I remember when compression was popularized, like mp3 and jpg, people would run experiments where they would convert lossy to lossy to lossy to lossy over and over and then share the final image, which was this overcooked nightmare
I wonder if a similar dynamic applies to the scenario presented in the comic with AI summarization and expansion of topics. Start with a few bullet points have it expand that to a paragraph or so, have it summarize it back down to bullet points, repeat 4-5 times, then see how far off you get from the original point.
A couple decades ago, novelty and souvenir shops would sell stuffed parrots which would electronically record a brief clip of what they heard and then repeat it back to you.
If you said "Hello" to a parrot and then set it down next to another one, it took only a couple of iterations between the parrots to turn it into high pitched squealing.
Summarizing requires understanding what's important, and LLMs don't "understand" anything.
They can reduce word counts, and they have some statistical models that can tell them which words are fillers. But, the hilarious state of Apple Intelligence shows how frequently that breaks.
There is, or maybe was, a YouTube channel that would run well known song lyrics through various layers of translation, then attempt to sing the result to the tune of the original.
overall it didn't seem too bad. it sort of started focusing on the ecological and astrobiological side of the same topic but didn't completely drift. to be honest, i think it would have done a lot worse if i made the prompt less specific. if it was just "summarize this text" and "expand on these points" i think chatgpt would get very distracted
Interesting. I also wonder how it would fare across different models (eg user a uses chatgpt, user b uses gemini, user c uses deepseek, etc) as that may mimic real world use (such as what’s depicted in the comic) more closely