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Thread Keeper

@po4erk91

Multi-agent shared brain across Claude Code/Desktop, Codex, Antigravity CLI (agy), Gemini, Copilot, and VS Code. One local SQLite store for threads, notes, verbatim quotes, and a dialectic user model; spawn/broadcast/whisper/inbox multi-agent coordination primitives; autonomous background loops that materialize SKILL.md skills into every connected CLI's skills root. Install: pipx install 'threadkeeper[semantic]' && thread-keeper-setup
Overview

thread-keeper

tests Python License: MIT PyPI CLIs

Multi-agent shared brain across Claude Code/Desktop, Codex, Antigravity CLI (agy), Gemini legacy, Copilot, and VS Code. Cross-session memory, self-improving skill loops, and inter-agent signaling — one local MCP server turns parallel agent instances into a coordinated multi-agent system instead of N isolated chats.

Every connected client (Claude Code, Claude Desktop, Codex CLI + desktop, Antigravity CLI, Gemini legacy, Copilot, every MCP-aware VS Code extension) shares one SQLite store, one set of threads, one user model, and one learning loop that improves the skill library autonomously over time.

The brief format is dense — structural tags, opaque IDs, ~6 KB per session-start injection. Optimized for agent consumption, not human reading.


Why

Every agent CLI starts cold. Context dies at session boundaries. Skills you taught Claude don't transfer to Codex. Threads you closed in yesterday's Antigravity chat are invisible to today's Copilot. Parallel agent instances running the same task don't know about each other and duplicate work or step on each other's writes.

thread-keeper is the substrate underneath. Three things that together make it more than a memory store:

  • Collective memory — threads, notes, verbatim quotes, dialectic claims about you. Survives session, restart, CLI swap. One agent records, every other agent (any CLI) reads. The brief injected at session start gives a new agent everything the previous one knew.
  • Multi-agent coordinationspawn primitive launches child agents in parallel, each gets a self_cid + sees the same memory. broadcast / whisper / inbox / wait / ask / respond let concurrent sessions signal each other across CLIs. Parent / children / sibling agents become a coordinated swarm, not isolated chats.
  • Self-improving skill library — autonomous background loops (auto-review on thread close, shadow-review daemon, extract harvester, candidate-reviewer, weekly Curator, and a thread-janitor that auto-closes idle threads so abandoned work reaches the harvest path — closing is reversible, a note reopens a closed thread) materialize class-level skills as the agents work. Adapted to multi-CLI: SKILL.md is the primary write target and gets mirrored to every known/configured skills root simultaneously (~/.claude/skills/, ~/.codex/skills/, ~/.gemini/config/skills/ for Antigravity, existing ~/.agents/skills/, extra roots from THREADKEEPER_EXTRA_SKILLS_DIRS, and ~/.threadkeeper/skills/), with lessons.md as a fallback for CLIs without a native skills loader.

Foreground MCP servers also run a daily self-update check by default. Source checkouts fast-forward their tracked git branch and reinstall the editable package; PyPI/pipx/venv installs run pip install --upgrade in the current interpreter environment. Dirty or diverged git checkouts are skipped rather than overwritten.


Quickstart

The shortest path — PyPI + pipx (recommended):

pipx install 'threadkeeper[semantic]' && thread-keeper-setup

thread-keeper-setup detects every CLI you have installed (Claude Code / Claude Desktop / Codex CLI + desktop / Antigravity CLI agy / Gemini legacy / Copilot / VS Code), registers the MCP server in each one's config, copies hooks to ~/.threadkeeper/hooks/, and writes a managed instructions block into each CLI's per-user instructions file (CLAUDE.md / AGENTS.md / GEMINI.md / copilot-instructions.md — Claude Desktop and VS Code have no global instructions file, so that step is skipped for them).

Restart your CLI of choice. Hook-capable clients inject a brief on the first message; hookless clients such as Codex and Antigravity CLI follow the managed instructions block and call brief() / context() manually before answering.

Alternative installs

If you don't have pipx and don't want to install it:

# uv (Rust-fast Python tool runner) — no clone, single binary on PATH
uv tool install 'threadkeeper[semantic]' && thread-keeper-setup

# Plain pip into a venv
python3 -m venv ~/.threadkeeper-venv
~/.threadkeeper-venv/bin/pip install 'threadkeeper[semantic]'
~/.threadkeeper-venv/bin/thread-keeper-setup

For development (editable install from a git checkout) or to track the bleeding edge:

# One-liner installer — clones to ~/thread-keeper, makes a venv,
# editable-installs, wires every detected CLI. Idempotent — re-run to
# update (it git-pulls + reinstalls).
curl -fsSL https://raw.githubusercontent.com/po4erk91/thread-keeper/main/install.sh | bash -s -- --semantic

# Or fully manual
git clone https://github.com/po4erk91/thread-keeper ~/thread-keeper
cd ~/thread-keeper && python3 -m venv .venv
.venv/bin/pip install -e '.[semantic]'
.venv/bin/thread-keeper-setup

