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ai-memory is a persistent memory system for AI assistants. It works with any AI that supports MCP -- Claude, ChatGPT, Grok, Llama, and more. It stores what your AI learns in a local SQLite database, ranks memories by relevance when recalling, and auto-promotes important knowledge to permanent storage. Install it once, and every AI assistant you use remembers your architecture, your preferences, your corrections -- forever.
Choose your installation path
| You are⦠| Your deployment is⦠| Start here |
|---|---|---|
| A single developer trying ai-memory | One AI client on a laptop | docs/install-quickstart.md β 5-min super-simple install + LLM-backend wired in one block |
| An engineer / architect | Single-node production, or multiple agents on one node | docs/INSTALL.md β docs/production-deployment.md |
| An engineer / architect | Multi-server / multi-rack / multi-DC / swarm / hive / federation | docs/enterprise-deployment.md β 8 topologies, singleton β multi-region |
| An engineer / architect | PostgreSQL + Apache AGE storage (multi-writer, 10M+ memories, KG-heavy) | docs/postgres-age-guide.md β first-class postgres operator guide |
| A decision-maker evaluating adoption | β | docs/audience/decision-maker.html |
Configuring the LLM backend (xAI Grok, OpenAI, Anthropic, Gemini, DeepSeek, Kimi, Qwen, Mistral, Groq, Together, Cerebras, OpenRouter, Fireworks, LMStudio, vLLM, llama.cpp server, or local Ollama)? See
docs/integrations/llm-backends.mdβ the MCP env-block recipe is the same regardless of installation path.
v0.8.0 (distributed-coordination) β current release. This is the release where the memory substrate becomes a coordination substrate. It adds the distributed-coordination machinery from #1709: a typed action DAG with a real state machine (memory_action_*), TTL-bounded single-holder leases (memory_lease_*), Ed25519-signed signals (memory_signal_*), Ed25519-attested checkpoints (memory_checkpoint_*), and frozen, replayable routines (memory_routine_*) β so a heterogeneous fleet of agents can take turns, hand off work, and prove who said what without having to trust each other. It layers typed cognition on top (the Goal/Plan/Step memory kinds, a lifecycle_state machine, and the decomposes_into / depends_on / advances link relations), hardens federation secure-by-default (peer enrollment ON by default #1789, per-transition signatures #1718, per-write content attestation #1464, transition-replay nonces #1805, outbound peer-cert pinning #1678), and ships governance that actually blocks β the Claude Code PreToolUse hook is reworked to a type:command wrapper so a substrate Refuse truly denies the tool (#1811). Surface: schema v70, 100 MCP tools at --profile full (99 callable + the always-on memory_capabilities bootstrap) / 7 at --profile core, 91 HTTP route registrations (77 unique URL paths), 83/85 CLI subcommands, 9 typed MemoryLink relations, a 27-field Memory. Runs on two production backends behind one identical API β embedded SQLite and PostgreSQL + Apache AGE β across desktop, server, and on-device (iOS + Android). Everything is additive over v0.7.0; review the secure-default flips before upgrading. Full release notes: docs/v0.8.0/release-notes.md.
v0.7.0 (attested-cortex) β prior release. Rolled together the cortex-fluent legibility work with the full v0.7 trust + A2A scope from ROADMAP Β§7.3, plus (per operator directive 2026-05-09) the originally-v0.7.1 postgres+AGE first-class work, plus the post-grand-slam ship-readiness wave (Batman Forms 1-6 + 7th-form Option-B foundation + QW-1/2/3 + reconciliation security sweep). The substrate becomes both more articulate (capabilities v3, named loader tools, compacted schemas, Batman MemoryKind vocabulary, persona/atomisation/multistep-ingest primitives) and cryptographically trustworthy (Ed25519 attestation, sidechain transcripts, programmable 25-event hook pipeline, enforced namespace inheritance, V-4 cross-row signed-events hash chain). v0.7.0 also ships postgres + Apache AGE as a first-class storage backend β ai-memory serve --store-url postgres://β¦ for live daemon use, schema parity across both backends (at the v0.7.0 release, sqlite + postgres converged on logical schema v57, where CURRENT_SCHEMA_VERSION was 57; the v0.8.0 release substrate has advanced this lockstep to schema 70, with the additive v58βv70 coordination + visibility tables landed on both backends β see CLAUDE.md Β§Database for the v58βv70 ladder) (canonical anchors: src/storage/migrations.rs for sqlite + src/store/postgres.rs for postgres); on-disk migration files end at migrations/sqlite/0047_v56_list_composite_indexes.sql and the postgres in-process migrate_v57() ladder arm (file-name counters lag the logical schema version because both ladders apply post-v34 deltas via in-process arms β see docs/MIGRATION_v0.7.md Β§schema-ladder for the v35-v57 narrative; v48 #933 added the federation-push DLQ table; v49 #1025 added 14 nullable columns to archived_memories so archive β restore is lossless for the full v0.7.0 Memory shape; v50 #1156 extended agent_quotas PRIMARY KEY from (agent_id) to (agent_id, namespace) so per-namespace K8 quota allotments hold even when a single agent operates across many namespaces β pre-v50 rows backfill to the _global sentinel namespace; v51 #1255 (PR #1296) added the federation_nonce_cache table so peer-replay-prevention nonces persist across daemon restarts; v52 #1389 added the transcript_line_dedup table backing RFC-0001 memory_capture_turn L4 + recover_from_transcript L2 idempotency so a SIGKILL between turns never produces a duplicate memory on subsequent rehydration; v53 #1418 scoped the memories_au FTS5 sync trigger to (title, content, tags) only so non-FTS column updates no longer fire a needless sync; v54 #1466 backfilled tier-default expiry onto legacy NULL-expiry mid/short rows to close the TTL-leak immortal-rows class; v55 #1476 made the W=2 federation-catchup query (updated_at > ? ORDER BY updated_at ASC LIMIT) sargable and added the sqlite idx_memories_updated_at index β postgres adds no new index because memories_updated_at_idx DESC already serves the range scan via Index Scan Backward; v56 #1579 added the composite list/archive ordering indexes (idx_memories_list_order, idx_memories_ns_list_order, idx_archived_ns_archived_at) paired with the sargable storage::list rewrite β sqlite-side DDL; the postgres migrate_v56() arm is a version-stamp no-op; v57 #1579 added the postgres stored generated tsv tsvector column + memories_tsv_gin GIN index so the search/recall shapes match AND rank on the precomputed column instead of re-computing the tsvector per matched row β the legacy memories_content_fts expression index is dropped and the sqlite twin is a version-stamp no-op because FTS5 already materialises the indexed text)), the new ai-memory schema-init CLI verb, and 6-factor recall scoring parity. The v0.6.4 default surface grows by two always-on loaders to 7 tools (memory_load_family + memory_smart_load join the original five); the runtime ceiling at --profile full is 74 advertised entries (73 callable memory tools + the always-on memory_capabilities bootstrap; verified against Profile::full().expected_tool_count() β see src/profile.rs). Everything new is additive and (for the trust + postgres surfaces) opt-in. Upgrading from v0.6.x? Read docs/MIGRATION_v0.7.md first β most v0.6.4 callers see no behavior change, but pre-v0.6.3.1 v0.6.x users hit the G1 namespace-inheritance fix. Switching to postgres+AGE? See docs/postgres-age-guide.md and docs/migration-v0.7.0-postgres.md. Full release notes: docs/v0.7.0/release-notes.md.
