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PseudoLife-MCP

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Pseudolife-MCP

PyPI CI License: Apache-2.0 Python 3.10+

Persistent long-term memory for Claude Code via the Model Context Protocol.

An MCP server that gives Claude (or any MCP-capable client) a long-term memory that persists across sessions — surviving context compactions and /clear resets. Claude is the LLM; this server is its memory on disk.

Cortex Console — Observatory view

What you get:

  • Associative memory that ages like memory should — an 8-band recency continuum from working to forever, ranked by cosine similarity, with contradiction detection and supersession.

  • Canonical facts, not vibes — one current value per entity.attribute slot; corrections supersede rather than silently overwrite, and the full version history survives.

  • Dreams — a bundled extractor (or Claude Sonnet via your Max plan) consolidates the memory stream into facts and a knowledge graph while you're not looking.

  • Lessons from its own work — successes, dead-ends, and your corrections become do/avoid guidance surfaced at the start of every session.

  • A web console to watch it think — the Cortex Console above, plus cited world facts, session episodes, and document RAG.

Quickstart

Requires Docker and Claude Code. One command from clone to first memory:

git clone https://github.com/Pseudogiant-xr/Pseudolife-MCP.git
cd Pseudolife-MCP
ops/install.sh          # Linux / macOS
ops\install.ps1         # Windows (pwsh 7+)

The installer runs the preflight (one exact fix line per missing prerequisite), asks which dream extractor should consolidate memories —

  • sidecar — the bundled local CPU model; works for everyone, ~9 GB image;

  • sonnet-fallback — Claude Sonnet primary via a CLI shim, sidecar as automatic fallback (needs a logged-in Max-plan claude CLI);

  • sonnet-only — Sonnet only; the sidecar image is never built or pulled (~9 GB lighter; dreams pause while the shim is down) —

then brings the stack up, installs the session hooks, offers to append the memory-loop block to ~/.claude/CLAUDE.md (required for the loop to actually fire), runs claude mcp add, and health-checks the daemon. Idempotent — re-run any time; --extractor <mode> switches extractor setups, and ops/install.sh --extractor sidecar --claude-md append runs non-interactively. Linux (Docker Engine): your user must be in the docker group — sudo usermod -aG docker $USER, then log out/in (the preflight checks this).

ops/preflight.sh    # or ops\preflight.ps1 — checks docker/git/claude, prints the exact fix for anything missing
docker volume create pseudolife-mcp-bank
docker volume create pseudolife-mcp-state
docker compose -f ops/docker-compose.yml up -d --build   # first build, once

# Verify, then wire into Claude Code:
curl http://127.0.0.1:8765/health
claude mcp add --transport http --scope user pseudolife-memory http://127.0.0.1:8765/mcp

# Teach Claude the memory loop — REQUIRED, not optional: without a standing
# instruction the tools sit unused. Append the bundled block to your global
# CLAUDE.md (applies to every project):
cat examples/CLAUDE.memory.md >> ~/.claude/CLAUDE.md
# (PowerShell: Add-Content "$env:USERPROFILE\.claude\CLAUDE.md" (Get-Content examples\CLAUDE.memory.md -Raw))

Optional knobs live in ops/.env (cp ops/.env.example ops/.env — the install/update scripts scaffold it too; every value is commented, a missing file runs entirely on defaults).

Then in any Claude Code session: "remember that my staging box is haze-02" → Claude calls memory_store; next session, "which box is staging?"memory_search finds it. Browse everything at the Cortex Console: http://127.0.0.1:8765/ui/.

Related MCP server: Cortex

What this is

A memory engine exposed over MCP. There's no chat UI and no LLM doing the thinking — Claude is the intelligence; these are tools it calls to store and recall what matters. (Models are bundled as plumbing: baked embedding weights for retrieval, and the optional CPU extractor sidecar that consolidates memories into facts while you sleep.)

It layers several complementary stores: the associative continuum (an 8-tier recency-tiered embedding store, working → forever, ranked by cosine similarity with novelty-gated storage, contradiction detection, and supersession); the cortex (slot-keyed canonical facts — one current value per entity.attribute — with provenance tiers and contender parking instead of silent overwrites); a typed knowledge graph over those facts with a closed relation vocabulary and on-read inference; the world cortex (durable cited facts about external reality, age-decayed trust); procedural lessons learned from the agent's own work; and a ChromaDB reference bank for document RAG. The canonical layers in depth: the memory model; the graph and multi-hop recall: retrieval.