To preview without writing anything:

thread-keeper-setup --dry-run

Multi-CLI integration

CLIMCP configInstructions fileHooksTranscripts ingested
Claude Code~/.claude.json mcpServers~/.claude/CLAUDE.md~/.claude/settings.json hooks~/.claude/projects/**/*.jsonl
Claude Desktop~/Library/Application Support/Claude/claude_desktop_config.json mcpServers (macOS); %APPDATA%\Claude\… (Win); ~/.config/Claude/… (Linux)none (GUI-only)not supported by the appnone — chats live in Electron IndexedDB
Codex (CLI + desktop)~/.codex/config.toml [mcp_servers] (shared between CLI and Codex.app)~/.codex/AGENTS.mdnot supported~/.codex/sessions/**/rollout-*.jsonl
Antigravity CLI (agy)~/.gemini/config/mcp_config.json mcpServers~/.gemini/config/AGENTS.mdnot wired yetnot yet parsed — sqlite/protobuf under ~/.gemini/antigravity-cli/conversations/*.db
Gemini legacy~/.gemini/settings.json mcpServers~/.gemini/GEMINI.md~/.gemini/settings.json hooks~/.gemini/tmp/<user>/chats/session-*.jsonl
Copilot~/.copilot/mcp-config.json mcpServers~/.copilot/copilot-instructions.md~/.copilot/hooks.json~/.copilot/session-store.db (sqlite)
VS Code~/Library/Application Support/Code/User/mcp.json servers (macOS); %APPDATA%\Code\User\mcp.json (Win); ~/.config/Code/User/mcp.json (Linux)none (per-workspace only)not supportednone — extensions own their history

Every CLI that produces parseable transcripts feeds the same dialog_messages table with a source tag, so dialog_search() finds matches regardless of where the conversation happened. Claude Desktop, Antigravity CLI, and the VS Code adapter are the exceptions — MCP registration only; their chats don't reach the table for now (Electron IndexedDB on the Claude Desktop side; sqlite/protobuf on the Antigravity side; per-extension stores on the VS Code side).

VS Code's user-level mcp.json is the central host that every MCP-aware VS Code extension consumes — GitHub Copilot Chat, the Anthropic Claude IDE plugin, the OpenAI Codex IDE plugin, Continue, Cline, … — so a single registration there reaches all of them at once.

Adding a new CLI = one file under threadkeeper/adapters/ implementing the CLIAdapter contract. See CONTRIBUTING.md.


Core systems

Spawn — primary parallelism primitive

spawn(prompt, slim=True, role=..., visible=False, ...) launches a child Claude session via a claude -p subprocess. By default slim=True: the child loads only the thread-keeper MCP, no embeddings, no third-party servers. ~500 MB RSS versus ~1.3 GB for a full child. Heuristic for the parent: N≥2 modular independent units of ≥5 min each = spawn signal. Spawn also marks children with THREADKEEPER_SPAWNED_CHILD=1, so autonomous learning daemons cannot recursively start inside review forks.

A daemon measures combined child RSS every 10 s; admission control refuses a new spawn that would exceed THREADKEEPER_SPAWN_BUDGET_MB (3 GB default). Slim children that need semantic search delegate to the parent via search_via_parent — no per-child copy of the embedding model.

tk-agent-status exposes autonomous learning loop status as structured JSON or compact text for external monitors:

tk-agent-status
tk-agent-status --json
tk-agent-status --cleanup-memory

apps/macos-agent-status/ contains a small macOS menu-bar app that polls this command every 15 seconds and shows every autonomous learning loop: enabled/off, running/idle/ready, last pass, backlog, and active child RSS when that loop has spawned a worker. PyPI wheels and sdists also bundle the same Swift source under threadkeeper/assets/macos-agent-status/, so a normal pipx/uv tool install does not need a git checkout for the widget to build. Active loops are sorted first (running, then ready), so background work stays at the top of the panel. tk-agent-status --cleanup-memory runs the safe cleanup path used by the widget: request server cache trims, apply the RSS guard, and remove orphan MCP server processes without killing active spawned child agents. The menu-bar status item is backed by AppKit NSStatusItem: it shows the black memorychip icon while idle, then swaps fixed-center, synchronized gear frames whenever running_loop_count reports at least one active autonomous loop. The status item is icon-only; loop counts live in the popover and tooltip. The app also has a Clean memory button, self-restarts when its own RSS crosses THREADKEEPER_MENUBAR_RESTART_RSS_MB (1024 MB default), requests macOS notification permission, and sends a notification when a newly completed autonomous child task produces a useful result in recent_results; the first poll only marks existing results as seen, so old completions do not spam notifications. Status polling and cleanup commands run off the main actor, so opening the popover does not wait for tk-agent-status --json. The header gear opens a separate Settings window for ~/.threadkeeper/.env: common knobs are grouped into guided controls, the raw .env remains editable for advanced values, three local presets can be saved and loaded, and Save & Restart writes the file then asks existing threadkeeper.server processes to exit so MCP hosts reconnect with the new configuration. Spawn CLI selectors collapse agy into canonical antigravity while keeping gemini as legacy, and model selectors use dropdowns with exact CLI model ids/labels instead of free-text fields. Probe backlog is due objective probes only, not every registered probe, so a healthy cooldown shows 0 due probes instead of looking stuck. On macOS, python -m threadkeeper.server automatically installs and launches it on MCP startup, and restarts the app when the installed bundle has changed while an older menu-bar process is still running. Set THREADKEEPER_MENUBAR_AUTO_LAUNCH=0 to disable that behavior.

