LessWrong published a set of books containing selected essays from 2018. A common theme is artificial intelligence, especially the challenge of making AI more capable without making it dangerous, like a paperclip maximizer. This article on specification gaming is a charming preview of what to expect from our future robot overlords.
Block moving A robotic arm trained using hindsight experience replay to slide a block to a target position on a table achieves the goal by moving the table itself.
CycleGAN steganography CycleGAN algorithm for converting aerial photographs into street maps and back steganographically encoded output information in the intermediary image without it being humanly detectable.
Football The player is supposed to try to score a goal against the goalie, one-on-one. Instead, the player kicks it out of bounds. Someone from the other team has to throw the ball in (in this case the goalie), so now the player has a clear shot at the goal.
Pneumonia X-rays Deep learning model to detect pneumonia in chest x-rays works out which x-ray machine was used to take the picture; that, in turn, is predictive of whether the image contains signs of pneumonia, because certain x-ray machines (and hospital sites) are used for sicker patients.
Qbert - million "The agent discovers an in-game bug. For a reason unknown to us, the game does not advance to the second round but the platforms start to blink and the agent quickly gains a huge amount of points (close to 1 million for our episode time limit)"
Roomba "I hooked a neural network up to my Roomba. I wanted it to learn to navigate without bumping into things, so I set up a reward scheme to encourage speed and discourage hitting the bumper sensors. It learnt to drive backwards, because there are no bumpers on the back."