State lives in Postgres (the durable source of truth) behind a single long-lived daemon; every session attaches over HTTP (or, for host-process installs, a thin stdio shim). The result: Claude can pick up where it left off, correct itself when facts change, and reason over relationships — without you re-explaining context each session.

Documentation

This README is the front door — install, wiring, and the basic loop. The deep material lives in the user guide:

Page

What's in it

Configuration

Env vars, tuned defaults, toolset tiers, stdio shim, LAN sharing, data layout, backups, schema history

Retrieval

Reranker, BM25 hybrid, abstention floors, ranking-trace debugging, memory_recall, the knowledge graph

Dreaming

Extractor tiers, the bundled sidecar, upgrading the extractor, Sonnet-fallback, cadence, deep dream, consolidation

Episodes & sessions

Daemon-owned session episodes, the briefing hook, nested sub-episodes, tags

The memory model

Cortex slots, provenance contenders, world cortex, lessons, temporal/HLC stamps

Benchmarks

LongMemEval results; why extraction quality dominates

Plus evals/README.md (full benchmark methodology) and CONTRIBUTING.

Tools exposed

The surface was consolidated 2026-07-02 (55 → 32 tools; now 33 with memory_toolset): lifecycle families became verb-dispatched tools (memory_dream, memory_forget, memory_graph_review), and dump/introspection views moved to the Cortex Console (REST) — the manifest is agent context every session, so it stays lean.

Tool

Purpose

memory_store(text, source?, tags?, origin?)

Remember one durable fact / decision / observation (canonical facts reach the cortex via the dream pass or memory_fact_set)

memory_search(query, top_k?, filters..., rerank?, bm25?, explain?, verbose?)

Associative retrieval; canonical cortex facts surface ahead of recall hits; explain=True attaches a ranking trace

memory_recent(n?, sources?, episodes?, tags?, verbose?)

Newest stores, timestamp-ordered (debug + session catch-up)

memory_supersede(old_text, new_text)

Explicit correction — mark a memory obsolete, keep it as history

memory_forget(scope, ...)

Hard-delete from one store: memory (by text/substring/source/episode/tag), fact, world, or lesson (by entity/attribute)

memory_stats()

Per-band sizes, hit rates, totals

memory_get(entry_id) / memory_reinforce(entry_id)

Dereference a memory id to its full episode (+ consolidated_into); reinforce it after finding it useful

memory_fact_get(entity, attribute)

The one CURRENT canonical value at a slot (+ parked contenders); on an empty slot returns ranked candidates (same-entity, then similar slots)

memory_fact_set(entity, attribute, value, origin?, confidence?)

Assert a canonical fact deliberately (insert / confirm / supersede / contest)

memory_fact_resolve(entity, attribute, accept)

Settle a contested slot — adopt (true) or discard (false) the contender

memory_history(entity, attribute?)

With attribute: version timeline at a slot, with writer/temporal stamps. Without: the entity's causal chain — dated fact/entry/edge/lesson events ("what led to X")

memory_world_set(entity, attribute, value, source_url?, ...)

Assert a cited WORLD fact (external knowledge; age-decayed trust by freshness class)

memory_world_search(query, top_k?, verbose?)

Search world facts — each carries effective_confidence, a stale flag, and its citation

memory_outcome(task, outcome, about?, detail?, polarity?)

Record a procedural outcome signal (success/failure/correction); the dream distils signals into lessons

memory_lesson_search(query, top_k?, verbose?)

Recall learned lessons for the task at hand — heed polarity - dead-ends; re_verify flags lessons whose subject facts changed since

memory_dream(action, limit?, cursor?, apply?, snippets?)

Drive the dream: status / pull / commit / run (server-side extractor) / deep (full-corpus graph consolidation; dry-run unless apply, which snapshots the graph tables first; snippets=false omits candidate evidence; responses carry evidence-enriched merge_proposals for near-duplicate triage)

memory_graph_review(action, proposal_id?, proposals?, scope?, src?, dst?)

Work the review queue: list / propose / dismiss_pair / accept_link / reject_link / accept_merge / accept_junk / reject_entity (merge/entity decisions are audit-stamped decided_by=agent over MCP, human via Console)

memory_session_title(title)

Name THIS session's auto-opened episode (default titles are generic)

memory_episode_start(title, hint?) / memory_episode_end()

Open/close a nested sub-episode for a substantial task; entries stored while open carry its id

memory_episode_summary(id)

Stats + tag/source distribution + recent entries within an episode

memory_consolidation_candidates(query?, episode?, ...)