Auto Update

The MCP server starts an auto-update daemon in foreground parent processes. By default it checks once per day (THREADKEEPER_AUTO_UPDATE_INTERVAL_S=86400):

  • editable git checkout: skip if tracked files are dirty, otherwise fetch the tracked remote branch, fast-forward with git pull --ff-only, reinstall the editable package, and rerun threadkeeper._setup;
  • installed package: run pip install --upgrade threadkeeper or threadkeeper[semantic] in the current interpreter environment, preserving semantic extras when they are already installed, then rerun setup when the installed version changes.

After a successful update, the daemon exits the current MCP process by default so the host can restart it on the new code. Disable that with THREADKEEPER_AUTO_UPDATE_RESTART=0, or disable the updater entirely with THREADKEEPER_AUTO_UPDATE_INTERVAL_S=0. Each real check records an auto_update_pass event that appears in dashboard/status telemetry.

Manual fallback from a source checkout:

cd apps/macos-agent-status
./build.sh
open build/ThreadKeeperAgentStatus.app

Learning loops

Five loops turn raw agent dialog into a curated, multi-CLI-mirrored skill library — autonomously, without requiring agents to call note() / verbatim_user() / close_thread() on their own (audit shows agents focused on their primary task rarely do).

Pipeline at a glance:

   every CLI's transcripts
            ▼  (ingest, every 30s — always-on)
   dialog_messages  ◄──────────────────────────────────────┐
            │                                              │
            ├────────► [1] auto_review on close_thread     │
            │              (agent triggers — rare)         │
            │                  │                           │
            ├────────► [2] shadow_review daemon            │
            │              (cron, every 15 min)            │
            │                  │                           │
            ├────────► [3] extract daemon                  │
            │              (cron, every 10 min)            │
            │                  │                           │
            │              extract_candidates              │
            │                  │                           │
            │                  ▼                           │
            │          [4] candidate_reviewer daemon       │
            │              (cron, every 1 h) ──────────────┤
            │                  │                           │
            ▼                  ▼                           │
         brief()    SKILL.md + lessons.md ─► skill_usage   │
            │              │                  │            │
            │              ▼                  ▼            │
            │         (every configured       │            │
            │          skills/ root)          │            │
            │              │                  │            │
            │              └──────► [5] Curator daemon ───┘
            │                          (cron, every 7d)
            │                              │
            │                              ▼
            │                       REPORT-<date>.md
   injected into every new session at SessionStart

Each loop in one row:

#LoopDefault tickReadsWrites
1auto_review on close_threadon close_thread() for rich threadsthe thread's notesSKILL.md, lessons.md
2shadow_review daemonevery 15 min (env knob)recent dialog_messages windowSKILL.md, lessons.md
3extract daemonevery 10 min (env knob)recent dialog_messages windowextract_candidates pending queue
4candidate-reviewer daemonevery 1 h (env knob)pending candidates queueSKILL.md (create/patch) / notes / verbatim / reject
5Curator daemonevery 7 days (env knob)every existing lesson + recently-touched skillREPORT-<date>.md; Evolve applier applies it after roadmap issues
6evolve_reviewer daemonconfigurable (env knob; 0=off)code/docs/issues + web research when usefulroadmap updates + GitHub issues
7evolve_applier daemonconfigurable (env knob; 0=off)open GitHub issues, Curator reports, legacy promoted evolve suggestionsPRs + applied markers
8dialectic_miner daemonconfigurable (env knob; 0=off)recent dialog_messages — user replies + preceding-assistant contextdialectic_observations buffer
9dialectic_validator daemonconfigurable (env knob; 0=off)buffered dialectic_observationsdialectic claims + evidence (support / contradict / supersede) via spawned opus child

Learning loops write into the universal Skill format (SKILL.md under each known/configured skills root — ~/.claude/skills/, ~/.codex/skills/, ~/.gemini/config/skills/ for Antigravity, existing ~/.agents/skills/, optional THREADKEEPER_EXTRA_SKILLS_DIRS, plus the canonical ~/.threadkeeper/skills/ mirror), with ~/.threadkeeper/lessons.md as a CLI-agnostic fallback for clients without a native skills loader (Gemini legacy, Copilot, bare MCP).

