Sunday, August 25, 2019

The risks of amoral A.I.

Artificial intelligence is now being used to make decisions about lives, livelihoods, and interactions in the real world in ways that pose real risks to people.

We were all skeptics once. Not that long ago, conventional wisdom held that machine intelligence showed great promise, but it was always just a few years away. Today there is absolute faith that the future has arrived.

It’s not that surprising with cars that (sometimes and under certain conditions) drive themselves and software that beats humans at games like chess and Go. You can’t blame people for being impressed.

But board games, even complicated ones, are a far cry from the messiness and uncertainty of real-life, and autonomous cars still aren’t actually sharing the road with us (at least not without some catastrophic failures).

AI is being used in a surprising number of applications, making judgments about job performance, hiring, loans, and criminal justice among many others. Most people are not aware of the potential risks in these judgments. They should be. There is a general feeling that technology is inherently neutral — even among many of those developing AI solutions. But AI developers make decisions and choose tradeoffs that affect outcomes. Developers are embedding ethical choices within the technology but without thinking about their decisions in those terms.

These tradeoffs are usually technical and subtle, and the downstream implications are not always obvious at the point the decisions are made.

The fatal Uber accident in Tempe, Arizona, is a (not-subtle) but good illustrative example that makes it easy to see how it happens.

The autonomous vehicle system actually detected the pedestrian in time to stop but the developers had tweaked the emergency braking system in favor of not braking too much, balancing a tradeoff between jerky driving and safety. The Uber developers opted for the more commercially viable choice. Eventually autonomous driving technology will improve to a point that allows for both safety and smooth driving, but will we put autonomous cars on the road before that happens? Profit interests are pushing hard to get them on the road immediately.

Physical risks pose an obvious danger, but there has been real harm from automated decision-making systems as well. AI does, in fact, have the potential to benefit the world. Ideally, we mitigate for the downsides in order to get the benefits with minimal harm.

A significant risk is that we advance the use of AI technology at the cost of reducing individual human rights. We’re already seeing that happen. One important example is that the right to appeal judicial decisions is weakened when AI tools are involved. In many other cases, individuals don’t even know that a choice not to hire, promote, or extend a loan to them was informed by a statistical algorithm. 

Buyer Beware

Buyers of the technology are at a disadvantage when they know so much less about it than the sellers do. For the most part decision makers are not equipped to evaluate intelligent systems. In economic terms, there is an information asymmetry that puts AI developers in a more powerful position over those who might use it. (Side note: the subjects of AI decisions generally have no power at all.) The nature of AI is that you simply trust (or not) the decisions it makes. You can’t ask technology why it decided something or if it considered other alternatives or suggest hypotheticals to explore variations on the question you asked. Given the current trust in technology, vendors’ promises about a cheaper and faster way to get the job done can be very enticing.

So far, we as a society have not had a way to assess the value of algorithms against the costs they impose on society. There has been very little public discussion even when government entities decide to adopt new AI solutions. Worse than that, information about the data used for training the system plus its weighting schemes, model selection, and other choices vendors make while developing the software are deemed trade secrets and therefore not available for discussion.

Image via Getty Images / sorbetto

The Yale Journal of Law and Technology published a paper by Robert Brauneis and Ellen P. Goodman where they describe their efforts to test the transparency around government adoption of data analytics tools for predictive algorithms. They filed forty-two open records requests to various public agencies about their use of decision-making support tools.

Their “specific goal was to assess whether open records processes would enable citizens to discover what policy judgments these algorithms embody and to evaluate their utility and fairness”. Nearly all of the agencies involved were either unwilling or unable to provide information that could lead to an understanding of how the algorithms worked to decide citizens’ fates. Government record-keeping was one of the biggest problems, but companies’ aggressive trade secret and confidentiality claims were also a significant factor.

Using data-driven risk assessment tools can be useful especially in cases identifying low-risk individuals who can benefit from reduced prison sentences. Reduced or waived sentences alleviate stresses on the prison system and benefit the individuals, their families, and communities as well. Despite the possible upsides, if these tools interfere with Constitutional rights to due process, they are not worth the risk.

