falling off, Cherepinsky told me in an interview. By contrast, traditional autopilots are permitted much higher rates of failure, on the assumption a competent human pilot will take over if theres a problem.
Sikorskys experimental unmanned UH-60 Black Hawk
To reach that higher standard and just as important, to be able to prove theyd reached it the Sikorsky team ruled out the latest AI techniques, just as IARPA had done, in favor of more old-fashioned deterministic programming. While deep learning AI can surprise its human users with flashes of brilliance or stupidity deterministic software always produces the same output from a given input.
Machine learning cannot be verified and certified, Cherepinsky said. Some algorithms (in use elsewhere) we chose not to use even though they work on the surface, theyre not certifiable, verifiable, and testable.
Sikorsky has used some deep learning algorithms in its flying laboratory, Cherepinsky said, and hes far from giving up on the technology, but he doesnt think its ready for real world use: The current state of the art (is) theyre not explainable yet.
Robots With A Human Face
Explainable, tested, transparent algorithms are necessary but hardly sufficient to making an artificial intelligence that people will trust. They help address our rational concerns about AI, but if humans were purely rational, we might not need AI in the first place. Its one thing to build AI thats trustworthy in general and in the abstract, quite another to get actual individual humans to trust it. The AI needs to communicate effectively with humans, which means it needs to communicate the way humans do even think the way a human does.
You see in artificial intelligence an increasing trend towards lifelike agents and a demand for those agents, like Siri, Cortana, and Alexa, to be more emotionally responsive, to be more nuanced in ways that are human-like, David Hanson, CEO of Hong Kong-based Hanson Robotics, told the Johns Hopkins conference. When we deal with AI and robots, he said, intuitively, we think of them as life forms.
David Hanson with his Einstein robot.
Hanson makes AI toys like a talking Einstein doll and expressive talking heads like Han and Sophia, but hes looking far beyond such gadgets to the future of ever-more powerful AI. How can we, if we make them intelligent, make them caring and safe? he asked. We need a global initiative to create benevolent super intelligence.
Theres a danger here, however. Its called anthropomorphization, and we do it all the time. People chronically attribute human-like thoughts and emotions to our cats, dogs, and other animals, ignoring how they are really very different from us. But at least cats and dogs and birds, and fish, and scorpions, and worms are, like us, animals. They think with neurons and neurotransmitters, they breathe air and eat food and drink water, they mate and breed, are born and die. An artificial intelligence has none of these things in common with us, and programming it to imitate humanity doesnt make it human. The old phrase putting lipstick on a pig understates the problem, because a pig is biochemically pretty similar to us. Think instead of putting lipstick on a squid except a squid is a close cousin to humanity compared to an AI.
With these worries in mind, I sought out Hanson after his panel and asked him about humanizing AI. There are three reasons, he told me: Humanizing AI makes it more useful, because it can communicate better with its human users; it makes AI smarter, because the human mind is the only template of intelligence we have; and it makes AI safer, because we can teach our machines not only to act more human but to be more human. These three things combined give us better hope of developing truly intelligent adaptive machines sooner and making sure that theyre safe when they do happen, he said.
This squids thought process is less alien to you than an artificial intelligence would be.
Usefulness: On the most basic level, Hanson said, using robots and intelligent virtual agents with a human-like form makes them appealing. It creates a lot of uses for communicating and for providing value.
Intelligence: Consider convergent evolution in nature, Hanson told me. Bats, birds, and bugs all have wings, although they grow and work differently. Intelligence may evolve the same way, with AI starting in a very different place from humans but ending up awfully similar.
We may converge on human level intelligence in machines by modeling the human organism, Hanson said. AI originally was an effort to match the capacities of the human mind in the broadest sense, (with) creativity, consciousness, and self-determination and we found that that was really hard, (but still) theres no better example of mind that we know of than the human mind.
Safety: Beyond convergent evolution is co-evolution, where two species shape each other over time, as humans have bred wolves into dogs and irascible aurochs into placid cows. As people and AI interact, Hanson said, people will naturally select for features that desirable and can be understand by humans, which then puts a pressure on the machines to get smarter, more capable, more understanding, more trustworthy.
Sorry, real robots wont be this cute and friendly.
By contrast, Hanson warned, if we fear AI and keep it at arms length, it may develop unexpectedly deep in our networks, in some internet backbone or industrial control system where it has not co-evolved in constant contact with humanity. Putting them out of sight, out of mind, means were developing aliens, he said, and if they do become truly alive, and intelligent, creative, conscious, adaptive, but theyre alien, they dont care about us.
You may contain your machine so thats it safe, but what about your neighbors machine? What about the neighbor nations? What about some hackers who are off the grid? Hanson told me. I would say it will happen, we dont know when. My feeling is that if we can there first with a machine that we can understand, that proves itself trustworthy, that forms a positive relationship with us, that would be better.
