10 interesting stories served every morning and every evening.




1 427 shares, 29 trendiness

alphaXiv

...

Read the original on www.alphaxiv.org »

2 281 shares, 21 trendiness

Cruise ships chopped in half are a license to print money

Watch: Cruise ships chopped in half are a li­cense to print money

Watch: Cruise ships chopped in half are a li­cense to print money

It’s mas­sively prof­itable for cruise op­er­a­tors to hack their ships in half and stick an ex­tra sec­tion in to lengthen them

It’s mas­sively prof­itable for cruise op­er­a­tors to hack their ships in half and stick an ex­tra sec­tion in to lengthen them

The new sec­tion slides in, com­plete with fur­ni­ture and fit­tings that might oth­er­wise be im­pos­si­ble to load on board

That ex­tra sec­tion costs some­where around US$80 mil­lion. It does­n’t look like much, but it rad­i­cally trans­forms the ship’s money-mak­ing ca­pa­bil­ity

A su­per-pre­cise cut right through the mid­dle of the ship

View gallery - 4 im­ages

Slicing huge cruise ships in half, then weld­ing in an ex­tra seg­ment to lengthen them, is more or less a li­cense to print money for cruise op­er­a­tors — so this jumboization’ surgery is be­com­ing very com­mon. Let’s take a look at how it’s done. Humanity, it seems, can’t get enough of cruise ships. In 1990, ac­cord­ing to Cruise Market Watch, the global cruise in­dus­try treated some 3.7 mil­lion pas­sen­gers to its fa­mil­iar regime of buf­fet food, all-in­clu­sive child su­per­vi­sion, shuf­fle­board, plen­ti­ful liquor and wink­ing en­ter­tain­ers. In 2024, that num­ber’s track­ing closer to 30 mil­lion.So the ships are get­ting big­ger, as ev­i­denced by Royal Caribbean Group’s Icon of the Seas, launched this January. This gaudy, tee­ter­ing be­he­moth is de­signed to carry just un­der 10,000 peo­ple, in­clud­ing crew. It’s just un­der 1,200 ft (365 m) long, 159 ft (48 m) wide, and it’s stacked no less than 20 decks high, with a tech­ni­colour wa­ter fun park, Aquadome,’ seven swim­ming pools and the in­dus­try’s tallest wa­ter­fall piled on top. Good lord:But this tow­er­ing leisure-fest cost around US$2 bil­lion to build, and took around two and a half years to launch from the first steel cut­ting. The cruise ship in­dus­try can’t build new ships fast enough to sat­isfy the ram­pant de­mand — and build­ing new ships also means you have to train new crews.

The cheaper, eas­ier way for op­er­a­tors to ex­pand their car­ry­ing ca­pac­ity and jack up prof­its is to make ex­ist­ing ships big­ger, as it turns out. For an av­er­age of around $80 mil­lion, and just a cou­ple of months out of ser­vice, op­er­a­tors can chop an ex­ist­ing ship down the mid­dle, slide in a new slice that’s de­signed to fit per­fectly, weld it to­gether, and come away with enough ex­tra pre­mium cab­ins to pay off the whole op­er­a­tion within a few years. That’s not to men­tion the op­por­tu­nity for a new paint job, big­ger deck pools or en­gine up­grades while the ship’s up on blocks — and HR only needs to train a small per­cent­age of ex­tra staff to add to an ex­ist­ing crew. The re­sult: with a much smaller out­lay and a neg­li­gi­ble gap in ser­vice, op­er­a­tors can make an ex­ist­ing boat much more prof­itable. Jumboization,’ as the process is known, cer­tainly is­n’t a new idea, or unique to cruise ships. Indeed, the term it­self ap­pears to have been coined just af­ter World War II, at which point ship­builders were al­ready do­ing it at enor­mous scale to lengthen war­ships, in some of the most com­plex en­gi­neer­ing work ever at­tempted in the slide rule era. Nowadays, it’s a well-trod­den path, with cer­tain ship­yards spe­cial­iz­ing in the process of adding 80-130 ft (24-40 m) to a given cruise ship. The process takes the best part of a year if you in­clude the mea­sure, de­sign and build of the new slice of ship — but re­mark­ably, just a mat­ter of weeks for the ac­tual ma­jor surgery it­self. How it’s done­First, you need the new chunk of ship ready to roll. Engineers pore over the ini­tial de­sign plans, and then go on board to make hun­dreds of mea­sure­ments; clearly, it’s got to be pre­cise.This done, they de­sign the new sec­tion. Every one of the thou­sands of pipes, wires, ca­bles and ven­ti­la­tion chan­nels that’ll be cut are de­signed into the new sec­tion, ready to line up per­fectly at both ends when the new joins are made. In this way, ex­ist­ing func­tion­al­ity can be main­tained — and if the ex­tra cab­ins place too much de­mand on ex­ist­ing sys­tems, they can be up­graded to han­dle their new loads. Then, they go ahead and build the new sec­tion, of­ten com­plete with in­te­rior fit-outs, at a ship­yard fa­cil­ity, leav­ing the ends open. Sometimes, as in the video be­low of the MSC Armonia, these open sec­tions are ac­tu­ally chris­tened and launched into the wa­ter in their own right, and towed to the dry dock where the surgery is sched­uled, like float­ing apart­ment blocks. Then, the ship is brought in, and pre­cisely po­si­tioned above an ar­ray of skid shoes” — lit­tle ship-lift­ing sleds po­si­tioned on metal tracks pre-bolted to the floor of the dry dock. Each of these lit­tle sleds is a hy­draulic jack ca­pa­ble of lift­ing as much as 1,000 tons — and each is also ca­pa­ble of ap­ply­ing hy­draulic lat­eral force to move it along the tracks. There might be up­wards of 50 of these skid shoes in­volved in a given ship-stretch­ing op­er­a­tion. With the ship po­si­tioned over the skid shoes, the dock is emp­tied, and the ship comes down to rest on its new mo­bile sup­ports. Then, a work crew that could ex­tend into the hun­dreds gets to work chop­ping the ship in half. Laser guides are used to en­sure mil­lime­ter-level pre­ci­sion, since it’s crit­i­cal that the edges meet per­fectly when the new sec­tion comes in. And of course, care is taken to plan which bits get cut in which or­der, be­cause of the enor­mous weight in­volved and the as­so­ci­ated struc­tural pres­sures that might re­sult.

A su­per-pre­cise cut right through the mid­dle of the ship

The cut­ting job it­self is split be­tween au­to­mated cut­ting ma­chines, which han­dle the straight sur­faces like the side walls and floors, and skilled la­bor­ers for curved or com­plex shapes, but both the ma­chines and the work­ers use com­mon acety­lene blow­torches to cut through the metal.When the whole ship’s been cut right through (memories of a par­tic­u­larly hor­ri­fy­ing Three Body Problem scene any­one?) the skid shoes be­gin the co-or­di­nated process of pulling the two halves apart, far enough for the new slice to be moved in on its own team of skid shoes. This is also a fine op­por­tu­nity to load the ex­ist­ing ship seg­ments up with large fit­ments and items that would oth­er­wise be im­pos­si­ble to get into the lower decks.The whole ship can be chopped in half and sep­a­rated in about two days.

The new sec­tion slides in, com­plete with fur­ni­ture and fit­tings that might oth­er­wise be im­pos­si­ble to load on board

Once that’s all done, the edges of the stem, mid­dle and stern sec­tions are lined up to per­fec­tion us­ing the lift­ing and mov­ing ca­pa­bil­i­ties of the skid shoes, and then it’s time to start con­nect­ing things back to­gether. The sur­faces are brought to­gether, and the weld­ing be­gins.A com­bi­na­tion of elec­trode and stick weld­ing is used — and here’s where the ex­treme cut­ting pre­ci­sion re­ally comes into play, be­cause the max­i­mum dis­tance that can be cov­ered be­tween the two sur­faces is only a few mil­lime­ters. The closer, the bet­ter — and of course, there’s re­ally no mar­gin for er­ror with the wa­ter­tight hull and the struc­tural sup­ports that’ll hold the mas­sive ship to­gether in rough seas. With the hull, decks and struc­ture all joined to­gether, it’s then time to re­con­nect all the thou­sands of ca­bles, ducts, wires and other fit­ments, while in­te­rior teams scurry to make the joins seam­less on the in­side of the ship, and an­other squad be­gins to give the whole ship a paint job that’ll cover up the welds and scars on the ex­te­rior. The ship­yard’s re­spon­si­bil­ity is struc­tural in­tegrity and sea­wor­thi­ness — but the op­er­a­tor also has to thor­oughly test every sin­gle elec­tri­cal, me­chan­i­cal and hy­draulic sys­tem on the ship to make sure every­thing has been re­con­nected prop­erly. They also need to run sea tri­als to prove the strength and han­dling of the new, longer ship.The whole op­er­a­tion, from when the ship ar­rives at the dry dock to the point where it’s ap­proved to be sent back out into ser­vice, can take just nine weeks. If you in­clude the time spent build­ing the new sec­tion, as well as all the pre-plan­ning and en­gi­neer­ing, the whole pro­ject might run out to about nine months.

That ex­tra sec­tion costs some­where around US$80 mil­lion. It does­n’t look like much, but it rad­i­cally trans­forms the ship’s money-mak­ing ca­pa­bil­ity

As I said, this is­n’t a new process; Wikipedia lists 21 cruise ships that have been length­ened in this way since 1977, and in­deed the mighty Seawise Giant — the longest self-pro­pelled ship in his­tory at a stag­ger­ing 1,504 ft (458 m) end to end — owes some of its prodi­gious length to the jum­boiza­tion tech­nique.But the scale of these op­er­a­tions, the tech­niques in­volved and the fi­nan­cial in­cen­tives be­hind them have made it a fas­ci­nat­ing rab­bit hole for me. I hope you’ve en­joyed it too!And if you wanna dive even deeper, take a look at this fan­tas­tic mini-doco from Spark:

Jumboization - Modifying Ships To Make Them Even Bigger [4K] | Heavy Lift | Spark

View gallery - 4 im­ages

Loz leads the New Atlas team as Editorial Director, af­ter nearly two decades as one of our most ver­sa­tile writ­ers. He’s also proven him­self as a pho­tog­ra­pher, video­g­ra­pher, pre­sen­ter, pro­ducer and pod­cast en­gi­neer. A grad­u­ate in Psychology, for­mer busi­ness an­a­lyst and tour­ing mu­si­cian, he’s cov­ered just about every­thing for New Atlas, con­cen­trat­ing lately on clean en­ergy, AI, hu­manoid ro­bot­ics, next-gen air­craft, and the odd bit of mu­sic, mo­tor­cy­cles and au­to­mo­tive.

...

Read the original on newatlas.com »

3 270 shares, 12 trendiness

Gnome Files: A detailed UI examination

Old codger yells at soft­ware, part the lat­est.

The story so far

A great amount of my writ­ing on this site re­volves around com­plain­ing about mod­ern user in­ter­face de­sign. Some peo­ple agree with me, some don’t. Most prob­a­bly don’t care at all. That’s fine. What I find in­ter­est­ing is that many (but not all!) peo­ple who dis­agree ei­ther pre­sent ex­tremely spe­cific non-ar­gu­ment nit­picks like Something in Windows 3.1 was bad, too!” and ig­nores the big ques­tions posed, such as whether it’s ac­tu­ally a good idea shov­ing every­thing into a sin­gle ham­burger menu, or if mix­ing touch and desk­top par­a­digms wildly be­tween and some­times within pro­grams is ac­tu­ally ben­e­fi­cial to end users. Others - de­spite my ef­forts to the con­trary - use sweep­ing dis­missals of the kind you just don’t like flat de­sign.” That’s true - I don’t like flat de­sign, but many of my ar­gu­ments have noth­ing what­so­ever to do with aes­thet­ics.

Well, that’s what writ­ing on the net is like. But I shall not de­spair, nor shall I be si­lenced! Allow me, for a few mo­ments, to fo­cus on a very de­tailed ex­am­ple that’s got noth­ing to do with flat­ness, but rather with how to ac­cess core pro­gram func­tion­al­ity.

It’s worth men­tion­ing that I agree that the mod­ern de­sign par­a­digm prob­a­bly is friendly to be­gin­ner users in many ways. But at some point, peo­ple stop be­ing be­gin­ners. People who use com­put­ers sev­eral hours per day, per­form­ing a wide va­ri­ety of tasks in many dif­fer­ent pro­grams, should also be taken in to ac­count when de­sign­ing soft­ware. As such, my cri­tique comes from the point of what’s usu­ally called a power user”. It’s also worth con­sid­er­ing that the more an in­ter­face hides, the less it of­fers by way of op­por­tu­ni­ties for a user to grow and learn.