v0.6.4 (quiet-tools) β the MCP server ships with a 5-tool default surface (memory_store, memory_recall, memory_list, memory_get, memory_search) plus the always-on memory_capabilities bootstrap. The other 38 tools remain reachable via --profile graph|admin|power|full or runtime expansion through memory_capabilities --include-schema family=<name>. Eager-loading harnesses (Claude Desktop / Codex CLI / Grok CLI / Gemini CLI) drop ~4,700 input tokens of tool schemas per request β a 76.4% reduction measured against cl100k_base BPE. To preserve v0.6.3 behavior 1:1, run ai-memory mcp --profile full. See docs/MIGRATION_v0.6.4.md.
What's new in v0.8
v0.8.0 (distributed-coordination) turns the memory substrate into a coordination substrate for multi-agent (NHI) fleets. The headline is the distributed-coordination machinery (#1709); everything ships on both the sqlite and postgres+AGE SAL adapters and stays default-equivalent for v0.7.x callers. Full tool reference: docs/coordination.md; full notes: docs/v0.8.0/release-notes.md.
Distributed coordination substrate (Pillar-1, #1709)
- Actions β the dependency DAG (schema v59). Typed action nodes with a state machine (
pending β claimed β in_progress β done/failed/abandoned), typed DAG edges (requires/unlocks/blocks/gated_by/sibling), and frontier/next surfaces that pull the next runnable node. 8 MCP tools (memory_action_create/_get/_transition/_list/_add_edge/_edges/_frontier/_next). - Leases β single-holder, TTL-bounded claims (schema v59). Heartbeat-renewed compare-and-swap claim (
PRIMARY KEYonaction_id= one holder at a time) plus an hourly lease-sweeper. 4 MCP tools (memory_lease_acquire/_renew/_release/_get). - Signals β typed, Ed25519-signed inter-agent messages (schema v60). Each carries a signature + sender
signer_pubkeyand threads viacorrelation_id/in_reply_to. 5 MCP tools (memory_signal_send/_read/_inbox/_thread/_ack). - Checkpoints β attested conditional gates (schema v61). A gate that blocks until a condition resolves; resolution is self-signed in place (Ed25519) for separation-of-duties, and
verifyre-checks the signature. 4 MCP tools (memory_checkpoint_create/_resolve/_query/_verify). - Routines β parameterised, frozen, replayable plans (schema v62). Authored as a
draft, then frozen (immutable, Ed25519 freeze-attestation);runmaterialises a concrete set of actions + edges from a{{param}}template into aroutine_runsrecord. 5 MCP tools (memory_routine_create/_freeze/_run/_status/_list). - Every coordination state-mutation appends a tamper-evident
coordination.<op>row to thesigned_eventsV-4 hash chain (#1722); the two authority-granting writes are mirrored onto the HTTP daemon (POST /api/v1/actions/{id}/transition,POST /api/v1/signals) with local CAS + W-of-N federation fan-out (#1718).
Typed cognition (Pillar-2)
The memory_kind vocabulary extends with goal / plan / step; the closed memory_links.relation taxonomy extends 6 β 9 relations (decomposes_into / depends_on / advances, schema v63); and a first-class memories.lifecycle_state column (schema v64) makes Goal/Plan/Step a real state machine (open β active β blocked/done/abandoned), enforced across the MCP / HTTP / SAL surfaces with an illegal edge mapping to HTTP 409 CONFLICT. The Memory struct grows to 27 fields. No new MCP tool β the v64 work adds only permissive optional request fields.
Federation hardened, secure by default
Peer enrollment ON by default (#1789), per-transition signatures on authority-granting writes (#1718), per-write content attestation for relayed memories (#1464), transition-replay nonces (#1805), and outbound peer-cert fingerprint pinning (#1678). Heterogeneous fleets that don't have to trust each other β review the secure-default flips in docs/v0.8.0/release-notes.md Β§"Federation hardening" before upgrading.
Governance that actually blocks (#1811)
The Claude Code PreToolUse governance hook is reworked to a type:command wrapper (ai-memory governance check-action --from-pretool-stdin) so a substrate Refuse emits permissionDecision:"deny" and truly BLOCKS the tool β the prior type:mcp_tool form structurally could not enforce. Plus mandatory-hook-presence enforcement (#1734) and a new escalate governance verdict (Β§22 PE-5) for human-in-the-loop.
Pillar-4 operational controls
HTTP admission control (#1733 β opt-in concurrency cap that sheds excess with a typed 503), deferred Apache-AGE graph projection (#1735 β takes the synchronous AGE round-trips off the postgres link-write hot path), curator compaction activation (#1749 / #1750), and the ai-memory verify-audit-trail CLI (Β§22 PE-8) that walks the signed_events cross-row hash chain end-to-end.
Schema v57 β v70 (all additive)
Coordination + typed-cognition + visibility + encryption-prep + cold-path + archive-edge tables (v58βv70), mirrored on both the sqlite and postgres adapters; auto-migrates on first open and archive β restore round-trips losslessly. See CLAUDE.md Β§Database for the canonical v58βv70 ladder.
