Archive for February, 2020

Study says YouTube comments section can have radicalising effects on users – htxt.africa

It has long been accepted that the comments section of YouTube is not the most wholesome of places, especially when it comes to videos on divisive issues. According to new research presented at the ACM FAT (Fairness, Accountability and Transparency) conference this week, the comments section could also have a radicalising effect on YouTube users.

The study, which was conducted by researchers at Switzerlands Ecole polytechnique fdrale de Lausanne and Brazils Federal University of Minas Gerais, says the comments section exposes users to several right-wing ideologies.

Non-profits, as well as the media, have hypothesized the existence of a radicalization pipeline on YouTube, claiming that users systematically progress towards more extreme content on the platform. Yet, there is to date no substantial quantitative evidence of this alleged pipeline, reads an extract of the study titled Auditing radicalization pathways on YouTube.

According to the study, it found that users who engaged with a moderate amount of right-wing content on the platform showed a likelihood to migrate towards far-right content. As always it is worthwhile noting that users who show an interest, even a passing one, might also be drawn deeper into the subject matter they are looking for.

That said, the evidence that this study has uncovered is hard to ignore.

We analyze 330,925 videos posted on 349 channels, which we broadly classified into four types: Media, the Alt-lite, the Intellectual Dark Web (I.D.W.), and the Alt-right, it adds.

Processing 72M+ comments, we show that the three channel types indeed increasingly share the same user base; that users consistently migrate from milder to more extreme content; and that a large percentage of users who consume Alt-right content now consumed Alt-lite and I.D.W. content in the past, the study continues.

The larger question is whether or not platforms like YouTube can or should do anything about this. Increased moderation and regulation could lead to an abuse of freedom of speech, and the sites history in tackling such issues has been spotty at best.

Either way it seems like the best thing to do is steer well clear of the comments section.

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Study says YouTube comments section can have radicalising effects on users - htxt.africa

George Zimmerman sues Trayvon Martin family, others for …

George Zimmerman says he was assaulted after talking about the Trayvon Martin shooting at a Florida restaurant.

TALLAHASSEE, Fla. George Zimmerman, the man acquitted of murder in the fatalshooting of 17-year-old Trayvon Martin, is now suing the teens family, their Tallahassee attorney Ben Crump and others for $100 million, sayinghe has been victimized since the 2012 incident.

Filed in Polk County, where Zimmerman now lives, the 36-page lawsuit takes aim at Crumps recently published book, Open Season: Legalized Genocide of Colored People. The suitclaims its publishing by HarperCollins perpetuates continued defamation of Zimmerman.

The complaintalso names several former prosecutors, the Florida Department of Law Enforcement and the state of Florida as defendants.It additionally claims there was a conspiracy involving a fake witness that led to Zimmermans arrest and prosecution.

Larry Klayman,Zimmermans attorney and a well-knownconservative activist lawyer, said his client regularly faces death threats, gave up career aspirations, struggles to find work and suffers from PTSD in the fallout from the incident.

$435 million defamation lawsuit: Rep. Devin Nunes files lawsuit against CNN

Nov. 2018: George Zimmerman pleads no contest in stalking case involving investigator, reports say

More than seven years since the shooting, Crumps book published in October continues to defame Zimmerman by implicating him in the "genocide of colored people," Klayman said.

Generally, defamation occurs whena false statement of fact damages someone'sreputation. It's usually harder for public figures to win damages, however, than private citizens.

Its a shame (Trayvon Martin) died but my client was not responsible for it. He was acquitted," Klayman said in an interview."You dont keep beating up on the guy for fun and profit.

And you dont make your reputation on the back of my client George Zimmerman. Thats outrageous, abhorrent and disgusting.

Despite the verdict, the incident ignited a powder keg of racial tension across the country, sparking outrage and protests.Klayman said he asked Crump to remove the book from sale.

Although Klayman said he never responded, Crump issued a statement calling the lawsuit a frivolous grasp to justify Martins shooting.

I have every confidence that this unfounded and reckless lawsuit will be revealed for what it is another failed attempt to defend the indefensible and a shameless attempt to profit off the lives and grief of others, Crump wrote.

This plaintiff continues to display a callous disregard for everyone but himself, re-victimizing individuals whose lives were shattered by his own misguided actions," he added. "He would have us believe that he is the innocent victim of a deep conspiracy, despite the complete lack of any credible evidence to support his outlandish claims.

Zimmerman was a neighborhood watch volunteer in Sanford when he shot Martin on Feb. 26, 2012.

Zimmerman went against a 911 operators advice not to engage Martin, who was unarmed. He and the teen briefly fought while Zimmerman called out for help before the shooting, deemed self-defense by the Sanford Police Department.

Klayman said Zimmerman was attacked.He was acquittedof charges of second-degree murder and manslaughter a year later.

