The TV Show I Love: Greys Anatomy – The New York Times

Stuck on a desert island or confined to a one-bedroom Brooklyn apartment, I will take the 15-year-old medical drama Greys Anatomy as distraction over any of its newer, shinier, more critically acclaimed, more endlessly dissected and meme-fueling competition.

Ive been onboard since 2007. The shows creator, Shonda Rhimes, or its current showrunner, Krista Vernoff, could replace the lead character, Meredith Grey (Ellen Pompeo), with an android: I have no desire to ever stop watching. The longevity of my emotional investment is partly the point. Nothing replaces the feeling unique to television of watching a show age in real time. And this one has remarkably held up.

Besides the occasional tremor when a cast member leaves or acts out or a pandemic prompts a season to end prematurely, as happened last week series like Greys are often taken for granted. Yet the pleasures they dispense are both rare and very real. Heres why Im a fan.

I embarked on my Greys journey around the middle of Season 4. ER, to which I was devoted, was in its penultimate season and running on fumes, and I must have been looking, consciously or not, for another prime-time drama focusing on adults rather than children or families. (The medical genre wasnt a draw in itself: I never got into, say, House, and I didnt even bother with the Greys spinoff Private Practice.)

One night, I stumbled onto Seattle Grace Hospital, and I never left. I cant remember the episode or why I was hooked maybe it was an intriguing case, maybe it was a snarky exchange between Meredith and her person, Cristina Yang (Sandra Oh). No matter: I was back the following week and have remained loyal.

Its not just inertia that has kept me hanging on. I have ditched other favorites, like The Walking Dead, many seasons in. But Greys has never flagged in brilliantly stitching together the personal, the professional and the soap-operatically outrageous. Of course, the show handles the medical side of the stories well, deftly balancing one-in-a-million cases with less colorful but just as dangerous illnesses. (Its amazing how many people have been impaled by implausible objects over the years.)

Yet operating-room action alone would not have kept me interested: I have stayed for the ever-changing permutations of horny doctors and to watch characters either settle into relationships or flamboyantly sabotage them. This is a series in which adults have adult concerns, but the impulse control of hormonal teens.

The show has also never shied from hot-button issues (Meredith has recently become obsessed with the inequity of the American health-insurance system) or from addressing the moral and ethical quandaries of fallible doctors blinded by hubris, pigheadedness or lust.

And all of this has unfurled with a matter-of-factly progressive approach to race (inclusive casting has always been a huge part of the appeal), sexual orientation and physical and mental disabilities a tolerance woven into the shows fabric rather than funneled into Very Special Episodes.

Renewal is built into the shows DNA: Grey Sloan Memorial, as the hospital is now known, is a teaching institution, which means that new interns and consulting doctors arrive at regular intervals. They are put under observation, and the show either absorbs or rejects them, like a body with a transplanted organ. Established stars cant sleep soundly either, and anybody can get walking papers overnight. When the powers-that-be killed off the dreamboat Derek Shepherd (Patrick Dempsey) in Season 11, ratings did not sink and the show remains a hit for ABC.

If you become overly attached to a character or a couple on Greys, chances are that at some point you will wind up either sobbing or furiously throwing objects at the wall. And you will keep watching because the show is uncommonly well-written and directed, even when the plot goes off the rails.

Loving means tolerating flaws. Greys often deploys weapons of mass emotional manipulation that drive me crazy in other shows. I cant stand sappy acoustic covers of pop songs, but when they play over patients being informed they are going to live or die, I start crying. Likewise, preternaturally perceptive children are my Kryptonite on all series except Greys. Perhaps this is because said kids are almost always patients, so they come and go fairly quickly. (Many of the doctors have offspring now, but they barely figure in the story lines.)

As a rule, I accept that shows must end. In 2019, the ABC entertainment president Karey Burke said that she would keep the series going as long as Rhimes and Pompeo were game. Pompeos contract runs until Season 17, in 2021; she could well renew and renew and renew, until Grandma Meredith bosses around interns a third her age. I will tag along, even if it requires walkers for everybody involved.

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The TV Show I Love: Greys Anatomy - The New York Times

X-Men Anatomy: The 5 Weirdest Things About Juggernaut’s Body – CBR – Comic Book Resources

The X-Men may be known for protecting the world from mutant threats, but one of the team's most famous villains and occasional members isn't a mutant at all. The Juggernaut, Charles Xavier's stepbrother Cain Marko, acquired his super-strength through mystical means. Still, the Gem of Cyttorak made him one of the strongest and deadliest forces in the Marvel Universe.

But just because the Juggernaut's powers are magical doesn't mean that they're without explanation, and there's actually a surprising amount of comic book super-science behind the gargantuan body of the unstoppable Marvel villain.

RELATED: How X-Men Comics Kept Retconning the Dark Phoenix Saga

Due to his personal connection to the X-Men's founder Charles Xavier, it's easy to assume that Juggernaut is simply a mutant. After all, Stan Lee first developed the idea for mutant powers as an easy way to dispense with lengthy origin stories to explain so many different powers, but even as early as Juggernaut's first appearance in X-Men #12, Lee and Jack Kirby detailed the Juggernaut's mystical origins.

While serving alongside his stepbrother in the Korean War, Cain Marko entered a lost temple where he discovered the Crimson Gem of Cyttorak. Though the temple collapsed around him and Xavier thought him dead, the Gem actually imbued Marko with phenomenal power as the avatar of the dark otherworldly god Cyttorak. This meant that many of the technologies that could work on mutants -- such as power dampening collars and Sentinel tracking device -- simply had no effect on Juggernaut. It also massively increased his human body to Hulk-like proportions, making him roughly 9.5 ft. tall and weighing slightly under two tons.

Due to the mystical enchantments of the Gem of Cyttorak, the Juggernaut is physically unstoppable once he starts building up momentum. Once he sets himself in motion, he can pummel through anything in his path while running at speeds in excess of 600 miles per hour. His immense strength and unending invulnerability make him a big enough threat even when he's not in motion, but this is the true power of the Juggernaut.

To make matters even more difficult for anyone trying to stop Juggernaut, he's made all the more invulnerable by the ability to produce a powerful force field around his body. The aura has even resisted the power of Thor and Mjolnir with its own dark enchantments. All of this works together to make the Juggernaut almost impossible to stop through any kind of physical means.

Though Juggernaut's power does seem unending, his body only acts as a conduit for energies from Cyttorak. If the nigh-omnipotent being decides to cut Juggernaut off, he can reduce the flow of power to a fraction of its former strength, and Marko has had to get by with scraps of power that pales in comparison to what he is used to more than once. Cyttorak is a jealous and focused god of destruction, and he punished Marko whenever he accepted power from other beings or wielded those powers in the name of preservation rather than destruction.

Despite that, Cyttorak's powers rarely leave Juggernaut's body in their entirety. Even when Marko is cut off he often retains a still impressive degree of super strength and invulnerability, and he's certainly got more than enough power to deal with most threats in a weakened state, even if he just can't take down a Hulk.

Conversely, the Juggernaut is strong enough to smash through the walls of reality itself as the Trion Juggernaut.

RELATED:X-Men Anatomy: The 5 Weirdest Things About Emma Frost's Body, Explained

To truly be unstoppable, the Juggernaut needs enough power to keep on goingad infinitum. For Juggernaut, his ceaseless reservoir of mystical energy serves as that power, and that means that he does not need sustenance in order to fuel himself or even survive.

Juggernaut has gone weeks and even months without eating, sleeping or even breathing. In The Amazing Spider-Man #230, Juggernaut once famously fended off the raging supervillain by tricking him into a pool of wet cement he slowly sank into. While Juggernaut could not get leverage to free himself, he simply sat in waiting until the opportunity to escape presented itself much later on.

Even if Juggernaut is famously "unstoppable," that doesn't mean he can't ever be stopped. Over the years, the most tried and true method of putting Marko down is to hit him with a psychic blast strong enough to KO him directly, bypassing all of his physical defenses and attacking his mental ones instead. The easiest way to do that is to take off his helmet, which serves as a magical armor that protects from telepathic intrusions. But even beyond that, Juggernaut has psychic defenses of his own, and it takes a formidable telepath like Xavier or Jean Grey to break them down.

As the X-Men know all too well, the goal to putting Juggernaut down usually involves most of the team trying to tear off Juggernaut's helmet while Xavier or another telepath breaks down his mental barriers. Over time, this has gotten harder, and Juggernaut has learned to guard against this particular form of attack. While the Juggernaut might be one of Marvel's most physically imposing villains, this goes to show that even characters with extraordinary amounts of power have their limits.

NEXT: Hulk vs. Juggernaut: Who's REALLY Marvel's Strongest Powerhouse?

Yes, Pokmon Have Sex - Here's How We Know

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X-Men Anatomy: The 5 Weirdest Things About Juggernaut's Body - CBR - Comic Book Resources

Discover: This LU researcher blends science and art to create anatomical masterpieces – Sudbury.com

Amanda Durkin isnt your typical researcher. As a PhD student at Laurentian University, she is developing a drug to treat diseases caused by inflammation, such as rheumatoid arthritis. When she leaves the lab, she returns to her art studio to create anatomical masterpieces.

