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christin
@christin
some thoughts and questions given recent news re: "interesting content," changes to how channels work to me, social platforms are marketplaces with "buyers" and "sellers" (in this case, of content) - creators are "sellers" of their content goods - enjoyoors / vibing / curators are "buyers" as a content creator type on fc, i have expressed my concerns that the current fc algorithms punish new users too hard, which reduces possible audience sizes and makes the place not attractive to content creator types (and not fun for content consumers either!) (i also want to emphasize that i myself am a "buyer" on other platforms like instagram, youtube, etc.! there is no value judgement to be either and we often play both roles.) so what if instead, *user intent* is composable? similar to how in role-playing games, you can play as characters with diff types of specialization and it's set "per session," since sometimes I want to broadcast and share my content, and other times, support my friends with theirs
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christin
@christin
@heavygweit and @christopher , what are your thoughts? my impression is that /uno is more friendly to curation, though apologies i've been behind on your latest updates!! (it clashes with /okbanger tuesday streams T_T)
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christopher
@christopher
i think you’ll see Uno lean more into algofeeds than away. there is a “certain smell” to the status quo of algofeeds across social media — we hope that Uno is more focused on being chic, delightful, and fun.
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christin
@christin
what's in the secret sauce for that?? besides you and @heavygweit 😂
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christopher
@christopher
lol it’ll be a small amalgamation of users in v0 — we need to prove it actually results in better content experiences first before we move to a more expanded subset of events. Warpcast uses an iteration of weighted PageRank across all users to get their feeds, adjusting the weights of interactions.
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