MemCollab: Cross-Agent Memory Collaboration via Contrastive Trajectory Distillation
arXiv cs.AI / 3/25/2026
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Key Points
- MemCollab is proposed as a shared, agent-agnostic memory framework for heterogeneous LLM-based agents, addressing the limitations of per-agent memory that couples knowledge to a specific model’s reasoning biases.
- The method uses contrastive trajectory distillation by comparing reasoning trajectories from different agents on the same task, extracting task-level invariants while suppressing agent-specific artifacts.
- MemCollab also introduces a task-aware retrieval mechanism that conditions memory access on task category so that only relevant constraints are used during inference.
- Experiments on mathematical reasoning and code generation benchmarks show improved accuracy and inference-time efficiency across diverse agents, including cross-modal-family settings, indicating the memory can serve as a shared reasoning resource.
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