For full trans­parency: It’s no se­cret that I don’t par­tic­u­larly en­joy the Gnome desk­top. When I in­stalled Ubuntu on my work lap­top about a year ago, I wanted to see how long I could get by us­ing Gnome. The an­swer was about five min­utes”. When I de­cided to switch the de­fault desk­top back­ground im­age to a solid color, I dis­cov­ered that the only avail­able op­tion in the con­fig­u­ra­tion tool was to se­lect im­ages. Sure, I could google a so­lu­tion to the prob­lem, which in­volved a pretty lengthy com­mand line in­can­ta­tion, but de­priv­ing the user of a sim­ple op­tion to se­lect a back­ground color was more than my pa­tience could han­dle.

I’ve writ­ten some pretty harsh cri­tique about Gnome be­fore, but I feel this is a pro­ject that does de­serve cri­tique. It’s not just the de­fault desk­top en­vi­ron­ment in most ma­jor Linux dis­tri­b­u­tions, it’s also a pro­ject that’s very vo­cal - opin­ion­ated, as the say­ing goes - about how to do things. A few ex­am­ples might be in or­der:

Our soft­ware is built to be us­able by every­one. We care deeply about user ex­pe­ri­ence.”

Software should be struc­turally and aes­thet­i­cally el­e­gant.”

People’s at­ten­tion is pre­cious. We pride our­selves in be­ing dis­trac­tion free.”

The traditional desk­top’ is dead, and it’s not com­ing back. (…) Instead of try­ing to bring back old con­cepts like menu bars or sta­tus icons, in­vent some­thing bet­ter from first prin­ci­ples.”

Bold words, in­deed! Let’s see how they fare in the real world. Recently, in an­other sud­den fit of open-mind­ed­ness, I de­cided to per­form some light file or­ga­niz­ing us­ing Gnome Files. This is­n’t just any old Gnome ap­pli­ca­tion: the file man­ager is a cen­tral point of any desk­top en­vi­ron­ment, along with win­dow man­age­ment and a de­cent set of UI wid­gets. Surely the Gnome pro­ject will have spent a good amount of time and ef­fort on mak­ing Gnome Files a flag­ship ap­pli­ca­tion, show­cas­ing their su­pe­rior UI phi­los­o­phy from its ab­solutely best side.

Well, it cer­tainly does­n’t look too shabby. Clean, el­e­gant, even min­i­mal­ist. A calm­ing ap­pear­ance. Sure, it’s a flat de­sign, but I can clearly make out the dif­fer­ent UI el­e­ments and get a good idea of what’s click­able or not - or so I’m led to be­lieve. There’s just one prob­lem - I’d pre­fer a list view in­stead of the large icons. How do I change it?

Note the many dis­tinct-look­ing icons in the tool­bar. From left to right we have three stacked dots, three stacked dots and lines, and three stacked lines. Pretty ob­vi­ous what they’re all about, right? Anyways, this drop­down menu with the tooltip text View Options” is prob­a­bly a good start.

Alas, that menu only shows var­i­ous sort op­tions. This makes me think Sort Options” would have been a bet­ter tooltip text. Then again, I’m not much for rein­vent­ing every­thing from first prin­ci­ples, so what do I know?

What’s in the Main Menu”, then? Nothing that has to do with a list view, I’m afraid - though there are op­tions here I’d ex­pect to find in a menu called View Options”, such as Icon Size and Show Hidden Files.

There’s a Folder Menu” too, but that does­n’t help me much, ei­ther.

Ah! There it is! The View Options” drop­down is ac­tu­ally a split but­ton, with a tog­gle part and a drop­down part. That’s sort of fine I guess, but I’d ex­pect the tog­gle op­tions to also be listed in the drop­down por­tion of the wid­get. If not, why group them to­gether like this? Why not split them into two clearly sep­a­rate but­tons? This hon­estly took me a good while to fig­ure out - and I’d like to think I’m nei­ther ex­tremely stu­pid nor par­tic­u­larly in­ex­pe­ri­enced with com­put­ers.

Yes, it re­ally was this hard for me to find the list view tog­gle. The View Options” drop­down did­n’t con­tain view op­tions, but rather sort op­tions, and I did­n’t re­al­ize it was a split but­ton with two com­pletely dif­fer­ent func­tions. I was fur­ther con­fused when other ac­tual view op­tions were, in fact, only avail­able in the Main Menu”. To me, this does­n’t feel like structural el­e­gance”. By now, my calm was re­placed with frus­tra­tion.

I ac­tu­ally re­sorted to the built-in help func­tion when look­ing for a way to switch to the list view. I searched for list view”, but did­n’t find any­thing im­me­di­ately help­ful. Even though I brought up the help win­dow us­ing Gnome Files’ menu op­tion for this, search re­sults were listed for many other ap­pli­ca­tions. Search re­sult num­ber nine, Browse files and fold­ers”, was at least re­lated to Gnome Files - but ap­peared af­ter things like Manage vol­umes and par­ti­tions” and Edit con­tact de­tails”. The only en­try I could find while man­u­ally brows­ing the help that men­tioned List View” was about what I could do when the list view had al­ready been se­lected. I tried my best, but could­n’t find any in­for­ma­tion on how to ac­tu­ally ac­ti­vate it.

While brows­ing the help, I no­ticed some­thing else: friv­o­lous tooltips. Tooltips are a great in­ven­tion and can be very use­ful, but a lot of pro­grams nowa­days seem to just sprin­kle them every­where, with no par­tic­u­lar thought as to whether they’re ac­tu­ally mean­ing­ful or not. Gnome Help is one such case.

Here, I’m just rest­ing my mouse pointer some­where, as one might do when read­ing through a bunch of click­able items. Up pops a tooltip that not only com­pletely cov­ers the ti­tle of the next item, it also has the ex­act same text as the header of the item it be­longs to. Why? Perhaps it’s part of the distraction free ex­pe­ri­ence”.

The same goes for the left hand side tool­bar in Gnome Files. Yes, I as­sumed that Recent” and Starred” here, in the con­text of Gnome Files, are about re­cent and starred files and not some­thing else. Granted, some of these tooltips show a full path, but hon­estly - if I’ve added some­thing to this bar, I prob­a­bly know what it is and where it’s lo­cated. A tooltip would be use­ful if two items have the same name - but why show them every­where else? To me, at least, it’s very an­noy­ing that I can’t rest my mouse pointer some­where with­out hav­ing point­less in­for­ma­tion pop­ping up that cov­ers what I’m re­ally in­ter­ested in look­ing at. In fact, I’d say this be­hav­ior teaches me as a user that tooltips are point­less and ir­ri­tat­ing, mak­ing me in­stinc­tively ig­nore them even when they might be use­ful.

Navigating us­ing the Gnome Files UI is fine, for the most part. I’m un­used to the but­ton lo­ca­tions, and I miss a but­ton for go­ing one level up, to the par­ent di­rec­tory. There are but­tons for go­ing back and for­ward in the nav­i­ga­tion his­tory, but that’s not the same thing. Clicking on a di­rec­tory in the lo­ca­tion bar will take you there, but it’s much eas­ier to misclick and thus less con­ve­nient.

When search­ing for a parent di­rec­tory” but­ton, I no­ticed a few strange be­hav­iors. Clicking on di­rec­tory names in the lo­ca­tion bar is a nice fea­ture. However, many file man­agers will also let the user di­rectly en­ter a path here. In fact, it looks a lot like a text box (such as the Folder name wid­get in the screen­shot above) but no mat­ter where I click in it, I can­not ac­ti­vate a nor­mal edit­ing mode.

It seems this edit­ing mode can only be ac­ti­vated us­ing a key­board short­cut, Ctrl-L, which is­n’t im­me­di­ately ap­par­ent - or, to be frank, very log­i­cal. It looks like a text box, and it is in­deed a text box - not just all the time. Maybe I’m not sup­posed to think of it as a text box, but the de­sign lan­guage here is­n’t ex­actly su­per clear on what kind of in­put I’m deal­ing with, so I’m work­ing from as­sump­tions based on hav­ing used com­put­ers and GUI file man­agers for 36 years - which is some­thing de­vel­op­ers and de­sign­ers should take into ac­count when build­ing in­ter­faces.

Having no mouse-dri­ven way of ac­ti­vat­ing a fairly com­mon UI task feels like a step back in dis­cov­er­abil­ity. In fact, I thought the fea­ture had­n’t been im­ple­mented un­til I googled it. To be fair, it listed in the Keyboard Shortcuts win­dow, but call me old school for ex­pect­ing GUI el­e­ments to be ac­ces­si­ble with the mouse.

The short­cuts list is three pages long. It’s got a search func­tion, which is nice - if you know what you’re look­ing for. For ex­am­ple, Gnome Help calls the lo­ca­tion bar the path bar”, but search­ing for path” gives zero re­sults. If you don’t know what to search for, there’s no table of con­tents or other way of quickly view­ing the var­i­ous cat­e­gories of short­cuts. You have to ex­am­ine each of the pages and hope to find what you’re look­ing for.

Upon reach­ing page three, I learned that there’s even a key­board short­cut for open­ing the key­board short­cuts win­dow - but un­like some other short­cuts, it’s not shown next to its cor­re­spond­ing GUI en­try in the Main Menu. Inconsistent and con­fus­ing.

I’m not sure why, but the Gnome pro­ject has a strong aver­sion to menu bars. The key­board short­cuts win­dow may be reinventing from first prin­ci­ples”, but to me this in­ven­tion looks like a flawed rein­ter­pre­ta­tion of a tra­di­tional menu bar. A menu bar pro­vides a way of ex­pos­ing cat­e­go­rized pro­gram fea­tures in a fa­mil­iar and al­ways-vis­i­ble UI, lists their key­board short­cuts in a con­sis­tent man­ner and it lets the user in­ter­act with the op­tion im­me­di­ately upon find­ing it.

In Gnome Files, we’re in­stead given a hand­ful of fea­tures scat­tered across the UI. Hidden fea­tures (accessible solely through key­board shorcuts) can only be learned by brows­ing what is best de­scribed as a non-in­ter­ac­tive menu of the kind you’d find printed on pa­per in a restau­rant. This brows­ing brings a con­sid­er­able con­text switch be­cause the win­dow is modal, so you can’t keep it open while ex­per­i­ment­ing. You have to find what you’re look­ing for, note the key­board short­cut, close the short­cuts win­dow, and then in­voke the fea­ture. Keyboard short­cuts aren’t bad, but in a mouse dri­ven en­vi­ron­ment, hav­ing no way of find­ing and in­vok­ing fea­tures through the GUI is lim­it­ing and con­fus­ing. And why force users to mem­o­rize a short­cut for some­thing they might only do oc­ca­sion­ally?

In short, this feels like an af­ter­thought rather than a rev­o­lu­tion­ary new, ef­fi­cient ap­proach to op­er­at­ing a GUI.

When try­ing to ac­ti­vate path edit­ing us­ing the mouse, my vig­or­ous click­ing just made the Gnome Files win­dow move around. Since the win­dow has no real ti­tle bar, it must be moved by click­ing-and-drag­ging in the top part of the win­dow. This is also where the tool­bar re­sides, which means click-drag­ging on UI con­trols that al­ready have a com­pletely dif­fer­ent func­tion. You can use the search func­tion by click­ing on the search icon - but you can also click the search icon and start drag­ging the win­dow around.

There’s a lo­ca­tion his­tory avail­able by ei­ther con­text-click­ing or per­form­ing a long click” on the back- and for­ward but­tons, but noth­ing about the but­tons in­di­cate this (and the fea­ture does­n’t seem to have a key­board short­cut), which in­tro­duces fur­ther am­bi­gu­ity re­gard­ing the click-drag be­hav­ior. Confusingly, per­form­ing a long click on other items does­n’t bring up their con­text menu.

Activating win­dows with the mouse is even worse: If I want to bring a win­dow to the front of the stack, I have to search for a non-click­able area, lest I ac­ti­vate the search fea­ture, skip up­wards in the path, switch from list view back to icon view or ac­ci­den­tally ac­cess some other pro­gram fea­ture. This in­tro­duces ex­treme am­bi­gu­ity that makes me as a user feel in­se­cure and un­com­fort­able: a sim­ple mouse slip can give the most sur­pris­ing re­sults. The user is con­di­tioned to be mind­ful of this, which in­creases the cog­ni­tive load for very sim­ple and com­mon win­dow op­er­a­tions.

