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manage-memory

pjt222
更新日 2 days ago
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開発ai

について

`manage-memory`スキルは、開発者がClaude Codeの永続メモリを整理するのに役立ちます。MEMORY.mdを簡潔な索引として維持し、詳細なトピックは別ファイルに抽出します。古くなったエントリを自動検出し、現在のプロジェクトに対して正確性を検証し、200行の制限を強制します。このスキルは、MEMORY.mdが行数制限に近づいたとき、持続的な洞察を得た実りの多いセッションの後、またはプロジェクトの変更によりメモリエントリが古くなっている可能性があるときに使用してください。

クイックインストール

Claude Code

推奨
メイン
npx skills add pjt222/agent-almanac -a claude-code
プラグインコマンド代替
/plugin add https://github.com/pjt222/agent-almanac
Git クローン代替
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/manage-memory

このコマンドをClaude Codeにコピー&ペーストしてスキルをインストールします

ドキュメント

Manage Memory

Maintain Claude Code's persistent memory directory so it stays accurate, concise, and useful across sessions. MEMORY.md is loaded into the system prompt on every conversation — lines after 200 are truncated, so this file must be a lean index pointing to topic files for detail.

When to Use

  • MEMORY.md is approaching the 200-line truncation threshold
  • A session produced durable insights worth preserving (new patterns, architecture decisions, debugging solutions)
  • A topic section in MEMORY.md has grown beyond 10-15 lines and should be extracted
  • Project state has changed (renamed files, new domains, updated counts) and memory entries may be stale
  • Starting a new area of work and checking whether relevant memory already exists
  • Periodic maintenance between sessions to keep the memory directory healthy

Inputs

  • Required: Access to the memory directory (typically ~/.claude/projects/<project-path>/memory/)
  • Optional: Specific trigger (e.g., "MEMORY.md is too long," "just finished a major refactor")
  • Optional: Topic to add, update, or extract

Procedure

Step 1: Assess Current State

Read MEMORY.md and list all files in the memory directory:

wc -l <memory-dir>/MEMORY.md
ls -la <memory-dir>/

Check the line count against the 200-line limit. Inventory existing topic files.

Got: Clear picture of total lines, number of topic files, and which sections exist in MEMORY.md.

If fail: If the memory directory doesn't exist, create it. If MEMORY.md doesn't exist, create a minimal one with a # Project Memory header and a ## Topic Files section.

Step 2: Identify Stale Entries

Compare memory claims against current project state. Common staleness patterns:

  1. Count drift: File counts, skill counts, domain counts that changed after additions/removals
  2. Renamed paths: Files or directories that were moved or renamed
  3. Superseded patterns: Workarounds that are no longer needed after fixes
  4. Contradictions: Two entries that say different things about the same topic

Use Grep to spot-check key claims:

# Example: verify a skill count claim
grep -c "^      - id:" skills/_registry.yml
# Example: verify a file still exists
ls path/claimed/in/memory.md

Got: A list of entries that are stale, with the correct current values.

If fail: If you can't verify a claim (e.g., it references external state you can't check), leave it but add a (unverified) note rather than silently preserving potentially wrong information.

Step 3: Decide What to Add

For new entries, apply these filters before writing:

  1. Durability: Will this be true next session? Avoid session-specific context (current task, in-progress work, temporary state).
  2. Non-duplication: Does CLAUDE.md or project documentation already cover this? Don't duplicate — memory is for things NOT captured elsewhere.
  3. Verified: Has this been confirmed across multiple interactions, or is it a single observation? For single observations, verify against project docs before writing.
  4. Actionable: Does knowing this change behavior? "The sky is blue" isn't useful. "Exit code 5 means quoting error — use temp files" changes how you work.

Exception: If the user explicitly asks to remember something, save it immediately — no need to wait for multiple confirmations.

Got: A filtered list of entries worth adding, each meeting durability + non-duplication + verification + actionability criteria.

If fail: If unsure whether an entry is worth keeping, err toward keeping it briefly in MEMORY.md — it's easier to prune later than to rediscover.