Click to read the previous stories in the series:
Artificial Stupidity: When Artificial Intelligence + Human = Disaster
Artificial Stupidity: Fumbling The Handoff From AI To Human Control
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Artificial Stupidity: Learning To Trust Artificial Intelligence (Sometimes) - Breaking Defense
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Baidu Is Partnering With Nvidia To ‘Accelerate’ Artificial Intelligence – Benzinga
Posted: at 11:12 pm
NVIDIA Corporation (NASDAQ: NVDA) and Baidu Inc (ADR) (NASDAQ: BIDU) announced a partnership Wednesday to unite their cloud computing services and artificial intelligence technology.
"We believe AI is the most powerful technology force of our time, with the potential to revolutionize every industry, Ian Buck, NVIDIA vice president and general manager of accelerated computing, said in a press release. Our collaboration aligns our exceptional technical resources to create AI computing platforms for all developers from academic research, startups creating breakthrough AI applications, and autonomous vehicles."
The companies will collaborate to infuse Baidu Cloud with NVIDIA Voltas deep learning capabilities, Baidus self-driving vehicle platform with NVIDIAs Drive PX 2 AI, and NVIDIAs Shield TV with Baidus DuerOS voice command program.
Additionally, Baidu will use NVIDIA HGX architecture and TensorRT software to support Tesla Inc (NASDAQ: TSLA) accelerators in its data centers.
"Baidu and NVIDIA will work together on our Apollo self-driving car platform, using NVIDIA's automotive technology, Baidu President and Chief Operations Officer Qi Lu said at the companys recent AI developer conference. We'll also work closely to make PaddlePaddle the best deep learning framework; advance our conversational AI system, DuerOS; and accelerate research at the Institute of Deep Learning."
NVIDIA is already a significant player in the autonomous vehicle and home assistant spaces, but the latest deal will provide greater exposure to Chinese automakers such as Changan, Chery Automobile Co., FAW Car Co. and Greatwall Motor.
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British and Irish Lions 2017: Warren Gatland tells Lions to seize immortality after naming unchanged side for third … – City A.M.
Posted: at 11:11 pm
British and Irish Lions head coach Warren Gatland has urged his side to seize immortality after naming an unchanged matchday squad for Saturdays decisive final Test against New Zealand in Auckland.
A first series win over the All Blacks since 1971 beckons after the Lions restored parity in the three-match showdown with a 24-21 victory over the world champions in Wellington on Saturday.
Gatland cited the need to hand the players who had dragged the Lions level the opportunity to administer the knockout blow at Eden Park, where New Zealand have not lost a Test match since 1994.
This is a huge chance for this group of players to show their abilities and reap the benefits of the work everyone has put in, said Gatland. It is their chance to make Lions history.
We are all aware of how big this game is and we are expecting a backlash from the All Blacks. But the pleasing thing about the second Test is just how strong we were in the last 10 or 15 minutes, in terms of energy and enthusiasm so we still feel there is another level in us.
Just as he did at the Westpac Stadium at the weekend, flanker Sam Warburton will lead the Lions, who have named an unchanged starting XV for consecutive Tests for the first time since 1993.
We felt we should reward the players for the result and the courage that they showed in coming from behind, from 18-9 down, digging themselves out of a hole and then finishing strongly in that last 10 to 15 minutes, added Gatland.
There are some players who are pretty disappointed not to be selected and I understand that. It is what you would expect from competitive top athletes, they back themselves.
New Zealand, meanwhile, have made three changes to their XV for the series clincher. Jordie Barrett and Ngani Laumape are set to make their first starts for the All Blacks at full-back and inside centre respectively, while Julian Savea returns on the left wing.
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Pro Football Hall of Fame’s 2017 presenters announced – NFL.com
Posted: at 11:10 pm
Jerry Jones received the invitation to football immortality back in February. His wife will be the one leading him there in August.
The owner of the Dallas Cowboys has selected his wife, Gene, as his presenter for his induction into the Pro Football Hall of Fame on Aug. 5 in Canton, Ohio, the team announced in a news release Wednesday. The two celebrated their 50th wedding anniversary in 2013 and have three children, all of whom work as executives in the Cowboys' organization.
Jones is part of the Hall of Fame's Class of 2017, which includes Kurt Warner, who will also have his wife, Brenda, present him for induction. Brenda Warner and Gene Jones will be the third and fourth wives to present their spouses for induction into the Hall of Fame, joining Kim Singletary (husband, Mike, was in the Class of 1998) and Deanna Favre (Brett, Class of 2016).
