This paper analyzes the structural limitations of existing conversational AI systems in long-term tasks and complex project environments, and proposes a universal AI architecture that preserves human judgment authority while achieving both resource efficiency and contextual continuity. The proposed framework incorporates explicit time references, task unit separation, resource saturation visualization, a reversible forgetting mechanism based on dummy data, and a session-project transition structure as core elements. The architecture is not dependent on any specific AI model or platform and can be partially and progressively integrated into existing systems. This study argues that AI environments should support and preserve human judgment rather than replace it, especially in long-term work and project contexts.
SungJin Hwang (Mon,) studied this question.
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