Agent skill
context-recovery
Recover lost context after session compaction or when information from previous sessions is needed. Use when: user mentions "what were we working on", "I lost context", "before the compact", "previous session", or asks about decisions/implementations/discussions that aren't in current context. Also use proactively when you notice references to prior work you lack context for.
Install this agent skill to your Project
npx add-skill https://github.com/omgpointless/aspy/tree/main/skills/context-recovery
SKILL.md
Context Recovery
You've been activated to recover context that was lost to compaction or exists in a previous session.
Quick Start
-
Identify the topic - What specific context is needed?
- If the user's request is vague, ask: "What topic should I search for?"
-
Use aspy_recall (primary tool):
aspy_recall(query="<keywords>", limit=10)This combines semantic search (if embeddings enabled) with keyword matching. Searches thinking blocks, user prompts, AND assistant responses simultaneously. Handles both exact queries and fuzzy queries like "that golf thing?"
-
Synthesize, don't dump - Summarize findings:
- What was decided or implemented
- Key file paths and line numbers mentioned
- Any unfinished work or next steps discussed
-
Offer continuity - "Would you like me to continue where we left off?"
Search Strategy
Start with aspy_recall (Primary)
- Combines semantic + keyword search automatically
- Finds conceptually related content even with different wording
- Default limit of 10 results is usually sufficient
Targeted Searches (If Combined Is Noisy)
aspy_recall_thinking- Claude's reasoning and analysis (WHY decisions were made)aspy_recall_prompts- What the user askedaspy_recall_responses- Claude's answers and code
What Makes Good Context Recovery
Good synthesis:
"On Dec 2nd, we implemented mouse scroll support for the detail modal. The fix was in
src/tui/mod.rs:299-322- checking if modal is open before dispatching scroll events. You mentioned wanting to test it before merging."
Bad synthesis:
"Found 5 results mentioning 'scroll'. Here they are: [dumps raw results]"
Common Patterns
| User Says | Search For |
|---|---|
| "that bug we fixed" | error keywords, "fix", file names |
| "the refactor" | "refactor", component names |
| "what we decided" | "decided", "approach", "pattern" |
| "before compact" | recent topics from today |
| "something about golf?" | just search it - semantic will handle fuzzy |
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