1. Auto-review on close_thread

When a closed thread is rich (≥5 notes, ≥2 insight/move), close_thread spawns a slim child with SKILL_REVIEW_PROMPT + the thread's notes. The prompt is rubric-form (Q1–Q5 yes/no) with explicit positive examples for incident-vs-rule classification. The fork also receives a "recently active skills" block so it prefers PATCHing existing umbrellas over creating new ones (active-update bias). Child appends a lesson via lesson_append, writes/patches a skill via skill_manage or writes a skill file directly, then closes with mark_skill_materialized. If skill_path points at a SKILL.md (or a skill directory), thread-keeper immediately mirrors that whole skill into every configured skills root. Opt in with THREADKEEPER_AUTO_REVIEW=1.

2. Shadow-review daemon

Every THREADKEEPER_SHADOW_REVIEW_INTERVAL_S seconds (default off, 900 = 15 min recommended) scans the diff of dialog_messages since the last cursor across all CLIs at once. The window filters internal review-child sessions (no self-pollution) and strips adapter [tool_result] / [tool_call] noise (the "clean context" rule). If ≥500 chars of meaningful signal remain, spawns a slim observer child that decides on class-level learning. It is single-flight across the shared DB: if any shadow observer task is already running, the daemon does not spawn another one and does not advance the cursor. Shadow observer children are marked as spawned/background processes, so they cannot start their own shadow daemon even if a CLI drops the no-embeddings env. Idempotent through events.kind='shadow_review_pass'.

Before writing memory, the observer now checks existing lessons/skills and prefers patching broad skills. Shadow-origin lesson_append is a compact fallback only: oversized bodies and near-duplicate slugs are rejected.

3. Extract daemon

Every THREADKEEPER_EXTRACT_INTERVAL_S seconds (default off, 600 = 10 min recommended) scans recent dialog_messages with heuristic matchers: locale-aware "I want / next time / always" patterns, headers + insight markers, bullet regularities, and paraphrase clusters via cosine ≥ 0.80. Each match enqueues a row in extract_candidates.status='pending'. Same self-pollution filter as shadow_review (internal review-child sessions excluded) plus message-level noise filter (compaction summaries, SKILL.md injections, subagent role prompts, test-runner log dumps).

Where shadow extracts CLASS-LEVEL durable rules, extract harvests PER-INCIDENT decision-shaped utterances. Heuristic, not LLM — findings get refined by loop 4.

4. Candidate-reviewer daemon

Every THREADKEEPER_CANDIDATE_REVIEW_INTERVAL_S seconds (default off, 3600 = 1 h recommended) consumes the pending queue extract built up. Spawns a slim LLM child that decides per candidate or per coherent cluster:

  • SKILL.create — class-level rule; merge 2-5 related candidates into one skill (active-update bias prefers PATCH over CREATE)
  • SKILL.patch — refines a recently-active skill
  • SKILL.write_file — adds references/<topic>.md under an existing umbrella
  • NOTE — per-incident decision (requires thread_id)
  • VERBATIM — user quote worth preserving in brief()
  • REJECT — false positive that slipped past extract's filters

Hard limits: max 2 new skills per pass, [PROTECTED] (pinned + foreground-authored) skills off-limits. Closes the gap between heuristic harvest and SKILL.md materialization — previously pending candidates accumulated indefinitely waiting for an agent to call accept_candidate() manually. The loop is machine-wide single-flight: while one reviewer child is running, other foreground servers/ticks report candidate_review_running instead of spawning another child for the same queue.

5. Autonomous Curator

Every THREADKEEPER_CURATOR_INTERVAL_S seconds (default off, 604800 = 7 days recommended) spawns a slim child that reviews the EXISTING lessons.md + skill_usage inventory and writes ~/.threadkeeper/curator/REPORT-<isodate>.md with KEEP / PATCH / CONSOLIDATE / PRUNE recommendations. Pinned and foreground-authored entries are marked [PROTECTED] in the inventory so the curator never proposes destructive changes against them.

Curator itself stays advisory-only by default. The existing Evolve applier is also the Curator apply worker: after the roadmap issue queue is empty, it looks for the latest complete Curator report (CURATOR_PASS_COMPLETE) that has not been marked applied, then spawns an evolve_applier child to apply only safe, still-current memory maintenance through lesson_append / lesson_remove / skill_manage. It never touches [PROTECTED], foreground/user, pinned, or validated entries. Only after the child finishes does it call evolve_mark_curator_report_applied(...), which prevents replaying the same report.

Curator can also feed the roadmap loop upstream: when a skill or lesson exposes an important way to improve thread-keeper itself, the curator child may call evolve_format(...) and add an EVOLVE_CANDIDATE: line to its report. Evolve reviewer then audits that candidate and turns it into a GitHub issue when it is worth doing.

