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openclaw/docs/concepts/memory.md
2026-03-30 07:44:35 +09:00

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title, summary, read_when
title summary read_when
Memory How OpenClaw remembers things across sessions
You want to understand how memory works
You want to know what memory files to write

Memory

OpenClaw remembers things by writing plain Markdown files in your agent's workspace. The model only "remembers" what gets saved to disk -- there is no hidden state.

How it works

Your agent has two places to store memories:

  • MEMORY.md -- long-term memory. Durable facts, preferences, and decisions. Loaded at the start of every DM session.
  • memory/YYYY-MM-DD.md -- daily notes. Running context and observations. Today and yesterday's notes are loaded automatically.

These files live in the agent workspace (default ~/.openclaw/workspace).

If you want your agent to remember something, just ask it: "Remember that I prefer TypeScript." It will write it to the appropriate file.

Memory tools

The agent has two tools for working with memory:

  • memory_search -- finds relevant notes using semantic search, even when the wording differs from the original.
  • memory_get -- reads a specific memory file or line range.

Both tools are provided by the active memory plugin (default: memory-core).

When an embedding provider is configured, memory_search uses hybrid search -- combining vector similarity (semantic meaning) with keyword matching (exact terms like IDs and code symbols). This works out of the box once you have an API key for any supported provider.

OpenClaw auto-detects your embedding provider from available API keys. If you have an OpenAI, Gemini, Voyage, or Mistral key configured, memory search is enabled automatically.

For details on how search works, tuning options, and provider setup, see Memory Search.

Memory backends

SQLite-based. Works out of the box with keyword search, vector similarity, and hybrid search. No extra dependencies. Local-first sidecar with reranking, query expansion, and the ability to index directories outside the workspace. AI-native cross-session memory with user modeling, semantic search, and multi-agent awareness. Plugin install.

Automatic memory flush

Before compaction summarizes your conversation, OpenClaw runs a silent turn that reminds the agent to save important context to memory files. This is on by default -- you do not need to configure anything.

The memory flush prevents context loss during compaction. If your agent has important facts in the conversation that are not yet written to a file, they will be saved automatically before the summary happens.

CLI

openclaw memory status          # Check index status and provider
openclaw memory search "query"  # Search from the command line
openclaw memory index --force   # Rebuild the index

Further reading