AUSABLE WATER WISE: Ecosystem engineers of the river channel | News, Sports, Jobs – Lake Placid News

Silk nets created by caddisflies trap food particles and hold the streambed in place.(Photo provided)

If youve ever seen beaver take up residence in a stream, youll know the incredible power they have to alter their environment. While it can be an inconvenience for landowners, the transformation from bubbling stream to mountain pond, to open meadow, and back into a stream long after the beaver has moved on is an incredible thing to witness.

Many a cartoon strip has depicted beavers as architects and engineers. In the science world, we refer to beaver as ecosystem engineers. The term ecosystem engineer can be applied to any animal or plant that creates or modifies the environment around them to better suit their needs. Under the water, crayfish use their claws to move gravel around to find food and create burrows for shelter. A stream full of crayfish can alter an entire stream environment. But who else is responsible for changes under the waters surface?

Flyfishing anglers spend much of their time creating and using lures that mimic three major groups of aquatic insects: mayflies, stoneflies and caddisflies. They tie various flies out of feathers, fur, shiny threads and beads to imitate these flies underwater larval stages and the transitional form they take as they move from water to air as adult flying insects. These insects, because of their abundance, are prime food sources for freshwater fish. One particular family of caddisflies, however, have gained a reputation as ecosystem engineers.

This locally abundant family of caddisflies, called the Hydrophsychids, spend most of their water bound time spinning nets of silk that they put out into the river current to catch drifting food particles. The silk is not as strong as spider silk but is strong enough to withstand high water velocities. It is a very efficient way of collecting food, so much so that this family of insects thrives in both wild and heavily human altered rivers. But the nets do more than just providing food for the caddisflies.

Recent research suggests that the Hydropsychid caddisfly family may actually be engineering stream systems. We already knew that their nets slow the water velocity just above the streambed. This creates suitable, lower velocity habitat for many other species of aquatic insects. Just like a beaver dam creates extra habitat for fish, amphibians, dragonflies, and birds, the Hydropsychid caddisflies open up more habitat for more diverse species to move in and shelter or feed from the faster currents. But wait, theres more.

When these aquatic insects put out their silky nets into the current, the ends adhere to pieces of gravel on the streambed. Looking more closely, river ecologists realized the silk can actually hold gravel and cobble substrate together, preventing movement and erosion during moderate to high flow events.

These silky webs actually stabilize the streambed. Ongoing studies in Pennsylvania and Montana hope to understand just how much of a stabilizing effect these caddisflies can have on the stream environment. Its possible that by looking at their presence and abundance in a stream, we could better estimate how much gravel and fine sediment would move in a flood or build up over time. Building habitat and stream resilience in floods its a significant achievement for the smallest of engineers.

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AUSABLE WATER WISE: Ecosystem engineers of the river channel | News, Sports, Jobs - Lake Placid News

CSP Cloud-native Technology Adoption & K8s Ecosystem Report 2020 – CSPs’ 5G Success Will Depend on Having a Low-Cost, Fast-to-Deploy and Scalable…

DUBLIN, March 30, 2020 /PRNewswire/ --The "Cloud-native 5G: Preparing CSPs for the Impact of Kubernetes (K8s)" report has been added to ResearchAndMarkets.com's offering.

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A 5G business needs low-cost, fast-to-deploy and scalable digital infrastructure to operate competitively, but the technology needed to support this infrastructure is unfamiliar and immature. Cloud-native technologies can support communications service providers' (CSPs') 5G business goals, but implementation will require the right transition strategy from the current telecoms cloud infrastructure.

This report describes the reasons why CSPs worldwide should adopt cloud-native technologies within their systems. The report analyses the benefits that CSPs can achieve by creating an onboarding cloud-native services and products using the Kubernetes (K8s) ecosystem. It outlines the migration path from infrastructure-as-a-service (IaaS), which underpins CSPs' internal clouds (including telco cloud) to a K8s-based container-as-a-service (CaaS) platform.

In this report, the following questions are answered:

Adoption of a CaaS takes CSPs a step closer to building a logical, distributed 5G digital infrastructure across multiple clouds, and it can be complemented by CSPs' further take-up of platform as-a-service (PaaS) elements of the K8s ecosystem.

The report evaluates the impact of PaaS and the implications for CSPs that deploy 5G products and services based on discrete PaaS. Finally, the report discusses the operational obstacles that CSPs will encounter in the process of deploying a K8s-based CaaS/PaaS and the strategies that they can employ to overcome these issues.It is based on several sources:

Key Topics Covered

For more information about this report visit https://www.researchandmarkets.com/r/vjswpg

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Bitcoin (BTC) Ecosystem Healthier than 2014 and BitMEX Research Explains Why – U.Today

Vladislav Sopov

With COVID-19 being the main hellraiser for the last weeks within blockchain space, the BitMEX derivatives exchange has brought some good news about Bitcoin (BTC).

BitMEX Research, an analytics branch of the BitMEX crypto derivatives exchange ecosystem, attempted to figure outwho arethe most influential and productive Bitcoin (BTC) developers.

First of all, analysts at BitMEX research studied thefunding of open source developers working on Bitcoin (BTC) or the Lightning Network, the second-layer scalability solution working atop the flagship blockchain. Below is the chart that includes only developers with known sources of funding:

It looks like theCanada-based company Blockstream shares the first position with Lightning Labs Inc., which based in San Francisco. The later team recently raised$10 million in Series A financing from Slow Ventures, Ribbit Capital, and other private investors.

Jack Dorsey's Square Crypto is in third place. The company is passionate about Lightningdevelopment as an on-board pseudonymous developer, which is well-known for its contributionto this infrastructure.

In the second part of their research, the analysts tracked the GitHub committing activity in Bitcoin Core's repositories. Based on their research, it appears that the independent developers surpass their corporate competitors by a wide margin.

These results allowed BitMEX Research to conclude that the Bitcoin (BTC) development ecosystemis the following:

is in a reasonably strong situation with respect to developer funding, based on metrics such as the distribution of funders and transparency.

This is in comparison with the initial stage of Bitcoin (BTC) adoption in 2012-2014, when the Bitcoin Foundation was the one and only significant contributor.Nowadays, diversity has brought funding sources, whichin turn, has upgradedthe decentralization and development processof Bitcoin (BTC) software. So, according to the researchers:

the situation is more healthy than it has been in the past

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Bitcoin (BTC) Ecosystem Healthier than 2014 and BitMEX Research Explains Why - U.Today

Rebooting The Global Economy After Coronavirus: Physical Scarcity To Digital Abundance – Forbes

Rainbow over Athabasca River, Athabasca River, Jasper National Park, Canada

As the World Health Organization (WHO) and governments around the world go to war against the coronavirus pandemic, we are warned it could continue for longer than most of us expect or are prepared for. Experts believe that a vaccination is a minimum of 12 to 18 months away.

Our world may not return to normal for some time.

It is not the first time that we are seeing a global disease pandemic and it certainly won't be the last. Our modern world creates outbreaks like coronavirus. The coronavirus pandemic is a direct outcome of excessive activity over and beyond the capacity of our human and environmental ecosystem.

Our excessive existence is a hotly debated point. From the ecological crisis we are creating from carbon emissions and dumping plastic in the oceans, to the disproportionate wealth gap being created by modern U.S. style democratic capitalism, the warning signs are abundant.

We have a global health crisis on our hands which is creating a financial crisis and creating a crisis for humanity of unfathomable comprehension to most of us.

Governments call for social distancing and ask citizens to stay at home, blunt but effective tools in the fight against coronavirus contagion. There is a global shortage of coronavirus testing facilities . Health workers are struggling to be tested and there is a global shortage of Personal Protective Equipment (PPE) like gloves, masks and gowns, oxygen machines, and Intensive Care Unit (ICU) beds.

The unintended consequences of the health crisis are ravaging the economy by shutting down businesses of all shapes and sizes, leaving business owners without income and large swathes of the population unemployed, with US unemployment claims hitting a record three million last week. For many citizens the only option is awaiting financial support from the government or the benevolence of family and hoping that next month, maybe things will return to normal.

To survive through the pandemic we are developing new ways of living: working and schooling, collaborating and connecting, and being productive remotely using digital tools and the network.

To thrive through the pandemic we are using our innate human instincts with great acts of courage and benevolence: from front line health workers risking their lives to volunteers to support health systems; industry re-purposing production facilities to community acts of kindness; governments offering to do whatever it takes to support business and citizens to keep the economy going, having come to an abrupt stop for many sectors.

The human spirit prevails and there is good news emerging amongst this deluge of bad news.

Navroop Sahdev is working on rebooting the economy to put humanity at the centre of our technologically driven world.

Sahdev is the founder & CEO ofThe Digital Economistand fellow atMIT Connection Science, and is calling for the global economy to transition to digital-first systems with a marked separation from our physical resources. The reboot is required for humanity to better thrive to build and grow with our innate creativity without constantly overstepping the planetary resource boundaries.

Our resources are limited but we keep creating more money. Two things happen as a result: the worth of money declines. The more there is, the more there needs to be for it to be valuable and, ever mounting pressure on resources to a point of collapse. Money cant rescue anything at that point. Then its not about the economy, its about peoples lives. The current coronavirus pandemic is a case in point, says Sahdev.

With the taxpayer as the lender of last resort, we are not just paying for the bail out of our businesses, we are paying to bail out ourselves. Governments in the West have turned on their Central Bank money printing machines and we are creating new mountains of debt, and to what end. Is the government going to become the ultimate guarantor of capitalism using taxpayers dollars?

We need to stop fighting resource wars among ourselves and against nature. Money and technology are tools weve created that need to serve us. And if it is humanity versus nature, nature is going to win. Every single time. Fundamentally, money is a claim on resources. A claim on energy spent somewhere in the system. But with digital infrastructure, we can transition away from burning physical energy in the system and confine it to the digital domain.

"The COVID-19 pandemic is not a rare event; with the ever-increasing level of global connectivity and interdependence, the so-called black swan events are a property of the system. Given the complex nature of the planetary ecosystem, the probability of the occurrence of such large-scale events is increasing.

"I see the current crisis as a catalyst for therebooting of the global economyby retooling towards a human-centered, rather than a capital-centered, socio-economic and technological build out. In the short term, its about rescuing the global economy that governments in the world are rushing to do, says Sahdev.

So where do we go from here? What must happen to both contain and avoid such global catastrophic events with loss of life? Are governments now consigned to the role of protecting entire populations, businesses and markets?

Professor Alex Pentland, Director of MIT Connection Science responds, We need to transition from nation-wide centralized systems where everyone goes to headquarters to pitch their idea and get resources, or we fashion one regulation for everyone in the whole nation, to alliances of small communities connected mainly by digital infrastructure. This transformation preserves the human, face-to-face contact and respects local conditions, while still enabling widespread cooperation.

Crisis situations are the best times to the hit restart button. We can start by going fully digital.

There is too much stress on our physical systems and the carrying capacity of the ecosystem and this leaves an intrinsic dichotomy between the laws of the natural world, which optimizes for the system as a whole over time, and our evolution as a utility maximizing species.

Many of these digital tools exist already. We just need to start using them with much more urgency and social acceptance. We can start from a different starting point, there are many discussions that have ignited with the a Fed Digital Dollar to help overcome the COVID-19 crisis.