Cluster near-duplicate memories ripe for consolidation

memory_consolidate(replaces, new_text, source?, tags?)

Atomic supersede + store — replace a cluster with one canonical note

memory_graph_relate(src, relation, dst, ...)

Assert a typed edge (closed relation vocabulary; re-assertion bumps confidence)

memory_graph_unrelate(src, relation, dst)

Retract an edge (superseded, kept for audit)

memory_alias(entity, alias)

Bind an alternative name — lookups resolve aliases first

memory_graph(entity, depth?, include_facts?, to?, relation_filter?)

Entity neighborhood (≤3 hops) with derived transitive/inverse edges and per-edge EXTRACTED/INFERRED/AMBIGUOUS provenance tags; to returns the shortest path between two entities

memory_recall(query, hops?, top_k?, verbose?)

Multi-hop retrieval for relational questions; low_confidence: true → fall back to memory_search

memory_relation_define(name, description, ...)

Grow the closed relation vocabulary (deliberate, rare act)

document_ingest(path, source?)

Index a file (txt/md/pdf) in the reference bank

document_search(query, top_k?)

RAG search over the reference bank only

memory_toolset(action)

Check or change this session's visibility tier: status / expand / collapse

Each tool returns plain JSON. See pseudolife_memory/mcp_server.py for docstrings — those are what Claude reads to decide when to call which tool. The five recall-path tools return compact entries by default (result payloads are agent context on every retrieval); pass verbose=true for full metadata. Full-table dumps and topology views live in the Cortex Console (/api/*) and the pseudolife-mcp briefing CLI.

Toolset tiers. Three visibility tiers — minimal (7 tools), core (20, the shipped default), full (33) — filtered per session at tools/list; a session steps its own tier up or down with memory_toolset before calling a hidden tool. Defaults, per-client mapping, and weak-model deployments: Configuration — toolset tiers.

Architecture

One memory daemon owns the bank and serves MCP over streamable HTTP at /mcp; every Claude Code session (and any LAN agent) attaches to it. Postgres 16 + pgvector (in Docker) is the durable source of truth — the in-memory MIRAS bands are a write-through cache hydrated at startup (a small weights.pt persists only band counters — there are no MLP weights).

The daemon runs either containerized (recommended — portable, no host Python) or as a host process. Claude Code attaches either directly over HTTP (recommended) or through a thin torch-free stdio shim:

Claude session A ─┐  HTTP (recommended)
Claude session B ─┼───────────────────► pseudolife-mcp daemon ─► Postgres (Docker)
LAN agent ────────┘  or stdio shim         (single writer)        pgvector
                     (per session)         host proc OR Docker

This kills two v0.1 hazards by construction: a single writer means concurrent sessions can't clobber each other, and entries are transactional so a crash can't wipe the bank. On top of the associative bands sit the canonical layers — cortex, world facts, lessons, temporal/HLC stamps (the memory model) — joined to a typed knowledge graph walkable via memory_graph and multi-hop memory_recall (retrieval & the graph).

The whole stack — Postgres and the memory daemon — runs in Docker. No host Python, no torch install, no version skew; the daemon image bakes in CPU-only torch and the all-MiniLM-L6-v2 weights, so it runs identically on Windows / macOS / Linux. Requires only Docker; built once: ~3 GB daemon image + ~0.6 GB Postgres + ~9 GB extractor sidecar (skip the sidecar entirely with the installer's sonnet-only mode).

git clone https://github.com/Pseudogiant-xr/Pseudolife-MCP.git
cd Pseudolife-MCP

# 1. One-time: create the two persistent volumes (bank + daemon state).
docker volume create pseudolife-mcp-bank
docker volume create pseudolife-mcp-state

# 2. Build + start all three services (Postgres, extractor, then the daemon).
docker compose -f ops/docker-compose.yml up -d --build

Upgrading from a pre-rename install (volumes ops_pseudolife_pgdata / ops_pseudolife_data)? Don't rename those volumes — keep pointing at them by creating ops/.env with PSEUDOLIFE_BANK_VOLUME=ops_pseudolife_pgdata and PSEUDOLIFE_STATE_VOLUME=ops_pseudolife_data before up. See the compose header.