Where to start:
docs/v0.8.0/release-notes.md(full release notes),docs/coordination.md(coordination tool reference), and CLAUDE.md Β§Database (schema-ladder SSOT).
What's new in v0.7
v0.7.0 closes the attested-cortex epic (69/69 across 11 tracks AβK), folds in the originally-v0.7.1 postgres+AGE first-class work, and absorbs the post-grand-slam ship-readiness wave (Batman Forms 1-6 + 7th-form Option-B foundation + QW-1/2/3 + security reconciliation). Canonical feature inventory: docs/internal/v070-feature-inventory.md. Every surface stays default-off or default-equivalent for v0.6.4 callers β see the v0.7 compatibility matrix for the breakdown.
Substrate-native write-time investment (Batman Forms 1-6 + 7th-form)
- Form 1 β online dedup-and-synthesis (issue #754). Single-batch action-emitting LLM call replaces the v0.6.x per-pair classifier on the store path. Opt back into legacy yes/no via
legacy_per_pair_classifier = trueon the namespace standard. - Form 2 β synchronous atomise-before-embed (issue #755). New
memory_atomisetool +auto_atomise_mode = Synchronous|Deferred|Offpre-store hook. Curator decomposes long writes into 2β10 atomic propositions before recall ever sees them. Seedocs/atomisation.md. - Form 3 β multi-step ingest orchestrator (issue #756).
memory_ingest_multistepthreads deterministic Jaccard+FTS helpers through prompt-cache-stable LLM stages. Seedocs/multistep-ingest.md+cookbook/multistep-ingest/01-two-phase.sh. - Form 4 β fact provenance (issue #757). Citations + source-URI + atom-grain spans ride on existing
memory_store/memory_atomisepayloads. Seedocs/provenance.md. - Form 5 β auto-confidence + shadow calibration + freshness decay (issue #758).
memory_calibrate_confidenceMCP tool + per-source baseline sweep. Env varsAI_MEMORY_AUTO_CONFIDENCE,AI_MEMORY_CONFIDENCE_SHADOW,AI_MEMORY_CONFIDENCE_SHADOW_SAMPLE_RATE,AI_MEMORY_CONFIDENCE_DECAY. Seedocs/confidence-calibration.md. - Form 6 β
MemoryKindBatman vocabulary (issue #759). 10-variant enum (Observationdefault +Reflection/Persona/Concept/Entity/Claim/Relation/Event/Conversation/Decision). Optionalauto_classify_kindpre-store hook (off / regex_only / regex_then_llm). Seedocs/memory-kind-vocab.md. - 7th-form β agent-EXTERNAL Layer-4 wiring (Option-B foundation) (issue #760; v0.8.0 complete cover at #697). Operator-keypair-signed seed rules
R001..R004,memory_check_agent_action+memory_rule_listMCP tools, substratestorage::insertpre-write hook. Seedocs/policy-engine.md+docs/governance/agent-action-rules.md. - Operator how-to β turning Forms 1β6 + 7th from capable β active (issue #800). 7-step recipe (operator keygen β sign-seed β enable R001βR004 β curator daemon β optional reflection-pass β namespace policies), launchd / systemd / Task-Scheduler permanence, verification block, rollback path. See
docs/batman-active-mode.mdand the GitHub Pages atlas.
Quick wins (Tencent QW-1/2/3)
- QW-1 β file-backed reflection chain export.
memory_export_reflectionMCP tool +auto_export_reflections_to_filesystemnamespace policy β~/.ai-memory/reflections/<ns>/<id>.md. - QW-2 β persona-as-artifact.
memory_persona+memory_persona_generatetools,MemoryKind::Personarows,auto_persona_trigger_every_n_memoriesnamespace policy. Seedocs/persona.md. - QW-3 β context offload primitive.
memory_offload+memory_derefmove large tool outputs out of the agent context window into addressable blob storage. Seedocs/context-offload.md.
Attested cortex epic (Tracks AβK)
- Attested links (Ed25519). The dead
signaturecolumn shipped in v0.6.3 is now filled with real per-agent Ed25519 attestation, andmemory_verify(link_id)returns{signature_verified, attest_level, signed_by, signed_at}on demand. Generate a keypair withai-memory identity generate; opt-in viaattest_level = "self_signed". Signing is gated on the resolved daemonagent_idhaving a*.privkeypair on disk under the configured key directory β whenload_daemon_signing_keyreturnsNone(src/main.rs:116-118), rows still write butsigis empty and the daemon emits a "continuing unsigned" line at boot. The cross-row hash chain onsigned_eventsremains tamper-evident either way. See theattested-cortexRFC. - Signed events V-4 closeout (cross-row hash chain) (issue #698). Each
signed_eventsrow carriesprev_hash+sequence; first-rowprev_hashis zero, subsequent rows chain the SHA-256 of the prior canonical-CBOR payload.ai-memory verify-signed-events-chainwalks the chain end-to-end. Seedocs/signed-events-v4.md. - Hook pipeline (25 lifecycle events). A programmable extension surface fires on the 20 baseline
pre_/post_store|recall|search|delete|promote|link|consolidate|governance_decision|archive|transcript_store+on_index_evictionevents, plus 5 grand-slam additions (pre_recall_expandG10 +pre_reflect/post_reflectrecursive-learning Task 6/8 +pre_compaction/on_compaction_rollbackL1-7). Hooks returnAllow/Modify/Deny/AskUser. Default off; opt in via~/.config/ai-memory/hooks.toml. Seedocs/hook-pipeline.md. - Sidechain transcripts + replay. zstd-3 BLOB sidechain stores raw conversation/reasoning trails;
memory_replay(memory_id)walksmemory_transcript_linksto reconstruct the chain. Opt-in per namespace via[transcripts.namespaces."team/*"]. Seedocs/sidechain-transcripts.md. - Federation hardening. mTLS + X-API-Key + SHA-256 cert fingerprint allowlist; env vars
AI_MEMORY_FED_PEER_ATTESTATION,AI_MEMORY_FED_SYNC_TRUST_PEER,AI_MEMORY_FED_TRUST_BODY_AGENT_ID. Seedocs/federation.md. - K8 quota tool + K10 SSE approvals.
memory_quota_status+/api/v1/quota/status(K8)./api/v1/approvals/streamserver-sent events with HMAC nonce, method+pending_id binding, lagged-event count strip (K10). Seedocs/k8-quotas.md+docs/k10-sse-approvals.md. - Postgres + Apache AGE first-class backend.