Most immediately we need to start by enabling such a transition to take place by building native digital infrastructure while ensuring basic life sustaining resource are available for everyone like: universal basic income and healthcare (nine million people die of hunger in the world each year, even though there is even food in the world); and, activating global decentralized networks in response to global challenges by correctly designing human incentives, like the outstandingRed Ballon challengewon by MIT, says Sahdev.

Sahdev talks about imagination, the highest human faculty, and firmly believes in our ability to build better technological and socio-economic systems, thanks to the urgency created by the coronavirus pandemic.

If digital abundance can be separated from physical scarcity, it may allow both conservation and regeneration of the physical resources and allowing humans to unleash their animal spirits in the virtual world: health systems, financial systems, energy systems, food systems, supply chains, you name it.

When talking about digital infrastructure, its not as much about the technology itself, its about ending the resource war. Technology is how we arrived at this point and technology is how we will free ourselves from the trap we are ultimately laying, threatening our very existence on the planet, says Sahdev.

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Rebooting The Global Economy After Coronavirus: Physical Scarcity To Digital Abundance - Forbes

RAM Celebrates 25 Years with the ‘Essence of Trance’ [Review] – EDM Identity

One of the greatest legacies any performer can leave behind is their journey. Whether its music youve written, performances for fans around the world, or the way you art rejoices, a lengthy journey as an artist gives the record books plenty to write. Enter the celebration compilation from Dutch trance legend RAM, Essence of Trance (25 Years of RAM) in which he delivers a massive mix compilation that explores the music he loves.

Unfamiliar with RAM? In 2009 his solo career catapulted his popularity thanks to stellar releases on Armada Music like RAMsterdam, RAMexico, and his immortal tribute to his deceased wife Amelia in 2013 RAMelia. He took on the Grotesque Music label family and saw the brand rise through the ranks to worldwide recognition. Today, RAM oversees the Nocturnal Animals Music label group launching new creative efforts to celebrate his continued success.

Released in late February on Black Hole Recordings, Essence of Trance (25 Years of RAM) provides a beautiful journal of trance over the past two decades plus. Clocking in at a combined time of five hours and 18 minutes, the four mixes span the genres longest popular reaches. Available on a variety of platforms, you can tune in on your preferred one or smash that play button on Spotify below!

Well dive into each mix in a moment, but its worth staying just how powerful each mix remains today. The energy of mix one represents the rise of the genre at the turn of the millennium, while the final mix catalyzes the modern era showcasing the passion RAM still carries even today. Thats a great segue to another interesting fact each disc comes with a subtitle clearly foreshadowing the sound fans will enjoy. So lets dive in each disc and experience what comes forth!

The first disc reshuffles the deck with a fresh perspective on where RAM began the journey. Showcasing the early years of trance is not an easy feat after all this time as a multitude of compilations feature the classics of the era. The classics are here (Love Comes Again, Circa Forever, Southern Sun, and Burned with Desire) but the mix showcases some of the B-side hits by artists like Gouryella, Cern, Kamaya Painters, and Vincent de Moor.

Permeating energy is palpable throughout, representing beautifully how the vibe of the millennium switch offered fresh perspectives and hope for the next 1,000 years. The zeitgeist of moment peers beyond the curtain and infects today. Aptly titled as Moments the mix fixates the listener into the hope of a genre blossoming with big-name talents before VIP table culture took over the nightclubs. It solidifies the desire to dance and let your worries escape over its hour-plus duration.

As our journey continues into mix two, the vibe ebbs towards the magic which occurred as the trance became a worldwide phenomenon. The solidified world legends like BT and Tiesto anchor this mix, while new talents starting their own journey roll out. Here some more familiar modern talents appear like John OCallaghan, Bryan Kearney, Aly & Fila, and Arctic Moon.

Each offers a solid slab of their style of trance sometimes darker or techier than before but still laden with the characteristic energy of trance. Along the way, RAMs shift to Armada Music takes place as Dash Berlin, Jorn van Deynhoven, and The Doppler Effect round out the mix with his own massive hit RAMsterdam.

RAMs third mix offers fans a peek behind the doors as he wraps our ears into sonic bliss. The continued evolution of trance shines brightly throughout this mix. Percolating upwards is the older styles of trance in Funabashis Daylight and Steve Forte Rios A New Dawn. Muddle deeper flavors with trances big room milestones like Ferry Corsten ft. Betsie Larkins Made of Love and Solarstone and Clare Staggs The Spell.

Mix three get us lost with wide-open emotional spaces too; examples range from Robert Nicksons 2016 remix of Out There by Masters & Nickson ft. Justine Suissa and Signums remix of Roger Shahs Healesville Sanctuary. For those introduced to trance during the rise of the biggest festivals in the world, this mix is where your journey begins!

As we gaze into the final mix we find how deeply RAM loves what he does. Opening with Ferry Corsten presents Gouryella Anahera quickly captures the here and now of trance music. The Noble Six cries for the ears attention with Black Star (which playfully recalls instrumentation of Robert Miles Children).

Elsewhere the stunning Sailing Airwaves plays in sonic bliss, and falling deeper we find Andy Bluemans remix of GAIAs Tuvan with its slight Arabic sounding strings whisking us away to new horizons. Mix four clearly showcases how passionate RAM is about his ove for the genre hes called home for the past 25 years, and its a master-craft in sonic beauty.

There is no argument over the legacy behind RAM. As a talent his touch remains imprinted on dance musics culture even when focused on pure styles of trance which tend to push him towards an underground appeal when compared to his peers. Having survived the ups and downs of an industry which sees all sorts of strangeness the explosion of the internet, the barrier to music production falling, and the phenomenon of globetrotting performances RAMs not content to stop expressing his art yet.

The new label (Nocturnal Animals) offers him a platform to support emerging talents and established names who want to experiment. Unfortunately, the world tour to celebrate his 25th year in the business is on hold with COVID-19 quarantine but we hope that he can get back at it soon. In the interim, picking up a copy of Essence of Trance (25 Years of RAM) is an easy recommendation for tunes to get lost in. In the world today, we need a bit of an escape, so thank you to RAM for providing it!

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RAM Celebrates 25 Years with the 'Essence of Trance' [Review] - EDM Identity

No concerts? Bay Areas Adam Theis, Jazz Mafia videos are just the thing – Marin Independent Journal

Adam Theis wasnt counting on a captive audience.

As the founder and driving spirit behind the Jazz Mafia collective, the Oakland trombonist/bassist just figured that the early months of 2020 seemed like a good time to start letting the world know about the dozen or so projects that Mafia associates have been perpetrating.

The confederation of Bay Area musicians has long made savvy use of video, but with furious bursts of activity we were finding we werent documenting what we were doing, Theis says. Were always worried about moving forward. So we booked three days at this sound stage connected to Sound Wave in Oakland and taped a bunch of performances.

More than a welcome dose of funk and soul, the flood of videos posted on the Jazz Mafia YouTube channel offers hours of spirit-lifting diversion.

Some of the performances were captured on multi-camera shoots, like saxophonist Joe Cohens Brass arrangement of the Rolling Stones Paint It Black, a prescient performance that could serve as the seasons theme song.

Other pieces were documented via iPhone, offering a particularly intimate view of the performance, like the Cosa Nostra Strings version of the Scottish band The Proclaimers Im Gonna Be (500 Miles). Arranged and sung by violistKeith Lawrence, its one of those covers that permanently purloins a song from the original source.

The multi-camera shoots cost money and take a lot of coordination, and the iPhone ones cost almost nothing, Theis says. Weve been finding a lot of enjoyment in that simple way of creating content, with viewers really responding to the raw stuff. And once this pandemic hit, it seemed like the perfect time to focus even more on this homespun way of recording that was already in the ether.

Theis has put out a call for musical friends and colleagues to send in self-made videos for Jazz Mafia posting. In the meantime, the YouTube channel overflows with seriously funky tunes featuring some of the regions most dynamic artists. Arranged by Theis for a brass-augmented lineup of the Heaviest Feather ensemble, Karlita is a Crescent City stomp delivered by vocalist Trance Thompson. For a pure shot of horn-driven funk theres the Brass Mafias Rollin In Da Hood, a high-stepping instrumental Mardi Gras anthem.

But part of the fun is remembering just how many musical bases the Jazz Mafia can cover. Theres a gorgeous track Get Back by the folky T Sisters with the Cosa Nostra Strings. The Jazz Mafias Choral Syndicate delivers an inspired performance of gospel music legend Kirk Franklins Miracles conducted by Trance Thompson.

Vocalist Lilan Kane explores the future-soul sound of Hiatus Kaiyotes By Fire with the Cosa Nostra Strings, and bilingual rapperDakini Star tears up Driiip, delivering a few sly azucar! shout outs in tribute to legendary Cuban singer Celia Cruz.

When it comes to old favorites, theres no beating the 2009 video of Stevie Wonder jamming with the Jazz Mafia outfit Supertaster.Theis says there are dozens of tracks theyll continue to upload in the coming weeks. When itll be safe to document current projects isnt clear. We have all these recording studios we have access to, but it doesnt seem safe to have five or 19 musicians crammed in a small room, Theis says.

Instead of recording new music, he and his closest associates are looking at ways to keep fellow musicians from fading out on a scene thats turned into a barren desert. I feel like artists live in a sense of panic anyways, especially in the Bay, he says. People can survive for a little bit, but a few months will be a deal breaker for a lot of artists.

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No concerts? Bay Areas Adam Theis, Jazz Mafia videos are just the thing - Marin Independent Journal

IDMA 2020 winners announced: Avicii’s ‘Tim’ named as the best album – We Rave You

Following the cancelation of the 35th Winter Music Conference, the winners of the prestigious International Dance Music Awards (IDMA) have been announced online amidst the coronavirus outbreak. The highly descriptive categories under the IDMA provide us with an in-depth overview of how the electronic music industry was influenced and who had dominated the bigger scene throughout the year.

As a lot of us would have hoped for, Aviciis Tim has been named as the best album, claiming it over some tough competitors like Ascend from Illenium and Gravity by Gryffin. On the other hand, the Belgian duo Dimitri Vegas & Like Mike have been honored as the Best Male Artist (Dance/Electronic), taking the title previously won by Martin Garrix, just like they claimed the no. 1 spot on DJMag.

The techno and trance categories under the artist section were claimed once again by Carl Cox and Armin van Buuren respectively. The Italian trio Meduza was named as the best breakthrough act, and their global hit Piece of Your Heart was awarded the title of Best Song (Dance) among other nominations including Post Malone from Sam Feldt and This Groove from Oliver Heldens, all of which chosen in collaboration with the music-tech company Viberate.

Music awards are often criticized for being biased, sometimes you can play the system and pay for votes. But we use data from streaming services, social networks, etc. to see who really deserves a nomination and this reflects the actual popularity of an artist in the most unbiased way possible. Vasja Veber (co-founder Viberate)

Dont forget to check out the complete list of IDMA 2020 winners here.