As to Crump, St. Petersburg attorney Matt Weidner, who handles defamation cases, said a main question will bedetermininghis intent in writing about Zimmerman.

"What is the purpose of those statements that are being made now all these years later; why is (Zimmerman) being resurrected now?" Weidner said in a phone interview.

"When you read the lawsuit, (it is)ascribing motives to the defendants offurther(ing) their own personal careers,"Weidner said.

In this Sept. 13, 2016, file photo, George Zimmerman looks at the jury as he testifies in a Seminole County courtroom in Orlando.(Photo: Red Huber/Orlando Sentinel via AP, Pool, File)

With a series of arrests and faux pas, Zimmerman in recent years has become an even more controversial figure, including hisauctioningoff of the gun that killed Martin.

In 2013, he was arrested on aggravated assault charges when he was accused of pointing a shotgun at his girlfriend. Charges were dropped.

He was arrested again in 2015 when he was accused of throwing a wine bottle at his girlfriend. Charges again were dropped.

In 2015 he was injured in a shooting during a dispute with a motorist.

The lawsuit also claims a fake witness fabricated a storyline that led to Zimmermans unconstitutional prosecution.

It names Sybrina Fulton, Trayvon Martins mother,and father Tracy Martin, as well as several people connected to the case who served as witnesses.

Martins family members and others working together in concert, agreed to put on a false witness with a made-to-order false storyline to try and create probablecause to arrest Zimmerman, the lawsuit says.

Follow Karl Etters on Twitter: @KarlEtters

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Father of man killed in ‘Stand Your Ground’ case in south Fort Myers asks Gov. Ron DeSantis to review case – News-Press

Floridas controversial stand your ground law continues to make headlines. but what does it mean? We break it down for you.GINNY BEAGAN/TCPALM Wochit

Gov. Ron DeSantis has been asked to appoint a special prosecutor in the 2016 case of a man whose family says was shot dead when he mistakenly knockedat the wrong door of a south Fort Myers condo.

The request was made by attorney Mark OMara, best known as the defense attorney forGeorge Zimmerman, who was acquitted on murder charges in the shooting death of Trayvon Martin more than six years ago.

O'Mara represents Sandy Modell,the father of Ryan Modell, who was fatally shot by Steve Taylor in March 2016 at the Emerson Square condominium complex where both lived.

More: Death of 32-year-old justified under Stand Your Ground, no charges for shooter

O'Mara wrote a similarletter to former Gov. Rick Scott in 2017 asking for the case to bereviewed by an independent state attorneyand presented to a grand jury. That effort went nowhere.

This undated photo made available by the Modell family, shows Ryan Modell, right, as he visits Paris with his father Sandy Modell. Sandy Modell is asking Florida Gov. Ron DeSantis to reopen the investigation into his son's 2016 shooting death during an altercation at Ryan's south Lee County condominium complex. Local prosecutors declined to charge the shooter, Steve Taylor, citing the state's "stand your ground" law, a decision Sandy Modell wants reversed.(Photo: Modell family via Associated Press)

Modell remains adamant that his son was murdered andcant understand why Taylor hasnt been arrested.

"Taylor was back in the house. Safe behind a door. He was told to stay in the house," Modell said. "What this guy did, he waited four to five minutes. He stewed."

Modell described that as '"reengagement." He also said Taylor had to go outside and find his son, which he described as pursuit. And when he encountered the younger man, Modell said Taylor pointed the laser-sight and 10mm handgun equipped with a flashlight at his son, which he called felony assault.

"Any of those three elements negates 'stand your ground' as a defense," Modell said.

What is Florida's Stand Your Ground law?: A Miami law professor explains

The original reason for the request lies in a2017 decision by the state attorney's office in deciding not tobringcharges against Taylor.

The state attorneys office said Taylor, a tractor equipment salesman who served on a tank during the first Gulf War, was justified under Floridas Stand Your Ground law to kill Modell because he feared for his life.

The law was made infamous after George Zimmerman was acquitted of murder charges in the 2012 death of 17-year-old Martin in Sanford.

In both the Martin and Modell slayings, prosecutors cited the same law in deciding, at least initially, not to prosecute. The law says people who justifiably believe they face death or great bodily harm can use deadly force without first retreating, but they cannot be the confrontation instigator.

Sandy Modell talks about the March 20, 2016, shooting at the gated Emerson Square community in south Lee County that claimed his son Ryan's life.(Photo: Michael Braun/The News-Press)

Family members of Martin, and now Modell, claim the shooters were the instigators and therefore werent entitled to use the law. Ultimately, OMara didnt use the law as a defense in the Zimmerman case, but it was cited by police who waited 44 days to arrest him.

