How AI Agents Actually Remember (Part 1): Inside Mem0, Supermemory, and Letta
By
Ken Huang
Source
kenhuangus.substack.comHow AI Agents Actually Remember (Part 1): Inside Mem0, Supermemory, and Lettakenhuangus.substack.comYou might also wanna read
AgentMemory: Open-source persistent memory tool for AI coding agents
AgentMemory is an open-source tool that gives AI coding agents (like Claude Code, Codex, Cursor, etc.) persistent memory across sessions, so
YourMemory: Open-source persistent memory layer for AI agents using Ebbinghaus forgetting curve
YourMemory is an open-source persistent memory layer for AI agents that implements Ebbinghaus forgetting curve decay to mimic human memory.
Agent Memory Is Distributed State Management, Not Magic
The article argues that "agent memory" in AI systems is fundamentally just distributed state management rebranded. It draws parallels betwee
Building Production AI Agents: A Multi-Tiered Memory Architecture with Zep, Mem0, and ContextNest
This article discusses the need for a multi-tiered persistent memory architecture when building production-grade AI agents. It argues that r
Systematic Study of Agent Memory Systems for LLMs Reveals No One-Size-Fits-All Architecture
This paper presents a systematic experimental study of agent memory systems for LLM agents from a data management perspective. It proposes a
DeltaMemory: A Persistent Memory Layer for AI Agents That Learns Over Time
DeltaMemory is a new AI memory layer designed to solve the problem of AI agents forgetting information between sessions. Unlike vector datab

Comments
Sign in to join the conversation.
No comments yet. Be the first.