MemEngine: A Unified and Modular Library for Developing Advanced Memory of LLM-based Agents
MemEngine: A Unified and Modular Library for Developing Advanced Memory of LLM-based Agents
Recently, large language model based (LLM-based) agents have been widely applied across various fields. As a critical part, their memory capabilities have captured significant interest from both industrial and academic communities. Despite the proposal of many advanced memory models in recent research, however, there remains a lack of unified implementations under a general framework. To address this issue, we develop a unified and modular library for developing advanced memory models of LLM-based agents, called MemEngine. Based on our framework, we implement abundant memory models from recent research works. Additionally, our library facilitates convenient and extensible memory development, and offers user-friendly and pluggable memory usage. For benefiting our community, we have made our project publicly available at https://github.com/nuster1128/MemEngine.
Zeyu Zhang、Quanyu Dai、Xu Chen、Rui Li、Zhongyang Li、Zhenhua Dong
计算技术、计算机技术
Zeyu Zhang,Quanyu Dai,Xu Chen,Rui Li,Zhongyang Li,Zhenhua Dong.MemEngine: A Unified and Modular Library for Developing Advanced Memory of LLM-based Agents[EB/OL].(2025-05-04)[2025-05-29].https://arxiv.org/abs/2505.02099.点此复制
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