Image Credits Amy Sussman

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IDMA 2020 winners announced: Avicii's 'Tim' named as the best album - We Rave You

Reaching the Singularity May be Humanity’s Greatest and Last Accomplishment – Air & Space Magazine

In a new paper published in The International Journal of Astrobiology, Joseph Gale from The Hebrew University of Jerusalem and co-authors make the point that recent advances in artificial intelligence (AI)particularly in pattern recognition and self-learningwill likely result in a paradigm shift in the search for extraterrestrial intelligent life.

While futurist Ray Kurzweil predicted 15 years ago that the singularitythe time when the abilities of a computer overtake the abilities of the human brainwill occur in about 2045, Gale and his co-authors believe this event may be much more imminent, especially with the advent of quantum computing. Its already been four years since the program AlphaGO, fortified with neural networks and learning modes, defeated Lee Sedol, the Go world champion. The strategy game StarCraft II may be the next to have a machine as reigning champion.

If we look at the calculating capacity of computers and compare it to the number of neurons in the human brain, the singularity could be reached as soon as the early 2020s. However, a human brain is wired differently than a computer, and that may be the reason why certain tasks that are simple for us are still quite challenging for todays AI. Also, the size of the brain or the number of neurons dont equate to intelligence. For example, whales and elephants have more than double the number of neurons in their brain, but are not more intelligent than humans.

The authors dont know when the singularity will come, but come it will. When this occurs, the end of the human race might very well be upon us, they say, citing a 2014 prediction by the late Stephen Hawking. According to Kurzweil, humans may then be fully replaced by AI, or by some hybrid of humans and machines.

What will this mean for astrobiology? Not much, if were searching only for microbial extraterrestrial life. But it might have a drastic impact on the search for extraterrestrial intelligent life (SETI). If other civilizations are similar to ours but older, we would expect that they already moved beyond the singularity. So they wouldnt necessarily be located on a planet in the so-called habitable zone. As the authors point out, such civilizations might prefer locations with little electronic noise in a dry and cold environment, perhaps in space, where they could use superconductivity for computing and quantum entanglement as a means of communication.

We are just beginning to understand quantum entanglement, and it is not yet clear whether it can be used to transfer information. If it can, however, that might explain the apparent lack of evidence for extraterrestrial intelligent civilizations. Why would they use primitive radio waves to send messages?

I think it also is still unclear whether there is something special enough about the human brains ability to process information that casts doubt on whether AI can surpass our abilities in all relevant areas, especially in achieving consciousness. Might there be something unique to biological brains after millions and millions of years of evolution that computers cannot achieve? If not, the authors are correct that reaching the singularity could be humanitys greatest and last advance.

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Reaching the Singularity May be Humanity's Greatest and Last Accomplishment - Air & Space Magazine

Singularity Cases and Components Available at OCUK – Play3r

Singularity Computers is an Australian based PC component manufacturer that specialises in creating some of the most beautiful hardware available. If youre a fan of high quality, unique modded PC systems with an emphasis on aesthetics Singularity is a dream come true. Their extensive range of products ranges from reservoirs to distro plates and even water-cooled PC cases. Singularity Computers hardware makes it easier to create your own exceptional work of art.

Wraith Mini ITX Showcase

TheSingularity Computers Wraithis a mini-ITX case with extensive options for installing a custom water cooling system. The compact chassis has an integrated distro plate, which acts as a motherboard tray and is made of transparent acrylic glass, and the graphics card is displayed vertically.

TheSpectre 2.0is an E-ATX case with extensive options for installing a custom water cooling system. The mid-tower has an integrated distro plate that acts as a motherboard tray and is made of transparent acrylic glass. The graphics card can be displayed vertically with the enclosed riser cable.

Singularity not only build showcases but a full range of high spec, heavily engineered water-cooling components. Singularity computers have designed their products to be highly versatile in order to give you the flexibility and freedom to create your own ideas. When building a unique PC you need as many options as possible and the large product range allows for this. Within the lineup, there is everything you need to realise a stunning high-quality custom loop with plenty of choices when it comes to tubing, reservoirs, pumps, and distro plates.

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Singularity Cases and Components Available at OCUK - Play3r

Singularity Computers hardware is available from Overclockers UK now – KitGuru

Overclockers UK has added another manufacturer to its arsenal, Singularity Computers will be joining the ranks to offer its range of modding components and cases to UK PC enthusiasts via the Overclockers UK store.

If you are unfamiliar with the name Singularity Computers, it is an Australian based manufacturer of PC components that specialise in creating some of the most amazing and beautiful hardware. The company offers a wide range of custom liquid cooling products, PC chassis that showcase components like nothing else and a range of modding accessories.

Singularity Computers puts a huge emphasis on aesthetics in the design of its products and has an extensive range of unique products including reservoirs, distribution plates and even fully water-cooled PC cases. Products that will be available from Singularity Computers at Overclockers UK include the Wraith mini-ITX show case, which is a compact chassis featuring an integrated transparent acrylic distro plate with a D5 pump that acts as the motherboard tray to show off components like no other mini-ITX can.

The Singularity Spectre 2.0 is a larger open frame E-ATX chassis perfect for installing complex custom water cooling on high-end systems. The mid-tower open frame chassis also has a distribution plate as a motherboard tray, it can accommodate two 360mm radiators and includes the option for vertical graphics card mounting with mounting bracket and riser cable included.

As well as these beautiful show cases, Overclockers UK will also be stocking the full range of Singularity Computers heavily engineered water cooling components. According to OcUk, Singularity water cooling components are highly versatile and provide users with flexibility and freedom to create their own unique custom cooling solutions. The range includes everything that is needed to build a high quality custom cooling loop.

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Devin Townsend Readies "Ultimate Edition" of ‘Empath’ – Exclaim!

The expanded album features a 5.1 surround mix, acoustic recordings and more

Published Apr 01, 2020

InsideOut Music, Townsend's label home, announced today that an "Ultimate Edition" ofEmpathwill touch down on June 5.

The expanded issue will see the album released as a2CD/2Blu-ray package, featuring a 5.1 surround sound mix, demos, live recordings from Townsend's 2019 acoustic tour, visualizers, album commentary, a documentary and more.

The new edition, which you can find cover art for up above, will also feature an artbook. Find a complete tracklisting below, and pre-order the package here.

Townsend has recently shared new music as part of his ongoing "Quarantine Project," also noting that the material will be released as an album"when all this calms down."

Empath: Ultimate Edition:

CD1:

1. Castaway2. Genesis3. Spirits Will Collide4. Evermore5. Sprite6. Hear Me7. Why?8. Borderlands9. Requiem10. Singularity: Adrift11. Singularity: I Am I12. Singularity: There Be Monsters13. Singularity: Curious Gods14. Singularity: Silicone Scientists15. Singularity: Here Comes The Sun!

CD2:

1. The Contrarian (Demo)2. King (Demo)3. The Waiting Kind (Demo)4. Empath (Demo)5. Methuselah (Demo)6. This Is Your Life (Demo)7. Gulag (Demo)8. Middle Aged Man (Demo)9. Total Collapse (Demo)10. Summer (Demo)

Blu-ray 1:

1. Castaway (5.1 Surround Mix)2. Genesis (5.1 Surround Mix)3. Spirits Will Collide (5.1 Surround Mix)4. Evermore (5.1 Surround Mix)5. Sprite (5.1 Surround Mix)6. Hear Me (5.1 Surround Mix)7. Why? (5.1 Surround Mix)8. Borderlands (5.1 Surround Mix)9. Requiem (5.1 Surround Mix)10. Singularity: Adrift (5.1 Surround Mix)11. Singularity: I Am I (5.1 Surround Mix)12. Singularity: There Be Monsters (5.1 Surround Mix)13. Singularity: Curious Gods (5.1 Surround Mix)14. Singularity: Silicone Scientists (5.1 Surround Mix)15. Singularity: Here Comes The Sun! (5.1 Surround Mix)16. Castaway (Stereo Mix Visualizer)17. Genesis (Stereo Mix Visualizer)18. Spirits Will Collide (Stereo Mix Visualizer)19. Evermore (Stereo Mix Visualizer)20. Sprite (Stereo Mix Visualizer)21. Hear Me (Stereo Mix Visualizer)22. Borderlands (Stereo Mix Visualizer)23. Why? (Stereo Mix Visualizer)24. Requiem (Stereo Mix Visualizer)25. Singularity: Adrift (Stereo Mix Visualizer)26. Singularity: I Am I (Stereo Mix Visualizer)27. Singularity: There Be Monsters (Stereo Mix Visualizer)28. Singularity: Curious Gods (Stereo Mix Visualizer)29. Singularity: Silicone Scientists (Stereo Mix Visualizer)30. Singularity: Here Comes The Sun! (Stereo Mix Visualizer)

Blu-ray 2:

1. Empath Documentary2. Empath Album Commentary3. Genesis 5.1 Mixing Lesson4. Acoustic Gear Tour5. Intro (Live in Leeds 2019)6. Let It Roll (Live in Leeds 2019)7. Funeral (Live in Leeds 2019)8. Ih-Ah (Live in Leeds 2019)9. Deadhead (Live in Leeds 2019)10. Love? (Live in Leeds 2019)11. Hyperdrive! (Live in Leeds 2019)12. Terminal (Live in Leeds 2019)13. Coast (Live in Leeds 2019)14. Solar Winds (Live in Leeds 2019)15. Thing Beyond Things (Live in Leeds 2019)16. King (Official Video)

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Devin Townsend Readies "Ultimate Edition" of 'Empath' - Exclaim!

Robots to the Rescue: How They Can Help During Coronavirus (and Future Pandemics) – Singularity Hub

As the coronavirus pandemic forces people to keep their distance, could this be robots time to shine? A group of scientists think so, and theyre calling for robots to do the dull, dirty, and dangerous jobs of infectious disease management.

Social distancing has emerged as one of the most effective strategies for slowing the spread of COVID-19, but its also bringing many jobs to a standstill and severely restricting our daily lives. And unfortunately, the one group that cant rely on its protective benefits are the medical and emergency services workers were relying on to save us.

Robots could be a solution, according to the editorial board of Science Robotics, by helping replace humans in a host of critical tasks, from disinfecting hospitals to collecting patient samples and automating lab tests.

According to the authors, the key areas where robots could help are clinical care, logistics, and reconnaissance, which refers to tasks like identifying the infected or making sure people comply with quarantines or social distancing requirements. Outside of the medical sphere, robots could also help keep the economy and infrastructure going by standing in for humans in factories or vital utilities like waste management or power plants.

When it comes to clinical care, robots can play important roles in disease prevention, diagnosis and screening, and patient care, the researchers say. Robots have already been widely deployed to disinfect hospitals and other public spaces either using UV light that kills bugs or by repurposing agricultural robots and drones to spray disinfectant, reducing the exposure of cleaning staff to potentially contaminated surfaces. They are also being used to carry out crucial deliveries of food and medication without exposing humans.

But they could also play an important role in tracking the disease, say the researchers. Thermal cameras combined with image recognition algorithms are already being used to detect potential cases at places like airports, but incorporating them into mobile robots or drones could greatly expand the coverage of screening programs.

A more complex challengebut one that could significantly reduce medical workers exposure to the viruswould be to design robots that could automate the collection of nasal swabs used to test for COVID-19. Similarly automated blood collection for tests could be of significant help, and researchers are already investigating using ultrasound to help robots locate veins to draw blood from.

