knowledge-bank-lookup
Scannednpx machina-cli add skill sxhmilyoyo/sundayhao-plugins/knowledge-bank-lookup --openclawKnowledge Bank Lookup
What's New
Latest: v2.4.0 - Structure refactoring with improved clarity and terminology. See CHANGELOG.md for details.
Invocation
Automatic (Recommended)
This skill triggers automatically when Claude detects patterns listed in Trigger Detection. No manual invocation needed.
Manual Invocation
- Slash command:
/second-brain:knowledge-bank-lookup - Skill tool:
Skill({ skill: "second-brain:knowledge-bank-lookup" })
Visibility Settings
| Setting | Value | Effect |
|---|---|---|
user-invocable | true | Visible in slash menu, Skill tool allowed |
context | fork | Runs in isolated subagent (Explore agent) |
agent | Explore | Uses Explore agent optimized for codebase research |
See references/examples.md for detailed integration examples.
Overview
This skill enables efficient lookup of service documentation, architectural patterns, best practices, and reflections from the knowledge bank by delegating research to specialized subagents. Rather than consuming main agent context with large documentation reads, subagents perform deep analysis and return only distilled, actionable insights.
Key Benefits:
- Context Efficiency: 69-94% context reduction per lookup
- Reflections-First: Learn from past mistakes before consulting documentation
- WikiLink Following: DFS traversal of interconnected docs for complete coverage
- Frontmatter Filtering: Property-based document discovery
- Structured Insights: JSON responses with reflection_insights, patterns, linked_concepts, gotchas
- Automatic Activation: Triggers on service mentions and investigation keywords
Configuration
Knowledge bank path is dynamically resolved via common utilities.
Setup: skills/common/setup_kb_path.sh --configure
Verify: skills/common/setup_kb_path.sh --show
Usage in Scripts: source skills/common/get_kb_path.sh && KB_PATH=$(get_kb_path)
See skills/common/README.md for details.
Trigger Detection
Automatic Triggers
Automatically invoke knowledge bank lookup when detecting:
- Service Mentions: [project-a], [project-b-server], [project-b], [project-c], Claude Code, CC, ClaudeCode, Migration
- Investigation Requests: "investigate:", "analyze:", "create investigation plan:", "understand X"
- Component References: filter, cache, LiveConfig, plugin, EnrichmentGraph, creative, DLQ, hook, subagent, build-interceptor, build-executor
- Best Practice Queries: "how should I", "what's the pattern for", "best practice"
- Implementation Planning: "implement", "refactor", "migrate"
- Documentation Requests: "recap the session", "document this"
- Process Learning: "how did we handle X before", "past lessons on", "what went wrong with"
Lookup Type Selection
Choose lookup type based on trigger context:
| Type | When to Use | Context Budget | Model |
|---|---|---|---|
| Quick | Service mention, component reference | ~900 lines → 300 returned | haiku |
| Standard | Investigation, implementation planning | ~1950 lines → 600 returned | sonnet |
| Deep | Architectural decisions, cross-service | ~7300 lines → 1500 returned | sonnet |
Knowledge Bank Overview
Base Path: Dynamically resolved via common utilities (see Configuration)
Total: 172 markdown files across 4 projects ([project-a], [project-b], CC, [project-c])
Key Directories:
projects/{service}/- Service-specific documentation (concepts, components, best-practices)_index/- Maps of Content (MOCs) for efficient navigationreflections/- Process reflections (⚠️ CHECK FIRST before technical docs)manual/- Documentation and integration manualsrules/- Cross-project process rules
See references/knowledge-bank-structure.md for detailed structure.
Lookup Workflows
All workflows follow this pattern:
- Step 0: Check reflections first (learn from past mistakes)
- Step 1: Read service MOC (Map of Content)
- Steps 2-3: Identify and read relevant documents
- Step 4: Follow WikiLinks for connected knowledge
- Step 5: Synthesize with reflection insights and linked concepts
Quick Lookup
When: Service mention, simple component reference
Workflow: Check 3-5 recent reflections → Read MOC → 2-3 docs → 1-hop WikiLinks (2-3 additional docs)
Invocation: See Quick Lookup Template
Standard Lookup
When: Investigation mode, implementation planning, best practice queries
Workflow: Search reflections for topic → Read MOC → 5-7 docs → 1-2 hop WikiLinks (5-7 additional docs)
Invocation: See Standard Lookup Template
Deep Lookup
When: Major refactoring, architectural decisions, cross-service analysis
Workflow: Comprehensive reflection analysis → All MOCs → 10+ docs → Full DFS (up to 20 docs, 3 hops)
Invocation: See Deep Lookup Template
CC (Claude Code) Lookup
When: User mentions Claude Code, CC, hooks, subagents, AI agent patterns
Note: No CC MOC exists yet; navigate directly to /knowledge-bank/projects/cc/
Workflow: Check CC-related reflections → Navigate to project files → Synthesize meta-pattern insights
Navigation Strategy
MOC-First: Always start with Map of Content for the relevant service
- Achieves 94% context reduction vs reading all documents
- Only [project-a] and [project-b] have MOCs currently
- CC and [project-c]: Navigate directly to project files
Reflections-First: Check /reflections/ BEFORE technical documentation
- Learn from documented failures
- Apply proven approaches
- Understand workflow friction points
Advanced Features
WikiLink Following (v2.2.0+)
Documents are interconnected using Obsidian WikiLinks ([[Document Name]]). The skill uses Depth-First Search (DFS) to traverse these connections, ensuring comprehensive coverage of related knowledge.
