From wenlan
Searches Wenlan's local memory by natural-language query. Invoke with `/recall` to look up remembered information, decisions, or context.
How this skill is triggered — by the user, by Claude, or both
Slash command
/wenlan:recall <query><query>This skill is limited to the following tools:
The summary Claude sees in its skill listing — used to decide when to auto-load this skill
Search Wenlan's memory by natural-language query. Returns matching memories
Search Wenlan's memory by natural-language query. Returns matching memories ranked by hybrid vector + FTS search, then re-ordered by the agent if it helps.
The /recall skill accepts one optional inline token of the form
space:<name> anywhere in the argument string. Extract it before
treating the rest as the query:
raw_args="<the full argument string passed to /recall>"
space_arg="$(printf '%s\n' "$raw_args" | grep -oE 'space:[A-Za-z0-9_-]+' | head -1 | cut -d: -f2)"
query="$(printf '%s\n' "$raw_args" | sed -E 's/[[:space:]]*space:[A-Za-z0-9_-]+[[:space:]]*/ /g' | sed -E 's/^[[:space:]]+|[[:space:]]+$//g')"
If space_arg is non-empty, pass it to the resolver as --arg "$space_arg".
Call the bundled resolver:
resolved="$("$CLAUDE_PLUGIN_ROOT/bin/resolve-space.sh" --cwd "$PWD" \
${space_arg:+--arg "$space_arg"} 2>/dev/null)"
space="$(printf '%s\n' "$resolved" | cut -f1)"
source_layer="$(printf '%s\n' "$resolved" | cut -f2)"
Pass space="$space" to the recall MCP tool only when space is
non-empty. Print one line before the call:
Resolved space: <space> (from <source-layer>)
If space is empty, print Resolved space: none (unscoped) and omit the
space filter.
When a local model or API key is configured, the daemon can rerank and expand server-side. In local memory mode it cannot. The skill always does agent-side expansion and rerank itself — cheap, makes results good in both modes.
Before calling recall, rewrite the user's query into a more
search-friendly form:
Don't over-expand. If the query is already specific, leave it alone.
One recall call per /recall invocation — duplicate calls double
embedding load and the merge step is rarely worth it. The daemon's
own search_memory_expanded exists for the multi-query case; if it
matters, use that endpoint instead of issuing parallel calls here.
recall(query="<expanded query>", space=<resolved if non-empty>, memory_type=<inferred>)
Inferences (do not ask the user):
space: current working directory (e.g. ~/Repos/wenlan/... → "wenlan"),
the topic being discussed, or whatever space was mentioned in recent turns.
Pass only when scope is known; omit when uncertain or unscoped.memory_type: only when the query itself names a type ("decision on X",
"lesson about Y", "preference for Z"). Otherwise omit and let hybrid
search rank.limit: default 10. Use 3-5 for quick lookups, 10-20 for exploration.The daemon returns hits ranked by hybrid search. That ranking is good but not perfect — it doesn't know the user's exact intent.
Re-read the returned memories against the original query. Promote the ones that directly answer the question; demote ones that just share keywords.
Show the user the top 3-5 reranked hits. Surface the rest only if asked.
Each memory may carry revision fields: version, pending_revision,
merged_from, last_delta_summary. Most memories are fresh (v1, none
set) — render nothing extra for those. Only add a tag line when
something meaningful is present.
Condition: emit the tag line when any of these holds:
version > 1merged_from is non-emptypending_revision == trueFormat — one compact line above the memory body:
<id> v<N> (merged <K> memories) ← merged_from has K entries
<id> v<N>, pending revision against <id> ← pending_revision true
<id> v<N> — <last_delta_summary> ← version > 1, delta populated
<id> v<N> ← version > 1, no delta
Rules:
— <delta> when last_delta_summary is empty or null./brief instead./capture."Alice database preference" finds more than "database stuff". The semantic matcher rewards specificity. If too many results return, add filters rather than making the query longer.
npx claudepluginhub p/7xuanlu-wenlan-pluginRecalls past context, decisions, and discussions from Memsy memory. Activates on retrieval-intent queries like "what did we decide" or "search past conversations."
Searches and recalls relevant memories from past sessions via memsearch. Useful when historical context, past decisions, debugging notes, or project knowledge could help answer the user's question.
Searches and surfaces relevant memories from past sessions to inform current work with decisions, patterns, and learnings. Supports hybrid, vector, and text search modes with namespace filtering.