Convincing people its safe to let a robot stick a swab up their nose or jab a needle in their arm might be a hard sell right now, but a potentially more realistic scenario would be to get robots to carry out laboratory tests on collected samples to reduce exposure to lab technicians. Commercial laboratory automation systems already exist, so this might be a more achievable near-term goal.

Not all solutions need to be automated, though. While autonomous systems will be helpful for reducing the workload of stretched health workers, remote systems can still provide useful distancing. Remote control robotics systems are already becoming increasingly common in the delicate business of surgery, so it would be entirely feasible to create remote systems to carry out more prosaic medical tasks.

Such systems would make it possible for experts to contribute remotely in many different places without having to travel. And robotic systems could combine medical tasks like patient monitoring with equally important social interaction for people who may have been shut off from human contact.

In a teleconference last week Guang-Zhong Yang, a medical roboticist from Carnegie Mellon University and founding editor of Science Robotics, highlighted the importance of including both doctors and patients in the design of these robots to ensure they are safe and effective, but also to make sure people trust them to observe social protocols and not invade their privacy.

But Yang also stressed the importance of putting the pieces in place to enable the rapid development and deployment of solutions. During the 2015 Ebola outbreak, the White House Office of Science and Technology Policy and the National Science Foundation organized workshops to identify where robotics could help deal with epidemics.

But once the threat receded, attention shifted elsewhere, and by the time the next pandemic came around little progress had been made on potential solutions. The result is that its unclear how much help robots will really be able to provide to the COVID-19 response.

That means its crucial to invest in a sustained research effort into this field, say the papers authors, with more funding and multidisciplinary research partnerships between government agencies and industry so that next time around we will be prepared.

These events are rare and then its just that people start to direct their efforts to other applications, said Yang. So I think this time we really need to nail it, because without a sustained approach to this history will repeat itself and robots wont be ready.

Image Credit: ABBs YuMi collaborative robot. Image courtesy of ABB

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Robots to the Rescue: How They Can Help During Coronavirus (and Future Pandemics) - Singularity Hub

How long have we got before humans are replaced by artificial intelligence? – Scroll.in

My view, and that of the majority of my colleagues in AI, is that itll be at least half a century before we see computers matching humans. Given that various breakthroughs are needed, and its very hard to predict when breakthroughs will happen, it might even be a century or more. If thats the case, you dont need to lose too much sleep tonight.

One reason for believing that machines will get to human-level or even superhuman-level intelligence quickly is the dangerously seductive idea of the technological singularity. This idea can be traced back to a number of people over fifty years ago: John von Neumann, one of the fathers of computing, and the mathematician and Bletchley Park cryptographer IJ Good. More recently, its an idea that has been popularised by the science-fiction author Vernor Vinge and the futurist Ray Kurzweil.

The singularity is the anticipated point in humankinds history when we have developed a machine so intelligent that it can recursively redesign itself to be even more intelligent. The idea is that this would be a tipping point, and machine intelligence would suddenly start to improve exponentially, quickly exceeding human intelligence by orders of magnitude.

Once we reach the technological singularity, we will no longer be the most intelligent species on the planet. It will certainly be an interesting moment in our history. One fear is that it will happen so quickly that we wont have time to monitor and control the development of this super-intelligence, and that this super-intelligence might lead intentionally or unintentionally to the end of the human race.

Proponents of the technological singularity who, tellingly, are usually not AI researchers but futurists or philosophers behave as if the singularity is inevitable. To them, it is a logical certainty; the only question mark is when. However, like many other AI researchers, I have considerable doubt about its inevitability.

We have learned, over half a century of work, how difficult it is to build computer systems with even modest intelligence. And we have never built a single computer system that can recursively self-improve. Indeed, even the most intelligent system we know of on the planet the human brain has made only modest improvements in its cognitive abilities. It is, for example, still as painfully slow today for most of us to learn a second language as it always was. Little of our understanding of the human brain has made the task easier.

Since 1930, there has been a significant and gradual increase in intelligence test scores in many parts of the world. This is called the Flynn effect, after the New Zealand researcher James Flynn, who has done much to identify the phenomenon. However, explanations for this have tended to focus on improvements in nutrition, healthcare and access to school, rather than on how we educate our young people.

There are multiple technical reasons why the technological singularity might never happen. I discussed many of these in my last book. Nevertheless, the meme that the singularity is inevitable doesnt seem to be getting any less popular. Given the importance of the topic it may decide the fate of the human race I will return again to these arguments, in greater detail, and in light of recent developments in the debates. I will also introduce some new arguments against the inevitability of the technological singularity.

My first objection to the supposed inevitability of the singularity is an idea that has been called the faster-thinking dog argument. It considers the consequences of being able to think faster. While computer speeds may have plateaued, computers nonetheless still process data faster and faster. They achieve this by exploiting more and more parallelism, doing multiple tasks at the same time, a little like the brain.

Theres an expectation that by being able to think longer and harder about problems, machines will eventually become smarter than us. And we certainly have benefited from ever-increasing computer power; the smartphone in your pocket is evidence of that. But processing speed alone probably wont get us to the singularity.

Suppose that you could increase the speed of the brain of your dog. Such a faster-thinking dog would still not be able to talk to you, play chess or compose a sonnet. For one thing, it doesnt possess complex language. A faster-thinking dog will likely still be a dog. It will still dream of chasing squirrels and sticks. It may think these thoughts more quickly, but they will likely not be much deeper. Similarly, faster computers alone will not yield higher intelligence.

Intelligence is a product of many things. It takes us years of experience to train our intuitions. And during those years of learning we also refine our ability to abstract: to take ideas from old situations and apply them to new, novel situations. We add to our common sense knowledge, which helps us adapt to new circumstances. Our intelligence is thus much more than thinking faster about a problem.

My second argument against the inevitability of the technological singularity is anthropocentricity. Proponents of the singularity place a special importance on human intelligence. Surpassing human intelligence, they argue, is a tipping point. Computers will then recursively be able to redesign and improve themselves. But why is human intelligence such a special point to pass?

Human intelligence cannot be measured on some single, linear scale. And even if it could be, human intelligence would not be a single point, but a spectrum of different intelligences. In a room full of people, some people are smarter than others. So what metric of human intelligence are computers supposed to pass? That of the smartest person in the room? The smartest person on the planet today? The smartest person who ever lived? The smartest person who might ever live in the future? The idea of passing human intelligence is already starting to sound a bit shaky.

But lets put these objections aside for a second. Why is human intelligence, whatever it is, the tipping point to pass, after which machine intelligence will inevitably snowball? The assumption appears to be that if we are smart enough to build a machine smarter than us, then this smarter machine must also be smart enough to build an even smarter machine. And so on. But there is no logical reason that this would be the case. We might be able to build a smarter machine than ourselves. But that smarter machine might not necessarily be able to improve on itself.

There could be some level of intelligence that is a tipping point. But it could be any level of intelligence. It seems unlikely that the tipping point is less than human intelligence. If it were less than human intelligence, we humans could likely simulate such a machine today, use this simulation to build a smarter machine, and thereby already start the process of recursive self-improvement.

So it seems that any tipping point is at, or above, the level of human intelligence. Indeed, it could be well above human intelligence. But if we need to build machines with much greater intelligence than our own, this throws up the possibility that we might not be smart enough to build such machines.

My third argument against the inevitability of the technological singularity concerns meta-intelligence. Intelligence, as I said before, encompasses many different abilities. It includes the ability both to perceive the world and to reason about that perceived world. But it also includes many other abilities, such as creativity.

The argument for the inevitability of the singularity confuses two different abilities. It conflates the ability to do a task and the ability to improve your ability to do a task. We can build intelligent machines that improve their ability to do particular tasks, and do these tasks better than humans. Baidu, for instance, has built Deep Speech 2, a machine-learning algorithm that learned to transcribe Mandarin better than humans.

But Deep Speech 2 has not improved our ability to learn tasks. It takes Deep Speech 2 just as long now to learn to transcribe Mandarin as it always has. Its superhuman ability to transcribe Mandarin hasnt fed back into improvements of the basic deep-learning algorithm itself. Unlike humans, who get to be better learners as they learn new tasks, Deep Speech 2 doesnt learn faster as it learns more.

Improvements to deep-learning algorithms have come about the old-fashioned way: by humans thinking long and hard about the problem. We have not yet built any self-improving machines. Its not certain that we ever will.

Excerpted with permission from 2062: The World That AI Made, Toby Walsh, Speaking Tiger Books.

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How long have we got before humans are replaced by artificial intelligence? - Scroll.in

Existing Drugs May Work Against Covid-19. AI Is Screening Thousands to Find Out – Singularity Hub

Youve heard of chloroquine by now. Originally developed by German scientists in the 1930s, the anti-malaria drug is based on a natural compound present in the bark of certain South African trees. For nearly a century its been saving lives globally, but remained under the radar of countries where malaria isnt a big problem.

Thanks to Covid-19, chloroquine is back in the media spotlight as a potential treatment to reduce severe coronavirus symptoms.

To be clear: we dont know if it works. Chinese physicians threw the drug (along with a whole other bucketful) in a last-ditch attempt on severe Covid-19 sufferers who were dying. Some got better. Many didnt. Without clinical trialswhich are ongoingpositive effects couldve been just wishful thinking.

Chloroquine isnt an isolated story. Several potential existing drugs are being investigated for Covid-19, though at the moment there are no definitively effective drugs, Dr. Li Haichao told Singularity Hub. Li is a respiratory and critical care physician at Peking University First Hospital and a member of the national emergency medical rescue team to Wuhan.

What ties these promising drug candidates together, however, is that none of them are new, that is, none were specifically developed for coronavirusor any virus. Yet they all have traits that make them potentially powerful drugs to combat the new virus thats been wreaking havoc across the globe.

Repurposing available drugs is perhaps the fastest route to an SOS treatment in any outbreak. Rather than developing new drugs from scratcha daunting effort that could last a decadeexisting drugs, especially those already approved by regulatory agencies, could storm into action much faster and save lives.

For now, in the face of this brand-new virus, scientists are making educated guesses based on expertise and intuition to select a few potential drug candidates.

What if theres another way?

This week, a preprint paper outlined how deep neural networks could help doctors search for antivirals against a new target. Especially intriguing is the fact that the algorithm doesnt just look at experimental drugsit also screens through a library of compounds, already approved for other ailments, that could also potentially work for coronavirus symptoms. Tapping an existing, approved drug is like asking a friend for help rather than an online stranger: you already understand the drugs safety and metabolism profiles, and that increases trust.

But its not all ponies and rainbows. AI-based drug repurposing is perhaps even more dangerous than de novo drug discovery. Familiarity is a double-edged sword; its exactly because you trust an approved drug that youre less inclined to question its safety. The margin of therapeutic and toxic doses of chloroquine, for example, is narrow, and poisoning can be life-threatening. AI could helpbut fundamentally its up to clinical trials to validate.

The preprint is one recent attempt at a fascinating movement in using AI for drug discovery.

AIs role in drug discovery has been touted in many ways: finding new targets, scouring for novel candidate molecules that improve hit ratethat is, how many go through rigorous clinical trials and make it to market. Most AI-based attempts focus on finding new compounds; yet with Covid-19 rapidly destroying global health and wealth economies, drug repurposing is emerging as a previously undervalued bet.