Key Concepts:
- Hop count: Distance from primary documents (1-3 hops depending on lookup type)
- Link prioritization: Scored by keyword relevance (+10 exact match, +5 pattern/principle)
- Cycle prevention: Each document visited once per traversal
See references/wikilink-traversal.md for complete details.
Frontmatter-Based Retrieval (v2.3.0+)
Documents use LLM-optimized frontmatter properties (type, status, complexity, relevance-to) for efficient filtering without reading full content.
Key Concepts:
- Property filtering: Filter by type, status, complexity before reading
- Graph traversal: Follow
related-concepts,related-componentsproperties - Version awareness: Track
superseded-bychains to find current docs
See references/frontmatter-retrieval.md for complete details.
Progressive Refinement
For follow-up queries, reference previous lookup context so subagent can reuse cached data:
- Subagent preserves its own context
- No need to re-read MOC
- Main agent context stays clean
See references/optimization-techniques.md for details.
Subagent Communication
Request Structure (Main → Subagent)
Include in subagent prompts:
- Role: "You are a knowledge bank exploration agent"
- Task: Specific lookup objective
- Knowledge Bank Location: Full base path
- Workflow: Step-by-step instructions (reflections-first, then MOC-first)
- Output Format: JSON structure specification
- Context: User intent, focus areas, current working files
Response Format (Subagent → Main)
Subagents return JSON with:
| Field | Description |
|---|---|
executive_summary | Key findings and recommended action |
reflection_insights | Past mistakes, proven approaches, workflow gotchas |
relevant_patterns | Technical patterns with gotchas |
related_concepts | Prerequisites and alternatives |
linked_concepts | Concepts discovered through WikiLink traversal |
best_practices | Reusable methodologies |
cross_references | Follow-up topics |
link_traversal | WikiLink traversal statistics |
metadata | Analysis depth, document counts, limitations |
See references/json-schemas.md for complete schema.
Best Practices
| Practice | Rationale |
|---|---|
| Always check reflections first | Learn from past mistakes before technical docs |
| Use MOC-first navigation | 94% context reduction vs reading all documents |
| Specify JSON output format | Ensures structured, parseable responses |
| Include user context | Improves relevance of findings |
| Choose appropriate lookup type | Don't use Deep for simple queries |
| Integrate insights naturally | Present as main agent knowledge, not "I looked this up" |
Reference Documentation
- Prompt Templates - Complete subagent prompts for Quick/Standard/Deep lookups
- Integration Examples - Usage scenarios and response construction
- JSON Schemas - Response format specifications
- Knowledge Bank Structure - Directory organization and document counts
- WikiLink Traversal - DFS traversal details and utilities
- Frontmatter Retrieval - Property-based filtering and search
- Optimization Techniques - Context efficiency methods
- Session Documentation - Documentation process guidelines
Source
git clone https://github.com/sxhmilyoyo/sundayhao-plugins/blob/main/second-brain/skills/knowledge-bank-lookup/SKILL.mdView on GitHub Overview
The Knowledge Bank Lookup delegates research to the Explore subagent using a reflections-first approach. It checks the /reflections/ directory before consulting documentation to extract past failures and proven approaches, returning structured, actionable insights with strong context reduction (69-94%). It activates automatically on service mentions and investigation requests.
How This Skill Works
When triggered, the Explore agent analyzes past reflections in /reflections/, then traverses related docs (wiki links) with frontmatter filters to discover relevant patterns and gotchas. It returns a compact JSON with fields like reflection_insights, patterns, linked_concepts, and gotchas, achieving up to 94% context reduction by avoiding redundant reads.
When to Use It
- When you mention services like [project-a], [project-b], or Claude Code and need docs or patterns
- When you need to investigate an issue or plan an implementation
- When you want to recap a session or document learnings
- When architectural decisions require cross-service patterns
- When you want past lessons on how we handled similar problems
Quick Start
- Step 1: Configure the KB path with skills/common/setup_kb_path.sh --configure
- Step 2: Trigger knowledge-bank-lookup automatically or via /second-brain:knowledge-bank-lookup
- Step 3: Consume the structured JSON output (reflection_insights, patterns, linked_concepts, gotchas) for actionable next steps
Best Practices
- Ensure knowledge bank path is configured and accessible
- Let Explore perform reflections-first lookups before direct documentation access
- Prefer Quick/Standard/Deep lookups based on context budget
- Use frontmatter filtering to narrow searches
- Review the returned reflection_insights and gotchas for actionable steps
Example Use Cases
- Investigate best practices for deploying [project-a] services and reuse past lessons
- Plan a migration for [project-c] by analyzing past failure patterns
- Audit an investigation request and extract a structured plan from the KB
- Recap a session by summarizing key patterns and linked concepts
- Cross-reference architectural patterns across multiple services using DFS wiki-link traversal