Proactive Memory Agent Improves Long-Horizon AI Task Performance by Addressing Behavioral State Decay
In long-horizon tasks, decision-relevant state is often scattered across an expanding trajectory, while the action agent must surface it and act. As trajectories grow, task requirements, environment…
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