The idea of using a drug for one disease on another may seem strange. If it takes a decade to develop a drug against one disease, why would it work for something else?

The reason is biological similarity.

Nature is kinda lazy. Although the Covid-19 virus is new to humans, its not exactly an alien species unknown to evolution. As a coronavirusor heck, a virus itselfwe have a basic idea, based on previous similar viruses such as SARS and MERS, of how it infects cells and how it rapidly transmits. Studies are underway to decipher why its so freaking effective compared to its cousins, but thats the crux: there are previous examples to look at.

On the human recipient side, we can also match up how our bodies respond at the molecular or even genetic level to such an infection compared to other viruses. After infection, a virus fundamentally changes how a cells protein factories work. Because viruses cant replicate themselves, they require our cells manufacturing facilities to reproduce, which changes the cells gene expression profile. Its like looking at a citys satellite image before and after being hit by the virusthere are notable changes in traffic, air pollution, artificial lights, and so on, relatively easy to distinguish.

Heres the main idea: if a drug changes gene expression profiles similarly between two different circumstancessay, two different infections, one of which is newthen its conceivable that the drug can work for the new infection. At least, thats the logical, AI-based point of view.

From an ER physicians perspective, all of the above is too complicated to consider in real life. Why use chloroquine in Covid-19 patients? Because, controversially, it has anti-viral properties on isolated cells in labs, even though to date, no acute virus infection has been successfully treated by chloroquine in humans. The use of chloroquine was a desperate attempt: Chinese doctors administered the drug as a last-ditch, gut-feeling effort, because it seemed to have (unconfirmed) beneficial effects against SARS more than a decade ago. Gene expression was the last thing on their minds.

Unlike human doctors, AI does have the ability to dig deeper into drug effects at the molecular or genetic level. As a purely fictional example: from a deep neural nets perspective, if a drug that works on HIV triggers the same genetic expression changes in patients with Covid-19, perhaps the drug could also work for the new coronavirus.

Using AI for drug repurposing isnt newhundreds of studies on the topic have come out in recent years. The tough part is setting up the experiment.

The preprint, for example, is based on a hypothesis using SARS, a virus similar to the one that causes Covid-19. A gene, dubbed COPB2, was previously found essential to help SARS replicate in the body. Because the Covid-19 virus and SARS have at least 86 percent similarity in their genome, a drug that works for SARS could in theory be promising for battling Covid-19. This is in line with most drugs currently tested against the new coronavirusmost were initially developed for other viruses.

Heres where machine learning comes in. The team first looked at the genetic profile of cells without the COPB2 gene, which (if the gene is essential for Covid-19) means that they are at least partially resilient against SARS, and maybe against the new coronavirus. They then screened through mass chemical libraries to find compounds that trigger a similar genetic profile in cells as eliminating the COPB2 gene altogether.

The neural net yielded a list of experimental and approved compounds that matched the profile. One sanity check chemical, for example, was previously found to reduce SARS replication in infected cells.

If you have questions and doubtsgood, you should. Were still in the beginning stages of tackling Covid-19. This means that theres very little data on the virus that can be used to train AI. The preprint used SARS as a proxy, which is logical, especially because we know so little yet about the new coronavirus. To their credit, the team also calls for academic and industry collaborations to experimentally validate their results.

However, is COPB2 necessary for Covid-19 to hijack your cells? No clue! We simply dont have enough data to confirm either way. Would the drug candidates against SARS work for the Covid-19 virus? No one knows.

And thats the lesson. Drug repurposing in a crisis is often a Hail Mary attempt. Doctors are desperate. But without taking a step back and running controlled trials, we will let hope take over data and truth to the detriment of scientists, physicians, and patients alike. AI, without doubt, has the potential to blast open a world of potential repurposed drug candidates, ranked by predicted efficacy. Thats really great: rather than a handful of promising drugs, we could have ones that we havent even thought of.

But its also dangerous to run away with AI-recommended hype, especially for drugs already on the market. Just because theyre safe for one tested disorder doesnt mean theyll act the same for another. Everyone is impatient to find refugebut thats exactly why scientific objectivity needs to kick in first.

Image Credit: Pexels from Pixabay

Originally posted here:

Existing Drugs May Work Against Covid-19. AI Is Screening Thousands to Find Out - Singularity Hub

Mind-blowing Nasa photo reveals glowing mess of Milky Ways centre including our galaxys supermassive black – The Sun

NASA has given space fans an unprecedented look at the violent black hole at the centre of our galaxy.

A fascinating picture published by the space agency shows the ominous object slap bang in the middle of the Milky Way.

3

The image was captured using Nasa's orbiting Chandra X-Ray Observatory last year butwas featured as Nasa's Astronomy Picture of The Day on Monday.

The various colours are the different types of light emitted by the mysterious region, which is 26,000 light years from Earth.

Green and blue regions are high-energy X-ray emissions picked up by Chandra, while red sections are low-energy radiation captured by MEERKAT, a ground-based telescope in South Africa.

Nasa said in yesterday's post: "This enigmatic region... glows in every type of light that we can see."

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Just to the right of the colourful central region lies Sagittarius A (Sag A), the supermassive black hole in the middle of our galaxy.

Sag A weighs about four million times the mass of the Sun and is more than 13million miles wide.

"Hot gas surrounds Sag A, as well as a series of parallel radio filaments known as the Arc, seen just left of the image centre," Nasa wrote.

"Many stars orbit in and around Sag A, as well as numerous small black holes and dense stellar cores known as neutron stars and white dwarfs."

What is a black hole? The key facts

Here's what you need to know...

What is a black hole?

What is an event horizon?

What is a singularity?

How are black holes created?

3

Last year, scientists unveiled the first ever picture of a black hole.

The black hole, described by scientists as a "monster", is 24billion miles across - 3million times the size of the Earth.

Sitting about 300 million trillion miles away from our planet, it was photographed by a network of eight telescopes across the globe known as the Event Horizon Telescope (EHT).

When used together, the telescopes combine with the power of a single telescope "the size of our planet", scientists said.

TOASTY TESTChina's 'artificial sun' SIX TIMES hotter than real Sun 'to be ready this year'

PLAGUE PITEerie Black Death mass grave with dozens of bodies unearthed after 700 years

SHOOTING STARComet that may be the 'brightest in 20 years' will soar across sky this month

POLAR OPPOSITEWarm rainforest covered 'most of West Antarctica' around 90million years ago

FLU GOTTA BE KIDDING MECoronavirus conspiracies including claims it was 'made by CIA'

THINK PINKRare 'Super Pink Moon' will fill skies next week how to spot it

In other space news, Nasa astronauts could build a Moon base using their own pee and lunar dirt to make space concrete.

Space Force has successfullylaunched its first missionsince its establishment as a US military service.

And, the Hubble Space Telescope has revealed new data about what may be themost powerful cosmic stormin the universe.

What do you think of the Nasa photo? Let us know in the comments...

We pay for your stories! Do you have a story for The Sun Online Tech & Science team? Email us at tech@the-sun.co.uk

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Mind-blowing Nasa photo reveals glowing mess of Milky Ways centre including our galaxys supermassive black - The Sun

Saints Row IV Re-Elected: Where to Find The Singularity Gun – Screen Rant

The Nintendo Switch has finally received a port for Saints Row IV: Re-Elected and both new and old fans are flocking to the title. Players will once again be able to run through a simulated version of Steelport blowing up cars, shooting aliens, and living it up as President of the United States. The best thing that Saints Row does though, is give players access to an impressive amount of weapons.

Related: Saints Row IV: Re-Elected Review - It's Just as Good

One of the best weapons in the entirety of Saints Row IV, and one that players will want to quickly get their hands on, is the Singularity Gun. This weapon will fire out black holes that can suck up enemies and cause a massive amount of damage. This weapon is perfect for clearing out large groups of enemies or causing lots of property damage. By following this guide players can obtain the Singularity Gun for themselves.

The first thing that players will need to do before obtaining the Singularity Gun is to track down Johnny Gat. In order to find Gat players will need to play through the mission "... The Very Next Day". Once this mission is completed Johnny Gat will be available on the ship. From there players just need to exit the simulation and speak to Johhny in order to begin his Loyalty Quest, "WWGD".

After talking to Gat, he will give the player several tasks to complete for this quest. The first thing that Gat asks the player to do is shut down a Hotspot. This will involve avoiding a lot of enemies as the player attempts to destroy the three generators powering the Hotspot. These generators will be positioned on floating platforms surrounding the spot. After these are shut down, players then need to bring the controller down before moving on to the next task.

The next task shouldn't cause players to many issues. The only thing that players need to do is eliminate 20 Saints Flow mascots. The easiest way to clear this mission is to use the freeze blast enemies to set them up for easy kills.

The next task will send players to a flashpoint area. Players will need to clear out all Zin troops in the vicinity. Once this happens players will then have to face off against a Warden. The Warden's stomps, telekinesis, and laser blasts should be avoided at all costs.

After killing the Warden, players will then get to causes some mayhem from within a tank. In order to beat this task, at least $600,000 in property damage will have to be caused by the tank. With over three minutes on the clock, this is more than enough time to cause that amount of damage.

The final task is a simple as rushing over to another flashpoint and taking out another group of Zin soldiers. After this just exit the simulation and go talk to Johnny Gat. After a short conversation, players will finally have access to Saints Row IV: Re-Elected's strongest weapon: The Singularity Gun.

Next: Saints Row Movie Writer Wants Adaptation to Become An Insane Film Franchise

Saints Row IV: Re-Elected can be played on Nintendo Switch.

The Office Reboot: Michael Scott Movie Coming To NBC's Streaming Service [UPDATED]

Cody Peterson is an avid reader and writer. Graduated from Midwestern State University with a BA in English where he worked as an editor for the University literary journal. Currently a freelancer for Screenrant, where he writes about video games. When he isn't writing he usually spends his time playing video games or editing the podcast he runs with his best friend.

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Saints Row IV Re-Elected: Where to Find The Singularity Gun - Screen Rant

Money & Me: ‘When Covid-19 hit, the income I had lined up was suddenly taken away’ – The National

John Sanei is a futurist, author and motivational speaker. A self-made millionaire in his twenties, he was bankrupt by the age of 31, before making his fortune back again. Mr Sanei, 44, is also Africas first faculty member at Singularity University in San Francisco, a lecturer at Duke Corporate Education in Johannesburg, and a partner associate at the Copenhagen Institute of Future Studies in Denmark and co-founder of Future Self Academy, a platform helping authors turn their non-fiction books into courses. He is a digital nomad who bases himself between Dubai, where he moved last year, London, Bali and Cape Town. The South African is single and lives in Dubai Marina.

There was a moment as a child when my mum couldnt buy my brother and me a yo-yo. I remember making a decision I would never be poor again.

John Sanei

I grew up in Swaziland near South Africa and I come from a single-mum family. My mum was a secretary who earned very little money. Every month, we would never make it to the end of the month. Shed be in bed every night trying to calculate how to make ends meet and Id be sitting on the other end of the bed watching my mum cry and become stressed because we didnt have enough. So my upbringing shaped me to become anxious around the concept of money, angry that there wasnt enough and hopeless that I couldnt help her because I was a kid and didnt know how.