Windows: Docker Desktop's WSL2 VM claims up to ~50% of host RAM by default; the stack needs ~6–7 GB under dream load with the default sidecar (~1 GB in sonnet-only mode) — cap the VM via ops/wslconfig.example (see Troubleshooting).

The daemon serves MCP at http://127.0.0.1:8765/mcp and restarts with Docker — no logon task needed. First build downloads the model into the image (once); every container start after that is offline and fast. Wire Claude Code in over HTTP (below). Where the data actually lives, and how to back it up: Configuration — data layout.

Host-process install (Windows, for GPU / dev): run Postgres in Docker but the daemon on host Python — for hacking on the daemon or running the embedder on a local GPU. Steps, the pseudolife-mcp CLI modes, and the logon autostart task: Configuration — host-process install.

Updating

After a git pull (or local code change), redeploy the daemon only — safely, without touching Postgres or the extractor:

.\ops\update.ps1        # Windows
./ops/update.sh         # Linux / macOS

It backs up the bank (pg_dump + a state-volume tar), tags a rollback image, rebuilds + recreates only the daemon, and waits for /health. It never runs down -v. (Host-process install: just restart the daemon — pip install -e . is editable.) Reclaim accumulated build cache now and then with docker builder prune (safe — it only touches build layers); never docker system prune --volumes, which deletes volumes.

Wire into Claude Code

HTTP transport (recommended — required for the containerized stack). The daemon already serves MCP over HTTP, so point Claude Code straight at it — no shim, no host command, nothing OS-specific. One command:

claude mcp add --transport http --scope user pseudolife-memory http://127.0.0.1:8765/mcp

(--scope user registers it for every project; drop it to register for the current project only.) Or write the equivalent JSON yourself — into ~/.claude.json under the top-level mcpServers key for user scope, or into a .mcp.json at a project root for project scope:

{
  "mcpServers": {
    "pseudolife-memory": {
      "type": "http",
      "url": "http://127.0.0.1:8765/mcp"
    }
  }
}

If you ran the daemon with a PSEUDOLIFE_MCP_TOKEN, add a headers key: "headers": { "Authorization": "Bearer <your-token>" }.

Verify: run claude mcp list (the server should report ✓ connected), then ask Claude to "store a memory that this install works" and check it appears in the Stream tab of the Console at http://127.0.0.1:8765/ui/.

Preferring stdio on a host-process install? A thin torch-free shim proxies stdio to the daemon: stdio shim · LAN sharing · backups & restore rehearsal.

The server's value depends entirely on the agent using it well — this step is what makes the memory loop actually fire; installs that skip it end up with a healthy daemon whose tools are never called. Encode the loop as a standing instruction: append the bundled block to your global ~/.claude/CLAUDE.md (applies to every project) or a per-project CLAUDE.md / AGENTS.md:

cat examples/CLAUDE.memory.md >> ~/.claude/CLAUDE.md
# PowerShell: Add-Content "$env:USERPROFILE\.claude\CLAUDE.md" (Get-Content examples\CLAUDE.memory.md -Raw)

The block (examples/CLAUDE.memory.md) teaches the loop: RECALL at the start (memory_search / memory_lesson_search / memory_fact_get / memory_world_search), CAPTURE as you go (memory_store with an honest origin, memory_fact_set for canonical facts, memory_world_set for cited external facts, source="status" for verbose logs so they stay out of the dream), REFLECT at the end (memory_outcome — the dream distils these signals into the lessons surfaced at your next session start).

One command — ops\install-hook.ps1 (Windows, PowerShell 7) or ops/install-hook.sh (Linux/macOS) — installs the SessionStart briefing hook (what your memory is unsure about + lessons from past work + verified world facts + where we left off, injected at every session start). It backs up your settings.json and is idempotent. The manual hook JSON, the briefing budget flags, and how session episodes open/close/resume without any hooks: Episodes & sessions.