Another cu­ri­ous idio­syn­crasy of for­go­ing win­dow ti­tle bars is that right-click­ing on for ex­am­ple the search icon ac­tu­ally brings up a win­dow man­age­ment menu, with op­tions for clos­ing, max­i­miz­ing and min­i­miz­ing the win­dow. This pops up when right click­ing any­where in the top part of the win­dow. Except when right click­ing on a di­rec­tory name in the lo­ca­tion bar - that will in­stead bring up a com­pletely dif­fer­ent menu, with var­i­ous di­rec­tory ac­tions. Except if you click on the cur­rent di­rec­tory, which won’t bring up a con­text menu. Except some­times it does, but then it’s the win­dow ac­tions menu. Which is also what hap­pens if you miss the con­text-click­able area of an­other di­rec­tory by just a pixel, even if the pointer is still in­side the lo­ca­tion bar.

You can, how­ever, mid­dle click on any di­rec­tory name - - to open it in a new tab. Which is also one of the op­tions avail­able in the con­text menu.

Gnome Files, or rather GTK 4, uses hid­den scroll bars. I’m us­ing what I as­sume to be the de­fault set­tings and the de­fault GTK 4 theme as sup­plied by Debian, be­cause I haven’t changed any­thing (except the font). I per­son­ally don’t like hid­den scroll bars, be­cause hid­ing the scroll bar also hides in­for­ma­tion not only about what I can do with the GUI it­self, but also about where I’m cur­rently po­si­tioned in E. G. a file list­ing or text doc­u­ment.

Moving the mouse about in Gnome Files re­veals the scroll bar, as de­picted in the first pic­ture above. It’s very small and very hard to see be­cause of the low con­trast, but it’s there. But - Ah-hah! - the scroll bar is ac­tu­ally hid­den in two steps! When mov­ing the mouse pointer to it, it grows and be­comes more vis­i­ble, as in the sec­ond pic­ture above. But when it does, it also moves the en­tire width of its orig­i­nal size to the left, mean­ing that my mouse pointer is now point­ing at… noth­ing. Thanks, Gnomebama.

The Gnome Files UI feels hap­haz­ard, in­co­her­ent and some­times even dan­ger­ous:

Menu names and their con­tents are con­fus­ing, with View Options” ac­tu­ally be­ing sort op­tions. Actual view op­tions are in­stead sprin­kled across other parts of the UI.

Some com­mon fea­tures are only ac­ces­si­ble - and dis­cov­er­able - through key­board short­cuts. The key­board short­cuts list­ing is non-in­ter­ac­tive, modal, and in­curs a sub­stan­tial men­tal con­text switch.

Widgets don’t be­have quite as you’d ex­pect when com­pared to other, sim­i­lar, mod­ern ap­pli­ca­tions.

Even within the closed world of Gnome Files, wid­get looks can be de­cep­tive.

Tooltips are ei­ther mis­lead­ing, or com­i­cally un­in­for­ma­tive and thus an­noy­ingly dis­tract­ing.

Moving win­dows by click­ing on icons that al­ready have a spe­cific func­tion feels un­in­tu­itive and in­tro­duces an un­nec­es­sary risk of misclick­ing.

To ac­ti­vate a win­dow with­out also ac­ti­vat­ing a pro­gram fea­ture, time must be spent search­ing for a non-in­ter­ac­tive area of the UI.

Context-clicking in the top part of the win­dow gives spu­ri­ous and un­pre­dictable re­sults.

In the de­fault theme, scroll bars jump away from their orig­i­nal po­si­tion when you point at them.

Searching and then brows­ing the built-in help for list view” did­n’t ac­tu­ally help me find out how to en­able the list view. The only page I could find that con­tains the ex­act phrase ap­pears as #15 among the search re­sults.

Nomenclature dif­fers be­tween the help texts and the ac­tual GUI.

The many var­i­ous in­con­sis­ten­cies listed above makes it hard for me as a user to con­struct men­tal mod­els and pat­terns for mak­ing ef­fi­cient and re­li­able as­sump­tions about the UI. I of­ten have to dou­ble check things and look for fea­tures in the key­board short­cuts win­dow, since I don’t know if they’ve been deigned a menu en­try or tool­bar icon. Ambiguous mouse be­hav­ior in­tro­duces un­nec­es­sary cog­ni­tive load, mak­ing it hard to build con­fi­dence even when per­form­ing ba­sic tasks.

Designing user in­ter­faces is hard. Writing soft­ware is hard. Designing great in­ter­faces and writ­ing great soft­ware is even harder. No mat­ter how hard you try, you can’t please every­one. Functionally, Gnome Files lets me do file man­age­ment. I could, if I had no other op­tions, prob­a­bly get used to its UI idio­syn­crasies. But as I’ve hope­fully demon­strated above, there are many things about Gnome Files - a cen­tral part of the Gnome desk­top - that can be con­sid­ered ob­jec­tively bad from a UI de­sign stand­point.

This does­n’t mean that there aren’t other bad pro­grams or that pre­vi­ous de­sign par­a­digms were per­fec­tion in­car­nate. Neither does it mean that every lit­tle bit of Gnome Files is worth­less, or that Gnome and Gnome Files are unique in em­ploy­ing these pat­ters (but that’s hardly a com­fort). But should­n’t this new de­sign par­a­digm pro­duce some­thing bet­ter? Isn’t that its whole rai­son d’être? After ten-fif­teen years of the old main­stream desk­top par­a­digm, we ar­rived at Windows 95 - which was­n’t per­fect, but pretty damn con­sis­tent, pre­dictable and re­li­able. After ten-fif­teen years of this new par­a­digm, we in­stead have con­stant re­designs and re­work­ings of so­lu­tions to prob­lems we al­ready know how to solve.

Examining these new so­lu­tions sug­gests to me that maybe pro­po­nents of the new UI par­a­digm should be a bit more hum­ble in their ap­proach to tried and tested pat­terns. Nearly all of the crit­i­cisms ex­am­ined above al­ready have well known so­lu­tions that have been honed for a pe­riod of decades. For ex­am­ple: Having ac­tual win­dow ti­tle bars, con­sis­tently list­ing key­board short­cuts in menus, con­sis­tently cat­e­go­riz­ing menus and op­tions, and us­ing a richer de­sign lan­guage. Old does­n’t au­to­mat­i­cally mean worse, just as new does­n’t au­to­mat­i­cally mean bet­ter.

My per­sonal con­clu­sion is that if this is the re­sult of in­vent­ing something bet­ter from first prin­ci­ples” to cre­ate structurally el­e­gant” and distraction free” soft­ware usable by every­one”, I guess I’m just not everyone”. And that would be fine, if it was­n’t for the fact that these days, I’m of­ten left with no choice but us­ing pro­grams with UI:s like these.

...

Read the original on www.datagubbe.se »

4 199 shares, 9 trendiness

GPT-fabricated scientific papers on Google Scholar: Key features, spread, and implications for preempting evidence manipulation

Academic jour­nals, archives, and repos­i­to­ries are see­ing an in­creas­ing num­ber of ques­tion­able re­search pa­pers clearly pro­duced us­ing gen­er­a­tive AI. They are of­ten cre­ated with widely avail­able, gen­eral-pur­pose AI ap­pli­ca­tions, most likely ChatGPT, and mimic sci­en­tific writ­ing. Google Scholar eas­ily lo­cates and lists these ques­tion­able pa­pers along­side rep­utable, qual­ity-con­trolled re­search. Our analy­sis of a se­lec­tion of ques­tion­able GPT-fabricated sci­en­tific pa­pers found in Google Scholar shows that many are about ap­plied, of­ten con­tro­ver­sial top­ics sus­cep­ti­ble to dis­in­for­ma­tion: the en­vi­ron­ment, health, and com­put­ing. The re­sult­ing en­hanced po­ten­tial for ma­li­cious ma­nip­u­la­tion of so­ci­ety’s ev­i­dence base, par­tic­u­larly in po­lit­i­cally di­vi­sive do­mains, is a grow­ing con­cern.

Where are ques­tion­able pub­li­ca­tions pro­duced with gen­er­a­tive pre-trained trans­form­ers (GPTs) that can be found via Google Scholar pub­lished or de­posited?

What are the main char­ac­ter­is­tics of these pub­li­ca­tions in re­la­tion to pre­dom­i­nant sub­ject cat­e­gories?

How are these pub­li­ca­tions spread in the re­search in­fra­struc­ture for schol­arly com­mu­ni­ca­tion?

How is the role of the schol­arly com­mu­ni­ca­tion in­fra­struc­ture chal­lenged in main­tain­ing pub­lic trust in sci­ence and ev­i­dence through in­ap­pro­pri­ate use of gen­er­a­tive AI?

A sam­ple of sci­en­tific pa­pers with signs of GPT-use found on Google Scholar was re­trieved, down­loaded, and an­a­lyzed us­ing a com­bi­na­tion of qual­i­ta­tive cod­ing and de­scrip­tive sta­tis­tics. All pa­pers con­tained at least one of two com­mon phrases re­turned by con­ver­sa­tional agents that use large lan­guage mod­els (LLM) like OpenAI’s ChatGPT. Google Search was then used to de­ter­mine the ex­tent to which copies of ques­tion­able, GPT-fabricated pa­pers were avail­able in var­i­ous repos­i­to­ries, archives, ci­ta­tion data­bases, and so­cial me­dia plat­forms.

Roughly two-thirds of the re­trieved pa­pers were found to have been pro­duced, at least in part, through undis­closed, po­ten­tially de­cep­tive use of GPT. The ma­jor­ity (57%) of these ques­tion­able pa­pers dealt with pol­icy-rel­e­vant sub­jects (i.e., en­vi­ron­ment, health, com­put­ing), sus­cep­ti­ble to in­flu­ence op­er­a­tions. Most were avail­able in sev­eral copies on dif­fer­ent do­mains (e.g., so­cial me­dia, archives, and repos­i­to­ries).

Two main risks arise from the in­creas­ingly com­mon use of GPT to (mass-)produce fake, sci­en­tific pub­li­ca­tions. First, the abun­dance of fab­ri­cated studies” seep­ing into all ar­eas of the re­search in­fra­struc­ture threat­ens to over­whelm the schol­arly com­mu­ni­ca­tion sys­tem and jeop­ar­dize the in­tegrity of the sci­en­tific record. A sec­ond risk lies in the in­creased pos­si­bil­ity that con­vinc­ingly sci­en­tific-look­ing con­tent was in fact de­ceit­fully cre­ated with AI tools and is also op­ti­mized to be re­trieved by pub­licly avail­able aca­d­e­mic search en­gines, par­tic­u­larly Google Scholar. However small, this pos­si­bil­ity and aware­ness of it risks un­der­min­ing the ba­sis for trust in sci­en­tific knowl­edge and poses se­ri­ous so­ci­etal risks.

The use of ChatGPT to gen­er­ate text for aca­d­e­mic pa­pers has raised con­cerns about re­search in­tegrity. Discussion of this phe­nom­e­non is on­go­ing in ed­i­to­ri­als, com­men­taries, opin­ion pieces, and on so­cial me­dia (Bom, 2023; Stokel-Walker, 2024; Thorp, 2023). There are now sev­eral lists of pa­pers sus­pected of GPT mis­use, and new pa­pers are con­stantly be­ing added. While many le­git­i­mate uses of GPT for re­search and aca­d­e­mic writ­ing ex­ist (Huang & Tan, 2023; Kitamura, 2023; Lund et al., 2023), its un­de­clared use—be­yond proof­read­ing—has po­ten­tially far-reach­ing im­pli­ca­tions for both sci­ence and so­ci­ety, but es­pe­cially for their re­la­tion­ship. It, there­fore, seems im­por­tant to ex­tend the dis­cus­sion to one of the most ac­ces­si­ble and well-known in­ter­me­di­aries be­tween sci­ence, but also cer­tain types of mis­in­for­ma­tion, and the pub­lic, namely Google Scholar, also in re­sponse to the le­git­i­mate con­cerns that the dis­cus­sion of gen­er­a­tive AI and mis­in­for­ma­tion needs to be more nu­anced and em­pir­i­cally sub­stan­ti­ated  (Simon et al., 2023).