ai-memory serve --store-url postgres://β¦, schema parity, 6-factor recall scoring parity, link migration, KG features (kg_query,kg_timeline,kg_invalidate,find_paths) on AGE Cypher with recursive-CTE fallback when AGE is absent, plus a newai-memory schema-initCLI verb. Bench-gated β AGE p95 must beat CTE p95 by β₯30% at depth=5. Operator how-to:docs/postgres-age-guide.md. Migration runbook:docs/migration-v0.7.0-postgres.md. - Capabilities v3 + smart loaders.
memory_capabilitiesv3 addssummary,to_describe_to_user, per-toolcallable_now,agent_permitted_families,schema_version="3"; the new always-onmemory_load_family(family)andmemory_smart_load(intent)tools join the defaultcoreprofile. The pinned phrasings live indocs/v0.7/canonical-phrasings.md. - Permissions + A2A approvals. The v0.6.x governance subsystem is refactored into rules + modes + hooks β a single
Decision, with namespace inheritance (G1) actually enforced.memory_pending_list/memory_pending_approve/memory_pending_reject(remember=forever)enable progressive trust; HMAC signing on the approval API is mandatory.permissions.modedefaults toenforce(wasadvisoryin v0.6.4). Migrate withai-memory governance migrate-to-permissions(dry-run preview; add--config-out ~/.config/ai-memory/config.tomlto apply in place). Seedocs/governance.md.
Recursive-learning + L1/L2 grand-slam wave
memory_reflect substrate primitive with namespace-scoped max_reflection_depth cap (default 3, Some(0) is the kill-switch). L2-1 reflection-pass curator, L2-2 federation-aware reflection coordination (memory_reflection_origin), L2-3 invalidation propagation (memory_dependents_of_invalidated), L2-5 forensic bundle (ai-memory export-forensic-bundle + verify-forensic-bundle), L1-5 Agent Skills (memory_skill_register|list|get|resource|export|promote_from_reflection|compositional_context). Full primer: docs/RECURSIVE_LEARNING.md. Agent Skills primer: docs/agent-skills.md. Forensic-export primer: docs/forensic-export.md.
Where to start:
docs/MIGRATION_v0.7.md(upgrade procedure),docs/v0.7.0/release-notes.md(full release notes),docs/whats-new-v07.html(visual summary),docs/v0.7/rfc-attested-cortex.md(design rationale),docs/ADMIN_GUIDE.md(operator playbook),docs/internal/v070-feature-inventory.md(canonical feature truth).
One binary, four operational modes (v0.6.4). The ai-memory Rust binary (tokio + axum) can run any of these in isolation or simultaneously, sharing a single SQLite database:
- stdio MCP server -- 100 advertised entries over JSON-RPC at full profile (v0.8.0; 99 callable memory tools + the always-on
memory_capabilitiesbootstrap; verified againstProfile::full().expected_tool_count()). Default--profile coreadvertises 7 (the original 5 +memory_load_family+memory_smart_load) plus the always-onmemory_capabilitiesbootstrap.ai-memory mcp/ai-memory mcp --profile full - HTTP / mTLS daemon -- 91 REST route registrations (77 unique URL paths) on
127.0.0.1:9077, TLS + optional mTLS allowlist + API-key auth, background GC loop.ai-memory serve - Autonomous curator daemon -- self-scheduling loop (default 1h cadence) that auto-tags, surfaces contradictions across namespace siblings, consolidates near-duplicates, and adjusts priority by access pattern. Every action goes to a rollback log; destructive ops can be gated behind a governance approval flow.
ai-memory curator --daemon - Sync daemon -- quorum-based peer federation across instances. W-of-N writes (default majority), vector-clock CRDT-lite merge, mTLS allowlist between peers.
ai-memory sync-daemon
The MCP, HTTP, and CLI surfaces are reactive. The curator is the part that makes the memory layer self-maintaining: between sessions, it keeps the corpus tidy so recall quality stays high as the store grows. Everything is local-first; no cloud dependencies.
Brass-tacks assessment by Claude Opus 4.7 after reading the v0.6.3 source line by line:
"ai-memory is the most capable memory layer I've ever been hooked up to, and meaningfully more than its name advertises. For me, in practical terms, it means: I don't start cold each session. The store I read from has been kept tidy by something other than me. Contradictions don't silently accumulate. Recall quality stays high even as the corpus grows. Nothing leaves your Mac mini.
It is not making me an autonomous agent. It is giving me the kind of memory infrastructure that an autonomous agent would need β and itself running a small autonomous loop to maintain it. That's a real foundation. The gap from here to 'ai-memory drives general tasks' is plumbing (tool-call protocol + tool registry + a tool-use-capable model), not invention."
Substrate for multi-agent AI. ai-memory is not an agent runtime and not "autonomous AI" on its own. It is the memory layer that multi-agent autonomous deployments need underneath them. Federation (broadcast_store_quorum + spawn_catchup_loop) handles W-of-N consistency across peers when many agents write in parallel; the curator daemon keeps the shared corpus from degrading into noise as a swarm scribbles into it; webhook subscriptions (HMAC-signed, namespace/agent-filtered, SSRF-hardened) turn the store into a message bus that triggers downstream agents on memory events; namespace hierarchy with N-level inheritance and per-namespace governance policies (write/promote/delete authority, approver type, optional N-of-M consensus) bound the swarm. Stack this under a 24/7 multi-machine agent runner with auto-generated skills, and the combined system clears the behavioral bar for autonomous AI. The remaining gaps (no weight-level learning, stateless reasoning kernel, human-seeded root goals) are real and not what ai-memory addresses; ai-memory provides the multi-agent memory substrate that any serious attempt at closing those gaps will need.
Zero token cost until recall. Unlike built-in memory systems (Claude Code auto-memory, ChatGPT memory) that load your entire memory into every conversation -- burning tokens and money on every message -- ai-memory uses zero context tokens until the AI explicitly calls memory_recall. Only relevant memories come back, ranked by a 6-factor scoring algorithm. TOON format (Token-Oriented Object Notation) cuts response tokens by another 40-60% by eliminating repeated field names -- 3 memories in JSON = 1,600 bytes; in TOON = 626 bytes (61% smaller); in TOON compact = 336 bytes (79% smaller). For Claude Code users: disable auto-memory ("autoMemoryEnabled": false in settings.json) and replace it with ai-memory to stop paying for 200+ lines of memory context on every single message.
