Honcho Primer Typos

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Vineeth Voruganti 2024-04-22 12:20:43 -07:00
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@ -31,7 +31,7 @@ If you've heard of [Retrieval Augmented Generation](https://en.wikipedia.org/wik
Behind the scenes, Honcho learns about users as people--[[User State is State of the Art|richly modeling identity]]. It seeks to understand their beliefs, hopes, dreams, history, interests, and preferences.
It then acts as [[Introducing Honcho's Dialectic API|an oracle to each user]], allowing apps ask for any personal context they need to improve UX and giving them access to a social cognition layer.
It then acts as [[Introducing Honcho's Dialectic API|an oracle to each user]], allowing apps to ask for any personal context they need to improve UX and giving them access to a social cognition layer.
## Why We Built Honcho
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@ -49,7 +49,7 @@ But it's not intuitive for a few reasons:
- AI app builders are [[Machine learning is fixated on task performance|still focused on]] just getting general tasks to work
- LLMs' [[LLMs excel at theory of mind because they read|potential to personalize]] is still under-appreciated
- Historic examples of personalized apps usually just leverage our activity & engagement data
- Those examples tend target only base user desire, lead to addictive behavior, & have poor privacy records
- Those examples tend to target only base user desire, lead to addictive behavior, & have poor privacy records
Still, when interacting with an AI app, there's a sense that it *should* be getting to know us. In fact, we're often surprised when we realize it's not learning about us over time. And probably annoyed at having to start over.