agent-memory

数据分析

一个持久的记忆空间,用于存储跨对话持续存在的知识。

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SKILL.md

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namedescription
agent-memoryUse this skill when the user asks to save, remember, recall, or organize memories. Triggers on: 'remember this', 'save this', 'note this', 'what did we discuss about...', 'check your notes', 'clean up memories'. Also use proactively when discovering valuable findings worth preserving.

Agent Memory

A persistent memory space for storing knowledge that survives across conversations.

Location: .claude/skills/agent-memory/memories/

Proactive Usage

Save memories when you discover something worth preserving:

  • Research findings that took effort to uncover
  • Non-obvious patterns or gotchas in the codebase
  • Solutions to tricky problems
  • Architectural decisions and their rationale
  • In-progress work that may be resumed later

Check memories when starting related work:

  • Before investigating a problem area
  • When working on a feature you've touched before
  • When resuming work after a conversation break

Organize memories when needed:

  • Consolidate scattered memories on the same topic
  • Remove outdated or superseded information
  • Update status field when work completes, gets blocked, or is abandoned

Folder Structure

When possible, organize memories into category folders. No predefined structure - create categories that make sense for the content.

Guidelines:

  • Use kebab-case for folder and file names
  • Consolidate or reorganize as the knowledge base evolves

Example:

memories/
├── file-processing/
│   └── large-file-memory-issue.md
├── dependencies/
│   └── iconv-esm-problem.md
└── project-context/
    └── december-2025-work.md

This is just an example. Structure freely based on actual content.

Frontmatter

All memories must include frontmatter with a summary field. The summary should be concise enough to determine whether to read the full content.

Summary is the decision point: Agents scan summaries via rg "^summary:" to decide which memories to read in full. Write summaries that contain enough context to make this decision - what the memory is about, the key problem or topic, and why it matters.

Required:

---
summary: "1-2 line description of what this memory contains"
created: 2025-01-15  # YYYY-MM-DD format
---

Optional:

---
summary: "Worker thread memory leak during large file processing - cause and solution"
created: 2025-01-15
updated: 2025-01-20
status: in-progress  # in-progress | resolved | blocked | abandoned
tags: [performance, worker, memory-leak]
related: [src/core/file/fileProcessor.ts]
---

Search Workflow

Use summary-first approach to efficiently find relevant memories:

# 1. List categories
ls .claude/skills/agent-memory/memories/

# 2. View all summaries
rg "^summary:" .claude/skills/agent-memory/memories/ --no-ignore --hidden

# 3. Search summaries for keyword
rg "^summary:.*keyword" .claude/skills/agent-memory/memories/ --no-ignore --hidden -i

# 4. Search by tag
rg "^tags:.*keyword" .claude/skills/agent-memory/memories/ --no-ignore --hidden -i

# 5. Full-text search (when summary search isn't enough)
rg "keyword" .claude/skills/agent-memory/memories/ --no-ignore --hidden -i

# 6. Read specific memory file if relevant

Note: Memory files are gitignored, so use --no-ignore and --hidden flags with ripgrep.

Operations

Save

  1. Determine appropriate category for the content
  2. Check if existing category fits, or create new one
  3. Write file with required frontmatter (use date +%Y-%m-%d for current date)
mkdir -p .claude/skills/agent-memory/memories/category-name/
# Note: Check if file exists before writing to avoid accidental overwrites
cat > .claude/skills/agent-memory/memories/category-name/filename.md << 'EOF'
---
summary: "Brief description of this memory"
created: 2025-01-15
---

# Title

Content here...
EOF

Maintain

  • Update: When information changes, update the content and add updated field to frontmatter
  • Delete: Remove memories that are no longer relevant
    trash .claude/skills/agent-memory/memories/category-name/filename.md
    # Remove empty category folders
    rmdir .claude/skills/agent-memory/memories/category-name/ 2>/dev/null || true
    
  • Consolidate: Merge related memories when they grow
  • Reorganize: Move memories to better-fitting categories as the knowledge base evolves

Guidelines

  1. Write for resumption: Memories exist to resume work later. Capture all key points needed to continue without losing context - decisions made, reasons why, current state, and next steps.
  2. Write self-contained notes: Include full context so the reader needs no prior knowledge to understand and act on the content
  3. Keep summaries decisive: Reading the summary should tell you if you need the details
  4. Stay current: Update or delete outdated information
  5. Be practical: Save what's actually useful, not everything

Content Reference

When writing detailed memories, consider including:

  • Context: Goal, background, constraints
  • State: What's done, in progress, or blocked
  • Details: Key files, commands, code snippets
  • Next steps: What to do next, open questions

Not all memories need all sections - use what's relevant.

常见问题

agent-memory 是什么?
agent-memory 是一个 AI Agent Skill(智能体技能)。一个持久的记忆空间,用于存储跨对话持续存在的知识。
agent-memory 怎么用?
你可以在 Skill Hub 中国下载 agent-memory 的 SKILL.md 文件,放入你的项目目录中。AI Agent(如 Claude Code)会自动识别并加载该 Skill,按照其中定义的规则和流程来辅助你完成任务。目前已有 1 篇实践案例可供参考。
agent-memory 有哪些实践案例?
目前 Skill Hub 中国收录了 1 篇 agent-memory 的实践案例,涵盖真实项目中的使用场景、操作步骤和踩坑记录。你可以在本页面的「热门实践」区域查看完整列表。
agent-memory 和 xlsx 有什么区别?
agent-memory 和 xlsx 都属于「数据分析」类别的 AI Skill。agent-memory 主要用于一个持久的记忆空间,用于存储跨对话持续存在的知识。。xlsx 则侧重于全面支持公式、格式设置、数据分析和可视化的电子表格创建、编辑和分析。当 Claude 需要处理电子表格(.xlsx、.x。你可以根据具体场景选择最合适的 Skill。