Step 4: Extract Oversize Topics

When a section in MEMORY.md exceeds ~10-15 lines, extract it to a dedicated topic file:

  1. Create <memory-dir>/<topic-name>.md with a descriptive header
  2. Move the detailed content from MEMORY.md to the topic file
  3. Replace the section in MEMORY.md with a 1-2 line summary and a link:
## Topic Files
- [topic-name.md](topic-name.md) — Brief description of contents

Naming conventions for topic files:

  • Use lowercase kebab-case: viz-architecture.md, not VizArchitecture.md
  • Name by topic, not chronology: patterns.md, not session-2024-12.md
  • Group related items: combine "R debugging" and "WSL quirks" into patterns.md rather than creating one file per fact

Got: MEMORY.md stays under 200 lines. Each topic file is self-contained and readable without MEMORY.md context.

If fail: If a topic file would be fewer than 5 lines, it's probably not worth extracting — leave it inline in MEMORY.md.

Step 5: Update MEMORY.md

Apply all changes: remove stale entries, add new entries, update counts, and ensure the Topic Files section lists all dedicated files.

MEMORY.md structure should follow this pattern:

# Project Memory

## Section 1 — High-level context
- Bullet points, concise

## Section 2 — Another topic
- Key facts only

## Topic Files
- [file.md](file.md) — What it covers

Guidelines:

  • Keep each bullet to 1-2 lines maximum
  • Use inline formatting (code, bold) for scanability
  • Put the most frequently needed context first
  • The Topic Files section should always be last

Got: MEMORY.md is under 200 lines, accurate, and has working links to all topic files.

If fail: If you can't get under 200 lines after extraction, identify the least-frequently-used section and extract it. Every section is a candidate — even the project structure overview can go to a topic file if needed, leaving a 1-line summary.

Step 6: Verify Integrity

Run a final check:

  1. Line count: Confirm MEMORY.md is under 200 lines
  2. Links: Verify every topic file referenced in MEMORY.md exists
  3. Orphans: Check for topic files not referenced in MEMORY.md
  4. Accuracy: Spot-check 2-3 factual claims against project state
wc -l <memory-dir>/MEMORY.md
# Check for broken links
for f in $(grep -oP '\[.*?\]\(\K[^)]+' <memory-dir>/MEMORY.md); do
  ls <memory-dir>/$f 2>/dev/null || echo "BROKEN: $f"
done
# Check for orphan files
ls <memory-dir>/*.md | grep -v MEMORY.md

Got: Line count under 200, no broken links, no orphan files, spot-checked claims are accurate.

If fail: Fix broken links (update or remove). For orphan files, either add a reference in MEMORY.md or delete them if they're no longer relevant.

Validation

  • MEMORY.md is under 200 lines
  • All topic files referenced in MEMORY.md exist on disk
  • No orphan .md files in memory directory (every file is linked from MEMORY.md)
  • No stale counts or renamed paths in any memory file
  • New entries meet the durability/non-duplication/verified/actionable criteria
  • Topic files have descriptive headers and are self-contained
  • MEMORY.md reads as a useful quick-reference, not a changelog

Pitfalls

  • Memory file pollution: Writing every session observation to memory. Most findings are session-specific and don't need persisting. Apply the four filters (Step 3) before writing.
  • Stale counts: Updating code but not memory. Counts (skills, agents, domains, files) drift silently. Always verify counts against the source of truth before trusting memory.
  • Chronological organization: Organizing by "when I learned it" instead of "what it's about." Topic-based organization (patterns.md, viz-architecture.md) is far more useful for retrieval than date-based files.
  • Duplicating CLAUDE.md: CLAUDE.md is the authoritative project instruction file. Memory should capture things NOT in CLAUDE.md — debugging insights, architecture decisions, workflow preferences, cross-project patterns.
  • Over-extraction: Creating a topic file for every 3-line section. Only extract when a section exceeds ~10-15 lines. Small sections work fine inline.
  • Forgetting the 200-line limit: MEMORY.md is loaded into every system prompt. Lines after 200 are silently truncated. If the file grows past this, the bottom content is effectively invisible.

Related Skills

  • write-claude-md — CLAUDE.md captures project instructions; memory captures cross-session learning
  • prune-agent-memory — the inverse of manage-memory: auditing, classifying, and selectively forgetting stored memories
  • write-continue-here — write a structured continuation file for session handoff; complements memory as a short-term context bridge
  • read-continue-here — read and act on a continuation file at session start; the consumption side of the handoff
  • create-skill — new skills may produce memory-worthy patterns
  • heal — self-healing may update memory as part of integration step
  • meditate — meditation sessions may surface insights worth persisting

GitHub リポジトリ

pjt222/agent-almanac
パス: i18n/caveman-lite/skills/manage-memory
0
agentsagentskillsai-assisted-developmentclaude-codeskillsteams

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