Durkins journey to art started with the Laurentian University SciArt Exhibitionin 2015. Each year, the exhibition showcases pieces created by elementary and high school students, LU faculty and students, and members of the community. The diverse range of art includes paintings, short films, poetry, fashion, sculpture, and photography. Each masterpiece connects to a scientific field for Durkin, that was human anatomy.

I drew an anatomical heart on a textbook page, Durkin explains. I had it in a shadow box with a glass cover, and I painted an ECG (electrocardiogram) line on it. That year, her piece won first place at the SciArt Exhibition.

Over the next few years, community support for her art grew. Her organ illustrations were intricate, impactful, and personal. Some people have emotional ties to organs, Durkin shares. People who had an organ removed and they want an image of it or [...] an organ they had a disease in that they overcame, as a tribute to how strong that organ is.

Inspired by the positive reception to her art, Drukin launched the AmandatomicalArt Etsy shop, selling prints, enamel pins, stickers, and greeting cards.

I base my images on ancient anatomy textbooks that Im slightly obsessed with, Durkin explains. One of her inspirations is Leonardo da Vinci. He did a lot of anatomical drawings that were very spot on for what they knew at the time. Looking at her pieces, you truly feel like youve entered the study of an ancient anatomist.

When she began creating art, Durkin had no idea that there was an entire community of people sharing the creative side of science through illustration, animation, and design. The #SciArt hashtag on InstagramorTwitterreveals thousands of artists showcasing their masterpieces.

Two Photon Artfunds small grantsfor artists and writers by selling art.Gaius J Augustushelps researchers tell science stories through illustration and multimedia. The London Natural History Museum opens their doors to photographers in their annual Wildlife Photographer of the Yearexhibition. Scientists around the world are finding beauty beyond the lab, field, or software they use to make their discoveries.

When shes not creating art, Durkin works at the Health Sciences North Research Institute. She studies a drug initially created to treat cancer. However, she discovered that it works even better as an anti-inflammatory drug. Inflammation is our bodys response to harmful bacteria, virusesand physical damage.

Most of us have experienced swelling or redness after a bug bite or injury. Typically, this is a healthy response. You need inflammation to get rid of infections or a bacterial intruder that comes in your body, explains Durkin. But when that inflammation gets dysregulated, thats how you end up with autoimmune diseases.

There are more than 100 autoimmune diseases, including rheumatoid arthritis, lupus, and inflammatory bowel disease. For the millions of people living with these conditions, their immune system attacks healthy cells in their body. The drug Durkin is developing has the potential to treat these conditions.

Art has been a great way for Durkin to balance rigorous lab work with a creative outlet she enjoys. Her stunning pieces show that there is more to science than meets the eye.

Some people dont appreciate the beauty of what organs are, Durkin shares. The idea of drawing an organ on a textbook page was to bring back the beauty of what the organ does but also tie it back to what the parts do.

You can shop for Amanda Durkins anatomical art on Etsy.

Ive Velikova is a science communication student at Laurentian University and the host of the Science Sucks podcast. You can find the podcast on Stitcher and other podcast sites.

Source: Autoimmune Disease List. (2018). American Autoimmune Related Diseases Association.

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Discover: This LU researcher blends science and art to create anatomical masterpieces - Sudbury.com

Political anatomy of sugar scam – The News International

Political anatomy of sugar scam

Islamabad: Pakistans sugar landscape seems to be whos who of national politics, and even in extreme political polarisation, there is bipartisan consensus on one thing and that's sugar.

A close reading of the Federal Investigation Agency (FIA) inquiry report, displays that while documenting the political anatomy of the sugar industry, it either skipped certain officially-established, documented facts or ignored them. Some factual errors or omissions have been noticed in the overview of ownership of the largest exporters and recipients of sugar subsidy from the Punjab government in years 2019-2020, done by the probe body.

The JWD (Jamal Din Wali) Group and JK Group, both under the management control of Jahangir Tareen, have the largest share of sugar export and export subsidy. These groups exported 122,621 tons of sugar, which is 15.66% of total sugar export in 2019. In lieu of this, they received Rs561m export subsidy, which is almost one-fourth of the total subsidy.

The JDW is a public listed company, with largest share of production in sugar industry of Pakistan. Tareen is the CEO and Director of this group, while Pakistan Peoples Party (PPP) Punjab President former Punjab governor and Tareens brother-in-law Makhdum Ahmad Mahmood is founder Chairman of the group. Ahmad Mahmoods wife is also director of the company. Both husband and wife hold 27% shares.

Tareen holds 37% shares of JDW along with his son Ali and wife Amina. The mills falling under the JK Group are exclusively owned by Tareen. JDW and JK groups own six sugar mills and produce 20% of Pakistans sugar.

Chief operating officer of the JDW group Rana Naseem, who is a former district management group officer, holds 7.4% share in the sugar empire. Many credit him with the phenomenal rise of the group over the last two decades.

The official record reflects that the remaining shares (almost 28%) of the JDW group are held by institutional investors and general public through the Karachi and Lahore stock exchanges. The JDW is considered a blue chip of sugar industry. Its share was trading at Rs360/share a few weeks ago while its present value is Rs241/share. The 2018 annual report shows that the JDW group has assets worth Rs50b.

The second sugar producing cluster, declared by the FIA committee as the major beneficiary of export subsidy, is the RYK group, owned and led by Makhdums of Mianwali Qureshian in Rahim Yar Khan. The family is presently led by its young scion, Federal Minister Makhdum Khusro Bakhtiar. He was the minister for state for foreign affairs in Pervez Musharrafs cabinet, and was elected a member of the National Assembly (MNA) in 2013 on the Pakistan Muslim League-Nawaz (PML-N) ticket. He left it just before 2018 general elections and formed the Janoobi Punjab Shuba Mahaz along with half a dozen other politicians, mostly associated with the PML-N. Before 2018 polls, the alliance was merged in the Pakistan Tehreek-e-Insaf (PTI). Khusro Bakhtiar and his younger brother Hashim Jahan Bakht made to National Assembly and Punjab assembly respectively.

Both were inducted into the federal and Punjab cabinet. Khusro Bakhtiar was made planning minister and Hashmi Jahan Bakht got the finance portfolio in Punjab. The elder brother was subsequently shifted to the ministry of national food security, a portfolio directly responsible for sugar policy.

The RYK Group was created in 2005 by Khusro Bakhtiar, Chaudhry Muneer [father-in-law of Maryam Nawazs daughter] and Chaudrys of Gujrat as a political antidote to the rising political influence of Makhdum Ahmad Mahmood and Tareen in Rahim Yar Khan District. At the time, Ahmad Mahmood was district Nazim and Tareen federal minister in the PML-Q regime. They fell out with the Chaudhrys of Gujrat in 2006.

Official record shows that the RYK group, which the inquiry report attributes to be owned by a relative of Khusro Bakhtiar is actually a family concern of his family.

As per the Security Exchange Commission of Pakistan (SECP), the group has a total of 15,000 shares and six family members of Khusro Bakhtiars family hold 2,500 shares each. They are Makhdum Rukunddin and his wife (parents of Khusro Bakhtiar), Hashim Jawan Bakht, and Omer Sheryar, both real brothers of Khusro Bakhtiar, and wife and mother-in-law of Omer Sharyar.

The RYK group has other sugar mills including Etihad in Rahim Yar Khan, Alliance in Ghotki (Sindh) and Two Stars in Kamalia. Other shareholders in these mills are Chaudhry Muneer, Chaudhry Monis Elahi, and Bhanero group of Faisalabad, who are in-laws of Omer Sharyar.

According to the FIA inquiry report, the RYK group and affiliates exported 146,515 tons of sugar, which is 18.7% of total exports, and got Rs452 million export subsidy.

The third major sugar producer benefiting from the sugar export and subsidy is the Shamin Khan group, which owns four mills - Al Moiz I, Al-Moiz II, Thal Industry, and Baba Farid sugar mills. Its directors are Shamim Khan, Nauman Khan, Mrs Shamim Khan, Adnan Khan, Mrs Sarah Hajrah Khan, and former civil servant Fariduddin Ahmad. The group also has stakes in textile and Pepsi bottling companies. The group, which is not in direct politics and is closely related to Hamuyun Akhtar Khan, exported 104,558 tons sugar and got Rs406m (13.5%) export subsidy.

The Indus Sugar Mill as mentioned in the report exported 53,000 tons of sugar and was awarded Rs148m export subsidy. A key factor not cited in the findings is that mills is owned by Sardar Nasrullah Dareshak and his son Hasnian Bhadur Dareshak, who is the minister for livestock in Punjab. The head of Dareshak clan and seasoned politician Sardar Nasurullah is the ruling party member of the National Assembly from Rajanpur.

The major shareholder in the Indus Sugar Mills is Izhar Group of Lahore. Its scion Izhar Yaqoob is a member of Prime Ministers Task Force on Housing. The inquiry report attributed ownership of the Indus Mills to a minority shareholder Mehr Dastagir Lak of Bhalwal. Lakh has been member of the Punjab assembly (MPA) five times and twice provincial minister. He started his career as independent in 1985, then joined PML-N, became minister in the Manzoor Wattoo cabinet, and was last time elected an MPA on PML-N ticket in 2013.

