knowledge-base
Project-specific prompt optimization knowledge management. Use when storing or retrieving learned patterns from comparisons. Provides schema, extraction criteria, capacity management, and retention scoring.
What it does
Knowledge Base Skill
Storage Location
{project_root}/.claude/.rashomon/prompt-knowledge.yaml
Schema
patterns:
- name: "Pattern name"
what_to_look_for: |
When this pattern applies
improvement: |
How to improve when detected
learned_from: "Date and context"
confidence: 0.0-1.0
times_applied: 0
anti_patterns:
- name: "Anti-pattern name"
what_to_look_for: |
What to avoid
why_bad: |
Why problematic in this project
learned_from: "Date and context"
confidence: 0.0-1.0
metadata:
last_updated: "ISO-8601 timestamp"
total_comparisons: 0
patterns_count: 0
anti_patterns_count: 0
max_entries: 20
Extraction Criteria
Save as Improvement Pattern
ALL conditions must be true:
- Optimized prompt showed structural improvement (not variance)
- Improvement is project-specific (not explained by BP-001~008)
- Pattern is likely to recur in this project
Confidence Assignment:
| Evidence | Confidence |
|---|---|
| Multiple comparisons confirmed | 0.8+ |
| Single comparison, clear effect | 0.5-0.7 |
| Effect present but uncertain | 0.3-0.5 |
Minimum threshold: 0.3 (entries below this are skipped)
Save as Anti-Pattern
ALL conditions must be true:
- Original had problem specific to this project
- Problem is project-specific (beyond standard patterns BP-001~008)
- Problem likely to recur
Extraction Scope
Save only entries that are:
- Project-specific (beyond standard best practices BP-001~008)
- Likely to recur in this project
- Showing clear effect (structural improvement, confidence ≥ 0.3)
Capacity Management
Maximum: 20 entries (patterns + anti_patterns combined)
Retention Score: confidence * (1 + log(times_applied + 1))
This formula:
- Prioritizes high-confidence entries
- Rewards frequently-used patterns
- Treats all entries equally regardless of age
Key Principle: Old entries are valuable. Retention depends on confidence and usage frequency.
Eviction Process:
- Calculate retention scores for all entries
- Calculate score for new candidate
- If new > lowest existing: remove lowest, add new
- Otherwise: skip new entry
Operations
Retrieval
At start of prompt analysis:
- Read
.claude/.rashomon/prompt-knowledge.yaml(if exists) - For each entry, check
what_to_look_foragainst current prompt - Return relevant entries with relevance scores
- Increment
times_appliedfor patterns used
Storage
After comparison (if structural improvement found):
- Evaluate against extraction criteria
- Generate candidate entries
- Check for duplicates
- Apply capacity management
- Write updated knowledge base
- Update metadata
Example Entry
patterns:
- name: "TypeScript interface reference"
what_to_look_for: |
Code generation prompts creating TypeScript types without
referencing existing type definitions in src/types/
improvement: |
Add: "Reference existing types in src/types/ to maintain
consistency and avoid duplicate type definitions"
learned_from: "2026-01-14: Comparison showed better type reuse"
confidence: 0.7
times_applied: 3
Feedback-Based Adjustments
When comparison results require knowledge base updates:
Confidence Adjustments:
- User confirms improvement: +0.1 (cap at 0.95)
- Pattern led to worse result: -0.2
- Remove entry if confidence < 0.2 after decrease
Entry Management:
- Add new entries from user insight (initial confidence: 0.5)
- Remove entries that fall below confidence threshold
Capabilities
Install
Quality
deterministic score 0.45 from registry signals: · indexed on github topic:agent-skills · 9 github stars · SKILL.md body (3,636 chars)