There was a moment as a child when my mum couldnt buy my brother and me a yo-yo. A single yo-yo between us. I remember making a decision I would never be poor again. When I was 13, I got a job in a grocery store packing bags at the tills, and I earned 3.20 South African rand (Dh0.65) an hour.

The lessons I learnt around money were terrible lessons we didnt have enough of it, I was frustrated that we were so constrained with what we could eat and do. My father wasnt helping us, so my lessons around money were all of hopelessness, anxiousness, anger, frustration and pretty much every negative emotion you could apply.

When I made the conscious decision, my foot went flat on the accelerator. By the time I was 17, I opened up my first business, and by the time I was 25, I had a shoe distribution business, vending machines, restaurants and retail stores. I was flying high. At 27 or 28, I was living the life of my dreams, with multiple holidays, homes, cars, clothes and all the trappings that come from having been poor and imagining what youd do with money when youre rich. I fell into the trap of spending it quicker than I could make it because I couldnt believe that I was there.

At 31, I had no money and owed people lots of money. One of my restaurant partners sued me for future franchise fees. I'd signed a 10-year contract but closed at seven years, so they sued me for the remainder, a fictitious amount of 8 million rand. I couldnt pay it because I didnt have the money. At 31, not only did I have that hanging over my head, but I also couldnt pay rent of 6,500 rand. I was depressed and really had nothing. My down point was being ashamed and embarrassed in front of all the people that Id been successful before.

I was always worried Id be poor again, and we know that what you fear the most becomes true. But on a more literal level, I didnt read all the contracts I was signing; I stretched myself too thin. And then there was the lack of acknowledgement from an alpha male, from a father figure growing up. I sought that from other people, trying to gain acceptance and approval from people around me, so I stretched myself more than necessary. Who needs six restaurants, two retail stores, 40 vending machines and a shoe distribution business? You could do very well and have a fantastic life with just one of those businesses.

I was in a hotel room in Amsterdam when I received a row of emails postponing or cancelling conferences Id been booked at. Eight talks were off the table, two conferences I was to speak at in South Africa were cancelled, a banking client told me I was not allowed to go into their offices. So my world changed; suddenly all the income I had lined up got taken away. I was in a space of anxiousness that I last felt when I was bankrupt at 30.

I realised I needed to pivot immediately. So I reached out to friends in cyberconferencing and signed up to a multi-user conference site, so I can talk and hundreds of people can listen, Im starting to do more webinars Ive done four talks already and have another three booked up. Ill also be doing one-on-one coaching.

At times like this, you want to make sure your diet is right, that youre around the right people and that youve got the best health resources around you. Im staying with family at a farm in South Africa. Whatever decisions youre making now, make sure theyre not around money or career they are not essentials and are not important. In extraordinary times you need to make extraordinary decisions.

I havent looked.

I dont save for the sake of saving. I buy what I need and then whatever else I make goes into my account or into shares. I dont have a number, I just need very little. Theres a saying that the most wealthy person doesnt have the most, but is the one who needs the least.

At 40, when I went through my divorce, I realised I wanted to be a speaker and author which is really where my highest joy lies. The divorce and the pain that came with it catalysed me to find the best process of telling stories.

I live by luxurious minimalism. I have very few things but those are the best money can buy. I spend a fair amount of money on [renting] great apartments in great areas that are fully furnished so I can plug in and plug out. I dont have a car so I don't have any transport or fixed payments. I have credit cards with bank accounts in two or three places around the world and I move around the world utilising this concept of luxurious minimalism. My number one luxury is flexibility and adaptability.

I have in the past and I have disability insurance and a hospital plan in case some emergency happens. Besides that, I like to invest in the New York Stock Exchange based on my own research because I am a futurist and Im researching a stock anyway.

I invest in brands I believe will do well over a long period of time. Ive put money into Beyond Meats because I love how they are creating a solution for the world. Other than that I make decisions around my own freedom. Im an entrepreneur, I like to use my money to build my businesses.

Relax, calm down, chill out, you dont need all that acknowledgement. You dont need to prove yourself. You are enough. Focus on one or two businesses, you dont need any more.

Updated: April 2, 2020 02:06 PM

Here is the original post:

Money & Me: 'When Covid-19 hit, the income I had lined up was suddenly taken away' - The National

Devs Wants to Unsettle You with that Dj Vu Feeling – SF Weekly

Devs wants to be the TV series that reflects our 21st century disaffections back to us. The writer and director of the show, Alex Garland (Ex Machina, Annihilation), easily conjures up alienation as a mood. The camera cooly tracks the San Francisco skyline in the same way that it tracks the numbed-out expressions of the characters. But its the soundtrack that carries most of the emotional weight. Pounding forward, it suggests the presence of a juggernaut, one thats made of silicon and steel. Technology is the alienating force in Devs, a rampaging machine thats gone AWOL, distancing us from our neighbors as well as from ourselves.

But after five of eight episodes (the finale airs on Thursday, April 16), Garland deepens the preternatural chill at a glacial pace. As a storyteller, hes as meticulous as a clockmaker with the internal machinery of his fictional universe. Its the overdetermined plot thats leaving little room for the characters to develop. Theyre frozen in place by the fate he wrote out for them on his laptop. They lack warmth, wit and human singularity. Its hard to imagine anyone on screen doing laundry, spilling crumbs on the carpet or, for that matter, vacuuming them up.

Lily (Sonoya Mizuno) and her boyfriend Sergei (Karl Glusman) work at Amaya, a Silicon Valley tech company thats meant to resemble a Google or Facebook campus. Most of the scenes set there were shot at UC Santa Cruz. The cinematography accentuates the Lynchian strangeness of towering redwoods casting shadows against sleek glass and concrete buildings. Outwardly, the physical resemblance to a sprawling Silicon Valley company also suggests the buttoned-up psychic life of the place. If youre as smart, hard-working and talented at coding as Lily and Sergei, youll find yourself set up to work inside Californias version of paradise. Unfortunately for them and for the rest of us who are addicted to the regions apps and products they failed to notice that Forest (Nick Offerman), Amayas CEO, has veered far away from Googles now-abandoned ethos: Dont be evil.

Amaya was the name of Forests daughter. She died before Devs begins and, just past the halfway point, we have a glimpse at the CEOs personal history. Garland builds the doleful narrative around his loss. The camera often lingers on Forest mourning his daughter. To drive home how aggrieved he is, theres also a Sphinx-sized statue of the girl that stands in the center of the campus. Its an eerie figure that silently watches over everyone with the qualities of an omniscient god and a blank-eyed childs doll.

But I may be misinterpreting Forests motivation and mistaking the obvious for a red herring. The teaser for Episode 6 reads, Lily and Jamie visit Forest looking for answers, and Katie reveals to Lily the true nature of the Devs system. I suspect that Forest will reveal more details about his lifes work to Lily and her helpful ex-boyfriend Jamie (Jin Ha). For now, weve seen that the Devs system is a mystical portal that reveals a multiverse engineered by Amayas quantum physics geniuses. Lily and Sergeis troubles begin when hes promoted to this inner sanctum. To get there, he gives a winning presentation to Forest and his second in command Katie (a dour Alison Pill).

The Devs department is housed in a golden mausoleum with a floating elevator. Its such an enlightened space that the developers work endless shifts, not knowing how many days or nights are passing. They contribute their knowledge to this centrifuge of power and are rewarded with breathtaking salaries. What that looks like for a viewer is a group of actors getting paid to stare at and be entranced by computer screens. These scenes are meant to be hypnotic. And they are for the first hour. After that, a monochromatic haze stifles the pacing and the characters. When a U.S. Senator visits Forest to request a campaign donation and to suggest the possibility of Congressional oversight, we know that hes lying to her. From the top down, Amayas corporate culture demands that all employees master the art of reticence and dissimulation.

The exemplar of villainy in this world is Kenton, the head of security at Amaya. Garland has cast Zach Grenier to play the part. In his seven seasons on The Good Wife, Greniers character never evolved into anything more than a greedy and manipulative lawyer. Here, as the muscle in Devs, hes more self-contained than he was on that CBS melodrama. But hes not much more than a brute and a faithful servant of Amayas dark heart. Unlikely as it is, my hope is that, when the big reveal drops, Kenton turns out to be a really nice guy.

Garland also pays tribute to Vertigo, Alfred Hitchcocks fogged-in vision of San Francisco. Lily meets an associate of Sergeis at Fort Point, the Golden Gate Bridge rendez-vous where Jimmy Stewart dives into the bay to rescue Kim Novak. Like Stewarts character, Lilys playing detective but shes in over her head. The city scenery is mostly observed from above. And thats how close it feels to an accurate depiction of San Franciscos cultural life. The depiction of a homeless man who lives on Lily and Sergeis Dolores Park doorstep prompted a friend of mine to ask, Is it me, or is no one getting San Francisco right? I suggested that he may turn out to be a plant or another red herring.

Devs expands the depiction of techs cultural aggression and annexation that David Fincher established in The Social Network. Garland tells us that, though warned, were now all servile creatures, beholden to the great gods who rule over us, however remotely, from their Silicon Valley headquarters. But when compared with the HBO series The Leftovers (2014-2017), Devs suggests a mood whereas Damon Lindelofs series sustains a primal emotion.

When 2 percent of the population suddenly disappears in The Leftovers, the world seizes up and contracts a universal feeling of loss. Despite a shared sense of grief, the show demonstrates the need for connection within one specific family (theyre stand-ins for the rest of humanity). Devs tells us that we can correct that feeling of loss by digitally engineering a response, since we no longer have the capacity to do so in real life. Being deprived of human contact as we are today, I prefer the now idealized conclusion that The Leftovers eventually reaches.

At the end of Devs fourth episode, The Beacon Sound Choir sings, We are the fortunate ones who get to be born again. Perhaps thats the secret Katies about to reveal.

Devs airs on FX on Hulu Thursdays.

Continued here:

Devs Wants to Unsettle You with that Dj Vu Feeling - SF Weekly

A guide to healthy skepticism of artificial intelligence and coronavirus – Brookings Institution

The COVID-19 outbreak has spurred considerable news coverage about the ways artificial intelligence (AI) can combat the pandemics spread. Unfortunately, much of it has failed to be appropriately skeptical about the claims of AIs value. Like many tools, AI has a role to play, but its effect on the outbreak is probably small. While this may change in the future, technologies like data reporting, telemedicine, and conventional diagnostic tools are currently far more impactful than AI.

Still, various news articles have dramatized the role AI is playing in the pandemic by overstating what tasks it can perform, inflating its effectiveness and scale, neglecting the level of human involvement, and being careless in consideration of related risks. In fact, the COVID-19 AI-hype has been diverse enough to cover the greatest hits of exaggerated claims around AI. And so, framed around examples from the COVID-19 outbreak, here are eight considerations for a skeptics approach to AI claims.

No matter what the topic, AI is only helpful when applied judiciously by subject-matter expertspeople with long-standing experience with the problem that they are trying to solve. Despite all the talk of algorithms and big data, deciding what to predict and how to frame those predictions is frequently the most challenging aspect of applying AI. Effectively predicting a badly defined problem is worse than doing nothing at all. Likewise, it always requires subject matter expertise to know if models will continue to work in the future, be accurate on different populations, and enable meaningful interventions.

