context-retrieval
About
The context-retrieval skill fetches relevant past episodes from memory using semantic or keyword search to inform current decisions. It's designed for developers needing historical patterns or solutions for similar tasks, with semantic search as the preferred method for capturing intent. The skill automatically parses queries, checks embedding availability, and ranks results by relevance.
Quick Install
Claude Code
Recommended/plugin add https://github.com/majiayu000/claude-skill-registrygit clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/context-retrievalCopy and paste this command in Claude Code to install this skill
Documentation
Context Retrieval
Retrieve relevant episodic context from memory for informed decision-making.
Retrieval Methods
Semantic Search (Preferred)
When embeddings available:
let context = memory
.retrieve_relevant_context(
"implement async batch updates",
task_context,
limit: 5
)
.await?;
Advantages: Finds semantically similar tasks, captures intent
Keyword Search (Fallback)
// SQL index-based search
SELECT * FROM episodes
WHERE task_type = ? AND tags LIKE ?
ORDER BY timestamp DESC
LIMIT ?;
Advantages: Fast, no embedding computation, deterministic
Retrieval Strategy
- Parse query (key terms, domain, task type)
- Check embedding availability
- Query cache (redb) first, fall back to Turso
- Rank by relevance or recency
- Filter and limit results
- Format context structure
Context Filtering
// By domain
TaskContext { domain: "storage".to_string(), .. }
// By task type
task_type_filter: Some("implementation")
// By recency (last 30 days)
since: Some(now - Duration::days(30))
// By success only
verdict: Some(Verdict::Success)
Response Format
pub struct RetrievedContext {
pub episodes: Vec<EpisodeSummary>,
pub patterns: Vec<Pattern>,
pub heuristics: Vec<Heuristic>,
pub relevance_scores: Vec<f32>,
}
pub struct EpisodeSummary {
pub id: String,
pub task_description: String,
pub verdict: Verdict,
pub key_steps: Vec<String>,
pub reflection: String,
pub relevance: f32,
}
Usage Examples
// Find similar implementation tasks
let retrieved = memory
.retrieve_relevant_context(query, context, 10)
.await?;
// Find common tool sequences
let patterns = memory
.get_patterns_by_type("ToolSequence")
.filter(|p| p.success_rate > 0.8)
.await?;
// Find error resolutions
let solutions = memory
.retrieve_error_resolutions("borrow checker error", 5)
.await?;
Troubleshooting
| Issue | Solution |
|---|---|
| Low recall | Check embeddings, expand tags, increase limit |
| Slow retrieval | Check cache, verify indexes, reduce result set |
| Poor relevance | Use semantic search, improve query, filter by domain |
GitHub Repository
Related Skills
algorithmic-art
MetaThis Claude Skill creates original algorithmic art using p5.js with seeded randomness and interactive parameters. It generates .md files for algorithmic philosophies, plus .html and .js files for interactive generative art implementations. Use it when developers need to create flow fields, particle systems, or other computational art while avoiding copyright issues.
subagent-driven-development
DevelopmentThis skill executes implementation plans by dispatching a fresh subagent for each independent task, with code review between tasks. It enables fast iteration while maintaining quality gates through this review process. Use it when working on mostly independent tasks within the same session to ensure continuous progress with built-in quality checks.
executing-plans
DesignUse the executing-plans skill when you have a complete implementation plan to execute in controlled batches with review checkpoints. It loads and critically reviews the plan, then executes tasks in small batches (default 3 tasks) while reporting progress between each batch for architect review. This ensures systematic implementation with built-in quality control checkpoints.
cost-optimization
OtherThis Claude Skill helps developers optimize cloud costs through resource rightsizing, tagging strategies, and spending analysis. It provides a framework for reducing cloud expenses and implementing cost governance across AWS, Azure, and GCP. Use it when you need to analyze infrastructure costs, right-size resources, or meet budget constraints.
