| name | slm-remember |
| description | Capture durable facts, decisions, constraints, and gotchas into SuperLocalMemory. Use when the user says "remember that", "save this decision", "note this constraint", or when a session produces a conclusion worth persisting across sessions. Always recall first to avoid duplicates. |
| when_to_use | - "Remember that we use JWT with 1h expiry"
- "Save this architectural decision"
- "Store the constraint that X must not Y"
- "Note this as a gotcha / blocker / convention"
- After making a non-obvious decision during a coding session
- After resolving a bug whose root cause should be persisted
|
| allowed-tools | remember, recall, update_memory, Bash |
slm-remember — Capture Durable Facts
Store atomic, durable facts into SuperLocalMemory for retrieval in future
sessions. One fact per call. Recall before you remember.
What to store (and what not to)
Store:
- Architectural decisions ("Decided to use Postgres not MySQL — reason: JSONB support")
- Project conventions ("All API routes follow /api/v1/resource/{id} pattern")
- Hard constraints ("Never expose raw SQL errors to the HTTP response")
- Resolved gotchas ("Ollama needs keep_alive=-1 or it unloads the model between calls")
- Security rules ("Rate limit all public endpoints at 100 req/min")
Do not store:
- Transient context that is only relevant within this conversation
- Large blobs of code or full file contents (those belong in the project, not memory)
- Facts the project README already captures
Recall-before-remember (mandatory discipline)
Before calling remember, always call recall first with the core terms of
what you are about to store. If a near-duplicate exists:
- Use
update_memory(fact_id, content) to refine the existing fact instead
of creating a new one.
- Only call
remember when no sufficiently similar fact is found.
Duplicates degrade retrieval quality for every future session.
MCP-first workflow
1. Check for duplicates first
recall(query="JWT token expiry auth", limit=5, session_id="<sid>")
If a near-duplicate is returned:
update_memory(
fact_id="f8a2bc91",
content="JWT tokens use 1h expiry for API access tokens; refresh tokens 30d (updated 2026-06-16)",
)
update_memory returns {"success": true, "fact_id": "f8a2bc91", "content": "..."}.
2. Store a new fact
remember(
content="Decided to use JWT with 1h expiry for API auth; refresh tokens persist 30 days",
tags="auth,security,decision",
project="superlocalmemory",
importance=8,
session_id="<sid>",
)
Real response shape:
{
"success": true,
"fact_ids": ["c9d4e112"],
"count": 1,
"pending": false,
"message": "Stored (recallable now; enriching async)."
}
When pending: true, the daemon was offline at save time; the fact enters a
pending queue and becomes recallable once the daemon is back. Do not re-save.
Never claim "saved" unless success: true is in the response.
3. Parameter reference
remember(
content: str, # required — the atomic fact to store
tags: str = "", # comma-separated tags, e.g. "auth,security,gotcha"
project: str = "", # project scope, e.g. "superlocalmemory"
importance: int = 5,# 1–10; see scale below
session_id: str = "",# from session_init; attributes the write to this session
scope: str = None, # v3.6.15 multi-scope: "personal" (default) | "shared" | "global"
shared_with: str = "",# comma-separated profile_ids for scope="shared"
)
Multi-scope (v3.6.15, opt-in): leave scope unset for personal (private to
this profile — the default, identical to 3.6.14). "global" is visible to every
profile on the machine; "shared" is visible to the profiles in shared_with.
See docs/shared-memory.md.
importance scale:
- 1–3: Low — passing notes, ideas, soft preferences
- 4–6: Normal — patterns, conventions, standard decisions (default: 5)
- 7–8: High — architectural decisions, integration contracts, known gotchas
- 9–10: Critical — security rules, blockers, irreversible decisions
Use 7–10 only for facts that would cause real damage if forgotten.
4. One fact per call
Store one atomic fact per remember call. Do not concatenate multiple unrelated
points into a single content string — they will be hard to update individually
and harder to retrieve cleanly. If you have three separate decisions, make three
calls.
5. Always set tags and project
Untagged, unscoped facts are harder to retrieve and harder to manage. Minimum:
set tags to one or two relevant terms and project to the repo/product name.
Deleting stale facts via CLI
For deletion, the CLI is the authoritative surface. The MCP forget tool in
v3.6.14 runs an Ebbinghaus decay cycle — it does NOT delete by query. For
targeted deletion, use the CLI:
slm forget "<query>" --dry-run [--json]
slm forget "<query>" --yes [--json]
slm delete <fact_id> --yes [--json]
Flags verified in source (main.py):
slm forget: positional query, --dry-run, --yes / -y, --json
slm delete: positional fact_id, --yes / -y, --json
Always run --dry-run first and review the preview before passing --yes.
CLI fallback (when MCP is unavailable)
slm remember "<content>" [--tags a,b,c] [--json]
slm remember "<content>" --scope global
slm remember "<content>" --scope shared --shared-with alice,bob
Flags that do NOT exist on slm remember:
--importance, --project, --format — these are MCP-only params or fabricated.
Update vs forget discipline
| Scenario | Action |
|---|
| Fact is still true but needs refinement | update_memory(fact_id, new_content) |
| Fact is superseded or wrong | slm forget "<query>" --dry-run then --yes |
| Duplicate found that matches recall result | update_memory on the existing one |
| Fact has a known ID and is clearly obsolete | slm delete <fact_id> --yes |
SuperLocalMemory v3.6.18 · Qualixar · AGPL-3.0-or-later