Google Scholar, https://​scholar.google.com, is an easy-to-use aca­d­e­mic search en­gine. It is avail­able for free, and its in­dex is ex­ten­sive (Gusenbauer & Haddaway, 2020). It is also of­ten touted as a cred­i­ble source for aca­d­e­mic lit­er­a­ture and even rec­om­mended in li­brary guides, by me­dia and in­for­ma­tion lit­er­acy ini­tia­tives, and fact check­ers (Tripodi et al., 2023). However, Google Scholar lacks the trans­parency and ad­her­ence to stan­dards that usu­ally char­ac­ter­ize ci­ta­tion data­bases. Instead, Google Scholar uses au­to­mated crawlers, like Google’s web search en­gine (Martín-Martín et al., 2021), and the in­clu­sion cri­te­ria are based on pri­mar­ily tech­ni­cal stan­dards, al­low­ing any in­di­vid­ual au­thor—with or with­out sci­en­tific af­fil­i­a­tion—to up­load pa­pers to be in­dexed (Google Scholar Help, n.d.). It has been shown that Google Scholar is sus­cep­ti­ble to ma­nip­u­la­tion through ci­ta­tion ex­ploits (Antkare, 2020) and by pro­vid­ing ac­cess to fake sci­en­tific pa­pers (Dadkhah et al., 2017). A large part of Google Scholar’s in­dex con­sists of pub­li­ca­tions from es­tab­lished sci­en­tific jour­nals or other forms of qual­ity-con­trolled, schol­arly lit­er­a­ture. However, the in­dex also con­tains a large amount of gray lit­er­a­ture, in­clud­ing stu­dent pa­pers, work­ing pa­pers, re­ports, preprint servers, and aca­d­e­mic net­work­ing sites, as well as ma­te­r­ial from so-called questionable” aca­d­e­mic jour­nals, in­clud­ing pa­per mills. The search in­ter­face does not of­fer the pos­si­bil­ity to fil­ter the re­sults mean­ing­fully by ma­te­r­ial type, pub­li­ca­tion sta­tus, or form of qual­ity con­trol, such as lim­it­ing the search to peer-re­viewed ma­te­r­ial.

To un­der­stand the oc­cur­rence of ChatGPT (co-)authored work in Google Scholar’s in­dex, we scraped it for pub­li­ca­tions, in­clud­ing one of two com­mon ChatGPT re­sponses (see Appendix A) that we en­coun­tered on so­cial me­dia and in me­dia re­ports (DeGeurin, 2024). The re­sults of our de­scrip­tive sta­tis­ti­cal analy­ses showed that around 62% did not de­clare the use of GPTs. Most of these GPT-fabricated pa­pers were found in non-in­dexed jour­nals and work­ing pa­pers, but some cases in­cluded re­search pub­lished in main­stream sci­en­tific jour­nals and con­fer­ence pro­ceed­ings. More than half (57%) of these GPT-fabricated pa­pers con­cerned pol­icy-rel­e­vant sub­ject ar­eas sus­cep­ti­ble to in­flu­ence op­er­a­tions. To avoid in­creas­ing the vis­i­bil­ity of these pub­li­ca­tions, we ab­stained from ref­er­enc­ing them in this re­search note. However, we have made the data avail­able in the Harvard Dataverse repos­i­tory.

The pub­li­ca­tions were re­lated to three is­sue ar­eas—health (14.5%), en­vi­ron­ment (19.5%) and com­put­ing (23%)—with key terms such healthcare,” COVID-19,” or infection”for health-re­lated pa­pers, and analysis,” sustainable,” and global” for en­vi­ron­ment-re­lated pa­pers. In sev­eral cases, the pa­pers had ti­tles that strung to­gether gen­eral key­words and buzz­words, thus al­lud­ing to very broad and cur­rent re­search. These terms in­cluded biology,” telehealth,” climate pol­icy,” diversity,” and disrupting,” to name just a few.  While the study’s scope and de­sign did not in­clude a de­tailed analy­sis of which parts of the ar­ti­cles in­cluded fab­ri­cated text, our dataset did con­tain the sur­round­ing sen­tences for each oc­cur­rence of the sus­pi­cious phrases that formed the ba­sis for our search and sub­se­quent se­lec­tion. Based on that, we can say that the phrases oc­curred in most sec­tions typ­i­cally found in sci­en­tific pub­li­ca­tions, in­clud­ing the lit­er­a­ture re­view, meth­ods, con­cep­tual and the­o­ret­i­cal frame­works, back­ground, mo­ti­va­tion or so­ci­etal rel­e­vance, and even dis­cus­sion. This was con­firmed dur­ing the joint cod­ing, where we read and dis­cussed all ar­ti­cles. It be­came clear that not just the text re­lated to the tell­tale phrases was cre­ated by GPT, but that al­most all ar­ti­cles in our sam­ple of ques­tion­able ar­ti­cles likely con­tained traces of GPT-fabricated text every­where.

Generative pre-trained trans­form­ers (GPTs) can be used to pro­duce texts that mimic sci­en­tific writ­ing. These texts, when made avail­able on­line—as we demon­strate—leak into the data­bases of aca­d­e­mic search en­gines and other parts of the re­search in­fra­struc­ture for schol­arly com­mu­ni­ca­tion. This de­vel­op­ment ex­ac­er­bates prob­lems that were al­ready pre­sent with less so­phis­ti­cated text gen­er­a­tors (Antkare, 2020; Cabanac & Labbé, 2021). Yet, the pub­lic re­lease of ChatGPT in 2022, to­gether with the way Google Scholar works, has in­creased the like­li­hood of lay peo­ple (e.g., me­dia, politi­cians, pa­tients, stu­dents) com­ing across ques­tion­able (or even en­tirely GPT-fabricated) pa­pers and other prob­lem­atic re­search find­ings. Previous re­search has em­pha­sized that the abil­ity to de­ter­mine the value and sta­tus of sci­en­tific pub­li­ca­tions for lay peo­ple is at stake when mis­lead­ing ar­ti­cles are passed off as rep­utable (Haider & Åström, 2017) and that sys­tem­atic lit­er­a­ture re­views risk be­ing com­pro­mised (Dadkhah et al., 2017). It has also been high­lighted that Google Scholar, in par­tic­u­lar, can be and has been ex­ploited for ma­nip­u­lat­ing the ev­i­dence base for po­lit­i­cally charged is­sues and to fuel con­spir­acy nar­ra­tives (Tripodi et al., 2023). Both con­cerns are likely to be mag­ni­fied in the fu­ture, in­creas­ing the risk of what we sug­gest call­ing ev­i­dence hack­ing—the strate­gic and co­or­di­nated ma­li­cious ma­nip­u­la­tion of so­ci­ety’s ev­i­dence base.

The au­thor­ity of qual­ity-con­trolled re­search as ev­i­dence to sup­port leg­is­la­tion, pol­icy, pol­i­tics, and other forms of de­ci­sion-mak­ing is un­der­mined by the pres­ence of un­de­clared GPT-fabricated con­tent in pub­li­ca­tions pro­fess­ing to be sci­en­tific. Due to the large num­ber of archives, repos­i­to­ries, mir­ror sites, and shadow li­braries to which they spread, there is a clear risk that GPT-fabricated, ques­tion­able pa­pers will reach au­di­ences even af­ter a pos­si­ble re­trac­tion. There are con­sid­er­able tech­ni­cal dif­fi­cul­ties in­volved in iden­ti­fy­ing and trac­ing com­puter-fab­ri­cated pa­pers (Cabanac & Labbé, 2021; Dadkhah et al., 2023; Jones, 2024), not to men­tion pre­vent­ing and curb­ing their spread and up­take.

However, as the rise of the so-called anti-vaxx move­ment dur­ing the COVID-19 pan­demic and the on­go­ing ob­struc­tion and de­nial of cli­mate change show, re­tract­ing er­ro­neous pub­li­ca­tions of­ten fu­els con­spir­a­cies and in­creases the fol­low­ing of these move­ments rather than stop­ping them. To il­lus­trate this mech­a­nism, cli­mate de­niers fre­quently ques­tion es­tab­lished sci­en­tific con­sen­sus by point­ing to other, sup­pos­edly sci­en­tific, stud­ies that sup­port their claims. Usually, these are poorly ex­e­cuted, not peer-re­viewed, based on ob­so­lete data, or even fraud­u­lent (Dunlap & Brulle, 2020). A sim­i­lar strat­egy is suc­cess­ful in the al­ter­na­tive epis­temic world of the global anti-vac­ci­na­tion move­ment (Carrion, 2018) and the per­sis­tence of flawed and ques­tion­able pub­li­ca­tions in the sci­en­tific record al­ready poses sig­nif­i­cant prob­lems for health re­search, pol­icy, and law­mak­ers, and thus for so­ci­ety as a whole (Littell et al., 2024). Considering that a per­son’s sup­port for doing your own re­search” is as­so­ci­ated with in­creased mis­trust in sci­en­tific in­sti­tu­tions (Chinn & Hasell, 2023), it will be of ut­most im­por­tance to an­tic­i­pate and con­sider such back­fir­ing ef­fects al­ready when de­sign­ing a tech­ni­cal so­lu­tion, when sug­gest­ing in­dus­try or le­gal reg­u­la­tion, and in the plan­ning of ed­u­ca­tional mea­sures.

Solutions should be based on si­mul­ta­ne­ous con­sid­er­a­tions of tech­ni­cal, ed­u­ca­tional, and reg­u­la­tory ap­proaches, as well as in­cen­tives, in­clud­ing so­cial ones, across the en­tire re­search in­fra­struc­ture. Paying at­ten­tion to how these ap­proaches and in­cen­tives re­late to each other can help iden­tify points and mech­a­nisms for dis­rup­tion. Recognizing fraud­u­lent aca­d­e­mic pa­pers must hap­pen along­side un­der­stand­ing how they reach their au­di­ences and what rea­sons there might be for some of these pa­pers suc­cess­fully sticking around.” A pos­si­ble way to mit­i­gate some of the risks as­so­ci­ated with GPT-fabricated schol­arly texts find­ing their way into aca­d­e­mic search en­gine re­sults would be to pro­vide fil­ter­ing op­tions for facets such as in­dexed jour­nals, gray lit­er­a­ture, peer-re­view, and sim­i­lar on the in­ter­face of pub­licly avail­able aca­d­e­mic search en­gines. Furthermore, eval­u­a­tion tools for in­dexed jour­nals could be in­te­grated into the graph­i­cal user in­ter­faces and the crawlers of these aca­d­e­mic search en­gines. To en­able ac­count­abil­ity, it is im­por­tant that the in­dex (database) of such a search en­gine is pop­u­lated ac­cord­ing to cri­te­ria that are trans­par­ent, open to scrutiny, and ap­pro­pri­ate to the work­ings of  science and other forms of aca­d­e­mic re­search. Moreover, con­sid­er­ing that Google Scholar has no real com­peti­tor, there is a strong case for es­tab­lish­ing a freely ac­ces­si­ble, non-spe­cial­ized aca­d­e­mic search en­gine that is not run for com­mer­cial rea­sons but for rea­sons of pub­lic in­ter­est. Such mea­sures, to­gether with ed­u­ca­tional ini­tia­tives aimed par­tic­u­larly at pol­i­cy­mak­ers, sci­ence com­mu­ni­ca­tors, jour­nal­ists, and other me­dia work­ers, will be cru­cial to re­duc­ing the pos­si­bil­i­ties for and ef­fects of ma­li­cious ma­nip­u­la­tion or ev­i­dence hack­ing. It is im­por­tant not to pre­sent this as a tech­ni­cal prob­lem that ex­ists only be­cause of AI text gen­er­a­tors but to re­late it to the wider con­cerns in which it is em­bed­ded. These range from a largely dys­func­tional schol­arly pub­lish­ing sys­tem (Haider & Åström, 2017) and acad­e­mi­a’s publish or per­ish” par­a­digm to Google’s near-mo­nop­oly and ide­o­log­i­cal bat­tles over the con­trol of in­for­ma­tion and ul­ti­mately knowl­edge. Any in­ter­ven­tion is likely to have sys­temic ef­fects; these ef­fects need to be con­sid­ered and as­sessed in ad­vance and, ide­ally, fol­lowed up on.

Our study fo­cused on a se­lec­tion of pa­pers that were eas­ily rec­og­niz­able as fraud­u­lent. We used this rel­a­tively small sam­ple as a mag­ni­fy­ing glass to ex­am­ine, de­lin­eate, and un­der­stand a prob­lem that goes be­yond the scope of the sam­ple it­self, which how­ever points to­wards larger con­cerns that re­quire fur­ther in­ves­ti­ga­tion. The work of on­go­ing whistle­blow­ing ini­tia­tives, re­cent me­dia re­ports of jour­nal clo­sures (Subbaraman, 2024), or GPT-related changes in word use and writ­ing style (Cabanac et al., 2021; Stokel-Walker, 2024) sug­gest that we only see the tip of the ice­berg. There are al­ready more so­phis­ti­cated cases (Dadkhah et al., 2023) as well as cases in­volv­ing fab­ri­cated im­ages (Gu et al., 2022). Our analy­sis shows that ques­tion­able and po­ten­tially ma­nip­u­la­tive GPT-fabricated pa­pers per­me­ate the re­search in­fra­struc­ture and are likely to be­come a wide­spread phe­nom­e­non. Our find­ings un­der­line that the risk of fake sci­en­tific pa­pers be­ing used to ma­li­ciously ma­nip­u­late ev­i­dence (see Dadkhah et al., 2017) must be taken se­ri­ously. Manipulation may in­volve un­de­clared au­to­matic sum­maries of texts, in­clu­sion in lit­er­a­ture re­views, ex­plicit sci­en­tific claims, or the con­ceal­ment of er­rors in stud­ies so that they are dif­fi­cult to de­tect in peer re­view. However, the mere pos­si­bil­ity of these things hap­pen­ing is a sig­nif­i­cant risk in its own right that can be strate­gi­cally ex­ploited and will have ram­i­fi­ca­tions for trust in and per­cep­tion of sci­ence. Society’s meth­ods of eval­u­at­ing sources and the foun­da­tions of me­dia and in­for­ma­tion lit­er­acy are un­der threat and pub­lic trust in sci­ence is at risk of fur­ther ero­sion, with far-reach­ing con­se­quences for so­ci­ety in deal­ing with in­for­ma­tion dis­or­ders. To ad­dress this mul­ti­fac­eted prob­lem, we first need to un­der­stand why it ex­ists and pro­lif­er­ates.