All of us have the right to question the accuracy and relevance of information used in judicial proceedings and in many other situations as well. Unfortunately for the citizens of Wisconsin, the argument that a company’s profit interest outweighs a defendant’s right to due process was affirmed by that state’s supreme court in 2016.

Fairness is in the Eye of the Beholder

Of course, human judgment is biased too. Indeed, professional cultures have had to evolve to address it. Judges for example, strive to separate their prejudices from their judgments, and there are processes to challenge the fairness of judicial decisions.

In the United States, the 1968 Fair Housing Act was passed to ensure that real-estate professionals conduct their business without discriminating against clients. Technology companies do not have such a culture. Recent news has shown just the opposite. For individual AI developers, the focus is on getting the algorithms correct with high accuracy for whatever definition of accuracy they assume in their modeling.

I recently listened to a podcast where the conversation wondered whether talk about bias in AI wasn’t holding machines to a different standard than humans—seeming to suggest that machines were being put at a disadvantage in some imagined competition with humans.

As true technology believers, the host and guest eventually concluded that once AI researchers have solved the machine bias problem, we’ll have a new, even better standard for humans to live up to, and at that point the machines can teach humans how to avoid bias. The implication is that there is an objective answer out there, and while we humans have struggled to find it, the machines can show us the way. The truth is that in many cases there are contradictory notions about what it means to be fair.

A handful of research papers have come out in the past couple of years that tackle the question of fairness from a statistical and mathematical point-of-view. One of the papers, for example, formalizes some basic criteria to determine if a decision is fair.

In their formalization, in most situations, differing ideas about what it means to be fair are not just different but actually incompatible. A single objective solution that can be called fair simply doesn’t exist, making it impossible for statistically trained machines to answer these questions. Considered in this light, a conversation about machines giving human beings lessons in fairness sounds more like theater of the absurd than a purported thoughtful conversation about the issues involved.

Image courtesy of TechCrunch/Bryce Durbin

When there are questions of bias, a discussion is necessary. What it means to be fair in contexts like criminal sentencing, granting loans, job and college opportunities, for example, have not been settled and unfortunately contain political elements. We’re being asked to join in an illusion that artificial intelligence can somehow de-politicize these issues. The fact is, the technology embodies a particular stance, but we don’t know what it is.

Technologists with their heads down focused on algorithms are determining important structural issues and making policy choices. This removes the collective conversation and cuts off input from other points-of-view. Sociologists, historians, political scientists, and above all stakeholders within the community would have a lot to contribute to the debate. Applying AI for these tricky problems paints a veneer of science that tries to dole out apolitical solutions to difficult questions. 

Who Will Watch the (AI) Watchers?

One major driver of the current trend to adopt AI solutions is that the negative externalities from the use of AI are not borne by the companies developing it. Typically, we address this situation with government regulation. Industrial pollution, for example, is restricted because it creates a future cost to society. We also use regulation to protect individuals in situations where they may come to harm.

Both of these potential negative consequences exist in our current uses of AI. For self-driving cars, there are already regulatory bodies involved, so we can expect a public dialog about when and in what ways AI driven vehicles can be used. What about the other uses of AI? Currently, except for some action by New York City, there is exactly zero regulation around the use of AI. The most basic assurances of algorithmic accountability are not guaranteed for either users of technology or the subjects of automated decision making.

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Image via Getty Images / nadia_bormotova

Unfortunately, we can’t leave it to companies to police themselves. Facebook’s slogan, “Move fast and break things” has been retired, but the mindset and the culture persist throughout Silicon Valley. An attitude of doing what you think is best and apologizing later continues to dominate.

This has apparently been effective when building systems to upsell consumers or connect riders with drivers. It becomes completely unacceptable when you make decisions affecting people’s lives. Even if well-intentioned, the researchers and developers writing the code don’t have the training or, at the risk of offending some wonderful colleagues, the inclination to think about these issues.

I’ve seen firsthand too many researchers who demonstrate a surprising nonchalance about the human impact. I recently attended an innovation conference just outside of Silicon Valley. One of the presentations included a doctored video of a very famous person delivering a speech that never actually took place. The manipulation of the video was completely imperceptible.

