{"id":23179590,"url":"https://github.com/mathiasotnes/back-propagation","last_synced_at":"2026-02-16T10:02:38.546Z","repository":{"id":219484275,"uuid":"747890986","full_name":"Mathiasotnes/back-propagation","owner":"Mathiasotnes","description":"Neural network framework. 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