| name | recall |
| type | command |
| description | Search the shared eidetic memory store and get back ranked, provenanced records. Drives `eidetic recall` with four search modes — exact (verbatim substring), approximate (vector/semantic), keyword (BM25 lexical), and hybrid (a weighted blend of vector+keyword, the default) — each hit carrying its text, full metadata, a relevance `score`, and a freshness `signal`. Recall passively reinforces matched records (bumps last_recall + recall_count). Shadowed and archived records are excluded by default; use --include-shadowed / --include-archived to retrieve them. The store lives at ~/.eidetic/memory (a home-dir path outside any git worktree); the wrapper defaults queries to this agent's PERSONAL, PRIVATE scope (`--scope cultureflare --visibility private`, suffix read from culture.yaml) — matching where /remember writes — so a no-flag recall returns this agent's own private records plus the shared public pool, and Claude and the colleague backend recall each other's memories because both resolve the same suffix via this skill. Use when the user says "recall", "what do we know about X", "search memory", "have we seen X before", "look it up in memory", "eidetic recall", or before answering from scratch when prior context may already be stored. Pairs with the sibling /remember skill.
|
recall — search the shared eidetic memory
recall drives eidetic recall: given a query, it returns the top-k stored
records ranked by relevance, each with its text, full metadata (provenance),
a numeric score, and a freshness signal. It is the read half of the memory
surface; the write half is the sibling /remember skill.
The point of a shared store is that memory is a team faculty, not a
per-agent silo: a record Claude wrote is recallable by the colleague backend
(and vice versa), because both resolve the same ~/.eidetic/memory path.
How to run
bash .claude/skills/recall/scripts/recall.sh "<query>" [flags...]
The wrapper resolves the CLI portably (installed eidetic on PATH, else
uv run eidetic from the checkout) and forwards every flag verbatim, so it is
exactly eidetic recall …. Run it from anywhere; the store is the same.
Search modes (--mode, default hybrid)
| Mode | What it matches | Needs embed server? |
|---|
exact | case-insensitive verbatim substring (--case-sensitive to tighten) | no — offline-safe |
approximate | vector cosine / semantic similarity | yes (falls back offline) |
keyword | BM25 lexical; only records sharing a query term | no — offline-safe |
hybrid | alpha*approximate + (1-alpha)*keyword (--alpha, default 0.5) | uses it when up |
hybrid is the default because the two signals cover each other's blind spots:
vector catches paraphrases, keyword catches exact ids/quotes. When the embed
server is unreachable, hybrid collapses to keyword-only (it never fuses
meaningless offline-fallback cosine).
Output fields
Each hit in --json output includes:
| Field | Notes |
|---|
id | stable record identity |
text | the stored chunk |
type | record type |
metadata | full provenance, round-tripped verbatim from ingest |
score | relevance score from the chosen search mode (freshness-blended) |
signal | freshness strength in [0, 1]; computed at recall time from age, recall frequency, and staleness |
created | ISO-8601 ingest date (may be DATE_UNKNOWN for legacy records) |
last_recall | ISO-8601 timestamp of the most recent recall hit (null if never recalled) |
recall_count | number of times this record has been recalled (passive reinforcement counter) |
lifecycle | active, shadowed, or archived |
links | list of related-memory ids |
Freshness signal
Every recall hit carries a signal field (float in [0, 1]). The signal
blends multiplicatively into the lexical/vector score so recently-created
and frequently-recalled records surface ahead of stale ones. The formula:
access_bonus = min(0.5, recall_count * 0.05)
age_factor = 1 / (1 + days_since_creation * 0.01)
staleness = days_since_last_recall * 0.01
signal = clamp((0.5 - staleness + access_bonus) * age_factor, 0, 1)
blended_score = score * (1 + 0.25 * (signal - 0.5))
Records with no temporal data (legacy, undated) are an exact no-op — the blend
is skipped for them so pre-existing fixture scores are unchanged.
Each recall call is also passive reinforcement: it bumps last_recall and
recall_count on every matched record, so frequently-recalled memories organically
gain signal strength over time.
Lifecycle flags
By default, recall returns only active records. Use these flags to retrieve
non-active records:
--include-shadowed — include records whose lifecycle == "shadowed" (records
superseded within their scope by a newer record). Shadowed records are preserved
and still searchable; they are just hidden from the default result set.
--include-archived — include records whose lifecycle == "archived" (records
older than ~1 year or below the signal threshold). Archived records are fully
preserved; the flag makes them retrievable again.
Both flags can be combined. Neither affects ranking — shadowed/archived records
compete on score/signal just like active ones when included.
Common flags (forwarded to eidetic recall)
--mode exact|approximate|keyword|hybrid — default hybrid.
--top-k N — max results (default 5).
--alpha F — hybrid blend weight in [0,1] (default 0.5).
--case-sensitive — for --mode exact.
--filter KEY=VALUE — metadata facet filter (repeatable): e.g. --filter source=docs.
--scope NAME / --visibility public|private — scope isolation (no private
leak). The wrapper defaults this to the agent's PERSONAL, PRIVATE scope
(--scope cultureflare --visibility private, suffix read from culture.yaml),
matching where /remember writes — so a no-flag recall returns this agent's
own private records plus the shared public pool, while those private records
stay invisible to a default/other-scope recall. Pass --scope/--visibility
to query elsewhere; a wheel install with no culture.yaml falls back to the
CLI default default/public.
--backend files|mongo|neo4j — default files (the shared home-dir store).
--include-shadowed — include shadowed records in results (excluded by default).
--include-archived — include archived records in results (excluded by default).
--json — structured list to stdout (use this when an agent parses the result).
Examples
bash .claude/skills/recall/scripts/recall.sh "jetson nano power draw" --json
bash .claude/skills/recall/scripts/recall.sh "Orin Nano" --mode exact
bash .claude/skills/recall/scripts/recall.sh "thermal throttle" --mode keyword \
--filter source=discord --top-k 10
bash .claude/skills/recall/scripts/recall.sh "old topic" --include-shadowed --json
bash .claude/skills/recall/scripts/recall.sh "power" --include-archived --include-shadowed --json
Notes
- Provenance is mandatory on every hit — recall is for cited answers.
- The embed endpoint defaults to the local model-gear embed gear
(
http://localhost:8002/v1, model Qwen/Qwen3-Embedding-0.6B); override with
EIDETIC_EMBED_URL / EIDETIC_EMBED_MODEL. exact/keyword ignore it.
- Use the wrapper, not a bare
eidetic. The console script may not be on
PATH (in a dev checkout it isn't) — the wrapper resolves it for you (PATH
first, else uv run eidetic). For the docs, run eidetic explain recall if
installed, otherwise uv run --project <eidetic-cli checkout> eidetic explain recall. (explain is an eidetic verb — a sibling tool like devex
won't know it.)
- Reading scores:
exact, keyword, and hybrid drop non-matching records
(hybrid drops any record with a 0.0 blended score), so their hits are real
matches. approximate keeps every candidate ranked by raw cosine, so it can
return low/near-zero scores when the store is small — lower --top-k to trim.
A --min-score threshold is a tracked follow-up.
- Sharing scope = one OS user. The default store is
~/.eidetic/memory, so
every agent/process running as the same OS user shares it (that is the point —
Claude + colleague). It is not isolated between OS users by anything but file
permissions; keep genuinely private data in a --visibility private scope and
treat the host as the trust boundary.
Provenance
First-party to eidetic-cli — eidetic owns its memory surface. Cite, don't
import: downstream repos copy this skill, they don't symlink it. See
docs/skill-sources.md.