RecMem reduces memory construction token costs by up to 87% in long-running LLM agents by consolidating memory only upon sustained recurrence of semantically similar interactions, while exceeding the accuracy of three prior systems.
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RecMem: Recurrence-based Memory Consolidation for Efficient and Effective Long-Running LLM Agents
RecMem reduces memory construction token costs by up to 87% in long-running LLM agents by consolidating memory only upon sustained recurrence of semantically similar interactions, while exceeding the accuracy of three prior systems.