In the case of predicting the spread of COVID-19, look to the epidemiologists, who have been using statistical models to examine pandemics for a long time. Simple mathematical models of smallpox mortality date all the way back to 1766, and modern mathematical epidemiology started in the early 1900s. The field has developed extensive knowledge of its particular problems, such as how to consider community factors in the rate of disease transmission, that most computer scientists, statisticians, and machine learning engineers will not have.

There is no value in AI without subject-matter expertise.

It is certainly the case that some of the epidemiological models employ AI. However, this should not be confused for AI predicting the spread of COVID-19 on its own. In contrast to AI models that only learn patterns from historical data, epidemiologists are building statistical models that explicitly incorporate a century of scientific discovery. These approaches are very, very different. Journalists that breathlessly cover the AI that predicted coronavirus and the quants on Twitter creating their first-ever models of pandemics should take heed: There is no value in AI without subject-matter expertise.

The set of algorithms that conquered Go, a strategy board game, and Jeopardy! have accomplishing impressive feats, but they are still just (very complex) pattern recognition. To learn how to do anything, AI needs tons of prior data with known outcomes. For instance, this might be the database of historical Jeopardy! questions, as well as the correct answers. Alternatively, a comprehensive computational simulation can be used to train the model, as is the case for Go and chess. Without one of these two approaches, AI cannot do much of anything. This explains why AI alone cant predict the spread of new pandemics: There is no database of prior COVID-19 outbreaks (as there is for the flu).

So, in taking a skeptics approach to AI, it is critical to consider whether a company spent the time and money to build an extensive dataset to effectively learn the task in question. Sadly, not everyone is taking the skeptical path. VentureBeat has regurgitated claims from Baidu that AI can be used with infrared thermal imaging to see the fever that is a symptom of COVID-19. Athena Security, which sells video analysis software, has also claimed it adapted its AI system to detect fever from thermal imagery data. Vice, Fast Company, and Forbes rewarded the companys claims, which included a fake software demonstration, with free press.

To even attempt this, companies would need to collect extensive thermal imaging data from people while simultaneously taking their temperature with a conventional thermometer. In addition to attaining a sample diverse in age, gender, size, and other factors, this would also require that many of these people actually have feversthe outcome they are trying to predict. It stretches credibility that, amid a global pandemic, companies are collecting data from significant populations of fevered persons. While there are other potential ways to attain pre-existing datasets, questioning the data sources is always a meaningful way to assess the viability of an AI system.

The company Alibaba claims it can use AI on CT imagery to diagnose COVID-19, and now Bloomberg is reporting that the company is offering this diagnostic software to European countries for free. There is some appeal to the idea. Currently, COVID-19 diagnosis is done through a process called polymerase chain reaction (PCR), which requires specialized equipment. Including shipping time, it can easily take several days, whereas Alibaba says its model is much faster and is 96% accurate.

However, it is not clear that this accuracy number is trustworthy. A poorly kept secret of AI practitioners is that 96% accuracy is suspiciously high for any machine learning problem. If not carefully managed, an AI algorithm will go to extraordinary lengths to find patterns in data that are associated with the outcome it is trying to predict. However, these patterns may be totally nonsensical and only appear to work during development. In fact, an inflated accuracy number can actually be an important sign that an AI model is not going to be effective out in the world. That Alibaba claims its model works that well without caveat or self-criticism is suspicious on its face.

[A]n inflated accuracy number can actually be an important sign that an AI model is not going to be effective out in the world.

In addition, accuracy alone does not indicate enough to evaluate the quality of predictions. Imagine if 90% of the people in the training data were healthy, and the remaining 10% had COVID-19. If the model was correctly predicting all of the healthy people, a 96% accuracy could still be truebut the model would still be missing 40% of the infected people. This is why its important to also know the models sensitivity, which is the percent of correct predictions for individuals who have COVID-19 (rather than for everyone). This is especially important when one type of mistaken prediction is worse than the other, which is the case now. It is far worse to mistakenly suggest that a person with COVID-19 is not sick (which might allow them to continue infecting others) than it is to suggest a healthy person has COVID-19.

Broadly, this is a task that seems like it could be done by AI, and it might be. Emerging research suggests that there is promise in this approach, but the debate is unsettled. For now, the American College of Radiology says that the findings on chest imaging in COVID-19 are not specific, and overlap with other infections, and that it should not be used as a first-line test to diagnose COVID-19. Until stronger evidence is presented and AI models are externally validated, medical providers should not consider changing their diagnostic workflowsespecially not during a pandemic.

The circumstances in which an AI system is deployed can also have huge implications for how valuable it really is. When AI models leave development and start making real-world predictions, they nearly always degrade in performance. In evaluating CT scans, a model that can differentiate between healthy people and those with COVID-19 might start to fail when it encounters patients who are sick with the regular flu (and it is still flu season in the United States, after all). A drop of 10% accuracy or more during deployment would not be unusual.

In a recent paper about the diagnosis of malignant moles with AI, researchers noticed that their models had learned that rulers were frequently present in images of moles known to be malignant. So, of course, the model learned that images without rulers were more likely to be benign. This is a learning pattern that leads to the appearance of high accuracy during model development, but it causes a steep drop in performance during the actual application in a health-care setting. This is why independent validation is absolutely essential before using new and high-impact AI systems.

When AI models leave development and start making real-world predictions, they nearly always degrade in performance.

This should engender even more skepticism of claims that AI can be used to measure body temperature. Even if a company did invest in creating this dataset, as previously discussed, reality is far more complicated than a lab. While measuring core temperature from thermal body measurements is imperfect even in lab conditions, environmental factors make the problem much harder. The approach requires an infrared camera to get a clear and precise view of the inner face, and it is affected by humidity and the ambient temperature of the target. While it is becoming more effective, the Centers for Disease Control and Prevention still maintain that thermal imaging cannot be used on its owna second confirmatory test with an accurate thermometer is required.

In high-stakes applications of AI, it typically requires a prediction that isnt just accurate, but also one that meaningfully enables an intervention by a human. This means sufficient trust in the AI system is necessary to take action, which could mean prioritizing health-care based on the CT scans or allocating emergency funding to areas where modeling shows COVID-19 spread.

With thermal imaging for fever-detection, an intervention might imply using these systems to block entry into airports, supermarkets, pharmacies, and public spaces. But evidence shows that as many as 90% of people flagged by thermal imaging can be false positives. In an environment where febrile people know that they are supposed to stay home, this ratio could be much higher. So, while preventing people with fever (and potentially COVID-19) from enabling community transmission is a meaningful goal, there must be a willingness to establish checkpoints and a confirmatory test, or risk constraining significant chunks of the population.

This should be a constant consideration for implementing AI systems, especially those used in governance. For instance, the AI fraud-detection systems used by the IRS and the Centers for Medicare and Medicaid Services do not determine wrongdoing on their own; rather, they prioritize returns and claims for auditing by investigators. Similarly, the celebrated AI model that identifies Chicago homes with lead paint does not itself make the final call, but instead flags the residence for lead paint inspectors.

Wired ran a piece in January titled An AI Epidemiologist Sent the First Warnings of the Wuhan Virus about a warning issued on Dec. 31 by infectious disease surveillance company, BlueDot. One blog post even said the company predicted the outbreak before it happened. However, this isnt really true. There is reporting that suggests Chinese officials knew about the coronavirus from lab testing as early as Dec. 26. Further, doctors in Wuhan were spreading concerns online (despite Chinese government censorship) and the Program for Monitoring Emerging Diseases, run by human volunteers, put out a notification on Dec. 30.

That said, the approach taken by BlueDot and similar endeavors like HealthMap at Boston Childrens Hospital arent unreasonable. Both teams are a mix of data scientists and epidemiologists, and they look across health-care analyses and news articles around the world and in many languages in order to find potential new infectious disease outbreaks. This is a plausible use case for machine learning and natural language processing and is a useful tool to assist human observers. So, the hype, in this case, doesnt come from skepticism about the feasibility of the application, but rather the specific type of value it brings.

AI is unlikely to build the contextual understanding to distinguish between a new but manageable outbreak and an emerging pandemic of global proportions.

Even as these systems improve, AI is unlikely to build the contextual understanding to distinguish between a new but manageable outbreak and an emerging pandemic of global proportions. AI can hardly be blamed. Predicting rare events is just very hard, and AIs reliance on historical data does it no favors here. However, AI does offer quite a bit of value at the opposite end of the spectrumproviding minute detail.

For example, just last week, California Gov. Gavin Newsom explicitly praised BlueDots work to model the spread of the coronavirus to specific zip codes, incorporating flight-pattern data. This enables relatively precise provisioning of funding, supplies, and medical staff based on the level of exposure in each zip code. This reveals one of the great strengths of AI: its ability to quickly make individualized predictions when it would be much harder to do so individually. Of course, individualized predictions require individualized data, which can lead to unintended consequences.

AI implementations tend to have troubling second-order consequences outside of their exact purview. For instance, consolidation of market power, insecure data accumulation, and surveillance concerns are very common byproducts of AI use. In the case of AI for fighting COVID-19, the surveillance issues are pervasive. In South Korea, the neighbors of confirmed COVID-19 patients were given details of that persons travel and commute history. Taiwan, which in many ways had a proactive response to the coronavirus, used cell phone data to monitor individuals who had been assigned to stay in their homes. Israel and Italy are moving in the same direction. Of exceptional concern is the deployed social control technology in China, which nebulously uses AI to individually approve or deny access to public space.

Government action that curtails civil liberties during an emergency (and likely afterwards) is only part of the problem. The incentives that markets create can also lead to long-term undermining of privacy. At this moment, Clearview AI and Palantir are among the companies pitching mass-scale surveillance tools to the federal government. This is the same Clearview AI that scraped the web to make an enormous (and unethical) database of facesand it was doing so as a reaction to an existing demand in police departments for identifying suspects with AI-driven facial recognition. If governments and companies continue to signal that they would use invasive systems, ambitious and unscrupulous start-ups will find inventive new ways to collect more data than ever before to meet that demand.

In new approaches to using AI in high-stakes circumstances, bias should be a serious concern. Bias in AI models results in skewed estimates across different subgroups, such as women, racial minorities, or people with disabilities. In turn, this frequently leads to discriminatory outcomes, as AI models are often seen as objective and neutral.

While investigative reporting and scientific research has raised awareness about many instances of AI bias, it is important to realize that AI bias is more systemic than anecdotal. An informed AI skeptic should hold the default assumption that AI models are biased, unless proven otherwise.

An informed AI skeptic should hold the default assumption that AI models are biased, unless proven otherwise.

For example, a preprint paper suggests it is possible to use biomarkers to predict mortality risk of Wuhan COVID-19 patients. This might then be used to prioritize care for those most at riska noble goal. However, there are myriad sources of potential bias in this type of prediction. Biological associations between race, gender, age, and these biomarkers could lead to biased estimates that dont represent mortality risk. Unmeasured behavioral characteristics can lead to biases, too. It is reasonable to suspect that smoking history, more common among Chinese men and a risk factor for death by COVID-19, could bias the model into broadly overestimating male risk of death.