Finding 1: 139 GPT-fabricated, ques­tion­able pa­pers were found and listed as reg­u­lar re­sults on the Google Scholar re­sults page. Non-indexed jour­nals dom­i­nate.

Most ques­tion­able pa­pers we found were in non-in­dexed jour­nals or were work­ing pa­pers, but we did also find some in es­tab­lished jour­nals, pub­li­ca­tions, con­fer­ences, and repos­i­to­ries. We found a to­tal of 139 pa­pers with a sus­pected de­cep­tive use of ChatGPT or sim­i­lar LLM ap­pli­ca­tions (see Table 1). Out of these, 19 were in in­dexed jour­nals, 89 were in non-in­dexed jour­nals, 19 were stu­dent pa­pers found in uni­ver­sity data­bases, and 12 were work­ing pa­pers (mostly in preprint data­bases). Table 1 di­vides these pa­pers into cat­e­gories. Health and en­vi­ron­ment pa­pers made up around 34% (47) of the sam­ple. Of these, 66% were pre­sent in non-in­dexed jour­nals.

Finding 2: GPT-fabricated, ques­tion­able pa­pers are dis­sem­i­nated on­line, per­me­at­ing the re­search in­fra­struc­ture for schol­arly com­mu­ni­ca­tion, of­ten in mul­ti­ple copies. Applied top­ics with prac­ti­cal im­pli­ca­tions dom­i­nate.

The 20 pa­pers con­cern­ing health-re­lated is­sues are dis­trib­uted across 20 unique do­mains, ac­count­ing for 46 URLs. The 27 pa­pers deal­ing with en­vi­ron­men­tal is­sues can be found across 26 unique do­mains, ac­count­ing for 56 URLs.  Most of the iden­ti­fied pa­pers ex­ist in mul­ti­ple copies and have al­ready spread to sev­eral archives, repos­i­to­ries, and so­cial me­dia. It would be dif­fi­cult, or im­pos­si­ble, to re­move them from the sci­en­tific record.

As ap­par­ent from Table 2, GPT-fabricated, ques­tion­able pa­pers are seep­ing into most parts of the on­line re­search in­fra­struc­ture for schol­arly com­mu­ni­ca­tion. Platforms on which iden­ti­fied pa­pers have ap­peared in­clude ResearchGate, ORCiD, Journal of Population Therapeutics and Clinical Pharmacology (JPTCP), Easychair, Frontiers, the Institute of Electrical and Electronics Engineer (IEEE), and X/Twitter. Thus, even if they are re­tracted from their orig­i­nal source, it will prove very dif­fi­cult to track, re­move, or even just mark them up on other plat­forms. Moreover, un­less reg­u­lated, Google Scholar will en­able their con­tin­ued and most likely un­la­beled dis­cov­er­abil­ity.

A word rain vi­su­al­iza­tion (Centre for Digital Humanities Uppsala, 2023), which com­bines word promi­nences through TF-IDF scores with se­man­tic sim­i­lar­ity of the full texts of our sam­ple of GPT-generated ar­ti­cles that fall into the Environment” and Health” cat­e­gories, re­flects the two cat­e­gories in ques­tion. However, as can be seen in Figure 1, it also re­veals over­lap and sub-ar­eas. The y-axis shows word promi­nences through word po­si­tions and font sizes, while the x-axis in­di­cates se­man­tic sim­i­lar­ity. In ad­di­tion to a cer­tain amount of over­lap, this re­veals sub-ar­eas, which are best de­scribed as two dis­tinct events within the word rain. The event on the left bun­dles terms re­lated to the de­vel­op­ment and man­age­ment of health and health­care with challenges,” impact,” and potential of ar­ti­fi­cial in­tel­li­gence”emerg­ing as se­man­ti­cally re­lated terms. Terms re­lated to re­search in­fra­struc­tures, en­vi­ron­men­tal, epis­temic, and tech­no­log­i­cal con­cepts are arranged fur­ther down in the same event (e.g., system,” climate,” understanding,” knowledge,” learning,” education,” sustainable”). A sec­ond dis­tinct event fur­ther to the right bun­dles terms as­so­ci­ated with fish farm­ing and aquatic med­i­c­i­nal plants, high­light­ing the pres­ence of an aqua­cul­ture clus­ter.  Here, the promi­nence of groups of terms such as used,” model,” -based,” and traditional” sug­gests the pres­ence of ap­plied re­search on these top­ics. The two events mak­ing up the word rain vi­su­al­iza­tion, are linked by a less dom­i­nant but over­lap­ping clus­ter of terms re­lated to energy” and water.”

The bar chart of the terms in the pa­per sub­set (see Figure 2) com­ple­ments the word rain vi­su­al­iza­tion by de­pict­ing the most promi­nent terms in the full texts along the y-axis. Here, word promi­nences across health and en­vi­ron­ment pa­pers are arranged de­scend­ingly, where val­ues out­side paren­the­ses are TF-IDF val­ues (relative fre­quen­cies) and val­ues in­side paren­the­ses are raw term fre­quen­cies (absolute fre­quen­cies).

Finding 3: Google Scholar pre­sents re­sults from qual­ity-con­trolled and non-con­trolled ci­ta­tion data­bases on the same in­ter­face, pro­vid­ing un­fil­tered ac­cess to GPT-fabricated ques­tion­able pa­pers.

Google Scholar’s cen­tral po­si­tion in the pub­licly ac­ces­si­ble schol­arly com­mu­ni­ca­tion in­fra­struc­ture, as well as its lack of stan­dards, trans­parency, and ac­count­abil­ity in terms of in­clu­sion cri­te­ria, has po­ten­tially se­ri­ous im­pli­ca­tions for pub­lic trust in sci­ence. This is likely to ex­ac­er­bate the al­ready-known po­ten­tial to ex­ploit Google Scholar for ev­i­dence hack­ing (Tripodi et al., 2023) and will have im­pli­ca­tions for any at­tempts to re­tract or re­move fraud­u­lent pa­pers from their orig­i­nal pub­li­ca­tion venues. Any so­lu­tion must con­sider the en­tirety of the re­search in­fra­struc­ture for schol­arly com­mu­ni­ca­tion and the in­ter­play of dif­fer­ent ac­tors, in­ter­ests, and in­cen­tives.

We searched and scraped Google Scholar us­ing the Python li­brary Scholarly (Cholewiak et al., 2023) for pa­pers that in­cluded spe­cific phrases known to be com­mon re­sponses from ChatGPT and sim­i­lar ap­pli­ca­tions with the same un­der­ly­ing model (GPT3.5 or GPT4): as of my last knowl­edge up­date” and/​or I don’t have ac­cess to real-time data” (see Appendix A). This fa­cil­i­tated the iden­ti­fi­ca­tion of pa­pers that likely used gen­er­a­tive AI to pro­duce text, re­sult­ing in 227 re­trieved pa­pers. The pa­pers’ bib­li­o­graphic in­for­ma­tion was au­to­mat­i­cally added to a spread­sheet and down­loaded into Zotero.

We em­ployed mul­ti­ple cod­ing (Barbour, 2001) to clas­sify the pa­pers based on their con­tent. First, we jointly as­sessed whether the pa­per was sus­pected of fraud­u­lent use of ChatGPT (or sim­i­lar) based on how the text was in­te­grated into the pa­pers and whether the pa­per was pre­sented as orig­i­nal re­search out­put or the AI tool’s role was ac­knowl­edged. Second, in an­a­lyz­ing the con­tent of the pa­pers, we con­tin­ued the mul­ti­ple cod­ing by clas­si­fy­ing the fraud­u­lent pa­pers into four cat­e­gories iden­ti­fied dur­ing an ini­tial round of analy­sis—health, en­vi­ron­ment, com­put­ing, and oth­ers—and then de­ter­min­ing which sub­jects were most af­fected by this is­sue (see Table 1). Out of the 227 re­trieved pa­pers, 88 pa­pers were writ­ten with le­git­i­mate and/​or de­clared use of GPTs (i.e., false pos­i­tives, which were ex­cluded from fur­ther analy­sis), and 139 pa­pers were writ­ten with un­de­clared and/​or fraud­u­lent use (i.e., true pos­i­tives, which were in­cluded in fur­ther analy­sis). The mul­ti­ple cod­ing was con­ducted jointly by all au­thors of the pre­sent ar­ti­cle, who col­lab­o­ra­tively coded and cross-checked each oth­er’s in­ter­pre­ta­tion of the data si­mul­ta­ne­ously in a shared spread­sheet file. This was done to sin­gle out cod­ing dis­crep­an­cies and set­tle cod­ing dis­agree­ments, which in turn en­sured method­olog­i­cal thor­ough­ness and an­a­lyt­i­cal con­sen­sus (see Barbour, 2001). Redoing the cat­e­gory cod­ing later based on our es­tab­lished cod­ing sched­ule, we achieved an in­ter­coder re­li­a­bil­ity (Cohen’s kappa) of 0.806 af­ter erad­i­cat­ing ob­vi­ous dif­fer­ences.

The rank­ing al­go­rithm of Google Scholar pri­or­i­tizes highly cited and older pub­li­ca­tions (Martín-Martín et al., 2016). Therefore, the po­si­tion of the ar­ti­cles on the search en­gine re­sults pages was not par­tic­u­larly in­for­ma­tive, con­sid­er­ing the rel­a­tively small num­ber of re­sults in com­bi­na­tion with the re­cency of the pub­li­ca­tions. Only the query as of my last knowl­edge up­date” had more than two search en­gine re­sult pages. On those, ques­tion­able ar­ti­cles with un­de­clared use of GPTs were evenly dis­trib­uted across all re­sult pages (min: 4, max: 9, mode: 8), with the pro­por­tion of un­de­clared use be­ing slightly higher on av­er­age on later search re­sult pages.

To un­der­stand how the pa­pers mak­ing fraud­u­lent use of gen­er­a­tive AI were dis­sem­i­nated on­line, we pro­gram­mat­i­cally searched for the pa­per ti­tles (with ex­act string match­ing) in Google Search from our lo­cal IP ad­dress (see Appendix B) us­ing the google­search–python li­brary(Vikra­ma­ditya, 2020). We man­u­ally ver­i­fied each search re­sult to fil­ter out false pos­i­tives—re­sults that were not re­lated to the pa­per—and then com­piled the most promi­nent URLs by field. This en­abled the iden­ti­fi­ca­tion of other plat­forms through which the pa­pers had been spread. We did not, how­ever, in­ves­ti­gate whether copies had spread into SciHub or other shadow li­braries, or if they were ref­er­enced in Wikipedia.

We used de­scrip­tive sta­tis­tics to count the preva­lence of the num­ber of GPT-fabricated pa­pers across top­ics and venues and top do­mains by sub­ject. The pan­das soft­ware li­brary for the Python pro­gram­ming lan­guage (The pan­das de­vel­op­ment team, 2024) was used for this part of the analy­sis. Based on the mul­ti­ple cod­ing, pa­per oc­cur­rences were counted in re­la­tion to their cat­e­gories, di­vided into in­dexed jour­nals, non-in­dexed jour­nals, stu­dent pa­pers, and work­ing pa­pers. The schemes, sub­do­mains, and sub­di­rec­to­ries of the URL strings were fil­tered out while top-level do­mains and sec­ond-level do­mains were kept, which led to nor­mal­iz­ing do­main names. This, in turn, al­lowed the count­ing of do­main fre­quen­cies in the en­vi­ron­ment and health cat­e­gories. To dis­tin­guish word promi­nences and mean­ings in the en­vi­ron­ment and health-re­lated GPT-fabricated ques­tion­able pa­pers, a se­man­ti­cally-aware word cloud vi­su­al­iza­tion was pro­duced through the use of a word rain (Centre for Digital Humanities Uppsala, 2023) for full-text ver­sions of the pa­pers. Font size and y-axis po­si­tions in­di­cate word promi­nences through TF-IDF scores for the en­vi­ron­ment and health pa­pers (also vi­su­al­ized in a sep­a­rate bar chart with raw term fre­quen­cies in paren­the­ses), and words are po­si­tioned along the x-axis to re­flect se­man­tic sim­i­lar­ity (Skeppstedt et al., 2024), with an English Word2vec skip gram model space (Fares et al., 2017). An English stop word list was used, along with a man­u­ally pro­duced list in­clud­ing terms such as https,” volume,” or years.”

