ワンクリックで
ww-analyze
Deep analysis workflows for World Weaver memory systems, code, and architecture
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
メニュー
Deep analysis workflows for World Weaver memory systems, code, and architecture
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
SOC 職業分類に基づく
| name | ww-analyze |
| description | Deep analysis workflows for World Weaver memory systems, code, and architecture |
| version | 1.0.0 |
| allowed-tools | ["Bash","Read","Write","Grep","Glob"] |
Deep analysis workflows for World Weaver memory systems, code quality, and architecture.
This skill provides comprehensive analysis capabilities:
Invoke this skill when:
Orchestrate specialized bug-hunting agents:
# Run all bug hunters in sequence
paths=(
"src/ww/learning/"
"src/ww/memory/"
"src/ww/storage/"
"src/ww/mcp/"
"src/ww/core/"
)
for path in "${paths[@]}"; do
echo "Analyzing: $path"
done
Agent orchestration:
Analyze stored memories for patterns:
# Query memory statistics
mcp__ww-memory__memory_stats()
# Analyze episode distribution
mcp__ww-memory__recall_episodes(
query="*",
limit=1000,
include_metadata=True
)
# Analyze entity graph
mcp__ww-memory__semantic_recall(
query="*",
include_connections=True
)
Output analysis:
Evaluate system architecture:
# File structure analysis
find /home/aaron/ww/src -name "*.py" | wc -l
# Dependency analysis
grep -r "^from ww" /home/aaron/ww/src --include="*.py" | cut -d: -f2 | sort | uniq -c | sort -rn
# Test coverage check
cd /home/aaron/ww && pytest --cov=src/ww --cov-report=term-missing
Architecture metrics:
Profile system performance:
import cProfile
import pstats
# Profile memory operations
profiler = cProfile.Profile()
profiler.enable()
# ... memory operations ...
profiler.disable()
stats = pstats.Stats(profiler)
stats.sort_stats('cumulative')
stats.print_stats(20)
Performance metrics:
## WW Analysis Report
**Type**: {Bug Hunt | Memory Pattern | Architecture | Performance}
**Date**: {timestamp}
**Scope**: {paths analyzed}
### Summary
{High-level findings}
### Metrics
| Metric | Value | Status |
|--------|-------|--------|
| Files analyzed | N | - |
| Issues found | N | {OK/WARNING/CRITICAL} |
| Test coverage | N% | {OK if >80%} |
### Findings
#### Critical (P0)
{List of critical issues}
#### High (P1)
{List of high priority issues}
#### Medium (P2)
{List of medium priority issues}
### Recommendations
1. {Priority action items}
### Visualizations
{Embedded diagrams or links to generated visualizations}
This skill orchestrates bug-hunting agents:
/ww-analyze bugs src/ww/learning/
→ Spawns: ww-bio-auditor, ww-hinton-validator, ww-trace-debugger
/ww-analyze concurrency src/ww/mcp/
→ Spawns: ww-race-hunter, ww-leak-hunter, ww-cache-analyzer
/ww-analyze full src/ww/
→ Spawns: All 6 agents in parallel
Proposed MCP endpoints for analysis:
mcp__ww-memory__analyze_patterns - Analyze memory patterns
mcp__ww-memory__analyze_health - Check system health
mcp__ww-memory__analyze_performance - Profile operations
mcp__ww-memory__generate_report - Create analysis report
Before completing analysis:
If analysis fails:
Comprehensive SessionEnd hook that syncs and synthesizes all daily completions, notes, todos, and conversation data into unified daily notes and knowledge bases.
Unified worklog system. Synthesizes session work into daily markdown files with clean bullet points. Supports weekly rollups for Slack #progress sharing. Replaces fragmented checkpoint/session-state/weekly-notes systems.
Comprehensive pre-submission review orchestrator. Coordinates methodology checks, bias detection, AI text detection, statistical validation, and reporting guideline compliance for journal submissions.
Kymera Systems brand design - Jarvis-inspired HUD aesthetic with dark and light modes. Use for branded UI, dashboards, presentations, and technical artifacts.
Architecture documentation generation and maintenance for World Weaver
Trigger and manage World Weaver memory consolidation