TT-Wang

memem

Community TT-Wang
Updated

A Claude Code plugin that gives Claude persistent memory across sessions — stores lessons and decisions as markdown in your Obsidian vault, searches them with SQLite FTS5, and mines past transcripts automatically.

memem

Persistent, self-evolving memory for Claude Code. Stop re-explaining your project every session.

CI License: MIT Python 3.11+

For LLM/AI tool discovery, see llms.txt.

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  persistent memory for Claude Code

What is memem?

memem is a Claude Code plugin that gives Claude persistent memory across sessions. A background miner extracts durable lessons (decisions, conventions, bug fixes, preferences) from your completed sessions, stores them as markdown in an Obsidian vault, and automatically surfaces relevant ones at the start of each new session via a query-tailored briefing.

It's local-first: no cloud services, no API keys required, no vendor lock-in. Everything lives in ~/obsidian-brain/memem/memories/ as human-readable markdown.

When should I use memem?

Use memem if:

  • You use Claude Code daily and keep re-explaining your project to every new session
  • You want durable memory you can browse and edit as markdown
  • You like local-first tools with zero vendor lock-in
  • You already use Obsidian (memem plugs straight into your vault)

How is memem different from CLAUDE.md?

CLAUDE.md is a single hand-edited file per project. memem gives you:

  • Automatic extraction — no manual note-taking, the miner captures lessons from every completed session
  • Query-aware context — only the memories relevant to your current question get injected, not a static dump
  • Self-evolving — memories merge, update, and deprecate automatically as your project evolves
  • Cross-project — works across every Claude Code project you use, not scoped to one repo
  • Security scanning — every write is scanned for prompt injection and credential exfiltration
  • Browsable — Obsidian vault with graph view and backlinks for free

How do I install memem?

/plugin marketplace add TT-Wang/memem
/plugin install memem

That's it. On first run, bootstrap.sh self-heals everything:

  1. Verifies Python ≥ 3.11
  2. Installs uv if missing (via the official Astral installer)
  3. Syncs deps into a plugin-local .venv (hash-cached against uv.lock)
  4. Creates and canary-tests ~/.memem/ and ~/obsidian-brain/
  5. Writes ~/.memem/.capabilities (used for degraded-mode decisions)
  6. Execs the real MCP server

First run: ~5 seconds. Every run after: ~100ms. No separate pip install step.

What happens on my first Claude Code session?

You type your first message. The UserPromptSubmit hook fires and sees zero memories (you just installed it), so it injects a welcome banner into Claude's context. Claude reads the banner, tells you memem is active, and — if you have pre-existing Claude Code sessions — offers to mine them via /memem-mine-history.

You work normally. The miner daemon runs silently in the background. When your session ends and settles for 5 minutes, the miner extracts memories from the transcript using Claude Haiku and writes them to your vault.

Session 2 onwards: the hook sends your first message to context_assemble, which gives Haiku the relevant memories and asks it to synthesize a tailored briefing. You see a status banner like [memem] 12 memories · miner OK · assembly OK followed by the brief. Claude starts with full context — no re-explaining.

What does memem save?

It saves durable knowledge, not session logs:

  • Architecture decisions with rationale ("we use RS256 JWTs because HS256 can't be verified by third parties without sharing the secret")
  • Conventions ("tests go in tests/ not spec/", "commit messages use imperative mood", "never import from internal/ outside its package")
  • Bug fixes you might forget ("bcrypt.compare is async — must await", "timezone math must use dayjs.utc() or DST shifts the result by an hour")
  • User preferences ("prefer single commits, not stacked PRs", "terse responses — no trailing summaries", "ask before running migrations in prod")
  • Known issues & workarounds ("JWT_SECRET defaults to 'secret' if unset — tracked in #123", "pnpm install hangs on corporate VPN, use --network-timeout=600000")
  • Environment & tooling facts ("project uses Poetry, not pip", "CI runs on Node 20 but local defaults to 22 — pin with nvm use", "Redis must be running on :6380 not :6379")
  • Project structure & invariants ("auth middleware requires Redis", "all DB writes go through repo/ layer, never raw SQL in handlers")
  • Failure patterns & post-mortems ("mocking the DB hid a broken migration last quarter — integration tests must hit a real DB", "don't ship on Fridays after the 2025-11 rollback incident")
  • Third-party quirks ("Stripe webhooks retry for 3 days — idempotency key is mandatory", "OpenAI streaming drops the final token if client closes early")
  • Domain knowledge ("a 'merchant' in our schema is what the legal team calls a 'counterparty'", "revenue is recognized at ship time, not order time")

It does NOT save:

  • Raw session transcripts (those are searchable via transcript_search, not stored as memories)
  • Trivial or obvious facts
  • Session outcomes ("today I worked on X")

Where does memem store my memories?

Store Path Purpose
Memories ~/obsidian-brain/memem/memories/*.md Source of truth (human-readable markdown)
Playbooks ~/obsidian-brain/memem/playbooks/*.md Per-project curated briefings
Search DB ~/.memem/search.db SQLite FTS5 index (machine-fast lookup)
Telemetry ~/.memem/telemetry.json Access tracking (atomic writes)
Event log ~/.memem/events.jsonl Append-only audit trail
Capabilities ~/.memem/.capabilities Degraded-mode flags written by bootstrap
Bootstrap log ~/.memem/bootstrap.log First-run diagnostics

You can point memem elsewhere via MEMEM_DIR and MEMEM_OBSIDIAN_VAULT env vars.

What are the MCP tools Claude can call?