Another principal beneficiary of the sugar export is Hunza Sugar Mills in Faisalabad and Jhang. The group exported 91,000 tons of sugar, almost 73% of its sugar production, and got Rs429m subsidy, which is 17.4% of total subsidy. Its directors include Chaudhry Muhammad Saeed, Chaudhry Idrees and Chahdhry Waheed, who have no political connections.

The Fatima Sugar Mills, another recipient of the export policy, belongs to famous political and business family of Multan. Its directors include Fawad Mukhtar, Faisal Muktar, Fazal Sheikh, and Fahd Mukhtar. Faisal Mukhtar has been Mayor and Nazim of Multan. He was a key associate of Pervez Musharraf and PML-Q in the 2000 decade. Mukhtars are third generation businessmen, coming from the famous Colony Group. The Mukhtar family has immense political and business in Multan, and all political parties try to cultivate them at the election time.

The Fatima group exported 72,000 tons sugar, which was 67% of their produce and got Rs248 million subsidy from the Punjab government.

Noon Sugar Mills, owned by Adnan Hayat Noon, who is grandson of the former prime minister of Pakistan Malik Feroz Khan Noon, exported 13,000 tons sugar and was given Rs48m subsidy. Adnan Hayat was the PML-N MNA in 1997, and his wife is presently MPA in Punjab on the reserve seat on the PML-N ticket. She was also elected to provincial assembly in 2013, and worked as the chairperson of the task force on livestock. Adnan Hayat hails from the political and landed aristocracy of Punjab, and is a collector vintage and classic cars.

The Husein Sugar Mills, Sheikhu Sugar Mills and Jauherabad Sugar Mills exported negligible quantities of sugar. They are owned by businessmen Ahmad Ali Tariq, Anis Sheikh, and Jamal Ahmad,
having no political connections.

The inquiry commission established by Prime Minister Imran Khan to further probe into increase of sugar prices, has constituted one dozen forensic audit teams to deeply examine the sales, export, subsidy, tax and other aspects of the business.

The inquiry committee report reveals that ten sugar mills will go through deep forensic audit. They are three JDW mills, two mills of Al Moiz (Shamim Khan group), two mills of Hunza Group, Hamza Sugar Mill, only one mill of the Alliance Sugar Mills of Chaudhry Muneer, Monis Elahi and Khusro Bakhtiar family, and Al-Arabia Sugar Mill of Salman Shahbaz.

Questions have been raised over the fact that a number of mills, which got major share in export and subsidy in 2019, have been excluded from the detailed audit.

A review of sugar exporters and mills being audited exhibits that the Khusro Bakhtiar familys mills - RYK, Ethihad and Two Star -, Indus Sugar Mills belonging to Dareshaks, Fatima Sugar Mills of Mukhtars from Multan, Noon Sugar Mills, and some others having exported more 150,000 tons of sugar, have been kept out of the forensic audit.

The Al-Arabia Sugar Mills, which neither exported any sugar in 2019 nor claimed subsidy from the Punjab government, has been included in detailed audit.

Some sugar mills, which have no concern with the Sharif family (Nawaz Sharif and Shahbaz Sharif), have been clubbed under the Sharif family mills. Of them, the Chanar Sugar Mills Faisalabad belongs to Javed Kiani family and Ittefaq, and Kashmir Sugar Mills is owned by the Al-Shafi Group, who are relatives of the political Sharif duo.

The Chaudhry Sugar Mills owned by Nawaz Sharif and his nephews is shut down for the last three years. The Ramzan Sugar Mills and Al-Arabia belong the Shahbaz Sharif family.

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Political anatomy of sugar scam - The News International

‘Grey’s Anatomy Fans Are so Emotional About This Callback to George OMalley in the Season Finale – GoodHousekeeping.com

Leave it to Grey's Anatomy to make fans shed tears even with an unplanned early finale! The ABC medical drama aired its season 16 finale episode Thursday after cutting the season short due to the coronavirus crisis and amid all the rollercoaster moments of the episode, fans couldn't help but notice a subtle callback moment to none other than an old fan-favorite character, the late George O'Malley (yes, you read that right!).

The episode, titled "Put on a Happy Face," featured plenty of surprises, including (spoiler alert!) an official diagnosis for Richard Webber and an unexpected twist in the Owen-Teddy-Tom love triangle. But the highlight of the finale definitely came when Amelia Shepherd went into labor to deliver a healthy baby boy but since her boyfriend and baby daddy Link was in surgery, it was up to Miranda Bailey (Chandra Wilson) to help her out with the delivery. In a sweet callback to an old Grey's scene, Miranda then stepped in to sit behind Amelia during the delivery yes, exactly in the same way that George O'Malley (T.R. Knight) had done for Miranda way back in season 2!

Needless to say, Grey's fans couldn't help but tear up over the sweet and unexpected throwback moment to an old fan-favorite character, with many viewers taking to Twitter to express their emotional reactions over the sentimental scene.

"Okay JUST realized that Bailey helped Amelia through labor the SAME WAY George helped Bailey through labor," one fan wrote above a side-by-side photo of the two scenes. "Bailey climbing up on the table with Amelia sure was a callback to her labor with George ... and I am crying," another viewer tweeted, before adding a crying face emoji.

As longtime fans might remember, George O'Malley was among the many Grey's characters who have been killed off from the show, with actor T.R. Knight exiting the medical drama in 2009 due to a "breakdown of communication" with show creator Shonda Rhimes. Before George passed away in the first episode of season 6, however, the sweet moment in which he helped his mentor Miranda Bailey through her delivery was definitely one of the most memorable scenes in season 2 with Miranda even naming her son, William George Bailey Jones (known as "Tuck"), after him!

Of course, with such emotional moments in the season 16 finale, fans are now left wondering what's in store for the next season of Grey's Anatomy. Commenting on what's to come for season 17 of the show, Grey's showrunner Krista Vernoff made sure to tease that the writers are already brainstorming lots for the next upcoming episodes.

"I have a feeling that their stories are going to change some, from what we had planned, and that well repurpose some of what we had written and use it in the early episodes of Season 17," she said in an interview with Deadline.

Well, while we count the days until the next episode of Grey's, I guess we still have a lot to recover from especially with that sweet George O'Malley throwback, which we'll definitely be crying over for at least the next few weeks (if not months)!

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'Grey's Anatomy Fans Are so Emotional About This Callback to George OMalley in the Season Finale - GoodHousekeeping.com

‘Trolls World Tour’ | Anatomy of a Scene – The New York Times

Hi, Im Walt Dohrn. Im the director of Trolls World Tour. First things first, these trolls need some serious cheering up, and were going to have to go top shelf. Now this scene here we find where Poppy, the queen of the Pop Trolls, is trying to connect with the Country Music Trolls by singing the most important songs of all time. So we had a lot of fun coming up with this scene. It started with hours and hours of meetings, making lists of guilty pleasures or songs so bad theyre good kind of idea, really recognizable songs. We really wanted to go over the top because from the Country Music Trolls point of view, these characters dont really understand the cultural sensitivity of this genre just yet. When we presented this notion to Anna Kendrick, who did the voice of Poppy, and Justin Timberlake, who is also our executive music producer, they rolled their eyes a little bit at the concept of this. But by the end of it, like these characters, they were completely into these songs. We had a choreographer who really choreographed this guy. And so the story artist add a lot of jokes, the choreographers add jokes, and then we take it to layout, who add some moments. And then it gets to the animators, who kind of interpret all of that business there. But one of the best jokes, I think, coming up, this kind of final joke. Tell em, Poppy. Shake that! [WIND WHISTLING] You suck! This you suck tumbleweed came out of an idea from a story artist, which I thought was really kind of perfectly described how most of the audience was feeling at this point. And this last joke here, Branch kind of has the last word. This was an improv from Justin. I think thats how he really felt. Well, I knew it. Who Let the Dogs Out, too far.

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'Trolls World Tour' | Anatomy of a Scene - The New York Times

X-Men Anatomy: The 5 Weirdest Things About Emma Frost’s Body, Explained – CBR – Comic Book Resources

Since the X-Men's introduction to the Marvel Universe, mutants -- also known as homo superior -- have been discriminated against because their genetics make them anatomically different from non-mutants. Each homo superior's mutation variesand some mutants take on second mutations later in life. Emma Frost'sphysiology is one of the most impressive, with her mutation affecting both her body and mind.

Here are the five weirdest things about Emma Frost's body, explained.

RELATED: Emma Frost & Jean Grey Would Be the Ultimate Power Couple

Emma first debuted mid-Dark Phoenix Saga inUncanny X-Men #129, written by Chris Claremont with art by John Byrne. Her introduction established her as a huge threat to the X-Men because she was able to telepathicallytake out Colossus, Storm and Wolverine in one go. As an Omega Level telepath,her powers can reach a global scale.

Her abilities include broadcasting thoughts, mind control, psionic blasts, astral projections, mind reading and much more. She's used these telepathic abilities foracts of torture -- like in Astonishing X-Menwhen she implantedatrigger word (parsley) into an enemy's mind that would force him to vomit for 48 hours straight whenever he heard it -- as well as acts of peace, like when she ended a hate rally by placing the protesters' minds in a state of euphoria.

RELATED: X-Men: Does Krakoa Fit Into Marvel's 2099 Future?

