
Omar Shaikh
@oshaikh13 • 2,097 subscribers
member of sociotechnical staff @Stanford
Videos

What’s the point of a “helpful assistant” if you have to always tell it what to do next? In a new paper, we introduce a reasoning model that predicts what you’ll do next over long contexts (LongNAP 💤). We trained it on 1,800 hours of computer use from 20 users. 🧵
Omar Shaikh123,679 просмотров • 3 месяцев назад

We upgraded Tabracadabra 🎉 to bring an entire context-aware assistant (not just tab to autocomplete!) to any textbox. It's pretty great if you hate switching between the chat interface and what you're working on. We're also open-sourcing, so you can try it out!🧵
Omar Shaikh40,762 просмотров • 1 месяц назад

Tabracadabra 🎉 is a system that brings tab-to-autocomplete literally *anywhere* there’s a textbox. Instead of relying on a single codebase for context, Tabracadabra uses a General User Model to autocomplete with everything you see or do on your computer.
Omar Shaikh87,323 просмотров • 9 месяцев назад

LLMs sound homogeneous *because* feedback modalities like rankings, principles, and pairs cater to group-level preferences. Asking an individual to rank ~1K outputs or provide accurate principles takes effort. What if we relied on a few demos to elicit annotator preferences?
Omar Shaikh52,304 просмотров • 2 лет назад
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