Skip to main content

Institutional memory for AI agent teams: multi-model, cross-project, token-budgeted.

Project description

Memee

tests license python pypi

Institutional memory for AI agent teams. Your agents stop re-solving problems.

Memee sits between your agents and the work. It records what worked, flags what didn't, and hands each agent only the 5–7 memories it actually needs for the task in front of it — instead of re-stuffing 500 patterns into every prompt.

pipx install memee            # recommended for a CLI tool
# or:
python3 -m pip install memee  # if you don't have pipx

For teams and companies. This OSS release is single-user and self-hosted. If you want the same memory shared across your whole team, with cross-developer / cross-agent / cross-project / cross-model canon building into company-wide institutional knowledge, there's a paid Team edition at memee.eu. Same engine, plus SSO, audit log, and shared scope. From $49 / month flat (up to 15 seats), $12k / year Enterprise with SOC 2 + air-gap.


Why Memee

  • Your agents stop repeating mistakes. One agent hits a bug, records it, every other agent (in every other project) is warned before it happens again.
  • Your CLAUDE.md grows forever. Memee doesn't. Typical AGENTS.md / CLAUDE.md across 27 popular OSS repos: ~2,200 tokens (median), 10k+ at grown teams, one published outlier at 42k — reloaded in full on every Claude Code / Cursor session. Memee routes only the 5–7 memories relevant to the current task (≤500 tokens) and keeps per-turn context bounded as the knowledge base grows.
  • Every model reads from one canon. Claude, GPT, Gemini, Llama all record into, and pull from, the same memory. Cross-model agreement raises confidence; single-model claims stay provisional.

Install and first use (60 seconds)

pipx install memee
memee setup

# Record a pattern you just learned
memee record pattern "retry with jitter" \
  --tags reliability,http \
  -c "Always use exponential backoff with jitter; capped at 30s; retry only idempotent verbs."

# Search it back
memee search "retry"

# Health check + auto-wire Claude Code / MCP config
memee doctor

That's it. Memory lives in ~/.memee/memee.db. No account. Core read/write is fully local; optional vector embeddings use sentence-transformers, which fetches a ~80 MB model from HuggingFace on first use (skipped when TRANSFORMERS_OFFLINE=1 is set).

What it actually does

Memee is a stack of small engines sitting on SQLite + FTS5 + sentence-transformer embeddings.

Layer What it does Why you care
Router Task-aware briefing. Picks 5–7 memories within a token budget. Agents get signal, not a dump.
Quality gate Validates, dedupes, rates every incoming memory. Junk doesn't survive the first write.
Confidence scoring Adaptive: cross-project ×1.5, cross-model ×1.3, combined ×1.95. Patterns earn trust across evidence, not by author claim.
Lifecycle hypothesis → tested → validated → canon → deprecated. Old advice ages out; good advice gets promoted.
Dream mode Nightly: connect related memories, surface contradictions, promote canon. Knowledge compounds while you sleep.
Propagation A validated pattern auto-pushes to other projects with matching stack/tags. Fix once, benefit everywhere.
Review `git diff memee review -` scans changes against anti-patterns.
CMAM bridge Push canon to Anthropic's Managed Agents Memory at /mnt/memory/. Claude sessions see canon on turn 1, no MCP roundtrip.

Deeper architecture doc: CLAUDE.md. CMAM specifics: docs/cmam.md. Review engine: docs/review-fixes.md.

Benchmarks

All numbers below are internal simulations and benchmarks, not independent third-party evaluations. They describe system behaviour under synthetic workloads. Treat them as suggestive, not conclusive.