Antkare, I. (2020). Ike Antkare, his pub­li­ca­tions, and those of his dis­ci­ples. In M. Biagioli & A. Lippman (Eds.), Gaming the met­rics (pp. 177–200). The MIT Press. https://​doi.org/​10.7551/​mit­press/​11087.003.0018

Barbour, R. S. (2001). Checklists for im­prov­ing rigour in qual­i­ta­tive re­search: A case of the tail wag­ging the dog? BMJ, 322(7294), 1115–1117. https://​doi.org/​10.1136/​bmj.322.7294.1115

Bom, H.-S. H. (2023). Exploring the op­por­tu­ni­ties and chal­lenges of ChatGPT in aca­d­e­mic writ­ing: A round­table dis­cus­sion. Nuclear Medicine and Molecular Imaging, 57(4), 165–167. https://​doi.org/​10.1007/​s13139-023-00809-2

Cabanac, G., & Labbé, C. (2021). Prevalence of non­sen­si­cal al­go­rith­mi­cally gen­er­ated pa­pers in the sci­en­tific lit­er­a­ture. Journal of the Association for Information Science and Technology, 72(12), 1461–1476. https://​doi.org/​10.1002/​asi.24495

Cabanac, G., Labbé, C., & Magazinov, A. (2021). Tortured phrases: A du­bi­ous writ­ing style emerg­ing in sci­ence. Evidence of crit­i­cal is­sues af­fect­ing es­tab­lished jour­nals. arXiv. https://​doi.org/​10.48550/​arXiv.2107.06751

Carrion, M. L. (2018). You need to do your re­search”: Vaccines, con­testable sci­ence, and ma­ter­nal epis­te­mol­ogy. Public Understanding of Science, 27(3), 310–324. https://​doi.org/​10.1177/​0963662517728024

Chinn, S., & Hasell, A. (2023). Support for doing your own re­search” is as­so­ci­ated with COVID-19 mis­per­cep­tions and sci­en­tific mis­trust. Harvard Kennedy School (HSK) Misinformation Review, 4(3). https://​doi.org/​10.37016/​mr-2020-117

Cholewiak, S. A., Ipeirotis, P., Silva, V., & Kannawadi, A. (2023). SCHOLARLY: Simple ac­cess to Google Scholar au­thors and ci­ta­tion us­ing Python (1.5.0) [Computer soft­ware]. https://​doi.org/​10.5281/​zen­odo.5764801

Dadkhah, M., Lagzian, M., & Borchardt, G. (2017). Questionable pa­pers in ci­ta­tion data­bases as an is­sue for lit­er­a­ture re­view. Journal of Cell Communication and Signaling, 11(2), 181–185. https://​doi.org/​10.1007/​s12079-016-0370-6

Dadkhah, M., Oermann, M. H., Hegedüs, M., Raman, R., & Dávid, L. D. (2023). Detection of fake pa­pers in the era of ar­ti­fi­cial in­tel­li­gence. Diagnosis, 10(4), 390–397. https://​doi.org/​10.1515/​dx-2023-0090

Dunlap, R. E., & Brulle, R. J. (2020). Sources and am­pli­fiers of cli­mate change de­nial. In D. C. Holmes & L. M. Richardson (Eds.), Research hand­book on com­mu­ni­cat­ing cli­mate change (pp. 49–61). Edward Elgar Publishing. https://​doi.org/​10.4337/​9781789900408.00013

Fares, M., Kutuzov, A., Oepen, S., & Velldal, E. (2017). Word vec­tors, reuse, and replic­a­bil­ity: Towards a com­mu­nity repos­i­tory of large-text re­sources. In J. Tiedemann & N. Tahmasebi (Eds.), Proceedings of the 21st Nordic Conference on Computational Linguistics (pp. 271–276). Association for Computational Linguistics. https://​aclan­thol­ogy.org/​W17-0237

Google Scholar Help. (n.d.). Inclusion guide­lines for web­mas­ters. https://​scholar.google.com/​intl/​en/​scholar/​in­clu­sion.html

Gusenbauer, M., & Haddaway, N. R. (2020). Which aca­d­e­mic search sys­tems are suit­able for sys­tem­atic re­views or meta-analy­ses? Evaluating re­trieval qual­i­ties of Google Scholar, PubMed, and 26 other re­sources. Research Synthesis Methods, 11(2), 181–217.  https://​doi.org/​10.1002/​jrsm.1378

Haider, J., & Åström, F. (2017). Dimensions of trust in schol­arly com­mu­ni­ca­tion: Problematizing peer re­view in the af­ter­math of John Bohannon’s Sting” in sci­ence. Journal of the Association for Information Science and Technology, 68(2), 450–467. https://​doi.org/​10.1002/​asi.23669

Huang, J., & Tan, M. (2023). The role of ChatGPT in sci­en­tific com­mu­ni­ca­tion: Writing bet­ter sci­en­tific re­view ar­ti­cles. American Journal of Cancer Research, 13(4), 1148–1154. https://​www.ncbi.nlm.nih.gov/​pmc/​ar­ti­cles/​PM­C10164801/

Jones, N. (2024). How jour­nals are fight­ing back against a wave of ques­tion­able im­ages. Nature, 626(8000), 697–698. https://​doi.org/​10.1038/​d41586-024-00372-6

Kitamura, F. C. (2023). ChatGPT is shap­ing the fu­ture of med­ical writ­ing but still re­quires hu­man judg­ment. Radiology, 307(2), e230171. https://​doi.org/​10.1148/​ra­diol.230171

Littell, J. H., Abel, K. M., Biggs, M. A., Blum, R. W., Foster, D. G., Haddad, L. B., Major, B., Munk-Olsen, T., Polis, C. B., Robinson, G. E., Rocca, C. H., Russo, N. F., Steinberg, J. R., Stewart, D. E., Stotland, N. L., Upadhyay, U. D., & Ditzhuijzen, J. van. (2024). Correcting the sci­en­tific record on abor­tion and men­tal health out­comes. BMJ, 384, e076518. https://​doi.org/​10.1136/​bmj-2023-076518

Lund, B. D., Wang, T., Mannuru, N. R., Nie, B., Shimray, S., & Wang, Z. (2023). ChatGPT and a new aca­d­e­mic re­al­ity: Artificial Intelligence-written re­search pa­pers and the ethics of the large lan­guage mod­els in schol­arly pub­lish­ing. Journal of the Association for Information Science and Technology, 74(5), 570–581. https://​doi.org/​10.1002/​asi.24750

Martín-Martín, A., Orduna-Malea, E., Ayllón, J. M., & Delgado López-Cózar, E. (2016). Back to the past: On the shoul­ders of an aca­d­e­mic search en­gine gi­ant. Scientometrics, 107, 1477–1487. https://​doi.org/​10.1007/​s11192-016-1917-2

Martín-Martín, A., Thelwall, M., Orduna-Malea, E., & Delgado López-Cózar, E. (2021). Google Scholar, Microsoft Academic, Scopus, Dimensions, Web of Science, and OpenCitations’ COCI: A mul­ti­dis­ci­pli­nary com­par­i­son of cov­er­age via ci­ta­tions. Scientometrics, 126(1), 871–906. https://​doi.org/​10.1007/​s11192-020-03690-4

Simon, F. M., Altay, S., & Mercier, H. (2023). Misinformation re­loaded? Fears about the im­pact of gen­er­a­tive AI on mis­in­for­ma­tion are overblown. Harvard Kennedy School (HKS) Misinformation Review, 4(5). https://​doi.org/​10.37016/​mr-2020-127

Skeppstedt, M., Ahltorp, M., Kucher, K., & Lindström, M. (2024). From word clouds to Word Rain: Revisiting the clas­sic word cloud to vi­su­al­ize cli­mate change texts. Information Visualization, 23(3), 217–238. https://​doi.org/​10.1177/​14738716241236188

Stokel-Walker, C. (2024, May 1.). AI Chatbots Have Thoroughly Infiltrated Scientific Publishing. Scientific American. https://​www.sci­en­tifi­camer­i­can.com/​ar­ti­cle/​chat­bots-have-thor­oughly-in­fil­trated-sci­en­tific-pub­lish­ing/

Subbaraman, N. (2024, May 14). Flood of fake sci­ence forces mul­ti­ple jour­nal clo­sures: Wiley to shut­ter 19 more jour­nals, some tainted by fraud. The Wall Street Journal. https://​www.wsj.com/​sci­ence/​aca­d­e­mic-stud­ies-re­search-pa­per-mills-jour­nals-pub­lish­ing-f5a3d4bc

Thorp, H. H. (2023). ChatGPT is fun, but not an au­thor. Science, 379(6630), 313–313. https://​doi.org/​10.1126/​sci­ence.adg7879

Tripodi, F. B., Garcia, L. C., & Marwick, A. E. (2023). Do your own re­search’: Affordance ac­ti­va­tion and dis­in­for­ma­tion spread. Information, Communication & Society, 27(6), 1212–1228. https://​doi.org/​10.1080/​1369118X.2023.2245869

This re­search has been sup­ported by Mistra, the Swedish Foundation for Strategic Environmental Research, through the re­search pro­gram Mistra Environmental Communication (Haider, Ekström, Rödl) and the Marcus and Amalia Wallenberg Foundation [2020.0004] (Söderström).

The re­search de­scribed in this ar­ti­cle was car­ried out un­der Swedish leg­is­la­tion. According to the rel­e­vant EU and Swedish leg­is­la­tion (2003:460) on the eth­i­cal re­view of re­search in­volv­ing hu­mans (“Ethical Review Act”), the re­search re­ported on here is not sub­ject to au­tho­riza­tion by the Swedish Ethical Review Authority (“etikprövningsmyndigheten”) (SRC, 2017).

This is an open ac­cess ar­ti­cle dis­trib­uted un­der the terms of the Creative Commons Attribution License, which per­mits un­re­stricted use, dis­tri­b­u­tion, and re­pro­duc­tion in any medium, pro­vided that the orig­i­nal au­thor and source are prop­erly cred­ited.

All data needed to repli­cate this study are avail­able at the Harvard Dataverse: https://​doi.org/​10.7910/​DVN/​WU­VD8X

The au­thors wish to thank two anony­mous re­view­ers for their valu­able com­ments on the ar­ti­cle man­u­script as well as the ed­i­to­r­ial group of Harvard Kennedy School (HKS) Misinformation Review for their thought­ful feed­back and in­put.

The al­go­rith­mic knowl­edge gap within and be­tween coun­tries: Implications for com­bat­ting mis­in­for­ma­tion

While un­der­stand­ing how so­cial me­dia al­go­rithms op­er­ate is es­sen­tial to pro­tect one­self from mis­in­for­ma­tion, such un­der­stand­ing is of­ten un­evenly dis­trib­uted. This study ex­plores the al­go­rith­mic knowl­edge gap both within and be­tween coun­tries, us­ing na­tional sur­veys in the United States (N = 1,415), the United Kingdom (N = 1,435), South Korea (N = 1,798), and Mexico (N = 784).

Keep Reading

Stochastic lies: How LLM-powered chat­bots deal with Russian dis­in­for­ma­tion about the war in Ukraine

Research on dig­i­tal mis­in­for­ma­tion has turned its at­ten­tion to large lan­guage mod­els (LLMs) and their han­dling of sen­si­tive po­lit­i­cal top­ics. Through an AI au­dit, we an­a­lyze how three LLM-powered chat­bots (Perplexity, Google Bard, and Bing Chat) gen­er­ate con­tent in re­sponse to the prompts linked to com­mon Russian dis­in­for­ma­tion nar­ra­tives about the war in Ukraine.

Keep Reading

...

Read the original on misinforeview.hks.harvard.edu »

5 189 shares, 43 trendiness

Serving AI From The Basement

AI from The Basement: My lat­est side pro­ject, a ded­i­cated LLM server pow­ered by 8x RTX 3090 Graphic Cards, boast­ing a to­tal of 192GB of VRAM. I built this with run­ning Meta’s Llamma-3.1 405B in mind.

This blog­post was orig­i­nally posted on my LinkedIn pro­file in July 2024.