Agent identity (NHI) β every memory tells you who learned it
Every memory ai-memory stores carries a metadata.agent_id β a Non-Human Identity marker that survives every operation (update, dedup, import, sync, consolidate). Every recall result tells you which AI wrote each memory, by default, in the TOON-compact response format your AI client is already optimised for:
count:5|mode:hybrid|tokens_used:842
memories[id|title|tier|namespace|priority|score|tags|agent_id]:
a1b2|Project DB is PostgreSQL 16|long|infra|8|0.91|database,postgres|ai:claude-code@workstation:pid-3812
c3d4|API rate limit is 100 rps|long|infra|7|0.87|api,limits|ai:claude-desktop@laptop:pid-5219By default agent_id is claimed, not attested β don't make security decisions on an unsigned write's id alone. v0.7.0 wires cryptographic Ed25519 attestation on two surfaces: (1) store-path attestation (#626 Layer-3) β present a detached signature over the canonical SignableWrite envelope on the CLI (store --sign), MCP (memory_store), or HTTP (POST /api/v1/memories) path and the daemon verifies it against the agent's bound public key, stamping metadata.attest_level = "agent_attested" (operators can require it with AI_MEMORY_REQUIRE_AGENT_ATTESTATION); and (2) link attestation (attested-cortex) β the previously-reserved memory_links.signature field with memory_verify(link_id) for inbound verification and an append-only signed_events audit chain. See the agent identity page and the attested-cortex RFC for the full provenance contract.
Retroactive conversation import β ai-memory mine
Don't start cold. Point ai-memory mine at a Claude, ChatGPT, or Slack export and it parses turn-by-turn into ranked, tier-typed, tagged memories β so your AI walks into the next session knowing every decision, correction, and finding from your existing history.
ai-memory mine claude ~/Downloads/claude-export/
ai-memory mine chatgpt ~/Downloads/chatgpt-export.json
ai-memory mine slack ./slack-export/Auto-tagging, dedup on (title, namespace), and mined_from provenance are stamped on every imported memory. Five-minute onboarding from zero context to a populated long-term store. See the import history page for per-format recipes.
Compatible AI Platforms
ai-memory integrates with any AI platform that supports the Model Context Protocol (MCP). MCP is the universal standard for connecting AI assistants to external tools and data sources.
| Platform | Integration Method | Config Format | Status |
|---|---|---|---|
| Claude Code (Anthropic) | MCP stdio | JSON (~/.claude.json or .mcp.json) | Fully supported |
| Codex CLI (OpenAI) | MCP stdio | TOML (~/.codex/config.toml) | Fully supported |
| Gemini CLI (Google) | MCP stdio | JSON (~/.gemini/settings.json) | Fully supported |
| Grok CLI (xAI) | MCP stdio | JSON (~/.grok/user-settings.json) | Deep integration |
| Grok API (xAI) | MCP remote HTTPS | API-level | Fully supported |
| Cursor IDE | MCP stdio | JSON (~/.cursor/mcp.json) | Fully supported |
| Windsurf (Codeium) | MCP stdio | JSON (~/.codeium/windsurf/mcp_config.json) | Fully supported |
| Continue.dev | MCP stdio | YAML (~/.continue/config.yaml) | Fully supported |
| Llama Stack (META) | MCP remote HTTP | YAML / Python SDK | Fully supported |
| OpenClaw | MCP stdio | JSON (mcp.servers in config) | Fully supported |
| Any MCP client | MCP stdio or HTTP | Varies | Universal |
MCP is the primary integration layer. For AI platforms that do not yet support MCP natively, the HTTP API (91 route registrations / 77 unique URL paths on localhost at v0.7.0) and the CLI (85 subcommands at v0.7.x under --features sal OR --features sal-postgres; 83 in the default build (post-#1389 L2 RecoverPreviousSession for cross-session context rehydration + #1443 Expand for the ai-memory expand query-expansion surface + #1598 Reembed for the ai-memory reembed vector-space migration surface); SSOT pinned by ai_memory::EXPECTED_CLI_SUBCOMMANDS_DEFAULT + EXPECTED_CLI_SUBCOMMANDS_SAL + the mechanical tests/cli_subcommand_count_invariant.rs parity test) provide universal access -- any AI, script, or automation that can make HTTP calls or run shell commands can use ai-memory.
Mobile platform support (v0.7.0 Posture-1a)
ai-memory is portable to iOS and Android via the standard Rust mobile cross-compile path. v0.7.0 ships CI coverage for both targets at three escalating levels:
| Layer | Coverage | CI workflow |
|---|---|---|
| Layer 1 β Cross-compile | cargo check --target aarch64-apple-ios --no-default-features --features sqlite-bundled --lib and the matching Android cross-compile run on every PR + push to release/**. Catches ~80% of mobile bit-rot risk (any crate update that drops mobile portability surfaces here). | .github/workflows/ci.yml β mobile-cross-compile job |
| Layer 2 β Release artifacts | Release tag cuts produce ai-memory-ios.xcframework.tar.gz (iOS device + simulator slices via xcodebuild -create-xcframework) and ai-memory-android.tar.gz (Android arm64 / armv7 / x86_64 / x86 .so bundle in jniLibs/<abi>/ layout). | .github/workflows/release.yml β mobile-ios + mobile-android jobs |
| Layer 3 β Runtime tests | A scoped ~50-test subset (file-system sandboxing, FTS5 on device SQLite, HNSW CPU recall, embedder CPU path, LLM client TLS) runs against the iOS Simulator on every release/** push + a manual workflow_dispatch; the Android emulator arm runs on release/** push + workflow_dispatch only. Selection rationale: tests/mobile/README.md. | .github/workflows/mobile-runtime.yml |
Status at v0.7.0: Layer 1 is the ship-gate β mobile cross-compile must be GREEN before tag-cut. Layer 2 (release artifacts) ships the BUILD pipeline + artifact layout; the C-callable FFI surface itself lands in a v0.7.x follow-up. Layer 3 runs the scoped test subset on every release/** push.