There are two ways Emma can alter her body and one of those is by transposing her mind into someone else's head. Early on in her comichistory, Emma was able to use her psychic abilities to swap bodies with Storm in Uncanny X-Men#152. While Storm eventually broke free, this power makes Emma an incredibly dangerous mutant.

The other way she can alter her body is through mental projections. As seen in X-Men: First Class, Emma can make others see and feel something or someone who isn't there, including herself. Along with creatingbelievable projections of herself, she can also alter how people see her body as well as the bodies of others around her.

RELATED: X-Men May Be Marvel's Latest 'Secret Invasion' - But WAY More Horrifying

In writer Grant Morrison and artist Frank Quitely'sNew X-Men #114, the concept of a second mutation is introduced. Severalmutants who have this secondaryabilityinclude Iceman, Gambit, Jean Grey, Archangel and Emma. While some mutants can pass for human prior to taking on a second mutation,new powers can alter how they look entirely.

Where Iceman can alter his physical form to be made of ice, Emma can change her body to be made of organic diamond. In this form, every inch of her crystalizes and has the physical benefits of the gem stone. It also grants her a few bonus strengths, which furtherenhance her body and mind.

Related:X-Men: The Next Generation of X-Villains Is Here

Outside of her diamond form, Emma's physical body is similar to that of a non-mutant's, aside from the obvious X-Gene on her 23rd chromosome. However, in her diamond form,her body changes and affects her physicality entirely.

Diamonds are some of the strongest organicmaterials on Earth, so having a body made ofthis gem makes Emma incredibly durable and hard to damage. Along with being harder to injure, her new form grants Emma increased stamina and strength,allowing her to lift up two tons according to1000 Facts About Comic Book Characters Vol. 3by James Egan.

Related:X-Men: How House of M's Hero DESTROYED Marvel's Mutant Future

Along with physical benefits, Emma's diamond form grants her mental protections as well. X-Men: First Classstates that in her diamond form, Emma can resist telepathic attacks, even from Professor X -- another Omega Level mutant.

This wasn't always the case, though. In Morrison and artist Phil Jimenez'sNew X-Men #139, Jean Grey confronts Emma abouther affair with Scott Summers, digging through Emma's head and exposing some of her guiltiest memories, including the deaths of her students andher love for Scott. Jean does such a number on her that Emma shatters into diamond pieces.

These aspects of Emma's body make her one of strongest mutants physically and mentally. Whether she is on the side of good, evil or somewhere in between, her mutations as well as her natural talent and brilliant mind make her one of Marvel's stand out femme fatales.

KEEP READING: X-Men and Star Trek: Picard Are Setting Up the Same Endgame

Yes, Pokmon Have Sex - Here's How We Know

After moving to New York, Caitlin Sinclair Chappell got a job at Forbidden Planet, a science fiction and comic book mega store, working as a sales associate and a writer for their newsletter, the Weekly Planet. Prior to moving across country, Caitlin was a honors student at Lewis & Clark College, where she was an editorial intern at Dark Horse Comics, a director on several short films, and a writer for the Odyssey and the Piolog - her articles focusing on comics, film, and theatre. With several friends from Portland, Caitlin co-started the Comic Book Buds podcast, which she still co-hosts to this day. In her free time, Caitlin volunteers for festivals and conventions like NewFest, Screamfest, and Wizard World. Shes currently working on a handful of creative projects, including her first comic and a two act play.

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‘Little Fires Everywhere’ Director Nzingha Stewart on the Season Finale – Black Girl Nerds

After directing music videos for Ol Dirty Bastard (Got Your Money), Common (The Light), and others, Stewart shifted to TV. With credits that include mega-hits Greys Anatomy and Scandal, Stewart now leads the star-filled cast of the new Hulu series, Little Fires Everywhere. The series, based on Celeste Ngs book of the same name, features powerhouse actresses Kerry Washington and Reese Witherspoon, not to mention a long list of veteran and up-and-coming young actors.

The 1990s eraseries, based in the fictional town of Shaker Heights, centers on theintersection of several complicated relationships. At the helm center are twomothers whose choices have drastically affected the lives of the people aroundthem. On the one hand, you have Mia Warren (Kerry Washington), a renaissancewoman of sorts whose artistic passion serves as a cover for her innermostdemons. On the other is Elena Richardson (Reese Witherspoon), who submerges herown hopes in favor of upholding a perfect family dynamic.

For Stewart, the 90s represented a time when women used former First Lady Hillary Clinton as the measuring stick for feminism and a search between family and career.

The 90s were made with women,says Stewart.I really think of Hillary Clinton she was almost like the Rorschach test for if we really believe these things we say about feminism. Those women can be out in the workforce and do the same things as men.

Unfortunately for both Elena and Mia, a balance between career and familial responsibilities eludes them both in different ways. Elena chooses to shortchange her personal ambitions of becoming a premiere journalist in favor of family. As a result, her relationship with her children is an exercise in micromanagement, which is particularly taxing to her youngest daughter Izzy. Mia, on the other hand, appears to prioritize her art even at the expense of her daughter Pearl (Lexi Underwood). While Elena is present and ready to go to bat for her children, Mia expects Pearl to fend for herself at all times a practice she believes will make Pearl an independent, self-reliant woman in the future. Instead, it leaves Pearl longing for an authority figure who will fight on her behalf.

As Stewart steps in to direct the final two episodes of Season 1 (Picture Perfect and Uncanny) before the explosive finale, she points to Elenas strained relationship with her youngest daughter Izzy (Megan Stott) as an indicator of her most obvious flaw.

Elena sees she has to make a choice, Stewart says. It cant be both. So she leans into being the family mom and making her career take a step back. But emotionally it takes a toll on her that I dont think she has the self-awareness to know. It definitely affects her relationship with that last daughter, which was the line between, Can I do both or am I doing just this one? It creates resentment thats not really about the daughter, but thats about the choice she was forced to make.

Throughoutthe series, the relationship between Mia and Elena is a precarious walk filledwith distrust and microaggressions. Washington and Witherspoons appearancestogether are emotion-stirring moments that usually take place without a wordbetween them. Its those scenes that demonstrate the best of Stewartsabilities as a director. Crediting her talent cast, she says the key to theintensity is knowing exactly what is the moment is about.

I didnt really direct them to have those but just had to say in my head what is this moment about? Stewart explains. For example, theres a scene coming up in Episode 7 that is all about them threatening each other. When you want to really threaten somebody, you know when to take your time with it and when to go full force. So I would always just be aware of the pace. Are they going too fast with this, and should I just slow down the pace? How long should they look at each other? Or are they playing with each other, like a cat playing with something Its about to eat?With Reese and Kerry, its like they are shadow versions of each other. I did a lot of that stuff in the mirror so they could see these shadow versions of themselves that can really get dark talking to each other.

Ultimately, Stewarts goal as a director is to exceed her work in previous projects. Additionally, as one of the few Black female directors in Hollywood, she feels a personal responsibility to continue forging the path for those aspiring directors beginning their journey so that shes an example and not an exception. Every opportunity is a chance to move the culture forward for all Black women directors.

I want to know that Ive grown on every single project, she says. I always feel this responsibility like if I mess up, those in charge will be like, Remember that time we gave a Black woman a chance that didnt work out? So if I kill it, then maybe it opens a door for the next one.Coming from a music video background, I always think, how can I make things look cool, how can I come up with a cool shot or design something cinematic. I want to more and more get into the emotional truth. How can I make it look cool to serve the emotion rather than going for a cool shot and not knowing what the scene is about at the end? Im always thinking, how can I get deeper into an emotional truth? Every job.

Little Fires Everywhere airs Wednesdays on Hulu.

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'Little Fires Everywhere' Director Nzingha Stewart on the Season Finale - Black Girl Nerds

Greys Anatomy Boss Reveals She Never Considered Killing Off Justin Chambers’ Alex Karev – TV Fanatic

Remember when fans thought Grey's Anatomy was going to kill off Justin Chambers' Alex Karev?

Well, the showrunner of the ABC drama has opened up about how best to write out the character, and it looks like death was not an option she really thought about.

At the end of the day, there were three choices, Krista Vernoff told TVLine.

Kill Alex off camera; have Alex be alive and in Seattle and still married to Jo and we just never see him; or [reunite him] with Izzie.

If you watch Grey's Anatomy online, you know that the show reunited Alex with Izzie, much to the chagrin of many viewers, who thought it was a slap in the face to the fans who shipped Alex and Jo.

Killing Alex would have been cruel to everyone particularly Meredith and Jo, Vernoff continued.

There was no way to not put those characters through gut-wrenching, ongoing grief if we had killed Alex off camera, she added.

Some fans were upset, particularly the Jolex shippers, that [Alex left Jo to be with Izzie] and I understand why."

"But I would fight real hard anyone who tried to tell me that fans would not have been equally or more upset if I had killed Alex Karev off camera.

Additionally, Vernoff worried that keeping Alex in Seattle, but off-screen would absolutely eliminate [the chance for her to play] so many colors that she is so good at playing.

That's why there was not "even a debate in the writers' room" about reuniting Alex with Izzie.

Chambers revealed his exit after 15 seasons in January, and that's also the time fans learned that they had already watched his final episode on-screen.

Theres no good time to say goodbye to a show and character thats defined so much of my life for the past 15 years, he said in statement to Deadline.

