Memory and coordination infrastructure for AI coding teams.
Search past sessions, preserve decisions, coordinate agents, and ship from one persistent system of record.
Website · Guide · Blog · @synapt_dev
synapt gives Claude Code, Codex CLI, OpenCode, and other MCP-compatible assistants persistent operational memory.
It closes the gap between a one-shot assistant and a real working team:
- recall prior sessions, file history, decisions, and unresolved work
- preserve context in journals, reminders, and knowledge nodes
- coordinate multiple agents through shared channels, directives, and task claims
- scale from solo recall on a laptop to multi-agent operational memory
Agent skill files for repository-native use live in:
.codex/skills/synapt/SKILL.md.claude/skills/synapt/SKILL.md
For the default Claude Code path:
pip install synapt
claude mcp add synapt -- synapt server
synapt initThat gives you:
- a project-local
.synapt/memory store - indexed Claude Code and Codex transcripts
- Claude hooks for automatic archive/build flow
- the published Codex
dev-loopskill installed into${CODEX_HOME:-~/.codex}/skills/dev-loop/
Recommended:
pip install synapt
claude mcp add synapt -- synapt server
synapt initInstall:
pip install synaptAdd to ~/.codex/config.toml:
[mcp_servers.synapt]
command = "synapt"
args = ["server"]Then initialize the project:
synapt initAdd to ~/.config/opencode/opencode.json:
{
"mcp": {
"synapt": {
"type": "local",
"command": ["synapt", "server"],
"enabled": true
}
}
}Then run:
synapt initIf your client accepts stdio MCP definitions directly, use:
{
"mcpServers": {
"synapt": {
"type": "stdio",
"command": "synapt",
"args": ["server"]
}
}
}Run from a project root:
synapt initIt will:
- archive project-relevant Claude Code and Codex transcripts
- build the
.synapt/recall/index/recall.dbsearch index - register the Synapt MCP server in Claude Code when the
claudeCLI is available - install Claude hooks for
SessionStart,SessionEnd, andPreCompact - deploy the packaged Codex
dev-loopskill - add
.synapt/to.gitignore
synapt recall setup remains available as the explicit recall-scoped equivalent.
synapt is one memory system with a clear adoption ladder:
Search prior sessions, file history, timelines, and journals on one machine.
synapt recall search "how did we fix auth"
synapt recall files "src/auth.py"
synapt recall timelineAdd channels, directives, reminders, and task claims for coordinated execution across worktrees and agents.
recall_channel(action="join", channel="dev", name="Atlas")
recall_channel(action="intent", channel="dev", message="reviewing PR #403")
recall_channel(action="claim", channel="dev", message="m_abc123")Expose the same shared operational memory in a browser-facing mission-control surface.
Use synapt as the memory and coordination substrate beneath higher-level agent orchestration.
- Hybrid search: BM25 + embeddings + reciprocal rank fusion + reranking
- File-aware recall: find where a file, bug, issue, or decision was handled before
- Journal + knowledge: durable summaries, extracted facts, contradictions, and timeline arcs
- Agent channels: shared append-only coordination across sessions and worktrees
- Cross-client memory: Claude Code and Codex transcripts converge into one searchable system
- Portable archive: export/import
.synapt-archivestate between machines - Plugin system: extend MCP tools and CLI commands through Python entry points
LOCOMO evaluates long conversational memory over 10 conversations and 1540 QA pairs.
All systems use gpt-4o-mini as the shared generation + judge backbone for fair comparison. Competitor data comes from the Engram paper and Mem0 paper.
| System | Overall | Multi-Hop | Temporal | Infra |
|---|---|---|---|---|
| Engram | 77.55 ± 0.13 | — | — | cloud (BM25+ColBERT+KG) |
| Memobase | 75.78 | 46.88 | 85.05 | cloud |
| memOS | 72.99 ± 0.14 | — | — | cloud |
| Full-Context | 72.90 | — | — | upper bound |
| synapt (audited) | 72.4 | 70.92 | 59.19 | Ministral 8B cloud enrich |
| synapt local-first | 72.4 | 67.02 | 61.06 | local 3B on M2 Air |
| Mem0 | 64.73 ± 0.17 | 51.15 | 55.51 | cloud GPT-4 |
| Zep | 42.29 ± 0.18 | — | — | cloud |
What matters for the pitch:
- synapt is competitive with the best published systems
- the local-first path remains strong on commodity hardware
- the system is explicit about benchmark methodology, retrieval tradeoffs, and judge-model drift
- the 72.4 LOCOMO score is the audited, reproducible number to cite
Sources:
CodeMemo evaluates coding-memory tasks across factual recall, debugging context, architecture, temporal ordering, conventions, and cross-session continuity.
| System | Overall |
|---|---|
| synapt v0.6.2 | 90.51 |
| Mem0 | 76.00 |
Source:
synapt is built for teams that care where memory lives and how it is inspected.
- Local-first by default: transcripts, channels, journals, and indexes live on disk under
.synapt/ - No mandatory cloud memory backend: core recall works locally
- Inspectable storage: JSONL transcripts plus SQLite/FTS5 state
- Portable backup path: export/import via
.synapt-archive - Optional remote behavior is explicit: sync and plugin integrations are opt-in
For disclosure and reporting policy, see SECURITY.md.
Search a prior fix:
synapt recall search "why did we disable snippets in retrieval-only mode"Find a file’s prior context:
synapt recall files "src/synapt/recall/channel.py"Run Codex on a timed review loop:
./scripts/codex-loop.sh \
--interval 60 \
--prompt "check #dev, review fresh PRs, or pick up the next unowned task. Post what you're doing in #dev." \
-- --full-autoWithout memory, every new assistant session starts as a stranger.
With synapt, teams can:
- recover prior decisions instead of re-deriving them
- hand off work without losing context
- coordinate multiple agents without duplicating effort
- keep operational memory local, inspectable, and portable
That is the difference between an assistant demo and an operational system.