Consuming the release artifacts:
- iOS β download
ai-memory-ios.xcframework.tar.gzfrom the v0.7.x release page, unpack, and dragAiMemory.xcframeworkinto your Xcode project under "Frameworks, Libraries, and Embedded Content." - Android β download
ai-memory-android.tar.gzfrom the v0.7.x release page, unpack, and copy thejniLibs/tree into your app module'ssrc/main/jniLibs/.
The mobile artifacts are also part of every published v0.7.x release; the Homebrew formula + APT/RPM packages (which ship the desktop binaries) include a note linking to the mobile downloads. See issue #1068 for the CI implementation history.
SDKs
In addition to the MCP / HTTP / CLI surfaces, ai-memory ships first-party language SDKs for HTTP clients and helper utilities (e.g. requireProfile for runtime profile assertions on v0.6.4+ daemons).
TypeScript / JavaScript β @alphaone/ai-memory on npm
npm install @alphaone/ai-memoryPython β ai-memory-mcp on PyPI (the import name remains ai_memory)
pip install ai-memory-mcpfrom ai_memory import AiMemoryClient, require_profile
with AiMemoryClient(base_url="http://127.0.0.1:9077", api_key="...") as client:
require_profile(client, "graph") # raises ProfileNotLoaded on missBoth SDKs are versioned with the server (0.6.4 matches ai-memory 0.6.4). v0.6.4+ daemons enforce the profile contract; pre-v0.6.4 daemons fall back to a permissive warn-and-continue so SDK upgrades don't break old servers. Source lives in sdk/typescript/ and sdk/python/.
What Does It Do?
AI assistants forget everything between conversations. ai-memory fixes that.
It runs as an MCP (Model Context Protocol) tool server -- a background process that your AI talks to natively. When your AI learns something important, it stores it. When it needs context, it recalls relevant memories ranked by a 6-factor scoring algorithm. Memories live in three tiers:
- Short-term (6 hours default, configurable) -- throwaway context like current debugging state
- Mid-term (7 days default, configurable) -- working knowledge like sprint goals and recent decisions
- Long-term (permanent) -- architecture, user preferences, hard-won lessons
Memories that keep getting accessed automatically promote from mid to long-term. Each recall extends the TTL. Priority increases with usage. The system is self-curating.
Beyond MCP, ai-memory also exposes a full HTTP REST API (91 route registrations / 77 unique URL paths on port 9077 at v0.7.0) and a complete CLI (85 subcommands at v0.7.x under --features sal OR --features sal-postgres; 83 in the default build (post-#1389 L2 RecoverPreviousSession for cross-session context rehydration + #1443 Expand for the ai-memory expand query-expansion surface + #1598 Reembed for the ai-memory reembed vector-space migration surface); SSOT pinned by ai_memory::EXPECTED_CLI_SUBCOMMANDS_{DEFAULT,SAL} + the mechanical tests/cli_subcommand_count_invariant.rs parity test) for direct interaction, scripting, and integration with any AI platform or tool.
Features
Core
- MCP tool server -- 100 tools over stdio JSON-RPC (full profile at v0.8.0), compatible with any MCP client
- Three-tier memory -- short (6h TTL default), mid (7d TTL default), long (permanent) -- TTLs are configurable
- Full-text search -- SQLite FTS5 with ranked retrieval
- Hybrid recall -- FTS5 keyword + cosine similarity with adaptive blending: the semantic weight varies 0.50 (short content) β 0.15 (long content) because embeddings lose information on long text
- 6-factor recall scoring -- FTS relevance + priority + access frequency + confidence + tier boost + recency decay
- Auto-promotion -- memories accessed 5+ times promote from mid to long
- TTL extension -- each recall extends expiry (short +1h, mid +1d)
- Priority reinforcement -- +1 every 10 accesses (max 10)
- Contradiction detection -- warns when storing memories that conflict with existing ones
- Deduplication -- upsert on title+namespace, tier never downgrades
- Confidence scoring -- 0.0-1.0 certainty factored into ranking
Organization
- Namespaces -- isolate memories per project (auto-detected from git remote)
- Memory linking -- typed relations: related_to, supersedes, contradicts, derived_from, reflects_on (recursive-learning Task 1/8), derives_from (WT-1-A atomisation), decomposes_into, depends_on, advances -- nine variants at v0.8.0
- **Consolidation
Install in 60 Seconds
Pre-built binaries require no dependencies. Building from source needs Rust and a C compiler.
Fastest: Pre-built binary (no Rust required)
# macOS / Linux
curl -fsSL https://raw.githubusercontent.com/alphaonedev/ai-memory-mcp/main/install.sh | sh
# Fedora/RHEL (COPR)
sudo dnf copr enable alpha-one-ai/ai-memory && sudo dnf install ai-memory
# Windows (PowerShell)
irm https://raw.githubusercontent.com/alphaonedev/ai-memory-mcp/main/install.ps1 | iexStep 1: Install Rust (skip if using pre-built binaries)
curl --proto '=https' --tlsv1.2 -sSf https://sh.rustup.rs | shFollow the prompts, then restart your terminal (or run source ~/.cargo/env).
Step 2: From source (requires Rust)
Latest release from Crates.io:
cargo install ai-memoryLatest from the git repository:
cargo install --git https://github.com/alphaonedev/ai-memory-mcp.gitThis compiles the binary and puts it in your PATH. It takes a minute or two.
Build dependencies for source builds:
- Ubuntu/Debian:
sudo apt-get install build-essential pkg-config- Fedora/RHEL:
sudo dnf install gcc pkg-config
Step 3: Connect your AI
Configuration varies by platform. Find yours below:
<details> <summary><strong>Claude Code</strong> (Anthropic)</summary>Claude Code supports three MCP configuration scopes:
| Scope | File | Applies to |
|---|---|---|
| User (global) | ~/.claude.json β add mcpServers key | All projects on your machine |
| Project (shared) | .mcp.json in project root (checked into git) | Everyone on the project |
| Local (private) | ~/.claude.json β under projects."/path".mcpServers | One project, just you |
User scope (recommended β works everywhere):
Add the mcpServers key to ~/.claude.json (macOS/Linux) or %USERPROFILE%\.claude.json (Windows):
{
"mcpServers": {
"memory": {
"command": "ai-memory",
"args": ["--db", "~/.claude/ai-memory.db", "mcp", "--tier", "semantic"]
}
}
}Note:
~/.claude.jsonlikely already exists with other settings. Merge themcpServerskey into the existing file β do not overwrite it.