For some time now, however, I have hoped to diversify my acting roles and career choices. And, as I turn 50 and am blessed with my remarkable, supportive wife and five wonderful children, now is that time.

With Grey's Anatomy renewed for a 17th season, there is hope that Alex could come back down the line, but given that Chambers left the show under the strangers of circumstances, it seems unlikely.

Now that we know the three options, which one do you think was best?

Hit the comments below.

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Paul Dailly is the Associate Editor for TV Fanatic. Follow him on Twitter.

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Greys Anatomy Boss Reveals She Never Considered Killing Off Justin Chambers' Alex Karev - TV Fanatic

Best TV doctors of all time ranked, including E.R., Greys Anatomy, House, M*A*S*H – Gold Derby

During the current crisis in our world, weve all become even more aware of how valuable our healthcare professionals are. I have worked for a group of eye doctors for over 20 years, and Ive seen firsthand the importance of compassion, knowledge and skill that is needed to be successful in that line of work.

Doctors have always been a huge part of all of our lives we will all see one at some point, even if only for a regular eye or dental visit. Maybe thats why medical dramas have been a part of our entertainment world, and from the earliest days of television, we have invited a number of doctors, of varying types, into our living rooms. The early dramas, such as Medical Center, Dr. Kildare and Ben Casey offered good-looking young doctors (setting the bar for the likes of George Clooney) usually clashing with an older, more experienced physician, while oftentimes also offering storylines about controversial topics relevant to that time. Some series have had a cultural impact, such as Emergency! increasing awareness of the necessity of EMTs, and The X-Files influencing young women to seek STEM-related careers. And some, like Scrubs, have offered comedy in the midst of medical emergencies.

Many of these programs have been huge on the awards circuit, with Golden Globe and Emmy nominations abundant among them. They have also been some of the most highly-rated and longest-lasting programs on television, often also delving into the personal lives of the characters, creating devoted fan followings. Many programs have multiple memorable doctors; for the sake of this article, only one doctor per program has been selected.

Enjoy touring our photo gallery featuring our choices for the 40 greatest TV doctors of all time. Our list includes the best men and women from E.R., Greys Anatomy, St. Elsewhere, M*A*S*H, House, Northern Exposure and more. Our only rule was that we could select just one doctor for any given program. Did your favorite make the cut?

PREDICT the 2020 Emmy nominees now; change through July 28

Be sure tomake your Emmy predictions today so that Hollywood insiders can see how their TV shows and performers are faring in our odds. You can keep changing your predictions as often as you like until just before the nominees are announced on July 28. And join in the fun debate over the 2020 Emmys taking place right now with Hollywood insiders in our television forums. Read more Gold Derbyentertainment news.

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Best TV doctors of all time ranked, including E.R., Greys Anatomy, House, M*A*S*H - Gold Derby

Grey’s Anatomy Star and EP ‘Fought Really Hard’ to Cast [Spoiler] in Alex’s Nostalgia-Heavy Farewell Episode – Yahoo Entertainment

Click here to read the full article.

Greys Anatomys polarizing Alex-Izzie reunion episode changed dramatically from script to screen and the shows top EP is divulging details about the 11th hour tweak.

As showrunner Krista Vernoff reveals to TVLine, Elizabeth Finchs original and beautifully written script for the pivotal Season 16 episode that served as Justin Chambers swan song referenced Alex and Izzies twins Eli and Alexis, but viewers were not supposed to actually meet the children. Greys co-star and EP Debbie Allen, who directed the March 5 hour, fought really hard to cast and shoot the kids, says Vernoff. None of that was in the original script. And that was my favorite material in the episode the visuals of those two kids. (Watch video of Eli and Alexis frolicking in the flesh on Izzies farm in the video below.)

Vernoff adds that Leave a Light On was a labor of love for the entire cast and crew, particularly longtime editor Vanessa Delgado, who was tasked with putting together 16 seasons worth of clips for the flashback-heavy episode, which gave closure to not only Alexs storyline but Izzies as well.

The Izzie story and those eggs was just hanging out there since Katherine Heigls abrupt 2010 exit, Vernoff notes. I thought it was amazing that we could finally let people know that Izzie was alive and well and raising [Alexs] kids.

Launch Gallery: Grey's Anatomy: Best of Season 16

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Grey's Anatomy Star and EP 'Fought Really Hard' to Cast [Spoiler] in Alex's Nostalgia-Heavy Farewell Episode - Yahoo Entertainment

Grey’s Anatomy season 16: Was Dr Alex Karev going to be killed off in Grey’s Anatomy? – Express

Grey's Anatomy aired its final episode of season 16 called Put On A Happy Face on ABC on Thursday, April 9. The medical drama was meant to have a few more episodes left but as filming could no longer take place, the makers of Grey's Anatomy had to make episode 21 the last one. But fans shouldn't be worried about the show's future as Grey's Anatomy has already been renewed for a 17th season.

WARNING: This article contains spoilers from Grey's Anatomy season 16,

Actor Justin Chambers who has played Dr Alex Karev since Grey's Anatomy first began 15 years ago, announced in 2019 that he would be leaving the show for good.In a statement, he said: Theres no good time to say goodbye to a show and character thats defined so much of my life for the past 15 years.For some time now, however, I have hoped to diversify my acting roles and career choices."And, as I turn 50 and am blessed with my remarkable, supportive wife and five wonderful children, now is that time.The big question which remained following the news was how he was going to leave the series.

READ MORE:Greys Anatomy season 17 release date: Will there be another series?

Chambers' last ever episode was actually shown back in November and sadly for fans, he did not appear again.Many questioned where he had gone but in episode 16 Leave A Light On, things made a lot clearer.His wife Jo Wilson (Camilla Luddington) had already told colleagues her and Alex's marriage was over but no real explanation was given as to why.He had told everyone he was going to visit his sick mother but the real reason for his exit was far more shocking.

After Dr Meredith Grey (Ellen Pompeo) got in trouble for insurance fraud, Alex thought this was a good excuse to get back in touch with his ex-wife Dr Izzie Stevens (Katherine Heig), who left Grey Sloan Memorial Hospital in season six.When Izzie and Alex were still together and she had Stage IV cancer, she froze her embryos just in case she could no longer have children naturally.So when she left the series, Izzie used the embryos to have her and Alex's twins who were now five-years-old.He didn't have any knowledge of this but when he found out, he wrote several letters, including to Jo and Meredith, explaining what had happened and how he had decided he would stay with Izzie and the children on a farm in Kansas.Since the episode aired, showrunner Kirsta Vernoff has opened up about writing Alex out of the series and if there was ever a chance of Alex being killed off.

DON'T MISS...Grey's Anatomy season 17: Will Jackson Avery leave for Station 19?[CAST]Grey's Anatomy spin-off: Will there be another spin-off show?[EXPLAINER]Greys Anatomy season 16 spoilers: Will Richard Webber die?[SPOILER]

Speaking to TVLine, Vernoff confirmed there was never any intention to have Alex killed off.She said: "At the end of the day, there were three choices.Kill Alex off camera; have Alex be alive and in Seattle and still married to Jo and we just never see him; or [reunite him] with Izzie.Vernoff insisted killing Alex would have been cruel to everyone particularly Meredith and Jo".She continued: There was no way to not put those characters through gut-wrenching, ongoing grief if we had killed Alex off camera.Some fans were upset, particularly the Jolex shippers, that [Alex left Jo to be with Izzie] and I understand why.

"But I would fight real hard anyone who tried to tell me that fans would not have been equally or more upset if I had killed Alex Karev off camera.Vernoff also added how there wasn't "even a debate in the writers' room" about reuniting him with Izzie off-screen when the idea was brought up.But fans will just have to wait and see if either Alex and or Izzie will ever make another appearance in Grey's Anatomy in the future.Grey's Anatomy season 16 is available to watch on ABC.

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Grey's Anatomy season 16: Was Dr Alex Karev going to be killed off in Grey's Anatomy? - Express

Automated Machine Learning is the Future of Data Science – Analytics Insight

As the fuel that powers their progressing digital transformation endeavors, organizations wherever are searching for approaches to determine as much insight as could reasonably be expected from their data. The accompanying increased demand for advanced predictive and prescriptive analytics has, thus, prompted a call for more data scientists capable with the most recent artificial intelligence (AI) and machine learning (ML) tools.

However, such highly-skilled data scientists are costly and hard to find. Truth be told, theyre such a valuable asset, that the phenomenon of the citizen data scientist has of late emerged to help close the skills gap. A corresponding role, as opposed to an immediate substitution, citizen data scientists need explicit advanced data science expertise. However, they are fit for producing models utilizing best in class diagnostic and predictive analytics. Furthermore, this ability is incomplete because of the appearance of accessible new technologies, for example, automated machine learning (AutoML) that currently automate a significant number of the tasks once performed by data scientists.

The objective of autoML is to abbreviate the pattern of trial and error and experimentation. It burns through an enormous number of models and the hyperparameters used to design those models to decide the best model available for the data introduced. This is a dull and tedious activity for any human data scientist, regardless of whether the individual in question is exceptionally talented. AutoML platforms can play out this dreary task all the more rapidly and thoroughly to arrive at a solution faster and effectively.

