Lore – give your coding agent the decisions your team made
THE SO WHAT
Lore’s approach — feeding your coding agent the actual decisions your team made — points to a future where agent performance hinges on org-specific context, not just bigger models. If you’re serious about AI coding, start capturing design rationales and review comments in a structured way; that corpus will become your edge.
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