More: Lee County father looking for answers in son's shooting death

According to the state attorneys office, Modell, 32, was a well-developed, well-nourished man who stood at 6-foot-1 and weighed 224 pounds. Modell and Taylor lived in the complex in identical buildings, each in units numbered 102.

That Taylor shot Ryan Modell on the early morning of March 20, 2016, is undisputed. He claimed in police reports that he was protecting his home and his wife.

The Florida man who fatally shot Markeis McGlockton during a dispute over a handicapped parking spot was found guilty of manslaughter. USA TODAY

Ryan Modell had been at the condo complexpool with friends about 2:30 a.m. celebrating a newly accepted job and a friend's birthdaywhen he headed back to the apartment he was sharing with his girlfriend,Kristin Ann Westlund. He mistook one apartment for another and tried opening the door, his father and girlfriend confirmed. That's when Taylor allegedly confronted him and shot him.

Modellsaid he believes the decision was political, that now-retired State Attorney SteveRussell and his then chief deputyAmira Fox, who successfully ran to replace him in 2018, wanted to give the National Rifle Association a stand your ground victory and didnt want to risk losing a high-profile case before the election.

Foxs office and Taylors current and former attorneys, Matthew Toll and Robert Harris, declined to comment.

This is a six-month review of the most-read crime stories in Lee County on news-press.com from March 2019 to August 2019. Fort Myers News-Press

However, in aprevious statement, Samantha Syoen, communications director for the state attorney's office, said: "We made our decision and found it was an appropriate Stand Your Ground application and will have no further prosecutorial action."

OMara argues that the law does not apply becauseTaylor should not have gone outside with his gun and pursued Modell after the younger man walked away from his door.

You are not allowed to put yourself in a position where you have to shoot, said OMara, who wants Taylor charged with second-degree murder.

DeSantis office said the Republican governor is examining the request to appoint a special prosecutor to reopen the case.

More: What is Florida's 'stand your ground' law? Here are five questions (and answers) to explain

Modell, who saidthe state attorneys should have given the case to a grand jury if they couldn't make up their minds,is hoping the governor will review the facts and see the need for a special prosecutor.

"I believe in the governor's integrity and intellect," he said. "I think he will do the right thing."

But, Modell said that no matter what happens it will be small comfort.

Modellsaid his son drank too much that night and should have been charged with disorderly conduct, but not executed.

My son is dead because some hothead with a gun had to play a big shot for his wife, he said.

Connect with breaking news reporter Michael Braun:MichaelBraunNP (Facebook),@MichaelBraunNP (Twitter) or mbraun@news-press.com.

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Father of man killed in 'Stand Your Ground' case in south Fort Myers asks Gov. Ron DeSantis to review case - News-Press

Why asking an AI to explain itself can make things worse – MIT Technology Review

Upol Ehsan once took a test ride in an Uber self-driving car. Instead of fretting about the empty drivers seat, anxious passengers were encouraged to watch a pacifier screen that showed a cars-eye view of the road: hazards picked out in orange and red, safe zones in cool blue.

For Ehsan, who studies the way humans interact with AI at the Georgia Institute of Technology in Atlanta, the intended message was clear: Dont get freaked outthis is why the car is doing what its doing. But something about the alien-looking street scene highlighted the strangeness of the experience rather than reassuring. It got Ehsan thinking: what if the self-driving car could really explain itself?

The success of deep learning is due to tinkering: the best neural networks are tweaked and adapted to make better ones, and practical results have outpaced theoretical understanding. As a result, the details of how a trained model works are typically unknown. We have come to think of them as black boxes.

A lot of the time were okay with that when it comes to things like playing Go or translating text or picking the next Netflix show to binge on. But if AI is to be used to help make decisions in law enforcement, medical diagnosis, and driverless cars, then we need to understand how it reaches those decisionsand know when they are wrong.

People need the power to disagree with or reject an automated decision, says Iris Howley, a computer scientist at Williams College in Williamstown, Massachusetts. Without this, people will push back against the technology. You can see this playing out right now with the public response to facial recognition systems, she says.

Sign up for The Algorithm artificial intelligence, demystified

Ehsan is part of a small but growing group of researchers trying to make AIs better at explaining themselves, to help us look inside the black box. The aim of so-called interpretable or explainable AI (XAI) is to help people understand what features in the data a neural network is actually learningand thus whether the resulting model is accurate and unbiased.

One solution is to build machine-learning systems that show their workings: so-called glassboxas opposed to black-boxAI. Glassbox models are typically much-simplified versions of a neural network in which it is easier to track how different pieces of data affect the model.

There are people in the community who advocate for the use of glassbox models in any high-stakes setting, says Jennifer Wortman Vaughan, a computer scientist at Microsoft Research. I largely agree. Simple glassbox models can perform as well as more complicated neural networks on certain types of structured data, such as tables of statistics. For some applications that's all you need.