Project scope (shared with team):
Create .mcp.json in your project root:
{
"mcpServers": {
"memory": {
"command": "ai-memory",
"args": ["--db", "~/.claude/ai-memory.db", "mcp", "--tier", "semantic"]
}
}
}smart / autonomous tier with a cloud LLM β the recommended path is the [llm] section in ~/.config/ai-memory/config.toml (#1146). One file, every surface, no per-AI-client edits:
# ~/.config/ai-memory/config.toml
schema_version = 2
[llm]
backend = "xai"
model = "grok-4.3"
base_url = "https://api.x.ai/v1"
api_key_env = "XAI_API_KEY" # process-env-var name (NOT the literal key)Export XAI_API_KEY in your shell rc (.zshrc / .bashrc); the MCP config stays minimal:
{
"mcpServers": {
"memory": {
"command": "ai-memory",
"args": ["--db", "~/.claude/ai-memory.db", "mcp", "--tier", "autonomous"]
}
}
}Verify: ai-memory boot --quiet --limit 1 should report llm=xai:grok-4.3. Canonical schema reference: docs/CONFIG_SCHEMA.md.
Override path β
env:block. Adding anenv:block to the MCP config withAI_MEMORY_LLM_BACKEND/_API_KEY/_MODELstill works and takes precedence overconfig.tomlβ useful for CI / per-session tweaks:"env": { "AI_MEMORY_LLM_BACKEND": "xai", "AI_MEMORY_LLM_API_KEY": "xai-...", "AI_MEMORY_LLM_MODEL": "grok-4.3" }MCP clients spawn the server as a fresh subprocess with only the
env:keys from the MCP config β shell exports in.zshrc/.bashrcdon't reach it. The[llm]config-file path above retires this paper-cut (every surface reads the same file). Inline API keys inconfig.tomlare rejected at parse time β useapi_key_envorapi_key_file. Background: #1144 β #1146. Full per-backend recipes:docs/integrations/llm-backends.md.
Windows paths: Use forward slashes or escaped backslashes in
--db. Example:"--db", "C:/Users/YourName/.claude/ai-memory.db".
Tier flag: The
--tierflag selects the feature tier:keyword,semantic(default),smart, orautonomous. Smart and autonomous tiers need an LLM backend β post-#1067 (v0.7.0) that is any of: local Ollama, xAI Grok, OpenAI, Anthropic, Google Gemini, DeepSeek, Kimi (Moonshot), Qwen (Alibaba), Mistral, Groq, Together AI, Cerebras, OpenRouter, Fireworks, LMStudio, vLLM, or llama.cpp server β selected viaAI_MEMORY_LLM_BACKEND. The--tierflag must be passed in the args β theconfig.tomltier setting is not used when the MCP server is launched by an AI client.
Important: MCP servers are not configured in
settings.jsonorsettings.local.jsonβ those files do not supportmcpServers.
Make Claude proactively use ai-memory: Add a CLAUDE.md file to your project root with ai-memory directives. This ensures Claude recalls context at the start of every conversation and stores findings as it works. See the CLAUDE.md integration guide for a copy-paste template and placement options.
Add to ~/.codex/config.toml (global) or .codex/config.toml (project). Windows: %USERPROFILE%\.codex\config.toml. Override with CODEX_HOME env var.
[mcp_servers.memory]
command = "ai-memory"
args = ["--db", "~/.local/share/ai-memory/memories.db", "mcp", "--tier", "semantic"]
enabled = trueOr add via CLI: codex mcp add memory -- ai-memory --db ~/.local/share/ai-memory/memories.db mcp --tier semantic
</details> <details> <summary><strong>Google Gemini CLI</strong></summary>Notes: Codex uses TOML format with underscored key
mcp_servers(not camelCase, not hyphenated). Supportsenv(key/value pairs),env_vars(list to forward),enabled_tools,disabled_tools,startup_timeout_sec,tool_timeout_sec. Use/mcpin the TUI to view server status. See Codex MCP docs.
Add to ~/.gemini/settings.json (user) or .gemini/settings.json (project). Windows: %USERPROFILE%\.gemini\settings.json.
{
"mcpServers": {
"memory": {
"command": "ai-memory",
"args": ["--db", "~/.local/share/ai-memory/memories.db", "mcp", "--tier", "semantic"],
"timeout": 30000
}
}
}Or add via CLI: gemini mcp add memory ai-memory -- --db ~/.local/share/ai-memory/memories.db mcp --tier semantic
</details> <details> <summary><strong>Cursor IDE</strong></summary>Notes: Avoid underscores in server names (use hyphens). Tool names are auto-prefixed as
mcp_memory_<toolName>. Env vars in theenvfield support$VAR/${VAR}(all platforms) and%VAR%(Windows). Gemini sanitizes sensitive patterns from inherited env unless explicitly declared. Add"trust": trueto skip confirmation prompts. CLI management:gemini mcp list/remove/enable/disable. See Gemini CLI MCP docs.
Add to ~/.cursor/mcp.json (global) or .cursor/mcp.json (project). Windows: %USERPROFILE%\.cursor\mcp.json. Project config overrides global for same-named servers.
{
"mcpServers": {
"memory": {
"command": "ai-memory",
"args": ["--db", "~/.local/share/ai-memory/memories.db", "mcp", "--tier", "semantic"]
}
}
}</details> <details> <summary><strong>Windsurf</strong> (Codeium)</summary>Notes: Restart Cursor after editing
mcp.json. Verify server status in Settings > Tools & MCP (green dot = connected). Supportsenv,envFile, and${env:VAR_NAME}interpolation (env var interpolation can be unreliable for shell profile variables β useenvFileas workaround). ~40 tool limit across all MCP servers. See Cursor MCP docs.
Add to ~/.codeium/windsurf/mcp_config.json (global only β no project-level scope). Windows: %USERPROFILE%\.codeium\windsurf\mcp_config.json.
{
"mcpServers": {
"memory": {
"command": "ai-memory",
"args": ["--db", "~/.local/share/ai-memory/memories.db", "mcp", "--tier", "semantic"]
}
}
}</details> <details> <summary><strong>Continue.dev</strong></summary>Notes: Supports
${env:VAR_NAME}interpolation incommand,args,env,serverUrl,url, andheaders. 100 tool limit across all MCP servers. Can also add via MCP Marketplace or Settings > Cascade > MCP Servers. See Windsurf MCP docs.