Especially for models involving humans, there are so many potential sources of bias that they cannot be dismissed without investigation. If an AI model has no documented and evaluated biases, it should increase a skeptics certainty that they remain hidden, unresolved, and pernicious.

While this article takes a deliberately skeptical perspective, the future impact of AI on many of these applications is bright. For instance, while diagnosis of COVID-19 with CT scans is of questionable value right now, the impact that AI is having on medical imaging is substantial. Emerging applications can evaluate the malignancy of tissue abnormalities, study skeletal structures, and reduce the need for invasive biopsies.

Other applications show great promise, though it is too soon to tell if they will meaningfully impact this pandemic. For instance, AI-designed drugs are just now starting human trials. The use of AI to summarize thousands of research papers may also quicken medical discoveries relevant to COVID-19.

AI is a widely applicable technology, but its advantages need to be hedged in a realistic understanding of its limitations. To that end, the goal of this paper is not to broadly disparage the contributions that AI can make, but instead to encourage a critical and discerning eye for the specific circumstances in which AI can be meaningful.

The Brookings Institution is a nonprofit organization devoted to independent research and policy solutions. Its mission is to conduct high-quality, independent research and, based on that research, to provide innovative, practical recommendations for policymakers and the public. The conclusions and recommendations of any Brookings publication are solely those of its author(s), and do not reflect the views of the Institution, its management, or its other scholars.

Microsoft provides support to The Brookings InstitutionsArtificial Intelligence and Emerging Technology (AIET) Initiative. The findings, interpretations, and conclusions in this report are not influenced by any donation. Brookings recognizes that the value it provides is in its absolute commitment to quality, independence, and impact. Activities supported by its donors reflect this commitment.

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A guide to healthy skepticism of artificial intelligence and coronavirus - Brookings Institution

AI vs your career? What artificial intelligence will really do to the future of work – ZDNet

Jill Watson has been a teaching assistant (TA) at the Georgia Institute of Technology for five years now, helping students day and night with all manner of course-related inquiries. But for all the hard work she has done, she still can't qualify for outstanding TA of the year.

That's because Jill Watson, contrary to many students' belief, is not actually human.

Created back in 2015 by Ashok Goel, professor of computer science and cognitive science at the Institute, Jill Watson is an artificial system based on IBM's Watson artificial intelligence software. Her role consists of answering students' questions a task she remarkably carries out with a 97% accuracy rate, for inquiries ranging from confirming the word count for an assignment, to complex technical questions related to the content of the course.

And she has certainly gone down well with students, many of whom, in 2015, were "flabbergasted" upon discovering that their favorite TA was not the serviceable, human lady that they expected, but in fact a cold-hearted machine.

What students found an amusing experiment is the sort of thing that worries many workers. Automation, we have been told time and again, will displace jobs; so are experiments like Jill Watson the first step towards unemployment for professionals?

SEE:How to implement AI and machine learning(ZDNet special report) |Download the report as a PDF(TechRepublic)

In fact, it's quite the contrary, Goel tells ZDNet. "Job losses are an important concern Jill Watson, in a way, could replace me as a teacher," he said. "But among the professors who use her, that question has never come up, because there is a huge need for teachers globally. Instead of replacing teachers, Jill Watson augments and amplifies their work, and that is something we actually need."

The AI was originally developed for an online masters in computer science, where students interact with teachers via a web discussion forum. Just in the spring of 2015, noticed Goel, 350 students posted 10,000 messages to the forum; to answer all of their questions, he worked out, would have taken a real-life teacher a year, working full time.

Jill Watson has only grown in popularity since 2015, said Goel, and she has now been deployed to a dozen other courses -- building her up for a new class takes less than ten hours. And while the artificial TA, for now, is only used at Georgia Institute of Technology, Jill Watson could change the education game if she were to be scaled globally. With UNESCO estimating that an additional 69 million teachers are needed to achieve sustainable development goals, the notion of 'augmenting' and 'amplifying' teachers' work could go a long way.

The automation of certain tasks is not such a scary prospect for those working in education. And perhaps neither is it a risk to the medical industry, where AI is already lending a helping hand with tasks ranging from disease diagnosis to prescription monitoring. It's a welcome support, rather than a looming threat, as the overwhelming majority of health services across the world report staff shortages and lack of resources even at the best of times.

But of course, not all professions are in dire need of more staff. For many workers, the advent of AI-powered technologies seems to be synonymous with permanent lay-off. Retailersare already using robotic fulfillment systems to pick orders in their warehouses. Google's project to build autonomous vehicles, Waymo, has launched its first commercial self-driving car service in the US, which in the long term will remove the need for a human taxi driver. Ford is even working on automating delivery services from start to finish, with a two-legged, two-armed robot that can walk around neighborhoods carrying parcels from the delivery vehicle right up to your doorstep.

Advancements in AI technology, therefore, don't bode well for all workers. "Nobody wants to be out of a job," says David McDonald, professor of human-centered design and engineering at the University of Washington. "Technological changes that impact our work, and thus, our ability to support ourselves and our families, are incredibly threatening."

"This suggests that when people hear stories saying that their livelihood is going to disappear," he says, "that they probably will not hear the part of the story that says there will be additional new jobs."

Consultancy McKinsey estimates that automation will cause up to 800 million individuals around the world to be displaced from their jobs by 2030 a statistic that will sound ominous, to say the least, to most of the workforce. But the firm's research also shows that in nearly all scenarios, and provided that there is sufficient investment and growth, most countries can expect to be at very near full employment by the same year.

The potential impact of artificial intelligence needs to be seen as part of the bigger picture. McKinsey highlighted that one of the countries that will face the largest displacement of workers is China, with up to 12% of the workforce needing to switch occupations. But although 12% seems like a lot, the consultancy noted, it's still relatively small compared with the tens of millions of Chinese who have moved out of agriculture in the past 25 years.

In other words, AI is only the latest news in the long history of technological progress and as with all previous advancements, the new opportunities that AI will open will balance out the skills that the technology makes out-of-date. At least that's the theory; one that Brett Frischmann explores in the book he co-authored, Re-engineering Humanity. It's a project that's been going on forever and more recent innovations are building on the efficiencies pioneered by the likes of Frederick Winslow Taylor and Henry Ford.

"At one point, human beings used spears to fish. As we developed fishing technology, fewer people needed that skill and did other things," he says. "The idea that there is something dramatically different about AI has to be looked at carefully. Ultimately, data-driven systems, for example as a way to optimize factory outputs, are only a ramped-up version of Ford and Taylor's processes."

Seeing AI as simply the next chapter of tech is a common position among experts. The University of Washington's McDonald is equally convinced that in one form or another, we have been building systems to complement work "for over 50 years".

So where does the big AI scare come from? A large part of the problem, as often, comes down to misunderstanding. There is one point that Frischmann was determined to clarify: people do tend to think, and wrongly so, that the technology is a force that has its own agenda -- one that involves coming against us and stealing our jobs.

"It's really important for people to understand that the AI doesn't want anything," he said. "It's not a bad guy. It doesn't have a role of its own, or an agenda. Human beings are the ones that create, design, damage, deploy, control those systems."

In reality, according to McKinsey, fewer than 5% of occupations can be entirely automated using current technology. But over half of jobs could have 30% of their activities taken on by AI. Rather than robots taking over, therefore, it looks like the future will be about task-sharing.

Gartner previously reported that by 2022one in five workers engaged in non-routine tasks will rely on AI to get work done. The research firm's analysts forecasted that combining human and artificial intelligence would be the way forward to maximize the value generated by the technology. AI, said Gartner, will assist workers in all types of jobs, from entry-level to highly-skilled.

The technology could become a virtual assistant, an intern, or another kind of robo-employee; in any case, it will lead to the development of an 'augmented' workforce, whose productivity will be enhanced by the tool.

For Gina Neff, associate professor at the Oxford Internet Institute, delegating tasks to AI will only bring about a brighter future for workers. "Humans are very good at lots of tasks, and there are lots of tasks that computers are better at than we are. I don't want to have to add large lists of sums by hand for my job, and thankfully I have a technology to help me do that."

"Increasingly, the conversation will shift towards thinking about what type of work we want to do, and how we can use the tools we have at our disposal to enhance our capacity, and make our work both productive and satisfying."

As machines take on tasks such as collecting and processing data, which they already carry out much better than humans, workers will find that they have more time to apply themselves to projects involving the cognitive skills logical reasoning, creativity, communication that robots (at least currently) lack.

Using technology to augment the human value of work is also the prospect that McDonald has in mind. "We should be using AI and complex computational systems to help people achieve their hopes, dreams and goals," he said. "That is, the AI systems we build should augment and extend our social and our cognitive skills and abilities."

There is a caveat. For AI systems to effectively bolster our hopes, dreams and goals, as McDonald said, it is crucial that the technology is designed from the start as a human-centered tool one that is made specifically to fulfil the interests of the human workforce.

Human-centricity might be the next big challenge for AI. Some believe, however, that so far the technology has not done such a good job at ensuring that it enhances humans. In Re-engineering Humanity, Frischmann, for one, does not do AI any favours.

"Smart systems and automation, in my opinion, cause atrophy, more than enhancement," he argued. "The question of whether robots will take our jobs is the wrong one. What is more relevant is how the deployment of AI affects humans. Are we engineering unintelligent humans, rather than intelligent machines?"

It is certainly a fine line, and going forward, will be a delicate balancing act. For Oxford Internet Institute's Neff, making AI work in humans' best interest will require a whole new category of workers, which she called "translators", to act as intermediaries between the real world and the technology.

For Neff, translators won't be roboticists or "hot-shot data scientists", but workers who understand the situation "on the ground" well enough to see how the technology can be applied efficiently to complement human activity.

In an example of good behaviour, and of a way to bridge between humans and technology, Amazon last year launched an initiative to help reconvert up to 1,300 employees that were being made redundant as the company deployed robots to its US fulfilment centres. The e-tailer announced that it would pay workers $10,000 to quit their jobs and set up their own delivery business, in order to tackle retail's infamous last-mile logistics challenge. Tens of thousands of workers have now applied to the program.

In a similar vein, Gartner recently suggested that HR departments startincluding a section dedicated to "robot resources", to better manage employees as they start working alongside robotic colleagues. "Getting an AI to collaborate with humans in the ways that we collaborate with others at work, every day, is incredibly hard," said McDonald. "One of the emerging areas in design is focused on designing AI that more effectively augments human capacity with respect for people."

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From human-centred design, to participatory design or user-experience design: for McDonald, humans have to be the main focus from the first stage of creating an AI.

And then there is the question of communication. At the Georgia Institute of Technology, Goel recognised that AI "has not done a good job" of selling itself to those who are not inside the experts' bubble.

"AI researchers like me cannot stay in our glass tower and develop tools while the rest of the world is anxious about the technology," he said. "We need to look at the social implications of what we do. If we can show that AI can solve previously unsolvable problems, then the value of AI will become clearer to everyone."

His dream for the future? To get every teacher in the world a Jill Watson assistant within five years; and that in the next decade, every parent can access one too, to help children with after-school questions. In fact, it's increasingly looking like every industry, not only education, will be getting their own version of a Jill Watson, too and that we needn't worry that she will be coming at our jobs anytime soon.

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AI vs your career? What artificial intelligence will really do to the future of work - ZDNet