Usage patterns

At session start — loads what you've worked on before, persistent across compactions:

memory_search("project context for X")

During work — store real decisions; skip fleeting chatter (the shipped store gate is permissive, so deliberate, durable claims only):

memory_store("Decided to use stdio transport for the MCP because no port conflicts", source="pseudolife")

When corrected — marks the old fact superseded and stores the correction; both surface in future retrieval, the new one ranked higher:

memory_supersede(
  "Provider interface uses synchronous calls",
  "Provider interface uses async calls — sync version was the v0.7 prototype only"
)

Hygiene — hard-delete (at least one filter is required for scope memory, preventing accidental wholesale deletion); for "keep the history but mark it wrong" use memory_supersede instead:

memory_forget(scope="memory", source="test-noise")
memory_forget(scope="fact", entity="test-entity")

Discovering what's in the bank: open the Cortex Console — sources, tags, episodes, and full-table views all live there. Going deeper: reranking, BM25, abstention, and trace debugging · episodes + tags · canonical facts, contenders, world facts, lessons · the consolidation workflow.

Dreaming — consolidating memories into facts

A dream distils the recent associative stream into canonical cortex facts while you're not looking: pull unconsolidated memories → extract (entity, attribute, value) → advance a cursor so nothing is reprocessed. Extraction is pluggable:

Tier

How it runs

Needs

Quality

0 — baseline

memory_dream(action="run") (regex floor) — headless, on-box, free

nothing

weak

1 — agent-driven

the agent itself is the gateway: the /dream command

the agent you already run

highest

2 — shipped default

daemon auto-sweep → the bundled CPU sidecar, or any OpenAI-compatible endpoint

nothing (sidecar)

high; free if local

The stack ships tier 2 preconfigured (the bespoke Gemma 4 E4B extractor fine-tune in a llama.cpp sidecar, internal-only). The sweep cadence, pointing dreams at a bigger local model or at Claude Sonnet with automatic sidecar fallback, the full-corpus deep dream graph pass, and the privacy/cost trade-offs: Dreaming.

Benchmarks

On the knowledge-update subset of LongMemEval (oracle variant, local-ceiling extractor), the consolidated-facts posture beats naive RAG by 9 points while reading ~40% of the context:

arm

accuracy

context tokens/question

naive RAG (top-6 turns)

0.615

1638

cortex facts only

0.564

59

hybrid (facts + top-3 turns)

0.705

979

The fact spine alone delivers 92% of RAG's accuracy on 3.6% of its token budget. Setup, caveats, and why extraction quality is the dominant factor: Benchmarks; full methodology: evals/README.md.

Cortex Console (web UI)

An operator dashboard served by the daemon itself — point a browser at http://127.0.0.1:8765/ui/ (the /health and /mcp endpoints are unchanged; the console is additive). It's a read-mostly instrument panel for seeing and steering the memory a human otherwise can't observe: Observatory (health, per-layer counts, the 8-band continuum, dream gauges), Cortex (canonical facts with provenance, version-history timelines, inline Accept/Discard for contested slots), World / Lessons / Episodes, Stream (live search with rerank/BM25 toggles and a ranking-trace debugger), Graph (interactive force-directed visualiser), and Console (every safe config.yaml scalar with live-vs-restart badges, diff-preview, and atomic save).

Auth mirrors /mcp: /ui (static shell) and /health are open; /api/* requires the same PSEUDOLIFE_MCP_TOKEN bearer when one is set (the console prompts for it and stores it locally). No build step, no CDN, fully offline — vanilla ES modules + vendored OFL fonts served straight from the daemon. Developing the UI? A fixture-backed dev server (no Postgres, no torch) renders the real frontend against canned data: python -m pseudolife_memory.web.devserverhttp://127.0.0.1:8770/ui/.

Capabilities at a glance

Capability

Status

Transport

Streamable-HTTP MCP daemon (/mcp); optional stdio shim for host-process installs

Storage

Postgres 16 + pgvector (source of truth); ChromaDB for the reference bank

Associative continuum

8-tier cosine MIRAS bands, novelty-gated storage, contradiction detection, supersession

Canonical-fact cortex

Single-writer: LLM dream pass + memory_fact_* (regex auto-promote opt-in, default off)

Provenance contenders

Tier-rank guard user > action > agent; memory_fact_resolve

Knowledge graph

Typed entities/edges, closed relation vocab, on-read closure (Postgres + NetworkX, no AGE/Cypher)

World cortex

memory_world_* — cited external facts + age-decayed freshness (manual ingest)

Procedural memory

memory_outcome (signals) → dream-synthesised lessons via memory_lesson_search; prefers/avoids graph edges; single-writer

Sense of time + multi-writer

Per-write stamp (tx/valid time, HLC ordering, writer/session); memory_history; relative age on reads; write_mode seam (snapshot live, occ Phase-2)

Episodes + tags

Session episodes daemon-owned, keyed by stable per-session id; lazy-open + idle reaper + prune-empty; nested sub-episodes with subtree-expanded recall; multi-valued tags=[...]

