ope just realized my tumblr url could be found through some other social media so i panic changed it from 2013 tumblr fandom to frattery

Origami Around

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PUT YOUR BEARD IN MY MOUTH
let's talk about Bridgerton tea, my ask is open
Claire Keane
2025 on Tumblr: Trends That Defined the Year
Fai_Ryy

★

❣ Chile in a Photography ❣

Love Begins

Kiana Khansmith

tannertan36

Andulka

@theartofmadeline

Kaledo Art
almost home
I'd rather be in outer space 🛸
Lint Roller? I Barely Know Her
Monterey Bay Aquarium
Stranger Things
seen from Morocco
seen from Netherlands

seen from Canada

seen from Greece
seen from Türkiye
seen from Brazil

seen from United Kingdom

seen from Jamaica
seen from United Kingdom
seen from Venezuela
seen from Venezuela
seen from Jamaica
seen from Jamaica
seen from Germany

seen from United States
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seen from United States
@naturdayaesthetics
ope just realized my tumblr url could be found through some other social media so i panic changed it from 2013 tumblr fandom to frattery
did anybody else have a moment as a kid/teen where you suddenly realized that you were more than likely never going to have one of those big adventures that you read abt in YA novels. and u were going to just have a normal life with normal problems, and got real sad. and even tho u now see value in a regular life, part of you still wants magic powers and a rag tag group of ride-or-die friends who are out to save the world
That’s why dnd is a human need and deserves a place on maslow’s heirarchy
Thats why I live my life in such a way as to provoke the supernatural as often as possible
it’s why i make dumb decisions and get in wild situations a lot
My favorite decoration yet. (Source)
can’t believe i set my status on skype for business to busy just to NOT GET A TICKET TO MCR
not dead yet. graduated and have a big boy job and health insurance now. and a stupid dog who is wonderful
i just went through my entire list of people i follow trying to figure out if someone was still alive and it’s real fucking weird like.... they haven’t updated in a year? wonder if they’re dead or just got busy.
my life is a shitpost
i got a free sports car on wednesday
it’s kinda funny kinda fucked up but i’ve been texting someone and it’s literally giving me anxiety that they’re using XD and ^-^ lmao
So it appears that Autodesk did a thing.
Go nuts, my friends.
When algorithms surprise us
Machine learning algorithms are not like other computer programs. In the usual sort of programming, a human programmer tells the computer exactly what to do. In machine learning, the human programmer merely gives the algorithm the problem to be solved, and through trial-and-error the algorithm has to figure out how to solve it.
This often works really well - machine learning algorithms are widely used for facial recognition, language translation, financial modeling, image recognition, and ad delivery. If you’ve been online today, you’ve probably interacted with a machine learning algorithm.
But it doesn’t always work well. Sometimes the programmer will think the algorithm is doing really well, only to look closer and discover it’s solved an entirely different problem from the one the programmer intended. For example, I looked earlier at an image recognition algorithm that was supposed to recognize sheep but learned to recognize grass instead, and kept labeling empty green fields as containing sheep.
When machine learning algorithms solve problems in unexpected ways, programmers find them, okay yes, annoying sometimes, but often purely delightful.
So delightful, in fact, that in 2018 a group of researchers wrote a fascinating paper that collected dozens of anecdotes that “elicited surprise and wonder from the researchers studying them”. The paper is well worth reading, as are the original references, but here are several of my favorite examples.
Bending the rules to win
First, there’s a long tradition of using simulated creatures to study how different forms of locomotion might have evolved, or to come up with new ways for robots to walk.
Why walk when you can flop? In one example, a simulated robot was supposed to evolve to travel as quickly as possible. But rather than evolve legs, it simply assembled itself into a tall tower, then fell over. Some of these robots even learned to turn their falling motion into a somersault, adding extra distance.
[Image: Robot is simply a tower that falls over.]
Why jump when you can can-can? Another set of simulated robots were supposed to evolve into a form that could jump. But the programmer had originally defined jumping height as the height of the tallest block so - once again - the robots evolved to be very tall. The programmer tried to solve this by defining jumping height as the height of the block that was originally the *lowest*. In response, the robot developed a long skinny leg that it could kick high into the air in a sort of robot can-can.
[Image: Tall robot flinging a leg into the air instead of jumping]
Hacking the Matrix for superpowers
Potential energy is not the only energy source these simulated robots learned to exploit. It turns out that, like in real life, if an energy source is available, something will evolve to use it.
Floating-point rounding errors as an energy source: In one simulation, robots learned that small rounding errors in the math that calculated forces meant that they got a tiny bit of extra energy with motion. They learned to twitch rapidly, generating lots of free energy that they could harness. The programmer noticed the problem when the robots started swimming extraordinarily fast.
Harvesting energy from crashing into the floor: Another simulation had some problems with its collision detection math that robots learned to use. If they managed to glitch themselves into the floor (they first learned to manipulate time to make this possible), the collision detection would realize they weren’t supposed to be in the floor and would shoot them upward. The robots learned to vibrate rapidly against the floor, colliding repeatedly with it to generate extra energy.
[Image: robot moving by vibrating into the floor]
Clap to fly: In another simulation, jumping bots learned to harness a different collision-detection bug that would propel them high into the air every time they crashed two of their own body parts together. Commercial flight would look a lot different if this worked in real life.
Discovering secret moves: Computer game-playing algorithms are really good at discovering the kind of Matrix glitches that humans usually learn to exploit for speed-running. An algorithm playing the old Atari game Q*bert discovered a previously-unknown bug where it could perform a very specific series of moves at the end of one level and instead of moving to the next level, all the platforms would begin blinking rapidly and the player would start accumulating huge numbers of points.