But it depends on the domain. If we want to learn from messy data like images or text, were stuck with deepand thus opaqueneural networks. The ability of these networks to draw meaningful connections between very large numbers of disparate features is bound up with their complexity.

Even here, glassbox machine learning could help. One solution is to take two passes at the data, training an imperfect glassbox model as a debugging step to uncover potential errors that you might want to correct. Once the data has been cleaned up, a more accurate black-box model can be trained.

It's a tricky balance, however. Too much transparency can lead to information overload. In a 2018 study looking at how non-expert users interact with machine-learning tools, Vaughan found that transparent models can actually make it harder to detect and correct the models mistakes.

Another approach is to include visualizations that show a few key properties of the model and its underlying data. The idea is that you can see serious problems at a glance. For example, the model could be relying too much on certain features, which could signal bias.

These visualization tools have proved incredibly popular in the short time theyve been around. But do they really help? In the first study of its kind, Vaughan and her team have tried to find outand exposed some serious issues.

The team took two popular interpretability tools that give an overview of a model via charts and data plots, highlighting things that the machine-learning model picked up on most in training. Eleven AI professionals were recruited from within Microsoft, all different in education, job roles, and experience. They took part in a mock interaction with a machine-learning model trained on a national income data set taken from the 1994 US census. The experiment was designed specifically to mimic the way data scientists use interpretability tools in the kinds of tasks they face routinely.

What the team found was striking. Sure, the tools sometimes helped people spot missing values in the data. But this usefulness was overshadowed by a tendency to over-trust and misread the visualizations. In some cases, users couldnt even describe what the visualizations were showing. This led to incorrect assumptions about the data set, the models, and the interpretability tools themselves. And it instilled a false confidence about the tools that made participants more gung-ho about deploying the models, even when they felt something wasnt quite right. Worryingly, this was true even when the output had been manipulated to show explanations that made no sense.

To back up the findings from their small user study, the researchers then conducted an online survey of around 200 machine-learning professionals recruited via mailing lists and social media. They found similar confusion and misplaced confidence.

Worse, many participants were happy to use the visualizations to make decisions about deploying the model despite admitting that they did not understand the math behind them. It was particularly surprising to see people justify oddities in the data by creating narratives that explained them, says Harmanpreet Kaur at the University of Michigan, a coauthor on the study. The automation bias was a very important factor that we had not considered.

Ah, the automation bias. In other words, people are primed to trust computers. Its not a new phenomenon. When it comes to automated systems from aircraft autopilots to spell checkers, studies have shown that humans often accept the choices they make even when they are obviously wrong. But when this happens with tools designed to help us avoid this very phenomenon, we have an even bigger problem.

What can we do about it? For some, part of the trouble with the first wave of XAI is that it is dominated by machine-learning researchers, most of whom are expert users of AI systems. Says Tim Miller of the University of Melbourne, who studies how humans use AI systems: The inmates are running the asylum.

This is what Ehsan realized sitting in the back of the driverless Uber. It is easier to understand what an automated system is doingand see when it is making a mistakeif it gives reasons for its actions the way a human would. Ehsan and his colleague Mark Riedl are developing a machine-learning system that automatically generates such rationales in natural language. In an early prototype, the pair took a neural network that had learned how to play the classic 1980s video game Frogger and trained it to provide a reason every time it made a move.

Upol Ehsan

To do this, they showed the system many examples of humans playing the game while talking out loud about what they were doing. They then took a neural network for translating between two natural languages and adapted it to translate instead between actions in the game and natural-language rationales for those actions. Now, when the neural network sees an action in the game, it translates it into an explanation. The result is a Frogger-playing AI that says things like Im moving left to stay behind the blue truck every time it moves.

Ehsan and Riedls work is just a start. For one thing, it is not clear whether a machine-learning system will always be able to provide a natural-language rationale for its actions. Take DeepMinds board-game-playing AI AlphaZero. One of the most striking features of the software is its ability to make winning moves that most human players would not think to try at that point in a game. If AlphaZero were able to explain its moves, would they always make sense?

Reasons help whether we understand them or not, says Ehsan: The goal of human-centered XAI is not just to make the user agree to what the AI is sayingit is also to provoke reflection. Riedl recalls watching the livestream of the tournament match between DeepMind's AI and Korean Go champion Lee Sedol. The commentators were talking about what AlphaGo was seeing and thinking. "That wasnt how AlphaGo worked," says Riedl. "But I felt that the commentary was essential to understanding what was happening."

What this new wave of XAI researchers agree on is that if AI systems are to be used by more people, those people must be part of the design from the startand different people need different kinds of explanations. (This is backed up by a new study from Howley and her colleagues, in which they show that peoples ability to understand an interactive or static visualization depends on their education levels.) Think of a cancer-diagnosing AI, says Ehsan. Youd want the explanation it gives to an oncologist to be very different from the explanation it gives to the patient.