Session briefing

SessionStart hook injects unsure-graph + lessons + verified world facts + last-session recap (pseudolife-mcp briefing)

Consolidation

memory_consolidation_candidates + memory_consolidate

Optional components

Cross-encoder reranker (rerank=True, ~80 MB); BM25 hybrid pool (bm25=True, stdlib only); ONNX embedding backend (pip install .[onnx] — ~3x faster CPU encode, bit-identical, auto-enabled when installed); NLI contradiction scorer (pip install .[nli], ~278 MB)

Web console

Cortex Console at /ui/ — health/stats, fact review + history, graph visualiser, search/trace, config editor (read-mostly, token-gated like /mcp)

Schema version

v22 (Postgres meta version) — additive ADD COLUMN IF NOT EXISTS migrations on daemon start; legacy file-mode .pt banks auto-migrate into Postgres; full version history

Troubleshooting

Start with curl http://127.0.0.1:8765/health — it reports the schema version, storage backend, auth state, and persist_errors (non-zero means writes are failing to reach Postgres; check docker logs pseudolife-mcp-daemon).

  • First build is slow / big. The daemon image bakes in CPU torch and the embedding model (~3 GB, several minutes; the extractor sidecar adds a ~5.3 GB model download on its first build). Every start after that is offline and fast — if a rebuild is re-downloading models, the Docker layer cache was pruned.

  • Daemon unreachable after wsl --shutdown (Windows): the host port forward is gone — docker restart pseudolife-mcp-daemon re-establishes it.

  • Docker eating RAM (Windows): the WSL2 VM (Vmmem) claims up to ~50% of host memory by default. Copy ops/wslconfig.example to %USERPROFILE%\.wslconfig, tune memory=, then wsl --shutdown.

  • Port already in use: the stack binds 127.0.0.1:8765 (daemon) and 127.0.0.1:5433 (Postgres). Change the host side in ops/docker-compose.yml if either collides.

  • Console shows "offline" / Unauthorized: "offline" means the daemon isn't reachable (see above); a 401 prompt means it runs with PSEUDOLIFE_MCP_TOKEN — paste that token into the Console's Token dialog.

  • Claude Code doesn't see the tools: claude mcp list should show pseudolife-memory ✓ connected. If not, re-check the URL (http://127.0.0.1:8765/mcp — the /mcp path matters) and the bearer header when a token is set. A first call after a cold start loads the embedder (a few seconds, once per daemon start).

Uninstall

Deletion is deliberate at every step:

# 1. Optional: take a final backup first (ops/backup.ps1 or ops/backup.sh).
# 2. Stop and remove the containers (volumes survive this).
docker compose -f ops/docker-compose.yml down
# 3. Remove the MCP registration.
claude mcp remove pseudolife-memory
# 4. Only when you're sure: delete the data volumes (THIS is the memory).
docker volume rm pseudolife-mcp-bank pseudolife-mcp-state

Host-process installs: also unregister the logon task (Unregister-ScheduledTask -TaskName "Pseudolife-MCP Daemon") and remove the SessionStart briefing hook from ~/.claude/settings.json (a timestamped .bak-* sits next to it).

Testing

pip install -e .[dev], then pytest tests/. The suite covers every layer, from the MemoryService surface to the Cortex Console REST API; model-heavy pieces are stubbed so it stays fast and offline. The PG-backed suites target a throwaway pseudolife_memory_test database on the bundled dev container (never your real bank) and skip cleanly without Postgres. Full dev setup: CONTRIBUTING.

What's not built yet

  • Reflection via MCP sampling — would let the dream borrow Claude itself as the extractor; Claude Code doesn't yet support it.

  • Cross-machine sync — memory lives on one PC's disk; syncing via rclone / syncthing is left as an exercise.

  • Automated world-knowledge ingestion — populating the world cortex from the live web needs a web-fetch tool the standalone server doesn't ship; an agent with web access can automate the fetch+cite step today via memory_world_set.

License

Apache-2.0 — see LICENSE and NOTICE.

A
license - permissive license
-
quality - not tested
A
maintenance

Maintenance

Maintainers
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2Releases (12mo)
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