Tool What it does
memory_save(content, title, tags) Store a lesson. Security-scanned for prompt injection and credential exfil before writing.
memory_recall(query, limit) Search memories. FTS5 + temporal decay + access reinforcement + importance weighting.
memory_list(scope_id) List all memories with stats, grouped by project.
memory_import(source_path) Bulk import from files, directories, or chat exports.
transcript_search(query) Search raw Claude Code session JSONL logs (not the mined memories).
context_assemble(query, project) On-demand query-tailored briefing from playbooks + memories + transcripts.

What slash commands does memem add?

  • /memem — welcome, status, help
  • /memem-status — memory count, projects, search DB size, miner health
  • /memem-doctor — preflight health check with fix instructions for any blocker
  • /memem-mine — start the miner daemon manually (normally auto-starts)
  • /memem-mine-history — opt-in: mine all your pre-install Claude Code sessions

What if the claude CLI isn't on my PATH?

memem enters degraded mode — it still works, just without Haiku-powered context assembly and smart recall. You get FTS-only keyword recall instead of query-tailored briefings. Every session shows [memem] N memories · miner OK · assembly degraded (claude CLI missing — FTS-only recall) at the top of the context, so you know why.

This is by design: missing optional dependencies should degrade, not fail.

How do I diagnose problems?

Run /memem-doctor. It runs the same preflight the bootstrap shim runs (Python version, mcp importable, claude CLI on PATH, directory writability, uv available), then prints a report labelled HEALTHY, DEGRADED, or FAILING with explicit fix instructions for each blocker.

For deeper debugging:

tail -f ~/.memem/bootstrap.log   # first-run shim log
tail -f ~/.memem/miner.log       # miner daemon log
cat ~/.memem/events.jsonl        # memory operation audit trail
python3 -m memem.server --status   # detailed status dump

How does the mining pipeline work?

Session ends → miner daemon sees the JSONL file in ~/.claude/projects/
  → Waits 5 minutes for the file to "settle" (no more writes)
  → Filters to human messages + assistant prose (strips tool calls, system reminders)
  → One Haiku call with the full context: "extract durable lessons"
  → Haiku returns JSON array of memory candidates
  → Each candidate runs: security scan → dedup check → contradiction detection → save
  → Index rebuilt, per-project playbooks grown and refined
  → Session marked COMPLETE in ~/.memem/.mined_sessions

How does the recall pipeline work?

First message in a new session → auto-recall.sh hook fires
  → Reads ~/.memem/.capabilities for status banner
  → If claude CLI is available → sends (message, memories) to Haiku
      → Haiku synthesizes a focused briefing (300-800 tokens usually)
      → Brief injected into Claude's context as "memem context briefing"
  → If claude CLI is missing → falls back to FTS-only keyword recall
  → Either way, Claude starts its reply with relevant context already loaded

Architecture

memem is split into small, focused modules:

  • models.py — data types, path constants
  • security.py — prompt injection + credential exfil scanning
  • telemetry.py — access tracking, event log (atomic writes, fcntl-locked)
  • search_index.py — SQLite FTS5 index
  • obsidian_store.py — memory I/O, dedup scoring, contradiction detection
  • playbook.py — per-project playbook grow + refine
  • assembly.py — context assembly via Haiku
  • capabilities.py — runtime feature detection for degraded mode
  • storage.py — server-lifecycle helpers (PID management, miner auto-start)
  • server.py — thin MCP entrypoint (FastMCP imported lazily)
  • cli.py — command dispatcher for non-MCP entrypoints
  • mining.py — session mining pipeline

Multi-signal recall scoring:

  • 50% FTS relevance
  • 15% recency (0.995^hours decay)
  • 15% access history (usage reinforcement)
  • 20% importance (1-5 scale from Haiku)

Memory schema (markdown frontmatter):

---
id: uuid
schema_version: 1
title: "descriptive title"
project: project-name
tags: [mined, project-name]
related: [id1, id2, id3]
created: 2026-04-13
updated: 2026-04-13
source_type: mined | user | import
source_session: abc12345
importance: 1-5
status: active | deprecated
valid_to:                     # set when deprecated
contradicts: [id1]            # flagged conflicts
---

Configuration

Env var Default Purpose
MEMEM_DIR ~/.memem State directory (PID files, search DB, logs)
MEMEM_OBSIDIAN_VAULT ~/obsidian-brain Vault location
MEMEM_EXTRA_SESSION_DIRS (none) Colon-separated extra session dirs to mine
MEMEM_MINER_SETTLE_SECONDS 300 Seconds to wait before mining a completed session
MEMEM_SKIP_SYNC 0 Bootstrap skips uv sync when set to 1 (dev only)

Setup Obsidian (optional, recommended)

memem works without Obsidian — it just writes markdown. But Obsidian gives you graph view and backlinks for free:

  1. Download: https://obsidian.md (free)
  2. Open ~/obsidian-brain as a vault
  3. Memories appear in memem/memories/, playbooks in memem/playbooks/
  4. Use Graph View to see how memories link via the related field

Requirements

  • Claude Code
  • Python ≥ 3.11
  • uv (auto-installed by bootstrap.sh on first run)
  • claude CLI on PATH (optional — required for Haiku-powered assembly; degraded mode works without it)

Development

git clone https://github.com/TT-Wang/memem.git
cd memem
pip install -e ".[dev]"
pytest             # 54 tests
ruff check .       # lint
mypy memem # type check (strict)

See CONTRIBUTING.md for the PR process and CHANGELOG.md for version history.

License

MIT

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