Ultimately, we want AIs to explain themselves not only to data scientists and doctors but to police officers using face recognition technology, teachers using analytics software in their classrooms, students trying to make sense of their social-media feedsand anyone sitting in the backseat of a self-driving car. Weve always known that people over-trust technology, and thats especially true with AI systems, says Riedl. The more you say its smart, the more people are convinced that its smarter than they are.

Explanations that anyone can understand should help pop that bubble.

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Why asking an AI to explain itself can make things worse - MIT Technology Review

What Is Quantum Computing and How Does it Work? – Built In

Accustomed to imagining worst-case scenarios, many cryptography experts are more concerned than usual these days: one of the most widely used schemes for safely transmitting data is poised to become obsolete once quantum computing reaches a sufficiently advanced state.

The cryptosystem known as RSA provides the safety structure for a host of privacy and communication protocols, from email to internet retail transactions. Current standards rely on the fact that no one has the computing power to test every possible way to de-scramble your data once encrypted, but a mature quantum computer could try every option within a matter of hours.

It should be stressed that quantum computers havent yet hit that level of maturity and wont for some time but when a large, stable device is built (or if its built, asan increasingly diminishing minority argue), its unprecedented ability to factor large numbers would essentially leave the RSA cryptosystem in tatters. Thankfully, the technology is still a ways away and the experts are on it.

Dont panic. Thats what Mike Brown, CTO and co-founder of quantum-focused cryptography company ISARA Corporation, advises anxious prospective clients. The threat is far from imminent. What we hear from the academic community and from companies like IBM and Microsoft is that a 2026-to-2030 timeframe is what we typically use from a planning perspective in terms of getting systems ready, he said.

Cryptographers from ISARA are among several contingents currently taking part in the Post-Quantum Cryptography Standardization project, a contest of quantum-resistant encryption schemes. The aim is to standardize algorithms that can resist attacks levied by large-scale quantum computers. The competition was launched in 2016 by the National Institute of Standards and Technology (NIST), a federal agency that helps establish tech and science guidelines, and is now gearing up for its third round.

Indeed, the level of complexity and stability required of a quantum computer to launch the much-discussed RSA attack is very extreme, according to John Donohue, scientific outreach manager at the University of Waterloos Institute for Quantum Computing. Even granting that timelines in quantum computing particularly in terms of scalability are points of contention, the community is pretty comfortable saying thats not something thats going to happen in the next five to 10 years, he said.

When Google announced that it had achieved quantum supremacy or that it used a quantum computer to run, in minutes, an operation that would take thousands of years to complete on a classical supercomputer that machine operated on 54 qubits, the computational bedrocks of quantum computing. While IBMs Q 53 system operates at a similar level, many current prototypes operate on as few as 20 or even five qubits.

But how many qubits would be needed to crack RSA? Probably on the scale of millions of error-tolerant qubits, Donohue told Built In.

Scott Aaronson, a computer scientist at the University of Texas at Austin, underscored the same last year in his popular blog after presidential candidate Andrew Yang tweeted that no code is uncrackable in the wake of Googles proof-of-concept milestone.

Thats the good news. The bad news is that, while cryptography experts gain more time to keep our data secure from quantum computers, the technologys numerous potential upsides ranging from drug discovery to materials science to financial modeling is also largely forestalled. And that question of error tolerance continues to stand as quantum computings central, Herculean challenge. But before we wrestle with that, lets get a better elemental sense of the technology.

Quantum computers process information in a fundamentally different way than classical computers. Traditional computers operate on binary bits information processed in the form of ones or zeroes. But quantum computers transmit information via quantum bits, or qubits, which can exist either as one or zero or both simultaneously. Thats a simplification, and well explore some nuances below, but that capacity known as superposition lies at the heart of quantums potential for exponentially greater computational power.

Such fundamental complexity both cries out for and resists succinct laymanization. When the New York Times asked 10 experts to explain quantum computing in the length of a tweet, some responses raised more questions than they answered:

Microsoft researcher David Reilly:

A quantum machine is a kind of analog calculator that computes by encoding information in the ephemeral waves that comprise light and matter at the nanoscale.

D-Wave Systems executive vice president Alan Baratz:

If were honest, everything we currently know about quantum mechanics cant fully describe how a quantum computer works.

Quantum computing also cries out for a digestible metaphor. Quantum physicist Shohini Ghose, of Wilfrid Laurier University, has likened the difference between quantum and classical computing to light bulbs and candles: The light bulb isnt just a better candle; its something completely different.