A Doom-playing algorithm also figured out a special combination of movements that would stop enemies from firing fireballs - but it only works in the algorithm’s hallucinated dream-version of Doom. Delightfully, you can play the dream-version here
[Image: Q*bert player is accumulating a suspicious number of points, considering that it’s not doing much of anything]
Shooting the moon: In one of the more chilling examples, there was an algorithm that was supposed to figure out how to apply a minimum force to a plane landing on an aircraft carrier. Instead, it discovered that if it applied a *huge* force, it would overflow the program’s memory and would register instead as a very *small* force. The pilot would die but, hey, perfect score.
Destructive problem-solving
Something as apparently benign as a list-sorting algorithm could also solve problems in rather innocently sinister ways.
Well, it’s not unsorted: For example, there was an algorithm that was supposed to sort a list of numbers. Instead, it learned to delete the list, so that it was no longer technically unsorted.
Solving the Kobayashi Maru test: Another algorithm was supposed to minimize the difference between its own answers and the correct answers. It found where the answers were stored and deleted them, so it would get a perfect score.
How to win at tic-tac-toe: In another beautiful example, in 1997 some programmers built algorithms that could play tic-tac-toe remotely against each other on an infinitely large board. One programmer, rather than designing their algorithm’s strategy, let it evolve its own approach. Surprisingly, the algorithm suddenly began winning all its games. It turned out that the algorithm’s strategy was to place its move very, very far away, so that when its opponent’s computer tried to simulate the new greatly-expanded board, the huge gameboard would cause it to run out of memory and crash, forfeiting the game.
In conclusion
When machine learning solves problems, it can come up with solutions that range from clever to downright uncanny.
Biological evolution works this way, too - as any biologist will tell you, living organisms find the strangest solutions to problems, and the strangest energy sources to exploit. Sometimes I think the surest sign that we’re not living in a computer simulation is that if we were, some microbe would have learned to exploit its flaws.
So as programmers we have to be very very careful that our algorithms are solving the problems that we meant for them to solve, not exploiting shortcuts. If there’s another, easier route toward solving a given problem, machine learning will likely find it.
Fortunately for us, “kill all humans” is really really hard. If “bake an unbelievably delicious cake” also solves the problem and is easier than “kill all humans”, then machine learning will go with cake.
Mailing list plug
If you enter your email, there will be cake!
@glasperlenspielerin
i made an AI to play pong once, and the score for each paddle was calculated by how many times the ball hit the paddle.
but i hacked together the collision detection, so if the side of the paddle hits the ball, the ball will bounce back and forth inside the paddle.
guess what the ai learned to do
Before she learns about his secret identity, Lois Lane thinks Clark Kent is a goddamn mess
She goes to his place to work on a joint article and it takes her like half an hour to find out that Clark lives in an absolutely nonfunctional house
She has to change a lightbulb but there are no stools, no sufficiently high chairs, no way of reaching the ceiling unless you find a way to climb the walls. “How the hell do you change your bulbs?” she asks. Clark mutters something about misplacing the footstool and helps her drag the table from the kitchen to the living room.
Lois watches Clark make lasagna and has to physically restrain him from pulling the tray out of the oven with his bare hands. “Are you out of your goddamn MIND?” she yells, scrambling to pull him away on time. “What are you DOING? WHERE ARE THE OVEN MITTS?” and Clark is just like “Right…..oven mitts…….. I think I lost them with the uh. footstool” both he and Lois pause for a moment to engage in a riveting game of Mentally Punch Clark
Lois runs into the bathroom to put on a disguise and yells out, “Where do you keep your razor?” There’s a gust of wind and Clark comes back with slightly windswept hair. “I got it!” he says with unwarranted triumph. “It’s right here. The razor I use.” Lois looks at it and it is CLEARLY recently purchased and never used and she’s just like. I don’t even care anymore
For weeks she just assumes Clark is missing some crucial element in his home and starts stacking her own things all over the place. Lois thinking Clark has no clue how to take care of himself while Clark is Eternally Tormented and has to find ways to keep his identity a secret while living in close quarters, and the slow burn mutual pining roommates AU of my dreams begins
Can you imagine tho? He doesn’t need to eat to survive, so he just had junk food everywhere.
He doesn’t even wear real glasses, so there’s no glasses case or anything by the bed, much less emergency pair.
He saves on electricity by unplugging the fridge and using his ice breath every once in a while.
Also no microwave or toaster or anything, just heat vision.
Safety supplies? No first aid kit. Anywhere. Not even bandaids. Not even a fire extinguisher.
Obviously no car.
Lois is thinking the dude is an idiot mama’s boy on his first time the big city, living in near poverty bc he can’t take care of himself. She would be like the robber who looks around and says “Shit man, you LIVE like this…???” And takes him to bed bath and beyond bc the dude doesn’t have towels.
i’m done with self-harm. on thursday i burnt my blade (then grabbed it when it cooled off). then i’m gonna get a blowtorch and melt it down. ‘cause fuckin symbolism.
so i’m officially artsy hipster, i bought a tattoo machine and gave myself 3 tattoos
A part of being an adult is living with regret and not allowing it to consume you. The older you get, the more mistakes you’ve made, opportunities you’ve missed, people you’ve disappointed. And every day you have to remind yourself to be kind and forgiving of yourself. You accept and love the you from the past and understand that it’s all a part of the process. Then you move on and live your best life, knowing now as old as you feel today, you’ll never be this young again.
(via SirEviscerate)
someone give me the amity affliction/the color morale tumblrs to follow