6. Evolve reviewer/applier — roadmap evolution loop

The Evolve reviewer is thread-keeper's upstream product/engineering auditor. On its interval it audits thread-keeper itself for security/privacy risks, memory leaks, runaway daemons, cost waste, reliability gaps, optimizations, and new ideas from current agent/MCP/memory tooling research. It does not implement code. Its durable outputs are updates to docs/ROADMAP.md and GitHub issues with problem statement, proposed direction, acceptance criteria, test/docs impact, and research sources when applicable. Legacy evolve_format(...) suggestions are still included as audit input, but durable implementation work should become GitHub issues.

The Evolve applier is the downstream implementer. evolve_apply_roadmap_issue() picks one open GitHub issue at a time (roadmap label first, then FIFO), skips issues with an active Evolve claim comment, posts its own claim comment before spawning, and advances to the next issue when an issue-local dispatch failure prevents startup. The child implements exactly that issue, runs the full suite, opens a PR whose body includes Closes #N, and only then calls evolve_mark_roadmap_issue_applied(issue_number, pr_url). It never commits or pushes to main, and it never marks an issue applied without a real PR URL. A manual evolve_apply_roadmap_issue(issue_number=N) remains exact: it reports why that issue cannot start instead of silently switching to another issue.

Fallback/manual paths remain:

  • evolve_apply_curator_report(report_path="") applies safe Curator memory maintenance when no roadmap issue is being drained.
  • evolve_apply(evolve_id) still implements legacy promoted evolve_format(...) suggestions behind a PR and calls evolve_mark_applied(evolve_id, pr_url).

Set THREADKEEPER_EVOLVE_REVIEW_INTERVAL_S>0 to run periodic audit/research passes and THREADKEEPER_EVOLVE_APPLY_INTERVAL_S>0 to drain one issue per pass. Pin the agent/model with THREADKEEPER_SPAWN__LOOP__EVOLVE_APPLIER / THREADKEEPER_SPAWN__MODEL__EVOLVE_APPLIER. Single-flight (one applier child at a time, enforced by a short dispatch file lock plus running-task detection) keeps code edits and memory maintenance from colliding. Automatic apply passes respect the configured interval so multiple foreground MCP server startups do not repeatedly spawn workers for the same open issue. Manual tools such as evolve_apply_roadmap_issue() dispatch immediately. If no roadmap issue is startable, the pass falls back to Curator reports and then legacy promoted evolve_format(...) suggestions.

Honest take

What works without agent cooperation (passive, opt-in via env):

  • Loop 2 (shadow), 3 (extract), 4 (candidate-reviewer), 5 (curator) — all run from the parent process, never require note() or close_thread() from the agent

What depends on the agent calling tools explicitly:

  • Loop 1 (auto-review on close_thread) — only fires if the agent closes threads, which the audit shows agents focused on coding tasks rarely do
  • Manual skill_record(outcome='wrong') — strongest feedback signal to the Curator, but agents need to remember to flag bad skills

The whole point of having five loops (not one) is graceful degradation: even when agents don't actively contribute, loops 2-5 keep the library growing from passive observation of the dialog stream.

Dialectic user model

A model of you, accumulated as you use the agent. dialectic_claim, dialectic_evidence (support / contradict), dialectic_synthesis, dialectic_supersede. Honcho-inspired weighted, smoothed ratio (Σw_support − Σw_contradict) / (Σw_support + Σw_contradict + 3) → low / medium / high / disputed confidence. Grouped by domain (style, values, workflow, ...) in brief().

Source-based evidence discount. Each evidence row's effective weight is base_weight × discount(WRITE_ORIGIN). Foreground (direct user / human signal) = 1.0. shadow_review / background_review / candidate_review / curator review-forks = 0.5. Structural defence against self-confirmation loops: a claim that surfaces in brief() and then gets "confirmed" by a review-fork reading the same dialog can't ride that internal evidence all the way to high confidence — internal evidence buys half as much.

Discrete tier on each claimhypothesis → observed → validated (plus disputed). Independent of the continuous confidence band; tier is the action-gating signal:

  • validated → agent applies by default (★ in brief)
  • observed → agent references and may mention the assumption (· in brief)
  • hypothesis → active probe; surfaces in a separate currently_testing block so the agent watches the next user moves through that lens

Transitions are discrete events (tier_promoted / tier_demoted in the events table) with timestamps for an auditable trail of when each claim earned trust. Thresholds:

  • hypothesis → observed: w_support ≥ 2.0 (claim has real backing)
  • observed → validated: w_support ≥ 4.0 and no contradict in 14 days
  • validated → observed: any recent contradict (demote on user pushback)
  • any → disputed: w_contradict > w_support
  • disputed → hypothesis: support overtakes contradict (recovery path)

i18n bundle

All multilingual regex and prompt fragments live in threadkeeper/i18n.py — the rest of the codebase stays English-only. Currently ships ten locales: English, Mandarin Chinese, Hindi, Spanish, Portuguese, French, German, Arabic, Russian, Japanese (~82 % of the world's speakers).

Adding a new language is a two-file PR — see CONTRIBUTING.md.