Rebecca Krauthamer, CEO of quantum computing consultancy Quantum Thought, compares quantum computing to a crossroads that allows a traveler to take both paths. If youre trying to solve a maze, youd come to your first gate, and you can go either right or left, she said. We have to choose one, but a quantum computer doesnt have to choose one. It can go right and left at the same time.

It can, in a sense, look at these different options simultaneously and then instantly find the most optimal path, she said. That's really powerful.

The most commonly used example of quantum superposition is Schrdingers cat:

Despite its ubiquity, many in the QC field arent so taken with Schrodingers cat. The more interesting fact about superposition rather than the two-things-at-once point of focus is the ability to look at quantum states in multiple ways, and ask it different questions, said Donohue. That is, rather than having to perform tasks sequentially, like a traditional computer, quantum computers can run vast numbers of parallel computations.

Part of Donohues professional charge is clarifying quantums nuances, so its worth quoting him here at length:

In superposition I can have state A and state B. I can ask my quantum state, are you A or B? And it will tell me, I'm a or I'm B. But I might have a superposition of A + B in which case, when I ask it, Are you A or B? Itll tell me A or B randomly.

But the key of superposition is that I can also ask the question, Are you in the superposition state of A + B? And then in that case, they'll tell me, Yes, I am the superposition state A + B.

But theres always going to be an opposite superposition. So if its A + B, the opposite superposition is A - B.

Thats about as simplified as we can get before trotting out equations. But the top-line takeaway is that that superposition is what lets a quantum computer try all paths at once.

Thats not to say that such unprecedented computational heft will displace or render moot classical computers. One thing that we can really agree on in the community is that it wont solve every type of problem that we run into, said Krauthamer.

But quantum computing is particularly well suited for certain kinds of challenges. Those include probability problems, optimization (what is, say, the best possible travel route?) and the incredible challenge of molecular simulation for use cases like drug development and materials discovery.

The cocktail of hype and complexity has a way of fuzzing outsiders conception of quantum computing which makes this point worth underlining: quantum computers exist, and they are being used right now.

They are not, however, presently solving climate change, turbocharging financial forecasting probabilities or performing other similarly lofty tasks that get bandied about in reference to quantum computings potential. QC may have commercial applications related to those challenges, which well explore further below, but thats well down the road.

Today, were still in whats known as the NISQ era Noisy, Intermediate-Scale Quantum. In a nutshell, quantum noise makes such computers incredibly difficult to stabilize. As such, NISQ computers cant be trusted to make decisions of major commercial consequence, which means theyre currently used primarily for research and education.

The technology just isnt quite there yet to provide a computational advantage over what could be done with other methods of computation at the moment, said Dohonue. Most [commercial] interest is from a long-term perspective. [Companies] are getting used to the technology so that when it does catch up and that timeline is a subject of fierce debate theyre ready for it.

Also, its fun to sit next to the cool kids. Lets be frank. Its good PR for them, too, said Donohue.

But NISQ computers R&D practicality is demonstrable, if decidedly small-scale. Donohue cites the molecular modeling of lithium hydrogen. Thats a small enough molecule that it can also be simulated using a supercomputer, but the quantum simulation provides an important opportunity to check our answers after a classical-computer simulation. NISQs have also delivered some results for problems in high-energy particle physics, Donohue noted.

One breakthrough came in 2017, when researchers at IBM modeled beryllium hydride, the largest molecule simulated on a quantum computer to date. Another key step arrived in 2019, when IonQ researchers used quantum computing to go bigger still, by simulating a water molecule.

These are generally still small problems that can be checked using classical simulation methods. But its building toward things that will be difficult to check without actually building a large particle physics experiment, which can get very expensive, Donohue said.

And curious minds can get their hands dirty right now. Users can operate small-scale quantum processors via the cloud through IBMs online Q Experience and its open-source software Quiskit. Late last year, Microsoft and Amazon both announced similar platforms, dubbed Azure Quantum and Braket. Thats one of the cool things about quantum computing today, said Krauthamer. We can all get on and play with it.

RelatedQuantum Computing and the Gaming Industry

Quantum computing may still be in its fussy, uncooperative stage, but that hasnt stopped commercial interests from diving in.

IBM announced at the recent Consumer Electronics Show that its so-called Q Network had expanded to more than 100 companies and organizations. Partners now range from Delta Air Lines to Anthem health to Daimler AG, which owns Mercedes-Benz.

Some of those partnerships hinge on quantum computings aforementioned promise in terms of molecular simulation. Daimler, for instance, is hoping the technology will one day yield a way to produce better batteries for electric vehicles.

Elsewhere, partnerships between quantum computing startups and leading companies in the pharmaceutical industry like those established between 1QBit and Biogen, and ProteinQure and AstraZeneca point to quantum molecular modelings drug-discovery promise, distant though it remains. (Today, drug development is done through expensive, relatively low-yield trial-and-error.)