When the researcher was asked about the implications of deceptive technology, she was dismissive of the question. Her answer was essentially, “I make the technology and then leave those questions to the social scientists to work out.” This is just one of the worst examples I’ve seen from many researchers who don’t have these issues on their radars. I suppose that requiring computer scientists to double major in moral philosophy isn’t practical, but the lack of concern is striking.

Recently we learned that Amazon abandoned an in-house technology that they had been testing to select the best resumes from among their applicants. Amazon discovered that the system they created developed a preference for male candidates, in effect, penalizing women who applied. In this case, Amazon was sufficiently motivated to ensure their own technology was working as effectively as possible, but will other companies be as vigilant?

As a matter of fact, Reuters reports that other companies are blithely moving ahead with AI for hiring. A third-party vendor selling such technology actually has no incentive to test that it’s not biased unless customers demand it, and as I mentioned, decision makers are mostly not in a position to have that conversation. Again, human bias plays a part in hiring too. But companies can and should deal with that.

With machine learning, they can’t be sure what discriminatory features the system might learn. Absent the market forces, unless companies are compelled to be transparent about the development and their use of opaque technology in domains where fairness matters, it’s not going to happen.

Accountability and transparency are paramount to safely using AI in real-world applications. Regulations could require access to basic information about the technology. Since no solution is completely accurate, the regulation should allow adopters to understand the effects of errors. Are errors relatively minor or major? Uber’s use of AI killed a pedestrian. How bad is the worst-case scenario in other applications? How are algorithms trained? What data was used for training and how was it assessed to determine its fitness for the intended purpose? Does it truly represent the people under consideration? Does it contain biases? Only by having access to this kind of information can stakeholders make informed decisions about appropriate risks and tradeoffs.

At this point, we might have to face the fact that our current uses of AI are getting ahead of its capabilities and that using it safely requires a lot more thought than it’s getting now.

Crypto means cryptotheology

Cryptocurrencies are a religion as much as they are a technology. They almost have to be, given their adherents’ gargantuan ambition of fundamentally changing how the world works. This means they attract charlatans, lunatics, frauds, and false prophets, and furious battles are waged over doctrinal hairspliitting; but it also means they inspire intransigent beliefs which can, and do, unify many thousands of wildly different people across continents and time zones.

This occurred to me while I was rereading Gibbon’s Decline and Fall, as one does, and in particular its depictions of the early days of the Christian faith:

But whatever difference of opinion might subsist between the Orthodox [church], the Ebionites, and the Gnostics, concerning the divinity or the obligation of the Mosaic law, they were all equally animated by the same exclusive zeal; and by the same abhorrence for idolatry ..,. the established religions of Paganism were seen by the primitive Christians in a much more odious and formidable light. It was the universal sentiment both of the church and of heretics, that the daemons were the authors, the patrons, and the objects of idolatry.

For Orthodox church, Ebionites, and Gnostics, you can read perhaps, “Bitcoin maximalists”, “Blockchain not bitcoin,” and “Ethereum maximalists.” They disagree bitterly, but one view they all share is a disdain verging and frequently exceeding contempt for fiat currencies, untokenized assets, and most other aspects of money and finance as they are currently constructed. Instead they share a deep belief in the superiority, and inevitable supremacy, very different world.

The superstitious observances of public or private rites were carelessly practised, from education and habit, by the followers of the established religion. But as often as they occurred, they afforded the Christians an opportunity of declaring and confirming their zealous opposition. By these frequent protestations their attachment to the faith was continually fortified; and in proportion to the increase of zeal, they combated with the more ardor and success in the holy war, which they had undertaken against the empire of the demons.

I think few will disagree that, similarly, many cryptocurrency devotees seek out and seize every “opportunity of declaring and confirming their zealous opposition” to government money, central banks, rival maximalists, and other features of the monetary, financial, and/or centralized status quo.

The careless Polytheist, assailed by new and unexpected terrors, against which neither his priests nor his philosophers could afford him any certain protection, was very frequently terrified and subdued by the menace of eternal tortures. His fears might assist the progress of his faith and reason; and if he could once persuade himself to suspect that the Christian religion might possibly be true, it became an easy task to convince him that it was the safest and most prudent party that he could possibly embrace.

