We're Ought. We're going to answer questions here on Tuesday August 9th at 10am Pacific. We may get to some questions earlier, and may continue answering a few more throughout the week.
About us:
- We're an applied AI lab, taking a product-driven approach to AI alignment.
- We're 10 people right now, roughly split between the Bay Area and the rest of the world (New York, Texas, Spain, UK).
- Our mission is to automate and scale open-ended reasoning. We are working on getting AI to be as helpful for supporting reasoning about long-term outcomes, policy, alignment research, AI deployment, etc. as it is for tasks with clear feedback signals.
- We're building the AI research assistant Elicit. Elicit's architecture is based on supervising reasoning processes, not outcomes, an implementation of factored cognition. This is better for supporting open-ended reasoning in the short run and better for alignment in the long run.
- Over the last year, we built Elicit to support broad reviews of empirical literature. We're currently expanding to deep literature reviews, then other research workflows, then general-purpose reasoning.
- We're hiring for full-stack, devops, ML, product analyst, and operations manager roles.
We're down to answer basically any question, including questions about our mission, theory of change, work so far, future plans, Elicit, relation to other orgs in the space, and what it's like to work at Ought.
We built Ergo (a Python library for integrating model-based and judgmental forecasting) as part of our work on forecasting. In the course of this work we realized that for many forecasting questions the bottleneck isn’t forecasting infrastructure per se, but the high-quality research and reasoning that goes into creating good forecasts, so we decided to focus on that aspect.
I’m still excited about Ergo-like projects (including Squiggle!). Developing it further would be a valuable contribution to epistemic infrastructure. Ergo is an MIT-licensed open-source project so you can basically do whatever you want with it. As a small team we have to focus on our core project, but if there are signs of life from an Ergo successor (5+ regular users, say) I’d be happy to talk for a few hours about what we learned from Ergo.