Researchers would need millions of qubits to compute the chemical properties of a novel substance, noted theoretical physicist Sabine Hossenfelder in the Guardian last year. But the conceptual underpinning, at least, is there. A quantum computer knows quantum mechanics already, so I can essentially program in how another quantum system would work and use that to echo the other one, explained Donohue.

Theres also hope that large-scale quantum computers will help accelerate AI, and vice versa although experts disagree on this point. The reason theres controversy is, things have to be redesigned in a quantum world, said Krauthamer, who considers herself an AI-quantum optimist. We cant just translate algorithms from regular computers to quantum computers because the rules are completely different, at the most elemental level.

Some believe quantum computers can help combat climate change by improving carbon capture. Jeremy OBrien, CEO of Palo Alto-based PsiQuantum, wrote last year that quantum simulation of larger molecules if achieved could help build a catalyst for scrubbing carbon dioxide directly from the atmosphere.

Long-term applications tend to dominate headlines, but they also lead us back to quantum computings defining hurdle and the reason coverage remains littered with terms like potential and promise: error correction.

Qubits, it turns out, are higher maintenance than even the most meltdown-prone rock star. Any number of simple actions or variables can send error-prone qubits falling into decoherence, or the loss of a quantum state (mainly that all-important superposition). Things that can cause a quantum computer to crash include measuring qubits and running operations in other words: using it. Even small vibrations and temperature shifts will cause qubits to decohere, too.

Thats why quantum computers are kept isolated, and the ones that run on superconducting circuits the most prominent method, favored by Google and IBM have to be kept at near-absolute zero (a cool -460 degrees Fahrenheit).

Thechallenge is two-fold, according to Jonathan Carter, a scientist at Berkeley Quantum. First, individual physical qubits need to have better fidelity. That would conceivably happen either through better engineering, discovering optimal circuit layout, and finding the optimal combination of components. Second, we have to arrange them to form logical qubits.

Estimates range from hundreds to thousands to tens of thousands of physical qubits required to form one fault-tolerant qubit. I think its safe to say that none of the technology we have at the moment could scale out to those levels, Carter said.

From there, researchers would also have to build ever-more complex systems to handle the increase in qubit fidelity and numbers. So how long will it take until hardware-makers actually achieve the necessary error correction to make quantum computers commercially viable?

Some of these other barriers make it hard to say yes to a five- or 10-year timeline, Carter said.

Donohue invokes and rejects the same figure. Even the optimist wouldnt say its going to happen in the next five to 10 years, he said. At the same time, some small optimization problems, specifically in terms of random number generation could happen very soon.

Weve already seen some useful things in that regard, he said.

For people like Michael Biercuk, founder of quantum-engineering software company Q-CTRL, the only technical commercial milestone that matters now is quantum advantage or, as he uses the term, when a quantum computer provides some time or cost advantage over a classical computer. Count him among the optimists: he foresees a five-to-eight year time scale to achieve such a goal.

Another open question: Which method of quantum computing will become standard? While superconducting has borne the most fruit so far, researchers are exploring alternative methods that involve trapped ions, quantum annealing or so-called topological qubits. In Donohues view, its not necessarily a question of which technology is better so much as one of finding the best approach for different applications. For instance, superconducting chips naturally dovetail with the magnetic field technology that underpins neuroimaging.

The challenges that quantum computing faces, however, arent strictly hardware-related. The magic of quantum computing resides in algorithmic advances, not speed, Greg Kuperberg, a mathematician at the University of California at Davis, is quick to underscore.

If you come up with a new algorithm, for a question that it fits, things can be exponentially faster, he said, using exponential literally, not metaphorically. (There are currently 63 algorithms listed and 420 papers cited at Quantum Algorithm Zoo, an online catalog of quantum algorithms compiled by Microsoft quantum researcher Scott Jordan.)

Another roadblock, according to Krauthamer, is general lack of expertise. Theres just not enough people working at the software level or at the algorithmic level in the field, she said. Tech entrepreneur Jack Hidaritys team set out to count the number of people working in quantum computing and found only about 800 to 850 people, according to Krauthamer. Thats a bigger problem to focus on, even more than the hardware, she said. Because the people will bring that innovation.

While the community underscores the importance of outreach, the term quantum supremacy has itself come under fire. In our view, supremacy has overtones of violence, neocolonialism and racism through its association with white supremacy, 13 researchers wrote in Nature late last year. The letter has kickstarted an ongoing conversation among researchers and academics.

But the fields attempt to attract and expand also comes at a time of uncertainty in terms of broader information-sharing.