LaDanian Tomlinson, Jason Taylor, Terrell Davis, Kenny Easley and Morten Andersen are also in this year's class. Here's the complete list of presenters:
Morten Andersen: Sebastian Andersen, Morten's son
Terrell Davis: Neil Schwartz, Terrell's agent & friend
Kenny Easley: Tommy Rhodes, Kenny's high school coach
Jerry Jones: Gene Jones, Jerry's wife
Jason Taylor: Jimmy Johnson, Jason's coach with Dolphins
LaDanian Tomlinson: Lorenzo Neal, LaDainian's teammate with Chargers
Kurt Warner: Brenda Warner, Kurt's wife
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PureCircle Aims to Put First Commercially Viable Stevia Antioxidant on the Market in 2018, Firm Says at IFT 2017 – Nutritional Outlook
Posted: at 11:09 pm
The stevia leaf (Stevia rebaudiana) has yielded exciting, zero-calorie natural sweeteners for food and beverage formulators over the past decade. Now, the leaf is offering formulators another exciting, healthy ingredient: antioxidants. Stevia supplier PureCircle (Chicago) announced that it is ready to roll out what it says is the first commercially viable antioxidant ingredient from the stevia leaf. The firm made the announcement at last weeks Institute of Food Technologists (IFT) Annual Meeting and Food Expo in Las Vegas.
The company says that while researchers have known that stevia leaves contain antioxidant properties, PureCircle claims it is the first company to be able to extract these antioxidants on a global scale from the stevia leaf thanks to a unique extraction and purification process.
The primary antioxidant compounds in the stevia leaf are chlorogenic acids, said Carolyn Clark, director, global marketing and innovation, PureCircle, at the IFT show. Chlorogenic acid, she said, is also a well-known antioxidant in green coffee bean extract. In fact, she said, the chlorogenic acid in Stevia rebaudiana exists at about 1.5% dry weight in the leaf. By comparison, Reb A, the most commonly known steviol glycoside, is about six times that. So while the quantity is much smaller than Reb A, theres enough where it still makes sense for us to go ahead and extract it, Clark said. This also means PureCircle is able to utilize more of the stevia leaf which otherwise may have been discarded as waste.
In terms of power as an antioxidant, Clark said, the chlorogenic acids from stevia have an ORAC (Oxygen Radical Absorbance Capacity) level of about 9000 mol TE/100ghigher than the ORAC values of, for instance, coffee bean extract (2500 mol TE/100g), blueberries (9621 mol TE/100g), cranberries (9090 mol TE/100g), and green tea (1253 mol TE/100g). (Values are per the USDAs database Oxygen Radical Absorbance Capacity (ORAC) of Selected Foods, Release 2 (2010), which has since been discontinued.)
Clark said that PureCircle hopes to get GRAS approval in 2018 to clear the path for the antioxidants use in food and beverages. She said that it can already be used in dietary supplements without requiring a new dietary ingredient (NDI) notification because it falls under the stevia leaf extract use thats already out there today in the supplements space in the U.S.
Meanwhile, she said, the company will also be working to build up its commercial-scale production of the ingredient. PureCircle would sell the antioxidant as a standalone ingredient alongside its other stevia sweetener offerings. She said the stevia antioxidants taste is mild and clean because of its plant base. Some kinds of plant-based antioxidants that are trying to do similar things often have an off-note, so were excited to work with formulators with this ingredient, she said. Already, the company is sampling the ingredient with some customers.
Also at IFT, PureCircle highlighted its newly announced proprietary StarLeaf Stevia rebaudiana leaf that the company developed through its PureCircle Stevia Agronomy Program. According to PureCircle, the company cross-bred the StarLeaf leaf to contain more than 20 times more sugar-like steviol glycoside content compared to standard stevia leaf varieties, particularly the glycosides Reb M and Reb D. Clark said that this is the first brand-name leaf to come out of the PureCircle Stevia Agronomy Program. Through StarLeaf, Clark said, PureCircle will be able to create more of those sugarlike stevia extracts.
Also read:
Stevia: The Next Generation
Does Reb A Still Have a Place in Advanced Stevia Formulations? This and More Stevia Talk at IFT 2016.
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Does doxycycline treat h pylori ulcers – Shelf life extension program doxycycline – Longboat Key News
Posted: at 11:08 pm
Major Headlines
11:55 am | These guests basically utilize the beach at night as their own personal entertainment venue....
09:54 am | At the pinnacle of Longboat luxury properties stands the Ohana Estate priced at $19.9 million....
09:45 am | The building provides a base of operations for collaborating scientists from around the world....
01:05 am | Officer says video taping of the suspects apparently angered them, causing the incident to intensify....
01:00 am | Mr. Mayor, I think you are totally out of order. This has not been noticed, said Spoll....
12:55 am | There have been 46 commission races for seats in the five town districts since 2000. Of those, 72 percent, or 33 of them, having only a single...
12:51 am | Town Manager Dave Bullock found the next Public Works Director for Longboat Key close to home....
12:02 am | Rotary Club honors those who protect and serve our island as residents and families show support....