Backstory: Sometime in March I found my­self strug­gling to keep up with the mere 48GB of VRAM I had been re­ly­ing on for al­most a year in my LLMs ex­per­i­men­ta­tions. So, in a geeky-yet-styl­ish way, I de­cided to spend my money to build this thing of beauty. Questions swirled: Which CPU/Platform to buy? Does mem­ory speed re­ally mat­ter? And why the more PCIe Lanes we have the bet­ter? Why 2^n num­ber of GPUs mat­ter in multi-GPU node setup (Tensor Parallelism, any­one?) How many GPUs, and how can I get all the VRAM in the world? Why are Nvidia cards so ex­pen­sive and why did­n’t I in­vest in their stock ear­lier? What in­fer­ence en­gine to use (hint: it’s not just llama.cpp and not al­ways the most well-doc­u­mented op­tion)?

After so many hours of re­search, I de­cided on the fol­low­ing plat­form:

* Asrock Rack ROMED8-2T moth­er­board with 7x PCIe 4.0x16 slots and 128 lanes of PCIe

* A mere trio of 1600-watt power sup­ply units to keep every­thing run­ning smoothly

* 8x RTX 3090 GPUs with 4x NVLinks, en­abling a blis­ter­ing 112GB/s data trans­fer rate be­tween each pair

Now that I kinda have every­thing in or­der, I’m work­ing on a se­ries of blog posts that will cover the en­tire jour­ney, from build­ing this be­he­moth to avoid­ing costly pit­falls. Topics will in­clude:

* The chal­lenges of as­sem­bling this sys­tem: from drilling holes in metal frames and adding 30amp 240volt break­ers, to bend­ing CPU socket pins (don’t try this at home, kids!).

* Why PCIe Risers suck and the im­por­tance of us­ing SAS Device Adapters, Redrivers, and Retimers for er­ror-free PCIe con­nec­tions.

* NVLink speeds, PCIe lanes band­width and VRAM trans­fer speeds, and Nvidia’s de­ci­sion to block P2P na­tive PCIe band­width on the soft­ware level.

* Benchmarking in­fer­ence en­gines like TensorRT-LLM, vLLM, and Aphrodite Engine, all of which sup­port Tensor Parallelism.

* Training and fine-tun­ing your own LLM.

P. S. I’m sit­ting here star­ing at those GPUs, and I just can’t help but think how wild tech progress has been. I re­mem­ber be­ing so ex­cited to get a 60GB HDD back in 2004. I mean, all the movies and games I could store?! Fast for­ward 20 years, and now I’ve got more than triple that stor­age ca­pac­ity in just one ma­chine’s graphic cards… It makes me think, what will we be do­ing in an­other 20 years?!

Anyway, that’s why I’m do­ing this pro­ject. I wanna help cre­ate some of the cool stuff that’ll be around in the fu­ture. And who knows, maybe some­one will look back on my work and be like haha, re­mem­ber when we thought 192GB of VRAM was a lot?”

...

Read the original on ahmadosman.com »

6 186 shares, 10 trendiness

microui+fenster=small gui

Sometimes I just want to put pix­els on a screen. I don’t want to think about SDL this or OpenGL that—I just want to draw my pixel buffer and be done.

fen­ster, a tiny 2D can­vas li­brary by Serge Zaitsev, does just that. It’s a tiny drop-in header-only C/C++ file that weighs no more than 400 LOC of pretty read­able code. It works with WinAPI, Cocoa, and X11. And it han­dles key­board and mouse in­put, too!

Sometimes I want to do just a lit­tle more than draw pix­els—maybe have a menu, some but­tons, ren­der text—and I don’t want to com­pletely DIY but I still don’t want to think about SDL.

Fortunately, mi­croui by rxi ex­ists and han­dles the trans­la­tion from GUI el­e­ments into a sim­ple re­tar­getable draw­ing byte­code. It’s sim­i­larly a small, drop-in li­brary, weigh­ing only 1500 LOC.

Unfortunately, the demo pro­gram uses SDL as a back­end for the byte­code. I’d been mean­ing to see if I could in­stead use fen­ster but un­der­stand­ing what a quad” was or what glScissor” did seemed in­tim­i­dat­ing. The pro­ject went nowhere.

Then, as usual, Kartik and I had a small ar­gu­ment and that re­sulted in us cre­at­ing the fen­ster back­end for mi­croui! I sent him a skele­ton to show what I wanted to do and he did most of the heavy lift­ing for the OpenGL-like parts.

The re­sult is a less than 250 LOC file that binds mi­croui to fen­ster. It’s in­spired by the SDL ren­derer demo, but with a cou­ple of added func­tions to ab­stract away keys and mouse but­tons. It’s hacky and there’s some stuff we still don’t un­der­stand, but it works! And by works” I mean draws the ex­pected demo win­dows, han­dles mouse hover and click, and han­dles key­board in­put.

* How to de­ter­mine when to ren­der from the tex­ture and when from the pro­vided

draw­ing com­mand’s color

* Mod keys like so that, for ex­am­ple, + ren­ders

Check it out here. It’s de­signed to all be dropped di­rectly into your pro­ject.

This blog is open source.

See an er­ror? Go ahead and

pro­pose a change.

...

Read the original on bernsteinbear.com »

7 177 shares, 8 trendiness

Asking the wrong questions — Benedict Evans

He built the glider, in­ci­den­tally, with a gift of $5 sent to him by an American Civil War vet­eran af­ter a school es­say he’d writ­ten about Robert E. Lee was pub­lished in the lo­cal pa­per.  The war, af­ter all, had ended only 44 years ear­lier.

In 1946, by which time he’d be­come a no­table writer of sci­ence fic­tion, he pub­lished a story called A Logic named Joe’, which de­scribed a global com­puter net­work with servers and ter­mi­nals, that starts giv­ing peo­ple the in­for­ma­tion that it thinks they ought to know as op­posed to wait­ing for them to search for it - the Singularity, if you like, or maybe just Alexa. He also, as I re­call, pre­dicted re­al­ity TV some­where.

And yet, de­spite pre­dict­ing half of our world, as a fa­ther in the 1950s he could not imag­ine why his daugh­ter - my mother - wanted to work.

This is­n’t an un­com­mon ob­ser­va­tion - plenty of peo­ple have pointed out that vin­tage scifi is full of rock­et­ships but all the pi­lots are men. 1950s scifi shows 1950s so­ci­ety, but with ro­bots. Mean­while, the in­ter­stel­lar lin­ers have pa­per tick­ets, that you queue up to buy. With fun­da­men­tal tech­nol­ogy change, we don’t so much get our pre­dic­tions wrong as make pre­dic­tions about the wrong things. (And, of course, we now have nei­ther trol­leys nor per­sonal glid­ers.)

I was re­minded of this photo re­cently when I came across a RAND long-range fore­cast­ing’ study, from 1964. The au­thors polled a range of ex­perts on what the key de­vel­op­ments in com­ing decades would be and when they’d hap­pen. Fields ad­dressed in­cluded space flight and med­i­cine, but the most in­ter­est­ing in this con­text is what was then called automation’ (the past tended to de­scribe as automatic’ what we would now call computers’). The dou­ble-page spread be­low shows the con­clu­sions (click to en­large).

...

Read the original on www.ben-evans.com »

8 174 shares, 14 trendiness

have ‘hobby’ apps become the new social networks?

Singletons look­ing to shack up with their soul­mates on­line have re­lied on two key routes in the past decade or so: take your chance on dat­ing apps, or be­friend as many mu­tu­als as pos­si­ble on so­cial me­dia, in the hope that you find the one.

But some have found a third way, us­ing ser­vices such as Goodreads and Strava to meet part­ners with whom they hope to spend the rest of their lives. Those cou­ples proved to be trend­set­ters. So-called hobby apps — built around ac­tivites such as run­ning, read­ing or movie-go­ing — are hav­ing a mo­ment, and not just for love.

It’s all part of a broader move­ment as peo­ple grow tired of the digital town square” of­fered on Twitter/X and other so­cial me­dia plat­forms. At a time when many are aban­don­ing Elon Musk’s so­cial net­work over his at­ti­tude to free speech” (which some see as amplifying hate”), com­pet­ing apps such as Bluesky and Threads are hav­ing a resur­gence in users.

Whereas some users are switch­ing to Twitter repli­cas, oth­ers are seek­ing refuge in apps that promise to con­nect them to peo­ple with whom they have com­mon in­ter­ests. Running app Strava has seen user num­bers grow 20% in a year, ac­cord­ing to dig­i­tal mar­ket in­tel­li­gence firm Sensor Tower. That suc­cess has led it to add a mes­sag­ing tool for users to keep in touch, along­side doc­u­ment­ing their work­outs. Knitting so­cial net­work Ravelry, which is ac­cessed through a num­ber of third-party apps, has more than 9 mil­lion users. Goodreads has clocked up more than 150 mil­lion mem­bers.

Letterboxd, a film com­pletist’s dream app, where you can tick off the lat­est movies you’ve seen, and re­view and rate them, along­side other cinephiles and the oc­ca­sional fa­mous ac­tor or di­rec­tor, has gone from hav­ing 1.8 mil­lion users world­wide in March 2020 to more than 14 mil­lion users this sum­mer. The app has grown its monthly ac­tive user­base 55% in a year, ac­cord­ing to Sensor Tower.

We re­ally work hard on the tone and voice of every­thing we do, from com­mu­nity pol­icy through to ed­i­to­r­ial through to our so­cial, to guide folks in terms of how we want them to be around Letterboxd,” says Gemma Gracewood, the ap­p’s ed­i­tor-in-chief. We talk about movies.”

And that’s re­fresh­ing in a world where pol­i­tics and cul­ture wars are be­ing pushed at us through al­go­rithms. Social me­dia users have been turn­ing to­wards niche apps and spaces for a long time,” says Jess Maddox, as­sis­tant pro­fes­sor in dig­i­tal me­dia at the University of Alabama. Paradoxically, as ma­jor plat­forms such as Twitter/X, YouTube, TikTok and Instagram push more al­go­rith­mi­cally cu­rated feeds, users may be less ex­posed to the con­tent they want to see.”

The cosy na­ture of hobby apps, and the way they’re set up to share pas­sions and pas­times, means they’re an al­to­gether gen­tler place than the rough-and-tum­ble racism you can en­counter on X with an er­rant tap. It’s a way for peo­ple to con­nect via com­mon in­ter­ests,” says Dr Carolina Are, a so­cial me­dia re­searcher at the Centre for Digital Citizens at Northumbria University. It all means that the apps can spend less time, ef­fort and money on con­tent mod­er­a­tion — as­sum­ing that ci­vil­ity will be supreme — and in­stead fo­cus on mak­ing the over­all ex­pe­ri­ence bet­ter.

The thing about Letterboxd is there is­n’t a central town square’ like there is on X; it’s a very sin­gle-chan­nel con­ver­sa­tion,” says Gracewood. Comments hap­pen in-line — sim­i­lar to those on the Guardian and Observer web­sites — mean­ing that it’s less pos­si­ble to per­for­ma­tively re­post con­tent into a main feed in or­der to en­cour­age a pile-on. Similar sit­u­a­tions ex­ist on plat­forms such as Goodreads and Strava, where it’s pos­si­ble to com­mu­ni­cate with and mes­sage oth­ers, but not to pub­licly shame them eas­ily.

Because hobby apps are nicer places to ex­ist, peo­ple spend more time on them — and they can even­tu­ally turn into ser­vices that are more than ad­ver­tised. That in­cludes find­ing like-minded peo­ple with whom you’d want to spend your time ro­man­ti­cally.

One rea­son that peo­ple may be start­ing to find love on apps not ex­plic­itly de­signed for that pur­pose is be­cause the ex­pec­ta­tions are lower — and as such, the at­mos­phere is less sex­u­ally charged. Dating apps seem like a dat­ing su­per­mar­ket, and some­thing you have to do if you want to have some kind of con­nec­tion,” says Are.

She points out that while dat­ing apps are try­ing to shed their shal­low rep­u­ta­tion as places to hook up, they still lead with gi­ant pic­tures of users to gauge com­pat­i­bil­ity. A lot of peo­ple are be­com­ing quite dis­il­lu­sioned with the fact you’re judged on looks,” she says. In gen­eral, there is a bit of a dis­il­lu­sion­ment with plat­form-fa­cil­i­tated dat­ing cul­ture, be­cause it seems very im­per­sonal. It’s all fa­cil­i­tated by an al­go­rithm. And it seems not to serve peo­ple very well.”

Hobby apps’ gain is dat­ing apps’ loss, based on re­cent fi­nan­cial fig­ures from Match Group, the com­pany that op­er­ates the best-known dat­ing ser­vices, in­clud­ing Tinder and Hinge. From an October 2021 peak of more than $175 a share, Match is now trad­ing at nearer $36 a share. The firm an­nounced job cuts of 6% in July due to dwin­dling pay­ing users.