Configuration

The most-used env knobs (full list in threadkeeper/config.py):

KnobDefaultPurpose
THREADKEEPER_DB~/.threadkeeper/db.sqliteSQLite file
THREADKEEPER_AUTO_REVIEW"" (off)auto-review on close_thread
THREADKEEPER_AUTO_UPDATE_INTERVAL_S86400MCP self-update check interval; 0 disables
THREADKEEPER_AUTO_UPDATE_RESTART"1"exit MCP process after applying an update so the host restarts on new code
THREADKEEPER_AUTO_UPDATE_TIMEOUT_S600max seconds for git/pip update commands
THREADKEEPER_SHADOW_REVIEW_INTERVAL_S0 (off)shadow daemon tick (s)
THREADKEEPER_SHADOW_REVIEW_WINDOW_S900sliding window for shadow scan (s)
THREADKEEPER_EXTRACT_INTERVAL_S0 (off)extract daemon tick (s); 600 = 10 min recommended
THREADKEEPER_EXTRACT_WINDOW_MIN30sliding dialog window per extract pass (min)
THREADKEEPER_CANDIDATE_REVIEW_INTERVAL_S0 (off)candidate-reviewer daemon tick (s); 3600 = 1h recommended
THREADKEEPER_CANDIDATE_REVIEW_MIN3min pending candidates before reviewer engages
THREADKEEPER_CURATOR_INTERVAL_S0 (off)curator daemon tick (s); 604800 = 7d recommended
THREADKEEPER_CURATOR_MIN_LESSONS3min lessons before curator engages
THREADKEEPER_CURATOR_DESTRUCTIVE"" (advisory)when "1": curator child applies its own PATCH/PRUNE/CONSOLIDATE directly instead of writing advisory REPORT only
THREADKEEPER_PROBE_INTERVAL_S0 (off)probe daemon tick (s); 1800 = 30 min recommended so finished probe answers are graded promptly
THREADKEEPER_PROBE_COOLDOWN_S604800per-category probe cooldown; 86400 = 1d recommended for active reliability tracking
THREADKEEPER_SPAWN_BUDGET_MB3072combined child RSS cap (MB); 0 disables
THREADKEEPER_MENUBAR_AUTO_LAUNCHtruemacOS: auto install/launch status menu-bar app on MCP startup
THREADKEEPER_MENUBAR_RESTART_RSS_MB1024macOS widget self-restart RSS threshold; 0 disables
THREADKEEPER_MEMORY_GUARD_POLL_S30server RSS guard tick (s); 0 disables
THREADKEEPER_MEMORY_GUARD_WARN_MB1536notify/log when a server crosses this RSS
THREADKEEPER_MEMORY_GUARD_KILL_MB3072SIGTERM server above this RSS; 0 disables killing
THREADKEEPER_MEMORY_GUARD_AGG_WARN_MB2048notify/request trim when all server RSS crosses this
THREADKEEPER_MEMORY_GUARD_AGG_KILL_MB3072under aggregate pressure, retire stale idle servers
THREADKEEPER_MEMORY_GUARD_RECLAIM_MB1024local RSS floor before warn-triggered self trim
THREADKEEPER_MEMORY_GUARD_TARGET_SERVERS1aggregate-pressure target after retiring stale idle servers
THREADKEEPER_MEMORY_GUARD_RETIRE_IDLE_S900heartbeat age before a non-self server is retireable
THREADKEEPER_MEMORY_GUARD_RETIRE_LIVE"" (off)allow retiring parent-alive MCP servers; off protects live clients
THREADKEEPER_MEMORY_GUARD_NOTIFY"1"send macOS desktop notification when possible
THREADKEEPER_INGEST_INTERVAL_S3transcript ingest tick (s)
THREADKEEPER_NO_EMBEDDINGS""force-disable the embedding model (FTS5 + delegate only)
THREADKEEPER_EMBED_BACKENDonnxembedding runtime: onnx (fastembed, no PyTorch) or sentence-transformers (legacy fallback)
THREADKEEPER_EMBED_MODELparaphrase-multilingual-MiniLM-L12-v2384-dim cross-lingual embedding model
THREADKEEPER_SPAWNED_CHILD""spawn-internal marker; disables autonomous daemons in children
THREADKEEPER_SKILL_NUDGE_INTERVAL10events between skill_hint nudges
THREADKEEPER_DIALECTIC_MINE_INTERVAL_S0 (off)dialectic_miner daemon tick (s); 0 disables mechanical observation capture
THREADKEEPER_DIALECTIC_VALIDATE_INTERVAL_S0 (off)dialectic_validator daemon tick (s); 0 disables LLM-driven claim synthesis
THREADKEEPER_DIALECTIC_VALIDATE_MIN5min buffered observations before validator engages
THREADKEEPER_DIALECTIC_VALIDATE_BATCH_SIZE50max observations sent to one validator child; prevents oversized prompts and drains large queues incrementally
THREADKEEPER_EVOLVE_REVIEW_INTERVAL_S0 (off)evolve-reviewer daemon tick (s); audits thread-keeper for safety/leaks/optimization/new ideas, researches current approaches, updates roadmap/issues, and includes legacy evolve suggestions as input
THREADKEEPER_EVOLVE_APPLY_INTERVAL_S0 (off)evolve-applier daemon tick (s); implements one open GitHub issue at a time, then falls back to Curator reports and promoted legacy evolve suggestions. Empty checks are throttled between intervals; actionable work and manual apply tools still dispatch
THREADKEEPER_DIALECTIC_MAX_NEW_CLAIMS3max new dialectic claims the validator may create per pass

