/install a-mem-memory-organization
A-MEM Memory Organization
Use this skill to turn raw observations into structured memory notes that are easier to retrieve, connect, and refine over time.
Quick Start
When the user asks to "remember", "keep context", "build memory", "organize knowledge", "create long-term memory", or "make the agent learn from history", do the following:
- Capture the new memory as a note with
content,context,keywords,tags,category,timestamp, andlinks. - Search existing memory for semantically related notes before writing the new note.
- Link the new note to the strongest neighbors if the relationship is concrete.
- Prefer updating tags/context only when the new evidence genuinely improves the older note.
- Keep memory atomic. Split unrelated facts into separate notes.
Note Format
Represent each memory note with this schema:
{
"id": "uuid-or-stable-id",
"content": "Atomic fact, preference, event, or lesson learned.",
"context": "One sentence explaining the situation, domain, or why the note matters.",
"keywords": ["specific terms", "entities", "concepts"],
"tags": ["broader-category", "retrieval-label"],
"category": "Preference | Project | Decision | Fact | Workflow | Bug | Research",
"timestamp": "YYYYMMDDHHmm",
"links": ["related-note-id"],
"source": "optional source or conversation anchor"
}
If the surrounding system has no formal database yet, store notes in a Markdown or JSON memory file using the same fields.
Write Workflow
Use this write workflow whenever adding memory:
- Normalize the user input into one atomic note.
- Generate 3-6 precise
keywords. - Generate 2-5 broader
tags. - Write a compact
contextsentence that explains why the memory matters. - Search for related notes using the combined retrieval text:
content: ...
context: ...
keywords: ...
tags: ...
- Link only to genuinely related memories. Avoid link spam.
- If the new note sharpens an older note, update the older note conservatively.
Retrieval Workflow
When answering from memory or selecting context for future work:
- Expand the query into both a literal form and a semantic form.
- Retrieve using the combined note text, not raw content alone.
- Prefer topically relevant and specific notes over vaguely similar ones.
- Include linked neighbors only when they help answer the task.
- If there is noise, rerank manually by: exact entity overlap, stronger contextual match, recency when the information is time-sensitive, explicit links from already-relevant notes.
Evolution Rules
Apply memory evolution carefully. The goal is refinement, not constant rewriting.
Safe evolution operations:
- Add a missing tag that improves retrieval.
- Clarify context when a later note disambiguates the old one.
- Add a link between notes with a clear relationship.
- Mark a note obsolete if later evidence supersedes it.
Avoid:
- rewriting old notes based on weak similarity,
- merging unrelated memories,
- broadening tags until everything looks related,
- losing the original fact while summarizing.
If uncertain, store a new note and link it instead of mutating old notes.
What To Build In Practice
If the user wants this skill "made real" inside a project, choose the lightest form that matches the repo:
- For a documentation-first repo: create
memory/notes.jsonormemory/notes.md. - For an app repo: add a memory module plus persistence layer.
- For an agent repo: add note construction, retrieval, linking, and evolution hooks around the agent loop.
- For a coding assistant: maintain durable notes for project decisions, preferences, recurring bugs, and environment facts.
Output Conventions
When you use this skill during a task:
- Tell the user what memory structure you are creating or updating.
- Show the proposed note fields if the user is designing the system.
- If implementing code, keep the data model explicit and testable.
- If no storage exists yet, propose a minimal file-based memory store first.
References
Read references/memory-patterns.md when you need:
- examples of good and bad note construction,
- category and tag heuristics,
- guidance on conservative memory evolution,
- suggestions for integrating this pattern into an agent loop.
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install a-mem-memory-organization - After installation, invoke the skill by name or use
/a-mem-memory-organization - Provide required inputs per the skill's parameter spec and get structured output
What is a-mem-memory-organization?
Organize project, agent, or user memory using an A-MEM-style workflow with structured notes, semantic tags, contextual summaries, explicit links, and lightwe... It is an AI Agent Skill for Claude Code / OpenClaw, with 192 downloads so far.
How do I install a-mem-memory-organization?
Run "/install a-mem-memory-organization" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is a-mem-memory-organization free?
Yes, a-mem-memory-organization is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does a-mem-memory-organization support?
a-mem-memory-organization is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created a-mem-memory-organization?
It is built and maintained by 曹广雨 (@xiaocaijic); the current version is v1.0.0.