Similarly I don’t think it’s controversial to note that prophecies of the hyperinflation and collapse of national currencies, the downfall of central banks and fractional reserve banking in general, etc., are not unheard of among some of the … edgier … cryptocurrency people. One might even refer to the notion of “preaching the gospel” of deflationary, censorship-resistant cryptocurrency, sometimes in the hopes of scaring everyone who hears this doomsaying into buying some Bitcoin as a hedge.

Of course the religious parallels do not end with Gibbon. Cryptocurrencies were given to us not by a known, living, breathing, flawed human being, but by a pseudonymous verging-on-mythical quasi-demigod. (Cf eg “Satoshi’s Vision.”) Mythically speaking, that’s easily analogized to Prometheus granting humanity fire, or Moses bringing the stone tablets down from Mount Sinai. They have real and false prophets. There’s even a “Bitcoin Jesus.” And all promise a better world tomorrow, while demanding sacrifices and inconveniences today.

My tongue is obviously in cheek here — but I’m not entirely unserious. Of course all money is ultimately backed by faith (cf “full faith and credit.”) But this is I think unquestionably more true of cryptocurrencies, especially because, a decade on from their creation, they have failed — so far! — to transform the world to a degree anything like their proclaimed potential.

Bitcoin itself is apparently going from strength to strength, as can be seen in its increasing dominance of total cryptocurrency market capitalization, but it’s still beyond tiny compared to the rest of the financial world. Its total trading volume as I write this is roughly ~$15 billion per day, which admittedly sounds like a lot, but compared to the $5.1 trillion a day for the forex market as a whole, it’s roughly one-quarter of one percent.

More importantly, Bitcoin continues to technically iterate (although I’ve grown skeptical about Lightning, which it seems to me will always suffer from all the end-user inconveniences of prepaid credit cards, with few balancing advantages) and has hovered near or above $10,000 in value for months now. But the uncertainties and investigations regarding Tether remain a threatening cloud on its horizon.

As for other cryptocurrencies, though — well, these are complex times.

Ethereum, the best-known and perhaps most interesting, has gone from a wave of DAO excitement shortly after its launch, which faltered, to a wave of ICO madness and “fat protocol” DApps (decentralized applications), which also faltered, to the latest wave and watchword, “DeFi” aka decentralized finance. This essentially aims to reinvent all of Wall Street and the City of London on the blockchain(s), in the long term.

Meanwhile, the technical underpinnings that would allow Ethereum to scale to Wall Street size, known as “Ethereum 2.0,” remain more notional than real. I’m a big fan of Ethereum (my own pet crypto project is built on it) and I don’t think DeFi is doomed to failure … but under the circumstances I can understand skepticism creeping in among those who are not true believers.

There are plenty of other technically interesting cryptocurrency initiatives: from privacy coins such as ZCash, Monero, and Grin, to the use of Tezos by Brazil’s fifth largest bank for security tokens (again, DeFi), to the growth and stabilization of Cosmos’s “internet of blockchains,” to Blockstack’s total-app-installs graph beginning to look a little more exponential than linear, albeit with still-tiny y-axis numbers.

However, I think it’s also fair to say that now that cryptocurrencies are no longer new, unknown, and fascinating, interest among both individuals and enterprises who are not true believers has waned considerably. The cultural whiplash one experiences when transitioning from a conference full of people convinced they are building a new technology that will transform the fundamental order of the world, to outsiders (even technical outsiders) remarking “oh, is that still a thing?” is increasingly sharp.

That was probably true of the Christians after they ceased to be new and interesting, though, and in the end the Christians conquered the most powerful empire in the world from within. I am definitely not prophesying the same outcome here. I continue to think cryptocurrencies will remain a financial alternative, albeit a very significant and important one, used only by a few percent of people.

But I am saying that seeming increasingly distant from the external consensus reality, being driven by intransigent and sometimes bewildering faith as much as rational analysis, and ongoing associations with a cloud of crazy scandal and hangers-on snake-oil salespeople — all of which would be catastrophic signs for, say, a traditional new startup — can actually be indicators of the strength, not weakness, of a strange new religion. Something to bear in mind as we move into the second decade of cryptocurrencies.

Week in Review: Google rips out its sweet tooth

Hey. This is Week-in-Review, where I give a heavy amount of analysis and/or rambling thoughts on one story while scouring the rest of the hundreds of stories that emerged on TechCrunch this week to surface my favorites for your reading pleasure.

