惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

Google DeepMind News
Google DeepMind News
C
CERT Recently Published Vulnerability Notes
C
Cisco Blogs
Cloudbric
Cloudbric
The Last Watchdog
The Last Watchdog
L
LINUX DO - 热门话题
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
Application and Cybersecurity Blog
Application and Cybersecurity Blog
cs.CV updates on arXiv.org
cs.CV updates on arXiv.org
K
KPMG report finds enterprise disconnect between AI and its ROI | CIO
Security Archives - TechRepublic
Security Archives - TechRepublic
TaoSecurity Blog
TaoSecurity Blog
V2EX - 技术
V2EX - 技术
H
Heimdal Security Blog
S
Security Affairs
L
Lohrmann on Cybersecurity
Hacker News - Newest:
Hacker News - Newest: "LLM"
Simon Willison's Weblog
Simon Willison's Weblog
WordPress大学
WordPress大学
小众软件
小众软件
Security Latest
Security Latest
AWS News Blog
AWS News Blog
Apple Machine Learning Research
Apple Machine Learning Research
GbyAI
GbyAI
Engineering at Meta
Engineering at Meta
阮一峰的网络日志
阮一峰的网络日志
罗磊的独立博客
F
Full Disclosure
S
Schneier on Security
L
LangChain Blog
MyScale Blog
MyScale Blog
Know Your Adversary
Know Your Adversary
P
Privacy International News Feed
Google Online Security Blog
Google Online Security Blog
Scott Helme
Scott Helme
Stack Overflow Blog
Stack Overflow Blog
爱范儿
爱范儿
A
Arctic Wolf
Martin Fowler
Martin Fowler
B
Blog RSS Feed
大猫的无限游戏
大猫的无限游戏
博客园 - 三生石上(FineUI控件)
The Register - Security
The Register - Security
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
博客园_首页
Latest news
Latest news
F
Fortinet All Blogs
G
GRAHAM CLULEY
T
The Exploit Database - CXSecurity.com
Hacker News: Ask HN
Hacker News: Ask HN

Dwarkesh Podcast

The Winning Essays for the Big Questions About AI Grant Sanderson – AI and the future of math The next big breakthrough will be AIs learning on the job Ada Palmer – Machiavelli is the most misunderstood thinker of all time The sample efficiency black hole Alex Imas and Phil Trammell – What remains scarce after AGI? Reiner Pope – Chip design from the bottom up The mistake of conflating intelligence and power Notes on pretraining parallelisms and failed training runs. RLVR might be disproportionately bad at science Eric Jang – Building AlphaGo from scratch David Reich – Why the Bronze Age was an inflection point in human evolution Reiner Pope – The math behind how LLMs are trained and served More open questions about AI Jensen Huang – TPU competition, why we should sell chips to China, & Nvidia’s supply chain moat What I learned this week - Can distillation be stopped, Mythos and the cybersecurity equilibrium, Pipeline RL Michael Nielsen – How science actually progresses Terence Tao – Kepler, Newton, and the true nature of mathematical discovery Dylan Patel — Deep dive on the 3 big bottlenecks to scaling AI compute
Blog prize for big questions about AI
Dwarkesh Patel · 2026-04-25 · via Dwarkesh Podcast

There has never been a time where excellent intellectual output on the right question has been more valuable or more urgent. Compelling answers can inform the most important economic and foreign policy decisions that will ever be made, the deployment of (at least) hundreds of billions of philanthropic dollars, and the training and governance of superintelligences.

I’m announcing a $20,000 blog prize in order to find people who will excel at researching and thinking through these problems. The not-so-secret point of this whole contest is so that I can hire a research collaborator to think through questions like this hand in hand with me. See more at the end.

Pick a question below, and spend no more than 1,000 words answering it. 1st, 2nd, and 3rd place will get $10,000, $6,000, and $4,000 respectively. I’ll publish the winning entry (and potentially the runner ups) on my blog. Please submit by May 10th, 11:59 PM PST.

  • A couple years ago, there was this idea that AI progress might slow down as we make further progress into the RL regime. 1. Because as horizon lengths increase, the AI needs to do many days’ worth of work before we can even see if it did it right, so if we’re still in a naive policy gradient world, the reward signal / FLOP goes down, and 2. We’d crossed through many OOMs of RL compute from GPT 4 to o1 to o3, and it would not be feasible to replicate that many OOMs increase in compute immediately again. But AI progress seems to have been fast nonetheless - even potentially speeding up if rumors about Spud or Mythos are to be believed. What gives? What did that previous intuition pump that motivated longer timelines miss? Feel free to deny premise of question.

  • What’s the most plausible story where foundation model companies actually start making money? If you consider each individual model as a company, then its profits may be able to pay back the training cost. But of course, if you don’t train a bigger, more expensive model immediately, then you stop making money after 3 months. So when does the profit start? Maybe at some point scaling will plateau, but if progress at the frontier has slowed down, then the combination of distillation and low switching costs (cloud margins result from high switching costs) makes it really easy for open source to catch up to the labs, eating into their margins. So how do the labs actually start making money?

  • With OpenAI’s new raise at an $852B valuation, OpenAI Foundation’s stake is now worth $180B. Anthropic’s cofounders have pledged to donate 80% of their wealth. Nobody seems to have a concrete idea of how to deploy 100s of billions (soon trillions) of wealth productively to “make AI go well”. If you were in charge of the OpenAI Foundation right now, what exactly would you do? And when? It’s not enough to identify a cause you think is important, because that doesn’t answer the fundamental problem of how you convert money to impact. Identify the concrete strategy you recommend pursuing.

  • What should countries which are not currently in the AI production chain (semis, energy, frontier models, robotics) do in order to not get totally sidestepped by transformative AI? If you’re the leader of India or Nigeria, what do you do right now?

  • Please don’t let a lack of domain expertise dissuade you from entering. I’m looking for someone who can ramp up fast on unfamiliar topics and think clearly.

  • Each entrant may submit only once.

  • You are still eligible for this essay competition even if you’re not interested in the researcher role. Nor does winning this competition guarantee that you will be offered the role.

  • You’re welcome to use LLMs to help you research, but I specifically picked these questions because I’ve found LLM answers to them unsatisfying. On these kinds of ambiguous questions, LLMs are too all over the place. For example, they’ll identify 5 plausible answers but not have the context and taste to identify the crucial factor and iron out its implications.

  • You only have 1000 words - make them count. People have the habit of spending the first paragraphs clearing their throat - avoid that.

I want my podcast/blog to move from just asking questions about AI to actually helping answer them. But there are too many important questions, and I need a collaborator to build up context on them all, to explore dozens of fractal sub-questions, to consider the rebuttals and syntheses, and to sharpen each others thinking.

The questions I want us to explore are very broad while at the same time requiring deep technical analysis across many domains to actually answer.

Well, I could just put out a job ad for a researcher, but I’ll get 1,000 different resumes, and I’ll have no clue based on that information whether the applicant would be any good at synthesizing lots of technical arguments and information. So I thought, let’s just list out some questions where I genuinely don’t know the answer and would be keen to get some insight.

  • Ideally in person in San Francisco, but potentially open to remote.

  • Will pay competitively

If you have questions or comments, I’m hello@dwarkeshpatel.com.

Discussion about this post

Ready for more?