A definitive estimation of the autoML tools isnt to supplant data scientists however to offload their routine work and streamline their procedure to free them and their teams to concentrate their energy and consideration on different parts of the procedure that require a more significant level of reasoning and creativity. As their needs change, it is significant for data scientists to comprehend the full life cycle so they can move their energy to higher-value tasks and sharpen their abilities to additionally hoist their value to their companies.

At Airbnb, they continually scan for approaches to improve their data science workflow. A decent amount of their data science ventures include machine learning and numerous pieces of this workflow are tedious. At Airbnb, they use machine learning to build customer lifetime value models (LTV) for guests and hosts. These models permit the company to improve its decision making and interactions with the community.

Likewise, they have seen AML tools as generally valuable for regression and classification problems involving tabular datasets, anyway, the condition of this area is rapidly progressing. In outline, it is accepted that in specific cases AML can immensely increase a data scientists productivity, often by an order of magnitude. They have used AML in many ways.

Unbiased presentation of challenger models: AML can rapidly introduce a plethora of challenger models utilizing a similar training set as your incumbent model. This can help the data scientist in picking the best model family. Identifying Target Leakage: In light of the fact that AML builds candidate models amazingly fast in an automated way, we can distinguish data leakage earlier in the modeling lifecycle. Diagnostics: As referenced prior, canonical diagnostics can be automatically created, for example, learning curves, partial dependence plots, feature importances, etc. Tasks like exploratory data analysis, pre-processing of data, hyper-parameter tuning, model selection and putting models into creation can be automated to some degree with an Automated Machine Learning system.

Companies have moved towards enhancing predictive power by coupling huge data with complex automated machine learning. AutoML, which uses machine learning to create better AI, is publicized as affording opportunities to democratise machine learning by permitting firms with constrained data science expertise to create analytical pipelines equipped for taking care of refined business issues.

Including a lot of algorithms that automate that writing of other ML algorithms, AutoML automates the end-to-end process of applying ML to real-world problems. By method for representation, a standard ML pipeline consists of the following: data pre-processing, feature extraction, feature selection, feature engineering, algorithm selection, and hyper-parameter tuning. In any case, the significant ability and time it takes to execute these strides imply theres a high barrier to entry.

In an article distributed on Forbes, Ryohei Fujimaki, the organizer and CEO of dotData contends that the discussion is lost if the emphasis on AutoML systems is on supplanting or decreasing the role of the data scientist. All things considered, the longest and most challenging part of a typical data science workflow revolves around feature engineering. This involves interfacing data sources against a rundown of wanted features that are assessed against different Machine Learning algorithms.

Success with feature engineering requires an elevated level of domain aptitude to recognize the ideal highlights through a tedious iterative procedure. Automation on this front permits even citizen data scientists to make streamlined use cases by utilizing their domain expertise. More or less, this democratization of the data science process makes the way for new classes of developers, offering organizations a competitive advantage with minimum investments.

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Automated Machine Learning is the Future of Data Science - Analytics Insight

Googles AutoML Zero lets the machines create algorithms to avoid human bias – The Next Web

It looks like Googles working on some major upgrades to its autonomous machine learning development language AutoML. According to a pre-print research paper authored by several of the big Gs AI researchers, AutoML Zero is coming, and its bringing evolutionary algorithms with it.

AutoML is a tool from Google that automates the process of developing machine learning algorithms for various tasks. Its user-friendly, fairly simple to use, and completely open-source. Best of all, Googles always updating it.

In its current iteration, AutoML has a few drawbacks. You still have to manually create and tune several algorithms to act as building blocks for the machine to get started. This allows it to take your work and experiment with new parameters in an effort to optimize what youve done. Novices can get around this problem by using pre-made algorithm packages, but Googles working to automate this part too.

Per the Google teams pre-print paper:

It is possible today to automatically discover complete machine learning algorithms just using basic mathematical operations as building blocks. We demonstrate this by introducing a novel framework that significantly reduces human bias through a generic search space.

Despite the vastness of this space, evolutionary search can still discover two-layer neural networks trained by backpropagation. These simple neural networks can then be surpassed by evolving directly on tasks of interest, e.g. CIFAR-10 variants, where modern techniques emerge in the top algorithms, such as bilinear interactions, normalized gradients, and weight averaging.

Moreover, evolution adapts algorithms to different task types: e.g., dropout-like techniques appear when little data is available.

In other words: Googles figured out how to tap evolutionary algorithms for AutoML using nothing but basic math concepts. The developers created a learning paradigm in which the machine will spit out 100 randomly generated algorithms and then work to see which ones perform the best.

After several generations, the algorithms become better and better until the machine finds one that performs well enough to evolve. In order to generate novel algorithms that can solve new problems, the ones that survive the evolutionary process are tested against various standard AI problems, such as computer vision.

Read: Why the quickest path to human-level AI may be letting it evolve on its own

Perhaps the most interesting byproduct of Googles quest to completely automate the act of generating algorithms and neural networks is the removal of human bias from our AI systems. Without us there to determine what the best starting point for development is, the machines are free to find things wed never think of.

According to the researchers, AutoML Zero already outperforms its predecessor and similar state-of-the-art machine learning-generation tools. Future research will involve setting a more narrow scope for the AI and seeing how well it performs in more specific situations using a hybrid approach that creates algorithms with a combination of Zeros self-discovery techniques and human-curated starter libraries.

Published April 14, 2020 20:00 UTC

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Googles AutoML Zero lets the machines create algorithms to avoid human bias - The Next Web

Nothing to hide? Then add these to your ML repo, Papers with Code says DEVCLASS – DevClass

In a bid to make advancements in machine learning more reproducible, ML resource and Facebook AI Research (FAIR) appendage Papers With Code has introduced a code completeness checklist for machine learning papers.

It is based on the best practices the Papers with Code team has seen in popular research repositories and the Machine Learning Reproducibility Checklist which Joelle Pineau, FAIR Managing Director, introduced in 2019, as well as some additional work Pineau and other researchers did since then.

Papers with Code was started in 2018 as a hub for newly published machine learning papers that come with source code, offering researchers an easy to monitor platform to keep up with the current state of the art. In late 2019 it became part of FAIR to further accelerate our growth, as founders Robert Stojnic and Ross Taylor put it back then.

As part of FAIR, the project will get a bit of a visibility push since the new checklist will also be used in the submission process for the 2020 edition of the popular NeurIPS conference on neural information processing systems.

The ML code completeness checklist is used to assess code repositories based on the scripts and artefacts that have been provided within it to enhance reproducibility and enable others to more easily build upon published work. It includes checks for dependencies, so that those looking to replicate a papers results have some idea what is needed in order to succeed, training and evaluation scripts, pre-trained models, and results.

While all of these seem like useful things to have, Papers with Code also tried using a somewhat scientific approach to make sure they really are indicators for a useful repository. To verify that, they looked for correlations between the number of fulfilled checklist items and the star-rating of a repository.

Their analysis showed that repositories that hit all the marks got higher ratings implying that the checklist score is indicative of higher quality submissions and should therefore encourage researchers to comply in order to produce useful resources. However, they simultaneously admitted that marketing and the state of documentation might also play into a repos popularity.

They nevertheless went on recommending to lay out the five elements mentioned and link to external resources, which always is a good idea. Additional tips for publishing research code can be found in the projects GitHub repository or the report on NeurIPS reproducibility program.

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Nothing to hide? Then add these to your ML repo, Papers with Code says DEVCLASS - DevClass

Covid-19 Detection With Images Analysis And Machine Learning – Elemental

/* we have just two outputs positive and negative according to our directories */ int outputNum = 2;int numEpochs = 1;

/*This class downloadData() downloads the datastores the data in java's tmpdir 15MB download compressedIt will take 158MB of space when uncompressedThe data can be downloaded manually here

// Define the File PathsFile trainData = new File(DATA_PATH + "/covid-19/training");File testData = new File(DATA_PATH + "/covid-19/testing");

// Define the FileSplit(PATH, ALLOWED FORMATS,random)FileSplit train = new FileSplit(trainData, NativeImageLoader.ALLOWED_FORMATS, randNumGen);FileSplit test = new FileSplit(testData, NativeImageLoader.ALLOWED_FORMATS, randNumGen);

// Extract the parent path as the image labelParentPathLabelGenerator labelMaker = new ParentPathLabelGenerator();

ImageRecordReader recordReader = new ImageRecordReader(height, width, channels, labelMaker);

// Initialize the record reader// add a listener, to extract the namerecordReader.initialize(train);//recordReader.setListeners(new LogRecordListener());

// DataSet IteratorDataSetIterator dataIter = new RecordReaderDataSetIterator(recordReader, batchSize, 1, outputNum);

// Scale pixel values to 0-1DataNormalization scaler = new ImagePreProcessingScaler(0, 1);scaler.fit(dataIter);dataIter.setPreProcessor(scaler);

// Build Our Neural Networklog.info("BUILD MODEL");MultiLayerConfiguration conf = new NeuralNetConfiguration.Builder().seed(rngseed).optimizationAlgo(OptimizationAlgorithm.STOCHASTIC_GRADIENT_DESCENT).updater(new Nesterovs(0.006, 0.9)).l2(1e-4).list().layer(0, new DenseLayer.Builder().nIn(height * width).nOut(100).activation(Activation.RELU).weightInit(WeightInit.XAVIER).build()).layer(1, new OutputLayer.Builder(LossFunctions.LossFunction.NEGATIVELOGLIKELIHOOD).nIn(100).nOut(outputNum).activation(Activation.SOFTMAX).weightInit(WeightInit.XAVIER).build()).setInputType(InputType.convolutional(height, width, channels)).build();