Persist them in ~/.threadkeeper/.env (copy from .env.example) — one file, read via pydantic-settings; real environment variables still override it. On macOS, the menu-bar app's gear button can edit the same file visually, save up to three local presets, and request a ThreadKeeper restart after saving. Hot-config reload is tracked.

Per-loop agent dispatch

By default every learning-loop spawn runs through the same CLI that hosts thread-keeper — Opus-session ⇒ Opus spawn, Codex-session ⇒ Codex spawn, etc. Detection: process-tree walk at startup, cached for the server lifetime. The MCP tool spawn_status() shows the live resolution table.

Override per role in ~/.threadkeeper/.env (there is no longer a spawn.toml — all config lives in the one .env). Spawn routing uses nested __ keys; dict keys are lowercased:

# default agent for roles with no explicit pin ("" / unset = use the active CLI)
THREADKEEPER_SPAWN__DEFAULT=claude
# per-role CLI:  THREADKEEPER_SPAWN__LOOP__<ROLE>=<cli>
# supported CLI keys: claude, codex, antigravity (agy executable), gemini (legacy), copilot
THREADKEEPER_SPAWN__LOOP__SHADOW_OBSERVER=claude   # heaviest reasoning → keep on Claude
THREADKEEPER_SPAWN__LOOP__CURATOR=codex            # weekly audit → Codex is fine
THREADKEEPER_SPAWN__LOOP__CANDIDATE_REVIEWER=auto  # "auto" = follow active CLI
# model pin per CLI or per role:  THREADKEEPER_SPAWN__MODEL__<KEY>=<model>
THREADKEEPER_SPAWN__MODEL__CLAUDE=opus
THREADKEEPER_SPAWN__MODEL__CODEX=gpt-5.5
THREADKEEPER_SPAWN__MODEL__AGY="Gemini 3.1 Pro (High)"
THREADKEEPER_SPAWN__MODEL__GEMINI=gemini-3.1-pro-preview
THREADKEEPER_SPAWN__MODEL__DIALECTIC_VALIDATOR=opus

Resolution per role: SPAWN__LOOP__<role>SPAWN__DEFAULT → active CLI → claude; "auto" (or unset) defers to the active CLI. Real environment variables override the .env. Force host detection with THREADKEEPER_ACTIVE_CLI=claude (or codex, antigravity/agy, gemini, copilot). agy is normalized to antigravity; gemini remains a legacy Gemini CLI adapter for old installs/enterprise paths. See .env.example for the full knob list.

Adapters without headless support (Claude Desktop, VS Code) can't be spawn targets — spawn_status() reports them as "no adapter" and any override pointing at them falls back to the next priority level.


Hygiene tools

Two tools keep the memory tidy — both default to dry_run=True, run them with dry_run=False to apply:

  • consolidate() — dedup near-identical notes (intra-thread cosine ≥ 0.95), deduplicate verbatim quotes, demote untouched-active threads to idle after 30 days, release orphaned thread claims.

  • validate_threads() — heuristic triage of active threads with four categories (first match wins per thread):

    • no_notes_old — active with zero notes ≥ 7 days → close as abandoned.
    • shipped — last note matches a shipped-marker regex (EN+RU: shipped/fixed/works/passed/done/merged/закрыто/готово/сделано/…) and has settled ≥ 3 days → close with the last move as outcome.
    • dropped_open_q — last note is an open_q left unfollowed ≥ 14 days → close as dropped.
    • stale_idle — any active not touched in ≥ 30 days → demote to idle (not closed — revives on next note()).

    Idle threads are never touched. Tunable via no_notes_days, shipped_settle_days, drop_open_q_days, stale_days, and shipped_markers (comma-separated extra tokens).


Telemetry

  • mp_dashboard(window_days=7) — one-call rollup of the whole system, read-only. Three sections: stores (threads by state, notes/dialog/distill/concepts counts, skills + claims by tier, extract-candidate and evolve queues, probe/task counts), loops (how many times each autonomous daemon fired in the window vs 30 days, plus last-fire age), and outcomes (what those loops actually produced — skills materialized, tier promotions, candidate accept-vs-reject rate). Surfaces the gaps the point-tools can't: a loop firing constantly while its outcomes stay flat, or a queue backing up. Complements the per-loop *_status tools (mp_health, spawn_budget_status, shadow_review_status).
  • agent_status(json_output=False, refresh=True) — autonomous learning loop status, shaped for UI clients. Shows every loop's enabled/running/ready state, last pass, backlog, and active spawned-child RSS; running child agents are included as detail rows in the JSON. The JSON also includes recent_results for useful completed loop tasks, which the macOS menu-bar app uses for notifications. The tk-agent-status console command and macOS menu-bar app use the same underlying snapshot.

