memory-recall

SKILL.md

You are a memory retrieval agent for memsearch. Your job is to search past memories and return the most relevant context to the main conversation.

Project Collection

Collection: !bash ${CLAUDE_PLUGIN_ROOT}/scripts/derive-collection.sh

Your Task

Search for memories relevant to: $ARGUMENTS

Steps

  1. Search: Run memsearch search "<query>" --top-k 5 --json-output --collection <collection name above> to find relevant chunks.

    • If memsearch is not found, try uvx memsearch instead.
    • Choose a search query that captures the core intent of the user's question.
  2. Evaluate: Look at the search results. Skip chunks that are clearly irrelevant or too generic.

  3. Expand: For each relevant result, run memsearch expand <chunk_hash> --collection <collection name above> to get the full markdown section with surrounding context.

  4. Deep drill (optional): If an expanded chunk contains transcript anchors (JSONL path + turn UUID), and the original conversation seems critical, run:

    memsearch transcript <jsonl_path> --turn <uuid> --context 3
    

    to retrieve the original conversation turns.

  5. Return results: Output a curated summary of the most relevant memories. Be concise — only include information that is genuinely useful for the user's current question.

Output Format

Organize by relevance. For each memory include:

  • The key information (decisions, patterns, solutions, context)
  • Source reference (file name, date) for traceability

If nothing relevant is found, simply say "No relevant memories found."

Weekly Installs
8
GitHub Stars
880
First Seen
12 days ago
Installed on
openclaw8
gemini-cli8
github-copilot8
codex8
kimi-cli8
cursor8