20260625:很多新内容
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concepts/model-driven-vs-app-driven-memory.md
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concepts/model-driven-vs-app-driven-memory.md
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title: "模型驱动 vs 应用驱动记忆"
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created: 2026-06-19
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updated: 2026-06-19
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type: concept
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tags: [agent-memory, architecture, model-driven, application-driven]
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sources:
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- https://mp.weixin.qq.com/s/5Wo91nzstNtCIV9chnuQmw
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---
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# 模型驱动 vs 应用驱动记忆
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## 两条技术路径
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Agent 记忆增强系统有两种实现路径:
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### 模型驱动(Model-Driven)
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- **方式**:基础模型架构创新(如 Memorizing Transformers, MemTensor 自研记忆原生模型)
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- **优势**:上限高——记忆与推理深度耦合
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- **劣势**:成本极高,训练失败风险大
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- **代表**:Google Memorizing Transformers, MemTensor 记忆原生模型
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### 应用驱动(Application-Driven)
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- **方式**:通过 Prompt 流或 Agent 流模拟记忆过程
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- **优势**:落地轻量,实施快速
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- **劣势**:与基模结合不够紧密,缺少深度增强
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- **代表**:Mem0, Zep, Letta
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## MemTensor 的融合策略
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> **模型驱动决定上限,应用驱动决定下限。** 需要从系统层面将两者结合。
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实现方式:[[layered-memory-architecture|三层记忆架构]]中的分层协同——参数记忆层走模型驱动路线,明文记忆层走应用驱动路线,激活记忆层连接两者。
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## 参考
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- [[layered-memory-architecture|三层记忆架构]]
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- [[agent-memory-system|Agent 记忆系统]]
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- [[memtensor-memos-agent-memory-2026|MemOS 技术分享]]
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