  • Per-turn context baseline: median CLAUDE.md / AGENTS.md across 27 popular OSS repos (langchain, vercel/ai, prisma, zed, openai/codex, …) is ~2,160 tokens; mean 2,500; p95 ~9,600; a published outlier at 42,000. Both Claude Code and Cursor load this file in full on every session start.
  • Router output: budget-capped at 500 tokens, measured average of 39 tokens (min 18, max 67) across 10 task queries on a 500-pattern synthetic corpus. The cap holds regardless of library size, so the gap to the baseline widens as your knowledge grows.
  • OrgMemEval v1.0: 92.4/100, across propagation, avoidance, maturity, onboarding, recovery, calibration, synthesis, and research. Competitor baselines on the same scenarios range from 0.9/100 (MemPalace) to 3.5/100 (Mem0, the closest); see docs/benchmarks.md.
  • 7-task A/B (with vs. without Memee): time –71%, iterations –65%, quality 56% → 93%, impact-DB ROI ≈ 10.7× at the current $49/mo Team tier. GigaCorp sim (100 projects, 100 agents, 18 months): incidents 12/mo → 3/mo, annual ROI ≈ 3× at the same flat Team tier.
  • Retrieval: hit@1 = 100% on a 12-memory routing benchmark after the recent ranking fix.

Reproduce locally:

memee benchmark          # OrgMemEval v1.0
pytest tests/ -v         # full suite, ~60s

Using it with Claude, GPT, Gemini

Memee ships an MCP server with 24 tools. Drop this into ~/.claude/settings.json (or the Cursor / Continue / any MCP-capable client equivalent):

{
  "mcpServers": {
    "memee": { "command": "memee", "args": ["serve"] }
  }
}

Memee auto-detects the caller's model family from MEMEE_MODEL, ANTHROPIC_MODEL, or OPENAI_MODEL and tags every write with source_model. That's how confidence scoring knows when Claude and Gemini agree — and when they don't.

Quick CLI:

memee brief --task "write unit tests"   # PUSH: routed briefing
memee check "about to add eval() here"  # PULL: anti-pattern check
memee propagate                          # cross-project diffusion
memee dream                              # nightly: connect, contradict, promote
memee cmam sync                          # push canon to /mnt/memory/ for Claude

Pricing

Memee (this repo) is MIT-licensed and free. It's a single-user product: your memory, your machine, no account.

If you need multi-user scope (personal / team / org), SSO, audit log, seat management, or a hosted control plane, install memee-team — a paid proprietary package from memee.eu. Pricing is flat, not per-seat: $49/month for a team of up to 15, from $12k/year for Enterprise with SOC 2, SCIM, and air-gap. It plugs into the same engine; no re-install, no data migration.

Contributing

PRs are welcome. Before opening a big one, a short issue describing the direction saves everyone time.

pip install -e ".[dev]"
pytest tests/ -v

Style: type hints, docstrings in English, 100-char lines, ruff clean. New engines live in src/memee/; every new behaviour wants a test in tests/.

License

Memee core is released under the MIT License. The optional memee-team package is proprietary and distributed under a separate commercial EULA; see memee.eu for terms.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

memee-1.0.7.tar.gz (282.6 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

memee-1.0.7-py3-none-any.whl (143.1 kB view details)

Uploaded Python 3

File details

Details for the file memee-1.0.7.tar.gz.

File metadata

  • Download URL: memee-1.0.7.tar.gz
  • Upload date:
  • Size: 282.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.14.3

File hashes

Hashes for memee-1.0.7.tar.gz
Algorithm Hash digest
SHA256 5472ae23ed43bb98d417ee7a79e19fb8f27a015b6da19a2c92cb8d22e0ebffec
MD5 1bde20a5910b31469d7f4d7a01aceadf
BLAKE2b-256 9973897efa1571414f112914b0ce1a3f99ffc3d077e07a0ac1148e73ce7f6128

See more details on using hashes here.

File details

Details for the file memee-1.0.7-py3-none-any.whl.

File metadata

  • Download URL: memee-1.0.7-py3-none-any.whl
  • Upload date:
  • Size: 143.1 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.14.3

File hashes

Hashes for memee-1.0.7-py3-none-any.whl
Algorithm Hash digest
SHA256 c5134dbe53f326d5051ab7127be1bac501d01bed6634a87db266abdcd4552001
MD5 78bd3b4dfdac7106a098ae286b665307
BLAKE2b-256 fa17fc3a082af3602ae5f68c7b44ddeccb047f901ceb681dbe0ed2002a611669

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page