@heyshrutimishra: 2/ Memory is fully white-box. Every entry is visible and editable. There's also Dream: at night, agents review their ow…
Summary
Describes a white-box memory system for AI agents where every entry is visible and editable, and includes a 'Dream' feature for nighttime memory consolidation and reorganization with one-click rollback.
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Cached at: 05/30/26, 08:33 AM
2/ Memory is fully white-box.
Every entry is visible and editable. There’s also Dream: at night, agents review their own memories, consolidate, and reorganize. One-click rollback if a Dream goes wrong. https://t.co/jUFDkvQCrC
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