Storage

~/.threadkeeper/db.sqlite (overridable via THREADKEEPER_DB). WAL mode for multi-writer concurrency. Optional notes_vec / dialog_vec HNSW indexes through sqlite-vec for sub-linear semantic search; fallback to Python-side cosine when the extension is missing.

One file. Backup = cp. Wipe memory = rm.

Hooks and small runtime artifacts: ~/.threadkeeper/hooks/.


Embeddings

Semantic search runs paraphrase-multilingual-MiniLM-L12-v2 (384-dim, RU+EN+50 langs). The default backend is fastembed / ONNX Runtime — no PyTorch. A model-loaded process sits at ~700 MB physical footprint (~850 MB RSS), down from ~1.8 GB on the PyTorch backend.

A sentence-transformers (PyTorch) backend is kept as an opt-in fallback. It is heavier (~1.8 GB RSS) and produces vectors that are not numerically identical to the ONNX backend's, so switching backends warrants a recompute:

# Install the fallback runtime and switch to it:
pip install -e '.[semantic-st]'
export THREADKEEPER_EMBED_BACKEND=sentence-transformers

# After any backend switch, homogenize the stored corpus so queries and
# stored vectors live in the same space:
tk-migrate-embeddings --all          # or --notes-only / --dialog-only
tk-migrate-embeddings --dry-run      # report stale counts only

The migration is batched, resumable, and idempotent (a second run finds nothing stale). Both backends emit 384-dim vectors, so the vec0 schema is unchanged.


Verifying ingest across CLIs

python scripts/tk_verify_ingest.py            # both checks below
python scripts/tk_verify_ingest.py --contract # parse/ingest contract only
python scripts/tk_verify_ingest.py --live      # production verdict only
python scripts/tk_verify_ingest.py --live --json   # machine-readable

Two read-only checks:

  • Contract test (--contract) — walks every installed CLI adapter, parses recent transcripts into an isolated tempdir DB, reports per-source message counts and flags any adapter that parsed messages but silently failed to persist them. Answers "does the pipeline work?"
  • Production verification (--live) — reads the live dialog_messages table read-only and scores the three acceptance criteria from roadmap issue #1: (1) every targeted CLI slot has production rows, (2) shadow-review sees more than one adapter in the same recent window, (3) the learning loop has fired on non-Claude sessions. Emits a PASS / PARTIAL / FAIL verdict. The four slots are claude-code, codex, copilot, and google — where the Google slot is satisfied by either the legacy gemini adapter or its successor Antigravity (agy), since both live under ~/.gemini.

--strict makes the process exit non-zero unless the live verdict is PASS, so it can gate CI; PARTIAL (e.g. a box that doesn't run all four CLIs) is a valid real-world state and exits 0 by default. The reusable verdict logic lives in threadkeeper/verify_ingest.py.


Tests

pip install -e '.[semantic,dev]'
python -m pytest

495 tests passing on Python 3.11 / 3.12 / 3.13 (1 skipped). CI runs the suite on every push and PR.


Project layout

threadkeeper/
├── server.py             # MCP entry: python -m threadkeeper.server
├── _setup.py             # `thread-keeper-setup` installer
├── config.py             # env-driven defaults
├── db.py                 # SQLite schema + sqlite-vec loader
├── identity.py           # session, self-cid, daemon launchers
├── ingest.py             # adapter-driven transcript ingest
├── verify_ingest.py      # cross-CLI production verification verdict
├── brief.py              # render_brief / render_context
├── shadow_review.py      # autonomous learning observer
├── i18n.py               # 10 locales of regex + prompt bundles
├── adapters/             # one file per supported CLI
│   ├── claude_code.py
│   ├── claude_desktop.py
│   ├── codex.py
│   ├── antigravity.py
│   ├── gemini.py
│   ├── copilot.py
│   └── vscode.py
└── tools/                # @mcp.tool entries — 89 of them
    ├── threads.py
    ├── peers.py
    ├── spawn.py
    ├── skills.py
    ├── dialectic.py
    ├── validate.py
    └── ...

Detailed map in docs/ARCHITECTURE.md. Open work in docs/ROADMAP.md and the Issues tab.


Contributing

PRs welcome — see CONTRIBUTING.md for the project map, test workflow, and recipes for adding a new CLI adapter or a new locale. Look for the good-first-issue label.


License

MIT — see LICENSE.

Server Config

{
  "mcpServers": {
    "thread-keeper": {
      "command": "uvx",
      "args": [
        "--from",
        "threadkeeper[semantic]",
        "python",
        "-m",
        "threadkeeper.server"
      ]
    }
  }
}
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