Last week, I talked about Snap’s bizarre decision to keep pursuing hardware without really changing their overarching strategy.


The big story

Google isn’t so sweet these days.

The company’s beloved naming scheme of alphabetizing sugary things dies with Android Pie. The company announced this week that they’re dumping the dessert scheme for a much more boring option. The new Android will be Android 10.

Google has been one of those companies that has always liked to keep its quirkiness at the forefront of its brand. Multi-colored logos and bikes and hats with spinners and Nooglers and nap pods might have been the fringe elements of a Google employee’s first week on the job, but that’s what the company’s branding still evoked for a lot of people. The company’s more whimsical elements have realistically always been removed from the real world of its business interests, but at this point, the company may only be able to take away from the quirkiness of its brand, Google is just something different now.

Rebrands always grab attention, and the companies always make broad, sweeping statements about the deep meaning about what the new logo or font or name mean to the mission of the product at hand. With Android 10, Google says that their chief concern was promoting the universality of the operating system’s branding.

[W]e’ve heard feedback over the years that the names weren’t always understood by everyone in the global community. For example, L and R are not distinguishable when spoken in some languages.

So when some people heard us say Android Lollipop out loud, it wasn’t intuitively clear that it referred to the version after KitKat. It’s even harder for new Android users, who are unfamiliar with the naming convention, to understand if their phone is running the latest version. We also know that pies are not a dessert in some places, and that marshmallows, while delicious, are not a popular treat in many parts of the world.

There’s certainly room to question whether this decision has more to do with the fact that there aren’t too many desserts starting with the letter Q that immediately come to mind, or that Google marketing has decided to sanitize the Android brand with a corporate wash.

Send me feedback
on Twitter @lucasmtny or email
lucas@techcrunch.com

On to the rest of the week’s news.

Apple Card available today card on iPhoneXs screen 082019

Trends of the week

Here are a few big news items from big companies, with green links to all the sweet, sweet added context:

  • Apple’s credit card goes wide
    The Apple Card might be the prettiest credit card in the wild, but as the iPhone-aligned credit card starts shipping to customers, we’ll find out soon whether its extra features are enough to take down more popular millennial cards. Read more about it here.
  • Overstock’s CEO resigns amid bizarre “deep state” revelations 
    Libertarian tech CEOs are often a special kind of eccentric, but Overstock’s Patrick Byrne set a new bar for strange with his revelation that he had gotten sucked into a Trump-Russia scandal under the guise of helping unearth Hillary Clinton’s secrets. I don’t really understand it, and it seems he understood even less, but it cost him his job. Read more here.
  • Now, even the scooters are autonomous
    Segway seems to believe that it’s revolutionized the world of transportation a few times now, but its latest product is just a bit over-teched. The Segway Kickscooter T60 adds autonomous driving capabilities to the city electric scooter, but it doesn’t use them quite the way you might think. Read more here.
Facebook Currency Hearing

Photo By Bill Clark/CQ Roll Call

GAFA Gaffes

How did the top tech companies screw up this week? This clearly needs its own section, in order of badness:

  1. States looking to take on tech giants themselves:
    [States to launch antitrust investigation into big tech companies, reports say]
  2. Facebook keeps learning more about how much it knew about CA:
    [Facebook really doesn’t want you to read these emails]
  3. Not really a gaffe, but just embarrassing for Apple Card:
    [Apple warns against storing Apple Card near leather or denim]

Extra Crunch

Our premium subscription service had another week of interesting deep dives. My colleagues and I made our way to Y Combinator Demo Days this week where we screened the 160+ startups pitching and picked some favorites from both days..

The best 11 startups from YC Demo Days (Day 1)

“Eighty-four startups presented (read the full run-through of every company plus some early analysis here) and after chatting with investors, batch founders and of course, debating amongst ourselves, we’ve nailed down the 11 most promising startups to present during Day 1…”

The top 12 startups from YC Demo Days (Day 2)

“After two days of founders tirelessly pitching, we’ve reached the end of YC’s Summer 2019 Demo Days. TechCrunch witnessed more than 160 on-the-record startup pitches coming out of Y Combinator, spanning healthcare, B2B services, augmented reality and life-extending. Here are our favorites from Day 2…”

Here are some of our other top reads this week for premium subscribers. This week, we published a some analysis on the latest YC class and also dug deep into the perks new employees get at some top companies.