11:51 pm | More stringent ordinance enacted due to LBK having highest number of disorientations in area....
11:48 pm | The Unstoppable Wasp is about females in science working together for a common cause....
11:31 pm | There is no better place Ive run across where residents are as smart, rationally informed and care so much about where they live....
11:28 pm | Im not sure weve thought through the ramifications, said Commissioner Randy Clair....
11:25 pm | Mote Marine Laboratory documented the first three local sea turtle nests of 2017 two on Sunday, April 30, and one on Monday, May 1 in Venice,...
01:58 pm | The stakes could not be higher. The future look of the island, the evolution of property values and the protection of development rights all intersect. ...
01:54 pm | Mote tags 34 sharks in mission to understand habitat, patterns and populations....
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Charlie Gard’s Parents Assert Their Parental Rights but More Than That – National Review
Posted: at 11:08 pm
Bambino Ges has offered to care for Charlie Gard. A childrens hospital renowned across Europe, Bambino Ges (Baby Jesus) is operated by the Holy See and located about half a mile south of the main entrance to Saint Peters Square.
That is the Catholic Church the world had come to expect.
Last week the Pontifical Academy for Life surprised and angered many people when it implied that Charlies parents should let go and let him die. Then on Sunday, to the joy of those who take a different view of the matter, the director of the Holy See press office issued this contrary statement:
The Holy Father follows with affection and emotion the situation of Charlie Gard, and expresses his own closeness to his parents. He prays for them, wishing that their desire to accompany and care for their own child to the end will be respected.
The outreach by Bambino Ges on Monday, via Twitter, reinforced the popes message. The hospital added its own warm words to his but, more important, also extended a professional helping hand.
Now the president of Bambino Ges reports that Charlies doctors in the U.K. wont let his parents move him from his intensive-care unit in London. If they prevail, his parents will be left to watch their infant son die as his doctors at Great Ormond Street Hospital for Children withdraw his life support.
Charlie Gards cause combines two large political causes, parental rights and the right to life. They comport in this instance, but they dont comport always or necessarily.
Parents can and sometimes do choose for their severely diseased newborn children outcomes that pro-life advocates think are wrong. Pro-choice advocates routinely insinuate and sometimes explicitly invoke the parental rights of women seeking abortion. Over the years, parental rights have been integral to arguments for abortion rights.
Pro-lifers are correct to call out double standards, as in this case. If parental rights are said to be sacrosanct when parents want to end the life of their child but not when they fight to preserve it, the principle is not really parental rights, is it?
Chris Gard and Connie Yates have privately raised funds to cover the cost of experimental treatment for Charlie in America, and it is reported that a U.S. hospital has offered to treat him for free, so containment of cost to the British taxpayer is not in any direct sense the rationale for the intransigence of the British doctors in this matter. Wesley Smith is right, however, that their attempt to frustrate these two parents in their quest to save the life of their child aligns with a broader, general campaign to discourage medical care when it is calculated, in cold terms, that the resulting extension or quality of life will probably be too short or too low to justify the expense.
Life is expensive, as we are reminded every time we join the debate about the latest national health-care proposal. To be pro-life is to take the strongest possible stand for life against even the most compelling economic arguments on the other side. It is cheaper certainly in the near term to abort a child who for the next decade or two would be a net drain on his parents resources of time and money. And always is it cheaper to hasten the death of the frail and elderly who will never again be net contributors to the material well-being of either their family or society.
It would have been easier for Chris Gard and Connie Yates not to buck the system. The course they have taken damn the hassle, damn the cost implies an extraordinary value that they put on life itself. The Catholic Church is the global institution most famous for honoring life itself against strong social and political pressures to abandon that principle, and so the gestures by Pope Francis and Bambino Ges have been reassuring.
It was a Catholic hospital and so of course they wouldnt let him die, a friend once said to me in the course of narrating the end-of-life agonies of a longtime colleague. She meant to be snide but unwittingly paid the Church what in its books counts as a compliment.
What unites the two main strands opposition to abortion and opposition to euthanasia of the pro-life movement is not a question of rights, as I explain in this blog post at The Human Life Review. Pro-lifers can invoke the right to life when defending unborn children, but rights talk is hardly the ticket for answering the movement for physician-assisted suicide and a right to die.
Ultimately the pro-life cause rests on a sentiment. If it can be reduced to a linear argument, I havent seen it. Charlie Gards parents are heroic not for insisting on reasonable (whatever that would be in this case) medical treatment for their child. They are extraordinary because against such enormous odds they have set out to preserve the flame of life still flickering in his fragile, tiny frame. We rightly cheer them for asserting their parental rights against the overreach of the medical establishment and the state. They do not, however, assert those rights as an end in itself. In their view, apparently, as in mine (and yours?), the end in itself is life itself.
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