[EDIT: Thanks for the questions everyone! Just noting that I'm mostly done answering questions, and there were a few that came in Tuesday night or later that I probably won't get to.]
Hi everyone! I’m Ajeya, and I’ll be doing an Ask Me Anything here. I’ll plan to start answering questions Monday Feb 1 at 10 AM Pacific. I will be blocking off much of Monday and Tuesday for question-answering, and may continue to answer a few more questions through the week if there are ones left, though I might not get to everything.
About me: I’m a Senior Research Analyst at Open Philanthropy, where I focus on cause prioritization and AI. 80,000 Hours released a podcast episode with me last week discussing some of my work, and last September I put out a draft report on AI timelines which is discussed in the podcast. Currently, I’m trying to think about AI threat models and how much x-risk reduction we could expect the “last long-termist dollar” to buy. I joined Open Phil in the summer of 2016, and before that I was a student at UC Berkeley, where I studied computer science, co-ran the Effective Altruists of Berkeley student group, and taught a student-run course on EA.
I’m most excited about answering questions related to AI timelines, AI risk more broadly, and cause prioritization, but feel free to ask me anything!
Imagine you win $10B in a donor lottery. What sort of interventions—that are unlikely to be funded by Open Phil in the near future—might you fund with that money?
There aren't $10B worth of giving opportunities that I'd be excited about supporting now, for essentially the same reasons why Open Phil isn't giving everything away over the next few years. Basically, we expect (and I agree) that there will be more, better giving opportunities in the medium-term future and so it makes sense to save the marginal dollar for future giving, at least right now. There would likely be some differences between what I would fund and what Open Phil is currently funding due to different intuitions about the most promising interventions to investigate with scarce capacity, but I don't expect them to be large.