Sign up for more newsletters in your inbox (including this one) here.

Tech Nation report: investments in UK tech startups hit a record $6.7B in the seven months of 2019, exceeding the total amount of investment in all of 2018 (Liam Tung/ZDNet)

Liam Tung / ZDNet:
Tech Nation report: investments in UK tech startups hit a record $6.7B in the seven months of 2019, exceeding the total amount of investment in all of 2018  —  Foreign investment in UK tech startups booms but tech job openings take a dive.  —  The UK's tech sector has attracted $6.7bn …



Redmi Note 8 confirmed to feature 48MP camera, Snapdragon 665, and more

Redmi Note 8 series is all set to be introduced in the coming week, and the company is building hype by teasing the features of its upcoming smartphones. After confirming details about the Redmi Note 8 Pro, the company has now confirmed that the Redmi Note 8 will also pack quad rear cameras. The smartphone manufacturer has also officially confirmed the rear design of the Redmi Note 8, and also revealed that the phone will be powered by the Qualcomm Snapdragon 665 chipset.

Let’s talk about the optics first. This time around, Redmi seems to have implemented different camera module designs on the two devices. While the Redmi Note 8 Pro is expected to have a camera module at the center, the regular Redmi Note 8 will feature the rear camera module on the left side of the phone. Further, the attached Weibo post has mentioned that the Redmi Note 8 will sport a 48MP main sensor, a wide-angle lens camera, a macro lens camera, and a fourth sensor for depth-of-field. However the sensor of 48MP main sensor is not confirmed yet.

The company posted a couple of low-light shots captured on the Redmi Note 8, which is said to use four-in-one pixel binning to make an 12MP image with 1.6μm pixel for night mode shots, similar to the Redmi Note 7 series.

The smartphone manufacturer has also revealed that the Redmi Note 8 will be powered by the  Qualcomm Snapdragon 665 chipset, which was recently seen on the Realme 5 and the Mi A3. It is an upgrade over the Qualcomm Snapdragon 660 chipset that we saw on the Redmi Note 7. Hence, we expect the Redmi Note 8 to bring along upgrades like lower battery consumption, Vulkan 1.1 API support, and a third-gen AI engine with the Hexagon 686 DSP.

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Behind the scenes at Earth’s most beautiful rocket launch site

Why the NFL’s field goal record is waiting to be smashed

There's a Wired video accompaniment if curious.

A northeasterly breeze blows across the football fieldat the University of Wisconsin-Whitewater. To me the wind provides some glorious relief: It's the middle of the day in the middle of July, and a heat wave has just descended on the region. But to Harrison Butker, who is standing with me at the 40-yard line, facing north, it's a tactical advantage. "Bit of a tailwind," he says, eyeing the goal posts as he bends to tee up a football.

Not that he needs it. Butker backs away, takes two steps to his left, pauses, and dashes toward the ball, his right foot making contact with a thwock that sings throughout the stadium. The kick drifts right, tails left, then soars high between the uprights. It's a 50-yard field goal, but it looks to me like it could have been good from more than 60.

Butker is the starting placekicker for the Kansas City Chiefs. He's met me here at a kicking camp in Whitewater to demonstrate his skills, which are considerable. One of the most powerful and consistent kickers in the NFL, Butker has made more than 95 percent of the extra points he's attempted in the course of his career and 90 percent of his field goals, including several from 50 yards or more.