MultiLayerNetwork model = new MultiLayerNetwork(conf);

// The Score iteration Listener will log// output to show how well the network is trainingmodel.setListeners(new ScoreIterationListener(10));

log.info("TRAIN MODEL");for (int i = 0; i < numEpochs; i++) {model.fit(dataIter);}

log.info("EVALUATE MODEL");recordReader.reset();

// The model trained on the training dataset split// now that it has trained we evaluate against the// test data of images the network has not seen

recordReader.initialize(test);DataSetIterator testIter = new RecordReaderDataSetIterator(recordReader, batchSize, 1, outputNum);scaler.fit(testIter);testIter.setPreProcessor(scaler);

/*log the order of the labels for later useIn previous versions the label order was consistent, but randomIn current verions label order is lexicographicpreserving the RecordReader Labels order is nolonger needed left in for demonstrationpurposes*/log.info(recordReader.getLabels().toString());

// Create Eval object with 10 possible classesEvaluation eval = new Evaluation(outputNum);

// Evaluate the networkwhile (testIter.hasNext()) {DataSet next = testIter.next();INDArray output = model.output(next.getFeatures());// Compare the Feature Matrix from the model// with the labels from the RecordReadereval.eval(next.getLabels(), output);}// show the evaluationlog.info(eval.stats());}

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Covid-19 Detection With Images Analysis And Machine Learning - Elemental

Department Of Energy Announces $30 Million For Advanced AI & ML-Based Researches – Analytics India Magazine

The Department of Energy in the US has recently announced its initiative to provide up to $30 million for advanced research in artificial intelligence and machine learning. This fund can be used for both scientific investigation and the management of complex systems.

This initiative comprises two-fold strategies.

Firstly, focusing on the development of artificial intelligence and machine learning for predictive modelling and simulation focused on research across the physical sciences. The technologies ML and AI are considered to offer promising new alternatives to conventional programming methods for computer modelling and simulation. And, secondly, this fund will be utilised on essential ML and AI research for decision support in addressing complex systems.

Eventually, the potential applications could include cybersecurity, power grid resilience, and other complex processes where these emerging technologies can make or aid in creating business decisions in real-time.

When asked, Under Secretary for Science Paul Dabbar stated that both these technologies artificial intelligence and machine learning are among the most powerful tools we have today for both advancing scientific knowledge and managing our increasingly complex technological environment.

He further said, This foundational research will help keep the United States in the forefront as applications for ML and AI rapidly expand, and as we utilise this evolving technology to solve the worlds toughest challenges such as COVID-19.

The applications for this initiative will be open to DOE national laboratories, universities, nonprofits, and industry, and according to the peer review, the funding will be awarded.

According to DOE, the planned funding for the scientific machine learning for modelling and simulations topic will be up to $10 million in FY 2020 dollars for projects of two years in duration. On the other hand, the planned funding for the artificial intelligence and decision support for complex systems topic will be up to $20 million, with up to $7 million in FY 2020 dollars and out-year funding contingent on congressional appropriations.

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Department Of Energy Announces $30 Million For Advanced AI & ML-Based Researches - Analytics India Magazine

How Microsoft Teams will use AI to filter out typing, barking, and other noise from video calls – VentureBeat

Last month, Microsoft announced that Teams, its competitor to Slack, Facebooks Workplace, and Googles Hangouts Chat, had passed 44 million daily active users. The milestone overshadowed its unveiling of a few new features coming later this year. Most were straightforward: a hand-raising feature to indicate you have something to say, offline and low-bandwidth support to read chat messages and write responses even if you have poor or no internet connection, and an option to pop chats out into a separate window. But one feature, real-time noise suppression, stood out Microsoft demoed how the AI minimized distracting background noise during a call.

Weve all been there. How many times have you asked someone to mute themselves or to relocate from a noisy area? Real-time noise suppression will filter out someone typing on their keyboard while in a meeting, the rustling of a bag of chips (as you can see in the video above), and a vacuum cleaner running in the background. AI will remove the background noise in real time so you can hear only speech on the call. But how exactly does it work? We talked to Robert Aichner, Microsoft Teams group program manager, to find out.

The use of collaboration and video conferencing tools is exploding as the coronavirus crisis forces millions to learn and work from home. Microsoft is pushing Teams as the solution for businesses and consumers as part of its Microsoft 365 subscription suite. The company is leaning on its machine learning expertise to ensure AI features are one of its big differentiators. When it finally arrives, real-time background noise suppression will be a boon for businesses and households full of distracting noises. Additionally, how Microsoft built the feature is also instructive to other companies tapping machine learning.

Of course, noise suppression has existed in the Microsoft Teams, Skype, and Skype for Business apps for years. Other communication tools and video conferencing apps have some form of noise suppression as well. But that noise suppression covers stationary noise, such as a computer fan or air conditioner running in the background. The traditional noise suppression method is to look for speech pauses, estimate the baseline of noise, assume that the continuous background noise doesnt change over time, and filter it out.

Going forward, Microsoft Teams will suppress non-stationary noises like a dog barking or somebody shutting a door. That is not stationary, Aichner explained. You cannot estimate that in speech pauses. What machine learning now allows you to do is to create this big training set, with a lot of representative noises.

In fact, Microsoft open-sourced its training set earlier this year on GitHub to advance the research community in that field. While the first version is publicly available, Microsoft is actively working on extending the data sets. A company spokesperson confirmed that as part of the real-time noise suppression feature, certain categories of noises in the data sets will not be filtered out on calls, including musical instruments, laughter, and singing. (More on that here: ProBeat: Microsoft Teams video calls and the ethics of invisible AI.)

Microsoft cant simply isolate the sound of human voices because other noises also happen at the same frequencies. On a spectrogram of speech signal, unwanted noise appears in the gaps between speech and overlapping with the speech. Its thus next to impossible to filter out the noise if your speech and noise overlap, you cant distinguish the two. Instead, you need to train a neural network beforehand on what noise looks like and speech looks like.

To get his points across, Aichner compared machine learning models for noise suppression to machine learning models for speech recognition. For speech recognition, you need to record a large corpus of users talking into the microphone and then have humans label that speech data by writing down what was said. Instead of mapping microphone input to written words, in noise suppression youre trying to get from noisy speech to clean speech.

We train a model to understand the difference between noise and speech, and then the model is trying to just keep the speech, Aichner said. We have training data sets. We took thousands of diverse speakers and more than 100 noise types. And then what we do is we mix the clean speech without noise with the noise. So we simulate a microphone signal. And then you also give the model the clean speech as the ground truth. So youre asking the model, From this noisy data, please extract this clean signal, and this is how it should look like. Thats how you train neural networks [in] supervised learning, where you basically have some ground truth.

For speech recognition, the ground truth is what was said into the microphone. For real-time noise suppression, the ground truth is the speech without noise. By feeding a large enough data set in this case hundreds of hours of data Microsoft can effectively train its model. Its able to generalize and reduce the noise with my voice even though my voice wasnt part of the training data, Aichner said. In real time, when I speak, there is noise that the model would be able to extract the clean speech [from] and just send that to the remote person.

Comparing the functionality to speech recognition makes noise suppression sound much more achievable, even though its happening in real time. So why has it not been done before? Can Microsofts competitors quickly recreate it? Aichner listed challenges for building real-time noise suppression, including finding representative data sets, building and shrinking the model, and leveraging machine learning expertise.

We already touched on the first challenge: representative data sets. The team spent a lot of time figuring out how to produce sound files that exemplify what happens on a typical call.

They used audio books for representing male and female voices, since speech characteristics do differ between male and female voices. They used YouTube data sets with labeled data that specify that a recording includes, say, typing and music. Aichners team then combined the speech data and noises data using a synthesizer script at different signal to noise ratios. By amplifying the noise, they could imitate different realistic situations that can happen on a call.

But audiobooks are drastically different than conference calls. Would that not affect the model, and thus the noise suppression?

That is a good point, Aichner conceded. Our team did make some recordings as well to make sure that we are not just training on synthetic data we generate ourselves, but that it also works on actual data. But its definitely harder to get those real recordings.

Aichners team is not allowed to look at any customer data. Additionally, Microsoft has strict privacy guidelines internally. I cant just simply say, Now I record every meeting.'

So the team couldnt use Microsoft Teams calls. Even if they could say, if some Microsoft employees opted-in to have their meetings recorded someone would still have to mark down when exactly distracting noises occurred.

And so thats why we right now have some smaller-scale effort of making sure that we collect some of these real recordings with a variety of devices and speakers and so on, said Aichner. What we then do is we make that part of the test set. So we have a test set which we believe is even more representative of real meetings. And then, we see if we use a certain training set, how well does that do on the test set? So ideally yes, I would love to have a training set, which is all Teams recordings and have all types of noises people are listening to. Its just that I cant easily get the same number of the same volume of data that I can by grabbing some other open source data set.

I pushed the point once more: How would an opt-in program to record Microsoft employees using Teams impact the feature?