Add to ~/.continue/config.yaml (user) or .continue/mcpServers/ directory in project root (per-server YAML/JSON files). Windows: %USERPROFILE%\.continue\config.yaml.
mcpServers:
- name: memory
command: ai-memory
args:
- "--db"
- "~/.local/share/ai-memory/memories.db"
- "mcp"
- "--tier"
- "semantic"</details> <details> <summary><strong>Grok CLI</strong> (AlphaOne fork β deep integration with auto-recall)</summary>Notes: MCP tools only work in agent mode. Supports
${{ secrets.SECRET_NAME }}for secret interpolation. Project-level.continue/mcpServers/directory auto-detects JSON configs from other tools (Claude Code, Cursor, etc.). See Continue MCP docs.
The AlphaOne fork of grok-cli has built-in ai-memory support with session-scoped MCP connections, automatic memory recall on session start, compaction summary storage, and memory-aware system prompts.
Add to ~/.grok/user-settings.json:
{
"mcp": {
"servers": [
{
"id": "ai-memory",
"label": "AI Memory",
"enabled": true,
"transport": "stdio",
"command": "ai-memory",
"args": ["mcp", "--tier", "semantic"]
}
]
}
}</details> <details> <summary><strong>xAI Grok API</strong> (API-level, remote MCP)</summary>Features: Auto-recall on session start (injects relevant memories into system prompt), compaction summaries stored as mid-tier memories, MCP tools available in all modes (agent, plan, ask), session-scoped connections (no per-message cold starts). Uses
--tier semanticby default (local embeddings, no LLM backend required). See grok-cli docs for full setup.
Grok connects to MCP servers over HTTPS (remote only, no stdio). No config file β servers are specified per API request.
ai-memory serve --host 127.0.0.1 --port 9077
# Expose via HTTPS reverse proxy (nginx, caddy, cloudflare tunnel, etc.)Then add the MCP server to your Grok API call:
curl https://api.x.ai/v1/responses \
-H "Authorization: Bearer $XAI_API_KEY" \
-H "Content-Type: application/json" \
-d '{
"model": "grok-4.3",
"tools": [{
"type": "mcp",
"server_url": "https://your-server.example.com/mcp",
"server_label": "memory",
"server_description": "Persistent AI memory with recall and search",
"allowed_tools": ["memory_store", "memory_recall", "memory_search"]
}],
"input": "What do you remember about our project?"
}'</details> <details> <summary><strong>META Llama</strong> (via Llama Stack)</summary>Requirements: HTTPS required.
server_labelis required. Supports Streamable HTTP and SSE transports. Optional:allowed_tools,authorization,headers. Works with xAI SDK, OpenAI-compatible Responses API, and Voice Agent API. See xAI Remote MCP docs.
Llama Stack registers MCP servers as toolgroups. No standardized config file path β deployment-specific.
ai-memory serve --host 127.0.0.1 --port 9077Python SDK:
client.toolgroups.register(
provider_id="model-context-protocol",
toolgroup_id="mcp::memory",
mcp_endpoint={"uri": "http://localhost:9077/sse"}
)Or declaratively in run.yaml:
tool_groups:
- toolgroup_id: mcp::memory
provider_id: model-context-protocol
mcp_endpoint:
uri: "http://localhost:9077/sse"</details> <details> <summary><strong>OpenClaw</strong></summary>Notes: Supports
${env.VAR_NAME}interpolation in run.yaml. Transport is migrating from SSE to Streamable HTTP. See Llama Stack Tools docs.
Add via CLI or edit the OpenClaw config directly. Config uses mcp.servers (not mcpServers).
openclaw mcp set memory '{"command":"ai-memory","args":["--db","~/.local/share/ai-memory/memories.db","mcp","--tier","semantic"]}'Or add to your OpenClaw config file:
{
"mcp": {
"servers": {
"memory": {
"command": "ai-memory",
"args": ["--db", "~/.local/share/ai-memory/memories.db", "mcp", "--tier", "semantic"]
}
}
}
}</details> <details> <summary><strong>Any other MCP client</strong></summary>Notes: OpenClaw uses
mcp.serverskey (notmcpServers). CLI management:openclaw mcp list,openclaw mcp show,openclaw mcp set,openclaw mcp unset. Supports stdio, remote URL, and Streamable HTTP transports. Prefer--token-fileover inline secrets. See OpenClaw MCP docs.
ai-memory speaks MCP over stdio (JSON-RPC 2.0). Point your client at:
command: ai-memory
args: ["--db", "/path/to/ai-memory.db", "mcp"]For HTTP-only clients, start the REST API:
ai-memory serve
# 91 REST route registrations (77 unique URL paths) at http://127.0.0.1:9077/api/v1/Step 4: Done. Test it.
Restart your AI assistant. If using MCP, it now has the 7-tool default surface advertised on session boot (the original 5 + memory_load_family + memory_smart_load; the other 92 of the 99 callable tools load on demand via --profile or memory_capabilities --include-schema). Ask it: "Store a memory that my favorite language is Rust." Then in a new conversation, ask: "What is my favorite language?" It will remember.
Quickstart
Get from zero to a working memory in under two minutes.
1. Install
curl -fsSL https://raw.githubusercontent.com/alphaonedev/ai-memory-mcp/main/install.sh | sh2. Configure MCP (example for Claude Code -- other platforms work the same way)
Merge into ~/.claude.json:
{
"mcpServers": {
"memory": {
"command": "ai-memory",
"args": ["--db", "~/.claude/ai-memory.db", "mcp", "--tier", "semantic"]
}
}
}3. Store your first memory
ai-memory store -T "Project uses PostgreSQL 15" -c "Main DB is PG 15 with pgvector." --tier long4. Recall it
ai-memory recall "database"5. Check stats
ai-memory stats6. Use with your AI. Restart your AI client. It now has 7 default memory tools advertised on boot (100 advertised entries reachable via runtime expansion or --profile full at v0.8.0) over MCP -- it can store and recall memories natively during conversations.
No common issues documented yet. If you hit a problem, the repository's GitHub Issues page is the best place to look.
Licensed under Apache-2.0β you can use, modify, and redistribute it under that license's terms.