Read 12 remaining paragraphs | Comments

https://arstechnica.com

Realme 5 Pro, Mi A3, Motorola One Action, and More Tech News This Week

Realme 5 Pro and Realme 5 India launch may have been the highlight of the week, but there was plenty of other stuff including price cuts for popular phones. https://ift.tt/2ZrosRF

Capacity, formerly Jane.ai, raises $13.2M Series B for its AI tech that can help companies maintain a searchable index by consolidating info from various apps (Kyle Wiggers/VentureBeat)

Kyle Wiggers / VentureBeat:
Capacity, formerly Jane.ai, raises $13.2M Series B for its AI tech that can help companies maintain a searchable index by consolidating info from various apps  —  Capacity (formerly Jane.ai), a startup developing a platform that indexes data from apps, teams, and more and enables users …



Ally, which makes goal-planning and execution management software for enterprises, raises $8M Series A led by Accel, bringing total raised to $11M (Taylor Soper/GeekWire)

Taylor Soper / GeekWire:
Ally, which makes goal-planning and execution management software for enterprises, raises $8M Series A led by Accel, bringing total raised to $11M  —  A Seattle startup has raised $8 million to fuel its quest to help companies stay on track and hit their goals in an era of rapid change for businesses, markets and industries.



Saturday, August 24, 2019

Motorola Moto E6 Plus images appear online

Images of the Moto E6 Plus have surfaced online. The smartphone is a successor to the recently launched Moto E6. According to the leaked images, the Moto E6 Plus will run on Android Pei out of the box. The device is expected to sport a small dot notch and the images show the smartphone’s display surrounded by bezels and a thick chin. When it comes to button placement, the smartphone has the volume rocker and the power button on the right side. The back of the smartphone has a glossy finish and is home to a dual-camera setup. The vertically stacked dual camera looks quite similar in form to what we have seen on the OnePlus 7. There is the Moto logo on the back of the smartphone as well. There is no information available about the specifications of the smartphone but information circulating the internet suggests that the smartphone will have an Helio P22 SoC coupled with 2GB RAM.

Coming to the recently announced Moto E6, the smartphone has a 5.5-inch HD+ IPS LCD display with an 18:9 aspect ratio sporting a 1440 x 720 pixel resolution. The selfie camera is located on the left side of the earpiece on the forehead. On the back is a single camera with an LED flash and a centrally-aligned batwing logo. The back panel has a P2i nano-coating which is done to repel water and sweat.

Under the hood, the phone has an Octa-core Qualcomm Snapdragon 435 chipset clocked at 1.4GHz, which is paired with 2GB RAM and 16GB onboard storage (expandable up to 256GB via a microSD card). A 3000 mAh removable battery with 5W charging powers the entire package. The smartphone runs on Android 9.0 Pie out of the box.

Source

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Renders of the OnePlus 7T leaked online

If you were looking to pick up a OnePlus 7 smartphone, we’d say hold your horses. Information circulating the internet suggests that the successor to the OnePlus 7, the OnePlus 7T will launch in India on September 26. The date isn't confirmed and could be changed. New information about the upcoming OnePlus 7T has surfaced online. The new render of the smartphone comes from leakster OnLeaks who has released renders of the device. The renders show the OnePlus 7T sporting the same display as the OnePlus 7 with the small notch at the top of the display. 

However, the big change is at the back of the device. Where the OnePlus 7 has a dual-camera setup, similar to the OnePlus 6T, the OnePlus 7T looks to sport a circular camera housing at the back that houses three cameras. The three cameras are horizontally stacked. The flash rests below the middle camera. Coming to the bottom, the OnePlus 7 has two grills, one of which houses the speaker and the other houses the microphone. The renders of the OnePlus 7T showcases the bottom of the smartphone with a single grill. The rest of the dimensions remain the same as the OnePlus 7. 

Coming to the specifications of the OnePlus 7T, the smartphone is expected to sport the Snapdragon 855+ SoC coupled with 8GB RAM. The selfie camera is expected to be the same as the OnePlus 7 at 16MP. The specs of the triple rear camera are still a mystery. It is speculated that the OnePlus 7T and the 7T Pro will be unveiled alongside the OnePlus TV. You can read everything we know about the OnePlus TV here. 

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Xiaomi to offer 'loans', new phones from Motorola, Realme, big 'change' for Android users and more

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Motorola One Action review: Lights, camera and Action

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From Nuking Mars to calling world's richest man a copycat: 20 'best' and 'worst' tweets by Tesla CEO Elon Musk

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Experts say ChatGPT, Gemini, and other Western AI models are turbocharging Iran's cyber operations, helping it develop malware and launch phishing attacks (Jacob Judah/Financial Times)

Jacob Judah / Financial Times : Experts say ChatGPT, Gemini, and other Western AI models are turbocharging Iran's cyber operations, h...