But the rot is­n’t lim­ited to the big beasts in the game. An analy­sis of the top 200 dat­ing and so­cial con­nec­tion apps by Deutsche Bank — en­ti­tled Dating: The Dating Debate — Have We Hit Saturation Levels? — sug­gests that global down­loads have plateaued.

It also helps that hobby apps feel like a more co­he­sive, kinder com­mu­nity. That’s not just be­cause the peo­ple are kinder: Letterboxd has a set of mod­er­a­tors who are tasked with tak­ing a zero tol­er­ance” ap­proach to overt or coded hate speech, racism, ho­mo­pho­bia, white su­premacy, trans­pho­bia or any other mar­gin­al­is­ing at­ti­tudes.

Letterboxd has fewer than 10 staff mod­er­at­ing con­tent, says Gracewood, and gen­er­ally they don’t need to in­ter­vene of­ten. I can’t speak to whether we’ve ben­e­fited from cul­tural and mis­sion shifts at other so­cial me­dia plat­forms, but I can say that from day one, we have al­ways been very, very con­cerned with what cre­at­ing a com­mu­nity on­line looks like, and how to keep it feel­ing free, good and nice.”

Whether that light-touch ap­proach com­pared with so­cial me­dia apps — TikTok em­ploys 40,000 con­tent mod­er­a­tors world­wide, while Meta re­port­edly has 15,000 — will last is yet to be seen. It seems like every app is born, is­n’t mod­er­ated, then some­thing bad hap­pens and it gets heav­ily mod­er­ated,” says Are. So maybe they [hobby apps] will have that tra­jec­tory as well.”

Chris Stokel-Walker is the au­thor of TikTok Boom: China’s Dynamite App and the Superpower Race for Social Media (Canbury Press, £9.99). To sup­port the Guardian and Observer, or­der your copy at guardian­book­shop.com. Delivery charges may ap­ply

...

Read the original on www.theguardian.com »

9 160 shares, 26 trendiness

Muscular imagination

When I peer into the far reaches of sci­ence fic­tional imag­i­na­tion, way out be­yond the easy extrap­o­la­tions and con­sen­sus fu­tures, be­yond the Blade Runners and the Star Treks, the name that looms largest is Iain M. Banks.

For those unfa­miliar with his work in this genre, I’ll tell you a lit­tle bit about the Culture nov­els and rec­om­mend a read­ing ap­proach. Then, for Banks be­gin­ners and de­voted Culturephiles alike, I’ll ex­plain why his fu­ture means so much to me.

What is the Culture? A civ­i­liza­tion. An agree­ment. The sub­ject of a collec­tion of books, writ­ten across decades, which of­fer clues and sug­ges­tions, glances and re­flec­tions. A big part of the fun of read­ing those books is assem­bling your own mo­saic. Here’s mine:

The Culture is a space­far­ing, free­wheeling ad­mix­ture of an­ar­chism and so­cial­ism. In most ways, it promises its cit­i­zens rad­i­cal, breath­taking free­dom … but in a few other ways, it re­quires their sub­mis­sion — to super­human sys­tems of plan­ning and man­u­fac­ture, the Culture’s in­ef­fa­ble Minds.

The Culture is a utopia: a fu­ture you might ac­tu­ally want to live in. It of­fers a co­her­ent po­lit­i­cal vi­sion. This is­n’t sub­tle or al­le­gor­i­cal; on the page, cit­i­zens of the Culture very fre­quently artic­u­late and de­fend their val­ues. (Their enthu­siasm for their own pol­i­tics is consid­ered an­noy­ing by most other civ­i­liza­tions.)

Coherent po­lit­i­cal vi­sion does­n’t re­quire a lot, just some sense of this is what we ought to do, yet it is ab­sent from plenty of sci­ence fic­tion that dwells only in the realm of the cau­tion­ary tale.

I don’t have much pa­tience left for that genre. I mean … we have been, at this point, am­ply cau­tioned.

Vision, on the other hand: I can’t get enough.

The Culture nov­els aren’t con­nected by an over­ar­ching plot, and there is no canon­i­cal read­ing or­der. For all my ap­pre­ci­a­tion: I have not even read all of them! If you search on­line, you’ll find plenty of pro­posed ap­proaches.

Here is mine, which is un­ortho­dox; call it a recipe for en­joy­ing the Culture. It pro­ceeds in three stages:

I very strongly be­lieve new read­ers ought to start with Player of Games. It is a capti­vating novel in its own right, and its intro­duc­tion to the Culture is smooth, al­most stealthy. It’s also the book I started with, and ob­vi­ously It Worked for Me, so I can’t help but rec­om­mend the same on-ramp.

For your sec­ond foray, you can choose ba­si­cally at ran­dom. I like Matter and Surface Detail. I do not like Consider Phlebas.

Here is the un­ortho­dox part: I don’t think it’s nec­es­sary, or even de­sir­able, to have read more than a cou­ple of Culture nov­els be­fore turn­ing to A Few Notes on the Culture, the post from Iain M. Banks that just … lays it all out there.

A Few Notes on the Culture is, for me, THE thrilling Culture doc­u­ment. It helps that it’s this odd sort of web samiz­dat — you are al­ways read­ing a mir­rored copy on some ran­dom web­site. The orig­i­nal was posted to a Usenet news­group in 1994!

I should say, I don’t gen­er­ally love raw world­build­ing” of this kind — RPG source­book ma­te­r­ial. This doc­u­ment is a bril­liant ex­cep­tion, be­cause the ideas are so big, so fresh, and so confi­dently artic­u­lated; and of course be­cause it’s Iain M. Banks be­hind them, his voice inim­itable, wry and win­ning.

Why not sim­ply be­gin with A Few Notes on the Culture, if it’s so great? Well, it IS raw world­build­ing, and even the best ex­em­plar of that genre ben­e­fits from nar­ra­tive con­text. Read it on its own, and it’s a wonky thought ex­per­i­ment. Read it af­ter a cou­ple of nov­els, and it’s a back­stage pass.

You ought to meet a char­ac­ter or two — hear from a few of the rol­lick­ing Minds, learn their won­der­ful names — be­fore you go be­hind the cur­tain.

There are, in sci­ence fic­tion, sev­eral close peers to Iain M. Banks, at least in terms of the scale of their sto­ry­telling. I think in partic­ular of Olaf Stapledon, his Last and First Men, which gal­lops across mil­lions of years; and of Cixin Liu, his se­ries start­ing with The Three-Body Problem, which bumps up against the death of the uni­verse. I like both of these au­thors, but/​and their fu­tures are cold and grim. You would­n’t call ei­ther one utopia.

So, I suppose it’s not just the scale of Iain M. Banks’s sto­ries that I want to praise, but their warmth. His megas­truc­tures over­flow with ap­peal­ing char­ac­ters pur­su­ing inter­esting pro­jects. Their voices are ironic and funny.

There’s no utopia with­out irony and hu­mor; this fact re­ally nar­rows the field.

In my novel Mr. Penumbra’s 24-Hour Bookstore, the am­bi­tious and bril­liant Kat Potente asks:

Kat straight­ens her shoul­ders. Okay, we’re go­ing to play. To start, imag­ine the fu­ture. The good fu­ture. No nu­clear bombs. Pretend you’re a sci­ence fic­tion writer.”

Go fur­ther. What’s the good fu­ture af­ter that?”

Star Trek. Transporters. You can go any­where.”

Kat shakes her head. It’s re­ally hard. And that’s, what, a thou­sand years? What comes af­ter that? What could pos­si­bly come af­ter that? Imag­i­na­tion runs out. But it makes sense, right? We prob­a­bly just imag­ine things based on what we al­ready know, and we run out of analo­gies in the thirty-first cen­tury.”

I’m try­ing hard to imag­ine an av­er­age day in the year 3012. I can’t even come up with a half-de­cent scene. Will peo­ple live in build­ings? Will they wear clothes? My imag­i­na­tion is al­most phys­i­cally strain­ing.

Fingers of thought are rak­ing the space be­hind the cush­ions, look­ing for loose ideas, find­ing noth­ing.

I have of­ten de­scribed imag­i­na­tion as a mus­cle — one that, like any other mus­cle, can be de­vel­oped.

Steady ex­po­sure to Star Trek gives you a mi­nor work­out, for sure; the bump of an imag­i­na­tive bi­cep. But there’s much fur­ther to go. You can read your way into some of it, and some of it, you have to dream up for your­self.

Even among elite ath­letes, there must be ti­tans: Schwarzeneg­gers strid­ing across the stage. (I con­jure body­builders be­cause I like the idea of these imag­i­na­tive mus­cles BULGING.) Iain M. Banks, who died in 2013, way too young, was Mr. Universe. Here was a great writer, sure; but here was an imag­i­na­tion un­matched.

He sim­ply pushed fur­ther and thought big­ger.

For me, the Culture is the stan­dard, so, for a long time, the chal­lenge has been im­plicit: can you, Sloan, imag­ine on that scale? And not just tech­ni­cally, but hu­manely — with warmth and irony?

I don’t get to Culture scale in Moonbound, but the plan — and there is a plan — is to ratchet up book by book, so my no­tional se­ries can cul­mi­nate in a feat that takes se­ri­ously the scale of the uni­verse, as we now un­der­stand it.

It’s eas­ier to write the de­feat than the vic­tory, is­n’t it? Easier to write the fail­ure than the suc­cess. For some rea­son, the suc­cess seems like it might be … bor­ing.

Iain M. Banks shows us the Culture har­ness­ing mat­ter and en­ergy on incred­ible scales. He tells us that cit­i­zens of the Culture live for hun­dreds of years; that death is gen­er­ally a choice. In these books, !

At first glance, this seems fa­tal to plot. Endless en­ergy, im­mor­tal­ity … aren’t these the GOALS of the story? Are we just talk­ing about heaven here? Heaven: which ought to be oc­cluded, un­know­able, un­sayable. Heaven: be­cause it’s bor­ing.

Turns out, no, it’s not bor­ing at all. Plot gal­lops on, even at the outer lim­its of mat­ter and en­ergy. Even at the far reaches of free­dom, the sto­ries are only just be­gin­ning.

In the writerly ret­i­cence to dra­ma­tize abun­dance, I detect hu­mil­ity — it re­quires se­ri­ous imag­i­na­tive mus­cle, be­yond what most folks are work­ing with — and I detect also cow­ardice. What if my utopia is­n’t good enough? What if I say, this is gonna be so great”, and read­ers re­ply, eh, does­n’t sound that great”?

Easier to con­jure some tyrant ma­chines, some fast-spread­ing plagues. Everybody can agree on those.

Plenty of read­ers might in­deed read the Culture nov­els and say, eh, does­n’t sound that great”. The point is, there is some­thing here to in­spect, and con­sider, and, sure, even re­ject. In these nov­els, Iain M. Banks hoists the imag­i­na­tive bur­den. He twirls it in the air. His mus­cles bulge. It’s amaz­ing to be­hold.

P. S. Culturephiles will note I’ve men­tioned only obiquely the Culture’s great­est aes­thetic bounty, the names of its ships. That’s be­cause they are ac­tu­ally not funny or inter­esting un­til you step in­side the magic cir­cle of the books, and be­gin to in­tuit the rules of the game. Of course, af­ter you’ve read one or two Culture nov­els, learn­ing new names be­comes a large and grow­ing frac­tion of the fun!

...

Read the original on www.robinsloan.com »

10 141 shares, 6 trendiness

ATC Hiker Photo Archive

Having your photo taken at the Appalachian Trail Conservancy (ATC) head­quar­ters in Harpers Ferry, West Virginia, has be­come a stan­dard rit­ual for those hik­ers in­tend­ing on walk­ing the en­tire A. T. One of the func­tions of the ATC, as the lead or­ga­ni­za­tion in man­ag­ing and pro­tect­ing the A.T., is to main­tain the of­fi­cial 2,000-miler reg­istry of all those who have com­pleted the A.T. Therefore, hav­ing a photo taken here makes many hik­ers feel as though their hikes have gained of­fi­cial recog­ni­tion.

Thanks to a gen­er­ous grant from the Quimby Family Foundation and the work of ded­i­cated vol­un­teers of the A. T. Museum un­der the lead­er­ship of Terry Harley Wilson, both scanned ver­sions of the ear­lier Polaroid pho­tos and the more re­cent dig­i­tal pho­tos can now be viewed on-line from any­where in the world. When the A.T. Museum opened in Pennsylvania’s Pine Grove Furnace State Park in 2010, dig­i­tal ver­sions of the pho­tos be­came avail­able there too. (read ex­panded text)

...

Read the original on athikerpictures.org »

To add this web app to your iOS home screen tap the share button and select "Add to the Home Screen".

10HN is also available as an iOS App

If you visit 10HN only rarely, check out the the best articles from the past week.

If you like 10HN please leave feedback and share

Visit pancik.com for more.