Linkwise: AI read-later and knowledge app with curated Discover feed
Linkwise is an AI-powered read-later and knowledge app that helps users save and organize articles, essays, and videos. It features a curated Discover feed of high-quality content, built using Next.js with ISR, Supabase/Postgres, and Fable 5 for page generation. The app solves the problem of information overload by surfacing worthwhile reads.
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Linkwise: AI read-later and knowledge app with curated Discover feed
Linkwise is an AI-powered read-later and knowledge app that helps users save and organize articles, essays, videos, and highlights. It features a curated public feed called Discover, generated using Fable 5, which selects content worth reading. The app solves information overload for knowledge workers and avid readers.
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