Quantum computing research is sometimes framed in the same adversarial terms as conversations about trade and other emerging tech that is, U.S. versus China. An oft-cited statistic from patent analytics consultancy Patinformatics states that, in 2018, China filed 492 patents related to quantum technology, compared to just 248 in the United States. That same year, the think tank Center for a New American Security published a paper that warned, China is positioning itself as a powerhouse in quantum science. By the end of 2018, the U.S. passed and signed into law the National Quantum Initiative Act. Many in the field believe legislators were compelled due to Chinas perceived growing advantage.

The initiative has spurred domestic research the Department of Energy recently announced up to $625 million in funding to establish up to five quantum information research centers but the geopolitical tensions give some in the quantum computing community pause, namely for fear of collaboration-chilling regulation. As quantum technology has become prominent in the media, among other places, there has been a desire suddenly among governments to clamp down, said Biercuk, who has warned of poorly crafted and nationalistic export controls in the past.

What they dont understand often is that quantum technology and quantum information in particular really are deep research activities where open transfer of scientific knowledge is essential, he added.

The National Science Foundation one of the government departments given additional funding and directives under the act generally has a positive track record in terms of avoiding draconian security controls, Kuperberg said. Even still, the antagonistic framing tends to obscure the on-the-ground facts. The truth behind the scenes is that, yes, China would like to be doing good research and quantum computing, but a lot of what theyre doing is just scrambling for any kind of output, he said.

Indeed, the majority of the aforementioned Chinese patents are quantum tech, but not quantum computing tech which is where the real promise lies.

The Department of Energy has an internal list of sensitive technologies that it could potentially restrict DOE researchers from sharing with counterparts in China, Russia, Iran and North Korea. It has not yet implemented that curtailment, however, DOE Office of Science director Chris Fall told the House committee on science, space and technology and clarified to Science, in January.

Along with such multi-agency-focused government spending, theres been a tsunami of venture capital directed toward commercial quantum-computing interests in recent years. A Nature analysis found that, in 2017 and 2018, private funding in the industry hit at least $450 million.

Still, funding concerns linger in some corners. Even as Googles quantum supremacy proof of concept has helped heighten excitement among enterprise investors, Biercuk has also flagged the beginnings of a contraction in investment in the sector.

Even as exceptional cases dominate headlines he points to PsiQuantums recent $230 million venture windfall there are lesser-reported signs of struggle. I know of probably four or five smaller shops that started and closed within about 24 months; others were absorbed by larger organizations because they struggled to raise, he said.

At the same time, signs of at least moderate investor agitation and internal turmoil have emerged. The Wall Street Journal reported in January that much-buzzed quantum computing startup Rigetti Computing saw its CTO and COO, among other staff, depart amid concerns that the companys tech wouldnt be commercially viable in a reasonable time frame.

Investor expectations had become inflated in some instances, according to experts. Some very good teams have faced more investor skepticism than I think has been justified This is not six months to mobile application development, Biercuk said.

In Kuperbergs view, part of the problem is that venture capital and quantum computing operate on completely different timelines. Putting venture capital into this in the hope that some profitable thing would arise quickly, that doesnt seem very natural to me in the first place, he said, adding the caveat that he considers the majority of QC money prestige investment rather than strictly ROI-focused.

But some startups themselves may have had some hand in driving financiers over-optimism. I wont name names, but there definitely were some people giving investors outsize expectations, especially when people started coming up with some pieces of hardware, saying that advantages were right around the corner, said Donohe. That very much rubbed the academic community the wrong way.

Scott Aaronson recently called out two prominent startups for what he described as a sort of calculated equivocation. He wrote of a pattern in which a party will speak of a quantum algorithms promise, without asking whether there are any indications that your approach will ever be able to exploit interference of amplitudes to outperform the best classical algorithm.

And, mea culpa, some blame for the hype surely lies with tech media. Trying to crack an area for a lay audience means you inevitably sacrifice some scientific precision, said Biercuk. (Thanks for understanding.)

Its all led to a willingness to serve up a glass of cold water now and again. As Juani Bermejo-Vega, a physicist and researcher at University of Granada in Spain, recently told Wired, the machine on which Google ran its milestone proof of concept is mostly still a useless quantum computer for practical purposes.

Bermejo-Vegas quote came in a story about the emergence of a Twitter account called Quantum Bullshit Detector, which decrees, @artdecider-like, a bullshit or not bullshit quote tweet of various quantum claims. The fact that leading quantum researchers are among the accounts 9,000-plus base of followers would seem to indicate that some weariness exists among the ranks.

But even with the various challenges, cautious optimism seems to characterize much of the industry. For good and ill, Im vocal about maintaining scientific and technical integrity while also being a true optimist about the field and sharing the excitement that I have and to excite others about whats coming, Biercuk said.

This year could prove to be formative in the quest to use quantum computers to solve real-world problems, said Krauthamer. Whenever I talk to people about quantum computing, without fail, they come away really excited. Even the biggest skeptics who say, Oh no, theyre not real. Its not going to happen for a long time.

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