You could argue that it gets better, Aichner said. If you have more representative data, it could get even better. So I think thats a good idea to potentially in the future see if we can improve even further. But I think what we are seeing so far is even with just taking public data, it works really well.

The next challenge is to figure out how to build the neural network, what the model architecture should be, and iterate. The machine learning model went through a lot of tuning. That required a lot of compute. Aichners team was of course relying on Azure, using many GPUs. Even with all that compute, however, training a large model with a large data set could take multiple days.

A lot of the machine learning happens in the cloud, Aichner said. So, for speech recognition for example, you speak into the microphone, thats sent to the cloud. The cloud has huge compute, and then you run these large models to recognize your speech. For us, since its real-time communication, I need to process every frame. Lets say its 10 or 20 millisecond frames. I need to now process that within that time, so that I can send that immediately to you. I cant send it to the cloud, wait for some noise suppression, and send it back.

For speech recognition, leveraging the cloud may make sense. For real-time noise suppression, its a nonstarter. Once you have the machine learning model, you then have to shrink it to fit on the client. You need to be able to run it on a typical phone or computer. A machine learning model only for people with high-end machines is useless.

Theres another reason why the machine learning model should live on the edge rather than the cloud. Microsoft wants to limit server use. Sometimes, there isnt even a server in the equation to begin with. For one-to-one calls in Microsoft Teams, the call setup goes through a server, but the actual audio and video signal packets are sent directly between the two participants. For group calls or scheduled meetings, there is a server in the picture, but Microsoft minimizes the load on that server. Doing a lot of server processing for each call increases costs, and every additional network hop adds latency. Its more efficient from a cost and latency perspective to do the processing on the edge.

You want to make sure that you push as much of the compute to the endpoint of the user because there isnt really any cost involved in that. You already have your laptop or your PC or your mobile phone, so now lets do some additional processing. As long as youre not overloading the CPU, that should be fine, Aichner said.

I pointed out there is a cost, especially on devices that arent plugged in: battery life. Yeah, battery life, we are obviously paying attention to that too, he said. We dont want you now to have much lower battery life just because we added some noise suppression. Thats definitely another requirement we have when we are shipping. We need to make sure that we are not regressing there.

Its not just regression that the team has to consider, but progression in the future as well. Because were talking about a machine learning model, the work never ends.

We are trying to build something which is flexible in the future because we are not going to stop investing in noise suppression after we release the first feature, Aichner said. We want to make it better and better. Maybe for some noise tests we are not doing as good as we should. We definitely want to have the ability to improve that. The Teams client will be able to download new models and improve the quality over time whenever we think we have something better.

The model itself will clock in at a few megabytes, but it wont affect the size of the client itself. He said, Thats also another requirement we have. When users download the app on the phone or on the desktop or laptop, you want to minimize the download size. You want to help the people get going as fast as possible.

Adding megabytes to that download just for some model isnt going to fly, Aichner said. After you install Microsoft Teams, later in the background it will download that model. Thats what also allows us to be flexible in the future that we could do even more, have different models.

All the above requires one final component: talent.

You also need to have the machine learning expertise to know what you want to do with that data, Aichner said. Thats why we created this machine learning team in this intelligent communications group. You need experts to know what they should do with that data. What are the right models? Deep learning has a very broad meaning. There are many different types of models you can create. We have several centers around the world in Microsoft Research, and we have a lot of audio experts there too. We are working very closely with them because they have a lot of expertise in this deep learning space.

The data is open source and can be improved upon. A lot of compute is required, but any company can simply leverage a public cloud, including the leaders Amazon Web Services, Microsoft Azure, and Google Cloud. So if another company with a video chat tool had the right machine learners, could they pull this off?

The answer is probably yes, similar to how several companies are getting speech recognition, Aichner said. They have a speech recognizer where theres also lots of data involved. Theres also lots of expertise needed to build a model. So the large companies are doing that.

Aichner believes Microsoft still has a heavy advantage because of its scale. I think that the value is the data, he said. What we want to do in the future is like what you said, have a program where Microsoft employees can give us more than enough real Teams Calls so that we have an even better analysis of what our customers are really doing, what problems they are facing, and customize it more towards that.

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How Microsoft Teams will use AI to filter out typing, barking, and other noise from video calls - VentureBeat

A new chemical compound created by researchers at West Virginia University is lighting the way for renewable energy – pvbuzz media

The compound is a photosensitizer, meaning it promotes chemical reactions in the presence of light. It has many potential applications for improving the efficiency of modern technologies ranging from electricity-producing solar panels to cell phones.

The study, published March 16 in Nature Chemistry, was conducted by researchers in Assistant Professor of Chemistry Carsten Milsmanns lab with support from his National Science Foundation CAREER Award.

These technologies currently rely on precious metals, like iridium and ruthenium, to function. However, only limited supplies of these materials remain in the world, making them nonrenewable, difficult to access and expensive.

We noticed that there have been few efforts in studying the more abundant metals titanium and zirconium because they are often not as easy to work with. Precious metals have always been the go-to elements because of their favorable chemical properties that make them easier to use and study, and thats predominantly how it has been done in the field, Milsmann said. Were hoping to change that.

Milsmanns compound is made from zirconium, which is much more abundant and easier to access, making it a more sustainable and cost-effective option. The compound is also stable in a variety of conditions, such as air, water and changes in temperature, making it easy to work with in a variety of environments.

Since the compound can convert light into electrical energy, it could be used in the creation of more efficient solar panels.

Solar panels are typically made using silicon and require a minimum threshold of light to collect and store energy. Instead of using silicon, researchers have long been exploring the alternative of dye-sensitized devices, in which colored molecules collect light and function in low-light conditions. As an added benefit, this also allows the production of semitransparent components. To date, the necessary dyes rely heavily on the precious material ruthenium, but Milsmanns new compound could potentially replace it in the future.

The problem with most solar panels is that they dont work well on cloudy days. They are pretty efficient, inexpensive and have a long lifespan, but they need intense light conditions to function efficiently, Milsmann said. One way around that is to make dye-sensitized versions where a colored compound absorbs light to produce electricity in any weather condition. In the future, we could design buildings that produce energy, essentially making the faade of your building, including all of its windows, into a power plant.

On the flipside, the compound could also be used in organic light-emitting diodes, which convert electrical energy into light, essentially reversing the function of a solar panel. This characteristic makes the compund a potential light source for producing more efficient cell phone screens.

Many cell phone displays contain iridium, another precious metal compound that does exactly what our compound does, Milsmann said. The advantage of having a light-emitting diode is that most of its energy is turned into light. In the past, light sources were inefficient because they only turned a small fraction of the energy they received into light.

The research teams next step is making the compound water soluble so it can potentially be used in biomedical applications, such as photodynamic therapy for cancer patients.

The compound can produce reactive oxygen species that induce cell death. It sounds really dangerous, but because the reaction only occurs during exposure to radiation with light, its location and duration can be tightly controlled, Milsmann said. If you can focus your light onto a specific point, you can generate reactive oxygen species to act only in response to the light, making it safe. This has the potential to remove tumors less invasively than through surgeries and chemotherapy.

The research team included WVU alumnus Yu Zhang (PhD Chemistry, 19), current graduate student Dylan Leary and Professor of Chemistry Jeffrey Petersen, among others.

Were laying the foundations for a lot of different applications, Milsmann said. Understanding how this compound works, which is what we did in the paper, will help people who want to bring these technologies forward.

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A new chemical compound created by researchers at West Virginia University is lighting the way for renewable energy - pvbuzz media

Green Chemistry Company, Distillery Team Up To Make Hand Sanitizer – CBS Boston

MEDFORD (CBS) A group of local companies is working together to help people on the front lines fighting the coronavirus by making hand sanitizer. Pair a green chemistry company with a distillery, and youve got a formula that makes a difference.

Theyre getting the latest batch of hand sanitizer ready at Evolved By Nature, a green chemistry company in Medford that usually makes skin care products. We realized there was a tremendous need in the community for hand sanitizer for those on the front lines, said the companys president, Rebecca Lacouture.

The company has dedicated some of its manufacturing lab to make hand sanitizer thats so crucial to so many people, from nurses and doctors to janitors and food service workers. And its a group effort. Boston Harbor Distillery donated the alcohol, the Royal Label Company stepped up to make the labels which were designed by advertising agency Arnold Worldwide.

So far theyve made more than 150 gallons. There was a need for all those in the community who have manufacturing capabilities to rally together to be able to bring everything together so that we could get those critical supplies out to those in need, Lacouture says.

First stop on the delivery route is Tufts Medical Center, just one of several hospitals benefiting from the collaboration. Its going to allow our patients to get the safe care they need and also for our employees to be protected to supply that safe service, said Andrew Fleming from Tufts.

But its not only the big medical institutions that are receiving support. Project Do Something Boston is also getting a supply to share with Boston Health Care for the Homeless. Theyre the people who are out there on the front lines screening and treating our homeless friends, said Robert Morgan from Project Do Something.

The alcohol is the trickiest ingredient in the hand sanitizer formula because it needs to contain a very high alcohol content. So if any other distilleries want to get involved Evolved By Nature would love to hear from you.

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Green Chemistry Company, Distillery Team Up To Make Hand Sanitizer - CBS Boston